Supply Chain

Decisiveness During Uncertainty

Optimize your supply chain planning, decision making, and operations to keep supply and demand in balance.

Supply Chain

Decisiveness During Uncertainty

Optimize your supply chain planning, decision making, and operations to keep supply and demand in balance.

Supply Chain

Decisiveness During Uncertainty

Optimize your supply chain planning, decision making, and operations to keep supply and demand in balance.

Overview

Leading companies across numerous industries use Gurobi’s mathematical optimization solver – in a wide variety of applications – to optimize their supply chain planning, decision making, and operations, and to keep supply and demand in balance.

With mathematical optimization, you can:

Attain visibility and control over your end-to-end supply chain network.

React and respond rapidly and effectively to changing conditions and disruptions across your supply chain.

Make dynamic, data-driven decisions that optimize your company’s efficiency and profitability.

Achieve your business goals by balancing cost and service-level tradeoffs – simultaneously satisfying customer demand and spurring bottom-line growth.

Transform your supply chain from a source of costs into a source of competitive advantage.


Overview

Leading companies across numerous industries use Gurobi’s mathematical optimization solver – in a wide variety of applications – to optimize their supply chain planning, decision making, and operations, and to keep supply and demand in balance.

With mathematical optimization, you can:

Attain visibility and control over your end-to-end supply chain network.

React and respond rapidly and effectively to changing conditions and disruptions across your supply chain.

Make dynamic, data-driven decisions that optimize your company’s efficiency and profitability.

Achieve your business goals by balancing cost and service-level tradeoffs – simultaneously satisfying customer demand and spurring bottom-line growth.

Transform your supply chain from a source of costs into a source of competitive advantage.


Overview

Leading companies across numerous industries use Gurobi’s mathematical optimization solver – in a wide variety of applications – to optimize their supply chain planning, decision making, and operations, and to keep supply and demand in balance.

With mathematical optimization, you can:

Attain visibility and control over your end-to-end supply chain network.

React and respond rapidly and effectively to changing conditions and disruptions across your supply chain.

Make dynamic, data-driven decisions that optimize your company’s efficiency and profitability.

Achieve your business goals by balancing cost and service-level tradeoffs – simultaneously satisfying customer demand and spurring bottom-line growth.

Transform your supply chain from a source of costs into a source of competitive advantage.


Peak Under the Hood

Dive deep into sample models, built with our Python API.

Market Sharing

In this example, we’ll show you how to solve a goal programming problem that involves allocating the retailers to two divisions of a company in order to optimize the trade-offs of several market sharing goals. You’ll learn how to create a mixed integer linear programming model of the problem using the Gurobi Python API and how to find an optimal solution to the problem using the Gurobi Optimizer.

This model is example 13 from the fifth edition of Model Building in Mathematical Programming by H. Paul Williams on pages 267-268 and 322-324. This modeling example is at the beginner level, where we assume that you know Python and that you have some knowledge about building mathematical optimization models. You may also want to check out the documentation of the Gurobi Python API.

 Learn More

Supply Network Design

Traveling Salesman

Peak Under the Hood

Dive deep into sample models, built with our Python API.

Market Sharing

In this example, we’ll show you how to solve a goal programming problem that involves allocating the retailers to two divisions of a company in order to optimize the trade-offs of several market sharing goals. You’ll learn how to create a mixed integer linear programming model of the problem using the Gurobi Python API and how to find an optimal solution to the problem using the Gurobi Optimizer.

This model is example 13 from the fifth edition of Model Building in Mathematical Programming by H. Paul Williams on pages 267-268 and 322-324. This modeling example is at the beginner level, where we assume that you know Python and that you have some knowledge about building mathematical optimization models. You may also want to check out the documentation of the Gurobi Python API.

 Learn More

Supply Network Design

Traveling Salesman

"Gurobi's advancements go beyond performance to enhance usability, appealing to both beginner and expert users."

Gurobi 13.0 Beta Tester

"We’ve been doing optimization for decades, and Gurobi is simply the fastest and most reliable solver we’ve tested. We use it on every project."

"It’s not just about getting the best answer; it’s about giving advisors and clients a plan they can understand and trust. What would take hours to do manually, we can do in minutes, with better outcomes."

"Gurobi's advancements go beyond performance to enhance usability, appealing to both beginner and expert users."

Gurobi 13.0 Beta Tester

"We’ve been doing optimization for decades, and Gurobi is simply the fastest and most reliable solver we’ve tested. We use it on every project."

