DataFusion is an extensible query execution framework, written in Rust, that uses Apache Arrow as its in-memory format.
DataFusion supports both an SQL and a DataFrame API for building logical query plans as well as a query optimizer and execution engine capable of parallel execution against partitioned data sources (CSV and Parquet) using threads.
DataFusion also supports distributed query execution via the Ballista crate.
DataFusion is used to create modern, fast and efficient data pipelines, ETL processes, and database systems, which need the performance of Rust and Apache Arrow and want to provide their users the convenience of an SQL interface or a DataFrame API.
- High Performance: Leveraging Rust and Arrow's memory model, DataFusion achieves very high performance
- Easy to Connect: Being part of the Apache Arrow ecosystem (Arrow, Parquet and Flight), DataFusion works well with the rest of the big data ecosystem
- Easy to Embed: Allowing extension at almost any point in its design, DataFusion can be tailored for your specific usecase
- High Quality: Extensively tested, both by itself and with the rest of the Arrow ecosystem, DataFusion can be used as the foundation for production systems.
Here are some of the projects known to use DataFusion:
- Ballista Distributed Compute Platform
- Cloudfuse Buzz
- Cube Store
- datafusion-python
- datafusion-java
- datafusion-ruby
- delta-rs
- InfluxDB IOx Time Series Database
- ROAPI
- Tensorbase
- Squirtle
(if you know of another project, please submit a PR to add a link!)
Run a SQL query against data stored in a CSV:
use datafusion::prelude::*;
use datafusion::arrow::util::pretty::print_batches;
use datafusion::arrow::record_batch::RecordBatch;
#[tokio::main]
async fn main() -> datafusion::error::Result<()> {
// register the table
let mut ctx = ExecutionContext::new();
ctx.register_csv("example", "tests/example.csv", CsvReadOptions::new()).await?;
// create a plan to run a SQL query
let df = ctx.sql("SELECT a, MIN(b) FROM example GROUP BY a LIMIT 100").await?;
// execute and print results
df.show().await?;
Ok(())
}
Use the DataFrame API to process data stored in a CSV:
use datafusion::prelude::*;
use datafusion::arrow::util::pretty::print_batches;
use datafusion::arrow::record_batch::RecordBatch;
#[tokio::main]
async fn main() -> datafusion::error::Result<()> {
// create the dataframe
let mut ctx = ExecutionContext::new();
let df = ctx.read_csv("tests/example.csv", CsvReadOptions::new()).await?;
let df = df.filter(col("a").lt_eq(col("b")))?
.aggregate(vec![col("a")], vec![min(col("b"))])?;
// execute and print results
df.show_limit(100).await?;
Ok(())
}
Both of these examples will produce
+---+--------+
| a | MIN(b) |
+---+--------+
| 1 | 2 |
+---+--------+
DataFusion is published on crates.io, and is well documented on docs.rs.
To get started, add the following to your Cargo.toml
file:
[dependencies]
datafusion = "6.0.0"
DataFusion also includes a simple command-line interactive SQL utility. See the CLI reference for more information.
- SQL Parser
- SQL Query Planner
- Query Optimizer
- Constant folding
- Join Reordering
- Limit Pushdown
- Projection push down
- Predicate push down
- Type coercion
- Parallel query execution
- Projection
- Filter (WHERE)
- Filter post-aggregate (HAVING)
- Limit
- Aggregate
- Common math functions
- cast
- try_cast
-
VALUES
lists - Postgres compatible String functions
- ascii
- bit_length
- btrim
- char_length
- character_length
- chr
- concat
- concat_ws
- initcap
- left
- length
- lpad
- ltrim
- octet_length
- regexp_replace
- repeat
- replace
- reverse
- right
- rpad
- rtrim
- split_part
- starts_with
- strpos
- substr
- to_hex
- translate
- trim
- Miscellaneous/Boolean functions
- nullif
- Approximation functions
- approx_distinct
- Common date/time functions
- Basic date functions
- Basic time functions
- Basic timestamp functions
- nested functions
- Array of columns
- Schema Queries
- SHOW TABLES
- SHOW COLUMNS
- information_schema.{tables, columns}
- information_schema other views
- Sorting
- Nested types
- Lists
- Subqueries
- Common table expressions
- Set Operations
- UNION ALL
- UNION
- INTERSECT
- INTERSECT ALL
- EXCEPT
- EXCEPT ALL
- Joins
- INNER JOIN
- LEFT JOIN
- RIGHT JOIN
- FULL JOIN
- CROSS JOIN
- Window
- Empty window
- Common window functions
- Window with PARTITION BY clause
- Window with ORDER BY clause
- Window with FILTER clause
- Window with custom WINDOW FRAME
- UDF and UDAF for window functions
- CSV
- Parquet primitive types
- Parquet nested types
DataFusion is designed to be extensible at all points. To that end, you can provide your own custom:
- User Defined Functions (UDFs)
- User Defined Aggregate Functions (UDAFs)
- User Defined Table Source (
TableProvider
) for tables - User Defined
Optimizer
passes (plan rewrites) - User Defined
LogicalPlan
nodes - User Defined
ExecutionPlan
nodes
This crate is tested with the latest stable version of Rust. We do not currrently test against other, older versions of the Rust compiler.
