Machine Learning Research Engineer, Enterprise ML Systems

23 Minutes ago • 1-3 Years • $180,600 PA - $225,750 PA
Research Development

Job Description

The Enterprise ML Research team at Scale AI is at the forefront of the AI revolution, developing proprietary research and resources for enterprise clients. As an ML Sys Research Engineer, you will build algorithms for a next-gen Agent RL training platform, support large-scale training, and integrate state-of-the-art technologies to optimize the ML system. This role involves shaping the future of modern AI by applying training algorithms to client use-cases, from AI cybersecurity LLMs to healthtech search models.
Good To Have:
  • At least 1-3 years of LLM training in a production environment.
  • Passionate about system optimization.
  • Experience with post-training methods like RLHF/RLVR and related algorithms like PPO/GRPO.
  • Ability to demonstrate know-how on how to operate the architecture of the modern GPU cluster.
  • Experience with multi-node LLM training and inference.
  • Strong software engineering skills, proficient in frameworks and tools such as CUDA, Pytorch, transformers, flash attention.
  • Strong written and verbal communication skills to operate in a cross functional team environment.
  • PhD or Masters in Computer Science or a related field.
Must Have:
  • Build, profile and optimize our training and inference framework.
  • Post-train state of the art models to define stable post-training recipes for enterprise engagements.
  • Collaborate with ML teams to accelerate their research and development.
  • Create a next-gen agent training algorithm for multi-agent/multi-tool rollouts.
Perks:
  • Comprehensive health, dental and vision coverage
  • Retirement benefits
  • A learning and development stipend
  • Generous PTO
  • Commuter stipend (may be eligible)

Add these skills to join the top 1% applicants for this job

communication
game-texts
cuda
pytorch
algorithms
machine-learning

AI is becoming vitally important in every function of our society. At Scale, our mission is to accelerate the development of AI applications. For 9 years, Scale has been the leading AI data foundry, helping fuel the most exciting advancements in AI, including generative AI, defense applications, and autonomous vehicles. With our recent investment from Meta, we are doubling down on building out state of the art post-training algorithms to reach the performance necessary for complex agents in enterprises around the world.

The Enterprise ML Research team works on the front lines of this AI revolution. We are working on an arsenal of proprietary research and resources that serve all of our enterprise clients. As an ML Sys Research Engineer, you’ll work on building out the algorithms for our next-gen Agent RL training platform, support large scale training, and research and integrate state-of-the-art technologies to optimize our ML system. Your customer will be other MLREs and AAIs on the Enterprise AI team who are taking the training algorithms and applying them to client use-cases ranging from next-generation AI cybersecurity firewall LLMs to training foundation healthtech search models. If you are excited about shaping the future of the modern AI movement, we would love to hear from you!

You will:

  • Build, profile and optimize our training and inference framework.
  • Post-train state of the art models, developed both internally and from the community, to define stable post-training recipes for our enterprise engagements.
  • Collaborate with ML teams to accelerate their research and development, and enable them to develop the next generation of models and data curation..
  • Create a next-gen agent training algorithm for multi-agent/multi-tool rollouts.

Ideally you’d have:

  • At least 1-3 years of LLM training in a production environment
  • Passionate about system optimization
  • Experience with post-training methods like RLHF/RLVR and related algorithms like PPO/GRPO etc.
  • Ability to demonstrate know-how on how to operate the architecture of the modern GPU cluster
  • Experience with multi-node LLM training and inference
  • Strong software engineering skills, proficient in frameworks and tools such as CUDA, Pytorch, transformers, flash attention, etc.
  • Strong written and verbal communication skills to operate in a cross functional team environment.
  • PhD or Masters in Computer Science or a related field

Compensation packages at Scale for eligible roles include base salary, equity, and benefits. The range displayed on each job posting reflects the minimum and maximum target for new hire salaries for the position, determined by work location and additional factors, including job-related skills, experience, interview performance, and relevant education or training. Scale employees in eligible roles are also granted equity based compensation, subject to Board of Director approval. Your recruiter can share more about the specific salary range for your preferred location during the hiring process, and confirm whether the hired role will be eligible for equity grant. You’ll also receive benefits including, but not limited to: Comprehensive health, dental and vision coverage, retirement benefits, a learning and development stipend, and generous PTO. Additionally, this role may be eligible for additional benefits such as a commuter stipend.

Please reference the job posting's subtitle for where this position will be located. For pay transparency purposes, the base salary range for this full-time position in the locations of San Francisco, New York, Seattle is:

$180,600 - $225,750 USD

PLEASE NOTE: Our policy requires a 90-day waiting period before reconsidering candidates for the same role. This allows us to ensure a fair and thorough evaluation of all applicants.

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