원클릭으로
screen-recording
Create annotated animated GIF demos and screen recordings for pull requests and documentation. Covers frame capture, timing, imageio-based GIF creation, and per-frame annotation workflows.
메뉴
Create annotated animated GIF demos and screen recordings for pull requests and documentation. Covers frame capture, timing, imageio-based GIF creation, and per-frame annotation workflows.
SOC 직업 분류 기준
Expert on the history, origin, and correct use of the em dash. Use when writing or reviewing code, comments, or data files to avoid em and en dashes, defaulting to never using them and replacing any found with a hyphen (-). Includes strong knowledge of punctuation marks and the proper usage of punctuation characters when writing comments.
Use when an outage, production incident, or significant service degradation has occurred and the team needs to write a structured blameless post-mortem. Triggers on phrases like "write a post-mortem", "incident review", "what went wrong", "outage report", "root cause analysis", or "RCA". Covers timeline reconstruction, contributing factor analysis, impact quantification, and action item generation with owners.
Create, set up, or update the personal context portfolio: structured markdown files describing who you are, how you work, your teams, and your tool/ADO configuration. Runs the interview workflow for first-time setup and targeted edits for updates. Trigger this skill when the user asks to: set up their context, create or update their context portfolio, "create my IQ", "set up my IQ", edit their profile, add/remove a stakeholder, update ADO config, change team info, update pillars, or set up any plugin configuration. Trigger when another skill fails to find context (missing files or TODO markers) and needs context populated. Also trigger when the user mentions a context change in passing (e.g., "my manager changed", "we added someone to the team") to offer a context file update. Do NOT trigger for read-only questions like "who's on my team?" or "what's my ADO config?". Those are answered directly from the context files referenced in the loaded custom instructions; no skill is needed.
Adopt repository-level harness engineering for coding agents. Use when a user wants to prevent repeated AI coding-agent mistakes by turning failures into durable instructions, drift checks, regression tests, failure memory, and adoption reports tailored to the target repository.
Security hardening reviewer for GitHub Actions workflow files (.github/workflows/*.yml). Reasons about the Actions threat model that pattern matchers and general code linters miss — untrusted-input script injection, privileged triggers running fork code, mutable action references, and over-scoped tokens. Use this skill when asked to review, audit, harden, or secure a GitHub Actions workflow, when writing a new workflow, or for any request like "is this workflow safe?", "review my CI for security issues", "why is pull_request_target dangerous here?", "pin my actions", or "lock down GITHUB_TOKEN permissions". Covers script injection via ${{ }} interpolation, pull_request_target / workflow_run privilege escalation, SHA-pinning of third-party actions, least-privilege permissions, GITHUB_ENV/GITHUB_OUTPUT injection, secret exposure, OIDC over long-lived credentials, and self-hosted runner exposure on public repositories.
Build GitHub Copilot workflows with Xquik X API SDKs, REST endpoints, MCP tools, signed webhooks, tweet search, user lookup, follower exports, media actions, and agent automation.
| name | screen-recording |
| description | Create annotated animated GIF demos and screen recordings for pull requests and documentation. Covers frame capture, timing, imageio-based GIF creation, and per-frame annotation workflows. |
Create animated GIF demos that show a feature or workflow in action — with annotations, variable timing, and proper pacing. Useful for PR descriptions, documentation, and release notes.
Use this skill when you need to:
pip install playwright Pillow imageio numpy scipy mss -q
playwright install chromium
Use Playwright to step through the interaction and capture each frame:
from playwright.async_api import async_playwright
async def record_frames(url, steps, width=1400, height=900):
"""
steps: list of dicts with 'action' (async callable taking page)
and 'name' (frame filename)
"""
async with async_playwright() as p:
browser = await p.chromium.launch()
page = await browser.new_page(viewport={"width": width, "height": height})
await page.goto(url, wait_until="networkidle")
for step in steps:
if step.get("action"):
await step["action"](page)
await page.wait_for_timeout(step.get("wait", 500))
await page.screenshot(path=step["name"])
await browser.close()
Use imageio, not PIL, for GIF writing — PIL's GIF encoder merges visually similar frames, which kills animations.
