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This dataset contains demographic information about customers who have made purchases in a store, including their name, IP address, region, age, items purchased, and total amount spent. Furthermore, this data can provide insights into customer shopping behaviour for the store in question - from their geographical information to the types of products they purchase. With detailed demographic data like this at hand it is possible to make strategic decisions regarding target customers as well as developing specific marketing campaigns or promotions tailored to meet their needs and interests. By gaining deeper understanding of customer habits through this dataset we unlock more possibilities for businesses seeking higher engagement levels with shoppers
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This dataset includes information such as customer's names, IP address, age, items purchased and amount spent. This data can be used to uncover patterns in spending behavior of shoppers from different areas or regions across demographics like age group or gender.
- Analyze customer shopping trends based on age and region to maximize targetted advertising.
- Analyze the correlation between customer spending habits based on store versus online behavior.
- Use IP addresses to track geographical trends in items purchased from a particular online store to identify new markets for targeted expansion
If you use this dataset in your research, please credit the original authors. Data Source
See the dataset description for more information.
File: Demographic_Data_Orig.csv | Column name | Description | |:---------------|:------------------------------------------------------------------------------------------------| | full.name | The full name of the customer. (String) | | ip.address | The IP address of the customer. (String) | | region | The region of residence of the customer. (String) | | in.store | A boolean value indicating whether the customer made the purchase in-store or online. (Boolean) | | age | The age of the customer. (Integer) | | items | The number of items purchased by the customer. (Integer) | | amount | The total amount spent by the customer. (Float) |
If you use this dataset in your research, please credit the original authors. If you use this dataset in your research, please credit Joseph Nowicki.
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1) Data Introduction ⢠The Retail Sales Dataset is data designed to analyze retail sales and customer behavior in a virtual retail environment, including transaction history, customer demographics, and product information.
2) Data Utilization (1) Retail Sales Dataset has characteristics that: ⢠This dataset details retail sales and customer characteristics such as transaction ID, date, customer ID, gender, age, product category, purchase volume, unit price, total amount. (2) Retail Sales Dataset can be used to: ⢠Customer Segmentation and Marketing Strategy: By analyzing purchase patterns by age, gender, and product category, you can use them to establish a customized marketing strategy. ⢠Sales Trends and Inventory Management: It can be used to streamline retail operations such as inventory management and promotion planning by analyzing sales trends by period and product.
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TwitterSuccess.aiās Retail Data for the Retail Sector in North America offers a comprehensive dataset designed to connect businesses with key players across the diverse retail industry. Covering everything from department stores and supermarkets to specialty shops and e-commerce platforms, this dataset provides verified contact details, business locations, and leadership profiles for retail companies in the United States, Canada, and Mexico.
With access to over 170 million verified professional profiles and 30 million company profiles, Success.ai ensures your outreach, marketing, and business development efforts are powered by accurate, continuously updated, and AI-validated data.
Backed by our Best Price Guarantee, this solution empowers businesses to thrive in North Americaās competitive retail landscape.
Why Choose Success.aiās Retail Data for North America?
Verified Contact Data for Precision Outreach
Comprehensive Coverage Across Retail Segments
Continuously Updated Datasets
Ethical and Compliant
Data Highlights:
Key Features of the Dataset:
Retail Decision-Maker Profiles
Advanced Filters for Precision Targeting
Market Trends and Operational Insights
AI-Driven Enrichment
Strategic Use Cases:
Sales and Lead Generation
Market Research and Consumer Insights
E-Commerce and Digital Strategy Development
Recruitment and Workforce Solutions
Why Choose Success.ai?
Best Price Guarantee
Seamless Integration
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This dataset contains 150,000 retail interaction records representing customer journeys in both e-commerce and in-store environments. It captures detailed behavioral, demographic, and product-related information to support research in product sales history, customer demographics, purchase patterns, personalized shopping experiences, customer behavior analysis, and predictive modeling.
Each row corresponds to a unique customerāproduct interaction, including session details, browsing or purchasing behavior, and applied discounts. The purchase column serves as the binary target variable (1 = purchased, 0 = not purchased), making the dataset suitable for various classification and recommendation tasks.
Key Features
Size: 150,000 rows Ć 19 columns
Target Column: purchase (binary: 1 = purchased, 0 = not purchased)
Data Types:
Categorical: User ID, product ID, interaction type, device type, product category, brand, location, gender
Numerical: Price, discount, age, loyalty score, previous purchase count, average purchase value
Temporal: Timestamp (to study trends and patterns)
Text: Search keywords
Behavioral Data: Interaction type (view, click, add to cart, purchase), purchase history statistics
Product Metadata: Category, brand, price, discount percentage
User Demographics: Age, gender, loyalty score
Applications:
Retail personalization
Purchase prediction
Customer segmentation
Behavioral pattern analysis
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TwitterDemographics Analysis with Consumer Edge Credit & Debit Card Transaction Data
Consumer Edge is a leader in alternative consumer data for public and private investors and corporate clients. CE Transact Signal is an aggregated transaction feed that includes consumer transaction data on 100M+ credit and debit cards, including 14M+ active monthly users. Capturing online, offline, and 3rd-party consumer spending on public and private companies, data covers 12K+ merchants and deep demographic and geographic breakouts. Track detailed consumer behavior patterns, including retention, purchase frequency, and cross shop in addition to total spend, transactions, and dollars per transaction.
