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Customer Feedback

Here are links to comments about Discipulus, the scientific and engineering data mining and modeling tool based on AIMLearning Technology:

Strongest Predictive Modeling Package in History

"Discipulus is one of the strongest predictive modeling packages in history. It is blazing fast, it evolves accurate, compelling and deployable models, and it is a stunning example of ingenuity and tradecraft, and certainly the finest example of machine based Linear Genetic Programming ever designed. For a few hundred dollars, you will be buying one of the greatest predictive modeling packages ever built. I have one word to describe the predictive capabilities of Discipulus…. WOW !!....I paid about $500 for the Professional Version, and now that I see the capabilities of Discipulus, I would have gladly paid $10,000 for this software package. Discipulus is a VERY strong predictive modeling package, and I distinctly recall the first time I used the software, watching it evolve a simple mathematical answer, to a complex modeling problem, my jaw dropped, and I said to myself “Toto, we are not in Kansas anymore...."

Brian Watt, CRM

Chief Risk Officer, Chief Financial Officer, GECC, Inc

An Outstanding Product

"Discipulus is an outstanding product. It recently solved an extremely difficult process control problem for us that had stumped our best neural network researchers.

"Other machine learning systems would take well over a year in CPU time on problems Discipulus comfortably solves in a week. It produces a simulation model of the process, which is designed for direct incorporation into scientific data models and process controllers.

"Thank you, RML Technologies."

Larry M. Deschaine, PE, Science Applications International Corp.

Fast & Robust Tool

"Discipulus is a fast and robust tool for transforming data into equations. I have personally used the tool since 1998 and is my tool of choice for regression and classification in noisy data. With it, I have been able to solve problems that other methods (neural networks, linear regression, decision trees, SVM's etc) were unable to solve during well conducted studies.

Discipulus uses a combination of machine code based genetic algorithms and evolutionary strategies to uncover the mathematical program that represents the functional information content of the data. It is lightning fast compared to other evolutionary programming approaches and quite immune to overfitting.

"I have successfully used Discipulus to detect buried bombs from digital signals, predict soil properties from scientific explorations, predict leachability of radionucleotide(s), predict processes in nuclear power plants, and even some interesting features of satellite imagery, etc. I even tried to deceptively trick it into modeling noise but was unable to do so."

       Model & Mine Review, 2004

The Key to Fast Deployment

"We are very pleased with this product. It's fast and the user interface is good. . . In the past year, Discipulus has been the key to fast deployment of several important in-house modeling solutions."

Emerging Technologies Director, Fortune 100 Company

Speed Matters

"I am quite happy with the program. It is well documented with a comprehensive user/reference manual and a nice set of tutorials. After quickly reading the user manual, it took me less than an hour to . . . complete my first run.

"As their motto says, 'Speed Matters.' Their system is quite fast. I also have to give very high marks to their customer support.

Dan Yagusic, Microchip Defect Analysis Engineer

A Commercial, Industrial Strength System

"At last, a commercial, industrial strength system for genetic programming to solve practical problems."

Dr. James Foster. Machine Learning Consultant and Prof. Computer Science, University of Idaho

Appreciate the Difference

"Until you have access to [modeling] tools this fast, you really cannot appreciate how much of a difference it makes."

EvoNews, Winter 1999.

 

 

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