7 datasets found
  1. Buy Shopify Store Owners Data | Verified Shopify Users Email List |...

    • datacaptive.com
    Updated Sep 11, 2018
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    DataCaptive™ (2018). Buy Shopify Store Owners Data | Verified Shopify Users Email List | DataCaptive [Dataset]. https://www.datacaptive.com/technology-users-email-list/shopify-users-email-list/
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    Dataset updated
    Sep 11, 2018
    Dataset provided by
    DataCaptive
    Authors
    DataCaptive™
    Area covered
    Finland, Sweden, Norway, Romania, United Kingdom, Poland, Spain, United Arab Emirates, Greece, Jordan
    Description

    Gain exclusive access to verified Shopify store owners with our premium Shopify Users Email List. This database includes essential data fields such as Store Name, Website, Contact Name, Email Address, Phone Number, Physical Address, Revenue Size, Employee Size, and more on demand. Leverage real-time, accurate data to enhance your marketing efforts and connect with high-value Shopify merchants. Whether you're targeting small businesses or enterprise-level Shopify stores, our database ensures precision and reliability for optimized lead generation and outreach strategies. Key Highlights: ✅ 3.9M+ Shopify Stores ✅ Direct Contact Info of Shopify Store Owners ✅ 40+ Data Points ✅ Lifetime Access ✅ 10+ Data Segmentations ✅ FREE Sample Data

  2. r

    Global Shopify Store Statistics 2025

    • redstagfulfillment.com
    html
    Updated Apr 29, 2025
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    Red Stag Fulfillment (2025). Global Shopify Store Statistics 2025 [Dataset]. https://redstagfulfillment.com/how-many-shopify-stores-exist/
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    htmlAvailable download formats
    Dataset updated
    Apr 29, 2025
    Dataset authored and provided by
    Red Stag Fulfillment
    Time period covered
    2019 - 2025
    Area covered
    Global
    Variables measured
    SKU catalog sizes, Store growth rates, Geographic distribution, Live Shopify store domains, Product category breakdown, Active storefront instances
    Description

    Comprehensive dataset of Shopify store counts worldwide including geographic distribution, product categories, and growth trends based on April 2025 crawl data.

  3. Ecommerce Order & Supply Chain Dataset

    • kaggle.com
    Updated Aug 7, 2024
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    Aditya Bagus Pratama (2024). Ecommerce Order & Supply Chain Dataset [Dataset]. https://www.kaggle.com/datasets/bytadit/ecommerce-order-dataset
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    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    Aug 7, 2024
    Dataset provided by
    Kagglehttp://kaggle.com/
    Authors
    Aditya Bagus Pratama
    License

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

    Description

    Dataset Description

    The E-commerce Order Dataset provides comprehensive information related to orders, items within orders, customers, payments, and products for an e-commerce platform. This dataset is structured with multiple tables, each containing specific information about various aspects of the e-commerce operations.

    Dataset Features

    Orders Table:

    • order_id: Unique identifier for an order, acting as the primary key.
    • customer_id: Unique identifier for a customer. This table may not be unique at this level.
    • order_status: Indicates the status of an order (e.g., delivered, cancelled, processing, etc.).
    • order_purchase_timestamp: Timestamp when the order was made by the customer.
    • order_approved_at: Timestamp when the order was approved from the seller's side.
    • order_delivered_timestamp: Timestamp when the order was delivered at the customer's location.
    • order_estimated_delivery_date: Estimated date of delivery shared with the customer while placing the order.

    Order Items Table

    • order_id: Unique identifier for an order.
    • order_item_id: Item number in each order, acting as part of the primary key along with the order_id.
    • product_id: Unique identifier for a product.
    • seller_id: Unique identifier for the seller.
    • price: Selling price of the product.
    • shipping_charges: Charges associated with the shipping of the product.

    Customers Table

    • customer_id: Unique identifier for a customer, acting as the primary key.
    • customer_zip_code_prefix: Customer's Zip code.
    • customer_city: Customer's city.
    • customer_state: Customer's state.

    Payments Table

    • order_id: Unique identifier for an order.
    • payment_sequential: Provides information about the sequence of payments for the given order.
    • payment_type: Type of payment (e.g., credit_card, debit_card, etc.).
    • payment_installments: Payment installment number in case of credit cards.
    • payment_value: Transaction value.