Consumer Edgeās consumer transaction datasets offer insights into industries across consumer and discretionary spend such as: ⢠Apparel, Accessories, & Footwear ⢠Automotive ⢠Beauty ⢠Commercial ā Hardlines ⢠Convenience / Drug / Diet ⢠Department Stores ⢠Discount / Club ⢠Education ⢠Electronics / Software ⢠Financial Services ⢠Full-Service Restaurants ⢠Grocery ⢠Ground Transportation ⢠Health Products & Services ⢠Home & Garden ⢠Insurance ⢠Leisure & Recreation ⢠Limited-Service Restaurants ⢠Luxury ⢠Miscellaneous Services ⢠Online Retail ā Broadlines ⢠Other Specialty Retail ⢠Pet Products & Services ⢠Sporting Goods, Hobby, Toy & Game ⢠Telecom & Media ⢠Travel
This data sample illustrates how Consumer Edge data can be used to compare demographics breakdown (age and income excluded in this free sample view) for one company vs. a competitor for a set period of time (Ex: How do demographics like wealth, ethnicity, children in the household, homeowner status, and political affiliation differ for Walmart vs. Target shopper?).
Inquire about a CE subscription to perform more complex, near real-time demographics analysis functions on public tickers and private brands like: ⢠Analyze a demographic, like age or income, within a state for a company in 2023 ⢠Compare all of a companyās demographics to all of that companyās competitors through most recent history
Consumer Edge offers a variety of datasets covering the US and Europe (UK, Austria, France, Germany, Italy, Spain), with subscription options serving a wide range of business needs.
Use Case: Demographics Analysis
Problem A global retailer wants to understand company performance by age group.
Solution Consumer Edge transaction data can be used to analyze shopper transactions by age group to understand: ⢠Overall sales growth by age group over time ⢠Percentage sales growth by age group over time ⢠Sales by age group vs. competitors
Impact Marketing and Consumer Insights were able to: ⢠Develop weekly reporting KPI's on key demographic drivers of growth for company-wide reporting ⢠Reduce investment in underperforming age groups, both online and offline ⢠Determine retention by age group to refine campaign strategy ⢠Understand how different age groups are performing compared to key competitors
Corporate researchers and consumer insights teams use CE Vision for:
Corporate Strategy Use Cases ⢠Ecommerce vs. brick & mortar trends ⢠Real estate opportunities ⢠Economic spending shifts
Marketing & Consumer Insights ⢠Total addressable market view ⢠Competitive threats & opportunities ⢠Cross-shopping trends for new partnerships ⢠Demo and geo growth drivers ⢠Customer loyalty & retention
Investor Relations ⢠Shareholder perspective on brand vs. competition ⢠Real-time market intelligence ⢠M&A opportunities
Most popular use cases for private equity and venture capital firms include: ⢠Deal Sourcing ⢠Live Diligences ⢠Portfolio Monitoring
Public and private investors can leverage insights from CEās synthetic data to assess investment opportunities, while consumer insights, marketing, and retailers can gain visibility into transaction dataās potential for competitive analysis, understanding shopper behavior, and capturing market intelligence.
Most popular use cases among public and private investors include: ⢠Track Key KPIs to Company-Reported Figures ⢠Understanding TAM for Focus Industries ⢠Competitive Analysis ⢠Evaluating Public, Private, and Soon-to-be-Public Companies ⢠Ability to Explore Geographic & Regional Differences ⢠Cross-Shop & Loyalty ⢠Drill Down to SKU Level & Full Purchase Details ⢠Customer lifetime value ⢠Earnings predictions ⢠Uncovering macroeconomic trends ⢠Analyzing market share ⢠Performance benchmarking ⢠Understanding share of wallet ⢠Seeing subscription trends
Fields Include: ⢠Day ⢠Merchant ⢠Subindustry ⢠Industry ⢠Spend ⢠Transactions ⢠Spend per Transaction (derivable) ⢠Cardholder State ⢠Cardholder CBSA ⢠Cardholder CSA ⢠Age ⢠Income ⢠Wealth ⢠Ethnicity ⢠Political Affiliation ⢠Children in Household ⢠Adults in Household ⢠Homeowner vs. Renter ⢠Business Owner ⢠Retention by First-Shopped Period ...
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TwitterGapMaps GIS data for USA and Canada sourced from Applied Geographic Solutions (AGS) includes an extensive range of the highest quality demographic and lifestyle segmentation products. All databases are derived from superior source data and the most sophisticated, refined, and proven methodologies.
GIS Data attributes include:
Latest Estimates and Projections The estimates and projections database includes a wide range of core demographic data variables for the current year and 5- year projections, covering five broad topic areas: population, households, income, labor force, and dwellings.
Crime Risk Crime Risk is the result of an extensive analysis of a rolling seven years of FBI crime statistics. Based on detailed modeling of the relationships between crime and demographics, Crime Risk provides an accurate view of the relative risk of specific crime types (personal, property and total) at the block and block group level.
