96 lines
3.9 KiB
Python
96 lines
3.9 KiB
Python
"""Configuration management.
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Loads configuration values from the project-root ``.env`` file.
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"""
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import os
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from dotenv import load_dotenv
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# Load the project-root .env file.
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# Path: MiroFish/.env (relative to backend/app/config.py).
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project_root_env = os.path.join(os.path.dirname(__file__), '../../.env')
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if os.path.exists(project_root_env):
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load_dotenv(project_root_env, override=True)
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else:
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# If the project root has no .env, fall back to the process environment
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# (used in production deployments).
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load_dotenv(override=True)
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class Config:
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"""Flask configuration class."""
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# Flask settings.
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SECRET_KEY = os.environ.get('SECRET_KEY', 'mirofish-secret-key')
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DEBUG = os.environ.get('FLASK_DEBUG', 'True').lower() == 'true'
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# JSON settings: disable ASCII escaping so non-ASCII output renders literally
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# rather than as \uXXXX escape sequences.
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JSON_AS_ASCII = False
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# LLM settings (called via the OpenAI-compatible API surface).
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LLM_API_KEY = os.environ.get('LLM_API_KEY')
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LLM_BASE_URL = os.environ.get('LLM_BASE_URL', 'https://api.openai.com/v1')
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LLM_MODEL_NAME = os.environ.get('LLM_MODEL_NAME', 'gpt-4o-mini')
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# Neo4j + Graphiti settings (replacement for Zep Cloud).
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NEO4J_URI = os.environ.get('NEO4J_URI', 'bolt://localhost:7687')
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NEO4J_USER = os.environ.get('NEO4J_USER', 'neo4j')
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NEO4J_PASSWORD = os.environ.get('NEO4J_PASSWORD', 'mirofish123')
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# Embedding model — override when using non-OpenAI APIs (e.g. Gemini: text-embedding-004)
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EMBEDDING_MODEL = os.environ.get('EMBEDDING_MODEL', 'text-embedding-3-small')
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# Graphiti provider switch. Allowed: "openai", "gemini".
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# "openai" works for any OpenAI-SDK-compatible endpoint (Qwen via Dashscope,
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# GLM, OpenAI itself). Set to "gemini" to use Google Gemini directly.
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GRAPHITI_LLM_PROVIDER = os.environ.get('GRAPHITI_LLM_PROVIDER', 'openai')
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# Optional dedicated embedder credentials. Default to LLM_API_KEY / LLM_BASE_URL.
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# Useful when chat is Dashscope/Qwen (no OpenAI-compatible embeddings) but the
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# embedder should target OpenAI directly.
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EMBEDDING_API_KEY = os.environ.get('EMBEDDING_API_KEY')
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EMBEDDING_BASE_URL = os.environ.get('EMBEDDING_BASE_URL')
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# Zep settings (kept for backwards compatibility; deprecated).
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ZEP_API_KEY = os.environ.get('ZEP_API_KEY', '')
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# File upload settings.
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MAX_CONTENT_LENGTH = 50 * 1024 * 1024 # 50MB
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UPLOAD_FOLDER = os.path.join(os.path.dirname(__file__), '../uploads')
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ALLOWED_EXTENSIONS = {'pdf', 'md', 'txt', 'markdown'}
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# Text processing settings.
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DEFAULT_CHUNK_SIZE = 500 # default chunk size in characters
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DEFAULT_CHUNK_OVERLAP = 50 # default overlap in characters
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# OASIS simulation settings.
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OASIS_DEFAULT_MAX_ROUNDS = int(os.environ.get('OASIS_DEFAULT_MAX_ROUNDS', '10'))
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OASIS_SIMULATION_DATA_DIR = os.path.join(os.path.dirname(__file__), '../uploads/simulations')
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# OASIS per-platform allowed action lists.
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OASIS_TWITTER_ACTIONS = [
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'CREATE_POST', 'LIKE_POST', 'REPOST', 'FOLLOW', 'DO_NOTHING', 'QUOTE_POST'
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]
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OASIS_REDDIT_ACTIONS = [
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'LIKE_POST', 'DISLIKE_POST', 'CREATE_POST', 'CREATE_COMMENT',
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'LIKE_COMMENT', 'DISLIKE_COMMENT', 'SEARCH_POSTS', 'SEARCH_USER',
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'TREND', 'REFRESH', 'DO_NOTHING', 'FOLLOW', 'MUTE'
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]
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# Report agent settings.
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REPORT_AGENT_MAX_TOOL_CALLS = int(os.environ.get('REPORT_AGENT_MAX_TOOL_CALLS', '5'))
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REPORT_AGENT_MAX_REFLECTION_ROUNDS = int(os.environ.get('REPORT_AGENT_MAX_REFLECTION_ROUNDS', '2'))
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REPORT_AGENT_TEMPERATURE = float(os.environ.get('REPORT_AGENT_TEMPERATURE', '0.5'))
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@classmethod
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def validate(cls):
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"""Validate that required configuration values are present."""
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errors = []
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if not cls.LLM_API_KEY:
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errors.append("LLM_API_KEY 未配置")
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if not cls.NEO4J_PASSWORD:
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errors.append("NEO4J_PASSWORD 未配置")
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return errors
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