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I am trying to code a program that reads the status of a list of servers, records the time they fail, stores it , and using this data it chooses a server that will MOST probably fail next time, and shows it. I will need some help to approach this problem. Will you suggest a Markov Chain Model? or something else?

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I'm not sure whether this is on topic here; it might be more appropriate for Cross Validated (and there are probably already relevant questions there). Either way, you should edit the question to list all information you collect about the state of these servers. I.e. if the only thing you record is time of failure, I'm pretty sure you won't be able to do any better than just choosing the server which has failed the most in the past as the most likely to fail in the future. –  David Z Nov 1 '12 at 18:00
    
There is no unique answer to the question as stated, more info is needed, and it depends on how you model your servers. A few considerations: are all servers identical, or not? i.e. does each server has its own proba of failure? Does the failure of a server influence others? i.e. if server 1 goes down, it might increase the load on the others and their proba of failure. Another consideration: I hope failure is rare - how are you going to get measurements/failure statistics? –  Mathias Nov 2 '12 at 18:07
    
Also, this has nothing to do with Continuous Probabilities. –  Mathias Nov 2 '12 at 18:08

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