100+ datasets found
  1. 🛒 Online Shopping Dataset 📊📉📈

    • kaggle.com
    zip
    Updated Nov 12, 2023
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    Jackson Divakar R (2023). 🛒 Online Shopping Dataset 📊📉📈 [Dataset]. https://www.kaggle.com/datasets/jacksondivakarr/online-shopping-dataset
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    zip(5404165 bytes)Available download formats
    Dataset updated
    Nov 12, 2023
    Authors
    Jackson Divakar R
    License

    Apache License, v2.0https://www.apache.org/licenses/LICENSE-2.0
    License information was derived automatically

    Description

    Dataset: Online Shopping Dataset;

    CustomerID

    Description: Unique identifier for each customer. Data Type: Numeric;

    Gender:

    Description: Gender of the customer (e.g., Male, Female). Data Type: Categorical;

    Location:

    Description: Location or address information of the customer. Data Type: Text;

    Tenure_Months:

    Description: Number of months the customer has been associated with the platform. Data Type: Numeric;

    Transaction_ID:

    Description: Unique identifier for each transaction. Data Type: Numeric;

    Transaction_Date:

    Description: Date of the transaction. Data Type: Date;

    Product_SKU:

    Description: Stock Keeping Unit (SKU) identifier for the product. Data Type: Text;

    Product_Description:

    Description: Description of the product. Data Type: Text;

    Product_Category:

    Description: Category to which the product belongs. Data Type: Categorical;

    Quantity:

    Description: Quantity of the product purchased in the transaction. Data Type: Numeric;

    Avg_Price:

    Description: Average price of the product. Data Type: Numeric;

    Delivery_Charges:

    Description: Charges associated with the delivery of the product. Data Type: Numeric;

    Coupon_Status:

    Description: Status of the coupon associated with the transaction. Data Type: Categorical;

    GST:

    Description: Goods and Services Tax associated with the transaction. Data Type: Numeric;

    Date:

    Description: Date of the transaction (potentially redundant with Transaction_Date). Data Type: Date;

    Offline_Spend:

    Description: Amount spent offline by the customer. Data Type: Numeric;

    Online_Spend:

    Description: Amount spent online by the customer. Data Type: Numeric;

    Month:

    Description: Month of the transaction. Data Type: Categorical;

    Coupon_Code:

    Description: Code associated with a coupon, if applicable. Data Type: Text;

    Discount_pct:

    Description: Percentage of discount applied to the transaction. Data Type: Numeric;

  2. Online Retail Ecommerce Dataset

    • kaggle.com
    zip
    Updated Jun 5, 2023
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    iNeuBytes (2023). Online Retail Ecommerce Dataset [Dataset]. https://www.kaggle.com/datasets/ineubytes/online-retail-ecommerce-dataset
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    zip(7548686 bytes)Available download formats
    Dataset updated
    Jun 5, 2023
    Authors
    iNeuBytes
    Description

    Context

    In the field of e-commerce, the datasets are typically considered as proprietary, meaning they are owned and controlled by individual organizations and are not often made publicly available due to privacy and business considerations. In spite of this, The UCI Machine Learning Repository, known for its extensive collection of datasets beneficial for machine learning and data mining research, has curated and made accessible a unique dataset. This dataset comprises actual transactional data spanning from the year 2010 to 2011. For those interested, the dataset is maintained and readily available on the UCI Machine Learning Repository's site under the title "Online Retail".

    Content

    The dataset is a transnational one, capturing every transaction made from December 1, 2010, through December 9, 2011, by a UK-based non-store online retail company. As an online retail entity, the company doesn't have a physical store presence, and its operations and sales are conducted purely online. The company's primary product offering includes unique gifts for all occasions. While the company serves a diverse range of customers, a significant number of its clientele includes wholesalers.

    Acknowledgements

    In collaboration with the UCI Machine Learning Repository, the dataset was provided and made available by Dr. Daqing Chen. Dr. Chen is the Director of the Public Analytics group at London South Bank University, UK. Any correspondence regarding this dataset can be sent to Dr. Chen at 'chend' at 'lsbu.ac.uk'. We are grateful to him for providing such an invaluable resource for researchers and data science enthusiasts.

    The image used has been sourced from Canva

    Inspiration

    The rich and extensive data within this dataset opens the door for a multitude of potential analyses. It lends itself well to various methods and techniques in data science, including but not limited to time series analysis, clustering, and classification. By exploring this dataset, one could derive key insights into customer behavior, transaction trends, and product performance, providing ample opportunities for deep and insightful explorations.

  3. Online Sales Dataset

    • kaggle.com
    zip
    Updated Oct 29, 2024
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    Yusuf Delikkaya (2024). Online Sales Dataset [Dataset]. https://www.kaggle.com/datasets/yusufdelikkaya/online-sales-dataset/code
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    zip(1547105 bytes)Available download formats
    Dataset updated
    Oct 29, 2024
    Authors
    Yusuf Delikkaya
    License

    https://creativecommons.org/publicdomain/zero/1.0/https://creativecommons.org/publicdomain/zero/1.0/

    Description

    Description:

    • The dataset comprises anonymized data on online sales transactions, capturing various aspects of product purchases, customer details, and order characteristics.
    • This dataset can be utilized for analyzing sales trends, customer purchase behavior, and order management in e-commerce or retail.
    • It can aid in understanding the impact of discounts, payment methods, and shipment providers on sales performance and customer satisfaction.
    • This dataset can be utilized for analyzing sales performance, customer purchasing patterns, and operational efficiency in order management.
    • It can help in evaluating the effects of discounts and payment methods on sales, optimizing inventory by studying product demand, and improving customer satisfaction through better shipping and return handling.

