Data Scientist - Level 1

Hawk-Eye Innovations (HEI)
Basingstoke
2 days ago
Create job alert
Data Scientist - Level 1

Salary Banding: £32,080 - £48,120 per annum
Contract: Full-Time, Permanent
Working Location: Hybrid, 2 Days a week in the office, minimum
Office Locations: Basingstoke, London, Bristol


Join Our Team as a Data Scientist at Hawk-Eye Innovations

Hawk-Eye Innovations is a leading provider of sports technology solutions, dedicated to enhancing the accuracy and efficiency of officiating, coaching, and fan engagement across a variety of sports. We are seeking a talented and motivated Data Scientist with a strong passion for sports and analytics to join our team. The ideal candidate will possess a keen interest in sports, a solid foundation in data science, and the ability to derive insights from complex data sets.


Responsibilities

  • Develop and implement sports analytics models and algorithms to support decision-making for teams, coaches, and officials across various sports.


  • Analyse large and complex data sets to identify trends, patterns, and insights that can be translated into actionable strategies for performance improvements.


  • Collaborate with cross-functional teams, including software engineers, product managers, and other data scientists, to develop and deploy data-driven solutions.


  • Create visualisations and reports to communicate insights and findings effectively to technical and non-technical stakeholders.


  • Assist in the development and maintenance of internal databases, ensuring data quality and accuracy.


  • Contribute to the enhancement of Hawk-Eye's proprietary analytics platforms by continuously refining and optimising their performance and user experience.


  • Present findings and insights to clients, partners, and internal teams, ensuring they understand the value and implications of the analytics work being performed.


  • Participate in the development and delivery of training materials and workshops to help clients and internal team members better understand and utilize sports analytics tools and techniques.


  • Actively contribute to the continuous improvement of Hawk-Eye's analytics processes and methodologies, sharing knowledge and expertise with team members to foster a culture of learning and collaboration.



Main Requirements

  • Bachelor’s degree or equivalent in Data Science, Mathematics, Physical Sciences, Biomechanics, Computer Science or a similar related field.


  • Knowledge of sports rules, strategies, and basic statistical concepts.


  • Proficiency in Python and experience with data manipulation (e.g. pandas, polars) and visualization tools (e.g. plotly, matplotlib).


  • Strong communication and presentation skills.


  • Passion for sports and ideally sports analytics, with a desire to continuously learn and stay up-to-date with industry developments.



Bonus Skills

  • Experience with sports data is ideal but not essential.


  • Familiarity with sports performance and/or biomechanical data analysis.


  • Familiarity with machine learning frameworks and libraries, such as scikit-learn and PyTorch.


  • Knowledge of general purpose programming languages such as C++ or Rust.


  • Any experience working with large, complex data sets and managing data pipelines, ensuring data quality and integrity.


  • Experience in data analysis, predictive modelling, or machine learning, including academic or placement/internship experience.



If you are enthusiastic about sports and data science and are looking for an exciting opportunity to grow your skills and make a meaningful impact in the sports industry, we would love to hear from you!


Benefits & Perks

  • 25 days annual leave (excluding bank holidays)


  • Enhanced pension scheme with 5% matching


  • Hybrid working model


  • Complimentary Unmind wellbeing app


  • Sony Group Company discounts



Equal Opportunity Employer

At Hawk-Eye Innovations, we value diversity and treat all employees and job applicants based on merit, qualifications, competence, and talent. We do not discriminate based on race, religion, colour, national origin, gender, sexual orientation, age, marital status, veteran status, or disability status.


Apply Today

If you’re excited by the idea of solving real-world problems at scale and want to make a difference in the world of sports tech, we’d love to hear from you. If possible, please apply with a cover letter, it will help you stand out!


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