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Hyre AI

AI Engineer

On site

London, United kingdom

Freelance

23-02-2026

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Skills

Python SQL Monitoring Autonomy

Job Specifications

Data Scientist / AI Engineer

Real-time Payment Context (Fintech) | London | Contract | Outside IR35

In short:

A high-growth fintech is looking for a contract Data Scientist / AI Engineer to help build and ship production-grade scam intelligence layer. You’ll work across data, modelling, and deployment - turning multi-source signals into reliable, explainable risk decisions under real-world constraints like latency, uptime, and auditability.

About the company:

The company is building a payment intelligence layer for banks - running real-time “investigations” on payments to provide rich context on the counterparty and situation. The goal: intercept scams while ensuring genuine payments flow smoothly. They’re early-stage, moving fast, and operating in a domain where correctness, security and reliability are non-negotiable.

Who we’re looking for:

You’re a hands-on contractor who can get productive quickly, operate with minimal oversight, and deliver in production. You’re comfortable owning the full loop: data → modelling → deployment → monitoring → iteration, and you care about building systems that are practical, explainable, and bank-grade.

What you’ll do:

Build and ship scam risk models and signals (typology classification, risk scoring, decision logic)
Engineer features across heterogeneous data: transaction context, behavioural sequences, counterparty signals, network/graph patterns, and unstructured evidence
Design calibrated outputs (scores + reason codes) that are actionable and explainable for banking workflows
Own evaluation end-to-end: leakage avoidance, cost-sensitive metrics, thresholding, phased rollouts, and post-incident learning
Productionise ML: packaging, deployment, monitoring, drift detection, and retraining strategies
Partner with backend/product teams to integrate intelligence into real-time payment flows
(Where useful) support agent/LLM workflows for evidence gathering and synthesis — while keeping the decision core predictable and auditable

Must-haves:

Strong experience shipping applied ML into production (not just experimentation)
Strong Python + ability to write maintainable, tested code
Strong SQL + comfort working directly with messy, high-volume data
Solid modelling judgement: calibration, leakage, bias, thresholding, cost trade-offs, monitoring/drift
Experience operating in environments where reliability, latency, and explainability matter
Able to work autonomously and communicate progress clearly in a fast-moving team

Nice-to-haves:

Experience in fraud/scams, payments, risk, trust & safety, AML, or adjacent domains
Familiarity with graph/network features and entity resolution style problems
MLOps tooling exposure (model registry/MLflow, feature stores, orchestration)
Cloud-native/event-driven system familiarity and comfort collaborating with platform/backend engineers
Experience integrating unstructured signals (text/embeddings/RAG-style pipelines) into decision systems

Why this contract:

High-impact work: stopping scams before money leaves
Real-time, bank-grade ML problems
Autonomy + speed - you’ll ship meaningful changes quickly

About the Company

Hyre AI is a talent consultancy supporting scaling businesses to build world class data capabilities through our bespoke talent solutions. We connect data professionals with incredible opportunities by curating tailored talent communities of outstanding people. Know more