CAP Theorem: Revisited



CAP Theorem: Revisited

  • Consistency - A read is guaranteed to return the most recent write for a given client.
  • Availability - A non-failing node will return a reasonable response within a reasonable amount of time (no error or timeout).
  • Partition Tolerance - The system will continue to function when network partitions occur.

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