86 datasets found
  1. E-Commerce Sales Dataset

    • kaggle.com
    Updated Dec 3, 2022
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    The Devastator (2022). E-Commerce Sales Dataset [Dataset]. https://www.kaggle.com/datasets/thedevastator/unlock-profits-with-e-commerce-sales-data/code
    Explore at:
    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    Dec 3, 2022
    Dataset provided by
    Kagglehttp://kaggle.com/
    Authors
    The Devastator
    Description

    E-Commerce Sales Dataset

    Analyzing and Maximizing Online Business Performance

    By ANil [source]

    About this dataset

    This dataset provides an in-depth look at the profitability of e-commerce sales. It contains data on a variety of sales channels, including Shiprocket and INCREFF, as well as financial information on related expenses and profits. The columns contain data such as SKU codes, design numbers, stock levels, product categories, sizes and colors. In addition to this we have included the MRPs across multiple stores like Ajio MRP , Amazon MRP , Amazon FBA MRP , Flipkart MRP , Limeroad MRP Myntra MRP and PaytmMRP along with other key parameters like amount paid by customer for the purchase , rate per piece for every individual transaction Also we have added transactional parameters like Date of sale months category fulfilledby B2b Status Qty Currency Gross amt . This is a must-have dataset for anyone trying to uncover the profitability of e-commerce sales in today's marketplace

    More Datasets

    For more datasets, click here.

    Featured Notebooks

    • 🚨 Your notebook can be here! 🚨!

    How to use the dataset

    This dataset provides a comprehensive overview of e-commerce sales data from different channels covering a variety of products. Using this dataset, retailers and digital marketers can measure the performance of their campaigns more accurately and efficiently.

    The following steps help users make the most out of this dataset: - Analyze the general sales trends by examining info such as month, category, currency, stock level, and customer for each sale. This will give you an idea about how your e-commerce business is performing in each channel.
    - Review the Shiprocket and INCREF data to compare and analyze profitability via different fulfilment methods. This comparison would enable you to make better decisions towards maximizing profit while minimizing costs associated with each method’s referral fees and fulfillment rates.
    - Compare prices between various channels such as Amazon FBA MRP, Myntra MRP, Ajio MRP etc using the corresponding columns for each store (Amazon MRP etc). You can judge which stores are offering more profitable margins without compromising on quality by analyzing these pricing points in combination with other information related to product sales (TP1/TP2 - cost per piece).
    - Look at customer specific data such as TP 1/TP 2 combination wise Gross Amount or Rate info in terms price per piece or total gross amount generated by any SKU dispersed over multiple customers with relevant dates associated to track individual item performance relative to others within its category over time periods shortlisted/filtered appropriately.. Have an eye on items commonly utilized against offers or promotional discounts offered hence crafting strategies towards inventory optimization leading up-selling operations.?
    - Finally Use Overall ‘Stock’ details along all the P & L Data including Yearly Expenses_IIGF information record for takeaways which might be aimed towards essential cost cutting measures like switching amongst delivery options carefully chosen out of Shiprocket & INCREFF leadings away from manual inspections catering savings under support personnel outsourcing structures.?

    By employing a comprehensive understanding on how our internal subsidiaries perform globally unless attached respective audits may provide us remarkably lower operational costs servicing confidence; costing far lesser than being incurred taking into account entire pallet shipments tracking sheets representing current level supply chains efficiencies achieved internally., then one may finally scale profits exponentially increases cut down unseen losses followed up introducing newer marketing campaigns necessarily tailored according playing around multiple goods based spectrums due powerful backing suitable transportation boundaries set carefully

    Research Ideas

    • Analysing the difference in profitability between sales made through Shiprocket and INCREFF. This data can be used to see where the biggest profit margins lie, and strategize accordingly.
    • Examining the Complete Cost structure of a product with all its components and their contribution towards revenue or profitability, i.e., TP 1 & 2, MRP Old & Final MRP Old together with Platform based MRP - Amazon, Myntra and Paytm etc., Currency based Profit Margin etc.
    • Building a predictive model using Machine Learning by leveraging historical data to predict future sales volume and profits for e-commerce products across multiple categories/devices/platforms such as Amazon, Flipkart, Myntra etc as well providing m...
  2. h

    asos-e-commerce-dataset

    • huggingface.co
    Updated Mar 11, 2023
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    Unique Data (2023). asos-e-commerce-dataset [Dataset]. https://huggingface.co/datasets/UniqueData/asos-e-commerce-dataset
    Explore at:
    Dataset updated
    Mar 11, 2023
    Authors
    Unique Data
    License

    Attribution-NonCommercial-NoDerivs 4.0 (CC BY-NC-ND 4.0)https://creativecommons.org/licenses/by-nc-nd/4.0/
    License information was derived automatically

    Description

    Asos

    Using web scraping, we collected information on over 30,845 clothing items from the Asos website. The dataset can be applied in E-commerce analytics in the fashion industry.

