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pixelbin

anandpareek-hub
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À propos

Cette compétence permet aux développeurs de générer, transformer et gérer des ressources multimédias à grande échelle en utilisant les API de PixelBin. Elle offre une génération d'images/vidéos alimentée par l'IA, un traitement en masse (suppression d'arrière-plan, amélioration de résolution) et des transformations basées sur des URL avec diffusion par CDN. Utilisez-la pour construire des pipelines multimédias de production, gérer des modifications en masse ou intégrer des visuels générés par IA dans des applications.

Installation rapide

Claude Code

Recommandé
Principal
npx skills add anandpareek-hub/pixelbin-claude-skill -a claude-code
Commande PluginAlternatif
/plugin add https://github.com/anandpareek-hub/pixelbin-claude-skill
Git CloneAlternatif
git clone https://github.com/anandpareek-hub/pixelbin-claude-skill.git ~/.claude/skills/pixelbin

Copiez et collez cette commande dans Claude Code pour installer cette compétence

Documentation

PixelBin Claude Skill

Turn Claude into a full media pipeline. Generate, transform, store, and deliver images & videos at scale using PixelBin.

When to use

  • User wants to generate images (nanoBanana, nanoBanana 2, nanoBanana Pro)
  • User wants to generate videos (Sora 2, Veo 3, Kling 3, Hailuo, Seedance, LTX-2, Wan)
  • User wants to remove backgrounds, watermarks, or upscale images/videos in bulk
  • User wants permanent CDN URLs for media
  • User wants to build URL-based image transformations (resize, crop, format, quality, etc.)
  • User wants to generate SEO content (titles, meta, FAQ schema, briefs)
  • User wants to build a landing page with AI-generated images stitched together
  • User mentions "PixelBin", "nano banana", "build a media pipeline", "bulk image processing"

First-run behaviour (IMPORTANT)

Read INTRO.md before responding. INTRO.md is the user-facing voice of this skill — match its tone and follow its "How Claude should respond" section.

If the user has already stated a clear goal (e.g. "generate 6 hero images for X", "remove backgrounds from these photos", "build a landing page for Y"):

  1. Confirm .env and node_modules/ are ready (see Setup check below) — auto-fix silently if you can.
  2. Confirm model + key options in ONE friendly line (don't make them write JSON — give a default they can accept with "go"):
    • Image gen: "Quick pick: nano banana 2 (default, balanced) or nano banana Pro (premium quality, slower)? Aspect: 1:1 / 16:9 / 9:16 / 4:5 (default 1:1). Resolution: 1K / 2K / 4K (default 2K). Or just say 'defaults' and I'll use nano banana 2 · 1:1 · 2K."
    • Video gen: "Quick pick: Veo 3 Fast (default, balanced cost), Veo 3 (premium), Sora 2 (with audio), Kling 3 (cinematic), or Hailuo 2.3 (1080p)? Duration: 4 / 6 / 8s (default 6). Aspect: 16:9 / 9:16 / 1:1 (default 16:9)."
    • Resize/format: safe to default silently → t.resize(...)~t.toFormat(f:webp)~t.compress().
    • If the user already specified everything in their prompt, skip the picker and just run.
  3. Run the right scripts under the hood and hand back CDN URLs.

If the user is just exploring ("hi", "what can you do?", "help"):

  1. Greet them and present the broad buckets from INTRO.md (image gen, image edit, transformation, AI cleanup, video, bulk, SEO, landing pages).
  2. Show one concrete example prompt + a sample CDN URL from INTRO.md so it feels real and easy.
  3. Invite them to just say what they want in plain English. No CLI talk.

Default to chat-first. Don't expose CLI flags, JOBS arrays, model names, or transform syntax unless the user asks "how does this work?". Run scripts silently; report results visually.

