You signed in with another tab or window. Reload to refresh your session.You signed out in another tab or window. Reload to refresh your session.You switched accounts on another tab or window. Reload to refresh your session.Dismiss alert
Ballista: Making DataFusion Applications Distributed
Ballista is a distributed query execution engine that enhances Apache DataFusion by enabling the parallelized execution of workloads across multiple nodes in a distributed environment.
Existing DataFusion application:
use datafusion::prelude::*;#[tokio::main]asyncfnmain() -> datafusion::error::Result<()>{let ctx = SessionContext::new();// register the table
ctx.register_csv("example","tests/data/example.csv",CsvReadOptions::new()).await?;// create a plan to run a SQL querylet df = ctx
.sql("SELECT a, MIN(b) FROM example WHERE a <= b GROUP BY a LIMIT 100").await?;// execute and print results
df.show().await?;Ok(())}
can be distributed with few lines of code changed:
Important
There is a gap between DataFusion and Ballista, which may bring incompatibilities. The community is actively working to close the gap
use ballista::prelude::*;use datafusion::prelude::*;#[tokio::main]asyncfnmain() -> datafusion::error::Result<()>{// create SessionContext with ballista support// standalone context will start all required// ballista infrastructure in the background as welllet ctx = SessionContext::standalone().await?;// everything else remains the same// register the table
ctx.register_csv("example","tests/data/example.csv",CsvReadOptions::new()).await?;// create a plan to run a SQL querylet df = ctx
.sql("SELECT a, MIN(b) FROM example WHERE a <= b GROUP BY a LIMIT 100").await?;// execute and print results
df.show().await?;Ok(())}
For documentation or more examples, please refer to the Ballista User Guide.
Architecture
A Ballista cluster consists of one or more scheduler processes and one or more executor processes. These processes
can be run as native binaries and are also available as Docker Images, which can be easily deployed with
Docker Compose or
Kubernetes.
The following diagram shows the interaction between clients and the scheduler for submitting jobs, and the interaction
between the executor(s) and the scheduler for fetching tasks and reporting task status.
We run some simple benchmarks comparing Ballista with Apache Spark to track progress with performance optimizations.
These are benchmarks derived from TPC-H and not official TPC-H benchmarks. These results are from running individual
queries at scale factor 100 (100 GB) on a single node with a single executor and 8 concurrent tasks.
Overall Speedup
The overall speedup is 2.9x
Per Query Comparison
Relative Speedup
Absolute Speedup
Getting Started
The easiest way to get started is to run one of the standalone or distributed examples. After
that, refer to the Getting Started Guide.
Project Status
Ballista supports a wide range of SQL, including CTEs, Joins, and subqueries and can execute complex queries at scale,
but still there is a gap between DataFusion and Ballista which we want to bridge in near future.