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Machine learning books and papers

Machine learning books and papers

前往频道在 Telegram

📈 Telegram 频道 Machine learning books and papers 的分析概览

频道 Machine learning books and papers (@machine_learn) 英语 语言赛道中的 是活跃参与者。目前社区聚集了 24 517 名订阅者,在 教育 类别中位列第 8 031,并在 伊朗 地区排名第 13 728

📊 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 24 517 名订阅者。

根据 26 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 -162,过去 24 小时变化为 -2,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 5.76%。内容发布后 24 小时内通常能获得 1.79% 的反应,占订阅者总量。
  • 帖子覆盖: 每篇帖子平均可获得 1 412 次浏览,首日通常累积 440 次浏览。
  • 互动与反馈: 受众积极参与,单帖平均反应数为 1
  • 主题关注点: 内容集中在 disorder, psy, مقاله, framework, graph 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:
Admin: @Raminmousa ID: @Machine_learn link: https://t.me/Machine_learn

凭借高频更新(最新数据采集于 27 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 教育 类别中的关键影响点。

24 517
订阅者
-224 小时
-337
-16230
帖子存档
Repost from Papers
سلام اين مقالمون براي نيچر نوشته شده از دوستان كسي نياز داشت نفرات ١ تا ٤ اش خالي هستش . Brain Tumor Detection Through Diverse CNN Architectures in IoT healthcare industries: Fast R-CNN, UNet, Transfer Learning-Based CNN, and Fully Connected CNN Abstract Artificial intelligence-powered deep learning methods have significantly advanced the diagnosis of brain tumors in Internet of Thing (IoT)-healthcare systems, achieving high accuracy by processing extensive datasets. Brain health is crucial for human life, and accurate diagnosis is vital for effective treatment. Magnetic Resonance Imaging (MRI) provides critical data for diagnosing brain health issues, offering a substantial source of big data for artificial intelligence applications in image classification. In this study, we aimed to classify brain tumors, specifically glioma, meningioma, and pituitary tumors, from MRI images using Region-based Convolutional Neural Network (R-CNN) and UNet architectures. Additionally, we employed Convolutional Neural Networks (CNN) and CNN-based models such as Inception-V3, EfficientNetB4, and VGG19, leveraging transfer learning methods for classification tasks. The models were evaluated using F-score, recall, precision, and accuracy metrics. Our findings revealed that the Fast R-CNN model achieved the highest accuracy at 99%, with an F-score of 98.5%, an Area Under the Curve (AUC) value of 99.5%, a recall of 99.4%, and a precision of 98.5%. The integration of R-CNN, UNet, and transfer learning models plays a pivotal role in the early diagnosis and prompt treatment of brain tumors in IoT-healthcare systems, significantly improving patient outcomes. Keywords: Region-based Convolutional Neural Network, UNet, Brain tumor, Transfer learning, Medical imaging Scientific Reports, Nature Springer @Raminmousa @paper4money @Machine_learn

Repost from Papers
سلام اين مقالمون براي نيچر نوشته شده از دوستان كسي نياز داشت نفرات ١ تا ٤ اش خالي هستش . Brain Tumor Detection Through Diverse CNN Architectures in IoT healthcare industries: Fast R-CNN, UNet, Transfer Learning-Based CNN, and Fully Connected CNN Abstract Artificial intelligence-powered deep learning methods have significantly advanced the diagnosis of brain tumors in Internet of Thing (IoT)-healthcare systems, achieving high accuracy by processing extensive datasets. Brain health is crucial for human life, and accurate diagnosis is vital for effective treatment. Magnetic Resonance Imaging (MRI) provides critical data for diagnosing brain health issues, offering a substantial source of big data for artificial intelligence applications in image classification. In this study, we aimed to classify brain tumors, specifically glioma, meningioma, and pituitary tumors, from MRI images using Region-based Convolutional Neural Network (R-CNN) and UNet architectures. Additionally, we employed Convolutional Neural Networks (CNN) and CNN-based models such as Inception-V3, EfficientNetB4, and VGG19, leveraging transfer learning methods for classification tasks. The models were evaluated using F-score, recall, precision, and accuracy metrics. Our findings revealed that the Fast R-CNN model achieved the highest accuracy at 99%, with an F-score of 98.5%, an Area Under the Curve (AUC) value of 99.5%, a recall of 99.4%, and a precision of 98.5%. The integration of R-CNN, UNet, and transfer learning models plays a pivotal role in the early diagnosis and prompt treatment of brain tumors in IoT-healthcare systems, significantly improving patient outcomes. Keywords: Region-based Convolutional Neural Network, UNet, Brain tumor, Transfer learning, Medical imaging Scientific Reports, Nature Springer @Raminmoua @paper4money @Machine_learn