    Features:

    Column NameDescription
    InvoiceNoA unique identifier for each sales transaction (invoice).
    StockCodeThe code representing the product stock-keeping unit (SKU).
    DescriptionA brief description of the product.
    QuantityThe number of units of the product sold in the transaction.
    InvoiceDateThe date and time when the sale was recorded.
    UnitPriceThe price per unit of the product in the transaction currency.
    CustomerIDA unique identifier for each customer.
    CountryThe customer's country.
    DiscountThe discount applied to the transaction, if any.
    PaymentMethodThe method of payment used for the transaction (e.g., PayPal, Bank Transfer).
    ShippingCostThe cost of shipping for the transaction.
    CategoryThe category to which the product belongs (e.g., Electronics, Apparel).
    SalesChannelThe channel through which the sale was made (e.g., Online, In-store).
    ReturnStatusIndicates whether the item was returned or not.
    ShipmentProviderThe provider responsible for delivering the order (e.g., UPS, FedEx).
    WarehouseLocationThe warehouse location from which the order was fulfilled.
    OrderPriorityThe priority level of the order (e.g., High, Medium, Low).
  4. d

    Warehouse and Retail Sales

    • catalog.data.gov
    • data.montgomerycountymd.gov
    • +4more
    Updated Nov 8, 2025
    + more versions
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    data.montgomerycountymd.gov (2025). Warehouse and Retail Sales [Dataset]. https://catalog.data.gov/dataset/warehouse-and-retail-sales
    Explore at:
    Dataset updated
    Nov 8, 2025
    Dataset provided by
    data.montgomerycountymd.gov
    Description

    This dataset contains a list of sales and movement data by item and department appended monthly. Update Frequency : Monthly

  5. F

    E-Commerce Retail Sales as a Percent of Total Sales

    • fred.stlouisfed.org
    json
    Updated Aug 19, 2025
    + more versions
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    (2025). E-Commerce Retail Sales as a Percent of Total Sales [Dataset]. https://fred.stlouisfed.org/series/ECOMPCTSA
    Explore at:
    jsonAvailable download formats
    Dataset updated
    Aug 19, 2025
    License

    https://fred.stlouisfed.org/legal/#copyright-public-domainhttps://fred.stlouisfed.org/legal/#copyright-public-domain

    Description

    Graph and download economic data for E-Commerce Retail Sales as a Percent of Total Sales (ECOMPCTSA) from Q4 1999 to Q2 2025 about e-commerce, retail trade, percent, sales, retail, and USA.

  6. c

    Etsy Retail Products Dataset

    • crawlfeeds.com
    json, zip
    Updated Aug 26, 2024
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    Crawl Feeds (2024). Etsy Retail Products Dataset [Dataset]. https://crawlfeeds.com/datasets/esty-retail-products-dataset
    Explore at:
    zip, jsonAvailable download formats
    Dataset updated
    Aug 26, 2024
    Dataset authored and provided by
    Crawl Feeds
    License

    https://crawlfeeds.com/privacy_policyhttps://crawlfeeds.com/privacy_policy

    Description

    Explore the "Etsy Retail Products Dataset," a comprehensive collection of data on a wide variety of unique, handmade, and vintage products available on Etsy, one of the world’s largest online marketplaces for creative goods.

    This dataset includes detailed information on products across various categories such as jewelry, clothing, home decor, art, and more. Each product entry provides essential details, including product names, categories, prices, descriptions, seller information, and customer ratings, offering valuable insights for researchers, data analysts, and e-commerce professionals.

    Key Features:

    • Diverse Product Range: Contains a vast array of retail products from Etsy, covering multiple categories like jewelry, clothing, home decor, art, and handmade items.
    • Detailed Product Information: Each entry includes key details such as product name, category, price, description, seller information, and customer ratings, allowing for in-depth analysis of market trends and consumer preferences.
    • Ideal for Market Analysis: Perfect for researchers, data scientists, and e-commerce professionals interested in analyzing consumer behavior, studying trends in handmade and vintage markets, or optimizing product strategies in the creative retail sector.
    • Rich Source of Creative Goods Data: Provides a comprehensive overview of the Etsy marketplace, helping professionals stay updated on the latest trends, popular product categories, and pricing strategies.

    Whether you're analyzing market trends in creative goods, researching consumer behavior, or developing new product strategies, the "Etsy Retail Products Dataset" is an invaluable resource that provides detailed insights and extensive coverage of products available on Etsy.

  7. Consumers that would shop mostly online vs. offline worldwide 2023, by...

    • statista.com
    Updated Jun 23, 2025
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    Statista (2025). Consumers that would shop mostly online vs. offline worldwide 2023, by country [Dataset]. https://www.statista.com/statistics/1384193/mostly-online-vs-offline-shopping-worldwide/
    Explore at:
    Dataset updated
    Jun 23, 2025
    Dataset authored and provided by
    Statistahttp://statista.com/
    Time period covered
    Jan 2023 - Mar 2023
    Area covered
    Worldwide
    Description

    As of early 2023, approximately ** percent of consumers in the United States said they would prefer to shop mostly online rather than in-store, making it the country with highest online shopping preference. In contrast, more shoppers preferred visiting physical stores in countries such as Austria, Finland, and New Zealand.

