axon VS Rustler

Compare axon vs Rustler and see what are their differences.

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axon Rustler
15 35
1,446 4,154
1.9% 1.8%
7.5 8.6
20 days ago about 1 month ago
Elixir Rust
Apache License 2.0 Apache License 2.0
The number of mentions indicates the total number of mentions that we've tracked plus the number of user suggested alternatives.
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.

axon

Posts with mentions or reviews of axon. We have used some of these posts to build our list of alternatives and similar projects. The last one was on 2023-04-14.
  • Would like some guidance on my learning for fine-tuned model applications (AI related) using Nx / Elixir
    1 project | /r/elixir | 30 Jun 2023
    My recommendation is to start with fast.ai to understand the machine learning part. Then, for the elixir bit, look at some of the notebooks in the Axon (elixir's NN library) github. I wrote a couple notebooks explaining how to train a basic NN using Axon. Here's one
  • Data wrangling in Elixir with Explorer, the power of Rust, the elegance of R
    7 projects | news.ycombinator.com | 14 Apr 2023
    José from the Livebook team. I don't think I can make a pitch because I have limited Python/R experience to use as reference.

    My suggestion is for you to give it a try for a day or two and see what you think. I am pretty sure you will find weak spots and I would be very happy to hear any feedback you may have. You can find my email on my GitHub profile (same username).

    In general we have grown a lot since the Numerical Elixir effort started two years ago. Here are the main building blocks:

    * Nx (https://github.com/elixir-nx/nx/tree/main/nx#readme): equivalent to Numpy, deeply inspired by JAX. Runs on both CPU and GPU via Google XLA (also used by JAX/Tensorflow) and supports tensor serving out of the box

    * Axon (https://github.com/elixir-nx/axon): Nx-powered neural networks

    * Bumblebee (https://github.com/elixir-nx/bumblebee): Equivalent to HuggingFace Transformers. We have implemented several models and that's what powers the Machine Learning integration in Livebook (see the announcement for more info: https://news.livebook.dev/announcing-bumblebee-gpt2-stable-d...)

    * Explorer (https://github.com/elixir-nx/explorer): Series and DataFrames, as per this thread.

    * Scholar (https://github.com/elixir-nx/scholar): Nx-based traditional Machine Learning. This one is the most recent effort of them all. We are treading the same path as scikit-learn but quite early on. However, because we are built on Nx, everything is derivable, GPU-ready, distributable, etc.

    Regarding visualization, we have "smart cells" for VegaLite and MapLibre, similar to how we did "Data Transformations" in the video above. They help you get started with your visualizations and you can jump deep into the code if necessary.

    I hope this helps!

  • Elixir and Rust is a good mix
    10 projects | news.ycombinator.com | 13 Apr 2023
    > I guess, why not use Rust entirely instead of as a FFI into Elixir or other backend language?

    Because Rust brings none of the benefits of the BEAM ecosystem to the table.

    I was an early Elixir adopter, not working currently as an Elixir developer, but I have deployed one of the largest Elixir applications for a private company in my country.

    I know it has limits, but the language itself is only a small part of the whole.

    Take ML, Jose Valim and Sean Moriarity have studied the problem, made a plan to tackle it and started solving it piece by piece [1] in a tightly integrated manner, it feels natural, as if Elixir always had those capabilities in a way that no other language does and to put the icing on the cake the community released Livebook [2] to interactively explore code and use the new tools in the simplest way possible, something that Python notebooks only dream of being capable of, after a decade of progress

    That's not to say that Elixir is superior as a language, but that the ecosystem is flourishing and the community is able to extract the 100% of the benefits from the tools and create new marvellously crafted ones, that push the limits forward every time, in such a simple manner, that it looks like magic.

    And going back to Rust, you can write Rust if you need speed or for whatever reason you feel it's the right tool for the job, it's totally integrated [3][4], again in a way that many other languages can only dream of, and it's in fact the reason I've learned Rust in the first place.

    The opposite is not true, if you write Rust, you write Rust, and that's it. You can't take advantage of the many features the BEAM offers, OTP, hot code reloading, full inspection of running systems, distribution, scalability, fault tolerance, soft real time etc. etc. etc.

    But of course if you don't see any advantage in them, it means you probably don't need them (one other option is that you still don't know you want them :] ). In that case Rust is as good as any other language, but for a backend, even though I gently despise it, Java (or Kotlin) might be a better option.

    [1] https://github.com/elixir-nx/nx https://github.com/elixir-nx/axon

    [2] https://livebook.dev/

    [3] https://github.com/rusterlium/rustler

    [4] https://dashbit.co/blog/rustler-precompiled

  • Bumblebee: GPT2, Stable Diffusion, and More in Elixir
    5 projects | news.ycombinator.com | 8 Dec 2022
    I've trained models using Jupyter and Livebook (though only smaller toy models [1]) so I can deposit my 2 cents here. Small disclaimer that I started with Jupyter, so in some sense my mental model was biased towards Jupyter.