با عرض سلام پك يادگيري ماشين و يادگيري عميق به همراه ٣٦ پروژه با داكيومنت فارسي رو براي دوستان تهيه كرديم از دوستان كسي خواست مي تونه به ايدي بنده پيام بده. 1-Deep Learning Basic -01_Introduction --01_How_TensorFlow_Works --02_Creating_and_Using_Tensors --03_Implementing_Activation_Functions -02_TensorFlow_Way --01_Operations_as_a_Computational_Graph --02_Implementing_Loss_Functions --03_Implementing_Back_Propagation --04_Working_with_Batch_and_Stochastic_Training --05_Evaluating_Models -03_Linear_Regression --linear regression --Logistic Regression -04_Neural_Networks --01_Introduction --02_Single_Hidden_Layer_Network --03_Using_Multiple_Layers -05_Convolutional_Neural_Networks --Convolution Neural Networks --Convolutional Neural Networks Tensorflow --TFRecord For Deep learning Models -06_Recurrent_Neural_Networks --Recurrent Neural Networks (RNN) 2-Classification apparel -Classification apparel double capsule -Classification apparel double cnn 3-ALZHEIMERS USING CNN(ResNet) 4-Fake News (Covid-19 dataset) -Multi-channel -3DCNN model -Base line+ Char CNN -Fake News Covid CapsuleNet 5-3DCNN Fake News 6-recommender systems -GRU+LSTM MovieLens 7-Multi-Domain Sentiment Analysis -Dranziera CapsuleNet -Dranziera CNN Multi-channel -Dranziera LSTM 8-Persian Multi-Domain SA -Bi-GRU Capsule Net -Multi-CNN 9-Recommendation system -Factorization Recommender, Ranking Factorization Recommender, Item Similarity Recommender (turicreate) -SVD, SVD++, NMF, Slope One, k-NN, Centered k-NN, k-NN Baseline, Co-Clustering(surprise) 10-NihX-Ray -optimized CNN on FullDataset Nih-Xray -MobileNet -Transfer learning -Capsule Network on FullDataset Nih-Xray @Raminmouaa

🔸برترین کانال‌های آموزشی در زمینه های هوش‌مصنوعی, پایتون و یادگیری ماشین ‏❯ هوش مصنوعی:  1️⃣ @Ai_Tv 2⃣ @HomeAI 4⃣ @Ai_NewsTv ‏❯ علم داده : 1️⃣  @DataPlusScience 2⃣ @DataSciSchool 3⃣ @SQL_Server ‏❯ یادگیری ماشین : 1️⃣ @Machine_learn ‏❯ آموزش پایتون پیشرفته : 1⃣ @Python4all_pro ‏❯ منابع و کتابهای پایتون ، علم داده و یادگیری ماشین : 1⃣ @programmingPDF

🔥 Astrologers have announced a week of video generation models! Following the hype around the Kling, Luma and Runway models, a new open source version of Open-Sora has been released. Open-Sora 1.2 from Hpcoretech has been published on huggingface. Basic moments: The new 1.1B model is trained on 20M videos and generates videos up to 14 seconds long at 720p resolution. ▪Diffusion Model: https://huggingface.co/hpcai-tech/OpenSora-STDiT-v3VAE model: https://huggingface.co/hpcai-tech/OpenSora-VAE-v1.2Technical report: https://github.com/hpcaitech/Open-Sora/blob/main/docs/report_03.mdDemo: https://huggingface.co/spaces/hpcai-tech/open-sora @Machine_learn

⚡️ Semantic Kernel — open-source SDK, который позволяет интегрировать LLM от OpenAI, с Hugging Face и другие, с обычными язык
⚡️ Semantic Kernel — open-source SDK, который позволяет интегрировать LLM от OpenAI, с Hugging Face и другие, с обычными языками программирования типо C#, Python и Javapip install semantic-kernel 🖥 GitHub @Machine_learn

