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    Python
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    MIT License
  • Created over 2 years ago
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Repository Details

M1+M2/M/C/C has two Arrival input which in this report the M1 is Handover Calls or First Class customers which can be served from all of C servers and M2 is New calls or Second Class customers which can be served from {C servers – Threshold Servers}. Threshold Servers are the number of servers which reserved for First Class or Handover Calls that has priority rather than Second Class or New Calls in this system.

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