  8. Online Retail & E-Commerce Dataset

    • kaggle.com
    zip
    Updated Mar 20, 2025
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    Ertuğrul EŞOL (2025). Online Retail & E-Commerce Dataset [Dataset]. https://www.kaggle.com/datasets/ertugrulesol/online-retail-data
    Explore at:
    zip(26067 bytes)Available download formats
    Dataset updated
    Mar 20, 2025
    Authors
    Ertuğrul EŞOL
    License

    https://creativecommons.org/publicdomain/zero/1.0/https://creativecommons.org/publicdomain/zero/1.0/

    Description

    Overview:

    This dataset contains 1000 rows of synthetic online retail sales data, mimicking transactions from an e-commerce platform. It includes information about customer demographics, product details, purchase history, and (optional) reviews. This dataset is suitable for a variety of data analysis, data visualization and machine learning tasks, including but not limited to: customer segmentation, product recommendation, sales forecasting, market basket analysis, and exploring general e-commerce trends. The data was generated using the Python Faker library, ensuring realistic values and distributions, while maintaining no privacy concerns as it contains no real customer information.

    Data Source:

    This dataset is entirely synthetic. It was generated using the Python Faker library and does not represent any real individuals or transactions.

    Data Content:

    Column NameData TypeDescription
    customer_idIntegerUnique customer identifier (ranging from 10000 to 99999)
    order_dateDateOrder date (a random date within the last year)
    product_idIntegerProduct identifier (ranging from 100 to 999)
    category_idIntegerProduct category identifier (10, 20, 30, 40, or 50)
    category_nameStringProduct category name (Electronics, Fashion, Home & Living, Books & Stationery, Sports & Outdoors)
    product_nameStringProduct name (randomly selected from a list of products within the corresponding category)
    quantityIntegerQuantity of the product ordered (ranging from 1 to 5)
    priceFloatUnit price of the product (ranging from 10.00 to 500.00, with two decimal places)
    payment_methodStringPayment method used (Credit Card, Bank Transfer, Cash on Delivery)
    cityStringCustomer's city (generated using Faker's city() method, so the locations will depend on the Faker locale you used)
    review_scoreIntegerCustomer's product rating (ranging from 1 to 5, or None with a 20% probability)
    genderStringCustomer's gender (M/F, or None with a 10% probability)
    ageIntegerCustomer's age (ranging from 18 to 75)

    Potential Use Cases (Inspiration):

    Customer Segmentation: Group customers based on demographics, purchasing behavior, and preferences.

    Product Recommendation: Build a recommendation system to suggest products to customers based on their past purchases and browsing history.

    Sales Forecasting: Predict future sales based on historical trends.

    Market Basket Analysis: Identify products that are frequently purchased together.

    Price Optimization: Analyze the relationship between price and demand.

    Geographic Analysis: Explore sales patterns across different cities.

    Time Series Analysis: Investigate sales trends over time.

    Educational Purposes: Great for practicing data cleaning, EDA, feature engineering, and modeling.

  9. c

    Clickstream for Online Shopping Dataset

    • cubig.ai
    zip
    Updated May 28, 2025
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    CUBIG (2025). Clickstream for Online Shopping Dataset [Dataset]. https://cubig.ai/store/products/376/clickstream-for-online-shopping-dataset
    Explore at:
    zipAvailable download formats
    Dataset updated
    May 28, 2025
    Dataset authored and provided by
    CUBIG
    License

    https://cubig.ai/store/terms-of-servicehttps://cubig.ai/store/terms-of-service

    Measurement technique
    Synthetic data generation using AI techniques for model training, Privacy-preserving data transformation via differential privacy
    Description

    1) Data Introduction • The Clickstream Data for Online Shopping is an e-commerce analysis dataset that summarizes user clickstream, product information, country, price, and other session-specific behavior data from April to August 2008 at an online shopping mall specializing in maternity clothing.

    2) Data Utilization (1) Clickstream Data for Online Shopping has characteristics that: • Each row contains 14 key variables: year, month, day, click order, country (by access IP), session ID, main category, product code, color, photo location, model photo type, price, category average price, page number, etc. • Data is configured to enable analysis of various consumer behaviors such as click flows for each session, product attributes, and country-specific access patterns. (2) Clickstream Data for Online Shopping can be used to: • Online Shopping Mall User Behavior Analysis: Using clickstream, session, and product information, you can analyze purchase conversion routes, popular products, and behavioral patterns by country and category. • Improve marketing strategies and UI/UX: analyze the relationship between product photo location, color, price, etc. and click behavior and apply to establish effective marketing strategies and improvement of shopping mall UI/UX.

  10. Ecommerce Store Data | APAC E-commerce Sector | Verified Business Profiles...

    • datarade.ai
    Updated Jan 1, 2018
    + more versions
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    Success.ai (2018). Ecommerce Store Data | APAC E-commerce Sector | Verified Business Profiles with Key Insights | Best Price Guarantee [Dataset]. https://datarade.ai/data-products/ecommerce-store-data-apac-e-commerce-sector-verified-busi-success-ai
    Explore at:
    .bin, .json, .xml, .csv, .xls, .sql, .txtAvailable download formats
    Dataset updated
    Jan 1, 2018
    Dataset provided by
    Area covered
    Fiji, Mexico, Malta, Austria, Canada, Andorra, Korea (Democratic People's Republic of), Italy, Lao People's Democratic Republic, Northern Mariana Islands
    Description

    Success.ai’s Ecommerce Store Data for the APAC E-commerce Sector provides a reliable and accurate dataset tailored for businesses aiming to connect with e-commerce professionals and organizations across the Asia-Pacific region. Covering roles and businesses involved in online retail, marketplace management, logistics, and digital commerce, this dataset includes verified business profiles, decision-maker contact details, and actionable insights.

