13 datasets found
  1. Mobile app user Android retention rate worldwide Q3 2024, by category

    • statista.com
    Updated Jan 31, 2025
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    Statista (2025). Mobile app user Android retention rate worldwide Q3 2024, by category [Dataset]. https://www.statista.com/statistics/259329/ios-and-android-app-user-retention-rate/
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    Dataset updated
    Jan 31, 2025
    Dataset authored and provided by
    Statistahttp://statista.com/
    Area covered
    Worldwide
    Description

    Not all app categories can boast the same degree of user retention on day 30. While news apps were reported in the third quarter of 2024 to have a retention rate of almost 10 percent, social media apps presented less than two percent retention rate after 30 days from install. Entertainment apps presented a three percent installation rate, while a shopping apps had a retention rate of around four percent one month after installation. Before retention: user acquisition Gaining new users is fundamental for the healthy growth of a mobile application, and app developers have an array of tools that can be used to expand their audience. As of the second quarter of 2022, CPI, or cost per install, was the most used pricing model for user acquisition campaigns according to app developers worldwide. The cost of acquiring one new install in North America was of 5.28 U.S. dollars, but driving in-app purchases in the region was more pricey, with a cost of roughly 75 U.S. dollars per user. The future of in-app advertising In recent years, subscriptions and in-app purchases have become more popular app monetization practices, with users finally willing to pay for app premium functionalities and services. In 2020, video ads were reportedly the most expensive type of ads to drive conversions on both iOS and Android apps, while banner ads had a cost per action (CPA) of 36.77 U.S. dollars on iOS, and 10.28 U.S. dollars on Android.

  2. d

    Bumble, Match, Tinder Dating App Data | Consumer Transaction Data | US, EU,...

    • datarade.ai
    .json, .xml, .csv
    Updated Jun 26, 2024
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    Measurable AI (2024). Bumble, Match, Tinder Dating App Data | Consumer Transaction Data | US, EU, Asia, EMEA, LATAM, MENA, India | Granular & Aggregate Data available [Dataset]. https://datarade.ai/data-products/bumble-match-tinder-dating-app-data-consumer-transaction-measurable-ai
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    .json, .xml, .csvAvailable download formats
    Dataset updated
    Jun 26, 2024
    Dataset authored and provided by
    Measurable AI
    Area covered
    United States
    Description

    The Measurable AI Dating App Consumer Transaction Dataset is a leading source of in-app purchases , offering data collected directly from users via Proprietary Consumer Apps, with millions of opt-in users.

    We source our in-app and email receipt consumer data panel via two consumer apps which garner the express consent of our end-users (GDPR compliant). We then aggregate and anonymize all the transactional data to produce raw and aggregate datasets for our clients.

    Use Cases Our clients leverage our datasets to produce actionable consumer insights such as: - Market share analysis - User behavioral traits (e.g. retention rates) - Average order values - User overlap between competitors - Promotional strategies used by the key players. Several of our clients also use our datasets for forecasting and understanding industry trends better.

    Coverage - Asia - EMEA (Spain, United Arab Emirates) - USA - Europe

    Granular Data Itemized, high-definition data per transaction level with metrics such as - Order value - Features/subscription plans purchased - No. of orders per user - Promotions used - Geolocation data and more

    Aggregate Data - Weekly/ monthly order volume - Revenue delivered in aggregate form, with historical data dating back to 2018. All the transactional e-receipts are sent from app to users’ registered accounts.

    Most of our clients are fast-growing Tech Companies, Financial Institutions, Buyside Firms, Market Research Agencies, Consultancies and Academia.

    Our dataset is GDPR compliant, contains no PII information and is aggregated & anonymized with user consent. Contact michelle@measurable.ai for a data dictionary and to find out our volume in each country.

  3. d

    Rappi E-Receipt Data | Food Delivery Transactions (Alternative Data) | Latin...

