We seek to understand
highly stochastic processes

Most processes are stochastic in reality, being better described through random variables.

When you want to evaluate stock levels at critical points, the sizing of fleets, the effect of demand peaks, the dispersion in the times of any process, the flow of materials in production systems or the design of new production lines, it is essential to use tools that consider the inherent uncertainty in each process.

Understanding the
process variability

We specialize in developing simulation models based on rigorous methodologies that allow understanding the effect of variability in interrelated processes. We mainly use discrete event simulation and Monte Carlo simulation for these purposes, especially applied to understand complex processes.
If you have a design problem, a resource sizing problem or a production or service process where there is a great stochastic character, simulation approaches can provide you with great solutions.

Scenario evaluation and optimization

This type of methodologies allows the evaluation of multiple What-If scenarios, varying structures, designs, resources, times, among other variables to see the effect on key process indicators.

Impact on services

A service can also be modeled and simulated. Understanding the resources associated with each stage, the queues and logics involved, in order to maximize the level of service and minimize the resources affected.

Large volumes of data

Working with large volumes of data is key to be able to statistically represent each sub-process in a rigorous way.

Software we work with

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projects