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Quantitative Developer

BettingJobs
City of London
3 months ago
Applications closed

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Quantitative Developer (Python) - Hybrid London - Up To 250k

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BettingJobs is partnering with a fast-growing technology company as they search to find a Quant Developer to join their London-based team on a hybrid basis.


In this role, you’ll design scalable solutions with long-term growth in mind, explore and test innovative approaches using historical data, and play a key role in shaping best practices while taking genuine ownership of your work.


What you need for this role

– Comfortable with common betting industry concepts, ideally with experience within the betting industry, or an interest in sports.

– Proficient in Python with experience deploying well-structured and tested quantitative models

– Proficiency in Git for version control and collaborative development- Strong SQL skills with PostgreSQL experience for data querying, analysis, and database operations

– Experience of Agile work management and of working with remote technical teams

– Ability to work well in a dynamic, fast-paced environment and to pick up new skill sets quickly

– A passion for detail and problem solving, with excellent verbal and written communication skills

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