CAT
/Skills
SkillsMCPMarketplacesDigestToolsAdvertise

This week in Claude

Every Monday: Claude Code, Agent SDK, MCP, and the Anthropic platform moves worth your time.

Skills by Category
Frontend DevelopmentBackend & APIsTesting & QASecurityDevOps & CI/CDGit & Pull RequestsDocumentationCode Review & QualityAI & Agent BuildingSkill Development
MCP Servers by Category
Sales & MarketingWeb & Browser AutomationDatabasesAI & LLM ToolsCloud & InfrastructureCommunication & MessagingDeveloper ToolsDesign & CreativeDocuments & KnowledgeSearch & Web Crawling
Marketplaces by Category
AI Agents & OrchestrationLLM IntegrationDevelopment ToolsFrontend & UIBackend & APIsDatabasesTesting & Code QualityDevOps & CloudSecurity & ComplianceGit & Version Control

Cross AI Tools

Discover Claude Code plugins, extensions, and tools. Automatically updated directory of Anthropic Claude AI marketplaces with development tools, productivity plugins, and integrations.

Resources

  • Browse Skills
  • Browse MCP Servers
  • Browse Marketplaces
  • Plugins Reference

Community

  • About
  • Tools
  • Feedback
  • Privacy Policy
  • Advertise

Built for the Claude Code community with Claude Code by @mertduzgun

Independent project, not affiliated with Anthropic

Codex Pet

agentspace-so/runcomfy-agent-skills
141.4k installs11 stars
Summary

If you want a custom Codex Pet but don't have Codex Pro or access to the built-in `$imagegen`, this skill gives you a clean alternative route through RunComfy's API. It takes a single reference image, makes one GPT Image 2 edit call to generate a canonical chibi pose, then uses ImageMagick to programmatically build all nine animation rows with pixel-perfect micro-transforms. The output is identical to what OpenAI's official `hatch-pet` produces: a 1536x1872 spritesheet and pet.json that drop straight into your `.codex/pets/` folder. You'll need a RunComfy token and ImageMagick installed locally. The whole pipeline runs in about two minutes and costs one image generation call instead of 72.

Install to Claude Code

npx -y skills add agentspace-so/runcomfy-agent-skills --skill codex-pet --agent claude-code

Installs into .claude/skills of the current project.

CodeRabbit
CodeRabbit
AI writes the code. CodeRabbit catches the slop.
Try For Free →
Keep your Mac awake
Keep your Mac awake
Keep your Mac awake while Claude Code and 40+ AI agents run. Sleeps when they're idle.
One time payment $9 →
Context.devContext.dev
Context.dev
Integrate web data into your AI product. One API to scrape website & brand data.
Get API Key Now →
Make your agent a DeFi expert
Make your agent a DeFi expert
Agent, run crypto. Access onchain data & trade routes via 1inch.
Install now →
Make money from your Skills
Make money from your Skills
On Capafy, your Skill runs online 24/7 as an agent product, and you get paid every time someone uses it.
Start earning →
AppSignal
AppSignal
Monitor with ease. Code with confidence.
Start Free Trial →
CodeRabbit
CodeRabbit
AI writes the code. CodeRabbit catches the slop.
Try For Free →
Keep your Mac awake
Keep your Mac awake
Keep your Mac awake while Claude Code and 40+ AI agents run. Sleeps when they're idle.
One time payment $9 →
Context.devContext.dev
Context.dev
Integrate web data into your AI product. One API to scrape website & brand data.
Get API Key Now →
Make your agent a DeFi expert
Make your agent a DeFi expert
Agent, run crypto. Access onchain data & trade routes via 1inch.
Install now →
Make money from your Skills
Make money from your Skills
On Capafy, your Skill runs online 24/7 as an agent product, and you get paid every time someone uses it.
Start earning →
AppSignal
AppSignal
Monitor with ease. Code with confidence.
Start Free Trial →
Files
SKILL.mdView on GitHub

Codex Pet — Pro Pack on RunComfy

runcomfy.com · GPT Image 2 edit endpoint · docs

Codex Pet generator on RunComfy. Turn one source image into a Codex-compatible custom Codex Pet — pet.json + spritesheet.webp — drop it into ${CODEX_HOME:-$HOME/.codex}/pets/<name>/, Codex picks it up next to the 8 built-in Codex Pets.

npx skills add agentspace-so/runcomfy-agent-skills --skill codex-pet -g

What a Codex Pet is

OpenAI Codex Pets (released May 2026) are pixel-art animated companions that float over your desktop while Codex codes — they react to mouse interaction and Codex status (scratching head when thinking, popping a speech bubble when a task completes). Codex ships with 8 built-in Codex Pets and supports custom Codex Pets installed locally as a folder under ${CODEX_HOME:-$HOME/.codex}/pets/.

