Forwarded from ENG. Hussein Sheikho
This channels is for Programmers, Coders, Software Engineers.
0οΈβ£ Python
1οΈβ£ Data Science
2οΈβ£ Machine Learning
3οΈβ£ Data Visualization
4οΈβ£ Artificial Intelligence
5οΈβ£ Data Analysis
6οΈβ£ Statistics
7οΈβ£ Deep Learning
8οΈβ£ programming Languages
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https://t.me/addlist/8_rRW2scgfRhOTc0
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https://t.me/codeprogrammer
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https://t.me/datasets1/668
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π4π₯°2π₯1
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https://github.com/rehabaam/ds_covid19_project
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You won't miss any cyber news with us.
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You won't miss any cyber news with us.
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βοΈ Supports 6 Modalities:
Interestingly, only some modalities had labels, yet ImageBind learned to align them through self-supervised learning.
..No need for paired data (e.g., images and audio donβt have to be aligned)..Leverages contrastive learning for learning joint embedding space
..Competes with CLIP and AudioCLIP, but with better accuracy and coverage..Enables zero-shot retrieval (e.g., finding relevant video using just a sentence)
#ImageBind #MultimodalAI #MetaAI #DeepLearning #SelfSupervised
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Itβs truly fascinating β definitely worth diving deeper into and working on!
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Cupcake Counting Project on the Production Line Using Ultralytics YOLO π§
π With the rapid growth of the computer vision market in the bakery industryβprojected to reach $23.42 billion by 2025βthe practical applications of this technology are receiving increasing attention. One of the most important and common applications is the automated counting of bakery products on production lines.
In this project, the development team provided a model for cupcake detection, and Ultralytics solutions were used to implement the counting process. The only necessary step for deployment was updating the region coordinates for detection, which was successfully accomplished.
Advantages:
β
Instantly detects and counts cupcakes as they move.
β
Handles high-speed conveyor belt production effortlessly.
π Complete code β‘οΈhttps://lnkd.in/d-4Zk2Q5
π By: https://t.me/DataScienceN
In this project, the development team provided a model for cupcake detection, and Ultralytics solutions were used to implement the counting process. The only necessary step for deployment was updating the region coordinates for detection, which was successfully accomplished.
Advantages:
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Ready for the most powerful foundation model for medical images/videos?
π¨ Just dropped: MedSAM2
The next-gen foundation model for 3D medical image & video segmentation β built on top of SAM 2.1.
Why it matters:
β’ Trained on 455K+ 3D imageβmask pairs & 76K+ annotated video frames
β’ >85% reduction in human annotation costs (validated in 3 studies)
β’ Fast, accurate, and generalizes across organs, modalities, and pathologies
Big impact:
We used MedSAM2 to create 3 massive datasets:
β’ 5,000 CT lesions
β’ 3,984 liver MRI lesions
β’ 251,550 echo video frames
Plug & play:
Deployable in:
β 3D Slicer
β JupyterLab
β Gradio
β Google Colab
π Project site: https://medsam2.github.io/
π Paper: https://lnkd.in/gbXu6D64
π By: https://t.me/DataScienceN
The next-gen foundation model for 3D medical image & video segmentation β built on top of SAM 2.1.
Why it matters:
β’ Trained on 455K+ 3D imageβmask pairs & 76K+ annotated video frames
β’ >85% reduction in human annotation costs (validated in 3 studies)
β’ Fast, accurate, and generalizes across organs, modalities, and pathologies
Big impact:
We used MedSAM2 to create 3 massive datasets:
β’ 5,000 CT lesions
β’ 3,984 liver MRI lesions
β’ 251,550 echo video frames
Plug & play:
Deployable in:
β 3D Slicer
β JupyterLab
β Gradio
β Google Colab
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π6π₯°2
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π§ Inference using Microsoft Florence-2 with the Ultralytics Python Package π
β Object Detection:
The model performs exceptionally well in detecting various objects and demonstrates impressive zero-shot capabilities. This means it can identify objects without needing specific training on a particular dataset.
πΉ Use case: It is highly suitable for auto-annotating datasets in object detection format.
β Accuracy:
The model performs well in terms of accuracy,
but πΊ it requires significant processing time, making it unsuitable for real-time applications.
β Object Detection:
The model performs exceptionally well in detecting various objects and demonstrates impressive zero-shot capabilities. This means it can identify objects without needing specific training on a particular dataset.
πΉ Use case: It is highly suitable for auto-annotating datasets in object detection format.
β Accuracy:
The model performs well in terms of accuracy,
but πΊ it requires significant processing time, making it unsuitable for real-time applications.
β€1