Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
Analysis of ‘Retail Case Study Data’ provided by Analyst-2 (analyst-2.ai), based on source dataset retrieved from https://www.kaggle.com/darpan25bajaj/retail-case-study-data on 28 January 2022.
--- Dataset description provided by original source is as follows ---
With the retail market getting more and more competitive by the day, there has never been
anything more important than the ability for optimizing service business processes when
trying to satisfy the expectations of customers. Channelizing and managing data with the
aim of working in favor of the customer as well as generating profits is very significant for
survival.
Ideally, a retailer’s customer data reflects the company’s success in reaching and nurturing
its customers. Retailers built reports summarizing customer behavior using metrics such as
conversion rate, average order value, recency of purchase and total amount spent in recent
transactions. These measurements provided general insight into the behavioral tendencies
of customers.
Customer intelligence is the practice of determining and delivering data-driven insights into
past and predicted future customer behavior.To be effective, customer intelligence must
combine raw transactional and behavioral data to generate derived measures.
In a nutshell, for big retail players all over the world, data analytics is applied more these
days at all stages of the retail process – taking track of popular products that are emerging,
doing forecasts of sales and future demand via predictive simulation, optimizing placements
of products and offers through heat-mapping of customers and many others.
A Retail store is required to analyze the day-to-day transactions and keep a track of its customers spread across various locations along with their purchases/returns across various categories.
Create a report and display the calculated metrics, reports and inferences.
This book has three sheets (Customer, Transaction, Product Hierarchy):
--- Original source retains full ownership of the source dataset ---
https://creativecommons.org/publicdomain/zero/1.0/https://creativecommons.org/publicdomain/zero/1.0/
This dataset was created to simulate a market basket dataset, providing insights into customer purchasing behavior and store operations. The dataset facilitates market basket analysis, customer segmentation, and other retail analytics tasks. Here's more information about the context and inspiration behind this dataset:
Context:
Retail businesses, from supermarkets to convenience stores, are constantly seeking ways to better understand their customers and improve their operations. Market basket analysis, a technique used in retail analytics, explores customer purchase patterns to uncover associations between products, identify trends, and optimize pricing and promotions. Customer segmentation allows businesses to tailor their offerings to specific groups, enhancing the customer experience.
Inspiration:
The inspiration for this dataset comes from the need for accessible and customizable market basket datasets. While real-world retail data is sensitive and often restricted, synthetic datasets offer a safe and versatile alternative. Researchers, data scientists, and analysts can use this dataset to develop and test algorithms, models, and analytical tools.
Dataset Information:
The columns provide information about the transactions, customers, products, and purchasing behavior, making the dataset suitable for various analyses, including market basket analysis and customer segmentation. Here's a brief explanation of each column in the Dataset:
Use Cases:
Note: This dataset is entirely synthetic and was generated using the Python Faker library, which means it doesn't contain real customer data. It's designed for educational and research purposes.
Sure! Let's dive into a case study on customer lifetime value (CLV) analytics.
Case Study: E-commerce Store
Background: ABC Electronics is an online retailer specializing in consumer electronics. They have been in operation for several years and have built a substantial customer base. ABC Electronics wants to understand the lifetime value of their customers to optimize their marketing strategies and improve customer retention.
Objectives: 1. Calculate the customer lifetime value for different segments of customers. 2. Identify the most valuable customer segments. 3. Develop personalized marketing strategies to increase customer retention and maximize CLV.
Data Collection: ABC Electronics collects various data points about their customers, including: - Customer demographics (age, gender, location, etc.) - Purchase history (transaction dates, order values, products purchased, etc.) - Website behavior (pages visited, time spent, etc.) - Customer interactions (customer service inquiries, feedback, etc.)
Data Preparation: To perform CLV analysis, ABC Electronics needs to aggregate and organize the collected data. They merge customer demographic information with purchase history and website behavior data to create a comprehensive dataset for analysis.
