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Machine learning books and papers

Machine learning books and papers

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📈 Analytical overview of Telegram channel Machine learning books and papers

Channel Machine learning books and papers (@machine_learn) in the English language segment is an active participant. Currently, the community unites 24 515 subscribers, ranking 8 015 in the Education category and 13 708 in the Iran region.

📊 Audience metrics and dynamics

Since its creation on невідомо, the project has demonstrated rapid growth, gathering an audience of 24 515 subscribers.

According to the latest data from 27 June, 2026, the channel demonstrates stable activity. Although there has been a change in the number of participants by -150 over the last 30 days and by 2 over the last 24 hours, overall reach remains high.

  • Verification status: Not verified
  • Engagement rate (ER): The average audience engagement rate is 6.33%. Within the first 24 hours after publication, content typically collects 1.73% reactions from the total number of subscribers.
  • Post reach: On average, each post receives 1 551 views. Within the first day, a publication typically gains 424 views.
  • Reactions and interaction: The audience actively supports content: the average number of reactions per post is 1.
  • Thematic interests: Content is focused on key topics such as disorder, psy, مقاله, framework, graph.

📝 Description and content policy

The author describes the resource as a platform for expressing subjective opinions:
Admin: @Raminmousa ID: @Machine_learn link: https://t.me/Machine_learn

Thanks to the high frequency of updates (latest data received on 28 June, 2026), the channel maintains relevance and a high level of publication reach. Analytics show that the audience actively interacts with content, making it an important point of influence in the Education category.

24 515
Subscribers
+224 hours
-247 days
-15030 days
Posts Archive
Towards System 2 Reasoning in LLMs 📕 Link @Machine_learn
Towards System 2 Reasoning in LLMs 📕 Link @Machine_learn

📑 Advances of the recent data-driven paradigm shift in medicine and healthcare: From machine learning to deep learning 📎 St
📑 Advances of the recent data-driven paradigm shift in medicine and healthcare: From machine learning to deep learning 📎 Study the paper @Machine_learn

📃 Large language model to multimodal large language model: A journey to shape the biological macromolecules to biological sc
📃 Large language model to multimodal large language model: A journey to shape the biological macromolecules to biological sciences and medicine 📓 Journal: Molecular Therapy Nucleic Acids (I.F.=6.5) 📎 Study the paper @Machine_learn

Repost from Papers
با عرض سلام مقاله زیر در مرحله major revision می‌باشد. نفر ۴ ام از این مقاله قابل اضافه کردن. Abstract Breast cancer stands as a prevalent cause of fatality among females on a global scale, with prompt detection playing a pivotal role in diminishing mortality rates. The utilization of ultrasound scans in the BUSI dataset for medical imagery pertaining to breast cancer has exhibited commendable segmentation outcomes through the application of UNet and UNet++ networks. Nevertheless, a notable drawback of these models resides in their inattention towards the temporal aspects embedded within the images. This research endeavors to enrich the UNet++ architecture by integrating LSTM layers and self-attention mechanisms to exploit temporal characteristics for segmentation purposes. Furthermore, the incorporation of a Multiscale Feature Extraction Module aims to grasp varied scale features within the UNet++. Through the amalgamation of our proposed methodology with data augmentation on the BUSI with GT dataset, an accuracy rate of 98.88%, specificity of 99.53%, precision of 95.34%, sensitivity of 91.20%, F1-score of 93.74, and Dice coefficient of 92.74% are achieved. These findings demonstrate competitiveness with cutting-edge techniques outlined in existing literature. Keywords: Attention mechanisms, BUSI dataset, Deep Learning, Feature Extraction, Multi-Scale features دوستانی که نیاز دارن به ایدی بنده پیام بدن. @Raminmousa @Machine_learn https://t.me/+SP9l58Ta_zZmYmY0

Database Normalization.pdf4.69 KB

دوستان از این بین Biopars برای نیچر هستش.

Repost from Papers
با عرض سلام دوستان كه مي خوان توي تيم هاي paper ما شركت كنن موضوعات زير رو مي خواهيم جلو ببريم. 1: survey on whole slide image ▫️ 2: Proposed a new model for enrergy efficiency in deep image classification models Authers: 2, 3, 4 🔺 3:BioPars: a pretrained biomedical large language model for persian biomedical text mining Authors: 5🔺 4: Air quality prediction by hybrid deep learning and machine learning models Authors:4🔺 در تمامی این موارد نیاز به انجام تسک و پرداخت هزینه سرور ها می باشیم. @Raminmousa

Tensors in computations 📕Book @Machine_learn
Tensors in computations 📕Book @Machine_learn

Automating the Search for Artificial Life with Foundation Models paper: https://arxiv.org/pdf/2412.17799v1.pdf Code: https://
Automating the Search for Artificial Life with Foundation Models paper: https://arxiv.org/pdf/2412.17799v1.pdf Code: https://github.com/sakanaai/asal @Machine_learn

