Reducto
Engineering
DataLabelingLead(Contract)
Neural analysis suggests this role is
optimal for Mid candidates.
“Data Labeling Lead (Contract) at Reducto. Skills: Data Labeling, Team Management, Python. Lead data labeling team. Train data labeling team”
What You'll Achieve.
Ensure highest quality training data; Refine labeling guidelines; Maintain rigorous accuracy standards; Shape the foundation of AI capabilities
Industry & Context.
Solving complex problems; Building from first principles
Work nighttime hours Pacific Time (PT)
What They're Looking For.
Must Have
3+ years of experience working in Python, 3+ years of experience in data labeling, 3+ years of experience in operations, 3+ years of experience in team management, Ability to work nighttime hours PT
Nice to Have
Experience at an early-stage or high-growth startup, Familiar with AI/ML data pipelines, Familiar with labeling tools
What You'll Do.
Lead data labeling team
Train data labeling team
Manage data labeling team
Define annotation processes
Execute annotation processes
Improve annotation processes
Ensure high-quality data outputs
Meet accuracy standards
Meet consistency standards
Understand data requirements
Understand edge cases
Manage team schedules
Coordinate nighttime hours
How You'll Work.
Team & Collaboration
Collaborate closely with ML teams; Collaborate closely with engineering teams; Collaborate effectively across technical teams; Collaborate effectively across non-technical teams
Full Job Description
Reducto is the agentic document platform for leading AI teams who demand enterprise performance at scale. We provide a complete toolkit for handling any workflow by understanding documents the way a human would. Using an agentic architecture to orchestrate dozens of vision and frontier models behind the scenes, Reducto delivers high accuracy on complex, real-world documents where other tools fall short. We’ve grown rapidly, increasing revenue 8x year over year and partnering with hundreds of companies, from leading AI teams like Harvey, Vanta, and Scale, to enterprise customers across FAANG and top trading firms. Reducto has raised over $100M from world-class investors including a16z, Benchmark, and First Round Capital. THE OPPORTUNITY As Data Labeling Lead, you’ll play a key role in leading and managing our in-house data labeling team to ensure the highest quality of training data for our models. You’ll collaborate closely with the ML and engineering teams to refine labeling guidelines and maintain rigorous accuracy standards. This is a high-impact role where you’ll help shape the foundation of our AI capabilities from the ground up. WHAT YOU’LL DO: - Lead, train, and manage our in-house data labeling team. - Define, execute, and continuously improve data annotation processes with a very high attention to detail. - Ensure high-quality data outputs and meet rigorous accuracy and consistency standards. - Work closely with ML engineers to understand data requirements and edge cases. - Manage team schedules, specifically coordinating and working nighttime hours Pacific Time (PT). YOU’LL THRIVE HERE IF YOU: - Possess a very high attention to detail. - Have 3+ years of experience working in Python and are comfortable managing basic data labeling apps. - Have the ability to work nighttime hours PT. - Hold yourself to a high bar for quality and precision. - Enjoy solving complex problems and building from first principles. - Have 3+ years of experience in data labeling, op
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