AI & Machine Learning Intern

London Success Academy
Glasgow
4 days ago
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πŸš€ Launch Your UK Career: AI/ML Assurance Analyst Internship at London Success Academy (Remote)

(10 Positions)


πŸ“ Location: Remote | πŸ“… Duration: 4 Weeks | πŸ“† Start Dates: Feb 2026

🌟 Limited Spots – Apply Now to Secure Your Place!


Are you ready to jumpstart your career in AI, data, and analytics?

Gain real-world exposure, expert mentorship, and an official UK Experience Certificate while working on AI/ML-driven business platforms. London Success Academy (LSA) is offering a structured 4-week Expert-led, unpaid, Work Experience Internship designed to equip aspiring professionals with practical skills in AI assurance, data quality analysis, and model risk evaluation aligned with UK industry expectations.


🌍 About LSA

London Success Academy is a globally recognised institution transforming professionals into future-ready leaders. Led by Success Coach Nilesh (bestselling author and strategist with 23+ years of corporate expertise), we empower individuals across 15+ industries and 23+ nationalities through elite mentorship and hands-on learning.


For more information about London Success Academy and our internship programmes:

🌐 Website: https://www.LondonSuccessAcademy.com

πŸŽ“ Internships: https://londonsuccessacademy.com/internships


πŸ“˜ About the Internship

This internship is designed for candidates who want hands-on exposure to evaluating AI/ML-driven business platforms. Interns will work on a simulated industry case inspired by a real-world ESG and analytics platform, focusing on AI assurance, data quality, and model trust rather than model development. This role reflects how AI systems are evaluated in regulated business environments such as finance and ESG.


πŸ›  What You Will Work On

  • As an AI/ML Quality & Assurance Analyst Intern, you will:
  • Analyse an end-to-end AI-enabled platform used for business decision-making
  • Evaluate data quality risks and define validation strategies
  • Assess ML model behaviour from a black-box, business-risk perspective
  • Identify scenarios where AI outputs should or should not be trusted
  • Design testing and assurance strategies aligned to real-world business use
  • Produce a professional case study suitable for interviews and portfolios


πŸŽ“ What You Will Learn

  • How AI/ML systems are tested in real companies
  • How to think about model risk, bias, and drift without access to internals
  • How data quality impacts AI reliability
  • How to communicate AI risks to non-technical stakeholders
  • How to structure interview-ready case studies for UK roles


🧠 Skills & Background (Any of the following)

  • Software testing / QA fundamentals
  • Data analysis or data quality awareness
  • Business analysis or risk thinking
  • Interest in AI, ML, ESG, or data-driven systems
  • Strong written communication skills


πŸ—‚ Internship Structure

  • 4 weeks, individual mini projects
  • Weekly mentor-led group sessions
  • Continuous feedback
  • Final capstone case study (PDF)


🎁 What You’ll Gain

✨ Official UK Experience Certificate

✨ Hands-on portfolio projects to showcase your skills

✨ Direct mentorship from Success Coach Nilesh and industry experts

✨ Career guidance and networking with UK professionals

✨ Letter of Recommendation for top performers

✨ Flexible schedule to balance commitments


πŸ‘‰ Follow London Success Academy for more career-transforming opportunities!

( https://www.LondonSuccessAcademy.com )


πŸ’‘ Program Details:

  • You’ll gain hands-on experience, receive personalised mentorship from industry experts, and earn an official certification upon completion.
  • The program is designed to provide real UK industry exposure through structured learning, live projects, and guided assignments.
  • We are seeking committed professionals who will improve their skills with real industry projects and assignments. You will not be asked to work for the company.
  • Please note that this is an expert-led, short-term work experience placement. Our past interns have received an increased number of interview offers.


πŸ“’ Ready to stand out in the UK job market? Apply NOW – limited spots!

APPLY HERE: https://tinyurl.com/LSA-Internship-Application

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