
UnlikelyAI provides an AI platform designed to enable accurate, trustworthy, and safe decision-making for businesses. The company utilizes a neurosymbolic AI platform, which integrates Large Language…

UnlikelyAI provides an AI platform designed to enable accurate, trustworthy, and safe decision-making for businesses. The company utilizes a neurosymbolic AI platform, which integrates Large Language…
Company: UnlikelyAI — neurosymbolic, explainable decision-focused AI
Founded: 2018 (London, UK)
Founder / CEO: William Tunstall-Pedoe
Focus: High-precision, auditable decisioning for regulated industries (insurance, finance)
Notable funding: $20M seed (Sep 2022); total funding reported ~$21.8M
Decision automation in regulated, high-stakes industries (insurance, finance, accounting).
2018
Software Development
$20,000,000
Described as an oversubscribed seed round; other participants include Cambridge Innovation Capital and Metaplanet.
Profiles reference an earlier angel round (~£1.1m reported on some profiles).
“Backed by UK venture funds and notable angels (Amadeus Capital Partners, Octopus Ventures, Cambridge Innovation Capital, Metaplanet, plus individual investors)”
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At UnlikelyAI, we are building the future of AI: one that is reliable, accurate, and transparent. Our neurosymbolic technology harnesses the power of LLMs and generative AI, and combines it with Universal Language – our proprietary symbolic technology that bridges the gap between probabilistic machine learning and deterministic classical computing.
Our products are already in use with major enterprises – including tier-1 banks and leading accountancy firms – across audit, compliance, and financial services. In compliance, we combine symbolic decision trees with LLM-powered evidence extraction to catch errors in financial reporting that human reviewers miss. In financial services, we use neurosymbolic guardrails to deliver accurate and explainable outcomes at scale.
We are now building toward a platform – a public API and platform experience that will make our core neurosymbolic capabilities available to a broader set of customers and use cases. This is a pivotal moment: we're transitioning from bespoke customer engagements into a scalable product platform, and we need exceptional engineers to help us get there.
The Role
We are looking for a Staff Software Engineer to help shape the technical direction of our platform as we scale. This is a role for someone who combines deep hands-on engineering ability with the judgement and influence to drive architecture and engineering quality across teams.
You'll be one of our most experienced individual contributors – someone the team looks to for guidance on hard technical decisions, system design, and long-term technical strategy. You'll spend most of your time writing code and solving complex problems, but you'll also be expected to identify the highest-leverage work across squads, mentor other engineers, and raise the bar for how we build software.
Our core capabilities span symbolic reasoning (decision trees, propositional graphs, knowledge graphs), document ingestion pipelines, and the APIs that expose these to customers. You'll work on genuinely novel problems at the intersection of classical symbolic AI and modern LLMs – for example, how to represent regulatory knowledge as machine-evaluable rules, or how to build feedback loops that improve system accuracy over time.
You'll work within a shared monorepo alongside software engineers, research engineers, and applied scientists in a heavily cross-functional environment. We operate in small, focused product teams, supported by shared infrastructure, internal tooling, and an R&D function.
What You Might Work On
In your first months, you could find yourself working on any of the following:
You'll be successful here if...
Other Skills You don't need to tick every box below, but any of the following would strengthen your application:
How We Work
We're a team of around 30 people based primarily in the UK. We operate a hybrid working policy, with three days a week in our Central London office. Engineering is organised into product-focused squads, supported by shared infrastructure and an R&D function. We work in a monorepo, deploy to AWS, and care deeply about developer experience – we're actively investing in modernising our tooling, CI, and repository structure.
We run hackathons, we have strong opinions about code quality (held loosely), and we ship often. Our culture is collaborative and low-ego: engineers regularly move between teams, pair on hard problems, and contribute ideas regardless of seniority. We take the work seriously, but not ourselves.
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