Introduction to AI in Azure Cognitive Search
The first cloud search tool with advanced AI is Azure Cognitive Search that enriches all forms of knowledge such that related material can be quickly found and explored on a scale. It was known as Azure Search, it uses the same advanced Microsoft natural language stack that Bing and Office have used for over a decade and dream, voice and expression AI services. In this insight, we will explore the AI features of Azure Cognitive Search
AI enrichment in Azure Cognitive Search
AI enrichment is a capability of Azure Cognitive Search indexing which is used to extract text from any data sources like from images, blobs and any other structured data sources. Skills are used to enrich the data gathered from the data source. Cognitive skills built into the service fall into these categories:
These type of skills include
- Entity Recognition – This skill is used to extract different kinds of entities from text.
- Language Detection – This skill detects the user’s language as input and gives a single language code for every document submitted.
- Key Phrase Extraction – This skill evaluates unstructured text; this skill usually returns a list of key phrases. It uses ML models and quickly picks up main points from the record.
- Sentiment Detection – This skill evaluates the unstructured text and also indicates if the sentiment is positive or negative by giving a numeric score between 0 and 1. If the score is close to 1, it means a positive sentiment, and if it is near to 0, it indicates negative sentiment.
This skill includes OCR (Optical Character Recognition) and the identification of visual features. It helps identify facial detection, image interpretation, image recognition (famous people and landmarks) and various attributes related.
AI Enrichment Pipeline Steps
Cognitive skills being used in azure cognitive search are based on pre-trained ML models in its service APIs.
Step 1 – Connection and document cracking phase
This step involves fetching of unstructured text data from a data source like azure data and then accessing the same data with the help of indexer which cracks the source document to extract text from source data.
Step 2 – Enrichment phase
The data from step 1 is enriched with the help of cognitive skills by performing atomic operations. There are many skills to choose from and each different play a role in enriching the data. The collection of ability used in the pipeline is called a skillset.
Knowledge Store element is added to save enrichments, it provides an Azure storage connection and also provides with projections that describe how the enrichments are stored.
Step 3 – Search index and query
After step 2, the user gets a search index consisting of enriched documents, fully text searchable content in Azure Cognitive Search. This index is accessed by implementing queries over it by users and developers; this is the way to access the enriched content generated by the pipeline.
AI cognitive search helps the user to read any unstructured text, like from image or anything else, interpret it using ML libraries and getting a data that could be worked upon by analyzing it or processing over it for further use.
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