Awesome news for beginners in #MachineLearning and #DeepLearning
We've all come to love Dr. Strang's Linear Algebra Lectures from MIT. But his books are sometimes expensive for students and also not available.
Now Stanford University changed all that with their free book they released called "Introduction to Applied Linear Algebra" written by Stephen Boyd and Lieven Vandenberghe
Go get them all here on my #Github page, I will create some beginners lectures and #Python & #Julia notebooks there soon.
Root / main folder: https://lnkd.in/de8uepd
1. The 473 page book itself: https://bit.ly/2tjFNdA
2. Lovely Julia language companion book worth 170 pages! : https://bit.ly/2BxYGy0
3. Exercises book: https://bit.ly/2RZoVTf
4, Course lecture slides: https://bit.ly/2N9TZPC
#beginner #datascience #learning #machinelearning
@kdnuggets @datasciencechats
Source: Linkedin - Tarry Singh
We've all come to love Dr. Strang's Linear Algebra Lectures from MIT. But his books are sometimes expensive for students and also not available.
Now Stanford University changed all that with their free book they released called "Introduction to Applied Linear Algebra" written by Stephen Boyd and Lieven Vandenberghe
Go get them all here on my #Github page, I will create some beginners lectures and #Python & #Julia notebooks there soon.
Root / main folder: https://lnkd.in/de8uepd
1. The 473 page book itself: https://bit.ly/2tjFNdA
2. Lovely Julia language companion book worth 170 pages! : https://bit.ly/2BxYGy0
3. Exercises book: https://bit.ly/2RZoVTf
4, Course lecture slides: https://bit.ly/2N9TZPC
#beginner #datascience #learning #machinelearning
@kdnuggets @datasciencechats
Source: Linkedin - Tarry Singh
lnkd.in
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ππ Magic-Me: Identity-Specific Video ππ
πhashtag#ByteDance (+UC Berkeley) unveils VCD for video-gen: with just a few images of a specific identity it can generate temporal consistent videos aligned with the given prompt. Impressive results, source code under Apache 2.0 π
ππ’π π‘π₯π’π π‘ππ¬:
β Novel Video Custom Diffusion (VCD) framework
β High-Quality ID-specific videos generation
β Improvement in aligning IDs-images and text
β Robust 3D Gaussian Noise Prior for denoising
β Better Inter-frame correlation / video consistency
β New modules F-VCD/T-VCD for videos upscale
β New train with masked loss by prompt-to-segmentation
hashtag#artificialintelligence hashtag#machinelearning hashtag#ml hashtag#AI hashtag#deeplearning hashtag#computervision hashtag#AIwithPapers hashtag#metaverse
πChannel: @deeplearning_ai
πPaper https://arxiv.org/pdf/2402.09368.pdf
πProject https://magic-me-webpage.github.io/
πCode https://github.com/Zhen-Dong/Magic-Me
πhashtag#ByteDance (+UC Berkeley) unveils VCD for video-gen: with just a few images of a specific identity it can generate temporal consistent videos aligned with the given prompt. Impressive results, source code under Apache 2.0 π
ππ’π π‘π₯π’π π‘ππ¬:
β Novel Video Custom Diffusion (VCD) framework
β High-Quality ID-specific videos generation
β Improvement in aligning IDs-images and text
β Robust 3D Gaussian Noise Prior for denoising
β Better Inter-frame correlation / video consistency
β New modules F-VCD/T-VCD for videos upscale
β New train with masked loss by prompt-to-segmentation
hashtag#artificialintelligence hashtag#machinelearning hashtag#ml hashtag#AI hashtag#deeplearning hashtag#computervision hashtag#AIwithPapers hashtag#metaverse
πChannel: @deeplearning_ai
πPaper https://arxiv.org/pdf/2402.09368.pdf
πProject https://magic-me-webpage.github.io/
πCode https://github.com/Zhen-Dong/Magic-Me
π23β€5
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Introducing ECoDepth: The New Benchmark in Diffusive Mono-Depth
From the labs of IITD, we unveil ECoDepth - our groundbreaking SIDE model powered by a diffusion backbone and enriched with ViT embeddings. This innovation sets a new standard in single image depth estimation (SIDE), offering unprecedented accuracy and semantic understanding.
