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Github Top Repositories

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📈 Análisis del canal de Telegram Github Top Repositories

El canal Github Top Repositories (@githubre) en el segmento lingüístico de Inglés es un actor destacado. Actualmente la comunidad reúne a 13 330 suscriptores, ocupando la posición 15 272 en la categoría Educación y el puesto 32 126 en la región India.

📊 Métricas de audiencia y dinámica

Desde su creación el невідомо, el proyecto ha mostrado un crecimiento acelerado, reuniendo a 13 330 suscriptores.

Según los últimos datos del 15 junio, 2026, el canal mantiene una actividad estable. En los últimos 30 días la variación de miembros fue de 413, y en las últimas 24 horas de 8, conservando un alto alcance.

  • Estado de verificación: No verificado
  • Tasa de interacción (ER): El promedio de interacción de la audiencia es 1.07%. Durante las primeras 24 horas tras publicar, el contenido suele obtener 0.79% de reacciones respecto al total de suscriptores.
  • Alcance de las publicaciones: Cada publicación recibe en promedio 143 visualizaciones. En el primer día suele acumular 105 visualizaciones.
  • Reacciones e interacción: La audiencia responde de forma activa: el promedio de reacciones por publicación es 1.
  • Intereses temáticos: El contenido se centra en temas clave como repository, fork, programming, statistic, description.

📝 Descripción y política de contenido

El autor describe el recurso como un espacio para expresar opiniones subjetivas:
Top GitHub repositories in one place 🚀 Explore the best projects in programming, AI, data science, and more.

Gracias a la alta frecuencia de actualizaciones (últimos datos recibidos el 16 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 Educación.

13 330
Suscriptores
+824 horas
+927 días
+41330 días
Archivo de publicaciones
🎁 Your balance is credited $4,000 , the owner of the channel wants to contact you! Dear subscriber, we would like to thank y
🎁 Your balance is credited $4,000 , the owner of the channel wants to contact you! Dear subscriber, we would like to thank you very much for supporting our channel, and as a token of our gratitude we would like to provide you with free access to Lisa's investor channel, with the help of which you can earn today T.me/Lisainvestor Be sure to take advantage of our gift, admission is free, don't miss the opportunity, change your life for the better. You can follow the link : https://t.me/+0DQSCADFTUA3N2Qx

🎁 Your balance is credited $4,000 , the owner of the channel wants to contact you! Dear subscriber, we would like to thank y
🎁 Your balance is credited $4,000 , the owner of the channel wants to contact you! Dear subscriber, we would like to thank you very much for supporting our channel, and as a token of our gratitude we would like to provide you with free access to Lisa's investor channel, with the help of which you can earn today T.me/Lisainvestor Be sure to take advantage of our gift, admission is free, don't miss the opportunity, change your life for the better. You can follow the link : https://t.me/+0DQSCADFTUA3N2Qx

Go for react 🥳🙏

🚀 The new HQ-SAM (High-Quality Segment Anything Model) has just been added to the Hugging Face Transformers library! This is an enhanced version of the original SAM (Segment Anything Model) introduced by Meta in 2023. HQ-SAM significantly improves the segmentation of fine and detailed objects, while preserving all the powerful features of SAM — including prompt-based interaction, fast inference, and strong zero-shot performance. That means you can easily switch to HQ-SAM wherever you used SAM! The improvements come from just a few additional learnable parameters. The authors collected a high-quality dataset with 44,000 fine-grained masks from various sources, and impressively trained the model in just 4 hours using 8 GPUs — all while keeping the core SAM weights frozen. The newly introduced parameters include: * A High-Quality Token * A Global-Local Feature Fusion mechanism This work was presented at NeurIPS 2023 and still holds state-of-the-art performance in zero-shot segmentation on the SGinW benchmark. 📄 Documentation: https://lnkd.in/e5iDT6Tf 🧠 Model Access: https://lnkd.in/ehS6ZUyv 💻 Source Code: https://lnkd.in/eg5qiKC2 #ArtificialIntelligence #ComputerVision #Transformers #Segmentation #DeepLearning #PretrainedModels #ResearchAndDevelopment #AdvancedModels #ImageAnalysis #HQ_SAM #SegmentAnything #SAMmodel #ZeroShotSegmentation #NeurIPS2023 #AIresearch #FoundationModels #OpenSourceAI #SOTA 🌟https://t.me/DataScienceN

This channels is for Programmers, Coders, Software Engineers. 0️⃣ Python 1️⃣ Data Science 2️⃣ Machine Learning 3️⃣ Data Visua
This channels is for Programmers, Coders, Software Engineers. 0️⃣ Python 1️⃣ Data Science 2️⃣ Machine Learning 3️⃣ Data Visualization 4️⃣ Artificial Intelligence 5️⃣ Data Analysis 6️⃣ Statistics 7️⃣ Deep Learning 8️⃣ programming Languages ✅ https://t.me/addlist/8_rRW2scgfRhOTc0https://t.me/Codeprogrammer