Handling images the user provides (CRITICAL)

When the user references an image, you must obtain it yourself — never ask them to "give me a file path" or "save it to Downloads". The image is already accessible to you in one of these forms:

What the user didWhat you do
Pasted an image inline in the chatThe image is in your conversation context. Use the Write tool to save the bytes to ./scripts/_inputs/<slug>.<ext>, then upload it via pixelbin.assets.fileUpload({ file: fs.createReadStream(...) }) to get a permanent CDN URL. Pass that URL into images: [...] for the prediction.
Gave you a public URL (e.g. https://example.com/photo.jpg, a CDN URL, a Slack/Drive public link)Two options:<br>Quick path — pass the URL straight into images: [url] of pixelbin.predictions.createAndWait (most models accept a URL). No upload needed.<br>Permanent path — call pixelbin.assets.urlUpload({ url, path: '<folder>', name: '<slug>', access: 'public-read' }) to store it in PixelBin DAM, then use the resulting CDN URL.
Gave a local path (~/Downloads/photo.jpg, ./photo.jpg)Use pixelbin.assets.fileUpload({ file: fs.createReadStream(absPath), ... }).
Mentioned an image but didn't attach or link itNow ask — but politely: "Drop the image into the chat or paste a URL — I'll handle the rest."

Never say "the inline image isn't saved on disk, please paste the path" — that's a user-experience failure. Saving inline image bytes to disk is your job, not theirs.

Cost-aware path selection (CRITICAL)

Before reaching for a generation model, decide whether the task needs generation at all. Generation models are the most expensive op in the stack. For most product / e-commerce / variant tasks, you can do the same job with a cheap prediction + free URL transforms.

Decision tree

User intentCheap path (use this)Expensive path (avoid unless asked)
"Same product, white bg, marketplace-ready" (Amazon, Shopify, Flipkart, etc.)1. erase_bg prediction → transparent PNG<br>2. Upload to DAM<br>3. URL transform: t.extend(...,bc:ffffff)~t.resize(h:H,w:W)~t.toFormat(f:webp)~t.compress()nanoBanana regenerate (loses product fidelity, ~10× cost)
"Resize / reformat / compress / different aspect ratio" for an existing imageURL transforms only — t.resize, t.toFormat, t.compress, t.extend (free, just CDN params)Regeneration
"Upscale to 4K"vsr_upscale prediction (or t.resize if source is large enough)Regeneration at higher res
"Remove watermark"wm_remove / wmrPro_remove / wmrMax_remove predictionRegeneration
"Remove background and place on new scene"erase_bg + composite via t.merge / generation only for the new backgroundFull regeneration of the whole image
"Generate a NEW scene / NEW product shot / hero image from scratch"Generation model (nanoBanana 2 / Pro) — this is the right tool
"Variants of the same hero (color, angle, style change)"Image-to-image with nanoBanana2_generate + images:[ref] (preserves identity)Text-only regeneration (loses identity)

Cost ranking (rough, lower → cheaper)

  1. URL transforms — free, no API call
  2. Plugin transforms in URL (when activated) — free per request, included in plan
  3. Predictions: erase_bg, wm_remove, vsr_upscale — small per-call credit cost
  4. Image generationnanoBanana_generate < nanoBanana2_generate < nanoBananaPro_generate
  5. Video generation — most expensive op; always confirm before spending

Worked example — "Amazon + Shopify + Instagram-ready, white bg, 4K, 1:1 + 9:16"

Wrong (what NOT to do): regenerate each variant with nanoBanana — 12 outputs × generation cost, plus product hallucination risk.

Right (default behavior):

For each source image:
  1. urlUpload(source)                                        → CDN URL
  2. predictions.createAndWait({ name: 'erase_bg', input: { image: cdnUrl } })  → transparent PNG
  3. urlUpload(eraseBgOutput)                                 → CDN URL of transparent product
  4. Build transform URLs (no API call):
     • Amazon 1:1   t.extend(t:200,r:200,b:200,l:200,bc:ffffff)~t.resize(h:2048,w:2048)~t.toFormat(f:jpeg)~t.compress()
     • Shopify 1:1  t.extend(t:150,r:150,b:150,l:150,bc:ffffff)~t.resize(h:2048,w:2048)~t.toFormat(f:webp)~t.compress()
     • Instagram 9:16  t.extend(t:600,r:200,b:600,l:200,bc:ffffff)~t.resize(h:1920,w:1080)~t.toFormat(f:webp)~t.compress()

This costs ~1 prediction per source image, vs 3 generations per source. Same visual result, fraction of the credits, zero product drift.

