Lead Computer Vision Engineer
We are looking for a Technical Lead to architect and deploy end-to-end Computer Vision solutions. You will lead a team of engineers to translate abstract business needs into high-performance, real-time vision pipelines that run on the Edge (NVIDIA Jetson/GPUs) and the Cloud. Key Responsibilities • Technical Leadership: Lead the end-to-end execution of Vision AI projects from algorithm selection and prototyping to production deployment. Mentor junior engineers and set high standards for code quality and fault tolerance. • Architect Real-Time Pipelines: Design low-latency camera stream processing pipelines for Object Detection, Tracking, OCR, and Behavior Analysis using state-of-the-art architectures (Transformers, YOLO, etc.). • GenAI Integration: Push the boundaries by integrating Generative AI (Vision Language Models / VLMs) into our industrial workflows to provide deeper intelligence. • Customer Collaboration: Bridge the gap between "Research" and "Reality." Translate client business requirements into techno-analytic problems and deliver disruptive insights in reasonable timeframes. • Infrastructure Collaboration: Work closely with the DevOps team to ensure seamless containerization and orchestration (Docker/Kubernetes) of your models. Skills & Requirements • Core CV & ML: Deep mastery of Python and the Computer Vision ecosystem (PyTorch, OpenCV, NumPy). Strong grasp of Machine Learning / Deep Learning fundamentals. • Video Analytics Mastery: Proven experience processing live RTSP/Camera feeds at high FPS. You understand the difference between running a model on a static image vs. a continuous stream. • Inference Optimization: You don't just train models; you deploy them. Experience with NVIDIA TensorRT, DeepStream, or Triton Inference Server is highly valued. • Production Engineering: Ability to write clean, fault-tolerant, modular Python code (not just Jupyter notebooks). Good understanding of data processing pipeline optimization. • Hardware Awareness: Deep understanding of CUDA and GPU utilization to squeeze maximum performance out of Edge hardware. Brownie Points • GenAI Experience: Familiarity with Large Language Models (LLMs) or Vision Transformers (ViT). • Deployment: Understanding of Docker and Kubernetes (you don't need to be an expert, but you need to know how your code is shipped). • MLOps: Experience with model versioning and lifecycle management. What We Offer • Meritocracy: A candid startup culture where the best ideas win. • The Playground: Access to the latest NVIDIA Hardware and cutting-edge Generative AI tools. • Ownership: Lead a performance-oriented team driven by autonomy and open to experiments. • Impact: Design systems for high accuracy and scalability that physically move the global supply chain. Apply tot his job