    • datarade.ai
    .json, .xml, .csv
    Updated Oct 13, 2023
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    Measurable AI (2023). Rappi E-Receipt Data | Food Delivery Transactions (Alternative Data) | Latin America | Granular & Aggregate Data available [Dataset]. https://datarade.ai/data-products/rappi-e-receipt-data-food-delivery-transactions-alternativ-measurable-ai
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    .json, .xml, .csvAvailable download formats
    Dataset updated
    Oct 13, 2023
    Dataset authored and provided by
    Measurable AI
    Area covered
    Colombia, United States of America, Argentina, Brazil, Mexico, Chile, Japan, Latin America
    Description

    The Measurable AI Rappi alternative Dataset is a leading source of email receipts and transaction data, offering data collected directly from users via Proprietary Consumer Apps, with millions of opt-in users.

    We source our email receipt consumer data panel via two consumer apps which garner the express consent of our end-users (GDPR compliant). We then aggregate and anonymize all the transactional data to produce raw and aggregate datasets for our clients.

    Use Cases Our clients leverage our alternative data to produce actionable consumer insights for use cases such as: - User overlap between players - Market share analysis - User behavioral traits (e.g. retention rates, spending patterns) - Average order values - Promotional strategies used by the key players - Items ordered (SKU level data) Several of our clients also use our datasets for forecasting and understanding industry trends better.

    Coverage - LATAM (Brazil, Mexico, Argentina, Colombia, Chile)

    Granular Data Itemized, high-definition data per transaction level with metrics such as - Order value - Items ordered - No. of orders per user - Delivery fee - Service fee - Promotions used - Geolocation data and more - MAIDs

    Aggregate Data - Weekly/ monthly order volume - Revenue delivered in aggregate form, with historical data dating back to 2018. All the transactional e-receipts are sent from the Rappi food delivery app to users’ registered accounts.

    Most of our clients are fast-growing Tech Companies, Financial Institutions, Buyside Firms, Market Research Agencies, Consultancies and Academia.

    Our dataset is GDPR compliant, contains no PII information and is aggregated & anonymized with user consent. Contact michelle@measurable.ai for a data dictionary and to find out our volume in each country.

  4. TikTok global quarterly downloads 2018-2024

    • statista.com
    • es.statista.com
    Updated Feb 5, 2025
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    Statista Research Department (2025). TikTok global quarterly downloads 2018-2024 [Dataset]. https://www.statista.com/topics/1002/mobile-app-usage/
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    Dataset updated
    Feb 5, 2025
    Dataset provided by
    Statistahttp://statista.com/
    Authors
    Statista Research Department
    Description

    In the fourth quarter of 2024, TikTok generated around 186 million downloads from users worldwide. Initially launched in China first by ByteDance as Douyin, the short-video format was popularized by TikTok and took over the global social media environment in 2020. In the first quarter of 2020, TikTok downloads peaked at over 313.5 million worldwide, up by 62.3 percent compared to the first quarter of 2019. TikTok interactions: is there a magic formula for content success? In 2024, TikTok registered an engagement rate of approximately 4.64 percent on video content hosted on its platform. During the same examined year, the social video app recorded over 1,100 interactions on average. These interactions were primarily composed of likes, while only recording less than 20 comments per piece of content on average in 2024. The platform has been actively monitoring the issue of fake interactions, as it removed around 236 million fake likes during the first quarter of 2024. Though there is no secret formula to get the maximum of these metrics, recommended video length can possibly contribute to the success of content on TikTok. It was recommended that tiny TikTok accounts with up to 500 followers post videos that are around 2.6 minutes long as of the first quarter of 2024. While, the ideal video duration for huge TikTok accounts with over 50,000 followers was 7.28 minutes. The average length of TikTok videos posted by the creators in 2024 was around 43 seconds. What’s trending on TikTok Shop? Since its launch in September 2023, TikTok Shop has become one of the most popular online shopping platforms, offering consumers a wide variety of products. In 2023, TikTok shops featuring beauty and personal care items sold over 370 million products worldwide. TikTok shops featuring womenswear and underwear, as well as food and beverages, followed with 285 and 138 million products sold, respectively. Similarly, in the United States market, health and beauty products were the most-selling items, accounting for 85 percent of sales made via the TikTok Shop feature during the first month of its launch. In 2023, Indonesia was the market with the largest number of TikTok Shops, hosting over 20 percent of all TikTok Shops. Thailand and Vietnam followed with 18.29 and 17.54 percent of the total shops listed on the famous short video platform, respectively. 

