talentpluto

AI infrastructure

ResearchEngineer

$135–185k ~AI est. California, United States
Market Sentiment
HIGH DEMAND

Neural analysis suggests this role is
optimal for Mid+ candidates.

The Brief

“Research Engineer at talentpluto. Skills: Data quality, Applied ML operations, Quality assurance. Define quality standards. Enforce quality standards”

Industry & Context.

AI infrastructure
Problems you'll solve

Problem-solving

What They're Looking For.

Must Have

Proficiency with Python, Experience in Linux environments, Experience with Docker, Experience with large-scale datasets, Problem-solving skills, Evidence of rapid learning, Ability to operate independently, Clear written communication skills, Clear verbal communication skills

Nice to Have

Experience building data validation pipelines, Experience building human-in-the-loop review systems, Familiarity with training-data failure modes, Familiarity with techniques to detect inconsistencies, Comfort designing QA metrics, Comfort designing QA experiments, Comfort designing QA processes, Familiarity with modern AI tooling, Familiarity with LLM capabilities

What You'll Do.

Define quality standards

Enforce quality standards

Build tooling for datasets

Build workflows for datasets

Audit supplier-generated datasets

Evaluate human-in-the-loop review

Implement human-in-the-loop review

Partner with data suppliers

Provide actionable feedback

Improve data generation processes

Integrate QA learnings

Reduce inconsistencies

Improve documentation

How You'll Work.

Team & Collaboration

Internal stakeholders; External data suppliers; Across time zones

Communication Scope

Written communication; Verbal communication

Full Job Description

**Location:** San Francisco Bay Area **Work model:** On-site (some team members are remote, but this role is currently on-site) **Industry:** AI infrastructure / Reinforcement Learning (RL) training data & evaluations **Compensation:** Competitive (range not provided) + benefits (medical/dental/vision coverage, meals, 401(k), commuter benefits, wellness perk) ### About the Company (our partner) Our partner is a fast-growing, venture-backed AI infrastructure company building the tooling and workflows that power reinforcement learning (RL) training data and evaluation for frontier AI agents. Their platform is used by advanced AI teams across large enterprises and high-growth startups, and they’re scaling quickly to meet strong customer demand. The team is small, highly technical, and execution-focused, with a culture that values ownership, speed, and craftsmanship. ### The Opportunity Our partner is hiring a **Research Engineer** to help scale the quality assurance (QA) systems behind training data generated through their infrastructure. This role sits at the intersection of data quality, tooling, and applied ML operations: you’ll build the standards, pipelines, and feedback loops that ensure datasets are reliable, consistent, and ready for training and evaluation. You’ll work closely with internal stakeholders and external data suppliers to diagnose quality issues, improve workflows, and continuously fold QA learnings back into the platform. If you enjoy building systems that make high-quality data scalable—and want to do it in a high-ownership, fast-paced environment—this role is a strong fit. ### Responsibilities * Define and enforce quality standards for training datasets used for RL training and evaluation * Build tooling and workflows to audit supplier-generated datasets, including sampling strategies, validation pipelines (rule-based and model-assisted), and feedback loops * Evaluate and implement human-in-the-loop review workflows where beneficial to improve q

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