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Princeton University
- Princeton, NJ, USA
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20:05
(UTC -12:00) - https://scholar.google.com/citations?user=R6fo6_oAAAAJ&hl=en
- https://orcid.org/0000-0002-8916-5076
- @SamChakrabarti
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Home for cuQuantum Python & NVIDIA cuQuantum SDK C++ samples
Code for ACOPF mathematical programming formulations
[ARCHIVED] A university quantum algorithms/computation course supplement based on Qiskit
MDPs and POMDPs in Julia - An interface for defining, solving, and simulating fully and partially observable Markov decision processes on discrete and continuous spaces.
Reliability Test System - Grid Modernization Lab Consortium
Quantalogic ReAct Agent - Coding Agent Framework - Gives a ⭐️ if you like the project
JSON schema for the DataModel used in PowerSystemsInvestmentsPortfolios
Schema for the SQL database for Sienna Applications
A collection of dry-run visualizations of Data Structures and Algorithms (DSA) problems using Manim. This repository focuses on breaking down complex DSA problems into easy-to-understand animations…
A community-maintained Python framework for creating mathematical animations.
jerrypotts / GenX.jl
Forked from GenXProject/GenX.jlGenX: a configurable power system capacity expansion model for studying low-carbon energy futures. More details at : https://genx.mit.edu
Julia package to simulate pulse-level variational quantum algorithms for locating eigenstates of Hermitian observables.
Solving Quantum Statistical Mechanics with Variational Autoregressive Networks and Quantum Circuits
A fast, flexible package for simulating the Quantum Alternating Operator Ansatz
Julia package to automatically learn QUBO matrices from optimisation constraints
🔵 Interface and drivers for integrating Solvers and Samplers with the JuMP/MOI ecosystem
🧬 Tools for Quadratic Unconstrained Binary Optimization models in Julia
A Julia Ecosystem for Quadratic Unconstrained Binary Optimization
A game theoretic approach to explain the output of any machine learning model.
KaHyPar (Karlsruhe Hypergraph Partitioning) is a multilevel hypergraph partitioning framework providing direct k-way and recursive bisection based partitioning algorithms that compute solutions of …