2042 lines
101 KiB
TeX
2042 lines
101 KiB
TeX
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%\documentclass[letterpaper,english]{article}
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\documentclass[letterpaper,twocolumn,english]{article}
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% This fixes the PDF font, whether or not pdflatex is used to compile the document...
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\usepackage{pslatex}
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\usepackage[T1]{fontenc}
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\usepackage[latin1]{inputenc}
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\usepackage{graphicx}
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\usepackage{xspace}
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\usepackage{geometry,color}
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\geometry{verbose,letterpaper,tmargin=1in,bmargin=1in,lmargin=0.75in,rmargin=0.75in}
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\makeatletter
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\usepackage{babel}
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\newcommand{\yad}{Lemon\xspace}
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\newcommand{\eab}[1]{\textcolor{red}{\bf EAB: #1}}
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\newcommand{\rcs}[1]{\textcolor{green}{\bf RCS: #1}}
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\begin{document}
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\title{\yad Outline }
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\author{Russell Sears \and ... \and Eric Brewer}
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\maketitle
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%\subsection*{Abstract}
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{\em The sections marked @todo or bolded still need to be written, and
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graphs need to be produced. Also, I would like to add a
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``cheat-sheet'' style reference of an idealized version of \yad's
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API.}
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\vspace*{6pt}
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{\em Existing transactional systems are designed to handle specific
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workloads well. Unfortunately, these implementations are generally
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monolithic, and do not generalize to other applications or classes of
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problems. As a result, many systems are forced to ``work around'' the
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data models provided by a transactional storage layer. Manifestations
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of this problem include ``impedance mismatch'' in the database world,
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and the poor fit of existing transactional storage management system
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to hierarchical or semi-structured data types such as XML or
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scientific data. This work proposes a novel set of abstractions for
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transactional storage systems and generalizes an existing
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transactional storage algorithm to provide an implementation of these
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primatives. Due to the extensibility of our architecutre, the
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implementation is competitive with existing systems on conventional
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workloads and outperforms existing systems on specialized
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workloads. Finally, we discuss characteristics of this new
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architecture which provide opportunities for novel classes of
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optimizations and enhanced usability for application developers.}
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\rcs{Need to talk about collection api stuff / generalization of ARIES
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/ new approach to application development}
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%Although many systems provide transactionally consistent data
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%management, existing implementations are generally monolithic and tied
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%to a higher-level DBMS, limiting the scope of their usefulness to a
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%single application or a specific type of problem. As a result, many
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%systems are forced to ``work around'' the data models provided by a
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%transactional storage layer. Manifestations of this problem include
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%``impedance mismatch'' in the database world and the limited number of
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%data models provided by existing libraries such as Berkeley DB. In
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%this paper, we describe a light-weight, easily extensible library,
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%LLADD, that allows application developers to develop scalable and
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%transactional application-specific data structures. We demonstrate
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%that LLADD is simpler than prior systems, is very flexible and
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%performs favorably in a number of micro-benchmarks. We also describe,
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%in simple and concrete terms, the issues inherent in the design and
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%implementation of robust, scalable transactional data structures. In
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%addition to the source code, we have also made a comprehensive suite
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%of unit-tests, API documentation, and debugging mechanisms publicly
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%available.%
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%\footnote{http://lladd.sourceforge.net/%
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%}
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\section{Introduction}
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Transactions are at the core of databases and thus form the basis of many
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important systems. However, the mechanisms for transactions are
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typically hidden within monolithic database implementations (DBMSs) that make
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it hard to benefit from transactions without inheriting the rest of
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the database machinery and design decisions, including a the use of a
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query interface. Although this is clearly not a problem for
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databases, it impedes the use of transactions in a wider range of
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systems.
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Other systems that could benefit from transactions include file
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systems, version control systems, bioinformatics, workflow
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applications, search engines, recoverable virtual memory, and
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programming languages with persistent objects (or structures).
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In essence, there is an {\em impedance mismatch} between the data
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model provided by a DBMS and that required by these applications. This is
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not an accident: the purpose of the relational model is exactly to
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move to a higher-level set-based data model that avoids the kind of
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``navigational'' interactions required by these lower-level systems.
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Thus in some sense, we are arguing for the return of navigational
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transaction systems to compliment not replace relational systems.
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The most obvious example of this mismatch is in the support for
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persistent objects in Java, called {\em Enterprise Java Beans}
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(EJB). In a typical usage, an array of objects is made persistent by
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mapping each object to a row in a table\footnote{If the object is
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stored in normalized relational format, it may span many rows and tables.~\cite{Hibernate}}
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and then issuing queries to
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keep the objects and rows consistent A typical update must confirm
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it has the current version, modify the object, write out a serialized
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version using the SQL {\tt update} command, and commit. This is an
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awkward and slow mechanism, but it does provide transactional
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consistency. \eab{how slow?}
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The DBMS actually has a navigational transaction system within it,
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which would be of great use to EJB, but it is not accessible except
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via the query language. In general, this occurs because the internal
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transaction system is complex and highly optimized for
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high-performance update-in-place transactions (mostly financial).
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In this paper, we introduce a flexible framework for ACID
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transactions, \yad, that is intended to support a broader range of
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applications. Although we believe it could also be the basis of a
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DBMS, there are clearly excellent existing solutions, and we thus
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focus on the rest of the applications. The primary goal of \yad is to
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provide flexible and complete transactions.
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By {\em flexible} we mean that \yad can implement a wide range of
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transactional data structures, that it can support a variety of
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policies for locking, commit, clusters and buffer management. Also,
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it is extensible for both new core operations and new data
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structures. It is this flexibility that allows the support of a wide
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range of systems.
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By {\em complete} we mean full redo/undo logging that supports both
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{\em no force}, which provides durability with only log writes, and
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{\em steal}, which allows dirty pages to be written out prematurely to
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reduce memory pressure.\footnote{A note on terminology: by ``dirty''
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we mean pages that contain uncommitted updates; this is the DB use of
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the word. Similarly, ``no force'' does not mean ``no flush'', which is
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the practice of delaying the log write for better performance at the
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risk of losing committed data. We support both versions.} By complete,
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we also mean support for media recovery, which is the ability to roll
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forward from an archived copy, and support for error-handling,
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clusters, and multithreading. These requirements are difficult to
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meet and form the {\em raison d'\^{e}tre} for \yad: the framework delivers
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these properties in a way that is reusable, thus providing and easy
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way for systems to provide complete transactions.
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With these trends in mind, we have implemented a modular, extensible
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transaction system based on on ARIES that makes as few assumptions as
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possible about application data structures or workload. Where such
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assumptions are inevitable, we have produced narrow APIs that allow
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the application developer to plug in alternative implementations or
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define custom operations. Rather than hiding the underlying complexity
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of the library from developers, we have produced narrow, simple API's
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and a set of invariants that must be maintained in order to ensure
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transactional consistency, allowing application developers to produce
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high-performance extensions with only a little effort.
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Specifically, application developers using \yad can control: 1)
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on-disk representations, 2) access-method implemenations (including
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adding new transactional access methods), 3) the granularity of
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concurrency, 4) the precise semantics of atomicity, isolation and
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durability, 5) request scheduling policies, and 6) the style of
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synchronization (e.g. deadlock detection or avoidance). Developers
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can also exploit application-specific or workload-specific assumptions
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to improve performance.
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These features are enabled by the several mechanisms:
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\begin{description}
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\item[Flexible page formats] provide low level control over
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transactional data representations.
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\item[Extensible log formats] provide high-level control over
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transaction data structures.
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\item [High and low level control over the log] such as calls to ``log this
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operation'' or ``write a compensation record''
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\item [In memory logical logging] provides a data store independendent
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record of application requests, allowing ``in flight'' log
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reordering, manipulation and durability primatives to be
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developed
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\item[Custom durability operations] such as two phase commit's
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prepare call, and savepoints.
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\item[Extensible locking API] provides registration of custom lock managers
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and a generic lock manager implementation.
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\item[\eab{2PC?}]
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\end{description}
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We have produced a high-concurrency, high performance and reusable
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open-source implementation of these concepts. Portions of our
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implementation's API are still changing, but the interfaces to low
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level primitives, and implementations of basic functionality have
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stablized.
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To validate these claims, we walk
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through a sequence of optimizations for a transactional hash
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table in Section~\ref{sub:Linear-Hash-Table}, an object serialization
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scheme in Section~\ref{OASYS}, and a graph traversal algorithm in
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Section~\ref{TransClos}. Bechmarking figures are provided for each
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application. \yad also includes a cluster hash table
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built upon two-phase commit which will not be descibed in detail
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in this paper. Similarly we did not have space to discuss \yad's
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blob implementation, which demonstrates how \yad can
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add transactional primatives to data stored in the file system.
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%To validate these claims, we developed a number of applications such
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%as an efficient persistant object layer, {\em @todo locality preserving
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%graph traversal algorithm}, and a cluster hash table based upon
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%on-disk durability and two-phase commit. We also provide benchmarking
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%results for some of \yad's primitives and the systems that it
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%supports.
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%\begin{enumerate}
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% rcs: The original intro is left intact in the other file; it would be too hard to merge right now.
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% This paragraph is a too narrow; the original was too vague
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% \item {\bf Current transactional systems handle conventional workloads
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% well, but object persistence mechanisms are a mess, as are
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% {}``version oriented'' data stores requiring large, efficient atomic
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% updates.}
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%
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% \item {\bf {}``Impedance mismatch'' is a term that refers to a mismatch
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% between the data model provided by the data store and the data model
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% required by the application. A significant percentage of software
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% development effort is related to dealing with this problem. Related
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% problems that have had less treatment in the literature involve
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% mismatches between other performance-critical and labor intensive
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% programming primitives such as concurrency models, error handling
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% techniques and application development patterns.}
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%% rcs: see ##1## in other file for more examples
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% \item {\bf Past trends in the Database community have been driven by
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% demand for tools that allow extremely specialized (but commercially
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% important!) types of software to be developed quickly and
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% inexpensively. {[}System R, OODBMS, benchmarks, streaming databases,
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% etc{]} This has led to the development of large, monolithic database
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% severs that perform well under many circumstances, but that are not
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% nearly as flexible as modern programming languages or typical
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% in-memory data structure libraries {[}Java Collections,
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% STL{]}. Historically, programming language and software library
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% development has focused upon the production of a wide array of
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% composable general purpose tools, allowing the application developer
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% to pick algorithms and data structures that are most appropriate for
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% the problem at hand.}
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%
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% \item {\bf In the past, modular database and transactional storage
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% implementations have hidden the complexities of page layout,
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% synchronization, locking, and data structure design under relatively
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% narrow interfaces, since transactional storage algorithms'
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% interdependencies and requirements are notoriously complicated.}
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%
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%%Not implementing ARIES any more!
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%
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%
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% \item {\bf With these trends in mind, we have implemented a modular
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% version of ARIES that makes as few assumptions as possible about
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% application data structures or workload. Where such assumptions are
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% inevitable, we have produced narrow APIs that allow the application
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% developer to plug in alternative implementations of the modules that
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% comprise our ARIES implementation. Rather than hiding the underlying
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% complexity of the library from developers, we have produced narrow,
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% simple API's and a set of invariants that must be maintained in
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% order to ensure transactional consistency, allowing application
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% developers to produce high-performance extensions with only a little
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% effort.}
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%
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%\end{enumerate}
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\section{Prior work}
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A large amount of prior work exists in the field of transactional data
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processing. Instead of providing a comprehensive summary of this
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work, we discuss a representative sample of the systems that are
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presently in use, and explain how our work differs from existing
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systems.
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% \item{\bf Databases' Relational model leads to performance /
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% representation problems.}
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%On the database side of things,
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Relational databases excel in areas
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where performance is important, but where the consistency and
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durability of the data are crucial. Often, databases significantly
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outlive the software that uses them, and must be able to cope with
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changes in business practices, system architectures,
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etc., which leads to the relational model~\cite{relational}.
