Data Visualization, Big Data

ChaosSearch Unveils Chaos AI Assistant: Introducing Conversational AI for Log and Event Data Analytics

ChaosSearch Unveils Chaos AI Assistant: Introducing Conversational

ChaosSearch, an industry pioneer in cost effective and performant data analytics, has announced the early access availability of its breakthrough tool, the Chaos AI Assistant. Powered by OpenAI and integrated into the ChaosSearch Platform, this revolutionary assistant is set to redefine the way businesses interact with their data, making log and event data analytics a seamless, conversational experience.

The Chaos AI Assistant leverages the power of OpenAI's cutting-edge AI and Large Language Models (LLMs), integrating seamlessly with the ChaosSearch Platform. The core of this advancement lies in empowering users to engage in dialogues with their data, realizing actionable insights through natural language queries. This novel approach democratizes data analytics, making it accessible and intuitive for expert users, entry-level users, and non-technical users alike.

Importantly, while the Chaos AI Assistant offers the transformative power of AI analytics, it ensures no data is shared with the LLM, upholding stringent data security and privacy standards. Enhanced insights are achieved through intelligent utilization of hints and partial schema sharing with OpenAI, preserving the confidentiality of the actual data.

"With the Chaos AI Assistant, we're bridging the gap between complex data and human interaction," said Thomas Hazel, CTO and Founder of ChaosSearch. "Our vision of the future of data analytics is Conversational AI that drives actionable insight for all users, regardless of their technical expertise."

Key Features of Chaos AI Assistant:

  • Conversational Data Exploration: Empowers users to understand their data, process queries, and deliver relevant insights through intuitive, natural language dialogues.
  • Code Co-pilot: Provides intelligent assistance with Elastic and SQL queries, maintaining stringent data security.
  • Enhanced Collaboration: Facilitates efficient data sharing and exploration across diverse skill sets, fostering a more collaborative environment.
  • Real-time Insights: Offers instant visibility into system behavior, security monitoring, and application performance.

The Chaos AI Assistant smoothly complements tools that currently integrate with ChaosSearch, including OpenSearch Dashboard, Kibana, Grafana, Looker, and Superset, ensuring a seamless transition for all users. As a code co-pilot, it aids users in writing, debugging, and optimizing code, while ensuring data security and privacy.

The company is inviting users to join its early access program to experience the power of conversational data analytics firsthand and help shape the future of intelligent log and event data analytics. For more information about ChaosSearch and the Chaos AI Assistant, and to register for a personalized demo, visit

About ChaosSearch

ChaosSearch is revolutionizing the log and event management industry with its groundbreaking platform. Designed to provide large-scale, real-time data ingestion and support for robust log analytics, ChaosSearch caters to observability, security, and application insights while significantly cutting costs.

Delivering 50-80% cost savings, ChaosSearch brings exceptional value to its users without compromising on features or performance. The ChaosSearch Platform provides data access through open APIs like Elastic and SQL, allowing clients to use their existing tools including Kibana, Grafana, OpenSearch Dashboards, and Superset. The ChaosSearch Platform, coupled with the Chaos AI Assistant offers a cutting-edge tool for businesses to navigate their data.



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