hermes-agent/website/docs/user-guide/features/image-generation.md
Teknium 5ffae9228b
feat(image-gen): add GPT Image 2 to FAL catalog (#13677)
Adds OpenAI's new GPT Image 2 model via FAL.ai, selectable through
`hermes tools` → Image Generation. SOTA text rendering (including CJK)
and world-aware photorealism.

- FAL_MODELS entry with image_size_preset style
- 4:3 presets on all aspect ratios — 16:9 (1024x576) falls below
  GPT-Image-2's 655,360 min-pixel floor and would be rejected
- quality pinned to medium (same rule as gpt-image-1.5) for
  predictable Nous Portal billing
- BYOK (openai_api_key) deliberately omitted from supports so all
  users stay on shared FAL billing
- 6 new tests covering preset mapping, quality pinning, and
  supports-whitelist integrity
- Docs table + aspect-ratio map updated

Live-tested end-to-end: 39.9s cold request, clean 1024x768 PNG
2026-04-21 13:35:31 -07:00

156 lines
6.8 KiB
Markdown
Raw Blame History

This file contains ambiguous Unicode characters

This file contains Unicode characters that might be confused with other characters. If you think that this is intentional, you can safely ignore this warning. Use the Escape button to reveal them.

---
title: Image Generation
description: Generate images via FAL.ai — 9 models including FLUX 2, GPT Image (1.5 & 2), Nano Banana Pro, Ideogram, Recraft V4 Pro, and more, selectable via `hermes tools`.
sidebar_label: Image Generation
sidebar_position: 6
---
# Image Generation
Hermes Agent generates images from text prompts via FAL.ai. Nine models are supported out of the box, each with different speed, quality, and cost tradeoffs. The active model is user-configurable via `hermes tools` and persists in `config.yaml`.
## Supported Models
| Model | Speed | Strengths | Price |
|---|---|---|---|
| `fal-ai/flux-2/klein/9b` *(default)* | `<1s` | Fast, crisp text | $0.006/MP |
| `fal-ai/flux-2-pro` | ~6s | Studio photorealism | $0.03/MP |
| `fal-ai/z-image/turbo` | ~2s | Bilingual EN/CN, 6B params | $0.005/MP |
| `fal-ai/nano-banana-pro` | ~8s | Gemini 3 Pro, reasoning depth, text rendering | $0.15/image (1K) |
| `fal-ai/gpt-image-1.5` | ~15s | Prompt adherence | $0.034/image |
| `fal-ai/gpt-image-2` | ~20s | SOTA text rendering + CJK, world-aware photorealism | $0.040.06/image |
| `fal-ai/ideogram/v3` | ~5s | Best typography | $0.030.09/image |
| `fal-ai/recraft/v4/pro/text-to-image` | ~8s | Design, brand systems, production-ready | $0.25/image |
| `fal-ai/qwen-image` | ~12s | LLM-based, complex text | $0.02/MP |
Prices are FAL's pricing at time of writing; check [fal.ai](https://fal.ai/) for current numbers.
## Setup
:::tip Nous Subscribers
If you have a paid [Nous Portal](https://portal.nousresearch.com) subscription, you can use image generation through the **[Tool Gateway](tool-gateway.md)** without a FAL API key. Your model selection persists across both paths.
If the managed gateway returns `HTTP 4xx` for a specific model, that model isn't yet proxied on the portal side — the agent will tell you so, with remediation steps (set `FAL_KEY` for direct access, or pick a different model).
:::
### Get a FAL API Key
1. Sign up at [fal.ai](https://fal.ai/)
2. Generate an API key from your dashboard
### Configure and Pick a Model
Run the tools command:
```bash
hermes tools
```
Navigate to **🎨 Image Generation**, pick your backend (Nous Subscription or FAL.ai), then the picker shows all supported models in a column-aligned table — arrow keys to navigate, Enter to select:
```
Model Speed Strengths Price
fal-ai/flux-2/klein/9b <1s Fast, crisp text $0.006/MP ← currently in use
fal-ai/flux-2-pro ~6s Studio photorealism $0.03/MP
fal-ai/z-image/turbo ~2s Bilingual EN/CN, 6B $0.005/MP
...
```
Your selection is saved to `config.yaml`:
```yaml
image_gen:
model: fal-ai/flux-2/klein/9b
use_gateway: false # true if using Nous Subscription
```
