
AI Engineer - Cititec Talent Ltd
eFinancialCareersAI Engineer | Hybrid | London | Outside IR35 | 6+ Months
Cititec are working with a global financial markets organisation on a large scale data and platform transformation.
They are looking for a Senior AI Engineer to help accelerate the migration of a complex data estate from Oracle to a Microsoft centric architecture across Azure, Cosmos DB, Microsoft Fabric and Azure Data Factory.
The role will focus on applying AI and GenAI to improve developer productivity and engineering throughput, particularly across data migration, code generation and developer tooling. This includes deploying AI agents and AI assisted development tools within the Azure ecosystem.
This is a high impact role operating across a large engineering environment, helping scale modern engineering practices and AI enabled development across a significant developer base.
Opens the company's application page
Listed via
Reed
reed.co.uk
Similar roles

Quantitative Researcher Machine Learning - eFinancialCareers
eFinancialCareers

Data Scientist - Principal - Aristocrat
eFinancialCareers

Senior Forward-Deployed AI Engineer, Tactical AI Automations - PIMCO
eFinancialCareers

Machine Learning Modeling Lead - DTG Capital Markets
eFinancialCareers
Design & Tech
Related reads from TCHNX

Why AI Design Tools Are Quietly Replacing Junior Designers and What Actually Comes Next
AI tools promise efficiency, but London studios are discovering an unexpected paradox: automation creates new bottlenecks requiring precisely the expertise being eliminated. We investigate what's actually happening to entry-level design work.

The Inference Economy: Why AI’s Biggest Cost Shift Is Happening After Training
A major shift in AI economics is reshaping the industry. As training frontier models becomes more expensive and inference becomes dramatically cheaper, companies are being forced to rethink how they build, deploy, price, and monetise intelligent systems.

The Emergence of Small Language Models: Why Efficiency Is Overtaking Scale
As the AI industry confronts computational costs and environmental concerns, a new generation of compact models is proving that bigger isn't always better. Small language models are reshaping enterprise AI deployment.