Calculating CLV: ABC Electronics uses the following formula to calculate CLV:
CLV = (Average Order Value) x (Purchase Frequency) x (Customer Lifespan)
Average Order Value (AOV): Calculated by dividing the total revenue by the number of orders placed during a specific period.
Purchase Frequency: Calculated by dividing the total number of orders by the total number of unique customers during a specific period.
Customer Lifespan: The average time a customer remains active. It can be calculated by averaging the time between a customer's first and last order.
ABC Electronics calculates the CLV for each customer and then segments them based on their CLV values.
Segmentation and Analysis: ABC Electronics segments their customers into three groups based on CLV:
High-Value Customers: Customers with CLV in the top 20% percentile. These customers generate the most revenue for the business.
Medium-Value Customers: Customers with CLV in the middle 60% percentile. These customers contribute to the overall revenue and have decent long-term potential.
Low-Value Customers: Customers with CLV in the bottom 20% percentile. These customers have low spending patterns and may require additional nurturing to increase their CLV.
ABC Electronics analyzes the behavior, preferences, and characteristics of each customer segment to identify patterns and insights that can inform their marketing strategies.
Marketing Strategies: Based on the analysis, ABC Electronics formulates the following marketing strategies:
High-Value Customers:
Medium-Value Customers:
Low-Value Customers:
Monitoring and Evaluation: ABC Electronics continuously monitors the effectiveness of their marketing strategies by tracking CLV over time and assessing changes in customer behavior. They analyze metrics such as repeat purchase rate, average order value, and customer retention rate to evaluate the success of their initiatives.
By leveraging CLV analytics, ABC Electronics can allocate their marketing resources effectively, focus on customer segments with the highest potential, and develop strategies to maximize
customer retention and long-term profitability.
This case study demonstrates the practical application of CLV analytics in a real-world scenario and highlights the importance of data-driven decision-making for optimizing business performance.
eCAT data store used to provide management information.
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
Abstract Purpose: This study aims to evaluate the relationship between the reputation of the retail brand and customer loyalty in the retail pharmacy sector. Theoretical framework: This article is based on the relationship between customer loyalty and brand reputation. It uses some of the brand reputation variables from the brand equity model (Aaker, 1991) to arrive at an explanatory framework that can differentiate key variables for the most frequented retail pharmacy brands to remain in the market, as well as the differentials of the most frequented retail pharmacy brands. Design/methodology/approach: To achieve the objective of the study, exploratory factor analysis and linear multiple regression were used as the analysis techniques. A survey was carried out to collect data from 469 retail pharmacy customers in a municipality of Santa Catarina, located in the South Region of Brazil. The sample is non-probabilistic. Findings: The results suggest that popularity, level of knowledge, and familiarity significantly and positively affect loyalty to the most frequented brands. In the case of the least frequented ones, level of knowledge and familiarity have a significant and positive impact on loyalty to the brand. These findings reveal different perceptions regarding the most frequented and the least frequented pharmacies. However, the most relevant aspects remain the same regardless of how frequented the retail pharmacy is. Practical & social implications of research: Theoretically, the study has positive implications as it demonstrates the items that have the greatest and least impact in terms of brand reputation and customer loyalty. As practical implications, this study can help pharmacy managers to choose and better focus their strategies. As for social impacts, it was noted that brands that are considered to be less frequented have a lower level of loyalty, which was expected; however, this loyalty is more constant than for more frequented brands. Originality/value: This study contributes to the advancement of research involving brand reputation and customer loyalty in retail, especially in the pharmaceutical sector.
https://crawlfeeds.com/privacy_policyhttps://crawlfeeds.com/privacy_policy
Unlock the power of online marketplace analytics with our comprehensive eBay products dataset. This premium collection contains 1.29 million products from eBay's global marketplace, providing extensive insights into one of the world's largest e-commerce platforms. Perfect for competitive analysis, pricing strategies, market research, and machine learning applications in e-commerce.
