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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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📈 Análisis del canal de Telegram Machine Learning

El canal Machine Learning (@machinelearning9) en el segmento lingüístico de Inglés es un actor destacado. Actualmente la comunidad reúne a 40 040 suscriptores, ocupando la posición 3 406 en la categoría Tecnologías y Aplicaciones y el puesto 232 en la región Siria.

📊 Métricas de audiencia y dinámica

Desde su creación el невідомо, el proyecto ha mostrado un crecimiento acelerado, reuniendo a 40 040 suscriptores.

Según los últimos datos del 22 junio, 2026, el canal mantiene una actividad estable. En los últimos 30 días la variación de miembros fue de 372, y en las últimas 24 horas de 2, conservando un alto alcance.

  • Estado de verificación: No verificado
  • Tasa de interacción (ER): El promedio de interacción de la audiencia es 1.94%. Durante las primeras 24 horas tras publicar, el contenido suele obtener 1.16% de reacciones respecto al total de suscriptores.
  • Alcance de las publicaciones: Cada publicación recibe en promedio 775 visualizaciones. En el primer día suele acumular 466 visualizaciones.
  • Reacciones e interacción: La audiencia responde de forma activa: el promedio de reacciones por publicación es 3.
  • Intereses temáticos: El contenido se centra en temas clave como distance, insidead, gpu, learning, degree.

📝 Descripción y política de contenido

El autor describe el recurso como un espacio para expresar opiniones subjetivas:
Real Machine Learning — simple, practical, and built on experience. Learn step by step with clear explanations and working code. Admin: @HusseinSheikho || @Hussein_Sheikho

Gracias a la alta frecuencia de actualizaciones (últimos datos recibidos el 23 junio, 2026), el canal mantiene la vigencia y un amplio alcance. La analítica demuestra que la audiencia interactúa activamente con el contenido, lo que lo convierte en un punto de referencia dentro de la categoría Tecnologías y Aplicaciones.

40 040
Suscriptores
+224 horas
+237 días
+37230 días
Archivo de publicaciones
📌 You Don’t Need Many Labels to Learn 🗂 Category: MACHINE LEARNING 🕒 Date: 2026-04-17 | ⏱️ Read time: 10 min read What if
📌 You Don’t Need Many Labels to Learn 🗂 Category: MACHINE LEARNING 🕒 Date: 2026-04-17 | ⏱️ Read time: 10 min read What if an unsupervised model could become a strong classifier with only a handful of… #DataScience #AI #Python

📌 Beyond Prompting: Using Agent Skills in Data Science 🗂 Category: ARTIFICIAL INTELLIGENCE 🕒 Date: 2026-04-17 | ⏱️ Read ti
📌 Beyond Prompting: Using Agent Skills in Data Science 🗂 Category: ARTIFICIAL INTELLIGENCE 🕒 Date: 2026-04-17 | ⏱️ Read time: 7 min read How I turned my eight-year weekly visualization habit into a reusable AI workflow #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

72-hour review of 1,200+ public betting channels shows most “VIP” picks are posted after price moves, not before. Betting Tip
72-hour review of 1,200+ public betting channels shows most “VIP” picks are posted after price moves, not before. Betting Tips King tracks market drift and releases entries early, with time-stamped proof inside. VIP access includes pre-match parlays, live angles, and verified slips. Transparent process, not noise. Join: Betting Tips King | Admin: @KingR33 #ad 📢 InsideAd

📌 How to Maximize Claude Cowork 🗂 Category: LARGE LANGUAGE MODELS 🕒 Date: 2026-04-15 | ⏱️ Read time: 9 min read Learn how
📌 How to Maximize Claude Cowork 🗂 Category: LARGE LANGUAGE MODELS 🕒 Date: 2026-04-15 | ⏱️ Read time: 9 min read Learn how to get the most out of Claude Cowork #DataScience #AI #Python

More likes = more resources

🚀 Thrilled to announce a major milestone in our collective upskilling journey! 🌟 I am incredibly excited to share a curated
🚀 Thrilled to announce a major milestone in our collective upskilling journey! 🌟 I am incredibly excited to share a curated ecosystem of high-impact resources focused on Machine Learning and Artificial Intelligence. By consolidating a comprehensive library of PDFs—from foundational onboarding to advanced strategic insights—into a single, unified repository, we are effectively eliminating search friction and accelerating our learning velocity. 📚✨ This initiative represents a powerful opportunity to align our technical growth with future-ready priorities, ensuring we are always ahead of the curve. 💡🔗 ⛓️ Unlock your potential here: https://github.com/Ramakm/AI-ML-Book-References #MachineLearning #AI #ContinuousLearning #GrowthMindset #TechCommunity #OpenSource

Turn Small Capital Into Big Profits Join the Billionaire Club Access elite strategies through copy trading Ad. 18+
Turn Small Capital Into Big Profits Join the Billionaire Club Access elite strategies through copy trading Ad. 18+

