{"schemaVersion":"jobsearcher.job.v1","id":"e4b830b9ba080f5a8486732b","url":"https://jobsearcher.com/jobs/e4b830b9ba080f5a8486732b","canonicalUrl":"https://jobsearcher.com/jobs/e4b830b9ba080f5a8486732b","title":"Robotics Engineer, Perception","description":"Join Contoro Robotics – Revolutionizing Warehouse Automation with Cutting-Edge Robotics\nAt Contoro Robotics , we're on a mission to solve labor challenges through advanced robotic solutions. Headquartered in Austin, TX , our fast-growing startup is transforming the supply chain industry with our flagship warehouse automation technology. Our team is made up of top-tier experts in robotics, AI, and logistics , working together to push the boundaries of automation.\n\nWe’re looking for talented and ambitious individuals to join us on this journey—helping shape the future of robotics while growing alongside a world-class team. If you're passionate about innovation, problem-solving, and making a real-world impact, we want to hear from you!\n\nAbout Contoro\nContoro Robotics is an Austin based startup focused on warehouse automation. We design a state-of-the-art autonomous truck unloading system capable of lifting boxes over 60 lbs.\n\nThe Role\nWe are hiring a robotics engineer to maximize the accuracy of our box detection and singulation. You will own the machine learning pipeline that turns raw sensor data into reliable box detections - model training, dataset curation, evaluation, and edge deployment - working alongside our perception engineers to push detection and singulation accuracy across the full range of box sizes and container conditions we see in production. These models run in production across a fleet of active robots, and their accuracy directly drives unloading throughput.\n\nResponsibilities\n\nTrain, evaluate, and deploy instance segmentation and detection models that improve box detection and singulation accuracy, including for small, occluded, deformed, and tightly-packed boxes\n\nBuild and maintain automated dataset curation and ground-truth generation pipelines, including foundation-model-assisted labeling (e.g., SAM) to scale training data\n\nOwn a deterministic benchmarking and regression framework that evaluates model performance across real and simulated datasets, stratified by box size, container type, and failure mode\n\nOptimize models for real-time inference on edge hardware using TensorRT and quantization, balancing accuracy against latency and memory budgets\n\nDebug and resolve production detection failures through log analysis, failure-case review, and targeted retraining\n\nCollaborate with perception engineers on calibration, localization, and the interface between detections and downstream planning\n\nParticipate in design reviews and contribute to module-level technical decisions\n\nQualifications\n\nB.S. or M.S. in Computer Science, Robotics, Electrical Engineering, or a related field\n\n3+ years of professional experience developing and deploying computer vision / ML models for real-world systems\n\nProficiency in Python and PyTorch in a production environment; working knowledge of C++\n\nHands‑on experience with instance segmentation or object detection models (e.g., Mask R-CNN, Detectron2, YOLO, SAM)\n\nExperience building dataset curation, labeling, or evaluation pipelines\n\nExperience deploying models to edge hardware (NVIDIA Jetson or similar) with TensorRT or comparable inference optimization\n\nStrong debugging skills and the ability to diagnose model and pipeline failures in production\n\nFamiliarity with Linux-based development environments and ROS / ROS2\n\nPreferred Qualifications\n\nExperience with 3D perception and point cloud processing (PCL, Open3D) alongside 2D detection\n\nExperience with multi-sensor (camera + LiDAR) calibration and synchronized data pipelines\n\nExperience with stratified model evaluation and regression testing for ML systems\n\nFamiliarity with Docker-based deployment and cloud-based logging/monitoring\n\nPrior work in warehouse automation, logistics, or pick-and-place applications\n\n#J-18808-Ljbffr","company":"Linuxconfig","rawCompany":"linuxconfig","city":"Austin","state":"TX","isRemote":false,"isActive":true,"createdAt":"2026-07-08T03:31:08.791Z","occupations":[{"code":"17-2199.08","title":"Robotics Engineers","slug":"robotics-engineers"},{"code":"17-3024.01","title":"Robotics Technicians","slug":"robotics-technicians"},{"code":"17-2199.05","title":"Mechatronics Engineers","slug":"mechatronics-engineers"}],"industries":[{"code":"541715","title":"Research and Development in the Physical, Engineering, and Life Sciences (except Nanotechnology and