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Artificial Intelligence

Artificial Intelligence

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📈 Telegram 频道 Artificial Intelligence 的分析概览

频道 Artificial Intelligence (@artificial_intelligence_com) 英语 语言赛道中的 是活跃参与者。目前社区聚集了 70 390 名订阅者,在 技术与应用 类别中位列第 1 845,并在 印度 地区排名第 4 788

📊 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 70 390 名订阅者。

根据 12 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 1 141,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 7.42%。内容发布后 24 小时内通常能获得 2.10% 的反应,占订阅者总量。
  • 帖子覆盖: 每篇帖子平均可获得 5 221 次浏览,首日通常累积 1 476 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, linkedin, linux, udemy, 040k| 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:
🔒 Welcome Artificial Intelligence Channel Buy ads: https://telega.io/c/Artificial_Intelligence_COM

凭借高频更新(最新数据采集于 13 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。

70 390
订阅者
+1124 小时
+2017
+1 14130
帖子存档
💡 Before the "How," You Must Answer the "Why" What’s more important than *how* you start is ***why*** you start. Take a moment and ask yourself: * Do you want to future-proof your career and make more money? * Are you driven by a burning curiosity to build cool, intelligent things? * Do you want to solve a pressing world problem and make a genuine difference? Let me be clear: There is no "right" reason. A desire for financial stability is just as valid as a passion for innovation. Your "why" is your fuel.

💡 Your AI & ML Journey Starts With a Single Question (Not a Course) You see the headlines, you feel the hype, and you’ve decided you want in. The question echoes in your mind: "How do I start with AI and Machine Learning?" Your next instinct is to search for the "best" course, the perfect textbook, or the ultimate roadmap. You’ll find a million answers, and that’s the problem. The truth is, there is no single "best" path. 🥺 Everyone’s learning journey is different. Some minds thrive on the structured depth of a book, while others come alive with the visual storytelling of a video tutorial. The "how" is personal. But what if you’re asking the wrong question first?

🚨 🇦🇺 World’s first “Biological Computer” - Human brain meets AI Australian company Cortical Labs has unveiled the CL1, the
🚨 🇦🇺 World’s first “Biological Computer” - Human brain meets AI Australian company Cortical Labs has unveiled the CL1, the first-ever biological computer combining human brain cells with silicon to create adaptive, energy-efficient neural networks. The CL1 learns faster than traditional AI chips and could revolutionize fields like drug discovery, robotics, and clinical testing. Researchers can access it via "Wetware-as-a-Service" (WaaS) or buy the system outright. Set to launch in late 2025, this breakthrough could redefine computing, intelligence, and AI itself.

💡 Master the Top 10 Machine Learning Topics
💡 Master the Top 10 Machine Learning Topics

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👨🏻‍💻 This Python library helps you extract usable data for language models from complex files like tables, images, charts, or multi-page documents. 📝 The idea of Agentic Document Extraction is that unlike common methods like OCR that only read text, it can also understand the structure and relationships between different parts of the document. For example, it understands which title belongs to which table or image. ✅ Works with PDFs, images, and website links. ☑️ Can chunk and process very large documents (up to 1000 pages) by itself. ✔️ Outputs both JSON and Markdown formats. ☑️ Even specifies the exact location of each section on the page. ✔️ Supports parallel and batch processing.
pip install agentic-doc
🥵 Agentic Document Extraction ├ 🌎 Website🐱 GitHub Repos

🔗 Keras vs. TensorFlow vs. PyTorch: The ultimate showdown for deep learning supremacy! 🚀 🤔 Keras: The user-friendly champi
🔗 Keras vs. TensorFlow vs. PyTorch: The ultimate showdown for deep learning supremacy! 🚀 🤔 Keras: The user-friendly champion! Perfect for beginners and rapid prototyping. ⚡️ TensorFlow: The powerhouse! Great for complex projects with extensive capabilities. 🔥 PyTorch: The flexible innovator! With its dynamic computation graph, it’s a favorite among researchers.

