Simpler. Smarter. Further.
ML Engineer – Open Source Community, Triage Lead
Location
Spain
Posted
71 days ago
Salary
0
Seniority
Senior
Job Description
ML Engineer – Open Source Community, Triage Lead
Ultralytics
• Manage community interactions and technical maintenance across all Ultralytics GitHub repositories. • Monitor and respond to GitHub issues and GitHub Actions alerts • Maintain and improve Docker environments • Manage package distributions through PyPI and Conda • Develop automated checks for documentation quality and consistency • Triage and reproduce reported issues • Review and merge community Pull Requests • Update documentation and guides on docs.ultralytics.com • Support users in GitHub Discussions • Collaborate with the ML team on new features and models
Job Requirements
- 5+ years experience with git, GitHub and open-source
- 5+ years experience with Python
- Proven experience managing open source communities
- Strong understanding of documentation systems
- Experience with Docker containerization
- Familiarity with PyPI and Conda package management
- Strong debugging and reproduction skills
- Excellent written communication
- Deep knowledge of YOLO models and computer vision
- Experience with automated testing and CI/CD workflows
Benefits
- 24 days paid vacation
- your birthday off
- local holidays
- Home set up Allowance ($550)
- A MacBook Air as your work device
- Flexible work environment with hybrid and remote options
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