Oracle Launches HeatWave GenAI with In-Database LLMs and Vector Store

Oracle introduces HeatWave GenAI, featuring the industry's first in-database large language models and an automated vector store. This innovation enables enterprises to develop AI applications without data migration, AI expertise, or additional costs, outperforming competitors like Snowflake and Google BigQuery.
Oracle Launches HeatWave GenAI with In-Database LLMs and Vector Store
Image Credit: Oracle

Customers can now build generative AI applications seamlessly without AI expertise, data movement, or additional costs. HeatWave GenAI surpasses Snowflake, Google BigQuery, and Databricks in vector processing speeds, achieving 30x, 18x, and 15x faster performance, respectively.

Introduction of HeatWave GenAI


Oracle has announced the availability of HeatWave GenAI, featuring the industry’s first in-database large language models (LLMs) and an automated in-database vector store. This new offering also includes scale-out vector processing and contextual natural language interactions informed by unstructured content. HeatWave GenAI enables enterprises to leverage generative AI directly within their database, eliminating the need for AI expertise or data migration to separate vector databases. It is now available across all Oracle Cloud regions, Oracle Cloud Infrastructure (OCI) Dedicated Region, and multiple clouds at no extra cost to HeatWave customers.

Key Features of Oracle HeatWave GenAI

Developers can now create a vector store for unstructured enterprise content using a single SQL command, thanks to built-in embedding models. Users can perform natural language searches in one step, utilizing either in-database or external LLMs. With HeatWaveโ€™s high scalability and performance, there is no need to provision GPUs, simplifying application complexity, enhancing performance, and improving data security while lowering costs.

Enhancing Enterprise AI with HeatWave

โ€œHeatWaveโ€™s innovation continues with the integration of HeatWave GenAI,โ€ said Edward Screven, Oracleโ€™s Chief Corporate Architect. โ€œThese AI enhancements enable developers to quickly build rich generative AI applications without AI expertise or data movement. Users can interact intuitively with enterprise data to get accurate business insights swiftly.โ€

Industry Reactions to HeatWave GenAI

Vijay Sundhar, CEO of SmarterD, commented, โ€œHeatWave GenAI simplifies generative AI use, significantly reducing application complexity, inference latency, and costs. This democratization of AI will enhance our productivity and enrich our applications.โ€

Innovative In-Database LLMs and Vector Store by Oracle

Oracleโ€™s in-database LLMs reduce the complexity and cost of developing generative AI applications. Customers can perform data searches, content generation, and retrieval-augmented generation (RAG) within HeatWaveโ€™s vector store. Additionally, HeatWave GenAI integrates with OCI Generative AI services to access pre-trained models from leading LLM providers.

The automated in-database vector store allows businesses to utilize generative AI with their documents without transferring data to a separate database. The process, including document discovery, parsing, embedding generation, and insertion into the vector store, is fully automated within the database, making HeatWave Vector Store efficient and user-friendly.

Oracle HeatWaveโ€™s Advanced Vector Processing

HeatWaveโ€™s scale-out vector processing supports fast and accurate semantic search results. It introduces a native VECTOR data type and an optimized distance function, enabling semantic queries using standard SQL. HeatWaveโ€™s in-memory hybrid columnar representation and scale-out architecture ensure near-memory bandwidth execution and parallel processing across up to 512 nodes.

HeatWave Chat: Simplifying User Interactions

HeatWave Chat, a Visual Code plug-in for MySQL Shell, provides a graphical interface for HeatWave GenAI. It allows developers to ask questions in natural language or SQL, maintain context, and verify answer sources. The integrated Lakehouse Navigator facilitates the creation of vector stores from object storage, enhancing the user experience.

Impressive Benchmark Performance of HeatWave GenAI

HeatWave GenAI demonstrates impressive performance in creating vector stores and processing vector queries. It is 23x faster than Amazon Bedrock for creating vector stores and up to 80x faster than Amazon Aurora PostgreSQL for similarity searches, delivering accurate results with predictable response times.

HeatWave GenAI: Customer and Analyst Endorsements

Safarath Shafi, CEO of EatEasy, praised HeatWaveโ€™s in-database AutoML and LLMs for their differentiated capabilities, enabling new customer offerings and improving performance and quality of LLM results.

Eric Aguilar, founder of Aiwifi, highlighted HeatWaveโ€™s simplicity, security, and cost-effectiveness in leveraging generative AI for enterprise needs.

Holger Mueller, VP at Constellation Research, emphasized HeatWaveโ€™s integration of automated in-database vector stores and LLMs, which allows developers to create innovative applications without moving data, ensuring high performance and cost efficiency.

Oracle HeatWave: Integrated AI and Analytics Solution

HeatWave is the only cloud service offering integrated generative AI and machine learning for transactions and lakehouse-scale analytics. It is a key component of Oracleโ€™s distributed cloud strategy, available on OCI, AWS, Microsoft Azure via Oracle Interconnect for Azure, and in customer data centers with OCI Dedicated Region and Oracle Alloy.

Read theย HeatWave technical blog


Recent Content

In 2025, data centers are at the forefront of AI innovation, balancing the explosive growth of AI workloads with urgent sustainability goals. This article explores how brownfield and greenfield developments help operators manage demand, support low-latency AI services, and drive toward net-zero carbon targets.
There’s immense pressure for companies in every industry to adopt AI, but not everyone has the in-house expertise, tools, or resources to understand where and how to deploy AI responsibly. Bloomberg hopes this taxonomy โ€“ when combined with red teaming and guardrail systems โ€“ helps to responsibly enable the financial industry to develop safe and reliable GenAI systems, be compliant with evolving regulatory standards and expectations, as well as strengthen trust among clients.
A focus on efficiency and cost-cutting, often driven by “bean counters” and “time and motion” experts, stifles innovation and leads to job losses, mirroring the current AI discourse. Overemphasis on efficiency, like the race to the bottom, can ultimately harms everyone except the initial beneficiaries. For example, distributed energy where building new infrastructure and expanding into new sectors, like solar, generates jobs in manufacturing, installation, and new industries. Instead of solely fearing job displacement, we should prioritize investment in innovation, education, entrepreneurship, and just transition policies to create a future where progress benefits all through job creation. I advocate for strategic investment to build the future, instead of just shrinking the present.
AI promises major gains for telecom operators, but most initiatives stall due to outdated, fragmented inventory systems. Discover why unified, service-aware inventory is the missing link for successful AI in telecomโ€”and how operators can build a smarter, impact-ready foundation for automation with VC4’s Service2Create (S2C) platform.
As networks grow more complex, traditional management models fall short. This article explores how AIOps (Artificial Intelligence for IT Operations) enables autonomous networks that self-configure, self-optimize, and self-heal. Learn how service providers can use AIOps frameworks to achieve predictive maintenance, dynamic resource management, enhanced customer experiences, and operational scalability to thrive in the era of 5G, IoT, and beyond.
Indian telecom companies such as Jio and Airtel are moving beyond internal AI use cases to co-develop monetizable, India-focused AI applications in partnership with tech giants like Google, Nvidia, Cisco, and AMD. These collaborations are enabling sector-specific AI tools across healthcare, education, and agriculture, boosting operational efficiency, customer experience, and creating new revenue streams for telecom operators.

It seems we can't find what you're looking for.

Download Magazine

With Subscription

Subscribe To Our Newsletter

Scroll to Top