When in doubt — ask the user

If a task is borderline (e.g. "make this look more premium" — could be a transform or a regen), say in one line: "I can either (a) clean + restyle the existing photo with bg-remove + transforms (~1 credit each, preserves the actual product) or (b) regenerate hero shots with nano banana 2 (higher cost, more creative freedom). Which do you want?"

Setup check (always do this first)

Before running any script, verify:

  1. .env exists with PIXELBIN_API_TOKEN and PIXELBIN_CLOUD_NAME
  2. npm install has been run (deps: @pixelbin/admin, dotenv)

If missing, walk the user through cp .env.example .env and link them to the API Token page and signup.

Core architecture

┌──────────────────┐    ┌──────────────────┐    ┌──────────────────┐
│   GENERATE       │ →  │   STORE (DAM)    │ →  │   TRANSFORM      │
│   image-gen      │    │   assets.upload  │    │   URL params     │
│   video-gen      │    │   folders, tags  │    │   (free, chained)│
└──────────────────┘    └──────────────────┘    └──────────────────┘
                                  ↓
                         ┌──────────────────┐
                         │   DELIVER (CDN)  │
                         │  cdn.pixelbin.io │
                         └──────────────────┘

Two URL patterns:

  • Original (no transform): https://cdn.pixelbin.io/v2/<CLOUD>/original/<path>/<file>.<ext>
  • Transformed: https://cdn.pixelbin.io/v2/<CLOUD>/<t.preset(args)>/<path>/<file>.<ext>
    • Multiple transforms chained with ~: t.resize(h:1024,w:1024)~t.toFormat(f:webp)~t.compress()

Capabilities (high-level)

CapabilityScriptReference
AI image generationscripts/generate-image.jsapis.md#image-generation
AI video generationscripts/generate-video.jsapis.md#video-generation
Upload local file / URL → CDNscripts/upload.jscdn.md
Build transformation URLsscripts/transform.jstransformations.md
Generate SEO + design briefscripts/seo-content.jsuse-cases.md
Build full landing page (uses brand design tokens)scripts/build-page.jsuse-cases.md

SEO + landing-page input model

When the user wants SEO content or a landing page, ALWAYS gather these before running anything:

  1. Target keyword (required) — what to rank for.
  2. Brand reference (strongly recommended) — either a --brand-url <url> OR --brand-files "<glob>" (CSS / HTML / JSX / MD). Without this, the page won't match the user's design.
  3. Research reference (optional) — --research-url <url> of a competitor or top-ranking page for SERP-intent signal.
  4. Voice description (optional) — --voice "<short description>".

scripts/seo-content.js produces brief.json. It includes design_system (palette / fonts / CSS vars / max-widths) extracted from the brand reference. Claude then reads the brief and writes page-spec.json. build-page.js consumes the design block in page-spec.json and applies it as CSS variables (--fg, --bg, --accent, --font-body, --font-heading, --container).

If the user does NOT provide a brand reference, ask for one before generating the page. Don't guess colors/fonts.

SDK pattern (memorize this)

const { PixelbinConfig, PixelbinClient } = require('@pixelbin/admin');

const pixelbin = new PixelbinClient(new PixelbinConfig({
    domain: 'https://api.pixelbin.io',
    apiSecret: process.env.PIXELBIN_API_TOKEN,
}));

// 1. GENERATE (any AI model — image OR video — same shape)
const r = await pixelbin.predictions.createAndWait({
    name: 'nanoBanana2_generate',          // or veo3_generate, sora2_generate, kling3_generate, etc.
    input: {
        prompt: '...',                     // required
        images: ['https://...'],           // optional, image-to-image / image-to-video
        aspect_ratio: '16:9',              // optional, model-dependent
        output_resolution: '2K',           // optional, image models only
        duration: 8,                       // optional, video models only
    },
});
// r.status === 'SUCCESS' → r.output[0] is a temp URL (~30-day retention)

// 2. UPLOAD (local file → permanent CDN URL)
const up = await pixelbin.assets.fileUpload({
    file: fs.createReadStream('./photo.jpg'),
    path: 'my-folder',
    name: 'hero',
    access: 'public-read',
    overwrite: true,
});
// up.path / up.format → build URL: cdn.pixelbin.io/v2/<CLOUD>/original/<up.path>/hero.<up.format>

