I have written an application that essentially sniffs an Ethernet Device, and studies certain patterns. I am using Python and Scapy to capture data. Since the data needs to be captured in a database for posterity, and for pattern studies, we are considering the following strategy.
1) We want to use a high performance key-value store to capture basic data. This would be fundamentally a a key:value store with around 200 keys. 2) Every one hour we will pool the key store, and based on certain conditions and patterns we shall fill up a Postgres Database, based on values stored in K:V store.
We are planning to use Redis for the K:V. We had considered other solutions including database, files based caches etc, but there are performance bottlenecks. For one there are several thousands of packets that gets processed every minute, and SQL calls back and forth from a database slows down the program.
I have never used Redis. But I am told it's the fastest and most efficient K:V No SQL data store. And the redis python APi makes it very Pythonic.Essentially the database store would have 200 odd keys and a value in long ints associated with 80% of keys, or in some cases, char fields that are less than 200 characters.
1) Is this is the right approach? 2) What are the other parameters to consider? 3) How much would the memory scale? What all should I do to ensure that memory size is optimized for faster performance? 4) How do I calculate memory sizes?
Python is the only language we know. So any suggestion like C/C++ may not appeal.
We are Ok with a few packets being lost once in a while because the idea is to study patterns rather than come with absolute accurate results. Number of keys would remain the same, and their values can go up and down..
We need finally calculated data to be stored in a RDBMS, because the future mainpulations are SQL intensive.