Gradient Boosting for Regression Notes.pdf
6.4 MB
π Gradient Boosting for Regression Notes
βοΈ In these notes, you will learn when to use gradient boosting, why it is a more cost-effective choice, and how to implement it correctly; so that your predictions are more accurate and your decisions more professional.
https://t.me/CodeProgrammer π
https://t.me/CodeProgrammer π
Please open Telegram to view this post
VIEW IN TELEGRAM
β€5
This media is not supported in your browser
VIEW IN TELEGRAM
Want to create SQL databases visually? π₯
Try this online tool that allows you to design and model databases using a convenient drag-and-drop interface.
It helps reinforce SQL knowledge, better understand relationships between tables, and work without installing software or registering.
The tool is completely free and open source, and also supports importing and exporting SQL code.
website: https://www.drawdb.app/
π https://t.me/CodeProgrammer
Try this online tool that allows you to design and model databases using a convenient drag-and-drop interface.
It helps reinforce SQL knowledge, better understand relationships between tables, and work without installing software or registering.
The tool is completely free and open source, and also supports importing and exporting SQL code.
website: https://www.drawdb.app/
Please open Telegram to view this post
VIEW IN TELEGRAM
β€6π―1
π¨π»βπ» Never underestimate Kaggle! One of the best ways to start learning data science and ML is Kaggle. A place where theory turns into practice, beginners become professionals, and skills turn into value.
https://t.me/CodeProgrammer
Please open Telegram to view this post
VIEW IN TELEGRAM
β€9π3
π Swiftproxy β Fast, Secure, and Reliable Proxies for Every Project
Looking for proxies that are stable, high-speed, and ready for any online task? Swiftproxy is your go-to solution! From web scraping and data analytics to automation and competitive research, our proxies help you work smarter, faster, and without limits.
π https://www.swiftproxy.net/?ref=python53
β¨Why Swiftproxy Stands Out:
π Rotating & Sticky IPs
Switch IPs seamlessly or maintain the same one for longer sessions. Avoid blocks, CAPTCHAs, and interruptions effortlessly.
π Global Coverage & Advanced Targeting
Access over 90 million IPs across 220+ countries. Pinpoint IPs by country, city, or ASN for precise data collection.
β‘οΈ Fast, Secure, & Reliable
Enjoy high-speed servers with 99.8% uptime and advanced encryption, ensuring seamless and secure data collection.
π» Flexible & Compatible
Supports HTTP(S) and SOCKS5 protocols and integrates easily with over 650 tools and applications.
β Flexible Data Usage
Residential proxies: Non-expiring bandwidth starting from just $0.7/GB β use it whenever you need.
Static residential proxies: Valid for 30 days, priced from $6/IP, giving you maximum control.
π₯Kickstart your projects with Swiftproxyβs reliable residential proxies and make your workflow smoother than ever!
π https://www.swiftproxy.net/?ref=python53
π― Get Started Quickly:
1. Register a new account on Swiftproxy
2. Contact support to claim 500MB free residential proxy traffic
πUse exclusive code SWIFT90 for 10% off your first purchase!
π«Join Swiftproxy Now: https://t.me/swiftproxynetofficial
Looking for proxies that are stable, high-speed, and ready for any online task? Swiftproxy is your go-to solution! From web scraping and data analytics to automation and competitive research, our proxies help you work smarter, faster, and without limits.
π https://www.swiftproxy.net/?ref=python53
β¨Why Swiftproxy Stands Out:
π Rotating & Sticky IPs
Switch IPs seamlessly or maintain the same one for longer sessions. Avoid blocks, CAPTCHAs, and interruptions effortlessly.
π Global Coverage & Advanced Targeting
Access over 90 million IPs across 220+ countries. Pinpoint IPs by country, city, or ASN for precise data collection.
β‘οΈ Fast, Secure, & Reliable
Enjoy high-speed servers with 99.8% uptime and advanced encryption, ensuring seamless and secure data collection.
π» Flexible & Compatible
Supports HTTP(S) and SOCKS5 protocols and integrates easily with over 650 tools and applications.
β Flexible Data Usage
Residential proxies: Non-expiring bandwidth starting from just $0.7/GB β use it whenever you need.
Static residential proxies: Valid for 30 days, priced from $6/IP, giving you maximum control.
