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Plato

Senior Computer Vision and Machine Learning Engineer

Plato, San Francisco, California, United States, 94199


About

We are a series-A startup building perception systems for autonomy. We are based in the San Francisco Bay Area, funded by

NEA

, and our core team includes faculty entrepreneurs (Stanford) and industry veterans (Uber, Apple, Amazon Lab126, Rohde & Schwarz), who have successfully shepherded signal processing and machine learning innovations to large-scale software for location improvement and safety at Uber,

led the development of state-of-the-art computer vision technologies that shipped over millions of Amazon devices, and delivered zero-to-one product experiences at Uber and Box. Our core product grew out of 5+ years of university R&D by our co-founders. You can find out more about us by

visiting our website

.

Our mission and team expertise spans beyond software to advanced sensor systems, algorithms, embedded systems, signal processing, and machine learning. Our team is building and deploying edge software and cloud services for real-time customer facing products as well as internal big data tools. We look for people with a depth of expertise and experience in one of these areas, and with the intellectual curiosity for interacting with, learning from, and teaching world-class experts in areas outside their expertise.

We currently have a full-time opening in the area of computer vision and machine learning. The candidate will join a multi-disciplinary team of scientists and engineers and work on a full stack of developing cutting edge

Computer Vision (CV) and Machine Learning (ML) methods based on data from a variety of sensors.

This position is open to both on-site and remote candidates (including Canada).

Responsibilities

Research, design, develop and evaluate advanced image processing and computer vision algorithms for a real-time computer vision

pipeline including but not limited to camera calibration, multi-object tracking, object detection and classification, segmentation, and multi-sensor fusionLead, maintain and improve our existing in-house algorithms and models, including continuous evaluation, gap analysis,

re-training and fine tuning.Develop state of the art deep learning networks and architectures across data from multiple sensors; Tasks include training, evaluating, benchmarking and deployment into real-time pipelinesOptimize algorithm performance across a wide range of development platforms and embedded systemsDevelop evaluation scripts to process large data and accurately measure algorithmic and end to end performance.

Basic Qualifications

PhD in CV/ML with 4+ years of industry experience or MS in CV/ML with 5+ years of industry experienceStrong Python/C++ programming, familiarity with software development best practices, debugging/profilingUnderstanding of stereo / multi view geometric computer vision and classical computer vision for natural scene imagesHands-on experience with OpenCV, PIL, and other image processing librariesHands-on experience with at least one main stream deep learning framework such as PyTorch, TensorFlow, and ONNXExperience with writing production level codeFamiliarity with data science toolkit such as jupyter lab/notebooks, pandas, bash scripting, Linux environmentSelf motivatedExcellent problem solving skillsExcellent communication skills

Preferred Qualifications

Prior experience with multi-sensor calibration and multi-view geometryHands-on experience with different neural network architectures (CNNs, RNNs, etc.) as well as specific approaches for classification, segmentation, and object detection (Mask-RCNN, SSDs, EfficientDet, …) and common datasets (CoCo, Kitti, nuScenes,...)Solid software engineering foundation and a commitment to writing clean, well architected codeFamiliarity with various physical aspects of sensors including cameras and Lidars

Publications in major CV/ML conferences and journals

Statistical modeling, analysis, and significance testingExperience with edge computing (NVidia Jetson family, Raspberry Pi, ML accelerators) and coding for resource-constrained compute environmentsExperience in supervising and mentoring junior engineers

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