      💴 For Commercial Usage: To discuss your requirements, learn about the price and buy the dataset, leave a request on our website to buy the dataset
    
    
    
    
    
    
      Dataset Info
    

    For each item, we extracted:

    url - link to the item on the website name - item's name size - sizes available on the… See the full description on the dataset page: https://huggingface.co/datasets/UniqueData/asos-e-commerce-dataset.

  3. Looker Ecommerce BigQuery Dataset

    • kaggle.com
    Updated Jan 18, 2024
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    Mustafa Keser (2024). Looker Ecommerce BigQuery Dataset [Dataset]. https://www.kaggle.com/datasets/mustafakeser4/looker-ecommerce-bigquery-dataset
    Explore at:
    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    Jan 18, 2024
    Dataset provided by
    Kagglehttp://kaggle.com/
    Authors
    Mustafa Keser
    Description

    Looker Ecommerce Dataset Description

    CSV version of Looker Ecommerce Dataset.

    Overview Dataset in BigQuery TheLook is a fictitious eCommerce clothing site developed by the Looker team. The dataset contains information >about customers, products, orders, logistics, web events and digital marketing campaigns. The contents of this >dataset are synthetic, and are provided to industry practitioners for the purpose of product discovery, testing, and >evaluation. This public dataset is hosted in Google BigQuery and is included in BigQuery's 1TB/mo of free tier processing. This >means that each user receives 1TB of free BigQuery processing every month, which can be used to run queries on >this public dataset. Watch this short video to learn how to get started quickly using BigQuery to access public >datasets.

    1. distribution_centers.csv

    • Columns:
      • id: Unique identifier for each distribution center.
      • name: Name of the distribution center.
      • latitude: Latitude coordinate of the distribution center.
      • longitude: Longitude coordinate of the distribution center.

    2. events.csv

    • Columns:
      • id: Unique identifier for each event.
      • user_id: Identifier for the user associated with the event.
      • sequence_number: Sequence number of the event.
      • session_id: Identifier for the session during which the event occurred.
      • created_at: Timestamp indicating when the event took place.
      • ip_address: IP address from which the event originated.
      • city: City where the event occurred.
      • state: State where the event occurred.
      • postal_code: Postal code of the event location.
      • browser: Web browser used during the event.
      • traffic_source: Source of the traffic leading to the event.
      • uri: Uniform Resource Identifier associated with the event.
      • event_type: Type of event recorded.

    3. inventory_items.csv

    • Columns:
      • id: Unique identifier for each inventory item.
      • product_id: Identifier for the associated product.
      • created_at: Timestamp indicating when the inventory item was created.
      • sold_at: Timestamp indicating when the item was sold.
      • cost: Cost of the inventory item.
      • product_category: Category of the associated product.
      • product_name: Name of the associated product.
      • product_brand: Brand of the associated product.
      • product_retail_price: Retail price of the associated product.
      • product_department: Department to which the product belongs.
      • product_sku: Stock Keeping Unit (SKU) of the product.
      • product_distribution_center_id: Identifier for the distribution center associated with the product.

    4. order_items.csv

    • Columns:
      • id: Unique identifier for each order item.
      • order_id: Identifier for the associated order.
      • user_id: Identifier for the user who placed the order.
      • product_id: Identifier for the associated product.
      • inventory_item_id: Identifier for the associated inventory item.
      • status: Status of the order item.
      • created_at: Timestamp indicating when the order item was created.
      • shipped_at: Timestamp indicating when the order item was shipped.
      • delivered_at: Timestamp indicating when the order item was delivered.
      • returned_at: Timestamp indicating when the order item was returned.

    5. orders.csv

    • Columns:
      • order_id: Unique identifier for each order.
      • user_id: Identifier for the user who placed the order.
      • status: Status of the order.
      • gender: Gender information of the user.
      • created_at: Timestamp indicating when the order was created.
      • returned_at: Timestamp indicating when the order was returned.
      • shipped_at: Timestamp indicating when the order was shipped.
      • delivered_at: Timestamp indicating when the order was delivered.
      • num_of_item: Number of items in the order.

    6. products.csv

    • Columns:
      • id: Unique identifier for each product.
      • cost: Cost of the product.
      • category: Category to which the product belongs.
      • name: Name of the product.
      • brand: Brand of the product.
      • retail_price: Retail price of the product.
      • department: Department to which the product belongs.
      • sku: Stock Keeping Unit (SKU) of the product.
      • distribution_center_id: Identifier for the distribution center associated with the product.

