Purpose-built solutions delivering value.

light-grey-curve-dots.jpg

Our mission is to automate the world’s information. 

We are a seasoned team of visionaries, engineers, designers, and strategists working to put our advanced technology to practical use. We design, develop, and deploy the most capable intelligent models with the power to make decisions from human-centric data autonomously and in real-time.

 
A piece of a puzzle

value

Our focus is on extracting value, through automation, for you and your customers.

A lightening strike

speed

Through proprietary business models, and dedicated solutions, our goal is to get your business on a path to scalability.

Three arrows pointing up

scalability

Built for growth at the speed of your business.

How We’re Different


We’re an actual solutions provider.

Most consultants come in with ideas and strategies, but then leave it up to you to execute.

Until now.

Cadre’s team consists of decades of experience in the ability to execute on best practices to streamline resources and today’s modern technology stacks to reduce friction and create an environment of operational efficiency.

 
We use similar practices of, say, something like microservices that have purpose-built jobs that do a small number of things and do it well. They’re easier to maintain and easier to update, so it takes less time and money to train them.
— Craig Ganssle
CEO
light-grey-curve-dots-2.jpg
 

Why are we doing this?

Everyone is working on more algorithms and trying to throw as much data at a problem as possible. But the operations must be set-up for a life-long achievement of accuracy and value. Tools can not work in controlled environments alone, but in real-world environments where the value and users are.

Our solution: build a better Operations.

 
A knotted up arrow
yellow-bg-dots.jpg
A chart line that trends up

Built For Growth

Traditionally, business models require methods to obtain more accurate results over a longer period of time. Cadre brings purpose-built models reducing the requirement for long ramp-up times and traditional supervised learning techniques.