fairseq VS Bootstrap

Compare fairseq vs Bootstrap and see what are their differences.

fairseq

Facebook AI Research Sequence-to-Sequence Toolkit written in Python. (by facebookresearch)

Bootstrap

The most popular HTML, CSS, and JavaScript framework for developing responsive, mobile first projects on the web. (by twbs)
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fairseq Bootstrap
89 530
29,262 167,478
0.7% 0.1%
6.0 9.6
10 days ago 6 days ago
Python JavaScript
MIT License MIT License
The number of mentions indicates the total number of mentions that we've tracked plus the number of user suggested alternatives.
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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.

fairseq

Posts with mentions or reviews of fairseq. We have used some of these posts to build our list of alternatives and similar projects. The last one was on 2023-11-03.
  • Sequence-to-Sequence Toolkit Written in Python
    1 project | news.ycombinator.com | 30 Mar 2024
  • Unsupervised (Semi-Supervised) ASR/STT training recipes
    2 projects | /r/deeplearning | 3 Nov 2023
  • Nvidia's 900 tons of GPU muscle bulks up server market, slims down wallets
    1 project | news.ycombinator.com | 19 Sep 2023
    > Is there really no way to partition the workload to run with 16gb memory per card?

    It really depends and this can get really complicated really fast. I'll give a tldr and then a longer explanation.

    TLDR:

    Yes, you can easily split networks up. If your main bottleneck is batch size (i.e. training) then there aren't huge differences in spreading across multiple GPUs assuming you have good interconnects (GPU direct is supported). If you're running inference and the model fits on the card you're probably fine too unless you need to do things like fancy inference batching (i.e. you have LOTS of users)

    Longer version:

    You can always split things up. If we think about networks we recognize some nice properties about how they operate as mathematical groups. Non-residual networks are compositional, meaning each layer can be treated as a sub network (every residual block can be treated this way too). Additionally, we may have associative and distributive properties depending on the architecture (some even have commutative!). So we can use these same rules to break apart networks in many different ways. There are often performance hits for doing this though, as it practically requires you touching the disk more often but in some more rare cases (at least to me, let me know if you know more) they can help.

    I mentioned the batching above and this can get kinda complicated. There are actually performance differences when you batch in groups of data (i.e. across GPUs) compared to batching on a single accelerator. This difference isn't talked about a lot. But it is going to come down to how often your algorithm depends on batching and what operations are used, such as batch norm. The batch norm is calculated across the GPU's batch, not the distributed batch (unless you introduce blocking). This is because your gradients AND inference are going to be computed differently. In DDP your whole network is cloned across cards so you basically run inference on multiple networks and then do an all reduce on the loss then calculate the gradient and then recopy the weights to all cards. There is even a bigger difference when you use lazy regularization (don't compute gradients for n-minibatches). GANs are notorious for using this and personally I've seen large benefits to distributed training for these. GANs usually have small batch sizes and aren't getting anywhere near the memory of the card anyways (GANs are typically unstable so large batch sizes can harm them), but also pay attention to this when evaluating papers (of course as well as how much hyper-parameter tuning has been done. This is always tricky when comparing works, especially between academia and big labs. You can easily be fooled by which is a better model. Evaluating models is way tougher than people give credit to and especially in the modern era of LLMs. I could rant a lot about just this alone). Basically in short, we can think of this as an ensembling method, except our models are actually identical (you could parallel reduce lazily too and that will create some periodic divergence between your models but that's not important for conceptually understanding, just worth noting).

    There is are also techniques to split a single model up called model sharding and checkpointing. Model sharding is where you split a single model across multiple GPUs. You're taking advantage of the compositional property of networks, meaning that as long as there isn't a residual layer between your split location you can actually treat one network as a series of smaller networks. This has obvious drawbacks as you need to feed one into another and so the operations have to be synchronous, but sometimes this isn't too bad. Checkpointing is very similar but you're just doing the same thing on the same GPU. Your hit here is in I/O, but may or may not be too bad with GPU Direct and highly depends on your model size (were you splitting because batch size or because model size?).

    This is all still pretty high level but if you want to dig into it more META developed a toolkit called fairseq that will do a lot of this for you and they optimized it

    https://engineering.fb.com/2021/07/15/open-source/fsdp/

    https://github.com/facebookresearch/fairseq

    TLDR: really depends on your use case, but it is a good question.