    I think the biggest difference that'll trip you up coming from Jupyter is that Livebook enforces linear execution. You can't arbitrarily run cells in any order like you can in Jupyter - if you change an earlier cell all the subsequent cells have to be run in order. The only deviation from this is branches which allow you to capture the state at a certain point and create a new flow from there on. There's a section in [1] that explains how branching works and how you can use it when training models.

    The other difference is that if you do something that crashes in a cell, you'll lose the state of the entire branch and have to rerun from the beginning of the branch. Iirc if you stop a long running cell, that forces a rerun as well. That can also be painful when running training loops that run for a while, but there are some pretty neat workarounds you can do using Kino. Using those workarounds does break the reproducibility guarantees though.

    Personally while building NN models I find that I prefer the Jupyter execution model because for NNs, rerunning cells can be really time-consuming. Being able to quickly change some variables and run a cell out of order helps while I'm exploring/experimenting.

    Two things I love about Livebook though are 1) the file format makes version control super easy and 2) Kino allows for real interactivity in the notebook in a way that's much harder to do in Jupyter. So in Livebook you can easily create live updating charts, images etc that show training progress or have other kinds of interactivity.

    If you're interested to see what my model training workflow looks like with Livebook (and I have no idea if it's the best workflow!), check out the examples below [1][2]. Overall I'd say it definitely works well, you just have to shift your mental model a bit if you're coming from Jupyter. If I were doing something where rerunning cells wasn't expensive I would probably prefer the Livebook model.

    [1] https://github.com/elixir-nx/axon/blob/main/notebooks/genera...

  • Building an ML model using Axon and Livebook
    1 project | /r/elixir | 11 Oct 2022
  • ElixirConf 2022 - That's a wrap!
    7 projects | dev.to | 12 Sep 2022
    Machine learning is rapidly expanding within the Elixir ecosystem, with tools such as Nx, Axon, and Explorer being used both by individuals and companies such as Amplified, as mentioned above.
  • What's your opinion on Elixir?
    3 projects | /r/rust | 20 May 2022
    It's my professional daily driver since 2018 but I consider it an average-to-disappointing language and ecosystem on top of an incredible VM/runtime. For more specific thoughts, back in 2020 I've previously posted some critique here and very little of these concerns are improved in the interim. There is a vestigial ML story around libraries like Nx/Axon. LiveView is inadvisable in practice but is sort of the banner marketing device right now, which disappoints me.
  • Recognize Digits Using ML in Elixir
    2 projects | /r/elixir | 11 May 2022
    Yeah, as Mark said, I think the problem is related to this issue https://github.com/elixir-nx/axon/issues/244
  • Do Elixir's benefits still hold when interfacing with another language?
    2 projects | /r/elixir | 2 May 2022
  • [P] Axon: Deep Learning in Elixir
    1 project | /r/MachineLearning | 21 Dec 2021
    Repo: https://github.com/elixir-nx/axon

Rustler

Posts with mentions or reviews of Rustler. We have used some of these posts to build our list of alternatives and similar projects. The last one was on 2024-01-09.
  • AI Toolkit: Give a brain to your game's NPCs, a header-only C++ library
    2 projects | news.ycombinator.com | 9 Jan 2024
    For performance intensive tasks, you could rely on Rust NIFs, there is this great project: https://github.com/rusterlium/rustler

    My last project with Elixir was using Elixir merely as an orchestrator of static binaries (developed in golang) which were talking in JSON via stdin/stdout.

