Junior Data Scientist(Causal Ai)

InterQuest Group
1 year ago
Applications closed

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Junior Data Scientist London Hybrid Working Competitive Salary offering - Permanent OpportunityThe RoleWe're seeking a Junior Data Scientist based in London to join our team in spreading Causal AI technology across industries. This entry-level position offers significant growth opportunities. As a Junior Data Scientist, you'll contribute to developing causal-AI-driven models and applications to address high-impact challenges in sectors like retail, marketing, supply chain, manufacturing, and finance.What You'll DoAssist in data preparation and cleaning using Python or other programming languagesLearn and apply basic machine learning algorithms to analyze and extract insights from dataCollaborate with senior data scientists to develop and implement causal modelsContribute to the development of data pipelines and workflowsAssist in the creation of data visualizations to communicate findingsJob RequirementsMaster's degree in a STEM subject, ideally Computer Science or EngineeringStrong foundation in data analysis and statisticsProficiency in Python or another programming languageFamiliarity with data visualization tools (e.G., Matplotlib, Seaborn)Knowledge or experience in AI and MLExperience or knowledge in Causal AIAbility to work independently and as part of a teamA passion for learning and applying data science techniques

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