F

flux-kontext

by @agentspace-sov
4.8(5)

Flux Kontext プロフェッショナル画像編集モデル、高品質な画像から画像への変換と編集。

image-generationimage-editingimage-to-imagegenerative-aiGitHub
インストール方法
npx skills add agentspace-so/runcomfy-agent-skills --skill flux-kontext
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Before / After 効果比較

1
使用前

Photoshopを使用して手動で画像スタイル転送と詳細編集を行うには、正確な選択範囲、レイヤー処理、効果の最適化が必要です。複雑な画像1枚の編集には1〜2時間かかります。

使用後

参照画像と編集指示をアップロードするだけで、目的の効果が自動生成されます。光と影の処理、細部の保持をインテリジェントに行い、複雑な画像編集が2分で完了します。バッチ処理とスタイルの一貫性もサポートします。

SKILL.md

flux-kontext

Flux Kontext Pro — Pro Pack on RunComfy

runcomfy.com · Model page · GitHub

Black Forest Labs' Flux 1 Kontext Pro — single-reference precise local image edit — hosted on the RunComfy Model API. Strong prompt control, consistent outputs, high fidelity.

npx skills add agentspace-so/runcomfy-skills --skill flux-kontext -g

When to pick this model (vs siblings)

You want Use

Single-image precise local edit ("she's now holding X") Flux Kontext

High-fidelity preservation of source identity Flux Kontext

Batch edits across 1–20 images Nano Banana Edit

Edit multilingual / embedded text in image GPT Image 2 edit

Generate from scratch, no source image Flux 2 Klein

If the user said "Flux Kontext" / "kontext" / "BFL Kontext" explicitly, route here regardless.

Prerequisites

  • RunComfy CLInpm i -g @runcomfy/cli

  • RunComfy accountruncomfy login opens a browser device-code flow.

  • CI / containers — set RUNCOMFY_TOKEN=<token> instead of runcomfy login.

Endpoints + input schema

blackforestlabs/flux-1-kontext/pro/edit

Field Type Required Default Notes

prompt string yes — Single declarative edit instruction.

image string yes — Single source image URL (publicly fetchable HTTPS).

aspect_ratio enum no (input) Pick from supported W:H options on the model page.

seed int no — Reuse for variant comparisons.

The schema is intentionally minimal — Kontext leans on prompt + single ref. For multi-image or web-grounded edits, route to Nano Banana Edit.

How to invoke

Default — local edit, preserve everything else:

runcomfy run blackforestlabs/flux-1-kontext/pro/edit \
  --input '{
    "prompt": "Keep the person'\''s face, pose, and clothing unchanged. Add an orange umbrella in her left hand and a slight smile.",
    "image": "https://.../portrait.jpg"
  }' \
  --output-dir <absolute/path>

With seed for reproducible variant series:

runcomfy run blackforestlabs/flux-1-kontext/pro/edit \
  --input '{
    "prompt": "Keep the bottle, label, and lighting unchanged. Replace the brand text on the label from \"ALPHA\" to \"AURA\".",
    "image": "https://.../bottle.jpg",
    "seed": 42
  }' \
  --output-dir <absolute/path>

Prompting — what actually works

One declarative instruction. Kontext shines on prompts shaped like the docs example: "She is now holding an orange umbrella and smiling". Imperative mood, single change.

Preservation first. Lead with "Keep [identity / pose / framing / brand] unchanged." Then the change. Models honor what's stated up front.

Single ref only — pick the right one. No multi-image fanout here. If you have multiple references, decide which is primary and pass that one. For multi-image flows, route to Nano Banana Edit.

Iterate on small changes. If Kontext drifts, split a compound edit into sequential single-instruction passes (pass 1: change background, pass 2: change clothing).

Aspect ratio — pick from the supported enum. Out-of-list values 422 or crop.

Anti-patterns:

  • Compound prompts ("change A and add B and remove C") → drift.

  • Trying to fan out to multiple source images → wrong model (use Nano Banana Edit).

  • Prompts written in passive voice → less reliable.

  • Asking for novel composition without a source image → wrong model (use Flux 2 Klein t2i).

Where it shines

Use case Why Flux Kontext

Single-shot precise local edit Specifically designed for this; high fidelity

Preserve source identity through targeted change Strong preservation under explicit instruction

Brand-asset text or color swap Quoted text + preservation lead-in works well

Quick iteration on one image Short prompts + single ref = fast result loop

Sample prompts (verified to produce strong results)

Page example:

She is now holding an orange umbrella and smiling

Preservation-led brand edit:

Keep the bottle silhouette, table, and lighting exactly as in the input.
Replace only the brand text on the label, from "ALPHA" to "AURA".
Same font weight, white on black, centered.

Compositional micro-edit:

Keep the person's face, pose, and clothing unchanged. Add a leather
shoulder bag, dark brown, hanging on the right shoulder.

Limitations

  • Single source image only. For multi-image flows, use Nano Banana Edit (1–20).

  • Public RunComfy docs are minimal — schema fields beyond prompt + image + aspect_ratio + seed may exist; check the model page for the latest field list.

  • Compound prompts drift — split into sequential passes.

  • For multilingual / embedded text editing, GPT Image 2 edit usually wins.

Exit codes

code meaning

0 success

64 bad CLI args

65 bad input JSON / schema mismatch

69 upstream 5xx

75 retryable: timeout / 429

77 not signed in or token rejected

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

How it works

The skill invokes runcomfy run blackforestlabs/flux-1-kontext/pro/edit with a JSON body matching the schema. The CLI POSTs to https://model-api.runcomfy.net/v1/models/blackforestlabs/flux-1-kontext/pro/edit, polls the request, fetches the result, and downloads any .runcomfy.net/.runcomfy.com URL into --output-dir. Ctrl-C cancels the remote request before exit.

Security & Privacy

  • Token storage: runcomfy login writes the API token to ~/.config/runcomfy/token.json with mode 0600 (owner-only read/write). Set RUNCOMFY_TOKEN env var to bypass the file entirely in CI / containers.

  • Input boundary: the user prompt is passed as a JSON string to the CLI via --input. The CLI does NOT shell-expand the prompt; it transmits the JSON body directly to the Model API over HTTPS. No shell injection surface from prompt content.

  • Third-party content: image / mask / video URLs you pass are fetched by the RunComfy model server, not by the CLI on your machine. Treat external URLs as untrusted; image-based prompt injection is a known risk for any image-edit / video-edit model.

  • Outbound endpoints: only model-api.runcomfy.net (request submission) and *.runcomfy.net / *.runcomfy.com (download whitelist for generated outputs). No telemetry, no callbacks.

  • Generated-file size cap: the CLI aborts any single download > 2 GiB to prevent disk-fill from a malicious or runaway model output.

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統計データ

インストール数122.1K
評価4.8 / 5.0
バージョン
更新日2026年5月23日
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作成2026年5月3日
最終更新2026年5月23日