Panorama Segmentation AGS has created a segmentation system for the United States called Panorama. Panorama has been coded with the MRI Survey data to bring you Consumer Behavior profiles associated with this segmentation system.
Business Counts Business Counts is a geographic summary database of business establishments, employment, occupation and retail sales.
Non-Resident Population The AGS non-resident population estimates utilize a wide range of data sources to model the factors which drive tourists to particular locations, and to match that demand with the supply of available accommodations.
Consumer Expenditures AGS provides current year and 5-year projected expenditures for over 390 individual categories that collectively cover almost 95% of household spending.
Retail Potential This tabulation utilizes the Census of Retail Trade tables which cross-tabulate store type by merchandise line.
Environmental Risk The environmental suite of data consists of several separate database components including: -Weather Risks -Seismological Risks -Wildfire Risk -Climate -Air Quality -Elevation and terrain
Primary Use Cases for GapMaps GIS Data:
Integrate AGS demographic data with your existing GIS or BI platform to generate powerful visualizations.
Finance / Insurance (eg. Hedge Funds, Investment Advisors, Investment Research, REITs, Private Equity, VC)
Network Planning
Customer (Risk) Profiling for insurance/loan approvals
Target Marketing
Competitive Analysis
Market Optimization
Commercial Real-Estate (Brokers, Developers, Investors, Single & Multi-tenant O/O)
Tenant Recruitment
Target Marketing
Market Potential / Gap Analysis
Marketing / Advertising (Billboards/OOH, Marketing Agencies, Indoor Screens)
Customer Profiling
Target Marketing
Market Share Analysis
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As per our latest research, the global shopper demographics analytics market size in 2024 is valued at USD 5.3 billion, with a robust CAGR of 14.7% projected through the forecast period. By 2033, the market is expected to reach USD 17.2 billion, reflecting the accelerating adoption of advanced analytics solutions in retail and related sectors. The primary growth driver is the increasing need for retailers and brands to understand and predict consumer behavior in an era characterized by omnichannel shopping and intense competition.
The growth of the shopper demographics analytics market is significantly propelled by the retail sectorās digital transformation. Retailers are increasingly leveraging analytics to gain granular insights into customer demographics, preferences, and purchasing behavior. The integration of artificial intelligence (AI) and machine learning (ML) into analytics platforms has enabled businesses to process vast amounts of data in real time, offering actionable insights that drive personalized marketing and operational efficiency. As consumer expectations for tailored experiences continue to rise, retailers are investing heavily in shopper analytics to enhance customer engagement, improve inventory management, and optimize store layouts, further fueling market expansion.
Another key growth factor is the proliferation of e-commerce and the corresponding surge in online data generation. E-commerce platforms are uniquely positioned to collect detailed demographic and behavioral data, which can be analyzed to segment customers, predict purchasing trends, and personalize marketing campaigns. The adoption of cloud-based analytics solutions has further democratized access to advanced analytics, allowing even small and medium-sized enterprises (SMEs) to harness the power of shopper demographics analytics. Moreover, the integration of analytics with customer relationship management (CRM) and point-of-sale (POS) systems has streamlined data collection and analysis, enabling businesses to respond swiftly to changing consumer preferences.
The increasing focus on omnichannel retail strategies is also driving demand for shopper demographics analytics. Retailers are striving to provide a seamless shopping experience across physical stores, online platforms, and mobile applications. Analytics solutions help bridge the gap between different channels by offering a unified view of customer behavior, enabling businesses to deliver consistent and personalized experiences. The rise of smart stores and the deployment of Internet of Things (IoT) devices have further enriched the data ecosystem, providing real-time insights into foot traffic, dwell times, and purchase patterns. These advancements are expected to sustain the marketās high growth trajectory over the coming years.
From a regional perspective, North America currently dominates the shopper demographics analytics market, owing to the presence of major technology providers and early adoption by leading retailers. However, the Asia Pacific region is witnessing the fastest growth, driven by rapid urbanization, expanding retail infrastructure, and increasing digital adoption among consumers. Europe also holds a significant market share, supported by strong regulatory frameworks and a mature retail sector. The Middle East & Africa and Latin America are emerging as promising markets, as retailers in these regions invest in analytics to stay competitive and cater to evolving consumer demands. These regional dynamics underscore the global relevance and growth potential of shopper demographics analytics.
