Foundation Model Engineer

CommonAI C.I.C.
Cambridge, United Kingdom
11 days ago

Role details

Contract type
Permanent contract
Employment type
Full-time (> 32 hours)
Working hours
Regular working hours
Languages
English

Job location

Cambridge, United Kingdom

Tech stack

API
Artificial Intelligence
Automated Storage and Retrieval Systems
Big Data
Computer Clusters
Continuous Integration
Software Debugging
Distributed Computing Environment
Python
Machine Learning
TensorFlow
Data Logging
Feature Engineering
PyTorch
Large Language Models
Model Validation
Build Management
Information Technology
Machine Learning Operations
Multiaccess Edge Computing
Software Version Control
Data Pipelines

Job description

We are led by experienced founders, investors and engineers who believe that collaborative engineering drives faster AI innovation and are backed by a mix of UK Government and private funding in order to design, build and deploy innovative AI systems.

The Opportunity

We're seeking a highly skilled foundation model engineer who has experience of building, training, evaluating, and deploying LLMs or multimodal models end-to-end.

We are currently building an AI lab with multiple GPU clusters for testing new hardware and software technologies to accelerate machine learning and inference. This exciting role will primarily focus on model development, data pipelines and system performance. You'll work across the full AI lifecycle, from experimentation to scalable deployment, with a strong emphasis on technical depth and rigour.

What You'll Do

  • Design and implement end-to-end LLM training pipelines
  • Source and, where appropriate, preprocess datasets for training and evaluation
  • Fine-tune and optimise open weight models (LLMs, vision, or traditional ML)
  • Build evaluation frameworks and define performance metrics
  • Develop and maintain data pipelines and training workflows
  • Analyse training pipelines and optimise them for latency, cost, and scalability
  • Implement monitoring, logging, and feedback loops for continuous improvement
  • Experiment with modern AI tooling and services to investigate how they can be leveraged

Requirements

Do you have a Master's degree?, * Proven experience training and fine-tuning LLMs or multimodal models (not just using APIs)

  • Solid understanding of:

  • Model evaluation and validation

  • Overfitting, bias/variance tradeoffs

  • Data quality and feature engineering

  • Proficiency in Python and ML frameworks (e.g. PyTorch, TensorFlow)

  • Experience building and maintaining ML pipelines in production

  • Familiarity with GPU usage and optimisation

  • Ability to debug and improve model performance systematically

We also value:

  • Knowledge of distributed training or large-scale data processing
  • Experience with MLOps tools (CI/CD for ML, experiment tracking, model versioning)
  • Background in applied research or publishing
  • Familiarity with retrieval systems, embeddings, or ranking models

Ideally you will have a maths or computer science research background with a focus on developing new algorithms or techniques for training and deploying AI models.

You may also have been working in industry in a large organisation or start-up with an emphasis on developing and deploying cutting edge machine learning.

Benefits & conditions

  • A collaborative and supportive work environment
  • The opportunity to have a high impact in a growing organisation
  • Competitive salary package and pension
  • Professional development opportunities
  • Networking opportunities with influential people from across the tech sector and academia
  • A vibrant office environment located a few minutes' walk away from Cambridge train station

CommonAI CIC is an equal opportunity employer and is committed to creating an inclusive and diverse workplace.

About the company

CommonAI CIC is a non-profit membership organisation, founded on a belief in collaborative engineering for the safe and responsible development of foundational AI technologies. A place where AI startups, enterprises large and small, public sector bodies and academia can share resources and knowledge, to codevelop and grow businesses, fast.

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