Principal Python Engineer - ML Infrastructure

Job summary

Denver

Work model

Fully remote
Only United States
2 days ago
Job description

Principal Python Engineer --- ML Infrastructure (AI Training)

About The Role

What if your Python expertise could directly shape the infrastructure powering some of the world's most advanced AI systems? We're looking for a Principal Python Engineer to build and optimize the data pipelines, annotation tooling, and evaluation systems that leading AI labs depend on --- working on real production code with meaningful, measurable impact.

This is a fully remote, flexible contract role for a senior engineer who thrives at the intersection of systems programming, distributed computing, and AI infrastructure.

  • Organization: Alignerr
  • Type: Hourly Contract
  • Location: Remote
  • Commitment: 20--40 hours/week

What You'll Do

  • Design, build, and optimize high-performance Python systems supporting large-scale AI data pipelines and model evaluation workflows
  • Develop full-stack backend tooling and services for data annotation, validation, and quality control at scale
  • Diagnose and resolve bottlenecks across compute-heavy, distributed systems using advanced async patterns and profiling techniques
  • Improve reliability, safety, and performance across existing production Python codebases
  • Collaborate closely with data, research, and engineering teams to accelerate model training and evaluation cycles
  • Drive architectural decisions through synchronous design reviews and clear technical communication

Who You Are

  • 5+ years writing production Python for large-scale infrastructure or platform engineering
  • Deep expertise in distributed computing, concurrency, and advanced asynchronous programming patterns
  • Fluent in Python internals --- including GIL limitations, memory profiling, and performance optimization for compute-heavy workloads
  • Experienced full-stack developer with a strong systems programming background
  • Clear, confident communicator capable of driving technical strategy and architectural decisions
  • Native or fluent English speaker
  • Available to commit 20--40 hours per week

Nice to Have

  • Prior experience with data annotation, data quality, or evaluation systems
  • Familiarity with AI/ML workflows, model training, or benchmarking pipelines
  • Background in distributed systems architecture or developer tooling
  • Exposure to working directly with AI research teams or labs

Why Join Us

  • Work on real, high-impact production systems used by leading AI research labs
  • Fully remote and flexible --- work when and where it suits you
  • Freelance autonomy with the depth and structure of meaningful, long-term technical work
  • Collaborate with top engineers and researchers at the frontier of AI development
  • Potential for ongoing work and contract extension as new projects launch