100+ datasets found
  1. Mobile Apps ScreenTime Analysis

    • kaggle.com
    zip
    Updated Dec 31, 2024
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    Anand Shaw (2024). Mobile Apps ScreenTime Analysis [Dataset]. https://www.kaggle.com/datasets/anandshaw2001/mobile-apps-screentime-analysis
    Explore at:
    zip(1597 bytes)Available download formats
    Dataset updated
    Dec 31, 2024
    Authors
    Anand Shaw
    License

    https://creativecommons.org/publicdomain/zero/1.0/https://creativecommons.org/publicdomain/zero/1.0/

    Description

    Don't forget to hit the upvote🙏

    This DataSet Contains Detailed Insights into Mobile App Usage Patterns, including ScreenTime, notifications received, and app openings. The data spans multiple days in August and some popular apps, offering a granular view of digital behavior.

    Features:

    1. Date: The date of the recorded data.

    2. App: The name of the mobile application.

    3. Usage (minutes): Total minutes spent using the app on a given day.

    4. Notifications: Number of notifications received from the app.

    5. Times Opened: How many times the app was launched.

  2. Screen Time and App Usage Dataset (iOS/Android)

    • kaggle.com
    zip
    Updated Apr 19, 2025
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    Khushi Yadav (2025). Screen Time and App Usage Dataset (iOS/Android) [Dataset]. https://www.kaggle.com/datasets/khushikyad001/screen-time-and-app-usage-dataset-iosandroid
    Explore at:
    zip(157038 bytes)Available download formats
    Dataset updated
    Apr 19, 2025
    Authors
    Khushi Yadav
    License

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

    Description

    This dataset simulates anonymized mobile screen time and app usage data collected from Android/iOS users over a 3-month period (Jan–April 2024). It captures daily usage trends across various app categories including:

    Productivity: Google Docs, Notion, Slack

    Entertainment: YouTube, Netflix, TikTok

    Social Media: Instagram, WhatsApp, Facebook

    Utilities: Chrome, Gmail, Maps

    For YouTube, additional engagement statistics such as views, likes, and comments are included to analyze video popularity and content consumption behavior.

    The dataset enables exploration of:

    Productivity vs. entertainment screen time patterns

    Daily usage fluctuations

    App-specific user engagement

    Correlation between time spent and user interactions

    YouTube content virality metrics

    This is a great resource for:

    EDA projects

    Behavioral clustering

    Dashboard development

    Time series and anomaly detection

    Building recommendation or focus-assistive apps

  3. h

    Data from: MobileViews

    • huggingface.co
    Updated Sep 22, 2024
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    mllm (2024). MobileViews [Dataset]. https://huggingface.co/datasets/mllmTeam/MobileViews
    Explore at:
    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    Sep 22, 2024
    Authors
    mllm
    License

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

    Description

    🚀 MobileViews: A Large-Scale Mobile GUI Dataset

    MobileViews is a large-scale dataset designed to support research on mobile agents and mobile user interface (UI) analysis. The first release, MobileViews-600K, includes over 600,000 mobile UI screenshot-view hierarchy (VH) pairs collected from over 20,000 apps on the Google Play Store. This dataset is based on the DroidBot, which we have optimized for large-scale data collection, capturing more comprehensive interaction details while… See the full description on the dataset page: https://huggingface.co/datasets/mllmTeam/MobileViews.

  4. User mobile app interaction data

    • kaggle.com
    zip
    Updated Jan 15, 2025
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    Mohamed Moslemani (2025). User mobile app interaction data [Dataset]. https://www.kaggle.com/datasets/mohamedmoslemani/user-mobile-app-interaction-data
    Explore at:
    zip(6809111 bytes)Available download formats
    Dataset updated
    Jan 15, 2025
    Authors
    Mohamed Moslemani
    License

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

    Description

    This dataset has been artificially generated to mimic real-world user interactions within a mobile application. It contains 100,000 rows of data, each row of which represents a single event or action performed by a synthetic user. The dataset was designed to capture many of the attributes commonly tracked by app analytics platforms, such as device details, network information, user demographics, session data, and event-level interactions.