    With access to continuously updated, AI-validated data and over 700 million global profiles, Success.ai ensures your outreach, market analysis, and partnership strategies are effective and data-driven. Backed by our Best Price Guarantee, this solution helps you excel in one of the world’s fastest-growing e-commerce markets.

    Why Choose Success.ai’s Ecommerce Store Data?

    1. Verified Profiles for Precision Engagement

      • Access verified profiles, business locations, employee counts, and decision-maker details for e-commerce businesses across APAC.
      • AI-driven validation ensures 99% accuracy, improving engagement rates and reducing outreach inefficiencies.
    2. Comprehensive Coverage of the APAC E-commerce Sector

      • Includes businesses from major e-commerce hubs such as China, India, Japan, South Korea, Australia, and Southeast Asia.
      • Gain insights into regional e-commerce trends, digital transformation efforts, and logistics innovations.
    3. Continuously Updated Datasets

      • Real-time updates ensure that business profiles, employee roles, and operational insights remain accurate and relevant.
      • Stay aligned with dynamic market conditions and emerging opportunities in the APAC region.
    4. Ethical and Compliant

      • Fully adheres to GDPR, CCPA, and other global data privacy regulations, ensuring responsible and lawful data usage.

    Data Highlights:

    • 700M+ Verified Global Profiles: Access business profiles for e-commerce professionals and organizations across APAC.
    • Firmographic Insights: Gain detailed information, including business locations, employee counts, and operational details.
    • Decision-maker Profiles: Connect with key e-commerce leaders, managers, and strategists driving online retail innovation.
    • Industry Trends: Understand emerging e-commerce trends, consumer behavior, and market dynamics in the APAC region.

    Key Features of the Dataset:

    1. Comprehensive E-commerce Business Profiles

      • Identify and connect with businesses specializing in online retail, marketplace management, and digital commerce logistics.
      • Target decision-makers involved in supply chain optimization, digital marketing, and platform development.
    2. Advanced Filters for Precision Campaigns

      • Filter businesses and professionals by industry focus (fashion, electronics, grocery), geographic location, or employee size.
      • Tailor campaigns to address specific goals, such as promoting technology adoption, enhancing customer engagement, or expanding supply chains.
    3. Regional and Sector-specific Insights

      • Leverage data on APAC’s fast-growing e-commerce markets, consumer purchasing trends, and regional challenges.
      • Refine your marketing strategies and outreach efforts to align with market priorities.
    4. AI-Driven Enrichment

      • Profiles enriched with actionable data allow for personalized messaging, highlight unique value propositions, and improve engagement outcomes.

    Strategic Use Cases:

    1. Marketing Campaigns and Outreach

      • Promote e-commerce solutions, logistics services, or digital commerce tools to businesses and professionals in the APAC region.
      • Use verified contact data for multi-channel outreach, including email, phone, and social media campaigns.
    2. Partnership Development and Vendor Collaboration

      • Build relationships with e-commerce marketplaces, logistics providers, and payment solution companies seeking strategic partnerships.
      • Foster collaborations that drive operational efficiency, enhance customer experiences, or expand market reach.
    3. Market Research and Competitive Analysis

      • Analyze regional e-commerce trends, consumer preferences, and logistics challenges to refine product offerings and business strategies.
      • Benchmark against competitors to identify growth opportunities and high-demand solutions.
    4. Recruitment and Talent Acquisition

      • Target HR professionals and hiring managers in the e-commerce industry recruiting for roles in operations, logistics, and digital marketing.
      • Provide workforce optimization platforms or training solutions tailored to the digital commerce sector.

    Why Choose Success.ai?

    1. Best Price Guarantee

      • Access premium-quality e-commerce store data at competitive prices, ensuring strong ROI for your marketing, sales, and strategic initiatives.
    2. Seamless Integration

      • Integrate verified e-commerce data into CRM systems, analytics platforms, or market...
  11. Retail Data | Retail Sector in North America | Comprehensive Contact...

    • datarade.ai
    + more versions
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    Success.ai, Retail Data | Retail Sector in North America | Comprehensive Contact Profiles | Best Price Guaranteed [Dataset]. https://datarade.ai/data-products/retail-data-retail-sector-in-north-america-comprehensive-success-ai
    Explore at:
    .bin, .json, .xml, .csv, .xls, .sql, .txtAvailable download formats
    Dataset provided by
    Area covered
    United States
    Description

    Success.ai’s Retail Data for the Retail Sector in North America offers a comprehensive dataset designed to connect businesses with key players across the diverse retail industry. Covering everything from department stores and supermarkets to specialty shops and e-commerce platforms, this dataset provides verified contact details, business locations, and leadership profiles for retail companies in the United States, Canada, and Mexico.

    With access to over 170 million verified professional profiles and 30 million company profiles, Success.ai ensures your outreach, marketing, and business development efforts are powered by accurate, continuously updated, and AI-validated data.

