filmov
tv
Ecommerce Case Study: Analyzing Sales Data with Python [Tutorial] Part 1 | Data Analysis with Python

Показать описание
Welcome to our comprehensive tutorial on analyzing sales data in the ecommerce industry using Python! In this video, we dive deep into real-world case studies and demonstrate how to utilize Python's powerful data analysis libraries to gain actionable insights.
🔎 Supercharge your data analysis skills: Follow along as we tackle challenging problem statements and provide step-by-step solutions, empowering you to make informed decisions when it comes to ecommerce sales optimization.
⭐ Key Topics Covered ⭐
Importing and preprocessing ecommerce sales data
Exploratory data analysis techniques for ecommerce datasets
Visualizing sales trends, customer behavior, and product performance
Identifying top-selling products and revenue drivers
Implementing recommender systems for personalized customer experiences
💡 Whether you're a beginner or an experienced data analyst, this tutorial caters to all skill levels. Gain hands-on experience and learn how to leverage popular Python libraries like Pandas, Matplotlib, and Scikit-learn to effectively analyze and interpret ecommerce sales data.
📈 Uncover invaluable insights into your customers' purchasing habits and optimize your ecommerce strategy. Join us on this exciting journey and discover how Python can revolutionize your approach to sales analysis in the ecommerce industry.
👍 Don't forget to like, comment, and subscribe to our channel for more engaging tutorials on data analysis, Python programming, and ecommerce insights!
🔗 Helpful resources mentioned in the video:
#PythonTutorial #EcommerceAnalysis #SalesDataAnalysis #DataAnalysis #EcommerceCaseStudy #DataDrivenDecisionMaking
0:00 Intro
3:45 Data Preparation (Data Cleaning/ Data Preprocessing)
16:04 What is the best month for sale?
33:47 Data Visualization
37:10 Which city has max order?
43:42 Data Visualization
47:32 What time should we display advertisements to maximise for product purchase?
53:36 Data Visualization
🔎 Supercharge your data analysis skills: Follow along as we tackle challenging problem statements and provide step-by-step solutions, empowering you to make informed decisions when it comes to ecommerce sales optimization.
⭐ Key Topics Covered ⭐
Importing and preprocessing ecommerce sales data
Exploratory data analysis techniques for ecommerce datasets
Visualizing sales trends, customer behavior, and product performance
Identifying top-selling products and revenue drivers
Implementing recommender systems for personalized customer experiences
💡 Whether you're a beginner or an experienced data analyst, this tutorial caters to all skill levels. Gain hands-on experience and learn how to leverage popular Python libraries like Pandas, Matplotlib, and Scikit-learn to effectively analyze and interpret ecommerce sales data.
📈 Uncover invaluable insights into your customers' purchasing habits and optimize your ecommerce strategy. Join us on this exciting journey and discover how Python can revolutionize your approach to sales analysis in the ecommerce industry.
👍 Don't forget to like, comment, and subscribe to our channel for more engaging tutorials on data analysis, Python programming, and ecommerce insights!
🔗 Helpful resources mentioned in the video:
#PythonTutorial #EcommerceAnalysis #SalesDataAnalysis #DataAnalysis #EcommerceCaseStudy #DataDrivenDecisionMaking
0:00 Intro
3:45 Data Preparation (Data Cleaning/ Data Preprocessing)
16:04 What is the best month for sale?
33:47 Data Visualization
37:10 Which city has max order?
43:42 Data Visualization
47:32 What time should we display advertisements to maximise for product purchase?
53:36 Data Visualization
Комментарии