The shopper demographics analytics market by component is bifurcated into software and services, with software solutions representing the larger share in 2024. The software segment encompasses a wide range of analytics platforms, including proprietary and open-source solutions designed to collect, process, and visualize demographic data. These platforms leverage advanced technologies such as AI, ML, and big data analytics to deliver actionable insights in real time. The growing adoption of cloud-based analytics software has further accelerated market growth, enabling retailers to scale their analytics capabilities without significant upfront investment in IT infrastructure. The continuous evolution of analytics software, with features such as predictive modeling, data v
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| BASE YEAR | 2024 |
| HISTORICAL DATA | 2019 - 2023 |
| REGIONS COVERED | North America, Europe, APAC, South America, MEA |
| REPORT COVERAGE | Revenue Forecast, Competitive Landscape, Growth Factors, and Trends |
| MARKET SIZE 2024 | 50.6(USD Billion) |
| MARKET SIZE 2025 | 52.5(USD Billion) |
| MARKET SIZE 2035 | 75.0(USD Billion) |
| SEGMENTS COVERED | Program Type, Customer Demographics, Industry, Engagement Channel, Regional |
| COUNTRIES COVERED | US, Canada, Germany, UK, France, Russia, Italy, Spain, Rest of Europe, China, India, Japan, South Korea, Malaysia, Thailand, Indonesia, Rest of APAC, Brazil, Mexico, Argentina, Rest of South America, GCC, South Africa, Rest of MEA |
| KEY MARKET DYNAMICS | Rising consumer expectations, Increased competition, Technological advancements, Data-driven insights, Personalization and engagement |
| MARKET FORECAST UNITS | USD Billion |
| KEY COMPANIES PROFILED | Kroger, Best Buy, Starbucks, Walgreens Boots Alliance, CVS Health, Lowe's, Nordstrom, The Home Depot, Walmart, Target, Sephora, IKEA, Macy's, Nike, Amazon, Costco |
| MARKET FORECAST PERIOD | 2025 - 2035 |
| KEY MARKET OPPORTUNITIES | Personalized loyalty programs, Integration with mobile wallets, Expansion in e-commerce platforms, Data analytics for customer insights, Sustainable rewards and incentives |
| COMPOUND ANNUAL GROWTH RATE (CAGR) | 3.7% (2025 - 2035) |
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TwitterSuccess.aiās Retail Data for the Retail Sector in Asia enables businesses to navigate dynamic consumer markets, evolving retail landscapes, and rapidly changing consumer behavior across the region. Leveraging over 170 million verified professional profiles and 30 million company profiles, this dataset delivers comprehensive firmographic details, verified contact information, and decision-maker insights for retailers ranging from boutique shops and e-commerce platforms to large department store chains and multinational franchises.
Whether youāre launching new products, entering emerging markets, or optimizing supply chain strategies, Success.aiās continuously updated and AI-validated data ensures you engage the right stakeholders at the right time, all backed by our Best Price Guarantee.
Why Choose Success.aiās Retail Data in Asia?
Comprehensive Company Information
Regional Focus on Asian Markets
Continuously Updated Datasets
Ethical and Compliant
Data Highlights:
Key Features of the Dataset:
Target professionals who determine product assortments, vendor negotiations, store layouts, pricing strategies, and promotional campaigns.
Advanced Filters for Precision Targeting
AI-Driven Enrichment
Strategic Use Cases:
Market Entry & Expansion
Supplier and Vendor Relations
Connect with procurement managers and inventory planners evaluating new suppliers or seeking innovative products.
Present packaging solutions, POS technology, or loyalty programs to retailers aiming to enhance the shopping experience.
Omnichannel and E-Commerce Growth
Seasonal and Cultural Campaigns
Why Choose Success.ai?
Access top-quality verified data at competitive prices, ensuring strong ROI for product launches, brand expansions, and supply chain optimizations.
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š E-Commerce Customer Behavior and Sales Dataset š Dataset Overview This comprehensive dataset contains 5,000 e-commerce transactions from a Turkish online retail platform, spanning from January 2023 to March 2024. The dataset provides detailed insights into customer demographics, purchasing behavior, product preferences, and engagement metrics.
šÆ Use Cases This dataset is perfect for:
Customer Segmentation Analysis: Identify distinct customer groups based on behavior Sales Forecasting: Predict future sales trends and patterns Recommendation Systems: Build product recommendation engines Customer Lifetime Value (CLV) Prediction: Estimate customer value Churn Analysis: Identify customers at risk of leaving Marketing Campaign Optimization: Target customers effectively Price Optimization: Analyze price sensitivity across categories Delivery Performance Analysis: Optimize logistics and shipping š Dataset Structure The dataset contains 18 columns with the following features:
Order Information Order_ID: Unique identifier for each order (ORD_XXXXXX format) Date: Transaction date (2023-01-01 to 2024-03-26) Customer Demographics Customer_ID: Unique customer identifier (CUST_XXXXX format) Age: Customer age (18-75 years) Gender: Customer gender (Male, Female, Other) City: Customer city (10 major Turkish cities) Product Information Product_Category: 8 categories (Electronics, Fashion, Home & Garden, Sports, Books, Beauty, Toys, Food) Unit_Price: Price per unit (in TRY/Turkish Lira) Quantity: Number of units purchased (1-5) Transaction Details Discount_Amount: Discount applied (if any) Total_Amount: Final transaction amount after discount Payment_Method: Payment method used (5 types) Customer Behavior Metrics Device_Type: Device used for purchase (Mobile, Desktop, Tablet) Session_Duration_Minutes: Time spent on website (1-120 minutes) Pages_Viewed: Number of pages viewed during session (1-50) Is_Returning_Customer: Whether customer has purchased before (True/False) Post-Purchase Metrics Delivery_Time_Days: Delivery duration (1-30 days) Customer_Rating: Customer satisfaction rating (1-5 stars) š Key Statistics Total Records: 5,000 transactions Date Range: January 2023 - March 2024 (15 months) Average Transaction Value: ~450 TRY Customer Satisfaction: 3.9/5.0 average rating Returning Customer Rate: 60% Mobile Usage: 55% of transactions š Data Quality ā No missing values ā Consistent formatting across all fields ā Realistic data distributions ā Proper data types for all columns ā Logical relationships between features š” Sample Analysis Ideas Customer Segmentation with K-Means Clustering
