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\conferenceinfo{}{}
\copyrightyear{2014}
\copyrightdata{978-1-nnnn-nnnn-n/yy/mm}
\doi{nnnnnnn.nnnnnnn}
\titlebanner{Draft \#0.91, June 2014}
\preprintfooter{Draft \#0.91, June 2014}
\title{Chain Replication metadata management in Machi, an immutable
file store}
\subtitle{Introducing the ``humming consensus'' algorithm}
\authorinfo{Basho Japan KK}{}
\maketitle
\section{Origins}
\label{sec:origins}
This document was first written during the autumn of 2014 for a
Basho-only internal audience. Since its original drafts, Machi has
been designated by Basho as a full open source software project. This
document has been rewritten in 2015 to address an external audience.
For an overview of the design of the larger Machi system, please see
\cite{machi-design}.
\section{Abstract}
\label{sec:abstract}
TODO Fix, after all of the recent changes to this document.
Machi is an immutable file store, now in active development by Basho
Japan KK. Machi uses Chain Replication to maintain strong consistency
of file updates to all replica servers in a Machi cluster. Chain
Replication is a variation of primary/backup replication where the
order of updates between the primary server and each of the backup
servers is strictly ordered into a single ``chain''. Management of
Chain Replication's metadata, e.g., ``What is the current order of
servers in the chain?'', remains an open research problem. The
current state of the art for Chain Replication metadata management
relies on an external oracle (e.g., ZooKeeper) or the Elastic
Replication algorithm.
This document describes the Machi chain manager, the component
responsible for managing Chain Replication metadata state. The chain
manager uses a new technique, based on a variation of CORFU, called
``humming consensus''.
Humming consensus does not require active participation by all or even
a majority of participants to make decisions. Machi's chain manager
bases its logic on humming consensus to make decisions about how to
react to changes in its environment, e.g. server crashes, network
partitions, and changes by Machi cluster admnistrators. Once a
decision is made during a virtual time epoch, humming consensus will
eventually discover if other participants have made a different
decision during that epoch. When a differing decision is discovered,
new time epochs are proposed in which a new consensus is reached and
disseminated to all available participants.
\section{Introduction}
\label{sec:introduction}
\subsection{What does ``self-management'' mean?}
\label{sub:self-management}
For the purposes of this document, chain replication self-management
is the ability for the $N$ nodes in an $N$-length chain replication chain
to manage the chain's metadata without requiring an external party
to perform these management tasks. Chain metadata state and state
management tasks include:
\begin{itemize}
\item Preserving data integrity of all metadata and data stored within
the chain. Data loss is not an option.
\item Preserving stable knowledge of chain membership (i.e. all nodes in
the chain, regardless of operational status). A systems
administrator is expected to make ``permanent'' decisions about
chain membership.
\item Using passive and/or active techniques to track operational
state/status, e.g., up, down, restarting, full data sync, partial
data sync, etc.
\item Choosing the run-time replica ordering/state of the chain, based on
current member status and past operational history. All chain
state transitions must be done safely and without data loss or
corruption.
\item As a new node is added to the chain administratively or old node is
restarted, adding the node to the chain safely and perform any data
synchronization/repair required to bring the node's data into
full synchronization with the other nodes.
\end{itemize}
\subsection{Ultimate goal: Preserve data integrity of Chain Replicated data}
Preservation of data integrity is paramount to any chain state
management technique for Machi. Even when operating in an eventually
consistent mode, Machi must not lose data without cause outside of all
design, e.g., all particpants crash permanently.
\subsection{Goal: Contribute to Chain Replication metadata management research}
We believe that this new self-management algorithm, humming consensus,
contributes a novel approach to Chain Replication metadata management.
The ``monitor
and mangage your neighbor'' technique proposed in Elastic Replication
(Section \ref{ssec:elastic-replication}) appears to be the current
state of the art in the distributed systems research community.
Typical practice in the IT industry appears to favor using an external
oracle, e.g., using ZooKeeper as a trusted coordinator.
See Section~\ref{sec:cr-management-review} for a brief review.
\subsection{Goal: Support both eventually consistent \& strongly consistent modes of operation}
Machi's first use cases are all for use as a file store in an eventually
consistent environment.
In eventually consistent mode, humming consensus
allows a Machi cluster to fragment into
arbitrary islands of network partition, all the way down to 100\% of
members running in complete network isolation from each other.
Furthermore, it provides enough agreement to allow
formerly-partitioned members to coordinate the reintegration and
reconciliation of their data when partitions are healed.
Later, we wish the option of supporting strong consistency
applications such as CORFU-style logging while reusing all (or most)
of Machi's infrastructure. Such strongly consistent operation is the
main focus of this document.
\subsection{Anti-goal: Minimize churn}
Humming consensus's goal is to manage Chain Replication metadata
safely. If participants have differing notions of time, e.g., running
on extremely fast or extremely slow hardware, then humming consensus
may "churn" rapidly in different metadata states in such a way that
the chain's data is effectively unavailable.
In practice, however, any series of network partition changes that
case humming consensus to churn will cause other management techniques
(such as an external "oracle") similar problems.
{\bf [Proof by handwaving assertion.]}
(See also: Section~\ref{sub:time-model})
\section{Review of current Chain Replication metadata management methods}
\label{sec:cr-management-review}
We briefly survey the state of the art of research and industry
practice of chain replication metadata management options.
\subsection{``Leveraging Sharding in the Design of Scalable Replication Protocols'' by Abu-Libdeh, van Renesse, and Vigfusson}
\label{ssec:elastic-replication}
Multiple chains are arranged in a ring (called a "band" in the paper).
The responsibility for managing the chain at position N is delegated
to chain N-1. As long as at least one chain is running, that is
sufficient to start/bootstrap the next chain, and so on until all
chains are running. This technique is called ``Elastic Replication''.
The paper then estimates mean-time-to-failure
(MTTF) and suggests a "band of bands" topology to handle very large
clusters while maintaining an MTTF that is as good or better than
other management techniques.
{\bf NOTE:} If the chain self-management method proposed for Machi does not
succeed, this paper's technique is our best fallback recommendation.
\subsection{An external management oracle, implemented by ZooKeeper}
\label{ssec:an-oracle}
This is not a recommendation for Machi: we wish to avoid using
ZooKeeper and any other ``large'' external service dependency. See
the ``Assumptions'' section of \cite{machi-design} for Machi's overall
design assumptions and limitations.
However, many other open source software products use ZooKeeper for
exactly this kind of critical metadata replica management problem.
\subsection{An external management oracle, implemented by Riak Ensemble}
This is a much more palatable choice than option~\ref{ssec:an-oracle}
above. We also
wish to avoid an external dependency on something as big as Riak
Ensemble. However, if it comes between choosing Riak Ensemble or
choosing ZooKeeper, the choice feels quite clear: Riak Ensemble will
win, unless there is some critical feature missing from Riak
Ensemble. If such an unforseen missing feature is discovered, it
would probably be preferable to add the feature to Riak Ensemble
rather than to use ZooKeeper (and for Basho to document ZK, package
ZK, provide commercial ZK support, etc.).
\section{Assumptions}
\label{sec:assumptions}
Given a long history of consensus algorithms (viewstamped replication,
Paxos, Raft, et al.), why bother with a slightly different set of
assumptions and a slightly different protocol?
The answer lies in one of our explicit goals: to have an option of
running in an "eventually consistent" manner. We wish to be able to
make progress, i.e., remain available in the CAP sense, even if we are
partitioned down to a single isolated node. VR, Paxos, and Raft
alone are not sufficient to coordinate service availability at such
small scale. The humming consensus algorithm can manage
both strongly consistency systems (i.e., the typical use for Chain
Replication) as well as eventually consistent data systems.
\subsection{The CORFU protocol is correct}
This work relies tremendously on the correctness of the CORFU
protocol \cite{corfu1}, a cousin of the Paxos protocol.
If the implementation of
this self-management protocol breaks an assumption or prerequisite of
CORFU, then we expect that Machi's implementation will be flawed.
\subsection{Communication model}
The communication model is asynchronous point-to-point messaging.
The network is unreliable: messages may be arbitrarily dropped and/or
reordered. Network partitions may occur at any time.
Network partitions may be asymmetric, e.g., a message can be sent successfully
from $A \rightarrow B$, but messages from $B \rightarrow A$ can be
lost, dropped, and/or arbitrarily delayed.
System particpants may be buggy but not actively malicious/Byzantine.
\subsection{Time model}
\label{sub:time-model}
Our time model is per-node wall-clock time clocks, loosely
synchronized by NTP.
The protocol and algorithm presented here do not specify or require any
timestamps, physical or logical. Any mention of time inside of data
structures are for human/historic/diagnostic purposes only.
