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@ -6,26 +6,25 @@ A Flexible, Extensible Transaction Framework
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Existing transactional systems are designed to handle specific
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workloads. Unfortunately, the implementations of these systems are
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monolithic and hide the transactional infrastructure underneath a SQL
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interface. Lower-level implementations such as Berkeley DB efficiently
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serve a wider variety of workloads and are built in a more modular
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fashion. However, they do not provide APIs to allow applications to
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build upon and modify low-level policies such as allocation
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strategies, page layout or details of recovery semantics.
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monolithic and hide their transactional infrastructures underneath a
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SQL interface. Lower-level implementations such as Berkeley DB
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efficiently serve a wider variety of workloads and are built in a more
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modular fashion. However, they do not provide APIs to allow
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applications to build upon and modify low-level policies such as
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allocation strategies, page layout or details of recovery semantics.
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Furthermore, data structure implementations are typically not broken
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into separable, public APIs, which discourages the implementation of
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new transactional data structures.
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Contrast this approach to the handling of data structures within
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modern object-oriented programming languages such as C++ or Java.
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Such languages typically provide a large number of data storage
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algorithm implementations. These structures may be used
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interchangeably with application-specific data collections, and
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collection implementations may be composed into more sophisticated
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data structures.
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Modern object-oriented programming languages such as C++ or Java
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handle the problem differently. Such languages typically provide a
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large number of data storage algorithm implementations. These
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structures may be used interchangeably with application-specific data
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collections, and collection implementations may be composed into more
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sophisticated data structures.
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We have implemented LLADD (/yad/), an extensible transactional storage
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library that takes a composable and layered approach to transactional
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library that takes a composable, layered approach to transactional
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storage. Below, we present some of its high level features and
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performance characteristics and discuss our plans to extend the system
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into distributed domains. Finally we introduce our current research
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@ -36,7 +35,6 @@ of our system, allowing application developers to implement
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sophisticated cross-layer optimizations easily.
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Overview of the LLADD Architecture
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----------------------------------
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General-purpose transactional storage systems are extremely complex
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and only handle specific types of workloads efficiently. However, new
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@ -49,45 +47,79 @@ attempt to perform well across many workloads, we have implemented a
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lower-level API that makes it easy for application designers to
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implement specialized data structures. Essentially, we have
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implemented an extensible navigational database system. We believe
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that this system will support modern development practices and allows
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that this system will support modern development practices and allow
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transactions to be used in a wider range of applications.
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In order to support our layered data structure implementations and to
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support applications that require specialized recovery semantics,
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LLADD provides the following functionality:
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- Flexible Page Layouts for low-level control over transactional data
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representations
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- Extensible Log Formats for high level control over transactional
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data structures
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- 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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- In-memory logical logging for data store independent lists of
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application requests, allowing "in flight" log reordering,
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manipulation and durability primitives to be developed
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- Extensible locking API for registration of custom lock managers and
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a generic lock manager implementation
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- Custom durability operations such as save points and two-phase
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commit's prepare call.
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We have shown that these primitives allow application developers to
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control on-disk data representation, data structure implementations,
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the granularity of concurrency, the precise semantics of atomicity,
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isolation and durability, request scheduling policies, and deadlock /
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avoidance schemes. The ability to control or replace these modules
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and policies allows application developers to leverage application and
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workload specific properties to enhance performance.
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While implementations of general-purpose systems often lag behind the
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requirements of rapidly evolving applications, we believe that our
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architecture's flexibility allows us to address such applications
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rapidly. Our system also seems to be a reasonable long-term solution
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in cases where the development of a general-purpose system is not
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economical.
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requirements of rapidly evolving applications, we believe that the
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flexibility of our architecture allows us to address such applications
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rapidly. If the applications in question represent a large enough
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market or an important class of workloads, high-level declarative
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systems may eventually replace lower level approaches based on our
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system. For applications that represent a small market, the
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implementation of such high-level declarative systems is probably not
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feasible. In these cases, our system could provide a reasonable
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long-term solution.
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For example, XML storage systems are rapidly evolving but still fail
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to handle many types of applications. Typical bioinformatics data
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sets [PDB, NCBI, Gene Ontology] must be processed by computationally
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intensive applications with rigid data layout requirements. The
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maintainers of these systems are slowly transitioning to XML, which is
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valuable as an interchange format, and supported by many general
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purpose tools. However, many of the data processing applications that
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use these databases still must employ ad-hoc solutions for data
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management.