    7. users.csv

    • Columns:
      • id: Unique identifier for each user.
      • first_name: First name of the user.
      • last_name: Last name of the user.
      • email: Email address of the user.
      • age: Age of the user.
      • gender: Gender of the user.
      • state: State where t...
  4. ECommerce Data Analysis

    • kaggle.com
    Updated Jan 1, 2024
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    M Mohaiminul Islam (2024). ECommerce Data Analysis [Dataset]. https://www.kaggle.com/datasets/mmohaiminulislam/ecommerce-data-analysis
    Explore at:
    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    Jan 1, 2024
    Dataset provided by
    Kagglehttp://kaggle.com/
    Authors
    M Mohaiminul Islam
    License

    MIT Licensehttps://opensource.org/licenses/MIT
    License information was derived automatically

    Description

    Objectives:

    • I leveraged advanced data visualization techniques to extract valuable insights from a comprehensive dataset. By visualizing sales patterns, customer behavior, and product trends, I identified key growth opportunities and provided actionable recommendations to optimize business strategies and enhance overall performance. you can find the GitHub repo here Link to GitHub Repository.

    Data Description:

    there are exactly 6 table and 1 is a fact table and the rest of them are dimension tables: Fact Table:

    payment_key:
      Description: An identifier representing the payment transaction associated with the fact.
      Use Case: This key links to a payment dimension table, providing details about the payment method and related information.
    
    customer_key:
      Description: An identifier representing the customer associated with the fact.
      Use Case: This key links to a customer dimension table, providing details about the customer, such as name, address, and other customer-specific information.
    
    time_key:
      Description: An identifier representing the time dimension associated with the fact.
      Use Case: This key links to a time dimension table, providing details about the time of the transaction, such as date, day of the week, and month.
    
    item_key:
      Description: An identifier representing the item or product associated with the fact.
      Use Case: This key links to an item dimension table, providing details about the product, such as category, sub-category, and product name.
    
    store_key:
      Description: An identifier representing the store or location associated with the fact.
      Use Case: This key links to a store dimension table, providing details about the store, such as location, store name, and other store-specific information.
    
    quantity:
      Description: The quantity of items sold or involved in the transaction.
      Use Case: Represents the amount or number of items associated with the transaction.
    
    unit:
      Description: The unit or measurement associated with the quantity (e.g., pieces, kilograms).
      Use Case: Specifies the unit of measurement for the quantity.
    
    unit_price:
      Description: The price per unit of the item.
      Use Case: Represents the cost or price associated with each unit of the item.
    
    total_price:
      Description: The total price of the transaction, calculated as the product of quantity and unit price.
      Use Case: Represents the overall cost or revenue generated by the transaction.
    

    Customer Table: customer_key:

    Description: An identifier representing a unique customer.
    Use Case: Serves as the primary key to link with the fact table, allowing for easy and efficient retrieval of customer-specific information.
    

    name:

    Description: The name of the customer.
    Use Case: Captures the personal or business name of the customer for identification and reference purposes.
    

    contact_no:

    Description: The contact number associated with the customer.
    Use Case: Stores the phone number or contact details for communication or outreach purposes.
    

    nid:

    Description: The National ID (NID) or a unique identification number for the customer.
    

    Item Table: item_key:

    Description: An identifier representing a unique item or product.
    Use Case: Serves as the primary key to link with the fact table, enabling retrieval of detailed information about specific items in transactions.
    

    item_name:

    Description: The name or title of the item.
    Use Case: Captures the descriptive name of the item, providing a recognizable label for the product.
    

    desc:

    Description: A description of the item.
    Use Case: Contains additional details about the item, such as features, specifications, or any relevant information.
    

    unit_price:

    Description: The price per unit of the item.
    Use Case: Represents the cost or price associated with each unit of the item.
    

    man_country:

    Description: The country where the item is manufactured.
    Use Case: Captures the origin or manufacturing location of the item.
    

    supplier:

    Description: The supplier or vendor providing the item.
    Use Case: Stores the name or identifier of the supplier, facilitating tracking of item sources.
    

    unit:

    Description: The unit of measurement associated with the item (e.g., pieces, kilograms).
    

    Store Table: store_key:

    Description: An identifier representing a unique store or location.
    Use Case: Serves as the primary key to link with the fact table, allowing for easy retrieval of information about transactions associated with specific stores.
    

    division:

    Description: The administrative division or region where the store is located.
    Use Case: Captures the broader geographical area in which...
    
  5. Data from: E-commerce and ICT activity

    • ons.gov.uk
    • cy.ons.gov.uk
    xlsx
    Updated Feb 5, 2021
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    Office for National Statistics (2021). E-commerce and ICT activity [Dataset]. https://www.ons.gov.uk/businessindustryandtrade/itandinternetindustry/datasets/ictactivityofukbusinessesecommerceandictactivity
    Explore at:
    xlsxAvailable download formats
    Dataset updated
    Feb 5, 2021
    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

    Use of information and communication technology (ICT) and e-commerce activity by UK businesses. Annual data on e-commerce sales and how businesses are using the internet.