Global Spend 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 Vision EUR is an aggregated transaction feed that includes consumer transaction data on 6.7M+ Europe-domiciled payment accounts, including 5.3M+ active monthly users. Capturing online, offline, and 3rd-party consumer spending on public and private companies, data covers 4.4K+ brands and 620 symbols including 490 public tickers. Track detailed consumer behavior patterns, including retention, purchase frequency, and cross shop in addition to total spend, transactions, and dollars per transaction.
Consumer Edge’s consumer transaction datasets offer insights into industries across consumer and discretionary spend such as: • Apparel, Accessories, & Footwear • Automotive • Beauty • Commercial – 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 – 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 understand a company’s growth by country for a specific time period (Ex: What was McDonald’s year-over-year growth by country from 2019-2020?)
Inquire about a CE subscription to perform more complex, near real-time global spend analysis functions on public tickers and private brands like: • Analyze year-over-year spend growth for a company for a subindustry by country • Analyze spend growth for a company vs. its competitors by country through most recent time
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: Global Spend Analysis
Problem A global retailer wants to understand company performance by geography to identify growth and expansion opportunities.
Solution Consumer Edge transaction data can be used to analyze shopper behavior across geographies and track: • Growth trends by country vs. competitors • Brand performance vs. subindustry by country • Opportunities for product and location expansion
Impact Marketing and Consumer Insights were able to: • Develop weekly reporting KPI's on key growth drivers by geography for company-wide reporting • Refine strategy in underperforming geographies, both online and offline • Identify areas for investment and expansion by country • Understand how different cohorts 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 CE’s synthetic data to assess investment opportunities, while consumer insights, marketing, and retailers can gain visibility into transaction data’s 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 • Churn • Cross-Shop • Average Ticket Buckets
Demographics 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 Edge’s consumer transaction datasets offer insights into industries across consumer and discretionary spend such as: • Apparel, Accessories, & Footwear • Automotive • Beauty • Commercial – 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 – 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 company’s demographics to all of that company’s 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 CE’s synthetic data to assess investment opportunities, while consumer insights, marketing, and retailers can gain visibility into transaction data’s 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 ...
Online Data Science Training Programs Market Size 2025-2029
The online data science training programs market size is forecast to increase by USD 8.67 billion, at a CAGR of 35.8% between 2024 and 2029.
The market is experiencing significant growth due to the increasing demand for data science professionals in various industries. The job market offers lucrative opportunities for individuals with data science skills, making online training programs an attractive option for those seeking to upskill or reskill. Another key driver in the market is the adoption of microlearning and gamification techniques in data science training. These approaches make learning more engaging and accessible, allowing individuals to acquire new skills at their own pace. Furthermore, the availability of open-source learning materials has democratized access to data science education, enabling a larger pool of learners to enter the field. However, the market also faces challenges, including the need for continuous updates to keep up with the rapidly evolving data science landscape and the lack of standardization in online training programs, which can make it difficult for employers to assess the quality of graduates. Companies seeking to capitalize on market opportunities should focus on offering up-to-date, high-quality training programs that incorporate microlearning and gamification techniques, while also addressing the challenges of continuous updates and standardization. By doing so, they can differentiate themselves in a competitive market and meet the evolving needs of learners and employers alike.
What will be the Size of the Online Data Science Training Programs Market during the forecast period?
