File systems
You can use file systems in Flink to consume and persistently store data for application results, fault tolerance and data recovery.
The file system used for a particular file is determined by its URI scheme. For example,
    file:///home/user/text.txt refers to a file in the local file system. Flink has
   built-in support for the file system of the local machine, including any NFS or SAN drives
   mounted into that local file system. It can be used by default without additional
   configuration.
For all schemes where Flink cannot find a directly supported file system, it falls back to
   Hadoop. All Hadoop file systems are automatically available when flink-runtime and the Hadoop
   libraries are on the classpath. This way, Flink seamlessly supports all of Hadoop file systems
   implementing the org.apache.hadoop.fs.FileSystem interface, and all
   Hadoop-compatible file systems (HCFS).
- Amazon S3
 - Azure Data Lake Store Gen2
 - Azure Blob Storage
 - Google Cloud Storage
 
For more information about how to use the supported file systems, see the Apache Flink documentation.
Using Ozone with Flink
You can use Ozone as a sink with Flink via the implementation of Hadoop file system, but it has some limitations.
- Limitations using Ozone File System (OFS) with DataStream connector
 - When using Ozone as a file system, you must use the
       
OnCheckpointRollingPolicyconfiguration, which rolls part files on every checkpoint. This configuration is needed because in case part files traverse the checkpoint interval, upon recovery from a failure, theFileSinkmay use thetruncate()method of the file system to discard uncommitted data from the in-progress file. This method is not supported by OFS and Flink will throw an exception. - Limitations using OFS with Table API connector
 - Because of the limitation present for the DataStream connector, it is required to roll the files on every checkpoint when using the Table API connector. If checkpointing is enabled and a bulk format is used, then this is done automatically. In case of a row format, automatic compaction has to be turned on.
 
