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AI and Machine Learning

AI and Machine Learning

前往频道在 Telegram

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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📈 Telegram 频道 AI and Machine Learning 的分析概览

频道 AI and Machine Learning (@machine_learning_courses) 英语 语言赛道中的 是活跃参与者。目前社区聚集了 94 001 名订阅者,在 教育 类别中位列第 1 568,并在 印度 地区排名第 3 028

📊 受众指标与增长动态

невідомо 创建以来,项目保持高速增长,吸引了 94 001 名订阅者。

根据 23 六月, 2026 的最新数据,频道保持稳定运转。过去 30 天订阅人数变化为 993,过去 24 小时变化为 92,整体触达仍然可观。

  • 认证状态: 未认证
  • 互动率 (ER): 平均受众互动率为 7.92%。内容发布后 24 小时内通常能获得 1.62% 的反应,占订阅者总量。
  • 帖子覆盖: 每篇帖子平均可获得 7 435 次浏览,首日通常累积 1 526 次浏览。
  • 互动与反馈: 受众积极参与,单帖平均反应数为 9
  • 主题关注点: 内容集中在 learning, llm, linkedin, linux, udemy 等核心主题上。

📝 描述与内容策略

作者将该频道定位为表达主观观点的平台:
Learn Data Science, Data Analysis, Machine Learning, Artificial Intelligence, and Python with Tensorflow, Pandas & more! Buy ads: https://telega.io/c/machine_learning_courses

凭借高频更新(最新数据采集于 24 六月, 2026),频道始终保持新鲜度与高覆盖。分析显示受众积极互动,使其成为 教育 类别中的关键影响点。

94 001
订阅者
+9224 小时
+1097
+99330
帖子存档
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💡 10 Key Data Structures We Use Every Day - list: keep your Twitter feeds - stack: support undo/redo of the word editor - qu
💡 10 Key Data Structures We Use Every Day - list: keep your Twitter feeds - stack: support undo/redo of the word editor - queue: keep printer jobs, or send user actions in-game - hash table: cashing systems - Array: math operations - heap: task scheduling - tree: keep the HTML document, or for AI decision - suffix tree: for searching string in a document - graph: for tracking friendship, or path finding - r-tree: for finding the nearest neighbor - vertex buffer: for sending data to GPU for rendering

🔗 5 Techniques to Fine-Tune Large Language Models (LLMs) 🚀 With the rise of large language models (LLMs), fine-tuning for s
🔗 5 Techniques to Fine-Tune Large Language Models (LLMs) 🚀 With the rise of large language models (LLMs), fine-tuning for specific tasks has become more important than ever. But how can we do it efficiently without compromising performance? 🤔 Here are 5 advanced techniques that can help: 1. LoRA (Low-Rank Adaptation) - LoRA reduces the number of trainable parameters by adding low-rank adaptation matrices, making fine-tuning faster and more memory-efficient. 2. LoRA-FA (LoRA with Feature Augmentation) - This method combines LoRA with external feature augmentation, injecting task-specific features to further boost performance with minimal overhead. 3. Vera (Virtual Embedding Regularization Adaptation) - Vera helps regularize model embeddings during fine-tuning, preventing overfitting and improving generalization across different domains. 4. Delta LoRA - An extension of LoRA, this approach focuses on updating only the most significant layers, reducing computational costs while retaining fine-tuning effectiveness. 5. Prefix Tuning - Instead of modifying model weights, this technique learns task-specific prefix tokens that steer the model’s output, enabling efficient adaptation to new tasks.

🔗 Master the Top 10 Machine Learning Topics
🔗 Master the Top 10 Machine Learning Topics

📱Artificial intelligence 📱LLM Foundations: Building Effective Applications for Enterprises

📂 Full description As generative AI models have become increasingly popular, enterprises have started to build end-to-end applications to integrate their existing workflows with generative AI. In this course, instructor Kumaran Ponnambalam shows you how to get up and running with integration, performance management, trust, and monitoring to deliver effective and trustworthy generative AI applications at scale.Explore some of the unique characteristics and use cases for generative AI-powered applications in an enterprise setting, including available options, selection criteria, and key deployment considerations for generative AI models. Kumaran covers the basics of evaluating and fine-tuning models as well as patterns and best practices for core application design. By the end of this course, youll also be equipped with new skills to manage application performance, maintain safety and trust, and navigate some of the most important ethical and legal challenges of AI.

