From Data to Delight: Snowflake Cortex Search Powers Smarter AI Solutions

From Data to Delight: Snowflake Cortex Search Powers Smarter AI Solutions

Snowflake Cortex Search is a fully managed search service for documents and other unstructured data. With Cortex Search, organizations can effortlessly deploy retrieval-augmented generation (RAG) applications with Snowflake, powering use cases like customer service, financial research and sales chatbots. Cortex Search offers state-of-the-art semantic and lexical search over your text data in Snowflake behind an intuitive user interface. To make this further compelling for users, Snowflake ensure that it comes with the robust security and governance features!

In this article we will discuss how Snowflake Cortex Search helps you meet the need for your RAG applications

Solving the challenges of building high-quality RAG applications

Anyone who put data into Snowflake has one simple goal

GAOL: How can I extract more value from my data in Snowflake.

NEED: With AI, this mission extends more than ever to unstructured data, where RAG has become a standard approach to customizing generative chat applications with proprietary data.

WHY RAG: RAG empowers organizations to create, among many other things, powerful customer service, sales and R&D applications that accurately leverage their proprietary data.

CHALLENGE: While retrieval is a fundamental component of any AI application stack, creating a high-quality, high-performance RAG system remains challenging for most enterprises.

WHY:

Consider the components one must manage to successfully deploy RAG at scale:

  • Infrastructure and operations: Platform teams have to deploy and manage numerous retrieval components — hosted embedding models, vector databases, data indexing pipelines, hosted reranking models, observability tools and more.
  • Search-quality tuning: Engineers and data scientists have to spend time evaluating models and parameter configurations to tune the retrieval and ranking components to their specific business use cases.
  • Security and governance: Security teams have to conduct extensive reviews to ensure that each component in the stack is treating data securely and respecting governance policies.

SOLUTION: Cortex Search

Cortex Search provides hybrid search at enterprise scale

Cortex Search is natively integrated into Snowflake, built to serve queries in 200–300 ms over large volumes of text. It supports “fuzzy” search, where the service takes in natural language queries and returns the most relevant text results, along with associated metadata. It’s optimized for low latency, making it an ideal backend for interactive end user applications. And when combined with industry-leading LLMs in Cortex AI, Cortex Search can be used to develop powerful chatbots.

Cortex Search provides world-class, AI-powered search capabilities at a lower total cost of ownership (TCO). This means you can spend less time on infrastructure management and retrieval-quality tuning, and more time on building delightful AI-powered applications for end users. It’s designed with the following tenets in mind:

  • Easy to use: Fully managed infrastructure means that operational responsibilities are handled by Snowflake. Cortex Search offers automated, incremental ingestion with low-latency serving.
  • State-of-the-art search quality: Get state-of-the-art “fuzzy” search capabilities out of the box — no tuning required.
  • Secure and governed: Benefit from the same security and governance features as the rest of your Snowflake data.

Conclusion

Snowflake Cortex Search makes deploying high-quality RAG applications easy, secure, and cost-effective. With advanced search capabilities and seamless integration into the Snowflake ecosystem, Cortex Search lets organizations quickly build AI-powered applications like chatbots and customer service solutions, all while reducing infrastructure and tuning burdens. This enables teams to extract more value from their data and focus on impactful user experiences.


#AI #Snowflake #RAG #UnstructuredData #CortexSearch #MachineLearning #DataGovernance #DataSecurity #SemanticSearch #GenerativeAI #DataTransformation #LowLatency #SearchInnovation Saqib M. Sridhar Ramaswamy Tarik Dwiek Christian Kleinerman Benoit Dageville Torsten Grabs

要查看或添加评论,请登录

Ibby Rahmani的更多文章