    Key Features Included

    User & Session Metadata

    User ID: A unique integer identifier for each synthetic user. Session ID: Randomly generated session identifiers (e.g., S-123456), capturing the concept of user sessions. IP Address: Fake IP addresses generated via Faker to simulate different network origins. Timestamp: Randomized timestamps (within the last 30 days) indicating when each interaction occurred. Session Duration: An approximate measure (in seconds) of how long a user remained active. Device & Technical Details

    Device OS & OS Version: Simulated operating systems (Android/iOS) with plausible version numbers. Device Model: Common phone models (e.g., “Samsung Galaxy S22,” “iPhone 14 Pro,” etc.). Screen Resolution: Typical screen resolutions found in smartphones (e.g., “1080x1920”). Network Type: Indicates whether the user was on Wi-Fi, 5G, 4G, or 3G. Location & Locale

    Location Country & City: Random global locations generated using Faker. App Language: Represents the user’s app language setting (e.g., “en,” “es,” “fr,” etc.). User Properties

    Battery Level: The phone’s battery level as a percentage (0–100). Memory Usage (MB): Approximate memory consumption at the time of the event. Subscription Status: Boolean flag indicating if the user is subscribed to a premium service. User Age: Random integer ranging from teenagers to seniors (13–80). Phone Number: Fake phone numbers generated via Faker. Push Enabled: Boolean flag indicating if the user has push notifications turned on. Event-Level Interactions

    Event Type: The action taken by the user (e.g., “click,” “view,” “scroll,” “like,” “share,” etc.). Event Target: The UI element or screen component interacted with (e.g., “home_page_banner,” “search_bar,” “notification_popup”). Event Value: A numeric field indicating additional context for the event (e.g., intensity, count, rating). App Version: Simulated version identifier for the mobile application (e.g., “4.2.8”). Data Quality & “Noise” To better approximate real-world data, 1% of all fields have been intentionally “corrupted” or altered:

    Typos and Misspellings: Random single-character edits, e.g., “Andro1d” instead of “Android.” Missing Values: Some cells might be blank (None) to reflect dropped or unrecorded data. Random String Injections: Occasional random alphanumeric strings inserted where they don’t belong. These intentional discrepancies can help data scientists practice data cleaning, outlier detection, and data wrangling techniques.

    Usage & Applications

    Data Cleaning & Preprocessing: Ideal for practicing how to handle missing values, inconsistent data, and noise in a realistic scenario. Analytics & Visualization: Demonstrate user interaction funnels, session durations, usage by device/OS, etc. Machine Learning & Modeling: Suitable for building classification or clustering models (e.g., user segmentation, event classification). Simulation for Feature Engineering: Experiment with deriving new features (e.g., session frequency, average battery drain, etc.).

    Important Notes & Disclaimer

    Synthetic Data: All entries (users, device info, IPs, phone numbers, etc.) are artificially generated and do not correspond to real individuals. Privacy & Compliance: Since no real personal data is present, there are no direct privacy concerns. However, always handle synthetic data ethically.

  5. Worldwide Mobile App User Behavior Dataset

    • kaggle.com
    • dataverse.harvard.edu
    zip
    Updated Dec 6, 2023
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    Patricia Carvalho M (2023). Worldwide Mobile App User Behavior Dataset [Dataset]. http://doi.org/10.7910/DVN/27459
    Explore at:
    zip(6323571 bytes)Available download formats
    Dataset updated
    Dec 6, 2023
    Authors
    Patricia Carvalho M
    License

    https://creativecommons.org/publicdomain/zero/1.0/https://creativecommons.org/publicdomain/zero/1.0/

    Description

    From Harvard Dataverse

    Description: We surveyed 10,208 people from more than 15 countries on their mobile app usage behavior. The countries include USA, China, Japan, Germany, France, Brazil, UK, Italy, Russia, India, Canada, Spain, Australia, Mexico, and South Korea. We asked respondents about: (1) their mobile app user behavior in terms of mobile app usage, including the app stores they use, what triggers them to look for apps, why they download apps, why they abandon apps, and the types of apps they download. (2) their demographics including gender, age, marital status, nationality, country of residence, first language, ethnicity, education level, occupation, and household income (3) their personality using the Big-Five personality traits This dataset contains the results of the survey.

