Data Literacy for Writers
You do not need to be a data scientist, but you must speak the language of datasets, bias, variance, and evaluation. Learn how prompts, system messages, and context windows affect outcomes. Interpret dashboards carefully and explain confidence limits without overselling. When describing fine tuning, reflect prerequisites like representative data and monitoring plans. Share a short story about a misinterpreted chart you corrected, and ask readers for their own lessons to demystify analysis across teams.