core[patch]: Fix "argument of type 'NoneType' is not iterable" error in LangChainTracer (#26576)

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---------

Co-authored-by: Erick Friis <erick@langchain.dev>
pull/26581/head
Nuno Campos 5 days ago committed by GitHub
parent f4a65236ee
commit 5fc44989bf
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GPG Key ID: B5690EEEBB952194

@ -301,7 +301,7 @@ class OpenAIAssistantV2Runnable(OpenAIAssistantRunnable):
inheritable_metadata=config.get("metadata"),
)
run_manager = callback_manager.on_chain_start(
dumpd(self), input, name=config.get("run_name")
dumpd(self), input, name=config.get("run_name") or self.get_name()
)
files = _convert_file_ids_into_attachments(kwargs.get("file_ids", []))
@ -437,7 +437,7 @@ class OpenAIAssistantV2Runnable(OpenAIAssistantRunnable):
inheritable_metadata=config.get("metadata"),
)
run_manager = callback_manager.on_chain_start(
dumpd(self), input, name=config.get("run_name")
dumpd(self), input, name=config.get("run_name") or self.get_name()
)
files = _convert_file_ids_into_attachments(kwargs.get("file_ids", []))

@ -121,4 +121,4 @@ def test_callback_manager_configure_context_vars(
assert cb.completion_tokens == 1
assert cb.total_cost > 0
wait_for_all_tracers()
assert LangChainTracer._persist_run_single.call_count == 1 # type: ignore
assert LangChainTracer._persist_run_single.call_count == 4 # type: ignore

@ -135,11 +135,13 @@ class Run(BaseRunV2):
@root_validator(pre=True)
def assign_name(cls, values: dict) -> dict:
"""Assign name to the run."""
if values.get("name") is None:
if values.get("name") is None and values["serialized"] is not None:
if "name" in values["serialized"]:
values["name"] = values["serialized"]["name"]
elif "id" in values["serialized"]:
values["name"] = values["serialized"]["id"][-1]
if values.get("name") is None:
values["name"] = "Unnamed"
if values.get("events") is None:
values["events"] = []
return values

@ -310,7 +310,7 @@ class OpenAIAssistantRunnable(RunnableSerializable[Dict, OutputType]):
inheritable_metadata=config.get("metadata"),
)
run_manager = callback_manager.on_chain_start(
dumpd(self), input, name=config.get("run_name")
dumpd(self), input, name=config.get("run_name") or self.get_name()
)
try:
# Being run within AgentExecutor and there are tool outputs to submit.
@ -429,7 +429,7 @@ class OpenAIAssistantRunnable(RunnableSerializable[Dict, OutputType]):
inheritable_metadata=config.get("metadata"),
)
run_manager = callback_manager.on_chain_start(
dumpd(self), input, name=config.get("run_name")
dumpd(self), input, name=config.get("run_name") or self.get_name()
)
try:
# Being run within AgentExecutor and there are tool outputs to submit.

@ -242,6 +242,7 @@ class LLMChain(Chain):
run_manager = callback_manager.on_chain_start(
None,
{"input_list": input_list},
name=self.get_name(),
)
try:
response = self.generate(input_list, run_manager=run_manager)
@ -262,6 +263,7 @@ class LLMChain(Chain):
run_manager = await callback_manager.on_chain_start(
None,
{"input_list": input_list},
name=self.get_name(),
)
try:
response = await self.agenerate(input_list, run_manager=run_manager)

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