    Products Table

    • product_id: Unique identifier for each product, acting as the primary key.
    • product_category_name: Name of the category the product belongs to.
    • product_weight_g: Product weight in grams.
    • product_length_cm: Product length in centimeters.
    • product_height_cm: Product height in centimeters.
    • product_width_cm: Product width in centimeters.
  4. Premium eCommerce Leads | Target Shopify, Amazon, eBay Stores | Verified...

    • datacaptive.com
    Updated May 23, 2022
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    DataCaptive™ (2022). Premium eCommerce Leads | Target Shopify, Amazon, eBay Stores | Verified Owner Contacts | DataCaptive [Dataset]. https://www.datacaptive.com/technology-users-email-list/ecommerce-company-data/
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    Dataset updated
    May 23, 2022
    Dataset provided by
    DataCaptive
    Authors
    DataCaptive™
    Area covered
    Netherlands, Norway, Switzerland, Romania, Spain, Belgium, Bahrain, United Arab Emirates, Germany, Mexico
    Description

    Discover the unparalleled potential of our comprehensive eCommerce leads database, featuring essential data fields such as Store Name, Website, Contact First Name, Contact Last Name, Email Address, Physical Address, City, State, Country, Zip Code, Phone Number, Revenue Size, Employee Size, and more on demand.

    With a focus on Shopify, Amazon, eBay, and other global retail stores, this database equips you with accurate information for successful marketing campaigns. Supercharge your marketing efforts with our enriched contact and company database, providing real-time, verified data insights for strategic market assessments and effective buyer engagement across digital and traditional channels.

    • 4M+ eCommerce Companies • 40M+ Worldwide eCommerce Leads • Direct Contact Info for Shop Owners • 47+ eCommerce Platforms • 40+ Data Points • Lifetime Access • 10+ Data Segmentations • Sample Data"

  5. B

    B2C E-commerce Market Report

    • archivemarketresearch.com
    doc, pdf, ppt
    Updated Mar 31, 2025
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    Archive Market Research (2025). B2C E-commerce Market Report [Dataset]. https://www.archivemarketresearch.com/reports/b2c-e-commerce-market-4843
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    doc, pdf, pptAvailable download formats
    Dataset updated
    Mar 31, 2025
    Dataset authored and provided by
    Archive Market Research
    License

    https://www.archivemarketresearch.com/privacy-policyhttps://www.archivemarketresearch.com/privacy-policy

    Time period covered
    2025 - 2033
    Area covered
    global
    Variables measured
    Market Size
    Description

    The B2C E-commerce Market size was valued at USD 6.23 trillion in 2023 and is projected to reach USD 21.18 trillion by 2032, exhibiting a CAGR of 19.1 % during the forecasts period. The B2C e-commerce can be defined as the sale of commercial products or services through the internet between buyers and sellers. This market pertains to several industries that fall under its fold that includes the area of retail, travelling, electronics and digital products. Some of the most common implementations are in the ecommerce sites, mobile applications, and membership services. Some aspects of the B2C e-commerce market include increased popularity of omnichannel retailing that combines online and offline environments and the shift to the concept of individualization due to the digitalization and data processing using artificial intelligence and machine learning. Also, growth is noted in mobile commerce (m-commerce) as a result of the increase in the number of mobile devices and more effective mobile payments. To this list one should also include the concepts of social commerce and sustainability which also became significant in today’s society due to increasing importance of ethical and convenient shopping. Recent developments include: In March 2024, Blink, an Amazon company, launched the Blink Mini 2 camera. The new compact plug-in camera offers enhanced features such as person detection, a broader field of view, a built-in LED spotlight for night view in color, and improved image quality. The Blink Mini 2 is designed to work indoors and outdoors, with the option to purchase the Blink Weather Resistant Power Adapter for outdoor use. , In October 2023, Flipkart.com introduced the 'Flipkart Commerce Cloud,' a customized suite of AI-driven retail technology solutions for global retailers and e-commerce businesses. This extensive offering includes marketplace technology, retail media solutions, pricing, and inventory management features rigorously assessed by Flipkart.com. The company aims to equip international sellers with reliable and secure tools to enhance business expansion and efficiency within the competitive global market. , In August 2023, Shopify and Amazon.com, Inc. announced a strategic partnership that will allow Shopify merchants to seamlessly implement Amazon's "Buy with Prime" option on their sites. As a result of the agreement, Amazon.com, Inc. Prime customers will enjoy a more efficient checkout process on various platforms. This collaboration allows Amazon Prime members to utilize their existing Amazon payment options, while Shopify will handle the transaction processing through its system, showcasing a partnership between the two leading companies. , In February 2023, eBay acquired 3PM Shield, a developer of AI-powered online retail solutions. 3PM Shield uses machine learning and artificial intelligence to analyze extensive data sets, enhancing marketplace compliance and user experience. This acquisition aligns with eBay's goal to offer a "safe and reliable" platform by boosting its ability to block the sale of counterfeit and prohibited items. By incorporating 3PM Shield's sophisticated monitoring technologies, eBay seeks to enhance its capability to address problematic seller behavior and spot problematic listings, fostering a safer e-commerce space for its worldwide community of sellers and buyers. .