    Backed by our Best Price Guarantee, this solution empowers businesses to thrive in North America’s competitive retail landscape.

    Why Choose Success.ai’s Retail Data for North America?

    1. Verified Contact Data for Precision Outreach

      • Access verified phone numbers, work emails, and LinkedIn profiles of retail executives, store managers, and decision-makers.
      • AI-driven validation ensures 99% accuracy, enabling confident communication and efficient campaign execution.
    2. Comprehensive Coverage Across Retail Segments

      • Includes profiles of retail businesses across major markets, from large department stores and grocery chains to boutique retailers and online platforms.
      • Gain insights into the operational dynamics of retail hubs in cities such as New York, Los Angeles, Toronto, and Mexico City.
    3. Continuously Updated Datasets

      • Real-time updates reflect leadership changes, new store openings, market expansions, and shifts in consumer preferences.
      • Stay aligned with evolving industry trends and emerging opportunities in the North American retail sector.
    4. Ethical and Compliant

      • Adheres to GDPR, CCPA, and other privacy regulations, ensuring responsible and lawful use of data in your campaigns.

    Data Highlights:

    • 170M+ Verified Professional Profiles: Engage with executives, marketing directors, and operations managers across the North American retail sector.
    • 30M Company Profiles: Access firmographic data, including revenue ranges, store counts, and geographic footprints.
    • Store Location Data: Pinpoint retail outlets, regional offices, and distribution centers to refine supply chain and marketing strategies.
    • Leadership Contact Details: Connect with CEOs, CMOs, and procurement officers influencing retail operations and vendor selections.

    Key Features of the Dataset:

    1. Retail Decision-Maker Profiles

      • Identify and engage with store owners, category managers, and marketing directors shaping customer experiences and product strategies.
      • Target professionals responsible for inventory planning, vendor contracts, and store performance.
    2. Advanced Filters for Precision Targeting

      • Filter companies by industry segment (luxury, grocery, e-commerce), geographic location, company size, or revenue range.
      • Tailor outreach to align with regional market trends, customer demographics, and operational priorities.
    3. Market Trends and Operational Insights

      • Analyze trends such as online shopping growth, sustainability practices, and supply chain optimization.
      • Leverage insights to refine product offerings, identify partnership opportunities, and design effective campaigns.
    4. AI-Driven Enrichment

      • Profiles enriched with actionable data enable personalized messaging, highlight unique value propositions, and enhance engagement outcomes.

    Strategic Use Cases:

    1. Sales and Lead Generation

      • Present products, services, or technology solutions to retail procurement teams, marketing departments, and operations managers.
      • Build relationships with retailers seeking innovative tools, efficient supply chain solutions, or unique product offerings.
    2. Market Research and Consumer Insights

      • Analyze retail trends, customer behaviors, and seasonal demands to inform marketing strategies and product launches.
      • Benchmark against competitors to identify gaps, emerging niches, and growth opportunities.
    3. E-Commerce and Digital Strategy Development

      • Target e-commerce managers and digital transformation teams driving online retail initiatives and omnichannel integration.
      • Offer solutions to enhance online shopping experiences, logistics, and customer loyalty programs.
    4. Recruitment and Workforce Solutions

      • Engage HR professionals and hiring managers in recruiting talent for store operations, customer service, or marketing roles.
      • Provide workforce optimization tools, training platforms, or staffing services tailored to retail environments.

    Why Choose Success.ai?

    1. Best Price Guarantee

      • Access premium-quality retail data at competitive prices, ensuring strong ROI for your marketing and outreach efforts in North America.
    2. Seamless Integration
      ...

  12. m

    Dataset Purchase Intention and Purchase Behavior Online: A cross-cultural...

    • data.mendeley.com
    Updated Jun 16, 2020
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    Nathalie Peña García (2020). Dataset Purchase Intention and Purchase Behavior Online: A cross-cultural approach [Dataset]. http://doi.org/10.17632/wy4cw82jpz.1
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    Dataset updated
    Jun 16, 2020
    Authors
    Nathalie Peña García
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    The aim of this research is to assess the main theories about consumer behavior/making decision from the social psychology perspective, to understand the intention to adopt electronic channel and, in this way, to determine the precursors of online purchase intention in an emerging economy, and to compare these precursors with the precursors in a developed economy through a cross-cultural study: H1. Consumer online purchase intention has a positive effect on online purchase behavior H1a. The effect of online purchase intention on online purchase behavior is moderated by culture H2. Attitude toward e-commerce has a positive effect on online purchase intention H2a. The effect of attitude toward e-commerce on online purchase intention is moderated by culture H3. Subjective norms have a positive effect on online purchase intention H3a. The effect of subjective norms on online purchase intention is moderated by culture H4. PBC has a positive effect on online purchase intention H4a. The effect of PBC on online purchase intention is moderated by culture H5. Self-efficacy in online stores has a positive effect on online purchase intention H5a. The effect of self-efficacy in online stores on online purchase intention is moderated by culture H6. EOU of e-stores has a positive effect on attitudes toward e-commerce H6a. The effect of EOU of e-stores on attitudes toward e-commerce is moderated by culture H7. The perceived usefulness of online stores has a positive effect on consumers’ attitudes towards online shopping H7a. National culture moderates the effect of perceived usefulness on attitudes toward online shopping H8. Buying impulse has a positive effect on online purchase intention H9. The perceived EOU of e-stores has a positive effect on buying impulse. H8a. The effect of buying impulse on online purchase intention is moderated by culture H9a. The effect of EOU on buying impulse is moderated by culture H10. Compatibility with e-commerce has a positive effect on online purchase intention H10a. The effect of compatibility on online purchase intention is moderated by culture H11. PIIT has a positive effect on online purchase intention H11a. The effect of PIIT on online purchase intention is moderated by culture

