If you are learning Python for data science, you should know that there are many Python frameworks that you should learn for data science. From reading a CSV file, or image dataset, to training your machine learning model, or a neural network, if you are using Python, many Python frameworks will help you in the complete process of data science. So if you want to learn all Data Science libraries in Python, this article is for you. In this article, I will present you with a list of tutorials on all Data Science libraries.
All Data Science Libraries
Below is the list of all the Data Science libraries in Python that you need to learn.
Data Handling:
- Numpy
- Important Pandas Functions
- Pypolars
Data Visualization:
- Matplotlib
- Plotly
- Seaborn
- PandasGUI
- Klib
- Matplotlib
- Plotly
- Folium
- VisualKeras
Web Scraping:
- PyScrappy
- Pandas Datareader
- Instaloader
- BeautifulSoup
Natural Language Processing:
- TextBlob
- NLTK
- Spacy
Machine Learning:
- Lazy Predict
- AutoTS
- PyCaret
- Facebook Prophet
- Scikit-learn
- MindsDB
- Streamlit
Deep Learning:
- AutoKeras
- NeuralProphet
- FastAI
- PyTorch
- TensorFlow
As Python is an open-source programming language, the above list of data science frameworks will be regularly updated with more tutorials.
Summary
So these were all the Python frameworks you need to learn for data science. The above list of data science frameworks will be updated with more tutorials every month. I hope you liked this article on a tutorial on all Data Science frameworks in Python. Please feel free to ask your valuable questions in the comments section below.
No comments:
Post a Comment
Note: Only a member of this blog may post a comment.