نبذة عني
Data Scientist with experience in retail and housing market analysis, specializing in Python, SQL, data visualization, statistical analysis, and machine learning. Experienced in building dashboards, conducting explorator…
Data Scientist with experience in retail and housing market analysis, specializing in Python, SQL, data visualization, statistical analysis, and machine learning. Experienced in building dashboards, conducting exploratory data analysis, customer segmentation, recommendation systems, and sales forecasting using tools such as Tableau, Scikit-learn, TensorFlow, and Excel.
الخبرة
Data Scientist (Retail & Science Team)
Leveraged Python libraries such as Pandas, GeoPandas, Matplotlib, and Seaborn to conduct exploratory data analysis, examining sales performance across various categories, regions, and time periods in order to identify trends, patterns, and seasonality in product sales.
Created an interactive dashboard using Tableau, incorporating insights from sales data analysis and employing advanced data visualization techniques.
Provided insights to the sales team, facilitating real-time decision-making.
Led to a 15% increase in sales accuracy and improved inventory management.
Utilized the Scikit-learn library and K-means clustering algorithm to conduct customer segmentation analysis based on demographics, purchasing behavior, and other customer attributes.
Facilitated the development of personalized marketing strategies.
Resulted in a 20% improvement in customer engagement.
Implemented recommendation algorithms using Python libraries such as Scikit-learn and SciPy to personalize product recommendations for customers based on their browsing and purchase history.
Enhanced the customer shopping experience.
Drove an increase in sales.
Utilized TensorFlow, in combination with different types of neural network architectures such as Recurrent Neural Networks (RNN) and Gated Recurrent Unit (GRU), to conduct time series analysis for forecasting future sales.
Aimed to support better market strategy.
Data Analyst& Data scientist
Sales Analysis: Leveraged Python libraries such as Pandas, GeoPandas, Matplotlib, and Seaborn to conduct exploratory data analysis, examining sales
performance across various categories, regions, and time periods in order to identify trends, patterns, and seasonality in product sales.
Decision Support: Created an interactive dashboard using Tableau, incorporating insights from sales data analysis and employing advanced data visualization techniques. This dashboard provided insights to the sales team, facilitating real-time decision-making, leading to a 15% increase in sales accuracy and improved inventory management.
Customer Segmentation: Utilized the Scikit-learn library and K-means clustering algorithm to conduct customer segmentation analysis based on demographics, purchasing behavior, and other customer attributes, facilitating the development of personalized marketing strategies and resulting in a 20% improvement in customer engagement.
Customer Recommendation Systems: Implemented recommendation algorithms using Python libraries such as Scikit-learn and SciPy to personalize product recommendations for customers based on their browsing and purchase history, significantly enhancing the customer shopping experience and driving an increase in sales.
Sales Forecasting & Time Series Analysis: Utilized TensorFlow, in combination with different types of neural network architectures such as Recurrent Neural Networks (RNN) and Gated Recurrent Unit (GRU), to conduct time series analysis for forecasting future sales, aiming to support better market strategy.
Data Analyst (Housing Market Analysis)
Utilized Excel and Pandas to analyze market trends, property values, and demographic data, providing valuable insights into market conditions and investment opportunities.
Employed Excel, Matplotlib and Tableau to create visually engaging visualizations and dashboards illustrating market trends and customer behavior.
Presented and reported findings to stakeholders, including investors and property owners, facilitating informed decision-making.
Leveraging SQL queries, analyzed customer interactions, preferences, and transaction data, which aimed at achieving meaningful insights into customer behavior.
These insights were instrumental in refining marketing strategies and enhancing sales performance.