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Machine Learning

Machine Learning

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Real Machine Learning — simple, practical, and built on experience. Learn step by step with clear explanations and working code. Admin: @HusseinSheikho || @Hussein_Sheikho

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📈 Аналітичний огляд Telegram-каналу Machine Learning

Канал Machine Learning (@machinelearning9) у мовному сегменті Англійська є активним учасником. На даний момент спільнота об'єднує 40 150 підписників, посідаючи 3 364 місце в категорії Технології та додатки та 227 місце у регіоні Сирія.

📊 Показники аудиторії та динаміка

З моменту свого створення невідомо, проект продемонстрував стрімке зростання, зібравши аудиторію у 40 150 підписників.

За останніми даними від 27 червня, 2026, канал демонструє стабільну активність. Хоча за останні 30 днів спостерігається зміна кількості учасників на 412, а за останні 24 години на 5, загальне охоплення залишається високим.

  • Статус верифікації: Не верифікований
  • Рівень залученості (ER): Середній показник залученості аудиторії становить 1.96%. Протягом перших 24 годин після публікації контент зазвичай збирає 1.89% реакцій від загальної кількості підписників.
  • Охоплення публікацій: В середньому кожен допис отримує 785 переглядів. Протягом першої доби публікація в середньому набирає 760 переглядів.
  • Реакції та взаємодія: Аудиторія активно підтримує контент: середня кількість реакцій на один пост – 2.
  • Тематичні інтереси: Контент зосереджений навколо ключових тем, таких як distance, insidead, gpu, learning, degree.

📝 Опис та контентна політика

Автор описує ресурс як майданчик для висловлення суб'єктивної думки:
Real Machine Learning — simple, practical, and built on experience. Learn step by step with clear explanations and working code. Admin: @HusseinSheikho || @Hussein_Sheikho

Завдяки високій частоті оновлень (останні дані отримано 28 червня, 2026), канал підтримує актуальність та високий рівень охоплення публікацій. Аналітика показує, що аудиторія активно взаємодіє з контентом, що робить його важливою точкою впливу в категорії Технології та додатки.

40 150
Підписники
+524 години
+1067 днів
+41230 день
Архів дописів
🧮 $40/day × 30 days = $1,200/month. That's what my students average. From their phone. In 10 minutes a day. No degree needed
🧮 $40/day × 30 days = $1,200/month. That's what my students average. From their phone. In 10 minutes a day. No degree needed. No investment knowledge required. Just Copy & Paste my moves. I'm Tania, and this is real. 👉 Join for Free, Click here #ad 📢 InsideAd

📌 From OpenStreetMap to Power BI: Visualizing Wild Swimming Locations 🗂 Category: DATA SCIENCE 🕒 Date: 2026-04-15 | ⏱️ Rea
📌 From OpenStreetMap to Power BI: Visualizing Wild Swimming Locations 🗂 Category: DATA SCIENCE 🕒 Date: 2026-04-15 | ⏱️ Read time: 19 min read How to turn OpenStreetMap data into an interactive map of wild swimming spots using Overpass… #DataScience #AI #Python

📌 From Pixels to DNA: Why the Future of Compression Is About Every Kind of Data 🗂 Category: DATA ENGINEERING 🕒 Date: 2026-
📌 From Pixels to DNA: Why the Future of Compression Is About Every Kind of Data 🗂 Category: DATA ENGINEERING 🕒 Date: 2026-04-15 | ⏱️ Read time: 21 min read It’s not about audio and video anymore #DataScience #AI #Python

📌 5 Practical Tips for Transforming Your Batch Data Pipeline into Real-Time: Upcoming Webinar 🗂 Category: TDS WEBINARS 🕒 D
📌 5 Practical Tips for Transforming Your Batch Data Pipeline into Real-Time: Upcoming Webinar 🗂 Category: TDS WEBINARS 🕒 Date: 2026-04-15 | ⏱️ Read time: 5 min read Bringing your batch pipeline to real-time requires careful consideration. This post brings you five practical… #DataScience #AI #Python

