Easily bring AI-powered similarity search to your business data without managing and integrating multiple databases or compromising functionality, security, and consistency. AI Vector Search enables searching both structured and unstructured data by semantics or meaning, and by values, enabling ultra-sophisticated AI search applications. Native AI vector search capabilities can also help large language models (LLMs) deliver more accurate and contextually relevant results for enterprise use cases using retrieval-augmented generation (RAG) on your business data.
Obejrzyj nagranie wystąpienia wiceprezesa wykonawczego Juana Loaiza na konferencji Oracle CloudWorld, aby dowiedzieć się więcej o tej przełomowej infrastrukturze AppDev opartej na sztucznej inteligencji.
Easily combine similarity search with relational, text, JSON, spatial, and graph data types to enhance your apps—all in a single database. Bring AI to your data – don’t move your data for AI.
Enable natural language search across your private business data using RAG to guide the LLM of your choice better and steer it away from hallucinations.
Use your favorite development tools, AI frameworks, AI models, and programming languages to build AI apps how you want.
Build mission-critical AI apps with ease. Leverage industrial-strength capabilities to achieve scalability, performance, high availability, and security.
Oracle AI Vector Search capabilities include document load, transformation, chunking, embedding, similarity search, and RAG with LLMs is available natively or through APIs within the database.
Ready to up level your AppDev experience? Leverage the latest AI Vector Search capabilities with Oracle Database 23ai.
Oracle’s groundbreaking AI-centric application development infrastructure, GenDev, introduced at CloudWorld 2024, accelerates the benefits of AI and mitigates its risks.
Learn how AI Vector Search in Oracle Database 23ai combines semantic search on unstructured data with relational search on traditional business data for faster, more relevant, and more secure results.
“We are happy to see AI Vector Search added to Oracle Database. We appreciate that we can run AI Vector Search in the same Oracle Database as our other workloads, which allows us to provide a reliable and secure solution.”
Use the new native VECTOR data type to store vectors directly within tables in Oracle Database 23ai. Support vectors with different dimension counts and formats to suit any vector embedding model of your choice to simplify application development and deployment.
Import open source embedding models of your choice using the ONNX framework and use them to generate vectors for your data. Alternatively, use database APIs to generate vectors from your preferred embedding model provider. or optionally import vectors directly into the database.
Accelerate similarity searches using highly accurate approximate search indexes (vector indexes), such as the in-memory neighbor graph index for maximum performance and neighbor partition indexes for massive data sets.
Use simple, intuitive SQL to perform similarity search on vectors and freely combine vectors with relational, text, JSON, and other data types within the same query.
Take complete control of the search accuracy your application requires by specifying the target accuracy as a simple percentage. Define default accuracy during index creation and override in search queries, if needed.
Accelerate vector index creation and search with Exadata System Software 24ai optimizations. Gain the high performance, scale, and availability Exadata provides to enterprise databases.
Similarity search is focused on finding related data based on its semantic meaning. Unstructured data is difficult to search directly, so similarity search goes beyond simple keyword searches by considering the underlying text, image, audio, or video data instead of only searching the labels manually applied to it.
The need to identify a match for similar data across large data sets applies to many industries. Examples of similarity search include the following:
RAG uses the results of similarity search to improve the accuracy and contextual relevance of large language model responses to questions about business data. RAG helps identify contextually relevant private data that the LLM may not have been trained on and then uses it to augment user prompts so LLMs can respond with greater accuracy.
The desire to get higher quality answers from LLMs is universal, spanning many industries. Some examples of using RAG for improved accuracy include the following:
RAG helps organizations provide customized answers to business questions without the high cost of retraining or fine-tuning the LLMs.
At Oracle CloudWorld 2024, we are demonstrating two GPU-accelerated capabilities for Oracle Database that utilize NVIDIA GPUs to accelerate AI Vector Search functionality in Oracle Database 23ai. The first capability is the GPU-accelerated creation of vector embeddings from a variety of different input data sets, such as text, images, and videos. The second is an early-stage proof of concept that illustrates how GPUs can be used to accelerate vector index creation and maintenance within Oracle Database.
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With AI Vector Search in Oracle Database 23ai, organizations can combine semantic search of their business data with relational queries inside the same database.
Leading industry analysts share how AI Vector Search can help organizations everywhere use business data with GenAI to improve customer experiences and employee productivity.
Interested in learning more about Oracle AI Vector Search? Let one of our experts help.