📌 Introduction to Deep Evidential Regression for Uncertainty Quantification 🗂 Category: DEEP LEARNING 🕒 Date: 2026-04-16 |
📌 Introduction to Deep Evidential Regression for Uncertainty Quantification 🗂 Category: DEEP LEARNING 🕒 Date: 2026-04-16 | ⏱️ Read time: 12 min read Machine learning models can be confident even when they shouldn’t be. This article introduces Deep… #DataScience #AI #Python

📌 memweave: Zero-Infra AI Agent Memory with Markdown and SQLite — No Vector Database Required 🗂 Category: AGENTIC AI 🕒 Dat
📌 memweave: Zero-Infra AI Agent Memory with Markdown and SQLite — No Vector Database Required 🗂 Category: AGENTIC AI 🕒 Date: 2026-04-16 | ⏱️ Read time: 17 min read The problem with agent memory today #DataScience #AI #Python

📌 Building My Own Personal AI Assistant: A Chronicle, Part 2 🗂 Category: AGENTIC AI 🕒 Date: 2026-04-16 | ⏱️ Read time: 9 m
📌 Building My Own Personal AI Assistant: A Chronicle, Part 2 🗂 Category: AGENTIC AI 🕒 Date: 2026-04-16 | ⏱️ Read time: 9 min read Building a personal AI assistant is rarely a single, monolithic effort. In this piece, I… #DataScience #AI #Python

🚀 Why Modern AI Runs on GPUs and TPUs Instead of CPUs 🤖 AI models are essentially large matrix multiplication engines 🧮. T
🚀 Why Modern AI Runs on GPUs and TPUs Instead of CPUs 🤖 AI models are essentially large matrix multiplication engines 🧮. Training and inference involve billions or even trillions of tensor operations like: 👉 [Input Tensor] × [Weight Matrix] = Output ⚡️ The speed of these computations depends heavily on the hardware architecture 🏗. Traditional CPUs execute operations sequentially ⏳. A few powerful cores handle tasks one after another. This design is excellent for general purpose computing but inefficient for massive tensor workloads 🐢. Example: A transformer model performing attention calculations may require billions of multiplications. A CPU processes them sequentially which increases latency 🐌. 👉 GPUs solve this with parallelism 🚀 GPUs contain thousands of smaller cores designed to execute many matrix operations simultaneously. Instead of one operation at a time, thousands run in parallel 🔄. Example: Training a CNN for image classification: - CPU training time → several hours ⏰ - GPU training time → minutes ⚡️ Frameworks like PyTorch and TensorFlow leverage CUDA cores to parallelize tensor computations across thousands of threads 🔧. 👉 TPUs go even further 🛸 TPUs are purpose built accelerators for deep learning workloads. They use systolic array architecture optimized for dense matrix multiplication 📐. Instead of sending data back and forth between memory and compute units, data flows directly through a grid of processing elements 🌊. Example: Large language models like BERT or PaLM run inference much faster on TPUs due to optimized tensor pipelines 🚄. Typical latency differences ⏱️ CPU → Seconds GPU → Milliseconds TPU → Microseconds As models scale to billions of parameters, hardware architecture becomes the real bottleneck 🚧. That is why modern AI infrastructure relies on GPU clusters and TPU pods to train and serve large models efficiently 🏢. 💡Key takeaway AI progress is not only about better algorithms 🧠. It is also about better compute architecture 🔌. #AI #MachineLearning #DeepLearning #GPUs #TPUs #LLM #DataScience #ArtificialIntelligence

📌 Your Chunks Failed Your RAG in Production 🗂 Category: LARGE LANGUAGE MODELS 🕒 Date: 2026-04-16 | ⏱️ Read time: 22 min re
📌 Your Chunks Failed Your RAG in Production 🗂 Category: LARGE LANGUAGE MODELS 🕒 Date: 2026-04-16 | ⏱️ Read time: 22 min read The upstream decision no model, or LLM can fix once you get it wrong #DataScience #AI #Python

Feeling stuck in the same thoughts and circumstances? ✔️ This is exactly why and how to change it. ⬇️ ✦ 3-step method Takes u
Feeling stuck in the same thoughts and circumstances? ✔️ This is exactly why and how to change it. ⬇️ ✦ 3-step method Takes under 2 minutes. No journaling, no therapy. ✦ Instant relief The heaviness lifts before anything outside changes. ✦ 3 dissolving phrases Remove any "fact's" authority over your next moment. ✦ Daily checklist 5-minute practice that rewires everything. Get instant access it's free ⬇️ DOWNLOAD NOW #ad 📢 InsideAd

📌 RAG Isn’t Enough — I Built the Missing Context Layer That Makes LLM Systems Work 🗂 Category: MACHINE LEARNING 🕒 Date: 20
📌 RAG Isn’t Enough — I Built the Missing Context Layer That Makes LLM Systems Work 🗂 Category: MACHINE LEARNING 🕒 Date: 2026-04-14 | ⏱️ Read time: 14 min read Most RAG tutorials focus on retrieval or prompting. The real problem starts when context grows.… #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

📌 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 ✈️