Best Deep Learning Courses:
https://mltut.com/best-deep-learning-courses-on-coursera/
https://mltut.com/best-deep-learning-courses-on-coursera/
#MachineLearning #DeepLearning #BigData #Datascience #ML #HealthTech #DataVisualization #ArtificialInteligence #SoftwareEngineering #GenAI #deeplearning #ChatGPT #OpenAI #python #AI #keras
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Create pivot tables in your Jupyter Notebook:
Here's the link to the #GitHub repo and documentation:
https://pivottable.js.org/examples/
Here's the link to the #GitHub repo and documentation:
https://pivottable.js.org/examples/
#MachineLearning #DeepLearning #BigData #Datascience #ML #HealthTech #DataVisualization #ArtificialInteligence #SoftwareEngineering #GenAI #deeplearning #ChatGPT #OpenAI #python #AI #keras
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👍6
20x faster KMeans with Faiss!!
#KMeans uses a slow, exhaustive search to find the nearest centroids.
#Faiss uses "Inverted Index"—an optimized data structure to store and index data points for approximate neighbor search.
#KMeans uses a slow, exhaustive search to find the nearest centroids.
#Faiss uses "Inverted Index"—an optimized data structure to store and index data points for approximate neighbor search.
#MachineLearning #DeepLearning #BigData #Datascience #ML #HealthTech #DataVisualization #ArtificialInteligence #SoftwareEngineering #GenAI #deeplearning #ChatGPT #OpenAI #python #AI #keras
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How do transformers work? Learn it by hand 👇
𝗪𝗮𝗹𝗸𝘁𝗵𝗿𝗼𝘂𝗴𝗵
[1] Given
↳ Input features from the previous block (5 positions)
[2] Attention
↳ Feed all 5 features to a query-key attention module (QK) to obtain an attention weight matrix (A). I will skip the details of this module. In a follow-up post I will unpack this module.
[3] Attention Weighting
↳ Multiply the input features with the attention weight matrix to obtain attention weighted features (Z). Note that there are still 5 positions.
↳ The effect is to combine features across positions (horizontally), in this case, X1 := X1 + X2, X2 := X2 + X3....etc.
[4] FFN: First Layer
↳ Feed all 5 attention weighted features into the first layer.
↳ Multiply these features with the weights and biases.
↳ The effect is to combine features across feature dimensions (vertically).
↳ The dimensionality of each feature is increased from 3 to 4.
↳ Note that each position is processed by the same weight matrix. This is what the term "position-wise" is referring to.
↳ Note that the FFN is essentially a multi layer perceptron.
[5] ReLU
↳ Negative values are set to zeros by ReLU.
[6] FFN: Second Layer
↳ Feed all 5 features (d=3) into the second layer.
↳ The dimensionality of each feature is decreased from 4 back to 3.
↳ The output is fed to the next block to repeat this process.
↳ Note that the next block would have a completely separate set of parameters.
#ai #tranformers #genai #learning
💯 BEST DATA SCIENCE CHANNELS ON TELEGRAM 🌟
𝗪𝗮𝗹𝗸𝘁𝗵𝗿𝗼𝘂𝗴𝗵
[1] Given
↳ Input features from the previous block (5 positions)
[2] Attention
↳ Feed all 5 features to a query-key attention module (QK) to obtain an attention weight matrix (A). I will skip the details of this module. In a follow-up post I will unpack this module.
[3] Attention Weighting
↳ Multiply the input features with the attention weight matrix to obtain attention weighted features (Z). Note that there are still 5 positions.
↳ The effect is to combine features across positions (horizontally), in this case, X1 := X1 + X2, X2 := X2 + X3....etc.
[4] FFN: First Layer
↳ Feed all 5 attention weighted features into the first layer.
↳ Multiply these features with the weights and biases.
↳ The effect is to combine features across feature dimensions (vertically).
↳ The dimensionality of each feature is increased from 3 to 4.
↳ Note that each position is processed by the same weight matrix. This is what the term "position-wise" is referring to.
↳ Note that the FFN is essentially a multi layer perceptron.
[5] ReLU
↳ Negative values are set to zeros by ReLU.
[6] FFN: Second Layer
↳ Feed all 5 features (d=3) into the second layer.
↳ The dimensionality of each feature is decreased from 4 back to 3.
↳ The output is fed to the next block to repeat this process.
↳ Note that the next block would have a completely separate set of parameters.
#ai #tranformers #genai #learning
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🔥 Trending Repository: parlant
📝 Description: LLM agents built for control. Designed for real-world use. Deployed in minutes.
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💻 Programming Languages: Python - Gherkin - TypeScript - CSS - JavaScript - Shell
🏷️ Related Topics:
==================================
🧠 By: https://yangx.top/DataScienceM
📝 Description: LLM agents built for control. Designed for real-world use. Deployed in minutes.
🔗 Repository URL: https://github.com/emcie-co/parlant
🌐 Website: https://www.parlant.io
📖 Readme: https://github.com/emcie-co/parlant#readme
📊 Statistics:
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💻 Programming Languages: Python - Gherkin - TypeScript - CSS - JavaScript - Shell
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#python #gemini #openai #customer_service #customer_success #ai_agents #ai_alignment #llm #genai #llama3
==================================
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🔥 Trending Repository: motia
📝 Description: Modern Backend Framework that unifies APIs, background jobs, workflows, and AI agents into a single cohesive system with built-in observability and state management.
🔗 Repository URL: https://github.com/MotiaDev/motia
🌐 Website: https://motia.dev
📖 Readme: https://github.com/MotiaDev/motia#readme
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💻 Programming Languages: TypeScript - MDX - Python - JavaScript - CSS - Ruby
🏷️ Related Topics:
==================================
🧠 By: https://yangx.top/DataScienceM
📝 Description: Modern Backend Framework that unifies APIs, background jobs, workflows, and AI agents into a single cohesive system with built-in observability and state management.
🔗 Repository URL: https://github.com/MotiaDev/motia
🌐 Website: https://motia.dev
📖 Readme: https://github.com/MotiaDev/motia#readme
📊 Statistics:
🌟 Stars: 6K stars
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🍴 Forks: 471 forks
💻 Programming Languages: TypeScript - MDX - Python - JavaScript - CSS - Ruby
🏷️ Related Topics:
#javascript #ruby #python #api #framework #ai #backend #agi #developer_tools #agents #genai
==================================
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❤5
✨ Image Processing with Gemini Pro ✨
📖 Table of Contents Image Processing with Gemini Pro Getting Started with Gemini Pro: An Overview Gemini Pro Setup Integrating Google AI Python SDK with Gemini Pro Image Processing with Gemini Pro: Python Code Generation Comprehensive List of GenAI Models Compatible…...
🏷️ #ArtificialIntelligence #ChatGPT #DeepLearning #Gemini #GeminiPro #GenAI #GenerativeAI #GoogleCloud #ImageProcessing #Python #Transformers #Tutorial #VertexAI
📖 Table of Contents Image Processing with Gemini Pro Getting Started with Gemini Pro: An Overview Gemini Pro Setup Integrating Google AI Python SDK with Gemini Pro Image Processing with Gemini Pro: Python Code Generation Comprehensive List of GenAI Models Compatible…...
🏷️ #ArtificialIntelligence #ChatGPT #DeepLearning #Gemini #GeminiPro #GenAI #GenerativeAI #GoogleCloud #ImageProcessing #Python #Transformers #Tutorial #VertexAI
❤2
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📝 Description: ComfyUI Plugin of Nunchaku
🔗 Repository URL: https://github.com/nunchaku-tech/ComfyUI-nunchaku
🌐 Website: https://nunchaku.tech/docs/ComfyUI-nunchaku/
📖 Readme: https://github.com/nunchaku-tech/ComfyUI-nunchaku#readme
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==================================
🧠 By: https://yangx.top/DataScienceM
📝 Description: ComfyUI Plugin of Nunchaku
🔗 Repository URL: https://github.com/nunchaku-tech/ComfyUI-nunchaku
🌐 Website: https://nunchaku.tech/docs/ComfyUI-nunchaku/
📖 Readme: https://github.com/nunchaku-tech/ComfyUI-nunchaku#readme
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#flux #quantization #diffusion #mlsys #comfyui #genai
==================================
🧠 By: https://yangx.top/DataScienceM
🔥 Trending Repository: genai-toolbox
📝 Description: MCP Toolbox for Databases is an open source MCP server for databases.
🔗 Repository URL: https://github.com/googleapis/genai-toolbox
🌐 Website: https://googleapis.github.io/genai-toolbox/getting-started/introduction/
📖 Readme: https://github.com/googleapis/genai-toolbox#readme
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💻 Programming Languages: Go - JavaScript - CSS - HTML - Shell - Dockerfile
🏷️ Related Topics:
==================================
🧠 By: https://yangx.top/DataScienceM
📝 Description: MCP Toolbox for Databases is an open source MCP server for databases.
🔗 Repository URL: https://github.com/googleapis/genai-toolbox
🌐 Website: https://googleapis.github.io/genai-toolbox/getting-started/introduction/
📖 Readme: https://github.com/googleapis/genai-toolbox#readme
📊 Statistics:
🌟 Stars: 9.8K stars
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🍴 Forks: 749 forks
💻 Programming Languages: Go - JavaScript - CSS - HTML - Shell - Dockerfile
🏷️ Related Topics:
#mcp #databases #llms #genai
==================================
🧠 By: https://yangx.top/DataScienceM
🔥 Trending Repository: 500-AI-Agents-Projects
📝 Description: The 500 AI Agents Projects is a curated collection of AI agent use cases across various industries. It showcases practical applications and provides links to open-source projects for implementation, illustrating how AI agents are transforming sectors such as healthcare, finance, education, retail, and more.
🔗 Repository URL: https://github.com/ashishpatel26/500-AI-Agents-Projects
🌐 Website: https://github.com/ashishpatel26/500-AI-Agents-Projects
📖 Readme: https://github.com/ashishpatel26/500-AI-Agents-Projects#readme
📊 Statistics:
🌟 Stars: 7K stars
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🍴 Forks: 1.3K forks
💻 Programming Languages: Not available
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==================================
🧠 By: https://yangx.top/DataScienceM
📝 Description: The 500 AI Agents Projects is a curated collection of AI agent use cases across various industries. It showcases practical applications and provides links to open-source projects for implementation, illustrating how AI agents are transforming sectors such as healthcare, finance, education, retail, and more.
🔗 Repository URL: https://github.com/ashishpatel26/500-AI-Agents-Projects
🌐 Website: https://github.com/ashishpatel26/500-AI-Agents-Projects
📖 Readme: https://github.com/ashishpatel26/500-AI-Agents-Projects#readme
📊 Statistics:
🌟 Stars: 7K stars
👀 Watchers: 105
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💻 Programming Languages: Not available
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==================================
🧠 By: https://yangx.top/DataScienceM