What you'll do
- Develop computer vision and machine learning models for real-time perception systems, enabling tractors to identify crops, obstacles, and terrain in varying unpredictable conditions.
- Build sensor fusion algorithms to combine camera, LiDAR, and radar data, creating robust 3D scene understanding that handles challenges like crop occlusions or GNSS drift.
- Optimize models for low-latency inference on resource-constrained hardware, balancing accuracy and performance.
- Design and test data pipelines to curate and label large sensor datasets, ensuring high-quality inputs for training and validation, with tools to visualize and debug failures.
- Analyze performance metrics and iterate on algorithms to improve accuracy and efficiency of various perception subsystems.
What you’ll bring
- A MS, or PhD in Computer Science, AI, or a related field, or 5+ years of industry experience building vision-based perception systems.
- Deep expertise in developing and deploying machine learning models, particularly for perception tasks such as object detection, segmentation, mono/stereo depth estimation, sensor fusion, and scene understanding.
- Strong understanding of integrating data from multiple sensors like cameras, LiDAR, and radar.
- Experience handling large datasets efficiently and organizing them for labeling, training and evaluation.
- Fluency in Python and experience with ML/CV frameworks like TensorFlow, PyTorch, or OpenCV, with the ability to write efficient, production-ready code for real-time applications.
- Proven ability to design experiments, analyze performance metrics (e.g., mAP, IoU, latency), and optimize algorithms to meet stringent performance requirements in dynamic settings.
- An eagerness to get your hands dirty and agility in a fast-moving, collaborative, small team environment with lots of ownership.
What makes you a strong fit
- Experience architecting multi-sensor ML systems from scratch.
- Experience with Foundational models for robotics or Vision-Language-Action (VLA) models
- Experience with compute-constrained pipelines including optimizing models to balance the accuracy vs. performance tradeoff, leveraging TensorRT, model quantization, etc.
- Experience implementing custom operations in CUDA.
- Publications at top-tier perception/robotics conferences (e.g. CVPR, ICRA, etc.).
- Passion for sustainable agriculture and securing our food supply chain.
Top Skills
What We Do
Agtonomy brings intelligent automation to agriculture, turf, and other demanding industries through Physical AI and software services. By partnering with trusted equipment manufacturers, we deliver factory-fit technology that transforms industrial machines into smart, efficient solutions built for safety and performance. Our team combines expertise in technology, product development, and industry knowledge to address critical challenges like labor shortages, sustainability, and productivity.
Why Work With Us
Agtonomy’s AI-driven automation helps growers tackle labor shortages, improve efficiency, and manage rising costs—embedded at the factory level with the world’s leading equipment brands.