  • Talk back and forth with AI like you would with a person
    1 project | /r/singularity | 7 Jul 2023
    How do they do the text to voice conversion so fast? https://github.com/facebookresearch/fairseq/tree/main (open source takes sub-minute to do text to voice.
  • Voice generation AI (TTS)
    3 projects | /r/ArtificialInteligence | 1 Jul 2023
    It might be worth checking out Meta's TTS tho, I haven't gotten the chance to fiddle around with it but it looks somewhat promising https://github.com/facebookresearch/fairseq/tree/main/examples/mms
  • Translation app with TTS (text-to-speech) for Persian?
    2 projects | /r/machinetranslation | 24 Jun 2023
    They have instructions on how to use it in command line and a notebook on how to use it as a python library.
  • Why no work on open source TTS (Text to speech) models
    2 projects | /r/ArtificialInteligence | 20 Jun 2023
  • Meta's Massively Multilingual Speech project supports 1k languages using self supervised learning
    1 project | /r/DataCentricAI | 13 Jun 2023
    Github - https://github.com/facebookresearch/fairseq/tree/main/examples/mms Paper - https://research.facebook.com/publications/scaling-speech-technology-to-1000-languages/
  • AI — weekly megathread!
    2 projects | /r/artificial | 26 May 2023
    Meta released a new open-source model, Massively Multilingual Speech (MMS) that can do both speech-to-text and text-to-speech in 1,107 languages and can also recognize 4,000+ spoken languages. Existing speech recognition models only cover approximately 100 languages out of the 7,000+ known spoken languages. [Details | Research Paper | GitHub].
  • Meta's MMS: Scaling Speech Technology to 1000+ languages (How to Run colab)
    1 project | /r/LanguageTechnology | 24 May 2023

Bootstrap

Posts with mentions or reviews of Bootstrap. We have used some of these posts to build our list of alternatives and similar projects. The last one was on 2024-04-19.
  • Integrate Bootstrap with React
    2 projects | dev.to | 19 Apr 2024
    This article serves as your comprehensive guide to mastering the art of combining Bootstrap and React seamlessly. Dive in to uncover the tips, tricks, and best practices to elevate your UI design game effortlessly.
  • Free Bootstrap Themes and Templates to Download in 2024
    1 project | dev.to | 18 Apr 2024
    Bootstrap is already a popular framework among the web developers. And, these free templates makes it even more convenient to use Bootstrap in your projects.
  • How to use Tailwind with any CSS framework
    5 projects | dev.to | 17 Apr 2024
    Tailwind is great, but creating everything from scratch is annoying. A nice base of components which can be extended with tailwind would be great. There are a few tailwind frameworks like Flowbite, Daisy Ui, but I like Bulma, PicoCSS and Bootstrap.
  • The origin and virtues of semicolons in programming languages
    2 projects | news.ycombinator.com | 15 Apr 2024
    In the JavaScript world, tread cautiously on this passionate topic. https://github.com/twbs/bootstrap/issues/3057
  • Building a Dynamic Client-Side Blog with Secutio & Bootstrap
    4 projects | dev.to | 10 Apr 2024
    To effectively demonstrate Secutio's capabilities for rapid web development, we've chosen the popular Bootstrap framework as a foundation. Bootstrap provides a robust and user-friendly interface, making it an ideal choice for building the project's base.
  • Build a Serverless S3 Explorer with Dash
    2 projects | dev.to | 2 Apr 2024
    With all this preamble out of the way, we can finally focus on the app. To make it easier to build a not-awful-looking website, I installed the dash-bootstrap-components which give us access to a variety of components from the bootstrap frontend framework. This will make styling and building the app easier.
  • How to Become a Front-End Developer?
    2 projects | dev.to | 26 Mar 2024
    For CSS, Bootstrap is the go-to framework for many developers. But there are other popular ones too, like Angular, React, and Vue. You don't have to learn every single framework out there—just pick the ones that are most relevant to your projects and match current industry trends and your learning preferences.
  • Exploring Tailwind Oxide
    1 project | dev.to | 26 Mar 2024
    For those unfamiliar with Tailwind CSS, it is a utility-first framework with pre-defined classes for you to create custom designs. Before its creation, developers who wrote CSS were limited to two options: either writing custom CSS or using a toolkit like Bootstrap. However, both approaches came with drawbacks. Writing custom CSS was a lot of work, and using Bootstrap limited you in styling unless you added custom CSS on top.
  • Full Stack Web Development Concept map
    11 projects | dev.to | 23 Mar 2024
    bootstrap - toolkit for styling websites. Has lots of themes and capabilities. docs
  • Rapid Prototyping with Flask, Bootstrap and Secutio
    4 projects | dev.to | 30 Jan 2024
    To make the demo more interesting, we will use the Bootstrap framework and Flask as the backend.

What are some alternatives?

When comparing fairseq and Bootstrap you can also consider the following projects:

gpt-neox - An implementation of model parallel autoregressive transformers on GPUs, based on the DeepSpeed library.

vuetify - 🐉 Vue Component Framework

transformers - 🤗 Transformers: State-of-the-art Machine Learning for Pytorch, TensorFlow, and JAX.

mantine - A fully featured React components library

DeepSpeed - DeepSpeed is a deep learning optimization library that makes distributed training and inference easy, efficient, and effective.

awesome-blazor - Resources for Blazor, a .NET web framework using C#/Razor and HTML that runs in the browser with WebAssembly.

text-to-text-transfer-transformer - Code for the paper "Exploring the Limits of Transfer Learning with a Unified Text-to-Text Transformer"

Svelte - Cybernetically enhanced web apps

espnet - End-to-End Speech Processing Toolkit

antd - An enterprise-class UI design language and React UI library

Pytorch - Tensors and Dynamic neural networks in Python with strong GPU acceleration

primeng - The Most Complete Angular UI Component Library