Phase 9 of the rebrand cascade. Sweep covers everything the Phase 8
frontend pass deliberately skipped: docs/, root markdown, scripts,
Cargo.toml descriptions, code comments that survived earlier
word-boundary sed, plus a handful of identifiers caught on the final
verify pass.
transcription-app changes:
- README.md, HANDOVER.md, KNOWN-ISSUES.md, run.sh — magnotia/Magnotia
-> lumotia/Lumotia.
- docs/ — sweep across all subdirs except docs/handovers/ (preserved
as immutable audit trail). Includes architecture-map references
to magnotia_core::*, magnotia_storage::*, etc. now pointing at
lumotia_*; dev-setup.md tracing output examples (lumotia_startup
target); brief/ + superpowers/ + issues/ + whisper-ecosystem/ +
audit/.
- Cargo.toml descriptions on 9 crates (core, audio, cloud-providers,
hotkey, llm, mcp, plus referenced others).
- crates/core/src/{error,hardware,recommendation,paths}.rs +
crates/audio/src/wav.rs + crates/llm/src/model_manager.rs +
crates/cloud-providers/src/keystore.rs + crates/mcp/src/lib.rs —
doc comments and a model-manager user-agent string.
- Caught on final pass: BroadcastChannel("magnotia_task_sync") -> ...
("lumotia_task_sync"); magnotia_locale i18n localStorage key
renamed + migration shim added; CSS keyframe names
magnotiaPulse / magnotiaBar / magnotiaFade renamed in the design-
system kit; magnotia_viewer_item / magnotia_viewer_mode handoff
keys renamed in HistoryPage + viewer/+page.svelte; src/assets/
wordmark.svg text.
- src-tauri/src/lib.rs comment cleanup ("magnotia era" was sed'd
to "lumotia era" earlier — restored).
Preserved (intentional):
- crates/core/src/paths.rs — keeps "magnotia" / "Magnotia" / ".magnotia"
legacy detection strings in legacy_and_target_paths() so the
migration shim can still find user data from the magnotia era.
- src/lib/stores/{page,focusTimer}.svelte.ts + src/lib/i18n/index.ts
— migration call sites reference the legacy magnotia keys
deliberately.
- docs/handovers/ — historical audit trail.
cargo build --workspace passes. npm run check: 0 errors / 0 warnings
(3958 files). cargo test --workspace: 339 pass / 0 fail.
Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
5.9 KiB
name, type, slice, last_verified
| name | type | slice | last_verified |
|---|---|---|---|
| LLM decompose_task surface | architecture-map-page | 04-llm-formatting-mcp | 2026/05/09 |
LLM decompose_task surface
Where you are: Architecture map → LLM, Formatting, MCP → decompose_task
Plain English summary. decompose_task takes a task description and returns 3 to 7 short imperative micro-steps. The output is a JSON array of strings, constrained at the GBNF level so the model literally cannot emit fewer than three or more than seven. A feedback-conditioned variant adds few-shot examples from the user's HITL corrections.
At a glance
- Crate:
lumotia-llm - Path:
crates/llm/src/lib.rs:254(decompose_task) and:267(decompose_task_with_feedback) - LOC: ~40 across both methods
- Public surface:
pub fn decompose_task(&self, task_text: &str) -> Result<Vec<String>, EngineError>pub fn decompose_task_with_feedback(&self, task_text: &str, examples: &[prompts::FeedbackExample]) -> Result<Vec<String>, EngineError>- Re-export not exposed at crate root: callers get
prompts::FeedbackExamplevialumotia_llm::prompts::FeedbackExample(thepromptsmodule ispub mod prompts;).
- External deps that matter: GBNF sampler from llama-cpp-2;
serde_jsonfor the array parse. - Tauri command that calls this (slice 2, best guess): the only call site is
src-tauri/src/commands/tasks.rs:322—engine.decompose_task_with_feedback(&parent_text, &examples)— invoked from adecompose_task_*_cmd(the file's helper name; see slice 2's tasks page when written).