  13. Market cap of 120 digital assets, such as crypto, on October 1, 2025

    • statista.com
    Updated Jun 3, 2025
    + more versions
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    Raynor de Best (2025). Market cap of 120 digital assets, such as crypto, on October 1, 2025 [Dataset]. https://www.statista.com/topics/871/online-shopping/
    Explore at:
    Dataset updated
    Jun 3, 2025
    Dataset provided by
    Statistahttp://statista.com/
    Authors
    Raynor de Best
    Description

    A league table of the 120 cryptocurrencies with the highest market cap reveals how diverse each crypto is and potentially how much risk is involved when investing in one. Bitcoin (BTC), for instance, had a so-called "high cap" - a market cap worth more than 10 billion U.S. dollars - indicating this crypto project has a certain track record or, at the very least, is considered a major player in the cryptocurrency space. This is different in Decentralize Finance (DeFi), where Bitcoin is only a relatively new player. A concentrated market The number of existing cryptocurrencies is several thousands, even if most have a limited significance. Indeed, Bitcoin and Ethereum account for nearly 75 percent of the entire crypto market capitalization. As crypto is relatively easy to create, the range of projects varies significantly - from improving payments to solving real-world issues, but also meme coins and more speculative investments. Crypto is not considered a payment method While often talked about as an investment vehicle, cryptocurrencies have not yet established a clear use case in day-to-day life. Central bankers found that usefulness of crypto in domestic payments or remittances to be negligible. A forecast for the world's main online payment methods took a similar stance: It predicts that cryptocurrency would only take up 0.2 percent of total transaction value by 2027.

  14. Reasons to spend more online during Cyber Week in the U.S. 2024

    • statista.com
    Updated Jul 9, 2025
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    Statista Research Department (2025). Reasons to spend more online during Cyber Week in the U.S. 2024 [Dataset]. https://www.statista.com/topics/2477/online-shopping-behavior/
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    Dataset updated
    Jul 9, 2025
    Dataset provided by
    Statistahttp://statista.com/
    Authors
    Statista Research Department
    Area covered
    United States
    Description

    In 2024, convenience was the leading reason to spend more money online during Cyber Week than in the previous year. Prices being lower online was the second most common reason for U.S. Cyber Week shoppers.

  15. c

    E Commerce Dataset

    • cubig.ai
    zip
    Updated May 20, 2025
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    CUBIG (2025). E Commerce Dataset [Dataset]. https://cubig.ai/store/products/277/e-commerce-dataset
    Explore at:
    zipAvailable download formats
    Dataset updated
    May 20, 2025
    Dataset authored and provided by
    CUBIG
    License

    https://cubig.ai/store/terms-of-servicehttps://cubig.ai/store/terms-of-service

    Measurement technique
    Synthetic data generation using AI techniques for model training, Privacy-preserving data transformation via differential privacy
    Description

    1) Data Introduction • The E-Commerce Data Dataset contains actual transaction records from an online retail company based in the UK. It includes various transaction-related attributes such as customer ID, product information, transaction date, quantity, and country.

    2) Data Utilization (1) Characteristics of the E-Commerce Data Dataset: • This dataset is structured as time-series consumer behavior data at the transaction level. It includes attributes such as product category, quantity, unit price, and country, making it suitable for analyzing country-specific consumption patterns and developing region-based classification models.

    (2) Applications of the E-Commerce Data Dataset: • Developing country-specific marketing strategies: By analyzing purchasing trends, frequently bought product categories, and transaction frequency by country, the dataset can be used to design regionally tailored marketing strategies.

  16. Data from: Online Retail Dataset

    • kaggle.com
    zip
    Updated Mar 7, 2024
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    Panda-monium (2024). Online Retail Dataset [Dataset]. https://www.kaggle.com/datasets/divanshu22/online-retail-dataset
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    zip(22875827 bytes)Available download formats
    Dataset updated
    Mar 7, 2024
    Authors
    Panda-monium
    License

    Attribution-ShareAlike 4.0 (CC BY-SA 4.0)https://creativecommons.org/licenses/by-sa/4.0/
    License information was derived automatically

    Description

    The Online Retail Dataset consists of records about retail transactions conducted online. It contains information about customer purchases, including the invoice number, stock code, description of the items purchased, quantity, unit price, invoice date, customer ID, and country.

    Here's a breakdown of the columns in the dataset:

    1. InvoiceNo: A unique identifier for each transaction or invoice.
    2. StockCode: A code representing the stock or item purchased.
    3. Description: A textual description of the item purchased.
    4. Quantity: The quantity of the item purchased in each transaction.
    5. InvoiceDate: The date and time when the transaction occurred.
    6. UnitPrice: The price per unit of the item purchased.
    7. CustomerID: The unique identifier for the customer making the purchase.
    8. Country: The country where the transaction took place.

    The dataset contains 542k records, with some missing values in the Description and CustomerID columns. The data types include integers, floats, datetime objects, and strings.

    This dataset provides valuable insights into customer purchasing behavior, item popularity, sales trends over time, and geographic distribution of transactions. It can be used for various analytical purposes, including customer segmentation, sales forecasting, and market analysis.