Each custom Codex Pet folder contains exactly two files:

  • pet.json — manifest with id, displayName, description, spritesheetPath.
  • spritesheet.webp — Codex Pet sprite atlas, 1536x1872 PNG or WebP, 8 columns x 9 rows of 192x208 cells, transparent background.

The 9 rows correspond to 9 animation states Codex plays. Each row uses a fixed number of leading frames; trailing cells stay fully transparent.

Why this Codex Pet skill (vs OpenAI's official hatch-pet)

OpenAI ships an official hatch-pet skill that produces the same Codex Pet artifact via the Codex-internal $imagegen system skill (requires Codex Pro + $imagegen configured).

This Codex Pet skill is a drop-in alternative that runs via the RunComfy CLI: a single RUNCOMFY_TOKEN plus runcomfy and magick binaries — no Codex Pro, no $imagegen, no OPENAI_API_KEY. The output Codex Pet artifact is identical — same pet.json shape, same spritesheet.webp 1536x1872 atlas, same 9 animation rows — so Codex treats this Codex Pet exactly like one made by hatch-pet.

This skill follows the same pattern Codex's built-in Codex Pets use: one canonical pose, replicated across cells with ImageMagick micro-transforms for subtle animation (1-2 px shifts, blink frames, tilt frames). That matches what the official hatch-pet output actually looks like cell-by-cell — the Codex Pet animation visible in the Codex desktop app is intentionally subtle.

Pick this skill when:

  • You want a custom Codex Pet but don't have Codex Pro / $imagegen.
  • You want a custom Codex Pet built via the RunComfy Model API.
  • You want batch Codex Pet generation from a folder of source images (one canonical call per pet).
  • You're entering the OpenAI Codex Pet contest with a different model behind the visuals.
  • You said "codex pet", "/hatch", "make me a codex pet", "spritesheet.webp", "desktop pet for codex" explicitly.

Codex Pet animation rows

Codex reads one fixed atlas: 8 columns, 9 rows, 192x208 cells. Each Codex Pet row corresponds to one animation state with a specific number of leading frames.

RowStateUsed columnsFramesCodex Pet behavior
0idle0-56calm breathing/blinking; the reduced-motion first frame for the Codex Pet
1running-right0-78Codex Pet locomotion to the right
2running-left0-78mirrored locomotion to the left
3waving0-34greeting / attention gesture
4jumping0-45anticipation, lift, peak, descent, settle
5failed0-78error / sad / deflated reaction
6waiting0-56patient idle variant
7running0-56active working / in-progress loop (NOT foot-running)
8review0-56focused / inspecting / thinking

Trailing cells after each row's last used column must be fully transparent.

Codex Pet style

The Codex Pet visual house style:

  • EXAGGERATED chibi proportions: head occupies ~60 percent of total figure height; body and legs are tiny stubby and short. The whole figure should fit a near-square bounding box.
  • pixel-art-adjacent low-resolution mascot, chunky silhouette
  • thick dark 1-2 px outlines, visible stepped pixel edges
  • limited palette, flat cel shading, simple expressive face, tiny limbs
  • transparent background

Avoid: motion lines, drop shadows, glows, sparkles, floating effects, text labels, scenery, white/black backgrounds.

Prerequisites

  1. RunComfy CLI — npm i -g @runcomfy/cli
  2. RunComfy account — runcomfy login. CI alternative: RUNCOMFY_TOKEN=<token>.
  3. ImageMagick — brew install imagemagick (macOS) or apt-get install imagemagick (Linux). Provides the magick command for the deterministic atlas assembly.
  4. A source image URL — publicly fetchable HTTPS, JPEG/PNG/WebP, the subject the Codex Pet will be modeled on.