  • Building Apps with Tauri and Elixir
    14 projects | dev.to | 19 Oct 2023
    From the moment we discovered Tauri, we really felt like this was the perfect fit. The API is really solid, the configuration files are minimal and easy to understand, and the usage of Rust makes it way easier to add new functionalities and think about interesting ways of interoperating with Elixir via the Rustler library.
  • Async Rust Is A Bad Language
    11 projects | news.ycombinator.com | 8 Sep 2023
    Elixir/Rust is the new Python/C++, and Rustler makes the communicating between the 2 languages super easy: https://github.com/rusterlium/rustler
  • Why elixir over Golang
    10 projects | /r/elixir | 29 May 2023
    Rustler is so awesome for this. Write Elixir NIFs in Rust? Yes, please!
  • Is RUST a good choice for building web browsers?
    6 projects | /r/rust | 27 May 2023
  • Why do you enjoy systems programming languages?
    2 projects | /r/rust | 25 May 2023
    But really, I would suggest thinking about what you want to build before "how" or "with which tool" - one of the signs of a person becoming a good engineer is having an array of tools at their disposal and being able to choose a correct tool for the correct task. Rust also excels in integrating with other languages - with JS via WebAssembly (a bit of self-promotion, for example), with Elixir via Rustler, with Python via PyO3 and PyOxidizer, etc. So you absolutely can start writing a frontend app with JS, or a distributed system with Elixir, or a data processing/ML app with Python and use Rust to speed up critical parts of those. Or, in reverse, you can start with Rust & add new capabilities to whatever you're building, that being a frontend, a resilient chat interface, or an ML model.
  • PasswordRs 0.1.0 released (Rust NIF for password hashing)
    4 projects | /r/elixir | 24 Apr 2023
    I created a elixir (wrapper) library to generate password hashes. Other Elixir libraries use a C NIF to generate password hashes. This libary uses a Rust NIF (using Rustler) and the Rust libraries the generate the different hashes. Additionally this library uses RustlerPrecompiled so you don't need to have a Rust compiler installed to use this library. It supports argon2, scrypt, brypt and pbkdf2.
  • Elixir and Rust is a good mix
    10 projects | news.ycombinator.com | 13 Apr 2023
    > I guess, why not use Rust entirely instead of as a FFI into Elixir or other backend language?

    Because Rust brings none of the benefits of the BEAM ecosystem to the table.

    I was an early Elixir adopter, not working currently as an Elixir developer, but I have deployed one of the largest Elixir applications for a private company in my country.

    I know it has limits, but the language itself is only a small part of the whole.

    Take ML, Jose Valim and Sean Moriarity have studied the problem, made a plan to tackle it and started solving it piece by piece [1] in a tightly integrated manner, it feels natural, as if Elixir always had those capabilities in a way that no other language does and to put the icing on the cake the community released Livebook [2] to interactively explore code and use the new tools in the simplest way possible, something that Python notebooks only dream of being capable of, after a decade of progress

    That's not to say that Elixir is superior as a language, but that the ecosystem is flourishing and the community is able to extract the 100% of the benefits from the tools and create new marvellously crafted ones, that push the limits forward every time, in such a simple manner, that it looks like magic.

    And going back to Rust, you can write Rust if you need speed or for whatever reason you feel it's the right tool for the job, it's totally integrated [3][4], again in a way that many other languages can only dream of, and it's in fact the reason I've learned Rust in the first place.

    The opposite is not true, if you write Rust, you write Rust, and that's it. You can't take advantage of the many features the BEAM offers, OTP, hot code reloading, full inspection of running systems, distribution, scalability, fault tolerance, soft real time etc. etc. etc.

    But of course if you don't see any advantage in them, it means you probably don't need them (one other option is that you still don't know you want them :] ). In that case Rust is as good as any other language, but for a backend, even though I gently despise it, Java (or Kotlin) might be a better option.

    [1] https://github.com/elixir-nx/nx https://github.com/elixir-nx/axon

    [2] https://livebook.dev/

    [3] https://github.com/rusterlium/rustler

    [4] https://dashbit.co/blog/rustler-precompiled

  • It's legos all the way down
    3 projects | dev.to | 17 Feb 2023
    unfortunately as of the time of this writing, rustler does not support generic type intefaces so I guess this is impossible?
  • When Rust Hurts
    6 projects | news.ycombinator.com | 15 Feb 2023
    One thing that drew me to Rust was actually Elixir/Erlang calling out to it for certain specialized needs. Within Elixir/Erlang you get best of breed concurrency but exiting the BEAM to run other code is unsafe. Calling out to Rust, however, comes with great safety guarantees.

    Managing concurrency outside of Rust and then calling Rust for the more focused and specialized work is a good combination IMO.

    https://github.com/rusterlium/rustler

What are some alternatives?

When comparing axon and Rustler you can also consider the following projects:

nx - Multi-dimensional arrays (tensors) and numerical definitions for Elixir

gleam - ⭐️ A friendly language for building type-safe, scalable systems!

livebook - Automate code & data workflows with interactive Elixir notebooks

hsnif - Tool that allows to write Erlang NIF libraries in Haskell

explorer - Series (one-dimensional) and dataframes (two-dimensional) for fast and elegant data exploration in Elixir

nifty - helpful tools for when I need to create an Elixir NIF .

dplyr - dplyr: A grammar of data manipulation

carbon-lang - Carbon Language's main repository: documents, design, implementation, and related tools. (NOTE: Carbon Language is experimental; see README)

explorer - An open source block explorer

Akka - Build highly concurrent, distributed, and resilient message-driven applications on the JVM

fen_gen - Generate Forsyth-Edward notations from chess board images

elixir-nodejs - An Elixir API for calling Node.js functions