-
Updated
May 3, 2022 - Jupyter Notebook
machine-learning-algorithms
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.
Here are 7,267 public repositories matching this topic...
-
Updated
Apr 23, 2022
-
Updated
Apr 20, 2022 - Jupyter Notebook
-
Updated
May 1, 2022 - C++
-
Updated
Apr 28, 2022 - C
-
Updated
Jul 30, 2021 - Jupyter Notebook
-
Updated
May 5, 2022 - TypeScript
-
Updated
May 2, 2022 - Python
-
Updated
Jan 31, 2022 - Python
-
Updated
Apr 21, 2020 - Python
-
Updated
Mar 4, 2020 - MATLAB
-
Updated
Apr 2, 2021
-
Updated
Oct 19, 2020 - Jupyter Notebook
-
Updated
Dec 3, 2021 - Jupyter Notebook
-
Updated
Apr 19, 2022 - Python
Hello everyone,
First of all, I want to take a moment to thank all contributors and people who supported this project in any way ;) you are awesome!
If you like the project and have any interest in contributing/maintaining it, you can contact me here or send me a msg privately:
- Email: nidhalbacc@gmail.com
PS: You need to be familiar with python and machine learning
Location of incorrect documentation
Provide links and line numbers if applicable.](https://docs.rapids.ai/api/cuml/stable/api.html#cuml.cluster.HDBSCAN)
Describe the problems or issues found in the documentation
the metric default is euclidean but in the docs it states metric string or callable, optional (default='minkowski')
Suggested fix for documentation
good to include
Description
Currently our unit tests are disorganized and each test creates example StellarGraph graphs in different or similar ways with no sharing of this code.
This issue is to improve the unit tests by making functions to create example graphs available to all unit tests by, for example, making them pytest fixtures at the top level of the tests (see https://docs.pytest.org/en/latest/
-
Updated
May 5, 2022 - Jupyter Notebook
-
Updated
Sep 9, 2020 - JavaScript
On MacOS, the tslearn.datasets
does not work out-of-the-box.
In order to make it work, you need to apply the following steps:
- Go to your finder
- run "/Apps/Python/Install Certificates.command". This basically installs the
certifi
package with pip.
Perhaps we should add this to the documentation page of our datasets module?
-
Updated
Feb 28, 2022 - HTML
-
Updated
Aug 12, 2021
-
Updated
Apr 7, 2022 - Python
-
Updated
Mar 14, 2020 - Python
-
Updated
Sep 6, 2021 - C
-
Updated
Jan 12, 2022 - Kotlin
-
Updated
Oct 23, 2021 - C++
-
Updated
Apr 27, 2022 - C++
- Wikipedia
- Wikipedia
Describe the issue:
During computing Channel Dependencies
reshape_break_channel_dependency
does following code to ensure that the number of input channels equals the number of output channels:This is correct