gavinkhung /
machine-learning-visualized
ML algorithms implemented and derived from first-principles in Jupyter Notebooks and NumPy
91/100 healthLoading repository data…
winstondcosta / repository
Machine Learning Algorithms, Deep Learning Algorithms, Python and its Packages
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Machine Learning Algorithms, Deep Learning Algorithms, Python and its Packages
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gavinkhung /
ML algorithms implemented and derived from first-principles in Jupyter Notebooks and NumPy
91/100 healtheugenesiow /
Learn by experimenting on state-of-the-art machine learning models and algorithms with Jupyter Notebooks.
77/100 healthTo help python programmers experiment and learn. All algorithms implemented from scratch in jupyter notebook.
79/100 healthprathameshtari /
Football Match prediction using machine learning algorithms in jupyter notebook
49/100 healthanubhavanand12qw /
The coding has been done on Python 3.65 using Jupyter Notebook. This program fetches LIVE data from TWITTER using Tweepy. Then we clean our data or tweets ( like removing special characters ). After that we perform sentiment analysis on the twitter data and plot it for better visualization. The we fetch the STOCK PRICE from yahoo.finance and add it to the data-set to perform prediction. We apply many machine learning algorithms like (random forest, MLPClassifier, logistic regression) and train our data-set. Then we perform prediction on untrained data and plot it with the real data and see the accuracy.
62/100 healthdr-mushtaq /
A complete A-Z guide to Machine Learning and Data Science using Python. Includes implementation of ML algorithms, statistical methods, and feature selection techniques in Jupyter Notebooks. Follow Coursesteach for tutorials and updates.
84/100 health