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sets [PDB, NCBI, GO] must be processed by computationally intensive
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applications with rigid data layout requirements. The maintainers of
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these systems are slowly transitioning to XML, which is valuable as an
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interchange format and is also supported by many general purpose
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tools. However, many of the data processing applications that use
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these databases still must employ ad-hoc solutions for computationally
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expensive tasks and data production pipelines.
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Whether or not general purpose XML database systems eventually meet
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all of the needs of each of these distinct scientific applications,
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extensions implemented on top of a more flexible data storage
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implementation could have avoided the need for ad-hoc solutions, and
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could serve as a partial prototype for higher level implementations.
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XML database systems may eventually meet all of the needs of of these
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scientific applications. However, extensions implemented on top of a
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flexible storage system could have avoided the need for ad-hoc
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solutions, and served as a prototype for components of higher level
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implementations.
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LLADD is based upon an extensible version of ARIES but does not
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hard-code details such as page format or data structure
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LLADD is based upon an extensible version of ARIES [ARIES] but does
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not hard-code details such as page format or data structure
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implementation. It provides a number of "operation" implementations
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which consist of redo/undo methods and wrapper functions. The
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redo/undo methods manipulate the page file by applying log entries
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while the wrapper functions produce log entries. Redo methods handle
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all page file manipulation during normal forward operation, reducing
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the amount of code that must be developed in order to implement new
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data structures. LLADD handles the scheduling of redo/undo
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invocations, disk I/O, and all of the other details specified by the
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ARIES recovery algorithm, allowing operation implementors to focus on
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the details that are important to the functionality their extension
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provides.
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the amount of code required to implement new data structures. LLADD
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handles the scheduling of redo/undo invocations, disk I/O, and all of
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the other details specified by the ARIES recovery algorithm. This
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allows operation implementors to focus on the details that are
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important to the functionality their extension provides.
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LLADD ships with a number of default data structures and layouts,
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ranging from byte-level page layouts to linear hashtables and
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@ -99,12 +131,12 @@ reusable modules that implement a resizable array and two exchangeable
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linked-list variants.
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In other work, we show that the system is competitive with Berkeley DB
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on traditional (hashtable based) workloads, and have shown significant
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on traditional (hashtable based) workloads, and show significant
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performance improvements for less conventional workloads including
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custom data structure implementations, graph traversal algorithms and
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transactional object persistence workloads.
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The transactional object persistence system was based upon the
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The transactional object persistence system is based upon the
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observation that most object persistence schemes cache a second copy
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of each in-memory object in a page file, and often keep a third copy
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in operating system cache. By implementing custom operations that
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@ -131,8 +163,8 @@ advantage in situations where the size of system memory is a
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bottleneck.
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We leave systematic performance tuning of LLADD to future work, and
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believe that further optimizations will improve our performance on
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these benchmarks significantly.
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believe that further optimizations will improve performance on these
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benchmarks significantly.
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Because of its natural integration into standard system software
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development practices, we think that LLADD can be naturally extended
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@ -140,13 +172,12 @@ into networked and distributed domains. For example, typical
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write-ahead-logging protocols implicitly implement machine
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independent, reorderable log entries in order to implement logical
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undo. These two properties have been crucial in past system software
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designs, including data replication, distribution, and conflict
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designs, including data replication, distribution and conflict
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resolution algorithms. Therefore, we plan to provide a networked,
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logical redo log as an application-level primitive, and to explore
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system designs that leverage this approach.
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Current Research Focus
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----------------------
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LLADD's design assumes that application developers will implement
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high-performance transactional data structures. However, these data
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@ -169,28 +200,25 @@ Recovery-based algorithms must behave correctly during forward
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operation and also under arbitrary recovery scenarios. Behavior
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during recovery is particularly difficult to verify due to the large
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number of materialized page file states that could occur after a
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crash.
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Fortunately, write-ahead-logging schemes such as ARIES make use of
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nested-top-actions to vastly simplify the problem. Given the
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crash. Fortunately, write-ahead-logging schemes such as ARIES make
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use of nested-top-actions to simplify the problem. Given the
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correctness of page-based physical undo and redo, logical undo may
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assume that page spanning operations are applied to the data store
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atomically.
