adobe-observability
Set up comprehensive observability for Adobe API integrations with Prometheus metrics, OpenTelemetry traces, structured logging, and alert rules covering Firefly, PDF Services, and Photoshop APIs. Trigger with phrases like "adobe monitoring", "adobe metrics", "adobe observability", "monitor adobe", "adobe alerts", "adobe tracing".
Best use case
adobe-observability is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
Set up comprehensive observability for Adobe API integrations with Prometheus metrics, OpenTelemetry traces, structured logging, and alert rules covering Firefly, PDF Services, and Photoshop APIs. Trigger with phrases like "adobe monitoring", "adobe metrics", "adobe observability", "monitor adobe", "adobe alerts", "adobe tracing".
Teams using adobe-observability should expect a more consistent output, faster repeated execution, less prompt rewriting.
When to use this skill
- You want a reusable workflow that can be run more than once with consistent structure.
When not to use this skill
- You only need a quick one-off answer and do not need a reusable workflow.
- You cannot install or maintain the underlying files, dependencies, or repository context.
Installation
Claude Code / Cursor / Codex
Manual Installation
- Download SKILL.md from GitHub
- Place it in
.claude/skills/adobe-observability/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How adobe-observability Compares
| Feature / Agent | adobe-observability | Standard Approach |
|---|---|---|
| Platform Support | Not specified | Limited / Varies |
| Context Awareness | High | Baseline |
| Installation Complexity | Unknown | N/A |
Frequently Asked Questions
What does this skill do?
Set up comprehensive observability for Adobe API integrations with Prometheus metrics, OpenTelemetry traces, structured logging, and alert rules covering Firefly, PDF Services, and Photoshop APIs. Trigger with phrases like "adobe monitoring", "adobe metrics", "adobe observability", "monitor adobe", "adobe alerts", "adobe tracing".
Where can I find the source code?
You can find the source code on GitHub using the link provided at the top of the page.
Related Guides
AI Agents for Coding
Browse AI agent skills for coding, debugging, testing, refactoring, code review, and developer workflows across Claude, Cursor, and Codex.
Best AI Skills for Claude
Explore the best AI skills for Claude and Claude Code across coding, research, workflow automation, documentation, and agent operations.
ChatGPT vs Claude for Agent Skills
Compare ChatGPT and Claude for AI agent skills across coding, writing, research, and reusable workflow execution.
SKILL.md Source
# Adobe Observability
## Overview
Set up comprehensive observability for Adobe API integrations covering four pillars: metrics (Prometheus), traces (OpenTelemetry), logs (structured JSON), and alerts. Each Adobe API has different latency profiles requiring specific monitoring.
## Prerequisites
- Prometheus or compatible metrics backend
- OpenTelemetry SDK (`@opentelemetry/api`)
- Grafana or similar dashboarding tool
- AlertManager or PagerDuty for alerts
## Instructions
### Step 1: Define Key Metrics by API
| Metric | Type | Labels | Description |
|--------|------|--------|-------------|
| `adobe_ims_token_requests_total` | Counter | `status` | Token generation attempts |
| `adobe_api_requests_total` | Counter | `api,operation,status` | API calls by type |
| `adobe_api_duration_seconds` | Histogram | `api,operation` | Latency per operation |
| `adobe_api_errors_total` | Counter | `api,error_code` | Errors by code (401,403,429,500) |
| `adobe_job_poll_count` | Histogram | `api` | Polls before async job completes |
| `adobe_rate_limit_retries_total` | Counter | `api` | 429 retries |
| `adobe_pdf_transactions_used` | Gauge | — | Monthly PDF Services usage |
### Step 2: Instrumented Adobe Client
```typescript
import { Counter, Histogram, Gauge, Registry } from 'prom-client';
const registry = new Registry();
const apiRequests = new Counter({
name: 'adobe_api_requests_total',
help: 'Total Adobe API requests',
labelNames: ['api', 'operation', 'status'] as const,
registers: [registry],
});
const apiDuration = new Histogram({
name: 'adobe_api_duration_seconds',
help: 'Adobe API request duration in seconds',
labelNames: ['api', 'operation'] as const,
buckets: [0.5, 1, 2, 5, 10, 20, 30, 60], // Adobe APIs are slow
registers: [registry],
});
const apiErrors = new Counter({
name: 'adobe_api_errors_total',
help: 'Adobe API errors by code',
labelNames: ['api', 'error_code'] as const,
registers: [registry],
});
export async function instrumentedAdobeCall<T>(
