Logo for poolside

Member of Engineering (Reinforcement Learning)

Role overview

Qualifications

  • Experience with Large Language Models (LLM)
  • Reinforcement Learning experience
  • Strong machine learning, algorithm skills and engineering background
  • Excellent programming skills in Python

Responsibilities

  • Research and experiment on ways to improve reasoning and code generation for LLMs
  • Own the full experiment life cycle from idea to experimentation and integration
  • Keep up with the latest research, and be familiar with the state of the art in LLMs, RL, and code generation
  • Translate research ideas into clean, reusable codebases that other researchers can build on

About the company

poolside logo

poolside

Company details

Company typeStartup

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 POOLSIDE

In this decade, the world will create Artificial General Intelligence. There will only be a small number of companies who will achieve this. Their ability to stack advantages and pull ahead will define the winners. These companies will move faster than anyone else. They will attract the world's most capable talent. They will be on the forefront of applied research, engineering, infrastructure and deployment at scale. They will continue to scale their training to larger & more capable models. They will be given the right to raise large amounts of capital along their journey to enable this. They will create powerful economic engines. They will obsess over the success of their users and customers.

Poolside exists to be this company: to build a world where AI will be the engine behind economically valuable work and scientific progress. We believe the fastest way to reach AGI lies in accelerating software development itself, by reshaping the developer experience with agentic systems, coding assistants, and the frontier models that power them. We deploy these systems directly into the development environments of security-conscious enterprises.

ABOUT OUR TEAM

We were founded in the US and have our home there, but our team is distributed across Europe and North America. We get our fix of in-person collaboration (and croissants) in Paris each month for 3 days, always Monday-Wednesday, with an open invitation to stay the whole week. We also do longer off-sites once a year.

Our team is a multidisciplinary blend of research, engineering, and business experts. What unites us is our deep care for what we build together. We’re in a race that requires hard work, intellectual curiosity, and obsession; to balance this intensity, we’ve assembled a team of low ego and kind-hearted individuals who have built the special culture Poolside has. By building collaboratively and with intention, we create a compounding effect that moves the entire company forward towards our mission: reaching AGI through intelligence systems built for software development.

ABOUT THE ROLE

You would be working on our reinforcement learning team focused on improving reasoning and coding abilities of Large Language Models through reinforcement learning. This is a hands-on role where you’ll work end-to-end from researching new exploration or training algorithms, to designing and scaling up RL environments, to implementing your ideas across the stack. You will have access to thousands of GPUs in this team.

YOUR MISSION

To push the frontier of reasoning and coding capabilities of foundational models, via Reinforcement Learning.

RESPONSIBILITIES

  • Research and experiment on ways to improve reasoning and code generation for LLMs. Own the full experiment life cycle from idea to experimentation and integration

  • Keep up with the latest research, and be familiar with the state of the art in LLMs, RL, and code generation. Translate research ideas into clean, reusable codebases that other researchers can build on

  • Design, analyze, and iterate on data generation and training of LLMs

  • Implement and iterate on RL training pipelines that scale reliably across domains

  • Diagnose training instabilities and failures, debug RL runs and propose mitigation methods

  • Write high-quality, reproducible and maintainable code

SKILLS & EXPERIENCE

  • Experience with Large Language Models (LLM), including:

    • Understanding of the Transformer architecture and scaling laws

    • Mid-training and post-training techniques

    • Experience training reasoning and/or agentic models

    • Hands-on use of LLMs, with a sense of their capabilities and limitations

  • Reinforcement Learning experience

    • Solid grasp of Reinforcement Learning concepts and familiarity with modern algorithms

    • Experience developing distributed, large-scale RL pipelines from data creation to evaluations

  • Research experience

    • Scientific publications in any of the following topics: Reinforcement Learning, LLMs and reasoning models

    • Ability to discuss the latest research with sufficient level of detail

    • Is reasonably opinionated

  • Engineering skills

    • Strong machine learning, algorithm skills and engineering background

    • Experience with distributed training

    • Excellent programming skills in Python

    • Familiarity with a deep learning framework (Pytorch or JAX)

PROCESS

  • Intro call with one of our Founding Engineers

  • Technical Interview(s) with one of our Founding Engineers

  • Team fit call with the People team

  • Final interview with one of our Founding Engineers

BENEFITS

  • Fully remote work & flexible hours

  • 37 days/year of vacation & holidays

  • Health insurance allowance for you & dependents

  • 16 weeks of flexible, full-pay parental leave

  • Well-being, always-be-learning & home office allowances

  • Company-provided equipment

  • Frequent team get togethers

  • Diverse & inclusive people-first culture

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
Β·

Related jobs

Other jobs at poolside

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.