Tech Lead Data & Ai

London, ENG, GB, United Kingdom

Job Description

About Us




As a leading group of companies, the ECA International Group stands as a global frontrunner in simplifying international mobility. Our collective vision is to make a positive impact by delivering exceptional products and services to our prestigious list of large enterprise clients.


Our global presence across the UK, EU, Hong Kong, Australia, and the US offers our team a world of opportunities, and our commitment to innovation ensures that you will be at the leading edge of your field.


We love to invest in our people's success and development pathways, creating a diverse and inclusive community where your unique talents shine. Your work here has a global impact, and we prioritise work-life balance, offering flexibility to enable you to perform your best. Join us to experience a rewarding career where your potential is celebrated, and your journey to excellence begins.

About the Job



This role is ideal for someone who wants to shape how a modern enterprise becomes truly AI-native. We already use AI in delivery and engineering, and we have strong guardrails and governance in place. Now, we're looking for a leader who can help us scale: across data acquisition, ingestion, storage, and AI-powered consumption within a secure, multi-tenant environment.


You'll evolve our existing data platform (AWS, Snowflake, S3, Postgres, event-driven services) into a product-facing, AI-ready foundation, while partnering across disciplines and leading a team in a supportive, high-trust environment.


If you're passionate about data, excited about AI, and motivated by meaningful impact, this role gives you the autonomy, influence, and visibility to shape how AI is adopted across the company.

Requirements



Key Responsibilities



1. Data platform evolution



Take our current AWS/Snowflake/S3/Postgres setup and enable AI/RAG, product consumption, and multi-tenant access. Work with the Technical Architect to keep this aligned with our event-driven and security model.

2.

Data acquisition & ingestion



Design multi-source ingestion (APIs, scraping/crawling, file drops, crowdsourcing, agent-based pipelines). Make it observable, repeatable, and documented so research and analytics can plug in new sources without rework.

3.

AI as a consumption layer



Build LLM/RAG endpoints on top of our data and content as a service. Expose these services to Data Insights to enable users to ask, explore, and generate insights - not only download reports.


4.

Partnering with Analytics



Give the research teams clean, modelled, well-documented data. Turn one-off work into scheduled, production jobs.


5.

Guardrails, governance, and quality



Keep AI-generated code within SDLC, code review, and security bounds. Ensure data and AI services are audited and tenant aware.

6.

Team leadership



Lead a small technical team (data/AI/ingestion). Promote AI-native ways of working across product, data, and engineering. Manage and mentor your engineering team, fostering a collaborative, high-performance environment with excellent productivity. Demonstrate hands-on technical excellence while modelling accountability, critical thinking, and AI-first practices Set clear objectives, provide regular feedback, conduct performance reviews.

7. Delivery & Accountability



Take full accountability for the delivery of high-quality software products, owning both successes and challenges Drive

outcome focused

delivery planning and execution, measuring success by business impact rather than effort or hours invested Proactively identify and mitigate risks, making critical decisions to keep projects on track

8. Technical Direction & Architecture



Guide technical direction, establish best practices, and ensure architectural decisions support scalability, maintainability, and business goals Be a hands-on contributor forArchitecting and building well-tested, maintainable applications Optimise tech stacks and development workflows to maximise team productivity




9. Agile & Product Collaboration



Ensure Agile ceremonies (sprint planning, retrospectives, stand-ups) are followed and continuously refine Agile practices to optimise team performance Collaborate with product owners and stakeholders to develop and maintain technical roadmaps that align with business strategy Work with product owners to build and maintain a prioritised backlog that balances business value, technical debt, and innovation

10. Quality & Continuous Improvement



Enforce rigorous quality standards including test-driven development (TDD), code reviews, and automated testing Ensure that security best practices are followed to the highest standards Foster a culture of experimentation, learning, and continuous improvement Use data and metrics to drive decisions and demonstrate improvement in team velocity, quality, and business outcomes

The Ideal Candidate:



1. Data-first mindset





You understand how data arrives in an organisation: via APIs, files, partner feeds, human/crowd sourced inputs or from the internet and that each of those has different latency, quality, and governance needs.



You're comfortable with:

AWS (core services, IAM basics, networking good practice), Snowflake (or similar cloud data warehouse), Amazon S3 for landing/staging data Postgres (including JSONB/dynamic fields), Event-driven patterns for efficient and effective data pipeline management,

2. AI-positive, not AI-sceptic



This role is for someone who:

is genuinely enthusiastic about AI/LLMs/agents, is actively learning (even in their own time), Can translate AI concepts (RAG, agents, tools, function calling, model evaluation, private models) into working, secure services.

3. Enterprise-aware



We have clients, tenants, and compliance, so you will:

design with security, PII and tenancy in mind, accept governance and SDLC gates as part of making AI safe, and still find a way to deliver fast.

4. Builder + Manager



You're happy to open the IDE and build the pipeline, but you can also run a small team, set standards, review code, and coach people into AI-native ways of working.

Benefits



What's in it for you




Enhanced Stakeholder Pension Contribution 25 days annual leave Health, Life Insurance + EAP Wellbeing Support Eligible for Annual Bonus Scheme Long Service Awards
??? ClassPass Membership Enhanced Family Leave Up to 1,000 per year for personal development & training Season Ticket Loan Flexible/hybrid Work Environment Cycle to Work Scheme Free Eye Test

We are a super friendly team that thrives on collaboration and supporting each other. We cultivate an environment where everyone feels valued and empowered to contribute their best work, helping us to realise our ambitious growth goals and mission. We live our Values of Integrity, Respect, Ambition and Innovation and this shows up loud and proud in everything we do. Our hybrid working structure includes spending around two days a week at our Head Office in Holborn, London.

Beware of fraud agents! do not pay money to get a job

MNCJobs.co.uk will not be responsible for any payment made to a third-party. All Terms of Use are applicable.


Job Detail

  • Job Id
    JD4305076
  • Industry
    Not mentioned
  • Total Positions
    1
  • Job Type:
    Full Time
  • Salary:
    Not mentioned
  • Employment Status
    Full Time
  • Job Location
    London, ENG, GB, United Kingdom
  • Education
    Not mentioned