On DallasNews.com, over 98% of readers were anonymous, making personalization and retention nearly impossible. Readers often skimmed long-form articles, looking for quick answers but rarely converting or exploring further.
At the same time, I noticed a growing issue across the industry: site-wide AI chatbots were driving bounce rates up, giving users answers instantly without them ever engaging with the content.
The opportunity was clear: deliver instant answers without losing engagement.
Create an in-article AI experience that:
Insight: True engagement comes from making information easier to access.
Analytics
Showed high drop-off mid-article and short session times.
User Research
Revealed readers wanted “bite-sized clarity” without losing trust.
Product Strategy
Prioritized increasing registrations to build first-party data and boost ad revenue.
I defined Instant Ask as an AI-powered Q&A widget embedded directly in the article:
I led cross-functional work across product, AI, and editorial:
We planned to launch MVP on one section:
For users:
âś“ Quick, high-quality answers; no more endless scrolling.
âś“ Clear pathways to deeper reading and learning.
âś“ Personalized follow-ups and dashboard access for subscribers.
For the business:
âś“ Increased session duration and article completion rates.
âś“ Lift in registration and subscription conversion.
âś“ More internal content discovery and repeat visits.
âś“ Foundation for future personalization via user Q&A data.
Instant Ask turned passive readers into active participants, creating a smarter, more habit-forming reading experience.

Instant Ask bridged AI and journalism in a way that strengthened editorial engagement. By embedding curiosity into the reading experience, we created a feature that earned attention, deepened trust, and unlocked a new layer of insight-driven personalization.