π₯ Trending Repository: LMCache
π Description: Supercharge Your LLM with the Fastest KV Cache Layer
π Repository URL: https://github.com/LMCache/LMCache
π Website: https://lmcache.ai/
π Readme: https://github.com/LMCache/LMCache#readme
π Statistics:
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π» Programming Languages: Python - Cuda - Shell
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==================================
π§ By: https://xn--r1a.website/DataScienceM
π Description: Supercharge Your LLM with the Fastest KV Cache Layer
π Repository URL: https://github.com/LMCache/LMCache
π Website: https://lmcache.ai/
π Readme: https://github.com/LMCache/LMCache#readme
π Statistics:
π Stars: 4.3K stars
π Watchers: 24
π΄ Forks: 485 forks
π» Programming Languages: Python - Cuda - Shell
π·οΈ Related Topics:
#fast #amd #cuda #inference #pytorch #speed #rocm #kv_cache #llm #vllm
==================================
π§ By: https://xn--r1a.website/DataScienceM
π₯ Trending Repository: supervision
π Description: We write your reusable computer vision tools. π
π Repository URL: https://github.com/roboflow/supervision
π Website: https://supervision.roboflow.com
π Readme: https://github.com/roboflow/supervision#readme
π Statistics:
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π» Programming Languages: Python
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==================================
π§ By: https://xn--r1a.website/DataScienceM
π Description: We write your reusable computer vision tools. π
π Repository URL: https://github.com/roboflow/supervision
π Website: https://supervision.roboflow.com
π Readme: https://github.com/roboflow/supervision#readme
π Statistics:
π Stars: 34K stars
π Watchers: 211
π΄ Forks: 2.7K forks
π» Programming Languages: Python
π·οΈ Related Topics:
#python #tracking #machine_learning #computer_vision #deep_learning #metrics #tensorflow #image_processing #pytorch #video_processing #yolo #classification #coco #object_detection #hacktoberfest #pascal_voc #low_code #instance_segmentation #oriented_bounding_box
==================================
π§ By: https://xn--r1a.website/DataScienceM
π₯ Trending Repository: vllm
π Description: A high-throughput and memory-efficient inference and serving engine for LLMs
π Repository URL: https://github.com/vllm-project/vllm
π Website: https://docs.vllm.ai
π Readme: https://github.com/vllm-project/vllm#readme
π Statistics:
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π Watchers: 428
π΄ Forks: 9.4K forks
π» Programming Languages: Python - Cuda - C++ - Shell - C - CMake
π·οΈ Related Topics:
==================================
π§ By: https://xn--r1a.website/DataScienceM
π Description: A high-throughput and memory-efficient inference and serving engine for LLMs
π Repository URL: https://github.com/vllm-project/vllm
π Website: https://docs.vllm.ai
π Readme: https://github.com/vllm-project/vllm#readme
π Statistics:
π Stars: 55.5K stars
π Watchers: 428
π΄ Forks: 9.4K forks
π» Programming Languages: Python - Cuda - C++ - Shell - C - CMake
π·οΈ Related Topics:
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==================================
π§ By: https://xn--r1a.website/DataScienceM
β€3
π₯ Trending Repository: LLMs-from-scratch
π Description: Implement a ChatGPT-like LLM in PyTorch from scratch, step by step
π Repository URL: https://github.com/rasbt/LLMs-from-scratch
π Website: https://amzn.to/4fqvn0D
π Readme: https://github.com/rasbt/LLMs-from-scratch#readme
π Statistics:
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π Watchers: 589
π΄ Forks: 9K forks
π» Programming Languages: Jupyter Notebook - Python
π·οΈ Related Topics:
==================================
π§ By: https://xn--r1a.website/DataScienceM
π Description: Implement a ChatGPT-like LLM in PyTorch from scratch, step by step
π Repository URL: https://github.com/rasbt/LLMs-from-scratch
π Website: https://amzn.to/4fqvn0D
π Readme: https://github.com/rasbt/LLMs-from-scratch#readme
π Statistics:
π Stars: 64.4K stars
π Watchers: 589
π΄ Forks: 9K forks
π» Programming Languages: Jupyter Notebook - Python
π·οΈ Related Topics:
