AI Data Engineer for Private Credit

Winston Fox
City of London
1 day ago
Create job alert

We are representing a high-performing boutique private credit investment firm building proprietary AI capability internally.

They are not hiring a data support analyst.

They are hiring the engineer who will help build the AI backbone of an investment platform.

This role is for the top 5% of early-career engineers who want ownership, commercial exposure, and the chance to build systems that directly influence capital allocation decisions.

The Mandate

Design and build the data infrastructure that will power:

  • AI-assisted underwriting
  • Portfolio risk surveillance
  • Automated covenant monitoring
  • LLM-driven document intelligence
  • Proprietary credit analytics

You will work directly with investors deploying capital — not in a siloed tech team.

Your work will influence live investment decisions.

What Makes This Different

  • No legacy bureaucracy
  • No passive dashboard maintenance
  • Direct access to decision-makers
  • High accountability
  • Visible impact

This is a build environment.

The firm is early in its AI journey. The right candidate will shape architecture, tooling, and standards.

What You’ll Actually Do

  • Build scalable ETL/ELT pipelines from loan systems and financial data
  • Structure complex borrower reporting (financial statements, PDFs, credit memos)
  • Design clean datasets for predictive credit risk models
  • Enable LLM/RAG pipelines for document intelligence
  • Implement data quality, validation, and monitoring frameworks
  • Partner with credit investors to translate underwriting logic into data systems

This is production engineering in a high-stakes financial environment.

Who We’re Looking For

You are likely:

  • 1–3 years into your engineering career
  • Strong in Python and SQL
  • Comfortable working in cloud environments (AWS/GCP/Azure)
  • Experienced building real pipelines — not just notebooks
  • Curious about how financial systems actually work

Bonus points for:

  • Exposure to ML workflows
  • Familiarity with dbt, Airflow, Docker
  • Experience handling financial or semi-structured data
  • Interest in LLM infrastructure and vector databases

Finance background is not required.

Intellectual horsepower and ownership mentality are.

This Role Is Not For You If

  • You prefer clearly defined, low-risk task lists
  • You want heavy supervision
  • You are uncomfortable working directly with senior stakeholders
  • You are looking for a purely academic ML role

Upside

  • Direct learning from investors
  • Rapid technical growth
  • Path toward AI Engineer / ML Engineer / Quant Data roles
  • High visibility within a compact, performance-driven firm
  • Compensation aligned to performance

This is an opportunity to build proprietary AI systems inside a capital allocation business — early.

For the right engineer, this is career-accelerating.

Related Jobs

View all jobs

AI Data Engineer for Private Credit

Senior Data Engineer

Senior Data Engineer

Lead Data Engineer

Asset and Wealth Management – Digital and Data Transformation – AI and Automation Product Manag[...]

Asset and Wealth Management - Digital and Data Transformation - AI and Automation Product Manag[...]

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.

How Many Data Science Tools Do You Need to Know to Get a Data Science Job?

If you’re trying to break into data science — or progress your career — it can feel like you are drowning in names: Python, R, TensorFlow, PyTorch, SQL, Spark, AWS, Scikit-learn, Jupyter, Tableau, Power BI…the list just keeps going. With every job advert listing a different combination of tools, many applicants fall into a trap: they try to learn everything. The result? Long tool lists that sound impressive — but little depth to back them up. Here’s the straight-talk version most hiring managers won’t explicitly tell you: 👉 You don’t need to know every data science tool to get hired. 👉 You need to know the right ones — deeply — and know how to use them to solve real problems. Tools matter, but only in service of outcomes. So how many data science tools do you actually need to know to get a job? For most job seekers, the answer is not “27” — it’s more like 8–12, thoughtfully chosen and well understood. This guide explains what employers really value, which tools are core, which are role-specific, and how to focus your toolbox so your CV and interviews shine.

What Hiring Managers Look for First in Data Science Job Applications (UK Guide)

If you’re applying for data science roles in the UK, it’s crucial to understand what hiring managers focus on before they dive into your full CV. In competitive markets, recruiters and hiring managers often make their first decisions in the first 10–20 seconds of scanning an application — and in data science, there are specific signals they look for first. Data science isn’t just about coding or statistics — it’s about producing insights, shipping models, collaborating with teams, and solving real business problems. This guide helps you understand exactly what hiring managers look for first in data science applications — and how to structure your CV, portfolio and cover letter so you leap to the top of the shortlist.

The Skills Gap in Data Science Jobs: What Universities Aren’t Teaching

Data science has become one of the most visible and sought-after careers in the UK technology market. From financial services and retail to healthcare, media, government and sport, organisations increasingly rely on data scientists to extract insight, guide decisions and build predictive models. Universities have responded quickly. Degrees in data science, analytics and artificial intelligence have expanded rapidly, and many computer science courses now include data-focused pathways. And yet, despite the volume of graduates entering the market, employers across the UK consistently report the same problem: Many data science candidates are not job-ready. Vacancies remain open. Hiring processes drag on. Candidates with impressive academic backgrounds fail interviews or struggle once hired. The issue is not intelligence or effort. It is a persistent skills gap between university education and real-world data science roles. This article explores that gap in depth: what universities teach well, what they often miss, why the gap exists, what employers actually want, and how jobseekers can bridge the divide to build successful careers in data science.