🔍 Exploring the Power of Minkowski Distance in Data Analysis 📊 Minkowski distance is a mathematical measure used to calcula
🔍 Exploring the Power of Minkowski Distance in Data Analysis 📊 Minkowski distance is a mathematical measure used to calculate the distance between two points in a multi-dimensional space. It's an extension of the more commonly known Euclidean distance, which we often encounter in our daily lives. However, Minkowski distance offers additional flexibility by allowing us to adjust its behavior based on a parameter called "p." The formula for Minkowski distance is as follows: D(x, y) = (∑|xi - yi|^p)^(1/p) Here, xi and yi represent the coordinates of two points in the dataset. By varying the value of "p," we can adapt the calculation to suit different scenarios: 1️⃣ When p = 1, it becomes Manhattan distance (also known as City Block or Taxicab distance). It measures the sum of absolute differences between corresponding coordinates. This metric is useful when movement can only occur along straight lines. 2️⃣ When p = 2, it reduces to Euclidean distance. It calculates the straight-line distance between two points and is widely used across various fields. 3️⃣ When p → ∞, it represents Chebyshev distance. This measure considers only the maximum difference between coordinates and is particularly useful when movement can occur diagonally. By leveraging Minkowski distance with different values of "p," we gain flexibility in analyzing data based on specific requirements and characteristics of our dataset. Applications of Minkowski distance are vast and diverse: ✅ Clustering Analysis: It helps identify similar groups or clusters within datasets by measuring distances between points. ✅ Recommender Systems: By calculating distances between users or items based on their attributes, Minkowski distance can assist in generating personalized recommendations. ✅ Anomaly Detection: It aids in identifying outliers or anomalies by measuring the deviation of a data point from the rest. ✅ Image Processing: Minkowski distance plays a crucial role in image comparison, object recognition, and pattern matching tasks. Understanding Minkowski distance opens up exciting possibilities for data scientists, analysts, and researchers to gain deeper insights into their datasets and make informed decisions. 📈 So, next time you encounter multi-dimensional data analysis challenges, remember to explore the power of Minkowski distance! 🚀 https://t.me/DataScienceM ✈️

📌 Prefill Is Compute-Bound. Decode Is Memory-Bound. Why Your GPU Shouldn’t Do Both. 🗂 Category: LARGE LANGUAGE MODELS 🕒 Da
📌 Prefill Is Compute-Bound. Decode Is Memory-Bound. Why Your GPU Shouldn’t Do Both. 🗂 Category: LARGE LANGUAGE MODELS 🕒 Date: 2026-04-15 | ⏱️ Read time: 16 min read Inside disaggregated LLM inference — the architecture shift behind 2-4x cost reduction that most ML… #DataScience #AI #Python

🧮 $40/day × 30 days = $1,200/month. That's what my students average. From their phone. In 10 minutes a day. No degree needed
🧮 $40/day × 30 days = $1,200/month. That's what my students average. From their phone. In 10 minutes a day. No degree needed. No investment knowledge required. Just Copy & Paste my moves. I'm Tania, and this is real. 👉 Join for Free, Click here #ad 📢 InsideAd

📌 How To Produce Ultra-Compact Vector Graphic Plots With Orthogonal Distance Fitting 🗂 Category: DATA SCIENCE 🕒 Date: 2026
📌 How To Produce Ultra-Compact Vector Graphic Plots With Orthogonal Distance Fitting 🗂 Category: DATA SCIENCE 🕒 Date: 2026-04-14 | ⏱️ Read time: 11 min read Generate high-quality, minimal SVG plots by fitting Bézier curves with an ODF algorithm. #DataScience #AI #Python