Having said that, some notion of physical time is suggested for
purposes of efficiency. It's recommended that there be some "sleep
time" between iterations of the algorithm: there is no need to "busy
wait" by executing the algorithm as quickly as possible. See also
Section~\ref{ssub:when-to-calc}.
\subsection{Failure detector model}
We assume that the failure detector that the algorithm uses is weak,
it's fallible, and it informs the algorithm in boolean status
updates/toggles as a node becomes available or not.
\subsection{Data consistency: strong unless otherwise noted}
Most discussion in this document assumes a desire to preserve strong
consistency in all data managed by Machi's chain replication. We
use the short-hand notation ``CP mode'' to describe this default mode
of operation, where ``C'' and ``P'' refer to the CAP Theorem
\cite{cap-theorem}.
However, there are interesting use cases where Machi is useful in a
more relaxed, eventual consistency environment. We may use the
short-hand ``AP mode'' when describing features that preserve only
eventual consistency. Discussion of strongly consistent CP
mode is always the default; exploration of AP mode features in this document
will always be explictly noted.
\subsection{Use of the ``wedge state''}
A participant in Chain Replication will enter "wedge state", as
described by the Machi high level design \cite{machi-design} and by CORFU,
when it receives information that
a newer projection (i.e., run-time chain state reconfiguration) is
available. The new projection may be created by a system
administrator or calculated by the self-management algorithm.
Notification may arrive via the projection store API or via the file
I/O API.
When in wedge state, the server will refuse all file write I/O API
requests until the self-management algorithm has determined that
humming consensus has been decided (see next bullet item). The server
may also refuse file read I/O API requests, depending on its CP/AP
operation mode.
\subsection{Use of ``humming consensus''}
CS literature uses the word "consensus" in the context of the problem
description at \cite{wikipedia-consensus}
.
This traditional definition differs from what is described here as
``humming consensus''.
"Humming consensus" describes
consensus that is derived only from data that is visible/known at the current
time.
The algorithm will calculate
a rough consensus despite not having input from all/majority
of chain members. Humming consensus may proceed to make a
decision based on data from only a single participant, i.e., only the local
node.
See Section~\ref{sec:humming-consensus} for detailed discussion.
\subsection{Concurrent chain managers execute humming consensus independently}
Each Machi file server has its own concurrent chain manager
process embedded within it. Each chain manager process will
execute the humming consensus algorithm using only local state (e.g.,
the $P_{current}$ projection currently used by the local server) and
values observed in everyone's projection stores
(Section~\ref{sec:projection-store}).
The chain manager communicates with the local Machi
file server using the wedge and un-wedge request API. When humming
consensus has chosen a projection $P_{new}$ to replace $P_{current}$,
the value of $P_{new}$ is included in the un-wedge request.
\section{The projection store}
\label{sec:projection-store}
The Machi chain manager relies heavily on a key-value store of
write-once registers called the ``projection store''.
Each Machi node maintains its own projection store.
The store's keyspace is divided into two halves (described below),
each with different rules for who can write keys to that half of the
store.
The store's key is a 2-tuple of a positive integer and the half of
the partition, the ``public'' half or the ``private'' half.
The integer represents the epoch number of the projection stored with
this key. The
store's value is either the special `unwritten' value\footnote{We use
$\bot$ to denote the unwritten value.} or else a binary blob that is
immutable thereafter; the projection data structure is
serialized and stored in this binary blob.
The projection store is vital for the correct implementation of humming
consensus (Section~\ref{sec:humming-consensus}). The write-once
register primitive allows us to reason about the store's behavior
using the same logical tools and techniques as the CORFU ordered log.
\subsection{The publicly-writable half of the projection store}
The publicly-writable projection store is used to share information
during the first half of humming consensus algorithm. Projections
in the public half of the store form a log of
suggestions\footnote{I hesitate to use the word ``propose'' or ``proposal''
anywhere in this document \ldots until I've done a more formal
analysis of the protocol. Those words have too many connotations in
the context of consensus protocols such as Paxos and Raft.}
by humming consensus participants for how they wish to change the
chain's metadata state.
Any chain member may write to the public half of the store.
Any chain member may read from the public half of the store.
\subsection{The privately-writable half of the projection store}
The privately-writable projection store is used to store the
Chain Replication metadata state (as chosen by humming consensus)
that is in use now by the local Machi server as well as previous
operation states.
Only the local server may write values into the private half of store.
Any chain member may read from the private half of the store.
The private projection store serves multiple purposes, including:
\begin{itemize}
\item Remove/clear the local server from ``wedge state''.
\item Act as a world-readable indicator of what projection that the
local server is currently using. The current projection will be
called $P_{current}$ throughout this document.
\item Act as the local server's log/history of
its sequence of $P_{current}$ projection changes.
\end{itemize}
The private half of the projection store is not replicated.
\section{Projections: calculation, storage, and use}
\label{sec:projections}
Machi uses a ``projection'' to determine how its Chain Replication replicas
should operate; see \cite{machi-design} and
\cite{corfu1}. At runtime, a cluster must be able to respond both to
administrative changes (e.g., substituting a failed server with
replacement hardware) as well as local network conditions (e.g., is
there a network partition?).
The projection defines the operational state of Chain Replication's
chain order as well the (re-)synchronization of data managed by by
newly-added/failed-and-now-recovering members of the chain. This
chain metadata, together with computational processes that manage the
chain, must be managed in a safe manner in order to avoid unintended
data loss of data managed by the chain.
The concept of a projection is borrowed
from CORFU but has a longer history, e.g., the Hibari key-value store
\cite{cr-theory-and-practice} and goes back in research for decades,
e.g., Porcupine \cite{porcupine}.
\subsection{The projection data structure}
\label{sub:the-projection}
{\bf NOTE:} This section is a duplicate of the ``The Projection and
the Projection Epoch Number'' section of \cite{machi-design}.
The projection data
structure defines the current administration \& operational/runtime
configuration of a Machi cluster's single Chain Replication chain.
Each projection is identified by a strictly increasing counter called
the epoch projection number (or more simply ``the epoch'').
Projections are calculated by each server using input from local
measurement data, calculations by the server's chain manager
(see below), and input from the administration API.
Each time that the configuration changes (automatically or by
administrator's request), a new epoch number is assigned
to the entire configuration data structure and is distributed to
all servers via the server's administration API.
Pseudo-code for the projection's definition is shown in
Figure~\ref{fig:projection}. To summarize the major components:
\begin{figure}
\begin{verbatim}
-type m_server_info() :: {Hostname, Port,...}.
-record(projection, {
epoch_number :: m_epoch_n(),
epoch_csum :: m_csum(),
creation_time :: now(),
author_server :: m_server(),
all_members :: [m_server()],
active_upi :: [m_server()],
repairing :: [m_server()],
down_members :: [m_server()],
dbg_annotations :: proplist()
}).
\end{verbatim}
\caption{Sketch of the projection data structure}
\label{fig:projection}
\end{figure}
\begin{itemize}
\item {\tt epoch\_number} and {\tt epoch\_csum} The epoch number and
projection checksum are unique identifiers for this projection.
\item {\tt creation\_time} Wall-clock time, useful for humans and
general debugging effort.
\item {\tt author\_server} Name of the server that calculated the projection.
\item {\tt all\_members} All servers in the chain, regardless of current
operation status. If all operating conditions are perfect, the
chain should operate in the order specified here.
\item {\tt active\_upi} All active chain members that we know are
fully repaired/in-sync with each other and therefore the Update
Propagation Invariant (Section~\ref{sub:upi} is always true.
\item {\tt repairing} All running chain members that
are in active data repair procedures.
\item {\tt down\_members} All members that the {\tt author\_server}
believes are currently down or partitioned.
\item {\tt dbg\_annotations} A ``kitchen sink'' proplist, for code to
add any hints for why the projection change was made, delay/retry
information, etc.
\end{itemize}
\subsection{Why the checksum field?}
According to the CORFU research papers, if a server node $S$ or client
node $C$ believes that epoch $E$ is the latest epoch, then any information
that $S$ or $C$ receives from any source that an epoch $E+\delta$ (where
$\delta > 0$) exists will push $S$ into the "wedge" state and $C$ into a mode
of searching for the projection definition for the newest epoch.
In the humming consensus description in
Section~\ref{sec:humming-consensus}, it should become clear that it's
possible to have a situation where two nodes make proposals
for a single epoch number. In the simplest case, assume a chain of
nodes $a$ and $b$. Assume that a symmetric network partition between
$a$ and $b$ happens. Also, let's assume that operating in
AP/eventually consistent mode.
On $a$'s network-partitioned island, $a$ can choose
an active chain definition of {\tt [A]}.
Similarly $b$ can choose a definition of {\tt [B]}. Both $a$ and $B$
might choose the
epoch for their proposal to be \#42. Because each are separated by
network partition, neither can realize the conflict.
