Senior Full Stack Engineer

Harnham - Data and Analytics Recruitment
Usa, SL4 4BQ, United Kingdom
Yesterday
US$200,000 – US$225,000 pa

Salary

US$200,000 – US$225,000 pa

Job Type
Permanent
Work Pattern
Part-time
Work Location
Hybrid
Seniority
Senior
Education
Degree
Posted
1 Jun 2026 (Yesterday)

Benefits

20% Bonus

Senior Full Stack Software Engineer (AI and Analytics Platform)
New York - 4 Days Per Week in Office
Up to $225,000 + 20% Bonus

This is an opportunity to join a small, high-impact innovation team building a production-grade analytics product from scratch. You will work directly with senior stakeholders, shaping both the technical direction and the product itself, with real ownership from day one.

The Company
They are a large, asset-backed organisation investing heavily in innovation and technology to transform how data is used across investment and asset management functions. Within this, they have built a startup-style team focused on developing predictive analytics tools that directly influence buying, selling, and operational decisions. The team is intentionally lean, fast-moving, and highly product-driven.

The Role
You will operate as a full stack engineer within a small, cross-functional team, working closely with product and leadership to build and scale a new analytics platform.

  • Build and deploy full stack applications that surface predictive analytics and ML insights
  • Work directly with stakeholders to translate business requirements into production-ready features
  • Develop backend services using Python and Node.js, alongside modern frontend frameworks such as React
  • Contribute to AI and ML-driven functionality, including LLM-powered workflows
  • Make architectural decisions and shape the platform as it scales
  • Deliver high-quality, production-ready code in a fast-moving environment
  • Collaborate closely with product and design in a highly iterative, feedback-driven process

Your Skills & Experience

  • Strong commercial experience as a full stack engineer in product-focused environments
  • Proficiency in Python for backend development; Node.js is beneficial
  • Experience with React or similar modern frontend frameworks such as Angular or Vue
  • Exposure to cloud platforms such as Azure, AWS, or GCP
  • Experience building and deploying production-grade applications end to end
  • Understanding of ML or AI concepts and how they integrate into applications
  • Strong product mindset and ability to work closely with non-technical stakeholders
  • Comfortable operating in small, ambiguous, high-ownership environments

What They Offer

  • Opportunity to join a startup-style team within a well-funded organisation
  • High level of ownership and influence over product and technical direction
  • Exposure to AI, ML, and predictive analytics use cases in a commercial setting
  • Collaborative, fast-paced environment with direct access to senior stakeholders
  • Clear scope for progression as the team grows

Related Jobs

View all jobs

Senior Full Stack Software Engineer

Faculty AI London, United Kingdom
Hybrid

Full Stack Developer

Techunite Ltd Chertsey, Surrey, United Kingdom
£40,000 – £65,000 pa

Senior Software Engineer

Faculty AI London, United Kingdom
Hybrid

Full Stack Software Engineer

83zero Lime Street, City And County Of the City Of London, United Kingdom
£100,000 – £130,000 pa Hybrid

AI Engineer

OpenSourced Manchester, United Kingdom
Remote

Principal Research Engineer

Synthesia London, United Kingdom
Remote

Industry Insights

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

Where to Advertise Data Science Jobs in the UK (2026 Guide)

Where to advertise data science jobs UK in 2026: the specialist boards, communities and channels that actually reach senior and lead data science talent. Data science spans a broad and often misunderstood spectrum — from statistical modelling and experimental design through to machine learning engineering, product analytics and AI research. The strongest candidates identify firmly with specific subdisciplines and are frustrated by adverts that conflate data scientist with data analyst, business intelligence developer or machine learning engineer. General job boards produce high application volumes for data roles but consistently fail to match specialist data science profiles with the right opportunities. This guide, published by DataScienceJobs.co.uk, covers where to advertise data science roles in the UK in 2026, how the main platforms compare, what employers should expect to pay, and what the data says about hiring across different role types.

Data Science Jobs UK 2026: What to Expect Over the Next 3 Years

Data Science Jobs UK 2026: roles, salaries and the trends shaping UK data science hiring over the next three years — from MLE crossover to GenAI workflows. Data science has spent the past decade being described as the sexiest job of the twenty-first century. By 2026, the reality is both more nuanced and more interesting than that label ever suggested. The discipline has matured, fragmented, deepened, and in some respects reinvented itself — and the jobs market has changed with it in ways that create genuine opportunity for those who understand what employers actually want, and genuine difficulty for those still operating on assumptions formed five years ago. The data science jobs market of 2026 is not simply a larger version of what it was three years ago. The generalist data scientist — equally comfortable wrangling data, building models, and presenting insights to the board — is giving way to a more specialised landscape where employers know exactly what problem they are trying to solve and are looking for candidates with the specific depth to solve it. Machine learning engineering, causal inference, experimentation, AI product development, and domain-specific applied science have all emerged as distinct career tracks within what was previously a single, loosely defined profession. At the same time, the arrival of large language models and the broader AI capability wave has both threatened and created data science roles in equal measure. Some of the work that junior data scientists spent their early careers doing — data cleaning, exploratory analysis, basic model building — is being partially automated by AI tooling. But the demand for practitioners who can evaluate AI systems rigorously, apply statistical thinking to complex business problems, and build the data foundations on which AI depends has grown considerably. The candidates who will thrive over the next three years are those who understand where the discipline is heading — which specialisms are attracting the most investment, which technologies are reshaping what data scientists are expected to build and know, and how to position a data science career that will remain valuable as the field continues to evolve around them. This article breaks down what the UK data science jobs market is likely to look like through to 2028 — covering the titles emerging right now, the technologies driving employer demand, the skills that will matter most, and how to position your career ahead of the curve.