Standard SharePoint search results often rely on short, query-influenced text snippets that may not surface the most relevant sections of a document for a user’s specific query. AI-driven search summaries aim to clarify results by combining document content with managed property signals to produce readable, query-aware abstracts. PointFire’s Search Summarizer, for example, generates query-focused abstracts for indexed documents, identifying the key content and managed property signals that contributed to the document’s relevance for the query. Instead of a dull excerpt, the tool provides query-focused abstracts for your search results, showing exactly why a document matched your terms. This transforms raw metadata into meaning: users see at a glance how the Title, content, or even date (Created) relate to their query. In other words, Summarizer turns pages of data into actionable insights by surfacing the key facts up front.
It does this in a few steps. First, it modifies the original search query to one that includes metadata, using metadata expressions that were implied but not specified in the original natural language query. This turns meaning into metadata. Then when the document is returned, it analyzes the keywords and the metadata in the query to generate a query-specific summary, turning metadata back into meaning.
SharePoint Search and Metadata Filtering
SharePoint Search already builds on metadata. Under the hood, it indexes document content along with configured managed properties, while enforcing security trimming based on permissions as this infrastructure allows administrators to craft precise KQL queries — For example, using managed property filters like Title: Report AND Author: “Jane Smith” to find exact matches. These filters leverage managed properties to narrow results effectively. However, because out-of-the-box search results still typically display limited text snippets, even when advanced filtering is applied, users are often forced to click through multiple documents to confirm their relevance to the specific query.
AI Summaries: Adding Context to Results
PointFire Search Summarizer solves this by layering AI on top of SharePoint search. For each result, it generates a concise relevance summary that highlights the most relevant content and signals associated with the query match. As the product page notes, each result includes a short summary showing why it’s relevant to your query. Unlike standard document summaries that provide a static overview of a file’s entire content, PointFire creates dynamic summaries tailored to the specific context of the search query. The tool generates query-aware summaries on-demand, providing on-demand context tailored to the user’s specific search terms.
Furthermore, Summarizer lets you browse the most relevant sentences in context. By surfacing key snippets and managed properties directly in the search results, users can evaluate relevance without navigating away from the search page. This actionable insight acts as a mini-excerpt, displaying the most relevant sentences in context so users can see exactly how their query is addressed without opening the file. This enables users to triage search results more effectively, minimizing the ‘trial-and-error’ process of opening irrelevant documents to verify their content
Query Rewriting with Metadata Awareness
Since writing accurate metadata-constained queries doesn’t come naturally without a lot of training, Summarizer also includes AI-Enhanced Queries to improve retrieval by providing suggestions for alternative terms, correcting spellings, and interpreting natural language to structure complex logic — such as ANDs, ORs, and parentheses — into the correct KQL syntax automatically. If you type “show me reports from 2023”, it can recognize “2023” as a date filter and convert it into a range on the Created property (e.g,. Created:2023-01-01..2023-12-31). As the PointFire team notes, the system identifies that documents have a “Created” property and applies the correct syntax for constraining a date-type property to a range. This metadata-savvy rewriting ensures natural-language searches utilize SharePoint’s advanced filters, resulting in a precise set of documents accompanied by AI-generated explanations of why they match.
Integration with Your Search Platform
PointFire built the Summarizer as an add-on for modern SharePoint. It is a PnP Modern Search extension, meaning it plugs into the popular custom search web part. In fact, the product page confirms: Summarizer integrates seamlessly with your existing SharePoint environment and requires no separate Copilot license. The solution is cost-efficient, with recommended AI models generating summaries at around $2 per 1,000 results on Azure. You can even choose alternative models to trade depth for speed at a fraction of that cost. In other words, it works with Microsoft Search (the cloud search in SharePoint) and classic SharePoint Search alike. This makes it ideal for advanced search in SharePoint scenarios: you can use it in any page or dashboard built on the PnP search API and even with Microsoft Search Graph Connectors.
All summaries are generated within your own environment via your Azure OpenAI instance, respecting SharePoint security. Users only see summaries for content they already have permission to view. In short, the tool enhances SharePoint Search without exposing your data externally. By weaving managed properties and AI together, the tool automates the extraction of relevant content and properties. As one user guide puts it, the system tells you exactly what in that document is relevant — or not — to your search.
In sum, combining SharePoint’s filtering with AI-powered summaries turns every query into an immediate, actionable insight. Whether used in a simple site search or a custom advanced search page, PointFire Summarizer turns metadata into meaning to improve retrieval accuracy and reduce the time spent sifting through irrelevant results.




