Senior Data Engineer

Legend Corp
London
1 month ago
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We’re Legend. The team quietly building #1 products that make noise in the most competitive comparison markets in the world. iGaming. Sports Betting. Personal Finance.

We exist to build better experiences. From amplified career paths to supercharged online journeys for our people and our users, we deliver magic rooted in method. With over 500 Legends and counting, we’re helping companies turbocharge their brand growth in over 18 countries worldwide.

If you’re looking for a company with momentum and the opportunity to progress at pace, Legend has it.

Unlock the Legend in you.

The Role

Legend is hiring a Senior Data Engineer, reporting directly to our Head of Data Engineering. In this role, you will have the possibility to build and own data products and platform functionalities that tangibly serve the business with the freedom to build and experiment.

At Legend, you’ll get real ownership as a Senior Data Engineer - our team owns its entire infrastructure, giving you true end-to-end control. If you have a vision for how data platforms should be built and want the freedom to experiment with new tools and approaches, you’ll thrive here. We value innovation with purpose, so you can help shape the future of our data products.

In this role, we value diverse perspectives and encourage you to apply even if you don\'t meet every qualification listed.

Your Impact

  • Design, manage, and improve the data infrastructure required by the teams that consume data.
  • Design, implement, manage, and improve processes and data pipelines that collect data from operational data sources and external data producers, normalise, standardise, and enrich them, and make them available to data consumers in an accessible and discoverable manner
  • Design, implement, manage, and improve the data security measures in place to make sure data consumers can access the data they need, but only what they need and not more.
  • Make sure the produced data adheres to data quality measures and SLAs that make it appropriate to use by consumers
  • Liaise with internal data producers and consumers to satisfy business requirements on a daily basis
What You\'ll Bring
  • In-depth familiarity with Snowflake and data modeling skills for analytical/transactional data systems
  • Managing infrastructure, networking, and security on AWS using Terraform
  • In-depth knowledge about workflow orchestrators, specifically Airflow or Dagster
  • In-depth knowledge of Python and building data systems using Python. An understanding of API frameworks such as FastAPI and libraries such as Pydantic, and design, implementation, and deployment of APIs is preferred.
  • Knowledge of CI/CD measures and tools, such as GitHub Actions
  • Preferred: knowledge of Kafka, dbt or SQLMesh, deployment of data governance tools such as data quality or data catalogue solutions, deployment of semantic/metric layer solutions such as Cube with self-serve tools or data visualisation tools integration.
The Interview Process
  • 1st: Initial Chat with Talent Partner (45 mins via Zoom)
  • 2nd: Technical Interview including a Technical Assessment and Technical Discussion (1.5 hours via Zoom)
  • 3rd: Values Interview including with Technical and Non-Technical team members (1 hour video via Zoom)
  • 4th: Final interview including Technical focus with the Hiring Manager and Tech Leadership team (1 hour video via Zoom)
Why Legend
  • Super smart colleagues to work alongside and learn from.
  • Tailored flexibility for your work-life balance.
  • Annual discretionary bonus to reward your efforts.
  • Paid annual leave PLUS a well-deserved break to recharge your batteries during the festive season! Our offices are closed between Christmas and New Year\'s, allowing you to enjoy downtime without dipping into your annual allowance.
  • Long term incentive plan so we can all share in the growth and success of Legend.
  • Exciting global Legend events, where we unite in person to ignite our shared passion and unveil the exciting strategies for the year ahead!
  • Unlock your full potential by joining the Legend team. To support you on this journey, we provide an extensive array of benefits and perks, as outlined in our global offerings above. For country specific benefits please reach out to your talent partner.
Legend is an Equal Opportunity Employer, we’re dedicated to hiring diverse talent - which includes individuals with different backgrounds, abilities, identities and experiences. If you require any reasonable adjustments throughout your application process, please speak to your Talent Partner or contact the team , and we\'ll do all we can to support you.


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