We consistently top the charts as one of if not the most used Sports Betting website in the countries we operate in.
With millions of weekly active users, we strive to be the best in industry for our users.
As a Data Scientist at Sporty, you will play a vital role in developing innovative data science solutions and machine learning models to drive business impact. Working closely with our Trading, Product, and Tech teams, you will leverage your expertise to tackle a wide range of business challenges, translating them into supervised and/or unsupervised learning problems.
Who We Are
Sporty Group is a consumer internet and technology business with an unrivalled sports media, gaming, social and fintech platform which serves millions of daily active users across the globe via technology and operations hubs across more than 10 countries and 3 continents.
The recipe for our success is to discover intelligent and energetic people, who are passionate about our products and serving our users, and attract and retain them with a dynamic and flexible work life which empowers them to create value and rewards them generously based upon their contribution.
We have already built a capable and proven team of 300+ high achievers from a diverse set of backgrounds and we are looking for more talented individuals to drive further growth and contribute to the innovation, creativity and hard work that currently serves our users further via their grit and innovation.
Responsibilities
Create data science solutions to address a variety of business challenges that can be translated to supervised and/ or unsupervised learning problems using statistical and machine learning models
Participate in monitoring and evaluation of performance of existing models
Develop advanced quantitative models and concepts, such as LTV models, churn models, and recommendation engines
Collaborate with global teams of developers, traders and product developers to better understand business requirements and deliver end product to the clients
Implement and test the researched fixed income models using the risk research data
Liabilities and probabilities calculations
Requirements
Ability to come up with sound research designs and make methodological choices to address business problems with appropriate statistical and machine learning models
3+ years of experience as a data scientist, quantitative researcher, quantitative analyst or another relevant role
Degree in Applied Mathematics, Computer Science, Financial Engineering, Technology or Engineering
Knowledge of probability theory, inferential statistics, machine learning, Bayesian statistics, linear algebra, and numerical methods
Experience with statistical and machine learning models, such as regression-based models (e.g., logistic regression, linear regression, negative binomial regression), tree-based models (e.g., random forests), support vector machines, PCA, clustering models, matrix factorization, deep learning, etc
Experience using statistical and machine learning models to contribute to company growth efforts, impacting revenue and other key business outcomes
Advanced understanding of Python and the machine learning ecosystem in Python (Numpy, Pandas, Scikit-learn, LightGBM, PyTorch)
Knowledge of SQL and experience with relational databases
Agile, action-oriente
Nice to have
Apache Spark
Experience working in cloud platforms (AWS, GCP, Microsoft Azure)
Relevant knowledge or experience in the gaming industry