#!/usr/bin/env python3 """ Image Generation Tools Module Provides image generation via FAL.ai. Multiple FAL models are supported and selectable via ``hermes tools`` → Image Generation; the active model is persisted to ``image_gen.model`` in ``config.yaml``. Architecture: - ``FAL_MODELS`` is a catalog of supported models with per-model metadata (size-style family, defaults, ``supports`` whitelist, upscaler flag). - ``_build_fal_payload()`` translates the agent's unified inputs (prompt + aspect_ratio) into the model-specific payload and filters to the ``supports`` whitelist so models never receive rejected keys. - Upscaling via FAL's Clarity Upscaler is gated per-model via the ``upscale`` flag — on for FLUX 2 Pro (backward-compat), off for all faster/newer models where upscaling would either hurt latency or add marginal quality. Pricing shown in UI strings is as-of the initial commit; we accept drift and update when it's noticed. """ import json import logging import os import datetime import threading import uuid from typing import Any, Dict, Optional, Union from urllib.parse import urlencode import fal_client from tools.debug_helpers import DebugSession from tools.managed_tool_gateway import resolve_managed_tool_gateway from tools.tool_backend_helpers import ( fal_key_is_configured, managed_nous_tools_enabled, prefers_gateway, ) logger = logging.getLogger(__name__) # --------------------------------------------------------------------------- # FAL model catalog # --------------------------------------------------------------------------- # # Each entry declares how to translate our unified inputs into the model's # native payload shape. Size specification falls into three families: # # "image_size_preset" — preset enum ("square_hd", "landscape_16_9", ...) # used by the flux family, z-image, qwen, recraft, # ideogram. # "aspect_ratio" — aspect ratio enum ("16:9", "1:1", ...) used by # nano-banana (Gemini). # "gpt_literal" — literal dimension strings ("1024x1024", etc.) # used by gpt-image-1.5. # # ``supports`` is a whitelist of keys allowed in the outgoing payload — any # key outside this set is stripped before submission so models never receive # rejected parameters (each FAL model rejects unknown keys differently). # # ``upscale`` controls whether to chain Clarity Upscaler after generation. FAL_MODELS: Dict[str, Dict[str, Any]] = { "fal-ai/flux-2/klein/9b": { "display": "FLUX 2 Klein 9B", "speed": "<1s", "strengths": "Fast, crisp text", "price": "$0.006/MP", "size_style": "image_size_preset", "sizes": { "landscape": "landscape_16_9", "square": "square_hd", "portrait": "portrait_16_9", }, "defaults": { "num_inference_steps": 4, "output_format": "png", "enable_safety_checker": False, }, "supports": { "prompt", "image_size", "num_inference_steps", "seed", "output_format", "enable_safety_checker", }, "upscale": False, }, "fal-ai/flux-2-pro": { "display": "FLUX 2 Pro", "speed": "~6s", "strengths": "Studio photorealism", "price": "$0.03/MP", "size_style": "image_size_preset", "sizes": { "landscape": "landscape_16_9", "square": "square_hd", "portrait": "portrait_16_9", }, "defaults": { "num_inference_steps": 50, "guidance_scale": 4.5, "num_images": 1, "output_format": "png", "enable_safety_checker": False, "safety_tolerance": "5", "sync_mode": True, }, "supports": { "prompt", "image_size", "num_inference_steps", "guidance_scale", "num_images", "output_format", "enable_safety_checker", "safety_tolerance", "sync_mode", "seed", }, "upscale": True, # Backward-compat: current default behavior. }, "fal-ai/z-image/turbo": { "display": "Z-Image Turbo", "speed": "~2s", "strengths": "Bilingual EN/CN, 6B", "price": "$0.005/MP", "size_style": "image_size_preset", "sizes": { "landscape": "landscape_16_9", "square": "square_hd", "portrait": "portrait_16_9", }, "defaults": { "num_inference_steps": 8, "num_images": 1, "output_format": "png", "enable_safety_checker": False, "enable_prompt_expansion": False, # avoid the extra per-request charge }, "supports": { "prompt", "image_size", "num_inference_steps", "num_images", "seed", "output_format", "enable_safety_checker", "enable_prompt_expansion", }, "upscale": False, }, "fal-ai/nano-banana-pro": { "display": "Nano Banana Pro (Gemini 3 Pro Image)", "speed": "~8s", "strengths": "Gemini 3 Pro, reasoning depth, text rendering", "price": "$0.15/image (1K)", "size_style": "aspect_ratio", "sizes": { "landscape": "16:9", "square": "1:1", "portrait": "9:16", }, "defaults": { "num_images": 1, "output_format": "png", "safety_tolerance": "5", # "1K" is the cheapest tier; 4K doubles the per-image cost. # Users on Nous Subscription should stay at 1K for predictable billing. "resolution": "1K", }, "supports": { "prompt", "aspect_ratio", "num_images", "output_format", "safety_tolerance", "seed", "sync_mode", "resolution", "enable_web_search", "limit_generations", }, "upscale": False, }, "fal-ai/gpt-image-1.5": { "display": "GPT Image 1.5", "speed": "~15s", "strengths": "Prompt adherence", "price": "$0.034/image", "size_style": "gpt_literal", "sizes": { "landscape": "1536x1024", "square": "1024x1024", "portrait": "1024x1536", }, "defaults": { # Quality is pinned to medium to keep portal billing predictable # across all users (low is too rough, high is 4-6x more expensive). "quality": "medium", "num_images": 1, "output_format": "png", }, "supports": { "prompt", "image_size", "quality", "num_images", "output_format", "background", "sync_mode", }, "upscale": False, }, "fal-ai/gpt-image-2": { "display": "GPT Image 2", "speed": "~20s", "strengths": "SOTA text rendering + CJK, world-aware photorealism", "price": "$0.04–0.06/image", # GPT Image 2 uses FAL's standard preset enum (unlike 1.5's literal # dimensions). We map to the 4:3 variants — the 16:9 presets # (1024x576) fall below GPT-Image-2's 655,360 min-pixel requirement # and would be rejected. 4:3 keeps us above the minimum on all # three aspect ratios. "size_style": "image_size_preset", "sizes": { "landscape": "landscape_4_3", # 1024x768 "square": "square_hd", # 1024x1024 "portrait": "portrait_4_3", # 768x1024 }, "defaults": { # Same quality pinning as gpt-image-1.5: medium keeps Nous # Portal billing predictable. "high" is 3-4x the per-image # cost at the same size; "low" is too rough for production use. "quality": "medium", "num_images": 1, "output_format": "png", }, "supports": { "prompt", "image_size", "quality", "num_images", "output_format", "sync_mode", # openai_api_key (BYOK) intentionally omitted — all users go # through the shared FAL billing path. }, "upscale": False, }, "fal-ai/ideogram/v3": { "display": "Ideogram V3", "speed": "~5s", "strengths": "Best typography", "price": "$0.03-0.09/image", "size_style": "image_size_preset", "sizes": { "landscape": "landscape_16_9", "square": "square_hd", "portrait": "portrait_16_9", }, "defaults": { "rendering_speed": "BALANCED", "expand_prompt": True, "style": "AUTO", }, "supports": { "prompt", "image_size", "rendering_speed", "expand_prompt", "style", "seed", }, "upscale": False, }, "fal-ai/recraft/v4/pro/text-to-image": { "display": "Recraft V4 Pro", "speed": "~8s", "strengths": "Design, brand systems, production-ready", "price": "$0.25/image", "size_style": "image_size_preset", "sizes": { "landscape": "landscape_16_9", "square": "square_hd", "portrait": "portrait_16_9", }, "defaults": { # V4 Pro dropped V3's required `style` enum — defaults handle taste now. "enable_safety_checker": False, }, "supports": { "prompt", "image_size", "enable_safety_checker", "colors", "background_color", }, "upscale": False, }, "fal-ai/qwen-image": { "display": "Qwen Image", "speed": "~12s", "strengths": "LLM-based, complex text", "price": "$0.02/MP", "size_style": "image_size_preset", "sizes": { "landscape": "landscape_16_9", "square": "square_hd", "portrait": "portrait_16_9", }, "defaults": { "num_inference_steps": 30, "guidance_scale": 2.5, "num_images": 1, "output_format": "png", "acceleration": "regular", }, "supports": { "prompt", "image_size", "num_inference_steps", "guidance_scale", "num_images", "output_format", "acceleration", "seed", "sync_mode", }, "upscale": False, }, } # Default model is the fastest reasonable option. Kept cheap and sub-1s. DEFAULT_MODEL = "fal-ai/flux-2/klein/9b" DEFAULT_ASPECT_RATIO = "landscape" VALID_ASPECT_RATIOS = ("landscape", "square", "portrait") # --------------------------------------------------------------------------- # Upscaler (Clarity Upscaler — unchanged from previous implementation) # --------------------------------------------------------------------------- UPSCALER_MODEL = "fal-ai/clarity-upscaler" UPSCALER_FACTOR = 2 UPSCALER_SAFETY_CHECKER = False UPSCALER_DEFAULT_PROMPT = "masterpiece, best quality, highres" UPSCALER_NEGATIVE_PROMPT = "(worst quality, low quality, normal quality:2)" UPSCALER_CREATIVITY = 0.35 UPSCALER_RESEMBLANCE = 0.6 UPSCALER_GUIDANCE_SCALE = 4 UPSCALER_NUM_INFERENCE_STEPS = 18 _debug = DebugSession("image_tools", env_var="IMAGE_TOOLS_DEBUG") _managed_fal_client = None _managed_fal_client_config = None _managed_fal_client_lock = threading.Lock() # --------------------------------------------------------------------------- # Managed FAL gateway (Nous Subscription) # --------------------------------------------------------------------------- def _resolve_managed_fal_gateway(): """Return managed fal-queue gateway config when the user prefers the gateway or direct FAL credentials are absent.""" if fal_key_is_configured() and not prefers_gateway("image_gen"): return None return resolve_managed_tool_gateway("fal-queue") def _normalize_fal_queue_url_format(queue_run_origin: str) -> str: normalized_origin = str(queue_run_origin or "").strip().rstrip("/") if not normalized_origin: raise ValueError("Managed FAL queue origin is required") return f"{normalized_origin}/" class _ManagedFalSyncClient: """Small per-instance wrapper around fal_client.SyncClient for managed queue hosts.""" def __init__(self, *, key: str, queue_run_origin: str): sync_client_class = getattr(fal_client, "SyncClient", None) if sync_client_class is None: raise RuntimeError("fal_client.SyncClient is required for managed FAL gateway mode") client_module = getattr(fal_client, "client", None) if client_module is None: raise RuntimeError("fal_client.client is required for managed FAL gateway mode") self._queue_url_format = _normalize_fal_queue_url_format(queue_run_origin) self._sync_client = sync_client_class(key=key) self._http_client = getattr(self._sync_client, "_client", None) self._maybe_retry_request = getattr(client_module, "_maybe_retry_request", None) self._raise_for_status = getattr(client_module, "_raise_for_status", None) self._request_handle_class = getattr(client_module, "SyncRequestHandle", None) self._add_hint_header = getattr(client_module, "add_hint_header", None) self._add_priority_header = getattr(client_module, "add_priority_header", None) self._add_timeout_header = getattr(client_module, "add_timeout_header", None) if self._http_client is None: raise RuntimeError("fal_client.SyncClient._client is required for managed FAL gateway mode") if self._maybe_retry_request is None or self._raise_for_status is None: raise RuntimeError("fal_client.client request helpers are required for managed FAL gateway mode") if self._request_handle_class is None: raise RuntimeError("fal_client.client.SyncRequestHandle is required for managed FAL gateway mode") def submit( self, application: str, arguments: Dict[str, Any], *, path: str = "", hint: Optional[str] = None, webhook_url: Optional[str] = None, priority: Any = None, headers: Optional[Dict[str, str]] = None, start_timeout: Optional[Union[int, float]] = None, ): url = self._queue_url_format + application if path: url += "/" + path.lstrip("/") if webhook_url is not None: url += "?" + urlencode({"fal_webhook": webhook_url}) request_headers = dict(headers or {}) if hint is not None and self._add_hint_header is not None: self._add_hint_header(hint, request_headers) if priority is not None: if self._add_priority_header is None: raise RuntimeError("fal_client.client.add_priority_header is required for priority requests") self._add_priority_header(priority, request_headers) if start_timeout is not None: if self._add_timeout_header is None: raise RuntimeError("fal_client.client.add_timeout_header is required for timeout requests") self._add_timeout_header(start_timeout, request_headers) response = self._maybe_retry_request( self._http_client, "POST", url, json=arguments, timeout=getattr(self._sync_client, "default_timeout", 120.0), headers=request_headers, ) self._raise_for_status(response) data = response.json() return self._request_handle_class( request_id=data["request_id"], response_url=data["response_url"], status_url=data["status_url"], cancel_url=data["cancel_url"], client=self._http_client, ) def _get_managed_fal_client(managed_gateway): """Reuse the managed FAL client so its internal httpx.Client is not leaked per call.""" global _managed_fal_client, _managed_fal_client_config client_config = ( managed_gateway.gateway_origin.rstrip("/"), managed_gateway.nous_user_token, ) with _managed_fal_client_lock: if _managed_fal_client is not None and _managed_fal_client_config == client_config: return _managed_fal_client _managed_fal_client = _ManagedFalSyncClient( key=managed_gateway.nous_user_token, queue_run_origin=managed_gateway.gateway_origin, ) _managed_fal_client_config = client_config return _managed_fal_client def _submit_fal_request(model: str, arguments: Dict[str, Any]): """Submit a FAL request using direct credentials or the managed queue gateway.""" request_headers = {"x-idempotency-key": str(uuid.uuid4())} managed_gateway = _resolve_managed_fal_gateway() if managed_gateway is None: return fal_client.submit(model, arguments=arguments, headers=request_headers) managed_client = _get_managed_fal_client(managed_gateway) try: return managed_client.submit( model, arguments=arguments, headers=request_headers, ) except Exception as exc: # 4xx from the managed gateway typically means the portal doesn't # currently proxy this model (allowlist miss, billing gate, etc.) # — surface a clearer message with actionable remediation instead # of a raw HTTP error from httpx. status = _extract_http_status(exc) if status is not None and 400 <= status < 500: raise ValueError( f"Nous Subscription gateway rejected model '{model}' " f"(HTTP {status}). This model may not yet be enabled on " f"the Nous Portal's FAL proxy. Either:\n" f" • Set FAL_KEY in your environment to use FAL.ai directly, or\n" f" • Pick a different model via `hermes tools` → Image Generation." ) from exc raise def _extract_http_status(exc: BaseException) -> Optional[int]: """Return an HTTP status code from httpx/fal exceptions, else None. Defensive across exception shapes — httpx.HTTPStatusError exposes ``.response.status_code`` while fal_client wrappers may expose ``.status_code`` directly. """ response = getattr(exc, "response", None) if response is not None: status = getattr(response, "status_code", None) if isinstance(status, int): return status status = getattr(exc, "status_code", None) if isinstance(status, int): return status return None # --------------------------------------------------------------------------- # Model resolution + payload construction # --------------------------------------------------------------------------- def _resolve_fal_model() -> tuple: """Resolve the active FAL model from config.yaml (primary) or default. Returns (model_id, metadata_dict). Falls back to DEFAULT_MODEL if the configured model is unknown (logged as a warning). """ model_id = "" try: from hermes_cli.config import load_config cfg = load_config() img_cfg = cfg.get("image_gen") if isinstance(cfg, dict) else None if isinstance(img_cfg, dict): raw = img_cfg.get("model") if isinstance(raw, str): model_id = raw.strip() except Exception as exc: logger.debug("Could not load image_gen.model from config: %s", exc) # Env var escape hatch (undocumented; backward-compat for tests/scripts). if not model_id: model_id = os.getenv("FAL_IMAGE_MODEL", "").strip() if not model_id: return DEFAULT_MODEL, FAL_MODELS[DEFAULT_MODEL] if model_id not in FAL_MODELS: logger.warning( "Unknown FAL model '%s' in config; falling back to %s", model_id, DEFAULT_MODEL, ) return DEFAULT_MODEL, FAL_MODELS[DEFAULT_MODEL] return model_id, FAL_MODELS[model_id] def _build_fal_payload( model_id: str, prompt: str, aspect_ratio: str = DEFAULT_ASPECT_RATIO, seed: Optional[int] = None, overrides: Optional[Dict[str, Any]] = None, ) -> Dict[str, Any]: """Build a FAL request payload for `model_id` from unified inputs. Translates aspect_ratio into the model's native size spec (preset enum, aspect-ratio enum, or GPT literal string), merges model defaults, applies caller overrides, then filters to the model's ``supports`` whitelist. """ meta = FAL_MODELS[model_id] size_style = meta["size_style"] sizes = meta["sizes"] aspect = (aspect_ratio or DEFAULT_ASPECT_RATIO).lower().strip() if aspect not in sizes: aspect = DEFAULT_ASPECT_RATIO payload: Dict[str, Any] = dict(meta.get("defaults", {})) payload["prompt"] = (prompt or "").strip() if size_style in ("image_size_preset", "gpt_literal"): payload["image_size"] = sizes[aspect] elif size_style == "aspect_ratio": payload["aspect_ratio"] = sizes[aspect] else: raise ValueError(f"Unknown size_style: {size_style!r}") if seed is not None