When the network partition heals, it can become obvious to both
servers that there are conflicting values for epoch \#42. If we
use CORFU's protocol design, which identifies the epoch identifier as
an integer only, then the integer 42 alone is not sufficient to
discern the differences between the two projections.
Humming consensus requires that any projection be identified by both
the epoch number and the projection checksum, as described in
Section~\ref{sub:the-projection}.
\section{Managing multiple projection store replicas}
\label{sec:managing-multiple-projection-stores}
An independent replica management technique very similar to the style
used by both Riak Core \cite{riak-core} and Dynamo is used to manage
replicas of Machi's projection data structures.
The major difference is that humming consensus
{\em does not necessarily require}
successful return status from a minimum number of participants (e.g.,
a quorum).
\subsection{Read repair: repair only unwritten values}
The idea of ``read repair'' is also shared with Riak Core and Dynamo
systems. However, Machi has situations where read repair cannot truly
``fix'' a key because two different values have been written by two
different replicas.
Machi's projection store is write-once, and there is no ``undo'' or
``delete'' or ``overwrite'' in the projection store API.\footnote{It doesn't
matter what caused the two different values. In case of multiple
values, all participants in humming consensus merely agree that there
were multiple suggestions at that epoch which must be resolved by the
creation and writing of newer projections with later epoch numbers.}
Machi's projection store read repair can only repair values that are
unwritten, i.e., storing $\bot$.
The value used to repair $\bot$ values is the ``best'' projection that
is currently available for the current epoch $E$. If there is a single,
unanimous value $V_{u}$ for the projection at epoch $E$, then $V_{u}$
is use to repair all projections stores at $E$ that contain $\bot$
values. If the value of $K$ is not unanimous, then the ``highest
ranked value'' $V_{best}$ is used for the repair; see
Section~\ref{sub:ranking-projections} for a description of projection
ranking.
\subsection{Writing to public projection stores}
\label{sub:proj-store-writing}
Writing replicas of a projection $P_{new}$ to the cluster's public
projection stores is similar, in principle, to writing a Chain
Replication-managed system or Dynamo-like system. But unlike Chain
Replication, the order doesn't really matter.
In fact, the two steps below may be performed in parallel.
The significant difference with Chain Replication is how we interpret
the return status of each write operation.
\begin{enumerate}
\item Write $P_{new}$ to the local server's public projection store
using $P_{new}$'s epoch number $E$ as the key.
As a side effect, a successful write will trigger
``wedge'' status in the local server, which will then cascade to other
projection-related activity by the local chain manager.
\item Write $P_{new}$ to key $E$ of each remote public projection store of
all participants in the chain.
\end{enumerate}
In cases of {\tt error\_written} status,
the process may be aborted and read repair
triggered. The most common reason for {\tt error\_written} status
is that another actor in the system has
already calculated another (perhaps different) projection using the
same projection epoch number and that
read repair is necessary. The {\tt error\_written} may also
indicate that another server has performed read repair on the exact
projection $P_{new}$ that the local server is trying to write!
\subsection{Writing to private projection stores}
Only the local server/owner may write to the private half of a
projection store. Also, the private projection store is not replicated.
\subsection{Reading from public projection stores}
\label{sub:proj-store-reading}
A read is simple: for an epoch $E$, send a public projection read API
request to all participants. As when writing to the public projection
stores, we can ignore any timeout/unavailable return
status.\footnote{The success/failure status of projection reads and
writes is {\em not} ignored with respect to the chain manager's
internal liveness tracker. However, the liveness tracker's state is
typically only used when calculating new projections.} If we
discover any unwritten values $\bot$, the read repair protocol is
followed.
The minimum number of non-error responses is only one.\footnote{The local
projection store should always be available, even if no other remote
replica projection stores are available.} If all available servers
return a single, unanimous value $V_u, V_u \ne \bot$, then $V_u$ is
the final result for epoch $E$.
Any non-unanimous values are considered complete disagreement for the
epoch. This disagreement is resolved by humming consensus by later
writes to the public projection stores during subsequent iterations of
humming consensus.
We are not concerned with unavailable servers. Humming consensus
only uses as many public projections as are available at the present
moment of time. If some server $S$ is unavailable at time $t$ and
becomes available at some later $t+\delta$, and if at $t+\delta$ we
discover that $S$'s public projection store for key $E$
contains some disagreeing value $V_{weird}$, then the disagreement
will be resolved in the exact same manner that would be used as if we
had found the disagreeing values at the earlier time $t$.
\section{Phases of projection change, a prelude to Humming Consensus}
\label{sec:phases-of-projection-change}
Machi's projection changes use four discrete phases: network monitoring,
projection calculation, projection storage, and
adoption of new projections. The phases are described in the
subsections below. The reader should then be able to recognize each
of these phases when reading the humming consensus algorithm
description in Section~\ref{sec:humming-consensus}.
\subsection{Network monitoring}
\label{sub:network-monitoring}
Monitoring of local network conditions can be implemented in many
ways. None are mandatory, as far as this RFC is concerned.
Easy-to-maintain code should be the primary driver for any
implementation. Early versions of Machi may use some/all of the
following techniques:
\begin{itemize}
\item Other FLU file and projection store API requests.
\item Internal ``no op'' FLU-level protocol request \& response.
\item Network tests via ICMP {\tt ECHO\_REQUEST}, a.k.a. {\tt ping(8)}
\end{itemize}
Output of the monitor should declare the up/down (or
alive/unknown) status of each server in the projection. Such
Boolean status does not eliminate fuzzy logic, probabilistic
methods, or other techniques for determining availability status.
A hard choice of boolean up/down status
is required only by the projection calculation phase
(Section~\ref{sub:projection-calculation}).
\subsection{Calculating a new projection data structure}
\label{sub:projection-calculation}
A new projection may be
required whenever an administrative change is requested or in response
to network conditions (e.g., network partitions, crashed server).
Projection calculation is a pure computation, based on input of:
\begin{enumerate}
\item The current projection epoch's data structure
\item Administrative request (if any)
\item Status of each server, as determined by network monitoring
(Section~\ref{sub:network-monitoring}).
\end{enumerate}
Decisions about {\em when} to calculate a projection are made
using additional runtime information. Administrative change requests
probably should happen immediately. Change based on network status
changes may require retry logic and delay/sleep time intervals.
\subsection{Writing a new projection}
\label{sub:proj-storage-writing}
In Machi's case, the writing a new projection phase is very
straightforward; see
Section~\ref{sub:proj-store-writing} for the technique for writing
projections to all participating servers' projection stores.
Humming Consensus does not care
if the writes succeed or not: its final phase, adopting a
new projection, will determine which write operations are usable.
\subsection{Adoption a new projection}
\label{sub:proj-adoption}
It may be helpful to consider the projections written to the cluster's
public projection stores as ``suggestions'' for what the cluster's new
projection ought to be. (We avoid using the word ``proposal'' here,
to avoid direct parallels with protocols such as Raft and Paxos.)
In general, a projection $P_{new}$ at epoch $E_{new}$ is adopted by a
server only if
the change in state from the local server's current projection to new
projection, $P_{current} \rightarrow P_{new}$ will not cause data loss,
e.g., the Update Propagation Invariant and all other safety checks
required by chain repair in Section~\ref{sec:repair-entire-files}
are correct. For example, any new epoch must be strictly larger than
the current epoch, i.e., $E_{new} > E_{current}$.
Machi first reads the latest projection from all
available public projection stores. If the result is not a single
unanmous projection, then we return to the step in
Section~\ref{sub:projection-calculation}. If the result is a {\em
unanimous} projection $P_{new}$ in epoch $E_{new}$, and if $P_{new}$
does not violate chain safety checks, then the local node may
replace its local $P_{current}$ projection with $P_{new}$.
Not all safe projection transitions are useful, however. For example,
it's trivally safe to suggest projection $P_{zero}$, where the chain
length is zero. In an eventual consistency environment, projection
$P_{one}$ where the chain length is exactly one is also trivially
safe.\footnote{Although, if the total number of participants is more
than one, eventual consistency would demand that $P_{self}$ cannot
be used forever.}
\section{Humming Consensus}
\label{sec:humming-consensus}
Humming consensus describes consensus that is derived only from data
that is visible/available at the current time. It's OK if a network
partition is in effect and not all chain members are available;
the algorithm will calculate a rough consensus despite not
having input from all chain members. Humming consensus
may proceed to make a decision based on data from only one
participant, i.e., only the local node.
\begin{itemize}
\item When operating in AP mode, i.e., in eventual consistency mode, humming
consensus may reconfigure a chain of length $N$ into $N$
independent chains of length 1. When a network partition heals, the
humming consensus is sufficient to manage the chain so that each
replica's data can be repaired/merged/reconciled safely.
Other features of the Machi system are designed to assist such
repair safely.
