During Black Friday in 2024, Stripe processed more than Not stated billion in transactions, with processing rates peaking at 137,000 transactions per minute, the highest in the company’s history. The firm analyzed every transaction in real time to prevent nearly 21 million fraud attempts that could have siphoned more than Not stated million from merchant customers. Avinash Bhat, head of data infrastructure at Stripe, says several of the company’s services, including usage-based billing and fraud detection, depend on continuous, low-latency analytics to operate.
Real-time analytics are increasingly embedded directly into products and user experiences. The article highlights how ride-hailing apps use near-real-time calculations for pricing and estimated times of arrival and how financial platforms provide real-time cash-flow analysis. Delivering data-driven services that reflect the present moment has become an expectation for customers, and it shapes how companies design billing, order tracking, and inventory-monitoring features.
Organizations that can collect and act on data immediately tend to outperform peers. A survey by the MIT Center for Information Systems Research and Insight Partners found that companies in the top quartile for real-time operations saw 50% higher revenue growth and net margins compared to those in the bottom quartile. The top companies emphasized automation, fast decision-making at multiple levels, and easily accessible data services updated in real time.
Vendors and technologists stress the value of immediacy when data value is high. Kishore Gopalakrishna, co-founder and CEO of StarTree, argues that waiting hours or days to analyze data can be too late when opportunities or threats must be addressed immediately. The article underscores that for many modern services, real-time analytics are not optional enhancements but foundational capabilities that enable core product functionality.