js-route-optimization-app
Solve vehicle routing problems with Google Optimization AI Cloud Fleet Routing
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A web application to explore the capabilities of Google Maps Platform Route Optimization (GMPRO) for solving vehicle routing problems. Users can interact with the GMPRO data model through forms, tables, and maps to construct scenarios, tune constraints, and visualize routes. The application is intended for exploration purposes only and should not be deployed in production. Users are responsible for billing related to cloud resources and API usage. It is important to understand the pricing models for Maps Platform and Route Optimization before using the application.
README:
A web application to explore the capabilities of Google Maps Platform Route Optimization (GMPRO).
GMPRO solves vehicle routing problems (VRPs). Given a set of shipments with locations, a set of vehicles to carry out deliveries, costs and additional constraints; GMPRO works to find an optimal solution with efficient routes where every shipment is delivered by a vehicle, with all constraints met and minimal cost.
This application presents the properties of the GMPRO data model as interactive forms, tables, and maps. Users may find it a helpful way to familiarize themselves with the data model and functions of the API. Before writing any code, use the application to construct GMPRO scenarios, tune constraint parameters, visualize routes, and more.
https://developers.google.com/maps/documentation/route-optimization
The application is intended to be used as an exploratory tool and should not be deployed in any production critical path. Google provides this application for users to try out the API and understand how to model their use cases in GMPRO. But customers should implement their own solutions to integrate Route Optimization into their business processes.
The resources and API usage generated by the application are billed to the project owner. Fleet Routing App is not free to use. Customers can expect ongoing charges related to cloud resources (compute, networking, storage, etc.), along with usage-based charges for the Maps Platform APIs and Route Optimization. When running locally for development, the application will still incur usage-based charges for Maps and GMPRO.
In order to deploy the application to a project, the project must be linked to a valid Google Cloud Billing Account. The customer is responsible for all charges accrued on the account.
⚠️ The application and Route Optimization perform several kinds of batch operations. This means it can be easy to generate a high volume of usage in a short period of time, especially for large scenarios with many shipments. Familiarize yourself with the pricing models for Maps Platform and Route Optimization before using the application and routinely monitor the charges on your billing account.Keep scenarios small to begin with and get comfortable with the billing model before attempting to solve large scenarios which may be expensive.
Refer to the following pricing guides for Cloud, Maps, and GMPRO for detailed costs:
⚠️ Google Cloud and Google Maps Platform offer "getting started" and "free tier" credits that may cover a small amount of usage for free. However, as mentioned in the previous section, large scenarios can generate a lot of spend in a short period of time. If you are not careful, it is possible to use up all of your credits with just a few large scenarios.
Code is licensed under an the Apache 2.0 license, see LICENSE for details.
The application is subject the following terms of use:
- Google Cloud Terms of Use
- Google Maps Platform Terms of Use
- Google Cloud Optimization API service-specific terms
- Google OAuth 2.0 Policies
To deploy a containerized instance of the application from Google Artifact Registry, follow the steps in the project setup and deployment guides:
-
Project Setup
Create and configure a Google Cloud project with the prerequisites to deploy Fleet Routing App. -
Deployment Guide
Deploy an instance of Fleet Routing App into your Google Cloud project.
To run a local instance of the application on your machine, follow the steps in the development guide:
-
Development Guide
Run Fleet Routing App in your local Node.js environment.
Instructions for how to use the application are available in the User Guide.
This guide can also be accessed by clicking the "app help docs" link on the application's landing page or the "❔ Help" button in the lower-left corner of the main application window.
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