  5. d

    Uber Email Receipt Data | Consumer Transaction Data | Asia, EMEA, LATAM,...

    • datarade.ai
    .json, .xml, .csv
    Updated Feb 26, 2024
    + more versions
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    Measurable AI (2024). Uber Email Receipt Data | Consumer Transaction Data | Asia, EMEA, LATAM, MENA, India | Granular & Aggregate Data available [Dataset]. https://datarade.ai/data-products/uber-email-receipt-data-consumer-transaction-data-asia-e-measurable-ai
    Explore at:
    .json, .xml, .csvAvailable download formats
    Dataset updated
    Feb 26, 2024
    Dataset authored and provided by
    Measurable AI
    Area covered
    United States of America, Argentina, Mexico, Japan, Brazil, Chile, Colombia, Asia, Latin America
    Description

    The Measurable AI Amazon Consumer Transaction Dataset is a leading source of email receipts and consumer transaction data, offering data collected directly from users via Proprietary Consumer Apps, with millions of opt-in users.

    We source our email receipt consumer data panel via two consumer apps which garner the express consent of our end-users (GDPR compliant). We then aggregate and anonymize all the transactional data to produce raw and aggregate datasets for our clients.

    Use Cases Our clients leverage our datasets to produce actionable consumer insights such as: - Market share analysis - User behavioral traits (e.g. retention rates) - Average order values - Promotional strategies used by the key players. Several of our clients also use our datasets for forecasting and understanding industry trends better.

    Coverage - Asia (Japan) - EMEA (Spain, United Arab Emirates) - Continental Europe - USA

    Granular Data Itemized, high-definition data per transaction level with metrics such as - Order value - Items ordered - No. of orders per user - Delivery fee - Service fee - Promotions used - Geolocation data and more

    Aggregate Data - Weekly/ monthly order volume - Revenue delivered in aggregate form, with historical data dating back to 2018. All the transactional e-receipts are sent from app to users’ registered accounts.

    Most of our clients are fast-growing Tech Companies, Financial Institutions, Buyside Firms, Market Research Agencies, Consultancies and Academia.

    Our dataset is GDPR compliant, contains no PII information and is aggregated & anonymized with user consent. Contact business@measurable.ai for a data dictionary and to find out our volume in each country.

  6. f

    Retention Outcomes of Advanced Practice Providers in Hospital Medicine...

    • figshare.com
    xlsx
    Updated May 23, 2025
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    Robert Ventulett (2025). Retention Outcomes of Advanced Practice Providers in Hospital Medicine Following Fellowship Completion [Dataset]. http://doi.org/10.6084/m9.figshare.29133089.v1
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    xlsxAvailable download formats
    Dataset updated
    May 23, 2025
    Dataset provided by
    figshare
    Authors
    Robert Ventulett
    License

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

    Description

    This dataset supports a retrospective cohort study evaluating the 1- through 5-year retention rates of Advanced Practice Providers (APPs) in hospital medicine. The study compares outcomes between providers who completed a 6-month post-graduate fellowship and those who completed general onboarding at a multi-hospital health system in Massachusetts.The data includes de-identified employment dates, training pathway designation, and year-based retention outcomes. A secondary file includes the SPSS cross-tabulation and chi-square output used to evaluate statistical differences across retention time points. These data were used to support findings reported in the manuscript submitted to The Journal of Hospital Medicine.Files included:APP_Hospital_Medicine_5_Year_RawData.xlsxAPP_Hospital_Medicine_SPSS_Output.xlsxREADME_APP_Fellowship_Retention.txt

  7. d

    Shein and Fast Fashion E-Receipt Data | Consumer Transaction Data | Asia,...

    • datarade.ai
    .json, .xml, .csv
    Updated Jun 20, 2024
    + more versions
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    Measurable AI (2024). Shein and Fast Fashion E-Receipt Data | Consumer Transaction Data | Asia, EMEA, LATAM, MENA, India | Granular & Aggregate Data | 23+ Countries [Dataset]. https://datarade.ai/data-products/shein-and-fast-fashion-e-receipt-data-consumer-transaction-measurable-ai
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    .json, .xml, .csvAvailable download formats
    Dataset updated
    Jun 20, 2024
    Dataset authored and provided by
    Measurable AI
    Area covered
    Mexico, Brazil, United States of America, Argentina, Colombia, Japan, Chile, Latin America
    Description

    The Measurable AI Temu & Fast Fashion E-Receipt Dataset is a leading source of email receipts and transaction data, offering data collected directly from users via Proprietary Consumer Apps, with millions of opt-in users.

