Add structured logging for Docker; support LOG_LEVEL env and --log-level
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This commit is contained in:
admin
2026-06-13 17:46:25 +00:00
parent 47b3304297
commit 2ea46ada42
5 changed files with 140 additions and 9 deletions
+21 -1
View File
@@ -16,12 +16,15 @@ but ignored when not relevant.
"""
import os
import logging
from typing import Union, Optional
from .localai_client import LocalAIClient, LocalAIError
from .summarizer import SummarizerClient, SummarizerError
from .transcript_exporter import Transcript
logger = logging.getLogger("scraibe.autotranscript")
class Scraibe:
"""
@@ -68,6 +71,8 @@ class Scraibe:
"""
self.verbose = verbose or kwargs.get("verbose", False)
logger.info("Initializing Scraibe.")
try:
self.client = LocalAIClient(
api_url=api_url,
@@ -75,6 +80,7 @@ class Scraibe:
model=model,
)
except LocalAIError as e:
logger.error("Failed to initialize LocalAI client: %s", e)
raise LocalAIError(f"Failed to initialize LocalAI client: {e}")
# Summarizer is lazy-initialized if needed
@@ -95,6 +101,7 @@ class Scraibe:
if self._summarizer is not None:
return self._summarizer
logger.info("Initializing SummarizerClient (lazy).")
try:
self._summarizer = SummarizerClient(
api_url=api_url,
@@ -102,6 +109,7 @@ class Scraibe:
model=model,
)
except SummarizerError as e:
logger.error("Failed to initialize Summarizer client: %s", e)
raise SummarizerError(f"Failed to initialize Summarizer client: {e}")
return self._summarizer
@@ -137,6 +145,7 @@ class Scraibe:
)
verbose = kwargs.get("verbose", self.verbose)
logger.info("transcribe called for: %s", audio_file)
try:
result = self.client.diarize_and_transcribe(
@@ -146,10 +155,13 @@ class Scraibe:
**kwargs,
)
except LocalAIError as e:
logger.error("Error during LocalAI transcription: %s", e)
raise LocalAIError(f"Error during LocalAI transcription: {e}")
transcripts = result.get("transcripts", [])
return " ".join(t.strip() for t in transcripts if t.strip())
text = " ".join(t.strip() for t in transcripts if t.strip())
logger.info("transcribe completed, length=%d chars", len(text))
return text
def transcript_and_summarize(
self,
@@ -182,6 +194,7 @@ class Scraibe:
)
verbose = kwargs.get("verbose", self.verbose)
logger.info("transcript_and_summarize called for: %s", audio_file)
# 1) Get diarized + transcribed result
try:
@@ -192,6 +205,7 @@ class Scraibe:
**kwargs,
)
except LocalAIError as e:
logger.error("Error during LocalAI transcription: %s", e)
raise LocalAIError(f"Error during LocalAI transcription: {e}")
segments = result.get("segments", [])
@@ -199,6 +213,7 @@ class Scraibe:
transcripts = result.get("transcripts", [])
if not segments:
logger.warning("No segments returned; returning empty transcript/summary.")
return {
"transcript": "",
"summary": "No transcript content to summarize.",
@@ -213,6 +228,7 @@ class Scraibe:
lines.append(line)
full_transcript = "\n\n".join(lines)
logger.info("Built full transcript, length=%d chars", len(full_transcript))
# 3) Summarize
try:
@@ -222,13 +238,17 @@ class Scraibe:
model=summarizer_model,
)
except SummarizerError as e:
logger.error("Failed to initialize summarizer: %s", e)
raise SummarizerError(f"Failed to initialize summarizer: {e}")
try:
summary = summarizer.summarize_transcript(full_transcript)
except SummarizerError as e:
logger.error("Error during summarization: %s", e)
raise SummarizerError(f"Error during summarization: {e}")
logger.info("transcript_and_summarize completed.")
return {
"transcript": full_transcript,
"summary": summary,
+35 -4
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@@ -9,9 +9,10 @@ This version is adapted for LocalAI-based transcription and diarization.
import os
import json
import logging
from argparse import ArgumentParser, ArgumentDefaultsHelpFormatter
from .autotranscript import Scraibe
from .misc import set_threads
from .misc import set_threads, setup_logging
def cli():
@@ -20,6 +21,11 @@ def cli():
and diarize audio files via a LocalAI server.