import imageio.v3 as iio
from PIL import Image
import numpy as np
frames = []
durations = []
for frame_path, duration_ms in frame_list:
img = Image.open(frame_path)
frames.append(np.array(img))
durations.append(duration_ms)
iio.imwrite("demo.gif", frames, duration=durations, loop=0)
Uniform timing makes everything feel either too fast or too slow. Use variable durations:
| Phase | Duration | Why |
|---|---|---|
| Fast action (typing, clicking) | 100ms | Feels natural, keeps energy |
| Pause after action | 600-800ms | Let the viewer process what happened |
| Hero/final message | 500ms+ | Main takeaway needs time to land |
Apply annotations to specific frames using the image-annotations skill:
from PIL import Image, ImageDraw, ImageFont
def annotate_frame(frame_path, annotations, out_path):
img = Image.open(frame_path)
draw = ImageDraw.Draw(img)
for ann in annotations:
# Apply annotation (rect, arrow, label, etc.)
pass
img.save(out_path)
For smooth annotation appearance:
def apply_fade(base_frame, annotation_layer, alpha):
"""Blend annotation onto frame at given alpha (0.0 to 1.0)"""
blended = Image.blend(
base_frame.convert("RGBA"),
annotation_layer.convert("RGBA"),
alpha
)
return blended.convert("RGB")
# 2-frame pop-in at 10fps: 50% then 100%
faded_frames = [
apply_fade(base, annotations, 0.5), # frame 1: half opacity
apply_fade(base, annotations, 1.0), # frame 2: full opacity
]
At 10fps, use 2 fade frames (0.2s total). At 30fps, use 3-4 frames. Easing curves look bad at low FPS — simple pop-in is snappier and more readable.
The annotation logic gets complex for anything beyond trivial demos. Write a dedicated script (e.g., annotate_gif.py) with functions instead of inline code. You'll iterate on timing and placement.
Always test in isolation first — don't rebuild the full demo to test a fade tweak:
# Small test GIF: 10 bare frames → fade frames → 15 hold frames
# Add a frame counter overlay for debugging:
draw.text((10, height - 30), f"F{i}/{total} a={alpha:.0%} FADE",
fill="white", font=small_font)
For recording desktop apps, terminals, or anything outside a browser. Uses mss for fast screen capture.
import mss
from PIL import Image
import time
def record_gif(output_path, region=None, duration=5, fps=8):
"""Record screen region to GIF. region = {left, top, width, height} or None for full screen."""
with mss.mss() as sct:
if region is None:
region = sct.monitors[1] # primary monitor
frames = []
t_end = time.time() + duration
while time.time() < t_end:
t0 = time.time()
shot = sct.grab(region)
frames.append(Image.frombytes('RGB', shot.size, shot.rgb))
time.sleep(max(0, 1 / fps - (time.time() - t0)))
frames[0].save(output_path, save_all=True, append_images=frames[1:],
duration=int(1000 / fps), loop=0, optimize=True)
return len(frames)
record_gif('demo.gif', region={'left': 0, 'top': 0, 'width': 800, 'height': 500}, duration=3)
Tested: 3s at 8fps → 24 frames, ~31KB. Keep fps ≤ 10 for reasonable file sizes.
Note: PIL.save(save_all=True) works for simple recordings but merges visually similar frames. For annotated GIFs with fade effects, use imageio.v3.imwrite instead.
# Find window rect, then record it as a GIF
# Reuse find_window() from the ui-screenshots skill
import ctypes
from ctypes import c_int, Structure, byref, windll
class RECT(Structure):
_fields_ = [('left', c_int), ('top', c_int), ('right', c_int), ('bottom', c_int)]
hwnd = find_window('My App')[0][0]
rect = RECT()
windll.user32.GetWindowRect(hwnd, byref(rect))
region = {'left': rect.left, 'top': rect.top,
'width': rect.right - rect.left, 'height': rect.bottom - rect.top}
record_gif('app-demo.gif', region=region, duration=5, fps=8)
Programmatically find changed regions between frames to decide what to annotate:
import numpy as np
from scipy import ndimage
def find_changed_clusters(frame_a, frame_b, threshold=30, min_pixels=300, dilate=5):
"""Find bounding boxes of changed regions between two frames."""
diff = np.abs(frame_b.astype(float) - frame_a.astype(float)).max(axis=2)
mask = diff > threshold
dilated = ndimage.binary_dilation(mask, iterations=dilate)
labeled, n = ndimage.label(dilated)
clusters = []
for i in range(1, n + 1):
ys, xs = np.where(labeled == i)
if len(ys) < min_pixels:
continue
clusters.append((xs.min(), ys.min(), xs.max(), ys.max(), len(ys)))
return sorted(clusters, key=lambda c: -c[4]) # largest first
| Format | VS Code Preview | GitHub | Browser |
|---|---|---|---|
| GIF | ✅ Animates | ✅ | ✅ |
| WebP | ⚠️ Static only | ✅ | ✅ |
| MP4 | ❌ Broken | ⚠️ | ✅ |
GIF is the only universally supported animated format across VS Code preview, GitHub markdown, and browsers.