  6. Global retail e-commerce sales 2022-2028

    • statista.com
    • abripper.com
    • +1more
    Updated Jun 24, 2025
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    Statista (2025). Global retail e-commerce sales 2022-2028 [Dataset]. https://www.statista.com/statistics/379046/worldwide-retail-e-commerce-sales/
    Explore at:
    Dataset updated
    Jun 24, 2025
    Dataset authored and provided by
    Statistahttp://statista.com/
    Time period covered
    Feb 2025
    Area covered
    Worldwide
    Description

    In 2024, global retail e-commerce sales reached an estimated ************ U.S. dollars. Projections indicate a ** percent growth in this figure over the coming years, with expectations to come close to ************** dollars by 2028. World players Among the key players on the world stage, the American marketplace giant Amazon holds the title of the largest e-commerce player globally, with a gross merchandise value of nearly *********** U.S. dollars in 2024. Amazon was also the most valuable retail brand globally, followed by mostly American competitors such as Walmart and the Home Depot. Leading e-tailing regions E-commerce is a dormant channel globally, but nowhere has it been as successful as in Asia. In 2024, the e-commerce revenue in that continent alone was measured at nearly ************ U.S. dollars, outperforming the Americas and Europe. That year, the up-and-coming e-commerce markets also centered around Asia. The Philippines and India stood out as the swiftest-growing e-commerce markets based on online sales, anticipating a growth rate surpassing ** percent.

  7. Revenue of the e-commerce industry in the United States 2017-2029

    • statista.com
    • grusthub.com
    • +2more
    Updated Aug 15, 2025
    + more versions
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    Statista (2025). Revenue of the e-commerce industry in the United States 2017-2029 [Dataset]. https://www.statista.com/statistics/272391/us-retail-e-commerce-sales-forecast/
    Explore at:
    Dataset updated
    Aug 15, 2025
    Dataset authored and provided by
    Statistahttp://statista.com/
    Area covered
    United States
    Description

    The revenue in the e-commerce market in the United States was modeled to amount to 1.18 trillion U.S. dollars in 2024. Following a continuous upward trend, the revenue has risen by 754.29 billion U.S. dollars since 2017. Between 2024 and 2029, the revenue will rise by 655.91 billion U.S. dollars, continuing its consistent upward trajectory.Further information about the methodology, more market segments, and metrics can be found on the dedicated Market Insights page on eCommerce.

  8. Cleaned-Data Pakistan's Largest Ecommerce Dataset

    • kaggle.com
    Updated Mar 25, 2023
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    umaraziz97 (2023). Cleaned-Data Pakistan's Largest Ecommerce Dataset [Dataset]. https://www.kaggle.com/datasets/umaraziz97/cleaned-data-pakistans-largest-ecommerce-dataset
    Explore at:
    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    Mar 25, 2023
    Dataset provided by
    Kagglehttp://kaggle.com/
    Authors
    umaraziz97
    Area covered
    Pakistan
    Description

    Pakistan’s largest ecommerce data – Power BI Report

    Dataset Link: pakistan’s_largest_ecommerce_dataset Cleaned Data: Cleaned_Pakistan’s_largest_ecommerce_dataset

    Raw Data:

    Rows: 584525 **Columns: **21

    Process:

    All the raw data transformed and saved in new Excel file Working – Pakistan Largest Ecommerce Dataset

    Processed Data:

    Rows: 582250 Columns: 22 Visualization: Here is the link of Visualization report link: Pakistan-s-largest-ecommerce-data-Power-BI-Data-Visualization-Report

    Conclusion:

    In categories Mobiles & Tables make more money by selling highest no of products and also providing highest amount of discount on products. On the other side Men’s Fashion Category has sell second highest no of products but it can’t generate money with that ratio, may be the prices of individual products is a good reason behind that. And in orders details we experience Mobiles & Tablets have highest no of canceled orders but completed orders are almost same as Men’s Fashion. We have mostly completed orders but have huge no of canceled orders. In payment methods cod has most no of completed order and mostly canceled orders have payment method Easyaxis.

  9. F

    E-Commerce Retail Sales

    • fred.stlouisfed.org
    json
    Updated Aug 19, 2025
    + more versions
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    (2025). E-Commerce Retail Sales [Dataset]. https://fred.stlouisfed.org/series/ECOMNSA
    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 (ECOMNSA) from Q4 1999 to Q2 2025 about e-commerce, retail trade, sales, retail, and USA.