\item When operating in CP mode, i.e., in strong consistency mode, humming
consensus would require additional restrictions. For example, any
chain that didn't have a minimum length of the quorum majority size of
all members would be invalid and therefore would not move itself out
of wedged state. In very general terms, this requirement for a quorum
majority of surviving participants is also a requirement for Paxos,
Raft, and ZAB. See Section~\ref{sec:split-brain-management} for a
proposal to handle ``split brain'' scenarios while in CP mode.
\end{itemize}
If a projection suggestion is made during epoch $E$, humming consensus
will eventually discover if other participants have made a different
suggestion during epoch $E$. When a conflicting suggestion is
discovered, newer \& later time epochs are defined to try to resolve
the conflict.
%% The creation of newer $E+\delta$ projections will bring all available
%% participants into the new epoch $E+delta$ and then eventually into consensus.
The next portion of this section follows the same pattern as
Section~\ref{sec:phases-of-projection-change}: network monitoring,
calculating new projections, writing projections, then perhaps
adopting the newest projection (which may or may not be the projection
that we just wrote).
Beginning with Section~\ref{sub:flapping-state}, we provide
additional detail to the rough outline of humming consensus.
\begin{figure*}[htp]
\resizebox{\textwidth}{!}{
\includegraphics[width=\textwidth]{chain-self-management-sketch.Diagram1.eps}
}
\caption{Humming consensus flow chart}
\label{fig:flowchart}
\end{figure*}
This section will refer heavily to Figure~\ref{fig:flowchart}, a
flowchart of the humming consensus algorithm. The following notation
is used by the flowchart and throughout this section.
\begin{description}
\item[Author] The name of the server that created the projection.
\item[Rank] Assigns a numeric score to a projection, see
Section~\ref{sub:ranking-projections}.
\item[E] The epoch number of a projection.
\item[UPI] "Update Propagation Invariant". The UPI part of the projection
is the ordered list of chain members where the
Update Propagation Invariant of the original Chain Replication paper
\cite{chain-replication} is preserved.
All UPI members of the chain have their data fully synchronized and
consistent, except for updates in-process at the current instant in time.
The UPI list is what Chain Replication usually considers ``the
chain''. For strongly consistent read operations, all clients
send their read operations to the tail/last member of the UPI server
list.
In Hibari's implementation of Chain Replication
\cite{cr-theory-and-practice}, the chain members between the
``head'' and ``official tail'' (inclusive) are what Machi calls the
UPI server list. (See also Section~\ref{sub:upi}.)
\item[Repairing] The ordered list of nodes that are in repair mode,
i.e., synchronizing their data with the UPI members of the chain.
In Hibari's implementation of Chain Replication, any chain members
that follow the ``official tail'' are what Machi calls the repairing
server list.
\item[Down] The list of chain members believed to be down, from the
perspective of the author.
\item[$\mathbf{P_{current}}$] The projection actively used by the local
node right now. It is also the projection with largest
epoch number in the local node's private projection store.
\item[$\mathbf{P_{newprop}}$] A new projection suggestion, as
calculated by the local server
(Section~\ref{sub:humming-projection-calculation}).
\item[$\mathbf{P_{latest}}$] The highest-ranked projection with the largest
single epoch number that has been read from all available public
projection stores, including the local node's public projection store.
\item[Unanimous] The $P_{latest}$ projection is unanimous if all
replicas in all accessible public projection stores are effectively
identical. All major elements such as the epoch number, checksum,
and UPI list must the same.
\item[$\mathbf{P_{current} \rightarrow P_{latest}}$ transition safe?]
A predicate function to
check the sanity \& safety of the transition from the local server's
$P_{current}$ to the $P_{latest}$ projection.
\item[Stop state] One iteration of the self-management algorithm has
finished on the local server.
\end{description}
The flowchart has three columns, from left to right:
\begin{description}
\item[Column A] Is there any reason to change?
\item[Column B] Do I act?
\item[Column C] How do I act?
\begin{description}
\item[C1xx] Save latest suggested projection to local private store, unwedge,
then stop.
\item[C2xx] Ask the author of $P_{latest}$ to try again, then we wait,
then iterate.
\item[C3xx] Our new projection $P_{newprop}$ appears best, so write it
to all public projection stores, then iterate.
\end{description}
\end{description}
The Erlang source code that implements the Machi chain manager is
structured as a state machine where the function executing for the
flowchart's state is named by the approximate location of the state
within the flowchart.
Most flowchart states in a column are numbered in increasing order,
top-to-bottom. These numbers appear in blue in
Figure~\ref{fig:flowchart}. Some state numbers, such as $A40$,
describe multiple flowchart states; the Erlang code for that function,
e.g. {\tt react\_to\_\-env\_A40()}, implements the logic for all such
flowchart states.
\subsection{Network monitoring}
\label{sub:humming-network-monitoring}
The actions described in this section are executed in the top part of
Column~A of Figure~\ref{fig:flowchart}.
See also, Section~\ref{sub:network-monitoring}.
In today's implementation, there is only a single criterion for
determining the alive/perhaps-not-alive status of a remote server $S$:
is $S$'s projection store available now? This question is answered by
attemping to read the projection store on server $S$.
If successful, then we assume that all
$S$ is available. If $S$'s projection store is not available for any
reason (including timeout), we assume $S$ is entirely unavailable.
This simple single
criterion appears to be sufficient for humming consensus, according to
simulations of arbitrary network partitions.
%% {\bf NOTE:} The projection store API is accessed via TCP. The network
%% partition simulator, mentioned above and described at
%% \cite{machi-chain-management-sketch-org}, simulates message drops at
%% the ISO layer 6/7, not IP packets at ISO layer 3.
\subsection{Calculating a new projection data structure}
\label{sub:humming-projection-calculation}
The actions described in this section are executed in the top part of
Column~A of Figure~\ref{fig:flowchart}.
See also, Section~\ref{sub:projection-calculation}.
Execution starts at ``Start'' state of Column~A of
Figure~\ref{fig:flowchart}. Rule $A20$'s uses recent success \&
failures in accessing other public projection stores to select a hard
boolean up/down status for each participating server.
\subsubsection{Calculating flapping state}
Also at this stage, the chain manager calculates its local
``flapping'' state. The name ``flapping'' is borrowed from IP network
engineer jargon ``route flapping'':
\begin{quotation}
``Route flapping is caused by pathological conditions
(hardware errors, software errors, configuration errors, intermittent
errors in communications links, unreliable connections, etc.) within
the network which cause certain reachability information to be
repeatedly advertised and withdrawn.'' \cite{wikipedia-route-flapping}
\end{quotation}
\paragraph{Flapping due to constantly changing network partitions and/or server crashes and restarts}
Currently, Machi does not attempt to dampen, smooth, or ignore recent
history of constantly flapping peer servers. If necessary, a failure
detector such as the $\phi$ accrual failure detector
\cite{phi-accrual-failure-detector} can be used to help mange such
situations.
\paragraph{Flapping due to asymmetric network partitions}
The simulator's behavior during stable periods where at least one node
is the victim of an asymmetric network partition is \ldots weird,
wonderful, and something I don't completely understand yet. This is
another place where we need more eyes reviewing and trying to poke
holes in the algorithm.
In cases where any node is a victim of an asymmetric network
partition, the algorithm oscillates in a very predictable way: each
server $S$ makes the same $P_{new}$ projection at epoch $E$ that $S$ made
during a previous recent epoch $E-\delta$ (where $\delta$ is small, usually
much less than 10). However, at least one node makes a suggestion that
makes rough consensus impossible. When any epoch $E$ is not
acceptable (because some node disagrees about something, e.g.,
which nodes are down),
the result is more new rounds of suggestions that create a repeating
loop that lasts as long as the asymmetric partition lasts.
From the perspective of $S$'s chain manager, the pattern of this
infinite loop is easy to detect: $S$ inspects the pattern of the last
$L$ projections that it has suggested, e.g., the last 10.
Tiny details such as the epoch number and creation timestamp will
differ, but the major details such as UPI list and repairing list are
the same.
If the major details of the last $L$ projections authored and
suggested by $S$ are the same, then $S$ unilaterally decides that it
is ``flapping'' and enters flapping state. See
Section~\ref{sub:flapping-state} for additional disucssion of the
flapping state.
\subsubsection{When to calculate a new projection}
\label{ssub:when-to-calc}
The Chain Manager schedules a periodic timer to act as a reminder to
calculate a new projection. The timer interval is typically
0.5--2.0 seconds, if the cluster has been stable. A client may call an
external API call to trigger a new projection, e.g., if that client
knows that an environment change has happened and wishes to trigger a
response prior to the next timer firing.
It's recommended that the timer interval be staggered according to the
participant ranking rules in Section~\ref{sub:ranking-projections};
higher-ranked servers use shorter timer intervals. Staggering sleep timers
is not required, but the total amount of churn (as measured by
suggested projections that are ignored or immediately replaced by a
new and nearly-identical projection) is lower when using staggered
timers.