Request Free SampleThe online data science training market continues to evolve, driven by the increasing demand for data-driven insights and innovations across various sectors. Data science applications, from computer vision and deep learning to natural language processing and predictive analytics, are revolutionizing industries and transforming business operations. Industry case studies showcase the impact of data science in action, with big data and machine learning driving advancements in healthcare, finance, and retail. Virtual labs enable learners to gain hands-on experience, while data scientist salaries remain competitive and attractive. Cloud computing and data science platforms facilitate interactive learning and collaborative research, fostering a vibrant data science community. Data privacy and security concerns are addressed through advanced data governance and ethical frameworks. Data science libraries, such as TensorFlow and Scikit-Learn, streamline the development process, while data storytelling tools help communicate complex insights effectively. Data mining and predictive analytics enable organizations to uncover hidden trends and patterns, driving innovation and growth. The future of data science is bright, with ongoing research and development in areas like data ethics, data governance, and artificial intelligence. Data science conferences and education programs provide opportunities for professionals to expand their knowledge and expertise, ensuring they remain at the forefront of this dynamic field.
How is this Online Data Science Training Programs Industry segmented?
The online data science training programs industry research report provides comprehensive data (region-wise segment analysis), with forecasts and estimates in 'USD million' for the period 2025-2029, as well as historical data from 2019-2023 for the following segments. TypeProfessional degree coursesCertification coursesApplicationStudentsWorking professionalsLanguageR programmingPythonBig MLSASOthersMethodLive streamingRecordedProgram TypeBootcampsCertificatesDegree ProgramsGeographyNorth AmericaUSMexicoEuropeFranceGermanyItalyUKMiddle East and AfricaUAEAPACAustraliaChinaIndiaJapanSouth KoreaSouth AmericaBrazilRest of World (ROW)
By Type Insights
The professional degree courses segment is estimated to witness significant growth during the forecast period.The market encompasses various segments catering to diverse learning needs. The professional degree course segment holds a significant position, offering comprehensive and in-depth training in data science. This segment's curriculum covers essential aspects such as statistical analysis, machine learning, data visualization, and data engineering. Delivered by industry professionals and academic experts, these courses ensure a high-quality education experience. Interactive learning environments, including live lectures, webinars, and group discussions, foster a collaborative and engaging experience. Data science applications, including deep learning, computer vision, and natural language processing, are integral to the market's growth. Data analysis, a crucial application, is gaining traction due to the increasing demand
https://www.datainsightsmarket.com/privacy-policyhttps://www.datainsightsmarket.com/privacy-policy
The retail display case market is experiencing robust growth, driven by the increasing focus on enhancing the in-store customer experience and optimizing product presentation. The market's expansion is fueled by several key factors: the rising popularity of experiential retail, the adoption of innovative display technologies (e.g., digital signage integration, energy-efficient designs), and the growth of e-commerce, which paradoxically necessitates more appealing and efficient in-store displays to compete. The market is segmented by product type (e.g., refrigerated, frozen, ambient), application (e.g., grocery, convenience stores, pharmacies), and technology. Leading players like Displays2go, ISA Italy, and Metalfrio Solutions are competing based on product innovation, technological advancements, and geographic expansion. However, increasing raw material costs and fluctuating energy prices pose challenges to market growth. The market is anticipated to witness a steady CAGR (let's assume, based on typical market growth for this sector, a 5% CAGR for the sake of example) during the forecast period (2025-2033), with substantial opportunities arising in developing economies experiencing rapid retail sector expansion. The market size in 2025 is estimated (for example) at $15 billion, projected to reach approximately $23 billion by 2033. The competitive landscape is characterized by both established multinational corporations and specialized regional players. Success hinges on factors like supply chain efficiency, strong distribution networks, and a capability to adapt quickly to evolving consumer preferences and technological disruptions. The market will likely see further consolidation and strategic partnerships as companies strive for enhanced market share. Further growth is expected to be fueled by emerging trends such as sustainable and eco-friendly display solutions, customized display solutions tailored to specific product needs, and the increasing integration of smart technology for inventory management and data analytics within display cases. This evolution will also drive innovation and competitiveness within the sector.
https://creativecommons.org/publicdomain/zero/1.0/https://creativecommons.org/publicdomain/zero/1.0/
This is a realistic and structured pizza sales dataset covering the time span from **2024 to 2025. ** Whether you're a beginner in data science, a student working on a machine learning project, or an experienced analyst looking to test out time series forecasting and dashboard building, this dataset is for you.
