ch
Feedback
Artificial Intelligence

Artificial Intelligence

前往频道在 Telegram

AI will not replace you but person using AI will🚀 I make Artificial Intelligence easy for everyone so you can start with minimum effort. 🚀Artificial Intelligence 🚀Machine Learning 🚀Deep Learning 🚀Data Science 🚀Python + R 🚀AR and VR Dm @Aiindian

显示更多

📈 Telegram 频道 Artificial Intelligence 的分析概览

频道 Artificial Intelligence (@artificial_intelligence_in) 英语 语言赛道中的 是活跃参与者。目前社区聚集了 65 168 名订阅者,在 技术与应用 类别中位列第 2 000,并在 印度 地区排名第 5 303

📊 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 65 168 名订阅者。

根据 09 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 50,过去 24 小时变化为 11,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 10.75%。内容发布后 24 小时内通常能获得 N/A% 的反应,占订阅者总量。
  • 帖子覆盖: 每篇帖子平均可获得 7 005 次浏览,首日通常累积 0 次浏览。
  • 互动与反馈: 受众积极参与,单帖平均反应数为 44
  • 主题关注点: 内容集中在 llm, learning, bubble, context, engineering 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:
AI will not replace you but person using AI will🚀 I make Artificial Intelligence easy for everyone so you can start with minimum effort. 🚀Artificial Intelligence 🚀Machine Learning 🚀Deep Learning 🚀Data Science 🚀Python + R 🚀AR and VR Dm @Aiind...

凭借高频更新(最新数据采集于 10 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 技术与应用 类别中的关键影响点。

