llm_topic_modelling / lambda_entrypoint.py
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import json
import os
import boto3
from dotenv import load_dotenv
# Import the main function from your CLI script
from cli_topics import main as cli_main
from tools.config import (
AWS_REGION,
BATCH_SIZE_DEFAULT,
DEDUPLICATION_THRESHOLD,
DEFAULT_COST_CODE,
DEFAULT_SAMPLED_SUMMARIES,
LLM_MAX_NEW_TOKENS,
LLM_SEED,
LLM_TEMPERATURE,
OUTPUT_DEBUG_FILES,
SAVE_LOGS_TO_CSV,
SAVE_LOGS_TO_DYNAMODB,
SESSION_OUTPUT_FOLDER,
USAGE_LOGS_FOLDER,
convert_string_to_boolean,
)
def _get_env_list(env_var_name: str | list[str] | None) -> list[str]:
"""Parses a comma-separated environment variable into a list of strings."""
if isinstance(env_var_name, list):
return env_var_name
if env_var_name is None:
return []
# Handle string input
value = str(env_var_name).strip()
if not value or value == "[]":
return []
# Remove brackets if present (e.g., "[item1, item2]" -> "item1, item2")
if value.startswith("[") and value.endswith("]"):
value = value[1:-1]
# Remove quotes and split by comma
value = value.replace('"', "").replace("'", "")
if not value:
return []
# Split by comma and filter out any empty strings
return [s.strip() for s in value.split(",") if s.strip()]
print("Lambda entrypoint loading...")
# Initialize S3 client outside the handler for connection reuse
s3_client = boto3.client("s3", region_name=os.getenv("AWS_REGION", AWS_REGION))
print("S3 client initialised")
# Lambda's only writable directory is /tmp. Ensure that all temporary files are stored in this directory.
TMP_DIR = "/tmp"
INPUT_DIR = os.path.join(TMP_DIR, "input")
OUTPUT_DIR = os.path.join(TMP_DIR, "output")
os.environ["GRADIO_TEMP_DIR"] = os.path.join(TMP_DIR, "gradio_tmp")
os.environ["MPLCONFIGDIR"] = os.path.join(TMP_DIR, "matplotlib_cache")
os.environ["FEEDBACK_LOGS_FOLDER"] = os.path.join(TMP_DIR, "feedback")
os.environ["ACCESS_LOGS_FOLDER"] = os.path.join(TMP_DIR, "logs")
os.environ["USAGE_LOGS_FOLDER"] = os.path.join(TMP_DIR, "usage")
# Define compatible file types for processing
COMPATIBLE_FILE_TYPES = {
".csv",
".xlsx",
".xls",
".parquet",
}
def download_file_from_s3(bucket_name, key, download_path):
"""Download a file from S3 to the local filesystem."""
try:
s3_client.download_file(bucket_name, key, download_path)
print(f"Successfully downloaded file from S3 to {download_path}")
except Exception as e:
print(f"Error downloading from S3: {e}")
raise
def upload_directory_to_s3(local_directory, bucket_name, s3_prefix):
"""Upload all files from a local directory to an S3 prefix."""
for root, _, files in os.walk(local_directory):
for file_name in files:
local_file_path = os.path.join(root, file_name)
# Create a relative path to maintain directory structure if needed
relative_path = os.path.relpath(local_file_path, local_directory)
output_key = os.path.join(s3_prefix, relative_path).replace("\\", "/")
try:
s3_client.upload_file(local_file_path, bucket_name, output_key)
print(f"Successfully uploaded file to S3: {local_file_path}")
except Exception as e:
print(f"Error uploading to S3: {e}")
raise
def lambda_handler(event, context):
print(f"Received event: {json.dumps(event)}")
# 1. Setup temporary directories
os.makedirs(INPUT_DIR, exist_ok=True)
os.makedirs(OUTPUT_DIR, exist_ok=True)
# 2. Extract information from the event
# Assumes the event is triggered by S3 and may contain an 'arguments' payload
try:
record = event["Records"][0]
bucket_name = record["s3"]["bucket"]["name"]
input_key = record["s3"]["object"]["key"]
# The user metadata can be used to pass arguments
# This is more robust than embedding them in the main event body
try:
response = s3_client.head_object(Bucket=bucket_name, Key=input_key)
metadata = response.get("Metadata", dict())
print(f"S3 object metadata: {metadata}")
# Arguments can be passed as a JSON string in metadata
arguments_str = metadata.get("arguments", "{}")
print(f"Arguments string from metadata: '{arguments_str}'")
if arguments_str and arguments_str != "{}":
arguments = json.loads(arguments_str)
print(f"Successfully parsed arguments from metadata: {arguments}")
else:
arguments = dict()
print("No arguments found in metadata, using empty dictionary")
except Exception as e:
print(f"Warning: Could not parse metadata arguments: {e}")
print("Using empty arguments dictionary")
arguments = dict()
except (KeyError, IndexError) as e:
print(
f"Could not parse S3 event record: {e}. Checking for direct invocation payload."