نفر اول این مقاله رو خالی داریم مقاله اخرین ریوایزدش می باشد ‌حدودا ۱ ماه تا چاپ نهاییش باقی مونده و امروز اخرین زمان برای ثبت هستش دوستانی که نیاز دارند به ایدی بنده پیام بدن. @Raminmousa

نفر اول و دوم این مقاله رو خالی داریم و امروز اخرین زمان برای ثبت هستش دوستانی که نیاز دارند به ایدی بنده پیام بدن. @Raminmousa

این مقاله می تونیم دو نفر هم اضافه کنیم کسیم خواست در خدمتیم

Repost from Papers
سلام این مقالمون در مرحله ی ریوایزد از دوستان اگر کسی خواست می تونیم به مقالاتشون سایت برنیم. Title Comparative Study of Long Short-Term Memory (LSTM), Bidirectional LSTM, and Traditional Machine Learning Approaches for Energy Consumption Prediction ——————————————————————-- Short title Machine Learning, XGBoost, Tree-based Algorithm, Solar Energy Production, LSTM, Artificial Intelligence, Machine Learning, time-series,Bi-LSTM —————————————————————— Abstract Responsible, efficient, and environmentally conscious energy consumption practices are increasingly essential for ensuring the reliability of the modern electricity grid. This study focuses on leveraging time series analysis to enhance the accuracy of forecasting. Time series forecasting is a critical task in various application domains, as real-world time series data often exhibit non-linear patterns with complexities that conventional forecasting techniques struggle to capture. To address this, our approach proposes the utilization of long short-term memory (LSTM) and Bi-LSTM models for precise time series forecasting. To ensure a fair evaluation, the performance of our proposed approach is compared with traditional neural networks, time-series forecasting methods, and conventional decline curves. Additionally, individual models based on LSTM and Bi-LSTM, along with other machine learning methods, are implemented for a comprehensive assessment. The experimental results in this study consistently demonstrate that our proposed model outperforms all benchmarking methods in terms of mean absolute error (MAE) across most datasets. To address the imbalance between activations by both groups of consumers and prosumers, our prediction results show that the proposed method exhibits higher prediction performance compared to several traditional forecasting methods, such as the autoregressive integrated moving average model (ARIMA) and Seasonal autoregressive integrated moving average model (SARIMA). Specifically, the root mean square error (RMSE) of Bi-LSTM is 5.35%, 46.08%, and 50.6% lower than LSTM, ARIMA, and SARIMA, respectively, on the May test data. ——————————————————————-- journal Energy Exploration & Exploitation (SAGE) @Raminmousa @Machine_learn @paper4money

🚀 Diving into Underwater: Segment Anything Model Guided Underwater Salient Instance Segmentation and A Large-scale Dataset �
🚀 Diving into Underwater: Segment Anything Model Guided Underwater Salient Instance Segmentation and A Large-scale Dataset 🖥 Github: https://github.com/liamlian0727/usis10k 📕Paper: https://arxiv.org/abs/2406.06039v1 @Machine_learn

https://t.me/SpinnerCoin_bot/app?startapp=r_280673 تنها پروژه اي كه اين روزا از نظرم اهميت داره Spinner هستش كه به ماين NFT مي پردازه. 💎 +750 $SPN as a first-time gift

⚡️L-MAGIC: Language Model Assisted Generation of Images with Coherence ▪Github: https://github.com/IntelLabs/MMPano ▪Paper: h
⚡️L-MAGIC: Language Model Assisted Generation of Images with CoherenceGithub: https://github.com/IntelLabs/MMPanoPaper: https://arxiv.org/abs/2406.01843Project: https://zhipengcai.github.io/MMPano/Video: https://youtu.be/XDMNEzH4-Ec @Machine_learn

🚀 AgentGym: Evolving Large Language Model-based Agents across Diverse Environments 🖥 Github: https://github.com/woooodyy/ag
🚀 AgentGym: Evolving Large Language Model-based Agents across Diverse Environments 🖥 Github: https://github.com/woooodyy/agentgym 📕 Paper: https://arxiv.org/abs/2406.04151v1 🔥Project: https://agentgym.github.io/ ⚡️Model (AgentEvol-7B): https://huggingface.co/AgentGym/AgentEvol-7B @Machine_learn