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The best way to learn #DeepLearning is by practicing it. But which framework to use? Here are 5 articles to get you started!
A Comprehensive Introduction to #PyTorch - https://bit.ly/2L8Rj7n
Learn How to Build Quick & Accurate Neural Networks using PyTorch (& 4 Case Studies) - https://bit.ly/2Vts9nY
Get Started with Deep Learning using #Keras and #TensorFlow in #R - https://bit.ly/2Iro2BY
TensorFlow 101: Understanding Tensors and Graphs - https://bit.ly/2GNg195
An Introduction to Implementing #NeuralNetworks using TensorFlow - https://bit.ly/2V17cBs
✴️ @AI_Python_EN
A Comprehensive Introduction to #PyTorch - https://bit.ly/2L8Rj7n
Learn How to Build Quick & Accurate Neural Networks using PyTorch (& 4 Case Studies) - https://bit.ly/2Vts9nY
Get Started with Deep Learning using #Keras and #TensorFlow in #R - https://bit.ly/2Iro2BY
TensorFlow 101: Understanding Tensors and Graphs - https://bit.ly/2GNg195
An Introduction to Implementing #NeuralNetworks using TensorFlow - https://bit.ly/2V17cBs
✴️ @AI_Python_EN
Data Visualization is a very important step in Data Science, so we should try to MASTER it.
Here are the useful links for Data Visualization -
1)Quick and Easy Data Visualizations in Python with Code.
(https://lnkd.in/fXJ-_Y8)
2)10 Useful Python Data Visualization Libraries for Any Discipline.
(https://lnkd.in/fBxbHwr)
3)Top 50 matplotlib Visualizations – The Master Plots (with full python code).
(https://lnkd.in/fGrnGax)
4)Data Visualization Effectiveness Profile.
(https://lnkd.in/f3v52Fd)
5)The Visual Perception of Variation in Data Displays.
(https://lnkd.in/fm-TbPM)
6)Matplotlib Tutorial – A Complete Guide to Python Plot w/ Examples.
(https://lnkd.in/fFkUgQP)
7)Interactive Data Visualization in Python With Bokeh.
(https://lnkd.in/fEfQAvg)
8) Data Visualization in R
https://lnkd.in/fEvZB_N
9) The Next Level of Data Visualization in Python (Plotly)
https://lnkd.in/fKn4cPM
#datascience #dataanalysis #datavisualization #python #r
✴️ @AI_Python_EN
Here are the useful links for Data Visualization -
1)Quick and Easy Data Visualizations in Python with Code.
(https://lnkd.in/fXJ-_Y8)
2)10 Useful Python Data Visualization Libraries for Any Discipline.
(https://lnkd.in/fBxbHwr)
3)Top 50 matplotlib Visualizations – The Master Plots (with full python code).
(https://lnkd.in/fGrnGax)
4)Data Visualization Effectiveness Profile.
(https://lnkd.in/f3v52Fd)
5)The Visual Perception of Variation in Data Displays.
(https://lnkd.in/fm-TbPM)
6)Matplotlib Tutorial – A Complete Guide to Python Plot w/ Examples.
(https://lnkd.in/fFkUgQP)
7)Interactive Data Visualization in Python With Bokeh.
(https://lnkd.in/fEfQAvg)
8) Data Visualization in R
https://lnkd.in/fEvZB_N
9) The Next Level of Data Visualization in Python (Plotly)
https://lnkd.in/fKn4cPM
#datascience #dataanalysis #datavisualization #python #r
✴️ @AI_Python_EN
letting beginners and experts alike learn about SAP HANA.
Download here --> https://lnkd.in/eTtdvi4
End to end Machine learning platform.
Bring your own language and microservices.Java, Node.js and Python are the officially supported languages.
SAP HANA is an ACID-compliant database and application development platform. You can use advanced data processing capabilities—text, graph, spatial, predictive, and more—to pull insights from all types of data.
#machinelearning #artificialintelligence #datascience #ml #ai #deeplearning #python #R #java #SQL
✴️ @AI_Python_EN
Download here --> https://lnkd.in/eTtdvi4
End to end Machine learning platform.
Bring your own language and microservices.Java, Node.js and Python are the officially supported languages.
SAP HANA is an ACID-compliant database and application development platform. You can use advanced data processing capabilities—text, graph, spatial, predictive, and more—to pull insights from all types of data.