🔅 LLM Foundations: Building Effective Applications for Enterprises 🌐 Author: Kumaran Ponnambalam 🔰 Level: Advanced ⏰ Durat
🔅 LLM Foundations: Building Effective Applications for Enterprises 🌐 Author: Kumaran Ponnambalam 🔰 Level: AdvancedDuration: 1h 43m
🌀 Explore design considerations and best practices for building generative AI-powered applications at enterprise scale.
📗 Topics: Large Language Models, Artificial Intelligence, Enterprise Software 📤 Join Artificial intelligence for more courses

📖 We translate any PDF documents in one click 🛠 PDFMathTranslate is a free AI-powered tool for full-text translation of PDF documents.
🔰 Neural networks will translate books, articles, diagrams and graphs, preserving their presentable appearance
🔹 Works very quickly - even a 200-page article can be translated in a minute 🔹 Completely preserves the text layout and does not make phrases clumsy 🔹 Knows 10 languages 🔗 Links: https://github.com/Byaidu/PDFMathTranslate

Sometimes reality outpaces expectations in the most unexpected ways. While global AI development seems increasingly fragmented, Sber just released Europe's largest open-source AI collection—full weights, code, and commercial rights included. ✅ No API paywalls. ✅ No usage restrictions. ✅ Just four complete model families ready to run in your private infrastructure, fine-tuned on your data, serving your specific needs. What makes this release remarkable isn't merely the technical prowess, but the quiet confidence behind sharing it openly when others are building walls. Find out more in the article from the developers. GigaChat Ultra Preview: 702B-parameter MoE model (36B active per token) with 128K context window. Trained from scratch, it outperforms DeepSeek V3.1 on specialized benchmarks while maintaining faster inference than previous flagships. Enterprise-ready with offline fine-tuning for secure environments. GitHub | HuggingFace | GitVerse GigaChat Lightning offers the opposite balance: compact yet powerful MoE architecture running on your laptop. It competes with Qwen3-4B in quality, matches the speed of Qwen3-1.7B, yet is significantly smarter and larger in parameter count. Lightning holds its own against the best open-source models in its class, outperforms comparable models on different tasks, and delivers ultra-fast inference—making it ideal for scenarios where Ultra would be overkill and speed is critical. Plus, it features stable expert routing and a welcome bonus: 256K context support. GitHub | Hugging Face | GitVerse Kandinsky 5.0 brings a significant step forward in open generative models. The flagship Video Pro matches Veo 3 in visual quality and outperforms Wan 2.2-A14B, while Video Lite and Image Lite offer fast, lightweight alternatives for real-time use cases. The suite is powered by K-VAE 1.0, a high-efficiency open-source visual encoder that enables strong compression and serves as a solid base for training generative models. This stack balances performance, scalability, and practicality—whether you're building video pipelines or experimenting with multimodal generation. GitHub | GitVerse | Hugging Face | Technical report Audio gets its upgrade too: GigaAM-v3 delivers speech recognition model with 50% lower WER than Whisper-large-v3, trained on 700k hours of audio with punctuation/normalization for spontaneous speech. GitHub | HuggingFace | GitVerse Every model can be deployed on-premises, fine-tuned on your data, and used commercially. It's not just about catching up – it's about building sovereign AI infrastructure that belongs to everyone who needs it.

