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Machine Learning Engineer
Velo3DMachine Learning Engineer developing machine learning solutions for quality assurance in additive manufacturing. Collaborating closely with engineers to deploy models for process monitoring using advanced data.
Posted 6/3/2026full-timeFremont • California • 🇺🇸 United StatesMid-LevelSenior💰 $150,000 - $220,000 per yearWebsite
Tech Stack
Tools & technologiesAWSCloudIoTPythonPyTorch
About the role
Key responsibilities & impact- Develop ML models using in-process sensor data to identify anomalies and quality issues during printing.
- Build and iterate on training and evaluation workflows; document experiments and results for reproducibility.
- Own ML experimentation end to end: Design datasets, preprocessing pipelines, and training workflows; iterate on model architectures and metrics; document experiments and results for reproducibility.
- Help define data collection and management: Partner with process and software teams to improve how build data is ingested, cataloged, versioned, and made available for training and evaluation.
- Deploy models into production: Work with print software and embedded teams to integrate validated models into production code running on printer hardware, including performance and reliability considerations.
- Collaborate with supporting software engineers: Hand off validated Python prototypes for production hardening, provide clear specifications and acceptance criteria, and support integration and regression testing.
Requirements
What you’ll need- Bachelor's degree in Computer Science, Electrical Engineering, Applied Mathematics, or a related field; advanced degree preferred.
- 3+ years of experience building and evaluating machine learning models in a professional setting.
- Hands-on experience with computer vision or image-based ML (e.g., segmentation, classification, or anomaly detection).
- Strong Python skills and experience with modern ML frameworks (e.g., PyTorch).
- Experience designing ML pipelines: data loading, preprocessing, training, evaluation, and experiment tracking.
- Comfort working in a production software environment: version control, code review, testing, and cross-functional collaboration.
- Ability to communicate technical tradeoffs clearly to engineers and non-engineers.
- Strong programming skills in Python or C++.
- Experience organizing and working with structured and unstructured datasets.
- Background in a STEM or scientific discipline, with demonstrated use of ML to address substantive technical or engineering problems.
- Bonus: Experience with powder bed fusion or other additive manufacturing processes.
- Bonus: Knowledge of manufacturing data workflows, IoT sensor data, or industrial automation systems.
- Bonus: Experience with image-based or time-series machine learning.
- Bonus: Familiarity with model deployment in production or embedded environments.
- Bonus: Familiarity with cloud storage and data pipelines (e.g., AWS S3, batch retrieval workflows).
- Bonus: Experience in domains such as robotics, aerospace, materials, instrumentation, scientific computing, or other fields where ML is applied to physical or experimental data.
Benefits
Comp & perks- healthcare coverage
- 401(K) employer contributions
ATS Keywords
✓ Tailor your resumeApplicant Tracking System Keywords
Tip: use these terms in your resume and cover letter to boost ATS matches.
Hard Skills & Tools
machine learningcomputer visionimage-based MLPythonPyTorchML pipelinesdata preprocessingmodel deploymentC++anomaly detection
Soft Skills
communicationcollaborationproblem-solvingdocumentationcross-functional teamworktechnical tradeoff analysisorganizational skillsattention to detailadaptabilitycritical thinking