Algorithmic runtime complexity improvement by the recurrent neural network

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An encode-decoder enabled RNN that can generate improved runtime code. The RNN will be trained on number of coding samples from [login to view URL] and [login to view URL] and then later will be tested as well.

The project can be divided into three parts. [login to view URL] collection: Computer programs that can be solved both in polynomial time (e.g.O(Nk)) and linear time (e.g. O(N)) can be collected from the coding sites [login to view URL] or . These program files can be stored intodifferent folders where the input folder stores the polynomial time coding sample and theoutput folder will store the corresponding linear time coding [login to view URL] model training: The RNN model can be trained on the 80% of the stored [login to view URL] RNN model with encoder-decoder ([login to view URL]) or seq2seq([login to view URL] ) feature needs to be applied for better [login to view URL]: The above two steps can be tested, integrated for final analysis.

Programmation C++ Programmation C Python Architecture Logicielle

Nº du projet : #29973260

À propos du projet

2 propositions Projet à distance Actif il y a 2 ans

2 freelances font une offre moyenne de 245 $ pour ce travail

sajjadtaghvaeifr

Hi, I hope you are doing fine. I have almost 10 years of experience in machine learning algorithms. I can implement various types of artificial intelligence algorithms including yours with Matlab, Python and etc. I hav Plus

$140 USD en 7 jours
(5 Commentaires)
3.5
daniilvernikov

Hello, How are you? Thank you for watching my bid. I have many experiences with ML Learning. I have implemented robot arm control project using reinforcement learning(opencv, python, tensorflow, anaconda, dlib and so Plus

$350 USD en 3 jours
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0.0