Improvement of Error Correction in the Networks using Generative Programming
نویسندگان
چکیده
This paper focuses on impelling the FEC towards TCP transmission through generative frameworks based on existing error correction codes. It categorizes existing error correction algorithms on various bases and uses them as an outline for a generative program that monitors the present network parameters and generates a correction code accordingly. Required modifications in TCP packets are depicted and discussed with the challenges involved. Also need for smarter nodes has been emphasized based on discussed topics, considering the increasing load on servers.
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