Key Features:
β Revolutionary MDE approach tailored for SIDE tasks
β Enhanced semantic context via ViT embeddings
β Superior performance in zero-shot transfer tasks
β Surpasses previous SOTA models by up to 14%
Dive into the future of depth estimation with ECoDepth. Access our source code and explore the full potential of our model.
π Read the Paper
π» Get the Code
#ArtificialIntelligence #MachineLearning #DeepLearning #ComputerVision #AIwithPapers #Metaverse
join our community:
π @deeplearning_ai
From the labs of IITD, we unveil ECoDepth - our groundbreaking SIDE model powered by a diffusion backbone and enriched with ViT embeddings. This innovation sets a new standard in single image depth estimation (SIDE), offering unprecedented accuracy and semantic understanding.
Key Features:
β Revolutionary MDE approach tailored for SIDE tasks
β Enhanced semantic context via ViT embeddings
β Superior performance in zero-shot transfer tasks
β Surpasses previous SOTA models by up to 14%
Dive into the future of depth estimation with ECoDepth. Access our source code and explore the full potential of our model.
π Read the Paper
π» Get the Code
#ArtificialIntelligence #MachineLearning #DeepLearning #ComputerVision #AIwithPapers #Metaverse
join our community:
π @deeplearning_ai
π16β€2
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Neural Bodies with Clothes: Overview
Introduction: Neural-ABC, a cutting-edge parametric model developed by the University of Science & Technology of China, innovatively represents clothed human bodies.
Key Features:
β Novel approach for modeling clothed human figures.
β Unified framework accommodating various clothing types.
β Consistent representation of both body and clothing.
β Enables seamless modification of identity, shape, clothing, and pose.
β Extensive dataset with detailed clothing information.
Explore More:
π»Project Details: Discover More
πRead the Paper: Access Here
π»Source Code: Explore on GitHub
Relevance: #artificialintelligence #machinelearning #AI #deeplearning #computervision
join our community:
π @deeplearning_ai
Introduction: Neural-ABC, a cutting-edge parametric model developed by the University of Science & Technology of China, innovatively represents clothed human bodies.
Key Features:
β Novel approach for modeling clothed human figures.
β Unified framework accommodating various clothing types.
β Consistent representation of both body and clothing.
β Enables seamless modification of identity, shape, clothing, and pose.
β Extensive dataset with detailed clothing information.
Explore More:
π»Project Details: Discover More
πRead the Paper: Access Here
π»Source Code: Explore on GitHub
Relevance: #artificialintelligence #machinelearning #AI #deeplearning #computervision
join our community:
π @deeplearning_ai
π12π₯7β€6
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π Explore SCRFD: High-Efficiency, High-Accuracy Face Detection π
Unlock next-level face detection capabilities with SCRFD β efficiency and accuracy in one solution!
π Performance at a Glance:
β Model range: SCRFD_500M to SCRFD_34G
β Accuracy up to 96.06%
β Inference as fast as 3.6 ms
π Explore more and consider starring our repo for updates:
--- GitHub Repository.
--- Paper
#AI #MachineLearning #FaceDetection #TechInnovation #DeepLearning
β https://t.iss.one/deeplearning_ai
Unlock next-level face detection capabilities with SCRFD β efficiency and accuracy in one solution!
π Performance at a Glance:
β Model range: SCRFD_500M to SCRFD_34G
β Accuracy up to 96.06%
β Inference as fast as 3.6 ms
π Explore more and consider starring our repo for updates:
--- GitHub Repository.
--- Paper
#AI #MachineLearning #FaceDetection #TechInnovation #DeepLearning
β https://t.iss.one/deeplearning_ai
π16β€5π₯1
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π Discover the Power of Fine-Grained Gaze Estimation with L2CS-Net! π
π Key Features:
β Advanced Architecture: Built using state-of-the-art neural network structures.
β Versatile Utilities: Packed with utility functions and classes for seamless integration.
