MLOps Engineer

Ohme
London
2 months ago
Applications closed

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MLOps Engineer

MLOps Engineer

MLOps Engineer

MLOps Engineer

MLOps Engineer

MLOps Engineer

Job Description

Ohme is on a mission to accelerate the global transition to clean, affordable energy. We do that by serving as an integrated hardware and software smart-grid platform, focused on the residential EV charging market.

The worlds of energy, transport and artificial intelligence are colliding and Ohme is at the heart of this new era. By using technology and data integrations to connect cars, chargers, people, energy providers and more, Ohme has a powerful platform that puts the consumer at the core.

Ohme has been selling its chargers to consumers since mid 2019 and has had exponential growth since. We are now operating in multiple countries and have partnerships with the likes of VW, Mercedes, Octopus Energy, and other innovative brands.

We are scaling up the business and are building out the team for rapid growth. If you’re interested joining a fast-growing cleantech venture on a data and AI-first journey to speed up the global transition to clean, affordable energy, read on!

Job description

We are looking for an MLOps Engineer to join our Data department.

As an MLOps Engineer, you will play a critical role in our optimize our machine learning (ML) infrastructure, ensuring seamless deployment, monitoring, and scalability of ML models and endpoints. There will be the possibility to lean into our Agentic...

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