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4 commits

Author SHA1 Message Date
Teknium
76381e2a8e
fix(compression): stop compaction thrash — 75% trigger floor under 512K, no summary output cap, reasoning-trace exclusion (#60989)
Sessions on sub-512K-context models were spending most of their wall-clock
re-summarizing: the 50% trigger left too little post-compaction headroom
(the incompressible floor — system prompt, tool schemas, protected tail,
rolling summary — ate most of the reclaimed space), so compaction re-fired
every 1-2 turns. Three compounding defects fixed:

- Threshold floor: models with context windows below 512K now trigger at
  >=75% of the window (raise-only — a higher configured value or per-model
  autoraise like Codex gpt-5.5's 85% always wins). Re-derived on
  update_model() in both directions.
- No max_tokens on the summary call: the summary budget is prompt guidance
  only ("Target ~N tokens"). The wire cap truncated summaries mid-section
  on the Anthropic Messages / NVIDIA NIM paths (thinking models burn the
  cap on reasoning first), yielding truncated or thinking-only summaries
  and compaction loops. Summary token ceiling lowered 12K -> 10K to keep
  the guidance within the intended 1K-10K envelope.
- Reasoning traces excluded end-to-end: inline <think>/<reasoning> blocks
  are now stripped from assistant content before serialization to the
  summarizer, and from the summarizer's own output before the summary is
  stored (previously a thinking summarizer model's trace was persisted in
  _previous_summary and re-fed into every iterative update, compounding
  bloat). Native reasoning fields were already excluded.

Verified E2E with real imports against a temp HERMES_HOME: threshold table
across 64K-1M windows, override interactions (user 0.85 wins, spark 0.70
raised, gpt-5.5 0.85 kept), full compress() round-trip with a thinking
summarizer, and wire-kwargs capture proving no max_tokens is sent.
2026-07-08 11:56:17 -07:00
Tranquil-Flow
0b6df665a9 fix(compression): autoraise gpt-5.3-codex-spark threshold to 70% (#48621)
gpt-5.3-codex-spark has a native 128K context window but the default
50% compaction trigger fires at ~64K, wasting half the usable window
before the session has accumulated enough turns to summarize
meaningfully.  This raises the trigger to 70% (~90K) on the Codex OAuth
route only, leaving ~38K headroom for the summary and continued
conversation before the 128K hard limit.

The override is not gated by allow_codex_gpt55_autoraise because 128K
is the model's native window (unlike gpt-5.5's artificial 272K Codex
cap).  Non-Codex routes are unaffected.

Also adds a boundary regression test verifying the short-session
scenario from the issue always yields a non-empty compressible window
(no silent context wipe).
2026-07-06 12:46:20 -07:00
ygd58
812236bff8 fix(compressor): skip compression during summary LLM cooldown to prevent CLI freeze
When the summary LLM hits a 429/transient failure, _generate_summary() sets
a cooldown and returns None; compress() inserts a static fallback marker and
returns. Tokens stay above threshold, so should_compress() kept returning
True and every subsequent agent turn re-fired _compress_context() — the CLI
appeared frozen until the cooldown expired.

Add a cooldown guard to should_compress(): return False while
_summary_failure_cooldown_until is in the future. Reuses the existing float;
no new state. Manual /compress (force=True) still clears the cooldown first.

Fixes #11529
2026-06-30 15:57:59 -07:00
islam666
b18490b890 fix(compaction): prevent infinite loop when transcript fits in tail budget
When summary_target_ratio is large (e.g. 0.45) and the context_length is
moderate (e.g. 96000), the soft_ceiling (token_budget * 1.5) can exceed
the total transcript size.  _find_tail_cut_by_tokens walks the entire
transcript without breaking early, and the resulting compress window is
either empty (compress_start >= compress_end) or a single message whose
summary-of-one overhead saves ~0 tokens.

Both outcomes cause a no-op compression that does not increment
_ineffective_compression_count, so should_compress() returns True on
every subsequent turn and the loop repeats endlessly.

Fix (two layers):
1. _find_tail_cut_by_tokens: when the backward walk consumed the entire
   transcript without breaking (cut_idx <= head_end and accumulated <=
   soft_ceiling), re-walk with the raw (non-inflated) token budget to
   find a meaningful cut that gives the summarizer a useful middle window.
2. compress(): when compress_start >= compress_end, increment
   _ineffective_compression_count and log a warning so the existing
   anti-thrashing guard in should_compress() can break the loop.

Fixes #40803
2026-06-07 21:50:57 -07:00