    Author: Lim, Soo Ling, 2014, "Worldwide Mobile App User Behavior Dataset", https://doi.org/10.7910/DVN/27459, Harvard Dataverse, V1

    Author filliation: University College London

  6. i

    LSApp: Large dataset of Sequential mobile App usage

    • ieee-dataport.org
    Updated Feb 24, 2025
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    Cunquan Qu (2025). LSApp: Large dataset of Sequential mobile App usage [Dataset]. https://ieee-dataport.org/documents/lsapp-large-dataset-sequential-mobile-app-usage
    Explore at:
    Dataset updated
    Feb 24, 2025
    Authors
    Cunquan Qu
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    During the study period

  7. RICO dataset

    • kaggle.com
    zip
    Updated Dec 1, 2021
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    Onur Gunes (2021). RICO dataset [Dataset]. https://www.kaggle.com/datasets/onurgunes1993/rico-dataset
    Explore at:
    zip(6703669364 bytes)Available download formats
    Dataset updated
    Dec 1, 2021
    Authors
    Onur Gunes
    Description

    Context

    Data-driven models help mobile app designers understand best practices and trends, and can be used to make predictions about design performance and support the creation of adaptive UIs. This paper presents Rico, the largest repository of mobile app designs to date, created to support five classes of data-driven applications: design search, UI layout generation, UI code generation, user interaction modeling, and user perception prediction. To create Rico, we built a system that combines crowdsourcing and automation to scalably mine design and interaction data from Android apps at runtime. The Rico dataset contains design data from more than 9.3k Android apps spanning 27 categories. It exposes visual, textual, structural, and interactive design properties of more than 66k unique UI screens. To demonstrate the kinds of applications that Rico enables, we present results from training an autoencoder for UI layout similarity, which supports query-by-example search over UIs.

    Content

    Rico was built by mining Android apps at runtime via human-powered and programmatic exploration. Like its predecessor ERICA, Rico’s app mining infrastructure requires no access to — or modification of — an app’s source code. Apps are downloaded from the Google Play Store and served to crowd workers through a web interface. When crowd workers use an app, the system records a user interaction trace that captures the UIs visited and the interactions performed on them. Then, an automated agent replays the trace to warm up a new copy of the app and continues the exploration programmatically, leveraging a content-agnostic similarity heuristic to efficiently discover new UI states. By combining crowdsourcing and automation, Rico can achieve higher coverage over an app’s UI states than either crawling strategy alone. In total, 13 workers recruited on UpWork spent 2,450 hours using apps on the platform over five months, producing 10,811 user interaction traces. After collecting a user trace for an app, we ran the automated crawler on the app for one hour.

    Acknowledgements

    UNIVERSITY OF ILLINOIS AT URBANA-CHAMPAIGN https://interactionmining.org/rico

    Inspiration

    The Rico dataset is large enough to support deep learning applications. We trained an autoencoder to learn an embedding for UI layouts, and used it to annotate each UI with a 64-dimensional vector representation encoding visual layout. This vector representation can be used to compute structurally — and often semantically — similar UIs, supporting example-based search over the dataset. To create training inputs for the autoencoder that embed layout information, we constructed a new image for each UI capturing the bounding box regions of all leaf elements in its view hierarchy, differentiating between text and non-text elements. Rico’s view hierarchies obviate the need for noisy image processing or OCR techniques to create these inputs.

  8. Data collection among global most privacy demanding mobile iOS apps 2023, by...

    • statista.com
    Updated Jan 8, 2026
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    Statista (2026). Data collection among global most privacy demanding mobile iOS apps 2023, by type [Dataset]. https://www.statista.com/statistics/1440864/data-collection-most-ios-apps-by-type/
    Explore at:
    Dataset updated
    Jan 8, 2026
    Dataset authored and provided by
    Statistahttp://statista.com/
    Time period covered
    May 17, 2023
    Area covered
    Worldwide
    Description

    As of May 2023, the mobile app version of popular ********************************* used ** of the data points they collected to track their iOS users, as well as collecting ** data points connected to the user's identity. Facebook, which was identified as the most data-hungry app among all the mobile social media, used ***** of its ** collected data points to track users. Dating app ****** collected ** data points collected to the users' identity, as well as **** data points to track users activity.

