Thu, Jun 18, 2026
7:00 PM UTC (45 minutes)
Virtual (Zoom)
Free to join
Go deeper with a course

Thu, Jun 18, 2026
7:00 PM UTC (45 minutes)
Virtual (Zoom)
Free to join
Go deeper with a course

What you'll learn
Spot 4 common AI errors in data analysis
Fix errors before you ship the analysis
Brief leadership with defensible numbers
Why this topic matters
You'll learn from
Nicky Bell, PhD
Built 3 data teams from scratch | 10 yrs teaching data at Top 50 univs.
I've spent my career working at startups where using the wrong data had real consequences.
I wrote the statistics that led to FDA approval of the first AI to predict breast cancer risk, ensured that scaling retail brands got demand forecasts that allowed them to actually plan for the future, and built AI tools for delivering better health care to patients.
The technical work was rarely the hard part. The hard part was helping non-technical leaders read what the data was actually saying.
I translated my experiences into data courses taught at three Top 50 universities. Now, I'm offering the same opportunity to learn data judgment to anyone who has to make data-driven decisions without a dedicated analyst.
Data fluency isn't about code or math; it's about judgment.
Trusted by students at