#python #machine_learning #ai #deep_learning #pytorch #artificial_intelligence #transformer #gpt #language_model #from_scratch #large_language_models #llm #chatgpt
==================================
π§ By: https://xn--r1a.website/DataScienceM
π₯ Trending Repository: LLMs-from-scratch
π Description: Implement a ChatGPT-like LLM in PyTorch from scratch, step by step
π Repository URL: https://github.com/rasbt/LLMs-from-scratch
π Website: https://amzn.to/4fqvn0D
π Readme: https://github.com/rasbt/LLMs-from-scratch#readme
π Statistics:
π Stars: 68.3K stars
π Watchers: 613
π΄ Forks: 9.6K forks
π» Programming Languages: Jupyter Notebook - Python
π·οΈ Related Topics:
==================================
π§ By: https://xn--r1a.website/DataScienceM
π Description: Implement a ChatGPT-like LLM in PyTorch from scratch, step by step
π Repository URL: https://github.com/rasbt/LLMs-from-scratch
π Website: https://amzn.to/4fqvn0D
π Readme: https://github.com/rasbt/LLMs-from-scratch#readme
π Statistics:
π Stars: 68.3K stars
π Watchers: 613
π΄ Forks: 9.6K forks
π» Programming Languages: Jupyter Notebook - Python
π·οΈ Related Topics:
#python #machine_learning #ai #deep_learning #pytorch #artificial_intelligence #transformer #gpt #language_model #from_scratch #large_language_models #llm #chatgpt
==================================
π§ By: https://xn--r1a.website/DataScienceM
π PyTorch Tutorial for Beginners: Build a Multiple Regression Model from Scratch
π Category: DEEP LEARNING
π Date: 2025-11-19 | β±οΈ Read time: 14 min read
Dive into PyTorch with this hands-on tutorial for beginners. Learn to build a multiple regression model from the ground up using a 3-layer neural network. This guide provides a practical, step-by-step approach to machine learning with PyTorch, ideal for those new to the framework.
#PyTorch #MachineLearning #NeuralNetwork #Regression #Python
π Category: DEEP LEARNING
π Date: 2025-11-19 | β±οΈ Read time: 14 min read
Dive into PyTorch with this hands-on tutorial for beginners. Learn to build a multiple regression model from the ground up using a 3-layer neural network. This guide provides a practical, step-by-step approach to machine learning with PyTorch, ideal for those new to the framework.
#PyTorch #MachineLearning #NeuralNetwork #Regression #Python
β€1π1
π Learning Triton One Kernel at a Time: Softmax
π Category: MACHINE LEARNING
π Date: 2025-11-23 | β±οΈ Read time: 10 min read
Explore a step-by-step guide to implementing a fast, readable, and PyTorch-ready softmax kernel with Triton. This tutorial breaks down how to write efficient GPU code for a crucial machine learning function, offering developers practical insights into high-performance computing and AI model optimization.
#Triton #GPUProgramming #PyTorch #MachineLearning
π Category: MACHINE LEARNING
π Date: 2025-11-23 | β±οΈ Read time: 10 min read
Explore a step-by-step guide to implementing a fast, readable, and PyTorch-ready softmax kernel with Triton. This tutorial breaks down how to write efficient GPU code for a crucial machine learning function, offering developers practical insights into high-performance computing and AI model optimization.
#Triton #GPUProgramming #PyTorch #MachineLearning
β€3
π Overcoming the Hidden Performance Traps of Variable-Shaped Tensors: Efficient Data Sampling in PyTorch
π Category: DEEP LEARNING
π Date: 2025-12-03 | β±οΈ Read time: 10 min read
Unlock peak PyTorch performance by addressing the hidden bottlenecks caused by variable-shaped tensors. This deep dive focuses on the critical data sampling phase, offering practical optimization strategies to handle tensors of varying sizes efficiently. Learn how to analyze and improve your data loading pipeline for faster model training and overall performance gains.
#PyTorch #PerformanceOptimization #DeepLearning #MLOps
π Category: DEEP LEARNING
π Date: 2025-12-03 | β±οΈ Read time: 10 min read
Unlock peak PyTorch performance by addressing the hidden bottlenecks caused by variable-shaped tensors. This deep dive focuses on the critical data sampling phase, offering practical optimization strategies to handle tensors of varying sizes efficiently. Learn how to analyze and improve your data loading pipeline for faster model training and overall performance gains.
