--- layout: docs page_title: Integrated Storage description: Learn about the integrated raft storage in Vault. --- # Integrated Storage Vault supports several storage options for the durable storage of Vault's information. Each backend offers pros, cons, advantages, and trade-offs. For example, some backends support high availability while others provide a more robust backup and restoration process. As of Vault 1.4, an Integrated Storage option is offered. This storage backend does not rely on any third party systems; it implements high availability, supports Enterprise Replication features, and provides backup/restore workflows. ## Consensus Protocol Vault's Integrated Storage uses a [consensus protocol]() to provide [Consistency](https://en.wikipedia.org/wiki/CAP_theorem) (as defined by CAP). The consensus protocol is based on ["Raft: In search of an Understandable Consensus Algorithm"](https://raft.github.io/raft.pdf). For a visual explanation of Raft, see [The Secret Lives of Data](http://thesecretlivesofdata.com/raft). ### Raft Protocol Overview Raft is a consensus algorithm that is based on [Paxos](https://en.wikipedia.org/wiki/Paxos_%28computer_science%29). Compared to Paxos, Raft is designed to have fewer states and a simpler, more understandable algorithm. The Raft protocol will not be fully covered here. However, a high level description is provided to help you build a mental model. Refer to the complete specification that's described in [this paper](https://raft.github.io/raft.pdf). #### Terminology There are a few key terms to know when discussing Raft: - **Leader** - At any given time, the peer set elects a single node to be the leader. The leader is responsible for ingesting new log entries, replicating to followers, and managing when an entry is committed. The leader node is also the active Vault node and followers are standby nodes. Refer to the [High Availability](/docs/internals/high-availability#design-overview) document for more information. - **Log** - An ordered sequence of entries (replicated log) to keep track of any cluster changes. The leader is responsible for _log replication_. When new data is written, for example, a new event creates a log entry. The leader then sends the new log entry to its followers. Any inconsistency within the replicated log entries will indicate an issue. - **FSM** - [Finite State Machine](https://en.wikipedia.org/wiki/Finite-state_machine). A collection of finite states with transitions between them. As new logs are applied, the FSM is allowed to transition between states. Application of the same sequence of logs must result in the same state, meaning behavior must be deterministic. - **Peer set** - The set of all members participating in log replication. All server nodes are in the peer set of the local cluster. - **Quorum** - A majority of members from a peer set: for a set of size `n`, quorum requires at least `(n+1)/2` members. For example, if there are 5 members in the peer set, we would need 3 nodes to form a quorum. If a quorum of nodes is unavailable for any reason, the cluster becomes _unavailable_ and no new logs can be committed. - **Committed Entry** - An entry is considered _committed_ when it is durably stored on a quorum of nodes. An entry is applied once its committed. #### Node States Raft nodes are always in one of three states: follower, candidate, or leader. All nodes initially start out as a follower. In this state, nodes can accept log entries from a leader and cast votes. If no entries are received for a period of time, nodes will self-promote to the candidate state. In the candidate state, nodes request votes from their peers. If a candidate receives a quorum of votes, then it is promoted to a leader. The leader must accept new log entries and replicate to all the other followers. #### Writing Logs Once a cluster has a leader, it is able to accept new log entries. A client can request that a leader append a new log entry (from Raft's perspective, a log entry is an opaque binary blob). The leader then writes the entry to durable storage and attempts to replicate to a quorum of followers. Once the log entry is considered _committed_, it can be _applied_ to a finite state machine. The finite state machine is application specific; in Vault's case, we use [BoltDB](https://github.com/etcd-io/bbolt) to maintain a cluster state. Vault's writes are blocked until they are _committed_ and _applied_. #### Compacting Logs It would be undesirable to allow a replicated log to grow in an unbounded fashion. Raft provides a mechanism by which the current state is saved to snapshots and its related logs are compacted. Because of the FSM abstraction, restoring the state of the FSM must result in the same state as a replay of old logs. This allows Raft to capture the FSM state at a point in time and then remove all the logs that were used to reach that state. This is performed automatically without user intervention and prevents unbounded disk usage while also minimizing the time spent replaying logs. One of the advantages of using BoltDB is that it allows Vault's snapshots to be very light weight. Since Vault's data is already persisted to disk in BoltDB, the snapshot process just needs to truncate the raft logs. #### Quorum Consensus is fault-tolerant while a cluster has quorum. If a quorum of nodes is unavailable, it is impossible to process log entries or reason about peer membership. For example, suppose there are only 2 peers: A and B. The quorum size is also 2, meaning both nodes must agree to commit a log entry. If either A or B fails, it is now impossible to reach quorum. This means the cluster is unable to add or remove a node or to commit any additional log entries. This results in _unavailability_. At this point, manual intervention is required to remove either A or B and restart the remaining node in bootstrap mode. A Raft cluster of 3 nodes can tolerate a single node failure while a cluster of 5 can tolerate 2 node failures. The recommended configuration is to either run 3 or 5 Vault servers per cluster. This maximizes availability without greatly sacrificing performance. The [deployment table](#deployment-table) below summarizes the potential cluster size options