Docker Compose with 24+ services: - PostgreSQL (PostGIS), Valkey, MinIO, Qdrant - Vault (PKI/TLS), Nginx (Reverse Proxy) - Backend Core API, Consent Service, Billing Service - RAG Service, Embedding Service - Gitea, Woodpecker CI/CD - Night Scheduler, Health Aggregator - Jitsi (Web/XMPP/JVB/Jicofo), Mailpit Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
87 lines
3.1 KiB
Python
87 lines
3.1 KiB
Python
"""
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Embedding Service Configuration
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Environment variables for embedding generation, re-ranking, and PDF extraction.
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"""
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import os
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# =============================================================================
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# Embedding Configuration
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# =============================================================================
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# Backend: "local" (sentence-transformers) or "openai"
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EMBEDDING_BACKEND = os.getenv("EMBEDDING_BACKEND", "local")
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OPENAI_API_KEY = os.getenv("OPENAI_API_KEY", "")
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OPENAI_EMBEDDING_MODEL = os.getenv("OPENAI_EMBEDDING_MODEL", "text-embedding-3-small")
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# Local embedding model
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# Recommended: BAAI/bge-m3 (MIT, 1024 dim, multilingual)
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LOCAL_EMBEDDING_MODEL = os.getenv("LOCAL_EMBEDDING_MODEL", "BAAI/bge-m3")
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# Chunking configuration
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CHUNK_SIZE = int(os.getenv("CHUNK_SIZE", "1000"))
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CHUNK_OVERLAP = int(os.getenv("CHUNK_OVERLAP", "200"))
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CHUNKING_STRATEGY = os.getenv("CHUNKING_STRATEGY", "semantic")
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# =============================================================================
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# Re-Ranker Configuration
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# =============================================================================
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# Backend: "local" (sentence-transformers CrossEncoder) or "cohere"
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RERANKER_BACKEND = os.getenv("RERANKER_BACKEND", "local")
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COHERE_API_KEY = os.getenv("COHERE_API_KEY", "")
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# Local re-ranker model
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# Recommended: BAAI/bge-reranker-v2-m3 (Apache 2.0, multilingual)
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LOCAL_RERANKER_MODEL = os.getenv("LOCAL_RERANKER_MODEL", "BAAI/bge-reranker-v2-m3")
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# =============================================================================
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# PDF Extraction Configuration
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# =============================================================================
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# Backend: "auto", "unstructured", "pypdf"
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PDF_EXTRACTION_BACKEND = os.getenv("PDF_EXTRACTION_BACKEND", "auto")
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UNSTRUCTURED_API_KEY = os.getenv("UNSTRUCTURED_API_KEY", "")
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UNSTRUCTURED_API_URL = os.getenv("UNSTRUCTURED_API_URL", "")
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# =============================================================================
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# Service Configuration
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# =============================================================================
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SERVICE_PORT = int(os.getenv("EMBEDDING_SERVICE_PORT", "8087"))
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LOG_LEVEL = os.getenv("LOG_LEVEL", "INFO")
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# Model dimensions lookup
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MODEL_DIMENSIONS = {
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# Multilingual / German-optimized
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"BAAI/bge-m3": 1024,
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"deepset/mxbai-embed-de-large-v1": 1024,
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"jinaai/jina-embeddings-v2-base-de": 768,
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"intfloat/multilingual-e5-large": 1024,
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# English-focused (smaller, faster)
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"all-MiniLM-L6-v2": 384,
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"all-mpnet-base-v2": 768,
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# OpenAI
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"text-embedding-3-small": 1536,
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"text-embedding-3-large": 3072,
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}
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def get_model_dimensions(model_name: str) -> int:
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"""Get embedding dimensions for a model."""
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if model_name in MODEL_DIMENSIONS:
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return MODEL_DIMENSIONS[model_name]
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for key, dim in MODEL_DIMENSIONS.items():
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if key in model_name or model_name in key:
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return dim
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return 384 # Default fallback
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def get_current_dimensions() -> int:
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"""Get dimensions for the currently configured model."""
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if EMBEDDING_BACKEND == "local":
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return get_model_dimensions(LOCAL_EMBEDDING_MODEL)
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else:
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return get_model_dimensions(OPENAI_EMBEDDING_MODEL)
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