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For simpler applications, such as normal web servers, full DBMS
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solutions are overkill (and expensive). MySQL~\cite{mysql} has
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largely filled this gap by providing a simpler, less concurrent
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database that can work with a variety of storage options including
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Berkeley DB (covered below) and regular files, although these
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alternatives affect the semantics of transactions, and sometimes
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disable or interfere with high level database features. MySQL
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includes these multiple storage engines for performance reasons.
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We argue that by reusing code, and providing for a greater amount
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of customization, a modular storage engine can provide better
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performance, increased transparency and more flexibility then a
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set of monolithic storage engines.\eab{need to discuss other flaws! clusters? what else?}
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%% Databases are designed for circumstances where development time often
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%% dominates cost, many users must share access to the same data, and
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%% where security, scalability, and a host of other concerns are
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%% important. In many, if not most circumstances these issues are
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%% irrelevant or better addressed by application-specfic code. Therefore,
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%% applying a database in
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%% these situations is likely overkill, which may partially explain the
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%% popularity of MySQL~\cite{mysql}, which allows some of these
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%% constraints to be relaxed at the discretion of a developer or end
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%% user. Interestingly, MySQL interfaces with a number of transactional
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%% storage mechanisms to obtain different transactional semantics, and to
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%% make use of various on disk layouts that have been optimized for various
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%% types of applications. As \yad matures, it could concievably replicate
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%% the functionality of many of the MySQL storage management plugins, and
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%% provide a more uniform interface to the DBMS implementation's users.
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The Postgres storage system~\cite{postgres} provides conventional
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database functionality, but can be extended with new index and object
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types. A brief outline of the interfaces necessary to implement data-type extensions was presented by Stonebraker et al.~\cite{newTypes}.
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Although some of the proposed methods are similar to ones presented
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here, \yad also implements a lower-level interface that can coexist
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with these methods. Without these low-level APIs, Postgres
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suffers from many of the limitations inherent to the database systems
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mentioned above. This is because Postgres was designed to provide
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these extensions within the context of the relational model.
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Therefore, these extensions focused upon improving query language
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and indexing support. Instead of focusing upon this, \yad is more
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interested in supporting conventional (imperative) software development
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efforts. Therefore, while we believe that many of the high level
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Postgres interfaces could be built using \yad, we have not yet tried
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to implement them.
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\rcs{In the above paragrap, is imperative too strong a word?}
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% seems to provide
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%equivalents to most of the calls proposed in~\cite{newTypes} except
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%for those that deal with write ordering, (\yad automatically orders
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%writes correctly) and those that refer to relations or application
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%data types, since \yad does not have a built-in concept of a relation.
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However, \yad does provide an iterator interface which we hope to
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extend to provide support for relational algebra, and common
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programming paradigms.
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Object-oriented and XML database systems provide models tied closely
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to programming language abstractions or hierarchical data formats.
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Like the relational model, these models are extremely general, and are
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often inappropriate for applications with stringent performance
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demands, or that use these models in a way that was not anticipated by
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the database vendor. Furthermore, data stored in these databases
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often is fomatted in a way that ties it to a specific application or
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class of algorithms~\cite{lamb}. We will show that \yad can provide
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specialized support for both classes of applications, via a persistent
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object example (Section~\ref{OASYS}) and a graph traversal example
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(Section~\ref{TransClos}).
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%% We do not claim that \yad provides better interoperability then OO or
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%% XML database systems. Instead, we would like to point out that in
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%% cases where the data model must be tied to the application implementation for
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%% performance reasons, it is quite possible that \yad's interoperability
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%% is no worse then that of a database approach. In such cases, \yad can
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%% probably provide a more efficient (and possibly more straightforward)
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%% implementation of the same functionality.
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The impedance mismatch in the use of database systems to implement
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certain types of software has not gone unnoticed.
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%
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%\begin{enumerate}
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% \item{\bf Berkeley DB provides a lower level interface, increasing
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% performance, and providing efficient tree and hash based data
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% structures, but hides the details of storage management and the
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% primitives provided by its transactional layer from
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% developers. Again, only a handful of data formats are made available
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% to the developer.}
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%
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%%rcs: The inflexibility of databases has not gone unnoticed ... or something like that.
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%
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%Still, there are many applications where MySQL is too inflexible.
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In
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order to serve these applications, many software systems have been
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developed. Some are extremely complex, such as semantic file
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systems, where the file system understands the contents of the files
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that it contains, and is able to provide services such as rapid
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search, or file-type specific operations such as thumb-nailing,
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automatic content updates, and so on \cite{Reiser4,WinFS,BeOS,SemanticFSWork,SemanticWeb}. Others are simpler, such as
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Berkeley~DB~\cite{bdb, berkeleyDB}, which provides transactional
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% bdb's recno interface seems to be a specialized b-tree implementation - Rusty
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storage of data in indexed form using a hashtable or tree, or as a queue.
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\eab{need a (careful) dedicated paragraph on Berkeley DB}
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\eab{this paragraph needs work...}
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LRVM is a version of malloc() that provides
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transactional memory, and is similar to an object-oriented database
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but is much lighter weight, and lower level~\cite{lrvm}. Unlike
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the solutions mentioned above, it does not impose limitations upon
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the layout of application data.
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However, its approach does not handle concurrent
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transactions well because the implementation of a concurrent transactional
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data structure typically requires control over log formats (Section~\ref{WALConcurrencyNTA}).
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%However, LRVM's use of virtual memory to implement the buffer pool
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%does not seem to be incompatible with our work, and it would be
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%interesting to consider potential combinartions of our approach
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%with that of LRVM. In particular, the recovery algorithm that is used to
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%implement LRVM could be changed, and \yad's logging interface could
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%replace the narrow interface that LRVM provides. Also,
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LRVM's inter-
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and intra-transactional log optimizations collapse multiple updates
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into a single log entry. In the past, we have implemented such
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optimizations in an ad-hoc fashion in \yad. However, we beleive
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that we have developed the necessary API hooks
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to allow extensions to \yad to transparently coalesce log entries in the future (Section~\ref{TransClos}).
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%\begin{enumerate}
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% \item {\bf Incredibly scalable, simple servers CHT's, google fs?, ...}
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Finally, some applications require incredibly simple, but extremely
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scalable storage mechanisms. Cluster hash tables are a good example
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of the type of system that serves these applications well, due to
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their relative simplicity, and extremely good scalability. Depending
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on the fault model on which a cluster hash table is based, it is
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quite plausible that key portions of the transactional mechanism, such
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as forcing log entries to disk, will be replaced with other durability
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schemes, such as in-memory replication across many nodes, or
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multiplexing log entries across multiple systems. Similarly,
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atomicity semantics may be relaxed under certain circumstances. \yad is unique in that it can support the full range of semantics, from in-memory replication for commit, to full transactions involving multiple entries, which is not supported by any of the current CHT implpementations.
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%Although
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%existing transactional schemes provide many of these features, we
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%believe that there are a number of interesting optimization and
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%replication schemes that require the ability to directly manipulate
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%the recovery log. \yad's host independent logical log format will
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%allow applications to implement such optimizations.
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\rcs{compare and contrast with boxwood!!}
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We believe that \yad can support all of these
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applications. We will demonstrate several of them, but leave
|
|
implementation of a real DBMS, LRVM and Boxwood to future work.
|
|
However, in each case it is relatively easy to see how they would map
|
|
onto \yad.
|
|
|
|
|
|
% \item {\bf Implementations of ARIES and other transactional storage
|
|
% mechanisms include many of the useful primitives described below,
|
|
% but prior implementations either deny application developers access
|
|
% to these primitives {[}??{]}, or make many high-level assumptions
|
|
% about data representation and workload {[}DB Toolkit from
|
|
% Wisconsin??-need to make sure this statement is true!{]}}
|
|
%
|
|
%\end{enumerate}
|
|
|
|
%\item {\bf 3.Architecture }
|
|
|
|
\section{Write-ahead Logging Overview}
|
|
|
|
This section describes how existing write-ahead logging protocols
|
|
implement the four properties of transactional storage: Atomicity,
|
|
Consistency, Isolation and Durability. \yad provides these four
|
|
properties to applications but also allows applications to opt-out of
|
|
certain of properties as appropriate. This can be useful for
|
|
performance reasons or to simplify the mapping between application
|
|
semantics and the storage layer. Unlike prior work, \yad also exposes
|
|
the primitives described below to application developers, allowing
|
|
unanticipated optimizations to be implemented and allowing low-level
|
|
behavior such as recovery semantics to be customized on a
|
|
per-application basis.
|
|
|
|
The write-ahead logging algorithm we use is based upon ARIES, but
|
|
modified for extensibility and flexibility. Because comprehensive
|
|
discussions of write-ahead logging protocols and ARIES are available
|
|
elsewhere~\cite{haerder, aries}, we focus on those details that are
|
|
most important for flexibility.
|
|
|
|
|
|
\subsection{Operations}
|
|
\label{sub:OperationProperties}
|
|
|
|
A transaction consists of an arbitrary combination of actions, that
|
|
will be protected according to the ACID properties mentioned above.
|
|
%Since transactions may be aborted, the effects of an action must be
|
|
%reversible, implying that any information that is needed in order to
|
|
%reverse the action must be stored for future use.
|
|
Typically, the
|
|
information necessary to redo and undo each action is stored in the
|
|
log. We refine this concept and explicitly discuss {\em operations},
|
|
which must be atomically applicable to the page file.
|
|
|
|
\yad is essentially a framework for transactional pages: each page is
|
|
independent and can be recovered independently. For now, we simply
|
|
assume that operations do not span pages. Since single pages are
|
|
written to disk atomically, we have a simple atomic primitive on which
|
|
to build. In Section~\ref{nested-top-actions}, we explain how to
|
|
handle operations that span pages.
|
|
|
|
One unique aspect of \yad, which is not true for ARIES, is that {\em
|
|
normal} operations are defined in terms of redo and undo
|
|
functions. There is no way to modify the page except via the redo
|
|
function.\footnote{Actually, even this can be overridden, but doing so
|
|
complicates recovery semantics, and only should be done as a last
|
|
resort. Currently, this is only done to implement the OASYS flush()
|
|
and update() operations described in Section~\ref{OASYS}.} This has
|
|
the nice property that the REDO code is known to work, since the
|
|
original operation was the exact same ``redo''. In general, the \yad
|
|
philosophy is that you define operations in terms of their REDO/UNDO
|
|
behavior, and then build a user friendly {\em wrapper} interface
|
|
around them. The value of \yad is that it provides a skeleton that
|
|
invokes the redo/undo functions at the {\em right} time, despite
|
|
concurrency, crashes, media failures, and aborted transactions. Also
|
|
unlike ARIES, \yad refines the concept of the wrapper interface,
|
|
making it possible to reschedule operations according to an
|
|
application-level policy (Section~\ref{TransClos}).
|
|
|
|
|
|
|
|
\subsection{The Log Manager}
|
|
\label{log-manager}
|
|
|
|
All actions performed by a committed transaction must be
|
|
restored in the case of a crash, and all actions performed by aborting
|
|
transactions must be undone. In order for \yad to arrange for this
|
|
to happen at recovery, operations must produce log entries that contain
|
|
all information necessary for undo and redo.
|
|
|
|
An important concept in ARIES is the ``log sequence number'' or {\em
|
|
LSN}. An LSN is essentially a virtual timestamp that goes on every
|
|
page; it marks the last log entry that is reflected on the page and
|
|
implies that all previous log entries are also reflected. Given the
|
|
LSN, \yad calculates where to start playing back the log to bring the
|
|
page up to date. The LSN is stored in the page that it refers to so
|
|
that it is always written to disk atomically with the data on the
|
|
page.
