Claude-code-plugins-plus-skills oraclecloud-query-transform
install
source · Clone the upstream repo
git clone https://github.com/jeremylongshore/claude-code-plugins-plus-skills
Claude Code · Install into ~/.claude/skills/
T=$(mktemp -d) && git clone --depth=1 https://github.com/jeremylongshore/claude-code-plugins-plus-skills "$T" && mkdir -p ~/.claude/skills && cp -r "$T/plugins/saas-packs/oraclecloud-pack/skills/oraclecloud-query-transform" ~/.claude/skills/jeremylongshore-claude-code-plugins-plus-skills-oraclecloud-query-transform && rm -rf "$T"
manifest:
plugins/saas-packs/oraclecloud-pack/skills/oraclecloud-query-transform/SKILL.mdsource content
OCI Monitoring — MQL Queries & Alarms
Overview
Query OCI metrics using MQL (Monitoring Query Language) and create alarms via the Python SDK. MQL is underdocumented and the console query builder is buggy — it often generates invalid syntax or silently returns empty results. This skill provides working MQL queries for the metrics you actually need (CPU, memory, network, disk) via the SDK, bypassing console issues entirely.
Purpose: Retrieve infrastructure metrics programmatically and set up alerting without relying on the OCI Console query builder.
Prerequisites
- OCI Python SDK —
pip install oci - Config file at
with fields:~/.oci/config
,user
,fingerprint
,tenancy
,regionkey_file - IAM policies:
Allow group Developers to read metrics in compartment <name>Allow group Developers to manage alarms in compartment <name>
(for alarm notifications)Allow group Developers to manage ons-topics in compartment <name>
- Python 3.8+
- Running compute instances or other resources emitting metrics
Instructions
Step 1: Understand MQL Syntax
MQL queries follow this pattern:
MetricName[interval]{dimensionKey = "value"}.groupingFunction.statistic
Key components:
- MetricName — e.g.,
,CpuUtilization
,MemoryUtilizationNetworkBytesIn - Interval — data granularity:
,1m
,5m
(minimum depends on metric)1h - Dimensions — filters in curly braces:
{resourceId = "ocid1.instance..."} - Grouping —
to split results.groupBy(dimension) - Statistic —
,.mean()
,.max()
,.min()
,.sum()
,.count().percentile(0.95)
Step 2: Query CPU Utilization
import oci from datetime import datetime, timedelta config = oci.config.from_file("~/.oci/config") monitoring = oci.monitoring.MonitoringClient(config) # CPU utilization across all instances (last 1 hour, 5-minute intervals) response = monitoring.summarize_metrics_data( compartment_id=config["tenancy"], summarize_metrics_data_details=oci.monitoring.models.SummarizeMetricsDataDetails( namespace="oci_computeagent", query='CpuUtilization[5m].mean()', start_time=datetime.utcnow() - timedelta(hours=1), end_time=datetime.utcnow(), ), ) for metric in response.data: resource = metric.dimensions.get("resourceDisplayName", "unknown") for dp in metric.aggregated_datapoints: print(f"{resource} | {dp.timestamp} | CPU: {dp.value:.1f}%")
Step 3: Query Memory, Network, and Disk Metrics
# Memory utilization (requires OCI monitoring agent on instance) mem_query = 'MemoryUtilization[5m].mean()' # Network bytes in/out net_in_query = 'NetworkBytesIn[5m].sum()' net_out_query = 'NetworkBytesOut[5m].sum()' # Disk I/O disk_read_query = 'DiskBytesRead[5m].sum()' disk_write_query = 'DiskBytesWritten[5m].sum()' # Query helper function def query_metric(query, namespace="oci_computeagent", hours=1): """Query a single metric and return results.""" response = monitoring.summarize_metrics_data( compartment_id=config["tenancy"], summarize_metrics_data_details=oci.monitoring.models.SummarizeMetricsDataDetails( namespace=namespace, query=query, start_time=datetime.utcnow() - timedelta(hours=hours), end_time=datetime.utcnow(), ), ) return response.data # Example: get all core metrics for the last hour for name, query in [ ("CPU", "CpuUtilization[5m].mean()"), ("Memory", "MemoryUtilization[5m].mean()"), ("Net In", "NetworkBytesIn[5m].sum()"), ("Net Out", "NetworkBytesOut[5m].sum()"), ("Disk Read", "DiskBytesRead[5m].sum()"), ("Disk Write", "DiskBytesWritten[5m].sum()"), ]: results = query_metric(query) if results: latest = results[0].aggregated_datapoints[-1] print(f"{name}: {latest.value:.2f} at {latest.timestamp}") else: print(f"{name}: no data (check monitoring agent)")
Step 4: Filter by Specific Instance
# Query a specific instance by OCID instance_id = "ocid1.instance.oc1..." filtered_query = f'CpuUtilization[5m]{{resourceId = "{instance_id}"}}.max()' response = monitoring.summarize_metrics_data( compartment_id=config["tenancy"], summarize_metrics_data_details=oci.monitoring.models.SummarizeMetricsDataDetails( namespace="oci_computeagent", query=filtered_query, start_time=datetime.utcnow() - timedelta(hours=6), end_time=datetime.utcnow(), ), ) for metric in response.data: peak = max(metric.aggregated_datapoints, key=lambda dp: dp.value) print(f"Peak CPU in last 6h: {peak.value:.1f}% at {peak.timestamp}")
Step 5: List Available Metrics
When you are unsure what metrics exist, list them first.
