Remove Data Collection Remove Optimization Remove Slice and Dice Remove Visualization
article thumbnail

Experimenting to Win with Data

Sisense

The key to coming up with the best insights lies in delving deeply into both questions; the answers you discover can help you get even more out of your data. The experiences of Measuremen, an international consultancy that helps organizations optimize facilities use, illustrate this point. Determining data goals, making a plan.

article thumbnail

It's Not The Ink, It's The Think: 6 Effective Data Visualization Strategies

Occam's Razor

Ten years, and the 944,357 words, are proof that I love purposeful data, collecting it, pouring smart strategies into analyzing it, and using the insights identified to transform organizations. Too many bars, inside them too many slices, odd color choices, all end up with this question: what the heck's going on here?

Insiders

Sign Up for our Newsletter

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

article thumbnail

Ten Hidden Gems In Google Analytics: Do Smarter Web Data Analysis!

Occam's Razor

And, that's not all, when you consider that it is segmented data, across multiple dimensions, it really is impressive. But, I'm a big believer in optimizing data access to be at the right time as defined by your decision-making/action-taking speeds inside your company. You can see what's happening right now.

Analytics 155
article thumbnail

Empowering Analysis Ninjas? 12 Signs To Identify A Data Driven Culture

Occam's Razor

7: 25% of all analytical effort is dedicated to data visualization/enhancing data's communicative power. #6: Remember none of these jobs will do any data collection/IT work, even in medium-sized companies.) They incentivize optimal Ninja behavior vs. useless data regurgitation.

article thumbnail

What Is Embedded Analytics?

Jet Global

This is in contrast to traditional BI, which extracts insight from data outside of the app. We rely on increasingly mobile technology to comb through massive amounts of data and solve high-value problems. Plus, there is an expectation that tools be visually appealing to boot. Their dashboards were visually stunning.