Technical Project Manager

Technical Futures.
Cambridge
1 year ago
Applications closed

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A Technical Project Manager with a software development background, strong coaching / mentoring skills and who can bring experience of successful project delivery within an EV / Electric Motor, Machine Learning or Automotive Company will join an exciting deep-tech Start-up in the Sustainability arena.The successful Technical Project Manager will bring an Electronics or Software related Degree and ideally a project management qualification. Strong customer facing skills are essential.You will take responsibility for a range of activities from overseeing the delivery of the companys current and future portfolio of customer projects; ensuring all projects are completed on time and to budget; acting as primary technical contact for customers, developing robust technical proposals and supporting the building of strong relationships with new customers.This is very much a technically focused management role, ideal for someone who has previously worked in low level software development or software applications engineering and has progressed their career through to project or program management.This exciting company is working to create the best electric motors essential to the green energy revolution.A generous starting salary will be offered, with Shares, Hybrid working (3 days a week in office), 30 days holiday + additional time off between Xmas and New Year, Private Healthcare, Pension Plan and shared full maternity / paternity leave.TPBN1_UKTJ

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