awesome-repositories.com
Blog
awesome-repositories.com

Entdecke die besten Open-Source-Repositories mit KI-gestützter Suche.

EntdeckenKuratierte SuchenOpen-Source-AlternativenSelf-hosted SoftwareBlogSitemap
ProjektÜber unsRanking-MethodikPresseMCP-Server
RechtlichesDatenschutzAGB
© 2026 Bringes Technology SRL·VAT RO45896025·hello@awesome-repositories.com
·

1 Repo

Awesome GitHub RepositoriesModular Data Processor Pipelines

Configurable chains of reusable processors that transform raw data samples into model-ready tensors through a shared interface.

Distinct from Pipeline Processors: Distinct from Pipeline Processors: focuses on data transformation for ML models rather than CLI command data flow.

Explore 1 awesome GitHub repository matching development tools & productivity · Modular Data Processor Pipelines. Refine with filters or upvote what's useful.

Awesome Modular Data Processor Pipelines GitHub Repositories

Finde die besten Repos mit KI.Wir suchen mit KI nach den am besten passenden Repositories.
  • facebookresearch/mmfAvatar von facebookresearch

    facebookresearch/mmf

    5,635Auf GitHub ansehen↗

    MMF is a modular framework for building, training, and evaluating vision-and-language models. It provides a configuration-driven experiment system where model, dataset, and training parameters are defined through composable YAML files, alongside a curated model zoo of pretrained checkpoints for state-of-the-art multimodal architectures. The framework includes a multimodal dataset loader that downloads, processes, and batches vision-and-language data, and a vision-language model trainer supporting distributed training, mixed precision, and checkpoint-based resumption. The framework distinguish

    Transforms raw data samples into model-ready tensors through a configurable chain of reusable processors.

    Pythoncaptioningdeep-learningdialog
    Auf GitHub ansehen↗5,635
  1. Home
  2. Development Tools & Productivity
  3. CLI Command Frameworks
  4. Pipeline Processors
  5. Modular Data Processor Pipelines