Workflow
AI Agent Monitoring
icon
Search documents
Datadog Q2 Earnings & Revenues Beat on Solid Customer Growth
ZACKS· 2025-08-11 15:30
Core Insights - Datadog reported strong second-quarter 2025 results with non-GAAP EPS of 46 cents, exceeding estimates by 12.20%, and revenues of $826.8 million, up 28.1% year-over-year, surpassing consensus by 4.55% [1][2] Customer Growth - The company ended the quarter with 31,400 customers, a 9.4% increase year-over-year, exceeding the Zacks Consensus Estimate by 0.75% [2] - High-ARR clients generating $100K or more in annual recurring revenues reached approximately 3,850, reflecting a 13.6% year-over-year increase, contributing about 89% of total ARR [3][11] Product Adoption and Innovation - Multi-product adoption is significant, with 83% of customers using at least two products and 14% adopting eight or more solutions, indicating strong platform stickiness [4] - Datadog unveiled over 125 new products and features at the DASH 2025 conference, focusing on AI-powered automation and log management to enhance customer engagement [8][10] AI and Security Growth - The AI-native customer segment has become a major growth driver, accounting for 11% of total revenues, up from 4% a year earlier, contributing 10 percentage points to year-over-year revenue growth [5][11] - The security product suite generated over $100 million in ARR, with mid-40% year-over-year growth, positioning the company for sustained growth [6][11] Future Guidance - For Q3 2025, Datadog anticipates revenues between $847 million and $851 million, representing 23% year-over-year growth, with non-GAAP EPS expected to be between 44-46 cents [12] Stock Performance - Datadog's shares have appreciated 16.7% in the trailing 12 months, underperforming the Zacks Computer and Technology sector's return of 29.4% [13]
Datadog Expands LLM Observability with New Capabilities to Monitor Agentic AI, Accelerate Development and Improve Model Performance
Newsfile· 2025-06-10 20:05
Core Insights - Datadog has introduced new capabilities for monitoring agentic AI, including AI Agent Monitoring, LLM Experiments, and AI Agents Console, aimed at providing organizations with end-to-end visibility and governance over AI investments [1][4][8] Industry Context - The rise of generative AI and autonomous agents is changing software development, but many organizations struggle with visibility into AI system behaviors and their business value [2][3] - A study indicates that only 25% of AI initiatives are currently delivering promised ROI, highlighting the need for better accountability in AI investments [4] Company Developments - Datadog's new observability features allow companies to monitor agentic systems, run structured experiments, and evaluate usage patterns, facilitating quicker and safer deployment of LLM applications [3][4] - The AI Agent Monitoring tool provides an interactive graph mapping each agent's decision path, enabling engineers to identify issues like latency spikes and incorrect tool calls [4][6] - LLM Experiments enable testing of prompt changes and model swaps against real production data, allowing users to quantify improvements in response accuracy and throughput [6][7] - The AI Agents Console helps organizations maintain visibility into both in-house and third-party agent behaviors, measuring usage, impact, and compliance risks [7]