    We source our email receipt consumer data panel via two consumer apps which garner the express consent of our end-users (GDPR compliant). We then aggregate and anonymize all the transactional data to produce raw and aggregate datasets for our clients.

    Use Cases Our clients leverage our datasets to produce actionable consumer insights such as: - Market share analysis - User behavioral traits (e.g. retention rates) - Average order values - Promotional strategies used by the key players. Several of our clients also use our datasets for forecasting and understanding industry trends better.

    Coverage - Asia (Japan, Thailand, Malaysia, Vietnam, Indonesia, Singapore, Hong Kong, Phillippines) - EMEA (Spain, United Arab Emirates, Saudi, Qatar) - Latin America (Brazil, Mexico, Columbia, Argentina)

    Granular Data Itemized, high-definition data per transaction level with metrics such as - Order value - Items ordered - No. of orders per user - Delivery fee - Service fee - Promotions used - Geolocation data and more - Email ID (can work out user overlap with peers and loyalty)

    Aggregate Data - Weekly/ monthly order volume - Revenue delivered in aggregate form, with historical data dating back to 2018.

    Most of our clients are fast-growing Tech Companies, Financial Institutions, Buyside Firms, Market Research Agencies, Consultancies and Academia.

    Our dataset is GDPR compliant, contains no PII information and is aggregated & anonymized with user consent. Contact business@measurable.ai for a data dictionary and to find out our volume in each country.

  8. d

    UberEats E-Receipt Data | Food Delivery Transaction Data | Asia, Americas,...

    • datarade.ai
    .json, .xml, .csv
    Updated Oct 13, 2023
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    Measurable AI (2023). UberEats E-Receipt Data | Food Delivery Transaction Data | Asia, Americas, EMEA | Granular & Aggregate Data available [Dataset]. https://datarade.ai/data-products/ubereats-e-receipt-data-food-delivery-transaction-data-measurable-ai
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    .json, .xml, .csvAvailable download formats
    Dataset updated
    Oct 13, 2023
    Dataset authored and provided by
    Measurable AI
    Area covered
    Azerbaijan, Nauru, Ecuador, Guatemala, Kazakhstan, Qatar, Saint Pierre and Miquelon, Iraq, Tajikistan, Guam
    Description

    The Measurable AI UberEats E-Receipt Dataset is a leading source of email receipts and transaction data, offering data collected directly from users via Proprietary Consumer Apps, with millions of opt-in users.

    We source our email receipt consumer data panel via two consumer apps which garner the express consent of our end-users (GDPR compliant). We then aggregate and anonymize all the transactional data to produce raw and aggregate datasets for our clients.

    Use Cases Our clients leverage our datasets to produce actionable consumer insights such as: - Market share analysis - User behavioral traits (e.g. retention rates) - Average order values - Promotional strategies used by the key players. Several of our clients also use our datasets for forecasting and understanding industry trends better.

    Coverage - Asia (Taiwan, Japan, Australia) - Americas (United States, Mexico, Chile) - EMEA (United Kingdom, France, Italy, United Arab Emirates, AE, South Africa)

    Granular Data Itemized, high-definition data per transaction level with metrics such as - Order value - Items ordered - No. of orders per user - Delivery fee - Service fee - Promotions used - Geolocation data and more

    Aggregate Data - Weekly/ monthly order volume - Revenue delivered in aggregate form, with historical data dating back to 2018. All the transactional e-receipts are sent from the UberEats food delivery app to users’ registered accounts.

    Most of our clients are fast-growing Tech Companies, Financial Institutions, Buyside Firms, Market Research Agencies, Consultancies and Academia.

    Our dataset is GDPR compliant, contains no PII information and is aggregated & anonymized with user consent. Contact business@measurable.ai for a data dictionary and to find out our volume in each country.

  9. f

    Data from: Retip: Retention Time Prediction for Compound Annotation in...