)
# Fallback for direct invocation (e.g., from Step Functions or manual test)
bucket_name = event.get("bucket_name")
input_key = event.get("input_key")
arguments = event.get("arguments", dict())
if not all([bucket_name, input_key]):
raise ValueError(
"Missing 'bucket_name' or 'input_key' in direct invocation event."
)
# Log file type information
file_extension = os.path.splitext(input_key)[1].lower()
print(f"Detected file extension: '{file_extension}'")
# 3. Download the main input file
input_file_path = os.path.join(INPUT_DIR, os.path.basename(input_key))
download_file_from_s3(bucket_name, input_key, input_file_path)
# 3.1. Validate file type compatibility
is_env_file = input_key.lower().endswith(".env")
if not is_env_file and file_extension not in COMPATIBLE_FILE_TYPES:
error_message = f"File type '{file_extension}' is not supported for processing. Compatible file types are: {', '.join(sorted(COMPATIBLE_FILE_TYPES))}"
print(f"ERROR: {error_message}")
print(f"File was not processed due to unsupported file type: {file_extension}")
return {
"statusCode": 400,
"body": json.dumps(
{
"error": "Unsupported file type",
"message": error_message,
"supported_types": list(COMPATIBLE_FILE_TYPES),
"received_type": file_extension,
"file_processed": False,
}
),
}
print(f"File type '{file_extension}' is compatible for processing")
if is_env_file:
print("Processing .env file for configuration")
else:
print(f"Processing {file_extension} file for topic modelling")
# 3.5. Check if the downloaded file is a .env file and handle accordingly
actual_input_file_path = input_file_path
if input_key.lower().endswith(".env"):
print("Detected .env file, loading environment variables...")
# Load environment variables from the .env file
print(f"Loading .env file from: {input_file_path}")
# Check if file exists and is readable
if os.path.exists(input_file_path):
print(".env file exists and is readable")
with open(input_file_path, "r") as f:
content = f.read()
print(f".env file content preview: {content[:200]}...")
else:
print(f"ERROR: .env file does not exist at {input_file_path}")
load_dotenv(input_file_path, override=True)
print("Environment variables loaded from .env file")
# Extract the actual input file path from environment variables
env_input_file = os.getenv("INPUT_FILE")
if env_input_file:
print(f"Found input file path in environment: {env_input_file}")
# If the path is an S3 path, download it
if env_input_file.startswith("s3://"):
# Parse S3 path: s3://bucket/key
s3_path_parts = env_input_file[5:].split("/", 1)
if len(s3_path_parts) == 2:
env_bucket = s3_path_parts[0]
env_key = s3_path_parts[1]
actual_input_file_path = os.path.join(
INPUT_DIR, os.path.basename(env_key)
)
print(
f"Downloading actual input file from s3://{env_bucket}/{env_key}"
)
download_file_from_s3(env_bucket, env_key, actual_input_file_path)
else:
print("Warning: Invalid S3 path format in environment variable")
actual_input_file_path = input_file_path
else:
# Assume it's a local path or relative path
actual_input_file_path = env_input_file
print(
f"Using input file path from environment: {actual_input_file_path}"
)
else:
print("Warning: No input file path found in environment variables")
# Fall back to using the .env file itself (though this might not be what we want)
actual_input_file_path = input_file_path
else:
print("File is not a .env file, proceeding with normal processing")
# 4. Prepare arguments for the CLI function
# This dictionary should mirror the arguments that cli_topics.main() expects via direct_mode_args
cli_args = {
