100 Days of ML Coding
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Updated
May 23, 2021
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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.
100 Days of ML Coding
A complete daily plan for studying to become a machine learning engineer.
The "Python Machine Learning (1st edition)" book code repository and info resource
An open source AutoML toolkit for automate machine learning lifecycle, including feature engineering, neural architecture search, model compression and hyper-parameter tuning.
Minimal and clean examples of machine learning algorithms implementations
手写实现李航《统计学习方法》书中全部算法
Matlab code of machine learning algorithms in book PRML
This repositary is a combination of different resources lying scattered all over the internet. The reason for making such an repositary is to combine all the valuable resources in a sequential manner, so that it helps every beginners who are in a search of free and structured learning resource for Data Science. For Constant Updates Follow me in Twitter.
12 weeks, 24 lessons, classic Machine Learning for all
Describe the bug
Clipping a DataFrame or Series using ints causes a cudf Failure because it won't handle the different dtypes (int and float)
Steps/Code to reproduce bug
data = cudf.Series([-0.43, 0.1234, 1.5, -1.31])
data.clip(0, 1)
...
File "cudf/_lib/replace.pyx", line 216, in cudf._lib.replace.clip
File "cudf/_lib/replace.pyx", line 198, in cudf._lib.replace.clamp
A collection of tutorials and examples for solving and understanding machine learning and pattern classification tasks
Plain python implementations of basic machine learning algorithms
I'm the creator and only maintainer of the project at the moment. I'm working on adding new features and thus I would like to let this issue open for newcomers who want to contribute to the project.
Basically, I wrote the cli using argparse since it is part of the standard language already. However, I'm starting to rethin
Report needed documentation
While the estimator guide offers a great breakdown of how to use many of the tools in api_context_managers.py, it would be helpful to have information right in the docstring during development to more easily understand what is actually going on in each of the provided functions/classes/methods. This is particularly important for
The standard package for machine learning with noisy labels and finding mislabeled data. Works with most datasets and models.
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/
A high performance implementation of HDBSCAN clustering.
Here you can get all the Quantum Machine learning Basics, Algorithms ,Study Materials ,Projects and the descriptions of the projects around the web
Our xgboost models use the binary:logistic' objective function, however the m2cgen converted version of the models return raw scores instead of the transformed scores.
This is fine as long as the user knows this is happening! I didn't, so it took a while to figure out what was going on. I'm wondering if perhaps a useful warning could be raised for users to alert them of this issue? A warning
Hi, Thanks for the awesome library!
So I am running a Kmeans on lots of different datasets, which all have roughly four shapes, so I initialize with those shapes and it works well, except for just a few times. There are a few datasets that look different enough that I end up with empty clusters and the algorithm just hangs ("Resumed because of empty cluster" again and again).
I conceptually
A resource for learning about ML, DL, PyTorch and TensorFlow. Feedback always appreciated :)
Highly cited and useful papers related to machine learning, deep learning, AI, game theory, reinforcement learning
An Embedded Computer Vision & Machine Learning Library (CPU Optimized & IoT Capable)
The Python code to reproduce the illustrations from The Hundred-Page Machine Learning Book.
Description of Change
Checklist