🖥 Awesome LLM Strawberry (OpenAI o1)



Github

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The Little Book of #DeepLearning.pdf
4.4 MB
Title: The Little Book of Deep Learning
Author: François Fleuret
Tags: #Deep_learning

@Machine_learn
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Forecasting in Economics, Business, Finance and Beyond

📚 Book

@Machine_learn
DEEP LEARNING INTERVIEWS.pdf
7 MB
Title: DEEP LEARNING INTERVIEWS
Author: SHLOMO KASHANI
Tags: Deep_learning

@Machine_learn
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Understanding_LLMs_A_Comprehensive_Overview_from_Training_to_Inference.pdf
991.8 KB
Paper: Understanding LLMs: A Comprehensive Overview from Training to Inference

Tags: LLMs

@Machine_learn
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Forwarded from Papers
با عرض سلام
مقاله ی زیر تماما نگارش شده و اماده سابمیت از دوستان کسی خواست نفرات ۳ و ۴ اش خالی هست.

IEEE Geoscience and Remote Sensing Letter
Impact factor 4
CiteScore 7.6
------------------------------
Title: Enhanced-HisSegNet: An Enhanced Histagram Layered Segmentation Network for SAR Image-based Flood Segmentation
------------------------------
Abstract:
Floods are among the most frequent natural disasters, causing loss of life and significant economic and environmental damage, with direct impacts on agriculture, urban infrastructure, and transportation networks. Therefore, it is crucial to accurately and efficiently identify flooded areas in the aftermath of such events. Synthetic Aperture Radar (SAR) imagery plays a vital role in this process, as water surfaces reflect less microwave energy compared to land due to their smooth texture and low surface roughness. In this study, we present a multimodal fusion strategy that enhances the existing model by Turkmenli et al. [1] through the integration of fine-tuned histograms and Deep Neural Networks (DNNs) for improved flood mapping. Specifically, we introduce fine-tuned histogram extraction layers designed for SAR data, which are integrated into Deep Segmentation Neural Networks (DSNNs). The model was tested on two real SAR datasets, with cross-dataset validation using an external cohort, representing a second innovation in our approach. Experimental results demonstrate that our model, with fine-tuned histogram layers, outperforms previous approaches by up to 4% in intersection over union (IoU) and provides a comprehensive evaluation through metrics such as Precision, Recall, Average Precision (AP), Mean Average Precision (mAP), False Positive Rate (FPR), and Mean Average Recall (mAR). Importantly, these improvements come with minimal additional learnable parameters. The code for this work will be made available at https://github.com/Mohsena1990/Enhanced-HistSegNet

@Raminmousa
@Machine_learn
@Paper4monry
⚡️ Most of the models from Mistral are now available for free via the API

What is this attraction of unprecedented generosity? Your queries will probably be used to train new models (although this is not accurate).

https://docs.mistral.ai/getting-started/models/

@Machine_learn
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Mathematical theory of deep learning

📚 Book

@Machine_learn
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Algorithm Design and Analysis

📓 Book

@Machine_learn
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🌟 GRIN MoE: Mixture-of-Experts от Microsoft.


🟢total parameters: 16x3.8B;
🟢active parameters: 6.6B;
🟢context length: 4096;
🟢number of embeddings 4096;
🟢number of layers: 32;
https://www.tg-me.com/deep_learning_proj


🟡Arxiv
🟡Demo
🖥Github

@Machine_learn
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LLaMA-Omni: Seamless Speech Interaction with Large Language Models

Paper: https://arxiv.org/pdf/2409.06666v1.pdf

Code: https://github.com/ictnlp/llama-omni

@Machine_learn
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با عرض سلام
مقاله ی زیر تماما نگارش شده و اماده سابمیت از دوستان کسی خواست نفر ۴ اش خالی هست.

IEEE Geoscience and Remote Sensing Letter
Impact factor 4
CiteScore 7.6
------------------------------
Title: Enhanced-HisSegNet: An Enhanced Histagram Layered Segmentation Network for SAR Image-based Flood Segmentation
------------------------------
Abstract:
Floods are among the most frequent natural disasters, causing loss of life and significant economic and environmental damage, with direct impacts on agriculture, urban infrastructure, and transportation networks. Therefore, it is crucial to accurately and efficiently identify flooded areas in the aftermath of such events. Synthetic Aperture Radar (SAR) imagery plays a vital role in this process, as water surfaces reflect less microwave energy compared to land due to their smooth texture and low surface roughness. In this study, we present a multimodal fusion strategy that enhances the existing model by Turkmenli et al. [1] through the integration of fine-tuned histograms and Deep Neural Networks (DNNs) for improved flood mapping. Specifically, we introduce fine-tuned histogram extraction layers designed for SAR data, which are integrated into Deep Segmentation Neural Networks (DSNNs). The model was tested on two real SAR datasets, with cross-dataset validation using an external cohort, representing a second innovation in our approach. Experimental results demonstrate that our model, with fine-tuned histogram layers, outperforms previous approaches by up to 4% in intersection over union (IoU) and provides a comprehensive evaluation through metrics such as Precision, Recall, Average Precision (AP), Mean Average Precision (mAP), False Positive Rate (FPR), and Mean Average Recall (mAR). Importantly, these improvements come with minimal additional learnable parameters. The code for this work will be made available at https://github.com/Mohsena1990/Enhanced-HistSegNet

@Raminmousa
@Machine_learn
@Paper4monry
Python for OSINT. 21-day course for beginners

📚 Book

@Machine_learn
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Fundamentals of Data Engineering

📌 Book
📌Download

@Machine_learn
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MiniCPM-V

MiniCPM-V 2.6: A GPT-4V Level MLLM for Single Image, Multi Image and Video on Your Phone
                                                                   
Creator: OpenBMB
Stars ⭐️: 11.4k
Forked By: 798
GitHub Repo:
https://github.com/OpenBMB/MiniCPM-V

       
Join https://www.tg-me.com/deep_learning_proj

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📃Large Language Models on Graphs: A Comprehensive Survey


📎 Study paper

@Machine_learn
ban.pdf
1.4 MB
‏INDCAPS: The IndRNN Capsule Approach for Persian Multi-
‏Domain Sentiment Analysis

یکی از بحث های که این روزها خیلی ترند هستش بحث مربوط به طبقه بندی احساسات چندجمله ای می باشد. در این مقاله ما یک مجموعه داده که روی داده های دیجی کالا می باشند رو جمع اوری کردیم. جمع اوری این داده ها ۳ ماه طول کشیده و این ریپورت گزارش مربوط به این داده هاست.

@Raminmousa
@Machine_learn
2024/09/27 22:31:33
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