Member of Technical Staff - Machine Learning Capabilities, New Graduates

Preference Model

$120K — $150K *
Information Technology
Less than 5 years of experience
Job Overview by Ladders

Qualifications

  • Strong ML fundamentals with broad research interests
  • Proficiency in Python and systems programming; ideally PyTorch or JAX
  • Smart problem solver who takes ownership and drives solutions end-to-end
  • Passion for staying current with the rapidly evolving ML infrastructure landscape
  • Ability to meet throughput expectations and respond quickly to feedback

Responsibilities

  • Design and build RL environments and reward schemes for clean, learnable signals
  • Build deep expertise across ML research, training, and inference infrastructure
  • Collaborate to brainstorm and create new ideas and tools for environment building process

Benefits

  • Competitive cash and equity compensation (>90th percentile)
  • Ownership and autonomy in a fast-moving startup environment
  • Opportunity to work with top machine learning engineers
  • Health, vision, dental, and other benefits
  • 401K match
  • Lunch provided every day onsite
  • Weekly snack orders
  • Visa sponsorship & relocation support available
Full Job Description
About the Role

We're hiring new graduate Machine Learning Engineers to design and build reinforcement learning environments to safely advance model capabilities in machine learning research and engineering. Specifically, you'll be teaching frontier models to do the work of an ML engineer or researcher at a frontier lab.

This role blends research and engineering. It will require you to stay up to date with the latest research, develop novel approaches, and realize them in code. You will have full ownership and autonomy of the environments you build. Your work will include designing and implementing RL environments, conducting experiments and evaluations, delivering your work into production training runs, and collaborating with other researchers and engineers.

You will join our Capabilities org, a small, high-ownership team and contribute directly to the data layer that powers frontier LLM capability.

What You Will Do:
  • Design and build RL environments and reward schemes that produce clean, learnable signals for frontier models on ML research and engineering tasks.
  • Build deep expertise across the frontier of ML research, training, and inference infrastructure.
  • Collaborate with others to brainstorm and create new ideas and tools to improve the environment building process.
What We are Looking For (Qualifications):
  • You have strong ML fundamentals and broad research interests. You read many papers or tutorials, understand topics deeply and have the creativity to translate them into RLVR problems.
  • Proficiency in Python and systems programming; ideally PyTorch or JAX
  • Smart problem solvers who take ownership and drives solutions end-to-end
  • Passion for staying current with the rapidly evolving ML infrastructure landscape
  • Ability to meet throughput expectations and respond quickly to feedback
Nice to have:
  • Expert knowledge in an active DL/ML research area, with publications or public code to show for it. Research experience (PhD, MS) is a big plus.
  • Deep understanding of transformer internals
  • Strong expertise in kernel development (CUDA, Triton, Pallas), optimizing non-trivial neural modules to specific hardware
  • Research projects, coursework, or personal work involving RL environments (any framework, any scale)
  • Open-source contributions to ML infrastructure or RL tooling
  • Experience with any cloud platform (AWS, GCP, Azure) or infrastructure-as-code tools
What We Offer:
  • Competitive cash and equity compensation (>90th percentile)
  • Ownership and autonomy in a fast moving startup environment
  • Opportunity to work with top machine learning engineers
  • Health, vision, dental, benefits
  • 401K match
  • Lunch provided everyday onsite
  • Weekly snack orders
  • Visa sponsorship & relocation support available


We value diverse perspectives and experiences. If you're excited about this role but don't check every box, we still encourage you to apply.

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