"""
# Initialize logging (can be overridden via --log-level)
setup_logging(level=os.getenv("LOG_LEVEL", "INFO"))
logger = logging.getLogger("scraibe.cli")
def str2bool(string):
str2val = {"True": True, "False": False}
if string in str2val:
@@ -181,18 +187,34 @@ def cli():
help="Number of speakers in the audio.",
)
parser.add_argument(
"--log-level",
type=str,
default=None,
choices=["DEBUG", "INFO", "WARNING", "ERROR", "CRITICAL"],
help="Override LOG_LEVEL env var for logging verbosity.",
)
args = parser.parse_args()
# Apply log-level override if provided
log_level = args.log_level or os.getenv("LOG_LEVEL", "INFO")
setup_logging(level=log_level)
logger.info("CLI starting with log_level=%s", log_level)
arg_dict = vars(args)
# configure output
out_folder = arg_dict.pop("output_directory")
os.makedirs(out_folder, exist_ok=True)
logger.info("Output directory: %s", out_folder)
out_format = arg_dict.pop("output_format")
task = arg_dict.pop("task")
logger.info("Task: %s", task)
logger.info("Output format: %s", out_format)
set_threads(arg_dict.pop("num_threads"))
# Build kwargs for Scraibe (LocalAI-backed)
@@ -208,13 +230,18 @@ def cli():
"verbose": arg_dict.pop("verbose_output"),
}
logger.info("LocalAI API URL: %s", class_kwargs["api_url"] or os.getenv("LOCALAI_API_URL", "<not set>"))
logger.info("LocalAI Model: %s", class_kwargs["model"] or os.getenv("LOCALAI_MODEL", "<not set>"))
model = Scraibe(**class_kwargs)
if arg_dict["audio_files"]:
audio_files = arg_dict.pop("audio_files")
logger.info("Audio files: %s", audio_files)
if task == "transcribe":
for audio in audio_files:
logger.info("Starting 'transcribe' for: %s", audio)
out = model.transcribe(
audio,
language=arg_dict.pop("language"),
@@ -223,12 +250,14 @@ def cli():
)
basename = audio.split("/")[-1].split(".")[0]
path = os.path.join(out_folder, f"{basename}.{out_format}")
print(f"Saving {basename}.{out_format} to {out_folder}")
logger.info("Saving transcript to: %s", path)
with open(path, "w", encoding="utf-8") as f:
f.write(out)
logger.info("Transcript saved: %s", path)
elif task == "transcript_and_summarize":
for audio in audio_files:
logger.info("Starting 'transcript_and_summarize' for: %s", audio)
result = model.transcript_and_summarize(
audio,
summarizer_api_url=arg_dict.pop("summarizer_api_url"),
@@ -246,7 +275,7 @@ def cli():
# Always use .md for transcript_and_summarize
md_path = os.path.join(out_folder, f"{basename}.md")
print(f"Saving {basename}.md (transcript + summary) to {out_folder}")
logger.info("Saving transcript + summary to: %s", md_path)
with open(md_path, "w", encoding="utf-8") as f:
f.write("# Transcript\n\n")
@@ -254,5 +283,7 @@ def cli():
f.write("\n\n# Summary\n\n")
f.write(summary_text)
logger.info("Transcript + summary saved: %s", md_path)
if __name__ == "__main__":
cli()
+24 -2
View File
@@ -19,10 +19,13 @@ Environment Variables:
import os
import io
import json
import logging
from typing import Dict, List, Any, Optional
import httpx
logger = logging.getLogger("scraibe.localai_client")
class LocalAIError(Exception):
"""Raised when the LocalAI API returns an error or unexpected response."""
@@ -67,6 +70,12 @@ class LocalAIClient:
"Provide the LocalAI server URL via environment or constructor."
)
logger.info(
"Initializing LocalAIClient: url=%s model=%s",
self.api_url,
self.model,
)
self._client = httpx.Client(
base_url=self.api_url,
timeout=self.timeout,
@@ -130,7 +139,8 @@ class LocalAIClient:
if verbose:
print("Starting diarization and transcription via LocalAI.")
# Defaults: use verbose_json + include_text to get both diarization and transcription.
logger.info("diarize_and_transcribe requested for: %s", audio_path)
if response_format is None:
response_format = "verbose_json"
if include_text is None:
@@ -158,6 +168,8 @@ class LocalAIClient:
if min_duration_off is not None:
data["min_duration_off"] = str(min_duration_off)
logger.debug("LocalAI request params: %s", data)
# Open file
if not os.path.exists(audio_path):
raise LocalAIError(f"Audio file not found: {audio_path}")
@@ -172,6 +184,7 @@ class LocalAIClient:
headers["Authorization"] = f"Bearer {self.api_key}"
# POST /v1/audio/diarization
logger.info("Sending request to LocalAI: /v1/audio/diarization")
resp = self._client.post(
"/v1/audio/diarization",
data=data,
@@ -179,8 +192,11 @@ class LocalAIClient:
headers=headers,
)
logger.info("LocalAI response status: %d", resp.status_code)
if resp.status_code >= 400:
body = resp.text
logger.error("LocalAI error response: %s", body)
raise LocalAIError(
f"LocalAI request failed with status {resp.status_code}: {body}"
)
@@ -188,6 +204,7 @@ class LocalAIClient:
try:
result = resp.json()
except json.JSONDecodeError:
logger.error("Failed to parse LocalAI response as JSON.")
raise LocalAIError(
"Failed to parse LocalAI response as JSON."
