Research Engineer

talentpluto

$140K — $250K *
Information Technology
Less than 5 years of experience
Job Overview by Ladders

Qualifications

  • Deeply technical with a strong learning orientation
  • Experience in AI/ML engineering or software engineering focused on data ingestion and processing
  • Ability to analyze data quality issues from first principles
  • Proficient at managing ambiguous and open-ended problems
  • Full-time in-person work required in San Francisco office
  • Bonus: Familiarity with noisy or unstructured data and decision-making on automation versus human review

Responsibilities

  • Identify data quality issues such as inconsistencies and formatting problems
  • Conduct initial manual reviews to understand data failure modes
  • Develop systems for automating quality verification at scale
  • Create hybrid systems combining rule-based checks and human reviews
  • Regularly enhance verification methods as data and AI tools evolve

Benefits

  • Strong focus on research and problem-solving in a critical growth area
  • Opportunity to work with cutting-edge AI training data infrastructure
  • Direct impact on improving data quality for buyers
  • Collaborative environment in a centralized office setting
  • Potential for equity participation in a high-growth organization
Full Job Description
Location: San Francisco, CA

Work Model: In-person

Industry: AI training data infrastructure

Compensation: $140K-$250K base, plus equity
The Opportunity

This is the company's top hiring priority and a genuinely hard research problem. Because data flows through a decentralized marketplace, ensuring quality at scale is the single biggest bottleneck to growth. As a Research Engineer, you will build the automated systems that verify and assure data quality so that suppliers consistently deliver excellent data to buyers.

You will start by digging into the data manually to understand failure modes, then design systems to automate quality checks at scale, combining rule-based approaches with AI for fuzzier cases and human-in-the-loop review where it makes sense. This is fundamentally a research role focused on building automated systems, not manual QA.
Responsibilities
  • Identify data quality issues including inconsistencies, formatting problems, and ingestion challenges
  • Perform initial manual data quality review to deeply understand failure modes
  • Build systems to automate quality checks at scale using rule-based and AI-driven approaches
  • Design hybrid systems that balance automation with human-in-the-loop review where appropriate
  • Continuously improve verification methods as the data landscape and AI tooling evolve
Requirements
  • Deeply technical, with a strong learning slope and the ability to ramp quickly in a fast-moving field
  • Background in AI/ML engineering, or software engineering at an AI-focused company with visible data ingestion and processing experience
  • Ability to reason about likely data quality problems from first principles
  • Comfortable owning ambiguous, open-ended problems end to end
  • Comfortable working in person, full-time, in a San Francisco office
  • Bonus: experience working with noisy or unstructured data, or judgment on when to use automation versus human-in-the-loop review

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