litellm-mirror/litellm/integrations/datadog.py

143 lines
5.1 KiB
Python

#### What this does ####
# On success + failure, log events to Supabase
import dotenv, os
import requests # type: ignore
dotenv.load_dotenv() # Loading env variables using dotenv
import traceback
import datetime, subprocess, sys
import litellm, uuid
from litellm._logging import print_verbose, verbose_logger
class DataDogLogger:
# Class variables or attributes
def __init__(
self,
**kwargs,
):
from datadog_api_client import ApiClient, Configuration
# check if the correct env variables are set
if os.getenv("DD_API_KEY", None) is None:
raise Exception("DD_API_KEY is not set, set 'DD_API_KEY=<>")
if os.getenv("DD_SITE", None) is None:
raise Exception("DD_SITE is not set in .env, set 'DD_SITE=<>")
self.configuration = Configuration()
try:
verbose_logger.debug(f"in init datadog logger")
pass
except Exception as e:
print_verbose(f"Got exception on init s3 client {str(e)}")
raise e
async def _async_log_event(
self, kwargs, response_obj, start_time, end_time, print_verbose, user_id
):
self.log_event(kwargs, response_obj, start_time, end_time, print_verbose)
def log_event(
self, kwargs, response_obj, start_time, end_time, user_id, print_verbose
):
try:
# Define DataDog client
from datadog_api_client.v2.api.logs_api import LogsApi
from datadog_api_client.v2 import ApiClient
from datadog_api_client.v2.models import HTTPLogItem, HTTPLog
verbose_logger.debug(
f"datadog Logging - Enters logging function for model {kwargs}"
)
litellm_params = kwargs.get("litellm_params", {})
metadata = (
litellm_params.get("metadata", {}) or {}
) # if litellm_params['metadata'] == None
messages = kwargs.get("messages")
optional_params = kwargs.get("optional_params", {})
call_type = kwargs.get("call_type", "litellm.completion")
cache_hit = kwargs.get("cache_hit", False)
usage = response_obj["usage"]
id = response_obj.get("id", str(uuid.uuid4()))
usage = dict(usage)
try:
response_time = (end_time - start_time).total_seconds()
except:
response_time = None
try:
response_obj = dict(response_obj)
except:
response_obj = response_obj
# Clean Metadata before logging - never log raw metadata
# the raw metadata can contain circular references which leads to infinite recursion
# we clean out all extra litellm metadata params before logging
clean_metadata = {}
if isinstance(metadata, dict):
for key, value in metadata.items():
# clean litellm metadata before logging
if key in [
"endpoint",
"caching_groups",
"previous_models",
]:
continue
else:
clean_metadata[key] = value
# Build the initial payload
payload = {
"id": id,
"call_type": call_type,
"cache_hit": cache_hit,
"startTime": start_time,
"endTime": end_time,
"responseTime (seconds)": response_time,
"model": kwargs.get("model", ""),
"user": kwargs.get("user", ""),
"modelParameters": optional_params,
"spend": kwargs.get("response_cost", 0),
"messages": messages,
"response": response_obj,
"usage": usage,
"metadata": clean_metadata,
}
# Ensure everything in the payload is converted to str
for key, value in payload.items():
try:
payload[key] = str(value)
except:
# non blocking if it can't cast to a str
pass
import json
payload = json.dumps(payload)
print_verbose(f"\ndd Logger - Logging payload = {payload}")
with ApiClient(self.configuration) as api_client:
api_instance = LogsApi(api_client)
body = HTTPLog(
[
HTTPLogItem(
ddsource="litellm",
message=payload,
service="litellm-server",
),
]
)
response = api_instance.submit_log(body)
print_verbose(
f"Datadog Layer Logging - final response object: {response_obj}"
)
except Exception as e:
traceback.print_exc()
verbose_logger.debug(
f"Datadog Layer Error - {str(e)}\n{traceback.format_exc()}"
)
pass