Remove Data Collection Remove Internet of Things Remove ROI Remove Technology
article thumbnail

12 considerations when choosing MES software

IBM Big Data Hub

Gathering data from machines, sensors, operators and other Industrial Internet of Things (IIoT) devices, they provide accurate and up-to-date insights into the status of production activities. Consider the potential return on investment (ROI) based on improved productivity, reduced downtime and enhanced efficiency.

article thumbnail

My top learning moments at Splunk.conf23

Rocket-Powered Data Science

as likely to say that their ROI on observability tools far exceeded expectations. Splunk Mission Control (just mentioned above) – Splunk describes it best: “Splunk Mission Control brings together Splunk’s industry-leading security technologies that help customers take control of their detection, investigation and response processes.

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

The 6 Layers of an IoT Solution

CDW Research Hub

Your first thought about the Internet of Things (IoT) might be of a “smart” device or sensor. Technology vendors estimate about 75% of IoT projects fail (softeq.com), generally due to a lack of understanding of IoT technology and what it can provide. Layer 2: Edge computing.

IoT 89
article thumbnail

How to Build a Customer Centric Business: The Complete Guide

Alation

The problem many companies face is that each department has its own data, technologies, and information handling processes. This causes data silos to form, which can inhibit data visibility and collaboration, and lead to integrity issues that make it harder to share and use data.

article thumbnail

Themes and Conferences per Pacoid, Episode 9

Domino Data Lab

Several technology conferences all occurred within four fun-filled weeks: Strata SF , Google Next , CMU Summit on US-China Innovation, AI NY , and Strata UK , plus some other events. The lens of reductionism and an overemphasis on engineering becomes an Achilles heel for data science work. Introduction. Not yet, if ever.