  17. d

    Retail Store Data | Retail & E-commerce Sector in Asia | Verified Business...

    • datarade.ai
    Updated Feb 12, 2018
    + more versions
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    Success.ai (2018). Retail Store Data | Retail & E-commerce Sector in Asia | Verified Business Profiles & eCommerce Professionals | Best Price Guaranteed [Dataset]. https://datarade.ai/data-products/retail-store-data-retail-e-commerce-sector-in-asia-veri-success-ai
    Explore at:
    .bin, .json, .xml, .csv, .xls, .sql, .txtAvailable download formats
    Dataset updated
    Feb 12, 2018
    Dataset provided by
    Success.ai
    Area covered
    Kuwait, Singapore, Malaysia, Turkmenistan, Bangladesh, Jordan, Georgia, Cyprus, Lebanon, Hong Kong
    Description

    Success.ai delivers unparalleled access to Retail Store Data for Asia’s retail and e-commerce sectors, encompassing subcategories such as ecommerce data, ecommerce merchant data, ecommerce market data, and company data. Whether you’re targeting emerging markets or established players, our solutions provide the tools to connect with decision-makers, analyze market trends, and drive strategic growth. With continuously updated datasets and AI-validated accuracy, Success.ai ensures your data is always relevant and reliable.

    Key Features of Success.ai's Retail Store Data for Retail & E-commerce in Asia:

    Extensive Business Profiles: Access detailed profiles for 70M+ companies across Asia’s retail and e-commerce sectors. Profiles include firmographic data, revenue insights, employee counts, and operational scope.

    Ecommerce Data: Gain insights into online marketplaces, customer demographics, and digital transaction patterns to refine your strategies.

    Ecommerce Merchant Data: Understand vendor performance, supply chain metrics, and operational details to optimize partnerships.

    Ecommerce Market Data: Analyze purchasing trends, regional preferences, and market demands to identify growth opportunities.

    Contact Data for Decision-Makers: Reach key stakeholders, such as CEOs, marketing executives, and procurement managers. Verified contact details include work emails, phone numbers, and business addresses.

    Real-Time Accuracy: AI-powered validation ensures a 99% accuracy rate, keeping your outreach efforts efficient and impactful.

    Compliance and Ethics: All data is ethically sourced and fully compliant with GDPR and other regional data protection regulations.

    Why Choose Success.ai for Retail Store Data?

    Best Price Guarantee: We deliver industry-leading value with the most competitive pricing for comprehensive retail store data.

    Customizable Solutions: Tailor your data to meet specific needs, such as targeting particular regions, industries, or company sizes.

    Scalable Access: Our data solutions are built to grow with your business, supporting small startups to large-scale enterprises.

    Seamless Integration: Effortlessly incorporate our data into your existing CRM, marketing, or analytics platforms.

    Comprehensive Use Cases for Retail Store Data:

    1. Market Entry and Expansion:

    Identify potential partners, distributors, and clients to expand your footprint in Asia’s dynamic retail and e-commerce markets. Use detailed profiles to assess market opportunities and risks.

    1. Personalized Marketing Campaigns:

    Leverage ecommerce data and consumer insights to craft highly targeted campaigns. Connect directly with decision-makers for precise and effective communication.

    1. Competitive Benchmarking:

    Analyze competitors’ operations, market positioning, and consumer strategies to refine your business plans and gain a competitive edge.

    1. Supplier and Vendor Selection:

    Evaluate potential suppliers or vendors using ecommerce merchant data, including financial health, operational details, and contact data.

    1. Customer Engagement and Retention:

    Enhance customer loyalty programs and retention strategies by leveraging ecommerce market data and purchasing trends.

    APIs to Amplify Your Results:

    Enrichment API: Keep your CRM and analytics platforms up-to-date with real-time data enrichment, ensuring accurate and actionable company profiles.

    Lead Generation API: Maximize your outreach with verified contact data for retail and e-commerce decision-makers. Ideal for driving targeted marketing and sales efforts.

    Tailored Solutions for Industry Professionals:

    Retailers: Expand your supply chain, identify new markets, and connect with key partners in the e-commerce ecosystem.

    E-commerce Platforms: Optimize your vendor and partner selection with verified profiles and operational insights.

    Marketing Agencies: Deliver highly personalized campaigns by leveraging detailed consumer data and decision-maker contacts.

    Consultants: Provide data-driven recommendations to clients with access to comprehensive company data and market trends.

    What Sets Success.ai Apart?

    70M+ Business Profiles: Access an extensive and detailed database of companies across Asia’s retail and e-commerce sectors.

    Global Compliance: All data is sourced ethically and adheres to international data privacy standards, including GDPR.

    Real-Time Updates: Ensure your data remains accurate and relevant with our continuously updated datasets.

    Dedicated Support: Our team of experts is available to help you maximize the value of our data solutions.

    Empower Your Business with Success.ai:

    Success.ai’s Retail Store Data for the retail and e-commerce sectors in Asia provides the insights and connections needed to thrive in this competitive market. Whether you’re entering a new region, launching a targeted campaign, or analyzing market trends, our data solutions ensure measurable success.

    ...

