| name | k6-perf-test-website |
| description | Use when the user wants to performance-test, load-test, or stress-test a public website end-to-end with k6. Produces a hybrid (protocol + browser) test suite, SLO-backed thresholds, a load-generator monitor sidecar, and a Grafana-side investigation playbook for backends the user owns. Triggers on "perf test my site", "performance test my site", "load test this URL", "stress test my web app", "I want to load test [URL]", "set up k6 against my website", "write a k6 suite for [site]", "see if my site handles N concurrent users", or "how does my site perform under traffic". Use this skill whenever the user mentions k6, load testing, stress testing, performance testing, or wants to validate a website under traffic — even if they don't explicitly use the word "test" or ask for the specific outputs this skill produces.
|
k6-perf-test-website
An end-to-end, opinionated workflow for performance-testing any
public website with k6. The skill produces:
- A scaffolded project with one folder per user-described workflow.
- Functional protocol + browser tests (must pass before load testing).
- Hybrid load tests (protocol scenario + 1 browser VU) per test type
(smoke / average / stress / spike / soak / breakpoint).
- SLO-backed thresholds with per-endpoint tagging and Web Vitals.
- A cross-platform load-generator monitor sidecar.
- Optional Grafana-side investigation when the user owns the backend.
- A structured Markdown report at the end.
This skill enforces a few opinions you should not silently override:
- Always elicit workflows first. Don't guess.
- Functional tests must be green before load tests run.
- Always monitor the load generator — server-looks-slow is often
laptop-looks-slow.
- Local for validation, cloud for scale — but ask the user where
to run each test type; don't hardcode.
- No shared
tests/lib/. Iteration-body duplication is preferred;
each script reads cleanly on its own during incident review.
Prerequisites
- k6 ≥ v2.0.0 (
k6 version) — required for stable k6/browser,
expect(), async/await iteration functions, and per-request tags.
- Node.js ≥ 20 + npm.
- Playwright with the Chromium download
(
npx playwright install chromium).
har-to-k6 (npm i -D har-to-k6).
- Network access from the load-generator host to the target site.
Tools the skill prefers when installed:
mcp-k6 — script creation, Playwright→k6/browser migration, API
lookup. Prefer over hand-writing k6 boilerplate.
mcp-grafana — in-session Prometheus/Loki/Tempo/Pyroscope queries
during §9 backend investigation.
gcx — Grafana Cloud CLI for shell-friendly queries, datasource
discovery, and Grafana Cloud k6 cloud-run dispatch.
k6 binary — local validation runs and breakpoint hunting.
k6 x docs (xk6-docs) — look up k6 API surface when writing or
editing scripts without mcp-k6 available.
If these tools are not configured the skill falls back to plain CLI
tools (k6, npx, curl) and hand-written scripts. The skill does
not own toolchain setup; defer to the user's existing setup process.
Explicit non-goals:
- Protocol-only suites (out of scope for this skill).
- API-only / non-browser apps.
- Mobile-native testing.
- Capacity planning beyond finding and tagging a breakpoint.
Workflow overview
Tick these off in order. Each step has a section below.
- Elicit workflows from the user. §1
- Scaffold the project from
assets/. §2
- Record each workflow with Playwright. §3
- Build functional protocol + browser tests; run
tests/run-all.sh
until green. §4
- Design SLO-backed thresholds and per-endpoint tags.
§5
- Build hybrid load tests, one file per test type.
§6
- Run validation locally with the LG sidecar.
§7
- Push to Grafana Cloud k6 for the test types the user chose for
cloud. §8
- Investigate the backend with Grafana (if owned).
§9
- Report back to the user. §10
1. Elicit workflows
The single most important step. Without explicit workflows, every
later step is guesswork.
Ask the user the questions in references/workflow-elicitation.md
and record answers in a runbook.md alongside the scaffolded project.
You must capture: 2-4 named workflows, credentials, read vs write,
destructive actions to avoid during soak, worry list, existing SLOs,
backend ownership and Grafana access, and per test type whether
each runs locally or in Grafana Cloud k6.
If the user can't name at least one workflow, stop and clarify;
do not proceed.
2. Scaffold the project
Copy the assets/ tree from this skill into the user's chosen
directory. The skill's assets/ directory is at <SKILL_DIR>/assets/,
where <SKILL_DIR> is the absolute path to this skill's directory —
your harness exposes this (e.g. opencode prefixes skill metadata with
a Base directory for this skill: line). If you can't determine
<SKILL_DIR> from context, ask the user.
cp -R "<SKILL_DIR>/assets/." "<target-dir>/"
If cp -R is blocked by sandbox permissions, copy files individually
via your agent's file-write tool.
The scaffolded layout:
<target-dir>/
├── package.json
├── .gitignore
├── README.md
├── runbook.md # you create from §1 answers
├── recordings/
│ ├── README.md
│ └── scripts/
│ └── recorder.template.js # copy per workflow → wN-<short-name>.js, …
├── tests/
│ ├── run-all.sh
│ └── workflow.template/ # copy per workflow → wN-<short-name>/, …
│ ├── from-har.js
│ ├── protocol.js
│ ├── browser.js
│ ├── smoke.js
│ ├── average.js
│ ├── stress.js
│ ├── spike.js
│ ├── soak.js
│ └── breakpoint.js
└── tools/
├── lg-monitor.sh
└── run-with-monitor.sh
For each workflow: copy recorder.template.js → recordings/scripts/wN-<short-name>.js,
copy tests/workflow.template/ → tests/wN-<short-name>/, and
replace <WORKFLOW_PLACEHOLDER> markers with the workflow's short name.
