Facebook
Twitterhttps://brightdata.com/licensehttps://brightdata.com/license
The Google Maps dataset is ideal for getting extensive information on businesses anywhere in the world. Easily filter by location, business type, and other factors to get the exact data you need. The Google Maps dataset includes all major data points: timestamp, name, category, address, description, open website, phone number, open_hours, open_hours_updated, reviews_count, rating, main_image, reviews, url, lat, lon, place_id, country, and more.
Facebook
TwitterApache License, v2.0https://www.apache.org/licenses/LICENSE-2.0
License information was derived automatically
Welcome to the Google Places Comprehensive Business Dataset! This dataset has been meticulously scraped from Google Maps and presents extensive information about businesses across several countries. Each entry in the dataset provides detailed insights into business operations, location specifics, customer interactions, and much more, making it an invaluable resource for data analysts and scientists looking to explore business trends, geographic data analysis, or consumer behaviour patterns.
This dataset is ideal for a variety of analytical projects, including: - Market Analysis: Understand business distribution and popularity across different regions. - Customer Sentiment Analysis: Explore relationships between customer ratings and business characteristics. - Temporal Trend Analysis: Analyze patterns of business activity throughout the week. - Geospatial Analysis: Integrate with mapping software to visualise business distribution or cluster businesses based on location.
The dataset contains 46 columns, providing a thorough profile for each listed business. Key columns include:
business_id: A unique Google Places identifier for each business, ensuring distinct entries.phone_number: The contact number associated with the business. It provides a direct means of communication.name: The official name of the business as listed on Google Maps.full_address: The complete postal address of the business, including locality and geographic details.latitude: The geographic latitude coordinate of the business location, useful for mapping and spatial analysis.longitude: The geographic longitude coordinate of the business location.review_count: The total number of reviews the business has received on Google Maps.rating: The average user rating out of 5 for the business, reflecting customer satisfaction.timezone: The world timezone the business is located in, important for temporal analysis.website: The official website URL of the business, providing further information and contact options.category: The category or type of service the business provides, such as restaurant, museum, etc.claim_status: Indicates whether the business listing has been claimed by the owner on Google Maps.plus_code: A sho...
Facebook
TwitterAttribution-NonCommercial 4.0 (CC BY-NC 4.0)https://creativecommons.org/licenses/by-nc/4.0/
License information was derived automatically
Google data search exercises can be used to practice finding data or statistics on a topic of interest, including using Google's own internal tools and by using advanced operators.
Facebook
Twitterhttps://creativecommons.org/publicdomain/zero/1.0/https://creativecommons.org/publicdomain/zero/1.0/
Google Ads Sales Dataset for Data Analytics Campaigns (Raw & Uncleaned) 📝 Dataset Overview This dataset contains raw, uncleaned advertising data from a simulated Google Ads campaign promoting data analytics courses and services. It closely mimics what real digital marketers and analysts would encounter when working with exported campaign data — including typos, formatting issues, missing values, and inconsistencies.
It is ideal for practicing:
Data cleaning
Exploratory Data Analysis (EDA)
Marketing analytics
Campaign performance insights
Dashboard creation using tools like Excel, Python, or Power BI
📁 Columns in the Dataset Column Name ----- -Description Ad_ID --------Unique ID of the ad campaign Campaign_Name ------Name of the campaign (with typos and variations) Clicks --Number of clicks received Impressions --Number of ad impressions Cost --Total cost of the ad (in ₹ or $ format with missing values) Leads ---Number of leads generated Conversions ----Number of actual conversions (signups, sales, etc.) Conversion Rate ---Calculated conversion rate (Conversions ÷ Clicks) Sale_Amount ---Revenue generated from the conversions Ad_Date------ Date of the ad activity (in inconsistent formats like YYYY/MM/DD, DD-MM-YY) Location ------------City where the ad was served (includes spelling/case variations) Device------------ Device type (Mobile, Desktop, Tablet with mixed casing) Keyword ----------Keyword that triggered the ad (with typos)
⚠️ Data Quality Issues (Intentional) This dataset was intentionally left raw and uncleaned to reflect real-world messiness, such as:
Inconsistent date formats
Spelling errors (e.g., "analitics", "anaytics")
Duplicate rows
Mixed units and symbols in cost/revenue columns
Missing values
Irregular casing in categorical fields (e.g., "mobile", "Mobile", "MOBILE")
🎯 Use Cases Data cleaning exercises in Python (Pandas), R, Excel
Data preprocessing for machine learning
Campaign performance analysis
Conversion optimization tracking
Building dashboards in Power BI, Tableau, or Looker
💡 Sample Analysis Ideas Track campaign cost vs. return (ROI)
Analyze click-through rates (CTR) by device or location
Clean and standardize campaign names and keywords
Investigate keyword performance vs. conversions
🔖 Tags Digital Marketing · Google Ads · Marketing Analytics · Data Cleaning · Pandas Practice · Business Analytics · CRM Data
Facebook
Twitterhttps://brightdata.com/licensehttps://brightdata.com/license
The Google Shopping dataset is perfect for obtaining detailed product information worldwide. Easily filter by product title, seller, price, and other factors to find the exact data you need. The Google Shopping dataset includes key data points such as URL, product ID, title, description, rating, reviews count, images, seller name, delivery price, return policy, item price, total price, specifications, related items, and more.
