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AI observability

The company has raised a total of $550 million and told SecurityWeek that the latest funding round (co-led by Advent, CPPIB, and Greenfield) has brought its valuation to $1.6 billion. The event brings together developers, SREs, platform teams, and engineering leaders for two days of https://iwantmyopenid.org/2022/11/page/4 workshops, practitioner sessions, and a leadership track focused on operating AI-powered systems in production. The virtual event runs May and will feature product deep dives, live demos, and customer sessions. AvailabilityCanvas, Canvas Agent, and Skills are available starting next week for all Honeycomb customers. Engineering teams can now trace what an agent did, reconstruct the full decision path, and understand failures without switching tools or piecing together logs by hand. › Install the HoneyHive tracing skill from github.com/honeyhive/skills and use it to add tracing to this agent.

AI observability

Software that lets users manage AI agents has proliferated in recent months as companies look to figure out how to quell enterprises’ fears about giving AI agents access to their data and software. It also supports the model context protocol (MCP), which connects AI applications to external data sources and integrates with other New Relic tools. As the data observability company launches an AI agent platform of its own, it knows it isn’t the only game in town. Get the complete 2026 Observability & AI Outlook with detailed findings, charts, and strategic recommendations for IT leaders. Organization sizes range from under 500 employees to more than 20,000, with 67% representing enterprises with 1,000 or more employees.

Traces remain consistent between offline evaluations and production logging, enabling teams to debug production issues using the same interface they used to test fixes. This hierarchical visibility helps teams understand complex agent coordination, identify bottlenecks in multi-step workflows, and debug issues across agent boundaries. If your agents run multi-step workflows or make autonomous decisions, you need observability that evaluates quality, not just logs requests. This visibility helps teams debug failures, optimize performance, and enforce quality standards across development and production. This approach separates AI products that deliver real value from demos that break in production.

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AI observability

Gartner projects the market will grow to $14.2 billion by 2028, fueled by surging complexity across hybrid and cloud-native environments. The AI SRE Agent correlates alerts into incidents and identifies root causes automatically. Or use OpenObserve Cloud for a fully managed, zero infrastructure option. The Helm chart deploys the full stack in HA mode in under five minutes and is the recommended approach. The recommended approach is to run both platforms in parallel for one to two months before cutover. Each customer or team gets their own organization with separate data, users, streams, dashboards, and alerts.

While AI initiatives command the highest share of strategic focus (cited by 63% of leaders as a top priority), cost savings are coming from https://labverra.com/articles/ai-machine-learning-coding-github-resources/ other areas, not the systems that keep infrastructure visible and operational. This isn’t immunity from budget scrutiny; it’s evidence that observability has become foundational, strategic infrastructure that leaders protect. Another capability becoming more mandatory in observability platforms is the use of AI and machine learning to deliver insights to enterprises. This aggregation of data will enable enterprises to more quickly and accurately determine the root cause of issues and perform analysis, significantly reducing mean time to resolution (MTTR). Innovation in analytics, cost optimization, and AI observability—a fast-emerging capability that helps enterprises monitor and manage generative AI outputs. Get important insights straight to your inbox, receive first looks at eBooks, exclusive event invitations, custom content, and more.

Companies are increasingly launching software to build and monitor AI agents in an effort to get enterprises to adopt AI. Organizations with stable funding can pursue the next round of optimization and capability building, widening their advantage over competitors still stuck in reactive operations. Only 41% of IT leaders report satisfaction with their platform’s ability to derive useful insights from collected data.

  • The person in the input must be intricately illustrated as a mystical tarot character surrounded by organic curves, floral and botanical patterns, golden ornamental borders, and soft, elegant colors.
  • Jones has a sound background with building full-stack applications on Server-full and Serverless architectures with technologies such as PHP, Node, Python and has been an advocate for Serverless-first mindset.
  • “We need to deploy capital and execute on it as quickly as possible.”
  • This makes it possible to diagnose complex issues and bring accountability to AI-driven decisions.
  • Bring domain experts into the loop to review edge cases, define quality, and align your evals with real-world business context.
  • Predictive analytics moves observability upstream, from detecting failures to preventing them.

This shift allows teams to move from a reactive stance to a proactive one, identifying anomalies and resolving issues long before they escalate into full-blown outages. While much of the executive conversation around artificial intelligence focuses on transformation within business units, more organizations are looking inward. Building custom dashboards and alerting systems directly from AI Gateway logs

Qodo’s full codebase context approach positions it as a pre-merge quality gate, addressing enterprise reliability concerns that have slowed AI adoption in software engineering workflows…. Agentic AI observability is the practice of systematically collecting and analyzing data about autonomous AI agents’ actions, decisions, and context to ensure reliability, accountability, and continuous improvement. With 25+ integrations for models like OpenAI, Gemini, and Claude, sub-500ms latency on Stream’s global edge network, and support for YOLO, Roboflow, and custom CV models, you get a production-ready stack without the infrastructure headache. Matt Merrill is a software engineering leader with over 20 years of experience building and scaling software teams across enterprise and product-focused organizations. The platform automatically captures exhaustive traces, including duration, token counts, tool calls, errors, and costs, with query performance designed for AI workload patterns. For teams running customer-facing or business-critical agents, Braintrust offers the most complete approach to continuously measuring and improving agent reliability at scale.

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