    • acs.figshare.com
    • figshare.com
    xlsx
    Updated Jun 1, 2023
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    Paolo Bonini; Tobias Kind; Hiroshi Tsugawa; Dinesh Kumar Barupal; Oliver Fiehn (2023). Retip: Retention Time Prediction for Compound Annotation in Untargeted Metabolomics [Dataset]. http://doi.org/10.1021/acs.analchem.9b05765.s001
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    xlsxAvailable download formats
    Dataset updated
    Jun 1, 2023
    Dataset provided by
    ACS Publications
    Authors
    Paolo Bonini; Tobias Kind; Hiroshi Tsugawa; Dinesh Kumar Barupal; Oliver Fiehn
    License

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

    Description

    Unidentified peaks remain a major problem in untargeted metabolomics by LC-MS/MS. Confidence in peak annotations increases by combining MS/MS matching and retention time. We here show how retention times can be predicted from molecular structures. Two large, publicly available data sets were used for model training in machine learning: the Fiehn hydrophilic interaction liquid chromatography data set (HILIC) of 981 primary metabolites and biogenic amines,and the RIKEN plant specialized metabolome annotation (PlaSMA) database of 852 secondary metabolites that uses reversed-phase liquid chromatography (RPLC). Five different machine learning algorithms have been integrated into the Retip R package: the random forest, Bayesian-regularized neural network, XGBoost, light gradient-boosting machine (LightGBM), and Keras algorithms for building the retention time prediction models. A complete workflow for retention time prediction was developed in R. It can be freely downloaded from the GitHub repository (https://www.retip.app). Keras outperformed other machine learning algorithms in the test set with minimum overfitting, verified by small error differences between training, test, and validation sets. Keras yielded a mean absolute error of 0.78 min for HILIC and 0.57 min for RPLC. Retip is integrated into the mass spectrometry software tools MS-DIAL and MS-FINDER, allowing a complete compound annotation workflow. In a test application on mouse blood plasma samples, we found a 68% reduction in the number of candidate structures when searching all isomers in MS-FINDER compound identification software. Retention time prediction increases the identification rate in liquid chromatography and subsequently leads to an improved biological interpretation of metabolomics data.

  10. d

    FoodPanda Food & Grocery Transaction Data | Email Receipt Data | Asia |...

    • datarade.ai
    .json, .xml, .csv
    Updated Oct 13, 2023
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    Measurable AI (2023). FoodPanda Food & Grocery Transaction Data | Email Receipt Data | Asia | Granular & Aggregate Data available [Dataset]. https://datarade.ai/data-products/foodpanda-food-grocery-transaction-data-email-receipt-dat-measurable-ai
    Explore at:
    .json, .xml, .csvAvailable download formats
    Dataset updated
    Oct 13, 2023
    Dataset authored and provided by
    Measurable AI
    Area covered
    Hong Kong, Thailand, Malaysia, Philippines, Pakistan, Singapore, Taiwan
    Description

    The Measurable AI FoodPanda Food & Grocery Transaction dataset is a leading source of email receipts and transaction data, offering data collected directly from users via Proprietary Consumer Apps, with millions of opt-in users.

    We source our email receipt consumer data panel via two consumer apps which garner the express consent of our end-users (GDPR compliant). We then aggregate and anonymize all the transactional data to produce raw and aggregate datasets for our clients.

    Use Cases Our clients leverage our datasets to produce actionable consumer insights such as: - Market share analysis - User behavioral traits (e.g. retention rates) - Average order values - Promotional strategies used by the key players. Several of our clients also use our datasets for forecasting and understanding industry trends better.

    Coverage - Asia (Hong Kong, Taiwan, Singapore, Thailand, Malaysia, Philippines, Pakistan)

    Granular Data Itemized, high-definition data per transaction level with metrics such as - Order value - Items ordered - No. of orders per user - Delivery fee - Service fee - Promotions used - Geolocation data and more

    Aggregate Data - Weekly/ monthly order volume - Revenue delivered in aggregate form, with historical data dating back to 2018. All the transactional e-receipts are sent from the FoodPanda food delivery app to users’ registered accounts.

    Most of our clients are fast-growing Tech Companies, Financial Institutions, Buyside Firms, Market Research Agencies, Consultancies and Academia.

