Data Engineering Team Lead

griffinfire
London
2 months ago
Applications closed

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Over the past 25 years, With Intelligence has evolved from a traditional financial publisher into a dynamic, product-led fintech company. Our mission is to empower investors and managers worldwide by connecting them to the people and data they need to raise and allocate assets efficiently.

We have recently secured a new round of funding from a prominent technology investor. This investment will drive our committed plan to elevate our product into a pioneering, market-leading platform.

We are rapidly expanding our focus on data, both internally and within our products and services. We are now looking for more help in this area to keep up with the growing demands of a dynamic, data-driven organisation.

Responsibilities

  1. Develop, maintain, and optimise ETL processes for data extraction, transformation, and loading.
  2. Create and manage data models and data warehousing solutions.
  3. Lead a cross-functional team of data scientists and data engineers.
  4. Utilise programming languages like Python and SQL for data processing tasks.
  5. Development and deployment of AI & ML pipelines (alongside data scientists).
  6. Optimise data pipelines for performance and efficiency.
  7. Work closely with data scientists and analysts to support their data needs.
  8. Define and maintain best practices across the team.

Minimum Requirements

  • Proven experience in data engineering and proficient in designing and implementing scalable data architectures.
  • Strong experience with ETL processes, data modelling, and data warehousing (we use airflow, dbt, and redshift).
  • Expertise in database technologies, both relational (SQL) and NoSQL.
  • Expert in cloud platforms (AWS).
  • Solid understanding of data security measures and compliance standards.
  • Excellent Python experience.
  • Good understanding of IAC technologies (we use terraform) and the DevOps environment.
  • Collaborative skills to work closely with data scientists and analysts.
  • Ability to optimize data pipelines for performance and efficiency.
  • Ability to build, test and maintain tasks and projects.

It Would Be Nice If You Had:

  • Experience with Airflow and/or dbt.
  • Experience working in Agile environment using SCRUM/Kanban.
  • Previous experience in MLOps or ML Engineering.

Benefits

  • 24 days annual leave rising to 29 days.
  • Enhanced parental leave.
  • Medicash (Health Cash Plans).
  • Wellness Days.
  • Flexible Fridays (Opportunity to finish early).
  • Birthday day off.
  • Employee assistance program.
  • Travel loan scheme.
  • Charity days.
  • Breakfast provided.
  • Social Events throughout the year.
  • Hybrid Working.

Our Company:

With Intelligence is based at One London Wall, London EC2Y 5EA. We offer amazing benefits, free breakfast daily and drinks provided all day, every day. We actively encourage social networks that oversee activities from sports, book reading to rock climbing, that you are free to join.

As part of our company, you will enjoy the benefits of an open plan office and working with a social and energetic team. With Intelligence provides exclusive editorial, research, data and events for senior executives within the asset management industry. These include hedge funds, private credit, private equity, real estate and traditional asset management, and our editorial brands are seen as market leaders in providing asset manager sales and IR execs with the actionable information they require to help them raise and retain assets.

We are an Equal Opportunity Employer. Our policy is not to discriminate against any applicant or employee based on actual or perceived race, age, sex or gender (including pregnancy), marital status, national origin, ancestry, citizenship status, mental or physical disability, religion, creed, colour, sexual orientation, gender identity or expression (including transgender status), veteran status, genetic information, or any other characteristic protected by applicable law.

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