Logo for Featherless AI

Machine Learning Engineer — Distillation

Role overview

Qualifications

  • Strong background in machine learning or deep learning
  • Hands-on experience with model distillation (LLMs or other neural networks)
  • Solid understanding of training dynamics, loss functions, and optimization
  • Experience with PyTorch (or JAX) and modern ML tooling

Responsibilities

  • Design and implement knowledge distillation pipelines (teacher–student, self-distillation, multi-teacher, etc.)
  • Distill large foundation models into smaller, faster, and cheaper models for inference
  • Run and analyze large-scale training experiments to evaluate quality, latency, and cost tradeoffs
  • Collaborate with research to translate new distillation ideas into production-ready code

About the company

Featherless AI logo

Featherless AI

We enable serverless inference via our GPU orchestration and model load-balancing system. We unlock fine-tuning by enabling organizations to size their server fleet to throughput needs, not number of models in the catalogue. See it in action on our public cloud, which offers inference for 4,200+ open weight models.

Company details

Company size1 - 10

Your match analysis

See how your profile stacks up against this role.

We compared the job requirements to your profile to show where you're strong and where you fall short.

Job description

About the Role

We’re looking for a Machine Learning Engineer focused on model distillation to help us build smaller, faster, and more efficient models without sacrificing quality. You’ll work at the intersection of research and production—taking cutting-edge techniques and turning them into systems that scale.

This is a hands-on role with real ownership: you’ll design distillation pipelines, run large-scale experiments, and ship models used in production.

What You’ll Do

  • Design and implement knowledge distillation pipelines (teacher–student, self-distillation, multi-teacher, etc.)

  • Distill large foundation models into smaller, faster, and cheaper models for inference

  • Run and analyze large-scale training experiments to evaluate quality, latency, and cost tradeoffs

  • Collaborate with research to translate new distillation ideas into production-ready code

  • Optimize training and inference performance (memory, throughput, latency)

  • Contribute to internal tooling, evaluation frameworks, and experiment tracking

  • (Optional) Contribute back to open-source models, tooling, or research

What We’re Looking For

  • Strong background in machine learning or deep learning

  • Hands-on experience with model distillation (LLMs or other neural networks)

  • Solid understanding of training dynamics, loss functions, and optimization

  • Experience with PyTorch (or JAX) and modern ML tooling

  • Comfort running experiments on multi-GPU or distributed setups

  • Ability to reason about model quality vs. performance tradeoffs

  • Pragmatic mindset: you care about shipping, not just papers

Nice to Have

  • Experience distilling LLMs or large sequence models

  • Experience with inference optimization (quantization, pruning, kernels, etc.)

  • Familiarity with evaluation for language models

  • Open-source contributions or research publications

  • Experience in early-stage or fast-moving startups

Why Join

  • Work on core model quality and cost efficiency—not side projects

  • High ownership and direct impact on product and roadmap

  • Small, senior team with strong research + engineering culture

  • Competitive compensation + meaningful equity

  • Remote-friendly, async-first environment

Apply once. Then go straight to the hiring manager.

After you apply, unlock the direct contact details of the people who actually make the call. A quick follow-up makes you 5x more likely to land an interview.

MR

Marcus Rivera

Chief Revenue Officer

m.rivera@company.com
linkedin.com/in/marcusrivera
Unlocked after you apply
·

Machine Learning Engineer Related jobs

Other jobs at Featherless AI

Premium

Reach out to the hiring manager directly.

Gain access to the contact details of the hiring managers who actually decide, and reach out to network with them directly. That, plus more when you upgrade:

  • Full match report with fit score and gaps
  • Career diagnostics on how recruiters read you
  • Curated company matches and warm intros
  • 48h early access to new roles

Cancel anytime.