This is a hybrid position requiring presence in Vancouver, BC.
What You'll be doing:
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Create data-driven insights in order to enrich the end user experience
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Communicate with multiple teams by creating reports in order to share insights and overall data story
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Work alongside senior level stakeholders to scope analytics projects to ensure data science deliveries are driving business impact
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Evaluate consumer fintech data by using various methods and tools including but not limited to; Machine Learning, Statistics, Data Analysis, Quantitative Finance, and Modern Programming
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Facilitate data driven initiatives in the following areas to paint a cohesive data picture:
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Customer Segmentation
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Underwriting
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Lifetime Value Optimization
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Financial product development
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Fraud and Ethical Lending Analysis
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What You Should Already Have:
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A Bachelor’s degree in a quantitative field, such as Finance, Computer Science, Economics, Mathematics or a similar technical discipline
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5+ years experience in applying analytics, data engineering or data science
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Proficiency in working with SQL, Python and/or R across complex real world datasets
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Proficiency in using modern data visualization tools, such as Tableau, PowerBI or similar
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Experience deploying ML models using machine learning as a service platforms such as Amazon SageMaker, Google Cloud AI, and Microsoft Azure
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Excellent written and verbal communication skills
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Aptitude for critical thinking as it relates to complex problems and challenge assumptions in order to implement creative solutions
What Would Be Nice To Have:
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A Master's degree or higher, focused in data science, analytics finance, or software engineering
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Experience applying data science consumer finance, fintech and other Financial Industry domains
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Familiarity with related disciplines such as consumer finance, project
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management, user experience design, software development and digital
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marketing
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Experience in establishing data technology foundations for agile business
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intelligence, data lakes and data workbenches, and applied machine learning/AI
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Experience with large-scale data analysis technologies (e.g. Relational and
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NoSQL data stores, Spark framework, and cloud development in the AWS
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Ecosystem)
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Specializations and applied experience in the following areas:
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Consumer Credit and Risk Modeling
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Fraud and Anomaly Detection
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Customer Segmentation and Intent Modeling
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Marketing Attribution and Targeting
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Recommendation Engines
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