\subsection{Writing a new projection}
\label{sub:humming-proj-storage-writing}
See also: Section~\ref{sub:proj-storage-writing}.
To focus very specifically about writing a projection,
Figure~\ref{fig:flowchart} shows that writing a private projection is
done by state $C110$ and that writing a public projection is done by
states $C300$ and $C310$.
Broadly speaking, there are a number of decisions made in all three
columns of Figure~\ref{fig:flowchart} to decide if and when any type
of projection should be written at all. Sometimes, the best action is
to do nothing.
\subsubsection{Column A: Is there any reason to change?}
The main tasks of the flowchart states in Column~A is to calculate a
new projection $P_{new}$ and perhaps also the inner projection
$P_{new2}$ if we're in flapping mode. Then we try to figure out which
projection has the greatest merit: our current projection
$P_{current}$, the new projection $P_{new}$, or the latest epoch
$P_{latest}$. If our local $P_{current}$ projection is best, then
there's nothing more to do.
\subsubsection{Column B: Do I act?}
The main decisions that states in Column B need to make are:
\begin{itemize}
\item Is the $P_{latest}$ projection written unanimously (as far as we
call tell right now)? If yes, then we consider
using it for our new internal state; go to state $C100$.
\item We compare $P_{latest}$ projection to our local $P_{new}$.
If $P_{latest}$ is better,
then we wait for a while. The waiting loop is broken by a local
retry counter. If the counter is small enough, we wait (via state
$C200$). While we wait, the author of the $P_{latest}$ projection will
have an opportunity to re-write it in a newer epoch
unanimously. If the retry counter is too big, then we break out of
our loop and go to state $C300$.
\item Otherwise we go to state $C300$, where we try to write our
$P_{new}$ to all public projection stores because, as far as we can
discern, our projection is best and everyone else ought to know it.
\end{itemize}
It's notable that if $P_{new}$ is truly the best projection available
at the moment, it must always first be written to everyone's
public projection stores and only then processed through another
monitor \& calculate loop through the flowchart.
\subsubsection{Column C: How do I act?}
This column contains three variations of how to act:
\begin{description}
\item[C1xx] Try to adopt the $P_{latest}$ suggestion. If the
transition between $P_{current}$ to $P_{latest}$ isn't safe, then
jump to $C300$. If it is completely safe, we'll use it by storing
$P_{latest}$ in our local private projection store and then adopt it
by setting $P_{current} = P_{latest}$.
\item[C2xx] Do nothing but sleep a while. Then we loop back to state
$A20$ and step through the flowchart loop again. Optionally, we
might want to poke the author of $P_{latest}$ to ask it to write
its proposal unanimously in a later epoch.
\item[C3xx] We try to replicate our $P_{new}$ suggestion to all local
projection stores, because it seems best.
\end{description}
\subsection{Adopting a new projection}
\label{sub:humming-proj-adoption}
See also: Section~\ref{sub:proj-adoption}.
The latest projection $P_{latest}$ is adopted by a Machi server at epoch $E$ if
the following two requirements are met:
\paragraph{\#1: All available copies of $P_{latest}$ are unanimous/identical}
If we read two projections at epoch $E$, $P^1_E$ and $P^2_E$, with
different checksum values, then we must consider $P^2_E \ne P^1_E$ and
therefore the suggested projections at epoch $E$ are not unanimous.
\paragraph{\#2: The transition from current $\rightarrow$ new projection is
safe}
Given the projection that the server is currently using,
$P_{current}$, the projection $P_{latest}$ is evaluated by numerous
rules and invariants, relative to $P_{current}$.
If such rule or invariant is
violated/false, then the local server will discard $P_{latest}$.
The transition from $P_{current} \rightarrow P_{latest}$ is checked
for safety and sanity. The conditions used for the check include:
\begin{enumerate}
\item The Erlang data types of all record members are correct.
\item The members of the UPI, repairing, and down lists contain no
duplicates and are in fact mutually disjoint.
\item The author node is not down (as far as we can observe).
\item There is no re-ordering of the UPI list members: the relative
order of the UPI list members in both projections must be strictly
maintained.
The same re-reordering restriction applies to all
servers in $P_{latest}$'s repairing list relative to
$P_{current}$'s repairing list.
\item Any server $S$ that was added to $P_{latest}$'s UPI list must
appear in the tail the UPI list. Furthermore, $S$ must have been in
$P_{current}$'s repairing list and had successfully completed file
repair prior to the transition.
\end{enumerate}
\subsection{Additional discussion of flapping state}
\label{sub:flapping-state}
All $P_{new}$ projections
calculated while in flapping state have additional diagnostic
information added, including:
\begin{itemize}
\item Flag: server $S$ is in flapping state.
\item Epoch number \& wall clock timestamp when $S$ entered flapping state.
\item The collection of all other known participants who are also
flapping (with respective starting epoch numbers).
\item A list of nodes that are suspected of being partitioned, called the
``hosed list''. The hosed list is a union of all other hosed list
members that are ever witnessed, directly or indirectly, by a server
while in flapping state.
\end{itemize}
\subsubsection{Flapping diagnostic data accumulates}
While in flapping state, this diagnostic data is gathered from
all available participants and merged together in a CRDT-like manner.
Once added to the diagnostic data list, a datum remains until
$S$ drops out of flapping state. When flapping state stops, all
accumulated diagnostic data is discarded.
This accumulation of diagnostic data in the projection data
structure acts in part as a substitute for a separate gossip protocol.
However, since all participants are already communicating with each
other via read \& writes to each others' projection stores, the diagnostic
data can propagate in a gossip-like manner via the projection stores.
\subsubsection{Flapping example (part 1)}
\label{ssec:flapping-example}
Any server listed in the ``hosed list'' is suspected of having some
kind of network communication problem with some other server. For
example, let's examine a scenario involving a Machi cluster of servers
$a$, $b$, $c$, $d$, and $e$. Assume there exists an asymmetric network
partition such that messages from $a \rightarrow b$ are dropped, but
messages from $b \rightarrow a$ are delivered.\footnote{If this
partition were happening at or below the level of a reliable
delivery network protocol like TCP, then communication in {\em both}
directions would be affected by an asymmetric partition.
However, in this model, we are
assuming that a ``message'' lost during a network partition is a
uni-directional projection API call or its response.}
Once a participant $S$ enters flapping state, it starts gathering the
flapping starting epochs and hosed lists from all of the other
projection stores that are available. The sum of this info is added
to all projections calculated by $S$.
For example, projections authored by $a$ will say that $a$ believes
that $b$ is down.
Likewise, projections authored by $b$ will say that $b$ believes
that $a$ is down.
\subsubsection{The inner projection (flapping example, part 2)}
\label{ssec:inner-projection}
\ldots We continue the example started in the previous subsection\ldots
Eventually, in a gossip-like manner, all other participants will
eventually find that their hosed list is equal to $[a,b]$. Any other
server, for example server $c$, will then calculate another
projection, $P_{new2}$, using the assumption that both $a$ and $b$
are down in addition to all other known unavailable servers.
\begin{itemize}
\item If operating in the default CP mode, both $a$ and $b$ are down
and therefore not eligible to participate in Chain Replication.
%% The chain may continue service if a $c$, $d$, $e$ and/or witness
%% servers can try to form a correct UPI list for the chain.
This may cause an availability problem for the chain: we may not
have a quorum of participants (real or witness-only) to form a
correct UPI chain.
\item If operating in AP mode, $a$ and $b$ can still form two separate
chains of length one, using UPI lists of $[a]$ and $[b]$, respectively.
\end{itemize}
This re-calculation, $P_{new2}$, of the new projection is called an
``inner projection''. The inner projection definition is nested
inside of its parent projection, using the same flapping disagnostic
data used for other flapping status tracking.
When humming consensus has determined that a projection state change
is necessary and is also safe (relative to both the outer and inner
projections), then the outer projection\footnote{With the inner
projection $P_{new2}$ nested inside of it.} is written to
the local private projection store.
With respect to future iterations of
humming consensus, the innter projection is ignored.
However, with respect to Chain Replication, the server's subsequent
behavior
{\em will consider the inner projection only}. The inner projection
is used to order the UPI and repairing parts of the chain and trigger
wedge/un-wedge behavior. The inner projection is also
advertised to Machi clients.
The epoch of the inner projection, $E^{inner}$ is always less than or
equal to the epoch of the outer projection, $E$. The $E^{inner}$
epoch typically only changes when new servers are added to the hosed
list.
To attempt a rough analogy, the outer projection is the carrier wave
that is used to transmit the inner projection and its accompanying
gossip of diagnostic data.
\subsubsection{Outer projection churn, inner projection stability}
One of the intriguing features of humming consensus's reaction to
asymmetric partition: flapping behavior continues for as long as
an any asymmetric partition exists.
