Semantic & Intent Fusion Targeting (SIFT) | MMA / Marketing + Media Alliance
Future Labs

Semantic & Intent Fusion Targeting (SIFT)

Bringing Semantic Intelligence to Programmatic Advertising
Semantic & Intent Fusion Targeting (SIFT) represents the next generation of contextual advertising. Instead of relying solely on keywords or legacy segments, SIFT uses pre-computed LLM-derived embeddings to understand page content and user intent at programmatic speed. By querying billions of URLs and anonymized behavioral signals through fast vector similarity search, SIFT adds high-propensity semantic signals to standard RTB inputs—without the latency of in-auction LLM inference.

Research Objectives

  • Evaluate whether LLM-derived embeddings improve business outcomes (CPA, ROAS, conversion rate) in programmatic bidding versus:
  • Standard RTB-only approaches
  • Curated keyword/interest audiences
  • Identify which configuration performs best and under what conditions.

Research Questions

  • How much uplift do embedding‑based tactics deliver versus RTB-only and curated audiences in live campaigns?
  • Which variant performs better and by what margin:
  • Contextual embeddings only, or
  • Contextual + anonymized user-sequence embeddings?
  • For which campaign objectives (acquisition vs. engagement) and KPI types (purchases, sign-ups, product views) do we see the most significant and consistent gains?

How it works

SIFT Infographic

Pre-Computation

  • LLMs analyze page content and user browsing sequences
  • Generate semantic embeddings for ~4 billion URLs
  • Create behavioral embeddings for millions of anonymized users
  • Refresh hourly to maintain currency

Embedding Index

  • Store pre-computed embeddings in fast vector database
  • Enable sub-millisecond similarity search
  • Maintain both contextual (page) and behavioral (user) signals

Real-Time Bidding

  • Query embedding index at auction time via vector similarity
  • Augment standard RTB signals with semantic intelligence
  • Make informed bid decisions without in-auction LLM latency
  • Deliver improved ad performance through enriched user intent understanding

Methodology & Approach

Design This is a true A/B split-test run within your live open-web display or online video campaigns. We maintain equal pacing, matched creative, and identical attribution across all arms.
Test Arms
  • Treatment: RTB + Contextual & User-Sequence Embeddings
  • Control 1: RTB-only
  • Control 2 (Optional): Curated Keyword/Interest Audiences
Technology The system uses a pre-computed embedding index with ~4 billion URLs and millions of anonymized users, refreshed hourly by Cognitiv. This index is queried via vector similarity at auction time to augment RTB signals.
Requirements Participating brands fund the ad spend (plan for ~$50K minimum for high-volume KPIs). You must implement a standard pixel/postback for your primary KPI.

Interested in learning more about MMA's Semantic & Intent Fusion Targeting Lab?