Applied Artificial Intelligence & Machine Learning Lead - Vice President (Basé à London)

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London
1 month ago
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If you are passionate about driving solutions using data and artificial intelligence, then you have found the right team!

As an Applied Artificial Intelligence & Machine Learning Lead - Vice President in Operations, you will be working inside an applied Artificial Intelligence team at the forefront of innovation, leveraging cutting-edge technologies to improve the Software Engineering processes and practice. You will be interacting with software engineers, business stakeholders, and machine learning engineers and researchers, to identify opportunities for efficiency improvements in the different parts of the software development lifecycle.

Job responsibilities

  • Formulates, communicates, and drives implementation of Artificial Intelligence solutions for challenging problems in the intersection of our supported business and software engineering
  • Builds robust, scalable, and reusable Artificial Intelligence and Machine Learning capabilities
  • Works with software engineering to design and deploy services that can be integrated with strategic systems and processes
  • Learns about and understands our supported business to drive practical and successful solutions
  • Conducts comprehensive data analysis and identifies trends, patterns, and anomalies to support strategic decision-making
  • Documents and explains the rationale and design considerations behind the selection of Machine Learning approaches
  • Provides updates on the project status to senior management and stakeholders

Required qualifications, capabilities, and skills

  • Master’s or Bachelor's Degree in an Machine Learning or related field
  • Proficient understanding of fundamental Artificial Intelligence and Machine Learning techniques
  • Practical experience with statistical data analysis and experimental design
  • Programming skills in Python
  • Effective verbal and written communication skills with technical and business audiences
  • Demonstrated ability to work on multi-disciplinary teams with diverse backgrounds

Preferred qualifications, capabilities, and skills

  • PhD in Machine Learning, Computing Science, or related fields
  • Research or work experience in using Artificial Intelligence and Machine Learning for Software Engineering
  • Presentation skills, strong client partnership & stakeholder and project management skills

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