Five-slice navigable map of the entire codebase under
docs/architecture-map/. Each slice is a self-contained
breadcrumbed sub-tree:
01-frontend (16) Svelte/SvelteKit UI
02-tauri-runtime (26) src-tauri commands + lifecycle
03-audio-transcription (16) audio + transcription crates
04-llm-formatting-mcp (19) llm, ai-formatting, mcp, cloud
05-core-storage-hotkey-build core, storage, hotkey, workspace,
(26) CI, dev glue
Plus master README.md and data-flow-end-to-end.md tracing
audio bytes from microphone to FTS5 search to MCP read.
Generated by 5 parallel subagents on 2026/05/09 against
HEAD 3c47000. Each page has YAML frontmatter, file:line code
refs, sibling cross-links, plain-English summaries.
Aggregated debt surfaced (full lists in master README):
RB-08 macOS power assertion, schema head drift v14 vs v15,
VAD blocked on ort version conflict, streaming primitives
not wired into live.rs, no prompt versioning, MCP has no
auth, cloud-providers in-memory keystore, SettingsPage
2 484 LOC, commands/live.rs 1 737 LOC, dual theme system,
brand rename to Lumenote pending across the codebase.
Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
6.0 KiB
name, type, slice, last_verified
| name | type | slice | last_verified |
|---|---|---|---|
| LLM tests | architecture-map-page | 04-llm-formatting-mcp | 2026/05/09 |
LLM tests
Where you are: Architecture map → LLM, Formatting, MCP → Tests
Plain English summary. Two integration smoke tests live under crates/llm/tests/. Both gate on the MAGNOTIA_LLM_TEST_MODEL environment variable and skip silently when it is not set. They exist to verify that real model loading and inference works end-to-end, but never run in default cargo test runs because model load is heavy.
At a glance
- Crate:
magnotia-llm - Paths:
crates/llm/tests/smoke.rs— 62 LOCcrates/llm/tests/content_tags_smoke.rs— 48 LOC
- Public surface: none — they are tests.
- External deps that matter:
magnotia_llm::LlmEngine,LlmModelId,is_valid_intent,GenerationConfig. Plus[dev-dependencies] tempfile = "3"(used by unit tests inmodel_manager.rs, not the smoke tests). - Tauri command that calls this: n/a — tests.
What's in here
smoke.rs — llama_cpp_2_smoke_generates_and_wraps
Verifies the four high-level surfaces against a real loaded model.
Path-and-line summary:
- Env-var gate at
crates/llm/tests/smoke.rs:19-25. - Loads the 2B tier (
LlmModelId::Qwen3_5_2B_Q4) at the path the env var supplies, withuse_gpu: true. engine.generate("Write exactly one short greeting.", ...)withmax_tokens: 32,stop_sequences: ["\n"], no grammar. Asserts the result is non-empty.engine.cleanup_text(<filler-aware system prompt>, "um hello there like general kenobi"). Asserts non-empty.engine.extract_tasks("I need to call the plumber tomorrow and buy milk."). Asserts non-empty.engine.decompose_task("Plan a weekend trip to the coast"). Asserts the result has between 3 and 7 items inclusive (the GBNF guarantee).
Verified-against block at the top of the file documents the llama-cpp-2 0.1.144 surface used: LlamaBackend, LlamaModel, LlamaContextParams, LlamaSampler. Useful when bumping the dependency.
content_tags_smoke.rs — extract_content_tags_returns_valid_pair
Verifies the Phase 9 extract_content_tags surface against a real loaded model.
Path-and-line summary:
- Env-var gate at
crates/llm/tests/content_tags_smoke.rs:17-23. SameMAGNOTIA_LLM_TEST_MODELassmoke.rs. - Loads the 2B tier (the smoke tests deliberately use the smallest tier so they run quickly even on modest hardware).
- Realistic transcript: a multi-sentence dictation about a grant application and a meeting.
- Calls
engine.extract_content_tags(transcript)and asserts:tags.topic.len() >= 3- every char in
tags.topicisis_ascii_lowercase(),is_ascii_digit(), or'-' is_valid_intent(&tags.intent)returns true
The character-class assertion mirrors CONTENT_TAGS_GRAMMAR's topic-char ::= [a-z0-9-] rule: if the GBNF regresses, this test catches it on real output, not just on synthetic GBNF output.
Run command (from both files' header comments)
MAGNOTIA_LLM_TEST_MODEL=/path/to/model.gguf cargo test -p magnotia-llm \
--test content_tags_smoke -- --nocapture
--test smoke for the older test. --nocapture lets the env-var-not-set message surface in CI.
Unit tests live next to source
In addition to the integration smoke tests, every source file in crates/llm/src/ carries a #[cfg(test)] mod tests:
crates/llm/src/lib.rs:504—LlmEnginelifecycle and helper functions:generate_fails_when_not_loaded(:508)decompose_returns_error_when_not_loaded(:517)default_creates_unloaded_engine(:525)engine_is_clone_and_shares_state(:531)parse_string_array_trims_and_dedupes(:538)first_stop_index_finds_earliest_match(:544)prompt_preflight_rejects_oversized_prompt_tokens(:551)prompt_preflight_keeps_prompts_within_budget(:565)
crates/llm/src/model_manager.rs:402— model path, tier recommendation,download_implresume + SHA verification using a TCP fixture server.crates/llm/src/prompts.rs:112— feedback prompt builder behaviour.
Default cargo test -p magnotia-llm runs the unit tests (no model load) plus skips both smoke tests. CI typically runs at this scope.
Data flow (for the smoke tests)
env MAGNOTIA_LLM_TEST_MODEL
→ if unset: print message, return (no failure)
→ else: PathBuf
→ LlmEngine::new()
→ engine.load_model(LlmModelId::Qwen3_5_2B_Q4, &path, use_gpu: true)
→ engine.generate / cleanup_text / extract_tasks / decompose_task / extract_content_tags
→ assertions on shape (non-empty, range, character-class, closed-set)
Watch-outs
- No assertion on output content. The smoke tests verify the contract (non-empty, JSON-array shape, character class, closed set) but never assert on what the model actually said. A model that produces semantic garbage would still pass. The shape contract is what we intentionally pin; semantic quality is reviewed by the test running engineer.
- Smoke tests need a 2B model file. The 2B Q4_K_M GGUF is ~1.28 GB; downloading it once is a manual prerequisite. CI is not currently configured to fetch it.
- Smoke tests load the 2B tier specifically. The smoke test was written against the smallest tier so it runs in a few seconds on a modest machine. Running on the 27B tier through this path would take minutes per test and would saturate VRAM.
- No content_tags smoke for the empty-transcript error path. The test only exercises the happy path. The error path is covered by
extract_content_tags's logic and would only surface here if a regression broke the typed deserialise. MAGNOTIA_LLM_TEST_MODELis the only env-gate. No second gate for "I have a Vulkan-capable GPU available".use_gpu: trueis hard-coded; on a CPU-only machine the test will still pass but run slower and produce a llama.cpp warning.