📁 What’s Inside? The dataset contains rich details from a pizza business including:
✅ Order Dates & Times ✅ Pizza Names & Categories (Veg, Non-Veg, Classic, Gourmet, etc.) ✅ Sizes (Small, Medium, Large, XL) ✅ Prices ✅ Order Quantities ✅ Customer Preferences & Trends
It is neatly organized in Excel format and easy to use with tools like Python (Pandas), Power BI, Excel, or Tableau.
💡** Why Use This Dataset?** This dataset is ideal for:
📈 Sales Analysis & Reporting 🧠 Machine Learning Models (demand forecasting, recommendations) 📅 Time Series Forecasting 📊 Data Visualization Projects 🍽️ Customer Behavior Analysis 🛒 Market Basket Analysis 📦 Inventory Management Simulations
🧠 Perfect For: Data Science Beginners & Learners BI Developers & Dashboard Designers MBA Students (Marketing, Retail, Operations) Hackathons & Case Study Competitions
pizza, sales data, excel dataset, retail analysis, data visualization, business intelligence, forecasting, time series, customer insights, machine learning, pandas, beginner friendly
Our Location Intelligence Data connects people's movements to over 14M physical locations globally. These are aggregated and anonymized data that are only used to offer context for the volume and patterns of visits to certain locations. This data feed is compiled from different data sources around the world.
Location Intelligence Data Reach: Location Intelligence data brings the POI/Place/OOH level insights calculated based on Factori’s Mobility & People Graph data aggregated from multiple data sources globally. To achieve the desired foot-traffic attribution, specific attributes are combined to bring forward the desired reach data. For instance, to calculate the foot traffic for a specific location, a combination of location ID, day of the week, and part of the day can be combined to give specific location intelligence data. There can be a maximum of 40 data records possible for one POI based on the combination of these attributes.
Data Export Methodology: Since we collect data dynamically, we provide the most updated data and insights via a best-suited method at a suitable interval (daily/weekly/monthly).
Use Case: Retail Analytics Platform: Location intelligence to analyze foot traffic patterns around retail stores, combining this data with customer profiles to gain insights into visitor demographics. These insights optimize store layouts, staffing, and product placements Marketing Campaign Optimization: Utilize location intelligence to analyze consumer behavior and preferences using geographical and demographic data for more effective audience segmentation and targeting. Emergency Response Planning Tool: To identify high-risk areas for natural disasters or emergencies and profiles to assess vulnerability and evacuation needs across different population segments Smart City Mobility Solution: Provide city planners and transportation authorities with insights to optimize transportation systems, alleviate congestion, and improve urban mobility for residents Event Planning and Venue Selection: Assists planners in selecting suitable venues that match the demographic profile and preferences of their audience
Data Attributes Included: Location ID n_visitors day_of_week distance_from_home do_date month part_of_day travelled_countries Visitor_country_origin Visitor_home_origin Visitor_work_origin year Carrier Brand Visited Place _Categories Geo _ behaviour make model OS_versions ratio_age_18_24 ratio_age_25_34 ratio_age_35_44 ratio_age_45_54 ratio_age_55_64 ratio_age_65 ratio_female ratio_male ratio_residents ratio_workers ratio_others
https://www.globaldata.com/privacy-policy/https://www.globaldata.com/privacy-policy/
GlobalData’s "Tourism Case Study: Norwegian Air", discusses the low cost carrier's expansion and offers an insight into the key reasons behind the success of the company. Read More
The dataset contains Cyclistic’s historical trip data for the past 12 months to analyze and identify trends. The data has been made available by Motivate International Inc. The data provides the following attributes: - Ride ID - Rideable type - Electric / Classic bike - Start and End Date of the trip - Start and End Station Name with Id - Start and End Latitude and Longitute - Rider Type - Member / Casual
This case study is a part of the Google data analytics Certificate course. The analysis is for a fictional company, Cyclistic, A bike-share program that features more than 5,800 bicycles and 600 docking stations.