|
|
|
|
ARIES (and thus \yad) allows pages to be {\em stolen}, i.e. written
|
|
back to disk while they still contain uncommitted data. It is
|
|
tempting to disallow this, but to do so has serious consequences such as
|
|
a increased need for buffer memory (to hold all dirty pages). Worse,
|
|
as we allow multiple transactions to run concurrently on the same page
|
|
(but not typically the same item), it may be that a given page {\em
|
|
always} contains some uncommitted data and thus can never be written
|
|
back to disk. To handle stolen pages, we log UNDO records that
|
|
we can use to undo the uncommitted changes in case we crash. \yad
|
|
ensures that the UNDO record is durable in the log before the
|
|
page is written to disk and that the page LSN reflects this log entry.
|
|
|
|
Similarly, we do not {\em force} pages out to disk every time a transaction
|
|
commits, as this limits performance. Instead, we log REDO records
|
|
that we can use to redo the operation in case the committed version never
|
|
makes it to disk. \yad ensures that the REDO entry is durable in the
|
|
log before the transaction commits. REDO entries are physical changes
|
|
to a single page (``page-oriented redo''), and thus must be redone in
|
|
order. Therefore, they are produced after any rescheduling or computation
|
|
specfic to the current state of the page file is performed.
|
|
|
|
Eventually, the page makes it to disk, but the REDO entry is still
|
|
useful: we can use it to roll forward a single page from an archived
|
|
copy. Thus one of the nice properties of \yad, which has been tested,
|
|
is that we can handle media failures very gracefully: lost disk blocks
|
|
or even whole files can be recovered given an old version and the log.
|
|
Because pages can be recovered independently from each other, there is
|
|
no need to stop transactions to make a snapshot for archiving: any
|
|
fuzzy snapshot is fine.
|
|
|
|
\subsection{Flexible Logging}
|
|
\label{flex-logging}
|
|
|
|
The above discussion avoided the use of some common terminology
|
|
that should be presented here. {\em Physical logging }
|
|
is the practice of logging physical (byte-level) updates
|
|
and the physical (page-number) addresses to which they are applied.
|
|
|
|
{\em Physiological logging } is what \yad recommends for its redo
|
|
records~\cite{physiological}. The physical address (page number) is
|
|
stored, but the byte offset and the actual delta are stored implicitly
|
|
in the parameters of the redo or undo function. These parameters allow
|
|
the function to update the page in a way that preserves application
|
|
semantics. One common use for this is {\em slotted pages}, which use
|
|
an on-page level of indirection to allow records to be rearranged
|
|
within the page; instead of using the page offset, redo operations use
|
|
the index to locate the data within the page. This allows data within a single
|
|
page to be re-arranged at runtime to produce contiguous regions of
|
|
free space. \yad generalizes this model; for example, the parameters
|
|
passed to the function may utilize application-specific properties in
|
|
order to be significantly smaller than the physical change made to the
|
|
page.
|
|
|
|
{\em Logical logging} uses a higher-level key to specify the
|
|
UNDO/REDO. Since these higher-level keys may affect multiple pages,
|
|
they are prohibited for REDO functions, since our REDO is specific to
|
|
a single page. However, logical logging does make sense for UNDO,
|
|
since we can assume that the pages are physically consistent when we
|
|
apply an UNDO. We thus use logical logging to undo operations that
|
|
span multiple pages, as shown below.
|
|
|
|
%% can only be used for undo entries in \yad, and
|
|
%% stores a logical address (the key of a hash table, for instance)
|
|
%% instead of a physical address. As we will see later, these operations
|
|
%% may affect multiple pages. This allows the location of data in the
|
|
%% page file to change, even if outstanding transactions may have to roll
|
|
%% back changes made to that data. Clearly, for \yad to be able to apply
|
|
%% logical log entries, the page file must be physically consistent,
|
|
%% ruling out use of logical logging for redo operations.
|
|
|
|
\yad supports all three types of logging, and allows developers to
|
|
register new operations, which is the key to its extensibility. After
|
|
discussing \yad's architecture, we will revisit this topic with a number of
|
|
concrete examples.
|
|
|
|
|
|
|
|
\subsection{Isolation}
|
|
\label{Isolation}
|
|
|
|
We allow transactions to be interleaved, allowing concurrent access to
|
|
application data and exploiting opportunities for hardware
|
|
parallelism. Therefore, each action must assume that the
|
|
physical data upon which it relies may contain uncommitted
|
|
information and that this information may have been produced by a
|
|
transaction that will be aborted by a crash or by the application.
|
|
%(The latter is actually harder, since there is no ``fate sharing''.)
|
|
|
|
% Furthermore, aborting
|
|
%and committing transactions may be interleaved, and \yad does not
|
|
%allow cascading aborts,%
|
|
%\footnote{That is, by aborting, one transaction may not cause other transactions
|
|
%to abort. To understand why operation implementors must worry about
|
|
%this, imagine that transaction A split a node in a tree, transaction
|
|
%B added some data to the node that A just created, and then A aborted.
|
|
%When A was undone, what would become of the data that B inserted?%
|
|
%} so
|
|
|
|
Therefore, in order to implement an operation we must also implement
|
|
synchronization mechanisms that isolate the effects of transactions
|
|
from each other. We use the term {\em latching} to refer to
|
|
synchronization mechanisms that protect the physical consistency of
|
|
\yad's internal data structures and the data store. We say {\em
|
|
locking} when we refer to mechanisms that provide some level of
|
|
isolation among transactions.
|
|
|
|
\yad operations that allow concurrent requests must provide a latching
|
|
(but not locking) implementation that is guaranteed not to deadlock.
|
|
These implementations need not ensure consistency of application data.
|
|
Instead, they must maintain the consistency of any underlying data
|
|
structures. Generally, latches do not persist across calls performed
|
|
by high-level code, as that could lead to deadlock.
|
|
|
|
For locking, due to the variety of locking protocols available, and
|
|
their interaction with application
|
|
workloads~\cite{multipleGenericLocking}, we leave it to the
|
|
application to decide what degree of isolation is appropriate. \yad
|
|
provides a default page-level lock manager that performs deadlock
|
|
detection, although we expect many applications to make use of
|
|
deadlock-avoidance schemes, which are already prevalent in
|
|
multithreaded application development. The Lock Manager is flexible
|
|
enough to also provide index locks for hashtable implementations, and more complex locking protocols.
|
|
|
|
For example, it would be relatively easy to build a strict two-phase
|
|
locking hierarchical lock
|
|
manager~\cite{hierarcicalLocking,hierarchicalLockingOnAriesExample} on
|
|
top of \yad. Such a lock manager would provide isolation guarantees
|
|
for all applications that make use of it. However, applications that
|
|
make use of such a lock manager must handle deadlocked transactions
|
|
that have been aborted by the lock manager. This is easy if all of
|
|
the state is managed by \yad, but other state such as thread stacks
|
|
must be handled by the application, much like exception handling.
|
|
|
|
Conversely, many applications do not require such a general scheme.
|
|
For instance, an IMAP server can employ a simple lock-per-folder
|
|
approach and use lock-ordering techniques to avoid deadlock. This
|
|
avoids the complexity of dealing with transactions that abort due
|
|
to deadlock, and also removes the runtime cost of restarting
|
|
transactions.
|
|
|
|
\yad provides a lock manager API that allows all three variations
|
|
(among others). In particular, it provides upcalls on commit/abort so
|
|
that the lock manager can release locks at the right time. We will
|
|
revisit this point in more detail when we describe some of the example
|
|
operations.
|
|
|
|
|
|
|
|
\subsection{Nested Top Actions}
|
|
\label{nested-top-actions}
|
|
|
|
|
|
\eab{here is the new location for this section}
|
|
|
|
explain that with a ``big lock'' it is easy to write transactional data structure. (trivial example?)
|
|
|
|
but we want more concurrency, which means 2 problems: 1) finer grain locking and 2) weaker isolation since interleaved transactions seeing the same structure
|
|
|
|
cascading aborts problem
|
|
|
|
solution: don't undo structural changes, just commit them even if the causeing xact fails. then logical undo to fix the aborted xact.
|
|
|
|
% @todo this section is confusing. Re-write it in light of page spanning operations, and the fact that we assumed opeartions don't span pages above. A nested top action (or recoverable, carefully ordered operation) is simply a way of causing a page spanning operation to be applied atomically. (And must be used in conjunction with latches...) Note that the combination of latching and NTAs makes the implementation of a page spanning operation no harder than normal multithreaded software development.
|
|
|
|
%% \textcolor{red}{OLD TEXT:} Section~\ref{sub:OperationProperties} states that \yad does not allow
|
|
%% cascading aborts, implying that operation implementors must protect
|
|
%% transactions from any structural changes made to data structures by
|
|
%% uncommitted transactions, but \yad does not provide any mechanisms
|
|
%% designed for long-term locking. However, one of \yad's goals is to
|
|
%% make it easy to implement custom data structures for use within safe,
|
|
%% multi-threaded transactions. Clearly, an additional mechanism is
|
|
%% needed.
|
|
|
|
%% The solution is to allow portions of an operation to ``commit'' before
|
|
%% the operation returns.\footnote{We considered the use of nested top actions, which \yad could easily
|
|
%% support. However, we currently use the slightly simpler (and lighter-weight)
|
|
%% mechanism described here. If the need arises, we will add support
|
|
%% for nested top actions.}
|
|
%% An operation's wrapper is just a normal function, and therefore may
|
|
%% generate multiple log entries. First, it writes an undo-only entry
|
|
%% to the log. This entry will cause the \emph{logical} inverse of the
|
|
%% current operation to be performed at recovery or abort, must be idempotent,
|
|
%% and must fail gracefully if applied to a version of the database that
|
|
%% does not contain the results of the current operation. Also, it must
|
|
%% behave correctly even if an arbitrary number of intervening operations
|
|
%% are performed on the data structure.
|
|
|
|
%% Next, the operation writes one or more redo-only log entries that may
|
|
%% perform structural modifications to the data structure. These redo
|
|
%% entries have the constraint that any prefix of them must leave the
|
|
%% database in a consistent state, since only a prefix might execute
|
|
%% before a crash. This is not as hard as it sounds, and in fact the
|
|
%% $B^{LINK}$ tree~\cite{blink} is an example of a B-Tree implementation
|
|
%% that behaves in this way, while the linear hash table implementation
|
|
%% discussed in Section~\ref{sub:Linear-Hash-Table} is a scalable hash
|
|
%% table that meets these constraints.
|
|
|
|
%% %[EAB: I still think there must be a way to log all of the redoes
|
|
%% %before any of the actions take place, thus ensuring that you can redo
|
|
%% %the whole thing if needed. Alternatively, we could pin a page until
|
|
%% %the set completes, in which case we know that that all of the records
|
|
%% %are in the log before any page is stolen.]
|
|
|
|
|
|
\subsection{Recovery}
|
|
\label{recovery}
|
|
|
|
%In this section, we present the details of crash recovery, user-defined logging, and atomic actions that commit even if their enclosing transaction aborts.
|
|
%
|
|
%\subsubsection{ANALYSIS / REDO / UNDO}
|
|
|
|
We use the same basic recovery strategy as ARIES, which consists of
|
|
three phases: {\em analysis}, {\em redo} and {\em undo}. The first,
|
|
analysis, is implemented by \yad, but will not be discussed in this
|
|
paper. The second, redo, ensures that each redo entry is applied to
|
|
its corresponding page exactly once. The third phase, undo, rolls
|
|
back any transactions that were active when the crash occurred, as
|
|
though the application manually aborted them with the ``abort''
|
|
function call.
|
|
|
|
After the analysis phase, the on-disk version of the page file is in
|
|
the same state it was in when \yad crashed. This means that some
|
|
subset of the page updates performed during normal operation have made
|
|
it to disk, and that the log contains full redo and undo information
|
|
for the version of each page present in the page
|
|
file.\footnote{Although this discussion assumes that the entire log is
|
|
present, it also works with a truncated log and an archive copy.}
|
|
Because we make no further assumptions regarding the order in which
|
|
pages were propagated to disk, redo must assume that any data
|
|
structures, lookup tables, etc. that span more than a single page are
|
|
in an inconsistent state. Therefore, as the redo phase re-applies the
|
|
information in the log to the page file, it must address all pages
|
|
directly.
