Some relevant limitations of HDFS (which is an open-source twin to the Google File System) are found in the original Google File System paper.
About the target use cases, we read:
Third, most files are mutated by appending new data
rather than overwriting existing data. Random writes within
a file are practically non-existent. [...]
this access pattern on huge files, appending becomes the focus
of performance optimization and atomicity guarantees,
As a result:
[...] we have relaxed GFS’s consistency model to
vastly simplify the file system without imposing an onerous
burden on the applications. We have also introduced an
atomic append operation so that multiple clients can append
concurrently to a file without extra synchronization between
A record append causes data (the “record”) to be
appended atomically at least once even in the presence of
concurrent mutations, [...]
If I read the paper correctly, then the several replicas of each file (in the HDFS sense) will not necessarily be exactly the same. If the clients only use the atomic operations, each file could be considered as a concatenation of records (each from one of those operations), but these may appear duplicated in some of the replicas, and their order may be different from replica to replica. (Though apparently there may also be some padding inserted, so it's not even as clean as that — read the paper.) It's up to the user to manage the record boundaries, unique identifiers, checksums, etc.
So this isn't at all like the file systems we are used to on our desktop machines.
Note that HDFS is no good for many small files, because:
Each would allocate typically a 64 MB chunk (source).
Its architecture isn't good at managing a huge number of filenames (source: the same as in item 1). There is a single master maintaining all the filenames (which hopefully fit in its RAM).