api: string,
operation: string,
fn: () => Promise<T>
): Promise<T> {
const timer = apiDuration.startTimer({ api, operation });
try {
const result = await fn();
apiRequests.inc({ api, operation, status: 'success' });
return result;
} catch (error: any) {
const errorCode = error.status || error.httpStatus || 'unknown';
apiRequests.inc({ api, operation, status: 'error' });
apiErrors.inc({ api, error_code: String(errorCode) });
throw error;
} finally {
timer();
}
}
// Usage
const image = await instrumentedAdobeCall('firefly', 'generate', () =>
generateImage({ prompt: 'sunset landscape' })
);
```
### Step 3: OpenTelemetry Distributed Tracing
```typescript
import { trace, SpanStatusCode } from '@opentelemetry/api';
const tracer = trace.getTracer('adobe-integration');
export async function tracedAdobeCall<T>(
api: string,
operation: string,
fn: () => Promise<T>
): Promise<T> {
return tracer.startActiveSpan(`adobe.${api}.${operation}`, async (span) => {
span.setAttribute('adobe.api', api);
span.setAttribute('adobe.operation', operation);
span.setAttribute('adobe.client_id', process.env.ADOBE_CLIENT_ID!);
try {
const result = await fn();
span.setStatus({ code: SpanStatusCode.OK });
return result;
} catch (error: any) {
span.setStatus({ code: SpanStatusCode.ERROR, message: error.message });
span.setAttribute('adobe.error_code', error.status || 'unknown');
span.recordException(error);
throw error;
} finally {
span.end();
}
});
}
```
### Step 4: Structured Logging
```typescript
import pino from 'pino';
const logger = pino({
name: 'adobe',
level: process.env.LOG_LEVEL || 'info',
redact: ['clientSecret', 'accessToken', 'req.headers.authorization'],
});
export function logAdobeOperation(entry: {
api: string;
operation: string;
durationMs: number;
status: 'success' | 'error';
httpStatus?: number;
jobId?: string;
error?: string;
}) {
if (entry.status === 'error') {
logger.error(entry, `Adobe ${entry.api}.${entry.operation} failed`);
} else {
logger.info(entry, `Adobe ${entry.api}.${entry.operation} completed`);
}
}
```
### Step 5: Alert Rules
```yaml
# prometheus/adobe-alerts.yml
groups:
- name: adobe_alerts
rules:
- alert: AdobeAuthFailure
expr: increase(adobe_api_errors_total{error_code="401"}[5m]) > 0
for: 2m
labels:
severity: critical
annotations:
summary: "Adobe authentication failure — credentials may be expired or revoked"
- alert: AdobeRateLimited
expr: rate(adobe_api_errors_total{error_code="429"}[5m]) > 0.1
for: 5m
labels:
severity: warning
annotations:
summary: "Adobe API rate limited — reduce throughput or upgrade tier"
- alert: AdobeHighLatency
expr: |
histogram_quantile(0.95,
rate(adobe_api_duration_seconds_bucket{api="firefly"}[5m])
) > 30
for: 10m
labels:
severity: warning
annotations:
summary: "Adobe Firefly P95 latency > 30s"
- alert: AdobeApiDown
expr: |
rate(adobe_api_errors_total{error_code=~"5.."}[5m]) /
rate(adobe_api_requests_total[5m]) > 0.1
for: 5m
labels:
severity: critical
annotations:
summary: "Adobe API server error rate > 10%"
- alert: AdobePdfQuotaLow
expr: adobe_pdf_transactions_used > 450
labels:
severity: warning
annotations:
summary: "PDF Services: < 50 free tier transactions remaining"
```
### Metrics Endpoint
```typescript
app.get('/metrics', async (req, res) => {
res.set('Content-Type', registry.contentType);
res.send(await registry.metrics());
});
```
## Output
- Prometheus metrics for all Adobe API calls (latency, errors, rate limits)
- OpenTelemetry traces with Adobe-specific span attributes
- Structured JSON logging with credential redaction
- Alert rules for auth failures, rate limiting, latency, and quota
## Error Handling
| Issue | Cause | Solution |
|-------|-------|----------|
| High cardinality metrics | Too many label values | Use fixed set of operation names |
| Alert storms | Thresholds too sensitive | Increase `for` duration |
| Missing traces | No OTel propagation | Verify context propagation setup |
| Redacted data in logs | Over-aggressive redaction | Whitelist safe fields |
## Resources
- [Prometheus Best Practices](https://prometheus.io/docs/practices/naming/)
- [OpenTelemetry Node.js](https://opentelemetry.io/docs/languages/js/)
- [Adobe Status Page](https://status.adobe.com)
## Next Steps
For incident response, see `adobe-incident-runbook`.Related Skills
windsurf-observability
Monitor Windsurf AI adoption, feature usage, and team productivity metrics. Use when tracking AI feature usage, measuring ROI, setting up dashboards, or analyzing Cascade effectiveness across your team. Trigger with phrases like "windsurf monitoring", "windsurf metrics", "windsurf analytics", "windsurf usage", "windsurf adoption".