### GPT-Image Quality
The `fal-ai/gpt-image-1.5` and `fal-ai/gpt-image-2` request quality is pinned to `medium` (~$0.034$0.06/image at 1024×1024). We don't expose the `low` / `high` tiers as a user-facing option so that Nous Portal billing stays predictable across all users — the cost spread between tiers is 322×. If you want a cheaper option, pick Klein 9B or Z-Image Turbo; if you want higher quality, use Nano Banana Pro or Recraft V4 Pro.
## Usage
The agent-facing schema is intentionally minimal — the model picks up whatever you've configured:
```
Generate an image of a serene mountain landscape with cherry blossoms
```
```
Create a square portrait of a wise old owl — use the typography model
```
```
Make me a futuristic cityscape, landscape orientation
```
## Aspect Ratios
Every model accepts the same three aspect ratios from the agent's perspective. Internally, each model's native size spec is filled in automatically:
| Agent input | image_size (flux/z-image/qwen/recraft/ideogram) | aspect_ratio (nano-banana-pro) | image_size (gpt-image-1.5) | image_size (gpt-image-2) |
|---|---|---|---|---|
| `landscape` | `landscape_16_9` | `16:9` | `1536x1024` | `landscape_4_3` (1024×768) |
| `square` | `square_hd` | `1:1` | `1024x1024` | `square_hd` (1024×1024) |
| `portrait` | `portrait_16_9` | `9:16` | `1024x1536` | `portrait_4_3` (768×1024) |
GPT Image 2 maps to 4:3 presets rather than 16:9 because its minimum pixel count is 655,360 — the `landscape_16_9` preset (1024×576 = 589,824) would be rejected.
This translation happens in `_build_fal_payload()` — agent code never has to know about per-model schema differences.
## Automatic Upscaling
Upscaling via FAL's **Clarity Upscaler** is gated per-model:
| Model | Upscale? | Why |
|---|---|---|
| `fal-ai/flux-2-pro` | ✓ | Backward-compat (was the pre-picker default) |
| All others | ✗ | Fast models would lose their sub-second value prop; hi-res models don't need it |
When upscaling runs, it uses these settings:
| Setting | Value |
|---|---|
| Upscale factor | 2× |
| Creativity | 0.35 |
| Resemblance | 0.6 |
| Guidance scale | 4 |
| Inference steps | 18 |
If upscaling fails (network issue, rate limit), the original image is returned automatically.
## How It Works Internally
1. **Model resolution**`_resolve_fal_model()` reads `image_gen.model` from `config.yaml`, falls back to the `FAL_IMAGE_MODEL` env var, then to `fal-ai/flux-2/klein/9b`.
2. **Payload building**`_build_fal_payload()` translates your `aspect_ratio` into the model's native format (preset enum, aspect-ratio enum, or GPT literal), merges the model's default params, applies any caller overrides, then filters to the model's `supports` whitelist so unsupported keys are never sent.
3. **Submission**`_submit_fal_request()` routes via direct FAL credentials or the managed Nous gateway.
4. **Upscaling** — runs only if the model's metadata has `upscale: True`.
5. **Delivery** — final image URL returned to the agent, which emits a `MEDIA:<url>` tag that platform adapters convert to native media.
## Debugging
Enable debug logging:
```bash
export IMAGE_TOOLS_DEBUG=true
```
Debug logs go to `./logs/image_tools_debug_<session_id>.json` with per-call details (model, parameters, timing, errors).
## Platform Delivery
| Platform | Delivery |
|---|---|
| **CLI** | Image URL printed as markdown `![](url)` — click to open |
| **Telegram** | Photo message with the prompt as caption |
| **Discord** | Embedded in a message |
| **Slack** | URL unfurled by Slack |
| **WhatsApp** | Media message |
| **Others** | URL in plain text |
## Limitations
- **Requires FAL credentials** (direct `FAL_KEY` or Nous Subscription)
- **Text-to-image only** — no inpainting, img2img, or editing via this tool
- **Temporary URLs** — FAL returns hosted URLs that expire after hours/days; save locally if needed
- **Per-model constraints** — some models don't support `seed`, `num_inference_steps`, etc. The `supports` filter silently drops unsupported params; this is expected behavior