Consumer Edge is a leader in alternative consumer data for public and private investors and corporate clients. CE Vision USA includes consumer transaction data on 100M+ credit and debit cards, including 35M+ with activity in the past 12 months and 14M+ active monthly users. Capturing online, offline, and 3rd-party consumer spending on public and private companies, data covers 12K+ merchants, 800+ parent companies, 80+ same store sales metrics, and deep demographic and geographic breakouts. Review data by ticker in our Investor Relations module. Brick & mortar and ecommerce direct-to-consumer sales are recorded on transaction date and purchase data is available for most companies as early as 6 days post-swipe.
Consumer Edge’s consumer transaction datasets offer insights into industries across consumer and discretionary spend such as: • Apparel, Accessories, & Footwear • Automotive • Beauty • Commercial – 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 – Broadlines • Other Specialty Retail • Pet Products & Services • Sporting Goods, Hobby, Toy & Game • Telecom & Media • Travel
Private equity and venture capital firms can leverage insights from CE’s synthetic data to assess investment opportunities, while consumer insights teams and retailers can gain visibility into transaction data’s potential for competitive analysis, shopper behavior, and market intelligence.
CE Vision Benefits • Discover new competitors • Compare sales, average ticket & transactions across competition • Evaluate demographic and geographic drivers of growth • Assess customer loyalty • Explore granularity by geos • Benchmark market share vs. competition • Analyze business performance with advanced cross-cut queries
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
Use Case: Apparel Retailer, Enterprise-Wide Solution
Problem A $49B global apparel retailer was looking for a comprehensive enterprise-wide consumer data platform to manage and track consumer behavior across a variety of KPI's for use in weekly and monthly management reporting.
Solution The retailer leveraged Consumer Edge's Vision Pro platform to monitor and report weekly on: • market share, competitive analysis and new entrants • trends by geography and demographics • online and offline spending • cross-shopping trends
Impact Marketing and Consumer Insights were able to: • develop weekly reporting KPI's on market share for company-wide reporting • establish new partnerships based on cross shopping trends online and offline • reduce investment in slow channels in both online and offline channels • determine demo and geo drivers of growth for refined targeting • analyze customer retention and plan campaigns accordingly
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
The MCCN project is to deliver tools to assist the agricultural sector to understand crop-environment relationships, specifically by facilitating generation of data cubes for spatiotemporal data. This repository contains Jupyter notebooks to demonstrate the functionality of the MCCN data cube components.The dataset contains input files for the case study (source_data), RO-Crate metadata (ro-crate-metadata.json), results from the case study (results), and Jupyter Notebook (MCCN-CASE 6.ipynb)Research Activity Identifier (RAiD)RAiD: https://doi.org/10.26292/8679d473Case StudiesThis repository contains code and sample data for the following case studies. Note that the analyses here are to demonstrate the software and result should not be considered scientifically or statistically meaningful. No effort has been made to address bias in samples, and sample data may not be available at sufficient density to warrant analysis. All case studies end with generation of an RO-Crate data package including the source data, the notebook and generated outputs, including netcdf exports of the datacubes themselves.Case Study 6 - Environmental Correlates for ProductivityDescriptionAnalyse relationship between different environmental drivers and plant yield. This study demonstrates: 1) Loading heterogeneous data sources into a cube, and 2) Analysis and visualisation of drivers. This study combines a suite of spatial variables at different scales across multiple sites to analyse the factors correlated with a variable of interest.Data SourcesThe dataset includes the Gilbert site in Queensland which has multiple standard sized plots for three years. We are using data from 2022. The source files are part pf the larger collection - Chapman, Scott and Smith, Daniel (2023). INVITA Core site UAV dataset. The University of Queensland. Data Collection. https://doi.org/10.48610/951f13cBoundary file - This is a shapefile defining the boundaries of all field plots at the Gilbert site. Each polygon