|
|
|
|
This implies that the redo information for each operation in the log
|
|
must contain the physical address (page number) of the information
|
|
that it modifies, and the portion of the operation executed by a
|
|
single redo log entry must only rely upon the contents of that
|
|
page. (Since we assume that pages are propagated to disk atomically,
|
|
the redo phase can rely upon information contained within a single
|
|
page.)
|
|
|
|
Once redo completes, we have essentially repeated history: replaying
|
|
all redo entries to ensure that the page file is in a physically
|
|
consistent state. However, we also replayed updates from transactions
|
|
that should be aborted, as they were still in progress at the time of
|
|
the crash. The final stage of recovery is the undo phase, which simply
|
|
aborts all uncommitted transactions. Since the page file is physically
|
|
consistent, the transactions may be aborted exactly as they would be
|
|
during normal operation.
|
|
|
|
|
|
|
|
|
|
\section{Extendible transaction architecture}
|
|
|
|
As long as operation implementations obey the atomicity constraints
|
|
outlined above, and the algorithms they use correctly manipulate
|
|
on-disk data structures, the write ahead logging protocol will provide
|
|
the application with the ACID transactional semantics, and provide
|
|
high performance, highly concurrent and scalable access to the
|
|
application data that is stored in the system. This suggests a
|
|
natural partitioning of transactional storage mechanisms into two
|
|
parts.
|
|
|
|
The first piece implements the write-ahead logging component,
|
|
including a buffer pool, logger, and (optionally) a lock manager.
|
|
The complexity of the write ahead logging component lies in
|
|
determining exactly when the undo and redo operations should be
|
|
applied, when pages may be flushed to disk, log truncation, logging
|
|
optimizations, and a large number of other data-independent extensions
|
|
and optimizations.
|
|
|
|
The second component provides the actual data structure
|
|
implementations, policies regarding page layout (other than the
|
|
location of the LSN field), and the implementation of any application-specific operations.
|
|
As long as each layer provides well defined interfaces, the application,
|
|
operation implementation, and write ahead logging component can be
|
|
independently extended and improved.
|
|
|
|
We have implemented a number of simple, high performance
|
|
and general purpose data structures. These are used by our sample
|
|
applications, and as building blocks for new data structures. Example
|
|
data structures include two distinct linked list implementations, and
|
|
an extendible array. Surprisingly, even these simple operations have
|
|
important performance characteristics that are not available from
|
|
existing systems.
|
|
|
|
The remainder of this section is devoted to a description of the
|
|
various primatives that \yad provides to application developers.
|
|
|
|
|
|
%% @todo where does this text go??
|
|
|
|
%\subsection{Normal Processing}
|
|
%
|
|
%%% @todo draw the new version of this figure, with two boxes for the
|
|
%%% operation that interface w/ the logger and page file.
|
|
%
|
|
%Operation implementors follow the pattern in Figure \ref{cap:Tset},
|
|
%and need only implement a wrapper function (``Tset()'' in the figure,
|
|
%and register a pair of redo and undo functions with \yad.
|
|
%The Tupdate function, which is built into \yad, handles most of the
|
|
%runtime complexity. \yad uses the undo and redo functions
|
|
%during recovery in the same way that they are used during normal
|
|
%processing.
|
|
%
|
|
%The complexity of the ARIES algorithm lies in determining
|
|
%exactly when the undo and redo operations should be applied. \yad
|
|
%handles these details for the implementors of operations.
|
|
%
|
|
%
|
|
%\subsubsection{The buffer manager}
|
|
%
|
|
%\yad manages memory on behalf of the application and prevents pages
|
|
%from being stolen prematurely. Although \yad uses the STEAL policy
|
|
%and may write buffer pages to disk before transaction commit, it still
|
|
%must make sure that the UNDO log entries have been forced to disk
|
|
%before the page is written to disk. Therefore, operations must inform
|
|
%the buffer manager when they write to a page, and update the LSN of
|
|
%the page. This is handled automatically by the write methods that \yad
|
|
%provides to operation implementors (such as writeRecord()). However,
|
|
%it is also possible to create your own low-level page manipulation
|
|
%routines, in which case these routines must follow the protocol.
|
|
%
|
|
%
|
|
%\subsubsection{Log entries and forward operation\\ (the Tupdate() function)\label{sub:Tupdate}}
|
|
%
|
|
%In order to handle crashes correctly, and in order to undo the
|
|
%effects of aborted transactions, \yad provides operation implementors
|
|
%with a mechanism to log undo and redo information for their actions.
|
|
%This takes the form of the log entry interface, which works as follows.
|
|
%Operations consist of a wrapper function that performs some pre-calculations
|
|
%and perhaps acquires latches. The wrapper function then passes a log
|
|
%entry to \yad. \yad passes this entry to the logger, {\em and then processes
|
|
%it as though it were redoing the action during recovery}, calling a function
|
|
%that the operation implementor registered with
|
|
%\yad. When the function returns, control is passed back to the wrapper
|
|
%function, which performs any post processing (such as generating return
|
|
%values), and releases any latches that it acquired. %
|
|
%\begin{figure}
|
|
%%\begin{center}
|
|
%%\includegraphics[%
|
|
%% width=0.70\columnwidth]{TSetCall.pdf}
|
|
%%\end{center}
|
|
%
|
|
%\caption{\label{cap:Tset}Runtime behavior of a simple operation. Tset() and redoSet() are
|
|
%extensions that implement a new operation, while Tupdate() is built in. New operations
|
|
%need not be aware of the complexities of \yad.}
|
|
%\end{figure}
|
|
%
|
|
%This way, the operation's behavior during recovery's redo phase (an
|
|
%uncommon case) will be identical to the behavior during normal processing,
|
|
%making it easier to spot bugs. Similarly, undo and redo operations take
|
|
%an identical set of parameters, and undo during recovery is the same
|
|
%as undo during normal processing. This makes recovery bugs more obvious and allows redo
|
|
%functions to be reused to implement undo.
|
|
%
|
|
%Although any latches acquired by the wrapper function will not be
|
|
%reacquired during recovery, the redo phase of the recovery process
|
|
%is single threaded. Since latches acquired by the wrapper function
|
|
%are held while the log entry and page are updated, the ordering of
|
|
%the log entries and page updates associated with a particular latch
|
|
%will be consistent. Because undo occurs during normal operation,
|
|
%some care must be taken to ensure that undo operations obtain the
|
|
%proper latches.
|
|
%
|
|
|
|
%\subsection{Summary}
|
|
%
|
|
%This section presented a relatively simple set of rules and patterns
|
|
%that a developer must follow in order to implement a durable, transactional
|
|
%and highly-concurrent data structure using \yad:
|
|
|
|
% rcs:The last paper contained a tutorial on how to use \yad, which
|
|
% should be shortend or removed from this version, so I didn't paste it
|
|
% in. However, it made some points that belong in this section
|
|
% see: ##2##
|
|
|
|
%\begin{enumerate}
|
|
%
|
|
% need block diagram here. 4 blocks:
|
|
%
|
|
% App specific:
|
|
%
|
|
% - operation wrapper
|
|
% - operation redo fcn
|
|
%
|
|
% \yad core:
|
|
%
|
|
% - logger
|
|
% - page file
|
|
%
|
|
% lock manager, etc can come later...
|
|
%
|
|
|
|
% \item {\bf {}``Write ahead logging protocol'' vs {}``Data structure implementation''}
|
|
%
|
|
%A \yad operation consists of some code that manipulates data that has
|
|
%been stored in transactional pages. These operations implement
|
|
%high-level actions that are composed into transactions. They are
|
|
%implemented at a relatively low level, and have full access to the
|
|
%ARIES algorithm. Applications are implemented on top of the
|
|
%interfaces provided by an application-specific set of operations.
|
|
%This allows the the application, the operation, and \yad itself to be
|
|
%independently improved.
|
|
|
|
\subsection{Operation Implementation}
|
|
|
|
% \item {\bf ARIES provides {}``transactional pages'' }
|
|
|
|
\yad is designed to allow application developers to easily add new
|
|
data representations and data structures by defining new operations
|
|
that can be used to provide transactions. There are a number of
|
|
constraints that these extensions must obey:
|
|
|
|
\begin{itemize}
|
|
\item Pages should only be updated inside of a redo or undo function.
|
|
\item An update to a page atomically updates the LSN by pinning the page.
|
|
\item If the data read by the wrapper function must match the state of
|
|
the page that the redo function sees, then the wrapper should latch
|
|
the relevant data.
|
|
\item Redo operations address {\em pages} by physical offset,
|
|
while Undo operations address {\em data} with a permanent address (such as an index key)
|
|
\end{itemize}
|
|
|
|
There are multiple ways to ensure the atomicity of operations:
|
|
|
|
{\em @todo this list could be part of the broken section called ``Concurrency and Aborted Transactions''}
|
|
|
|
\begin{itemize}
|
|
\item An operation that spans pages can be made atomic by simply
|
|
wrapping it in a nested top action and obtaining appropriate latches
|
|
at runtime. This approach reduces development of atomic page spanning
|
|
operations to something very similar to conventional multithreaded
|
|
development using mutexes for synchroniztion. Unfortunately, this
|
|
mode of operation writes redundant undo entry to the log, and has
|
|
performance implications that will be discussed later. However, for
|
|
most circumstances, the ease of development with nested top actions
|
|
outweighs the difficulty verifying the correctness of implementations
|
|
that use the next method.
|
|
|
|
\item It nested top actions are not used, an undo operation must
|
|
correctly update a data structure if any prefix of its corresponding
|
|
redo operations are applied to the structure, and if any number of
|
|
intervening operations are applied to the structure. In the best
|
|
case, this simply means that the operation should fail gracefully if
|
|
the change it should undo is not already reflected in the page file.
|
|
However, if the page file may temporarily lose consistency, then the
|
|
undo operation must be aware of this, and be able to handle all cases
|
|
that could arise at recovery time. Figure~\ref{linkedList} provides
|
|
an example of the sort of details that can arise in this case.
|
|
\end{itemize}
|
|
|
|
We believe that it is reasonable to expect application developers to
|
|
correctly implement extensions that make use of Nested Top Actions.
|
|
|
|
Because undo and redo operations during normal operation and recovery
|
|
are similar, most bugs will be found with conventional testing
|
|
strategies. There is some hope of verifying atomicity~\cite{StaticAnalysisReference} if
|
|
nested top actions are used. Furthermore, we plan to develop a
|
|
number of tools that will automatically verify or test new operation
|
|
implementations' behavior with respect to these constraints, and
|
|
behavior during recovery. For example, whether or not nested top actions are
|
|
used, randomized testing or more advanced sampling techniques~\cite{OSDIFSModelChecker}
|
|
could be used to check operation behavior under various recovery
|
|
conditions and thread schedules.
|
|
|
|
However, as we will see in Section~\ref{OASYS}, some applications may
|
|
have valid reasons to ``break'' recovery semantics. It is unclear how
|
|
useful such testing tools will be in this case.
|
|
|
|
Note that the ARIES algorithm is extremely complex, and we have left
|
|
out most of the details needed to understand how ARIES works, or to
|
|
implement it correctly.
|
|
Yet, we believe we have covered everything that a programmer needs
|
|
to know in order to implement new transactional data structures.
|
|
This was possible due to the careful encapsulation
|
|
of portions of the ARIES algorithm, which is the feature that
|
|
most strongly differentiates \yad from other, similar libraries.
|
|
|
|
|
|
\subsection{Example: Increment}
|
|
|
|
\begin{small}
|
|
\begin{verbatim}
|
|
// Log record that holds arguments for undo/redo.