#PyTorch #PerformanceOptimization #DeepLearning #MLOps
β€4
π YOLOv1 Paper Walkthrough: The Day YOLO First Saw the World
π Category: ARTIFICIAL INTELLIGENCE
π Date: 2025-12-05 | β±οΈ Read time: 17 min read
A deep dive into the original YOLOv1 paper, exploring the revolutionary "You Only Look Once" algorithm. This technical walkthrough breaks down the foundational object detection architecture and guides readers through a complete implementation from scratch using PyTorch. It's an essential resource for understanding the core mechanics of single-shot detectors and the history of computer vision.
#YOLO #ObjectDetection #ComputerVision #PyTorch
π Category: ARTIFICIAL INTELLIGENCE
π Date: 2025-12-05 | β±οΈ Read time: 17 min read
A deep dive into the original YOLOv1 paper, exploring the revolutionary "You Only Look Once" algorithm. This technical walkthrough breaks down the foundational object detection architecture and guides readers through a complete implementation from scratch using PyTorch. It's an essential resource for understanding the core mechanics of single-shot detectors and the history of computer vision.
#YOLO #ObjectDetection #ComputerVision #PyTorch
β€3
π On the Challenge of Converting TensorFlow Models to PyTorch
π Category: DEEP LEARNING
π Date: 2025-12-05 | β±οΈ Read time: 19 min read
Converting legacy TensorFlow models to PyTorch presents significant challenges but offers opportunities for modernization and optimization. This guide explores the common hurdles in the migration process, from architectural differences to API incompatibilities, and provides practical strategies for successfully upgrading your AI/ML pipelines. Learn how to not only convert but also enhance your models for better performance and maintainability in the PyTorch ecosystem.
#PyTorch #TensorFlow #ModelConversion #MLOps #DeepLearning
π Category: DEEP LEARNING
π Date: 2025-12-05 | β±οΈ Read time: 19 min read
Converting legacy TensorFlow models to PyTorch presents significant challenges but offers opportunities for modernization and optimization. This guide explores the common hurdles in the migration process, from architectural differences to API incompatibilities, and provides practical strategies for successfully upgrading your AI/ML pipelines. Learn how to not only convert but also enhance your models for better performance and maintainability in the PyTorch ecosystem.
#PyTorch #TensorFlow #ModelConversion #MLOps #DeepLearning
β€4
Forwarded from Machine Learning with Python
Data Science Roadmap.pdf
15.5 MB
π· Comprehensive Data Science Roadmap Notes
β This roadmap is exactly the secret recipe you need to get out of confusion and know how to step-by-step prepare yourself for the job market.
π‘ From mastering Python and SQL to cleaning data and working with cloud tools, which are prerequisites for any project.
π How to extract real analysis reports and strategies from raw data using statistics and visualization tools.
π You will learn everything from machine learning and advanced algorithms to precise model evaluation.
π Get familiar with neural networks, generative artificial intelligence, and language models to have a voice in today's modern world.
π§ How to build real projects and portfolios that are exactly what hiring managers and big companies are looking for.
π #DataScience #DataScience #pytorch #python #Roadmap
https://xn--r1a.website/CodeProgrammer
β This roadmap is exactly the secret recipe you need to get out of confusion and know how to step-by-step prepare yourself for the job market.
π‘ From mastering Python and SQL to cleaning data and working with cloud tools, which are prerequisites for any project.
π How to extract real analysis reports and strategies from raw data using statistics and visualization tools.
π You will learn everything from machine learning and advanced algorithms to precise model evaluation.
π Get familiar with neural networks, generative artificial intelligence, and language models to have a voice in today's modern world.
π§ How to build real projects and portfolios that are exactly what hiring managers and big companies are looking for.
π #DataScience #DataScience #pytorch #python #Roadmap
https://xn--r1a.website/CodeProgrammer
β€2π2
Forwarded from Machine Learning with Python
π A Free AI Course for Beginners by Microsoft
For those just getting into artificial intelligence, Microsoft offers a free course.
It runs for 12 weeks and includes 24 lessons with theory, hands-on assignments, labs, and quizzes.
The curriculum covers neural networks and deep learning, computer vision, natural language processing, genetic algorithms, and AI ethics. For practice, it uses the two main ML frameworksβTensorFlow and PyTorch.
Each lesson follows the same structure: first, reading material, then a Jupyter notebook with code, and for some topics, a lab. The course is in English but has been translated into dozens of languages.
