Format is real product data
These pages are grounded in captured post formats already stored in SlopScore, not guessed content categories.
Format pages
These pages are built from a real product dimension: the post formats already captured in production. That makes these pages a more useful way to compare what the feed looks like before you judge the wording alone.
Use format pages when the shape of the feed feels as important as the wording itself. SlopScore tracks the visible format mix so you can tell whether image posts, video posts, text posts, or article-style posts are driving the sample.
Why format pages matter
These pages are grounded in captured post formats already stored in SlopScore, not guessed content categories.
Image, video, text, and article-style posts create different combinations of hooks, formatting pressure, and language drift.
Format pages turn the benchmark into plain-language explanations tied to the same first-party product data.
Formats
Each page explains how one format behaves in the benchmark, which signals often travel with it, and how to interpret the score when that format becomes a larger share of the visible sample.
A format page for understanding when image-heavy LinkedIn posting starts feeling repetitive, over-packaged, or optimized for reaction.
A format page for understanding how video-led posting changes the score, signal mix, and feel of a visible LinkedIn sample.
A format page for understanding how text-first LinkedIn writing picks up repeated language, structure, and bait patterns.
A format page for understanding how article-style LinkedIn posting changes the score, timeline mix, and pattern clusters.
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Format is one of the cleanest ways to explain the benchmark because it maps directly to the product and to what people already notice on screen.