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Ai Label Job Jobs (NOW HIRING)

Applied AI Engineer

$225K - $275K/yr

Experience building human data labeling interfaces, annotation workflows, or data collection pipelines * Familiarity with preference data and reward models used in AI model training (RLHF, RLVR, or ...

Scale AI is a company that builds the data infrastructure powering advanced AI systems. They are ... labeling, evaluation, and deployment • Experience with global payment systems, contributor/gig ...

Label Control Quality Tech II

Raleigh, IL · On-site

$17.75 - $22.75/hr

... AI solutions, for diagnostic and interventional imaging. As a pioneer in the field of contrast ... Approving compliant label materials per SOPs and/or Reject label materials not meeting set ...

Train labelers on AST's in-house image-labeling software, including labeling conventions, ontology updates, quality standards, escalation paths, and productivity expectations * Monitor labeling ...

Snorkel AI is on a mission to democratize AI by building the definitive AI data development platform. As a Staff Applied AI Engineer in Pre-Sales, you will partner closely with Sales and AI Solution ...

Train labelers on AST's in-house image-labeling software, including labeling conventions, ontology updates, quality standards, escalation paths, and productivity expectations * Monitor labeling ...

... label services, record label, management, or related music industry environment * Deep ... Forward-thinking candidate with experience in AI and a passion for exploring the next frontier of ...

Review AI model output labels against clinical documentation to identify false positives, false negatives, and specificity errors; clean and correct label datasets and categorize error patterns for ...

Review AI model output labels against clinical documentation to identify false positives, false negatives, and specificity errors; clean and correct label datasets and categorize error patterns for ...

Computer Vision AI & ML Engineer

San Mateo, CA · On-site

$127K - $150K/yr

Skild AI is building the world's first general purpose robotic intelligence that adapts to unseen ... labeling strategies and tooling for automated annotation, QA workflows, dataset management ...

... • Create data labeling and training pipelines for improving AI model performance • Partner with product teams to identify opportunities for AI-powered features • Build reusable AI ...

Senior AI Infrastructure Engineer

Santa Clara, CA · On-site

$127K - $173K/yr

Support researchers in building "Data Machines" where AI agents autonomously curate, label, and verify high-priority edge cases from raw data. * Model Management & Lifecycle (MLOps) * Automated ...

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Ai Label Job information

See salary details

$21.5K

$65.4K

$112K

How much do ai label job jobs pay per year?

As of Jul 14, 2026, the average yearly pay for ai label job in the United States is $65,444.00, according to ZipRecruiter salary data. Most workers in this role earn between $42,500.00 and $85,000.00 per year, depending on experience, location, and employer.

$225K - $275K/yr

Full-time

Re-posted 13 days ago


Job description

About Pareto
Humanity is in a virtuous cycle: human insight improves AI, and better AI expands what people can do. Sustaining it depends on the one input that can't be automated: expert human judgment.
At Pareto, we build the platform that turns that judgment into the data, evals, and RL environments frontier models learn from. We work with leading frontier labs like Anthropic and GDM, and we give skilled people everywhere a way to shape the future of AI and share in what it creates.
This RL environment and human-data infrastructure is already in production. Our job now is to scale it.
Responsibilities
  • Design and build the pipelines that generate synthetic tasks and evaluation environments for AI model training - this is the factory floor of AI development, producing training fuel for next-generation models, not the models themselves
  • Architect the workflows where AI and humans work together in the loop - deciding what gets automated, what requires human intervention, how state is preserved across handoffs, and how the whole system stays reliable at scale
  • Own and lead the most complex system design discussions - produce one-page technical scoping documents that surface hidden risks before development begins, define technology stacks, and establish engineering guidelines that let the team move fast without breaking things
  • Rapidly assess whether a technical idea is worth building - get early signal, align stakeholders, and kill or accelerate accordingly
  • Partner closely with research, operations, and data teams - juggle multiple workstreams, make smart tradeoff decisions as priorities shift, and translate ambiguous business needs into concrete technical architecture
  • Build reusable frameworks and engineering guidelines that raise the team's collective execution muscle

You may be a good fit if you have
  • 8+ years of software engineering experience with a track record of owning complex systems end-to-end
  • A software engineering foundation first - you think in systems, architecture, and engineering tradeoffs, not in models and experiments
  • Production experience building and shipping agentic workflows, multi-agent orchestration, HITL pipelines, and LLM-powered applications with measurable business outcomes - RAG, vector stores, semantic search, and multi-model LLM stacks in production, not just demos
  • Battle-tested context engineering practices - you reason clearly about the limits of AI and architect around them
  • Experience with distributed systems architecture applied to AI or data platforms - reliable, observable, and scalable systems built in service of a product
  • Daily proficiency with agentic coding tools (Claude Code, Cursor, or equivalent) - you use these to multiply your output, not pad it
  • A track record of operating in ambiguity - shipping fast, pivoting when wrong, and moving on without ego
  • Exceptional written and verbal English communication skills - you can lead a design discussion, push back on stakeholders, and document architecture clearly. Communication cannot be a bottleneck

Nice to Have
  • Experience at an AI data company (Scale AI, Surge, Snorkel, Labelbox, or similar) - particularly building synthetic data pipelines, eval environments, or task generation systems. This is the dream background.
  • Experience building human data labeling interfaces, annotation workflows, or data collection pipelines
  • Familiarity with preference data and reward models used in AI model training (RLHF, RLVR, or similar)
  • Proficiency with our stack: Python, TypeScript, AWS, GCP, Terraform, Temporal Cloud, containerization, LLM gateways, RAG frameworks, and data pipeline tooling
  • Ability to employ data structures and algorithms when forming AI/LLM solutions
  • Ability to reason about requirements with a bias for Essentialism