β Robust Data Handling: Efficient data loading, preprocessing, and augmentation.
β Comprehensive Training & Testing: Easy-to-follow scripts for training and testing your models.
π Live Demo:
Visualize the power of L2CS-Net with your own video:
π Join Us:
Star our repo on GitHub and be part of the innovative community pushing the boundaries of gaze estimation. Your support drives us forward!
π GitHub Repository
Let's advance gaze estimation together! ππ #GazeEstimation #DeepLearning #AI #MachineLearning #ComputerVision
π Key Features:
β Advanced Architecture: Built using state-of-the-art neural network structures.
β Versatile Utilities: Packed with utility functions and classes for seamless integration.
β Robust Data Handling: Efficient data loading, preprocessing, and augmentation.
β Comprehensive Training & Testing: Easy-to-follow scripts for training and testing your models.
π Live Demo:
Visualize the power of L2CS-Net with your own video:
π Join Us:
Star our repo on GitHub and be part of the innovative community pushing the boundaries of gaze estimation. Your support drives us forward!
π GitHub Repository
Let's advance gaze estimation together! ππ #GazeEstimation #DeepLearning #AI #MachineLearning #ComputerVision
π14β€5π€©1
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π The Future of Object Detection is Here!
πAchieve state-of-the-art results with just one line of code! π₯
π₯ Live Demos & Code: GitHub Repo
π₯ Pretrained Models: Ready for downloadβplug and play!
βοΈ Support innovation! Star the repo now π GitHub Link
π’ Join our ML community: @DeepLearning_ai
#MachineLearning #AI #ObjectDetection #YOLO #OpenSource #DevCommunity #TechInnovation
πAchieve state-of-the-art results with just one line of code! π₯
π₯ Live Demos & Code: GitHub Repo
π₯ Pretrained Models: Ready for downloadβplug and play!
βοΈ Support innovation! Star the repo now π GitHub Link
π’ Join our ML community: @DeepLearning_ai
#MachineLearning #AI #ObjectDetection #YOLO #OpenSource #DevCommunity #TechInnovation
π₯9π7β€6
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π The Future of Object Detection is Here!
πAchieve state-of-the-art results with just one line of code! π₯
π₯ Live Demos & Code: GitHub Repo
π₯ Pretrained Models: Ready for downloadβplug and play!
βοΈ Support innovation! Star the repo now π GitHub Link
π’ Join our ML community: @DeepLearning_ai
#MachineLearning #AI #ObjectDetection #YOLO #OpenSource #DevCommunity #TechInnovation
πAchieve state-of-the-art results with just one line of code! π₯
π₯ Live Demos & Code: GitHub Repo
π₯ Pretrained Models: Ready for downloadβplug and play!
βοΈ Support innovation! Star the repo now π GitHub Link
π’ Join our ML community: @DeepLearning_ai
#MachineLearning #AI #ObjectDetection #YOLO #OpenSource #DevCommunity #TechInnovation
β€24π5π₯4π’3
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ReferDINO: Referring Video Object Segmentation with Visual Grounding Foundations
Source Code: Github
π’ Join our ML community: @DeepLearning_ai
#MachineLearning #AI #ObjectDetection #YOLO #OpenSource #DevCommunity #TechInnovation
Source Code: Github
π’ Join our ML community: @DeepLearning_ai
#MachineLearning #AI #ObjectDetection #YOLO #OpenSource #DevCommunity #TechInnovation
β€18π±1
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βοΈ GAUSSGYM: AN OPEN-SOURCE REAL TO-SIM FRAMEWORK FOR LEARNING LOCOMOTION FROM PIXELS π₯
Source code: https://github.com/escontra/gauss_gym
π’ Join our ML community: @DeepLearning_ai
#MachineLearning #AI #ObjectDetection #YOLO #OpenSource #DevCommunity #TechInnovation
Source code: https://github.com/escontra/gauss_gym
π’ Join our ML community: @DeepLearning_ai
#MachineLearning #AI #ObjectDetection #YOLO #OpenSource #DevCommunity #TechInnovation
β€9π7