  9. D

    The manifest and store data of 870,515 Android mobile applications

    • dataverse.nl
    zip
    Updated Jun 9, 2022
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    Fadi Mohsen; Fadi Mohsen; Dimka Karastoyanova; Dimka Karastoyanova; George Azzopardi; George Azzopardi (2022). The manifest and store data of 870,515 Android mobile applications [Dataset]. http://doi.org/10.34894/H0YJFT
    Explore at:
    zip(202636617)Available download formats
    Dataset updated
    Jun 9, 2022
    Dataset provided by
    DataverseNL
    Authors
    Fadi Mohsen; Fadi Mohsen; Dimka Karastoyanova; Dimka Karastoyanova; George Azzopardi; George Azzopardi
    License

    CC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
    License information was derived automatically

    Time period covered
    Apr 15, 2017 - Jun 17, 2019
    Description

    We built a crawler to collect data from the Google Play store including the application's metadata and APK files. The manifest files were extracted from the APK files and then processed to extract the features. The data set is composed of 870,515 records/apps, and for each app we produced 48 features. The data set was used to built and test two bootstrap aggregating of multiple XGBoost machine learning classifiers. The dataset were collected between April 2017 and November 2018. We then checked the status of these applications on three different occasions; December 2018, February 2019, and May-June 2019.

  10. c

    Unlocking User Sentiment: The App Store Reviews Dataset

    • crawlfeeds.com
    json, zip
    Updated Jun 20, 2025
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    Crawl Feeds (2025). Unlocking User Sentiment: The App Store Reviews Dataset [Dataset]. https://crawlfeeds.com/datasets/app-store-reviews-dataset
    Explore at:
    json, zipAvailable download formats
    Dataset updated
    Jun 20, 2025
    Dataset authored and provided by
    Crawl Feeds
    License

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

    Description

    This dataset offers a focused and invaluable window into user perceptions and experiences with applications listed on the Apple App Store. It is a vital resource for app developers, product managers, market analysts, and anyone seeking to understand the direct voice of the customer in the dynamic mobile app ecosystem.

    Dataset Specifications:

    • Investment: $45.0
    • Status: Published and immediately available.
    • Category: Ratings and Reviews Data
    • Format: Compressed ZIP archive containing JSON files, ensuring easy integration into your analytical tools and platforms.
    • Volume: Comprises 10,000 unique app reviews, providing a robust sample for qualitative and quantitative analysis of user feedback.
    • Timeliness: Last crawled: (This field is blank in your provided info, which means its recency is currently unknown. If this were a real product, specifying this would be critical for its value proposition.)

    Richness of Detail (11 Comprehensive Fields):

    Each record in this dataset provides a detailed breakdown of a single App Store review, enabling multi-dimensional analysis:

    1. Review Content:

      • review: The full text of the user's written feedback, crucial for Natural Language Processing (NLP) to extract themes, sentiment, and common keywords.
      • title: The title given to the review by the user, often summarizing their main point.
      • isEdited: A boolean flag indicating whether the review has been edited by the user since its initial submission. This can be important for tracking evolving sentiment or understanding user behavior.
    2. Reviewer & Rating Information:

      • username: The public username of the reviewer, allowing for analysis of engagement patterns from specific users (though not personally identifiable).
      • rating: The star rating (typically 1-5) given by the user, providing a quantifiable measure of satisfaction.
    3. App & Origin Context:

      • app_name: The name of the application being reviewed.
      • app_id: A unique identifier for the application within the App Store, enabling direct linking to app details or other datasets.
      • country: The country of the App Store storefront where the review was left, allowing for geographic segmentation of feedback.
    4. Metadata & Timestamps:

      • _id: A unique identifier for the specific review record in the dataset.
      • crawled_at: The timestamp indicating when this particular review record was collected by the data provider (Crawl Feeds).
      • date: The original date the review was posted by the user on the App Store.

    Expanded Use Cases & Analytical Applications:

    This dataset is a goldmine for understanding what users truly think and feel about mobile applications. Here's how it can be leveraged:

    • Product Development & Improvement:

      • Bug Detection & Prioritization: Analyze negative review text to identify recurring technical issues, crashes, or bugs, allowing developers to prioritize fixes based on user impact.
      • Feature Requests & Roadmap Prioritization: Extract feature suggestions from positive and neutral review text to inform future product roadmap decisions and develop features users actively desire.
      • User Experience (UX) Enhancement: Understand pain points related to app design, navigation, and overall usability by analyzing common complaints in the review field.
      • Version Impact Analysis: If integrated with app version data, track changes in rating and sentiment after new app updates to assess the effectiveness of bug fixes or new features.
    • Market Research & Competitive Intelligence:

      • Competitor Benchmarking: Analyze reviews of competitor apps (if included or combined with similar datasets) to identify their strengths, weaknesses, and user expectations within a specific app category.
      • Market Gap Identification: Discover unmet user needs or features that users desire but are not adequately provided by existing apps.
      • Niche Opportunities: Identify specific use cases or user segments that are underserved based on recurring feedback.
    • Marketing & App Store Optimization (ASO):

