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What is MFT


Managed File Transfer (MFT) is server software that performs secure data transfers, with added features that provide automation, validation, and reporting. MFT servers ensure that file exchanges with other systems and servers, as well as with end users, are accomplished with minimum manual effort and maximum accountability.
 
MFT servers include advanced visibility to monitor data access, to curb unauthorized access, and to provide proper auditing. MFT servers are often employed in clustered networks, to provide high availability and failover so data will always be available, even in the event of hardware failure.



MFT product features aim to meet strict regulatory compliance standards and federal regulations such as HIPAA and PCI.  
 
MFT servers are used by hospitals, credit agencies, and other enterprises where security of data is of utmost importance. These are organizations which require not only that files are transferred securely, but also that the data is encrypted at-rest and handled by robust events management configured for large volumes of routine data tasks.


 

 

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