and isinstance(seed, int): payload["seed"] = seed if overrides: for k, v in overrides.items(): if v is not None: payload[k] = v supports = meta["supports"] return {k: v for k, v in payload.items() if k in supports} # --------------------------------------------------------------------------- # Upscaler # --------------------------------------------------------------------------- def _upscale_image(image_url: str, original_prompt: str) -> Optional[Dict[str, Any]]: """Upscale an image using FAL.ai's Clarity Upscaler. Returns upscaled image dict, or None on failure (caller falls back to the original image). """ try: logger.info("Upscaling image with Clarity Upscaler...") upscaler_arguments = { "image_url": image_url, "prompt": f"{UPSCALER_DEFAULT_PROMPT}, {original_prompt}", "upscale_factor": UPSCALER_FACTOR, "negative_prompt": UPSCALER_NEGATIVE_PROMPT, "creativity": UPSCALER_CREATIVITY, "resemblance": UPSCALER_RESEMBLANCE, "guidance_scale": UPSCALER_GUIDANCE_SCALE, "num_inference_steps": UPSCALER_NUM_INFERENCE_STEPS, "enable_safety_checker": UPSCALER_SAFETY_CHECKER, } handler = _submit_fal_request(UPSCALER_MODEL, arguments=upscaler_arguments) result = handler.get() if result and "image" in result: upscaled_image = result["image"] logger.info( "Image upscaled successfully to %sx%s", upscaled_image.get("width", "unknown"), upscaled_image.get("height", "unknown"), ) return { "url": upscaled_image["url"], "width": upscaled_image.get("width", 0), "height": upscaled_image.get("height", 0), "upscaled": True, "upscale_factor": UPSCALER_FACTOR, } logger.error("Upscaler returned invalid response") return None except Exception as e: logger.error("Error upscaling image: %s", e, exc_info=True) return None # --------------------------------------------------------------------------- # Tool entry point # --------------------------------------------------------------------------- def image_generate_tool( prompt: str, aspect_ratio: str = DEFAULT_ASPECT_RATIO, num_inference_steps: Optional[int] = None, guidance_scale: Optional[float] = None, num_images: Optional[int] = None, output_format: Optional[str] = None, seed: Optional[int] = None, ) -> str: """Generate an image from a text prompt using the configured FAL model. The agent-facing schema exposes only ``prompt`` and ``aspect_ratio``; the remaining kwargs are overrides for direct Python callers and are filtered per-model via the ``supports`` whitelist (unsupported overrides are silently dropped so legacy callers don't break when switching models). Returns a JSON string with ``{"success": bool, "image": url | None, "error": str, "error_type": str}``. """ model_id, meta = _resolve_fal_model() debug_call_data = { "model": model_id, "parameters": { "prompt": prompt, "aspect_ratio": aspect_ratio, "num_inference_steps": num_inference_steps, "guidance_scale": guidance_scale, "num_images": num_images, "output_format": output_format, "seed": seed, }, "error": None, "success": False, "images_generated": 0, "generation_time": 0, } start_time = datetime.datetime.now() try: if not prompt or not isinstance(prompt, str) or len(prompt.strip()) == 0: raise ValueError("Prompt is required and must be a non-empty string") if not (fal_key_is_configured() or _resolve_managed_fal_gateway()): message = "FAL_KEY environment variable not set" if managed_nous_tools_enabled(): message += " and managed FAL gateway is unavailable" raise ValueError(message) aspect_lc = (aspect_ratio or DEFAULT_ASPECT_RATIO).lower().strip() if aspect_lc not in VALID_ASPECT_RATIOS: logger.warning( "Invalid aspect_ratio '%s', defaulting to '%s'", aspect_ratio, DEFAULT_ASPECT_RATIO, ) aspect_lc = DEFAULT_ASPECT_RATIO overrides: Dict[str, Any] = {} if num_inference_steps is not None: overrides["num_inference_steps"] = num_inference_steps if guidance_scale is not None: overrides["guidance_scale"] = guidance_scale if num_images is not None: overrides["num_images"] = num_images if output_format is not None: overrides["output_format"] = output_format arguments = _build_fal_payload( model_id, prompt, aspect_lc, seed=seed, overrides=overrides, ) logger.info( "Generating image with %s (%s) — prompt: %s", meta.get("display", model_id), model_id, prompt[:80], ) handler = _submit_fal_request(model_id, arguments=arguments) result = handler.get() generation_time = (datetime.datetime.now() - start_time).total_seconds() if