Then install:
cd <target-dir> && npm install && npx playwright install chromium
3. Record each workflow
Per workflow:
- Fill in
recordings/scripts/wN-<short-name>.js: user-action sequence,
recordHar.urlFilter regex (allow-list the target host; block
third-party RUM/ads — see references/recording-with-playwright.md),
and a real Chrome userAgent (the default HeadlessChrome UA
triggers bot-blocking on many sites).
- Run:
node recordings/scripts/wN-<short-name>.js → writes recordings/har/wN-<short-name>.har
- Convert:
npx har-to-k6 recordings/har/wN-<short-name>.har -o tests/wN-<short-name>/from-har.js
- Commit both HAR and
from-har.js (audit trail for bundle-path changes).
If the recorder fails or produces an unusable HAR (bot-blocking,
missing hydration, third-party noise), see the Recording section of
references/gotchas.md and references/recording-with-playwright.md.
Prefer mcp-k6 recording and migration tools if available.
4. Build functional tests
Per workflow:
- Hand-clean
from-har.js into protocol.js — drop per-request
UA headers, rename groups, parameterise BASE_URL, replace session
tokens, drop sleep(1), add expect() on every load-bearing
response. Full procedure in references/functional-tests.md.
- Hand-write
browser.js from the Playwright recorder using the
5-step procedure in references/functional-tests.md.
- Run
./tests/run-all.sh. Do not proceed to §5 until it exits 0.
Prefer mcp-k6 migration tools for Playwright→k6/browser conversion.
5. Design SLOs and thresholds
Adjust the opinionated defaults in assets/tests/workflow.template/
to the user's stated SLOs from §1. Four layers:
- Global SLOs — overall error rate + aggregate latency.
- Per-endpoint thresholds — tag every protocol request, threshold per tag.
- Per-iteration thresholds — workflow time + iteration completion rate.
- Web Vitals — LCP/INP/CLS only (no FCP).
Default globals:
http_req_failed: ['rate<0.01'],
http_req_duration: ['p(95)<500'],
checks: ['rate>0.99'],
Per-endpoint tagging:
http.get(`${BASE_URL}/api/things`, { tags: { name: 'GetThings' } });
'http_req_duration{name:GetThings}': ['p(95)<400', 'p(99)<800'],
Web Vitals:
browser_web_vital_lcp: ['p(95)<2500'],
browser_web_vital_inp: ['p(95)<200'],
browser_web_vital_cls: ['p(95)<0.1'],
See references/slo-design.md for per-iteration tuning, the
performance.mark custom-Trend pattern, iteration_completed Rate,
breakpoint abort-on-fail thresholds, and loosening rules.
6. Build hybrid load tests
Per workflow, one file per test type. Each file has a protocol scenario
(drives load) plus a single browser VU (measures Web Vitals under load).
Breakpoint is protocol-only — a browser VU adds noise to the signal.
| Type | Executor | Defaults |
|---|
| smoke | constant-vus | 3 VUs × 1m |
| average | ramping-vus | 0→20→0 over 14m |
| stress | ramping-vus | 0→50→0 over 20m |
| spike | ramping-vus | 0→100→0 over 2m |
| soak | ramping-vus | 0→10→0 over 70m |
| breakpoint | ramping-arrival-rate | 5/s→500/s over 20m, abortOnFail |
Tune per workflow once you've seen smoke results. See
references/test-types.md for rationale and references/hybrid-load-design.md
for why one file per type and why duplication between files is acceptable.
7. Run locally with LG sidecar
./tools/run-with-monitor.sh tests/wN-<short-name>/smoke.js
Starts lg-monitor.sh in the background, runs k6, then prints a
summary verdict: OK (≥30% idle), NOTE (10–30%), or WARNING
(<10%). If WARNING, the laptop is the bottleneck — reduce VUs, switch
to cloud, or split across multiple LGs. See references/lg-monitoring.md.
8. Push to Grafana Cloud k6
For each test type assigned to cloud in the §1 runbook:
- Confirm
k6 cloud login works (the skill does not own auth setup).
- Run smoke locally first to validate the script.
k6 cloud run tests/wN-<short-name>/<type>.js
- Capture the run URL for the §10 report.
Cost reminder: browser VU-hours are billed 10× protocol VU-hours.
Soak and breakpoint are the most expensive. Check limits before long runs.
See references/local-vs-cloud.md.
9. Investigate the backend
Only if the user owns the backend and has Grafana access.
- Discover datasources via
mcp-grafana or gcx datasources list.
- Ask the user for service label keys — do not guess.
- Correlate the k6 run window with RED metrics, error logs, traces,
and profiles (Pyroscope — use explicit
from/to for the run window).
- Hand back specific evidence: timestamps, query strings, panel links.
See references/grafana-investigation.md for the full flow including
how to verify absence before reporting it.
10. Report back
Fill in the report template from references/reporting.md:
- Summary — workflows, test types, dates
- SLOs — pass/fail per threshold
- Findings — one paragraph per finding, ordered by severity, with specific evidence
- Evidence — k6 output paths, LG monitor CSVs, cloud run URLs, Grafana links
- Suggested next steps
Always be specific. "Latency is high" is not a finding. "GetPizza
p(95) hit 1.4s at iteration ~200; correlated with sustained 100% CPU
on the recommender service per Grafana panel link" is.
Reference index