elliptic

AI Infrastructure Engineer

🇬🇧 London, GB On-site IT Mid Posted Apr 20, 2026
LocationLondon, GB
WorkplaceOn-site
SeniorityMid
CategoryIT
IT CategoryDevOps / SRE
LanguageEnglish
PostedApril 20, 2026
Last verifiedMay 13, 2026

Salary context for this role

JobGrid.eu combines visible employer pay, official public benchmarks, and current JobGrid listings for DevOps / SRE.

JobGrid observed

Similar listings

GBP 85,000 - 405,000 / year

Based on 11 current public JobGrid listings with comparable role and location signals.

Source
JobGrid.eu public listings
Geography
Country-level
Match quality
High confidence comparable role
Data period
Current active listings
Sample size
11
Latest listing
May 8, 2026
Checked by JobGrid
May 13, 2026

JobGrid listing details

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Key details
1 location, IT, DevOps / SRE, On-site, Mid
Current openings
19 active jobs
Original language
English
Source and freshness
Collected from public career pages and reviewed through JobGrid.eu source availability checks. Last verified: May 13, 2026.
Apply path
JobGrid.eu sends candidates to the original application page and adds non-personal referral parameters.

The impact you will have:

This is an opportunity to join Elliptic's AI Platform team at its inception to help build the foundational infrastructure that will power how Elliptic's products think, reason, and act.

You will be one of the first engineers working on a centralised AI platform whose purpose is to make AI development faster, safer, and more coherent across the business. That means building the plumbing: the pipelines, the tooling, the evaluation harnesses, the observability layers, and the integration patterns that domain teams will rely on to ship with confidence.

You don't need to have done all of this before. What matters is that you are genuinely energised by AI, that you think carefully about how systems fit together, and that you take real pride in building things that others can build on top of. This is a role where curiosity and learning velocity matter as much as prior experience, and where the work you do in the first year will have a lasting shape on how AI, both internally and customer-facing, is engineered at Elliptic.

What you will do:

  • Build and maintain core components of Elliptic's AI platform: model serving infrastructure, prompt pipelines, evaluation harnesses, and integration patterns that allow domain teams to use AI reliably and at scale

  • Support the development of agentic workflows, including tooling, orchestration scaffolding, and reliability mechanisms, as Elliptic moves toward more autonomous AI capabilities in its products

  • Instrument AI systems for observability: tracing model calls, tracking token costs, surfacing latency and quality signals, and contributing to the dashboards and alerting that keep production AI systems healthy

  • Contribute to the tooling and frameworks that govern how prompts are written, versioned, and tested across the organisation, helping to raise the baseline quality of AI interactions across teams

  • Work closely with engineers in domain teams, such as our Real-time Risk, Investigations, and Data Fabric teams, to understand their AI integration needs and help them build on platform foundations rather than around them

  • Keep pace with a rapidly evolving AI landscape: new model capabilities, emerging orchestration patterns, and evaluation techniques. Bring relevant developments to the team's attention and help assess what matters for Elliptic's context

You will be a great fit here if you:

  • Are deeply curious about AI. This goes beyond simple tool use and extends to a passion for the field. You follow new model releases, read about emerging architectures, and find yourself thinking about AI applications unprompted

  • Take pride in building infrastructure that other engineers love to work with. You care about documentation, reliability, and the experience of your internal customers.

  • Are comfortable with ambiguity and learning in public. You don't need a perfect brief to get started, and you ask good questions when you're unsure rather than guessing quietly

  • Think holistically about how complex systems interact. You might not yet have built a production AI platform, but you reason well about dependencies, failure modes, and what makes something extensible versus brittle

  • Are a collaborative and direct communicator. You share what you know, flag what you don't, and make the engineers around you more effective

Our ideal candidate has:

  • Some hands-on experience building with LLMs or ML systems, whether in production, in side projects, or in an academic context. What matters is that you have gone deep enough to understand how these systems actually behave

  • Familiarity with AI protocols (MCP, A2A, ACP) with a passion to stay current with emerging trends in the industry

  • Solid software engineering fundamentals: you write clean, testable code, you think about maintainability, and you understand what it means to build something that will be operated in production

  • A deep understanding of the context window and an appreciation for its importance in extracting maximum value from the agentic workflow (context rot, compaction etc.)

  • Exposure to at least one of: API integration and orchestration, data pipeline development, model evaluation or testing, observability and monitoring tooling. Help us understand where your strengths lie and what you’re keen to start exploring

  • A learning orientation that is evident in how you talk about your work: what you have picked up recently, what you are still figuring out, and what pulled you toward AI engineering in the first place

Bonus Points for:

  • Hands-on experience with frameworks in the LLM or agentic ecosystem: LangChain, LangSmith, Databricks AgentBricks, or similar

  • Experience with prompt engineering, evaluation dataset design, or LLM output quality assessment

  • An interest in the crypto and digital assets ecosystem, and alignment with Elliptic's mission of making cryptocurrency safer and more accessible for all

  • Experience in a regulated or compliance-adjacent domain, or an appreciation of why trustworthiness, explainability, and auditability matter in AI systems that carry real-world weight

  • Familiarity with MLflow, Databricks ML, or other ML lifecycle tooling

Job Benefits

> How we work:

  • Hybrid working and the option to work from almost anywhere for up to 90 days per year

  • £500 Remote working budget to set up your home office space

> Learning & Development:

  • $1,000 Learning & Development budget to use on anything (agreed with your manager) that contributes to your growth and development

> Vacation/ Leave:

  • Holidays: 25 days of annual leave + bank holidays

  • An extra day for your birthday

  • Enhanced parental leave: we provide eligible employees, regardless of gender or whether they become a parent by birth or adoption, 16 weeks fully-paid leave and leave.

> Benefits:

  • Private Health Insurance - we use Vitality!

  • Full access to Spill Mental Health Support

  • Life Assurance: we hope you will never need this - but our cover is for 4 times your salary to your beneficiaries

  • £100 Crypto for you!

  • Cycle to Work Scheme

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