webflow-observability
Set up observability for Webflow integrations — Prometheus metrics for API calls, OpenTelemetry tracing, structured logging with pino, Grafana dashboards, and alerting for rate limits, errors, and latency. Trigger with phrases like "webflow monitoring", "webflow metrics", "webflow observability", "monitor webflow", "webflow alerts", "webflow tracing".
vercel-observability
Set up Vercel observability with runtime logs, analytics, log drains, and OpenTelemetry tracing. Use when implementing monitoring for Vercel deployments, setting up log drains, or configuring alerting for function errors and performance. Trigger with phrases like "vercel monitoring", "vercel metrics", "vercel observability", "vercel logs", "vercel alerts", "vercel tracing".
veeva-observability
Veeva Vault observability for enterprise operations. Use when implementing advanced Veeva Vault patterns. Trigger: "veeva observability".
vastai-observability
Monitor Vast.ai GPU instance health, utilization, and costs. Use when setting up monitoring dashboards, configuring alerts, or tracking GPU utilization and spending. Trigger with phrases like "vastai monitoring", "vastai metrics", "vastai observability", "monitor vastai", "vastai alerts".
twinmind-observability
Monitor TwinMind transcription quality, meeting coverage, action item extraction rates, and memory vault health. Use when implementing observability, or managing TwinMind meeting AI operations. Trigger with phrases like "twinmind observability", "twinmind observability".
speak-observability
Monitor Speak API health, assessment latency, session metrics, and pronunciation score distributions. Use when implementing observability, or managing Speak language learning platform operations. Trigger with phrases like "speak observability", "speak observability".
snowflake-observability
Set up Snowflake observability using ACCOUNT_USAGE views, alerts, and external monitoring. Use when implementing Snowflake monitoring dashboards, setting up query performance tracking, or configuring alerting for warehouse and pipeline health. Trigger with phrases like "snowflake monitoring", "snowflake metrics", "snowflake observability", "snowflake dashboard", "snowflake alerts".
shopify-observability
Set up observability for Shopify app integrations with query cost tracking, rate limit monitoring, webhook delivery metrics, and structured logging. Trigger with phrases like "shopify monitoring", "shopify metrics", "shopify observability", "monitor shopify API", "shopify alerts", "shopify dashboard".
salesforce-observability
Set up observability for Salesforce integrations with API limit monitoring, error tracking, and alerting. Use when implementing monitoring for Salesforce operations, tracking API consumption, or configuring alerting for Salesforce integration health. Trigger with phrases like "salesforce monitoring", "salesforce metrics", "salesforce observability", "monitor salesforce", "salesforce alerts", "salesforce API usage dashboard".
retellai-observability
Retell AI observability — AI voice agent and phone call automation. Use when working with Retell AI for voice agents, phone calls, or telephony. Trigger with phrases like "retell observability", "retellai-observability", "voice agent".
replit-observability
Monitor Replit deployments with health checks, uptime tracking, resource usage, and alerting. Use when setting up monitoring for Replit apps, building health dashboards, or configuring alerting for deployment health and performance. Trigger with phrases like "replit monitoring", "replit metrics", "replit observability", "monitor replit", "replit alerts", "replit uptime".