Note:- Only publicly available data can be worked upon
In today's ever-evolving Ecommerce landscape, success hinges on the ability to harness the power of data. APISCRAPY is your strategic ally, dedicated to providing a comprehensive solution for extracting critical Ecommerce data, including Ecommerce market data, Ecommerce product data, and Ecommerce datasets. With the Ecommerce arena being more competitive than ever, having a data-driven approach is no longer a luxury but a necessity.
APISCRAPY's forte lies in its ability to unearth valuable Ecommerce market data. We recognize that understanding the market dynamics, trends, and fluctuations is essential for making informed decisions.
APISCRAPY's AI-driven ecommerce data scraping service presents several advantages for individuals and businesses seeking comprehensive insights into the ecommerce market. Here are key benefits associated with their advanced data extraction technology:
Ecommerce Product Data: APISCRAPY's AI-driven approach ensures the extraction of detailed Ecommerce Product Data, including product specifications, images, and pricing information. This comprehensive data is valuable for market analysis and strategic decision-making.
Data Customization: APISCRAPY enables users to customize the data extraction process, ensuring that the extracted ecommerce data aligns precisely with their informational needs. This customization option adds versatility to the service.
Efficient Data Extraction: APISCRAPY's technology streamlines the data extraction process, saving users time and effort. The efficiency of the extraction workflow ensures that users can obtain relevant ecommerce data swiftly and consistently.
Realtime Insights: Businesses can gain real-time insights into the dynamic Ecommerce Market by accessing rapidly extracted data. This real-time information is crucial for staying ahead of market trends and making timely adjustments to business strategies.
Scalability: The technology behind APISCRAPY allows scalable extraction of ecommerce data from various sources, accommodating evolving data needs and handling increased volumes effortlessly.
Beyond the broader market, a deeper dive into specific products can provide invaluable insights. APISCRAPY excels in collecting Ecommerce product data, enabling businesses to analyze product performance, pricing strategies, and customer reviews.
To navigate the complexities of the Ecommerce world, you need access to robust datasets. APISCRAPY's commitment to providing comprehensive Ecommerce datasets ensures businesses have the raw materials required for effective decision-making.
Our primary focus is on Amazon data, offering businesses a wealth of information to optimize their Amazon presence. By doing so, we empower our clients to refine their strategies, enhance their products, and make data-backed decisions.
[Tags: Ecommerce data, Ecommerce Data Sample, Ecommerce Product Data, Ecommerce Datasets, Ecommerce market data, Ecommerce Market Datasets, Ecommerce Sales data, Ecommerce Data API, Amazon Ecommerce API, Ecommerce scraper, Ecommerce Web Scraping, Ecommerce Data Extraction, Ecommerce Crawler, Ecommerce data scraping, Amazon Data, Ecommerce web data]
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
## Overview
ECommerce Product 3 Products is a dataset for object detection tasks - it contains Televisions Phones Laptops annotations for 1,017 images.
## Getting Started
You can download this dataset for use within your own projects, or fork it into a workspace on Roboflow to create your own model.
## License
This dataset is available under the [CC BY 4.0 license](https://creativecommons.org/licenses/CC BY 4.0).
https://crawlfeeds.com/privacy_policyhttps://crawlfeeds.com/privacy_policy
This dataset is a sample extraction of product listings from Zoro.com, a leading industrial supply e-commerce platform. It provides structured product-level data that can be used for market research, price comparison engines, product matching models, and e-commerce analytics.
The sample includes a variety of products across tools, hardware, safety equipment, and industrial supplies — with clean, structured fields suitable for both analysis and model training.
Also available: Grainger Product Datasets – structured data from a top industrial supplier.
Submit your custom data requests via the Zoro products page or contact us directly at contact@crawlfeeds.com.
Ideal for previewing before requesting larger or full Zoro datasets
Building product comparison or search engines
Price intelligence and competitor monitoring
Product classification and attribute extraction
Training data for e-commerce AI models
This is a sample of a much larger dataset extracted from Zoro.com.
👉 Contact us to access full datasets or request custom category extractions.
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
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. The dataset is similar to SheIn E-Commerce Dataset.
💴 For Commercial Usage: To discuss your requirements, learn about the price and buy the dataset, leave a request on TrainingData to buy the dataset
Dataset Info
For each item, we extracted:
url - link to the item on the… See the full description on the dataset page: https://huggingface.co/datasets/TrainingDataPro/asos-e-commerce-dataset.
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.What is BigQuery .
