Data Scientist

Innova Solutions
Nottingham
5 days ago
Applications closed

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Data Scientist

Data Scientist

Data Scientist

Data Scientist

Data Scientist

Data Scientist (eDV clearance required)

Job Title:Senior Data Scientist - Healthcare Domain

Experience Level:2+ years

Location:UK- Remote

We’re looking for a data scientist (minimum 2+ years of experience) who is passionate about Natural Language Processing (NLP), Generative AI, and traditional machine learning—and who knows how to ship high-impact, production-grade models. This is a hands-on role where you’ll work across the full ML lifecycle: from prototyping to deployment, with a strong emphasis on production-readiness, APIs, and scalable architecture.

You’ll collaborate with AI engineers, product managers, and domain experts to develop intelligent systems that power next-generation insights for the pharma industry.


What You’ll Do

• Design and develop NLP and generative AI solutions using LLM frameworks like LangChain, LlamaIndex, CrewAI, or direct model provider SDKs/APIs (e.g., OpenAI, Anthropic, HuggingFace).

• Build and fine-tune traditional ML models (e.g., classification, regression, clustering) to support data-driven applications.

• Create robust and scalable AI pipelines and APIs using Python and FastAPI.

• Deploy models to production using AWS services such as ECS, Lambda, and S3, with attention to CI/CD, observability, and cost-effectiveness.

• Apply strong system design principles to architect scalable, maintainable, and secure ML systems.

• Use critical thinking to analyze complex problems, identify edge cases, and propose pragmatic, data-driven solutions.

• Think creatively and outside the box to explore new ML techniques, tools, or approaches that push the boundaries of what we can do.

• Work closely with cross-functional teams to turn ambiguous business problems into well-scoped, technically sound AI solutions.

• Contribute to a culture of technical excellence and innovation in a fast-moving AI/ML team.


Who You Are

• Minimum 2 years of industry experience in data science or machine learning.

• Strong background in NLP, LLMs, and generative AI—comfortable with both the theory and tooling.

• Familiarity with modern LLM stacks such as LangChain, LlamaIndex, CrewAI, or similar.

• Skilled in traditional ML methods using libraries like scikit-learn, XGBoost, etc.

• Expert-level Python programmer (beyond notebooks)—you write clean, maintainable, testable code.

• Experience exposing models as production-ready APIs using FastAPI (or similar frameworks).

• Strong understanding of AWS services—especially ECS, Lambda, and S3.

• Experience with MLOps and DevOps best practices is a plus (e.g., Docker, Terraform, Azure DevOps, Github Actions).

• Proven ability in system architecture, problem-solving, and independently leading projects from concept to deployment.

• Comfortable working independently in a fast-paced, collaborative, remote-first environment.

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