#machinelearning #artificialintelligence #datascience #ml #ai #deeplearning #python #R #java #SQL
✴️ @AI_Python_EN
All You Need About Common MachineLearning Algorithms.pdf
500.2 KB
All You Need About Common #MachineLearning Algorithms
Here is the list of commonly used machine learning algorithms. The code is provided in both #R and #Python. These algorithms can be applied to almost any data problem:
✅Linear Regression
✅Logistic Regression
✅Decision Tree
✅SVM
✅Naive Bayes
✅kNN
✅K-Means
✅Random Forest
✅Dimensionality Reduction Algorithms
✅Gradient Boosting algorithms
✔️GBM
✔️XGBoost
✔️LightGBM
✔️CatBoost
#ai #datascienece
✴️ @AI_Python_EN
Here is the list of commonly used machine learning algorithms. The code is provided in both #R and #Python. These algorithms can be applied to almost any data problem:
✅Linear Regression
✅Logistic Regression
✅Decision Tree
✅SVM
✅Naive Bayes
✅kNN
✅K-Means
✅Random Forest
✅Dimensionality Reduction Algorithms
✅Gradient Boosting algorithms
✔️GBM
✔️XGBoost
✔️LightGBM
✔️CatBoost
#ai #datascienece
✴️ @AI_Python_EN
0.pdf
500.2 KB
💡💡 Commonly used Machine Learning Algorithms 💡💡
Here is the list of commonly used machine learning algorithms. The code is provided in both #R and #Python. These algorithms can be applied to almost any data problem:
✅Linear Regression
✅Logistic Regression
✅Decision Tree
✅SVM
✅Naive Bayes
✅kNN
✅K-Means
✅Random Forest
✅Dimensionality Reduction Algorithms
✅Gradient Boosting algorithms
✔️GBM
✔️XGBoost
✔️LightGBM
✔️CatBoost
Credit: Analytics Vidhya,Sunil Ray
Thanks for the share Steve Nouri.
#datascience #deeplearning #ai #artificialintelligence #machinelearning #data #r #python
✴️ @AI_Python_EN
Here is the list of commonly used machine learning algorithms. The code is provided in both #R and #Python. These algorithms can be applied to almost any data problem:
✅Linear Regression
✅Logistic Regression
✅Decision Tree
✅SVM
✅Naive Bayes
✅kNN
✅K-Means
✅Random Forest
✅Dimensionality Reduction Algorithms
✅Gradient Boosting algorithms
✔️GBM
✔️XGBoost
✔️LightGBM
✔️CatBoost
Credit: Analytics Vidhya,Sunil Ray
Thanks for the share Steve Nouri.
#datascience #deeplearning #ai #artificialintelligence #machinelearning #data #r #python
✴️ @AI_Python_EN
Quick links for all things #R and #Python:
1. Overview of using python with RStudio: https://lnkd.in/d5NkJAt
2. Python & #shiny: https://lnkd.in/dVfkE6b
3. Python & #rmarkdown: https://lnkd.in/dXpSd7i
4. Python with #plumber: https://lnkd.in/dn2pEAQ
For a central location to publish all of your team's data products (R artifacts, R & python mixed assets, and #jupyternotebooks), check out RStudio Connect: https://lnkd.in/dXW7iPG
✴️ @AI_Python_EN
1. Overview of using python with RStudio: https://lnkd.in/d5NkJAt
2. Python & #shiny: https://lnkd.in/dVfkE6b
3. Python & #rmarkdown: https://lnkd.in/dXpSd7i
4. Python with #plumber: https://lnkd.in/dn2pEAQ
For a central location to publish all of your team's data products (R artifacts, R & python mixed assets, and #jupyternotebooks), check out RStudio Connect: https://lnkd.in/dXW7iPG
✴️ @AI_Python_EN
Credit Risk Analysis Using #MachineLearning and #DeepLearning Models
Lovely paper by Peter Martey Addo, Dominique Guegan and Bertrand Hassani
Code on #Github (it's in #R)
https://github.com/brainy749/CreditRiskPaper
✴️ @AI_Python_EN
Lovely paper by Peter Martey Addo, Dominique Guegan and Bertrand Hassani
Code on #Github (it's in #R)
https://github.com/brainy749/CreditRiskPaper
✴️ @AI_Python_EN