Analytics
YouTube ... Quora ...Google search ...Google News ...Bing News
- Capabilities
- Development ...AI Pair Programming Tools ... Analytics ... Visualization ... Diagrams for Business Analysis
- Assistants
- Bot Framework
- Natural Language Processing (NLP)
- Natural Language Generation (NLG)
- 2020 will be the year AI kills company dashboards | Derek Steer - TNW (TheNextWeb)
- Will AI Kill The Dashboard? | Ashok Santhanam - Forbes
- Beyond the Dashboard: How AI Changes the Way We Measure Business | Wayne Eckerson
- Global Edition A CIO's guide to AI dashboards | Bill Siwicki - HealthcareITNews
- The new New Relic: Past BI and the dashboard, toward AI and AIOps | George Anadiotis - ZDNet
- 5 Big Data Analytics Dashboards that will Boost Your Career in 2020 | Sudipto Ghosh - AIthority
- What is the Difference between Machine Learning and Data Analytics? | S Akash - Analytics Insight
“Applying AI algorithms to analytics will prove transformative, but the complex merger requires a roadmap,” the report stresses. 8 top artificial intelligence and analytics trends for 2019 | David Weldon | HealthData Management
Instead of long investigations and analysis through multiple business Key Performance Indicator (KPI) dashboards and making manual correlations, business analysts can rely on AI analytics to probe deeper into the data and correlate simultaneous anomalies, revealing critical insights into operations. A real-time, large-scale automated anomaly detection system using machine learning methods can free data analysts from constant manual monitoring around just a few KPIs. When working with thousands or millions of metrics, you can’t just hire a staff of thousands of analysts to analyze your data for key decisions. Using automated significance ranking of detected anomalies, data analysts can focus in on the most important business incidents. In the Automation Age: Use AI Analytics to Escape ‘Business KPI Dashboard Hell’ | Ira Cohen -anodot