Remove Big Data Remove Experimentation Remove KPI Remove Metrics
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The Lean Analytics Cycle: Metrics > Hypothesis > Experiment > Act

Occam's Razor

To win in business you need to follow this process: Metrics > Hypothesis > Experiment > Act. We are far too enamored with data collection and reporting the standard metrics we love because others love them because someone else said they were nice so many years ago. That metric is tied to a KPI.

Metrics 156
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12 Marketing Reports Examples You Can Use For Annual, Monthly, Weekly And Daily Reporting Practice

datapine

To get started, you might want to equip yourself with a marketing BI software to analyze all your data and easily build professional reports. Structure your metrics. As with any report you might need to create, structuring and implementing metrics that will tell an interesting and educational data-story is crucial in our digital age.

Reporting 280
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Cookies To Humans: Implications Of Identity Systems On Incentives!

Occam's Razor

To ensure customer delight was delivered in a timely manner, it was also decided that Average Call Time (ACT) would now be The success metric. The success metric, ACT, did go down. That ACT was an activity metric was terrible – if you have a The success metric, it should always be an outcome metric. Another issue.

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

Occam's Razor

First… it is important to realize that big data's big imperative is driving big action. Second… well there is no second, it is all about the big action and getting a big impact on your bottom-line from your big investment in analytics processes, consulting, people and tools.

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Eight Silly Data Things Marketing People Believe That Get Them Fired.

Occam's Razor

It turns out that Marketers, especially Digital Marketers, make really silly mistakes when it comes to data. Small data. Marketer, is not spent with data you''ll fail to achieve professional success.]. Many used some data, but they unfortunately used silly data strategies/metrics. It is a really good metric.

Marketing 166