Lead Data Engineer

Askbosco
Leeds
1 month ago
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This role is Hybrid and will require one day a week in the Leeds office.

At ASK BOSCO® we’re building an intuitive AI-powered reporting and forecasting platform that answers complex marketing questions for a variety of brands and agencies.

We’re proud to be backed by leading investors, having recently secured £4.1mto accelerate our growth, expand into the US, to help agencies and brands optimise their ad spend.

Founded in the UK by the team behind Modo25, we operate globally with a flexible, people-first culture. We encourage diversity and champion a healthy work-life balance—because we believe that rested, happy people build the best technology.

Why Work at ASK BOSCO®?

We don’t just say we’re a great place to work; we have the accolades to prove it. We are officially recognised as one of the Best Small Companies to Work Forin the UK.

The Role

As our Lead Data Engineerat ASK BOSCO® you will build robust data pipelines, design scalable data architecture, and collaborate with Developers, Data Scientists and Data Engineers to deliver insights that drive millions in revenue for our clients.

Reporting directly to the VP of Engineering, you will play a pivotal role in defining our technical strategy.

  • Own the Architecture: Manage and optimise our end-to-end data infrastructure and ELT pipelines using Fivetran, Airbyte, and Google Cloud Platform, ensuring a reliable flow of data from 40+ marketing sources (Meta, Google Ads, Shopify) into our analytics ecosystem.
  • Master Data Modeling:Develop, test, and maintain complex DBTmodels. You will specifically focus on transforming raw data into highly optimised Star Schemastailored for ThoughtSpot, ensuring lightning-fast search and analytics performance for end-users.
  • Empower Intelligence:Bridge the gap between data and visualisation, managing models that enable self-service analytics in ThoughtSpot, allowing our AI Analyst to query data instantly.
  • Lead Innovation:Drive the continuous improvement of our data engineering practices, tooling, and infrastructure. You will champion the use of new technologies and automation tools like n8n.
  • Mentor & Collaborate:Act as a technical authority within the team, mentoring junior engineers and collaborating with Data Scientists to prepare data for machine learning models.
  • 6+ years’ experience building production-grade data pipelines and analytics infrastructure.
  • Deep expertise i n DBT(Cloud not required), with strong SQL skills and proven experience designing scalable data models.
  • Experience delivering Star Schemas optimised for search-driven analytics, ideally ThoughtSpot.
  • Hands‑on experience with Google Cloud Platform (BigQuery), with the ability to tune queries for both cost‑efficiency and performance.
  • Proven experience implementing and managing modern ELT toolssuch as Fivetran or Airbyte.
  • Pythonexperience is a strong plus.
  • Gitkn owledge is a strong plus.
  • Experience with SaaS and marketing data sources such as Google Ads, Meta, Shopify, Amazon, Klaviyo, HubSpot, Stripe.
  • Familiarity with AI‑assisted development tools (e.g., Cursor, DBT Copilot) and a desire to leverage cutting‑edge technologies to enhance productivity.
  • A passion for debugging complex data issues and resolving root causes.
  • Excellent communication skills, with the ability to translate technical concepts into clear business value for non‑technical stakeholders.

At Modo25/ASK BOSCO®, everybody is invited with open arms.

We believe that fostering an inclusive and fair work environment is at the heart of our mission. As an equal opportunity employer, we embrace individuals from all walks of life, irrespective of race, colour, nationality, ethnicity, religion, national origin, sexual orientation, age, marital or family status, disability, gender identity or expression or any other legally protected status.

We strive for a culture that celebrates and incorporates diverse backgrounds and experiences. To anyone who is reading this, regardless of who you are, we extend a warm and heartfelt welcome. We are thrilled to have you join us!

Can’t see a role but think you’d fit right in?Experience the power of ASK BOSCO® firsthandGot a minute? See what we do in just 60 secondsGot a minute? See what we do in just 60 seconds


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