  18. c

    Consumer Behavior and Shopping Habits Dataset:

    • cubig.ai
    zip
    Updated May 28, 2025
    + more versions
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    CUBIG (2025). Consumer Behavior and Shopping Habits Dataset: [Dataset]. https://cubig.ai/store/products/352/consumer-behavior-and-shopping-habits-dataset
    Explore at:
    zipAvailable download formats
    Dataset updated
    May 28, 2025
    Dataset authored and provided by
    CUBIG
    License

    https://cubig.ai/store/terms-of-servicehttps://cubig.ai/store/terms-of-service

    Measurement technique
    Synthetic data generation using AI techniques for model training, Privacy-preserving data transformation via differential privacy
    Description

    1) Data Introduction • The Consumer Behavior and Shopping Habits Dataset is a tabular collection of customer demographics, purchase history, product preferences, shopping frequency, and online and offline purchasing behavior.

    2) Data Utilization (1) Consumer Behavior and Shopping Habits Dataset has characteristics that: • Each row contains detailed consumer and transaction information such as customer ID, age, gender, purchased goods and categories, purchase amount, region, product attributes (size, color, season), review rating, subscription status, delivery method, discount/promotion usage, payment method, purchase frequency, etc. • Data is organized to cover a variety of variables and purchasing patterns to help segment customers, establish marketing strategies, analyze product preferences, and more. (2) Consumer Behavior and Shopping Habits Dataset can be used to: • Customer Segmentation and Target Marketing: You can analyze demographics and purchasing patterns to define different customer groups and use them to develop customized marketing strategies. • Product and service improvement: Based on purchase history, review ratings, discount/promotional responses, etc., it can be applied to product and service improvements such as identifying popular products, managing inventory, and analyzing promotion effects.

  19. Products consumers plan to buy online on Cyber Week in the U.S. 2024

    • statista.com
    Updated Jul 9, 2025
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    Koen van Gelder (2025). Products consumers plan to buy online on Cyber Week in the U.S. 2024 [Dataset]. https://www.statista.com/topics/2477/online-shopping-behavior/
    Explore at:
    Dataset updated
    Jul 9, 2025
    Dataset provided by
    Statistahttp://statista.com/
    Authors
    Koen van Gelder
    Area covered
    United States
    Description

    For 2024's Black Friday and Cyber Monday sales event, also known as the 'Cyber Week', approximately 77 percent of shoppers in the United States that planned to visit online retailers during Cyber Week specifically intended to buy clothing and accessories, making it the most popular product category. Just over 70 percent of respondents also planned to buy electronics.

  20. Retail Sales Index internet sales

    • ons.gov.uk
    • cy.ons.gov.uk
    xlsx
    Updated Nov 21, 2025
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    Office for National Statistics (2025). Retail Sales Index internet sales [Dataset]. https://www.ons.gov.uk/businessindustryandtrade/retailindustry/datasets/retailsalesindexinternetsales
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    xlsxAvailable download formats
    Dataset updated
    Nov 21, 2025
    Dataset provided by
    Office for National Statisticshttp://www.ons.gov.uk/
    License

    Open Government Licence 3.0http://www.nationalarchives.gov.uk/doc/open-government-licence/version/3/
    License information was derived automatically

    Description

    Internet sales in Great Britain by store type, month and year.

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Jackson Divakar R (2023). 🛒 Online Shopping Dataset 📊📉📈 [Dataset]. https://www.kaggle.com/datasets/jacksondivakarr/online-shopping-dataset
Organization logo

🛒 Online Shopping Dataset 📊📉📈

Exploring Online Shopping Trends and Patterns

Explore at:
93 scholarly articles cite this dataset (View in Google Scholar)
zip(5404165 bytes)Available download formats
Dataset updated
Nov 12, 2023
Authors
Jackson Divakar R
License

Apache License, v2.0https://www.apache.org/licenses/LICENSE-2.0
License information was derived automatically

Description

Dataset: Online Shopping Dataset;

CustomerID

Description: Unique identifier for each customer. Data Type: Numeric;

Gender:

Description: Gender of the customer (e.g., Male, Female). Data Type: Categorical;

Location:

Description: Location or address information of the customer. Data Type: Text;

Tenure_Months:

Description: Number of months the customer has been associated with the platform. Data Type: Numeric;

Transaction_ID:

Description: Unique identifier for each transaction. Data Type: Numeric;

Transaction_Date:

Description: Date of the transaction. Data Type: Date;

Product_SKU:

Description: Stock Keeping Unit (SKU) identifier for the product. Data Type: Text;

Product_Description:

Description: Description of the product. Data Type: Text;

Product_Category:

Description: Category to which the product belongs. Data Type: Categorical;

Quantity:

Description: Quantity of the product purchased in the transaction. Data Type: Numeric;

Avg_Price:

Description: Average price of the product. Data Type: Numeric;

Delivery_Charges:

Description: Charges associated with the delivery of the product. Data Type: Numeric;

Coupon_Status:

Description: Status of the coupon associated with the transaction. Data Type: Categorical;

GST:

Description: Goods and Services Tax associated with the transaction. Data Type: Numeric;

Date:

Description: Date of the transaction (potentially redundant with Transaction_Date). Data Type: Date;

Offline_Spend:

Description: Amount spent offline by the customer. Data Type: Numeric;

Online_Spend:

Description: Amount spent online by the customer. Data Type: Numeric;

Month:

Description: Month of the transaction. Data Type: Categorical;

Coupon_Code:

Description: Code associated with a coupon, if applicable. Data Type: Text;

Discount_pct:

Description: Percentage of discount applied to the transaction. Data Type: Numeric;

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