🎬✨ A historic event in the world of cinema OpenAI has announced its support for the production of the first full-length anim
🎬✨ A historic event in the world of cinema OpenAI has announced its support for the production of the first full-length animated film that heavily relies on artificial intelligence tools. The film is titled “Critterz” and tells an exciting adventure story about a group of forest creatures whose peaceful lives change after a strange appearance among them. 🌟 What makes this project special is that it is not just an artistic experiment, but it shows how artificial intelligence can be a creative partner in all stages of production: • Character and background design • Scriptwriting • Animation creation 🎥 The film is scheduled to premiere at the Cannes Film Festival – May 2026, and then be released worldwide in theaters. This work represents a bold step that may open the way for a new generation of AI-produced films, potentially causing a real revolution in the entertainment industry.

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GMB Crush - Reddit Sniper Method.zip146.71 MB

Reddit Sniper Method - AI SEO from Real Reddit Threads 🥉 🏄‍♂️ What you'll get/learn inside: Google’s AI learns from Reddit.
Reddit Sniper Method - AI SEO from Real Reddit Threads 🥉 🏄‍♂️ What you'll get/learn inside:
Google’s AI learns from Reddit. Now you can too. This sniper GPT finds what your market feels, fears, and buys - then turns it into content AI ranks and buyers act on. 👉Module 1: The $60 Million Intel Google Doesn’t Want You to Use (But You Can) 👉Module 02: The Underrated Goldmine: How Reddit Outsmarts Your SEO Tools 👉Module 03: Don’t Touch That Page (Until You Do This...) 👉Module 4: The AI Alignment Move That 99% Ignore 👉Module 05: Google Ads That Sell (Because Reddit Already Wrote Them) 👉Module 06: Facebook Ads That Hit Deep (Scroll-Stopping Pain Points Included) 👉Module 07: The YouTube Shorts Goldmine You’re (Still) Ignoring 👉Module 08: Lead Magnets That Sound Like They Were Written in Your Customer’s Head 👉Module 09: Local Domination Starts Here (No Tool or Course Has Ever Shown You This Way) 👉Module 10: Works with any US VPN - Opal AI Workflow Automation> The Reddit-Post Writer 👉Module 11: Works with any US VPN - Opal AI Workflow Automation> The Geo-Ranker Accelerator 👉Module 12: Works with any US VPN - Opal AI Workflow Automation> The Geo-Copy Generator
📱 Google Drive  | 🌐 Sale Page

🔗 10 Loss Functions in Machine Learning (and when to use them) Regression Losses 1️⃣ Mean Bias Error (MBE) – Captures averag
🔗 10 Loss Functions in Machine Learning (and when to use them) Regression Losses 1️⃣ Mean Bias Error (MBE) – Captures average bias in predictions. Rarely used since positive and negative errors cancel out. 2️⃣ Mean Absolute Error (MAE) – Average absolute difference between predicted and actual values. Treats small and large errors equally since gradient magnitude is constant. 3️⃣ Mean Squared Error (MSE) – Squares errors, making large errors count more. Useful, but sensitive to outliers. 4️⃣ Root Mean Squared Error (RMSE) – Square root of MSE. Keeps loss in the same units as the target variable. 5️⃣ Huber Loss – Hybrid of MAE and MSE. Acts like MSE for small errors and MAE for large ones. Needs a hyperparameter to define the transition point. 6️⃣ Log-Cosh Loss – Smooth, non-parametric alternative to Huber. More stable but a bit more computationally expensive. Classification Losses 1️⃣ Binary Cross-Entropy (BCE) – Standard for binary classification. Measures mismatch between predicted probabilities and true labels. 2️⃣ Hinge Loss – Based on the margin between points and decision boundary. Penalizes wrong predictions and low-confidence correct ones. Used in training SVMs. 3️⃣ Cross-Entropy Loss – Generalization of BCE for multi-class classification tasks. 4️⃣ KL Divergence – Measures how one probability distribution diverges from another. For classification, minimizing KL is equivalent to minimizing cross-entropy, but it’s widely used in t-SNE and knowledge distillation.