Segment customers based on spending, frequency, and recency Sales Trend Analysis
Identify seasonal patterns and peak shopping periods Product Category Performance
Compare revenue, ratings, and return rates across categories Device-Based Behavior Analysis
Understand how device choice affects purchasing patterns Predictive Modeling
Build models to predict customer ratings or purchase amounts City-Level Market Analysis
Compare market performance across different cities š ļø Technical Details File Format: CSV (Comma-Separated Values) Encoding: UTF-8 File Size: ~500 KB Delimiter: Comma (,) š Column Descriptions Column Name Data Type Description Example Order_ID String Unique order identifier ORD_001337 Customer_ID String Unique customer identifier CUST_01337 Date DateTime Transaction date 2023-06-15 Age Integer Customer age 35 Gender String Customer gender Female City String Customer city Istanbul Product_Category String Product category Electronics Unit_Price Float Price per unit 1299.99 Quantity Integer Units purchased 2 Discount_Amount Float Discount applied 129.99 Total_Amount Float Final amount paid 2469.99 Payment_Method String Payment method Credit Card Device_Type String Device used Mobile Session_Duration_Minutes Integer Session time 15 Pages_Viewed Integer Pages viewed 8 Is_Returning_Customer Boolean Returning customer True Delivery_Time_Days Integer Delivery duration 3 Customer_Rating Integer Satisfaction rating 5 š Learning Outcomes By working with this dataset, you can learn:
Data cleaning and preprocessing techniques Exploratory Data Analysis (EDA) with Python/R Statistical analysis and hypothesis testing Machine learning model development Data visualization best practices Business intelligence and reporting š Citation If you use this dataset in your research or project, please cite:
E-Commerce Customer Behavior and Sales Dataset (2024) Turkish Online Retail Platform Data (2023-2024) Available on Kaggle āļø License This dataset is released under the CC0: Public Domain license. You are free to use it for any purpose.
š¤ Contribution Found any issues or have suggestions? Feel free to provide feedback!
š Contact For questions or collaborations, please reach out through Kaggle.
Happy Analyzing! š
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Welcome to the Retail Sales and Customer Demographics Dataset! This synthetic dataset has been meticulously crafted to simulate a dynamic retail environment, providing an ideal playground for those eager to sharpen their data analysis skills through exploratory data analysis (EDA). With a focus on retail sales and customer characteristics, this dataset invites you to unravel intricate patterns, draw insights, and gain a deeper understanding of customer behavior.
****Dataset Overview:**
This dataset is a snapshot of a fictional retail landscape, capturing essential attributes that drive retail operations and customer interactions. It includes key details such as Transaction ID, Date, Customer ID, Gender, Age, Product Category, Quantity, Price per Unit, and Total Amount. These attributes enable a multifaceted exploration of sales trends, demographic influences, and purchasing behaviors.
Why Explore This Dataset?
Questions to Explore:
Your EDA Journey:
Prepare to immerse yourself in a world of data-driven exploration. Through data visualization, statistical analysis, and correlation examination, you'll uncover the nuances that define retail operations and customer dynamics. EDA isn't just about numbersāit's about storytelling with data and extracting meaningful insights that can influence strategic decisions.
Embrace the Retail Sales and Customer Demographics Dataset as your canvas for discovery. As you traverse the landscape of this synthetic retail environment, you'll refine your analytical skills, pose intriguing questions, and contribute to the ever-evolving narrative of the retail industry. Happy exploring!
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| BASE YEAR | 2024 |
| HISTORICAL DATA | 2019 - 2023 |
| REGIONS COVERED | North America, Europe, APAC, South America, MEA |
| REPORT COVERAGE | Revenue Forecast, Competitive Landscape, Growth Factors, and Trends |
| MARKET SIZE 2024 | 1931.6(USD Billion) |
| MARKET SIZE 2025 | 2010.8(USD Billion) |
| MARKET SIZE 2035 | 3000.0(USD Billion) |
| SEGMENTS COVERED | Product Type, Distribution Channel, Customer Demographics, Purchase Behavior, Regional |
| COUNTRIES COVERED | US, Canada, Germany, UK, France, Russia, Italy, Spain, Rest of Europe, China, India, Japan, South Korea, Malaysia, Thailand, Indonesia, Rest of APAC, Brazil, Mexico, Argentina, Rest of South America, GCC, South Africa, Rest of MEA |
| KEY MARKET DYNAMICS | economic growth trends, consumer behavior shifts, technological advancements, regulatory changes, competitive landscape evolution |
| MARKET FORECAST UNITS | USD Billion |
| KEY COMPANIES PROFILED | Amazon, ExxonMobil, Procter & Gamble, CocaCola, Samsung Electronics, Walmart, Microsoft, Tesla, Alphabet, Johnson & Johnson, Berkshire Hathaway, Intel, PepsiCo, Apple, IBM, Meta Platforms |
| MARKET FORECAST PERIOD | 2025 - 2035 |
| KEY MARKET OPPORTUNITIES | Digital transformation acceleration, Sustainable product innovation, E-commerce market expansion, Remote work solutions growth, Health and wellness focus. |
| COMPOUND ANNUAL GROWTH RATE (CAGR) | 4.1% (2025 - 2035) |
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TwitterSuccess.ai delivers unparalleled access to Retail Store Data for Asiaās retail and e-commerce sectors, encompassing subcategories such as ecommerce data, ecommerce merchant data, ecommerce market data, and company data. Whether youāre 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 Asiaās 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:
Identify potential partners, distributors, and clients to expand your footprint in Asiaās dynamic retail and e-commerce markets. Use detailed profiles to assess market opportunities and risks.
