Data Scientist III
(USA) AR BENTONVILLE Home Office Sam's Home Office, United States
Walmart
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Position: Data Scientist III
Job Location: 2101 SE Simple Savings Dr., Bentonville, AR 72716
Duties: Leads small and participates in large data analytics project teams by serving as a technical lead for analytics projects; working with project teams and business partners to determine project goals; developing contingency plans for data analysis; determining modeling based on business needs; directing the analysis of data; gathering data and developing reports as needed; utilizing business knowledge to ensure data supports project goals; analyzing data based on identified variables; reviewing data results to ensure accuracy; and communicating results and insights to the project team and business partners. Presents data insights and recommendations to key stakeholders by developing insights based on data analysis; applying analytical results to project goals; identifying trends and key insights; translating results into business actions; and presenting insights and recommendations to key stakeholders. Participates in the continuous improvement of data science and analytics by developing replicable solutions (for example, codified data products, project documentation, process flowcharts) to ensure solutions are leveraged for future projects; building and maintaining a library of reusable algorithms for future use; ensuring developed code is documented; and coaching and mentoring analysts across the division and project teams. Develops analytical models to drive analytics insights by gathering data from internal and external sources; evaluating data usability based on project goals; synthesizing data into large datasets to support project goals; developing statistical models and computational algorithms to analyze data; utilizing the analytics project lifecycle process to drive predictive modeling; coding, testing, and maintaining analytical software tools; identifying trends, patterns and discrepancies in data; training statistical models for replication for future projects; and presenting data insights and recommendations to key stakeholders.
Minimum education and experience required: Master's degree or the equivalent in Computer Science, Information Technology, Engineering, or related field; OR Bachelor's degree or the equivalent in Computer Science, Information Technology, Engineering, or related field plus 2 years of experience in data science or a related field.
Skills required: Must have experience with: Python for data cleaning, manipulation, and organization; Databases technologies using SQL to query databases; Data pipelines and creating workflow using Apache Airflow; Data Visualization using Python, Tableau, PowerBI, Plotly and Matplotlib; Model development, testing, optimization, validation process and results; Performing statistical testing and inference using libraries like Statsmodel, Scipy; Analyzing data to discover hidden insights and patterns and presenting to stakeholders; Building machine learning models using libraries like Scikit-learn; RESTful APIs; Cloud Computing-based technologies including Google and Cloud Platform; Cloud Computing-based technologies including AWS; Exploratory data analysis to find patterns and insights and report for consumption; Natural Language Processing. Employer will accept any amount of experience with the required skills.
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Wal-Mart is an Equal Opportunity Employer.
* Salary range is an estimate based on our AI, ML, Data Science Salary Index 💰
Tags: Airflow APIs AWS Computer Science Data analysis Data Analytics Data pipelines Data visualization EDA Engineering Machine Learning Matplotlib ML models NLP Pipelines Plotly Power BI Predictive modeling Python Scikit-learn SciPy SQL Statistics Tableau Testing
Perks/benefits: Career development
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