      • Sentiment Analysis: Perform sentiment analysis on the review and title fields to gauge overall user satisfaction, pinpoint specific positive and negative aspects, and track sentiment shifts over time.
      • Keyword Optimization: Identify frequently used keywords and phrases in reviews to optimize app store listings, improving discoverability and search ranking.
      • Messaging Refinement: Understand how users describe and use the app in their own words, which can inform marketing copy and advertising campaigns.
      • Reputation Management: Monitor rating trends and identify critical reviews quickly to facilitate timely responses and proactive customer engagement.
    • Academic & Data Science Research:

      • Natural Language Processing (NLP): The review and title fields are excellent for training and testing NLP models for sentiment analysis, topic modeling, named entity recognition, and text summarization.
      • User Behavior Analysis: Study patterns in rating distribution, isEdited status, and date to understand user engagement and feedback cycles.
      • Cross-Country Comparisons: Analyze country-specific reviews to understand regional differences in app perception, feature preferences, or cultural nuances in feedback.

    This App Store Reviews dataset provides a direct, unfiltered conduit to understanding user needs and ultimately driving better app performance and greater user satisfaction. Its structured format and granular detail make it an indispensable asset for data-driven decision-making in the mobile app industry.

  11. Number of global mobile app downloads 2018-2025

    • statista.com
    Updated Jan 26, 2026
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    Statista (2026). Number of global mobile app downloads 2018-2025 [Dataset]. https://www.statista.com/statistics/271644/worldwide-free-and-paid-mobile-app-store-downloads/
    Explore at:
    Dataset updated
    Jan 26, 2026
    Dataset authored and provided by
    Statistahttp://statista.com/
    Area covered
    Worldwide
    Description

    Global app downloads have plateaued in recent years, especially when comparing between the previous figures provided by data.ai and Sensor Tower. However, global downloads seemed to have recovered in 2025, reaching nearly *** billion unique downloads. Why the difference? Source methodology explains the gap The discrepancy arises from considerable differences in the methodology used by the sources to aggregate and generate the data. Sensor Tower reports only unique downloads per user account, excluding app updates, re-downloads, and installations on multiple devices by the same user. In contrast, data.ai includes these additional activities as well as downloads from third-party Android stores and a broader geographic scope, resulting in substantially higher total counts. As a result, Sensor Tower's numbers better reflect new user acquisition, while data.ai's encompass all market activity and total engagement. Despite stagnating downloads, user spending is growing While the number of downloads is leveling off, consumer spending on in-app purchases and related revenue has grown in 2025 to *** billion U.S. dollars, up from around *** billion U.S. dollars in 2023. While gaming remains the highest-grossing app category overall, other categories drove the growth. The entertainment, photo & video, productivity, and social networking categories each grew by at least *** billion U.S. dollars in revenue in 2025 compared to the previous year.

  12. c

    Google Play Store Android Apps Dataset in CSV Format

    • crawlfeeds.com
    csv, zip
    Updated Dec 12, 2025
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    Crawl Feeds (2025). Google Play Store Android Apps Dataset in CSV Format [Dataset]. https://crawlfeeds.com/datasets/google-play-store-apps-dataset
    Explore at:
    zip, csvAvailable download formats
    Dataset updated
    Dec 12, 2025
    Dataset authored and provided by
    Crawl Feeds
    License

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

    Description

    Looking for a Google Play apps dataset to analyze mobile app trends? The Google Play Store Apps Dataset delivers ~10,000 app records from the Google Play Store, including key app metadata like app name, category, rating, installs, price, developer details, and more. This dataset is ideal for app market research, mobile analytics, app store optimization studies (ASO), data science projects, and trend analysis.

    Collect structured data on apps across genres and niches, so you can build visualizations, train machine-learning models, analyze user engagement, or compare categories like games, productivity, health & fitness, and finance.

    Key Features

    Rich App Metadata: Includes app_id, app_name, category, rating, review_count, price, installs, content_rating, genres, last_updated, current_version, android_version, developer_name, developer_email, <span style="font-size: 12pt; font-family: 'Roboto Mono',monospace; color: #188038; background-color: transparent; font-weight: 400; font-style: normal; font-variant: normal; text-decoration: none; vertical-align: baseline; white-space:

  13. b

    App Downloads Data (2026)

    • businessofapps.com
    Updated Aug 1, 2025
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    Business of Apps (2025). App Downloads Data (2026) [Dataset]. https://www.businessofapps.com/data/app-statistics/
    Explore at:
    Dataset updated
    Aug 1, 2025
    Dataset authored and provided by
    Business of Apps
    License

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

    Description

    The iOS App Store launched in 2008 with 500 apps. Today, there are over four million apps available across iOS and Android platforms, extending to a wide range of sub-genres and niches. These apps...