Codex Pet pipeline (1 GPT Image 2 call, ~2 min)

  1. Canonical Codex Pet — single runcomfy run openai/gpt-image-2/edit call producing one 1024x1024 chibi pose on a magenta chroma-key background.
  2. Cell normalization — chroma-key magenta → alpha 0, trim, aspect-fit into 192x208 with transparent padding.
  3. 9 row strips, programmatic — for each of 9 animation states, build the row's 8 cells via ImageMagick micro-transforms (translate / mask / mirror) of the canonical cell. Trailing cells filled with transparent 192x208.
  4. Atlas — stack 9 row strips vertically into the 1536x1872 Codex Pet atlas.
  5. WebP — convert atlas PNG to WebP.
  6. Manifest + install — write pet.json, copy both files into ${CODEX_HOME:-$HOME/.codex}/pets/<pet-name>/.

The micro-transform approach matches what Codex's built-in Codex Pets actually do — the Codex Pet animation is intentionally subtle, so 1-2 px shifts and blink masks per cell give the right visual feel without burning 72 GPT Image 2 calls.

Step 1: Generate the canonical Codex Pet (1 call)

PET_NAME="my-pet"
PET_DESC="A friendly companion for late-night refactors."
SOURCE_URL="https://.../source.png"
RUN_DIR="./codex-pet-run/${PET_NAME}"
CHROMA="#FF00FF"   # magenta chroma-key
mkdir -p "${RUN_DIR}"

runcomfy run openai/gpt-image-2/edit \
  --input "{
    \"prompt\": \"Generate one canonical Codex digital pet sprite based on the input image. EXAGGERATED chibi proportions: the head occupies about 60 percent of the total figure height; body and legs are tiny stubby and short. The whole pet figure must fit within a near-square bounding box (overall aspect close to 1:1). Pixel-art-adjacent low-resolution mascot, chunky whole-body silhouette, thick dark 1-2 px outline, visible stepped pixel edges, limited palette, flat cel shading, simple expressive face, tiny limbs. Centered in the image. No polished illustration, no painterly render, no anime key art, no 3D render, no glossy app-icon polish, no realistic detail. Background: solid flat magenta ${CHROMA} chroma-key fill outside the pet silhouette. The pet itself must not use the chroma-key color or any close-to-magenta highlights. No gradients, no shadows, no halos, no scenery, no text. Identity preserved from the input image.\",
    \"images\": [\"${SOURCE_URL}\"],
    \"size\": \"1024*1024\"
  }" \
  --output-dir "${RUN_DIR}/decoded/"

BASE=$(ls "${RUN_DIR}/decoded/"*.png | head -1)
echo "canonical Codex Pet: ${BASE}"

Step 2: Normalize the canonical into a 192x208 Codex Pet cell

Chroma-key magenta to alpha, trim to the pet sprite bounding box, aspect-fit into 192x208 with transparent padding.

magick "${BASE}" \
  -fuzz 18% -transparent "${CHROMA}" \
  -alpha set \
  -trim +repage \
  -resize 192x208 \
  -gravity center \
  -background none \
  -extent 192x208 \
  "${RUN_DIR}/cell.png"

The 18% fuzz is tuned for GPT Image 2's anti-aliased magenta edges. Adjust to 25% if the Codex Pet has wider magenta halos, or to 8-10% if the pet has near-magenta highlights getting clipped.

Step 3: Build the 9 Codex Pet row strips programmatically

For each row, build 8 cells from the canonical via ImageMagick micro-transforms, fill unused trailing cells with transparent, then concatenate into a 1536x208 row strip.

SRC="${RUN_DIR}/cell.png"
mkdir -p "${RUN_DIR}/cells"

# Helpers
shift_cell() { magick "$SRC" -background none -roll "+${1}+${2}" -alpha set "$3"; }
rotate_cell() { magick "$SRC" -background none -distort SRT "$1" -alpha set "$2"; }
make_blink() {
  # Eyes are roughly at y=80-100 in a 208-tall cell.
  # Soften with a skin-tone overlay across that horizontal band.
  magick "$SRC" \
    -region 80x6+56+82 -fill "#f4e6d8" -colorize 70% -blur 0x0.5 +region "$1"
}
blank_cell() { magick -size 192x208 xc:none -alpha set "PNG32:$1"; }

build_row() {
  local row=$1; shift
  local i=0
  for spec in "$@"; do
    local out="${RUN_DIR}/cells/row${row}-frame${i}.png"
    case "$spec" in
      base)      cp "$SRC" "$out" ;;
      blink)     make_blink "$out" ;;
      shift:*)   IFS=':' read -r _ x y <<< "$spec"; shift_cell "$x" "$y" "$out" ;;
      rotate:*)  IFS=':' read -r _ ang <<< "$spec"; rotate_cell "$ang" "$out" ;;
    esac
    i=$((i+1))
  done
  while [ "$i" -lt 8 ]; do
    blank_cell "${RUN_DIR}/cells/row${row}-frame${i}.png"
    i=$((i+1))
  done
  magick "${RUN_DIR}/cells/row${row}-frame"*.png +append -alpha set \
    "${RUN_DIR}/cells/row${row}-strip.png"
}

