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#

adaptive-algorithms

Here are 8 public repositories matching this topic...

An algorithm that implements intelligence based on a Method pool (a collection containing multiple types of functions). 一种基于方法池(包含多种类型的函数的集合)实现智能的算法

  • UpdatedJul 14, 2025
  • Python

An emotion-driven optimizer that feels loss and navigates accordingly.

  • UpdatedJul 18, 2025
  • Python

This repository contains the implementation of an enhanced NSGA-II algorithm for solving the Flexible Job Shop Scheduling Problem (FJSP), focusing on multi-objective optimization. Developed as part of the Bio-Inspired Artificial Intelligence course project at the University of Trento.

  • UpdatedJul 13, 2025
  • Python

Comprehensive analysis of Adaptive PSO vs Standard PSO on CEC2017 benchmarks. APSO demonstrates 15-40% better solution quality and 20-60% faster convergence across 30 test functions (10-100 dimensions). Foundation for real-world optimization applications.

  • UpdatedJun 21, 2025
  • Jupyter Notebook

OGSim is a modular Go-based framework for simulating and benchmarking container scheduling strategies using both real Docker and simulated environments.

  • UpdatedJun 17, 2025
  • Go

Alpha Drift is an experimental platform for developing, testing, and analyzing advanced AI-driven decision-making algorithms, with a focus on adaptive learning, real-time data processing, and web3 trading automation.

  • UpdatedMay 14, 2025
  • TypeScript

A non-standard, fractal-inspired sorting algorithm with adaptive multi-pivot partitioning and k-way heap merging. Achieves near O(n log log n) performance in ideal cases.

  • UpdatedMar 20, 2025
  • HTML

This protocol defines a meta-cognitive structure enabling systems to monitor, evaluate, and refine their own learning processes. It enhances adaptability and decision accuracy in AI, particularly in contexts requiring self-assessment and feedback loops. 本プロトコルは、システムが自身の学習過程を監視・評価・改善できるメタ認知的構造を定義します。自己評価とフィードバックループを要する環境において、AIの適応性と判断精度を向上させます。

  • UpdatedJun 24, 2025

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