Expand the personalized research entry point.
High-intent users reached relevant reports faster, with entitlement and quick-bounce guardrails stable.
Redacted Representative Artifact
A portfolio sample showing how I turn product experiments into clear decisions, quality guardrails, and reusable learnings.
The readout compresses the week into three calls: what to expand, what to keep learning from, and what to rework before rollout.
High-intent users reached relevant reports faster, with entitlement and quick-bounce guardrails stable.
Citation opens improved, but feedback volume and review outcomes are not clean enough yet.
Completion moved up, but the test hid one education moment users needed before their first key action.
qualified_research_action / active_user
Up
citation_opened + answer_saved + positive_feedback
Mixed
irrelevant_click + negative_feedback + support_ticket
Flat
The taxonomy separates usage from quality. That matters in research and AI products, where a click can mean curiosity, confusion, or trust.
research_home_viewed
Top-of-funnel denominator with client segment, region, device, and entitlement tier.
research_search_submitted
Search discovery read with query type, asset class, ticker count, and experiment variant.
report_opened
Research relevance and content-quality signal by source module, analyst team, and topic.
ask_mara_query_submitted
AI assistant adoption and answer-quality analysis by query intent and answer type.
citation_opened
Trust behavior and citation usefulness by answer, source rank, report age, and variant.
A good readout does not force every test into a victory story. It shows judgment under uncertainty.
If returning users see role- and topic-aware research modules earlier, they should reach relevant reports faster and take more qualified research actions.
If AI-generated research answers make citations and source freshness more prominent, users should trust the answer enough to continue working.
If a multi-step checklist is compressed into fewer visible tasks, more users should finish setup without sacrificing feature discovery.
Validate that Barclays Live relevance lift holds across asset class and region.
Separate answer engagement from genuine trust and citation usefulness.
Help users personalize research discovery without forcing setup too early.
Repair feature-discovery softness from the generic onboarding compression test.
Expand personalization, but keep entitlement and relevance checks visible in analysis.
Treat AI answer changes as quality experiments, not just engagement experiments.
Pair simplification with one well-placed education moment tied to the user's next action.