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You can identify drifts in your LLM applications by visualizing trace data in clusters on the Clusters page. Select an application configured with LLM Observability to view cluster information.
Cluster Maps display inputs or outputs, grouped by topic. Inputs and outputs are clustered separately. Topics are determined by clustering the selected input or output into text embeddings in high dimensions, then projecting them into a 2D space.
You can visualize the clusters by using a Box Packing or Scatter Plot layout.
Cluster Maps provide an overview of each cluster’s performance across operational metrics, such as error types and latency, or out-of-the-box or custom evaluations, enabling you to identify trends such as topic drift and additional quality issues.
Customize your search query by selecting the sorting options to narrow down the clusters based on your specific criteria, such as evaluation metrics or time periods, for more targeted analysis.
inputs
or outputs
from the dropdown menu to see clusters for inputs or outputs grouped by topic.Output Sentiment
for “What is the sentiment of the output?” or duration
for “How long does it take for an LLM to generate an output (in nanoseconds)?”Select a topic cluster from the list to examine how inputs or outputs about specific topics perform against other topics for each metric or evaluation. You can also see individual prompts and responses for each cluster. For example, you can get an overview of your slowest topics when you overlay by duration
.