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Machine learning books and papers

Machine learning books and papers

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📈 Telegram kanali Machine learning books and papers analitikasi

Machine learning books and papers (@machine_learn) Ingliz til segmentidagi kanali faol ishtirokchi. Hozirda hamjamiyat 24 517 obunachidan iborat bo'lib, Taʼlim toifasida 8 031-o'rinni va Eron mintaqasida 13 728-o'rinni egallagan.

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Admin: @Raminmousa ID: @Machine_learn link: https://t.me/Machine_learn

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24 517
Obunachilar
-224 soatlar
-337 kunlar
-16230 kunlar
Postlar arxiv
🔸برترین کانال‌های آموزشی در زمینه های هوش‌مصنوعی, پایتون و یادگیری ماشین ‏❯ هوش مصنوعی:  1️⃣ @Ai_Tv 2⃣ @HomeAI 3⃣ @eventai 4⃣ @Ai_NewsTv ‏❯ علم داده : 1️⃣  @DataPlusScience ‏❯ یادگیری ماشین : 1️⃣@Machine_learn ‏❯ یادگیری عمیق  : 1️⃣ @cvision ‏❯ آموزش پایتون: 1⃣ @raspberry_python 2⃣ @Python4all_pro ‏❯ منابع و کتابهای پایتون ، علم داده و یادگیری ماشین : 1⃣ @programmingPDF

Repost from Papers
Title: CNN-based Labelled Crack Detection for Image Annotation     Short title: Machine Learning, Convolutional Neural Networks (CNNs),Image Annotation, Crack Detection   Abstract Numerous image processing techniques (IPTs) have been employed to detect crack defects, offering an alternative to human-conducted onsite inspections. These IPTs manipulate images to extract defect features, particularly cracks in surfaces produced through Additive Manufacturing (AM). This article presents a vision-based approach that utilizes deep convolutional neural networks (CNNs) for crack detection in AM surfaces. Traditional image processing techniques face challenges with diverse real-world scenarios and varying crack types. To overcome these challenges, our proposed method leverages CNNs, eliminating the need for extensive feature extraction. Annotation for CNN training is facilitated by LabelImg without the requirement for additional IPTs. The trained CNN, enhanced by OpenCV preprocessing techniques, achieves an outstanding 99.54% accuracy on a dataset of 14,982 annotated images with resolutions of 1536 × 1103 pixels. Evaluation metrics exceeding 96% precision, 98% recall, and a 97% F1-score highlight the precision and effectiveness of the entire process.   Field Mechanical Engineering, Material Engineering, Industrial Engineering, Computer Engineering, Civil Engineering, Aerospace Engineering Journal 1. Optics and Laser Technology (8.3 CiteScore, 5.0 Impact Factor) 2. Optics and Lasers in Engineering (9.3 CiteScore, 4.6 Impact Factor) 3. The International Journal of Advanced Manufacturing Technology (3.4 CiteScore, 3.226 Impact Factor)   با عرض سلام نفرات ١ تا ٤ اين مقاله جهت ارسال به ژورنال خالي مي باشد. دوستاني كه نياز دارند به ايدي بنده پيام بدن. @Raminmousa @paper4money

Title: CNN-based Labelled Crack Detection for Image Annotation     Short title: Machine Learning, Convolutional Neural Networks (CNNs),Image Annotation, Crack Detection   Abstract Numerous image processing techniques (IPTs) have been employed to detect crack defects, offering an alternative to human-conducted onsite inspections. These IPTs manipulate images to extract defect features, particularly cracks in surfaces produced through Additive Manufacturing (AM). This article presents a vision-based approach that utilizes deep convolutional neural networks (CNNs) for crack detection in AM surfaces. Traditional image processing techniques face challenges with diverse real-world scenarios and varying crack types. To overcome these challenges, our proposed method leverages CNNs, eliminating the need for extensive feature extraction. Annotation for CNN training is facilitated by LabelImg without the requirement for additional IPTs. The trained CNN, enhanced by OpenCV preprocessing techniques, achieves an outstanding 99.54% accuracy on a dataset of 14,982 annotated images with resolutions of 1536 × 1103 pixels. Evaluation metrics exceeding 96% precision, 98% recall, and a 97% F1-score highlight the precision and effectiveness of the entire process.   Field Mechanical Engineering, Material Engineering, Industrial Engineering, Computer Engineering, Civil Engineering, Aerospace Engineering Journal 1. Optics and Laser Technology (8.3 CiteScore, 5.0 Impact Factor) 2. Optics and Lasers in Engineering (9.3 CiteScore, 4.6 Impact Factor) 3. The International Journal of Advanced Manufacturing Technology (3.4 CiteScore, 3.226 Impact Factor)   با عرض سلام نفرات ١ تا ٤ اين مقاله جهت ارسال به ژورنال خالي مي باشد. دوستاني كه نياز دارند به ايدي بنده پيام بدن. @Raminmousa

با عرض سلام دو پكيچ يادگيري ماشين و يادگيري عميق با تخفيف ٧٥٪؜ براي دوستان در نظر گرفتيم. دوستاني كه نياز دارند به ايدي بنده پيام بدن. @Raminmousa

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تكبيرات_العيد_اسلام_صبحي_عيد_مبارك_medium.mp31.62 MB

القارئ: إسلام صبحي تكبيرات العيد 🌹 @islam_sobhy

🧬 Evolving New Foundation Models: Unleashing the Power of Automating Model Development ▪Blog: https://sakana.ai/evolutionary
🧬 Evolving New Foundation Models: Unleashing the Power of Automating Model Development ▪Blog: https://sakana.ai/evolutionary-model-merge/ ▪Paper: https://arxiv.org/abs/2403.13187 @Machine_learn

با عرض سلام به خاطر ماه مبارك رمضا دو پكيچ يادگيري ماشين و يادگيري عميق با تخفيف ٧٥٪؜ براي دوستان در نظر گرفتيم. دوستاني كه نياز دارند به ايدي بنده پيام بدن. @Raminmousa

🗂 بزرگترین کامیونیتی فعالان هوش‌مصنوعی و یادگیری ماشین ایران در ابن کانالها مطالب آموزشی در خصوص ماشین و دیپ لرنینگ، دیتا سا
🗂 بزرگترین کامیونیتی فعالان هوش‌مصنوعی و یادگیری ماشین ایران در ابن کانالها مطالب آموزشی در خصوص ماشین و دیپ لرنینگ، دیتا ساینس، هوش‌مصنوعی، مدل های زیانی ، چت بات ها ، پرامپت نویسی و .... هر آنچه نیاز دارید ارائه می شود 📥 با زدن دکمه Add این کامیونیتی تخصصی را به تلگرامتان اضافه کنید 👇👇👇👇 https://t.me/addlist/uiFaC-MW4yllMTRk

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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/DataScienceM