SonicJobs Logo
Left arrow iconBack to search

Machine Learning Engineer - Computer Vision

Vector Recruitment Ltd
Posted 8 hours ago, valid for 2 days
Location

Milton Keynes, Buckinghamshire MK10 9QA

Contract type

Full Time

In order to submit this application, a Reed account will be created for you. As such, in addition to applying for this job, you will be signed up to all Reed’s services as part of the process. By submitting this application, you agree to Reed’s Terms and Conditions and acknowledge that your personal data will be transferred to Reed and processed by them in accordance with their Privacy Policy.

Sonic Summary

info
  • We are seeking a Machine Learning Engineer specializing in Computer Vision for a hybrid role in Milton Keynes, offering a salary between £70k and £80k.
  • The successful candidate will utilize modern cloud-native systems to develop innovative products that interact with real-world IoT devices.
  • Key technologies include NVIDIA DeepStream, Jetson hardware, Python, C++, and various AWS services for real-time data processing.
  • Candidates should possess strong knowledge of Machine Learning concepts, with recent experience in data science development and familiarity with CI/CD processes.
  • The role also offers benefits such as a pension, free parking, childcare vouchers, and 25 days of holiday plus bank holidays.
Machine Learning Engineer – Computer Vision – Milton Keynes (hybrid) - £70k - £80kWe 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 EngineerSalary: circa £70k - £80k +benefitsVacancy 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 ()

Apply now in a few quick clicks

In order to submit this application, a Reed account will be created for you. As such, in addition to applying for this job, you will be signed up to all Reed’s services as part of the process. By submitting this application, you agree to Reed’s Terms and Conditions and acknowledge that your personal data will be transferred to Reed and processed by them in accordance with their Privacy Policy.