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Quantum UX Research

UX Planet

The potential of quantum computing and artificial intelligence to enhance user research User research is crucial for the human-centered design of digital products and services. However, traditional user research methods can be time-consuming, subjective, and difficult to scale.

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Predictive Analytics in Healthcare

Reveal

Reveal Embedded Analytics. The abundance of data available at an organization’s fingertips transforms the entire industry. Real-time, accurate insights that can impact patients are extremely important. Real-time, accurate insights that can impact patients are extremely important. And this is where analytics comes to help.

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Mobile Customer Response Rates Grew by 20% Last Year: New Data from our 2018 Benchmark Report

Alchemer Mobile

They need to be able to understand the analytics behind customer interaction and response rates so they can make data-driven decisions. 20% more customer feedback and a 91% response rate. In 2018, companies reached out to 25% of their customer base ; on Android, the rate was 21% while on iOS, it was 28%. Wrapping it up.

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Top Data Labeling Tools for Machine Learning Projects

The Product Coalition

Generating labeled training data requires a great deal of time, effort, and investment. If you’re building a machine learning model, chances are you’re going to need data labeling tools to quickly put together datasets and ensure high-quality data production.

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5 Product Traps - And Better Paths

Speaker: Johanna Rothman, Management Consultant, Rothman Consulting Group

Is your agile team overloaded with feature requests, with no time for discovery? It may seem impossible now, but what if we said that with a few changes, you could be meeting deadlines with the ability to predict progress with accuracy, be happy with your progress against the roadmap, and be making time for near-continuous discovery?

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Top 5 Product Management Trends of 2018

Revulytics

As we get under way with the new year, let ’s take a look at five trends from 2018 that product management professionals should be aware of going into 2019. Analytics reveal design trends. The report underscores the value of considering a strategy to share usage data with your users so they can benefit from these insights, too.

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What AI Means to a Data Scientist

Birst BI

However, there are simply not enough data scientists in the world to deliver on the AI potential. Data scientists building AI applications require numerous skills – data visualization, data cleansing, artificial intelligence algorithm selection and diagnostics. The Outsourcing of Data Science Functions.

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5 Key Considerations for Top-Notch Product Dashboards

Speaker: Miles Robinson, Agile and Management Consultant, Motivational Speaker

So you want to set your product apart with the latest analytics, but you’re not sure where to start. Join Miles Robinson, Agile and Management Consultant, as he covers five key considerations for you to keep in mind when you’re updating your software or app to offer the latest in embedded dashboards.

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Iterate Your Way to a Top Analytics Product Experience

Speaker: Richard Cheng, Associate Product Manager, Mark43

Mark43 is on a mission to bring public safety data management into the 21st century. To fix traditionally paper-heavy and error-prone processes, they needed a secure and easy-to-use product experience that simplified and unified crime data collection and management. August 7, 2018 11:00 AM PDT, 2:00 PM EST, 6:00 PM GMT

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How To Build Data-Informed Products

Speaker: Tim Herbig, Director, iridion

As a product manager, you probably know specific ways to gather data to inform your product decisions, like the ever-popular A/B test. What about the times when it doesn't make sense to A/B test, because you have too small a sample size? Tim will discuss the line between being data-informed versus data-driven.