The Language of
Performance

Large language models are embedded at the core of the RTB House Deep Learning stack, enriching every campaign with semantic intelligence derived from natural language. Sharper targeting, more relevant ads. Better results across the funnel.

Generating semantic
intelligence at scale

LLMs analyze content across the open internet and product feeds at scale, transforming complex natural language into an ever-expanding map of contextual relationships that power more precise ad targeting. Large language models are already working behind the scenes in all our campaigns.

Numbers that speak for themselves

Operating LLMs across the open internet requires robust engineering. Here are some numbers that show it in action to date.

66 M

URLs analyzed

70 M

matched offers

90 K

audiences generated

What LLMs bring
to the table

Large language models understand web content the way humans do. Not by counting keywords, but by interpreting meaning. RTB House embeds this capability directly into its Deep Learning engine.

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Semantic understanding at depth

LLMs embed critical contextual insight directly into our Deep Learning engine, improving every bid with semantic signals derived from natural language. Our Deep Learning system already analyzes vast quantities of data at every bidding decision. LLMs add an additional layer of contextual intelligence, boosting results across the sales funnel.

LLM-powered audiences

Our LLMs read web content the way humans do, interpreting the meaning of articles on the open internet to identify true intent. The system calculates semantic relevance between URL content, advertiser inventory, and LLM-defined audiences that place ads in front of those genuinely interested in your products.

Products matched to context

LLMs align the semantics of each page with ads for the most relevant products from the advertiser's catalog, so the right ad meets the right context.  Advanced, first-of-its-kind semantic comparison increases ad relevance in matching products to context automatically across every campaign.

How LLMs work inside our engine

Four steps connect language understanding to campaign performance running automatically, at scale, inside every campaign.

URL and feed semantic processing

URL and feed semantic processing

Our LLMs analyze web content at the individual URL level and process natural language across page content and product feeds, transforming unstructured data into structured semantic representations.

Semantic relevance and signal generation

Semantic relevance and signal generation

The system calculates relevance between URL content and advertiser inventory, then generates contextual signals and audiences based on that analysis.

Integration into the Deep Learning engine

Integration into the Deep Learning engine

All LLM-derived signals are fed directly into the RTB House Deep Learning stack, informing real-time bidding and offer selection across every impression.

Automatic activation across campaigns

Automatic activation across campaigns

This LLM technology runs inside every campaign from day one. No setup, no configuration, immediate performance.

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