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Machine learning engineer • vaughan on
Machine Learning Lead, Edge AI Inferencing
BlumindVaughan, York Region, CAMachine Operator
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Westlake ChemicalVaughan, York Region, CAMachine Operator (BMO)
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thyssenkrupp Materials NAVaughan, York Region, CA- Bradford West Gwillimbury, ON (from $ 92,625 to $ 296,000 year)
- Quinte West, ON (from $ 92,625 to $ 296,000 year)
- Ottawa, ON (from $ 119,591 to $ 271,835 year)
- Victoria, BC (from $ 38,805 to $ 250,000 year)
- Thunder Bay, ON (from $ 142,500 to $ 238,700 year)
- Owen Sound, ON (from $ 128,524 to $ 233,400 year)
- North Bay, ON (from $ 140,000 to $ 228,800 year)
- Prince George, BC (from $ 121,250 to $ 227,300 year)
- Prince Edward, ON (from $ 134,611 to $ 211,725 year)
- Greater Sudbury, ON (from $ 122,925 to $ 200,000 year)
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Machine Learning Lead, Edge AI Inferencing
BlumindVaughan, York Region, CA- Full-time
About Blumind
Blumind is a deep-tech startup at the forefront of the AI revolution. We are building a new class of semiconductor : ultra-low-power analog AI processors (AMPL™) designed for the extreme edge. Our technology enables complex AI, from "always-on" keyword spotting to advanced vision and language models, to run on a fraction of the power of traditional digital chips. We are on a mission to make high-performance, on-device AI ubiquitous, from wearables and smart home devices to automotive and industrial IoT.
Role Overview : The Technical Challenge
We are seeking a seasoned and innovative Machine Learning Lead to own the technical strategy and execute on optimizing and deploying next-generation neural networks on our unique analog hardware. Your primary challenge will be to bridge the gap between the world of large, complex models (hybrid SSM, transformers with compression, CNN, RNN) and the hard constraints of our ultra-low-power analog compute architecture.
You will lead the effort with a combination of architectural insight and hands-on validation and deployment along with hardware architects and software developers to define the future of our ML model stack. This is a leadership role for a technical expert who is passionate about hardware-aware ML and eager to solve novel problems in model compression, quantization, and algorithm-hardware co-design. The work is exciting, fast-paced and highly collaborative.
Key Responsibilities
- Technical Leadership & Strategy : Define and execute the roadmap for ML model support on Blumind's analog platform, with a special focus on advanced architectures like Transformers, CNNs, and RNNs.
- Hardware-Aware ML : Lead the research and implementation of cutting‑edge optimization techniques (e.g., hardware‑aware training, aggressive quantization, pruning, knowledge distillation, bitwise models, hybrid SSM / attention structures and quantum compression techniques). AI model with hardware co‑optimization to deliver market leading TOPS / watt, TTFT and tokens / sec is the end goal.
- Algorithm‑Hardware Co‑Design : Serve as the primary ML expert in discussions with the hardware team. Provide critical feedback to inform the design of future analog compute cores, ensuring they are optimized for the next wave of AI models.
- Team Leadership : Help recruit, lead, mentor, and grow a high‑performing team of ML engineers. Foster a culture of innovation, rigorous testing, and cross‑functional collaboration.
- Full Stack Development : Collaborate and guide the requirements for our ML "translator" tools, which map models from standard frameworks (PyTorch, TensorFlow) onto our proprietary analog processor.
- Benchmarking & Analysis : Establish and own the pipelines for benchmarking model performance, accuracy, power consumption, and latency on silicon. Use this data to drive improvements across both hardware and software.
Required Qualifications
Preferred Qualifications
Location
We thank all applicants for their interest. Only candidates being considered for the role will be contacted.
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