Data streaming solutions are a powerful tool for industries that depend on real-time data processing, from fintech companies managing transactions to e-commerce platforms providing personalized ...
Confluent, a leader in data streaming and steward of the open-source Apache Kafka system, recently announced its new "Data Streaming for AI" initiative to aid organizations in developing real-time AI ...
Everpure launches Data Stream, enhancing AI-ready data solutions for enterprises by simplifying data preparation and ensuring ...
Confluent is positioning itself as the "context layer for enterprise AI" with new capabilities that aim to solve the problem plaguing generative AI investments—lack of fresh, trustworthy data—by ...
Everpure accelerates AI workloads with Data Stream and unveils data-primacy architectural vision - SiliconANGLE ...
A monthly overview of things you need to know as an architect or aspiring architect. Unlock the full InfoQ experience by logging in! Stay updated with your favorite authors and topics, engage with ...
Streaming data observability startup Datorios Ltd. today announced the immediate availability of a new real-time observability platform for the big-data processing framework Apache Flink. With the new ...
RisingWave Labs, a company developing a platform for data stream processing, today announced that it raised $36 million in a Series A funding round led by Yunqi Partners, undisclosed corporate ...
If you’ve ever checked online to see whether your local big box store has the item you need in stock or ordered a product you saw on social media straight through the app, you’re already aware of how ...
Using workarounds to pipe data between systems carries a high price and untrustworthy data. Bharath Chari shares three possible solutions backed up by real use cases to get data streaming pipelines ...
Confluent, the company that built a streaming service on top of the open source Apache Kafka project, has always been about helping companies capture streams of data. First it was on prem, then later ...