Skip to content

Commit 7b80e50

Browse files
Merge pull request #124 from microsoft/docs-gh-overview
docs: readme updates
2 parents 2fc35c3 + c825e58 commit 7b80e50

1 file changed

Lines changed: 4 additions & 2 deletions

File tree

README.md

Lines changed: 4 additions & 2 deletions
Original file line numberDiff line numberDiff line change
@@ -1,5 +1,7 @@
11
# Content processing solution accelerator
2-
This solution accelerator enables customers to programmatically extract data and apply schemas to unstructured documents across text-based and multi-modal content. During processing, extraction and data schema transformation - these steps are scored for accuracy to automate processing and identify as-needed human validation. This allows for improved accuracy and greater speed for data integration into downstream systems.
2+
Extract data and apply schemas across your multi-modal content, with confidence scoring and user validation enabling greater speed of data ingestion. Process claims, invoices, contracts and other documents quickly and accurately by extracting information from unstructured content and mapping it to a structured format. This template supports text, images, tables and graphs.
3+
4+
These capabilities can be applied to numerous use cases including: contract processing, claims processing, invoice processing, ID verification, and clinician-patient visit record summarization.
35

46
<br/>
57

@@ -14,7 +16,7 @@ This solution accelerator enables customers to programmatically extract data and
1416
Solution overview
1517
</h2>
1618

17-
The solution leverages Azure AI Foundry, Azure AI Content Understanding, Azure OpenAI Service, Azure blob storage, and Azure Cosmos DB to transform large volumes of unstructured content through event-driven processing pipelines for integration into downstream applications and post-processing activities.
19+
This accelerator leverages Azure AI Foundry, Azure AI Content Understanding Service, Azure OpenAI Service, Azure blob storage, Azure Cosmos DB, and Azure Container Apps to transform large volumes of unstructured content through event-driven processing pipelines for integration into downstream applications and post-processing activities. Processing, extraction and data schema transformation steps are scored for accuracy to automate processing and identify as-needed human validation.
1820

1921
### Solution architecture
2022
|![image](./docs/images/readme/solution-architecture.png)|

0 commit comments

Comments
 (0)