Facebook
TwitterIn the first half of 2024, Google received over 82,000 requests for disclosure of user information from the U.S. federal agencies and other government entities. The Indian government ranked second by the number of requests about user information disclosure sent to Google, followed by Germany.
Facebook
Twitterhttps://crawlfeeds.com/privacy_policyhttps://crawlfeeds.com/privacy_policy
Unlock valuable insights with the Google Play Store Android Apps Dataset in CSV format, featuring detailed information on over thousands of Android apps available on the Google Play Store. This comprehensive dataset includes key attributes such as App Name, App Logo, Category, Description, Average Rating, Ratings Count, In-app Purchases, Operating System, Company, Content Rating, Images, Email, Additional Information, and more.
Perfect for market researchers, data scientists, app developers, and analysts, this dataset allows for deep analysis of app performance, user preferences, and industry trends. With data on app descriptions, content ratings, in-app purchases, and company information, you can track trends in the mobile app market, evaluate user satisfaction, and conduct competitive analysis.
The dataset is ideal for businesses looking to optimize app strategies, enhance user experience, and improve app performance based on real user feedback. Easily import the data into your favorite analysis tools to gain actionable insights for your app development or research.
With regularly updated data scraped directly from the Google Play Store, the Google Play Store Android Apps Dataset is an invaluable resource for anyone looking to explore trends, track performance, or enhance their app strategies.
Facebook
TwitterAttribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
While many public datasets (on Kaggle and the like) provide Apple App Store data, few counterpart datasets are available for Google Play Store apps anywhere on the web. On digging deeper, I discovered that the iTunes App Store page deploys a nicely indexed appendix-like structure to allow for simple and easy web scraping. On the other hand, Google Play Store uses sophisticated modern-day techniques (like dynamic page load) using JQuery making scraping more challenging.
- There are 13 features in the dataset, and each feature indicates some details of Google application name, category, rating, reviews, size, installs, type, price, content rating genres, last updated, current version and Android version.
- App: The application name.
- Category: The category the app belongs to.
- Rating: Overall user rating of the app.
- Reviews: Number of user reviews for the app.
- Size: The size of the app.
- Installs: Number of user installs for the app.
- Type: Either "Paid" or "Free".
- Price: The price of the app.
- Content Rating: The age group the app is targeted at - "Children" / "Mature 21+" / "Adult".
- Genres: Possibly multiple genres the app belongs to.
- Last Updated: The date the app was last updated.
- Current Ver: The current version of the app.
- Android Ver: The Android version is needed for this app.
Facebook
TwitterBetween January and July 2024, Google received ****** requests for disclosure of user information from the United States federal agencies and courts. This is a slight decrease in comparison to the second half of 2023, in which over ****** requests were issued.
Facebook
TwitterBusiness Listings Database is the source of point-of-interest data and can provide you with all the information you need to analyze how specific places are used, what kinds of audiences they attract, and how their visitor profile changes over time.
The full fields description may be found on this page: https://docs.dataforseo.com/v3/databases/business_listings/?bash
Facebook
TwitterIn 2023, Google’s data centers accounted for over 7.7 billion gallons of water withdrawals. Council Bluffs, in Iowa, accounted for the largest share, with around 1.3 billions gallons. Mayes County, Oklahoma, ranked second, also with more than one billion gallons' worth of withdrawals. Water in data centers is mainly used for cooling.
Facebook
TwitterAttribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
This is the second version of the Google Landmarks dataset (GLDv2), which contains images annotated with labels representing human-made and natural landmarks. The dataset can be used for landmark recognition and retrieval experiments. This version of the dataset contains approximately 5 million images, split into 3 sets of images: train, index and test. The dataset was presented in our CVPR'20 paper. In this repository, we present download links for all dataset files and relevant code for metric computation. This dataset was associated to two Kaggle challenges, on landmark recognition and landmark retrieval. Results were discussed as part of a CVPR'19 workshop. In this repository, we also provide scores for the top 10 teams in the challenges, based on the latest ground-truth version. Please visit the challenge and workshop webpages for more details on the data, tasks and technical solutions from top teams.
Facebook
TwitterUniversal Analytics data from Google Analytics for the CalHHS Open Data Portal. This data was captured using the depreciated Universal Analytics tool and is no longer available on the web via Google UI or Google APIs. It has been loaded here so that users and the metrics dashboard can access the data.