  14. P

    Mobile App Data Alternative Data

    • paradoxintelligence.com
    Updated Sep 5, 2025
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    Paradox Intelligence (2025). Mobile App Data Alternative Data [Dataset]. https://www.paradoxintelligence.com/datasets/mobile-app
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    Dataset updated
    Sep 5, 2025
    Dataset authored and provided by
    Paradox Intelligence
    License

    https://www.paradoxintelligence.com/termshttps://www.paradoxintelligence.com/terms

    Time period covered
    2008 - 2025
    Area covered
    Global
    Variables measured
    App Store Rankings, App Download Trends, User Engagement Score
    Description

    App usage patterns and mobile behavior analytics providing digital ecosystem insights for institutional investors.

  15. Google Play Store Apps Dataset

    • kaggle.com
    zip
    Updated Oct 30, 2024
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    Yusuf Delikkaya (2024). Google Play Store Apps Dataset [Dataset]. https://www.kaggle.com/datasets/yusufdelikkaya/google-play-store-apps-dataset
    Explore at:
    zip(319016 bytes)Available download formats
    Dataset updated
    Oct 30, 2024
    Authors
    Yusuf Delikkaya
    License

    https://creativecommons.org/publicdomain/zero/1.0/https://creativecommons.org/publicdomain/zero/1.0/

    Description

    Description:

    • The dataset comprises anonymized data on apps available on the Google Play Store, capturing various aspects such as ratings, downloads, and categorization.
    • The dataset has 10,841 entries, with some columns containing missing values, particularly in "Rating," "Type," "Content Rating," "Current Ver," and "Android Ver".
    • This dataset can be utilized for analyzing trends in mobile app usage, user preferences, and app performance metrics across different categories.
    • It can aid in understanding the impact of factors like app size, rating, and category on user downloads and popularity.
    • This dataset can be utilized for analyzing app popularity, user preferences, and the relationship between app features (e.g., size, price) and downloads.
    • It can help in identifying trends in app categories, assessing user satisfaction through ratings and reviews, and providing insights for app developers and marketers on user engagement and app performance.

    Features:

    Column NameDescription
    AppThe name of the app as listed on the Google Play Store.
    CategoryThe category to which the app belongs (e.g., ART_AND_DESIGN, GAME).
    RatingThe user rating of the app on a scale from 1 to 5.
    ReviewsThe number of user reviews for the app.
    SizeThe size of the app in megabytes (MB) or kilobytes (KB).
    InstallsThe number of installs/downloads of the app (e.g., 10,000+).
    TypeIndicates whether the app is free or paid.
    PriceThe price of the app in USD, if it is a paid app.
    Content RatingThe target audience for the app (e.g., Everyone, Teen, Mature 17+).
    GenresThe genres associated with the app (e.g., Art & Design, Creativity).
    Last UpdatedThe date when the app was last updated.
    Current VerThe current version of the app.
    Android VerThe minimum Android version required to run the app.
  16. g

    Mobile Device Usage and User Behavior Dataset

    • gts.ai
    json, csv, excel
    Updated Jan 9, 2025
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    GLOBOSE TECHNOLOGY SOLUTIONS PRIVATE LIMITED (2025). Mobile Device Usage and User Behavior Dataset [Dataset]. https://gts.ai/dataset-download/mobile-device-usage-and-user-behavior-dataset/
    Explore at:
    json, csv, excelAvailable download formats
    Dataset updated
    Jan 9, 2025
    Dataset authored and provided by
    GLOBOSE TECHNOLOGY SOLUTIONS PRIVATE LIMITED
    License

    CC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
    License information was derived automatically

    Description

    The Mobile Device Usage and User Behavior Dataset contains 700 structured samples including app usage metrics, screen time patterns, battery consumption data, session duration, and user behavior classification labels. Designed for AI/ML model training, behavioral analytics, predictive modeling, and mobile performance optimization research.

