article thumbnail

The DataOps Vendor Landscape, 2021

DataKitchen

Download the 2021 DataOps Vendor Landscape here. DataOps is a hot topic in 2021. This is not surprising given that DataOps enables enterprise data teams to generate significant business value from their data. QuerySurge – Continuously detect data issues in your delivery pipelines. OwlDQ — Predictive data quality.

Testing 304
article thumbnail

Our Top Data and Analytics Predicts for 2021

Andrew White

Predicts 2021: Data and Analytics Leaders Are Poised for Success but Risk an Uncertain Future : By 2023, 50% of chief digital officers in enterprises without a chief data officer (CDO) will need to become the de facto CDO to succeed. Through 2023, up to 10% of AI training data will be poisoned by benign or malicious actors.

Analytics 144
Insiders

Sign Up for our Newsletter

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

article thumbnail

Data Management’s Next Frontier is Machine Learning-Based Data Quality

TDAN

As part of their data strategy, a number of companies have begun to deploy machine learning solutions. In a recent study, AI and machine learning were named as the top data priorities for 2021, by 61% […].

article thumbnail

What’s the State of Data Governance and Empowerment in 2021?

erwin

erwin by Quest just released the “2021 State of Data Governance and Empowerment” report. However, if we’ve learned anything, isn’t it that data governance is an ever-evolving, ever-changing tenet of modern business? We explored the bottlenecks and issues causing delays across the entire data value chain.

article thumbnail

The Alation State of Data Culture Report - Q1 2021

This report explores AI obstacles, like inherent bias and data quality issues, and posits solutions by building a data culture. Companies are expected to spend nearly $23 billion annually on AI by 2024. What could go wrong?

article thumbnail

AI adoption in the enterprise 2020

O'Reilly on Data

By contrast, AI adopters are about one-third more likely to cite problems with missing or inconsistent data. The logic in this case partakes of garbage-in, garbage out : data scientists and ML engineers need quality data to train their models. This is consistent with the results of our data quality survey.

article thumbnail

Dow CDO Chris Bruman: We needed a new approach to data quality

CIO Business Intelligence

On creating a data hub: We began looking at the need for a new approach into data quality and data governance for the company in late 2020. So, we launched Business Data Services in the second quarter of 2021. IT doesn’t own most of the data in the company.