Founding Software Engineer - AI/ML

Albert Bow
London
1 month ago
Applications closed

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We are seeking a driven and innovative builder with a proven track record of creating exceptional data-centric products. Partnering with a mission driven organisation with world class teams within Deep Tech & AI solving some of the worlds greatest problems.


Required Skills and Qualifications:

  • Proficiency in Python
  • Knowledge of machine learning techniques and natural language processing (NLP).
  • Strong expertise in data engineering, including SQL architecture, ETL processes, and data integration best practices.
  • Experience building pipelines that integrate with multiple services (via REST APIs, webhooks) and data sources.
  • Background in a high-growth startup or a top-tier engineering culture, with experience working alongside mentors and participating in code reviews.
  • A Bachelor’s degree in Computer Science or equivalent professional experience.


Qualities We look for:

  • Regularly build and ship product experiments.
  • Stay focused and deliver results in a fast-paced environment.
  • Communicate effectively through both written and verbal channels.
  • Take initiative and demonstrate an entrepreneurial mindset.
  • Embrace a growth mindset, eager to learn from mistakes.
  • Tackle some of the world’s most pressing challenges with enthusiasm.

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