When the big data movement started it was mostly focused on batch processing. Distributed data storage and querying tools like MapReduce, Hive, and Pig were all designed to process data in batches rather than continuously. Businesses would run multiple jobs every night to extract data from a database, then analyze, transform, and eventually store the data.Read More
Keep me updated with the best
Get connected to thousands of your peers and receive our weekly newsletter with the latest news, industry events, customer insights, and market intelligence.