  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
    Mexico, Canada, Malta, Lao People's Democratic Republic, Northern Mariana Islands, Korea (Democratic People's Republic of), Italy, Austria, Fiji, Andorra
    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. h

    Bitext-retail-ecommerce-llm-chatbot-training-dataset

    • huggingface.co
    Updated Aug 6, 2024
    + more versions
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    Bitext (2024). Bitext-retail-ecommerce-llm-chatbot-training-dataset [Dataset]. https://huggingface.co/datasets/bitext/Bitext-retail-ecommerce-llm-chatbot-training-dataset
    Explore at:
    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    Aug 6, 2024
    Dataset authored and provided by
    Bitext
    License

    https://choosealicense.com/licenses/cdla-sharing-1.0/https://choosealicense.com/licenses/cdla-sharing-1.0/

    Description

    Bitext - Retail (eCommerce) Tagged Training Dataset for LLM-based Virtual Assistants

      Overview
    

    This hybrid synthetic dataset is designed to be used to fine-tune Large Language Models such as GPT, Mistral and OpenELM, and has been generated using our NLP/NLG technology and our automated Data Labeling (DAL) tools. The goal is to demonstrate how Verticalization/Domain Adaptation for the [Retail (eCommerce)] sector can be easily achieved using our two-step approach to LLM… See the full description on the dataset page: https://huggingface.co/datasets/bitext/Bitext-retail-ecommerce-llm-chatbot-training-dataset.

  12. Linear Regression E-commerce Dataset

    • kaggle.com
    zip
    Updated Sep 16, 2019
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    Saurabh Kolawale (2019). Linear Regression E-commerce Dataset [Dataset]. https://www.kaggle.com/datasets/kolawale/focusing-on-mobile-app-or-website
    Explore at:
    zip(44169 bytes)Available download formats
    Dataset updated
    Sep 16, 2019
    Authors
    Saurabh Kolawale
    Description

    This dataset is having data of customers who buys clothes online. The store offers in-store style and clothing advice sessions. Customers come in to the store, have sessions/meetings with a personal stylist, then they can go home and order either on a mobile app or website for the clothes they want.

    The company is trying to decide whether to focus their efforts on their mobile app experience or their website.

  13. d

    Ecommerce Data | Store Location Data | Global Coverage | 60M+ Contacts |...

    • datarade.ai
    Updated Jan 24, 2024
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    Exellius Systems (2024). Ecommerce Data | Store Location Data | Global Coverage | 60M+ Contacts | (Verified E-mail, Direct Dails)| Decision Makers Contacts| 20+ Attributes [Dataset]. https://datarade.ai/data-products/ecommerce-data-ecommerce-store-data-global-coverage-200-exellius-systems
    Explore at:
    .bin, .json, .xml, .csv, .xls, .sql, .txtAvailable download formats
    Dataset updated
    Jan 24, 2024
    Dataset authored and provided by
    Exellius Systems
    Area covered
    Lithuania, Saint Vincent and the Grenadines, Seychelles, Heard Island and McDonald Islands, Namibia, Spain, Gabon, Congo (Democratic Republic of the), Iran (Islamic Republic of), Jersey
    Description

    Revolutionize Customer Engagement with Our Comprehensive Ecommerce Data

    Our Ecommerce Data is designed to elevate your customer engagement strategies, providing you with unparalleled insights and precision targeting capabilities. With over 61 million global contacts, this dataset goes beyond conventional data, offering a unique blend of shopping cart links, business emails, phone numbers, and LinkedIn profiles. This comprehensive approach ensures that your marketing strategies are not just effective but also highly personalized, enabling you to connect with your audience on a deeper level.

    What Makes Our Ecommerce Data Stand Out?

    • Unique Features for Enhanced Targeting
      Our Ecommerce Data is distinguished by its depth and precision. Unlike many other datasets, it includes shopping cart links—a rare and valuable feature that provides you with direct insights into consumer behavior and purchasing intent. This information allows you to tailor your marketing efforts with unprecedented accuracy. Additionally, the integration of business emails, phone numbers, and LinkedIn profiles adds multiple layers to traditional contact data, enriching your understanding of clients and enabling more personalized engagement.

    • Robust and Reliable Data Sourcing
      We pride ourselves on our dual-sourcing strategy that ensures the highest levels of data accuracy and relevance:

      • Real-Time Information from 10 Active Publication Sites: Our databases are continuously updated with the latest information, sourced from ten active publication sites that provide real-time data.
      • Dedicated Contact Discovery Team: Complementing our automated sources, our dedicated Contact Discovery Team conducts thorough research and investigations, ensuring that every piece of data is accurate and reliable. This two-pronged approach guarantees that our Ecommerce Data is both up-to-date and relevant, providing you with a solid foundation for your business strategies.