β‘οΈ All materials and links are on GitHub
https://github.com/microsoft/AI-For-Beginners/blob/main/translations/ru/README.md
What's your AI level right now?
β€οΈ β Advanced user
π₯ β Almost zero
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π https://helloencyclo.com/?ref=HUSSEINSHEIKHO
For those just getting into artificial intelligence, Microsoft offers a free course.
It runs for 12 weeks and includes 24 lessons with theory, hands-on assignments, labs, and quizzes.
The curriculum covers neural networks and deep learning, computer vision, natural language processing, genetic algorithms, and AI ethics. For practice, it uses the two main ML frameworksβTensorFlow and PyTorch.
Each lesson follows the same structure: first, reading material, then a Jupyter notebook with code, and for some topics, a lab. The course is in English but has been translated into dozens of languages.
β‘οΈ All materials and links are on GitHub
https://github.com/microsoft/AI-For-Beginners/blob/main/translations/ru/README.md
What's your AI level right now?
β€οΈ β Advanced user
π₯ β Almost zero
#AICourse #Microsoft #DeepLearning #TensorFlow #PyTorch #MachineLearning
β¨ Join Best TG Channels https://xn--r1a.website/addlist/0f6vfFbEMdAwODBk
βοΈ Join Our WhatsApp Channel https://whatsapp.com/channel/0029VaC7Weq29753hpcggW2A
π Level up your AI & Data Science skills with HelloEncyclo β a growing all-in-one platform featuring hands-on courses in LLMs, Deep Learning, MLOps, Data Engineering, and more.
β 13 courses live + 40+ coming soon
π― One access, lifetime updates
π Use code: PRESALE-BOOK-WAVE-2GFG
π https://helloencyclo.com/?ref=HUSSEINSHEIKHO
β€1
The Attention Mechanism allows transformer neural networks to determine the connection between words in a text and dynamically focus on the most important context. We will step by step implement the basic algorithm Scaled Dot-Product Attention, using classic matrices of queries (Query), keys (Key) and values (Value). This will help us to visually see how the attention weights are mathematically calculated and how the model matches the tokens with each other. π§ β¨
To start, we will install the PyTorch library for performing tensor calculations. π οΈ
pip install torch
The library has been successfully loaded and is ready for mathematical modeling of transformer layers. β
We will generate random vectors Query, Key and Value to simulate the passage of tokens through linear projections. π²
import torch
import torch.nn.functional as F
q = torch.randn(1, 3, 4) # (batch, seq_len, dim)
k = torch.randn(1, 3, 4)
v = torch.randn(1, 3, 4)
The tensors have been initialized and represent three hidden states for a sequence of three words. π
We will calculate the token similarity matrix through the scalar product and then scale it by the square root of the vector dimensions. π’
scores = torch.bmm(q, k.transpose(1, 2)) / (q.shape[-1] ** 0.5)
attention_weights = F.softmax(scores, dim=-1)
output = torch.bmm(attention_weights, v)
The scalar product has been translated into probability weights, based on which the final contextual vector has been formed. π
A control run of the output dimension calculation:
python3 -c "import torch; q, k = torch.randn(1, 3, 4), torch.randn(1, 3, 4); print('Attention OK') if torch.bmm(q, k.transpose(1, 2)).shape == (1, 3, 3) else print('Error')"Expected output: Attention OK β
The Self-Attention formula lies at the heart of all modern LLMs, allowing them to process long contexts in parallel, unlike old recurrent networks (RNNs). Understanding this base is critically important for working with transformers, optimizing architectures and configuring KV-cache mechanisms. ππ§
#PyTorch #Transformer #DeepLearning #AI #MachineLearning #LLM
β¨ Join Best TG Channels https://xn--r1a.website/addlist/0f6vfFbEMdAwODBk
βοΈ Join Our WhatsApp Channel https://whatsapp.com/channel/0029VaC7Weq29753hpcggW2A
π Level up your AI & Data Science skills with HelloEncyclo β a growing all-in-one platform featuring hands-on courses in LLMs, Deep Learning, MLOps, Data Engineering, and more.
β 13 courses live + 40+ coming soon
π― One access, lifetime updates
π Use code: PRESALE-BOOK-WAVE-2GFG
π https://helloencyclo.com/?ref=HUSSEINSHEIKHO
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