LLM: trim system prompt to drop ~27 prefill tokens (-1.3s TTFT)
The verbose 55-token system prompt was the cheapest TTFT win on the kv-only path (52 ms per prefill token). Compacting it to 25 tokens while keeping the three load-bearing constraints — Kazeia identity, French only, short replies, /no_think — measurably improved end-to-end latency. Validated 'Bonjour, comment vas-tu ?' on tablet: Before: prompt_tokens=80, TTFT=4202ms, total=5716ms After: prompt_tokens=53, TTFT=2865ms, total=4034ms (-1.3s, -32% TTFT) Reply quality preserved: "Bonjour ! Je vais bien, merci. Comment vas-tu ?" Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>
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@ -33,10 +33,10 @@ class ExecuTorchLlmEngine(
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companion object {
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private const val TAG = "ExecuTorchLLM"
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// /no_think disables Qwen3's chain-of-thought block so the full token
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// budget goes to the actual answer. Short-response directive keeps
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// TTS latency manageable.
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private const val SYSTEM_PROMPT = "Tu es Kazeia, un compagnon bienveillant d'écoute émotionnelle. Réponds toujours en français, en 1 ou 2 phrases courtes (40 mots maximum). Pas de raisonnement, donne directement la réponse. /no_think"
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// /no_think disables Qwen3's chain-of-thought block. Compact wording
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// keeps prefill cost low: this prompt is ~25 tokens vs ~55 in the
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// earlier verbose version → saves ~1.5 s of TTFT in kv-only mode.
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private const val SYSTEM_PROMPT = "Tu es Kazeia, à l'écoute en français. Réponds en 1-2 phrases courtes, sans raisonnement. /no_think"
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private const val MODEL_DIR = "/data/local/tmp/kazeia-et"
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private const val MODEL_PATH = "$MODEL_DIR/hybrid_llama_qnn.pte"
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