📌 A Guide to Understanding GPUs and Maximizing GPU Utilization 🗂 Category: ARTIFICIAL INTELLIGENCE 🕒 Date: 2026-04-14 | ⏱️
📌 A Guide to Understanding GPUs and Maximizing GPU Utilization 🗂 Category: ARTIFICIAL INTELLIGENCE 🕒 Date: 2026-04-14 | ⏱️ Read time: 18 min read In an age of constrained compute, learn how to optimize GPU efficiency through understanding architecture,… #DataScience #AI #Python

📌 A Practical Guide to Choosing the Right Quantum SDK 🗂 Category: QUANTUM COMPUTING 🕒 Date: 2026-04-14 | ⏱️ Read time: 7 m
📌 A Practical Guide to Choosing the Right Quantum SDK 🗂 Category: QUANTUM COMPUTING 🕒 Date: 2026-04-14 | ⏱️ Read time: 7 min read What to use, when to use it, and what to ignore? #DataScience #AI #Python

📌 Data Modeling for Analytics Engineers: The Complete Primer 🗂 Category: DATA ENGINEERING 🕒 Date: 2026-04-14 | ⏱️ Read tim
📌 Data Modeling for Analytics Engineers: The Complete Primer 🗂 Category: DATA ENGINEERING 🕒 Date: 2026-04-14 | ⏱️ Read time: 29 min read The best data models make it hard to ask bad questions and easy to answer… #DataScience #AI #Python

please more likes ❤️

📌 Your Model Isn’t Done: Understanding and Fixing Model Drift 🗂 Category: DATA SCIENCE 🕒 Date: 2026-04-13 | ⏱️ Read time:
📌 Your Model Isn’t Done: Understanding and Fixing Model Drift 🗂 Category: DATA SCIENCE 🕒 Date: 2026-04-13 | ⏱️ Read time: 7 min read How production models fail over time, and how to catch and fix it before it… #DataScience #AI #Python

CVPR 2025 Best Paper: Visual Geometry Grounded Transformer (VGGT) ❤️ 🏆 VGGT shows that multi-view 3D reconstruction can be h
CVPR 2025 Best Paper: Visual Geometry Grounded Transformer (VGGT) ❤️ 🏆 VGGT shows that multi-view 3D reconstruction can be handled by a single feed-forward transformer, without relying on heavy test-time optimization. 🚀 Given one to hundreds of images, VGGT jointly predicts camera parameters 📷, depth maps, viewpoint-invariant point maps, and tracking features in a single forward pass. ⚡️ By combining DINO-based image tokenization, explicit camera tokens, and alternating frame-wise and global self-attention, the model learns multi-view geometry with minimal inductive bias. 🧠✨

Synthetic Image Detection using Gradient Fields 💡🔍 A simple luminance-gradient PCA analysis reveals a consistent separation
Synthetic Image Detection using Gradient Fields 💡🔍 A simple luminance-gradient PCA analysis reveals a consistent separation between real photographs and diffusion-generated images 📸🤖. Real images produce coherent gradient fields tied to physical lighting and sensor characteristics ☀️📷, while diffusion samples show unstable high-frequency structures from the denoising process 🌀. By converting RGB to luminance, computing spatial gradients, flattening them into a matrix, and evaluating the covariance through PCA, the difference becomes visible in a single projection 📊. This provides a lightweight and interpretable way to assess image authenticity without relying on metadata or classifier models ✅🛡.

🧮 $40/day × 30 days = $1,200/month. That's what my students average. From their phone. In 10 minutes a day. No degree needed
🧮 $40/day × 30 days = $1,200/month. That's what my students average. From their phone. In 10 minutes a day. No degree needed. No investment knowledge required. Just Copy & Paste my moves. I'm Tania, and this is real. 👉 Join for Free, Click here #ad 📢 InsideAd

📌 How to Apply Claude Code to Non-technical Tasks 🗂 Category: AGENTIC AI 🕒 Date: 2026-04-13 | ⏱️ Read time: 8 min read Lea
📌 How to Apply Claude Code to Non-technical Tasks 🗂 Category: AGENTIC AI 🕒 Date: 2026-04-13 | ⏱️ Read time: 8 min read Learn how to apply coding agents to all tasks on your computer #DataScience #AI #Python