# 9 Codex Pet rows with their per-frame micro-transforms
build_row 0 base base blink base base blink                                       # idle (6)
build_row 1 base shift:1:0 shift:2:-1 shift:1:0 base shift:-1:0 shift:-2:-1 shift:-1:0  # running-right (8)
# row 2 = running-left = horizontal flip of row 1, built below
build_row 3 base shift:0:-1 base shift:0:-1                                       # waving (4)
build_row 4 shift:0:2 base shift:0:-8 shift:0:-2 base                              # jumping (5) — vertical arc
build_row 5 base shift:0:1 rotate:1 shift:0:1 shift:0:2 shift:0:1 rotate:-1 base  # failed (8)
build_row 6 base base shift:0:-1 base base shift:0:1                              # waiting (6)
build_row 7 base shift:0:-1 base shift:0:-1 base shift:0:-1                       # running (6)
build_row 8 base rotate:-2 base rotate:2 base base                                # review (6)

# Row 2: running-left = mirror of running-right
magick "${RUN_DIR}/cells/row1-strip.png" -flop -alpha set "${RUN_DIR}/cells/row2-strip.png"

The micro-transform table is what gives the Codex Pet its readable-but-subtle motion in Codex. Tweak the numbers per row to taste; the deltas are intentionally small (1-2 px) so the Codex Pet feels alive without becoming distracting.

Step 4: Compose the Codex Pet atlas

Stack the 9 row strips vertically into the 1536x1872 Codex Pet atlas, then convert to WebP.

magick \
  "${RUN_DIR}/cells/row0-strip.png" \
  "${RUN_DIR}/cells/row1-strip.png" \
  "${RUN_DIR}/cells/row2-strip.png" \
  "${RUN_DIR}/cells/row3-strip.png" \
  "${RUN_DIR}/cells/row4-strip.png" \
  "${RUN_DIR}/cells/row5-strip.png" \
  "${RUN_DIR}/cells/row6-strip.png" \
  "${RUN_DIR}/cells/row7-strip.png" \
  "${RUN_DIR}/cells/row8-strip.png" \
  -append -alpha set "${RUN_DIR}/spritesheet.png"

magick "${RUN_DIR}/spritesheet.png" "${RUN_DIR}/spritesheet.webp"

Step 5: Write the Codex Pet manifest

cat > "${RUN_DIR}/pet.json" <<EOF
{
  "id": "${PET_NAME}",
  "displayName": "${PET_NAME}",
  "description": "${PET_DESC}",
  "spritesheetPath": "spritesheet.webp"
}
EOF

Step 6: Install the Codex Pet

DEST="${CODEX_HOME:-$HOME/.codex}/pets/${PET_NAME}"
mkdir -p "${DEST}"
cp "${RUN_DIR}/pet.json" "${RUN_DIR}/spritesheet.webp" "${DEST}/"
echo "Codex Pet installed at ${DEST}"

Restart Codex (or reload the pet list) and the custom Codex Pet appears next to the 8 built-ins.

Prompting the canonical Codex Pet — what works

The single GPT Image 2 call decides everything. Get this prompt right and the rest is deterministic.

Lead with the chibi proportion lock. "EXAGGERATED chibi proportions, head ~60 percent of figure height" is the difference between a thin tall character (which fits the 192x208 cell badly with pillarbox) and a head-dominant chibi (which fills the cell naturally). The latter is what Codex's built-in Codex Pets look like.

Demand the magenta #FF00FF chroma-key explicitly in every Codex Pet base prompt. GPT Image 2 only outputs RGB (no alpha), so the only way to get a transparent Codex Pet is to chroma-key a known background color out post-process.

Forbid the chroma-key color in the pet itself. Add: "The pet itself must not use the chroma-key color or any close-to-magenta highlights." Otherwise the chroma-key step removes Codex Pet body parts that happen to be magenta-ish.