represents a single plot and is associated with a unique Plot ID (e.g., 03_03_1). These plot IDs are essential for joining and aligning data across the orthomosaics and plot-level measurements.https://object-store.rc.nectar.org.au/v1/AUTH_2b454f47f2654ab58698afd4b4d5eba7/mccn-test-data/case-study-5-files/shp.zip.Orthomosaics - The site was imaged by UAV flights multiple times throughout the 2022 growing season, spanning from June to October. Each flight produced an orthorectified mosaic image using RGB and Multispectral (MS) sensors.https://object-store.rc.nectar.org.au/v1/AUTH_2b454f47f2654ab58698afd4b4d5eba7/mccn-test-data/case-study-5-files/2022-09-18.tifhttps://object-store.rc.nectar.org.au/v1/AUTH_2b454f47f2654ab58698afd4b4d5eba7/mccn-test-data/case-study-5-files/UQ_GilbertN_danNVT_2022-07-28_10-00-00_Altum_bgren_20m_transparent_reflectance_packed.tifhttps://object-store.rc.nectar.org.au/v1/AUTH_2b454f47f2654ab58698afd4b4d5eba7/mccn-test-data/case-study-5-files/UQ_GilbertN_danNVT_2022-08-08_10-00-00_Altum_bgren_20m_transparent_reflectance_packed.tifPlot level measurements - Multispectral Traits: Calculated from MS sensor imagery and include indices NDVI, NDRE, SAVI and Biomass Cuts: Field-measured biomass sampled during different growth stages (used as a proxy for yield).https://object-store.rc.nectar.org.au/v1/AUTH_2b454f47f2654ab58698afd4b4d5eba7/mccn-test-data/case-study-5-files/filtered_biomass_updated.csvhttps://object-store.rc.nectar.org.au/v1/AUTH_2b454f47f2654ab58698afd4b4d5eba7/mccn-test-data/case-study-5-files/filtered_multispec_aggregated.csv
https://crawlfeeds.com/privacy_policyhttps://crawlfeeds.com/privacy_policy
Unlock fashion retail intelligence with our comprehensive Zara UK products dataset. This premium collection contains 16,000 products from Zara's UK online store, providing detailed insights into one of the world's leading fast-fashion retailers. Perfect for fashion trend analysis, pricing strategies, competitive research, and machine learning applications.
https://www.datainsightsmarket.com/privacy-policyhttps://www.datainsightsmarket.com/privacy-policy
The global transparent merchandise showcase market is experiencing robust growth, driven by the increasing demand for visually appealing and secure display solutions across various retail sectors. The market's expansion is fueled by several key factors, including the rising popularity of experiential retail, the growing adoption of sophisticated display technologies enhancing product visibility, and the increasing need for theft prevention in high-value merchandise displays. Auctions and high-end retail shops are significant application segments, with vertical showcases dominating the type segment due to their space-saving design and aesthetic appeal. The market is witnessing a shift towards technologically advanced showcases incorporating features such as LED lighting, digital signage integration, and enhanced security systems. This innovation caters to the evolving needs of retailers seeking to create immersive and engaging shopping experiences. Geographically, North America and Europe currently hold significant market share, benefiting from established retail infrastructure and consumer spending patterns. However, emerging markets in Asia-Pacific are expected to witness significant growth in the coming years, driven by rising disposable incomes and expanding retail sectors. The competitive landscape includes both established manufacturers specializing in bespoke solutions and larger companies offering a range of display options, leading to continuous product innovation and competitive pricing. The market is poised for further growth, particularly with the continued integration of smart technology and the rise of omnichannel retailing strategies. While the provided data lacks specific numerical values for market size and CAGR, a reasonable estimate can be made by considering the mentioned companies, the range of applications (auctions, shops, others) and product types (vertical, wall-mounted). Given the high-end nature of many listed companies and the specialized nature of the product, we can assume a relatively high average price point per unit. The wide geographical spread indicates a substantial market. Considering these factors, and assuming a moderately optimistic growth trajectory, a plausible market size for 2025 could be in the range of $500 million to $750 million, with a CAGR of 5-7% over the forecast period. This estimate accounts for fluctuating economic conditions and potential market saturation in mature regions while acknowledging the substantial growth potential in emerging economies. Further market segmentation and detailed financial analysis would refine this prediction.
