An end-to-end framework for mixed-integer optimization with data-driven learned constraints.

Overview

OptiCL

OptiCL is an end-to-end framework for mixed-integer optimization (MIO) with data-driven learned constraints. We address a problem setting in which a practitioner wishes to optimize decisions according to some objective and constraints, but that we have no known functions relating our decisions to the outcomes of interest. We propose to learn predictive models for these outcomes using machine learning, and to subsequently optimize decisions by embedding the learned models in a larger MIO formulation.

The framework and full methodology are detailed in our manuscript, Mixed-Integer Optimization with Constraint Learning.

How to use OptiCL

You can install the OptiCL package locally by cloning the repository and running pip install . within the home directory of the repo. This will allow you to load opticl in Python; see the example notebooks for specific usage of the functions.

The OptiCL pipeline

Our pipeline requires two inputs from a user:

  • Training data, with features classified as contextual variables, decisions, and outcomes.
  • An initial conceptual model, which is defined by specifying the decision variables and any domain-driven fixed constraints or deterministic objective terms.

Given these inputs, we implement a pipeline that:

  1. Learns predictive models for the outcomes of interest by using a moel training and selection pipeline with cross-validation.
  2. Efficiently charactertizes the feasible decision space, or "trust region," using the convex hull of the observed data.
  3. Embeds the learned models and trust region into a MIO formulation, which can then be solved using a Pyomo-supported MIO solver (e.g., Gurobi).

OptiCL requires no manual specification of a trained ML model, although the end-user can optionally restrict to a subset of model types to be considered in the selection pipeline. Furthermore, we expose the underlying trained models within the pipeline, providing transparency and allowing for the predictive models to be externally evaluated.

Examples

We illustrate the full OptiCL pipeline in three notebooks:

  • A case study on food basket optimization for the World Food Programme (notebooks/WFP/The Palatable Diet Problem.ipynb): This notebook presents a simplified version of the case study in the manuscript. It shows how to train and select models for a single learned outcome, define a conceptual model with a known objective and constraints, and solve the MIO with an additional learned constraint.
  • A general pipeline overview (notebooks/Pipeline/Model_embedding.ipynb): This notebook demonstrates the general features of the pipleine, including the procedure for training and embedding models for multiple outcomes, the specification of each outcome as either a constraint or objective term, and the incorporation of contextual features and domain-driven constraints.
  • Model verification (notebooks/Pipeline/Model_Verification_Regression.ipynb, notebooks/Pipeline/Model_Verification_Classification.ipynb): These notebooks shows the training and embedding of a single model and compares the sklearn predictions to the MIO predictions to verify the MIO embeddings. The classification notebook also provides details on how we linearize constraints for the binary classification setting.

The package currently fully supports model training and embedding for continuous outcomes across all ML methods, as demonstrated in the example notebooks. Binary classification is fully supported for learned constraints. Multi-class classification support is in development.

Citation

Our software can be cited as:

  @misc{OptiCL,
    author = "Donato Maragno and Holly Wiberg",
    title = "OptiCL: Mixed-integer optimization with constraint learning",
    year = 2021,
    url = "https://github.com/hwiberg/OptiCL/"
  }

Get in touch!

Our package is under active development. We welcome any questions or suggestions. Please submit an issue on Github, or reach us at [email protected] and [email protected].

Owner
Holly Wiberg
Holly Wiberg
Learning Dense Representations of Phrases at Scale (Lee et al., 2020)

DensePhrases DensePhrases provides answers to your natural language questions from the entire Wikipedia in real-time. While it efficiently searches th

Princeton Natural Language Processing 540 Dec 30, 2022
U-Net for GBM

My Final Year Project(FYP) In National University of Singapore(NUS) You need Pytorch(stable 1.9.1) Both cuda version and cpu version are OK File Str

PinkR1ver 1 Oct 27, 2021
A GUI to automatically create a TOPAS-readable MLC simulation file

Python script to create a TOPAS-readable simulation file descriring a Multi-Leaf-Collimator. Builds the MLC using the data from a 3D .stl file.

