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Assisted Predictive Modeling and Analytics for Everyone

Need Analytics for Business Users AND Data Scientists? No Problem!
Does your business intelligence solution provide true advanced analytics capabilities? Can your BI tool satisfy the needs of business users, data scientists and IT staff? That may seem like a tall order but with the right business intelligence software, you can provide predictive analytics for business users, including assisted predictive modeling that walks users through the analytical process and allows them to achieve the best results without a sophisticated knowledge of data analytical techniques.
You can transform those business users into Citizen Data Scientists! Plug n’ play predictive and forecasting tools help businesses to create Citizen Data Scientists by enabling the average business user to leverage sophisticated predictive algorithms without the expertise and skill of a trained data scientist, so users who are not statisticians or predictive algorithm experts, can leverage Self-Service Plug n’ Play Predictive Analytics Tools to confidently make business decisions.


At the same time you can give your data professionals tools like R integration to satisfy the needs of skilled data scientists and business analysts who use the ‘R’ platform for statistical and predictive algorithms. You can give them a solution that integrates seamlessly with R Script so that they can leverage Plug n’ Play Predictive Analysis in combination with R scripting integration, to perform more sophisticated and complex analysis, achieve clarity and provide detailed, meaningful advanced analytics and reporting for the organization.
Plug and Play Predictive Analysis enables analysis of customer churn and acquisition, cross-sales and other opportunities, price points for new products, distribution channels, customer loyalty programs, and more. Whether serving business users, IT staff or data scientists, the right advanced analytics solution will provide features for time series forecasting, causation and prediction algorithms, classification and prediction and other features that allow users to work at their own skill level and produce clear reporting and analysis.
There is no point in frustrating or limiting the user when one tool can satisfy the requirements of every user and skill level in the organization. If you want to explore the possibilities, start here:

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