Quaartz is for Business Experts

Unleash the full revenue potential of your organization by exploiting your data. Identify opportunities for growth, optimization and success in a few clicks. Understand the bottlenecks in your business and fix them. 

Exploit your data to create adhoc business analytics

Quaartz learns from a few hundred historical records and predicts the future. Consider the benefits of making decisions when you know the most likely future events. That’s what Quaartz brings you.

Automate tedious tasks, gain time

Machine Learning enables the automation of some business tasks or sequence of tasks. Automate credit scoring for instance and free some time to grow your business stronger.

See the hidden dependencies and benefit from them

Quaartz can unveil the hidden dependencies in your data. Does Quaartz tell you that most customers commit on Fridays? Optimize your sales team accordingly to make customer appointments on Fridays.

Discover more insights with Quaartz, the Augmented Analytics Platform:

Classifying Data

With a heterogeneous dataset representing various customers, Quaartz can classify the customers into groups, thus providing a segmentation.

Sensitivity Analysis

Quaartz provides the criteria used to classify or estimate the results. These criteria give great insight into the data. Is one of the criteria the age of the customers? Or where they live? Learn from your data and adapt your business strategy accordingly.

Live Predict

The Live Predict feature allows Business Experts to make a variable in the dataset take other values and see the impact on the result.

Multiple Models

Why settle for less? Quaartz enables the generation of multiple models and select the most accurate one. Just click and generate a new model.

Global Score

Once several models have been generated, it is not easy for the data science layman to understand which model is performing better. Quaartz has defined a “Global Score” which is a combo of the various metrics available in data science. It is a summary of the model’s performance.

Getting Started

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