\subsubsection{Stability in symmetric partition cases}
Although humming consensus hasn't been formally proven to handle all
asymmetric and symmetric partition cases, the current implementation
appears to converge rapidly to a single chain state in all symmetric
partition cases. This is in contrast to asymmetric partition cases,
where ``flapping'' will continue on every humming consensus iteration
until all asymmetric partition disappears. A formal proof is an area of
future work.
\subsubsection{Leaving flapping state and discarding inner projection}
There are two events that can trigger leaving flapping state.
\begin{itemize}
\item A server $S$ in flapping state notices that its long history of
repeatedly suggesting the same projection will be broken:
$S$ instead calculates some differing projection instead.
This change in projection history happens whenever a perceived network
partition changes in any way.
\item Server $S$ reads a public projection suggestion, $P_{noflap}$, that is
authored by another server $S'$, and that $P_{noflap}$ no longer
contains the flapping start epoch for $S'$ that is present in the
history that $S$ has maintained while $S$ has been in
flapping state.
\end{itemize}
When either trigger event happens, server $S$ will exit flapping state. All
new projections authored by $S$ will have all flapping diagnostic data
removed. This includes stopping use of the inner projection: the UPI
list of the inner projection is copied to the outer projection's UPI
list, to avoid a drastic change in UPI membership.
\subsection{Ranking projections}
\label{sub:ranking-projections}
A projection's rank is based on the epoch number (higher always wins),
chain length (larger wins), number \& state of any repairing members
of the chain (larger wins), and node name of the author server (as a
tie-breaking criteria).
\section{``Split brain'' management in CP Mode}
\label{sec:split-brain-management}
Split brain management is a thorny problem. The method presented here
is one based on pragmatics. If it doesn't work, there isn't a serious
worry, because Machi's first serious use case all require only AP Mode.
If we end up falling back to ``use Riak Ensemble'' or ``use ZooKeeper'',
then perhaps that's
fine enough. Meanwhile, let's explore how a
completely self-contained, no-external-dependencies
CP Mode Machi might work.
Wikipedia's description of the quorum consensus solution\footnote{See
{\tt http://en.wikipedia.org/wiki/Split-brain\_(computing)}.} is nice
and short:
\begin{quotation}
A typical approach, as described by Coulouris et al.,[4] is to use a
quorum-consensus approach. This allows the sub-partition with a
majority of the votes to remain available, while the remaining
sub-partitions should fall down to an auto-fencing mode.\footnote{Any
server on the minority side refuses to operate
because it is, so to speak, ``on the wrong side of the fence.''}
\end{quotation}
This is the same basic technique that
both Riak Ensemble and ZooKeeper use. Machi's
extensive use of write-once registers are a big advantage when implementing
this technique. Also very useful is the Machi ``wedge'' mechanism,
which can automatically implement the ``auto-fencing'' that the
technique requires. All Machi servers that can communicate with only
a minority of other servers will automatically ``wedge'' themselves,
refuse to author new projections, and
refuse all file API requests until communication with the
majority can be re-established.
\subsection{The quorum: witness servers vs. real servers}
In any quorum-consensus system, at least $2f+1$ participants are
required to survive $f$ participant failures. Machi can borrow an
old technique of ``witness servers'' to permit operation despite
having only a minority of ``real'' servers.
A ``witness server'' is one that participates in the network protocol
but does not store or manage all of the state that a ``real server''
does. A ``real server'' is a Machi server as
described by this RFC document. A ``witness server'' is a server that
only participates in the projection store and projection epoch
transition protocol and a small subset of the file access API.
A witness server doesn't actually store any
Machi files. A witness server's state is very tiny when compared to a
real Machi server.
A mixed cluster of witness and real servers must still contain at
least a quorum $f+1$ participants. However, as few as one of them
may be a real server,
and the remaining $f$ are witness servers. In
such a cluster, any majority quorum must have at least one real server
participant.
Witness servers are always placed at the front of the chain.
When in CP mode, any server that is on the minority side of a network
partition and thus cannot calculate a new projection that includes a
quorum of servers will
enter wedge state and remain wedged until the network partition
heals enough to communicate with a quorum of FLUs. This is a nice
property: we automatically get ``fencing'' behavior.
\begin{figure}
\centering
\begin{tabular}{c|c|c}
{\bf {{Partition ``side''}}} & & {\bf Partition ``side''} \\
{\bf {{Quorum UPI}}} && {\bf Minority UPI} \\
\hline
$[S_1,S_0,S_2]$ && $[]$ \\
$[W_0,S_1,S_0]$ && $[W_1,S_2]$ \\
$[W_1,W_0,S_1]$ && $[S_0,S_2]$ \\
\end{tabular}
\caption{Illustration of witness servers: on the left side, witnesses
provide enough servers to form a UPI chain of quorum length. Servers
on the right side cannot suggest a quorum UPI chain and therefore
wedge themselves. Under real conditions, there may be multiple
minority ``sides''.}
\label{tab:witness-examples}
\end{figure}
\subsection{Witness server data and protocol changes}
Some small changes to the projection's data structure
are required (relative to the initial spec described in
\cite{machi-design}). The projection itself
needs new annotation to indicate the operating mode, AP mode or CP
mode. The state type notifies the chain manager how to
react in network partitions and how to calculate new, safe projection
transitions and which file repair mode to use
(Section~\ref{sec:repair-entire-files}).
Also, we need to label member server servers as real- or
witness-type servers.
Write API requests are processed by witness servers in {\em almost but
not quite} no-op fashion. The only requirement of a witness server
is to return correct interpretations of local projection epoch
numbers, via the {\tt error\_bad\_epoch} and {\tt error\_wedged} error
codes. In fact, a new API call is sufficient for querying witness
servers: {\tt \{check\_epoch, m\_epoch()\}}.
Any client write operation sends the {\tt
check\_\-epoch} API command to witness servers and sends the usual {\tt
write\_\-req} command to real servers.
\subsection{Restarting after entire chain crashes}
There's a corner case that requires additional safety checks to
preserve strong consistency: restarting after the entire chain crashes.
The default restart behavior for the chain manager is to start the
local server $S$ with $P_{current} = P_{zero}$, i.e., $S$
believes that the current chain length is zero. Then $S$'s chain
manager will attempt to join the chain by waiting for another active
chain member $S'$ to notice that $S$ is now available. Then $S'$'s
chain manager will automatically suggest a projection where $S$ is
added to the repairing list. If there is no other active server,
then $S$ will suggest projection $P_{one}$, a chain of length one
where $S$ is the sole UPI member of the chain.
The default restart strategy cannot work correctly if: a). all members
of the chain crash simultaneously (e.g., power failure), or b). the UPI
chain was not at maximum length (i.e., no chain members are under
repair or down). For example, assume that the cluster consists of
servers $S_a$, $S_b$, and witness $W_0$. Assume that the
UPI chain is $P_{one} = [W_0,S_a]$ when a power
failure halts the entire data center. When power is
restored, let's assume server $S_b$ restarts first.
$S_b$'s chain manager must suggest
neither $[S_b]$ nor $[W_0,S_b]$. Clients must not access $S_b$ at
this time because we do not know how much stale data $S_b$ may have.
The chain's operational history is preserved and distributed amongst
the participants' private projection stores. The maximum of the
private projection store's epoch number from a quorum of servers
(including witnesses) gives sufficient information to know how to
safely restart a chain. In the example above, we must endure the
worst-case and wait until $S_a$ also returns to service.
\section{File Repair/Synchronization}
\label{sec:repair-entire-files}
\begin{figure}
\begin{enumerate}
\item Projection $P_E$ says that chain membership is $[S_a]$.
\item A write of bytes $B$ to file $F$ at offset $O$ is successful.
\item An administration API request triggers projection $P_{E+1}$ that
expands chain membership is $[S_a,S_b]$. Al file
repair/resyncronization process is scheduled to start sometime later.
\item FLU $S_a$ crashes.
\item The chain manager on $S_b$ notices $S_a$'s crash,
decides to create a new projection $P_{E+2}$ where chain membership is
$[S_b]$; $S_b$ executes a couple rounds of Humming Consensus,
adopts $P_{E+2}$, unwedges itself, and continues operation.
\item The bytes in $B$ are definitely unavailable at the moment.
If server $S_a$ is
never re-added to the chain, then $B$ are lost forever.
\end{enumerate}
\caption{An illustration of data loss due to careless handling of file
repair/synchronization.}
\label{fig:data-loss2}
\end{figure}
There are some situations where read-repair of individual byte ranges
of files is insufficient and repair of entire files is necessary.
\begin{itemize}
\item To synchronize data on servers added to the end of a chain in a
projection change.
This case covers both
adding a new, data-less server and re-adding a previous, data-full server
back to the chain.
\item To avoid data loss when changing the order of the chain's
existing servers.