      Primary Use Cases Across Industries

    Our Ecommerce Data is versatile and can be leveraged across various industries for multiple applications: - Precision Targeting in Marketing: Create personalized marketing campaigns based on detailed shopping cart activities, ensuring that your outreach resonates with individual customer preferences. - Sales Enrichment: Sales teams can benefit from enriched client profiles that include comprehensive contact information, enabling them to connect with key decision-makers more effectively. - Market Research and Analytics: Research and analytics departments can use this data for in-depth market studies and trend analyses, gaining valuable insights into consumer behavior and market dynamics.

    Global Coverage for Comprehensive Engagement

    Our Ecommerce Data spans across the globe, providing you with extensive reach and the ability to engage with customers in diverse regions: - North America: United States, Canada, Mexico - Europe: United Kingdom, Germany, France, Italy, Spain, Netherlands, Sweden, and more - Asia: China, Japan, India, South Korea, Singapore, Malaysia, and more - South America: Brazil, Argentina, Chile, Colombia, and more - Africa: South Africa, Nigeria, Kenya, Egypt, and more - Australia and Oceania: Australia, New Zealand - Middle East: United Arab Emirates, Saudi Arabia, Israel, Qatar, and more

    Comprehensive Employee and Revenue Size Information

    Our dataset also includes detailed information on: - Employee Size: Whether you’re targeting small businesses or large corporations, our data covers all employee sizes, from startups to global enterprises. - Revenue Size: Gain insights into companies across various revenue brackets, enabling you to segment the market more effectively and target your efforts where they will have the most impact.

    Seamless Integration into Broader Data Offerings

    Our Ecommerce Data is not just a standalone product; it is a critical piece of our broader data ecosystem. It seamlessly integrates with our comprehensive suite of business and consumer datasets, offering you a holistic approach to data-driven decision-making: - Tailored Packages: Choose customized data packages that meet your specific business needs, combining Ecommerce Data with other relevant datasets for a complete view of your market. - Holistic Insights: Whether you are looking for industry-specific details or a broader market overview, our integrated data solutions provide you with the insights necessary to stay ahead of the competition and make informed business decisions.

    Elevate Your Business Decisions with Our Ecommerce Data

    In essence, our Ecommerce Data is more than just a collection of contacts—it’s a strategic tool designed to give you a competitive edge in understanding and engaging your target audience. By leveraging the power of this comprehensive dataset, you can elevate your business decisions, enhance customer interactions, and navigate the digital landscape with confidence and insight.

  14. Furniture E-commerce Dataset – 140K+ Product Records with Categories &...

    • crawlfeeds.com
    csv, zip
    Updated Aug 20, 2025
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    Crawl Feeds (2025). Furniture E-commerce Dataset – 140K+ Product Records with Categories & Breadcrumbs (CSV for AI & NLP) [Dataset]. https://crawlfeeds.com/datasets/furniture-e-commerce-dataset-140k-product-records-with-categories-breadcrumbs-csv-for-ai-nlp
    Explore at:
    zip, csvAvailable download formats
    Dataset updated
    Aug 20, 2025
    Dataset authored and provided by
    Crawl Feeds
    License

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

    Description

    This furniture e-commerce dataset includes 140,000+ structured product records collected from online retail sources. Each entry provides detailed product information, categories, and breadcrumb hierarchies, making it ideal for AI, machine learning, and analytics applications.

    Key Features:

    • 📊 140K+ furniture product records in structured format

    • 🏷 Includes categories, subcategories, and breadcrumbs for taxonomy mapping

    • 📂 Delivered as a clean CSV file for easy integration

    • 🔎 Perfect dataset for AI, NLP, and machine learning model training

    Best Use Cases:
    LLM training & fine-tuning with domain-specific data
    Product classification datasets for AI models
    Recommendation engines & personalization in e-commerce
    Market research & furniture retail analytics
    Search optimization & taxonomy enrichment

    Why this dataset?

    • Large volume (140K+ furniture records) for robust training

    • Real-world e-commerce product data

    • Ready-to-use CSV, saving preprocessing time

    • Affordable licensing with bulk discounts for enterprise buyers

    Note:
    Each record in this dataset includes both a url (main product page) and a buy_url (the actual purchase page).
    The dataset is structured so that records are based on the buy_url, ensuring you get unique, actionable product-level data instead of just generic landing pages.

  15. Consumer opinions on conversational AI for customer service 2024

    • statista.com
    • tokrwards.com
    • +1more
    Updated Jun 3, 2025
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    Statista Research Department (2025). Consumer opinions on conversational AI for customer service 2024 [Dataset]. https://www.statista.com/topics/871/online-shopping/
    Explore at:
    Dataset updated
    Jun 3, 2025
    Dataset provided by
    Statistahttp://statista.com/
    Authors
    Statista Research Department
    Description

    One of the reasons behind AI-powered customer service is the preference for conversational AI over phone calls. In 2024, 82 percent of consumers stated they would use a chatbot instead of waiting for a customer representative to take their call. An outstanding 96 percent of surveyed shoppers believed that more companies should opt for chatbots over traditional customer support services.

