When the LLM returned zero text tokens (e.g. it was interrupted before producing
tokens or about to push tokens), push_aggregation() returned an empty string and
on_assistant_turn_stopped was never emitted. This left consumers waiting for an
event that would never arrive.
Now on_assistant_turn_stopped always fires, with an empty content string when
the LLM produced no text tokens.
Fixes#4292
Only treat messages[0] as the initial system prompt when determining the
summarization range. Previously, the code scanned the entire context for
the first system-role message, which caused failures when the only system
message was a mid-conversation injection (e.g. "The user has been quiet").
In that case summary_start exceeded summary_end, producing an empty range
and "No messages to summarize" errors.
Fixes#4286
The enable_logging and enable_ssml_parsing URL params used truthy checks,
so False was treated the same as None (both skipped). Also, Python's
str(False) produces "False" but the API expects lowercase "false".
Additionally, add enable_logging support to ElevenLabsHttpTTSService
which was missing entirely.
When the STT p99 timeout fires without a transcript, the turn stop
strategy previously did nothing — falling through to the 5-second
user_turn_stop_timeout. Now, a _timeout_expired flag tracks when the
timeout has elapsed so that a late transcript triggers the turn stop
immediately instead of waiting for the fallback.
Previously settings updates were ignored with a TODO comment. Now when
model/language changes via STTUpdateSettingsFrame the service disconnects
and reconnects with the new query parameters.
Key changes:
- Implement _update_settings to disconnect/reconnect on changes
- Check `is not State.OPEN` in run_stt to catch CLOSING state
- Send `done` command before closing for clean session shutdown
- Capture websocket reference in _disconnect_websocket to prevent a
concurrent _connect from having its new connection nulled by a stale
finally block
The strategy schedules background tasks during setup. Fast-running
tests could observe state before those tasks had a chance to run;
yielding once via asyncio.sleep(0) ensures they do.
Enable callers to get a compact version of context messages suitable
for serialization, logging, and debugging tools. For standard
messages, known binary data (base64 images, audio) is fully elided.
For LLM-specific messages, long string values are recursively
truncated. Adapter get_messages_for_logging() methods now use this.
Example files can live under subdirectories (e.g. foundational/01.py),
so the recording path needs its parent directory created before the
audio file is written.