import diagramApdex from 'sentry-images/spot/alerts-wizard-apdex.svg'; import diagramCLS from 'sentry-images/spot/alerts-wizard-cls.svg'; import diagramCrashFreeSessions from 'sentry-images/spot/alerts-wizard-crash-free-sessions.svg'; import diagramCrashFreeUsers from 'sentry-images/spot/alerts-wizard-crash-free-users.svg'; import diagramCustomTransaction from 'sentry-images/spot/alerts-wizard-custom.svg'; import diagramCustomMetrics from 'sentry-images/spot/alerts-wizard-custom-metrics.svg'; import diagramErrors from 'sentry-images/spot/alerts-wizard-errors.svg'; import diagramFailureRate from 'sentry-images/spot/alerts-wizard-failure-rate.svg'; import diagramFID from 'sentry-images/spot/alerts-wizard-fid.svg'; import diagramIssues from 'sentry-images/spot/alerts-wizard-issues.svg'; import diagramLCP from 'sentry-images/spot/alerts-wizard-lcp.svg'; import diagramThroughput from 'sentry-images/spot/alerts-wizard-throughput.svg'; import diagramTransactionDuration from 'sentry-images/spot/alerts-wizard-transaction-duration.svg'; import diagramUsers from 'sentry-images/spot/alerts-wizard-users-experiencing-errors.svg'; import {t} from 'sentry/locale'; import type {AlertType} from './options'; type PanelContent = { description: string; examples: string[]; docsLink?: string; illustration?: string; }; export const AlertWizardPanelContent: Record = { issues: { description: t( 'Issues are groups of errors that have a similar stacktrace. Set an alert for new issues, when an issue changes state, frequency of errors, or users affected by an issue.' ), examples: [ t("When the triggering event's level is fatal."), t('When an issue was seen 100 times in the last 2 days.'), t( 'Create a JIRA ticket when an issue changes state from resolved to unresolved and is unassigned.' ), ], illustration: diagramIssues, }, num_errors: { description: t( 'Alert when the number of errors in a project matching your filters crosses a threshold. This is useful for monitoring the overall level or errors in your project or errors occurring in specific parts of your app.' ), examples: [ t('When the signup page has more than 10k errors in 5 minutes.'), t('When there are more than 500k errors in 10 minutes from a specific file.'), ], illustration: diagramErrors, }, users_experiencing_errors: { description: t( 'Alert when the number of users affected by errors in your project crosses a threshold.' ), examples: [ t('When 100k users experience an error in 1 hour.'), t('When 100 users experience a problem on the Checkout page.'), ], illustration: diagramUsers, }, throughput: { description: t( 'Throughput is the total number of transactions in a project and you can alert when it reaches a threshold within a period of time.' ), examples: [ t('When number of transactions on a key page exceeds 100k per minute.'), t('When number of transactions drops below a threshold.'), ], illustration: diagramThroughput, }, trans_duration: { description: t( 'Monitor how long it takes for transactions to complete. Use flexible aggregates like percentiles, averages, and min/max.' ), examples: [ t('When any transaction is slower than 3 seconds.'), t('When the 75th percentile response time is higher than 250 milliseconds.'), ], illustration: diagramTransactionDuration, }, apdex: { description: t( 'Apdex is a metric used to track and measure user satisfaction based on your application response times. The Apdex score provides the ratio of satisfactory, tolerable, and frustrated requests in a specific transaction or endpoint.' ), examples: [t('When apdex is below 300.')], docsLink: 'https://docs.sentry.io/product/performance/metrics/#apdex', illustration: diagramApdex, }, failure_rate: { description: t( 'Failure rate is the percentage of unsuccessful transactions. Sentry treats transactions with a status other than “ok,” “canceled,” and “unknown” as failures.' ), examples: [t('When the failure rate for an important endpoint reaches 10%.')], docsLink: 'https://docs.sentry.io/product/performance/metrics/#failure-rate', illustration: diagramFailureRate, }, lcp: { description: t( 'Largest Contentful Paint (LCP) measures loading performance. It marks the point when the largest image or text block is visible within the viewport. A fast LCP helps reassure the user that the page is useful, and so we recommend an LCP of less than 2.5 seconds.' ), examples: [ t('When the 75th percentile LCP of your homepage is longer than 2.5 seconds.'), ], docsLink: 'https://docs.sentry.io/product/performance/web-vitals', illustration: diagramLCP, }, fid: { description: t( 'First Input Delay (FID) measures interactivity as the response time when the user tries to interact with the viewport. A low FID helps ensure that a page is useful, and we recommend a FID of less than 100 milliseconds.' ), examples: [t('When the average FID of a page is longer than 4 seconds.')], docsLink: 'https://docs.sentry.io/product/performance/web-vitals', illustration: diagramFID, }, cls: { description: t( 'Cumulative Layout Shift (CLS) measures visual stability by quantifying unexpected layout shifts that occur during the entire lifespan of the page. A CLS of less than 0.1 is a good user experience, while anything greater than 0.25 is poor.' ), examples: [t('When the CLS of a page is more than 0.5.')], docsLink: 'https://docs.sentry.io/product/performance/web-vitals', illustration: diagramCLS, }, custom_transactions: { description: t( 'Alert on performance metrics which are not listed above, such as first paint (FP), first contentful paint (FCP), and time to first byte (TTFB).' ), examples: [ t('When the 95th percentile FP of a page is longer than 250 milliseconds.'), t('When the average TTFB of a page is longer than 600 millliseconds.'), ], illustration: diagramCustomTransaction, }, custom_metrics: { description: t( 'Alert on custom metrics that you have configured and are not related to errors, transactions or sessions.' ), examples: [ t('When the number of sign-ups dropped by 10% compared to the previous week.'), t( 'When the 75th percentile of your login flow is taking longer than 500 milliseconds.' ), ], illustration: diagramCustomMetrics, }, llm_tokens: { description: t( 'Receive an alert when the total number of tokens used by your LLMs reaches a limit.' ), examples: [t('When there are more than 100,000 tokens used within an hour')], illustration: diagramCustomMetrics, }, llm_cost: { description: t( 'Receive an alert when the total cost of tokens used by your LLMs reaches a limit.' ), examples: [t('When there are more than $100 used by LLM within an hour')], illustration: diagramCustomMetrics, }, crash_free_sessions: { description: t( 'A session begins when a user starts the application and ends when it’s closed or sent to the background. A crash is when a session ends due to an error and this type of alert lets you monitor when those crashed sessions exceed a threshold. This lets you get a better picture of the health of your app.' ), examples: [ t('When the Crash Free Rate is below 98%, send a Slack notification to the team.'), ], illustration: diagramCrashFreeSessions, }, crash_free_users: { description: t( 'Crash Free Users is the percentage of distinct users that haven’t experienced a crash and so this type of alert tells you when the overall user experience dips below a certain unacceptable threshold.' ), examples: [ t('When the Crash Free Rate is below 97%, send an email notification to yourself.'), ], illustration: diagramCrashFreeUsers, }, };