fix fetch daily maximo

main
MrWaradana 9 months ago
parent 5d9a440715
commit 9af8f3890b

@ -71,19 +71,21 @@ def fetch_daily_maximo_data(**context):
# Create a response callback function
def response_callback(future):
try:
# Get the response from the future, with a short timeout just to confirm
# Get the response from the future, with a short timeout just to confirm
# the request was properly initiated
response = future.result(timeout=10)
logger.info(
f"Request initiated successfully (Request ID: {request_id}), status: {response.status_code}"
)
# We don't wait for the full response processing, as it may take longer than Airflow's task timeout
except requests.exceptions.Timeout:
logger.error(f"Request connection timed out (Request ID: {request_id})")
except Exception as e:
logger.error(f"Error initiating request (Request ID: {request_id}): {str(e)}")
logger.error(
f"Error initiating request (Request ID: {request_id}): {str(e)}"
)
# Using ThreadPoolExecutor for async operation
with ThreadPoolExecutor(max_workers=1) as executor:
@ -94,13 +96,13 @@ def fetch_daily_maximo_data(**context):
headers=headers,
timeout=600, # Increased timeout to 10 minutes for the actual API call
)
# Add callback that will execute when future completes
future.add_done_callback(response_callback)
# Don't wait for future to complete, let it run in background
logger.info(f"Async request has been dispatched (Request ID: {request_id})")
# Push the request details to XCom for tracking
result_dict = {
"request_id": request_id,
@ -108,10 +110,10 @@ def fetch_daily_maximo_data(**context):
"timestamp": datetime.now().isoformat(),
"message": "Fetch Daily Maximo request initiated asynchronously",
}
ti = context["ti"]
ti.xcom_push(key="fetch_result", value=result_dict)
return result_dict
@ -126,8 +128,8 @@ def process_response(**context):
if result:
logger.info(f"Processing async request result: {result}")
# Since we're using fire-and-forget pattern, we just acknowledge the request was made
# In production, you might want to implement a separate DAG or task
# In production, you might want to implement a separate DAG or task
# to check the status of the asynchronous job later
return True
@ -146,7 +148,7 @@ default_args = {
# Define the DAG
dag = DAG(
"fetch_daily_maximo_data_async",
"fetch_daily_maximo_data",
default_args=default_args,
description="A DAG to fetch data from Maximo API endpoint asynchronously on a daily schedule",
# Schedule to run daily at 21:00, 22:00, and 23:00
@ -188,4 +190,4 @@ process_task = PythonOperator(
# Set task dependencies
check_running >> [skip_execution, fetch_task]
fetch_task >> process_task
fetch_task >> process_task

Loading…
Cancel
Save