π₯Kickstart your projects with Swiftproxyβs reliable residential proxies and make your workflow smoother than ever!
π https://www.swiftproxy.net/?ref=python53
π― Get Started Quickly:
1. Register a new account on Swiftproxy
2. Contact support to claim 500MB free residential proxy traffic
πUse exclusive code SWIFT90 for 10% off your first purchase!
π«Join Swiftproxy Now: https://t.me/swiftproxynetofficial
β€9
This media is not supported in your browser
VIEW IN TELEGRAM
Visualization of Python objects and references
Many beginner Python developers face confusion when working with mutability and references between variables. It is especially difficult to understand during debugging of complex data structures when it is unclear how exactly they are connected.β¨οΈ
So here is memory_graph β an open-source tool for visualizing Python objects and references. It shows the data structure, call stack, and connections between variables.
π Link: https://github.com/bterwijn/memory_graph?tab=readme-ov-file
It also supports working with recursion and structures such as binary trees or linked lists.
Works in VS Code, Jupyter, PyCharm, and is available online without installation.
π more: https://memory-graph.com/#breakpoints=8&continues=1×tep=1.0&play
π https://t.me/CodeProgrammer
Many beginner Python developers face confusion when working with mutability and references between variables. It is especially difficult to understand during debugging of complex data structures when it is unclear how exactly they are connected.
So here is memory_graph β an open-source tool for visualizing Python objects and references. It shows the data structure, call stack, and connections between variables.
It also supports working with recursion and structures such as binary trees or linked lists.
Works in VS Code, Jupyter, PyCharm, and is available online without installation.
Please open Telegram to view this post
VIEW IN TELEGRAM
β€6
Forwarded from Data Science Machine Learning Data Analysis
π Building a Convolutional Neural Network (CNNs) from Scratch
π Category:
π Date: 2024-11-05 | β±οΈ Read time: 15 min read
Line-by-Line, Letβs Build a ResNet Classifier on the MNIST-Fashion Dataset
π Category:
π Date: 2024-11-05 | β±οΈ Read time: 15 min read
Line-by-Line, Letβs Build a ResNet Classifier on the MNIST-Fashion Dataset
β€7
Forwarded from Data Science Machine Learning Data Analysis
π Paper Walkthrough: Attention Is All You Need
π Category: DEEP LEARNING
π Date: 2024-11-03 | β±οΈ Read time: 46 min read
The complete guide to implementing a Transformer from scratch
π Category: DEEP LEARNING
π Date: 2024-11-03 | β±οΈ Read time: 46 min read
The complete guide to implementing a Transformer from scratch
β€2
This media is not supported in your browser
VIEW IN TELEGRAM
10 great Python packages for Data Science not known to many:
1οΈβ£ CleanLab
You're missing out on a lot if you haven't started using Cleanlab yet!
Cleanlab helps you clean data and labels by automatically detecting issues in a ML dataset.
It's like a magic wand! πͺβ¨
Check this outπ
https://lnkd.in/dY2fp5YW
2οΈβ£ LazyPredict
A Python library that enables you to train, test, and evaluate multiple ML models at once using just a few lines of code.
Supports both regression & classification! β¨
Check this outπ
https://lnkd.in/ggZ-HByv
3οΈβ£ Lux
A Python library for quickly visualizing and analyzing data, providing an easy and efficient way to explore data.
Check this outπ
https://lnkd.in/genaV395
4οΈβ£ PyForest
A time-saving tool that helps in importing all the necessary data science libraries and functions with a single line of code.
Check this outπ
https://lnkd.in/gv2tsjMe
5οΈβ£ PivotTableJS
PivotTableJS lets you interactively analyse your data in Jupyter Notebooks without any code π₯
Check this outπ
https://lnkd.in/dapGg-AS
6οΈβ£ Drawdata
Drawdata is a python library that allows you to draw a 2-D dataset of any shape in a Jupyter Notebook.
Very handy for learning & understanding the behaviour of ML algorithms!
Check this outπ
https://lnkd.in/gBSrQ-e4
7οΈβ£ black
The Uncompromising Code Formatter
Arguably the best, I use it everyday!!
Check this out π
https://lnkd.in/gsz2Mxqn
8οΈβ£ PyCaret
An open-source, low-code machine learning library in Python that automates the machine learning workflow.
