
Data Scientist
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We are seeking a highly motivated and skilled Data Scientist to join our team in the retail industry. The ideal candidate has at least 2 years of experience in data science, with expertise in data analysis, predictive modeling, and machine learning. Exposure to MLOps, feature engineering, and data engineering workflows will be considered a plus.
Responsibilities
Data Analysis:
Collect, preprocess, and analyze large datasets to identify trends and actionable insights for retail business challenges.
Model Development:
Design, train, and deploy machine learning models for tasks such as demand forecasting, customer behavior analysis, and inventory optimization.
Collaboration:
Partner with cross-functional teams, including data engineers and business stakeholders, to translate requirements into data-driven solutions.
Visualization and Communication:
Present insights and findings through visualizations and dashboards to inform decision-making.
Innovation:
Stay updated on the latest tools and techniques in data science and retail analytics.
Feature Engineering:
Engineer and optimize features to improve machine learning model performance.
Automate feature extraction pipelines for scalable workflows.
MLOps:
Contribute to the deployment, monitoring, and retraining of machine learning models in production environments.
Data Engineering:
Assist in designing and maintaining data pipelines and ensuring data quality.
Qualifications
Education:
Bachelor’s or Master’s degree in Data Science, Computer Science, Statistics, Mathematics, or a related field.
Experience:
At least 2 years of experience in data science or a related field.
Technical Skills:
Proficiency in Python for data analysis and machine learning.
Strong SQL skills for managing and querying large datasets.
Experience with machine learning frameworks (e.g., scikit-learn, TensorFlow, PyTorch).
Knowledge of data visualization tools (e.g., Tableau, Power BI, matplotlib).
Soft Skills:
Strong problem-solving, communication, and teamwork abilities.
Preferred (Optional) Qualifications:
Exposure to MLOps tools (e.g., MLflow, Kubeflow, AWS SageMaker).
Familiarity with data engineering tools (e.g., Apache Spark, Kafka, Airflow).
Experience in building real-time analytics or personalization systems.