FaunaDB is an OLTP database for cloud environments.[01]
- Website
- https://fauna.com[01]
- Tech Docs
- https://docs.fauna.com[02]
- Developer
- Country of Origin
- US
- Start Year
- 2012
- Project Type
- Commercial
- Written in
- Scala
- Inspired By
- Calvin
- Operating Systems
- All OS with Java VM, Hosted
- License
- Proprietary
FaunaDB is an OLTP database for cloud environments.[01]
History
Fauna was founded in 2012 by a team of ex-Twitter engineers to solve consistency vs scale tradeoff in distributed data infrastructure. FaunaDB in inspired by Calvin, and is the only commercial database system that implements that protocol till date.
Concurrency Control
FaunaDB’s distributed transaction log is processed deterministically and non-conflicting transactions are retired to multi-version concurrency control storage (MVCC) with configurable data retention. Queries can access the previous versions of documents and indexes by supplying a timestamp, and even compare subqueries between snapshots at different timestamps. With elevated privileges, queries can modify past snapshots, because sometimes it’s better to fix a mistake than issue compensating transactions.
Data Model[03]
FaunaDB is an indexed document store that allows access to the stored data using multiple models - relational, document, graph and key-value.
Indexes
FaunaDB indexes are accessed via term and paginated by value, enabling developers to optimize data locality as applications scale. Queries can use joins and other set operations to combine indexes, as well as iterate over rows to load documents or run dependent queries. By default, indexes work with snapshot isolation, but they can be configured for serialized isolation.
Isolation Levels[04][05][06]
Read-write transactions using serialized indexes run with strict-serializability. Read-only transactions and index reads from non-serialized indexes will see snapshot isolation. Clients can upgrade to strict-serializability across all operations.
Logging
FaunaDB uses standard file-based query logging with configurable log file locations. Additionally a statsd interface is provided for integration with tools like Datadog and Graphite.
Query Interface
Fauna Query Language (FQL) is expression oriented: all functions, control structures, and literals return values. It is easy to map over a collection and compute a result, and possibly fetching more data, for each member. Queries are executed as ACID transactions by submitting them to any node in the FaunaDB cluster, which acts as the coordinator for the query. FaunaDB also offers support for GraphQL, including schema import.
Storage Model
Storage is automatically partitioned across a FaunaDB cluster, with each replica containing one full copy of the data set. Multi-version concurrency control enables configurable data-retention and ensures queries see a consistent snapshot of the database.
System Architecture[07]
All nodes in a FaunaDB cluster run the same Java JAR, with administrator control over log and data replication topology. Queries can be serviced by any node in the cluster, which acts as the coordinator for the query. Queries run as isolated ACID transactions, and can include precondition checks and dependent queries. Transactions are processed using the Calvin protocol which is optimized for multi-region deployments.
Views
FaunaDB’s indexes are similar to views, in that they materialize covered fields from the source class, which are returned as part of the index query result. Similar to materialized views, access control rules can enforce that particular indexes can only be read by client keys with specific roles.
Citations
7 sources- https://fauna.com fauna.com
- https://docs.fauna.com fauna.com
- https://fauna.com/blog/unifying-relational-document-graph-and-temporal-data-models fauna.com
- Jepsen: FaunaDB 2.5.4 jepsen.io
- Strong Serializability jepsen.io
- https://docs.fauna.com/fauna/current/reference/isolation_levels.html fauna.com
- https://fauna.com/blog/consistency-without-clocks-faunadb-transaction-protocol fauna.com