Current research in deep learning is primarily focused on using Python as a support language. Go, an emerging language, that has many benefits including native support for concurrency has seen a rise in adoption over the past few years. However, this language is not widely used to develop learning models due to the lack of supporting libraries and frameworks for model development. In this thesis, the use of Go for the development of neural network models in general and convolution neural networks is explored. The proposed study is based on a Go-CUDA implementation of neural network models called GoCuNets. This implementation is then compared to a Go-CPU deep learning implementation that takes advantage of Go\u27s built in concurrency called...
The best current computer Go programs are hand crafted expert sys-tems. They are using conventional ...
Artificial neural networks (ANNs) are a class of machine learning models that are loosely inspired b...
In the last two decades deep learning has attracted a lot of attention internationally, solving prob...
Current research in deep learning is primarily focused on using Python as a support language. Go, an...
Mastering the game of Go has remained a long-standing challenge to the field of AI. Modern computer ...
The game of Go is more challenging than other board games, due to the difficulty of constructing a p...
Deep learning for the game of Go recently had a tremendous success with the victory of AlphaGo again...
Computer game-playing programs based on deep reinforcement learning have surpassed the performance o...
The game of Go has attracted much attention from the artificial intelligence community. A key featur...
Go is a difficult game for computers to master, and the best go programs are still weaker than the a...
In the last two decades, deep learning, an area of machine learning has made exponential progress an...
Monte Carlo tree search (MCTS) is extremely popular in computer Go which determines each action by e...
We present a library that provides optimized implementations for deep learning primitives. Deep lear...
Weight-sharing is one of the pillars behind Convolutional Neural Networks and their successes. Howev...
In the last few years, the deep learning (DL) computing paradigm has been deemed the Gold Standard i...
The best current computer Go programs are hand crafted expert sys-tems. They are using conventional ...
Artificial neural networks (ANNs) are a class of machine learning models that are loosely inspired b...
In the last two decades deep learning has attracted a lot of attention internationally, solving prob...
Current research in deep learning is primarily focused on using Python as a support language. Go, an...
Mastering the game of Go has remained a long-standing challenge to the field of AI. Modern computer ...
The game of Go is more challenging than other board games, due to the difficulty of constructing a p...
Deep learning for the game of Go recently had a tremendous success with the victory of AlphaGo again...
Computer game-playing programs based on deep reinforcement learning have surpassed the performance o...
The game of Go has attracted much attention from the artificial intelligence community. A key featur...
Go is a difficult game for computers to master, and the best go programs are still weaker than the a...
In the last two decades, deep learning, an area of machine learning has made exponential progress an...
Monte Carlo tree search (MCTS) is extremely popular in computer Go which determines each action by e...
We present a library that provides optimized implementations for deep learning primitives. Deep lear...
Weight-sharing is one of the pillars behind Convolutional Neural Networks and their successes. Howev...
In the last few years, the deep learning (DL) computing paradigm has been deemed the Gold Standard i...
The best current computer Go programs are hand crafted expert sys-tems. They are using conventional ...
Artificial neural networks (ANNs) are a class of machine learning models that are loosely inspired b...
In the last two decades deep learning has attracted a lot of attention internationally, solving prob...