Pin the style. "pixel-art-adjacent, chunky silhouette, 1-2 px outline, limited palette, flat cel shading" — pin every term that makes the Codex Pet match the Codex house style.

Forbid the wrong styles. "No polished illustration, no painterly render, no anime key art, no 3D render, no glossy app-icon polish, no realistic detail." Without this, GPT Image 2 will gravitate toward over-rendered anime art.

Anti-patterns:

  • Generic "transparent background" — GPT Image 2 paints near-white instead. Use chroma-key.
  • Letting the model freestyle proportions — it will draw a tall narrow chibi that doesn't fit 192x208.
  • Mixing styles in one prompt — pin one style anchor and stick to it.

Tuning the micro-animation

The default ImageMagick recipe in step 3 produces a Codex Pet animation similar to the built-in Codex Pets — subtle bob, occasional blink, jumping arc, head tilt. To make the animation more or less perceptible, tweak the deltas:

  • Bigger idle bob: change shift:0:-1 to shift:0:-2 in row 0.
  • Faster running cycle: increase the horizontal shifts in row 1 (e.g. shift:3:0 instead of shift:2:-1).
  • Higher jump: change row 4's peak from shift:0:-8 to shift:0:-12.
  • Stronger head tilt in review: change rotate:-2 / rotate:2 to rotate:-4 / rotate:4.

Keep deltas small (≤ 4 px or ≤ 4°) so the Codex Pet doesn't become distracting.

FAQ — Codex Pet

What is a Codex Pet? OpenAI Codex Pets are pixel-art animated companions launched May 2026 that float over your desktop and react to Codex's coding status. Custom Codex Pets live as pet.json + spritesheet.webp files under ${CODEX_HOME:-$HOME/.codex}/pets/<name>/.

Why use this Codex Pet skill instead of hatch-pet? Official hatch-pet requires the Codex-internal $imagegen system skill (Codex Pro). This skill needs only RUNCOMFY_TOKEN and runs the same animation-row spec via the RunComfy CLI, with one GPT Image 2 call total.

How long does a Codex Pet generation take? ~2 minutes — 1 GPT Image 2 edit call (~90s) plus a few seconds of ImageMagick atlas assembly.

Why only one API call? The Codex Pet animation in the Codex desktop app is intentionally subtle (you can confirm by inspecting any built-in Codex Pet's atlas — 72 cells of nearly-identical poses with tiny variations). One canonical pose plus deterministic ImageMagick micro-transforms produces the same animation feel without burning 72 separate generation calls.

Can the Codex Pet skill take a non-human subject? Yes — pets, mascots, objects, foods all work. The base prompt simplifies the source into the Codex Pet house style automatically.

How do I install my Codex Pet? Copy pet.json and spritesheet.webp into ${CODEX_HOME:-$HOME/.codex}/pets/<pet-name>/ and reload Codex.

What if the canonical Codex Pet drifts off identity? Re-run step 1 with a tighter identity-preservation prompt (e.g. name specific features: hair color, glasses, accessory). Steps 2-6 are deterministic and don't need to change.

What size is each Codex Pet frame? 192x208 px. Each row strip is 1536x208 (8 frames). Final Codex Pet atlas is 1536x1872 (9 stacked rows).

Can I add custom poses or replace rows? Yes — modify the build_row calls in step 3. The atlas slot count per row must match the Codex contract (idle=6, running-right/left=8, waving=4, jumping=5, failed=8, waiting/running/review=6) for Codex to play them correctly.

Limitations

  • One canonical pose per Codex Pet — animation is via ImageMagick transforms, not multi-frame model generation. This matches the built-in Codex Pets' subtle animation but won't produce dramatic motion (e.g. distinct frame-by-frame running cycle).
  • GPT Image 2 doesn't output alpha — the magenta chroma-key + post-process is a workaround. If the Codex Pet has near-magenta colors (rare for chibi palettes), switch the chroma-key to a different solid (#00FFFF cyan or #00FF00 green) in both the prompt and the post-process.
  • Identity drift — GPT Image 2 may simplify the source image identity into Codex Pet style; specific small features (e.g. earrings, prop colors) may shift.
  • No audio / voice on Codex Pet — Codex Pets are visual-only.

