بنقرة واحدة
sentry-instrument-logging
Instruments structured Sentry logs in a new or existing application.
التثبيت باستخدام Codex أو Claude انسخ هذا Prompt والصقه في Codex أو Claude أو مساعد آخر ليراجع صفحة Skill ويثبّتها لك.
القائمة
Instruments structured Sentry logs in a new or existing application.
التثبيت باستخدام Codex أو Claude انسخ هذا Prompt والصقه في Codex أو Claude أو مساعد آخر ليراجع صفحة Skill ويثبّتها لك.
استنادا إلى تصنيف SOC المهني
Configure specific Sentry features beyond basic SDK setup. Use when asked to monitor AI/LLM calls, set up OpenTelemetry pipelines, create alerts and notifications, or set up Sentry Snapshots.
Review code and keep Sentry SDKs up to date. Use when asked to resolve Sentry bot comments on a PR, address Seer bug predictions in PR reviews, or upgrade the Sentry SDK across major versions.
Full Sentry SDK setup for Android. Use when asked to "add Sentry to Android", "install sentry-android", "setup Sentry in Android", or configure error monitoring, tracing, profiling, session replay, or logging for Android applications. Supports Kotlin and Java codebases.
Full Sentry SDK setup for browser JavaScript. Use when asked to "add Sentry to a website", "install @sentry/browser", or configure error monitoring, tracing, session replay, or logging for vanilla JavaScript, jQuery, static sites, or WordPress.
Full Sentry SDK setup for Cloudflare Workers and Pages. Use when asked to "add Sentry to Cloudflare Workers", "install @sentry/cloudflare", or configure error monitoring, tracing, logging, crons, or AI monitoring for Cloudflare Workers, Pages, Durable Objects, Queues, Workflows, or Hono on Cloudflare.
Full Sentry SDK setup for Apple platforms (iOS, macOS, tvOS, watchOS, visionOS). Use when asked to "add Sentry to iOS", "add Sentry to Swift", "install sentry-cocoa", or configure error monitoring, tracing, profiling, session replay, logging, or metrics for Apple applications. Supports SwiftUI and UIKit.
| name | sentry-instrument-logging |
| description | Instruments structured Sentry logs in a new or existing application. |
| license | Apache-2.0 |
| category | feature-setup |
| parent | sentry-feature-setup |
| disable-model-invocation | true |
This skill adds structured Sentry logs to an application following the guidance in Instrumentation guidance.
The goal is to provide a small set of high-value log messages that make production behavior easier to understand and debug.
The log messages added by this skill should also serve as clear, repeatable, examples that users can follow when instrumenting the rest of their application.
The repository should already have basic Sentry configuration.
If Sentry has not yet been configured, offer to set it up using the appropriate skills.
Inventory every application in the repository. Locate language/runtime
manifests (composer.json, package.json, go.mod, Gemfile,
pyproject.toml, Cargo.toml, …). Each manifest typically marks a
separately deployed application. Produce an explicit table and treat it as
the work list for the rest of this skill:
| App | Path | Language | Sentry SDK? | Logging abstraction | Status |
|---|
If the repo has more than ~2 apps, confirm scope with the user before starting: which apps to instrument now, and at what depth.
Establish shared conventions once, up front — before touching any app.
Decide on consistent attribute namespacing (e.g. myapp.<domain>.<field>),
event-name phrasing, and log levels, so logs from every language can be
searched and correlated together. Record these so each per-app pass follows
them. Note service boundaries that propagate trace headers
(baggage / sentry-trace) — logs on both sides of such a call should share
attribute names so a single trace reads coherently across languages.
For each application in the inventory, complete the full pass below before
moving to the next, updating its Status as you go
(not started → configured → instrumented → verified):
a. Read the corresponding language-specific skill in skills and confirm Sentry logging is configured. b. Determine the app's logging abstraction (Monolog/PHP, slog/Go, Rails logger/Ruby, Pino or console/JS). If Sentry supports it, configure that integration; otherwise use Sentry's logging SDK directly. c. Identify a small number of high-value log messages, prioritizing runtime decisions, important algorithms, audit events, and context around recoverable failures. Follow Valuable log entries to instrument. d. Add structured logs following the shared conventions from Step 2 and the Instrumentation guidance. e. Verify: run the app's lint/type/test tooling if available, and confirm logs are emitted. If the toolchain isn't available locally, say so explicitly rather than implying it passed.
