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AI and Machine Learning

AI and Machine Learning

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Learn Data Science, Data Analysis, Machine Learning, Artificial Intelligence, and Python with Tensorflow, Pandas & more! Buy ads: https://telega.io/c/machine_learning_courses

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πŸ“ˆ Analytical overview of Telegram channel AI and Machine Learning

Channel AI and Machine Learning (@machine_learning_courses) in the English language segment is an active participant. Currently, the community unites 94 001 subscribers, ranking 1 568 in the Education category and 3 028 in the India region.

πŸ“Š Audience metrics and dynamics

Since its creation on Π½Π΅Π²Ρ–Π΄ΠΎΠΌΠΎ, the project has demonstrated rapid growth, gathering an audience of 94 001 subscribers.

According to the latest data from 23 June, 2026, the channel demonstrates stable activity. Although there has been a change in the number of participants by 993 over the last 30 days and by 92 over the last 24 hours, overall reach remains high.

  • Verification status: Not verified
  • Engagement rate (ER): The average audience engagement rate is 7.92%. Within the first 24 hours after publication, content typically collects 1.62% reactions from the total number of subscribers.
  • Post reach: On average, each post receives 7 435 views. Within the first day, a publication typically gains 1 526 views.
  • Reactions and interaction: The audience actively supports content: the average number of reactions per post is 9.
  • Thematic interests: Content is focused on key topics such as learning, llm, linkedin, linux, udemy.

πŸ“ Description and content policy

The author describes the resource as a platform for expressing subjective opinions:
β€œLearn Data Science, Data Analysis, Machine Learning, Artificial Intelligence, and Python with Tensorflow, Pandas & more! Buy ads: https://telega.io/c/machine_learning_courses”

Thanks to the high frequency of updates (latest data received on 24 June, 2026), the channel maintains relevance and a high level of publication reach. Analytics show that the audience actively interacts with content, making it an important point of influence in the Education category.

94 001
Subscribers
+9224 hours
+1097 days
+99330 days
Posts Archive
πŸ“±Artificial intelligence πŸ“±Deep Learning with Python: Foundations

πŸ”… Deep Learning with Python: Foundations πŸ“ Discover the fundamental concepts and techniques required to implement basic dee
πŸ”… Deep Learning with Python: Foundations πŸ“ Discover the fundamental concepts and techniques required to implement basic deep learning models using Python. 🌐 Author: Frederick Nwanganga πŸ”° Level: Intermediate ⏰ Duration: 1h 54m πŸ“‹ Topics: Deep Learning, Python πŸ”— Join Artificial intelligence for more courses

🧠 API Interview Cheatsheet
🧠 API Interview Cheatsheet

🧠 AI Money Making Guide
🧠 AI Money Making Guide

🧠 Face login system using python
+3
🧠 Face login system using python

πŸ”… PREMIUM CHANNELS -β—¦-β—¦--β—¦--β—¦-β—¦--β—¦--β—¦-β—¦--β—¦--β—¦-β—¦--β—¦- πŸ”° Web Development -β—¦-β—¦--β—¦--β—¦-β—¦--β—¦--β—¦-β—¦-- 220k| πŸ”° Linkedin Learning 143k| πŸ”° Udemy Premium 134k| πŸ”° Web Development -β—¦-β—¦--β—¦- 121k| πŸ”° Python 3 099k| πŸ”° JavaScript Training 091k| πŸ”° Machine Learning -β—¦-β—¦--β—¦- 071k| πŸ”° Data Analysis and Databases 069k| πŸ”° Artificial Intelligence 064k| πŸ”° Linux and DevOps -β—¦-β—¦--β—¦- 064k| πŸ”° React and NextJs 050k| πŸ”° 100 Days of Python 049k| πŸ”° OpenAI Mastery -β—¦-β—¦--β—¦- 049k| πŸ”° Business and Finance 044k| πŸ”° Best Telegram Channels 042k| πŸ”° Udemy Learning -β—¦-β—¦--β—¦- 040k| πŸ”° Zero to Mastery 040k| πŸ”° Mobile Apps 036k| πŸ”° Linkedin Learning Courses -β—¦-β—¦--β—¦- 035k| πŸ”° Codedamn Courses 034k| πŸ”° React 101 031k| πŸ”° Crypto Tutorials -β—¦-β—¦--β—¦- 031k| πŸ”° Coding Interview 025k| πŸ”° Telegram's Shorts 023k| πŸ”° The Coding Space -β—¦-β—¦--β—¦- 023k| πŸ”° Linux Training -β—¦-β—¦--β—¦--β—¦-β—¦--β—¦--β—¦-β—¦-- πŸ”° Add Your Channel -β—¦-β—¦--β—¦--β—¦-β—¦--β—¦--β—¦-β—¦--β—¦--β—¦-β—¦--β—¦- πŸ”° 2hrs on top & 8hrs in channel!

πŸ“±Artificial intelligence πŸ“±Deep Learning with Python: Convolutional Neural Networks

πŸ”… Deep Learning with Python: Convolutional Neural Networks πŸ“ Gain hands-on experience building, training, and evaluating co
πŸ”… Deep Learning with Python: Convolutional Neural Networks πŸ“ Gain hands-on experience building, training, and evaluating convolutional neural networks (CNNs) using Python for image classification, object detection, and segmentation. 🌐 Author: Frederick Nwanganga πŸ”° Level: Intermediate ⏰ Duration: 1h 34m πŸ“‹ Topics: Convolutional Neural Networks, Deep Learning, Python πŸ”— Join Artificial intelligence for more courses

🧠 Top 10 LLMs of this year
🧠 Top 10 LLMs of this year

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AI Outperforms Average Human in Some Creativity Tests Recent research shows that advanced AI models are now scoring above the
AI Outperforms Average Human in Some Creativity Tests Recent research shows that advanced AI models are now scoring above the average human on certain standard tests of creative thinking β€” including idea generation and problem-solving tasks. While these benchmarks don’t capture the full range of human creativity, the results suggest AI is making measurable progress in areas once seen as uniquely human. The findings are part of ongoing work to understand how AI can assist in creative workflows, not just automate routine tasks.

AI + Crypto is entering a new phase: confidential compute at scale. AlphaTON Capital (Nasdaq: $ATON) builds a vertically inte
AI + Crypto is entering a new phase: confidential compute at scale. AlphaTON Capital (Nasdaq: $ATON) builds a vertically integrated, full-stack AI infrastructure inside the Telegram ecosystem: from NVIDIA B200/B300 GPU hardware to middleware, validators, and native Telegram apps. We’re growing our English-speaking community to share insights on: β€’ Telegram-native rails & ecosystem growth β€’ Key partners to pay attention to β€’ Privacy-preserving AI infrastructure β€’ GPU deployment & scaling β€’ Institutional infrastructure strategy If you’re tracking the convergence of AI, crypto, and Telegram’s billion-user distribution, join the conversation. Follow the expert builders. πŸ”— Join the community.

Introducing Vanna: An Open-Source Text-to-SQL Tool | Daily Dose of Data Science posted on the topic | LinkedIn Finally! A Text-to-SQL tool that actually works! (100% open-source, 20k+ stars) Vanna is an open-source RAG framework for complex Text-to-SQL generation, designed for handling dynamic datasets. Works in 2 easy steps: 1️⃣ Train a RAG β€œmodel” on your data. 2️⃣ Ask questions in natural language which will return SQL queries that can be set up to automatically run on your database. Key features: 🎯 High accuracy on complex datasets πŸ€– Self-learning: improves with each query πŸ”’ Secure: data never leaves your environment 🌐 Connect to any SQL DB (Snowflake, Redshift, etc.) 🧩 Multiple front-end integrations (Jupyter, Slack, etc.) 🌐 Vanna GitHub: https://github.com/vanna-ai/vanna

