Generative AI
Since Aspire 5.2 it integrates with Large Language Models (GenAI) services like Azure Open AI, among others on premise models to enrich content and allow businesses to leverage Aspire vast set of connectors to power GenAI applications.
Aspire enables understanding and generation of content based on existing business data, for instance
For content generation
Content summarization
Summarizing ESG goals from web pages, annual reports, earning calls, news, etc.
Summarizing project status, data tables, e-mails, complex documents
Automatic description generation
Describe a table/function/database/view based on its schema, data samples and context.
For content understanding
Deep meaning search (vector embeddings)
Find the best sentence or paragraph in policies & procedures, FAQs, documentation, help files, web content, etc.
Find duplicative content – across web sites, documentation, etc.
Content classification
Identifying risky clauses in contracts, find improper language, locate terms & conditions, identify root cause statements, connecting regulatory statements to corporate obligations, etc.
Export controls, secret classification, intellectual property, privacy, Material Non-Public Information, etc.
Meaning Enriched Business Identifiers
Users can find identifiers with simple names and descriptions
Business entities enriched with deep meaning vectors
Models supported
Azure Open AI
GPT 3.5/4
Text Embedding ADA v1 & v2 (text-embedding-ada-002)
Customized chat & embeddings models
On premise Python models (with Aspire + Python Bridge model)
BERT
T5
GTR-T5
MiniLM
any other embeddings models
To learn more about these applications and how to configure them go to Generative AI Components