Apply a high-value log validation check. Review every added or modified log line and remove or revise any log that does not pass this check:
| Check | Question |
|---|---|
| Production question | What concrete production question does this log answer? |
| Signal | Would this still be useful if emitted hundreds or thousands of times? |
| Telemetry fit | Is this better represented as a trace, metric, or Sentry error? |
| Existing coverage | Is this already captured by an exception, existing log, or shared API/client wrapper? |
| Structure | Are event names and attributes consistent with the shared conventions? |
| Safety | Does it avoid PII, secrets, raw payloads, and unstable exception messages? |
| Actionability | Would seeing this log change how someone investigates or responds? |
Prefer removing logs that merely confirm routine UI interactions, duplicate generic API failures, or record expected validation failures without adding meaningful context.
Keep logs that explain important runtime decisions, summarize multi-step workflows, record important audit/business events, or provide context around recoverable failures.
For each remaining log, be able to write a one-sentence justification: "This log is valuable because it helps answer ."
Reconcile against the inventory. Confirm every in-scope app reached
verified (or was explicitly deferred). Report per-app status so partial
coverage is never mistaken for full coverage.
Logs are ideal for recording the context and decisions that explain what happened during an application's execution.
The decisions your application makes while serving a request are often the missing context needed to explain production behaviour.
Examples include:
This information can be useful both as a standalone log entry, for example when a feature flag is evaluated, and as structured context included with later log messages.
Logs are useful when a feature performs multiple steps. By recording intermediate outcomes, you can understand where a process is breaking down and why.
Here's an example from a site that allows users to import a logbook from another service:
Sentry.logger.info("Aurora import started", {
"import.source": "aurora",
"import.entries_received": body.ascents.length,
});
// Algorithm runs here...
Sentry.logger.info("Aurora import finished", {
"import.source": "aurora",
"import.entries_received": body.ascents.length,
"import.imported": imported,
"import.climbs_created": climbsCreated,
"import.skipped": skipped,
"import.skipped.missing_name": skipDetails.missingName,
"import.skipped.unknown_grade": skipDetails.unknownGrade,
"import.skipped.invalid_angle": skipDetails.invalidAngle,
"import.skipped.already_imported": skipDetails.alreadyImported,
});
Key stages are logged and the final outcome summarizes the work performed, making it easier to understand where the import succeeded, failed, or produced unexpected results.
Audit logs help answer questions like "Who changed this?", "When did it happen?", and "Was this action expected?"
Log important changes to application state, such as entities being created, updated, deleted, viewed, or having permissions modified.
Use good judgment. Most applications don't need a log entry for every database operation, but they often benefit from recording security-sensitive actions and important business events.
For exceptions, you'll often be better off using errors rather than adding a log line.
Not every failure should become a Sentry issue.
Examples of failures that are often better represented as log messages include:
For these types of error log messages, consider including:
Use structured logs that capture information as consistent key/value pairs.
Use consistent field names throughout the application so similar events can be searched, aggregated, and compared.
A good log message typically answers three questions:
Use Sentry's SDK when appropriate for setting context globally. For example,
set_user is available in many SDKs to attach authenticated user information
to all events in a single location.
Logs should accumulate context as a request moves through your application.
Early log messages may contain only request information. Later messages can add authenticated user information, feature flags, runtime decisions, and event-specific metadata.
Sentry automatically attaches a Trace ID to log messages, allowing them to be correlated with traces.
Using appropriate log levels conveys additional meaning in your log messages.
Use debug for temporary diagnostic information.
Use info for normal application events and contextual information.
Use warn for recoverable situations that deserve attention but do not prevent
the application from functioning correctly.
Use error for unexpected failures that are handled gracefully. Prefer errors
for exceptions that should become Sentry issues.
Avoid logging entire objects. Instead, log only the fields relevant to the event, using dot notation to namespace nested values.
Omit optional attributes when they are not present instead of logging empty
strings, null, or placeholder values.
Instrumenting every function call or service invocation is better handled by tracing or profiling.
Assume anything written to logs may eventually be viewed by another human.
set_user).Be intentional about what you log. Log the minimum information necessary to debug and operate your application.
There are legitimate reasons to log large unstructured blobs of data:
However, logging this type of data has both costs and risks:
When possible, prefer logging the specific fields you expect to query rather than entire payloads.
The purpose of this skill is to demonstrate good logging practices, not to maximize log coverage.
Prefer adding a handful of high-value log messages over instrumenting every possible code path.
Each log message should:
For small codebases, add enough representative logs that the result serves as a practical model for future instrumentation.
For large codebases, focus on a few representative locations rather than trying to instrument everything.
Strongly prefer using the SDK's setUser functionality to associate logs with the authenticated user, rather than repeating user identifiers as log attributes. Only include user identifiers as log attributes when they describe something other than the authenticated user.
Before adding new log lines, inspect existing logs and identify gaps.
Prefer to: