Fix: Agrega logs para las operaciones en la base de datos #4
136
main.py
136
main.py
@@ -447,8 +447,11 @@ async def lifespan(_server: FastMCP) -> AsyncIterator[AppContext]:
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location=cfg.location,
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)
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# Validate credentials by testing a simple operation
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log_structured_entry("Validating credentials with test embedding", "INFO")
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# Validate credentials and configuration by testing actual resources
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log_structured_entry("Starting validation of credentials and resources", "INFO")
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# 1. Validate GenAI embedding access
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log_structured_entry("Validating GenAI embedding access", "INFO")
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try:
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test_response = await genai_client.aio.models.embed_content(
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model=cfg.embedding_model,
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@@ -459,24 +462,139 @@ async def lifespan(_server: FastMCP) -> AsyncIterator[AppContext]:
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)
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if test_response and test_response.embeddings:
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log_structured_entry(
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"Credentials validated successfully",
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"GenAI embedding validation successful",
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"INFO",
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{"embedding_dimension": len(test_response.embeddings[0].values)}
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)
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else:
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log_structured_entry(
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"Credential validation returned empty response",
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"WARNING"
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)
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msg = "Embedding validation returned empty response"
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log_structured_entry(msg, "ERROR")
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raise RuntimeError(msg)
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except Exception as e:
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log_structured_entry(
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"Failed to validate credentials - embedding test failed",
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"Failed to validate GenAI embedding access",
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"ERROR",
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{"error": str(e), "error_type": type(e).__name__}
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)
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raise
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log_structured_entry("MCP server initialization complete", "INFO")
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# 2. Validate GCS bucket access
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log_structured_entry(
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"Validating GCS bucket access",
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"INFO",
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{"bucket": cfg.bucket}
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)
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try:
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session = vs.storage._get_aio_session()
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token_obj = Token(
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session=session,
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scopes=["https://www.googleapis.com/auth/cloud-platform"],
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)
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access_token = await token_obj.get()
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headers = {"Authorization": f"Bearer {access_token}"}
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async with session.get(
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f"https://storage.googleapis.com/storage/v1/b/{cfg.bucket}/o?maxResults=1",
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headers=headers,
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) as response:
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if response.status == 403:
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msg = f"Access denied to bucket '{cfg.bucket}'. Check permissions."
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log_structured_entry(
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"GCS bucket validation failed - access denied",
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"ERROR",
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{"bucket": cfg.bucket, "status": response.status}
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)
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raise RuntimeError(msg)
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elif response.status == 404:
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msg = f"Bucket '{cfg.bucket}' not found. Check bucket name and project."
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log_structured_entry(
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"GCS bucket validation failed - not found",
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"ERROR",
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{"bucket": cfg.bucket, "status": response.status}
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)
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raise RuntimeError(msg)
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elif not response.ok:
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body = await response.text()
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msg = f"Failed to access bucket '{cfg.bucket}': {response.status} - {body}"
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log_structured_entry(
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"GCS bucket validation failed",
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"ERROR",
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{"bucket": cfg.bucket, "status": response.status, "response": body}
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)
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raise RuntimeError(msg)
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log_structured_entry(
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"GCS bucket validation successful",
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"INFO",
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{"bucket": cfg.bucket}
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)
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except RuntimeError:
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raise
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except Exception as e:
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log_structured_entry(
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"Failed to validate GCS bucket access",
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"ERROR",
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{"error": str(e), "error_type": type(e).__name__, "bucket": cfg.bucket}
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)
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raise
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# 3. Validate vector search endpoint access
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log_structured_entry(
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"Validating vector search endpoint access",
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"INFO",
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{"endpoint_name": cfg.endpoint_name}
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)
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try:
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# Try to get endpoint info
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headers = await vs._async_get_auth_headers()
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session = vs._get_aio_session()
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endpoint_url = (
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f"https://{cfg.location}-aiplatform.googleapis.com/v1/{cfg.endpoint_name}"
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)
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async with session.get(endpoint_url, headers=headers) as response:
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if response.status == 403:
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msg = f"Access denied to endpoint '{cfg.endpoint_name}'. Check permissions."
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log_structured_entry(
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"Vector search endpoint validation failed - access denied",
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"ERROR",
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{"endpoint": cfg.endpoint_name, "status": response.status}
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)
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raise RuntimeError(msg)
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elif response.status == 404:
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msg = f"Endpoint '{cfg.endpoint_name}' not found. Check endpoint name and project."
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log_structured_entry(
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"Vector search endpoint validation failed - not found",
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"ERROR",
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{"endpoint": cfg.endpoint_name, "status": response.status}
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)
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raise RuntimeError(msg)
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elif not response.ok:
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body = await response.text()
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msg = f"Failed to access endpoint '{cfg.endpoint_name}': {response.status} - {body}"
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log_structured_entry(
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"Vector search endpoint validation failed",
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"ERROR",
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{"endpoint": cfg.endpoint_name, "status": response.status, "response": body}
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)
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raise RuntimeError(msg)
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log_structured_entry(
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"Vector search endpoint validation successful",
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"INFO",
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{"endpoint": cfg.endpoint_name}
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)
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except RuntimeError:
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raise
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except Exception as e:
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log_structured_entry(
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"Failed to validate vector search endpoint access",
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"ERROR",
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{"error": str(e), "error_type": type(e).__name__, "endpoint": cfg.endpoint_name}
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)
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raise
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log_structured_entry("All validations passed - MCP server initialization complete", "INFO")
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yield AppContext(
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vector_search=vs,
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