    Our dataset is GDPR compliant, contains no PII information and is aggregated & anonymized with user consent. Contact business@measurable.ai for a data dictionary and to find out our volume in each country.

  11. d

    Careem Now Email Receipt Data | Consumer Transaction Data | Asia, EMEA |...

    • datarade.ai
    .json, .xml, .csv
    Updated Oct 13, 2023
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    Measurable AI (2023). Careem Now Email Receipt Data | Consumer Transaction Data | Asia, EMEA | Granular & Aggregate Data avail. [Dataset]. https://datarade.ai/data-products/careem-now-email-receipt-data-consumer-transaction-data-measurable-ai
    Explore at:
    .json, .xml, .csvAvailable download formats
    Dataset updated
    Oct 13, 2023
    Dataset authored and provided by
    Measurable AI
    Area covered
    Argentina, Mexico, Brazil, Colombia, Japan, United States of America, Chile
    Description

    The Measurable AI Careem Now Email Receipt Dataset is a leading source of email receipts and transaction data, offering data collected directly from users via Proprietary Consumer Apps, with millions of opt-in users.

    We source our email receipt consumer data panel via two consumer apps which garner the express consent of our end-users (GDPR compliant). We then aggregate and anonymize all the transactional data to produce raw and aggregate datasets for our clients.

    Use Cases Our clients leverage our datasets to produce actionable consumer insights such as: - Market share analysis - User behavioral traits (e.g. retention rates) - Average order values - Promotional strategies used by the key players. Several of our clients also use our datasets for forecasting and understanding industry trends better.

    Coverage - Asia (Japan) - EMEA (Spain, United Arab Emirates)

    Granular Data Itemized, high-definition data per transaction level with metrics such as - Order value - Items ordered - No. of orders per user - Delivery fee - Service fee - Promotions used - Geolocation data and more

    Aggregate Data - Weekly/ monthly order volume - Revenue delivered in aggregate form, with historical data dating back to 2018. All the transactional e-receipts are sent from the Careem Now food delivery app to users’ registered accounts.

    Most of our clients are fast-growing Tech Companies, Financial Institutions, Buyside Firms, Market Research Agencies, Consultancies and Academia.

    Our dataset is GDPR compliant, contains no PII information and is aggregated & anonymized with user consent. Contact business@measurable.ai for a data dictionary and to find out our volume in each country.

  12. d

    Netflix Email Receipt Data | Consumer Transaction Data | Asia, EMEA,...

    • datarade.ai
    .json, .xml, .csv
    Updated Oct 12, 2023
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    Measurable AI (2023). Netflix Email Receipt Data | Consumer Transaction Data | Asia, EMEA, America, LATAM, India | Granular & Aggregate Data avail. [Dataset]. https://datarade.ai/data-products/netflix-email-receipt-data-consumer-transaction-data-asia-measurable-ai
    Explore at:
    .json, .xml, .csvAvailable download formats
    Dataset updated
    Oct 12, 2023
    Dataset authored and provided by
    Measurable AI
    Area covered
    United States
    Description

    The Measurable AI Netflix Email Receipt Dataset is a leading source of email receipts and transaction data, offering data collected directly from users via Proprietary Consumer Apps, with millions of opt-in users.

    We source our email receipt consumer data panel via two consumer apps which garner the express consent of our end-users (GDPR compliant). We then aggregate and anonymize all the transactional data to produce raw and aggregate datasets for our clients.

    Use Cases Our clients leverage our datasets to produce actionable consumer insights such as: - Market share analysis - User behavioral traits (e.g. retention rates) - Average order values - Promotional strategies used by the key players. Several of our clients also use our datasets for forecasting and understanding industry trends better.

    Coverage - Asia (Japan) - EMEA (Spain, United Arab Emirates)

    Granular Data Itemized, high-definition data per transaction level with metrics such as - Order value - Items ordered - No. of orders per user - Delivery fee - Service fee - Promotions used - Geolocation data and more

    Aggregate Data - Weekly/ monthly order volume - Revenue delivered in aggregate form, with historical data dating back to 2018. All the transactional e-receipts are sent from the Careem Now food delivery app to users’ registered accounts.