Exit codes

The runcomfy CLI uses sysexits-style codes:

codemeaning
0Codex Pet canonical generated successfully
64bad CLI args
65bad input JSON for the Codex Pet call / schema mismatch (e.g. size: "1024_1024" instead of "1024*1024")
69upstream 5xx
75retryable: timeout / 429
77not signed in or token rejected

magick (ImageMagick) returns 0 on a clean Codex Pet atlas; non-zero indicates a missing input frame or output-path permission issue.

Full reference: docs.runcomfy.com/cli/troubleshooting.

How it works

  1. The skill calls runcomfy run openai/gpt-image-2/edit once with the user's source image and a tight chibi-proportion prompt, producing a 1024x1024 canonical Codex Pet on magenta.
  2. ImageMagick chroma-keys the magenta to alpha 0, trims the sprite bbox, aspect-fits into a 192x208 cell.
  3. ImageMagick programmatically builds 9 row strips by applying micro-transforms (1-2 px translate, blink mask, rotate, mirror) to the canonical cell.
  4. The 9 row strips stack into the 1536x1872 Codex Pet atlas; the atlas converts to WebP.
  5. A pet.json manifest is written; both files are copied into ${CODEX_HOME:-$HOME/.codex}/pets/<name>/ where Codex picks up the custom Codex Pet automatically.

Credits

The 9-row Codex Pet atlas spec — column counts, frame counts, cell dimensions — comes from OpenAI's official hatch-pet skill (MIT licensed). The animation-row contract and the chroma-key strategy are documented there. This skill reuses the spec but swaps the visual generator ($imagegen → RunComfy GPT Image 2) and the atlas assembly (Python → ImageMagick) so it runs without Codex Pro.

What this skill is not

Not a Codex client. Not a hatch-pet replacement when $imagegen is available — official hatch-pet is preferable when Codex Pro is in play. Not a self-hosted GPT Image 2 — depends on a working RunComfy account.

Security & Privacy

  • Token storage: runcomfy login writes the API token to ~/.config/runcomfy/token.json with mode 0600. Set RUNCOMFY_TOKEN env var to bypass the file in CI.
  • Input boundary: Codex Pet prompts are passed as JSON via --input. The CLI does NOT shell-expand. No shell-injection surface.
  • Third-party content: source image URL is fetched by the RunComfy server. Treat external URLs as untrusted — image-based prompt injection is a known risk for any image-edit model.
  • Outbound endpoints: only model-api.runcomfy.net and *.runcomfy.net / *.runcomfy.com.
  • Generated-file size cap: the CLI aborts any single Codex Pet canonical download > 2 GiB.
  • Local install path: the final Codex Pet writes to ${CODEX_HOME:-$HOME/.codex}/pets/<pet-name>/. No remote upload.
Featured
CodeRabbit
CodeRabbit
AI writes the code. CodeRabbit catches the slop.
Try For Free →
Keep your Mac awake
Keep your Mac awake
Keep your Mac awake while Claude Code and 40+ AI agents run. Sleeps when they're idle.
One time payment $9 →
Context.devContext.dev
Context.dev
Integrate web data into your AI product. One API to scrape website & brand data.
Get API Key Now →
Make your agent a DeFi expert
Make your agent a DeFi expert
Agent, run crypto. Access onchain data & trade routes via 1inch.
Install now →
Make money from your Skills
Make money from your Skills
On Capafy, your Skill runs online 24/7 as an agent product, and you get paid every time someone uses it.
Start earning →
AppSignal
AppSignal
Monitor with ease. Code with confidence.
Start Free Trial →
Categories
AI & Agent Building
First SeenMay 16, 2026
View on GitHub

Recommended

More AI & Agent Building →
agent-memory-mcp

sickn33/antigravity-awesome-skills

agent memory mcp
954
39.4k
agent-memory-mcp

davila7/claude-code-templates

agent memory mcp
521
27.7k
llm-application-dev-langchain-agent

sickn33/antigravity-awesome-skills

llm application dev langchain agent
306
39.4k
llm-application-dev

moizibnyousaf/ai-agent-skills

Building applications with Large Language Models - prompt engineering, RAG patterns, and LLM integration. Use for AI-powered features, chatbots, or LLM-based automation.
1.1k
ai-prompt-engineering-safety-review

github/awesome-copilot

Comprehensive safety analysis and improvement framework for AI prompts with detailed assessment methodologies.
9.4k
34.3k
emblem-ai-prompt-examples

emblemcompany/agent-skills

emblem ai prompt examples
8.7k
10