AI Technical Lead

London
2 weeks ago
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AI Technical Lead, Full Stack Developer Background, Microsoft Stack, Business Stakeholder Management, Remote

AI Technical Lead required to work for a fast growing Enterprise business based in Central London. However, this will be a remote role and you may have the odd meeting in London, along with some global travel including America and Europe (all expenses paid).

This role will be working at the forefront of AI and we need this candidate to not only have the AI knowledge within a Microsoft Stack environment, but we need you have the hands on and proven AI experience. You will be evangelising AI, driving AI efficiencies, highlighting risks, adding quality and ultimately being the AI subject matter expert.

You will be leading meetings and facing off to key technology & business stakeholders, so we need a polished individual who is very engaging and not phased by this. We also need you to be an ex-developer as this is not only a leadership role within AI, but also a hands on one too.

This is going to be extremely hard work (but also cutting edge and exciting) where the stakeholders can be quite demanding. It will require out of hours calls, some weekend work and Global International Travel. We want someone with the mindset that almost nothing is too much trouble. Anyone who asks ‘how often will I be travelling’ or ‘how frequent will the calls be’, it is probably not the role for you! It is a case of doing what it takes to get the job done, along with doing it with ultimate leadership and precision. This is ‘give and take’ in the role too, and an understanding that people do have lives outside of the workplace. It is not as scary as the description, but the picture needs to be painted in this way in order to get the right character.

Read on for more details…

Role responsibilities:

  • Master’s degree in computer science, Data Science, or equivalent experience (nice to have)

  • 5+ year of experience as a developer on python, R, C#, JavaScript, SQL, PowerShell.

  • 2+ years of experience in AI/ML, with proven success in developing and deploying solutions.

  • Strong understanding of various AI techniques and their applicability to different business problems.

  • Excellent analytical and problem-solving skills with a hands-on approach.

  • Experience collaborating across diverse teams and driving projects to completion.

  • Effective communication and presentation skills to engage both technical and senior leadership.

  • Passion for innovation and ability to think creatively to push the boundaries of technology.

    This is a great opportunity and salary is dependent upon experience. Apply now for more details

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