Samsara is the pioneer of the Connected Operations™ Cloud, enabling organizations to harness IoT data for actionable insights. The Staff Machine Learning Engineer will lead the design and implementation of AI solutions for Edge devices, working with large-scale data to optimize ML model performance and drive product initiatives.
Responsibilities:
- Lead design and implementation of critical AI product initiatives on Edge devices
- Develop both tactical AI solutions as well as more strategic and longer term research
- Work with petabyte-scale data from customer operations including text, transactions, diagnostics, sensor, camera, and location data
- Partner across business units to explore and prototype new AI experiences and optimize the ML model performance on edge devices
- Stay connected to industry and academic research and adopt novel technology that suits Samsara’s needs
- Champion, role model, and embed Samsara’s cultural principles (Focus on Customer Success, Build for the Long Term, Adopt a Growth Mindset, Be Inclusive, Win as a Team) as we scale globally and across new offices
Requirements:
- 8+ years experience as a Machine Learning Engineer
- Profound experience in optimizing ML models and systems for Edge compute constraints
- Proficient with Spark, Ray, or a similar framework
- Coding in python or similar
- Coding in C++ or Rust
- Strong functional knowledge of the iterative machine learning product development process
- Experienced in developing and shipping production code at large scale
- Ability to distill informal or ambiguous customer and business requirements into crisp problem definitions
- Proven ability to communicate verbally and in writing to technical peers and leadership teams with various levels of technical knowledge
- Experience coaching and mentoring ML Engineers
- Proficiency in self-serving with data for experiments and model training at scale
- An established record of successful high impact deliveries in AI
- Deep knowledge in state of the art Computer Vision and multi-model models