article thumbnail

Smarten Augmented Analytics Receives CERT-IN Certification for Its Products and Services!

Smarten

It was initiated in 2004 by the Department of Information Technology for implementing the provisions of the 2008 Information Technology Amendment Act. All of these tools are designed for business users with average skills and require no special skills or knowledge of statistical analysis or support from IT or data scientists.

article thumbnail

What is Model Risk and Why Does it Matter?

DataRobot Blog

With the big data revolution of recent years, predictive models are being rapidly integrated into more and more business processes. When business decisions are made based on bad models, the consequences can be severe.

Risk 111
Insiders

Sign Up for our Newsletter

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

article thumbnail

Why Analytics Are Essential in Times of Crisis

Sisense

Twelve years ago, in the throes of the 2008 economic recession, British Airways was cutting costs across the organization. At RetailZoom , a team of data scientists supplies supermarkets and FMCG companies with predictive models that incorporate transactional and demographic data to determine the size and scope of promotional activities.

article thumbnail

Business Intelligence and the COVID-19 Pandemic

Paul Blogs on BI

Some universities and institutions have built out predictive models based on this data which are even more likely to be erroneous. I have always believed that Business Intelligence is only 50% about analyzing the data and that the other 50% is the human action taken as a result of that analysis.

article thumbnail

Structural Evolutions in Data

O'Reilly on Data

” Consider the structural evolutions of that theme: Stage 1: Hadoop and Big Data By 2008, many companies found themselves at the intersection of “a steep increase in online activity” and “a sharp decline in costs for storage and computing.” And it was good. For a few years, even. But then we hit another hurdle.

article thumbnail

Defining data science in 2018

Data Science and Beyond

Kaggle was only about predictive modelling competitions back then, and so I believed that data science is about using machine learning to build models and deploy them as part of various applications. My understanding of data science at the time was heavily influenced by Kaggle and the tech industry.

article thumbnail

Exploring US Real Estate Values with Python

Domino Data Lab

the median appreciation of Palo Alto looks exponential since the housing crash of 2008, yet the rest of the San Francisco Bay Area seems to have be less volatile. It may be that your organization can build an AI application by using their prediction models as a base, and then layering other AI and ML techniques on top.