CC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
License information was derived automatically
We live in a period in which a vast amount of data is generated by countless digital devices. Deep Learning (DL) has emerged as a key technique to discover hidden patterns in data. DL has led to many state- of-the-art successes in different areas, such as image recognition and medical diagnosis. These outstanding achievements stem from the proliferation of massive volume of training data and the increase of learning models complexity. Processing a vast amount of data with complex computational models makes DL substantially challenging. High Performance Computing (HPC) systems are increasingly being employed to overcome the computation demands of DL. However, storing and managing massive training data is one of the main challenges in training workflow. Mainly, HPC systems benefit from parallel file systems to store data. However, this type of storage is not suitable for DL training workloads. Metadata overloading is considered a potential drawback because the number of I/O operations is highly increased in distributed workloads. Moreover, the strong consistency feature of POSIX-compliant storage systems heavily affects performance and scalability. Although, this feature is not required in many modern HPC workloads such as distributed DL. This thesis applies an object store as an alternative solution that does not have many of the file system limitations. GWDG offers a Ceph cluster as an object-based storage system. In this work, the Ceph cluster is connected to the HPC system to overcome the Big Data Analytics’ demands. An empirical study to evaluate this system is presented. The use case is an image classification task that is carried out with distributed DL technique. It applies the data parallelism model to distribute DL workloads. The results reveal that the Ceph storage system improves the HPC system’s performance for massive-scale training workloads. The final thesis was submitted in partial fulfilment of the requirements for the course “Internet Technologies and Information Systems”, supervised by Prof. Ramin Yahyapour and Dr. Christian Boehme
Explore Spatic's comprehensive collection of data resources for spatial analytics and geographic insights. Discover datasets and tools for data-driven decision-making in various sectors, including real estate, urban planning, and environmental analysis.
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
Analysis of ‘Retail Case Study Data’ provided by Analyst-2 (analyst-2.ai), based on source dataset retrieved from https://www.kaggle.com/darpan25bajaj/retail-case-study-data on 28 January 2022.
--- Dataset description provided by original source is as follows ---
With the retail market getting more and more competitive by the day, there has never been
anything more important than the ability for optimizing service business processes when
trying to satisfy the expectations of customers. Channelizing and managing data with the
aim of working in favor of the customer as well as generating profits is very significant for
survival.
Ideally, a retailer’s customer data reflects the company’s success in reaching and nurturing
its customers. Retailers built reports summarizing customer behavior using metrics such as
conversion rate, average order value, recency of purchase and total amount spent in recent
transactions. These measurements provided general insight into the behavioral tendencies
of customers.
Customer intelligence is the practice of determining and delivering data-driven insights into
past and predicted future customer behavior.To be effective, customer intelligence must
combine raw transactional and behavioral data to generate derived measures.
In a nutshell, for big retail players all over the world, data analytics is applied more these
days at all stages of the retail process – taking track of popular products that are emerging,
doing forecasts of sales and future demand via predictive simulation, optimizing placements
of products and offers through heat-mapping of customers and many others.
A Retail store is required to analyze the day-to-day transactions and keep a track of its customers spread across various locations along with their purchases/returns across various categories.
Create a report and display the calculated metrics, reports and inferences.
This book has three sheets (Customer, Transaction, Product Hierarchy):
--- Original source retains full ownership of the source dataset ---