Lessons from Building Agentic Binary Analysis, Part 1: LLMs Skim, They Don't Explore.
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Exploring how autonomous AI agents are revolutionizing binary code analysis through self-directed reasoning, collaborative multi-agent systems, and adaptive threat detection strategies that operate without human intervention.
We're excited to announce the launch of DeepDiff, Deepbits' groundbreaking solution for vulnerability detection and binary diffing. DeepDiff represents a major leap forward in security analysis. It helps security researchers, reverse engineers, and development teams to pinpoint vulnerable functions and generate precise diffing views across binary files with unmatched accuracy.
Existing commercial malware detection engines have a relatively low first-day detection rate for newly discovered samples, and it takes two to three days to gradually reach a detection rate of more than 90%. This leaves a large attack surface for malware. To solve this problem, we developed a new technique that can identify new malware at first sight, without the need for periodic retraining of machine learning models.