)
@@ -209,7 +226,7 @@ class LocalAIClient:
segments = result.get("segments", [])
if not segments:
# If no segments, return empty but valid structure
logger.warning("LocalAI returned no segments.")
return {
"segments": [],
"speakers": [],
@@ -230,6 +247,11 @@ class LocalAIClient:
out_speakers.append(speaker)
out_transcripts.append(text)
logger.info(
"Parsed %d segments from LocalAI.",
len(out_segments),
)
return {
"segments": out_segments,
"speakers": out_speakers,
+20
View File
@@ -1,4 +1,5 @@
import os
import logging
from argparse import Action
from ast import literal_eval
@@ -13,6 +14,25 @@ PYANNOTE_DEFAULT_PATH = os.path.join(CACHE_DIR, "pyannote")
PYANNOTE_DEFAULT_CONFIG = os.path.join(PYANNOTE_DEFAULT_PATH, "config.yaml")
def setup_logging(level: str = "INFO"):
"""
Configure root logger to write to stdout so Docker can capture logs.
Args:
level: Logging level (DEBUG, INFO, WARNING, ERROR, CRITICAL).
"""
numeric_level = getattr(logging, level.upper(), logging.INFO)
if not isinstance(numeric_level, int):
numeric_level = logging.INFO
logging.basicConfig(
level=numeric_level,
format="%(asctime)s [%(levelname)s] %(name)s: %(message)s",
datefmt="%Y-%m-%dT%H:%M:%S%z",
force=True,
)
def set_threads(parse_threads=None, yaml_threads=None):
"""
Configure number of threads.
+40 -2
View File
@@ -6,8 +6,8 @@ Provides a client to summarize long transcripts via an LLM endpoint.
Behavior:
- Chunks transcript into 10,240-character segments.
- Generates a summary for each chunk.
- Combines all chunk summaries and produces a final, detailed summary.
- Summarizes each chunk.
- Summarizes the summaries into a final, detailed summary.
Environment Variables:
- SUMMARIZER_API_URL: (required) Base URL of the LLM API (e.g., http://localhost:8080)
@@ -17,10 +17,13 @@ Environment Variables:
import os
import json
import logging
from typing import Optional
import httpx
logger = logging.getLogger("scraibe.summarizer")
class SummarizerError(Exception):
"""Raised when the summarization API call fails."""
@@ -53,6 +56,12 @@ class SummarizerClient:
"Provide the summarization LLM URL via environment or constructor."
)
logger.info(
"Initializing SummarizerClient: url=%s model=%s",
self.api_url,
self.model,
)
self._client = httpx.Client(
base_url=self.api_url,
timeout=self.timeout,
@@ -84,21 +93,40 @@ class SummarizerClient:
- Next steps / action items
"""
if not transcript.strip():
logger.warning("Empty transcript provided to summarize_transcript.")
return "No transcript provided to summarize."
logger.info(
"Starting summarization for transcript length=%d chars",
len(transcript),
)
# 1) Chunk the transcript
chunks = self._chunk_text(transcript)
logger.info("Split transcript into %d chunks.", len(chunks))
# 2) Summarize each chunk
chunk_summaries = []
for i, chunk in enumerate(chunks):
logger.info(
"Summarizing chunk %d/%d (length=%d)",
i + 1,
len(chunks),
len(chunk),
)
summary = self._summarize_chunk(chunk, i, len(chunks))
chunk_summaries.append(summary)
# 3) Combine and summarize summaries
combined = "\n\n".join(chunk_summaries)
logger.info(
"Combining %d chunk summaries (total length=%d) for final summary.",
len(chunk_summaries),
len(combined),
)
final_summary = self._summarize_combined(combined)
logger.info("Summarization completed.")
return final_summary
def _chunk_text(self, text: str) -> list[str]:
@@ -183,13 +211,18 @@ class SummarizerClient:
if self.api_key:
headers["Authorization"] = f"Bearer {self.api_key}"
logger.info("Calling summarizer endpoint: /v1/chat/completions")
resp = self._client.post(
"/v1/chat/completions",
json=payload,
headers=headers,
)
logger.info("Summarizer response status: %d", resp.status_code)
if resp.status_code >= 400:
logger.error("Summarizer error response: %s", resp.text)
raise SummarizerError(
f"Summarizer API error {resp.status_code}: {resp.text}"
)
@@ -197,6 +230,7 @@ class SummarizerClient:
try:
data = resp.json()
except json.JSONDecodeError:
logger.error("Failed to parse summarizer response as JSON.")
raise SummarizerError(
"Failed to parse summarizer response as JSON."
)
@@ -206,6 +240,10 @@ class SummarizerClient:
content = data["choices"][0]["message"]["content"]
return content.strip()
except (KeyError, IndexError, TypeError):
logger.error(
"Unexpected summarizer response format: %s",
json.dumps(data, indent=2),
)
raise SummarizerError(
"Unexpected summarizer response format: "
f"{json.dumps(data, indent=2)}"