🚀 Retail Fashion Sales Data Analysis Here's a fascinating project in the field of data analysis, focused on real-world fashion retail sales. The dataset contains 3,400 records of customer purchases, including item types, purchase amounts, customer ratings, and payment methods. 🔍 Project Goals: - Understand customer purchasing behavior - Identify the most popular products - Analyze preferred payment methods 📊 The dataset was first cleaned using Pandas to handle missing values, and then insightful visualizations were created with Matplotlib to reveal hidden patterns in the data. 🔗Data source: https://lnkd.in/dbGbuhG7 📓 Check out the full notebook here: 🔗 https://lnkd.in/dhnJpk47 If you're interested in customer behavior analytics and working with real-world retail data, this project is a great source of insight! 🌟 📡 By: https://t.me/DataScienceN

🎉🚁 Introducing Unidrone v1.0 – The Next Generation of Aerial Object Detection Models 🚁🎉 We are excited to present Unidrone v1.0, a powerful collection of AI detection models based on YOLOv8, specially designed for object recognition in drone imagery. 🔍 What is Unidrone? Unidrone is a smart fusion of two previous models: WALDO (optimized for nadir/overhead views) and NANO (designed for forward-looking angles). Now you no longer need to choose between them—Unidrone handles both angles with high accuracy! 📦 These models accurately detect objects in drone images taken from altitudes of approximately 50 to 1000 feet, regardless of camera angle. 🔍 Supported Object Classes:0️⃣ Person (walking, biking, swimming, skiing, etc.) 1️⃣ Bike & motorcycle 2️⃣ Light vehicles (cars, vans, ambulances, etc.) 3️⃣ Trucks 4️⃣ Bus 5️⃣ Boat & floating objects 6️⃣ Construction vehicles (e.g., tractors, loaders) 🚫 Note: This version of Unidrone does not include military-related classes or smoke detection. It's built solely for civilian and safety-focused applications. 📌 Use Cases:✅ Disaster recovery operations ✅ Wildlife and protected area monitoring ✅ Occupancy analysis (e.g., parking lots) ✅ Infrastructure surveillance ✅ Search and rescue (SAR) ✅ Crowd counting ✅ Ground-risk mitigation for drones 🛠️ The models are available in .pt format and can easily be exported to ONNX or TFLite. They also support visualization with Roboflow’s Supervision library for clean, annotated outputs. 🧠 If you're a machine learning practitioner, you can: Fine-tune the models on your own dataset Optimize for fast inference on edge devices Quantize and deploy on low-cost hardware Use the models to auto-label your own data 📨 If you're facing detection issues or want to contribute to future improvements, feel free to contact the developer: stephan.sturges@gmail.com Enjoy exploring the power of Unidrone v1.0! 💬https://huggingface.co/StephanST/unidrone 📡 By: https://t.me/DataScienceN

🎉🚁 Introducing Unidrone v1.0 – The Next Generation of Aerial Object Detection Models 🚁🎉 We are excited to present Unidrone v1.0, a powerful collection of AI detection models based on YOLOv8, specially designed for object recognition in drone imagery. 🔍 What is Unidrone? Unidrone is a smart fusion of two previous models: WALDO (optimized for nadir/overhead views) and NANO (designed for forward-looking angles). Now you no longer need to choose between them—Unidrone handles both angles with high accuracy! 📦 These models accurately detect objects in drone images taken from altitudes of approximately 50 to 1000 feet, regardless of camera angle. 🔍 Supported Object Classes:0️⃣ Person (walking, biking, swimming, skiing, etc.) 1️⃣ Bike & motorcycle 2️⃣ Light vehicles (cars, vans, ambulances, etc.) 3️⃣ Trucks 4️⃣ Bus 5️⃣ Boat & floating objects 6️⃣ Construction vehicles (e.g., tractors, loaders) 🚫 Note: This version of Unidrone does not include military-related classes or smoke detection. It's built solely for civilian and safety-focused applications. 📌 Use Cases:✅ Disaster recovery operations ✅ Wildlife and protected area monitoring ✅ Occupancy analysis (e.g., parking lots) ✅ Infrastructure surveillance ✅ Search and rescue (SAR) ✅ Crowd counting ✅ Ground-risk mitigation for drones 🛠️ The models are available in .pt format and can easily be exported to ONNX or TFLite. They also support visualization with Roboflow’s Supervision library for clean, annotated outputs. 🧠 If you're a machine learning practitioner, you can: Fine-tune the models on your own dataset Optimize for fast inference on edge devices Quantize and deploy on low-cost hardware Use the models to auto-label your own data 📨 If you're facing detection issues or want to contribute to future improvements, feel free to contact the developer: stephan.sturges@gmail.com Enjoy exploring the power of Unidrone v1.0! 💬https://huggingface.co/StephanST/unidrone 📡 By: https://t.me/DataScienceN

