QROA: A Black-Box Query-Response Optimization Attack on LLMs
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Updated
Aug 7, 2024 - Python
QROA: A Black-Box Query-Response Optimization Attack on LLMs
PyPop7: A Pure-Python Library for POPulation-based Black-Box Optimization (BBO), especially their *Large-Scale* versions/variants (evolutionary algorithms/swarm-based optimizers/pattern search/...). [https://pypop.rtfd.io/]
Distributed GPU-Accelerated Framework for Evolutionary Computation. Comprehensive Library of Evolutionary Algorithms & Benchmark Problems.
Derivative-Free Global Optimization Method (C++, Python binding) - Continuous, Discrete, TSP, NLS, MINLP
Python library for CMA Evolution Strategy.
Black-box optimization framework for R.
Official Implementation of InstructZero; the first framework to optimize bad prompts of ChatGPT(API LLMs) and finally obtain good prompts!
Flexible Bayesian Optimization in R
Official implementation of ICML'24 paper "Offline Multi-Objective Optimization".
Benchmark for Biophysical Sequence Optimization Algorithms
A collection and visualization of single objective black-box functions for optimization benchmarking.
Multiobjective black-box optimization using gradient-boosted trees
A derivative-free solver for general nonlinear optimization.
A black-box optimization benchmark tool
MetaBox: A Benchmark Platform for Meta-Black-Box Optimization with Reinforcement Learning (https://arxiv.org/abs/2310.08252)
Black-box adversarial attacks on deep neural networks with tensor train (TT) decomposition and PROTES optimizer.
(GECCO 2023) Natural Evolution Strategy for Mixed-Integer Black-Box Optimization
A benchmark library for Dynamic Algorithm Configuration.
Asynchronous Differential Evolution
This is the official implementation for the paper: Use Your INSTINCT: INSTruction optimization usIng Neural bandits Coupled with Transformers
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