Biz Dev Summer Interns @ digiLab


United Kingdom Remote


£20-20k (annually)

Sales & Marketing

Jan 24

The Opportunity

Are you looking to break into the world of tech startups? Want to accelerate your career with an internship developing the sales and marketing strategy for a Machine Learning scale-up?

Your internship could also turn into a full-time job offer, as we initiate our graduate hiring programme.

About Us

digiLab is an Exeter-based start-up developing cutting-edge AI software to tackle the biggest and most exciting challenges of today: nuclear fusion, air traffic control, and environmental sustainability. So far, our customers have included the UKAEA, NATS, Jacobs, Airbus and South West Water.

We are a friendly and inclusive team, and we are particularly proud of our:

  • Supportive and collaborative work environment
  • Commitment to designing and delivering quality products
  • Passion for developing and sharing new skills
  • Sociable working culture and lively sense of humour

As an intern, you’ll be working with the founding team on live projects from day one: we believe in giving you the chance to do things that matter, everyday – except Fridays (we’re a four-day week company!).

About You

We have no formal requirements. The most important qualities that you bring to the team will be your appetite for collaborative problem-solving, your desire to learn new skills and your ability to make a meaningful impact!

You can choose whether to work remotely or relocate to Exeter for the internship - we're flexible! :)


We offer £20k pro-rata for the internship. If you would like, we will also offer free accommodation in Exeter for the duration of your internship.

Next Steps

This opportunity closes on the 31st March, but we are recruiting on a rolling basis, so please apply early :)

The internship will run for 8 weeks, from the start of July to the end of August 2023. Precise dates to be finalised.

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Trusted Machine Learning for Safety-Critical Engineering.