adaptive-ml
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Member of Technical Staff (intern)

New York Office, Paris Officefull-timelead
OtherMember Of Technical Staff
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Quick Summary

Overview

About the team Adaptive ML is a frontier AI startup building a Reinforcement Learning Operations (RLOps) platform that enables enterprises to specialize and deploy LLMs into production with measurable impact.

Technical Tools
pythonpytorchrustab-testingdistributed-systemsetlmachine-learningmentoring

Our Technical Staff develops the foundational technology that powers Adaptive ML in alignment with requests and requirements from our Commercial and Product teams. We are committed to building robust, efficient technology and conducting at-scale, impactful research to drive our roadmap and deliver value to our customers.

About the Role

~1 min read

This is an open internship role within our Technical Staff. If any of the below sounds interesting to you, we encourage you to apply.

As a Technical Intern, you will contribute to building parts of the foundational technology that powers Adaptive ML, primarily by working on our internal LLM stack, Adaptive Harmony. We believe that generative AI benefits from combining strong engineering with careful experimentation, and interns are exposed to both.

You will work closely with experienced engineers and researchers, receive mentorship, and contribute to real projects that support production systems and ongoing research. This role is designed for motivated students or early-career engineers who want hands-on experience in applied machine learning systems.

This is an in-person 6 months internship based at our Paris or NYC office.

  • Develop robust software in Rust, interfacing between easy-to-use Python recipes and high-performance, distributed training code running on hundreds of GPUs;

  • Profile and iterate GPU inference kernels in Triton or CUDA, identifying memory bottlenecks and optimizing latency—and decide how to adequately benchmark an inference service;

  • Develop and execute an experiment analyzing nuances between DPO and PPO in a fair and systematic way;

  • Build data pipelines to support reinforcement learning from noisy and diverse user' interactions across varied tasks;

  • Experiment with new ways to combine adapters and steer the behavior of language models;

  • Build hardware correctness tests to identify and isolate faulty GPUs at scale.

Responsibilities

~1 min read

  • Contribute to the foundational technology powering Adaptive ML, with support and guidance from the team

  • Help advance projects by implementing features, running experiments, or improving reliability

  • Communicate clearly about your work and learn to collaborate in a distributed team environment

  • Write clear, well-structured code (primarily in Python; exposure to systems programming is a plus, not a requirement)

  • Help debug issues in distributed or ML-heavy systems

  • Learn best practices for performance, testing, and robustness

  • Assist with research on large language models and reinforcement learning

  • Reproduce and analyze results from recent ML literature

  • Support empirical experiments and help document findings

Nearly all members of our Technical Staff work across both engineering and research, and interns are encouraged to explore both areas.

The background below is only suggestive. We welcome applications from candidates with diverse experiences—please apply even if you don’t meet every requirement.

  • You are in the final year of pursuing (or recently completed) a Master’s degree in computer science, engineering, or a related field

  • Comfortable programming in Python

  • Interest in machine learning, AI systems, or large language models

  • Curious, proactive, and eager to learn in a fast-paced environment

  • Coursework or projects in machine learning, distributed systems, or systems programming

  • Familiarity with PyTorch, JAX, or similar frameworks

  • Experience with research projects or open-source contributions

What We Offer

~1 min read
Paid internship
Mentorship and close collaboration with senior engineers and researchers
Exposure to real-world, production AI systems

Location & Eligibility

Where is the job
Location terms not specified
Who can apply
Same as job location

Listing Details

Posted
January 6, 2026
First seen
May 5, 2026
Last seen
May 8, 2026

Posting Health

Days active
0
Repost count
0
Trust Level
15%
Scored at
May 6, 2026

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adaptive-mlMember of Technical Staff (intern)