OpenTelemetry Collector deployment, instrumentation (Java/Python/Node.js/.NET/Go), and OTTL pipeline transforms for Coralogix — coralogix exporter config, Helm chart selection, Kubernetes topology, ECS/EKS/GKE deployments, SDK setup, APM transactions, and OTTL cardinality/PII/routing.
92
96%
Does it follow best practices?
Impact
92%
1.10xAverage score across 127 eval scenarios
Advisory
Suggest reviewing before use
{
"context": "Evaluating a Coralogix support response for this user question:\n\nWe have a high-volume histogram metric http.server.request.duration with many bucket boundaries. We want to keep the _sum and _count aggregations for average latency calculations but drop the raw histogram buckets entirely to reduce ingestion cost. Can OTTL do this? What's the right sequence to extract the aggregations and then drop the source histogram?",
"type": "weighted_checklist",
"checklist": [
{
"name": "mentions-extract-sum-metric",
"description": "The response contains \"extract_sum_metric\" (case-sensitive).",
"max_score": 3
},
{
"name": "mentions-extract-count-metric",
"description": "The response contains \"extract_count_metric\" (case-sensitive).",
"max_score": 3
},
{
"name": "no-says-ottl-cannot-do-this-at-all-without-of",
"description": "Describes a two-step approach: first extract the aggregated series (_sum and _count) from the histogram into standalone metrics using extract_sum_metric and extract_count_metric in context: metric, then drop the original histogram metric with the filter processor. The extraction step must produce new metrics before the histogram is deleted — suggesting to drop the histogram first and then extract is a FAIL. A response that tries to use keep_keys or delete_key to selectively strip bucket series from within the histogram datapoints (rather than extracting to new metrics) is a FAIL. A response that says OTTL cannot do this at all, without offering any collector-side approach, is a FAIL.",
"max_score": 2
},
{
"name": "filter-drop-metric",
"description": "The response matches the pattern: (?i)(filter|drop.*metric|delete.*metric)",
"max_score": 3
}
]
}.claude-plugin
.codex-plugin
.cursor-plugin
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skills
opentelemetry
opentelemetry-collector
references
opentelemetry-instrumentation
opentelemetry-ottl