Machine learning
Machine learning is the practice of teaching a computer to learn. The concept uses pattern recognition, as well as other forms of predictive algorithms, to make judgments on incoming data. This field is closely related to artificial intelligence and computational statistics.
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In Keras documentation, glorot_uniform says that the initializer is using Glorot Uniform from this paper. However, the Keras implementation is totally different from the equation on the paper. Also, there are some arguments such as mode ='fan_avg' is the default. It should be same as the referenced paper. 'fan_sum'. Golort uniform is shown
Not sure when this happened but i love the new left-hand side navigation https://scikit-learn.org/dev/user_guide.html
(@adrinjalali did this maybe?)
However, when clicking the different entries, the result is inconsistent. For some, it shows a TOC that expands the existing toc with m
I think "outputs [-1]" and "outputs [0]" are equivalent (reversed) in this line of code, but the former (89%) works better than the latter (86%). Why?
Current Behavior:
The the wiki page APIExample, for the python example, the handle api is is run through the TessBaseAPIDelete
funciton if the api failed to be initialized whereas for the C example below, this is not the case.
python:
rc = tesseract.TessBaseAPIInit3(api, TESSDATA_PREFIX, lang)
if (rc):
te
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May 13, 2020 - Python
I am executing ML-examples ->cmsisnn-cifar10. While converting trained Caffe model into cmsis-nn by below command
python nn_quantizer.py --model models/cifar10_m7_train_test.prototxt --weights models/cifar10_m7_iter_300000.caffemodel.h5 --save models/cifar10_m7.pkl
getting an error message.
Traceback (most recent call last):
File "nn_quantizer.py", line 614, in
my_model.get_gra
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May 14, 2020 - Python
So the three main functions in the stdlib: lu
, cholesky
, and qr
all have docstrings but they are not listed in the documentation because of the missing docs/src/index.md
file. Ref #35599
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May 15, 2020 - Jupyter Notebook
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I'm not sure if XGBoost s model is well calibrated with softmax. It would be nice to have a doc with various experiments including random forest, dart etc.
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.
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May 12, 2020 - Jupyter Notebook
Issue Summary
Documentation and error messages are misleading when using a release version of Caffe on Ubuntu.
Executed Command (if any)
cmake .. -DBUILD_CAFFE=OFF -DCaffe_INCLUDE_DIRS=/usr/include/caffe -DCaffe_LIBS=/usr/lib/x86_64-linux-gnu/libcaffe.so
OpenPose Output (if any)
-- The C compiler identification is GNU 7.5.0
-- The CXX compiler identificatio
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May 20, 2020 - Python
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 was going though the existing enhancement issues again and though it'd be nice to collect ideas for spaCy plugins and related projects. There are always people in the community who are looking for new things to build, so here's some inspiration
If you have questions about the projects I suggested,
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Jun 12, 2017
- Wikipedia
- Wikipedia
Please make sure that this is a bug. As per our
GitHub Policy,
we only address code/doc bugs, performance issues, feature requests and
build/installation issues on GitHub. tag:bug_template
System information
example script provided in TensorFlow): Yes