|
|
|
|
typedef struct {
|
|
int amount;
|
|
} inc_dec_t;
|
|
|
|
int Tincrement(int xid, recordid rid, int amount) {
|
|
// rec will be serialized to the log.
|
|
inc_dec_t rec;
|
|
rec.amount = amount;
|
|
|
|
// write a log entry, then execute it
|
|
Tupdate(xid, rid, &rec, OP_INCREMENT);
|
|
|
|
// return the incremented value
|
|
int new_value;
|
|
// wrappers can call other wrappers
|
|
Tread(xid, rid, &new_value);
|
|
return new_value;
|
|
}
|
|
|
|
// p is the bufferPool's current copy of the page.
|
|
int operateIncrement(int xid, Page* p, lsn_t lsn,
|
|
recordid rid, const void *d) {
|
|
inc_dec_t * arg = (inc_dec_t)d;
|
|
int i;
|
|
|
|
latchRecord(rid);
|
|
readRecord(xid, p, rid, &i); // read current value
|
|
i += arg->amount;
|
|
// writeRecord updates the page and the LSN
|
|
writeRecord(xid, p, lsn, rid, &i);
|
|
unlatchRecord(rid);
|
|
return 0; // no error
|
|
}
|
|
|
|
// snippet of code that registers the operation
|
|
|
|
// first set up the normal case
|
|
ops[OP_INCREMENT].implementation= &operateIncrement;
|
|
ops[OP_INCREMENT].argumentSize = sizeof(inc_dec_t);
|
|
|
|
// set the REDO to be the same as normal operation
|
|
// Sometime is useful to have them differ.
|
|
ops[OP_INCREMENT].redoOperation = OP_INCREMENT;
|
|
|
|
// set UNDO to be the inverse
|
|
ops[OP_INCREMENT].undoOperation = OP_DECREMENT;
|
|
\end{verbatim}
|
|
\end{small}
|
|
|
|
%We hope that this will increase the availability of transactional
|
|
%data primitives to application developers.
|
|
|
|
|
|
|
|
%\begin{enumerate}
|
|
|
|
% \item {\bf Log entries as a programming primitive }
|
|
|
|
%rcs: Not quite happy with existing text; leaving this section out for now.
|
|
%
|
|
% Need to make some points the old text did not make:
|
|
%
|
|
% - log optimizations (for space) can be very important.
|
|
% - many small writes
|
|
% - large write of small diff
|
|
% - app overwrites page many times per transaction (for example, database primary key)
|
|
% We have solutions to #1 and 2. A general solution to #3 involves 'scrubbing' a logical log of redundant operations.
|
|
%
|
|
% - Talk about virtual async log thing...
|
|
% - reordering
|
|
% - distribution
|
|
|
|
% \item {\bf Error handling with compensations as {}``abort() for C''}
|
|
|
|
% stylized usage of Weimer -> cheap error handling, no C compiler modifications...
|
|
|
|
% \item {\bf Concurrency models are fundamentally application specific, but
|
|
% record/page level locking and index locks are often a nice trade-off} @todo We sort of cover this above
|
|
|
|
% \item {\bf {}``latching'' vs {}``locking'' - data structures internal to
|
|
% \yad are protected by \yad, allowing applications to reason in
|
|
% terms of logical data addresses, not physical representation. Since
|
|
% the application may define a custom representation, this seems to be
|
|
% a reasonable tradeoff between application complexity and
|
|
% performance.}
|
|
%
|
|
% \item {\bf Non-interleaved transactions vs. Nested top actions
|
|
% vs. Well-ordered writes.}
|
|
|
|
% key point: locking + nested top action = 'normal' multithreaded
|
|
%software development! (modulo 'obvious' mistakes like algorithmic
|
|
%errors in data structures, errors in the log format, etc)
|
|
|
|
% second point: more difficult techniques can be used to optimize
|
|
% log bandwidth. _in ways that other techniques cannot provide_
|
|
% to application developers.
|
|
|
|
|
|
|
|
%\end{enumerate}
|
|
|
|
%\section{Other operations (move to the end of the paper?)}
|
|
%
|
|
%\begin{enumerate}
|
|
%
|
|
% \item {\bf Atomic file-based transactions.
|
|
%
|
|
% Prototype blob implementation using force, shadow copies (it is trivial to implement given transactional
|
|
% pages).
|
|
%
|
|
% File systems that implement atomic operations may allow
|
|
% data to be stored durably without calling flush() on the data
|
|
% file.
|
|
%
|
|
% Current implementation useful for blobs that are typically
|
|
% changed entirely from update to update, but smarter implementations
|
|
% are certainly possible.
|
|
%
|
|
% The blob implementation primarily consists
|
|
% of special log operations that cause file system calls to be made at
|
|
% appropriate times, and is simple, so it could easily be replaced by
|
|
% an application that frequently update small ranges within blobs, for
|
|
% example.}
|
|
|
|
%\subsection{Array List}
|
|
% Example of how to avoid nested top actions
|
|
%\subsection{Linked Lists}
|
|
% Example of two different page allocation strategies.
|
|
% Explain how to implement linked lists w/out NTA's (even though we didn't do that)?
|
|
|
|
%\subsection{Linear Hash Table\label{sub:Linear-Hash-Table}}
|
|
% % The implementation has changed too much to directly reuse old section, other than description of linear hash tables:
|
|
%
|
|
%Linear hash tables are hash tables that are able to extend their bucket
|
|
%list incrementally at runtime. They work as follows. Imagine that
|
|
%we want to double the size of a hash table of size $2^{n}$, and that
|
|
%the hash table has been constructed with some hash function $h_{n}(x)=h(x)\, mod\,2^{n}$.
|
|
%Choose $h_{n+1}(x)=h(x)\, mod\,2^{n+1}$ as the hash function for
|
|
%the new table. Conceptually we are simply prepending a random bit
|
|
%to the old value of the hash function, so all lower order bits remain
|
|
%the same. At this point, we could simply block all concurrent access
|
|
%and iterate over the entire hash table, reinserting values according
|
|
%to the new hash function.
|
|
%
|
|
%However, because of the way we chose $h_{n+1}(x),$ we know that the
|
|
%contents of each bucket, $m$, will be split between bucket $m$ and
|
|
%bucket $m+2^{n}$. Therefore, if we keep track of the last bucket that
|
|
%was split, we can split a few buckets at a time, resizing the hash
|
|
%table without introducing long pauses while we reorganize the hash
|
|
%table~\cite{lht}.
|
|
%
|
|
%We can handle overflow using standard techniques;
|
|
%\yad's linear hash table simply uses the linked list implementations
|
|
%described above. The bucket list is implemented by reusing the array
|
|
%list implementation described above.
|
|
%
|
|
%% Implementation simple! Just slap together the stuff from the prior two sections, and add a header + bucket locking.
|
|
%
|
|
% \item {\bf Asynchronous log implementation/Fast
|
|
% writes. Prioritization of log writes (one {}``log'' per page)
|
|
% implies worst case performance (write, then immediate read) will
|
|
% behave on par with normal implementation, but writes to portions of
|
|
% the database that are not actively read should only increase system
|
|
% load (and not directly increase latency)} This probably won't go
|
|
% into the paper. As long as the buffer pool isn't thrashing, this is
|
|
% not much better than upping the log buffer.
|
|
%
|
|
% \item {\bf Custom locking. Hash table can support all of the SQL
|
|
% degrees of transactional consistency, but can also make use of
|
|
% application-specific invariants and synchronization to accommodate
|
|
% deadlock-avoidance, which is the model most naturally supported by C
|
|
% and other programming languages.} This is covered above, but we
|
|
% might want to mention that we have a generic lock manager
|
|
% implemenation that operation implementors can reuse. The argument
|
|
% would be stronger if it were a generic hierarchical lock manager.
|
|
|
|
%Many plausible lock managers, can do any one you want.
|
|
%too much implemented part of DB; need more 'flexible' substrate.
|
|
|
|
%\end{enumerate}
|
|
|
|
\section{Experimental setup}
|
|
|
|
The following sections describe the design and implementation of
|
|
non-trivial functionality using \yad, and use Berkeley DB for
|
|
comparison where appropriate. We chose Berkeley DB because, among
|
|
commonly used systems, it provides transactional storage that is most
|
|
similar to \yad. Also, it is available both in open-source form, and as a
|
|
commercially maintained and supported program. Finally, it has been
|
|
designed for high-performance, high-concurrency environments.
|
|
|
|
All benchmarks were run on and Intel .... {\em @todo} with the
|
|
following Berkeley DB flags enabled {\em @todo}. We used the copy
|
|
of Berkeley DB 4.2.52 as it existed in Debian Linux's testing
|
|
branch during March of 2005. These flags were chosen to match
|
|
Berkeley DB's configuration to \yad's as closely as possible. In cases where
|
|
Berkeley DB implements a feature that is not provided by \yad, we
|
|
enable the feature if it improves Berkeley DB's performance, but
|
|
disable the feature if it degrades Berkeley DB's performance. With
|
|
the exception of \yad's optimized serialization mechanism in the
|
|
OASYS test, the two libraries provide the same set of transactional
|
|
semantics during each test.
|
|
|
|
Optimizations to Berkeley DB that we performed included disabling the
|
|
lock manager (we still use ``Free Threaded'' handles for all tests.
|
|
This yielded a significant increase in performance because it removed
|
|
the possbility of transaction deadlock, abort and repetition.
|
|
However, after introducing this optimization high concurrency Berkeley
|
|
DB benchmarks became unstable, suggesting that we are calling the
|
|
library incorrectly. We believe that this problem would only improve
|
|
Berkeley DB's performance in the benchmarks that we ran, so we
|
|
disabled the lock manager for our tests. Without this optimization,
|
|
Berkeley DB's performance for Figure~\ref{fig:TPS} strictly decreased as
|
|
concurrency increased because of lock contention and deadlock resolution.
|
|
|
|
We increased Berkeley DB's buffer cache and log buffer sizes, to match
|
|
\yad's default sizes. Running with \yad's (larger) default values
|
|
roughly doubled Berkeley DB's performance on the bulk loading tests.
|
|
|
|
Finally, we would like to point out that we expended a considerable
|
|
effort tuning Berkeley DB, and that our efforts significantly
|
|
improved Berkeley DB's performance on these tests. Although further
|
|
tuning by Berkeley DB experts might improve Berkeley DB's
|
|
numbers, we think that we have produced a reasonbly fair comparison
|
|
between the two systems. The source code and scripts we used to
|
|
generate this data is publicly available, and we have been able to
|
|
reproduce the trends reported here on multiple systems.
|
|
|
|
|
|
\section{Linear Hash Table\label{sub:Linear-Hash-Table}}
|
|
|
|
\begin{figure*}
|
|
\includegraphics[%
|
|
width=1\columnwidth]{bulk-load.pdf}
|
|
\includegraphics[%
|
|
width=1\columnwidth]{bulk-load-raw.pdf}
|
|
\caption{\label{fig:BULK_LOAD} This test measures the raw performance
|
|
of the data structures provided by \yad and Berkeley DB. Since the
|
|
test is run as a single transaction, overheads due to synchronous I/O
|
|
and logging are minimized.
|
|
{\em @todo of course, these aren't the final graphs. I plan to add points for 1 insertion, fix
|
|
the stair stepping, and split the numbers into 'hashtable' and 'raw
|
|
access' graphs.}}
|
|
\end{figure*}
|
|
|
|
%\subsection{Conventional workloads}
|
|
|
|
%Existing database servers and transactional libraries are tuned to
|
|
%support OLTP (Online Transaction Processing) workloads well. Roughly
|
|
%speaking, the workload of these systems is dominated by short
|
|
%transactions and response time is important.
