Hacker News
- Keras: Fast Deep Learning Prototyping for Python https://github.com/fchollet/keras/ 25 comments
- Keras: Theano-Based Deep Learning Library https://github.com/fchollet/keras 7 comments
Linking pages
- The Unreasonable Effectiveness of Recurrent Neural Networks https://karpathy.github.io/2015/05/21/rnn-effectiveness/ 434 comments
- GitHub - minimaxir/textgenrnn: Easily train your own text-generating neural network of any size and complexity on any text dataset with a few lines of code. https://github.com/minimaxir/textgenrnn 154 comments
- Tensorflow sucks http://nicodjimenez.github.io/2017/10/08/tensorflow.html 130 comments
- Benchmarking TensorFlow on Cloud CPUs: Cheaper Deep Learning than Cloud GPUs | Max Woolf's Blog http://minimaxir.com/2017/07/cpu-or-gpu/ 104 comments
- Leaving Apple Inc. | Max Woolf's Blog http://minimaxir.com/2017/05/leaving-apple/ 93 comments
- GitHub - jisungk/deepjazz: Deep learning driven jazz generation using Keras & Theano! https://github.com/jisungk/deepjazz 90 comments
- Introducing Keras 2 https://blog.keras.io/introducing-keras-2.html 74 comments
- GitHub - commaai/research: dataset and code for 2016 paper "Learning a Driving Simulator" https://github.com/commaai/research 45 comments
- Benchmarking Modern GPUs for Maximum Cloud Cost Efficiency in Deep Learning | Max Woolf's Blog http://minimaxir.com/2017/11/benchmark-gpus/ 26 comments
- deepframeworks/README.md at master · zer0n/deepframeworks · GitHub https://github.com/zer0n/deepframeworks/blob/master/README.md 11 comments
- GitHub - pcpLiu/Serrano: A Swift deep learning library with Accelerate and Metal support. https://github.com/pcpliu/serrano 9 comments
- GitHub - johannespetrat/OptML: Implementation of several black-box optimisation methods to tune hyperparameters of machine learning models. https://github.com/johannespetrat/OptML 9 comments
- The really big list of really interesting Open Source projects. | by Líkið Geimfari | Medium https://medium.com/@likid.geimfari/the-list-of-interesting-open-source-projects-2daaa2153f7c#.2qifw9lwx 8 comments
- Dank or not? Analyzing and predicting the popularity of memes on Reddit | Applied Network Science | Full Text https://appliednetsci.springeropen.com/articles/10.1007/s41109-021-00358-7 4 comments
- Avi Singh's blog https://avisingh599.github.io/deeplearning/visual-qa/ 3 comments
- Introducing Keras 2 https://blog.keras.io/introducing-keras-2.html?t=1 2 comments
- Predicting the Success of a Reddit Submission with Deep Learning and Keras | Max Woolf's Blog https://minimaxir.com/2017/06/reddit-deep-learning/ 1 comment
- GitHub - PeptoneLtd/dspp-keras: Protein order and disorder data for Keras, Tensor Flow and Edward frameworks with automated update cycle made for continuous learning applications. https://github.com/PeptoneInc/dspp-keras 1 comment
- GitHub - minimaxir/textgenrnn: Easily train your own text-generating neural network of any size and complexity on any text dataset with a few lines of code. https://github.com/minimaxir/textgenrnn?hn=1 1 comment
- Identification of Imminent Suicide Risk Among Young Adults using Text Messages - PMC https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6442737/ 0 comments
Linked pages
- TensorFlow http://tensorflow.org/ 440 comments
- Keras: the Python deep learning API https://keras.io 46 comments
- Install TensorFlow 2 https://www.tensorflow.org/install 7 comments
- GitHub - tensorflow/tensorflow: An Open Source Machine Learning Framework for Everyone https://github.com/tensorflow/tensorflow 5 comments
- governance/keras_api_design_guidelines.md at master · keras-team/governance · GitHub https://github.com/keras-team/governance/blob/master/keras_api_design_guidelines.md 0 comments
- Differentiable programming - Wikipedia https://en.wikipedia.org/wiki/Differentiable_programming 0 comments
- The Functional API https://keras.io/guides/functional_api/ 0 comments
Would you like to stay up to date with Python? Checkout Python
Weekly.
Related searches:
Search whole site: site:github.com
Search title: GitHub - keras-team/keras: Deep Learning for humans
See how to search.