dimod

Model sampler

Provides an API for sampling quadratic and higher-order models used in optimization algorithms

A shared API for QUBO/Ising samplers.

GitHub

124 stars
21 watching
81 forks
Language: Python
last commit: about 1 month ago
Linked from 1 awesome list


Backlinks from these awesome lists:

Related projects:

Repository Description Stars
dwavesystems/dwave-system An API that simplifies the use of the D-Wave quantum computing system in software applications. 90
dwavesystems/dwave-neal An implementation of a simulated annealing algorithm for approximate Boltzmann sampling or heuristic optimization. 51
dwavesystems/dwavebinarycsp A library to construct and solve binary quadratic models from constraint satisfaction problems. 21
dwavesystems/dwave-cloud-client Provides a minimal Python interface to interact with D-Wave Systems' quantum annealing resources 59
dwavesystems/penaltymodel A library for mapping constraints to low-dimensional optimization problems 19
l3030/delta_fl An implementation of an unbiased Federated Learning sampling scheme designed to improve model convergence and reduce variance in client participation. 5
deltares/imod-python A toolset for working with MODFLOW groundwater models in Python 20
compwa/tensorwaves A Python package for optimizing mathematical models to data samples using multiple computational back-ends. 10
dwavesystems/chimera-embedding A collection of algorithms for generating native-structured embeddings in D-Wave's quantum annealing software. 28
dwavesystems/dwave-ocean-sdk An SDK that provides tools for interacting with D-Wave's Ocean quantum computing platform 412
yfzhang114/slime Develops large multimodal models for high-resolution understanding and analysis of text, images, and other data types. 137
btschwertfeger/python-cmethods A collection of bias correction techniques for climate data analysis 60
data2dynamics/d2d A software framework for parameter estimation and model calibration in dynamical systems 57
microsoft/msrflute A platform for conducting high-performance federated learning simulations in Python. 185
ebhy/budgetml Simplifies deployment of machine learning models to production-ready endpoints with minimal configuration and cost. 1,338