Description: 👉 Download the dataset here This dataset is specifically designed for the classification of e-commerce products based on their images, forming a critical part of an experimental study aimed at improving product categorization using computer vision techniques. Accurate categorization is essential for e-commerce platforms as it directly influences customer satisfaction, enhances user experience, and optimizes sales by ensuring that products are presented in the correct categories.… See the full description on the dataset page: https://huggingface.co/datasets/gtsaidata/E-commerce-Product-Image-Classification-Dataset.
https://crawlfeeds.com/privacy_policyhttps://crawlfeeds.com/privacy_policy
Explore our comprehensive dataset of John Lewis and Partners e-commerce products, designed to provide valuable insights for data analysts, researchers, and businesses.
This dataset includes detailed product information such as names, descriptions, prices, categories, and images, making it ideal for market analysis, competitive research, and machine learning projects.
With structured and high-quality data, you can enhance your data-driven decisions and strategies effectively. Unlock the potential of John Lewis and Partners’ product data to stay ahead in the competitive e-commerce landscape.
Data format: XLSX
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?
Verified Profiles for Precision Engagement
Comprehensive Coverage of the APAC E-commerce Sector
Continuously Updated Datasets
Ethical and Compliant
Data Highlights:
Key Features of the Dataset:
Comprehensive E-commerce Business Profiles
Advanced Filters for Precision Campaigns
Regional and Sector-specific Insights
AI-Driven Enrichment
Strategic Use Cases:
Marketing Campaigns and Outreach
Partnership Development and Vendor Collaboration
Market Research and Competitive Analysis
Recruitment and Talent Acquisition
Why Choose Success.ai?
Best Price Guarantee
Seamless Integration
According to a survey on e-commerce and online shopping in Thailand as of January 2023, around ** percent of the respondents prefer to shop fashion products online. This was followed by beauty and personal care products with around **** percent of the survey participants.
https://creativecommons.org/publicdomain/zero/1.0/https://creativecommons.org/publicdomain/zero/1.0/
This dataset contains images of Television, Sofas, Jeans and T-shirt. It Actual raw and unstructured image data extracted from online sites.
All images are of different sites. You may also find some junk images in data for example in television dataset you will find the television remote images.
This dataset is not refined intentionally to make sure practitioners should get taste of What kind of data ML/Data Science Engineer get when they start working on any project in industry.
Automobile and auto parts was the e-commerce category with the highest expected year-over-year growth between 2021 and 2022. As of February 2022, car and auto parts retail e-commerce sales were forecast to increase over ** percent compared to the previous year. Food and beverage was the second fastest growing segment, at around ** percent. The average retail e-commerce growth across all categories would reach ** percent.
https://cubig.ai/store/terms-of-servicehttps://cubig.ai/store/terms-of-service
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.
Maximize your online sales potential with our e-commerce data and analytics solutions. Our comprehensive suite of data sources includes real-time information on market trends, consumer behavior, and product pricing. With our advanced analytics tools, you can unlock the power of data-driven insights to optimize your online sales strategy, improve customer engagement, and drive revenue growth.
Whether you want to identify new opportunities, streamline your operations, or stay ahead of the competition, our e-commerce data and analytics product can help you achieve your goals.
Sources: Cubus Official COS Boozt BIK BOK AS Royal Design Group Holding AB Bagaren och Kocken AB Rum21 Svenskt Tenn Kökets favoriter lannamobler.se KWA Garden furniture Confident Living Stalands Möbler Trendrum AB Svenssons Nordiska Galleriet Jotex Jollyroom Monki New Bubbleroom Sweden AB Wegot KitchenTime AB Lindex NA-KD.com Olsson & Gerthel Nordic Nest Bonprix Nederland Vero Moda Care of Carl Cervera Zoovillage ARKET Kappahl DesignTorget Mio AB Afound
Ahead of Tet 2024 in Vietnam, fashion was the e-commerce product category with the highest number of items sold on Shopee and TikTok Shop, amounting to approximately *** million products. Beauty products were also popular purchases during this time of the year, with the combined sales quantity from Shopee and TikTok Shop of almost ** million items in the country.
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
the absence of a unique global code for product identification negatively affects the Zero Moment of Truth (ZMOT) in customer decision-making.
We custom build crawlers to mine detailed product data from e-commerce sites and m-Commerce apps. Our customers typically use our data to understand how a business is performing, by looking at estimated GMVs, top-selling products, and average selling price etc. We can deliver the required data on weekly/monthly/quarterly bases, and output formats include csv/excel files, pdf reports, and direct data feeds via APIs.