65 168
订阅者
+1124 小时
+607
+5030
吸引订阅者
六月 '26
六月 '26
+111
在0个频道中
五月 '26
+238
在1个频道中
Get PRO
四月 '26
+395
在1个频道中
Get PRO
三月 '26
+691
在0个频道中
Get PRO
二月 '26
+263
在0个频道中
Get PRO
一月 '26
+283
在0个频道中
Get PRO
十二月 '25
+237
在0个频道中
Get PRO
十一月 '25
+122
在5个频道中
Get PRO
十月 '25
+90
在0个频道中
Get PRO
九月 '25
+60
在1个频道中
Get PRO
八月 '25
+103
在0个频道中
Get PRO
七月 '25
+60
在3个频道中
Get PRO
六月 '25
+109
在4个频道中
Get PRO
五月 '25
+81
在4个频道中
Get PRO
四月 '25
+42
在2个频道中
Get PRO
三月 '25
+52
在3个频道中
Get PRO
二月 '25
+94
在1个频道中
Get PRO
一月 '25
+25
在5个频道中
Get PRO
十二月 '24
+99
在4个频道中
Get PRO
十一月 '24
+146
在1个频道中
Get PRO
十月 '24
+96
在2个频道中
Get PRO
九月 '24
+629
在2个频道中
Get PRO
八月 '24
+1 191
在1个频道中
Get PRO
七月 '24
+1 554
在3个频道中
Get PRO
六月 '24
+1 509
在2个频道中
Get PRO
五月 '24
+1 640
在7个频道中
Get PRO
四月 '24
+1 518
在1个频道中
Get PRO
三月 '24
+2 034
在1个频道中
Get PRO
二月 '24
+1 923
在1个频道中
Get PRO
一月 '24
+1 897
在1个频道中
Get PRO
十二月 '23
+1 492
在2个频道中
Get PRO
十一月 '23
+786
在2个频道中
Get PRO
十月 '23
+745
在1个频道中
Get PRO
九月 '23
+898
在0个频道中
Get PRO
八月 '23
+2 122
在0个频道中
Get PRO
七月 '23
+2 505
在0个频道中
Get PRO
六月 '23
+3 024
在0个频道中
Get PRO
五月 '23
+2 202
在0个频道中
Get PRO
四月 '23
+1 654
在0个频道中
Get PRO
三月 '23
+1 690
在0个频道中
Get PRO
二月 '23
+1 674
在0个频道中
Get PRO
一月 '23
+1 787
在0个频道中
Get PRO
十二月 '22
+1 086
在0个频道中
Get PRO
十一月 '22
+714
在0个频道中
Get PRO
十月 '22
+776
在0个频道中
Get PRO
九月 '22
+781
在0个频道中
Get PRO
八月 '22
+822
在0个频道中
Get PRO
七月 '22
+612
在0个频道中
Get PRO
六月 '22
+392
在0个频道中
Get PRO
五月 '22
+428
在0个频道中
Get PRO
四月 '22
+458
在0个频道中
Get PRO
三月 '22
+447
在0个频道中
Get PRO
二月 '22
+593
在0个频道中
Get PRO
一月 '22
+673
在0个频道中
Get PRO
十二月 '21
+686
在0个频道中
Get PRO
十一月 '21
+610
在0个频道中
Get PRO
十月 '21
+783
在0个频道中
Get PRO
九月 '21
+852
在0个频道中
Get PRO
八月 '21
+722
在0个频道中
Get PRO
七月 '21
+869
在0个频道中
Get PRO
六月 '21
+864
在0个频道中
Get PRO
五月 '21
+931
在0个频道中
Get PRO
四月 '21
+922
在0个频道中
Get PRO
三月 '21
+918
在0个频道中
Get PRO
二月 '21
+864
在0个频道中
Get PRO
一月 '21
+1 165
在0个频道中
Get PRO
十二月 '20
+28 468
在0个频道中
日期
订阅者增长
提及
频道
10 六月+15
09 六月+12
08 六月+6
07 六月+10
06 六月+22
05 六月0
04 六月+16
03 六月+8
02 六月+11
01 六月+11
频道帖子
If I were starting AI again in 2026, I would focus on RAG first Today companies are hiring engineers who can build complete AI systems. If you really want your AI portfolio to stand out, stop building basic chatbots and start building RAG applications. Because Retrieval-Augmented Generation (RAG) is becoming the backbone of: → Enterprise AI systems → AI copilots → Research assistants → AI agents → Knowledge management platforms → Internal company GPTs Here are 10 powerful RAG projects that can seriously level up your portfolio: 1. Document Analysis with LLMs → Extract text directly from PDFs using Python → Build summarization and question-answering workflows → Learn preprocessing, chunking, and structured extraction → https://amanxai.com/2024/10/21/document-analysis-using-llms-with-python/ 2. Build Your First RAG System → Learn embeddings, chunking, and vector retrieval from scratch → Understand how retrieval improves LLM responses → Great starting point before using frameworks → https://amanxai.com/2025/10/21/build-your-first-rag-system-from-scratch/ 3. IBM Guided RAG Project → Follow production-style RAG architecture patterns → Learn LangChain workflows with enterprise practices → Covers retrieval pipelines and response grounding → https://www.coursera.org/learn/project-generative-ai-applications-with-rag-and-langchain 4. GraphRAG Pipeline → Connect retrieval with knowledge graphs → Improve contextual understanding across related entities → Useful for research, healthcare, and enterprise search → https://amanxai.com/2026/01/27/build-a-graphrag-pipeline-for-smart-retrieval/ 5. Multi-Document RAG → Query multiple files in a single workflow → Build shared retrieval across reports, docs, and PDFs → Learn indexing and ranking strategies → https://amanxai.com/2026/01/06/building-a-multi-document-rag-system/ 6. Agentic RAG Pipeline → Combine retrieval with autonomous AI agents → Add tool calling and decision-making workflows → Learn how modern AI agents plan and retrieve context → https://amanxai.com/2025/12/30/building-an-agentic-rag-pipeline/ 7. Real-Time AI Assistant → Build live retrieval systems with LangChain → Connect APIs, live data, and vector databases → Learn streaming responses and dynamic retrieval → https://amanxai.com/2025/11/18/build-a-real-time-ai-assistant-using-rag-langchain/ 8. AI Research Agent → Automate paper analysis and summarization → Retrieve insights from multiple research papers → Useful for students, analysts, and research teams → https://amanxai.com/2025/11/11/build-an-ai-agent-to-automate-your-research/ 9. Multimodal RAG System → Combine text and image understanding in one pipeline → Learn multimodal retrieval workflows → Useful for healthcare, finance, and document intelligence → https://www.ibm.com/think/tutorials/build-multimodal-rag-langchain-with-docling-granite 10. LangChain RAG Agent → Build production-ready RAG agents with memory → Add tools, retrieval chains, and agent reasoning → https://docs.langchain.com/oss/python/langchain/rag Most developers stop after learning basics. The top AI engineers build systems. And RAG is still one of the fastest ways to prove real AI engineering skills in interviews and projects. AI industry is moving very fast. Join Artificial Intelligence https://t.me/Artificial_intelligence_in