  6. Purchase Real-Time eCommerce Leads List | Gain Direct Access to Store Owners...

    • datacaptive.com
    Updated May 23, 2022
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    DataCaptive™ (2022). Purchase Real-Time eCommerce Leads List | Gain Direct Access to Store Owners | 40+ Data Points | Lifetime Access | DataCaptive [Dataset]. https://www.datacaptive.com/technology-users-email-list/ecommerce-company-data/
    Explore at:
    Dataset updated
    May 23, 2022
    Dataset provided by
    DataCaptive
    Authors
    DataCaptive™
    Area covered
    Singapore, Jordan, Sweden, Canada, Georgia, Finland, Bahrain, France, United Kingdom, Spain
    Description

    Unlock the door to business expansion by investing in our real-time eCommerce leads list. Gain direct access to store owners and make informed decisions with data fields including Store Name, Website, Contact First Name, Contact Last Name, Email Address, Physical Address, City, State, Country, Zip Code, Phone Number, Revenue Size, Employee Size, and more on demand.

    Ensure a lifetime of access for continuous growth and tailor your campaigns with accurate and reliable information, initiating targeted efforts that align with your marketing goals. Whether you're targeting specific industries or global locations, our database provides up-to-date and valuable insights to support your business journey.

    • 4M+ eCommerce Companies • 40M+ Worldwide eCommerce Leads • Direct Contact Info for Shop Owners • 47+ eCommerce Platforms • 40+ Data Points • Lifetime Access • 10+ Data Segmentations • Sample Data

  7. d

    AI Training Data | Annotated Checkout Flows for Retail, Restaurant, and...

    • datarade.ai
    Updated Dec 18, 2024
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    MealMe (2024). AI Training Data | Annotated Checkout Flows for Retail, Restaurant, and Marketplace Websites [Dataset]. https://datarade.ai/data-products/ai-training-data-annotated-checkout-flows-for-retail-resta-mealme
    Explore at:
    Dataset updated
    Dec 18, 2024
    Dataset authored and provided by
    MealMe
    Area covered
    United States of America
    Description

    AI Training Data | Annotated Checkout Flows for Retail, Restaurant, and Marketplace Websites Overview

    Unlock the next generation of agentic commerce and automated shopping experiences with this comprehensive dataset of meticulously annotated checkout flows, sourced directly from leading retail, restaurant, and marketplace websites. Designed for developers, researchers, and AI labs building large language models (LLMs) and agentic systems capable of online purchasing, this dataset captures the real-world complexity of digital transactions—from cart initiation to final payment.

    Key Features

    Breadth of Coverage: Over 10,000 unique checkout journeys across hundreds of top e-commerce, food delivery, and service platforms, including but not limited to Walmart, Target, Kroger, Whole Foods, Uber Eats, Instacart, Shopify-powered sites, and more.

    Actionable Annotation: Every flow is broken down into granular, step-by-step actions, complete with timestamped events, UI context, form field details, validation logic, and response feedback. Each step includes:

    Page state (URL, DOM snapshot, and metadata)

    User actions (clicks, taps, text input, dropdown selection, checkbox/radio interactions)

    System responses (AJAX calls, error/success messages, cart/price updates)

    Authentication and account linking steps where applicable

    Payment entry (card, wallet, alternative methods)

    Order review and confirmation

    Multi-Vertical, Real-World Data: Flows sourced from a wide variety of verticals and real consumer environments, not just demo stores or test accounts. Includes complex cases such as multi-item carts, promo codes, loyalty integration, and split payments.