This library currently supports many SQL constructs, including
CREATE EXTERNAL TABLE X STORED AS PARQUET LOCATION '...';
to register a table's locationsSELECT ... FROM ...
together with any expressionALIAS
to name an expressionCAST
to change types, including e.g.Timestamp(Nanosecond, None)
- most mathematical unary and binary expressions such as
+
,/
,sqrt
,tan
,>=
. WHERE
to filterGROUP BY
together with one of the following aggregations:MIN
,MAX
,COUNT
,SUM
,AVG
ORDER BY
together with an expression and optionalASC
orDESC
and also optionalNULLS FIRST
orNULLS LAST
DataFusion strives to implement a subset of the PostgreSQL SQL dialect where possible. We explicitly choose a single dialect to maximize interoperability with other tools and allow reuse of the PostgreSQL documents and tutorials as much as possible.
Currently, only a subset of the PostgreSQL dialect is implemented, and we will document any deviations.
DataFusion supports the showing metadata about the tables available. This information can be accessed using the views of the ISO SQL information_schema
schema or the DataFusion specific SHOW TABLES
and SHOW COLUMNS
commands.
More information can be found in the Postgres docs).
To show tables available for use in DataFusion, use the SHOW TABLES
command or the information_schema.tables
view:
> show tables;
+---------------+--------------------+------------+------------+
| table_catalog | table_schema | table_name | table_type |
+---------------+--------------------+------------+------------+
| datafusion | public | t | BASE TABLE |
| datafusion | information_schema | tables | VIEW |
+---------------+--------------------+------------+------------+
> select * from information_schema.tables;
+---------------+--------------------+------------+--------------+
| table_catalog | table_schema | table_name | table_type |
+---------------+--------------------+------------+--------------+
| datafusion | public | t | BASE TABLE |
| datafusion | information_schema | TABLES | SYSTEM TABLE |
+---------------+--------------------+------------+--------------+
To show the schema of a table in DataFusion, use the SHOW COLUMNS
command or the or information_schema.columns
view:
> show columns from t;
+---------------+--------------+------------+-------------+-----------+-------------+
| table_catalog | table_schema | table_name | column_name | data_type | is_nullable |
+---------------+--------------+------------+-------------+-----------+-------------+
| datafusion | public | t | a | Int32 | NO |
| datafusion | public | t | b | Utf8 | NO |
| datafusion | public | t | c | Float32 | NO |
+---------------+--------------+------------+-------------+-----------+-------------+
> select table_name, column_name, ordinal_position, is_nullable, data_type from information_schema.columns;
+------------+-------------+------------------+-------------+-----------+
| table_name | column_name | ordinal_position | is_nullable | data_type |
+------------+-------------+------------------+-------------+-----------+
| t | a | 0 | NO | Int32 |
| t | b | 1 | NO | Utf8 |
| t | c | 2 | NO | Float32 |
+------------+-------------+------------------+-------------+-----------+
DataFusion uses Arrow, and thus the Arrow type system, for query execution. The SQL types from sqlparser-rs are mapped to Arrow types according to the following table
SQL Data Type | Arrow DataType |
---|---|
CHAR |
Utf8 |
VARCHAR |
Utf8 |
UUID |
Not yet supported |
CLOB |
Not yet supported |
BINARY |
Not yet supported |
VARBINARY |
Not yet supported |
DECIMAL |
Float64 |
FLOAT |
Float32 |
SMALLINT |
Int16 |
INT |
Int32 |
BIGINT |
Int64 |
REAL |
Float64 |
DOUBLE |
Float64 |
BOOLEAN |
Boolean |
DATE |
Date32 |
TIME |
Time64(TimeUnit::Millisecond) |
TIMESTAMP |
Timestamp(TimeUnit::Nanosecond) |
INTERVAL |
Not yet supported |
REGCLASS |
Not yet supported |
TEXT |
Not yet supported |
BYTEA |
Not yet supported |
CUSTOM |
Not yet supported |
ARRAY |
Not yet supported |
Please see Roadmap for information of where the project is headed.
There is no formal document describing DataFusion's architecture yet, but the following presentations offer a good overview of its different components and how they interact together.
- (March 2021): The DataFusion architecture is described in Query Engine Design and the Rust-Based DataFusion in Apache Arrow: recording (DataFusion content starts ~ 15 minutes in) and slides
- (Feburary 2021): How DataFusion is used within the Ballista Project is described in *Ballista: Distributed Compute with Rust and Apache Arrow: recording
Please see Developers Guide for information about developing DataFusion.