Remove Forecasting Remove Modeling Remove Predictive Modeling Remove Webinar
article thumbnail

Unlocking New Possibilities with Forecasting Analytics

Sisense

One of the most important applications of data is using it to forecast the future. This is where forecasting analytics can be a game-changer in the decision-making process. In a recent webinar , I talked about how one of our customers, a performance theater owner, uses predictive analytics.

article thumbnail

The top 15 big data and data analytics certifications

CIO Business Intelligence

The certification focuses on the seven domains of the analytics process: business problem framing, analytics problem framing, data, methodology selection, model building, deployment, and lifecycle management. They can also transform the data, create data models, visualize data, and share assets by using Power BI.

Big Data 126
Insiders

Sign Up for our Newsletter

This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.

Trending Sources

article thumbnail

How IBM Planning Analytics can help fix your supply chain

IBM Big Data Hub

Build planning models to improve supply chain management. You also build planning models to capture relationships and constraints so that you can change your driver assumptions and immediately see the impact on resources and capacity over time. The challenge faced by every company is matching supply with demand.

article thumbnail

Healthcare: Why Integrated Care Systems Need to Focus on AI and not BI

DataRobot Blog

Snowflake provides a state-of the-art data platform for collating and analysing workforce data, and with the combined addition of DataRobot Solution Accelerator models, trusts can have predictive models running with little experimentation — further accelerated by the wide range of supportive datasets available through the Snowflake Marketplace.

article thumbnail

Solving the Data Daze – Analytics at the Speed of Business Questions

Rocket-Powered Data Science

Beyond the early days of data collection, where data was acquired primarily to measure what had happened (descriptive) or why something is happening (diagnostic), data collection now drives predictive models (forecasting the future) and prescriptive models (optimizing for “a better future”).

Analytics 166
article thumbnail

Activating the Full Potential of Industry Solutions with DataRobot’s Strategic Partner Ecosystem

DataRobot

Industry Unleashed: An Exclusive Insights Webinar Series by DataRobot and Snowflake. DataRobot AI Cloud on AWS enables organizations across the banking and healthcare industry to easily build, deploy, and monitor machine learning models that yield actionable insights and ROI. DataRobot AI Cloud on AWS. Find out more.

article thumbnail

Data Insights for Everyone — The Semantic Layer to the Rescue

Rocket-Powered Data Science

The data scientists need to find the right data as inputs for their models — they also need a place to write-back the outputs of their models to the data repository for other users to access. The BI team may be focused on KPIs, forecasts, trends, and decision-support insights. There will be several speakers, including me.