# Task Selection
"task": arguments.get("task", os.getenv("DIRECT_MODE_TASK", "extract")),
# General Arguments
"input_file": [actual_input_file_path] if actual_input_file_path else None,
"output_dir": arguments.get(
"output_dir", os.getenv("DIRECT_MODE_OUTPUT_DIR", OUTPUT_DIR)
),
"input_dir": arguments.get("input_dir", INPUT_DIR),
"text_column": arguments.get(
"text_column", os.getenv("DIRECT_MODE_TEXT_COLUMN", "")
),
"previous_output_files": _get_env_list(
arguments.get(
"previous_output_files",
os.getenv("DIRECT_MODE_PREVIOUS_OUTPUT_FILES", list()),
)
),
"username": arguments.get("username", os.getenv("DIRECT_MODE_USERNAME", "")),
"save_to_user_folders": convert_string_to_boolean(
arguments.get(
"save_to_user_folders",
os.getenv("SESSION_OUTPUT_FOLDER", str(SESSION_OUTPUT_FOLDER)),
)
),
"excel_sheets": _get_env_list(
arguments.get("excel_sheets", os.getenv("DIRECT_MODE_EXCEL_SHEETS", list()))
),
"group_by": arguments.get("group_by", os.getenv("DIRECT_MODE_GROUP_BY", "")),
# Model Configuration
"model_choice": arguments.get(
"model_choice", os.getenv("DIRECT_MODE_MODEL_CHOICE", "")
),
"temperature": float(
arguments.get(
"temperature",
os.getenv("DIRECT_MODE_TEMPERATURE", str(LLM_TEMPERATURE)),
)
),
"batch_size": int(
arguments.get(
"batch_size",
os.getenv("DIRECT_MODE_BATCH_SIZE", str(BATCH_SIZE_DEFAULT)),
)
),
"max_tokens": int(
arguments.get(
"max_tokens",
os.getenv("DIRECT_MODE_MAX_TOKENS", str(LLM_MAX_NEW_TOKENS)),
)
),
"google_api_key": arguments.get(
"google_api_key", os.getenv("GEMINI_API_KEY", "")
),
"aws_access_key": None, # Use IAM Role instead of keys
"aws_secret_key": None, # Use IAM Role instead of keys
"aws_region": os.getenv("AWS_REGION", AWS_REGION),
"hf_token": arguments.get("hf_token", os.getenv("HF_TOKEN", "")),
"azure_api_key": arguments.get(
"azure_api_key", os.getenv("AZURE_OPENAI_API_KEY", "")
),
"azure_endpoint": arguments.get(
"azure_endpoint", os.getenv("AZURE_OPENAI_INFERENCE_ENDPOINT", "")
),
"api_url": arguments.get("api_url", os.getenv("API_URL", "")),
"inference_server_model": arguments.get(
"inference_server_model", os.getenv("CHOSEN_INFERENCE_SERVER_MODEL", "")
),
# Topic Extraction Arguments
"context": arguments.get("context", os.getenv("DIRECT_MODE_CONTEXT", "")),
"candidate_topics": arguments.get(
"candidate_topics", os.getenv("DIRECT_MODE_CANDIDATE_TOPICS", "")
),
"force_zero_shot": arguments.get(
"force_zero_shot", os.getenv("DIRECT_MODE_FORCE_ZERO_SHOT", "No")
),
"force_single_topic": arguments.get(
"force_single_topic", os.getenv("DIRECT_MODE_FORCE_SINGLE_TOPIC", "No")
),
"produce_structured_summary": arguments.get(
"produce_structured_summary",
os.getenv("DIRECT_MODE_PRODUCE_STRUCTURED_SUMMARY", "No"),
),
"sentiment": arguments.get(
"sentiment", os.getenv("DIRECT_MODE_SENTIMENT", "Negative or Positive")
),
"additional_summary_instructions": arguments.get(
"additional_summary_instructions",
os.getenv("DIRECT_MODE_ADDITIONAL_SUMMARY_INSTRUCTIONS", ""),
),
# Validation Arguments
"additional_validation_issues": arguments.get(
"additional_validation_issues",
os.getenv("DIRECT_MODE_ADDITIONAL_VALIDATION_ISSUES", ""),
),
"show_previous_table": arguments.get(
"show_previous_table", os.getenv("DIRECT_MODE_SHOW_PREVIOUS_TABLE", "Yes")
),
"output_debug_files": arguments.get(
"output_debug_files", str(OUTPUT_DEBUG_FILES)
),
"max_time_for_loop": int(
arguments.get("max_time_for_loop", os.getenv("MAX_TIME_FOR_LOOP", "99999"))
),
# Deduplication Arguments
"method": arguments.get(
"method", os.getenv("DIRECT_MODE_DEDUPLICATION_METHOD", "fuzzy")
),
"similarity_threshold": int(