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Existing work in the static-analysis community has verified that
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device driver implementations correctly adhere to complex operating
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system kernel locking schemes[SLAM]. We would like to formalize
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LLADD's latching and logging APIs, so that these analyses will be
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system kernel locking schemes [SLAM]. We would like to formalize
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LLADD's latching and logging APIs so that these analyses will be
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directly applicable to LLADD. This would allow us to verify that data
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structure behavior during recovery is equivalent to the behavior that
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would result if an abort() was issued on each prefix of the log that
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is generated during normal forward operation.
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would result if an abort() was issued on each prefix of the log.
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By using coarse latches that are held throughout entire logical
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operation invocations, we can drastically reduce the size of this
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space, allowing conventional state-state based search techniques (such
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as randomized or exhaustive state-space searches, or unit testing
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techniques) to be practical. It has been shown that such
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space. This would allow conventional state-state based search
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techniques (such as randomized or exhaustive state-space searches, or
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unit testing techniques) to be practical. It has been shown that such
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coarse-grained latching can yield high-performance concurrent data
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structures if semantics-preserving optimizations such as page
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prefetching are applied [ARIES/IM].
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@ -205,8 +233,8 @@ continually pin and unpin the same underlying data.
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The code for each of these high level API calls could be copied into
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many different variants with different pinning/unpinning and
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latching/unlatching behavior, but this would greatly complicate the
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API that application developers must work with, and complicate any
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latching/unlatching behavior. This would greatly complicate the API
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that application developers must work with and complicate any
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application code that made use of such optimizations.
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Compiler optimization techniques such as code hoisting and partial
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checks that decide at runtime whether a particular computation is
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redundant. We hope to extend such techniques to reduce the number of
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buffer manager and locking calls made by existing code. In situations
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where memory is abundant, these calls are a significant performance
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where memory is abundant these calls are a significant performance
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bottleneck, especially for read-only operations.
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Similar optimization techniques are applicable to application code.
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Local LLADD calls are simply normal function calls. Therefore it may
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even be possible to apply the transformations that these optimizations
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perform to application code that is unaware of the underlying storage
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Local LLADD calls are normal function calls. Therefore it may be
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possible to apply the transformations that these optimizations perform
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to application code that is unaware of the underlying storage
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implementation. This class of optimizations would be very difficult
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to implement with existing transactional storage systems but should
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significantly improve application performance.
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automated code verification and transformations we hope to make it
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easy to produce correct extensions and to allow simple, maintainable
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implementations to compete with special purpose, hand-optimized code.
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Conclusion
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We have described a simple, extensible architecture for transactional
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systems and presented a number of situations where our implementation
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outperforms existing transactional systems. Due to the flexibility of
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the architecture, we believe that it is appropriate for evolving
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applications and for applications where general-purpose, declarative
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systems are inappropriate. Finally, we presented a number of
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optimizations that our system can support, but that would be extremely
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difficult to apply to existing transactional data stores. Therefore,
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we believe that our approach is applicable to a wider range of
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scenarios than existing systems.
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Acknowledgements
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Mike Demmer was responsible for LLADD's object persistence
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functionality. Jimmy Kittiyachavalit, Jim Blomo and Jason Bayer
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implemented the original version of LLADD. Gilad Arnold, and Amir
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Kamil provided invaluable feedback regarding LLADD's API.
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[SLAM] Ball, Thomas and Rajamani, Sriram. "Automatically
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Validating Temporal Safety Properties of Interfaces,"
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International Workshop on SPIN Model Checking, 2001.
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[GO] Gene Ontology, http://www.geneontology.org/
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[ARIES] C. Mohan, Don Haderle, Bruce Lindsay, Hamid Pirahesh,
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Peter Schwarz. "ARIES: a transaction recovery method
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supporting fine-granularity locking and partial
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rollbacks using write-ahead logging," TODS, 1992.
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[ARIES/IM] C. Mohan, Frank Levine. "ARIES/IM: an efficient and
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high concurrency index management method using
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write-ahead logging," ACM SIGMOD, 1992.
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[NCBI] National Center for Biotechnology Information,
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http://www.ncbi.nlm.nih.gov/
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[PDB] Protein Data Bank, http://www.rcsb.org/pdb/
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