Machine Learning Engineer - HV Systems


Premium Job From Bluestream Recruitment

Recruiter

Bluestream Recruitment

Listed on

20th July 2021

Location

Bristol

Salary/Rate

£35 - £45

Salary Notes

Salary negotiable

Type

Permanent

This job has now expired please search on the home page to find live IT Jobs.

Are you and experienced Machine Learning Engineer with an experience of adapting and testing algorithms for the energy sector?

Do you want to be part of a highly successful company at the forefront of technology in the energy sector? 

As Machine Learning Engineer you will be rewarded with a very competitive salary and fabulous range of benefits. You will be responsible for:

Developing state-of-the art Smart technology applications for electricity industry

Identifying suitable machine learning models on a project by project basis

Designing and delivering of software including coding of deliverables

Developing highly scalable algorithms and tools leveraging machine learning, data regression, and systems optimisation

Demonstrating end-to-end understanding of applications (including, but not limited to, the Machine Learning algorithms) being created

Clear and concise reporting on progress to stakeholders

 

To be considered for the role of Machine Learning Engineer you will need to:

Be educated to PhD level in mathematics, physics, electrical engineering or equivalent

Have several years post doctorial research in machine learning, statistical signal processing, or a similar field; or equivalent industrial experience

Have power industry experience

Be familiar with the MathWorks toolchain

Have working knowledge of Matlab and Python

Have an enquiring mind and a disciplined scientific approach to extracting facts and understanding observed behaviour

Able to create and deploy machine learning pipelines

 

Bluestream Recruitment is an Equal Opportunities Employer and operates as an Employment Agency for permanent recruitment and as an Employment Business for temporary / contract recruitment.   

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