Leverage ecommerce data and consumer insights to craft highly targeted campaigns. Connect directly with decision-makers for precise and effective communication.
Analyze competitorsā operations, market positioning, and consumer strategies to refine your business plans and gain a competitive edge.
Evaluate potential suppliers or vendors using ecommerce merchant data, including financial health, operational details, and contact data.
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 Asiaās 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.aiās 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 youāre entering a new region, launching a targeted campaign, or analyzing market trends, our data solutions ensure measurable success.
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| BASE YEAR | 2024 |
| HISTORICAL DATA | 2019 - 2023 |
| REGIONS COVERED | North America, Europe, APAC, South America, MEA |
| REPORT COVERAGE | Revenue Forecast, Competitive Landscape, Growth Factors, and Trends |
| MARKET SIZE 2024 | 24.6(USD Billion) |
| MARKET SIZE 2025 | 25.4(USD Billion) |
| MARKET SIZE 2035 | 35.0(USD Billion) |
| SEGMENTS COVERED | Customer Demographics, Shopping Behavior, Product Preferences, Technology Adoption, Regional |
| COUNTRIES COVERED | US, Canada, Germany, UK, France, Russia, Italy, Spain, Rest of Europe, China, India, Japan, South Korea, Malaysia, Thailand, Indonesia, Rest of APAC, Brazil, Mexico, Argentina, Rest of South America, GCC, South Africa, Rest of MEA |
| KEY MARKET DYNAMICS | consumer preferences shift, competitive pricing strategies, technological integration, sustainability focus, e-commerce growth |
| MARKET FORECAST UNITS | USD Billion |
| KEY COMPANIES PROFILED | Metro AG, Costco Wholesale, Walmart, Target, Whole Foods Market, Trader Joe's, Aldi, Tesco, Amazon, Lidl, Ahold Delhaize, Safeway |
| MARKET FORECAST PERIOD | 2025 - 2035 |
| KEY MARKET OPPORTUNITIES | E-commerce expansion for grocery delivery, Health and wellness product lines, Sustainable packaging initiatives, Personalized shopping experiences, Loyalty program enhancements |
| COMPOUND ANNUAL GROWTH RATE (CAGR) | 3.2% (2025 - 2035) |
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TwitterPremium B2C Consumer Database - 269+ Million US Records
Supercharge your B2C marketing campaigns with comprehensive consumer database, featuring over 269 million verified US consumer records. Our 20+ year data expertise delivers higher quality and more extensive coverage than competitors.
Core Database Statistics
Consumer Records: Over 269 million
Email Addresses: Over 160 million (verified and deliverable)
Phone Numbers: Over 76 million (mobile and landline)
Mailing Addresses: Over 116,000,000 (NCOA processed)
Geographic Coverage: Complete US (all 50 states)
Compliance Status: CCPA compliant with consent management
Targeting Categories Available
Demographics: Age ranges, education levels, occupation types, household composition, marital status, presence of children, income brackets, and gender (where legally permitted)
Geographic: Nationwide, state-level, MSA (Metropolitan Service Area), zip code radius, city, county, and SCF range targeting options
Property & Dwelling: Home ownership status, estimated home value, years in residence, property type (single-family, condo, apartment), and dwelling characteristics
Financial Indicators: Income levels, investment activity, mortgage information, credit indicators, and wealth markers for premium audience targeting
Lifestyle & Interests: Purchase history, donation patterns, political preferences, health interests, recreational activities, and hobby-based targeting
Behavioral Data: Shopping preferences, brand affinities, online activity patterns, and purchase timing behaviors
Multi-Channel Campaign Applications
Deploy across all major marketing channels:
Email marketing and automation
Social media advertising
Search and display advertising (Google, YouTube)
Direct mail and print campaigns
Telemarketing and SMS campaigns
Programmatic advertising platforms
Data Quality & Sources
Our consumer data aggregates from multiple verified sources:
Public records and government databases
Opt-in subscription services and registrations
Purchase transaction data from retail partners
Survey participation and research studies
Online behavioral data (privacy compliant)
Technical Delivery Options
File Formats: CSV, Excel, JSON, XML formats available
Delivery Methods: Secure FTP, API integration, direct download
Processing: Real-time NCOA, email validation, phone verification
Custom Selections: 1,000+ selectable demographic and behavioral attributes
Minimum Orders: Flexible based on targeting complexity
Unique Value Propositions
Dual Spouse Targeting: Reach both household decision-makers for maximum impact
Cross-Platform Integration: Seamless deployment to major ad platforms
Real-Time Updates: Monthly data refreshes ensure maximum accuracy
Advanced Segmentation: Combine multiple targeting criteria for precision campaigns
Compliance Management: Built-in opt-out and suppression list management
Ideal Customer Profiles
E-commerce retailers seeking customer acquisition
Financial services companies targeting specific demographics
Healthcare organizations with compliant marketing needs
Automotive dealers and service providers
Home improvement and real estate professionals
