Machine Learning Engineer
black.ai - San Francisco, California, United States, 94199
Work at black.ai
Overview
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Overview
Please read the following job description thoroughly to ensure you are the right fit for this role before applying. Our mission is to bring state-of-the-art vascular intervention to anyone, anytime, regardless of their location. Our team of medical clinicians, roboticists, and machine learning experts are working to bridge this gap by building the world’s first remotely-operated, semi-autonomous endovascular surgical robot. We’ve already done what nobody else could—using our system, doctors from around the world were able to remotely perform this procedure from as far as 8000 miles away. We have now successfully performed first-in-human cases, including a remotely operated procedure, demonstrating the potential of our technology to revolutionize access to life-saving interventions. We now need your help to bring this technology out of the laboratory and into hospitals everywhere. The Role We’re looking for someone to continue leveraging our vast trove of medical imaging data in order to train and deploy deep neural network models. These models enable our surgical robot to understand and reason about both our robot and the patient’s anatomy, which ultimately gives doctors the insight and control necessary to quickly and safely complete the procedure. You Have
At least 2 years of machine learning engineering experience (level will be commensurate with your experience)
Experience developing high-quality software, ranging from design and implementation to testing and deployment
Expertise with Python
Experience training image-based deep neural networks, including Deep neural network libraries such as PyTorch
Defining training and validation datasets
Using data augmentations during training
Selecting loss functions and metrics
Cloud-based data and training
Conducting large-scale experiments to determine actionable improvements
Eagerness to learn on the job, iterate fast, and collaborate
Nice to Haves
Experience developing and deploying neural networks for physical systems, such as robots and autonomous vehicles
Experience with medical imaging data such as x-rays, CTs, and MRIs
Experience bridging the sim-to-real gap
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