and the fault tolerance of each. #### Performance In terms of performance, Raft is comparable to Paxos. Assuming stable leadership, committing a log entry requires a single round trip to half of the cluster. Thus, performance is bound by disk I/O and network latency. ### Raft in Vault When getting started, a single Vault server is [initialized](/docs/commands/operator/init/#operator-init). At this point, the cluster is of size 1, which allows the node to self-elect as a leader. Once a leader is elected, other servers can be added to the peer set in a way that preserves consistency and safety. The join process is how new nodes are added to the Vault cluster; it uses an encrypted challenge/answer workflow. To accomplish this, all nodes in a single Raft cluster must share the same seal configuration. If using an Auto Unseal, the join process can use the configured seal to automatically decrypt the challenge and respond with the answer. If using a Shamir seal, the unseal keys must be provided to the node attempting to join the cluster before it can decrypt the challenge and respond with the decrypted answer. Since all servers participate as part of the peer set, they all know the current leader. When an API request arrives at a non-leader server, the request is forwarded to the leader. Similar to other storage backends, data that is written to the Raft log and FSM will be encrypted by Vault's barrier. Vault does not currently offer automated dead server cleanup. If you wish to decommission a node, or a node dies and must be replaced, the node must manually be removed from the cluster with the `remove peer` [command](/docs/commands/operator/raft#remove-peer). ### Quorum Management #### Autopilot An [Autopilot feature](https://www.vaultproject.io/docs/concepts/integrated-storage/autopilot) is available since 1.7.x & later versions that include configurable parameters for when a node is treated as healthy before it's considered an eligible voter in the quorum list. Other features which may be enabled include the ability to remove nodes considered as dead from the quorum list after a certain period. Autopilot is enabled by default in Vault 1.7+. The default configuration values should work well for most Vault deployments, but they can be changed if needed. Autopilot includes stabilization logic for nodes joining the cluster. Recently joined nodes are accepted as non-voter initially until they are in sync with matching Raft index and only after a stability thresholds are they then full voting members. Setting the stability threshold too low can result in cluster instability as nodes will be counted as voters before they are capable of voting. As of Vault 1.7, a dead server cleanup capability is available. With this feature enabled, unhealthy nodes are automatically removed from the Raft cluster without manual operator intervention. This is enabled via the [Autopilot API](/api-docs/system/storage/raftautopilot). If you wish to decommission a node manually, this can be done with the `remove peer` [command](/docs/commands/operator/raft#remove-peer). #### Without Autopilot Older versions of Vault, 1.6.x & lower, as well as cases where Autopilot may be disabled or misconfigured, behave differently. In scenarios involving those when a node joins a Raft cluster, it attempts to catch up with the reset of the nodes through the data that it's replicating from the leader. While in this initial synchronisation state, the node cannot vote but is counted for the purposes of quorum. If a number of new nodes join the cluster simultaneously or at similar times, and thereby exceeding the failure tolerance of the cluster, quorum may be lost and the cluster can fail. For example, consider a scenario where there is a 3-node cluster with a large amount of data and a failure tolerance of 1. An additional 3 new nodes then join the cluster. The cluster now consists of 6 nodes with a failure tolerance of 2, but since all 3 nodes are still catching up, this will result in a loss of quorum. * A 3 node cluster with a large amount of data that's at a failure tolerance of 1. * Another 3 new nodes then join the cluster together. * Now the cluster consists of 6 nodes with a failure tolerance of 2, but all 3 new nodes are still catching up, resulting in a loss of quorum. For this reason, we recommend ensuring new nodes have Raft indexes that are close to the leader before adding additional nodes. Raft indexes are visible via `vault status`. ### Deployment Table Below is a table that shows quorum size and failure tolerance for various cluster sizes. The recommended deployment is either 3 or 5 servers. A single server deployment is _**highly**_ discouraged as data loss is inevitable in a failure scenario.
Servers Quorum Size Failure Tolerance
1 1 0
2 2 0
3 2 1
4 3 1
5 3 2
6 4 2
7 4 3
### Minimums & Scaling The [Vault Reference Architecture](https://learn.hashicorp.com/tutorials/vault/raft-reference-architecture#recommended-architecture) recommends a 5 node cluster to ensure a minimum failure tolerance of at least 2. It is good practise, wherever possible, to retain a failure tolerance of 2 or more. A scaling approach can be pursued in the event of maintenance and other changes where an additional pair of nodes (ie two) are added in an existing 5 node cluster making for a 7 node cluster. Once new joiners are confirmed to be in sync then the 2 older nodes can be stopped and or destroyed with the same processes being repeated until all other nodes have been replaced. This use of additional nodes on a temporary basis of a 7 node cluster arrangement, concluding back to 5 nodes, may be one way to ensure sufficient failure tolerance is maintained and that changes are made progressively in proportion to the cluster failure tolerance and never exceeding the available failure tolerance in any given time. The intent with any change or scaling ought to be with the lose of quorum and reduction of the quorum failure tolerances at the forefront and discouraging any practises that compromise that. Scaling clusters up or down in pairs with 2 nodes each time also has the added advantage of avoiding even numbers and it is always recommended to allow for an odd number of total voters in any cluster.