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Join a forward-thinking startup that is revolutionizing condition monitoring in the industrial manufacturing sector. As a Machine Learning Solutions Engineer, you will play a crucial role in developing and deploying machine learning models on AWS. This position offers the chance to work with cutting-edge technologies and collaborate with talented engineers while making a significant impact on the company's growth. Enjoy the flexibility of a remote-first environment, competitive compensation, and the opportunity to shape the future of predictive maintenance. If you're passionate about machine learning and eager to contribute to innovative solutions, this is the perfect opportunity for you.
AssetWatch services global manufacturers by powering manufacturing uptime through the delivery of an unparalleled condition monitoring experience, with a passion to care about the assets our customers care for every day. We are a devoted and capable team that includes world-renowned engineers and distinguished business leaders united by a common goal – to build the future of predictive maintenance. As we enter the next phase of rapid growth, we are seeking people to help lead the journey.
We're seeking an experienced Machine Learning Solutions Engineer to join our team and play a critical role in developing, deploying, and managing machine learning models on AWS. You will collaborate with cross-functional teams to implement end-to-end ML pipelines, ensure seamless model deployment, and continuously monitor and evaluate model performance. As a subject matter expert in MLOps, you will also mentor other engineers and contribute to the development of our company's ML engineering capabilities.
What You'll Do:
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What We Offer:
AssetWatch is a remote-first rapidly growing startup providing a game-changing condition monitoring platform and mobile experience in the industrial manufacturing space.
We have a distributed team that works remotely across locations in the United States. We are open to candidates from most states but collaboration within core working hours is required.
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