arguments.get(
"similarity_threshold",
os.getenv("DEDUPLICATION_THRESHOLD", DEDUPLICATION_THRESHOLD),
)
),
"merge_sentiment": arguments.get(
"merge_sentiment", os.getenv("DIRECT_MODE_MERGE_SENTIMENT", "No")
),
"merge_general_topics": arguments.get(
"merge_general_topics", os.getenv("DIRECT_MODE_MERGE_GENERAL_TOPICS", "Yes")
),
# Summarisation Arguments
"summary_format": arguments.get(
"summary_format", os.getenv("DIRECT_MODE_SUMMARY_FORMAT", "two_paragraph")
),
"sample_reference_table": arguments.get(
"sample_reference_table",
os.getenv("DIRECT_MODE_SAMPLE_REFERENCE_TABLE", "True"),
),
"no_of_sampled_summaries": int(
arguments.get(
"no_of_sampled_summaries",
os.getenv("DEFAULT_SAMPLED_SUMMARIES", DEFAULT_SAMPLED_SUMMARIES),
)
),
"random_seed": int(
arguments.get("random_seed", os.getenv("LLM_SEED", LLM_SEED))
),
# Output Format Arguments
"create_xlsx_output": convert_string_to_boolean(
arguments.get(
"create_xlsx_output",
os.getenv("DIRECT_MODE_CREATE_XLSX_OUTPUT", "True"),
)
),
# Logging Arguments
"save_logs_to_csv": convert_string_to_boolean(
arguments.get(
"save_logs_to_csv", os.getenv("SAVE_LOGS_TO_CSV", str(SAVE_LOGS_TO_CSV))
)
),
"save_logs_to_dynamodb": convert_string_to_boolean(
arguments.get(
"save_logs_to_dynamodb",
os.getenv("SAVE_LOGS_TO_DYNAMODB", str(SAVE_LOGS_TO_DYNAMODB)),
)
),
"usage_logs_folder": arguments.get("usage_logs_folder", USAGE_LOGS_FOLDER),
"cost_code": arguments.get(
"cost_code", os.getenv("DEFAULT_COST_CODE", DEFAULT_COST_CODE)
),
}
# Download optional files if they are specified
candidate_topics_key = arguments.get("candidate_topics_s3_key")
if candidate_topics_key:
candidate_topics_path = os.path.join(INPUT_DIR, "candidate_topics.csv")
download_file_from_s3(bucket_name, candidate_topics_key, candidate_topics_path)
cli_args["candidate_topics"] = candidate_topics_path
# Download previous output files if they are S3 keys
if cli_args["previous_output_files"]:
downloaded_previous_files = []
for prev_file in cli_args["previous_output_files"]:
if prev_file.startswith("s3://"):
# Parse S3 path
s3_path_parts = prev_file[5:].split("/", 1)
if len(s3_path_parts) == 2:
prev_bucket = s3_path_parts[0]
prev_key = s3_path_parts[1]
local_prev_path = os.path.join(
INPUT_DIR, os.path.basename(prev_key)
)
download_file_from_s3(prev_bucket, prev_key, local_prev_path)
downloaded_previous_files.append(local_prev_path)
else:
downloaded_previous_files.append(prev_file)
else:
downloaded_previous_files.append(prev_file)
cli_args["previous_output_files"] = downloaded_previous_files
# 5. Execute the main application logic
try:
print("--- Starting CLI Topics Main Function ---")
print(
f"Arguments passed to cli_main: {json.dumps({k: v for k, v in cli_args.items() if k not in ['aws_access_key', 'aws_secret_key', 'google_api_key', 'azure_api_key', 'azure_endpoint', 'api_url', 'hf_token']}, default=str)}"
)
cli_main(direct_mode_args=cli_args)
print("--- CLI Topics Main Function Finished ---")
except Exception as e:
print(f"An error occurred during CLI execution: {e}")
import traceback
traceback.print_exc()
# Optionally, re-raise the exception to make the Lambda fail
raise
# 6. Upload results back to S3
output_s3_prefix = f"output/{os.path.splitext(os.path.basename(input_key))[0]}"
print(
f"Uploading contents of {OUTPUT_DIR} to s3://{bucket_name}/{output_s3_prefix}/"
)
upload_directory_to_s3(OUTPUT_DIR, bucket_name, output_s3_prefix)
return {
"statusCode": 200,
"body": json.dumps(
f"Processing complete for {input_key}. Output saved to s3://{bucket_name}/{output_s3_prefix}/"
),
}