Staff Software Engineer in London

Staff Software Engineer in London

London Full-Time 80000 - 100000 £ / year (est.) No working from home possible
UnlikelyAI

At a Glance

  • Tasks: Shape the future of AI by developing innovative software solutions.
  • Company: Join UnlikelyAI, a pioneering tech company transforming AI with neurosymbolic technology.
  • Benefits: Enjoy competitive pay, health perks, hybrid work, and growth opportunities.
  • Other info: Collaborative culture with hackathons and strong focus on code quality.
  • Why this job: Be at the forefront of AI technology and make a real impact.
  • Qualifications: Expertise in Python, system design, and cloud infrastructure required.

The predicted salary is between 80000 - 100000 £ per year.

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 are 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 will 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 will spend most of your time writing code and solving complex problems, but you will 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 will 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 will 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

  • Defining the architecture for our new public API – making foundational decisions about authentication, scalability, versioning, and developer experience that will shape the platform for years.
  • Leading the design and implementation of our document ingestion pipelines to handle new input formats (e.g. PDF, Word) and new regulatory jurisdictions at scale.
  • Designing evaluation frameworks and benchmarks to measure and improve system accuracy – and establishing these as engineering norms across teams.
  • Driving improvements to our deployment architecture for enterprise customers with specific cloud and security requirements.
  • Owning the technical strategy for internal tooling and developer experience across the monorepo – identifying bottlenecks and leading initiatives to address them.
  • Working on the symbolic reasoning engine that powers our products – including decision tree evaluation, rule generation, and knowledge graph construction.
  • Identifying and leading cross‐cutting technical initiatives that improve reliability, performance, or engineering velocity across the organisation.

You will be successful here if...

  • you have deep expertise in Python, including writing well‐typed, well‐tested code in a collaborative codebase, and strong opinions on how to structure Python projects at scale.
  • you have a proven track record in system design and architecture – you have made foundational technical decisions that shaped the trajectory of a product or platform.
  • you have tackled complex algorithms and data structures and have experience working with non‐trivial algorithmic problems at scale.
  • you care deeply about production‐quality engineering – you don’t just advocate for software quality, you actively set the standards and build the culture around it.
  • you have a track record of technical leadership – you have influenced technical direction across multiple teams or projects without necessarily having direct reports.
  • you have significant experience with cloud infrastructure (AWS preferred) – services such as S3, ECR, ECS/EKS, and infrastructure managed via Terraform or similar – and can make informed architectural decisions about deployment and scalability.
  • you have a bias for action – you move quickly, make informed decisions, and iterate without waiting for perfect information.
  • you have a relevant degree in Computer Science, Mathematics, Engineering, or STEM – or equivalent practical experience.

Other skills

You don’t need to tick every box below, but any of the following would strengthen your application:

  • Monorepo experience – comfortable working in and improving a large, shared codebase with multiple product teams contributing.
  • CI/CD pipelines – hands‐on experience with GitHub Actions or similar, ideally including designing and optimising CI infrastructure.
  • Experience with document processing pipelines – PDF parsing, OCR, structured data extraction.
  • Familiarity with knowledge representation – decision trees, knowledge graphs, ontologies, or symbolic reasoning systems.
  • Experience with LLM integration in production systems – prompt engineering, evaluation, working with APIs such as Gemini, Claude, or OpenAI.
  • Frontend experience with React and TypeScript – we value engineers who can contribute across the stack when needed.
  • Experience in regulated industries – fintech, audit, compliance, insurance, or banking.
  • Familiarity with the modern Python tooling ecosystem: uv for package management, ruff for linting, pyright or similar type checkers.
  • Experience with observability and monitoring tools such as Datadog.
  • Experience mentoring engineers and helping teams grow their technical capabilities.

How We Work

We are 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 are 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.

Staff Software Engineer in London employer: UnlikelyAI

At UnlikelyAI, we pride ourselves on fostering a collaborative and innovative work culture that empowers our engineers to tackle complex challenges in AI technology. With a strong focus on employee growth, we offer mentorship opportunities and encourage cross-team collaboration, all while working in a vibrant Central London office that supports a hybrid working model. Join us to be part of a team that values quality engineering and is dedicated to building a reliable and transparent future for AI.

UnlikelyAI

Contact Details:

UnlikelyAI Recruitment Team

StudySmarter Expert Advice🤫

We think this is how you could land Staff Software Engineer in London

Tip Number 1

Network like a pro! Reach out to current employees at UnlikelyAI on LinkedIn or other platforms. Ask them about their experiences and any tips they might have for landing the Staff Software Engineer role. Personal connections can make a huge difference!

Tip Number 2

Prepare for technical interviews by brushing up on your Python skills and system design knowledge. Practice coding challenges and be ready to discuss your past projects in detail. We want to see how you think and solve problems, so show us your thought process!

Tip Number 3

Don’t just focus on the job description; think about how your unique experiences can contribute to UnlikelyAI’s mission. Be ready to share specific examples of how you've tackled complex problems or led technical initiatives in your previous roles.

Tip Number 4

Apply through our website! It’s the best way to ensure your application gets seen by the right people. Plus, it shows you’re genuinely interested in joining our team. Don’t forget to follow up after applying – a little persistence goes a long way!

We think you need these skills to ace Staff Software Engineer in London

Python
System Design
Architecture
Cloud Infrastructure (AWS)
Terraform
CI/CD Pipelines
Document Processing Pipelines

Some tips for your application 🫡

Tailor Your CV:Make sure your CV reflects the skills and experiences that align with the Staff Software Engineer role. Highlight your expertise in Python, system design, and any relevant projects that showcase your problem-solving abilities.

Craft a Compelling Cover Letter:Use your cover letter to tell us why you're excited about working at UnlikelyAI. Share specific examples of how your past experiences have prepared you for this role and how you can contribute to our mission of building reliable AI.

Showcase Your Technical Skills:Don’t just list your technical skills; demonstrate them! If you’ve worked on complex algorithms or cloud infrastructure, provide brief examples or projects that illustrate your hands-on experience and technical leadership.

Apply Through Our Website:We encourage you to apply directly through our website. It’s the best way for us to receive your application and ensures you’re considered for the role. Plus, it shows you’re keen on joining our team!

How to prepare for a job interview at UnlikelyAI

Know Your Tech Inside Out

Make sure you’re well-versed in Python and the technologies mentioned in the job description. Brush up on your system design skills and be ready to discuss how you've made impactful architectural decisions in the past.

Showcase Your Problem-Solving Skills

Prepare to tackle complex algorithmic problems during the interview. Think of examples from your previous work where you solved tricky issues, especially those related to data structures or cloud infrastructure.

Demonstrate Leadership and Collaboration

Be ready to talk about your experience influencing technical direction across teams. Highlight instances where you’ve mentored others or led initiatives that improved engineering practices.

Understand Their Products and Vision

Familiarise yourself with UnlikelyAI’s products and their neurosymbolic technology. Be prepared to discuss how your skills can contribute to their mission of building reliable and transparent AI solutions.