|
|
%
|
|
%We are confident that a
|
|
%sophisticated system based upon our approach to transactional storage
|
|
%will compete well in this area, as our algorithm is based upon ARIES,
|
|
%which is the foundation of IBM's DB/2 database. However, our current
|
|
%implementation is geared toward simpler, specialized applications, so
|
|
%we cannot verify this directly. Instead, we present a number of
|
|
%microbenchmarks that compare our system against Berkeley DB, the most
|
|
%popular transactional library. Berkeley DB is a mature product and is
|
|
%actively maintained. While it currently provides more functionality
|
|
%than our current implementation, we believe that our architecture
|
|
%could support a broader range of features than those that are provided
|
|
%by BerkeleyDB's monolithic interface.
|
|
|
|
Hash table indices are common in databases, and are also applicable to
|
|
a large number of applications. In this section, we describe how we
|
|
implemented two variants of Linear Hash tables on top of \yad, and
|
|
describe how \yad's flexible page and log formats enable interesting
|
|
optimizations. We also argue that \yad makes it trivial to produce
|
|
concurrent data structure implementations, and provide a set of
|
|
mechanical steps that will allow a non-concurrent data structure
|
|
implementation to be used by interleaved transactions.
|
|
|
|
Finally, we describe a number of more complex optimizations, and
|
|
compare the performance of our optimized implementation, the
|
|
straightforward implementation, and Berkeley DB's hash implementation.
|
|
The straightforward implementation is used by the other applications
|
|
presented in this paper, and is \yad's default hashtable
|
|
implementation. We chose this implmentation over the faster optimized
|
|
hash table in order to this emphasize that it is easy to implement
|
|
high-performance transactional data structures with \yad, and because
|
|
it is easy to understand.
|
|
|
|
We decided to implement a {\em linear} hash table. Linear hash tables are
|
|
hash tables that are able to extend their bucket list incrementally at
|
|
runtime. They work as follows. Imagine that we want to double the size
|
|
of a hash table of size $2^{n}$, and that the hash table has been
|
|
constructed with some hash function $h_{n}(x)=h(x)\, mod\,2^{n}$.
|
|
Choose $h_{n+1}(x)=h(x)\, mod\,2^{n+1}$ as the hash function for the
|
|
new table. Conceptually we are simply prepending a random bit to the
|
|
old value of the hash function, so all lower order bits remain the
|
|
same. At this point, we could simply block all concurrent access and
|
|
iterate over the entire hash table, reinserting values according to
|
|
the new hash function.
|
|
|
|
However,
|
|
%because of the way we chose $h_{n+1}(x),$
|
|
we know that the
|
|
contents of each bucket, $m$, will be split between bucket $m$ and
|
|
bucket $m+2^{n}$. Therefore, if we keep track of the last bucket that
|
|
was split, we can split a few buckets at a time, resizing the hash
|
|
table without introducing long pauses.~\cite{lht}.
|
|
|
|
In order to implement this scheme, we need two building blocks. We
|
|
need a data structure that can handle bucket overflow, and we need to
|
|
be able index into an expandible set of buckets using the bucket
|
|
number.
|
|
|
|
\subsection{The Bucket List}
|
|
|
|
\yad provides access to transactional storage with page-level
|
|
granularity and stores all record information in the same page file.
|
|
Therefore, our bucket list must be partitioned into page size chunks,
|
|
and (since other data structures may concurrently use the page file)
|
|
we cannot assume that the entire bucket list is contiguous.
|
|
Therefore, we need some level of indirection to allow us to map from
|
|
bucket number to the record that stores the corresponding bucket.
|
|
|
|
\yad's allocation routines allow applications to reserve regions of
|
|
contiguous pages. Therefore, if we are willing to allocate the bucket
|
|
list in sufficiently large chunks, we can limit the number of such
|
|
contiguous regions that we will require. Borrowing from Java's
|
|
ArrayList structure, we initially allocate a fixed number of pages to
|
|
store buckets, and allocate more pages as necessary, doubling the
|
|
number allocated each time.
|
|
|
|
We allocate a fixed amount of storage for each bucket, so we know how
|
|
many buckets will fit in each of these pages. Therefore, in order to
|
|
look up an aribtrary bucket, we simply need to calculate which chunk
|
|
of allocated pages will contain the bucket, and then the offset the
|
|
appropriate page within that group of allocated pages.
|
|
|
|
%Since we double the amount of space allocated at each step, we arrange
|
|
%to run out of addressable space before the lookup table that we need
|
|
%runs out of space.
|
|
|
|
Normal \yad slotted pages are not without overhead. Each record has
|
|
an assoiciated size field, and an offset pointer that points to a
|
|
location within the page. Throughout our bucket list implementation,
|
|
we only deal with fixed-length slots. Since \yad supports multiple
|
|
page layouts, we use the ``Fixed Page'' layout, which implements a
|
|
page consisting on an array of fixed-length records. Each bucket thus
|
|
maps directly to one record, and it is trivial to map bucket numbers
|
|
to record numbers within a page.
|
|
|
|
\yad provides a call that allocates a contiguous range of pages. We
|
|
use this method to allocate increasingly larger regions of pages as
|
|
the array list expands, and store the regions' offsets in a single
|
|
page header. When we need to access a record, we first calculate
|
|
which region the record is in, and use the header page to determine
|
|
its offset. (We can do this because the size of each region is
|
|
deterministic; it is simply $size_{first~region} * 2^{region~number}$.
|
|
We then calculate the $(page,slot)$ offset within that region. \yad
|
|
allows us to reference records by using a $(page,slot,size)$ triple,
|
|
which we call a {\em recordid}, and we already know the size of the
|
|
record. Once we have the recordid, the redo/undo entries are trivial.
|
|
They simply log the before and after image of the appropriate record,
|
|
and are provided by the Fixed Page interface.
|
|
|
|
%In fact, this is essentially identical to the transactional array
|
|
%implementation, so we can just use that directly: a range of
|
|
%contiguous pages is treated as a large array of buckets. The linear
|
|
%hash table is thus a tuple of such arrays that map ranges of IDs to
|
|
%each array. For a table split into $m$ arrays, we thus get $O(lg m)$
|
|
%in-memory operations to find the right array, followed by an $O(1)$
|
|
%array lookup. The redo/undo functions for the array are trivial: they
|
|
%just log the before or after image of the specific record.
|
|
%
|
|
%\eab{should we cover transactional arrays somewhere?}
|
|
|
|
%% The ArrayList page handling code overrides the recordid ``slot'' field
|
|
%% to refer to a logical offset within the ArrayList. Therefore,
|
|
%% ArrayList provides an interface that can be used as though it were
|
|
%% backed by an infinitely large page that contains fixed length records.
|
|
%% This seems to be generally useful, so the ArrayList implementation may
|
|
%% be used independently of the hashtable.
|
|
|
|
%For brevity we do not include a description of how the ArrayList
|
|
%operations are logged and implemented.
|
|
|
|
\subsection{Bucket Overflow}
|
|
|
|
\eab{don't get this section, and it sounds really complicated, which is counterproductive at this point -- Is this better now? -- Rusty}
|
|
|
|
For simplicity, our buckets are fixed length. However, we want to
|
|
store variable length objects. For simplicity, we decided to store
|
|
the keys and values outside of the bucket list.
|
|
%Therefore, we store a header record in
|
|
%the bucket list that contains the location of the first item in the
|
|
%list. This is represented as a $(page,slot)$ tuple. If the bucket is
|
|
%empty, we let $page=-1$. We could simply store each linked list entry
|
|
%as a seperate record, but it would be nicer if we could preserve
|
|
%locality, but it is unclear how \yad's generic record allocation
|
|
%routine could support this directly.
|
|
%Based upon the observation that
|
|
%a space reservation scheme could arrange for pages to maintain a bit
|
|
In order to help maintain the locality of our bucket lists, store these lists as a list of smaller lists. The first list links pages together. The smaller lists reside within a single page.
|
|
%of free space we take a 'list of lists' approach to our bucket list
|
|
%implementation. Bucket lists consist of two types of entries. The
|
|
%first maintains a linked list of pages, and contains an offset
|
|
%internal to the page that it resides in, and a $(page,slot)$ tuple
|
|
%that points to the next page that contains items in the list.
|
|
All of entries within a single page may be traversed without
|
|
unpinning and repinning the page in memory, providing very fast
|
|
traversal if the list has good locality.
|
|
This optimization would not be possible if it
|
|
were not for the low level interfaces provided by the buffer manager
|
|
(which seperates pinning pages and reading records into seperate
|
|
API's) Since this data structure has some intersting
|
|
properties (good locality and very fast access to short linked lists), it can also be used on its own.
|
|
|
|
\subsection{Concurrency}
|
|
|
|
Given the structures described above, the implementation of a linear hash
|
|
table is straightforward. A linear hash function is used to map keys
|
|
to buckets, insertions and deletions are handled by the array implementation,
|
|
%linked list implementation,
|
|
and the table can be extended lazily by transactionally removing items
|
|
from one bucket and adding them to another.
|
|
|
|
Given that the underlying data structures are transactional and there
|
|
are never any concurrent transactions, this is actually all that is
|
|
needed to complete the linear hash table implementation.
|
|
Unfortunately, as we mentioned in Section~\ref{todo}, things become a
|
|
bit more complex if we allow interleaved transactions.
|
|
|
|
We have found a simple recipe for converting a non-concurrent data structure into a concurrent one, which involves three steps:
|
|
\begin{enumerate}
|
|
\item Wrap a mutex around each operation, this can be done with a lock
|
|
manager, or just using pthread mutexes. This provides isolation.
|
|
\item Define a logical UNDO for each operation (rather than just using
|
|
the lower-level undo in the transactional array). This is easy for a
|
|
hash table; e.g. the undo for an {\em insert} is {\em remove}.
|
|
\item For mutating operations (not read-only), add a ``begin nested
|
|
top action'' right after the mutex acquisition, and a ``commit
|
|
nested top action'' where we release the mutex.
|
|
\end{enumerate}
|
|
|
|
Note that this scheme prevents multiple threads from accessing the
|
|
hashtable concurrently. However, it achieves a more important (and
|
|
somewhat unintuitive) goal. The use of a nested top action protects
|
|
the hashtable against {\em future} modifications by other
|
|
transactions. Since other transactions may commit even if this
|
|
transaction aborts, we need to make sure that we can safely undo the
|
|
hashtable insertion. Unfortunately, a future hashtable operation
|
|
could split a hash bucket, or manipulate a bucket overflow list,
|
|
potentially rendering any phyisical undo information that we could
|
|
record useless. Therefore, we need to have a logical undo operation
|
|
to protect against this. However, we could still crash as the
|
|
physical update is taking place, leaving the hashtable in an
|
|
inconsistent state after REDO completes. Therefore, we need to use
|
|
physical undo until the hashtable operation completes, and then {\em
|
|
switch to} logical undo before any other operation manipulates data we
|
|
just altered. This is exactly the functionality that a nested top
|
|
action provides. Since a normal hashtable operation is usually fast,
|
|
and this is meant to be a simple hashtable implementation, we simply
|
|
latch the entire hashtable to prevent any other threads from
|
|
manipulating the hashtable until after we switch from phyisical to
|
|
logical undo.
|
|
|
|
%\eab{need to explain better why this gives us concurrent
|
|
%transactions.. is there a mutex for each record? each bucket? need to
|
|
%explain that the logical undo is really a compensation that undoes the
|
|
%insert, but not the structural changes.}
|
|
|
|
%% To get around
|
|
%% this, and to allow multithreaded access to the hashtable, we protect
|
|
%% all of the hashtable operations with pthread mutexes. \eab{is this a lock manager, a latch or neither?} Then, we
|
|
%% implement inverse operations for each operation we want to support
|
|
%% (this is trivial in the case of the hash table, since ``insert'' is
|
|
%% the logical inverse of ``remove.''), then we add calls to begin nested
|
|
%% top actions in each of the places where we added a mutex acquisition,
|
|
%% and remove the nested top action wherever we release a mutex. Of
|
|
%% course, nested top actions are not necessary for read only operations.