  17. h

    mobilerec

    • huggingface.co
    Updated Feb 21, 2023
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    MultifacetedNLPDatasets (2023). mobilerec [Dataset]. https://huggingface.co/datasets/recmeapp/mobilerec
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    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    Feb 21, 2023
    Authors
    MultifacetedNLPDatasets
    Description

    Dataset Card for Dataset Name

      Dataset Summary
    

    MobileRec is a large-scale app recommendation dataset. There are 19.3 million user\item interactions. This is a 5-core dataset. User\item interactions are sorted in ascending chronological order. There are 0.7 million users who have had at least five distinct interactions. There are 10173 apps in total.

      Supported Tasks and Leaderboards
    

    Sequential Recommendation

      Languages
    

    English

      How to use the… See the full description on the dataset page: https://huggingface.co/datasets/recmeapp/mobilerec.
    
  18. m

    Android permissions dataset, Android Malware and benign Application Data set...

    • data.mendeley.com
    Updated Mar 4, 2020
    + more versions
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    Arvind Mahindru (2020). Android permissions dataset, Android Malware and benign Application Data set (consist of permissions and API calls) [Dataset]. http://doi.org/10.17632/b4mxg7ydb7.3
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    Dataset updated
    Mar 4, 2020
    Authors
    Arvind Mahindru
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    This dataset consists of apps needed permissions during installation and run-time. We collect apps from three different sources google play, third-party apps and malware dataset. This file contains more than 5,00,000 Android apps. features extracted at the time of installation and execution. One file contains the name of the features and others contain .apk file corresponding to it extracted permissions and API calls. Benign apps are collected from Google's play store, hiapk, app china, Android, mumayi , gfan slideme, and pandaapp. These .apk files collected from the last three years continuously and contain 81 distinct malware families.

  19. Mobile App Usage Pattern Analysis by Category

    • kaggle.com
    zip
    Updated May 17, 2025
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    Preksha Dewoolkar (2025). Mobile App Usage Pattern Analysis by Category [Dataset]. https://www.kaggle.com/datasets/prekshad2166/app-usage-by-category
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    zip(40712 bytes)Available download formats
    Dataset updated
    May 17, 2025
    Authors
    Preksha Dewoolkar
    License

    https://creativecommons.org/publicdomain/zero/1.0/https://creativecommons.org/publicdomain/zero/1.0/

    Description

    This dataset provides comprehensive insights into mobile app usage patterns across different categories, including education, social media, productivity, entertainment, health, news, and shopping applications. It contains screen time data for 500 users with demographic information such as age and gender, making it valuable for analyzing digital behavior patterns and productivity correlations.

  20. User data collection in select mobile iOS map apps worldwide 2021, by type

    • statista.com
    Updated Jan 8, 2026
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    Statista (2026). User data collection in select mobile iOS map apps worldwide 2021, by type [Dataset]. https://www.statista.com/statistics/1305079/data-points-collected-gps-map-apps-ios-by-type/
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    Dataset updated
    Jan 8, 2026
    Dataset authored and provided by
    Statistahttp://statista.com/
    Time period covered
    Mar 2021
    Area covered
    Worldwide
    Description

    As of March 2021, Waze was the mobile GPN navigation app found to collect the largest amount of data from global iOS users, with 21 data points collected across all examined segments. Maps.me collected a total of 20 data points from its users, including five data points on contact information. Hiking and trail GPS map Gaia followed, with 13 data points, respectively.

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Anand Shaw (2024). Mobile Apps ScreenTime Analysis [Dataset]. https://www.kaggle.com/datasets/anandshaw2001/mobile-apps-screentime-analysis
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Mobile Apps ScreenTime Analysis

Daily Mobile Apps ScreenTime and Usage Patterns Analysis

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zip(1597 bytes)Available download formats
Dataset updated
Dec 31, 2024
Authors
Anand Shaw
License

https://creativecommons.org/publicdomain/zero/1.0/https://creativecommons.org/publicdomain/zero/1.0/

Description

Don't forget to hit the upvote🙏

This DataSet Contains Detailed Insights into Mobile App Usage Patterns, including ScreenTime, notifications received, and app openings. The data spans multiple days in August and some popular apps, offering a granular view of digital behavior.

Features:

1. Date: The date of the recorded data.

2. App: The name of the mobile application.

3. Usage (minutes): Total minutes spent using the app on a given day.

4. Notifications: Number of notifications received from the app.

5. Times Opened: How many times the app was launched.

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