| name | exploring-llm-clusters |
| description | Investigate AI observability clusters — understand usage patterns in AI/LLM traffic, compare cluster behavior, compute cost/latency metrics, and drill into individual traces within clusters. |
Exploring LLM clusters
Use this skill when investigating AI observability clusters —
understanding what patterns exist in your AI/LLM traffic,
comparing cluster behavior, and drilling into individual clusters.
Tools
| Tool | Purpose |
|---|
posthog:llma-clustering-job-list | List clustering job configurations for the team |
posthog:llma-clustering-job-get | Get a specific clustering job by ID |
posthog:execute-sql | Query cluster run events and compute metrics |
posthog:query-llm-traces-list | Find traces belonging to a cluster |
posthog:query-llm-trace | Inspect a specific trace in detail |
How clustering works
PostHog clusters LLM traces (or individual generations) by embedding similarity.
A Temporal workflow runs periodically or on-demand, producing cluster events stored as
$ai_trace_clusters (trace-level) or $ai_generation_clusters (generation-level).
Each cluster event contains:
$ai_clustering_run_id — unique run identifier (format: <team_id>_<level>_<YYYYMMDD>_<HHMMSS>[_<job_id>])
$ai_clustering_level — "trace" or "generation"
$ai_window_start / $ai_window_end — time window analyzed
$ai_total_items_analyzed — number of traces/generations processed
$ai_clusters — JSON array of cluster objects
$ai_clustering_params — algorithm parameters used
Cluster object shape (inside $ai_clusters)
{
"cluster_id": 0,
"size": 42,
"title": "User authentication flows",
"description": "Traces involving login, signup, and token refresh operations",
"traces": {
"<trace_or_generation_id>": {
"distance_to_centroid": 0.123,
"rank": 0,
"x": -2.34,
"y": 1.56,
"timestamp": "2026-03-28T10:00:00Z",
"trace_id": "abc-123",
"generation_id": "gen-456"
}
},
"centroid_x": -2.1,
"centroid_y": 1.4
}
cluster_id: -1 is the noise/outlier cluster (items that didn't fit any cluster)
- Items in
traces are keyed by trace ID (trace-level) or generation event UUID (generation-level)
rank orders items by proximity to centroid (0 = closest)
x, y are 2D coordinates for visualization (UMAP/PCA/t-SNE reduced)
Clustering jobs
Each team can have up to 5 clustering jobs. A job defines:
- name — human-readable label
- analysis_level —
"trace" or "generation"
- event_filters — property filters scoping which traces are included
- enabled — whether the job runs on schedule
Default jobs named "Default - trace" and "Default - generation" are auto-created
and disabled when a custom job is created for the same level.
Workflow: explore clusters
Step 1 — List recent clustering runs
posthog:execute-sql
SELECT
properties.$ai_clustering_run_id as run_id,
properties.$ai_clustering_level as level,
properties.$ai_window_start as window_start,
properties.$ai_window_end as window_end,
toInt(properties.$ai_total_items_analyzed) as total_items,
timestamp
FROM events
WHERE event IN ('$ai_trace_clusters', '$ai_generation_clusters')
AND timestamp >= now() - INTERVAL 7 DAY
ORDER BY timestamp DESC
LIMIT 10
Step 2 — Get clusters from a specific run
posthog:execute-sql
SELECT
properties.$ai_clustering_run_id as run_id,
properties.$ai_clustering_level as level,
properties.$ai_clustering_job_id as job_id,
properties.$ai_clustering_job_name as job_name,
properties.$ai_window_start as window_start,
properties.$ai_window_end as window_end,
toInt(properties.$ai_total_items_analyzed) as total_items,
properties.$ai_clusters as clusters,
properties.$ai_clustering_params as params
FROM events
WHERE event IN ('$ai_trace_clusters', '$ai_generation_clusters')
AND properties.$ai_clustering_run_id = '<run_id>'
LIMIT 1
The clusters field is a JSON array. Parse it to see cluster titles, sizes, and descriptions.
Important: The clusters JSON can be very large (thousands of trace IDs with coordinates).
When the result is too large for inline display, it auto-persists to a file.
