Senior Software Engineer (Reporting)

Kitman Labs
Manchester
1 month ago
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Kitman Labs is a global human performance company, disrupting and transforming the way the sports industry uses data to increase the performance of the world's top athletes.

Driven by a passion to innovate in the areas of sports performance, analytics and user experience, we have assembled a team of the industry's top data scientists, sports performance scientists, product specialists and engineers. The company received recognition by Fast Company in 2019 as one of the most innovative companies in the world.

Kitman Labs' advanced Outcome-driven Analytics and Performance Intelligence Platform are used by over 700 teams in 50 leagues on 6 continents spanning soccer, rugby, American football, baseball and ice hockey.

The Role

We are seeking aSenior Backend Engineerto play a pivotal role in the evolution of our reporting and analytics platform. This critical project involves rearchitecting our existing system to leverage a modern reporting paradigm and introduce technologies that will allow us to scale reporting to large data sets (300 million data points per customer). As a senior engineer, you will play a key role in designing scalable data pipelines, implementing pre-calculation strategies, and enabling dynamic custom reporting capabilities for our clients.

This position requires a blend of deep technical expertise, strategic vision, and hands-on engineering skills to ensure the successful delivery of this architecture transformation. You'll collaborate with product managers, engineers, data engineers, data scientists and stakeholders to create a robust, high-performing solution that meets our customers' evolving reporting needs.

What you'll be responsible for

  1. Driving Architectural Design:Design, build, and maintain a reporting platform that integrates with high volume database technologies (TSDB/OLAP) and provides custom BI capabilities, ensuring scalability, performance, and reliability.
  2. Develop and Optimise Data Pipelines:Create data transformation pipelines to summarise and pre-calculate large volumes of data for efficient querying and reporting.
  3. Ensure High Standards of Quality:Maintain robust testing and CI/CD pipelines, write high-quality and secure code, and implement QA best practices.
  4. Solve Complex Problems:Confidently debug and optimise complex issues across services, data pipelines, and the stack.
  5. Technical Leadership:Provide architectural direction, make pragmatic decisions on technical trade-offs, and mentor team members.
  6. Stakeholder Collaboration:Work closely with the product team to define, refine, and deliver user stories that translate into impactful reporting features.

Experience and skills we look for

  1. Proven Experience in Data-Intensive Systems:Strong track record in designing and building reporting systems, including data pipelines, TSDB/OLAP, or similar architectures.
  2. Expertise in Backend Development:Experience building APIs and services, preferably in Ruby, but open to other languages with the ability to quickly learn new ones.
  3. Data Engineering Knowledge:Familiarity with ETL pipelines, data modelling, and pre-aggregation techniques to handle large datasets.
  4. Analytical Thinking:Ability to debug, optimise, and solve problems across complex systems and services.
  5. CI/CD and Testing:Deep understanding of CI/CD pipelines and testing frameworks to ensure the reliable delivery of high-quality software.
  6. Leadership and Collaboration:Experience guiding technical projects, mentoring engineers, and collaborating across teams.

Additional Skills that set you apart

  1. Experience withtime-series databases(e.g., Amazon Timestream, InfluxDB, TimescaleDB) or scalable analytics platforms.
  2. Knowledge ofbusiness intelligence tools(e.g., Power BI, Tableau, or Looker) for custom report development.
  3. Hands-on experience withAWS servicesfor data processing and secure storage, particularly in GovCloud or IL5-compliant environments.
  4. Familiarity with AI/ML tools and workflows, particularly in the context of data analytics and reporting.
  5. Strong understanding of database optimisation, caching strategies, and performance tuning.

Benefits

At Kitman Labs we pride ourselves on being the best and working with the best, so it should be no surprise that we are also dedicated to keeping the best through building a world-class work culture.

We truly believe that a successful company begins through having an outstanding and inspiring culture, so our benefits reflect this:

  • Competitive salary
  • Health insurance for employee & dependants
  • Meaningful equity
  • Pension Plan
  • Life Cover
  • Income protection
  • Wellbeing benefits

Location

While this role allows for remote work, occasional face-to-face gatherings are recommended.

Diversity

In addition to building a team with diverse skill-sets, Kitman Labs is committed to hiring people with diverse backgrounds. We do not discriminate based on age, civil or family status, disability, ethnicity, gender, race, religion, or sexual orientation. If you are a person with a disability and require assistance during the application process, please let us know.

You can find information about how we process, share and keep your personal data safe by reading our privacy policy.

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