\end{itemize}
\begin{figure*}
\centering
$
[\overbrace{\underbrace{H_1}_\textbf{Head of Heads}, M_{11},\ldots,
\underbrace{T_1}_\textbf{Tail \#1}}^\textbf{Chain \#1 (U.P.~Invariant preserving)}
\mid
\overbrace{H_2, M_{21},\ldots,
\underbrace{T_2}_\textbf{Tail \#2 \& Tail of Tails ($T_{tails}$)}}^\textbf{Chain \#2 (repairing)}
]
$
\caption{A general representation of a ``chain of chains'': a chain prefix of
Update Propagation Invariant preserving FLUs (``Chain \#1'')
with FLUs under repair (``Chain \#2'').}
\label{fig:repair-chain-of-chains}
\end{figure*}
Both situations can cause data loss if handled incorrectly.
If a violation of the Update Propagation Invariant (see end of
Section~\ref{sec:cr-proof}) is permitted, then the strong consistency
guarantee of Chain Replication can be violated. Machi uses
write-once registers, so the number of possible strong consistency
violations is smaller than Chain Replication of mutable registers.
However, even when using write-once registers,
any client that witnesses a written $\rightarrow$
unwritten transition is a violation of strong consistency.
Avoiding even this single bad scenario can be a bit tricky; see
Figure~\ref{fig:data-loss2} for a simple example.
\subsection{Just ``rsync'' it!}
\label{ssec:just-rsync-it}
A simple repair method might
loosely be described as ``just {\tt rsync}
all files to all servers in an infinite loop.''\footnote{The
file format suggested in
\cite{machi-design} does not actually permit {\tt rsync}
as-is to be sufficient. A variation of {\tt rsync} would need to be
aware of the data/metadata split within each file and only replicate
the data section \ldots and the metadata would still need to be
managed outside of {\tt rsync}.}
Unfortunately, such an informal method
cannot tell you exactly when you are in danger of data loss and when
data loss has actually happened. However, if we always maintain the Update
Propagation Invariant, then we know exactly when data loss is imminent
or has happened.
We intend to use Machi for multiple use cases, in both
require strong consistency and eventual consistency environments.
For a use case that implements a CORFU-like service,
strong consistency is a non-negotiable
requirement. Therefore, we will use the Update Propagation Invariant
as the foundation for Machi's data loss prevention techniques.
\subsection{Whole file repair as servers are (re-)added to a chain}
\label{sub:repair-add-to-chain}
\begin{figure}
\centering
$
[\overbrace{\underbrace{H_1}_\textbf{Head}, M_{11}, T_1,
H_2, M_{21},
\ldots
\underbrace{T_2}_\textbf{Tail}}^\textbf{Chain (U.P.~Invariant preserving)}
]
$
\caption{Representation of Figure~\ref{fig:repair-chain-of-chains}
after all repairs have finished successfully and a new projection has
been calculated.}
\label{fig:repair-chain-of-chains-finished}
\end{figure}
Machi's repair process must preserve the Update Propagation
Invariant. To avoid data races with data copying from
``U.P.~Invariant-preserving'' servers (i.e. fully repaired with
respect to the Update Propagation Invariant)
to servers of unreliable/unknown state, a
projection like the one shown in
Figure~\ref{fig:repair-chain-of-chains} is used. In addition, the
operations rules for data writes and reads must be observed in a
projection of this type.
\begin{itemize}
\item The system maintains the distinction between ``U.P.~Invariant-preserving''
and ``repairing'' FLUs at all times. This allows the system to
track exactly which servers are known to preserve the Update
Propagation Invariant and which servers do not.
\item All ``repairing'' FLUs must be added only at the end of the
chain-of-chains.
\item All write operations must flow successfully through the
chain-of-chains in order, i.e., from ``head of heads''
to the ``tail of tails''. This rule also includes any
repair operations.
\item All read operations that require strong consistency are directed
to Tail \#1, as usual.
\end{itemize}
While normal operations are performed by the cluster, a file
synchronization process is initiated to repair any data missing in the
tail servers. The sequence of steps differs depending on the AP or CP
mode of the system.
\subsubsection{Repair in CP mode}
In cases where the cluster is operating in CP Mode,
CORFU's repair method of ``just copy it all'' (from source FLU to repairing
FLU) is correct, {\em except} for the small problem pointed out in
Appendix~\ref{sub:repair-divergence}. The problem for Machi is one of
time \& space. Machi wishes to avoid transferring data that is
already correct on the repairing nodes. If a Machi node is storing
170~TBytes of data, we really do not wish to use 170~TBytes of bandwidth
to repair only 2~{\em MBytes} of truly-out-of-sync data.
However, it is {\em vitally important} that all repairing FLU data be
clobbered/overwritten with exactly the same data as the Update
Propagation Invariant preserving chain. If this rule is not strictly
enforced, then fill operations can corrupt Machi file data. The
algorithm proposed is:
\begin{enumerate}
\item Change the projection to a ``chain of chains'' configuration
such as depicted in Figure~\ref{fig:repair-chain-of-chains}.
\item For all files on all FLUs in all chains, extract the lists of
written/unwritten byte ranges and their corresponding file data
checksums.
Send these lists to the tail of tails
$T_{tails}$, which will collate all of the lists into a list of
tuples such as {\tt \{FName, $O_{start}, O_{end}$, CSum, FLU\_List\}}
where {\tt FLU\_List} is the list of all FLUs in the entire chain of
chains where the bytes at the location {\tt \{FName, $O_{start},
O_{end}$\}} are known to be written (as of the
beginning of the current repair period).
\item For chain \#1 members, i.e., the
leftmost chain relative to Figure~\ref{fig:repair-chain-of-chains},
repair all file byte ranges for any chain \#1 members that are not members
of the {\tt FLU\_List} set. This will repair any partial
writes to chain \#1 that were interrupted, e.g., by a client crash.
\item For all file byte ranges $B$ in all files on all FLUs in all repairing
chains where Tail \#1's value is written, send repair data $B$
\& metadata to any repairing FLU if the value repairing FLU's
value is unwritten or the checksum is not exactly equal to Tail \#1's
checksum.
\item For all file byte ranges $B$ in all files on all FLUs in all
repairing chains where Tail \#1's value is unwritten $\bot$, force
$B$ on all repairing FLUs to also be $\bot$.\footnote{This may
appear to be a violation of write-once register semantics, but in
truth, we are fixing the results of partial write failures and
therefore must be able to undo any partial write in this
circumstance.}
\end{enumerate}
When the repair is known to have copied all missing data successfully,
then the chain can change state via a new projection that includes the
repaired FLU(s) at the end of the U.P.~Invariant preserving chain \#1
in the same order in which they appeared in the chain-of-chains during
repair. See Figure~\ref{fig:repair-chain-of-chains-finished}.
This transition may progress one server at a time, moving the server
formerly in role $H_2$ to the new role $T_1$ and adjusting all
downstream chain members to ``shift left'' by one position.
The repair can be coordinated by the $T_{tails}$ FLU
or any other FLU or cluster member that has spare capacity to manage
the process.
There is no race condition here between the enumeration steps
and the repair steps. Why? Because the change in projection at
step \#1 will force any new data writes to adapt to a new projection.
Consider the mutations that either happen before or after a projection
change:
\begin{itemize}
\item For all mutations $M_1$ prior to the projection change, the
enumeration steps \#3 \& \#4 and \#5 will always encounter mutation
$M_1$. Any repair must write through the entire chain-of-chains and
thus will preserve the Update Propagation Invariant when repair is
finished.
\item For all mutations $M_2$ starting during or after the projection
change has finished, a new mutation $M_2$ may or may not be included in the
enumeration steps \#3 \& \#4 and \#5.
However, in the new projection, $M_2$ must be
written to all chain of chains members, and such
in-order writes will also preserve the Update
Propagation Invariant and therefore is also be safe.
\end{itemize}
\subsubsection{Repair in AP Mode}
In cases the cluster is operating in AP Mode:
\begin{enumerate}
\item In general, follow the steps of the ``CP Mode'' sequence (above).
\item At step \#3, instead of repairing only FLUs in Chain \#1, AP mode
will repair the byte range of any FLU that is not a member of the
{\tt FLU\_List} set.
\item Do not use step \#5; stop at step \#4; under no circumstances go
to step \#6.
\end{enumerate}
The end result is a big ``merge'' where any
{\tt \{FName, $O_{start}, O_{end}$\}} range of bytes that is written
on FLU $S_w$ but unwritten from FLU $S_u$ is written down the full chain
of chains, skipping any FLUs where the data is known to be written and
repairing all such $S_u$ servers.
Such writes will also preserve Update Propagation Invariant when
repair is finished, even though AP Mode does not require strong consistency
that the Update Propagation Invariant provides.
\subsection{Whole-file repair when changing server ordering within a chain}
\label{sub:repair-chain-re-ordering}
This section has been cut --- please see Git commit history of this
document for discussion.
