Senior Machine Learning Engineer
As a Senior Machine Learning Engineer within the AI Squad at Canopy and reporting to the Director of AI Engineering, you'll contribute to the development of cutting-edge AI solutions to combat vehicle and content theft. In this senior role, you'll play a pivotal part in shaping our AI roadmap, mentoring junior engineers, and influencing system architecture decisions. This is a high-impact role with visibility across engineering and product leadership.Responsibilities: Contribute to the design, development, and deployment of robust machine learning models for production use in real-world security applicationsDevelop within the full machine learning lifecycle; from problem definition to data pipeline design, model development, validation, deployment, and monitoring. Establish and refine best practices in our ML system architecture, CI/CD pipelines for ML, and reproducible research methodologies. Collaborate with cross-functional stakeholders including product managers, data engineers, and MLOps teams to ensure seamless model integration and deliveryPerform advanced exploratory data analysis on large-scale sensory datasets (image, audio, radar, accelerometer) to derive insights and guide modeling strategiesStay ahead of industry advancements in machine learning, AI sensing, and signal processing, incorporating the latest innovations into Canopy's technology stackMentor and guide junior engineers and contribute to the hiring process and technical reviewsRequirements5+ years of professional experience developing and implementing ML for perception systems with expertise in at least one of either RADAR, camera, or LiDAR. Bachelor's degree in Computer Science, Data Science, Engineering, or a related fieldExpertise in Python with extensive experience in at least one deep learning framework (PyTorch or TensorFlowProven ability to develop production-grade ML applications for training, evaluation and inference on large-scale datasets. Experience creating C/C++ applications utilizing modern language features and build systems, preferably for porting ML inference applications from Python to edge devices/embedded systemsWhite-box understanding of classical ML algorithms (SVMs, HMMs, Decision Trees) and modern neural network models and architectures (CNNs, transformers) with significant experience applying them for perception systemsExperience implementing and applying dynamic object tracking, with experience using sensor fusion as a preference. Proficiency in Unix-based environments (Linux, macOS) including working with remote servers and services, virtual computers and clusters. Proficiency in signal processing techniques such as time/frequency-domain processing (e.g. Fourier Transform), filtering, and noise reduction. Preferred Qualifications:Experience in deploying models to edge hardware, including experience with PyTorch and ONNX and model compression techniques, e.g. quantisation and pruningExperience using cloud computing platforms, e.g., AWS or GCPExperience with MATLAB for algorithm prototyping and researchExperience with Docker or containerisation. Reside within the Detroit area or nearby, with the ability to work in a hybrid environment and regularly commute to our Detroit office as neededBenefitsComprehensive medical benefits coverage, dental plans and vision coverageHealth care and dependent care spending accountsEmployee and Family Assistance Program (EAP)Employee discount programsRetirement plan with a generous company matchGenerous Paid Time Off, Sick, and HolidaysFamily Leave (Maternity, Paternity)Short- and long-term disabilityLife insurance and accidental death & dismemberment insuranceCompensation RangeCompensation May Vary Depending On Skills And Experience.Base Salary: $126,000 - $180,000Diversity, Equity and Inclusion: At Canopy, we're on a mission to end theft from vehicles and revolutionize vehicle security by building cutting-edge technology. We will achieve this by prioritizing individuals and staying attuned to the evolving needs of our people, users, and industry trends. We foster a workplace culture that embraces diversity and authenticity, enabling us to flourish as a team of exceptional individuals working towards a common purpose. We gain a deeper understanding of our users' experiences by continuously improving our skills and expanding our knowledge. A more diverse, equitable, and inclusive Canopy leads to greater innovation and success.Equal Opportunity: Canopy does not discriminate on the basis of race, sex, color, religion, age, national origin, marital status, disability, veteran status, genetic information, sexual orientation, gender identity or any other reason prohibited by law in provision of employment opportunities and benefits.