  16. 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
    Explore at:
    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. .

  17. h

    Ecommerce

    • huggingface.co
    Updated Jun 17, 2024
    + more versions
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    arg (2024). Ecommerce [Dataset]. https://huggingface.co/datasets/hanaearg/Ecommerce
    Explore at:
    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    Jun 17, 2024
    Authors
    arg
    Description

    hanaearg/Ecommerce dataset hosted on Hugging Face and contributed by the HF Datasets community

  18. 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
    Area covered
    Kuwait, Singapore, Malaysia, Georgia, Cyprus, Lebanon, Bangladesh, Turkmenistan, Jordan, 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.

    ...

  19. F

    Bahasa Agent-Customer Chat Dataset for Retail & E-Commerce

    • futurebeeai.com
    wav
    Updated Aug 1, 2022
    + more versions
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    FutureBee AI (2022). Bahasa Agent-Customer Chat Dataset for Retail & E-Commerce [Dataset]. https://www.futurebeeai.com/dataset/text-dataset/bahasa-retail-domain-conversation-text-dataset
    Explore at:
    wavAvailable download formats
    Dataset updated
    Aug 1, 2022
    Dataset provided by
    FutureBeeAI
    Authors
    FutureBee AI
    License

    https://www.futurebeeai.com/policies/ai-data-license-agreementhttps://www.futurebeeai.com/policies/ai-data-license-agreement

    Dataset funded by
    FutureBeeAI
    Description

    Introduction

    The Bahasa Retail & E-Commerce Chat Dataset is a large-scale, high-quality collection of over 10,000 chat conversations between customers and call center agents, focused exclusively on Retail and E-Commerce domains. Designed to reflect real-world service interactions, this dataset supports the development of robust conversational AI and NLP models tailored for Bahasa-speaking audiences.

    Participant & Chat Overview

    Contributors: 150 native Bahasa speakers from the FutureBeeAI Crowd Community
    Chat Length: 300–700 words per conversation
    Turn Count: 50–150 dialogue turns across both participants
    Chat Types: Inbound and outbound
    Sentiment Coverage: Positive, neutral, and negative interaction outcomes

    Topic Diversity

    This dataset spans a wide range of Retail and E-Commerce conversation types:

    Inbound Chats (Customer-Initiated)
    Product inquiries
    Return or exchange requests
    Order cancellations
    Refunds and payment issues
    Membership or subscription queries
    Shipping, delivery, and more
    Outbound Chats (Agent-Initiated)
    Order confirmation and verification
    Cross-selling and upselling
    Loyalty program promotions
    Account updates
    Special offers and discounts
    Customer feedback and verification

    This diversity enables training of models that handle varied intents, scenarios, and outcomes within customer service workflows.

    Language Nuance & Realism

    The dataset is rich in linguistic diversity and mirrors real conversational tone and structure used in Bahasa-speaking regions:

    Personal & Brand Names: Culturally accurate naming conventions
    Local Elements: Realistic addresses, phone numbers, emails, currency references, and time/date formats
    Slang & Idioms: Local expressions, informal phrases, and customer service jargon
    Cultural Specificity: Region-aware vocabulary and tone

    This linguistic authenticity ensures the development of culturally fluent AI models for Bahasa Retail & E-Commerce use cases.

    Conversational Structure & Flow

    The conversations reflect natural dialogue dynamics and are organized into various types of interaction styles:

    Simple inquiries
    Detailed problem-solving discussions
    Transactional exchanges
    Follow-ups and status updates
    Advisory and assistance sessions

    Each conversation includes common dialogue stages such as:

    Greetings
    Customer authentication
    Information gathering
    <div style="margin-top:10px; margin-bottom: 10px; margin-left: 30px;font-weight: 300; display: flex; gap:

  20. E-commerce market size India 2014-2035

    • statista.com
    Updated Jun 13, 2025
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    Statista (2025). E-commerce market size India 2014-2035 [Dataset]. https://www.statista.com/statistics/792047/india-e-commerce-market-size/
    Explore at:
    Dataset updated
    Jun 13, 2025
    Dataset authored and provided by
    Statistahttp://statista.com/
    Area covered
    India
    Description

    Owing to the increasing internet user base and favorable market conditions, India has a lot of potential in the e-commerce industry. Growing at an exponential rate, the market value of the e-commerce industry in India was 125 billion U.S dollars in 2024. This number was estimated to reach 550 billion U.S. dollars by 2035. E-commerce platforms The competition in the e-commerce business in India is fierce. The market is filled with many local and foreign companies trying to hold the maximum market share. Flipkart and Amazon were the leading ecommerce retailers in the country. Moreover, electronics and apparel are the most popular shopping categories among Indian consumers. Growing trend of e-commerce Increasing growth in the e-commerce industry is attributed to several reasons. Digitizing the economy and the provision of affordable internet are a few of many reasons that boosted the growth of digital sales in India. In 2024, the e-commerce sales across India were estimated to increase by over 19 percent. Consequently, the revenue-generating potential has also increased. The average retail e-commerce revenue collected per user was more than 85 U.S dollars.

