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Client:
Few&Far
Location:
bournemouth, United Kingdom
Job Category:
Other
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EU work permit required:
Yes
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Job Views:
6
Posted:
31.05.2025
Expiry Date:
15.07.2025
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Job Description:
Fully Remote within the UK
Up to £150k + Stock + Benefits
Join a US scale-up on a mission to empower Engineering teams to deliver their best work by simplifying the deployment of Machine Learning models.
As they expand their global footprint, have raised Series C funding, and grown over 30% in 3 months, they’re seeking a talented Forward Deployed Engineer to join the UK team!
About the Role
As a Forward Deployed Engineer, you'll collaborate directly with customers to understand challenges and engineer ML-based deployment solutions.
You'll be instrumental in ensuring clients achieve optimal outcomes with their models, focusing on aspects like optimisation, scalability, and efficiency.
You’ll work alongside teams from world-class tech companies like NVIDIA, Amazon, Datadog, Vercel, Meta, GitHub, and Uber
Key Responsibilities
* Partner with customers to identify and address their ML deployment needs
* Implement and optimise ML solutions using Python, open-source tools, and infrastructure
* Collaborate with cross-functional teams to enhance product features based on client feedback
* Work with Python, PyTorch, TensorFlow, Kubernetes, Docker, and cloud platforms
Ideal Candidates have
* 5+ years of Backend (Python) Software Engineering experience in a fast-paced, high-growth, product environment
* Interest or experience with the lifecycle of ML model development and deployment
* Computer Science degree or similar field of study
* Excellent English communication skills: proven experience liaising effectively with customers (other Software Engineers or ML Engineers)
* Strong problem-solving skills and a proven customer-centric, Product Engineering mindset.
This role provides a view into the opportunities and challenges companies face when implementing AI/ML solutions at scale.
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