Lead computer vision projects and develop ML models for power grid analysis while mentoring engineers and ensuring software quality standards.
Job Description
Buzz is revolutionizing the analytics and maintenance of power grid infrastructure through our advanced AI solutions. Our computer vision systems analyze critical infrastructure to enhance safety, reliability, and operational efficiency across the power grid network. We're seeking an experienced Machine Learning Engineer to help lead our computer vision initiatives. You'll drive the development of cutting-edge models for power grid analysis and provide a leadership anchor on a team of talented ML engineers.
Responsibilities
- Architect and lead end-to-end computer vision projects focused on: Equipment defect detection, Thermal anomaly identification, Vegetation encroachment monitoring, Surveillance of closed areas for human and animal intrusions
- Drive innovation by incorporating the latest advances in deep learning and generative AI to enhance model training, accuracy and reliability
- Develop production-grade Python libraries for the complete ML lifecycle
- Mentor team members and establish best practices for model development, evaluation, deployment, and monitoring
- Advocate for and uphold software quality standards within the ML team
Qualifications & Experience
- 7-10 years of industry experience in computer vision and machine learning
- Deep expertise in modern computer vision and deep neural networks including: Object detection, Semantic segmentation, Image classification, Similarity search, Vision language models
- Proven track record of deploying and maintaining ML models in production
- Expert proficiency in PyTorch, Lightning, OpenCV, and Scikit-Learn
- Proficiency in FastAPI and Pydantic
- Strong software engineering foundation including: Git version control, Test driven development (Pytest), CI/CD, ML devops, Python type hinting
- 2-3 years of proven leadership experience of technical teams
Desired Additional Experience
- Multi-modal computer vision
- Custom object detection model development
- Generative models for data augmentation
- ML deployment on edge devices
- Extracting measurements from GIS and/or drone metadata enriched imagery
- Model quantization
- Systematic hyperparameter tuning
Additional information:
- This position does not include sponsorship for United States work authorization.
Similar Jobs
Logistics • Transportation
The role involves exploring ideas in deep learning, managing machine learning project life cycles, and collaborating on autonomous driving technology.
Top Skills:
Deep LearningEnd-To-End Object DetectionEnd-To-End PlanningLarge Foundation ModelsNeural NetworksPredictionPyTorchSlamSota TechniquesTensorFlowTensorrtTracking
Blockchain • eCommerce • Fintech • Payments • Software • Financial Services • Cryptocurrency
Lead and develop a remote team of Account Executives to drive revenue growth. Hire, train, coach AEs, manage KPIs, forecasting, and pipeline reviews. Build repeatable sales processes, use data to improve performance, collaborate cross-functionally, and incorporate customer feedback into product and strategy improvements.
Blockchain • eCommerce • Fintech • Payments • Software • Financial Services • Cryptocurrency
Advise on federal and state consumer and commercial lending law and bank partnership arrangements. Serve as subject-matter expert on Reg Z/Reg B, fair lending, and licensing; lead cross-functional regulatory issue resolution; counsel senior business, product, compliance, and bank partners; analyze regulatory changes and inform product development from concept through launch.
What you need to know about the Toronto Tech Scene
Although home to some of the biggest names in tech, including Google, Microsoft and Amazon, Toronto has established itself as one of the largest startup ecosystems in the world. And with over 2,000 startups — more than 30 percent of the country's total startups — Toronto continues to attract new businesses. Be it helping entrepreneurs manage their finances, simplifying business operations by automating payroll or assisting pharmaceutical companies in launching new drugs, the city's tech scene is just getting started.


