IT168 commented on Google's Open source TensorFlow (GitHub) Earlier this week, a move that has had a huge impact in deep learning because Google has a strong talent pool in the field of AI research, And Google's own Gmail and search engines are using deep learning tools that
Google Open source TensorFlow (GitHub) Earlier this week, a move that has a huge impact on deep learning because Google has a strong talent pool, and Google's own Gmail and search engines are using a self-developed deep learning tool.Undoubtedly, the
Debug: Set Debug: = 1 in Make.config solver.prototxt debug_info:true in Python/matlab view forward Changes of weights after backward round
Classical Literature:[Decaf] J. Donahue, Y. Jia, O. Vinyals, J. Hoffman, N. Zhang, E. Tzeng, and T. Darrell. Decaf:a deep convolutional activation feature for generic visual recognition. ICML, 2014.[R-CNN] R. Girshick, J. Donahue, T. Darrell, and J. Malik. Rich feature hierarchies for accurate object detection an
One of the best tutorials to learn lstm is deep learning tutorial
See http://deeplearning.net/tutorial/lstm.html
The sentiment analysis here is actually a bit like Topic classification
First learn to enter data format, run the whole process again, the data is also very simple, from the idbm download of the film review
Turn from deep learning public numberThis article is from: InfoQHttp://www.infoq.com/cn/news/2016/01/evaluation-comparison-deep-learnArtificial intelligence is undoubtedly the forefront of the computer world, and deep learning is undoubtedly the focus of artificial intellige
Article source:http://www.infoq.com/cn/news/2016/01/evaluation-comparison-deep-learn?utm_campaign=infoq_content Evaluation and comparison of deep learning frameworkArtificial intelligence is undoubtedly the forefront of the computer world, and deep learning is undoubtedly th
-depth learning model Framework:In the offline phase, we use the theano, tensorflow-based Keras as the model ENGINE. At the time of training, we separately cleaned and weighted the sample Data. In terms of features, we use the Min-max method for normalization of continuous features. In terms of cross-features, we combine business requirements to refine multiple cross-features that are more significant in bu
Deep Learning notes ------ windows system for Linux-Ubuntu14.04 dual system installation notes (a), deep linux dual system installation notes
Currently, deep learning is widely used in target detection and Classification Research, and most Neural Network frameworks (such as
machine learning and related fields. Before learning the deep learning theory, we recommend that you learn the shallow Model and Its Theory. Of course, there are no excellent Chinese books. However, machine learning and statistical lear
Deep learning to practice, an indispensable path is to the intelligent terminal, embedded equipment and other directions. But the terminal device does not have the powerful performance of GPU server, how to make the end device application deep learning?
Fortunately, Google has launched the tfmobile, last year furthe
250 CPU servers.NVIDIA Tesla? P100 Accelerator.First video card with Pascal architectureOwns 18 billion transistorsUsing NVIDIA Nvlink?Manufacturing process using 16nm FinFETThe Tesla P100 is not only the most powerful GPU accelerator today,It's also the most technologically advanced GPU chip.Distributed deep learning system for DatainsightBased on the TensorFlow
Setting up a deep learning machine from Scratch (software)A detailed guide-to-setting up your machine for deep learning. Includes instructions to the install drivers, tools and various deep learning frameworks. This is tested on a
found that the simple DNN model was not significantly improved for CTR. and the individual DNN model itself has some bottlenecks, for example, when the user itself is a non-active user, because the interaction between itself and item is relatively small, resulting in a very sparse eigenvector, and deep learning model in dealing with this situation may be excessive generalization, Causes the recommendation
Deep Learning (depth learning) Learning notes finishing Series[Email protected]Http://blog.csdn.net/zouxy09ZouxyVersion 1.0 2013-04-08Statement:1) The Deep Learning Learning Series is a
Deep Learning (depth learning) Learning notes finishing Series[Email protected]Http://blog.csdn.net/zouxy09ZouxyVersion 1.0 2013-04-08Statement:1) The Deep Learning Learning Series is a
Chinese books. But "machine learning", "statistical learning method" is still worth a look. Foreign language Recommendation "Pattern Recognition and machine learning" and
"Machine learning:a Probabilistic Perspective", the latter containing the chapters of the Deep Neural network。
3.
Bengio, LeCun, Jordan, Hinton, Schmidhuber, Ng, de Freitas and OpenAI had done Reddit AMA's. These is nice places-to-start to get a zeitgeist of the field.Hinton and Ng lectures at Coursera, UFLDL, cs224d and cs231n at Stanford, the deep learning course at udacity, and the sum Mer School at IPAM has excellent tutorials, video lectures and programming exercises that should help you get STARTED.NB Sp The onli
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In 2013, Nal Kalchbrenner and Phil Blunsom presented a new end-to-end encoder-decoder architecture for machine translation. In 2014, Sutskever developed a method called sequence-to-sequence (seq2seq) learning, and Google used this model to give a concrete implementation method in the tutorial of its deep learning fra
Voice Command Data set address: http://download.tensorflow.org/data/speech_commands_v0.01.tar.gz
Audio Recognition Tutorial Address: https://www.tensorflow.org/versions/master/tutorials/audio_recognition
At Google, we are often asked how to use deep learning to solve speech recognition and other audio recognition problems, such as detecting keywords or commands.
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