📽 Introduction to Network Analysis using NetworkX 🎞 Watch @Machine_learn

📃A Survey of Graph Neural Networks for Social Recommender Systems 📎 Study paper @Machine_learn
📃A Survey of Graph Neural Networks for Social Recommender Systems 📎 Study paper @Machine_learn

هزینه نهایی برای این کار رو به ۲۵ میلیون کاهش دادیم برای نفر ۵ ...!🔥

Repost from Papers
با عرض سلام پروژه Biopars رو شروع كرديم نفر ٥ ام از اين مقاله رو نياز داريم. این کار تحت نظر استاد Rex (Zhitao) Ying انجام می
با عرض سلام پروژه Biopars رو شروع كرديم نفر ٥ ام از اين مقاله رو نياز داريم. این کار تحت نظر استاد Rex (Zhitao) Ying انجام میشه. link: https://scholar.google.com.au/citations?user=6fqNXooAAAAJ&hl=en BioPars: a pre-trained biomedical large language model for persian biomedical text mining. ١- مراحل اوليه: جمع اوري متن هاي فارسي بيولوژيكي از منابع (...) ٢- پيش پردازش متن ها و تميز كردن متن ها ٣- اموزش ترنسفورمرها ي مورد نظر ٤- استفاده از بردارها ي اموزش داده شده در سه تسك (...) هزينه سرور به ازاي هر ساعت ١.٢ دلار مي باشد. و حدود ٢ هزار ساعت براي اموزش مدل زباني نياز ميباشد. دوستاني كه نياز دارن مي تونن به تيم ما اضافه بشن 🔸🔸🔸🔸🔸 @Raminmousa

⚡️ NeuZip ▶️ # Install from PyPI pip install neuzip # Use Neuzip for Pytorch model model: torch.nn.Module = # your model + ma
⚡️ NeuZip ▶️ # Install from PyPI pip install neuzip # Use Neuzip for Pytorch model model: torch.nn.Module = # your model + manager = neuzip.Manager() + model = manager.convert(model) 🟡Arxiv 🖥GitHub @Machine_learn

امشب اخرین فرصت برای مشارکت در این مقاله هستش...!🔸🔸

🌟 🌟 OuteTTS-0.2-500M # Install from PyPI pip install outetts # Interface Usage import outetts # Configure the model model_c
🌟 🌟 OuteTTS-0.2-500M # Install from PyPI pip install outetts # Interface Usage import outetts # Configure the model model_config = outetts.HFModelConfig_v1( model_path="OuteAI/OuteTTS-0.2-500M", language="en", # Supported languages in v0.2: en, zh, ja, ko ) # Initialize the interface interface = outetts.InterfaceHF(model_version="0.2", cfg=model_config) # Optional: Create a speaker profile (use a 10-15 second audio clip) speaker = interface.create_speaker( audio_path="path/to/audio/file", transcript="Transcription of the audio file." ) # Optional: Load speaker from default presets interface.print_default_speakers() speaker = interface.load_default_speaker(name="male_1") output = interface.generate( text="%Prompt Text%%.", temperature=0.1, repetition_penalty=1.1, max_length=4096, # Optional: Use a speaker profile speaker=speaker, ) # Save the synthesized speech to a file output.save("output.wav") 🟡Demo 🖥GitHub @Machine_learn

امشب اخرین فرصت برای مشارکت در این مقاله هستش...!🔸🔸

Repost from Papers
با عرض سلام پروژه Biopars رو شروع كرديم نفر ٥ ام از اين مقاله رو نياز داريم. این کار تحت نظر استاد Rex (Zhitao) Ying انجام می
با عرض سلام پروژه Biopars رو شروع كرديم نفر ٥ ام از اين مقاله رو نياز داريم. این کار تحت نظر استاد Rex (Zhitao) Ying انجام میشه. link: https://scholar.google.com.au/citations?user=6fqNXooAAAAJ&hl=en BioPars: a pre-trained biomedical large language model for persian biomedical text mining. ١- مراحل اوليه: جمع اوري متن هاي فارسي بيولوژيكي از منابع (...) ٢- پيش پردازش متن ها و تميز كردن متن ها ٣- اموزش ترنسفورمرها ي مورد نظر ٤- استفاده از بردارها ي اموزش داده شده در سه تسك (...) هزينه سرور به ازاي هر ساعت ١.٢ دلار مي باشد. و حدود ٢ هزار ساعت براي اموزش مدل زباني نياز ميباشد. دوستاني كه نياز دارن مي تونن به تيم ما اضافه بشن 🔸🔸🔸🔸🔸 @Raminmousa

Lecture notes: mathematics for artificial intelligence 📕 Link @Machine_learn
Lecture notes: mathematics for artificial intelligence 📕 Link @Machine_learn