metrics = monitoring.list_metrics( compartment_id=config["tenancy"], list_metrics_details=oci.monitoring.models.ListMetricsDetails( namespace="oci_computeagent", ), ).data unique_metrics = set() for m in metrics: unique_metrics.add(m.name) print("Available metrics:") for name in sorted(unique_metrics): print(f" {name}")
Common namespaces:
oci_computeagent (compute), oci_vcn (networking), oci_objectstorage (storage), oci_blockstore (block volumes), oci_autonomous_database (ADB).
Step 6: Create an Alarm
# First, create a notification topic notifications = oci.ons.NotificationDataPlaneClient(config) control_plane = oci.ons.NotificationControlPlaneClient(config) topic = control_plane.create_topic( oci.ons.models.CreateTopicDetails( compartment_id=config["tenancy"], name="high-cpu-alerts", description="Alerts for high CPU utilization", ) ).data # Create a subscription (email) notifications.create_subscription( oci.ons.models.CreateSubscriptionDetails( compartment_id=config["tenancy"], topic_id=topic.topic_id, protocol="EMAIL", endpoint="ops-team@example.com", ) ) # Create the alarm monitoring.create_alarm( oci.monitoring.models.CreateAlarmDetails( compartment_id=config["tenancy"], display_name="High CPU Alert", namespace="oci_computeagent", query="CpuUtilization[5m].mean() > 80", severity="CRITICAL", destinations=[topic.topic_id], is_enabled=True, body="CPU utilization exceeded 80% for 5 minutes.", pending_duration="PT5M", # ISO 8601 — must be high for 5 minutes repeat_notification_duration="PT15M", # Re-alert every 15 minutes ) ) print("Alarm created — email confirmation sent to subscriber")
Output
Successful completion produces:
- Working MQL queries for CPU, memory, network, and disk metrics
- A reusable
helper function for ad-hoc monitoringquery_metric() - Instance-level metric filtering by OCID
- A notification topic with email subscription and a CPU alarm
Error Handling
| Error | Code | Cause | Solution |
|---|---|---|---|
| Empty results | N/A | Wrong namespace or monitoring agent not installed | List metrics first (Step 5); install OCI monitoring agent on instances |
| Not authorized | 404 NotAuthorizedOrNotFound | Missing IAM policy for metrics or alarms | Add and IAM policies |
| Invalid MQL | 400 InvalidParameter | Syntax error in MQL query | Check brackets, quotes, and statistic function names |
| Not authenticated | 401 NotAuthenticated | Bad API key or config | Verify key_file and fingerprint |
| Rate limited | 429 TooManyRequests | Too many API calls | Add backoff; OCI does not return Retry-After header |
| Timeout | ServiceError status -1 | Query too broad or long time range | Narrow the time range or add dimension filters |
Examples
Quick metric check via CLI:
oci monitoring metric-data summarize-metrics-data \ --compartment-id <OCID> \ --namespace oci_computeagent \ --query-text 'CpuUtilization[1h].mean()'
MQL cheat sheet:
# Average CPU across all instances CpuUtilization[5m].mean() # Peak CPU for one instance CpuUtilization[5m]{resourceId = "ocid1.instance..."}.max() # Group by instance name CpuUtilization[5m].groupBy(resourceDisplayName).mean() # 95th percentile memory MemoryUtilization[5m].percentile(0.95) # Total network traffic NetworkBytesIn[5m].sum() + NetworkBytesOut[5m].sum()
Resources
- Monitoring Overview — metrics, queries, and alarms
- Python SDK Reference — MonitoringClient API
- API Reference — Monitoring REST endpoints
- SDK Troubleshooting — common SDK errors
- OCI Status — current service health
Next Steps
After setting up monitoring, see
oraclecloud-schema-migration to monitor Autonomous Database metrics, or oraclecloud-core-workflow-a to correlate compute metrics with instance scaling decisions.