Latest posts
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Downloading City of Chicago Open Source dataset of procurement contracts for DataScience
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Get FastText representation from pretrained embeddings with subword information
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Symbolic Knowledge in deep learning
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PyTorch Uint8 might be equivalent to Numpy Bool, but not always Numpy Uint8
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Understanding memory information from top or free linux commands
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Understand batch matrix multiplication
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Course 4: Encoder decoder architectures, generative networks and adversarial training!
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Course 3: natural language and deep learning!
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Course 2: build deep learning neural networks in 5 days only!
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Course 1: learn to program deep learning in Pytorch, MXnet, CNTK, Tensorflow and Keras!
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Course 0: Why targets 0 and 1 in machine learning ?
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Understand shape inference in deep learning technologies
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Object detection deep learning frameworks for Optical Character Recognition and Document Pretrained Features
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Configure Windows 10 for Ubuntu and server X
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Python Dask: evaluate true skill of reinforcement learning agents with a distributed cluster of instances
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Python packages and their managers: Ubuntu APT, yum, easy_install, pip, virtualenv, conda
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Bounding box object detectors: understanding YOLO, You Look Only Once
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Commands for NVIDIA install on Ubuntu 16.04
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IBM Watson Bluemix Visual API : tutorial and visual accuracy of a custom classifier
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Linear algebra for derivatives in multi-dimensional spaces : tensor products, inner and outer products...
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1-grid LSTM and the XOR problem
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About Bayes
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About loss functions, regularization and joint losses : multinomial logistic, cross entropy, square errors, euclidian, hinge, Crammer and Singer, one versus all, squared hinge, absolute value, infogain, L1 / L2 - Frobenius / L2,1 norms, connectionist temporal classification loss
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Element-Research Torch RNN Tutorial for recurrent neural nets : let's predict time series with a laptop GPU
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Recurrent neural nets with Caffe
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Google AppEngine, simply brilliant. Here is an overview
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Deploying with Docker and Kubernetes - tutorial from your PC to AWS EC2, Google cloud, Microsoft Azure or any private servers
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Add an interface to remote Ubuntu instances in the cloud
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Supervised learning, unsupervised learning with Spatial Transformer Networks tutorial in Caffe and Tensorflow : improve document classification and character reading
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Symbolic computing and deep learning tutorial with Tensorflow / Theano : learn basic commands of 2 libraries for the price of 1
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Big data tutorial on BIDMach library : basic matrix operations and file I/O. Example on a RandomForest computation in a cluster of GPU
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4 AMI to run the fastest cluster of GPU for scientific computing at minimal engineering cost thanks to EC2, Spark, NVIDIA, BIDMach technologies and Caffe
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Compile Spark on Windows
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BIDMach library for GPU computing with Intel parallel studio XE: simply amazing [install on MacOS and EC2]
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Human intelligence versus artificial intelligence, deep-learning for non-experts : where are we and what applications ?
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Computation power as you need with EMR auto-terminating clusters: example for a random forest evaluation in Python with 100 instances
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The future paradise of programming thanks to AWS Lambda functions : let's send a newsletter for a Jekyll github pages site with a Lambda
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Image annotations : which file format and what features for an annotation tool?
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Ensuring maximal security in the AWS cloud and S3
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HTML5 and Javascript: file upload with progress bar, client-side image resizing and multiple runtimes
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Interface-oriented programming in OpenOffice / LibreOffice : automate your office tasks with Python Macros
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Tensorflow : a deep learning library by Google, let's give it a try
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Optimize your revenues and earn money with your blog : tools for the webmaster
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Create an object detector with OpenCV Cascade Classifier : best practice and tutorial
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ROI max pooling and shareable layers : fast and accurate deep learning nets.
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Deep learning net surgery to create a feature map from a classification net
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Compare Tesseract and deep learning techniques for Optical Character Recognition of license plates
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Deep learning tutorial on Caffe technology : basic commands, Python and C++ code.
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Training optical character recognition technology Tesseract on a new character font on MacOS
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TinkerPop for graph databases : the end of Active Record and relational databases
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GPU accelerated computing versus cluster computing for machine / deep learning
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Deep learning with Cuda 7, CuDNN 2 and Caffe for Digits 2 and Python on Ubuntu 14.04
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Deep learning with Cuda 7, CuDNN 2 and Caffe for Digits 2 and Python on iMac with NVIDIA GeForce GT 755M/640M GPU (Mac OS X)
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Zeppelin Notebook - big data analysis in Scala or Python in a notebook, and connection to a Spark cluster on EC2
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Wikipedia statistics, principal components and geo retrieval with Spark and ElasticSearch [Hackathon CarConnectivity]
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Isomorphism : new mobile exigences for web sites
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Create a mobile app from HTML/CSS code with Cordova framework
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Redirection to the mobile app or the mobile website with a modal box
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Installing big data technologies in a nutshell : Hadoop HDFS & Mapreduce, Yarn, Hive, Hbase, Sqoop and Spark
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Enforcing security with Virtual Private Clouds and Security Groups
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Deploying for your organization - from your PC to your cloud or any servers in one clic
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