Machine Learning Engineer - Computer Vision

Milton Keynes
2 months ago
Applications closed

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Machine Learning Engineer – Computer Vision – Milton Keynes (hybrid) - £70k - £80k

We are recruiting for a Machine Learning Engineer to join a highly successful Milton Keynes based Electronics Product development company. The Machine Learning Engineer will have an innovative and forward-thinking approach to problem-solving using modern cloud-native systems to create products. You will have the opportunity to help shape and guide the development of a range of products that interacts with various real-world devices.

The platform is built on top of a varied stack that allows it to communicate with real-world IoT devices across the UK and beyond, using multiple AWS services to allow for real-time data capture, feeding a backend service built in Laravel, this provides data to a React.js frontend application. The new computer vision products are built on the foundations of NVIDIA DeepStream and GStreamer using the NVIDIA Jetson hardware and developed in Python and C++.

The technology stack you will work with includes Linux, NVIDIA DeepStream, NVIDIA Jetson, Docker, Python, C++, GStreamer, PostgresSQL, Timescale DB, AWS Cloud, AWS SageMaker, and NoSQL(DynamoDB).
  
Machine Development Engineer requirements

Strong knowledge and understanding of Machine Learning / Data Science concepts, processes, statistical modelling, data and model pipelining and Machine Learning algorithms.
Experience with continuous retraining tools in CI/CD processes for object detection, classification and tracking within computer vision pipelines beneficial.
Recent and relevant experience working within Machine Learning / Data science development.
Experience using NVIDIA DeepStream and Jetson hardware.
Practical experience developing Machine Learning pipelines and applications using Python or C++.
Strong understanding of Linux/Unix shell scripting
Use of Continuous Integration products (Jenkins) beneficial
Use of containerisation technologies Docker Stack / Kubernetes beneficial
AWS and AWS SageMaker experience beneficial.   
Job Title – Machine Learning Engineer
Salary: circa £70k - £80k +benefits
Vacancy Location: Milton Keynes (hybrid working considered)
Benefits – Pension, Free Parking (a must in Milton Keynes!), childcare vouchers, 25days holidays (+Bank Holidays).
For more about this exclusive opportunity please contact Adam Mayne ((url removed))

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