enflow-api / utils /celery_tasks.py
dhruv575
Fixed oai initialization
73e99ed
from celery import Celery
import os
import logging
import json
import openai
from bson import ObjectId
from models.log import Log
from models.workflow import Workflow
from models.incident import Incident
from utils.pdf_utils import pdf_to_text, extract_activities, fill_markdown_form, save_filled_form
# Configure logging
logger = logging.getLogger(__name__)
# Set up Celery with fallbacks for development
celery_app = Celery('enflow',
broker=os.environ.get('REDIS_URL', 'redis://localhost:6379/0'),
backend=os.environ.get('REDIS_URL', 'redis://localhost:6379/0'))
@celery_app.task(bind=True, max_retries=3)
def process_log_document(self, log_id):
"""Process a log document asynchronously"""
try:
# Check if OpenAI API key is set
api_key = os.environ.get('OPENAI_API_KEY')
if not api_key:
logger.error("OPENAI_API_KEY environment variable is not set")
return {"status": "error", "message": "OpenAI API key not configured"}
# Create OpenAI client - removed any proxies parameter
client = openai.OpenAI(api_key=api_key)
# Retrieve the log
log = Log.find_by_id(log_id)
if not log:
logger.error(f"Log not found: {log_id}")
return {"status": "error", "message": "Log not found"}
# 1. Extract text from PDF using OCR
logger.info(f"Starting OCR for log {log_id}")
extracted_text = pdf_to_text(log.log_file)
# 2. Extract activities using LLM
logger.info(f"Extracting activities for log {log_id}")
activities_json = extract_activities(extracted_text)
# Parse the activities JSON
activities = json.loads(activities_json).get('activities', [])
# 3. Classify each activity and create incidents
logger.info(f"Classifying activities and creating incidents for log {log_id}")
# Get all workflows for this department
workflows = Workflow.find_by_department(log.department_id)
# Skip if no workflows defined
if not workflows:
logger.warning(f"No workflows defined for department {log.department_id}")
return {"status": "completed", "message": "No workflows to process"}
# Prepare workflow information for classification
workflow_info = []
for workflow in workflows:
workflow_info.append({
"id": str(workflow._id),
"title": workflow.title,
"description": workflow.description
})
# Process each activity
for activity in activities:
# Classify activity against workflows
workflow_id = classify_activity(activity, workflow_info)
# If classified as a workflow, create an incident
if workflow_id:
logger.info(f"Creating incident for activity: {activity['activity']}")
# Create incident
incident = Incident(
department_id=log.department_id,
user_id=log.user_id,
workflow_id=ObjectId(workflow_id),
description=activity['activity'],
date=log.log_date,
activity_text=activity['text'],
log_id=log._id
)
if incident.save():
# Add incident to log
log.add_incident(incident._id)
# Process incident forms (this could be another Celery task)
logger.info(f"Queueing incident processing for incident {incident._id}")
process_incident_forms.delay(str(incident._id))
return {"status": "completed", "message": "Log processing completed"}
except Exception as e:
logger.error(f"Error processing log {log_id}: {str(e)}")
# Retry with exponential backoff
self.retry(exc=e, countdown=2 ** self.request.retries)
def classify_activity(activity, workflow_info):
"""
Classify an activity against available workflows
Returns workflow_id if matched, None otherwise
"""
try:
# Check if OpenAI API key is set
api_key = os.environ.get('OPENAI_API_KEY')
if not api_key:
logger.error("OPENAI_API_KEY environment variable is not set")
return None
# Create OpenAI client - removed any proxies parameter
client = openai.OpenAI(api_key=api_key)
# Prepare prompt for OpenAI
workflows_text = "\n".join([
f"Workflow {i+1}: {w['title']} - {w['description']}"
for i, w in enumerate(workflow_info)
])
prompt = f"""
I need to classify a law enforcement activity into one of our defined workflows,
or determine if it's a routine/mundane activity that doesn't match any workflow.
Here are the available workflows:
{workflows_text}
Here is the activity:
Activity: {activity['activity']}
Full Text: {activity['text']}
Time: {activity.get('time', 'Not specified')}
Location: {activity.get('location', 'Not specified')}
Please classify this activity into one of the workflows, or indicate it's mundane.
Respond with just the workflow ID if it matches, or "mundane" if it doesn't match any workflow.