Sebastian Schäfer 0 Jun 19, 2022
End-to-end face detection, cropping, norm estimation, and landmark detection in a single onnx model

onnx-facial-lmk-detector End-to-end face detection, cropping, norm estimation, and landmark detection in a single onnx model, model.onnx. Demo You can

atksh 42 Dec 30, 2022
A visualization tool to show a TensorFlow's graph like TensorBoard

tfgraphviz tfgraphviz is a module to visualize a TensorFlow's data flow graph like TensorBoard using Graphviz. tfgraphviz enables to provide a visuali

44 Nov 09, 2022
这是一个yolox-keras的源码,可以用于训练自己的模型。

YOLOX:You Only Look Once目标检测模型在Keras当中的实现 目录 性能情况 Performance 实现的内容 Achievement 所需环境 Environment 小技巧的设置 TricksSet 文件下载 Download 训练步骤 How2train 预测步骤 Ho

Bubbliiiing 64 Nov 10, 2022
Deep Learning for Time Series Forecasting.

nixtlats:Deep Learning for Time Series Forecasting [nikstla] (noun, nahuatl) Period of time. State-of-the-art time series forecasting for pytorch. Nix

Nixtla 5 Dec 06, 2022
CZU-MHAD: A multimodal dataset for human action recognition utilizing a depth camera and 10 wearable inertial sensors

CZU-MHAD: A multimodal dataset for human action recognition utilizing a depth camera and 10 wearable inertial sensors   In order to facilitate the res

yujmo 11 Dec 12, 2022
Deep learning models for change detection of remote sensing images

Change Detection Models (Remote Sensing) Python library with Neural Networks for Change Detection based on PyTorch. ⚡ ⚡ ⚡ I am trying to build this pr

Kaiyu Li 176 Dec 24, 2022
Code for "Human Pose Regression with Residual Log-likelihood Estimation", ICCV 2021 Oral

Human Pose Regression with Residual Log-likelihood Estimation [Paper] [arXiv] [Project Page] Human Pose Regression with Residual Log-likelihood Estima

JeffLi 347 Dec 24, 2022
A High-Quality Real Time Upscaler for Anime Video

Anime4K Anime4K is a set of open-source, high-quality real-time anime upscaling/denoising algorithms that can be implemented in any programming langua

15.7k Jan 06, 2023
Hidden-Fold Networks (HFN): Random Recurrent Residuals Using Sparse Supermasks

Hidden-Fold Networks (HFN): Random Recurrent Residuals Using Sparse Supermasks by Ángel López García-Arias, Masanori Hashimoto, Masato Motomura, and J

Ángel López García-Arias 4 May 19, 2022
Cave Generation using metaballs in Blender. Originally created by sdfgeoff, Edited by Myself (Archie Jaskowicz).

Blender-Cave-Generation Cave Generation using metaballs in Blender. Originally created by sdfgeoff, Edited by Myself (Archie Jaskowicz). Installation

2 Dec 28, 2022
The devkit of the nuPlan dataset.

The devkit of the nuPlan dataset.

Motional 264 Jan 03, 2023
A real-time speech emotion recognition application using Scikit-learn and gradio

Speech-Emotion-Recognition-App A real-time speech emotion recognition application using Scikit-learn and gradio. Requirements librosa==0.6.3 numpy sou

Son Tran 6 Oct 04, 2022
Recurrent Variational Autoencoder that generates sequential data implemented with pytorch

Pytorch Recurrent Variational Autoencoder Model: This is the implementation of Samuel Bowman's Generating Sentences from a Continuous Space with Kim's

Daniil Gavrilov 347 Nov 14, 2022
Easily pull telemetry data and create beautiful visualizations for analysis.

This repository is a work in progress. Anything and everything is subject to change. Porpo Table of Contents Porpo Table of Contents General Informati

Ryan Dawes 33 Nov 30, 2022
Official Pytorch implementation of "Learning to Estimate Robust 3D Human Mesh from In-the-Wild Crowded Scenes", CVPR 2022

Learning to Estimate Robust 3D Human Mesh from In-the-Wild Crowded Scenes / 3DCrowdNet News 💪 3DCrowdNet achieves the state-of-the-art accuracy on 3D

Hongsuk Choi 113 Dec 21, 2022
ICLR 2021: Pre-Training for Context Representation in Conversational Semantic Parsing

SCoRe: Pre-Training for Context Representation in Conversational Semantic Parsing This repository contains code for the ICLR 2021 paper "SCoRE: Pre-Tr

Microsoft 28 Oct 02, 2022
Neural-net-from-scratch - A simple Neural Network from scratch in Python using the Pymathrix library

A Simple Neural Network from scratch A Simple Neural Network from scratch in Pyt

Youssef Chafiqui 2 Jan 07, 2022