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AI Researcher — Training Optimization

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OtherAi Researcher
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Quick Summary

Overview

About the Role We’re looking for an AI Researcher focused on training optimization to help us push the efficiency, stability, and scalability of large-scale model training.

Requirements Summary

Experience with non-standard architectures (e.g. RNN variants, long-context models, hybrid systems) Experience optimizing training on GPUs at scale (FSDP, ZeRO, custom kernels) Contributions to open-source ML or research codebases Comfort operating…

Technical Tools
pythonpytorchdeep-learningmachine-learning

About the Role

~1 min read

We’re looking for an AI Researcher focused on training optimization to help us push the efficiency, stability, and scalability of large-scale model training. You’ll work at the intersection of research and systems, developing novel techniques to reduce training cost, accelerate convergence, and improve model quality—while validating ideas through rigorous experiments and publications.

This role is ideal for someone who enjoys turning research insights into practical training wins, and who has a track record (or strong ambition) of publishing applied ML research.

  • Design and evaluate training optimization techniques for large models (e.g. optimization algorithms, schedulers, normalization, curriculum strategies)

  • Improve training efficiency and stability across long runs and large datasets

  • Research and implement methods such as:

    • Optimizer and scheduler innovations

    • Mixed-precision, low-precision, and memory-efficient training

    • Gradient noise reduction, scaling laws, and convergence analysis

    • Training-time regularization and robustness techniques

  • Run large-scale experiments, analyze results, and translate findings into actionable improvements

  • Author or co-author research papers, technical reports, or blog posts

  • Collaborate closely with infrastructure and inference teams to ensure training decisions translate to real-world performance

  • Strong background in machine learning research, with emphasis on training dynamics and optimization

  • Experience training large neural networks (LLMs, multimodal models, or large sequence models)

Nice to Have

~1 min read
  • Comfort operating in fast-moving, ambiguous startup environments

    • Real influence over core model training decisions

    • Freedom to pursue and publish novel research

    • Direct access to large-scale experiments and real production constraints

    • A small, senior team that values thinking deeply and shipping thoughtfully

    Location & Eligibility

    Where is the job
    Worldwide
    Fully remote, anywhere in the world
    Who can apply
    Same as job location

    Listing Details

    Posted
    January 23, 2026
    First seen
    May 6, 2026
    Last seen
    May 8, 2026

    Posting Health

    Days active
    0
    Repost count
    0
    Trust Level
    23%
    Scored at
    May 6, 2026

    Signal breakdown

    freshnesssource trustcontent trustemployer trust
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    featherlessaiAI Researcher — Training Optimization