📌 I Built a Tiny Computer Inside a Transformer 🗂 Category: ARTIFICIAL INTELLIGENCE 🕒 Date: 2026-04-13 | ⏱️ Read time: 19 m
📌 I Built a Tiny Computer Inside a Transformer 🗂 Category: ARTIFICIAL INTELLIGENCE 🕒 Date: 2026-04-13 | ⏱️ Read time: 19 min read By compiling a simple program directly into transformer weights. #DataScience #AI #Python

📌 Range Over Depth: A Reflection on the Role of the Data Generalist 🗂 Category: PRODUCTIVITY 🕒 Date: 2026-04-13 | ⏱️ Read
📌 Range Over Depth: A Reflection on the Role of the Data Generalist 🗂 Category: PRODUCTIVITY 🕒 Date: 2026-04-13 | ⏱️ Read time: 5 min read What has changed in the past five years in the role and importance of generalists… #DataScience #AI #Python

Repost from AI & ML Papers
Exploring the Future of AI: Neutrosophic Graph Neural Networks (NGNN) Recent analysis indicates that Neutrosophic Graph Neura
Exploring the Future of AI: Neutrosophic Graph Neural Networks (NGNN) Recent analysis indicates that Neutrosophic Graph Neural Networks (NGNN) represent a significant advancement in contemporary artificial intelligence research. The following overview details the concept and its implications. Most artificial intelligence models presuppose data integrity; however, real-world data is frequently imperfect. Consequently, NGNN may emerge as a critical innovation. The foundational inquiry addresses the following: How does artificial intelligence manage data characterized by uncertainty, incompleteness, or contradiction? Traditional models exhibit limitations in this regard, often assuming certainty where none exists. The Foundation: Neutrosophic Logic In the late 1990s, mathematician Florentin Smarandache introduced a framework extending beyond binary true/false dichotomies. He proposed three dimensions of truth: T — What is true I — What is indeterminate F — What is false Between 2000 and 2015, this framework evolved into neutrosophic sets and neutrosophic graphs, mathematical tools capable of encoding uncertainty within data and relationships. The Parallel Rise of Graph Neural Networks Around 2016, the artificial intelligence sector adopted Graph Neural Networks (GNNs), models designed to learn from nodes (data points) and edges (relationships). These models became foundational in social networks, healthcare, fraud detection, and bioinformatics. However, GNNs possess a critical limitation: they assume data certainty, whereas real-world data is inherently uncertain. The Convergence: NGNN From 2020 onwards, researchers began integrating these two domains. In an NGNN, rather than carrying only features, a node encapsulates: — T: What is likely true — I: What remains uncertain — F: What may be false This constitutes not a minor upgrade, but a fundamental shift in how artificial intelligence models perceive and process reality. Key Application Areas: Healthcare — Navigating uncertain or conflicting diagnoses Fraud detection — Identifying ambiguous behavioral patterns Social networks — Modeling unclear or evolving relationships Bioinformatics — Managing the complexity of biological interactions Is NGNN advanced machine learning? Affirmatively. It resides at the intersection of: Graph theory · Deep learning · Mathematical logic · Uncertainty modeling This technology represents research-level, cutting-edge development and is not yet widely deployed in industry. This status underscores its current strategic importance. The Broader Context NGNN is not merely another model; it signifies a philosophical shift in artificial intelligence from systems assuming certainty to systems reasoning through uncertainty. Real-world problems are rarely perfect; therefore, models should not presume perfection. This represents not only evolution but a definitive direction for the field. —— #ArtificialIntelligence #MachineLearning #DeepLearning #GraphNeuralNetworks #AIResearch #DataScience #FutureOfAI #Innovation #EmergingTech #NGNN #AIHealthcare #Bioinformatics