    Most of our clients are fast-growing Tech Companies, Financial Institutions, Buyside Firms, Market Research Agencies, Consultancies and Academia.

    Our dataset is GDPR compliant, contains no PII information and is aggregated & anonymized with user consent. Contact business@measurable.ai for a data dictionary and to find out our volume in each country.

  13. d

    GrabFood, GrabExpress Restaurant & Food Delivery Transaction Data |...

    • datarade.ai
    .json, .xml, .csv
    Updated Oct 13, 2023
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    Measurable AI (2023). GrabFood, GrabExpress Restaurant & Food Delivery Transaction Data | E-Receipt Data | South East Asia | Granular & Aggregate Data avail. [Dataset]. https://datarade.ai/data-products/grabfood-grabexpress-restaurant-food-delivery-transaction-measurable-ai
    Explore at:
    .json, .xml, .csvAvailable download formats
    Dataset updated
    Oct 13, 2023
    Dataset authored and provided by
    Measurable AI
    Area covered
    Thailand, Cambodia, Japan, Philippines, Vietnam, Malaysia, Singapore, Indonesia, South East Asia
    Description

    The Measurable AI GrabFood and GrabExpress Restaurant & Food Delivery Transaction datasets are leading sources of email receipts and transaction data, offering data collected directly from users via Proprietary Consumer Apps, with millions of opt-in users.

    We source our email receipt consumer data panel via two consumer apps which garner the express consent of our end-users (GDPR compliant). We then aggregate and anonymize all the transactional data to produce raw and aggregate datasets for our clients.

    Use Cases Our clients leverage our datasets to produce actionable consumer insights such as: - Market share analysis - User behavioral traits (e.g. retention rates) - Average order values - Promotional strategies used by the key players. Several of our clients also use our datasets for forecasting and understanding industry trends better.

    Coverage - SE Asia (Singapore, Indonesia, Thailand, Malaysia, Philippines, Vietnam, Cambodia)

    Granular Data Itemized, high-definition data per transaction level with metrics such as - Order value - Items ordered - No. of orders per user - Delivery fee - Service fee - Promotions used - Geolocation data and more

    Aggregate Data - Weekly/ monthly order volume - Revenue delivered in aggregate form, with historical data dating back to 2018. All the transactional e-receipts are sent from the GrabFood and Grab Express food delivery apps to users’ registered accounts.

    Most of our clients are fast-growing Tech Companies, Financial Institutions, Buyside Firms, Market Research Agencies, Consultancies and Academia.

    Our dataset is GDPR compliant, contains no PII information and is aggregated & anonymized with user consent. Contact business@measurable.ai for a data dictionary and to find out our volume in each country.

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    Learn how you can add new datasets to our index.

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Statista (2025). Mobile app user Android retention rate worldwide Q3 2024, by category [Dataset]. https://www.statista.com/statistics/259329/ios-and-android-app-user-retention-rate/
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Mobile app user Android retention rate worldwide Q3 2024, by category

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47 scholarly articles cite this dataset (View in Google Scholar)
Dataset updated
Jan 31, 2025
Dataset authored and provided by
Statistahttp://statista.com/
Area covered
Worldwide
Description

Not all app categories can boast the same degree of user retention on day 30. While news apps were reported in the third quarter of 2024 to have a retention rate of almost 10 percent, social media apps presented less than two percent retention rate after 30 days from install. Entertainment apps presented a three percent installation rate, while a shopping apps had a retention rate of around four percent one month after installation. Before retention: user acquisition Gaining new users is fundamental for the healthy growth of a mobile application, and app developers have an array of tools that can be used to expand their audience. As of the second quarter of 2022, CPI, or cost per install, was the most used pricing model for user acquisition campaigns according to app developers worldwide. The cost of acquiring one new install in North America was of 5.28 U.S. dollars, but driving in-app purchases in the region was more pricey, with a cost of roughly 75 U.S. dollars per user. The future of in-app advertising In recent years, subscriptions and in-app purchases have become more popular app monetization practices, with users finally willing to pay for app premium functionalities and services. In 2020, video ads were reportedly the most expensive type of ads to drive conversions on both iOS and Android apps, while banner ads had a cost per action (CPA) of 36.77 U.S. dollars on iOS, and 10.28 U.S. dollars on Android.

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