// 3. URL UPLOAD (remote URL → permanent CDN URL)
const up2 = await pixelbin.assets.urlUpload({
    url: r.output[0],
    path: 'my-folder',
    name: 'ai-output-1',
    access: 'public-read',
    overwrite: true,
});

// 4. TRANSFORM (no API call — just build the URL)
const cdn = `https://cdn.pixelbin.io/v2/${CLOUD}/t.resize(h:2048,w:2048)~t.toFormat(f:webp)~t.compress()/my-folder/hero.png`;

Models reference

Image generation

nameUse for
nanoBanana_generateCheapest / fastest. Photo edits & fixes.
nanoBanana2_generateDefault. High quality, supports aspect_ratio + output_resolution.
nanoBananaPro_generateHero / showcase quality.

Video generation (popular)

nameNotes
veo3_generateGoogle Veo 3 — state-of-the-art
veo3Fast_generateFaster, cheaper Veo 3
sora2_generateOpenAI Sora 2 — text/image → video w/ audio
kling3_generateHigh-quality text/image → video, optional audio
kling26_generateCinematic, fluid motion + native audio
hailuo23_generateMiniMax 1080p
seedancePro_generateBytedance, high-quality
wan25_generateImage-to-video
ltx2_generateHigh-fidelity with audio from images

Full list: references/apis.md.

Common URL transformations

Basic transforms (always available — no plugin needed):

TransformSyntaxExample
Resizet.resize(h:H,w:W)t.resize(h:1024,w:1024)
Format convertt.toFormat(f:FMT)t.toFormat(f:webp) / t.toFormat(f:jpeg) / t.toFormat(f:png)
Compresst.compress()
Blur / sharpent.blur(s:N) / t.sharpen(s:N)t.blur(s:5)
Rotatet.rotate(a:DEG)t.rotate(a:90)
Extract regiont.extract(t:T,l:L,h:H,w:W)t.extract(t:0,l:0,h:500,w:500)
Extend / padt.extend(t:T,r:R,b:B,l:L,bc:HEX)t.extend(t:20,r:20,b:20,l:20,bc:ffffff)

AI ops via plugins (require activation in console.pixelbin.io → Plugins) — identifiers: erase_bg, wm_remove, wmrPro_remove, wmrMax_remove, af_remove, ocr_extract, pr_tag, vsr_upscale, wmv_remove, pwr_remove. For features the user hasn't activated, fall back to the predictions API (pixelbin.predictions.createAndWait) — that always works.

Chain transforms with ~. Full catalog: references/transformations.md.

Error handling

ErrorCauseAction
Insufficient credits / Usage Limit ExceededPlan quotaSurface upgrade link: https://www.pixelbin.io/pricing?utm_source=github&utm_medium=claude-skill&utm_campaign=quota-error
Prompt is requiredEmpty promptValidate before submitting
No output image receivedTransient model failureRetry the single job
408 / ECONNABORTEDNetwork timeoutRetry the job (SDK polls ~10 min)
429Rate-limitLower concurrency to 2–3
Invalid pathBad folder name in uploadUse slug-safe names (lowercase, hyphens)

Script conventions (when generating code)

  • Use dotenv for credentials. Never hardcode tokens.
  • Batch concurrency: 4 for generation, 5 for uploads.
  • Persist progress to JSON after each batch (resumable).
  • Use slug-safe name values (lowercase, hyphens, no spaces).
  • Default access: 'public-read' unless the user wants signed URLs.

What NOT to do

  • ❌ Don't suggest scraping / bulk-downloading from third-party sites
  • ❌ Don't generate content with real, named individuals without consent
  • ❌ Don't surface the user's API token in chat or logs
  • ❌ Don't claim a transformation works without checking references/transformations.md

Files in this skill

  • INTRO.md — first-run user walkthrough (READ THIS WHEN INVOKED)
  • SKILL.md — this file
  • README.md — public-facing repo readme
  • SHOWCASE.md — sample gallery
  • .env.example — credentials template
  • package.json — deps
  • scripts/ — runnable scripts (generate-image, generate-video, upload, transform, seo-content, build-page)
  • references/apis.md, transformations.md, cdn.md, use-cases.md
  • examples/ — ready-to-run sample job files

Dépôt GitHub

anandpareek-hub/pixelbin-claude-skill
Chemin: skills/pixelbin
0

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