not result or "images" not in result: raise ValueError("Invalid response from FAL.ai API — no images returned") images = result.get("images", []) if not images: raise ValueError("No images were generated") should_upscale = bool(meta.get("upscale", False)) formatted_images = [] for img in images: if not (isinstance(img, dict) and "url" in img): continue original_image = { "url": img["url"], "width": img.get("width", 0), "height": img.get("height", 0), } if should_upscale: upscaled_image = _upscale_image(img["url"], prompt.strip()) if upscaled_image: formatted_images.append(upscaled_image) continue logger.warning("Using original image as fallback (upscale failed)") original_image["upscaled"] = False formatted_images.append(original_image) if not formatted_images: raise ValueError("No valid image URLs returned from API") upscaled_count = sum(1 for img in formatted_images if img.get("upscaled")) logger.info( "Generated %s image(s) in %.1fs (%s upscaled) via %s", len(formatted_images), generation_time, upscaled_count, model_id, ) response_data = { "success": True, "image": formatted_images[0]["url"] if formatted_images else None, } debug_call_data["success"] = True debug_call_data["images_generated"] = len(formatted_images) debug_call_data["generation_time"] = generation_time _debug.log_call("image_generate_tool", debug_call_data) _debug.save() return json.dumps(response_data, indent=2, ensure_ascii=False) except Exception as e: generation_time = (datetime.datetime.now() - start_time).total_seconds() error_msg = f"Error generating image: {str(e)}" logger.error("%s", error_msg, exc_info=True) response_data = { "success": False, "image": None, "error": str(e), "error_type": type(e).__name__, } debug_call_data["error"] = error_msg debug_call_data["generation_time"] = generation_time _debug.log_call("image_generate_tool", debug_call_data) _debug.save() return json.dumps(response_data, indent=2, ensure_ascii=False) def check_fal_api_key() -> bool: """True if the FAL.ai API key (direct or managed gateway) is available.""" return bool(fal_key_is_configured() or _resolve_managed_fal_gateway()) def check_image_generation_requirements() -> bool: """True if any image gen backend is available. Providers are considered in this order: 1. The in-tree FAL backend (FAL_KEY or managed gateway). 2. Any plugin-registered provider whose ``is_available()`` returns True. Plugins win only when the in-tree FAL path is NOT ready, which matches the historical behavior: shipping hermes with a FAL key configured should still expose the tool. The active selection among ready providers is resolved per-call by ``image_gen.provider``. """ try: if check_fal_api_key(): fal_client # noqa: F401 — SDK presence check return True except ImportError: pass # Probe plugin providers. Discovery is idempotent and cheap. try: from agent.image_gen_registry import list_providers from hermes_cli.plugins import _ensure_plugins_discovered _ensure_plugins_discovered() for provider in list_providers(): try: if provider.is_available(): return True except Exception: continue except Exception: pass return False # --------------------------------------------------------------------------- # Demo / CLI entry point # --------------------------------------------------------------------------- if __name__ == "__main__": print("🎨 Image Generation Tools — FAL.ai multi-model support") print("=" * 60) if not check_fal_api_key(): print("❌ FAL_KEY environment variable not set") print(" Set it via: export FAL_KEY='your-key-here'") print(" Get a key: https://fal.ai/") raise SystemExit(1) print("✅ FAL.ai API key found") try: import fal_client # noqa: F401 print("✅ fal_client library available") except ImportError: print("❌ fal_client library not found — pip install fal-client") raise SystemExit(1) model_id, meta = _resolve_fal_model() print(f"🤖 Active model: {meta.get('display', model_id)} ({model_id})") print(f" Speed: {meta.get('speed', '?')} · Price: {meta.get('price', '?')}") print(f" Upscaler: {'on' if meta.get('upscale') else 'off'}") print("\nAvailable models:") for mid, m in FAL_MODELS.items(): marker = " ← active" if mid == model_id else "" print(f" {mid:<32} {m.get('speed', '?'):<6} {m.get('price', '?')