The e-commerce technology market share is expected to increase by USD 10.57 billion from 2020 to 2025, and the market’s growth momentum will accelerate at a CAGR of 19.07%.
This e-commerce technology market research report provides valuable insights on the post-COVID-19 impact on the market, which will help companies evaluate their business approaches. Furthermore, this report extensively covers e-commerce technology market segmentation by application (B2C and B2B) and geography (North America, APAC, Europe, South America, and MEA). The e-commerce technology market report also offers information on several market vendors, including Adobe Inc., BigCommerce Holdings Inc., commercetools GmbH, HCL Technologies Ltd., Open Text Corp., Oracle Corp., Pitney Bowes Inc., Salesforce.com Inc., SAP SE, and Shopify Inc. among others.
What will the E-Commerce Technology Market Size be During the Forecast Period?
Download Report Sample to Unlock the e-Commerce Technology Market Size for the Forecast Period and Other Important Statistics
E-Commerce Technology Market: Key Drivers, Trends, and Challenges
The increasing e-commerce sales are notably driving the e-commerce technology market growth, although factors such as growing concerns over data privacy and security may impede the market growth. Our research analysts have studied the historical data and deduced the key market drivers and the COVID-19 pandemic's impact on the e-commerce technology industry. The holistic analysis of the drivers will help in deducing end goals and refining marketing strategies to gain a competitive edge.
Key E-Commerce Technology Market Driver
One of the key factors driving the e-commerce technology market is increasing e-commerce sales. The e-commerce industry is progressing quickly, owing to various factors, such as the growing tech-savvy population, increasing Internet penetration, and the rising use of smartphones. The demand for globally manufactured products is also fueling growth by generating cross-border e-commerce sales. Furthermore, the presence of various multiple payment options, such as credit and debit cards, Internet banking, electronic wallets, and cash-on-delivery (COD), has led to a paradigm shift in the purchasing patterns of people from brick-and-mortar stores to online shopping. Also, e-commerce platforms not only enable consumers to buy goods easily as they do not have the physical barriers involved in offline stores but also help them in making better and more informed decisions, as consumers can view multiple user reviews on the website before purchasing a product. The growth of the e-commerce sector directly impacts the e-commerce technology market. All these factors have increased the demand for e-commerce software and services from end-users. Hence, the growth of the e-commerce industry will boost the growth of the global e-commerce technology market during the forecast period.
Key E-Commerce Technology Market Trend
The rising focus on developing headless CMS is another factor supporting the e-commerce technology market growth in the forecast period. The increasing number of touchpoints for customers, such as IoT devices, smartphones, and progressive web apps, is making it difficult for legacy e-commerce websites to manage demand from customers. Even though most retailers have not embraced the IoT, more customers are exploring new product information through devices, such as IoT-enabled speakers, smart voice assistance, and in-store interfaces. To resolve this issue and provide a more effective user experience, vendors are offering a headless e-commerce architecture. Headless e-commerce architecture is a back-end-only content management system (CMS). Furthermore, vendors are offering headless CMS solutions to simplify e-commerce applications and provide flexible software packaging for their clients. For instance, Magento, a subsidiary of Adobe Inc., offers GraphQL, a flexible and performant application programming interface (API), which allows users to build custom front ends, including headless storefronts, advanced web applications (PWA), and mobile apps. Such developments are expected to provide high growth opportunities for market vendors during the forecast period.
Key E-Commerce Technology Market Challenge
Growing concerns over data privacy and security will be a major challenge for the e-commerce technology market during the forecast period. Data privacy and security risks are the major barriers to the adoption of e-commerce technology. Hackers are constantly trying to search for vulnerabilities and loopholes in e-commerce infrastructure. Although e-commerce players, vendors, and end-user organizations try to adopt proactive prevention plans to counter security breaches within their systems, the rise in the number of e-commerce website hacking and ransomware attacks has resulted in financial and data loss for companies. In addition, public c
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
We offer a dataset comprising approximately 1,198,398 unique products sourced from Mercado Libre Perú. This dataset was collected from the platform's public API spanning from February 2022 to May 2023.
