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Pycon2016_ML(DL)

list of Pycon2016 session related with ML

PYCON2016

: Pycon2016 awesome !! and It shows how much ML(DL) is hot these day, Let's check below and train our real neural network(brain)!.


: What is deep learning? It has recently exploded in popularity as a complex and incredibly powerful tool. This talk will present the basic concepts underlying deep learning in understandable pieces for complete beginners to machine learning. We will review the math, code up a simple neural network, and provide contextual background on how deep learning is used in production now.

: What is deep learning? It has recently exploded in popularity as a complex and incredibly powerful tool. This talk will present the basic concepts underlying deep learning in understandable pieces for complete beginners to machine learning. We will review the math, code up a simple neural network, and provide contextual background on how deep learning is used in production now.

: @karpathy's recent tweet "BatchNorm, STN, DCGAN, DRAW, soft/hard attention, char-rnn, DeepDream, NeuralStyle, TensorFlow, ResNet, AlphaGo.. a lot happened over 1 year" sums up the many new aspects of Deep Learning research. In this talk I will review some of the highlights of deep learning in the context of Python deep learning frameworks. @karpathy's recent tweet "BatchNorm, STN, DCGAN, DRAW, soft/hard attention, char-rnn, DeepDream, NeuralStyle, TensorFlow, ResNet, AlphaGo.. a lot happened over 1 year" sums up the many new aspects of Deep Learning research. In this talk I will review some of the highlights of deep learning in the context of Python deep learning frameworks.

: Although numeric data is easy to work with in Python, most knowledge created by humans is actually raw, unstructured text. By learning how to transform text into data that is usable by machine learning models, you drastically increase the amount of data that your models can learn from. In this tutorial, we'll build and evaluate predictive models from real-world text using scikit-learn.

: Visualization has a critical role to play throughout the analytic process. Where static outputs and tabular data may render patterns opaque, human visual analysis can uncover volumes and lead to more robust programming and better data products. For Python programmers who dabble in machine learning, visual diagnostics are a must-have for effective feature analysis, model selection, and evaluation.

: Do your tweets get lost in the shuffle? Would you like to predict a tweet's impact before you hit send? Python now has all the tools to make this possible. Several Python packages for machine learning and natural language processing have reached ""critical mass"" and can now be combined to perform these and other powerful natural language processing tasks. This tutorial will teach you how.


If you know the slide link that doesn't here, please let me know thanks

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