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📄Kaggle Datasets

We have shared various datasets on Kaggle for our visitors and subscribers to download and practice data science problems.

E-Commerce Customer Dataset
This comprehensive dataset captures customer interactions and purchase behavior across various regions and channels. The dataset includes essential details such as CustomerID, Gender, Count, InvoiceDate, InvoiceNumber, ProductID, Quantity, Price, Total, OrderStatus, Country, TrafficSource, SessionDuration, DeviceID, DeviceCategory, Device, OS, DeliveryRating, and ProductRating.
https://www.kaggle.com/datasets/virtualschool/e-commerce-dataset

Customer Insight
This dataset includes customer purchase data from a jewelry store, with demographics like age, gender, and location, along with purchase history and preferences. It’s ideal for analyzing customer behavior, predicting future purchases, and personalizing marketing campaigns. Dataset contains following columns:
Demographics
Age: Numeric
Gender:Male, Female)
Location:City
Income Level:Average Income
Marital Status:Categorical (Single, Married, Divorced, etc.)
Behavior
Purchase Frequency:Number of orders placed in a specified time frame
Average Order Value:Average amount spent per order
Preferred Product Categories:Top categories purchased
Last Purchase Date:Date of most recent order
Return Rate:Percentage of orders returned
Customer Lifetime Value (CLV):Estimated total revenue generated by a customer
Sentiment
Average Star Rating:Average rating given to products and reviews
Net Promoter Score (NPS):Customer loyalty score based on likelihood to recommend
https://www.kaggle.com/datasets/virtualschool/customer-insight


PESTLE analysis (TechInnovate Solutions)
TechInnovate Solutions (Hypthetical) was founded a decade ago by a group of visionary entrepreneurs with a shared passion for pushing the boundaries of technology. The company started as a small startup in Silicon Valley, focused on developing cutting-edge software solutions. Over the years, TechInnovate Solutions has evolved into a global player in the technology industry, diversifying its product and service offerings to include hardware, AI-driven applications, and sustainable tech solutions.
The company`s journey has been marked by a commitment to innovation, environmental responsibility, and a customer-centric approach. TechInnovate Solutions has consistently stayed ahead of the curve, adapting to the fast-paced changes in the tech landscape and establishing itself as a leader in emerging technologies.
As TechInnovate Solutions continues to grow, it faces a dynamic and ever-changing external environment. To navigate the complexities of the global marketplace, the leadership team recognizes the importance of conducting a thorough PESTLE analysis. This analysis aims to assess the political, economic, social, technological, legal, and environmental factors that may impact the company`s operations and strategy.
https://www.kaggle.com/datasets/virtualschool/pestle-analysis-techinnovate-solutions

Market Basket Analysis
Market Basket Analysis is performed to analyse customer behaviour by identifying products purchased together. This data contains following customer information:
BillNo
Itemname
Quantity
Date
Price
CustomerID
Country
https://www.kaggle.com/datasets/virtualschool/market-basket-analysis

SWOT Analysis with Impact, Losses and Costs
The dataset contains strengths, weaknesses, opportinities and threats in terms of money. All these areas can be valued through various methods. Business do evaluate these in term of money, and then analyse these to perform cost and benefit analysis. Decisions involve wether to go for certain opportunities or not, to get rid of some weaknesses or not. Suppose IT equipment is your weakness. Having outdated equipment costs you around 0.5 million monthly in losses (maybe you cannot complete some orders on your existing systems). However, having lastest IT equipment will cost you around 20 million which will again become obsolete in two years. Would you invest in latest equipment? Fields include Category, Description, Impact, Expected Losses, Funds Required, Benefits, Progress, Funds Spent, Budgeted, Variance.
https://www.kaggle.com/datasets/virtualschool/swot-analysis-with-impact-losses-and-costs


Restaurant Cost and Sales Dataset
The dataset includes following fields: (Food) Item, Category, Sub Category, Item Name, Price, Cost. The purpose of this dataset is to practice data visualization in tools like power bi and python.
https://www.kaggle.com/datasets/virtualschool/restaurant-cost-and-sales-dataset