Deep learning
Deep learning is an AI function and subset of machine learning, used for processing large amounts of complex data.
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In the given documentation, the mentioned key are acc and val_acc, but actually it is accuracy and val_accuracy.
Given documentation screenshot:

Whereas the actual keys are `dict_keys(['val_loss', 'val_accuracy
https://github.com/opencv/opencv/blob/1acadd363b0d0ffcdabac8af3196cb65bef426b1/modules/photo/src/seamless_cloning.cpp#L54
reason: all images with 4 channels (alpha channels) are required to be converted to 3 channels on the client side, then back to 3 channels just for API compatibility purposes.
in the rcnn model
`embedded_words_squeezed2.reverse()
embedding_afterward=self.right_side_last_word #tf.zeros((self.batch_size,self.embed_size)) # TODO self.right_side_last_word SHOULD WE ASSIGN A VARIABLE HERE
context_right_afterward = tf.zeros((self.batch_size, self.embed_size)) #self.right_side_context_last # TODO SHOULD WE ASSIGN A VARIABLE HERE
context_right_list
Context
We would like to add torch::nn::functional::normalize to the C++ API, so that C++ users can easily find the equivalent of Python API torch.nn.functional.normalize.
Steps
- Add
torch::nn::NormalizeOptionstotorch/csrc/api/include/torch/nn/options/normalization.h(add this file if it doesn’t exist), which should include the following parameters (based on https://pytorch.
Line 1137 of the Caffe.Proto states "By default, SliceLayer concatenates blobs along the "channels" axis (1)."
Yet, the documentation on http://caffe.berkeleyvision.org/tutorial/layers/slice.html states, "The Slice layer is a utility layer that slices an input layer to multiple output layers along a given dimension (currently num or channel only) with given slice indices." which seems to be
100 Days of ML Coding
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Original line 87:
with open('README.md') as readme:
Corrected version of line 87:
with open('README.md','r',encoding='utf-8') as readme:
Explanation:
Windows uses GBK to decode rather than utf-8 at default setting
A complete daily plan for studying to become a machine learning engineer.
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Dec 20, 2019
📚 A practical approach to machine learning to enable everyone to learn, explore and build.
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Dec 20, 2019 - Jupyter Notebook
This should really help to keep a track of papers read so far. I would love to fork the repo and keep on checking the boxes in my local fork.
For example: Have a look at this section. People fork this repo and check the boxes as they finish reading each section.
Considering the MNIST dataset, wich has 5923 instances of the 0 class in the training set, I'm alittle confused about the following code for detemining the relative errors of the SGD classification model:
row_sums = conf_mx.sum(axis=1, keepdims=True)
norm_conf_mx = conf_mx / row_sums
(https://github.com/ageron/handson-ml/blob/master/03_classification.ipynb // In: 67)
Since using `axi
Alexnet implementation in tensorflow has incomplete architecture where 2 convolution neural layers are missing. This issue is in reference to the python notebook mentioned below.
The fastai deep learning library, plus lessons and tutorials
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What's the ETA for updating the massively outdated documentation?
Please update all documents that are related building CNTK from source with latest CUDA dependencies that are indicated in CNTK.Common.props and CNTK.Cpp.props.
I tried to build from source, but it's a futile effort.
I am having difficulty in running this package as a Webservice. Would appreciate if we could provide any kind of documentation on implementing an API to get the keypoints from an image. Our aim is to able to deploy this API as an Azure Function and also know if it is feasible.
As I'm using anaconda2(python2 default), so when using :"conda env create -f build/environment.yml" need to specify the python version python=3, like :"conda env create python=3 -f build/environment.yml"
I got a conllU file, from my university, where the head column is filled with .
Processing such file with the cli.convert method will result in a int cast error in
https://github.com/explosion/spaCy/blob/master/spacy/cli/converters/conllu2json.py line 73
in the read_conllx method (head = (int(head) - 1) if head != "0" else id).
In the format documentation on https://universaldependencie
With the latest version of scipy.misc, scipy.misc.toimage is no longer available. To load and save an image as png we now have to use PIL, breaking tensorboard image summary.
Here is how I fixed the bug:
1./ At the end of main.py, log a uint8 image
logger.image_summary(tag, (images * 255).astype(np.uint8), step+1)
2./ In Logger class, package image as bytes with the PIL library (mode="L
100-Days-Of-ML-Code中文版
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Machine Learning From Scratch. Bare bones NumPy implementations of machine learning models and algorithms with a focus on accessibility. Aims to cover everything from linear regression to deep learning.
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Oxford Deep NLP 2017 course
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Dec 20, 2019
Clone a voice in 5 seconds to generate arbitrary speech in real-time
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Dec 20, 2019 - Python
A curated list of awesome Deep Learning tutorials, projects and communities.
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Dec 20, 2019
Simple and ready-to-use tutorials for TensorFlow
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Dec 20, 2019 - Python
Machine Learning、Deep Learning、PostgreSQL、Distributed System、Node.Js、Golang
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Essential Cheat Sheets for deep learning and machine learning researchers https://medium.com/@kailashahirwar/essential-cheat-sheets-for-machine-learning-and-deep-learning-researchers-efb6a8ebd2e5
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Face recognition with deep neural networks.
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Dec 20, 2019 - Lua
transcribe.py has odd directory-scanning behavior which isn't documented
If you point --src to a directory, you get the error:
E Path in --src not existing
Looking at the code logic, the script expects a JSON file with a .catalog file extension. This is (1) not documented, and (2) not a really useful logic. It would be much better to point the script to a dir, and scan f
Hi, my name is Rachin Kalakheti and i am a participant of Google Code-in 2019. I felt overwhelmed to know Tensorflow is also one of the organization for this year. So, there was a task to create a notebook tutorial on Data Augmentation using tf.image. I see that currently there is no tutorial regarding the same topic. So, I would like to contribute to the community by adding my tutorial to the Te