ballista
abomonation
ballista | abomonation | |
---|---|---|
20 | 3 | |
2,238 | 308 | |
- | 3.2% | |
9.3 | 0.0 | |
about 3 years ago | over 1 year ago | |
Rust | Rust | |
Apache License 2.0 | MIT License |
Stars - the number of stars that a project has on GitHub. Growth - month over month growth in stars.
Activity is a relative number indicating how actively a project is being developed. Recent commits have higher weight than older ones.
For example, an activity of 9.0 indicates that a project is amongst the top 10% of the most actively developed projects that we are tracking.
ballista
- Ballista: Distributed compute platform implemented in Rust using Apache Arrow.
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Open source contributions for a Data Engineer?
His newer project, Ballista, was also donated to Apache Arrow. I hope to get the Rust skills to collaborate with him on open source work someday too. He's also doing really cool work on spark-rapids FYI.
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Best format to use for DataFrames in Rust and Python?
https://github.com/ballista-compute/ballista/blob/main/rust/executor/src/flight_service.rs#L193-L228
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I wrote one of the fastest DataFrame libraries
I'm guessing Polars and Ballista (https://github.com/ballista-compute/ballista) have different goals, but I don't know enough about either to say what those might be. Does anyone know enough about either to explain the differences?
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Introducing Kamu - World's first global collaborative data pipeline
In your article you mention looking for a faster data engine, have you looked at Ballista https://github.com/ballista-compute/ballista? It’s pretty young but it uses the Apache Arrow memory model and the maintainer did a bunch of work on Apache Spark I believe.
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Rust for DE?
https://github.com/ballista-compute/ballista is also a cool project worth checking out.
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Julia: A Post-Mortem
It’s mostly a personal favourite, but once Ballista [1] gets a bit more developed, I expect we’ll tear out our Java/Spark pipelines and replace them with that.
The ML ecosystem in Rust is a bit underdeveloped at the moment, but work is ticking along on packages like Linfa and SmartCore, so maybe it’ll get there? In my field I’m mostly about it’s potential for correct, high-performance data pipelines that are straightforward to write in reasonable time, and hopefully a model-serving framework: I hate that so many of the current tools require annotating and shipping Python when really model-serving shouldn’t really need any Python code.
[1] https://github.com/ballista-compute/ballista
- Ballista 0.4.0
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Why isn't differential dataflow more popular?
I've looked at this and thought it looked amazing, but also haven't used it for anything. Some thoughts...
Rust is a blessing and curse. I seems like the obvious choice for data pipelines, but everything big currently exists in Java and the small stuff is in Javascript, Python or R. Maybe this will slowly change, but it's a big ship to turn. I'm hopeful that tools like this and Balista [1] will eventually get things moving.
Since the Rust community is relatively small, language bindings would be very helpful. Being able to configure pipelines from Java or Typescript(!) would be great.
Or maybe it's just that this form of computation is too foreign. By the time you need it, the project is so large that it's too late to redesign it to use it. I'm also unclear on how it would handle changing requirements and recomputing new aggregations over old data. Better docs with more convincing examples would be helpful here. The GitHub page showing counting isn't very compelling.
[1] https://github.com/ballista-compute/ballista
- ballista-compute/ballista proof-of-concept distributed compute platform primarily implemented in Rust, using Apache Arrow as the memory model.
abomonation
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The most creative, funny, clever, ridiculous, ... library names!
Abomonation - "A mortifying serialization library for Rust"
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Hey Rustaceans! Got an easy question? Ask here (4/2021)!
Is this a feature of serde? This open feature request suggests it doesn't exist yet. Serde tries to achieve zero-copy deserialization, not zero-allocation deserialization. If you are after extreme speed, another serialization library in Rust to consider is Abomonation, which serializes and deserializes by just copying memory directly (which is highly unsafe and fragile, but still apparently works in practice).
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Ballista: Distributed compute platform implemented in Rust, using Apache Arrow
What you describe is truly an https://github.com/TimelyDataflow/abomonation
What are some alternatives?
spark-rapids - Spark RAPIDS plugin - accelerate Apache Spark with GPUs
genemichaels - Even formats macros
differential-dataflow - An implementation of differential dataflow using timely dataflow on Rust.
cargo-mommy - Mommy's here to support you when running cargo~
delta-rs - A native Rust library for Delta Lake, with bindings into Python
libass - libass is a portable subtitle renderer for the ASS/SSA (Advanced Substation Alpha/Substation Alpha) subtitle format.
dagster - An orchestration platform for the development, production, and observation of data assets.
oSUS - Some osu! utilities written in Rust.
Prefect - The easiest way to build, run, and monitor data pipelines at scale.
rouille - Rust programming, in French.
roapi - Create full-fledged APIs for slowly moving datasets without writing a single line of code.
octocrab - A modern, extensible GitHub API Client for Rust.