Facebook
TwitterGoogle Translate
Google Translate dataset gathered by us, the source code for headless chrome at https://github.com/mesolitica/google-translate-api
Facebook
TwitterThis dataset includes the daily historical stock prices for Google (GOOGL) spanning from 2020 to 2025. It features essential financial metrics such as opening and closing prices, daily highs and lows, adjusted close prices, and trading volumes. The information offers valuable insights into the stock's performance over a five-year timeframe.
Note: 1. This data is scraped from Yahoo Finance by me using python code. 2. Some of the About Data is generated from AI, but verified from me.
Facebook
TwitterView metadata for key information about this dataset.The city chose metrics based on the results of a 2020 survey of open data end users. OIT then developed datasets to track these metrics over time and a dashboard to display them visually and in a way accessible to a broad audience of users.For questions about this dataset, contact kistine.carolan@phila.gov. For technical assistance, email maps@phila.gov.
Facebook
TwitterAttribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
Google Mobility Changes: Workplaces: United States: Colorado data was reported at -28.000 % in 30 Sep 2022. This stayed constant from the previous number of -28.000 % for 29 Sep 2022. Google Mobility Changes: Workplaces: United States: Colorado data is updated daily, averaging -31.000 % from Feb 2020 (Median) to 30 Sep 2022, with 959 observations. The data reached an all-time high of 8.000 % in 09 Mar 2020 and a record low of -87.000 % in 25 Nov 2021. Google Mobility Changes: Workplaces: United States: Colorado data remains active status in CEIC and is reported by Google LLC. The data is categorized under Global Database’s United States – Table US.Google.GM: Mobility Trends: Workplaces.
Facebook
TwitterCommunity Connections Program: 100 Gigabit Speed (Google Fiber) Public Facilities administered through the City's Office of Telecom & Regulatory Affairs (TARA) and Google Fiber.
Facebook
TwitterMeet Earth EngineGoogle Earth Engine combines a multi-petabyte catalog of satellite imagery and geospatial datasets with planetary-scale analysis capabilities and makes it available for scientists, researchers, and developers to detect changes, map trends, and quantify differences on the Earth's surface.SATELLITE IMAGERY+YOUR ALGORITHMS+REAL WORLD APPLICATIONSLEARN MOREGLOBAL-SCALE INSIGHTExplore our interactive timelapse viewer to travel back in time and see how the world has changed over the past twenty-nine years. Timelapse is one example of how Earth Engine can help gain insight into petabyte-scale datasets.EXPLORE TIMELAPSEREADY-TO-USE DATASETSThe public data archive includes more than thirty years of historical imagery and scientific datasets, updated and expanded daily. It contains over twenty petabytes of geospatial data instantly available for analysis.EXPLORE DATASETSSIMPLE, YET POWERFUL APIThe Earth Engine API is available in Python and JavaScript, making it easy to harness the power of Google’s cloud for your own geospatial analysis.EXPLORE THE APIGoogle Earth Engine has made it possible for the first time in history to rapidly and accurately process vast amounts of satellite imagery, identifying where and when tree cover change has occurred at high resolution. Global Forest Watch would not exist without it. For those who care about the future of the planet Google Earth Engine is a great blessing!-Dr. Andrew Steer, President and CEO of the World Resources Institute.CONVENIENT TOOLSUse our web-based code editor for fast, interactive algorithm development with instant access to petabytes of data.LEARN ABOUT THE CODE EDITORSCIENTIFIC AND HUMANITARIAN IMPACTScientists and non-profits use Earth Engine for remote sensing research, predicting disease outbreaks, natural resource management, and more.SEE CASE STUDIESREADY TO BE PART OF THE SOLUTION?SIGN UP NOWTERMS OF SERVICE PRIVACY ABOUT GOOGLE
Facebook
TwitterThis dataset contains current and historical demographic data on Google's workforce since the company began publishing diversity data in 2014. It includes data collected for government reporting and voluntary employee self-identification globally relating to hiring, retention, and representation categorized by race, gender, sexual orientation, gender identity, disability status, and military status. In some instances, the data is limited due to various government policies around the world and the desire to protect Googler confidentiality. All data in this dataset will be updated yearly upon publication of Google’s Diversity Annual Report . Google uses this data to inform its diversity, equity, and inclusion work. More information on our methodology can be found in the Diversity Annual Report. This public dataset is hosted in Google BigQuery and is included in BigQuery's 1TB/mo of free tier processing. This means that each user receives 1TB of free BigQuery processing every month, which can be used to run queries on this public dataset. Watch this short video to learn how to get started quickly using BigQuery to access public datasets. What is BigQuery .
Facebook
Twitterhttps://brightdata.com/licensehttps://brightdata.com/license
The Google Maps dataset is ideal for getting extensive information on businesses anywhere in the world. Easily filter by location, business type, and other factors to get the exact data you need. The Google Maps dataset includes all major data points: timestamp, name, category, address, description, open website, phone number, open_hours, open_hours_updated, reviews_count, rating, main_image, reviews, url, lat, lon, place_id, country, and more.