    Structured for Machine Learning: Delivered in standard formats (JSONL, CSV, or your preferred schema), with every event mapped to action types, page features, and expected outcomes. Optional HAR files and raw network request logs provide an extra layer of technical fidelity for action modeling and RLHF pipelines.

    Rich Context for LLMs and Agents: Every annotation includes both human-readable and model-consumable descriptions:

    “What the user did” (natural language)

    “What the system did in response”

    “What a successful action should look like”

    Error/edge case coverage (invalid forms, OOS, address/payment errors)

    Privacy-Safe & Compliant: All flows are depersonalized and scrubbed of PII. Sensitive fields (like credit card numbers, user addresses, and login credentials) are replaced with realistic but synthetic data, ensuring compliance with privacy regulations.

    Each flow tracks the user journey from cart to payment to confirmation, including:

    Adding/removing items

    Applying coupons or promo codes

    Selecting shipping/delivery options

    Account creation, login, or guest checkout

    Inputting payment details (card, wallet, Buy Now Pay Later)

    Handling validation errors or OOS scenarios

    Order review and final placement

    Confirmation page capture (including order summary details)

    Why This Dataset?

    Building LLMs, agentic shopping bots, or e-commerce automation tools demands more than just page screenshots or API logs. You need deeply contextualized, action-oriented data that reflects how real users interact with the complex, ever-changing UIs of digital commerce. Our dataset uniquely captures:

    The full intent-action-outcome loop

    Dynamic UI changes, modals, validation, and error handling

    Nuances of cart modification, bundle pricing, delivery constraints, and multi-vendor checkouts

    Mobile vs. desktop variations

    Diverse merchant tech stacks (custom, Shopify, Magento, BigCommerce, native apps, etc.)

    Use Cases

    LLM Fine-Tuning: Teach models to reason through step-by-step transaction flows, infer next-best-actions, and generate robust, context-sensitive prompts for real-world ordering.

    Agentic Shopping Bots: Train agents to navigate web/mobile checkouts autonomously, handle edge cases, and complete real purchases on behalf of users.

    Action Model & RLHF Training: Provide reinforcement learning pipelines with ground truth “what happens if I do X?” data across hundreds of real merchants.

    UI/UX Research & Synthetic User Studies: Identify friction points, bottlenecks, and drop-offs in modern checkout design by replaying flows and testing interventions.

    Automated QA & Regression Testing: Use realistic flows as test cases for new features or third-party integrations.

    What’s Included

    10,000+ annotated checkout flows (retail, restaurant, marketplace)

    Step-by-step event logs with metadata, DOM, and network context

    Natural language explanations for each step and transition

    All flows are depersonalized and privacy-compliant

    Example scripts for ingesting, parsing, and analyzing the dataset

    Flexible licensing for research or commercial use

    Sample Categories Covered

    Grocery delivery (Instacart, Walmart, Kroger, Target, etc.)

    Restaurant takeout/delivery (Ub...

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Click to copy link
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Close
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DataCaptive™ (2018). Buy Shopify Store Owners Data | Verified Shopify Users Email List | DataCaptive [Dataset]. https://www.datacaptive.com/technology-users-email-list/shopify-users-email-list/
Organization logo

Buy Shopify Store Owners Data | Verified Shopify Users Email List | DataCaptive

Explore at:
Dataset updated
Sep 11, 2018
Dataset provided by
DataCaptive
Authors
DataCaptive™
Area covered
Finland, Sweden, Norway, Romania, United Kingdom, Poland, Spain, United Arab Emirates, Greece, Jordan
Description

Gain exclusive access to verified Shopify store owners with our premium Shopify Users Email List. This database includes essential data fields such as Store Name, Website, Contact Name, Email Address, Phone Number, Physical Address, Revenue Size, Employee Size, and more on demand. Leverage real-time, accurate data to enhance your marketing efforts and connect with high-value Shopify merchants. Whether you're targeting small businesses or enterprise-level Shopify stores, our database ensures precision and reliability for optimized lead generation and outreach strategies. Key Highlights: ✅ 3.9M+ Shopify Stores ✅ Direct Contact Info of Shopify Store Owners ✅ 40+ Data Points ✅ Lifetime Access ✅ 10+ Data Segmentations ✅ FREE Sample Data

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