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\nI'm adding custom metrics and logs to my Coralogix-monitored service. I want to add user.id and tenant.id as attributes on every metric and span. I also want to log full request and response bodies as structured fields. Are there any risks specific to how Coralogix handles this data?",
"type": "weighted_checklist",
"checklist": [
{
"name": "mentions-cardinality",
"description": "The response contains \"cardinality\" (case-insensitive).",
"max_score": 3
},
{
"name": "mentions-sensitive",
"description": "The response contains \"sensitive\" (case-insensitive).",
"max_score": 3
},
{
"name": "no-if-it-approves-user-id-or-tenant-id-as-met",
"description": "Warns that unbounded identifiers like user.id and tenant.id as metric attributes cause cardinality explosion — one metric series per unique value — which inflates Coralogix ingestion volume and may trigger TCO policy throttling. For per-tenant observability in Coralogix, cx.application.name and cx.subsystem.name are the correct mechanism for data routing and grouping — these are bounded resource attributes, not per-request metric labels. Warns that full request/response bodies in logs risk logging PII, credentials, or sensitive data. Recommends bounded metric attributes and explicitly selected safe structured log fields instead. FAIL if it approves user.id or tenant.id as metric label attributes, or if it approves logging full request/response bodies without filtering.",
"max_score": 2
}
]
}.claude-plugin
.codex-plugin
.cursor-plugin
evals
scenario-1
scenario-2
scenario-3
scenario-4
scenario-5
scenario-6
scenario-7
scenario-8
scenario-9
scenario-10
scenario-11
scenario-12
scenario-13
scenario-14
scenario-15
scenario-16
scenario-17
scenario-18
scenario-19
scenario-20
scenario-21
scenario-22
scenario-23
scenario-24
scenario-25
scenario-26
scenario-27
scenario-28
scenario-29
scenario-30
scenario-31
scenario-32
scenario-33
scenario-34
scenario-35
scenario-36
scenario-37
scenario-38
scenario-39
scenario-40
scenario-41
scenario-42
scenario-43
scenario-44
scenario-45
scenario-46
scenario-47
scenario-48
scenario-49
scenario-50
scenario-51
scenario-52
scenario-53
scenario-54
scenario-55
scenario-56
scenario-57
scenario-58
scenario-59
scenario-60
scenario-61
scenario-62
scenario-63
scenario-64
scenario-65
scenario-66
scenario-67
scenario-68
scenario-69
scenario-70
scenario-71
scenario-72
scenario-73
scenario-74
scenario-75
scenario-76
scenario-77
scenario-78
scenario-79
scenario-80
scenario-81
scenario-82
scenario-83
scenario-84
scenario-85
scenario-86
scenario-87
scenario-88
scenario-89
scenario-90
scenario-91
scenario-92
scenario-93
scenario-94
scenario-95
scenario-96
scenario-97
scenario-98
scenario-99
scenario-100
scenario-101
scenario-102
scenario-103
scenario-104
scenario-105
scenario-106
scenario-107
scenario-108
scenario-109
scenario-110
scenario-111
scenario-112
scenario-113
scenario-114
scenario-115
scenario-116
scenario-117
scenario-118
scenario-119
scenario-120
scenario-121
scenario-122
scenario-123
scenario-124
scenario-125
scenario-126
scenario-127
skills
opentelemetry
opentelemetry-collector
references
opentelemetry-instrumentation
opentelemetry-ottl