Machine Learning Engineer (BE)

Cluepoints

Cluepoints

Software Engineering, Data Science

Belgium

Posted on May 4, 2026

At CluePoints, we’re redefining how clinical trials are run. As the premier provider of Risk-Based Quality Management (RBQM) and Data Quality Oversight software, we harness advanced statistics, artificial intelligence, and machine learning to ensure the quality, accuracy, and integrity of clinical trial data, helping life sciences organizations bring safer, more effective treatments to patients faster.


We’re proud to be an ambitious, fast-growing technology scale-up with a dynamic and diverse international team representing more than 40 nationalities. Collaboration, flexibility, and continuous learning are part of our DNA.

At CluePoints, you’ll find a culture where you can grow, make an impact, and have fun along the way. Guided by our values of Care, Passion, and Smart Disruption, we’re united by a shared mission: to create smarter ways to run efficient clinical trials and deliver AI-powered insights that improve human outcomes worldwide.


We are looking for an AI Engineer to join our AI Innovation team, focused on exploring, prototyping, and operationalizing cutting-edge AI solutions for clinical data review. This role sits at the intersection of research and engineering: you will investigate emerging AI capabilities—particularly LLMs and agentic AI systems—and translate them into impactful use cases within clinical trials. While the primary focus is on innovation and experimentation, you are expected to drive selected prototypes through to robust, production-ready solutions.

Main Qualifications
  • Master’s or PhD in Computer Science, AI, Machine Learning, or a related quantitative field
  • Strong programming skills in Python
  • Proven experience working with LLMs and modern AI frameworks (e.g., OpenAI, Anthropic, Mistral, Meta)
  • Solid understanding of agentic AI concepts and orchestration frameworks (e.g.,
  • LangGraph, AutoGen, CrewAI, function calling)
  • Experience with Retrieval-Augmented Generation (RAG) and/or hybrid AI systems
  • Strong software engineering fundamentals (modular design, APIs, version control with Git)
Preferred Qualifications (Nice to have)
  • Experience with clinical trial data (protocols, EDC, CTMS, AE/SAE reporting)
  • Familiarity with regulated environments (e.g., life sciences, healthcare)
  • Experience deploying AI/ML systems into production environments
  • Knowledge of vector databases, embeddings, and information retrieval systems
  • Background in NLP, deep learning, or applied AI research
  • Experience with data quality, statistical methods, or risk-based monitoring
  • Familiarity with GPU computing and performance optimization
AI Innovation & Exploration
  • Explore and evaluate emerging AI techniques, with a focus on LLMs and agentic AI systems
  • Design and prototype novel AI-driven approaches for clinical data review (e.g., protocol interpretation, query generation, deviation detection, medical coding)
  • Translate scientific literature and industry trends into practical experimentation and prototypes
  • Identify new opportunities where AI can bring value within clinical research workflows

Agent & System Development
  • Architect and build intelligent agent systems leveraging LLMs, RAG, and tool augmentation
  • Integrate diverse data sources (e.g., protocols, clinical datasets, operational metadata) into AI workflows
  • Develop modular services, APIs, and reusable components to support AI applications
  • Prototype interactive interfaces (e.g., chat-based agents, copilots, APIs)

From Prototype to Production
  • Contribute to the industrialization of selected AI solutions, ensuring scalability and robustness
  • Apply best practices for evaluation, monitoring, and reproducibility of AI systems
  • Ensure outputs are traceable, auditable, and aligned with regulatory expectations
  • Collaborate with engineering teams to transition prototypes into production-ready systems

Collaboration & Thought Leadership
  • Work closely with clinical experts, product managers, and R&D teams to refine use cases
  • Communicate findings, trade-offs, and recommendations clearly to stakeholders
  • Stay at the forefront of AI advancements and contribute to CluePoints’ innovation strategy
  • Optionally contribute to publications, conferences, or internal knowledge sharing