Feldera is a fast query engine for incremental computation. Feldera has the unique ability to evaluate arbitrary SQL programs incrementally, making it more powerful, expressive and performant than existing alternatives like batch engines, warehouses, stream processors or streaming databases.
Our approach to incremental computation is simple. A Feldera pipeline
is a set of SQL tables and views. Views can be
deeply nested.
Users start, stop or pause pipelines to manage and advance a computation.
Pipelines continuously process
changes, which are any number of inserts, updates or deletes to a set of tables. When the pipeline receives changes,
Feldera incrementally updates all the views by only looking at the changes and it completely avoids recomputing over
older data.
While a pipeline is running, users can inspect the results of the views at any time.
Our approach to incremental computation makes Feldera incredibly fast (millions of events per second on a laptop). It also enables unified offline and online compute over both live and historical data. Feldera users have built batch and real-time feature engineering pipelines, ETL pipelines, various forms of incremental and periodic analytical jobs over batch data, and more.
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Full SQL support and more. Our engine is the only one in existence that can evaluate full SQL syntax and semantics completely incrementally. This includes joins and aggregates, group by, correlated subqueries, window functions, complex data types, time series operators, UDFs, and recursive queries. Pipelines can process deeply nested hierarchies of views.
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Fast out-of-the-box performance. Feldera users have reported getting complex use cases implemented in 30 minutes or less, and hitting millions of events per second in performance on a laptop without any tuning.
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Datasets larger than RAM. Feldera is designed to handle datasets that exceed the available RAM by spilling efficiently to disk, taking advantage of recent advances in NVMe storage.
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Strong guarantees on consistency and freshness. Feldera is strongly consistent. It also guarantees that the state of the views always corresponds to what you'd get if you ran the queries in a batch system for the same input.
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Connectors for your favorite data sources and destinations. Feldera connects to myriad batch and streaming data sources, like Kafka, HTTP, CDC streams, S3, Data Lakes, Warehouses and more. If you need a connector that we don't yet support, let us know.
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Fault tolerance. Feldera can gracefully restart from the exact point of an abrupt shutdown or crash, picking up from where it left off without dropping or duplicating input or output. Fault tolerance is a preview feature that requires support from input and output connectors.
The following diagram shows Feldera's architecture
First, make sure you have Docker Compose installed.
Next, run the following command to download a Docker Compose file, and use it to bring up a Feldera Platform deployment suitable for demos, development and testing:
curl -L https://github.com/feldera/feldera/releases/latest/download/docker-compose.yml | \
docker compose -f - up
It can take some time for the container images to be downloaded. About ten seconds after that, the Feldera web console will become available. Visit http://localhost:8080 on your browser to bring it up. We suggest going through our tutorial next.
Our Getting Started guide has more detailed instructions on running the demo.
To run Feldera from sources, first install required dependencies:
- Rust tool chain
- cmake
- libssl-dev
- Java Development Kit (JDK), version 19 or newer
- maven
- Bun
After that, the first step is to build the SQL compiler:
cd sql-to-dbsp-compiler
./build.sh
Next, from the repository root, run the pipeline-manager:
cargo run --bin=pipeline-manager --features pg-embed
As with the Docker instructions above, you can now visit http://localhost:8080 on your browser to see the Feldera WebConsole.
To learn more about Feldera Platform, we recommend going through the documentation.
Feldera is generally faster and uses less memory
than systems like stream processors. Our Benchmarks are performed by our CI on every commit that goes in
main
. If you want to see all the results, please visit benchmarks.feldera.io.
The software in this repository is governed by an open-source license. We welcome contributions. Here are some guidelines.
Feldera Platform achieves its objectives by building on a solid mathematical foundation. The formal model that underpins our system, called DBSP, is described in the accompanying paper:
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Here is a presentation about DBSP at the 2023 Apache Calcite Meetup.
The model provides two things:
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Semantics. DBSP defines a formal language of streaming operators and queries built out of these operators, and precisely specifies how these queries must transform input streams to output streams.
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Algorithm. DBSP also gives an algorithm that takes an arbitrary query and generates an incremental dataflow program that implements this query correctly (in accordance with its formal semantics) and efficiently. Efficiency here means, in a nutshell, that the cost of processing a set of input events is proportional to the size of the input rather than the entire state of the database.