|
|
|
|
This completes our description of \yad's default hashtable
|
|
implementation. We would like to emphasize the fact that implementing
|
|
transactional support and concurrency for this data structure is
|
|
straightforward. The only complications are a) defining a logical undo, and b) dealing with fixed-length records.
|
|
|
|
%, and (other than requiring the design of a logical
|
|
%logging format, and the restrictions imposed by fixed length pages) is
|
|
%not fundamentally more difficult or than the implementation of normal
|
|
%data structures).
|
|
|
|
%\eab{this needs updating:} Also, while implementing the hash table, we also
|
|
%implemented two generally useful transactional data structures.
|
|
|
|
Next we describe some additional optimizations and evaluate the
|
|
performance of our implementations.
|
|
|
|
\subsection{The optimized hashtable}
|
|
|
|
Our optimized hashtable implementation is optimized for log
|
|
bandwidth, only stores fixed-length entries, and does not obey normal
|
|
recovery semantics.
|
|
|
|
Instead of using nested top actions, the optimized implementation
|
|
applies updates in a carefully chosen order that minimizes the extent
|
|
to which the on disk representation of the hash table could be
|
|
corrupted. (Figure~\ref{linkedList}) Before beginning updates, it
|
|
writes an undo entry that will check and restore the consistency of
|
|
the hashtable during recovery, and then invokes the inverse of the
|
|
operation that needs to be undone. This recovery scheme does not
|
|
require record-level undo information. Therefore, pre-images of
|
|
records do not need to be written to log, saving log bandwidth and
|
|
enhancing performance.
|
|
|
|
Also, since this implementation does not need to support variable size
|
|
entries, it stores the first entry of each bucket in the ArrayList
|
|
that represents the bucket list, reducing the number of buffer manager
|
|
calls that must be made. Finally, this implementation caches
|
|
information about hashtables in memory so that it does not have to
|
|
obtain a copy of hashtable
|
|
header information from the buffer mananger for each request.
|
|
|
|
The most important component of \yad for this optimization is \yad's
|
|
flexible recovery and logging scheme. For brevity we only mention
|
|
that this hashtable implementation uses bucket granularity latching,
|
|
but we do not describe how this was implemented. Finer grained
|
|
latching is relatively easy in this case since all operations only
|
|
affect a few buckets, and buckets have a natural ordering.
|
|
|
|
\subsection{Performance}
|
|
|
|
We ran a number of benchmarks on the two hashtable implementations
|
|
mentioned above, and used Berkeley DB for comparison.
|
|
|
|
%In the future, we hope that improved
|
|
%tool support for \yad will allow application developers to easily apply
|
|
%sophisticated optimizations to their operations. Until then, application
|
|
%developers that settle for ``slow'' straightforward implementations of
|
|
%specialized data structures should achieve better performance than would
|
|
%be possible by using existing systems that only provide general purpose
|
|
%primatives.
|
|
|
|
The first test (Figure~\ref{fig:BULK_LOAD}) measures the throughput of
|
|
a single long-running
|
|
transaction that loads a synthetic data set into the
|
|
library. For comparison, we also provide throughput for many different
|
|
\yad operations, BerkeleyDB's DB\_HASH hashtable implementation,
|
|
and lower level DB\_RECNO record number based interface.
|
|
|
|
Both of \yad's hashtable implementations perform well, but the complex
|
|
optimized implementation is clearly faster. This is not surprising as
|
|
it issues fewer buffer manager requests and writes fewer log entries
|
|
than the straightforward implementation.
|
|
|
|
We see that \yad's other operation implementations also perform well
|
|
in this test. The page-oriented list implementation is geared toward
|
|
preserving the locality of short lists, and we see that it has
|
|
quadratic performance in this test. This is because the list is
|
|
traversed each time a new page must be allocated.
|
|
|
|
%Note that page allocation is relatively infrequent since many entries
|
|
%will typically fit on the same page. In the case of our linear
|
|
%hashtable, bucket reorganization ensures that the average occupancy of
|
|
%a bucket is less than one. Buckets that have recently had entries
|
|
%added to them will tend to have occupancies greater than or equal to
|
|
%one. As the average occupancy of these buckets drops over time, the
|
|
%page oriented list should have the opportunity to allocate space on
|
|
%pages that it already occupies.
|
|
|
|
Since the linear hash table bounds the length of these lists, the
|
|
performance of the list when only contains one or two elements is
|
|
much more important than asymptotic behavior. In a seperate experiment
|
|
not presented here, we compared the
|
|
implementation of the page-oriented linked list to \yad's conventional
|
|
linked-list implementation. Although the conventional implementation
|
|
performs better when bulk loading large amounts of data into a single
|
|
list, we have found that a hashtable built with the page-oriented list
|
|
outperforms an otherwise equivalent hashtable implementation that uses
|
|
conventional linked lists.
|
|
|
|
|
|
%The NTA (Nested Top Action) version of \yad's hash table is very
|
|
%cleanly implemented by making use of existing \yad data structures,
|
|
%and is not fundamentally more complex then normal multithreaded code.
|
|
%We expect application developers to write code in this style.
|
|
|
|
%{\em @todo need to explain why page-oriented list is slower in the
|
|
%second chart, but provides better hashtable performance.}
|
|
|
|
The second test (Figure~\ref{fig:TPS}) measures the two libraries' ability to exploit
|
|
concurrent transactions to reduce logging overhead. Both systems
|
|
can service concurrent calls to commit with a single
|
|
synchronous I/O. Because different approaches to this
|
|
optimization make sense under different circumstances,~\cite{findWorkOnThisOrRemoveTheSentence} this may
|
|
be another aspect of transactional storage systems where
|
|
application control over a transactional storage policy is desirable.
|
|
|
|
%\footnote{Although our current implementation does not provide the hooks that
|
|
%would be necessary to alter log scheduling policy, the logger
|
|
%interface is cleanly seperated from the rest of \yad. In fact,
|
|
%the current commit merging policy was implemented in an hour or
|
|
%two, months after the log file implementation was written. In
|
|
%future work, we would like to explore the possiblity of virtualizing
|
|
%more of \yad's internal api's. Our choice of C as an implementation
|
|
%language complicates this task somewhat.}
|
|
|
|
|
|
\begin{figure*}
|
|
\includegraphics[%
|
|
width=1\columnwidth]{tps-new.pdf}
|
|
\includegraphics[%
|
|
width=1\columnwidth]{tps-extended.pdf}
|
|
\caption{\label{fig:TPS} The logging mechanisms of \yad and Berkeley
|
|
DB are able to combine multiple calls to commit() into a single disk force.
|
|
This graph shows how \yad and Berkeley DB's throughput increases as
|
|
the number of concurrent requests increases. The Berkeley DB line is
|
|
cut off at 50 concurrent transactions because we were unable to
|
|
reliable scale it past this point, although we believe that this is an
|
|
artifact of our testing environment, and is not fundamental to
|
|
Berkeley DB.}
|
|
\end{figure*}
|
|
|
|
The final test measures the maximum number of sustainable transactions
|
|
per second for the two libraries. In these cases, we generate a
|
|
uniform number of transactions per second by spawning a fixed nuber of
|
|
threads, and varying the number of requests each thread issues per
|
|
second, and report the cumulative density of the distribution of
|
|
response times for each case.
|
|
|
|
@todo analysis / come up with a more sane graph format.
|
|
|
|
The fact that our straightfoward hashtable is competitive with Berkeley DB's hashtable shows that
|
|
straightforward implementations of specialized data structures can
|
|
compete with comparable, highly tuned, general-purpose implementations.
|
|
Similarly, it seems as though it is not difficult to implement specialized
|
|
data structures that will significantly outperform existing
|
|
general purpose structures when applied to an appropriate application.
|
|
|
|
This finding suggests that it is appropriate for
|
|
application developers to consider the development of custom
|
|
transactional storage mechanisms if application performance is
|
|
important.
|
|
|
|
\section{Object Serialization}
|
|
\label{OASYS}
|
|
|
|
Object serialization performance is extremely important in modern web
|
|
application systems such as Enterprise Java Beans. Object
|
|
serialization is also a convenient way of adding persistant storage to
|
|
an existing application without developing an explicit file format or
|
|
dealing with low-level I/O interfaces.
|
|
|
|
A simple object serialization scheme would bulk-write and bulk-read
|
|
sets of application objects to an operating system file. These
|
|
schemes suffer from high read and write latency, and do not handle
|
|
small updates well. More sophisticated schemes store each object in a
|
|
seperate randomly accessible record, such as a database tuple, or
|
|
Berkeley DB hashtable entry. These schemes allow for fast single
|
|
object reads and writes, and are typically the solutions used by
|
|
application servers.
|
|
|
|
Unfortunately, most of these schemes ``double buffer'' application
|
|
data. Typically, the application maintains a set of in-memory objects
|
|
which may be accessed with low latency. The backing data store
|
|
maintains a seperate buffer pool which contains serialized versions of
|
|
the objects in memory, and corresponds to the on-disk representation
|
|
of the data. Accesses to objects that are only present in the buffer
|
|
pool incur medium latency, as they must be unmarshalled (deserialized)
|
|
before the application may access them. Finally, some objects may
|
|
only reside on disk, and require a disk read.
|
|
|
|
%Since these applications are typically data-centric, it is important
|
|
%to make efficient use of system memory in order to reduce hardware
|
|
%costs.
|
|
|
|
A straightforward solution to this problem would be to bound
|
|
the amount of memory the application may consume by preventing it from
|
|
caching deserialized objects. This scheme conserves memory, but it
|
|
incurs the cost of an in-memory deserialization to read the object,
|
|
and an in-memory deserialization/serialization cycle to write to an
|
|
object.
|
|
|
|
Alternatively, the amount of memory consumed by the buffer pool could
|
|
be bounded to some small value, and the application could maintain a
|
|
large object cache. This scheme would incur no overhead for a read
|
|
request. However, it would incur the overhead of a disk-based
|
|
serialization in order to service a write request.\footnote{In
|
|
practice, the transactional backing store would probably fetch the
|
|
page that contains the object from disk, causing two disk I/O's.}
|
|
|
|
\yad's architecture allows us to apply two interesting optimizations
|
|
to object serialization. First, since \yad supports
|
|
custom log entries, it is trivial to have it store diffs of objects to
|
|
the log instead of writing the entire object to log during an update.
|
|
Such an optimization would be difficult to achieve with Berkeley DB,
|
|
but could be performed by a database server if the fields of the
|
|
objects were broken into database table columns. It is unclear if
|
|
this optimization would outweigh the overheads associated with an SQL
|
|
based interface. Depending on the database server, it may be
|
|
necessary to issue a SQL update query that only updates a subset of a
|
|
tuple's fields in order to generate a diff-based log entry. Doing so
|
|
would preclude the use of prepared statements, or would require a large
|
|
number of prepared statements to be maintained by the DBMS.
|
|
% If IPC or
|
|
%the network is being used to comminicate with the DBMS, then it is very
|
|
%likely that a seperate prepared statement for each type of diff that the
|
|
%application produces would be necessary for optimal performance.
|
|
%Otherwise, the database client library would have to determine which
|
|
%fields of a tuple changed since the last time the tuple was fetched
|
|
%from the server, and doing this would require a large amount of state
|
|
%to be maintained.
|
|
|
|
% @todo WRITE SQL OASYS BENCHMARK!!
|
|
|
|
The second optimization is a bit more sophisticated, but still easy to
|
|
implement in \yad. We do not believe that it would be possible to
|
|
achieve using existing relational database systems or with Berkeley
|
|
DB.
|
|
|
|
\yad services a request to write to a record by pinning (and possibly
|
|
reading in) a page, generating a log entry, writing the
|
|
new record value to the page, and unpinning the page.
|
|
|
|
If \yad knows that the client will not ask to read the record, then
|
|
there is no real reason to update the version of the record in the
|
|
page file. In fact, if no undo or redo information needs to be
|
|
generated, there is no need to bring the page into memory in
|
|
order to service a write.
