Trellix Revolutionizes Log Parsing with LangGraph and LangSmith


Trellix Revolutionizes Log Parsing with LangGraph and LangSmith


Lawrence Jengar
Apr 22, 2025 04:46

Trellix leverages LangGraph Studio and LangSmith to drastically cut log parsing time from days to minutes, enhancing efficiency and customer satisfaction.

In a significant breakthrough for cybersecurity, Trellix has successfully reduced log parsing time from days to mere minutes by employing LangGraph Studio and LangSmith, according to a report from LangChain’s blog. This innovation is part of Trellix’s broader strategy to enhance customer experience and operational efficiency.

Addressing Log Parsing Challenges

Trellix, a prominent cybersecurity firm serving over 40,000 customers, has historically faced challenges with a growing backlog of customer requests related to cybersecurity integrations and log parsing. Previously, these tasks required developers to spend several days deciphering logs and coding integrations, leading to customer frustration due to prolonged wait times.

To tackle these issues, Trellix developed an internal application named Sidekick, designed to automate tedious processes such as log parsing and script writing. By utilizing LangGraph tools, Trellix managed to automate the generation of parsers for unknown log formats, drastically reducing manual parsing time and allowing engineers to focus on more complex tasks.

The Role of LangGraph and LangSmith

LangGraph provided Trellix with the necessary tools for creating modular and efficient agent workflows, significantly improving the development process. The use of map-reduce style graphs and subgraph calling facilitated the creation of a structured approach to handling log data.

LangSmith was integral in monitoring and evaluating agent performance, allowing Trellix to experiment with different agent architectures and track performance metrics effectively. This capability enabled the team to make data-driven decisions, ensuring that improvements were grounded in empirical evidence.

Visualizing and Debugging with LangGraph Studio

LangGraph Studio played a crucial role in visualizing and optimizing agent workflows. By mapping manual processes and transitioning them into automated workflows, Trellix was able to enhance the efficiency of their operations. This visualization also facilitated communication with non-technical stakeholders, providing clear insights into AI models’ decision-making processes.

Impact and Future Prospects

The implementation of LangGraph and LangSmith has resulted in significant time savings for Trellix’s engineering team and improved customer satisfaction. The company has not only reduced log parsing times but also accelerated customer request resolution, improved AI agent performance, and boosted stakeholder confidence.

Looking forward, Trellix plans to expand the capabilities of Sidekick to external partners, aiming to democratize access to AI-driven solutions in cybersecurity. The success of these tools has set the stage for continued innovation, with plans to extend automated parsing and cloud connectors to all customers in the upcoming quarter.

Through these advancements, Trellix is paving the way for future developments in AI-driven cybersecurity solutions, demonstrating the transformative potential of integrating cutting-edge technologies into traditional processes.

For more information, visit the LangChain blog.

Image source: Shutterstock




Source link