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chore: import upstream snapshot with attribution
2026-07-13 12:16:49 +08:00

186 lines
6.9 KiB
Python

#
# Copyright 2025 The InfiniFlow Authors. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
#
import contextvars
import hashlib
import logging
import os
import shutil
import threading
import tiktoken
from common.file_utils import get_project_base_directory
def _ensure_tiktoken_cache() -> str:
cache_dir = get_project_base_directory()
os.environ["TIKTOKEN_CACHE_DIR"] = cache_dir
bundled_encoding_path = get_project_base_directory("ragflow_deps", "cl100k_base.tiktoken")
encoding_url = "https://openaipublic.blob.core.windows.net/encodings/cl100k_base.tiktoken"
cached_encoding_path = os.path.join(cache_dir, hashlib.sha1(encoding_url.encode()).hexdigest())
if os.path.exists(bundled_encoding_path) and not os.path.exists(cached_encoding_path):
shutil.copyfile(bundled_encoding_path, cached_encoding_path)
return cache_dir
tiktoken_cache_dir = _ensure_tiktoken_cache()
os.environ["TIKTOKEN_CACHE_DIR"] = tiktoken_cache_dir
# encoder = tiktoken.encoding_for_model("gpt-3.5-turbo")
encoder = tiktoken.get_encoding("cl100k_base")
# Per-run token usage sink. An agent run (Canvas.run) installs a mutable dict here
# at the start of each turn; every LLMBundle chat call adds its provider-reported
# usage to it. This is the single chokepoint that aggregates token usage across all
# LLM calls in a run (query rewriting, cross-language translation, tool reasoning,
# and the final streamed answer) regardless of which component or helper issued the
# call. Default None means "not inside a tracked run" and callers must no-op.
token_usage_sink: contextvars.ContextVar = contextvars.ContextVar("ragflow_token_usage_sink", default=None)
# Per-run Langfuse correlating attributes (e.g. {"session_id": ..., "user_id": ...}).
# Installed by Canvas.run so RAGFlow's own Langfuse generations can be grouped by
# session and user even though the agent's LLMBundles are created without them.
langfuse_run_attrs: contextvars.ContextVar = contextvars.ContextVar("ragflow_langfuse_run_attrs", default=None)
# Guards sink mutations: concurrent tool calls (asyncio.gather + thread_pool_exec,
# which copies the context so worker threads share the same sink dict) can otherwise
# race on the read-modify-write of the counters.
_sink_lock = threading.Lock()
def record_run_token_usage(prompt_tokens: int = 0, completion_tokens: int = 0, total_tokens: int = 0) -> None:
"""Add a single LLM call's token usage to the active run sink, if any.
Safe to call from anywhere: when no run sink is installed it does nothing.
"""
sink = token_usage_sink.get()
if sink is None:
return
try:
with _sink_lock:
sink["prompt_tokens"] += int(prompt_tokens or 0)
sink["completion_tokens"] += int(completion_tokens or 0)
sink["total_tokens"] += int(total_tokens or 0)
sink["calls"] += 1
except Exception:
# Never let usage bookkeeping break a request; log at debug so a malformed
# sink or token value is still traceable without adding noise.
logging.debug("Failed to record run token usage", exc_info=True)
def usage_from_response(resp) -> dict:
"""Extract a {prompt_tokens, completion_tokens, total_tokens} split from an LLM response.
Handles OpenAI/OpenRouter-style ``resp.usage`` objects and dict variants. Missing
fields default to 0; ``total_tokens`` falls back to prompt+completion when absent.
"""
out = {"prompt_tokens": 0, "completion_tokens": 0, "total_tokens": 0}
if resp is None:
return out
usage = None
try:
usage = getattr(resp, "usage", None)
if usage is None and isinstance(resp, dict):
usage = resp.get("usage")
except Exception:
usage = None
if usage is None:
return out
def _get(obj, *names):
for n in names:
try:
v = obj.get(n) if isinstance(obj, dict) else getattr(obj, n, None)
except Exception:
v = None
if v:
return int(v)
return 0
out["prompt_tokens"] = _get(usage, "prompt_tokens", "input_tokens")
out["completion_tokens"] = _get(usage, "completion_tokens", "output_tokens")
out["total_tokens"] = _get(usage, "total_tokens")
if not out["total_tokens"]:
out["total_tokens"] = out["prompt_tokens"] + out["completion_tokens"]
return out
def num_tokens_from_string(string: str) -> int:
"""Returns the number of tokens in a text string."""
try:
code_list = encoder.encode(string)
return len(code_list)
except Exception:
return 0
def total_token_count_from_response(resp):
"""
Extract token count from LLM response in various formats.
Handles None responses and different response structures from various LLM providers.
Returns 0 if token count cannot be determined.
"""
if resp is None:
return 0
try:
if hasattr(resp, "usage") and hasattr(resp.usage, "total_tokens"):
return resp.usage.total_tokens
except Exception:
pass
try:
if hasattr(resp, "usage_metadata") and hasattr(resp.usage_metadata, "total_tokens"):
return resp.usage_metadata.total_tokens
except Exception:
pass
try:
if hasattr(resp, "meta") and hasattr(resp.meta, "billed_units") and hasattr(resp.meta.billed_units, "input_tokens"):
return resp.meta.billed_units.input_tokens
except Exception:
pass
if isinstance(resp, dict) and "usage" in resp and "total_tokens" in resp["usage"]:
try:
return resp["usage"]["total_tokens"]
except Exception:
pass
if isinstance(resp, dict) and "usage" in resp and "input_tokens" in resp["usage"] and "output_tokens" in resp["usage"]:
try:
return resp["usage"]["input_tokens"] + resp["usage"]["output_tokens"]
except Exception:
pass
if isinstance(resp, dict) and "meta" in resp and "tokens" in resp["meta"] and "input_tokens" in resp["meta"]["tokens"] and "output_tokens" in resp["meta"]["tokens"]:
try:
return resp["meta"]["tokens"]["input_tokens"] + resp["meta"]["tokens"]["output_tokens"]
except Exception:
pass
return 0
def truncate(string: str, max_len: int) -> str:
"""Returns truncated text if the length of text exceed max_len."""
return encoder.decode(encoder.encode(string)[:max_len])