Key Responsibilities:Data Analysis & Insights: Analyze large datasets from multiple sources (clickstream, sales, user engagement) to uncover insights and support business decision-making.Machine Learning: Develop, deploy, and maintain machine learning models for recommendations, personalization, customer segmentation, demand forecasting, and pricing.A/B Testing: Design and analyze A/B tests to evaluate the performance of product features, marketing campaigns, and user experiences.Data Pipeline Development: Work closely with data engineering teams to ensure the availability of accurate and timely data for analysis.Collaborate with Cross-functional Teams: Partner with product, marketing, and engineering teams to deliver actionable insights and improve platform performance.Data Visualization: Build dashboards and visualizations to communicate findings to stakeholders in an understandable and impactful way.Exploratory Analysis: Identify trends, patterns, and outliers to help guide business strategy and performance improvements.Required Skills:Proficiency in Python or R: Experience in using Python or R for data analysis and machine learning.SQL: Strong SQL skills to query and manipulate large datasets.Machine Learning Frameworks: Familiarity with libraries such as Scikit-learn, TensorFlow, or PyTorch.Data Wrangling: Ability to clean, organize, and manipulate data from various sources.A/B Testing: Experience designing experiments and interpreting test results.Visualization Tools: Proficiency with data visualization tools (e.g., Tableau, Power BI, Matplotlib, Seaborn).Statistics & Probability: Strong grasp of statistical methods, hypothesis testing, and probability theory.Communication: Ability to convey complex findings in clear, simple terms for non-technical stakeholders.Preferred Qualifications:E-commerce Experience: Experience working with e-commerce datasets (e.g., user behavior, transaction data, inventory, and product data).Experience with Big Data: Familiarity with big data technologies (e.g., Hadoop, Spark, BigQuery).Cloud Platforms: Experience with cloud platforms like AWS, GCP, or Azure for data storage and model deployment.Business Acumen: Understanding of key business metrics in e-commerce, such as conversion rates, LTV, and customer acquisition cost (CAC).Education:Bachelor’s or Master’s degree in Data Science, Computer Science, Mathematics, Statistics, or related field.