Build Predictive Machine Learning with Flink | Workshop on Dec 18 | Register Now
Learn what unlimited storage unlocks in Confluent Cloud
See how to set up infinite storage and retention in Confluent Cloud
In traditional data architectures, storage systems focus on accumulating past records while messaging services are waiting to process future events. On top of this data layer, there may be hundreds of in-house systems, SaaS applications, or microservices both generating and consuming data. Data integrity and correctness must be maintained across all these systems, which is a huge operational burden and business risk as organizations and apps must make quick decisions on what they believe is the most accurate and up to date version of the data while retaining what is needed for regulatory compliance. Confluent's event streaming solutions allow you to:
Provisioning massive Kafka clusters and retaining the right amount of data in the cloud with Apache Kafka is complex. Setting it up properly to handle GBps throughputs and petabytes of data can turn into months of work that push delivery timelines delaying business go-to-market. Similarly, businesses that don't need GBps scale or petabytes of storage at the beginning but face unexpected spikes or storage needs risk causing downtime or degrading cluster performance, which can lead to customer frustration. Confluent Cloud allows you to:
Storing historical data on self-managed Kafka clusters quickly increases your infrastructure costs because you have to over provision storage to prevent downtime and deploy larger clusters to avoid hitting storage limitations on brokers. It becomes cost-prohibitive to retain all the data you need in Kafka, causing organizations to glue together disjointed architectures that end up costing more money and siphoning off more engineering resources. Confluent Platform allows you to:
Decouple compute and storage in Kafka to elastically scale storage
Infinitely retain events in Kafka only paying for storage used
Enforce consistent data formats for app development
Decouple compute and storage in Kafka to elastically scale storage
Infinitely retain events in Kafka by offloading data to object storage
Programmatically enforce data schemas at the broker-level
Store data in Basic and Standard clusters on AWS for as long as it is needed
Enforce consistent data formats to enable app development compatibility with Avro, Protobuf & JSON
Enable centralized policy enforcement and data governance within your event streaming platform
Enable all developers to leverage Kafka throughout the organization
Retain infinite data in Kafka by offloading older topic data to cost-effective object storage
Enforce consistent data formats to enable app development compatibility with Avro, Protobuf & JSON
Programmatically validate and enforce schemas at the broker-level
Enable all developers to leverage Kafka throughout the organization
How do you quickly scale Kafka to keep mission-critical apps running with no lag or downtime - and without over-provisioning expensive resources?
How do you keep the costs of running Kafka low and your best people focused on critical projects driving competitive advantage and revenue?
How can you ensure your Kafka infrastructure is flexible enough to adapt to your changing cloud requirements?