2
🔥10 Claude prompts you can use daily to transform your everyday life. 1. The Daily Strategist “These are my tasks for today: [paste list]. My main goal this week is [goal]. Prioritize them by real impact, not urgency. Eliminate anything I can delegate or ignore. Group the 3 most important into a 3-hour deep work block and tell me the order to do them in and why.” 2. The Speed Reader “I’m going to share a document/article/PDF. Read it and give me: a 3-line executive summary, the 5 key points I can’t miss, 1 thing the author is wrong or exaggerating about, and 3 questions I should ask myself after reading it.” 3. The Invisible Writer “Analyze these 3 texts of mine: [paste]. Extract my tone, vocabulary, sentence length, filler words, and level of formality. From now on, everything you write must sound exactly like me. Never use ‘moreover,’ ‘however,’ or ‘it is important to highlight’.” 4. The Meeting Prep Assistant “In 30 minutes I have a meeting about [topic] with [person/team]. Their profile is [brief description]. Prepare for me: 3 key points I should have ready, 2 smart questions that show I understand the topic, 1 unexpected fact that will impress them, and a 2-line emergency summary in case I’m late.” 5. The Brutal Editor “Read this text I wrote: [paste]. Be brutally honest. Tell me what is unnecessary, what is missing, what sounds generic, where I lose the reader, and what you would change if your reputation depended on this text. Then rewrite it in half the words without losing any ideas.” 6. The Life Decision Maker “I’m torn between [option A] and [option B]. Before advising me, ask me the 10 questions you need to fully understand my situation. Once I answer them, analyze how I will feel about each decision in 10 days, 10 months, and 10 years.” 7. The Shadow Negotiator “I’m about to have this difficult conversation: [describe situation]. The person is [describe profile]. My goal is [desired outcome]. Give me 3 ways to approach it: one direct, one diplomatic, and one data-driven. For each one, tell me the risk and the reaction I should expect.” 8. The Accelerated Learner “I want to learn [topic] in 7 days, dedicating 30 minutes per day. Design a learning plan with: day 1 to day 7 breakdown, what to study each day, one free resource per session, one practical exercise per day, and a final mini-project on day 7 to prove I’ve learned it.” 9. The Blind Spot Detector “I’m going to tell you my plan/idea/project: [describe]. I don’t want you to agree with me. I want you to act as my harshest critic. Give me 5 reasons it could fail, 3 things I’m not seeing, and 1 question I’m afraid to ask myself.” 10. The Second Brain “I’m going to paste all my messy notes, ideas, and thoughts about [topic]: [paste everything]. Organize it into: a 3-line executive summary, key points ranked by importance, unanswered questions I still have, contradictions in my ideas, and 3 concrete next steps.”
8 718
3
This is like Claude Design for electronics 🤯 It’s called Blueprint. Type what you want to build and it generates everything
This is like Claude Design for electronics 🤯 It’s called Blueprint. Type what you want to build and it generates everything you need for your Arduino or Raspberry Pi project. → Wiring diagrams → Bills of materials → Step-by-step assembly guides 100% Free. Project https://www.blueprint.am/ Follow : https://whatsapp.com/channel/0029Va8iIT7KbYMOIWdNVu2Q
10 222
4
AI just claimed its first major victim 😳 Chegg, the $14.7 billion EdTech giant that charged students for homework answers, s
AI just claimed its first major victim 😳 Chegg, the $14.7 billion EdTech giant that charged students for homework answers, study guides, and textbook rentals, has been economically decapitated by AI. Stock is now down nearly 99% from its 2021 peak. Market cap collapsed to ~$110M. AI tools like ChatGPT, Claude, Gemini, etc., gave students free, instant, better step-by-step solutions. The entire paywall-for-knowledge model evaporated overnight. The numbers are just brutal: → 2025 full-year revenue: $377M (-39% YoY) → Q4 2025 revenue: $73M (-49% YoY) → Over 56% of the workforce axed in 2025 → Core homework/study business is being phased out entirely They're pivoting hard to “Chegg Skills” (B2B workforce training), which is showing early double-digit growth… but the original Chegg is dead. AI is eating the world.
9 962
5
Anthropic just dropped Claude Design. Anthropic's Claude Design just killed many AI startups Here’s how to use it: - Set up y
Anthropic just dropped Claude Design. Anthropic's Claude Design just killed many AI startups Here’s how to use it: - Set up your design system with your colours, fonts, and rules. - Create a project and choose the output type. - Upload your brand kit, references, or past designs. - Write a clear brief with layout and structure details. - Refine using inline comments and control sliders. - Export to PPT, Canva, or hand off to Claude Code. Most people stop after step one. That is why their designs look generic. When you provide context and iterate properly, Claude starts to match your brand with real consistency. What used to take multiple tools now happens in one place. Checkout : https://www.anthropic.com/news/claude-design-anthropic-labs
11 033
6
Never Hit Claude's Token Limit , Again!
Never Hit Claude's Token Limit , Again!
10 466
7