Check this outπ
https://lnkd.in/gUzh-YZM
9οΈβ£ PyTorch-Lightning by @LightningAIβ‘οΈ
If you like PyTorch, you'll love PyTorch Lightning!
Streamlines your model training, automates boilerplate code, and lets you focus on what matters: research & innovation.
Check this outπ
https://lnkd.in/dir2Xej7
π Reflex
Build Performant, customizable web apps in pure Python that you can deploy in seconds
Reflex is a library to build full-stack web apps in pure Python.
Check this outπ
https://lnkd.in/gz_vsNba
https://t.me/CodeProgrammerπ
1οΈβ£ CleanLab
You're missing out on a lot if you haven't started using Cleanlab yet!
Cleanlab helps you clean data and labels by automatically detecting issues in a ML dataset.
It's like a magic wand! πͺβ¨
Check this outπ
https://lnkd.in/dY2fp5YW
2οΈβ£ LazyPredict
A Python library that enables you to train, test, and evaluate multiple ML models at once using just a few lines of code.
Supports both regression & classification! β¨
Check this outπ
https://lnkd.in/ggZ-HByv
3οΈβ£ Lux
A Python library for quickly visualizing and analyzing data, providing an easy and efficient way to explore data.
Check this outπ
https://lnkd.in/genaV395
4οΈβ£ PyForest
A time-saving tool that helps in importing all the necessary data science libraries and functions with a single line of code.
Check this outπ
https://lnkd.in/gv2tsjMe
5οΈβ£ PivotTableJS
PivotTableJS lets you interactively analyse your data in Jupyter Notebooks without any code π₯
Check this outπ
https://lnkd.in/dapGg-AS
6οΈβ£ Drawdata
Drawdata is a python library that allows you to draw a 2-D dataset of any shape in a Jupyter Notebook.
Very handy for learning & understanding the behaviour of ML algorithms!
Check this outπ
https://lnkd.in/gBSrQ-e4
7οΈβ£ black
The Uncompromising Code Formatter
Arguably the best, I use it everyday!!
Check this out π
https://lnkd.in/gsz2Mxqn
8οΈβ£ PyCaret
An open-source, low-code machine learning library in Python that automates the machine learning workflow.
Check this outπ
https://lnkd.in/gUzh-YZM
9οΈβ£ PyTorch-Lightning by @LightningAIβ‘οΈ
If you like PyTorch, you'll love PyTorch Lightning!
Streamlines your model training, automates boilerplate code, and lets you focus on what matters: research & innovation.
Check this outπ
https://lnkd.in/dir2Xej7
π Reflex
Build Performant, customizable web apps in pure Python that you can deploy in seconds
Reflex is a library to build full-stack web apps in pure Python.
Check this outπ
https://lnkd.in/gz_vsNba
https://t.me/CodeProgrammer
Please open Telegram to view this post
VIEW IN TELEGRAM
β€7π3
Forwarded from Data Science Machine Learning Data Analysis
π PyTorch Explained: From Automatic Differentiation to Training Custom Neural Networks
π Category: DEEP LEARNING
π Date: 2025-09-24 | β±οΈ Read time: 15 min read
Deep learning is shaping our world as we speak. In fact, it has been slowlyβ¦
π Category: DEEP LEARNING
π Date: 2025-09-24 | β±οΈ Read time: 15 min read
Deep learning is shaping our world as we speak. In fact, it has been slowlyβ¦
β€4πΎ2π¨βπ»1
By: https://t.me/CodeProgrammer
Please open Telegram to view this post
VIEW IN TELEGRAM
β€12
Please help me collect a donation for an urgent and very necessary matter.
The amount is $300
I hope everyone will help me
PayPal:
https://www.paypal.me/HusseinSheikho
Usdt TRC-20 Address:
The amount is $300
I hope everyone will help me
PayPal:
https://www.paypal.me/HusseinSheikho
Usdt TRC-20 Address:
TMzAr8AFcZ1n5RXZa3BHPXHBRqugx9Skr7
PayPal.Me
Pay Programmring using PayPal.Me
Go to PayPal.Me/HusseinSheikho and enter the amount. It's safer and more secure. Don't have a PayPal account? No problem.
β€4π1