"It’s not just about getting the best answer; it’s about giving advisors and clients a plan they can understand and trust. What would take hours to do manually, we can do in minutes, with better outcomes."

"Gurobi's advancements go beyond performance to enhance usability, appealing to both beginner and expert users."

Gurobi 13.0 Beta Tester

"We’ve been doing optimization for decades, and Gurobi is simply the fastest and most reliable solver we’ve tested. We use it on every project."

"It’s not just about getting the best answer; it’s about giving advisors and clients a plan they can understand and trust. What would take hours to do manually, we can do in minutes, with better outcomes."

gurobi optimizer

The Solver that Does More

Gurobi delivers blazing speeds and advanced features—backed by brilliant innovators and expert support.

Unmatched Performance
Continuous Innovation
Responsive, Expert Support
Feature image
Unmatched Performance

With Gurobi’s advanced algorithms, you can add complexity to your models to better represent real-world systems—and still solve them within the available time.

Significant speed-ups across all major problem types, achieving a 92x improvement in MILP performance since version 1.1
Tuned to optimize performance over a wide range of instances and applications
Rigorously tested for numerical stability and correctness using an internal library of more than 10,000 industry and academic models
Learn More

Frequently Asked Questions

What is prescriptive analytics?

Prescriptive analytics tools like mathematical optimization help you make decisions based on your real-world business goals (“objectives”) and limitations (“constraints.”) This can be especially useful when you’re facing a business problem with multiple, conflicting goals (such as cutting spending while increasing production) and multiple constraints (such as time, distance, product availability).

Learn more about prescriptive analytics in our article, “What is Prescriptive Analytics?”

What is the difference between predictive and prescriptive analytics?

What are some examples of prescriptive analytics in the real world?

How can prescriptive and predictive analytics work together?

What is the primary goal of prescriptive analytics?

What are the techniques used in prescriptive analytics?

What is prescriptive analytics also known as?

Frequently Asked Questions

What is prescriptive analytics?

Prescriptive analytics tools like mathematical optimization help you make decisions based on your real-world business goals (“objectives”) and limitations (“constraints.”) This can be especially useful when you’re facing a business problem with multiple, conflicting goals (such as cutting spending while increasing production) and multiple constraints (such as time, distance, product availability).

Learn more about prescriptive analytics in our article, “What is Prescriptive Analytics?”

What is the difference between predictive and prescriptive analytics?

What are some examples of prescriptive analytics in the real world?

How can prescriptive and predictive analytics work together?

What is the primary goal of prescriptive analytics?

What are the techniques used in prescriptive analytics?

What is prescriptive analytics also known as?

Additional Insights

Case Studies

Case Studies

SAP: Mastering Supply Chain Challenges Through Complex Scenario Planning

SAP integrates Gurobi across its cloud portfolio, delivering cutting-edge supply chain scenario planning to enterprise customers.

Case Studies

Delhivery: Making the Last Mile More Efficient

Delhivery optimizes last-mile delivery routes across India, fulfilling over 1 billion orders with 24/7 efficiency.

Case Studies

LeanLogistics: Supply Chain Optimization

LeanLogistics optimizes freight planning for millions of orders daily, unlocking significant cost savings across global supply chains.

Additional Insights

Case Studies

Case Studies

SAP: Mastering Supply Chain Challenges Through Complex Scenario Planning

SAP integrates Gurobi across its cloud portfolio, delivering cutting-edge supply chain scenario planning to enterprise customers.

Case Studies

Delhivery: Making the Last Mile More Efficient

Delhivery optimizes last-mile delivery routes across India, fulfilling over 1 billion orders with 24/7 efficiency.

Case Studies

LeanLogistics: Supply Chain Optimization

LeanLogistics optimizes freight planning for millions of orders daily, unlocking significant cost savings across global supply chains.

Additional Insights

Case Studies

Case Studies

SAP: Mastering Supply Chain Challenges Through Complex Scenario Planning

SAP integrates Gurobi across its cloud portfolio, delivering cutting-edge supply chain scenario planning to enterprise customers.

Case Studies

Delhivery: Making the Last Mile More Efficient

Delhivery optimizes last-mile delivery routes across India, fulfilling over 1 billion orders with 24/7 efficiency.

Start Solving with Gurobi

Try Gurobi on your own optimization models and see how it performs on real decision problems.

Start Solving with Gurobi

Try Gurobi on your own optimization models and see how it performs on real decision problems.