Graduate Opportunity: AI Consultant/Developer

London
1 year ago
Applications closed

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Graduate Opportunity: AI Consultant/Developer 🚀

Morela is proud to be representing our client in their search for a talented Graduate AI Consultant/Developer! This is an exciting opportunity to kickstart your career by joining a forward-thinking team where you’ll help shape innovative AI-driven solutions for real-world challenges.

📍 Location: Flexible – hybrid working options available
🗓️ Type: Full-time, permanent

What we’re looking for:
We’re seeking forward-thinkers and future leaders who are passionate about innovation and have hands-on experience in AI, Computer Science, Data Science, or related fields. Alongside your technical skills, our client values candidates who have demonstrated leadership or teamwork in areas such as debating societies, musical ensembles or bands, and sports team leadership. These experiences reflect the qualities they admire—creative thinking, collaboration, and the ability to thrive under pressure.

What you’ll do:

  • Develop and deploy AI models and solutions

  • Collaborate with clients and teams to tailor AI strategies

  • Stay ahead of industry trends to bring cutting-edge innovation

    What’s in it for you?

  • Hands-on experience with transformative AI projects

  • Career growth opportunities and mentorship

  • A supportive, innovative work environment

    Ready to turn ideas into impact? Apply now and join a team that values diverse experiences and perspectives

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