|
|
There are at least two scenarios that allow \yad to avoid loading the page.
|
|
|
|
\eab{are you arguing that the client doesn't need to read the record in the page file, or doesn't need to read the object at all?}
|
|
|
|
|
|
\eab{I don't get this section either...}
|
|
|
|
First, the application might not be interested in transactional
|
|
atomicity. In this case, by writing no-op undo information instead of
|
|
real undo log entries, \yad could guarantee that some prefix of the
|
|
log will be applied to the page file after recovery. The redo
|
|
information is already available: the object is in the application's
|
|
cache. ``Transactions'' could still be durable, as commit() could be
|
|
used to force the log to disk.
|
|
|
|
Second, the application could provide the undo information to \yad.
|
|
This could be implemented in a straightforward manner by adding
|
|
special accessor methods to the object which generate undo information
|
|
as the object is updated in memory. For our benchmarks, we opted for
|
|
the first approach.
|
|
|
|
We have removed the need to use the on-disk version of the object to
|
|
generate log entries, but still need to guarantee that the application
|
|
will not attempt to read a stale record from the page file. We use
|
|
the cache to guarantee this. In order to service a write
|
|
request made by the application, the cache calls a special
|
|
``update()'' operation that only writes a log entry, but does not
|
|
update the page file. If the
|
|
cache must evict an object, it performs a special ``flush()''
|
|
operation. This method writes the object to the buffer pool (and
|
|
probably incurs the cost of a disk {\em read}), using a LSN recorded by the
|
|
most recent update() call that was associated with the object. Since
|
|
\yad implements no-force, it does not matter if the
|
|
version of the object in the page file is stale. The idea that the
|
|
current version is available outside of transactional storage,
|
|
typically in a cache, seems broadly useful.
|
|
|
|
|
|
\subsection{Recovery and Log Truncation}
|
|
|
|
An observant reader may have noticed a subtle problem with this
|
|
scheme. More than one object may reside on a page, and we do not
|
|
constrain the order in which the cache calls flush() to evict objects.
|
|
Recall that the version of the LSN on the page implies that all
|
|
updates {\em up to} and including the page LSN have been applied.
|
|
Nothing stops our current scheme from breaking this invariant.
|
|
|
|
We have two solutions to this problem. One solution is to
|
|
implement a cache eviction policy that respects the ordering of object
|
|
updates on a per-page basis. Instead of interfering with the eviction policy
|
|
of the cache (and keeping with the theme of this paper), we sought a
|
|
solution that leverages \yad's interfaces instead.
|
|
|
|
We can force \yad to ignore page LSN values when considering our
|
|
special update() log entries during the REDO phase of recovery. This
|
|
forces \yad to re-apply the diffs in the same order in which the application
|
|
generated them. This works as intended because we use an
|
|
idempotent diff format that will produce the correct result even if we
|
|
start with a copy of the object that is newer than the first diff that
|
|
we apply.
|
|
|
|
The only remaining detail is to implement a custom checkpointing
|
|
algorithm that understands the page cache. In order to produce a
|
|
fuzzy checkpoint, we simply iterate over the object pool, calculating
|
|
the minimum LSN of the objects in the pool.\footnote{This LSN is distinct from
|
|
the one used by flush(); it is the LSN of the object's {\em first}
|
|
call to update() after the object was added to the cache.} At this
|
|
point, we can invoke a normal ARIES checkpoint with the restriction
|
|
that the log is not truncated past the minimum LSN encountered in the
|
|
object pool.\footnote{We do not yet enfore this checkpoint limitation.}
|
|
|
|
\subsection{Evaluation}
|
|
|
|
We implemented a \yad plugin for OASYS, a C++ object serialization
|
|
library includes various object serialization backends, including one
|
|
for Berkeley DB. The \yad plugin makes use of the optimizations
|
|
described in this section, and was used to generate Figure~[TODO].
|
|
For comparison, we also implemented a non-optimized \yad plugin to
|
|
directly measure the effect of our optimizations.
|
|
|
|
Initially, OASYS did not support an object cache, so this
|
|
functionality was added. Berkeley DB and \yad's variants were run
|
|
using identical cache settings and random seeds for load generation.
|
|
Even though the serialization requests were serviced out of operating
|
|
system cache, we see that the optimized \yad implemenation has a
|
|
clear advantage under most circumstances, suggesting that the overhead
|
|
incurred by generating diffs and having seperate update() and flush()
|
|
calls is negligible compared to the savings in log bandwidth and
|
|
buffer-pool overhead that the optimizations provide.
|
|
|
|
Ignoring the checkpointing scheme, the operations required for these
|
|
two optimizations are roughly 150 lines of C code, including
|
|
whitespace, comments and boilerplate function registrations. Although
|
|
the reasoning required to ensure the correctness of this code was
|
|
complex, the simplicity of the implementation is encouraging.
|
|
|
|
@todo analyse OASYS data.
|
|
|
|
\section{Transitive closure\label{TransClos}}
|
|
|
|
@todo implement transitive closu....
|
|
|
|
%\begin{enumerate}
|
|
%
|
|
% \item {\bf Comparison of transactional primatives (best case for each operator)}
|
|
%
|
|
% \item {\bf Serialization Benchmarks (Abstract log) }
|
|
%
|
|
% {\bf Need to define application semantics workload (write heavy w/ periodic checkpoint?) that allows for optimization.}
|
|
%
|
|
% {\bf All of these graphs need X axis dimensions. Number of (read/write?) threads, maybe?}
|
|
%
|
|
% {\bf Graph 1: Peak write throughput. Abstract log wins (no disk i/o, basically, measure contention on ringbuffer, and compare to log I/O + hash table insertions.)}
|
|
%
|
|
% {\bf Graph 2: Measure maximum average write throughput: Write throughput vs. rate of log growth. Spool abstract log to disk.
|
|
% Reads starve, or read stale data. }
|
|
%
|
|
% {\bf Graph 3: Latency @ peak steady state write throughput. Abstract log size remains constant. Measure read latency vs.
|
|
% queue length. This will show the system's 'second-order' ability to absorb spikes. }
|
|
%
|
|
% \item {\bf Graph traversal benchmarks: Bulk load + hot and cold transitive closure queries}
|
|
%
|
|
% \item {\bf Hierarchical Locking - Proof of concept}
|
|
%
|
|
% \item {\bf TPC-C (Flexibility) - Proof of concept}
|
|
%
|
|
% % Abstract syntax tree implementation?
|
|
%
|
|
% \item {\bf Sample Application. (Don't know what yet?) }
|
|
%
|
|
%\end{enumerate}
|
|
|
|
\section{Future work}
|
|
|
|
We have described a new approach toward developing applications using
|
|
generic transactional storage primatives. This approach raises a
|
|
number of important questions which fall outside the scope of its
|
|
initial design and implementation.
|
|
|
|
We have not yet verified that it is easy for developers to implement
|
|
\yad extensions, and it would be worthwhile to perform user studies
|
|
and obtain feedback from programmers that are otherwise unfamiliar
|
|
with our work or the implementation of transactional systems.
|
|
|
|
Also, we believe that development tools could be used to greatly
|
|
improve the quality and performance of our implementation and
|
|
extensions written by other developers. Well-known static analysis
|
|
techniques could be used to verify that operations hold locks (and
|
|
initiate nested top actions) where appropriate, and to ensure
|
|
compliance with \yad's API. We also hope to re-use the infrastructure
|
|
necessary that implements such checks to detect opportunities for
|
|
optimization. Our benchmarking section shows that our stable
|
|
hashtable implementation is 3 to 4 times slower then our optimized
|
|
implementation. Using static checking and high-level automated code
|
|
optimization techniques may allow us to narrow or close this
|
|
gap, and enhance the performance and reliability of application-specific
|
|
extensions written in the future.
|
|
|
|
We would like to extend our work into distributed system
|
|
development. We believe that \yad's implementation anticipates many
|
|
of the issues that we will face in distributed domains. By adding
|
|
networking support to our logical log interface,
|
|
we should be able to multiplex and replicate log entries to sets of
|
|
nodes easily. Single node optimizations such as the demand based log
|
|
reordering primative should be directly applicable to multi-node
|
|
systems.~\footnote{For example, our (local, and non-redundant) log
|
|
multiplexer provides semantics similar to the
|
|
Map-Reduce~\cite{mapReduce} distributed programming primative, but
|
|
exploits hard disk and buffer pool locality instead of the parallelism
|
|
inherent in large networks of computer systems.} Also, we believe
|
|
that logical, host independent logs may be a good fit for applications
|
|
that make use of streaming data or that need to perform
|
|
transformations on application requests before they are materialzied
|
|
in a transactional data store.
|
|
|
|
We also hope to provide a library of
|
|
transactional data structures with functionality that is comparable to
|
|
standard programming language libraries such as Java's Collection API
|
|
or portions of C++'s STL. Our linked list implementations, array list
|
|
implementation and hashtable represent an initial attempt to implement
|
|
this functionality. We are unaware of any transactional system that
|
|
provides such a broad range of data structure implementations.
|
|
|
|
Also, we have noticed that the intergration between transactional
|
|
storage primatives and in memory data structures is often fairly
|
|
limited. (For example, JDBC does not reuse Java's iterator
|
|
interface.) We have been experimenting with the production of a
|
|
uniform interface to iterators, maps, and other structures which would
|
|
allow code to be simultaneously written for native in-memory storage
|
|
and for our transactional layer. We believe the fundamental reason
|
|
for the differing API's of past systems is the heavy weight nature of
|
|
the primatives provided by transactional systems, and the highly
|
|
specialized, light weight interfaces provided by typical in memory
|
|
structures. Because \yad makes it easy to implement light weight
|
|
transactional structures, it may be easy to integrate it further with
|
|
programming language constructs.
|
|
|
|
Finally, due to the large amount of prior work in this area, we have
|
|
found that there are a large number of optimizations and features that
|
|
could be applied to \yad. It is our intention to produce a usable
|
|
system from our research prototype. To this end, we have already
|
|
released \yad as an open source library, and intend to produce a
|
|
stable release once we are confident that the implementation is correct
|
|
and reliable.
|
|
|
|
|
|
\section{Conclusion}
|
|
|
|
{\em @todo write conclusion section}
|
|
|
|
\begin{thebibliography}{99}
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|
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\bibitem[17]{reiser} Reiser,~Hans~T. {\em ReiserFS 4} {\tt http://www.namesys.com/ } (2004)
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%
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%\bibitem[SLOCCount]{sloccount} SLOCCount, {\tt http://www.dwheeler.com/sloccount/ }
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%
|
|
%\bibitem[lcov]{lcov} The~LTP~gcov~extension, {\tt http://ltp.sourceforge.net/coverage/lcov.php }
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%
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|
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|
|
%\bibitem[Beazley]{beazley} D.~M.~Beazley and P.~S.~Lomdahl,
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%{\em Message-Passing Multi-Cell Molecular Dynamics on the Connection
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%
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|
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|
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%{\em Title of Riveting Article}, JournalName VolNum (Year) p. Start-End
|
|
%
|
|
%\bibitem[ET]{embed} Embedded Tk, \\
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%{\tt ftp://ftp.vnet.net/pub/users/drh/ET.html}
|
|
%
|
|
%\bibitem[Expect]{expect} Don Libes, {\em Exploring Expect}, O'Reilly \& Associates, Inc. (1995).
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%
|
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%USENIX 3rd Annual Tcl/Tk Workshop (1995).
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%
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|
%\bibitem[Ousterhout]{ousterhout} John K. Ousterhout, {\em Tcl and the Tk Toolkit}, Addison-Wesley Publishers (1994).
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%
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|
%\bibitem[Perl5]{perl5} Perl5 Programmers reference,\\
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%
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\end{thebibliography}
|
|
|
|
|
|
|
|
\end{document}
|