Insurance companies and agents
Subscription services and SaaS providers
Performance Optimization Features
Lookalike Modeling: Create audiences similar to your best customers
Predictive Scoring: Identify high-value prospects using AI algorithms
Campaign Attribution: Track performance across multiple touchpoints
A/B Testing Support: Split audiences for campaign optimization
Suppression Management: Automatic opt-out and DNC compliance
Pricing & Volume Options
Flexible pricing structures accommodate businesses of all sizes:
Pay-per-record for small campaigns
Volume discounts for large deployments
Subscription models for ongoing campaigns
Custom enterprise pricing for high-volume users
Data Compliance & Privacy
VIA.tools maintains industry-leading compliance standards:
CCPA (California Consumer Privacy Act) compliant
CAN-SPAM Act adherence for email marketing
TCPA compliance for phone and SMS campaigns
Regular privacy audits and data governance reviews
Transparent opt-out and data deletion processes
Getting Started
Our data specialists work with you to:
Define your target audience criteria
Recommend optimal data selections
Provide sample data for testing
Configure delivery methods and formats
Implement ongoing campaign optimization
Why We Lead the Industry
With over two decades of data industry experience, we combine extensive database coverage with advanced targeting capabilities. Our commitment to data quality, compliance, and customer success has made us the preferred choice for businesses seeking superior B2C marketing performance.
Contact our team to discuss your specific ta...
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Twitterhttps://cubig.ai/store/terms-of-servicehttps://cubig.ai/store/terms-of-service
1) Data Introduction ⢠The Consumer Behavior and Shopping Habits Dataset is a tabular collection of customer demographics, purchase history, product preferences, shopping frequency, and online and offline purchasing behavior.
2) Data Utilization (1) Consumer Behavior and Shopping Habits Dataset has characteristics that: ⢠Each row contains detailed consumer and transaction information such as customer ID, age, gender, purchased goods and categories, purchase amount, region, product attributes (size, color, season), review rating, subscription status, delivery method, discount/promotion usage, payment method, purchase frequency, etc. ⢠Data is organized to cover a variety of variables and purchasing patterns to help segment customers, establish marketing strategies, analyze product preferences, and more. (2) Consumer Behavior and Shopping Habits Dataset can be used to: ⢠Customer Segmentation and Target Marketing: You can analyze demographics and purchasing patterns to define different customer groups and use them to develop customized marketing strategies. ⢠Product and service improvement: Based on purchase history, review ratings, discount/promotional responses, etc., it can be applied to product and service improvements such as identifying popular products, managing inventory, and analyzing promotion effects.
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TwitterGapMaps premium demographic data for USA and Canada sourced from Applied Geographic Solutions (AGS) includes an extensive range of the highest quality demographic and lifestyle segmentation products. All databases are derived from superior source data and the most sophisticated, refined, and proven methodologies.
Demographic Data attributes include:
Latest Estimates and Projections The estimates and projections database includes a wide range of core demographic data variables for the current year and 5- year projections, covering five broad topic areas: population, households, income, labor force, and dwellings.
Crime Risk Crime Risk is the result of an extensive analysis of a rolling seven years of FBI crime statistics. Based on detailed modeling of the relationships between crime and demographics, Crime Risk provides an accurate view of the relative risk of specific crime types (personal, property and total) at the block and block group level.
Panorama Segmentation AGS has created a segmentation system for the United States called Panorama. Panorama has been coded with the MRI Survey data to bring you Consumer Behavior profiles associated with this segmentation system.
Business Counts Business Counts is a geographic summary database of business establishments, employment, occupation and retail sales.
Non-Resident Population The AGS non-resident population estimates utilize a wide range of data sources to model the factors which drive tourists to particular locations, and to match that demand with the supply of available accommodations.
Consumer Expenditures AGS provides current year and 5-year projected expenditures for over 390 individual categories that collectively cover almost 95% of household spending.
Retail Potential This tabulation utilizes the Census of Retail Trade tables which cross-tabulate store type by merchandise line.
Environmental Risk The environmental suite of data consists of several separate database components including: -Weather Risks -Seismological Risks -Wildfire Risk -Climate -Air Quality -Elevation and terrain
Primary Use Cases for AGS Demographic Data:
Integrate AGS demographic data with your existing GIS or BI platform to generate powerful visualizations.
