Apps Purchases: 10+ Million Software Purchases
Founded in 2010, APPS RUN THE WORLD is a leading technology intelligence and market-research company devoted to the application space. Leveraging a rigorous data-centric research methodology, we ask the simple B2B sales intelligence question: Who’s buying enterprise applications from whom and why?
Our global team of 50 researchers has been studying the digital transformation initiatives being undertaken by 2 million + companies including technographic segmentation of 10 million ERP, EPM, CRM, HCM, Procurement, SCM, Treasury software purchases, aggregating massive amounts of data points that form the basis of our forecast assumptions and perhaps the rise and fall of certain vendors and their products on a quarterly basis.
Apps Run The World Buyer Insight and Technographics Customer Database has over 100 data fields that detail company usage of emerging technologies such as AI, Machine Learning, IoT, Blockchain, Autonomous Database, and different on-prem and cloud apps by function, customer size (employees, revenues), industry, country, implementation status, year deal won, partner involvement, Line of Business Key Stakeholders and key decision-makers contact details, including the systems being used by Fortune 1000 and Global 2000 companies.
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- Analytics and BI
| Logo | Customer | Industry | Empl. | Revenue | Country | Vendor | Application | Category | When | VAR/SI | Insight | Insight Source |
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Revinate | Professional Services | 480 | $107M | United States | ChaosSearch | Chaos LakeDB | Data Warehouse | 2020 | n/a | In 2020, Revinate deployed Chaos LakeDB from ChaosSearch to provide a centralized analytics store for log analytics and for product and operations insights. The implementation positioned Chaos LakeDB as a Data Warehouse layer to index and query high-volume event and log data while preserving the existing Kibana user experience for analysts and product teams. Chaos LakeDB was configured to support continuous log ingestion, full text search and query servicing, and retention policy enforcement aligned to product and operations use cases. The deployment preserved the Kibana UX for end users, enabling existing dashboards and visualizations to remain in use without retraining, while shifting indexing and storage responsibilities to the lake-backed index. Operational integration retained Kibana as the analytics front end, connecting current visualization workflows to Chaos LakeDB as the underlying Data Warehouse. The architecture removed manual re-index and shard management by consolidating indexing into the managed lake-backed index, and customer notes cite about 30 percent monthly cost savings compared to hosting ELK on EC2. Governance emphasized reducing engineering operational toil by centralizing log analytics in Chaos LakeDB and standardizing ingestion pipelines and retention controls across product and operations teams. This implementation freed engineering cycles previously consumed by index and shard maintenance and eliminated re-index and shard toil according to the customer account. | |
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TA Realty | Construction and Real Estate | 200 | $60M | United States | Cherre | Cherre Platform | Analytics and BI | 2024 | n/a | In 2024 TA Realty partnered with Cherre to implement the Cherre Platform, establishing a program focused on Analytics and BI to support investment management and asset and portfolio analytics. The announcement positioned the Cherre Platform as the central data foundation for accelerating data maturity and enabling faster time-to-insight across reporting and analytical workflows. The implementation emphasized core module usage consistent with Analytics and BI deployments, including data ingestion pipelines to consolidate disparate asset and financial feeds, schema mapping and canonical data modeling to standardize property and portfolio attributes, and an analytics layer for aggregated portfolio reporting and exploratory analysis. Configuration work centered on flexible data mapping and normalization to produce a single source of truth for downstream analytics, with inferred use of mapping and analytics capabilities provided by the Cherre Platform. Operational scope targeted investment management teams and asset and portfolio analytics functions within TA Realty, aligning data ingestion and mapping routines to support portfolio-level analytics, asset performance monitoring, and investment decision support. The deployment established a scalable data architecture intended to service reporting, portfolio analytics, and future advanced analytics use cases while centralizing data access for analytics users and business stakeholders. Governance and rollout activities described in the engagement included establishing standardized data models, curated mapping rules, and staged onboarding of data domains to manage quality and lineage. Outcomes explicitly stated include faster time-to-insight and a foundational platform for future data-driven capabilities, with the Cherre Platform serving as the enterprise Analytics and BI backbone for TA Realty. | |
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Professional Services | 10 | $1M | United States | Cherre | Cherre Platform | Analytics and BI | 2022 | n/a |
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Government | 22579 | $7.1B | United States | Civis Analytics | Civis Analytics | Data Warehouse | 2017 | Dewberry |
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Government | 30000 | $3.8B | United States | Civis Analytics | Civis Analytics | Data Warehouse | 2018 | n/a |
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Media | 35300 | $41.3B | United States | Civis Analytics | Civis Analytics | Data Warehouse | 2015 | n/a |
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Healthcare | 14000 | $2.1B | United States | Clearpoint Strategy | Clearpoint | Analytics and BI | 2017 | n/a |
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Government | 4500 | $1.5B | United States | Clearpoint Strategy | Clearpoint | Analytics and BI | 2019 | n/a |
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Government | 11155 | $720M | United States | Clearpoint Strategy | Clearpoint | Analytics and BI | 2018 | n/a |
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Media | 300 | $70M | United States | Clickable | Clickable Platform | Analytics and BI | 2009 | n/a |
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