Graduate Data Scientist

Data Science Festival
London
1 month ago
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Join the Pipeline: Future Tech Talent Wanted

Data Idols are partnering with the Data Science Festival to bring you a top-tier initiative for those wanting to reboot their tech career. From new grads to tech returners to career switchers, if data lights your fire, this is for you.

The Careers Day Festival brings together 30 leading hiring companies to top talent (that’s you). It’s the perfect place to bag your next job, find an exciting new role, or make invaluable connections for your future career.

What to Expect

  • Real-talk panels from experts within the tech world
  • Data-driven workshops that explore the world of AI in tech careers
  • Networking, but it means something
  • Gain insights you won’t find in any job descriptions
  • A mentorship program from role models who have been in your shoes

About the DSF Career Day Mentorship Programme:

As an attendee, you’ll have the opportunity to sign up for the Mentorship Programme, an 8-week series designed to help you grow your skills and level up with the support of an experienced mentor.

You’ll be matched with a small group led by a data professional who will guide you through 6 structured sessions that will cover everything from goal-setting and CV writing to career confidence and acing your interviews.

Date: Wednesday 17th September

Location: CodeNode, 10 South Pl, Finsbury, London EC2M 7EB

Break into tech. Refresh your career. Build your future today by applying now.


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