Files description:
ml_db_raw.db : Raw dataset stored in a SQLite Database
ml_db_sample.csv : A sample of only 5 electronic categories
test.csv* : 20% of data from ml_db_sample.csv
train.csv* : 80% of data from ml_db_sample.csv
Attributes description:
CatX : Category Name for X level
CatX_code : Category Code given by Mercado Libre for X level
id : Unique product identifier
title : Original product title
price : Product price
currency : Product currency (PEN, USD)
link : Product link
insert_date : Web scraping date
mlp_updated_date : Mercado Libre product update date
text : Cleaned product title
taxonomy : Category path from general to specific categories
https://www.verifiedmarketresearch.com/privacy-policy/https://www.verifiedmarketresearch.com/privacy-policy/
E-Commerce Market size was valued at USD 15.93 Trillion in 2024 and is projected to reach USD 88.63 Trillion by 2031, growing at a CAGR of 26.40% from 2024 to 2031.
The e-commerce market is driven by the growing penetration of the internet and smartphones, enabling greater access to online platforms. Shifting consumer preferences towards convenient and contactless shopping experiences have accelerated digital adoption, particularly following the COVID-19 pandemic.
Technological advancements such as secure payment gateways, artificial intelligence, and personalized shopping experiences are enhancing user engagement. The expansion of logistics and last-mile delivery services ensures faster and more reliable product delivery. Additionally, the proliferation of social media and influencer marketing has amplified consumer reach and brand visibility, while increasing cross-border trade and globalization are further fueling market growth.
https://creativecommons.org/publicdomain/zero/1.0/https://creativecommons.org/publicdomain/zero/1.0/
This dataset contains 4 million synthetic e-commerce product reviews across 8 popular categories, including:
Each row includes:
- product_id
: Synthetic product identifier
- product_title
: Product name (e.g., “Wireless Bluetooth Earbuds”)
- category
: One of 8 categories
- review_text
: Realistic user review
- rating
: Integer (1 to 5 stars)
- sentiment
: Sentiment derived from review text (Positive, Neutral, Negative)
CSV format (UTF-8 encoded)
Public Domain – CC0 1.0 Universal
Note:- Only publicly available data can be worked upon
In today's ever-evolving Ecommerce landscape, success hinges on the ability to harness the power of data. APISCRAPY is your strategic ally, dedicated to providing a comprehensive solution for extracting critical Ecommerce data, including Ecommerce market data, Ecommerce product data, and Ecommerce datasets. With the Ecommerce arena being more competitive than ever, having a data-driven approach is no longer a luxury but a necessity.
APISCRAPY's forte lies in its ability to unearth valuable Ecommerce market data. We recognize that understanding the market dynamics, trends, and fluctuations is essential for making informed decisions.
APISCRAPY's AI-driven ecommerce data scraping service presents several advantages for individuals and businesses seeking comprehensive insights into the ecommerce market. Here are key benefits associated with their advanced data extraction technology:
Ecommerce Product Data: APISCRAPY's AI-driven approach ensures the extraction of detailed Ecommerce Product Data, including product specifications, images, and pricing information. This comprehensive data is valuable for market analysis and strategic decision-making.
Data Customization: APISCRAPY enables users to customize the data extraction process, ensuring that the extracted ecommerce data aligns precisely with their informational needs. This customization option adds versatility to the service.
Efficient Data Extraction: APISCRAPY's technology streamlines the data extraction process, saving users time and effort. The efficiency of the extraction workflow ensures that users can obtain relevant ecommerce data swiftly and consistently.
Realtime Insights: Businesses can gain real-time insights into the dynamic Ecommerce Market by accessing rapidly extracted data. This real-time information is crucial for staying ahead of market trends and making timely adjustments to business strategies.
Scalability: The technology behind APISCRAPY allows scalable extraction of ecommerce data from various sources, accommodating evolving data needs and handling increased volumes effortlessly.
Beyond the broader market, a deeper dive into specific products can provide invaluable insights. APISCRAPY excels in collecting Ecommerce product data, enabling businesses to analyze product performance, pricing strategies, and customer reviews.
To navigate the complexities of the Ecommerce world, you need access to robust datasets. APISCRAPY's commitment to providing comprehensive Ecommerce datasets ensures businesses have the raw materials required for effective decision-making.
Our primary focus is on Amazon data, offering businesses a wealth of information to optimize their Amazon presence. By doing so, we empower our clients to refine their strategies, enhance their products, and make data-backed decisions.
[Tags: Ecommerce data, Ecommerce Data Sample, Ecommerce Product Data, Ecommerce Datasets, Ecommerce market data, Ecommerce Market Datasets, Ecommerce Sales data, Ecommerce Data API, Amazon Ecommerce API, Ecommerce scraper, Ecommerce Web Scraping, Ecommerce Data Extraction, Ecommerce Crawler, Ecommerce data scraping, Amazon Data, Ecommerce web data]