What's in here
decompose_task (crates/llm/src/lib.rs:254)
Convenience wrapper that calls decompose_task_with_feedback(task_text, &[]). Behaviour identical to the conditioned variant with no examples.
decompose_task_with_feedback (crates/llm/src/lib.rs:267)
Steps:
- Borrow the loaded model via
loaded_model_arc().EngineError::NotLoadedif no model is loaded. - Build the system prompt:
prompts::build_conditioned_system_prompt(prompts::DECOMPOSE_TASK_SYSTEM, examples). With an emptyexamplesslice, the base prompt is returned unchanged. With non-empty examples, a few-shot block is appended (seellm-prompts-and-grammars.mdfor the rendering rules). - Render a chat prompt with two messages —
("system", system)and("user", &format!("Task: {task_text}")). - Call
generatewith:max_tokens: 512temperature: 0.0stop_sequences: ["<|im_end|>", "<|im_end_of_text|>"]grammar: Some(grammars::TASK_ARRAY_GRAMMAR.to_string())
- Parse the raw output via
parse_string_array(crates/llm/src/lib.rs:489):serde_json::from_str::<Vec<String>>then trim, drop empties, dedupe case-insensitively while preserving first-seen ordering.
The 3-to-7 lower and upper bound is enforced by the GBNF, not by Rust code. The parse_string_array helper is happy to return arrays of any size; TASK_ARRAY_GRAMMAR makes that hypothetical impossible.
Feedback examples
prompts::FeedbackExample carries (input: String, original_output: Option<String>, corrected_output: Option<String>). The renderer prefers corrected_output over original_output so a user's edits beat a thumbs-up on the original. Empty inputs are skipped. Examples without any usable output (no original, no correction) are skipped. See crates/llm/src/prompts.rs:69 for the renderer and :93 for the prompt-builder.
Data flow
(task_text: &str, examples: &[FeedbackExample])
→ loaded_model_arc()
→ build_conditioned_system_prompt(DECOMPOSE_TASK_SYSTEM, examples)
(returns base prompt unchanged when examples is empty)
→ render_chat_prompt([(system, system), (user, "Task: {task_text}")])
→ generate(prompt, GenerationConfig {
max_tokens: 512, temp: 0.0,
stops: [<|im_end|>, <|im_end_of_text|>],
grammar: Some(TASK_ARRAY_GRAMMAR),
})
→ parse_string_array(raw)
→ serde_json::from_str::<Vec<String>>
→ trim + drop empties + dedupe (case-insensitive, first-seen)
→ Vec<String>
Prompts and grammars
- System prompt:
prompts::DECOMPOSE_TASK_SYSTEMatcrates/llm/src/prompts.rs:1. Seellm-prompts-and-grammars.mdfor the full text. - GBNF:
grammars::TASK_ARRAY_GRAMMARatcrates/llm/src/grammars.rs:16. Encodes "open bracket, exactly three strings, then up to four optional more strings, then close bracket". Recursiverest3..rest6chain is what bounds the array length to 3–7.
Watch-outs
- The GBNF is the source of truth for 3–7. The system prompt also says "between 3 and 7", but the model's only actual constraint is the grammar. If the GBNF is ever loosened (e.g. for a free-text variant), the prompt will silently lose its size guarantee.
parse_string_arraydedupe is case-insensitive. Two micro-steps that differ only in casing collapse to one. This is desirable for the typical "Buy milk" / "buy milk" failure mode, but a niche prompt that legitimately asks for case variations would lose data.EngineError::InvalidJsonsurfaces malformed grammar output. In practice the GBNF prevents this, but aLlamaSampler::grammarruntime error or a tokenisation edge case can still produce a parse-able-by-llama but not-by-serde string. The error includes the raw output for debugging.- Stop sequences fire after detokenisation. A token boundary that splits
<|im_end|>is fine — the running buffer accumulates raw bytes via the UTF-8 decoder. max_tokens: 512is the array's total budget, not per item. Seven long imperative sentences will hit the cap. If a real-world task produces output near the ceiling, the JSON will be cut off andserde_json::from_strwill returnEngineError::InvalidJson.