Share
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The Devastator (2022). E-Commerce Sales Dataset [Dataset]. https://www.kaggle.com/datasets/thedevastator/unlock-profits-with-e-commerce-sales-data/code
Organization logo

E-Commerce Sales Dataset

Analyzing and Maximizing Online Business Performance

Explore at:
CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
Dataset updated
Dec 3, 2022
Dataset provided by
Kagglehttp://kaggle.com/
Authors
The Devastator
Description

E-Commerce Sales Dataset

Analyzing and Maximizing Online Business Performance

By ANil [source]

About this dataset

This dataset provides an in-depth look at the profitability of e-commerce sales. It contains data on a variety of sales channels, including Shiprocket and INCREFF, as well as financial information on related expenses and profits. The columns contain data such as SKU codes, design numbers, stock levels, product categories, sizes and colors. In addition to this we have included the MRPs across multiple stores like Ajio MRP , Amazon MRP , Amazon FBA MRP , Flipkart MRP , Limeroad MRP Myntra MRP and PaytmMRP along with other key parameters like amount paid by customer for the purchase , rate per piece for every individual transaction Also we have added transactional parameters like Date of sale months category fulfilledby B2b Status Qty Currency Gross amt . This is a must-have dataset for anyone trying to uncover the profitability of e-commerce sales in today's marketplace

More Datasets

For more datasets, click here.

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  • 🚨 Your notebook can be here! 🚨!

How to use the dataset

This dataset provides a comprehensive overview of e-commerce sales data from different channels covering a variety of products. Using this dataset, retailers and digital marketers can measure the performance of their campaigns more accurately and efficiently.

The following steps help users make the most out of this dataset: - Analyze the general sales trends by examining info such as month, category, currency, stock level, and customer for each sale. This will give you an idea about how your e-commerce business is performing in each channel.
- Review the Shiprocket and INCREF data to compare and analyze profitability via different fulfilment methods. This comparison would enable you to make better decisions towards maximizing profit while minimizing costs associated with each method’s referral fees and fulfillment rates.
- Compare prices between various channels such as Amazon FBA MRP, Myntra MRP, Ajio MRP etc using the corresponding columns for each store (Amazon MRP etc). You can judge which stores are offering more profitable margins without compromising on quality by analyzing these pricing points in combination with other information related to product sales (TP1/TP2 - cost per piece).
- Look at customer specific data such as TP 1/TP 2 combination wise Gross Amount or Rate info in terms price per piece or total gross amount generated by any SKU dispersed over multiple customers with relevant dates associated to track individual item performance relative to others within its category over time periods shortlisted/filtered appropriately.. Have an eye on items commonly utilized against offers or promotional discounts offered hence crafting strategies towards inventory optimization leading up-selling operations.?
- Finally Use Overall ‘Stock’ details along all the P & L Data including Yearly Expenses_IIGF information record for takeaways which might be aimed towards essential cost cutting measures like switching amongst delivery options carefully chosen out of Shiprocket & INCREFF leadings away from manual inspections catering savings under support personnel outsourcing structures.?

By employing a comprehensive understanding on how our internal subsidiaries perform globally unless attached respective audits may provide us remarkably lower operational costs servicing confidence; costing far lesser than being incurred taking into account entire pallet shipments tracking sheets representing current level supply chains efficiencies achieved internally., then one may finally scale profits exponentially increases cut down unseen losses followed up introducing newer marketing campaigns necessarily tailored according playing around multiple goods based spectrums due powerful backing suitable transportation boundaries set carefully

Research Ideas

  • Analysing the difference in profitability between sales made through Shiprocket and INCREFF. This data can be used to see where the biggest profit margins lie, and strategize accordingly.
  • Examining the Complete Cost structure of a product with all its components and their contribution towards revenue or profitability, i.e., TP 1 & 2, MRP Old & Final MRP Old together with Platform based MRP - Amazon, Myntra and Paytm etc., Currency based Profit Margin etc.
  • Building a predictive model using Machine Learning by leveraging historical data to predict future sales volume and profits for e-commerce products across multiple categories/devices/platforms such as Amazon, Flipkart, Myntra etc as well providing m...
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