| 123456789101112131415161718192021222324252627282930313233343536373839404142434445464748495051525354555657585960616263646566676869707172737475767778798081828384858687888990919293949596979899100101102103104105106107108109110111112113114115116117118119120121122123124125126127128129130131132133134135136137138139140141142 |
- import os
- import base64
- import io
- import logging
- import json
- from openai import AsyncOpenAI
- from dotenv import load_dotenv
- from PIL import Image
- from backend.schemas import ExtractionResponse, V2TemplateResponse
- load_dotenv()
- # Setup logging
- logging.basicConfig(level=logging.INFO)
- logger = logging.getLogger(__name__)
- client = AsyncOpenAI(api_key=os.getenv("OPENAI_API_KEY"))
- MAX_IMAGE_SIZE = (2000, 2000)
- IMAGE_QUALITY = 85
- def compress_image(image_content: bytes) -> bytes:
- """Resizes and compresses the image to reduce upload size."""
- img = Image.open(io.BytesIO(image_content))
-
- # Convert to RGB if necessary (to save as JPEG)
- if img.mode in ("RGBA", "P"):
- img = img.convert("RGB")
-
- # Resize if larger than max dimensions
- img.thumbnail(MAX_IMAGE_SIZE, Image.Resampling.LANCZOS)
-
- # Save to bytes
- output_buffer = io.BytesIO()
- img.save(output_buffer, format="JPEG", quality=IMAGE_QUALITY, optimize=True)
- return output_buffer.getvalue()
- async def extract_receipt_data(image_content: bytes, user_name: str, department: str) -> ExtractionResponse:
- # 1. Compress Image
- compressed_content = compress_image(image_content)
- base64_image = base64.b64encode(compressed_content).decode("utf-8")
-
- # 2. Refined Prompt
- prompt = (
- f"You are a cautious auditor helping an HR department in Malaysia. "
- f"Extract the requested fields from the provided medical receipt image. "
- f"The employee submitting this is {user_name} from {department}. "
- f"IMPORTANT: The context is Malaysia (MYR). "
- f"For the fields `receipt_ref_no` and `clinic_reg_no`, only provide a value if you can read it clearly without any guessing or inference. If the text is smudged, handwritten, or ambiguous, return `null`. "
- f"Map the clinic/services to a `claim_category` from: [General, Dental, Optical, Specialist] based on the clinic name or invoice items. "
- f"Provide a 1-sentence `diagnosis_brief` summarizing the services seen (e.g. 'Fever consultation and medicine'). "
- f"Set `needs_manual_review` to `true` and provide a low `confidence_score` if: "
- f"1. The 'Total' does not match the sum of the individual items. "
- f"2. The receipt looks hand-written and lacks an official stamp. "
- f"3. The provider name is missing or the amount looks altered. "
- f"4. The user's name ({user_name}) is not clearly visible on the receipt. "
- f"IMPORTANT: Fill the `ai_reasoning` field with a 1-sentence explanation of how you identified the clinic and category."
- )
-
- # 3. Async Extraction
- completion = await client.beta.chat.completions.parse(
- model="gpt-4o-mini",
- messages=[
- {
- "role": "system",
- "content": "You are an HR data entry assistant. Extract medical receipt data accurately into structured JSON."
- },
- {
- "role": "user",
- "content": [
- {"type": "text", "text": prompt},
- {
- "type": "image_url",
- "image_url": {"url": f"data:image/jpeg;base64,{base64_image}"},
- },
- ],
- }
- ],
- response_format=ExtractionResponse,
- )
-
- result = completion.choices[0].message.parsed
-
- # 4. Logging for Demo
- if result:
- logger.info(f"Extraction complete for {user_name}. Confidence Score: {result.confidence_score}")
- if result.needs_manual_review:
- logger.warning(f"Manual review required for receipt submitted by {user_name}")
-
- return result
- async def fill_form_with_template_v2(image_content: bytes, template_fields: dict, user_name: str, department: str) -> V2TemplateResponse:
- # 1. Compress Image
- compressed_content = compress_image(image_content)
- base64_image = base64.b64encode(compressed_content).decode("utf-8")
-
- # 2. V2 Prompt
- template_json = json.dumps(template_fields, indent=2)
- prompt = (
- f"You are a professional Data Entry Clerk helping an HR department in Malaysia. "
- f"You will receive a medical receipt image and a Form Template consisting of specific field names and descriptions. "
- f"Your task is to fill the form values based ONLY on the evidence in the image. "
- f"The employee is {user_name} from {department}. "
- f"FORM TEMPLATE (JSON): {template_json}\n\n"
- f"STRICT RULES:\n"
- f"1. If a field in the template is not explicitly visible or is ambiguous, you MUST return `null`. Do not guess.\n"
- f"2. For currency, assume MYR unless stated otherwise.\n"
- f"3. If the user's name ({user_name}) is not on the receipt, leave any name-related fields `null`.\n"
- f"4. For any field identified, provide a clean value (e.g. string or float).\n"
- f"5. Return the result as a structured object with `filled_data` (a list of objects each containing `key` and `value`) "
- f"and `unfilled_fields` (a list of keys from the template for which no evidence was found)."
- )
-
- # 3. Async Extraction
- completion = await client.beta.chat.completions.parse(
- model="gpt-4o-mini",
- messages=[
- {
- "role": "system",
- "content": "You are a professional Data Entry Clerk. Extract data accurately based on a provided template."
- },
- {
- "role": "user",
- "content": [
- {"type": "text", "text": prompt},
- {
- "type": "image_url",
- "image_url": {"url": f"data:image/jpeg;base64,{base64_image}"},
- },
- ],
- }
- ],
- response_format=V2TemplateResponse,
- )
-
- result = completion.choices[0].message.parsed
-
- # 4. Logging for Demo
- if result:
- logger.info(f"V2 Extraction complete for {user_name}. Fields filled: {len(result.filled_data)}")
-
- return result
|