Principal Data Scientist

Loop Recruitment
London
1 day ago
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Principal Data Scientist | Series B | FinTech | SaaS | Scale-Up


Location: London Area, United Kingdom (Hybrid)

Salary: Up to £130,000 + Equity


Skills: Machine Learning | AI | Product ML | Deep Learning | Data Platforms


Our client is a rapidly scaling Series B FinTech SaaS business backed by leading VCs. Their platform is used by top financial institutions, digital banks, and emerging fintech innovators to power real-time risk intelligence, automate decisions, and deliver data-driven financial products at scale.


As they enter their next growth phase, they’re expanding their Data Science function with a Principal Data Scientist who will set the technical direction, drive product-embedded AI, and help shape the future of data intelligence in financial services.


If you’re excited by high ownership, greenfield innovation, and the chance to build category-defining AI in a fast-moving scale-up — this is that role.


ROLE: Principal Data Scientist

You’ll be the most senior individual contributor within Data Science — leading technical strategy, architecture, and delivery of advanced ML systems across the platform. You’ll work closely with Engineering, Product, and GTM teams to build scalable, production-grade AI that directly impacts customers and revenue.


This is a hands-on leadership role where you’ll combine deep technical expertise with product thinking, experimentation, stakeholder influence, and team mentorship.


What You’ll Be Responsible For

Technical Leadership & Strategy

  • Define and own the Data Science roadmap across the Series B product suite.
  • Architect scalable ML systems and end-to-end pipelines that integrate directly into the core SaaS platform.
  • Evaluate emerging models, large language models (LLMs), and deep learning techniques to drive innovation in the FinTech domain.

Hands-On Modelling & Delivery

  • Build, train, validate, and deploy ML solutions across risk modelling, anomaly detection, personalisation, optimisation, and predictive analytics.
  • Lead experimentation cycles, champion best practices, and ensure models are production-ready.
  • Partner with Machine Learning Engineers to scale models, optimise performance, and improve reliability.

Cross-Functional Product Impact

  • Work with Product to define AI-driven features that enhance customer experience and create commercial value.
  • Translate complex modelling outputs into actionable insights for internal and external stakeholders.
  • Influence key strategic decisions in a hyper-growth environment.

Mentorship & Leadership

  • Coach and mentor Senior and Mid-Level Data Scientists.
  • Advocate for data science best practices across the organisation.
  • Represent the team in technical discussions, customer workshops, and industry events.


What You’ll Bring

🔥 Deep expertise in ML, statistical modelling, and modern AI techniques (supervised/unsupervised, time-series, Bayesian, deep learning).

🐍 Strong Python engineering skills — NumPy, Pandas, Scikit-Learn, plus PyTorch/TensorFlow.

🏗 Experience building scalable ML systems in production (ML Ops, CI/CD for ML, model optimisation).

🚀 Proven experience in a high-growth environment (startup/scale-up preferred).

💬 Exceptional communication and stakeholder management skills — able to influence at all levels.

📈 Strong understanding of financial services, risk, compliance, or decision-science is a bonus.

💡 Passion for innovation, experimentation, and solving complex problems with data.


Why Join?

  • High ownership role at the forefront of a scaling FinTech SaaS product.
  • Direct impact on roadmap, technology choices, and the future of AI within the organisation.
  • Equity in a fast-growing Series B business with strong backing and market momentum.
  • Collaborative, engineering-led culture with room to innovate.


Apply now to become the driving force behind next-generation AI in FinTech.

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