"""
# Call OpenAI API
response = client.chat.completions.create(
model="gpt-4o-mini",
messages=[
{"role": "system", "content": "You are a law enforcement activity classifier that matches activities to defined workflows."},
{"role": "user", "content": prompt}
]
)
# Get classification result
result = response.choices[0].message.content.strip()
# Check if result is a workflow ID or "mundane"
if result == "mundane":
return None
# Find the workflow by ID or index
for workflow in workflow_info:
if workflow['id'] in result:
return workflow['id']
if workflow['title'] in result:
return workflow['id']
# If we got a number, try to use it as an index
try:
index = int(result) - 1
if 0 <= index < len(workflow_info):
return workflow_info[index]['id']
except ValueError:
pass
return None
except Exception as e:
logger.error(f"Error classifying activity: {str(e)}")
return None
@celery_app.task(bind=True, max_retries=3)
def process_incident_forms(self, incident_id):
"""Process forms for an incident asynchronously"""
try:
# Check if OpenAI API key is set
api_key = os.environ.get('OPENAI_API_KEY')
if not api_key:
logger.error("OPENAI_API_KEY environment variable is not set")
return {"status": "error", "message": "OpenAI API key not configured"}
# Create OpenAI client - removed any proxies parameter
client = openai.OpenAI(api_key=api_key)
# Retrieve the incident
incident = Incident.find_by_id(incident_id)
if not incident:
logger.error(f"Incident not found: {incident_id}")
return {"status": "error", "message": "Incident not found"}
# Update incident status to processing
incident.status = "processing"
incident.save()
# Get the associated workflow
workflow = Workflow.find_by_id(incident.workflow_id)
if not workflow:
logger.error(f"Workflow not found: {incident.workflow_id}")
incident.status = "failed"
incident.save()
return {"status": "error", "message": "Workflow not found"}
# Check if workflow has a markdown template and data requirements
if not workflow.markdown_template or not workflow.data_requirements:
logger.warning(f"Workflow {workflow._id} has no markdown template or data requirements")
incident.status = "completed"
incident.save()
return {"status": "completed", "message": "No forms to process"}
# Extract required data using LLM
required_data = extract_required_data(incident.activity_text, workflow.data_requirements)
# Store the extracted data in the incident
incident.extracted_data = required_data
filled_forms = []
try:
# Fill in the markdown template with extracted data
filled_markdown = fill_markdown_form(workflow.markdown_template, required_data)
# Generate a filename for the filled form
form_filename = f"{workflow.title}_incident_{incident._id}"
# Save the filled form as a PDF and get the URL
form_url = save_filled_form(
filled_markdown,
form_filename,
incident.department_id,
incident.user_id
)
# Add the form info to the filled forms list
filled_forms.append({
"url": form_url,
"filename": form_filename,
"original_template": workflow.template_name
})
logger.info(f"Successfully processed form for incident {incident_id}")
except Exception as e:
logger.error(f"Error processing form for incident {incident_id}: {str(e)}")
# Update incident with filled forms and status
incident.filled_forms = filled_forms
incident.status = "completed"
incident.save()
return {"status": "completed", "message": "Incident forms processed"}
except Exception as e:
logger.error(f"Error processing incident forms {incident_id}: {str(e)}")
# Update incident status to failed
try:
incident = Incident.find_by_id(incident_id)
if incident:
incident.status = "failed"
incident.save()
except Exception as update_e:
logger.error(f"Error updating incident status: {str(update_e)}")
# Retry with exponential backoff
self.retry(exc=e, countdown=2 ** self.request.retries)
def extract_required_data(activity_text, data_requirements):
"""
Extract required data from activity text based on data requirements
Returns a dictionary of field:value pairs
"""
try:
# Check if OpenAI API key is set
api_key = os.environ.get('OPENAI_API_KEY')
if not api_key:
logger.error("OPENAI_API_KEY environment variable is not set")
return {}
# Create OpenAI client - removed any proxies parameter
client = openai.OpenAI(api_key=api_key)
# Prepare data requirements as a string
requirements_text = "\n".join([
f"{i+1}. {req['field']}: {req['description']}"
for i, req in enumerate(data_requirements)
])
prompt = f"""
I need to extract specific information from a law enforcement activity text.
I need to extract the following information:
{requirements_text}
Here is the activity text:
{activity_text}
Please extract the requested information and format as a JSON object with the field names as keys.
If any information is not available, use null as the value.
"""
# Call OpenAI API
response = client.chat.completions.create(
model="gpt-4o-mini",
messages=[
{"role": "system", "content": "You are a data extraction assistant that extracts specific information from text."},
{"role": "user", "content": prompt}
],
response_format={"type": "json_object"}
)
# Parse the extracted data
extracted_data = json.loads(response.choices[0].message.content)
return extracted_data
except Exception as e:
logger.error(f"Error extracting required data: {str(e)}")
return {}