Use print_clusters.py from scripts/ to get a readable summary.
Step 3 — Compute metrics for clusters
For trace-level clusters, compute cost/latency/token metrics:
posthog:execute-sql
SELECT
properties.$ai_trace_id as trace_id,
sum(toFloat(properties.$ai_total_cost_usd)) as total_cost,
max(toFloat(properties.$ai_latency)) as latency,
sum(toInt(properties.$ai_input_tokens)) as input_tokens,
sum(toInt(properties.$ai_output_tokens)) as output_tokens,
countIf(properties.$ai_is_error = 'true') as error_count
FROM events
WHERE event IN ('$ai_generation', '$ai_embedding', '$ai_span')
AND timestamp >= parseDateTimeBestEffort('<window_start>')
AND timestamp <= parseDateTimeBestEffort('<window_end>')
AND properties.$ai_trace_id IN ('<trace_id_1>', '<trace_id_2>', ...)
GROUP BY trace_id
For generation-level clusters, match by event UUID:
posthog:execute-sql
SELECT
toString(uuid) as generation_id,
toFloat(properties.$ai_total_cost_usd) as cost,
toFloat(properties.$ai_latency) as latency,
toInt(properties.$ai_input_tokens) as input_tokens,
toInt(properties.$ai_output_tokens) as output_tokens,
if(properties.$ai_is_error = 'true', 1, 0) as is_error
FROM events
WHERE event = '$ai_generation'
AND timestamp >= parseDateTimeBestEffort('<window_start>')
AND timestamp <= parseDateTimeBestEffort('<window_end>')
AND uuid IN ('<gen_uuid_1>', '<gen_uuid_2>', ...)
Step 4 — Drill into specific traces
Once you've identified interesting clusters, use the trace tools to inspect individual traces:
posthog:query-llm-trace
{
"traceId": "<trace_id_from_cluster>",
"dateRange": {"date_from": "<window_start>", "date_to": "<window_end>"}
}
Investigation patterns
"What kinds of LLM usage do we have?"
- List recent clustering runs (Step 1)
- Load the latest run's clusters (Step 2)
- Review cluster titles and descriptions — each represents a distinct usage pattern
- Compare cluster sizes to understand traffic distribution
"Which cluster is most expensive / slowest?"
- Load clusters from a run (Step 2)
- Extract trace IDs from each cluster
- Compute metrics per cluster (Step 3)
- Aggregate:
avg(cost), avg(latency), sum(cost) per cluster
- Compare across clusters
"What's in this cluster?"
- Load the cluster's traces (from the
traces field)
- Sort by
rank (closest to centroid = most representative)
- Inspect the top 3-5 traces via
query-llm-trace to understand the pattern
- Check the cluster
title and description for the AI-generated summary
"Are there error-heavy clusters?"
- Compute metrics (Step 3) with
error_count
- Calculate error rate per cluster:
items_with_errors / total_items
- Focus on clusters with high error rates
- Drill into errored traces to find root causes
"How do clusters compare across runs?"
- List multiple runs (Step 1)
- Load clusters from each run
- Compare cluster titles — similar titles across runs indicate stable patterns
- Track cluster size changes to detect shifts in traffic patterns
Constructing UI links
- Clusters overview:
https://app.posthog.com/ai-observability/clusters
- Specific run:
https://app.posthog.com/ai-observability/clusters/<url_encoded_run_id>
- Cluster detail:
https://app.posthog.com/ai-observability/clusters/<url_encoded_run_id>/<cluster_id>
Always surface these links so the user can verify visually in the PostHog UI.
Tips
- Always set a time range in SQL queries — cluster events without time bounds are slow
- Start with run listing to orient, then drill into specific clusters
- Cluster titles and descriptions are AI-generated summaries — verify by inspecting traces
- The noise cluster (
cluster_id: -1) contains outliers that didn't fit any pattern
- Use
llma-clustering-job-list to understand what clustering configs are active
- Trace IDs in clusters can be used directly with
query-llm-trace for deep inspection
- For large clusters, inspect the top-ranked traces (closest to centroid) for representative examples