}{marker}") if _debug.active: print(f"\n🐛 Debug mode enabled — session {_debug.session_id}") # --------------------------------------------------------------------------- # Registry # --------------------------------------------------------------------------- from tools.registry import registry, tool_error IMAGE_GENERATE_SCHEMA = { "name": "image_generate", "description": ( "Generate high-quality images from text prompts. The underlying " "backend (FAL, OpenAI, etc.) and model are user-configured and not " "selectable by the agent. Returns either a URL or an absolute file " "path in the `image` field; display it with markdown " "![description](url-or-path) and the gateway will deliver it." ), "parameters": { "type": "object", "properties": { "prompt": { "type": "string", "description": "The text prompt describing the desired image. Be detailed and descriptive.", }, "aspect_ratio": { "type": "string", "enum": list(VALID_ASPECT_RATIOS), "description": "The aspect ratio of the generated image. 'landscape' is 16:9 wide, 'portrait' is 16:9 tall, 'square' is 1:1.", "default": DEFAULT_ASPECT_RATIO, }, }, "required": ["prompt"], }, } def _read_configured_image_provider(): """Return the value of ``image_gen.provider`` from config.yaml, or None. We only consult the plugin registry when this is explicitly set — an unset value keeps users on the legacy in-tree FAL path even when other providers happen to be registered (e.g. a user has OPENAI_API_KEY set for other features but never asked for OpenAI image gen). """ try: from hermes_cli.config import load_config cfg = load_config() section = cfg.get("image_gen") if isinstance(cfg, dict) else None if isinstance(section, dict): value = section.get("provider") if isinstance(value, str) and value.strip(): return value.strip() except Exception as exc: logger.debug("Could not read image_gen.provider: %s", exc) return None def _dispatch_to_plugin_provider(prompt: str, aspect_ratio: str): """Route the call to a plugin-registered provider when one is selected. Returns a JSON string on dispatch, or ``None`` to fall through to the built-in FAL path. Dispatch only fires when ``image_gen.provider`` is explicitly set AND it does not point to ``fal`` (FAL still lives in-tree in this PR; a later PR ports it into ``plugins/image_gen/fal/``). Any other value that matches a registered plugin provider wins. """ configured = _read_configured_image_provider() if not configured or configured == "fal": return None try: # Import locally so plugin discovery isn't triggered just by # importing this module (tests rely on that). from agent.image_gen_registry import get_provider from hermes_cli.plugins import _ensure_plugins_discovered _ensure_plugins_discovered() provider = get_provider(configured) except Exception as exc: logger.debug("image_gen plugin dispatch skipped: %s", exc) return None if provider is None: return json.dumps({ "success": False, "image": None, "error": ( f"image_gen.provider='{configured}' is set but no plugin " f"registered that name. Run `hermes plugins list` to see " f"available image gen backends." ), "error_type": "provider_not_registered", }) try: result = provider.generate(prompt=prompt, aspect_ratio=aspect_ratio) except Exception as exc: logger.warning( "Image gen provider '%s' raised: %s", getattr(provider, "name", "?"), exc, ) return json.dumps({ "success": False, "image": None, "error": f"Provider '{getattr(provider, 'name', '?')}' error: {exc}", "error_type": "provider_exception", }) if not isinstance(result, dict): return json.dumps({ "success": False, "image": None, "error": "Provider returned a non-dict result", "error_type": "provider_contract", }) return json.dumps(result) def _handle_image_generate(args, **kw): prompt = args.get("prompt", "") if not prompt: return tool_error("prompt is required for image generation") aspect_ratio = args.get("aspect_ratio", DEFAULT_ASPECT_RATIO) # Route to a plugin-registered provider if one is active (and it's # not the in-tree FAL path). dispatched = _dispatch_to_plugin_provider(prompt, aspect_ratio) if dispatched is not None: return dispatched return image_generate_tool( prompt=prompt, aspect_ratio=aspect_ratio, ) registry.register( name="image_generate", toolset="image_gen", schema=IMAGE_GENERATE_SCHEMA, handler=_handle_image_generate, check_fn=check_image_generation_requirements, requires_env=[], is_async=False, # sync fal_client API to avoid "Event loop is closed" in gateway emoji="🎨", )