🚀 Want to speed up training in PyTorch by several times? DataLoader has two bad defaults that slow down the process. By fixi
🚀 Want to speed up training in PyTorch by several times? DataLoader has two bad defaults that slow down the process. By fixing them, I got almost 5x speedup. ❌ Problem - .to(device) transfers data to the GPU. - While the GPU is computing, the CPU does nothing. - While the CPU prepares data, the GPU is idle. ⚡️ Solution You need to make the CPU and GPU work in parallel: - In DataLoader, set pin_memory=True - When transferring data, use .to(device, non_blocking=True) - Add num_workers to DataLoader for background loading. ✅ As a result, the CPU prepares the next batch while the GPU is busy with the current one. This eliminates idle time, and training goes noticeably faster.

🔗 Machine Learning Roadmap Whether you're just starting out or looking to refine your skills, this Machine Learning Roadmap
🔗 Machine Learning Roadmap
Whether you're just starting out or looking to refine your skills, this Machine Learning Roadmap breaks down every step
1️⃣ Build a solid foundation in math and stats 2️⃣ Dive into ML algorithms like Linear Regression, SVM, and Clustering 3️⃣ Choose your ML focus, from supervised learning to recommender systems 4️⃣ Master popular libraries like PyTorch, TensorFlow, and Scikit-learn 5️⃣ Gain real-world experience with projects and side gigs

🔗 Top Machine Learning Algorithms For Classification
🔗 Top Machine Learning Algorithms For Classification

🌟 InfoSeek: data synthesis for deep research with HCSP formalization. BAAI introduced InfoSeek — an open methodology for dat
+3
🌟 InfoSeek: data synthesis for deep research with HCSP formalization. BAAI introduced InfoSeek — an open methodology for data synthesis and a training loop for deep research. Tasks of this class go beyond ordinary fact extraction: the model must decompose the question into subtasks, coordinate multi-step reasoning, and verify answers against sources.
These tasks are formalized as HCSP — hierarchical constraint satisfaction problems, whose solution arises only through sequential narrowing of candidates at multiple levels, where each internal node is itself a subtask, and the dependency between nodes forms a research tree.
The basic idea is simple: data is built around a research tree. The nodes are entities or atomic facts, edges are verifiable relations from Wikipedia and open pages. The synthesis algorithm explicitly manages the structure to eliminate underdetermination or early "short circuits." In HCSP, the answer is formally the intersection of sets defined by current constraints and recursive subquestions; in terms of the tree, the root is the final answer. This approach not only sets the depth and breadth of reasoning but also makes each intermediate step verifiable by specific statements. 🟡The synthesis is performed by a pair of agents. The planner controls global complexity by selecting the goal and type of expansion, while the Browser extracts facts and links from the entity page. Four operations cover the entire lifecycle: 🟢Initialization from the "anchor"; 🟢"Parent blurring" — adding several independent conditions that collectively define a unique answer without inclusions among candidates; 🟢Vertical deepening via hyperlink to increase the tree height; 🟢Question text generation only after each node has a sufficient set of verifiable constraints and the specified complexity metrics are met. Quality is controlled along two axes: complexity and verifiability. Initially, questions are run "head-on": if a powerful base model answers correctly without search, the sample is excluded; about 2% were filtered this way. Then solvability is checked on a fixed set of pages with distractor impurities, and all ambiguity is removed. Result: a dataset with 50K question–answer pairs and 16.5K reasoning trajectories with extraction labels. 🟡Experiments. Tests showed that InfoSeek generalizes beyond the home domain. On classic fact extraction and multi-hop question sets, the compact InfoSeeker-3B model outperforms typical RAG and agent pipelines. On BrowseComp-Plus with a fixed corpus of 100K pages and BM25, accuracy reaches 16.5% with an average of 8.24 search calls, which is higher than Gemini 2.5 Flash, Sonnet 4, and GPT-4.1, and significantly higher than Qwen3-32B and Search-R1-32B. Replacing the training set NQ+HQA with InfoSeek raises accuracy from 3.0% to 16.5% and makes queries meaningfully more frequent. ▶️ The project already provides a dataset, technical report, data tree constructor, and code for SFT training. Plans include RL code and publication of InfoSeeker-3B weights. 📌Licensing: Apache 2.0 License. 🟡Dataset 🟡Arxiv 🖥GitHub

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🔗 3 Types of Machine Learning
🔗 3 Types of Machine Learning

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💡 Projects To Learn AI and LLM Engineering
💡 Projects To Learn AI and LLM Engineering