groundcover Unveils Zero-Instrumentation Observability for AI Workflows
groundcover has introduced its LLM Observability solution, offering real-time, zero-instrumentation visibility into AI applications that utilize large language models (LLMs), as announced in a press release. This new platform allows teams to monitor and debug AI workflows, including multi-turn agents and retrieval-augmented generation pipelines, without the need for SDKs or middleware.
The solution leverages eBPF technology to capture interactions with providers like OpenAI and Anthropic, tracking prompts, completions, latency, token usage, and errors directly in production. This approach ensures that all data remains within the customer's cloud environment, meeting privacy and compliance standards.
groundcover's observability platform is designed to handle the complexities of modern AI workloads, providing end-to-end visibility and insights into performance and cost optimization. The company emphasizes that its solution addresses the unique challenges of LLM-driven applications, offering tools for debugging hallucinations, analyzing workflows, and maintaining compliance with sensitive data handling.
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