Biotechnology)","slug":"research-and-development-in-the-physical-engineering-and-life-sciences-except-nanotechnology-and-biotechnology"},{"code":"541330","title":"Engineering Services","slug":"engineering-services"},{"code":"333248","title":"All Other Industrial Machinery Manufacturing","slug":"all-other-industrial-machinery-manufacturing"}],"jobPosting":{"@context":"https://schema.org","@type":"JobPosting","title":"Robotics Engineer, Perception","description":"Join Contoro Robotics – Revolutionizing Warehouse Automation with Cutting-Edge Robotics\nAt Contoro Robotics , we're on a mission to solve labor challenges through advanced robotic solutions. Headquartered in Austin, TX , our fast-growing startup is transforming the supply chain industry with our flagship warehouse automation technology. Our team is made up of top-tier experts in robotics, AI, and logistics , working together to push the boundaries of automation.\n\nWe’re looking for talented and ambitious individuals to join us on this journey—helping shape the future of robotics while growing alongside a world-class team. If you're passionate about innovation, problem-solving, and making a real-world impact, we want to hear from you!\n\nAbout Contoro\nContoro Robotics is an Austin based startup focused on warehouse automation. We design a state-of-the-art autonomous truck unloading system capable of lifting boxes over 60 lbs.\n\nThe Role\nWe are hiring a robotics engineer to maximize the accuracy of our box detection and singulation. You will own the machine learning pipeline that turns raw sensor data into reliable box detections - model training, dataset curation, evaluation, and edge deployment - working alongside our perception engineers to push detection and singulation accuracy across the full range of box sizes and container conditions we see in production. These models run in production across a fleet of active robots, and their accuracy directly drives unloading throughput.\n\nResponsibilities\n\nTrain, evaluate, and deploy instance segmentation and detection models that improve box detection and singulation accuracy, including for small, occluded, deformed, and tightly-packed boxes\n\nBuild and maintain automated dataset curation and ground-truth generation pipelines, including foundation-model-assisted labeling (e.g., SAM) to scale training data\n\nOwn a deterministic benchmarking and regression framework that evaluates model performance across real and simulated datasets, stratified by box size, container type, and failure mode\n\nOptimize models for real-time inference on edge hardware using TensorRT and quantization, balancing accuracy against latency and memory budgets\n\nDebug and resolve production detection failures through log analysis, failure-case review, and targeted retraining\n\nCollaborate with perception engineers on calibration, localization, and the interface between detections and downstream planning\n\nParticipate in design reviews and contribute to module-level technical decisions\n\nQualifications\n\nB.S. or M.S. in Computer Science, Robotics, Electrical Engineering, or a related field\n\n3+ years of professional experience developing and deploying computer vision / ML models for real-world systems\n\nProficiency in Python and PyTorch in a production environment; working knowledge of C++\n\nHands‑on experience with instance segmentation or object detection models (e.g., Mask R-CNN, Detectron2, YOLO, SAM)\n\nExperience building dataset curation, labeling, or evaluation pipelines\n\nExperience deploying models to edge hardware (NVIDIA Jetson or similar) with TensorRT or comparable inference optimization\n\nStrong debugging skills and the ability to diagnose model and pipeline failures in production\n\nFamiliarity with Linux-based development environments and ROS / ROS2\n\nPreferred Qualifications\n\nExperience with 3D perception and point cloud processing (PCL, Open3D) alongside 2D detection\n\nExperience with multi-sensor (camera + LiDAR) calibration and synchronized data pipelines\n\nExperience with stratified model evaluation and regression testing for ML systems\n\nFamiliarity with Docker-based deployment and cloud-based logging/monitoring\n\nPrior work in warehouse automation, logistics, or pick-and-place applications\n\n#J-18808-Ljbffr","datePosted":"2026-07-08T03:31:08.791Z","dateModified":"2026-07-08T03:31:08.791Z","hiringOrganization":{"@type":"Organization","name":"Linuxconfig","sameAs":"https://jobsearcher.com"},"jobLocation":{"@type":"Place","address":{"@type":"PostalAddress","addressLocality":"Austin","addressRegion":"TX","addressCountry":"US"}},"identifier":{"@type":"PropertyValue","name":"JobSearcher","value":"e4b830b9ba080f5a8486732b"},"url":"https://jobsearcher.com/jobs/e4b830b9ba080f5a8486732b"}}