Machine Learning Engineer
Indexed description
RADAR is building the data infrastructure layer for the physical world, starting with retail. Our hardware-enabled SaaS platform uses proprietary overhead sensors, software, and AI-powered analytics to locate every product in a store, continuously, down to the fixture. We are deployed across 1,400+ stores with retailers including American Eagle Outfitters and Old Navy, processing tens of billions of real-world events every day, delivering 99%+ accuracy in complex, noisy environments - at fleet scale.
RADAR is one of the best-funded companies in retail technology, backed by a recent Series B financing at a $1 billion valuation. Inventory accuracy is only the beginning. We believe RADAR can become foundational infrastructure for the physical economy, powering new AI-driven commerce experiences across retail and beyond.
Join us if you want to work on a large, unsolved, technically challenging problem with an ambitious team building category-defining technology.
OUR VALUES
- Mission-Driven: We're transforming retail with cutting-edge technology and building something that truly matters.
- Collaborative Team: We thrive on curiosity, shared goals, and solving complex problems together.
- High Impact: You’ll make meaningful contributions from day one and help shape the future of our product and company.
- Clear Communication: We value honesty, humility, and respectful dialogue—everyone’s voice matters.
- Balanced Lives: We work hard, but not at the expense of well-being. We respect time, boundaries, and life outside of work.
- Diverse Perspectives: We believe better ideas come from diverse backgrounds, experiences, and viewpoints.
- Empathy-Driven Design: We build with deep respect for our end users, listening closely to their feedback and needs.
This is a hybrid role based in our Sunnyvale, CA location with a flexible hybrid work schedule of 2-3 days in the office.
Responsibilities
- Build and scale ML infrastructure: Design and maintain scalable, reliable and efficient production pipelines for feature engineering, training, prediction and model serving using tools including Airflow, Big Query and Kubeflow
- Drive model performance: Train, validate and deploy high-quality ML models, applying advanced techniques in feature selection, hyperparameter tuning and model architecture choices to improve the accuracy of our products
- Accelerate ML development: Optimize feature engineering pipelines for performance and scalability while collaborating with Data Science to research, develop, and deploy new features that improve model accuracy
- Ensure reliability: Implement comprehensive model monitoring, automated training pipelines, and observability solutions to maintain model health and performance
- Accelerate ML development: Optimize feature engineering pipelines for performance and scalability while collaborating with Data Science to research, develop, and deploy new features that improve model accuracy
- Champion best practices: Apply CI/CD principles including automated testing, model validation, and deployment strategies
- 5+ years building production ML systems at scale, including feature engineering, training, deployment, and monitoring
- Strong proficiency in Python and ML frameworks (scikit-learn, PyTorch, XGBoost)
- Hands-on experience with cloud ML platforms (AWS SageMaker, Vertex AI, or Azure ML)
- Expertise in big data processing including SQL optimization and distributed computing (Spark/Dask)
- Production experience with workflow orchestration tools (Airflow, Dagster, Prefect)
- Proficiency with version control (Git) and CI/CD practices
- Experience with real-time streaming data (Kafka, Flink, Pub/Sub.)
- Bachelor's degree in Computer Science, Statistics, or related field
- Experience with MLOps tools (MLflow, Weights & Biases, etc.)
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