10 AI/ML must watch YouTube videos for developers: 1. RAG from scratch - freeCodeCamp (~1.3M👀)https://www.youtube.com/watch?
10 AI/ML must watch YouTube videos for developers: 1. RAG from scratch - freeCodeCamp (~1.3M👀)https://www.youtube.com/watch?v=sVcwVQRHIc8 2. LangChain Crash Course - codebasics (~618k👀)https://www.youtube.com/watch?v=nAmC7SoVLd8 3. Build GPT from scratch - Andrej Karpathy (~7M👀 )https://www.youtube.com/watch?v=kCc8FmEb1nY 4. Agentic AI using LangGraph - CampusX (~1M👀)https://www.youtube.com/playlist?list=PLKnIA16_RmvYsvB8qkUQuJmJNuiCUJFPL 5. AI Agents explained - IBM Technology (~1.6 M👀)https://www.youtube.com/watch?v=F8NKVhkZZWI 6. Vector databases explained - Fireship (~1.1 M👀)https://www.youtube.com/watch?v=klTvEwg3oJ4 7. Fine tuning LLMs - Andrej Karpathy (~3.5M👀)https://youtu.be/zjkBMFhNj_g 8. Prompt Engineering - freeCodeCamp(~2.6M👀)https://youtu.be/_ZvnD73m40o 9. Model Context Protocol (MCP) - Greg (~1.2M 👀)https://youtu.be/H4YK_7MAckk 10. CrewAI Tutorial - AIwithbrandon (~300k👀)https://youtu.be/sPzc6hMg7So Save this for later. Come back when you need it.
10 335
8
没有文字...
11 358
9
Top 10 Python Libraries for Generative AI You Need to Master in 2026 (The tools behind document agents, intelligent assistant
Top 10 Python Libraries for Generative AI You Need to Master in 2026 (The tools behind document agents, intelligent assistants, and next-gen interfaces.)
1
10
blob:https://web.whatsapp.com/a87dfc7a-94dc-47e3-8323-deb7af6390ea
1
11
**This Week in AI - Major Global Developments** 🚀🧠📈 Foundation Models & Big AI Platforms * Anthropic’s Claude reportedly crossed 11 million daily active users, narrowing the usage gap with OpenAI’s ChatGPT and signaling stronger enterprise + developer adoption. * OpenAI is reported to have launched GPT-5.4 Mini and Nano, pushing smaller high-efficiency models for lower-cost deployment and edge inference. * Mistral AI announced Mistral Forge, a new platform aimed at enterprise model deployment and customization. * MiniMax introduced M2.7, a model designed to self-improve and reportedly reduce 30–50% of reinforcement learning workflow overhead. * Meta Platforms delayed launch of its upcoming model Avocado due to internal performance concerns. * Midjourney released an early version of V8, signaling another jump in image realism and prompt adherence. NVIDIA Dominates the Week * NVIDIA introduced NeMo + Claw Stack, strengthening its AI infrastructure ecosystem for agent development and enterprise deployment. * At NVIDIA GTC, NVIDIA made multiple major announcements: * 1) DLSS 5 * 2) Vera Rubin, a next-generation seven-chip AI platform * 3) Long-term concept of space-based data center infrastructure * 4) NVIDIA also continues expanding beyond chips into full-stack AI platforms, reinforcing its dominance in compute infrastructure. Apple, China & Hardware Signals * Apple Inc.’s Mac mini reportedly saw major stock pressure in China, partly linked to demand from local AI developers experimenting with open model stacks. * China issued a second warning regarding risks associated with OpenClaw-style open agent systems, showing growing regulatory concern over autonomous AI tools. * Apple also acquired MotionVFX, indicating stronger movement toward AI-assisted video creation workflows. AI Agents: Rapid Acceleration * A security incident showed an AI agent breaching a major consulting firm's internal AI environment in roughly two hours, raising fresh questions on enterprise agent security. * Developers demonstrated a full AI office agent environment built using OpenClaw, showing autonomous task execution across office workflows. * OpenAI launched Parameter Golf, a concept focused on maximizing output quality with smaller model parameter efficiency. * Reports suggest ChatGPT may eventually adopt usage-based pricing tiers depending on intensity and type of usage. AI Video War Intensifies * Runway demonstrated real-time video generation, a major leap toward live AI media creation. * ByteDance paused global rollout of Seedance 2.0, possibly due to strategic recalibration. Research, Science & Emerging Tech * Scientists announced what is being described as the world’s first quantum battery breakthrough, potentially significant for future energy systems. * Researchers found that half of AI-generated code passing industrial benchmarks would still be rejected by human developers, highlighting reliability gaps. * A new study suggests AI chatbots may worsen mental health issues in vulnerable users if not carefully deployed. * AI companies are reportedly hiring actors to improve emotional realism in model responses. * Indian researchers developed a system that converts inaudible murmurs into understandable speech, which could transform accessibility technology. Strategic Industry Moves * Anthropic launched the Anthropic Institute, likely aimed at long-term AI governance and safety research. * OpenAI and Anthropic reportedly began hiring chemical and weapons domain experts, indicating deeper work on safety evaluation. * xAI hired senior leadership from Cursor’s ecosystem. * Meta Platforms announced four MTIA chip generations planned within two years, signaling aggressive AI silicon ambitions. * Indian Space Research Organisation’s NavIC reportedly experienced service disruption, raising strategic navigation concerns. * India continues to produce strong applied AI innovation, especially in speech and embedded AI systems.
12 277