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Data Scientist

Aspire Life Sciences Search
London
5 days ago
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Join an early-stage, venture-backed Biotech startup developing intelligent workflow and orchestration products to help organisations work more efficiently. You’ll create production AI solutions that automate processes, extract and combine insights from diverse data sources, and embed intelligent assistants into business tools.

Our client is a rapidly scaling startup founded by experienced entrepreneurs and backed by global investors. Their mission is to revolutionize business operations by orchestrating workflows between humans and AI agents across all company tools. By studying human decision-making and action, they design AI-driven solutions that enhance efficiency, improve decision-making, and enable enterprises to harness the growing ecosystem of AI agents. The company operates in a flexible, agile environment that encourages experimentation, collaboration, and rapid professional growth.

Responsibilities
  • Develop AI solutions to automate and optimise business processes with strong performance, reliability, and scalability.
  • Design and build advanced agentic LLM/RAG systems, optimising performance and cost by selecting the right mix of pre-trained, fine-tuned, and internally developed models.
  • Translate product requirements into production-ready AI features in collaboration with engineering and product teams.
  • Build and maintain data pipelines, model deployment, and monitoring for real-world applications.
  • Combine and engineer signals from structured and unstructured data to support search, summarisation, process mining, and decision support.
Qualifications
  • Strong expertise in Python, SQL
  • Strong experience with deep learning for NLP and large language model workflows.
  • Proven experience deploying and monitoring AI/ML models in production at scale.
  • Solid data science foundations and product-focused problem solving.
  • Excellent communication and collaboration skills to work with cross-functional teams.
Nice to Have
  • Experience building knowledge graphs/ontologies and using them for information retrieval.
  • Experience integrating multiple remote data sources (APIs, warehouses, file sources).
Your Consultant

As a Recruitment Consultant at Aspire Life Sciences, Jack Wilson specialises at the intersection of technology and life sciences. He focuses on placing high-level AI and Machine Learning talent with fast-growing startups across the UK, Europe, and the USA. Jack’s deep industry insight allows him to connect candidates with roles where cutting-edge technology meets transformative innovation.

Seniority level
  • Mid-Senior level
Employment type
  • Full-time
Job function
  • Science, Information Technology, and Research
Industries
  • Software Development and Data Infrastructure and Analytics


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