Apply in 3 Minutes! Data Scientist, London

The Society for Location Analysis
London
3 weeks ago
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We are hiring: Data Scientist Are you an experienceddata scientist or modeller, who enjoys problem solving and youridea of a good day is receiving huge amounts of data? This positioncould be for you…. At GEOLYTIX we seek new and innovative ways tomake spatial analytics accessible, exciting and indispensable. Ourcustomers span the retail, financial, property, leisure and food& beverage industries, across the world. We build innovativesolutions to support our clients to make better decisions combiningvarious forecasting methods and statistical models, GIS and webtools to create bespoke solutions. We are always looking to dothings better. We have fun and value every member of our team. Areyou our next Data Scientist? About You - You’re already anexperienced data scientist or modeller – your idea of a good day isreceiving huge amounts of data and working out how customers aregoing to behave. - You enjoy problem solving, and will be buildinggravity or machine learning models, for a variety of clients acrosswide ranging sectors. - You want to be original – you don’t want todo the same old, same old. You’re consistently looking forinnovation. - Ideally you know your way around a GIS (notessential). - You enjoy the world of retail, and have a good graspof geography. - You know enough about programming so that you’requick and efficient; anything you don’t know you can quickly grasp.- If you don’t have experience with really big data, you’ll be keento learn how we process it at Geolytix. - You care about your code.You know your way around git and how to productionise models youhave built. - You’re a ‘people person’ and build relationships withcustomers as you will lead projects on your own. Yourqualifications and experience - You are a pro at using SQL for datamanipulation (at least one of PostgreSQL, MSSQL, Google BigQuery,SparkSQL). - Modelling & Statistical Analysis experience,ideally customer related. - Coding skills in at least one ofPython, R, Scala, C, Java or JS. - Track record of using datamanipulation and machine learning libraries in one or moreprogramming languages. - Keen interest in some of the followingareas: Big Data Analytics (e.g. Google BigQuery / BigTable, ApacheSpark), Parallel Computing (e.g. Apache Spark, Kubernetes,Databricks), Cloud Engineering (AWS, GCP, Azure), Spatial QueryOptimisation, Data Storytelling with (Jupyter) Notebooks, GraphComputing, Microservices Architectures. - A university degree –numbers based, Computer Science or Geography. - Relevant industrysector knowledge ideal but not essential. - A strong communicatorwith the ability to work with colleagues remotely across the globe.- Be able to provide evidence of attention to detail, proactivityand managing deadlines. Other stuff Our offices are in Leeds andClerkenwell, London. The role can be located in either. Competitivesalary. We’re a young and growing company who embrace flexibleworking; full time or part time, family friendly hours and/orworking from home days considered. Benefits - Flexible working. -City Centre office location. - Vitality Health membership. - Greatmaternity and paternity schemes. - Cycle to work scheme. - TuskerCar Purchase scheme. - Bonus scheme. - Opportunity for allemployees to become a shareholder on our long term incentive plan.Interested? If you are interested in this role and are looking foryour next challenge, please send your CV and cover letter . No agencies please.#J-18808-Ljbffr

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