Finance / Insurance (eg. Hedge Funds, Investment Advisors, Investment Research, REITs, Private Equity, VC)
Network Planning
Customer (Risk) Profiling for insurance/loan approvals
Target Marketing
Competitive Analysis
Market Optimization
Commercial Real-Estate (Brokers, Developers, Investors, Single & Multi-tenant O/O)
Tenant Recruitment
Target Marketing
Market Potential / Gap Analysis
Marketing / Advertising (Billboards/OOH, Marketing Agencies, Indoor Screens)
Customer Profiling
Target Marketing
Market Share Analysis
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TwitterCC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
License information was derived automatically
This dataset provides a comprehensive view of customer product reviews, including detailed ratings, review text, sentiment analysis, and user demographics such as age, gender, and location. It enables advanced sentiment analysis, natural language processing, and customer satisfaction research, making it ideal for businesses seeking to understand product perception and improve customer experience.
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TwitterIpsos Global @dvisor wave 24 was conducted on August 5 and August 18, 2011. It included the following question sections: A: Demographic Profile, B: Consumer Confidence, R: Reuters Battery, BD: Retail Confidence.
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TwitterDataset Descriptions This analysis involves three main datasetsāSales Data, Customer Data, and Shopping Mall Dataāwhich provide information on transactions, customer demographics, and shopping mall characteristics. Each dataset contributes unique aspects that, when combined, offer valuable insights into sales patterns, customer behavior, and the impact of mall features on sales.
Sales Data: This dataset records transaction-level details for products sold across shopping malls. Key columns include:
invoice_no: Unique identifier for each transaction. customer_id: Identifier for the customer making the purchase. category: Product category (e.g., Clothing, Shoes). quantity: Quantity of each product purchased. invoice date: Date of transaction. price: Price of each product purchased. shopping_mall: Mall where the transaction took place. Purpose: Analyzing this dataset allows us to understand product sales across different malls and track how sales change over time or by category.
Customer Data: This dataset provides demographic details for each customer, including:
customer_id: Unique identifier for each customer. gender: Customerās gender. age: Customerās age. payment_method: Preferred payment method for transactions. Purpose: This dataset supports customer segmentation by demographics, such as age and gender, and helps identify spending patterns and payment preferences.
Shopping Mall Data: This dataset contains details of various shopping malls in California where the transactions occur. The columns include:
shopping_mall: Name of the mall. construction_year: Year the mall was established. area_sqm: Total area of the mall in square meters. location: City in California where the mall is located. stores_count: Number of stores within the mall. Purpose: This dataset provides context on mall attributes and enables analysis of how mall featuresāsuch as size, store count, and locationāmight influence customer traffic, sales, and purchasing behaviors.
Goal of Analysis The goal of analyzing this data is to uncover patterns and insights that can inform decisions for optimizing sales strategies, enhancing customer engagement, and understanding the effects of mall characteristics on customer behavior. By exploring connections among sales performance, customer demographics, and mall attributes, this analysis seeks to answer questions like:
Which mall characteristics (e.g., size, age, store count) are most strongly associated with higher sales volumes? How do customer demographics, such as age and gender, impact spending patterns across malls? What product categories are more popular in specific malls, and how does this vary with mall characteristics?
Expected Outcomes With this analysis, we aim to develop actionable insights into the sales dynamics in California's shopping malls, identify customer preferences by mall characteristics, and understand how mall attributes drive retail success. These insights can be valuable for mall operators, retailers, and marketing teams looking to improve customer experience, tailor product offerings, and maximize sales performance across different mall locations.
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TwitterBy Joseph Nowicki [source]
This dataset contains demographic information about customers who have made purchases in a store, including their name, IP address, region, age, items purchased, and total amount spent. Furthermore, this data can provide insights into customer shopping behaviour for the store in question - from their geographical information to the types of products they purchase. With detailed demographic data like this at hand it is possible to make strategic decisions regarding target customers as well as developing specific marketing campaigns or promotions tailored to meet their needs and interests. By gaining deeper understanding of customer habits through this dataset we unlock more possibilities for businesses seeking higher engagement levels with shoppers
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This dataset includes information such as customer's names, IP address, age, items purchased and amount spent. This data can be used to uncover patterns in spending behavior of shoppers from different areas or regions across demographics like age group or gender.
- Analyze customer shopping trends based on age and region to maximize targetted advertising.
- Analyze the correlation between customer spending habits based on store versus online behavior.
- Use IP addresses to track geographical trends in items purchased from a particular online store to identify new markets for targeted expansion
If you use this dataset in your research, please credit the original authors. Data Source
See the dataset description for more information.
File: Demographic_Data_Orig.csv | Column name | Description | |:---------------|:------------------------------------------------------------------------------------------------| | full.name | The full name of the customer. (String) | | ip.address | The IP address of the customer. (String) | | region | The region of residence of the customer. (String) | | in.store | A boolean value indicating whether the customer made the purchase in-store or online. (Boolean) | | age | The age of the customer. (Integer) | | items | The number of items purchased by the customer. (Integer) | | amount | The total amount spent by the customer. (Float) |
If you use this dataset in your research, please credit the original authors. If you use this dataset in your research, please credit Joseph Nowicki.