\section{Additional sources for information about humming consensus}
\begin{itemize}
\item ``On Consensus and Humming in the IETF'' \cite{rfc-7282}, for
background on the use of humming by IETF meeting participants during
IETF meetings.
\item ``On `Humming Consensus', an allegory'' \cite{humming-consensus-allegory},
for an allegory in homage to the style of Leslie Lamport's original Paxos
paper.
\end{itemize}
\section{Acknowledgements}
We wish to thank everyone who has read and/or reviewed this document
in its really terrible early drafts and have helped improve it
immensely:
Mark Allen,
John Daily,
Zeeshan Lakhani,
Chris Meiklejohn,
Jon Meredith,
Mark Raugas,
Justin Sheehy,
Shunichi Shinohara,
Andrew Stone,
and
Kota Uenishi.
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\appendix
\section{Chain Replication: why is it correct?}
\label{sec:cr-proof}
See Section~3 of \cite{chain-replication} for a proof of the
correctness of Chain Replication. A short summary is provide here.
Readers interested in good karma should read the entire paper.
\subsection{The Update Propagation Invariant}
\label{sub:upi}
``Update Propagation Invariant'' is the original chain replication
paper's name for the
$H_i \succeq H_j$
property mentioned in Figure~\ref{tab:chain-order}.
This paper will use the same name.
This property may also be referred to by its acronym, ``UPI''.
\subsection{Chain Replication and strong consistency}
The basic rules of Chain Replication and its strong
consistency guarantee:
\begin{enumerate}
\item All replica servers are arranged in an ordered list $C$.
\item All mutations of a datum are performed upon each replica of $C$
strictly in the order which they appear in $C$. A mutation is considered
completely successful if the writes by all replicas are successful.
\item The head of the chain makes the determination of the order of
all mutations to all members of the chain. If the head determines
that some mutation $M_i$ happened before another mutation $M_j$,
then mutation $M_i$ happens before $M_j$ on all other members of
the chain.\footnote{While necesary for general Chain Replication,
Machi does not need this property. Instead, the property is
provided by Machi's sequencer and the write-once register of each
byte in each file.}
\item All read-only operations are performed by the ``tail'' replica,
i.e., the last replica in $C$.
\end{enumerate}
The basis of the proof lies in a simple logical trick, which is to
consider the history of all operations made to any server in the chain
as a literal list of unique symbols, one for each mutation.
Each replica of a datum will have a mutation history list. We will
call this history list $H$. For the $i^{th}$ replica in the chain list
$C$, we call $H_i$ the mutation history list for the $i^{th}$ replica.
Before the $i^{th}$ replica in the chain list begins service, its mutation
history $H_i$ is empty, $[]$. After this replica runs in a Chain
Replication system for a while, its mutation history list grows to
look something like
$[M_0, M_1, M_2, ..., M_{m-1}]$ where $m$ is the total number of
mutations of the datum that this server has processed successfully.
Let's assume for a moment that all mutation operations have stopped.
If the order of the chain was constant, and if all mutations are
applied to each replica in the chain's order, then all replicas of a
datum will have the exact same mutation history: $H_i = H_J$ for any
two replicas $i$ and $j$ in the chain
(i.e., $\forall i,j \in C, H_i = H_J$). That's a lovely property,
but it is much more interesting to assume that the service is
not stopped. Let's look next at a running system.
\begin{figure*}
\centering
\begin{tabular}{ccc}
{\bf {{On left side of $C$}}} & & {\bf On right side of $C$} \\
\hline
\multicolumn{3}{l}{Looking at replica order in chain $C$:} \\
$i$ & $<$ & $j$ \\
\multicolumn{3}{l}{For example:} \\
0 & $<$ & 2 \\
\hline
\multicolumn{3}{l}{It {\em must} be true: history lengths per replica:} \\
length($H_i$) & $\geq$ & length($H_j$) \\
\multicolumn{3}{l}{For example, a quiescent chain:} \\
length($H_i$) = 48 & $\geq$ & length($H_j$) = 48 \\
\multicolumn{3}{l}{For example, a chain being mutated:} \\
length($H_i$) = 55 & $\geq$ & length($H_j$) = 48 \\
\multicolumn{3}{l}{Example ordered mutation sets:} \\
$[M_0,M_1,\ldots,M_{46},M_{47},\ldots,M_{53},M_{54}]$ & $\supset$ & $[M_0,M_1,\ldots,M_{46},M_{47}]$ \\
\multicolumn{3}{c}{\bf Therefore the right side is always an ordered
subset} \\
\multicolumn{3}{c}{\bf of the left side. Furthermore, the ordered
sets on both} \\
\multicolumn{3}{c}{\bf sides have the exact same order of those elements they have in common.} \\
\multicolumn{3}{c}{The notation used by the Chain Replication paper is
shown below:} \\
$[M_0,M_1,\ldots,M_{46},M_{47},\ldots,M_{53},M_{54}]$ & $\succeq$ & $[M_0,M_1,\ldots,M_{46},M_{47}]$ \\
\end{tabular}
\caption{The ``Update Propagation Invariant'' as
illustrated by Chain Replication protocol history.}
\label{tab:chain-order}
\end{figure*}
If the entire chain $C$ is processing any number of concurrent
mutations, then we can still understand $C$'s behavior.
Figure~\ref{tab:chain-order} shows us two replicas in chain $C$:
replica $R_i$ that's on the left/earlier side of the replica chain $C$
than some other replica $R_j$. We know that $i$'s position index in
the chain is smaller than $j$'s position index, so therefore $i < j$.
The restrictions of Chain Replication make it true that length($H_i$)
$\ge$ length($H_j$) because it's also that $H_i \supset H_j$, i.e,
$H_i$ on the left is always is a superset of $H_j$ on the right.
When considering $H_i$ and $H_j$ as strictly ordered lists, we have
$H_i \succeq H_j$, where the right side is always an exact prefix of the left
side's list. This prefixing propery is exactly what strong
consistency requires. If a value is read from the tail of the chain,
then no other chain member can have a prior/older value because their
respective mutations histories cannot be shorter than the tail
member's history.
\section{Divergence from CORFU's repair}
\label{sub:repair-divergence}
The original repair design for CORFU is simple and effective,
mostly. See Figure~\ref{fig:corfu-style-repair} for a complete
description of the algorithm
Figure~\ref{fig:corfu-repair-sc-violation} for an example of a strong
consistency violation that can follow.
\begin{figure}
\begin{enumerate}
\item Destroy all data on the repair destination FLU.
\item Add the repair destination FLU to the tail of the chain in a new
projection $P_{p+1}$.
\item Change the active projection from $P_p$ to $P_{p+1}$.
\item Let single item read repair fix all of the problems.
\end{enumerate}
\caption{Simplest CORFU-style repair algorithm.}
\label{fig:corfu-style-repair}
\end{figure}
\begin{figure}
\begin{enumerate}
\item Write value $V$ to offset $O$ in the log with chain $[S_a]$.
This write is considered successful.
\item Change projection to configure chain as $[S_a,S_b]$.
All values on FLU $S_b$ are unwritten, $\bot$. We assume that
$S_b$'s unwritten values will be written by read-repair operations.
\item FLU server $S_a$ crashes. The new projection defines the chain
as $[S_b]$.
\item A client attempts to read offset $O$ and finds $\bot$.
This is a strong consistency violation: the value $V$ should have
been found.
%% \item The same client decides to fill $O$ with the junk value
%% $V_{junk}$. Now value $V$ is lost.
\end{enumerate}
\caption{An example scenario where the CORFU simplest repair algorithm
can lead to a violation of strong consistency.}
\label{fig:corfu-repair-sc-violation}
\end{figure}
A variation of the repair
algorithm is presented in section~2.5 of a later CORFU paper \cite{corfu2}.
However, the re-use a failed
server is not discussed there, either: the example of a failed server
$S_6$ uses a new server, $S_8$ to replace $S_6$. Furthermore, the
repair process is described as:
\begin{quote}
``Once $S_6$ is completely rebuilt on $S_8$ (by copying entries from
$S_7$), the system moves to projection (C), where $S_8$ is now used
to service all reads in the range $[40K,80K)$.''
\end{quote}
The phrase ``by copying entries'' does not give enough
detail to avoid the same data race as described in
Figure~\ref{fig:corfu-repair-sc-violation}. We believe that if
``copying entries'' means copying only written pages, then CORFU
remains vulnerable. If ``copying entries'' also means ``fill any
unwritten pages prior to copying them'', then perhaps the
vulnerability is eliminated.\footnote{SLF's note: Probably? This is my
gut feeling right now. However, given that I've just convinced
myself 100\% that fill during any possibility of split brain is {\em
not safe} in Machi, I'm not 100\% certain anymore than this ``easy''
fix for CORFU is correct.}.
\end{document}