Overview
Load themulti-surface-synthesis skill whenever you have data from two or more of GDELT Cloud, macro-finance, and prediction markets. It’s the difference between a report that lists three surfaces side-by-side and one that finds the divergence between them — which is usually the actual analytical insight.
GDELT Cloud structured data is the spine
The synthesis depends on having a classified, quantified, linked anchor — GDELT Cloud’s structured Events, Stories, and metrics. Without that anchor, divergence framing collapses into impressionistic comparison. GDELT Cloud gives you:- A
significancescore on the underlying narrative (so you can claim “narrative is high/moderate/low” with a number) magnitude,systemic_importance,propagation_potential(so the divergence finding has structural anchoring)category/subcategoryfrom the structured taxonomy (so the user knows what kind of event the synthesis surrounds)- Linked entities and a date (which feed
SYMBOL_SEARCHand prediction-market scenario phrasing)
The canonical 5-step flow
The five divergence shapes
When narrative volume, market price, and implied probability disagree, the disagreement falls into one of five characteristic shapes. Recognize the shape and lead the brief with it.| Shape | Pattern | Lead |
|---|---|---|
| 1. Priced-in | High narrative + flat market + flat probability | ”Despite N articles, instrument is unchanged and probability is stable. The market has fully discounted this scenario.” |
| 2. Market sees what news misses | Low narrative + sharp market move + elevated probability | ”Narrative volume is low but the instrument has moved X over the last window. The market is pricing a development that public reporting has not captured.” |
| 3. News-driven panic | High narrative + sharp market move + flat/declining probability | ”Significant market move on heavy coverage, but prediction markets show probability unchanged. The price action is sentiment-driven.” |
| 4. Three-way confirmation | All three rising and aligned | State the converging signal and focus on second-order effects. |
| 5. Surface-redirect | All three converge on a topic adjacent to the user’s literal question | ”You asked about A. All three surfaces are saying the answer to a better question — B — is the more important finding.” |
Weighting conflicting signals
When surfaces conflict, weight by:- GDELT Cloud structured metrics first. A Story with
significance > 0.4andlinked_event significance > 0.4outranks a Story withsignificance 0.1and higharticle_count. - Confidence on GDELT events.
confidence > 0.85beats lower-confidence event coding. - Liquidity / volume on prediction markets. A probability with 500.
- Specificity of the contract. A direct contract beats a proxy contract.
- Recency. Last 7 days beats 30-day-aggregate signal for fast-moving stories.
- Source diversity. 50 articles from 30 distinct domains beats 50 articles from 3 domains.
When NOT to use this skill
- Single-surface tasks. Don’t manufacture macro-finance and prediction-market hops to use the skill.
- Lookups. Specific quote, entity profile, or known contract terms.
- The data isn’t there. If one surface returned empty, say so honestly — don’t invent a divergence.

