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Artificial intelligence, actionable insights, and predictive analytics for infrastructure inspections.
Applied Machine Learning Platform Engineer
Location
United States
Posted
82 days ago
Salary
0
Seniority
Mid Level
Job Description
Applied Machine Learning Platform Engineer
Buzz Solutions
• Design, build, and maintain scalable training infrastructure for computer vision workloads • Implement and manage distributed training pipelines (multi-GPU, multi-node) to support large-scale model training and hyperparameter tuning • Build and maintain robust data pipelines for ML development • Design database schemas and storage strategies for managing large training datasets, annotations, and model artifacts • Implement and manage feature stores, data versioning, and experiment tracking to support reliable model iteration • Automate existing analysis workflows • Maintain clear documentation for platform components, data contracts, and deployment processes • Communicate infrastructure decisions, tradeoffs, and system limitations clearly to ML engineers and stakeholders • Conduct thorough code reviews and write integration tests for ML pipelines
Job Requirements
- 2-4 years of industry experience in platform, backend, data, or MLOps engineering roles
- Python proficiency — idiomatic code, type hints, async patterns, packaging, and performance-aware implementation
- Strong software engineering fundamentals — testing, code review, API design, component-level system design
- Hands-on experience building and operating distributed cloud machine learning infrastructure
- Designing and maintaining scalable training infrastructure, managing ML platform reliability, optimizing data pipelines for throughput at scale
- Experience with database design and data systems for ML workloads — schema design, query optimization, and storage strategies for large-scale datasets
- Excels at workflow orchestration and automation
- Solid proficiency in Python and core ML tooling:
- Python ecosystem: Pytest, UV, FastAPI, Pydantic
- Tooling: Git, Docker, UV
- Tracking: MLflow, Weights & Biases, or equivalent
- Automation: Github Actions, CI/CD, Prefect or equivalent
- Infrastructure: AWS, GCP, Kubernetes, Helm, Terraform or equivalent
- Databases: postgres, DynamoDB, Bigtable
Benefits
- Buzz Solutions does not provide Visa sponsorship for work authorizations in the United States at this time
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