Professional Certificate in UX Metrics and User Interface Design
-- ViewingNowThe Professional Certificate in UX Metrics and User Interface Design is a comprehensive course that equips learners with essential skills for career advancement in UX design. This course emphasizes the importance of UX metrics in measuring user experience and improving user interface design, making it highly relevant for today's tech industry.
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⢠Introduction to UX Metrics: Understanding the importance of measuring user experience, defining key UX metrics, and setting up a data-driven design process.
⢠User Research and Data Collection: Techniques for gathering qualitative and quantitative data, including usability testing, surveys, and analytics tools.
⢠User Engagement Metrics: Analyzing user engagement, including metrics such as click-through rates, time on page, and conversion rates.
⢠User Satisfaction Metrics: Measuring user satisfaction through methods like the System Usability Scale (SUS) and Net Promoter Score (NPS).
⢠Behavioral Metrics: Understanding user behavior through metrics such as task completion rates, abandonment rates, and error rates.
⢠Designing for Usability Testing: Best practices for designing user interfaces that are easily testable, including creating test scenarios, recruiting participants, and interpreting results.
⢠Integrating Metrics into UI Design: Strategies for using UX metrics to inform UI design, including setting design goals, monitoring progress, and iterating on designs.
⢠Advanced UX Metrics and Analytics: Exploring advanced UX metrics and analytics techniques, including funnel analysis, cohort analysis, and predictive modeling.
⢠Communicating UX Metrics to Stakeholders: Techniques for effectively communicating UX metrics to stakeholders, including creating data visualizations, presenting findings, and making data-driven recommendations.
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