🎉🚁 Introducing Unidrone v1.0 – The Next Generation of Aerial Object Detection Models 🚁🎉 We are excited to present Unidrone v1.0, a powerful collection of AI detection models based on YOLOv8, specially designed for object recognition in drone imagery. 🔍 What is Unidrone? Unidrone is a smart fusion of two previous models: WALDO (optimized for nadir/overhead views) and NANO (designed for forward-looking angles). Now you no longer need to choose between them—Unidrone handles both angles with high accuracy! 📦 These models accurately detect objects in drone images taken from altitudes of approximately 50 to 1000 feet, regardless of camera angle. 🔍 Supported Object Classes:0️⃣ Person (walking, biking, swimming, skiing, etc.) 1️⃣ Bike & motorcycle 2️⃣ Light vehicles (cars, vans, ambulances, etc.) 3️⃣ Trucks 4️⃣ Bus 5️⃣ Boat & floating objects 6️⃣ Construction vehicles (e.g., tractors, loaders) 🚫 Note: This version of Unidrone does not include military-related classes or smoke detection. It's built solely for civilian and safety-focused applications. 📌 Use Cases:✅ Disaster recovery operations ✅ Wildlife and protected area monitoring ✅ Occupancy analysis (e.g., parking lots) ✅ Infrastructure surveillance ✅ Search and rescue (SAR) ✅ Crowd counting ✅ Ground-risk mitigation for drones 🛠️ The models are available in .pt format and can easily be exported to ONNX or TFLite. They also support visualization with Roboflow’s Supervision library for clean, annotated outputs. 🧠 If you're a machine learning practitioner, you can: Fine-tune the models on your own dataset Optimize for fast inference on edge devices Quantize and deploy on low-cost hardware Use the models to auto-label your own data 📨 If you're facing detection issues or want to contribute to future improvements, feel free to contact the developer: stephan.sturges@gmail.com Enjoy exploring the power of Unidrone v1.0! 💬https://huggingface.co/StephanST/unidrone 📡 By: https://t.me/DataScienceN

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فرصة عمل عن بعد 🧑‍💻 لا يتطلب اي مؤهل او خبره الشركه تقدم تدريب كامل ✨ ساعات العمل مرنه  ⏰ يتم التسجيل ثم التواصل معك لحضور لقاء تعريفي بالعمل والشركه https://forms.gle/hqUZXu7u4uLjEDPv8

🎯 Trackers Library is Officially Released! 🚀 If you're working in computer vision and object tracking, this one's for you! 💡 Trackers is a powerful open-source library with support for a wide range of detection models and tracking algorithms: ✅ Plug-and-play compatibility with detection models from: Roboflow Inference, Hugging Face Transformers, Ultralytics, MMDetection, and more! ✅ Tracking algorithms supported: SORT, DeepSORT, and advanced trackers like StrongSORT, BoT‑SORT, ByteTrack, OC‑SORT – with even more coming soon! 🧩 Released under the permissive Apache 2.0 license – free for everyone to use and contribute. 👏 Huge thanks to Piotr Skalski for co-developing this library, and to Raif Olson and Onuralp SEZER for their outstanding contributions! 📌 Links: 🔗 GitHub 🔗 Docs 📚 Quick-start notebooks for SORT and DeepSORT are linked 👇🏻 https://www.linkedin.com/posts/skalskip92_trackers-library-is-out-plugandplay-activity-7321128111503253504-3U6-?utm_source=share&utm_medium=member_desktop&rcm=ACoAAEXwhVcBcv2n3wq8JzEai3TfWmKLRLTefYo #ComputerVision #ObjectTracking #OpenSource #DeepLearning #AI 📡 By: https://t.me/DataScienceN

🚀 CoMotion: Concurrent Multi-person 3D Motion 🚶‍♂️🚶‍♀️ Introducing CoMotion, a project that detects and tracks detailed 3D poses of multiple people using a single monocular camera stream. This system maintains temporally coherent predictions in crowded scenes filled with difficult poses and occlusions, enabling online tracking through frames with high accuracy. 🔍 Key Features: - Precise detection and tracking in crowded scenes - Temporal coherence even with occlusions - High accuracy in tracking multiple people over time 📦 Access the code and weights here: 🔗 Code & Weights  🔗 View Project This project advances 3D human motion tracking by offering faster and more accurate tracking of multiple individuals compared to existing systems. #AI #DeepLearning #3DTracking #ComputerVision #PoseEstimation 📡 By: https://t.me/DataScienceN

This channels is for Programmers, Coders, Software Engineers. 0️⃣ Python 1️⃣ Data Science 2️⃣ Machine Learning 3️⃣ Data Visua
This channels is for Programmers, Coders, Software Engineers. 0️⃣ Python 1️⃣ Data Science 2️⃣ Machine Learning 3️⃣ Data Visualization 4️⃣ Artificial Intelligence 5️⃣ Data Analysis 6️⃣ Statistics 7️⃣ Deep Learning 8️⃣ programming Languages ✅ https://t.me/addlist/8_rRW2scgfRhOTc0https://t.me/Codeprogrammer