Deep learning
Deep learning is an AI function and subset of machine learning, used for processing large amounts of complex data.
Here are 22,370 public repositories matching this topic...
This readme links to tensorboard_embeddings_mnist.py which doesn't exist. Where did it go?
https://github.com/keras-team/keras/blob/master/examples/README.md
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?
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
-
Updated
Mar 10, 2020 - Python
can't find "from sklearn.cross_validation import train_test_split" in Latest version scikit-learn
Describe the bug
can't find "from sklearn.cross_validation import train_test_split" in Latest version scikit-learn
To Reproduce
Steps to reproduce the behavior:
- Day1
- Step 5: Splitting the datasets into training sets and Test sets
- Can't find "from sklearn.cross_validation import train_test_split" in Latest version scikit-learn**
**Desktop (please complete the following infor
I got this error:
Traceback (most recent call last):
File "c:\Users\jshat\Documents\Code\Machine Learning\Deep-Learning-Papers-Reading-Roadmap\download.py", line 88, in
readme_html = mistune.markdown(readme.read())
File "C:\Python37\lib\encodings\cp1252.py", line 23, in decode
return codecs.charmap_decode(input,self.errors,decoding_table)[0]
UnicodeDecodeError: 'charma
-
Updated
Mar 3, 2020 - Jupyter Notebook
-
Updated
Feb 12, 2020
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.
In Transformation Pipeline make class DataFrameSelector for custom transformation and call DataFrameSelector(num_attribs) it show
TypeError: object() takes no parameters
and same with CombinedAttributesAdder
i m using colab
from sklearn.base import BaseEstimator , TransformerMixin
class DataFrameSelector(BaseEstimator,TransformerMixin):
def _init_(self,attribute_names):
"Bokeh is a Python interactive visualization library that targets modern web browsers for presentation. Its goal is to provide elegant, concise construction of novel graphics in the style of D3.js, but also deliver this capability with high-performance interactivity over very large or streaming datasets. Bokeh can help anyone who would like to quickly and easi
-
Updated
Mar 10, 2020 - Jupyter Notebook
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.
-
Updated
Mar 12, 2020 - Python
-
Updated
Jan 22, 2020 - C++
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,
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
-
Updated
Jan 29, 2020 - Python
From here:
A particularity of the SV2TTS framework is that all models can be trained
separately and on distinct datasets. For the encoder, one seeks to have a model
that is robust to noise and able to capture the many characteristics of the human
voice. Therefore, a large corpus of many different speakers wou
-
Updated
Feb 18, 2020 - Jupyter Notebook
-
Updated
Mar 4, 2020
-
Updated
Jun 12, 2017
-
Updated
Mar 4, 2020 - Python
Right now, most of the code under native_client/java/libdeepspeech/src/main/java/org/mozilla/deepspeech/libdeepspeech/ is basically Java/JNI wrapper on top of C library.
As part of making the Java interface more Java-ish, it would be nice to update each and every call sites of the C-API that might return an error and properly throw a Java-level exception.
It might be required that we define
-
Updated
Oct 19, 2019
-
Updated
Mar 4, 2020
-
Updated
Nov 30, 2019 - Lua
- Wikipedia
- Wikipedia
Please make sure that this is a feature request. As per our GitHub Policy, we only address code/doc bugs, performance issues, feature requests and build/installation issues on GitHub. tag:feature_template
System information