Python Developer (Twitter) 12 Frameworks to Build MCP AI Agents MCP (Model Context Protocol) enables AI agents to interact wi
Python Developer (Twitter) 12 Frameworks to Build MCP AI Agents MCP (Model Context Protocol) enables AI agents to interact with tools, memory, and APIs via structured formats. Here are some frameworks that help developers build such agents are as follows: 1 - Open AI SDK: Enables building agentic AI apps with built-in support for MCP. 2 - Composio: SDK to integrate OpenAI agents with Composio-managed MCP-compatible servers and workflows. 3 - MCP Python SDK: Official Python SDK to implement servers that conform to the MCP specification. 4 - LastMile MCP Agent: A workflow-driven framework for creating MCP-compliant agents with task coordination logic. 5 - MCP TypeScript SDK: TypeScript toolkit to build MCP-compatible servers based on the official schema. 6 - Google ADK: Google’s open-source Agent Development Kit with native support for MCP servers. 7 - Langchain MCP Adapter: A lightweight wrapper that connects LangChain/LangGraph with MCP-based toolchains. 8 - CopilotKit MCP Support:... View original post

Resonant is a mini-app that connects your decision patterns to your AI Agents. Generate your personal Agentic Memory Card now
Resonant is a mini-app that connects your decision patterns to your AI Agents. Generate your personal Agentic Memory Card now! https://t.me/ResonantAlphaBot/resonant?startapp

πŸ“±Artificial intelligence πŸ“±Deep Learning: Image Recognition

πŸ”… Deep Learning: Image Recognition πŸ“ Learn how to design, build, and deploy a deep neural network to serve as an image reco
πŸ”… Deep Learning: Image Recognition πŸ“ Learn how to design, build, and deploy a deep neural network to serve as an image recognition system. 🌐 Author: Isil Berkun πŸ”° Level: Intermediate ⏰ Duration: 2h 14m πŸ“‹ Topics: Image Recognition, Deep Learning, Computer Vision πŸ”— Join Artificial intelligence for more courses

🧠 AI isn’t a single switch you flip. It is a sophisticated stack of overlapping technologies that has evolved over seven dec
🧠 AI isn’t a single switch you flip. It is a sophisticated stack of overlapping technologies that has evolved over seven decades. Understanding this hierarchy is the difference between chasing hype and building a scalable enterprise strategy. The AI Stack: 1950s: Artificial Intelligence (The Foundation) 1980s: Machine Learning (The Engine) 2010s: Deep Learning (The Scale) 2020s: Generative AI (The Innovation) 2025+: Agentic AI (The Frontier) We are currently witnessing the most significant shift yet: the transition from AI as an assistant to AI as an orchestrator. Capgemini’s 2025 Agentic AI report finds 37% of organizations now piloting (23%) or scaling (14%) AI agents, marking the shift from assistants to orchestration. These systems don’t just β€œchat.” They plan and execute multi-step workflows independently. Enterprises will deploy autonomous agents from 2025 as tools transition from assistants to orchestration systems. The goal is no longer just processing information. It is autonomous action.

Not all Al is the same, and understanding the differences is becoming essential. Traditional Al focuses on prediction, classi
Not all Al is the same, and understanding the differences is becoming essential. Traditional Al focuses on prediction, classification, and anomaly detection using historical data. Generative Al creates content like text, code, images, and summaries from prompts. Agentic Al goes a step further by taking action, using tools, maintaining context, orchestrating workflows, and executing complex tasks with minimal human input. As Al evolves from automation to autonomy, businesses gain speed, efficiency, and smarter decision-making. ai is no longer just about generating answers; it’s about getting real work done.

Artificial intelligence is not a single technology but a layered system where each level builds on the previous one. It start
Artificial intelligence is not a single technology but a layered system where each level builds on the previous one. It starts with AI as the broad concept, moves into machine learning that learns from data, neural networks inspired by the human brain, and deep learning that powers vision, speech, and language. On top of that comes generative AI, capable of creating text, images, and media, and finally agentic AI, which can reason, use tools, and act autonomously toward goals. Understanding these layers helps make sense of how modern AI systems work and where the future of intelligent technology is headed.