Langfuse : Open-Source LLM Observability, Tracing, and Prompt Versioning

"Langfuse: Open-Source LLM Observability, Tracing, and Prompt Versioning"

Modern LLM systems fail in ways that ordinary logs, metrics, and APM dashboards cannot fully explain. This book is written for experienced engineers, platform teams, and technical leads who are building production AI applications and need rigorous control over tracing, prompt evolution, evaluation, and operational visibility. It treats Langfuse not as a feature checklist, but as an engineering platform for understanding, improving, and governing complex LLM behavior at scale.

Across the book, readers learn how to model runtime activity with traces, observations, and sessions; implement high-signal instrumentation with SDKs and OpenTelemetry; manage prompts as versioned artifacts; and connect prompt changes directly to production outcomes. The coverage extends into scoring systems, human and automated evaluation workflows, dataset-driven experimentation, regression detection, dashboards for quality, latency, and cost, and the realities of self-hosted deployment and upgrade strategy. The result is a practical framework for building feedback loops that make LLM systems measurable and improvable.

The presentation is architectural and operational rather than introductory. Readers should already be comfortable with distributed systems, APIs, and modern application delivery practices. In return, they get a focused, deeply structured guide that emphasizes trade-offs, implementation patterns, and production decision-making for serious Langfuse adoption.

Om denne boken

"Langfuse: Open-Source LLM Observability, Tracing, and Prompt Versioning"

Modern LLM systems fail in ways that ordinary logs, metrics, and APM dashboards cannot fully explain. This book is written for experienced engineers, platform teams, and technical leads who are building production AI applications and need rigorous control over tracing, prompt evolution, evaluation, and operational visibility. It treats Langfuse not as a feature checklist, but as an engineering platform for understanding, improving, and governing complex LLM behavior at scale.

Across the book, readers learn how to model runtime activity with traces, observations, and sessions; implement high-signal instrumentation with SDKs and OpenTelemetry; manage prompts as versioned artifacts; and connect prompt changes directly to production outcomes. The coverage extends into scoring systems, human and automated evaluation workflows, dataset-driven experimentation, regression detection, dashboards for quality, latency, and cost, and the realities of self-hosted deployment and upgrade strategy. The result is a practical framework for building feedback loops that make LLM systems measurable and improvable.

The presentation is architectural and operational rather than introductory. Readers should already be comfortable with distributed systems, APIs, and modern application delivery practices. In return, they get a focused, deeply structured guide that emphasizes trade-offs, implementation patterns, and production decision-making for serious Langfuse adoption.

Kom i gang med denne boken i dag for 0 kr

  • Få full tilgang til alle bøkene i appen i prøveperioden
  • Ingen forpliktelser, si opp når du vil
Prøv gratis nå
Mer enn 52 000 personer har gitt Nextory 5 stjerner på App Store og Google Play.


Relaterte kategorier