Mining Pulse Ever imagined mining rigs floating above the clouds, turning sunlight into pure crypto? Explore breakthroughs in
Mining Pulse Ever imagined mining rigs floating above the clouds, turning sunlight into pure crypto? Explore breakthroughs in eco-mining, next-gen AI earnings, and passive profit models. Check-list: daily tips, real innovations, no noise. Ready to see tomorrow’s mining? 🚀 Join Mining Pulse ⚡ #ad InsideAds

Ever wondered how people wake up to a bigger balance—without lifting a finger? “I let my money work for me while I travel the
Ever wondered how people wake up to a bigger balance—without lifting a finger? “I let my money work for me while I travel the world.” Want to see how easy it is? Get the secret right here. Don’t miss out—it’s changing lives now! #ad InsideAds

Shocking, but true: I woke up to a balance jump—while I was sleeping. No stressful trades, no charts, just money growing auto
Shocking, but true: I woke up to a balance jump—while I was sleeping. No stressful trades, no charts, just money growing automatically. Want to know how? The secret behind my passive income is hidden here. Don’t wait—discover it first! #ad InsideAds

Telegram: Launch @argo Ever wondered what’s really hidden in Telegram? Meet Argo Search — your shortcut to the best groups, c
Telegram: Launch @argo Ever wondered what’s really hidden in Telegram? Meet Argo Search — your shortcut to the best groups, channels, music, news. Quick, smart, fun. Checklist: explore, discover, enjoy, repeat! 🔍 Jump into discovery 🚀 <div></div>

🔗 AI for Everyone: Master the Basics Unlock the essentials of Artificial Intelligence (AI) with this free IBM course. Explor
🔗 AI for Everyone: Master the Basics Unlock the essentials of Artificial Intelligence (AI) with this free IBM course. Explore applications and key concepts like machine learning, deep learning, and neural networks. 🔗 Enroll Now

🔗 AI vs. ML AI (Artificial Intelligence) refers to machines simulating human intelligence 🧠, like reasoning, learning, and
+5
🔗 AI vs. ML
AI (Artificial Intelligence) refers to machines simulating human intelligence 🧠, like reasoning, learning, and decision-making.
🖥📚 ML (Machine Learning) is a subset of AI, focused on algorithms that allow machines to learn from data and improve over time without being explicitly programmed. AI thinks, ML learns. Simple as that!

🔗 AI vs. ML AI (Artificial Intelligence) refers to machines simulating human intelligence 🧠, like reasoning, learning, and
+4
🔗 AI vs. ML
AI (Artificial Intelligence) refers to machines simulating human intelligence 🧠, like reasoning, learning, and decision-making.
🖥📚 ML (Machine Learning) is a subset of AI, focused on algorithms that allow machines to learn from data and improve over time without being explicitly programmed. AI thinks, ML learns. Simple as that!

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If you're building AI agents, you should get familiar with these 3 common agent/workflow patterns. Let's break it down. 🔹 Re
If you're building AI agents, you should get familiar with these 3 common agent/workflow patterns. Let's break it down. 🔹 Reflection You give the agent an input. The agent then "reflects" on its output, and based on feedback, improves and refines. Ideal tools to use: - Base model (e.g. GPT-4o) - Fine-tuned model (to give feedback) - n8n to set up the agent. 🔹 RAG-based You give the agent a task. The agent has the ability to query an external knowledge base to retrieve specific information needed. Ideal tools to use: - Vector Database (e.g. Pinecone). - UI-based RAG (Aidbase is the #1 tool). - API-based RAG (SourceSync is a new player on the market, highly promising). 🔹 AI Workflow This is a "traditional" automation workflow that uses AI to carry out subtasks as part of the flow. Ideal tools to use: - n8n to handle the workflow. - GPT-4o, Claude, or other models that can be accessed through API (basic HTTP requests). If you can master these 3 patterns well, you can solve a very broad range of different problems.

📱Artificial intelligence 📱LLaMa for Developers

📂 Full description In this course, learn how to customize open-source AI models with one of the most common open-source models, LLaMa (Large Language Model Meta AI). Instructor Denys Linkov shares a hands-on approach to working with LLaMa, explaining LLaMa architecture, prompting, deploying, and training models. He uses a series of Python notebooks to show you how to adapt LLaMa to your use cases and employ it in an enterprise or startup environment.