Shape the Future of AIJoin one of the UK's fastest-growing companies and become a Professional Development Expert in Artificial Intelligence.

View Roles

Machine Learning Engineer Data Science

Opus 2
London
2 days ago
Create job alert

Social network you want to login/join with: Machine Learning Ops Engineer - AI, London
EU work permit required:
As Opus 2 continues to embed AI into our platform, we need robust, scalable data systems that power intelligent workflows and support advanced model behaviours. Were looking for an MLOps Engineer to build and maintain the infrastructure that powers our AI systems. You will be the bridge between our data science and engineering teams, ensuring that our machine learning models are deployed, monitored, and scaled efficiently and reliably. Youll be responsible for the entire lifecycle of our ML models in production, from building automated deployment pipelines to ensuring their performance and stability. This role is ideal for a hands-on engineer who is passionate about building robust, scalable, and automated systems for machine learning, particularly for cutting-edge LLM-powered applications.
Design, build, and maintain our MLOps infrastructure, establishing best practices for CI/CD for machine learning, including model testing, versioning, and deployment.
Develop and manage scalable and automated pipelines for training, evaluating, and deploying machine learning models, with a specific focus on LLM-based systems.
Implement robust monitoring and logging for models in production to track performance, drift, and data quality, ensuring system reliability and uptime.
Collaborate with Data Scientists to containerize and productionize models and algorithms, including those involving RAG and Graph RAG approaches.
Manage and optimize our cloud infrastructure for ML workloads on platforms like Amazon Bedrock or similar, focusing on performance, cost-effectiveness, and scalability.
Automate the provisioning of ML infrastructure using Infrastructure as Code (IaC) principles and tools.
Work closely with product and engineering teams to integrate ML models into our production environment and ensure seamless operation within the broader product architecture.
Own the operational aspects of the AI lifecycle, from model deployment and A/B testing to incident response and continuous improvement of production systems.
Contribute to our AI strategy and roadmap by providing expertise on the operational feasibility and scalability of proposed AI features.
Collaborate closely with Principal Data Scientists and Principal Engineers to ensure that the MLOps framework supports the full scope of AI workflows and model interaction layers.
We have live AI features and a strong pipeline of customers excited to get access to more improved AI-powered workflows. Our focus is on delivering real, valuable AI-powered features to customers and doing it responsibly. You have hands-on experience building and managing CI/CD pipelines for machine learning.
You're comfortable writing production-quality code, reviewing PR's, and are dedicated to delivering a reliable and observable production environment.
Ability to reason about and implement infrastructure for complex AI systems, including those leveraging vector stores and graph databases.
~ Proven ability to ensure the performance and reliability of systems over time.
~3+ years of experience in an MLOps, DevOps, or Software Engineering role with a focus on machine learning infrastructure.
~ Proficiency in Python, with experience in building and maintaining infrastructure and automation, not just analyses.
~ Experience working in Java or TypeScript environments is beneficial.
~ Deep experience with at least one major cloud provider (AWS, GCP, Azure) and their ML services (e.g., SageMaker, Vertex AI). Bonus : experience with monitoring tools (e.g., Opus 2 is a global leader in legal software and services, trusted partner of the worlds leading legal teams. All our achievements are underpinned by our unique culture where our people are our most valuable asset. Contributory pension plan.
~26 days annual holidays, hybrid working, and length of service entitlement.
~ Health Insurance.
~ Loyalty Share Scheme.
~ Employee Assistance Programme.
~ Electric Vehicle Salary Sacrifice.
~ Cycle to Work Scheme.
~ A day of leave to volunteer for charity or dependent cover.
~ Accessible and modern office space and regular company social events.

#

Related Jobs

View all jobs

Machine Learning Engineer / Data Scientist LLM Agents (London)

Machine Learning Engineer (London)

Machine Learning Engineer (London)

Machine Learning Engineer OR (London)

Machine Learning Engineer Forecasting (London)

Machine Learning Engineer - Health Tech Start Up (London)

Subscribe to Future Tech Insights for the latest jobs & insights, direct to your inbox.

By subscribing, you agree to our privacy policy and terms of service.

Industry Insights

Discover insightful articles, industry insights, expert tips, and curated resources.

Automate Your AI Jobs Search: Using ChatGPT, RSS & Alerts to Save Hours Each Week

If you’re searching for AI jobs in 2025, you’re juggling dozens of tabs, scrolling endless feeds, & rewriting your CV for every application. It’s noisy, repetitive, & easy to miss the best roles. The fix is simple: build a lightweight automation stack that brings relevant roles to you, then use ChatGPT to triage, shortlist, & tailor applications in minutes. This guide shows you exactly how to do it. You’ll get copy-paste prompts, shareable Boolean strings, & practical workflows using Google Alerts, RSS, job boards, & ChatGPT. Set this up once & you’ll save hours every week—without losing quality or control.

10 AI Recruitment Agencies in the UK You Should Know (2025 Job‑Seeker Guide)

Generative‑AI hype has translated into real hiring: Lightcast recorded +57 % year‑on‑year growth in UK adverts mentioning “machine learning”, “LLM” or “gen‑AI” during Q1 2025. Yet supply still lags. Roughly 18,000 core AI professionals work in the UK, but monthly live vacancies hover around 1,400–1,600. That mismatch makes specialist recruiters invaluable—opening stealth vacancies, advising on salary bands and fast‑tracking interview loops. But many tech agencies sprinkle “AI” on their website without an active desk. To save you time, we vetted 50 + consultancies and kept only those with: A registered UK head office (verified via Companies House). A named AI/Machine‑Learning or Data practice.

AI Jobs Skills Radar 2026: Emerging Frameworks, Languages & Tools to Learn Now

As the UK’s AI sector accelerates towards a £1 trillion tech economy, the job landscape is rapidly evolving. Whether you’re an aspiring AI engineer, a machine learning specialist, or a data-driven software developer, staying ahead of the curve means more than just brushing up on Python. You’ll need to master a new generation of frameworks, languages, and tools shaping the future of artificial intelligence. Welcome to the AI Jobs Skills Radar 2026—your definitive guide to the emerging AI tech stack that employers will be looking for in the next 12–24 months. Updated annually for accuracy and relevance, this guide breaks down the top tools, frameworks, platforms, and programming languages powering the UK’s most in-demand AI careers.