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September 21, 2025
Artificial Intelligence Computer Vision Machine Learning

NP-Hard Problems to Quantum Acceleration: Unpacking the Latest Computational Complexity Breakthroughs

Latest 50 papers on computational complexity: Sep. 21, 2025

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Kareem Darwish
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September 14, 2025
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O(1) to Linear: Unlocking New Efficiencies in AI/ML and Beyond

Latest 50 papers on computational complexity: Sep. 14, 2025

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Kareem Darwish
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September 8, 2025
Artificial Intelligence Computer Vision Machine Learning

O(1) Time Transformer Attention: Unlocking Constant-Time Performance for the Future of AI

Latest 50 papers on computational complexity: Sep. 8, 2025

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Kareem Darwish
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September 1, 2025
Artificial Intelligence Computer Vision Machine Learning

O(1) to O(L): Revolutionizing Efficiency in AI/ML with Breakthroughs in Computational Complexity

Latest 50 papers on computational complexity: Sep. 1, 2025

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Kareem Darwish
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August 25, 2025
Artificial Intelligence Computer Vision Machine Learning

O(N²log₂N): The New Frontier of Computational Efficiency in AI/ML

Latest 100 papers on computational complexity: Aug. 25, 2025

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Kareem Darwish
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August 17, 2025
Artificial Intelligence Computer Vision Machine Learning

O(N) Complexity and Beyond: A New Era of Efficient AI/ML

Latest 100 papers on computational complexity: Aug. 17, 2025

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Kareem Darwish
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August 11, 2025
Artificial Intelligence Computer Vision Machine Learning

O(N) Complexity and Beyond: Redefining Efficiency in AI/ML

Latest 100 papers on computational complexity: Aug. 11, 2025

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Kareem Darwish
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August 3, 2025
Artificial Intelligence Computer Vision Machine Learning

Transformer Architectures: Reshaping AI Across Modalities and Tasks — Aug. 3, 2025

Transformer Architectures: Reshaping AI Across Modalities and Tasks

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Kareem Darwish
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August 3, 2025
Artificial Intelligence Computer Vision Machine Learning

O(N log N) Breakthroughs: Reshaping Efficiency in AI and Beyond — Aug. 3, 2025

O(N log N) Breakthroughs: Reshaping Efficiency in AI and Beyond

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Kareem Darwish
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July 28, 2025
Artificial Intelligence Computer Vision Machine Learning

Unlocking Efficiency: How O(N) and O(N log N) Breakthroughs are Reshaping AI/ML

Dive into the latest AI/ML research breakthroughs that are dramatically reducing computational complexity, enabling faster,…

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Kareem Darwish
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Summary:

  • 🚀 New paper: A-SEA3L-QA introduces a self-evolving adversarial workflow for Arabic long-context QA generation. It leverages multiple LVLMs in an end-to-end, automated pipeline to improve performance without human intervention. https://arxiv.org/pdf/2509.02864″
  • 💡 Key insight: The system enables continuous learning by iteratively refining outputs and enhancing question difficulty. This approach significantly boosts long-context comprehension capabilities of Arabic LVLMs.
  • 🤖 A-SEA3L-QA also provides a large-scale benchmark (AraLongBench) to evaluate Arabic QA models, exposing weaknesses in current systems. This is a major step forward for low-resource language NLP.

Resources:

AraLongBench (benchmark dataset)

Code:

https://github.com/wangk0b/Self_Improving_ARA_LONG_Doc.git

Link:

https://arxiv.org/pdf/2509.02864