Files
Lumotia/crates/core/src/recommendation.rs
Claude 89c63891fa chore: rebrand from Kon/Corbie to Magnotia
Replace all instances of the legacy product names "Kon" and "Corbie" with
"Magnotia" across user-facing copy, code identifiers, package names, bundle
ids, file paths, and documentation. Preserves the unrelated "konsole" (KDE
terminal) reference and the parent CORBEL company name.

- Renames 10 Rust crates (kon-* → magnotia-*) and the tauri binary
- Updates package.json, tauri.conf.json (productName + identifier)
- Renames CSS classes (kon-rh-* → magnotia-rh-*) and animations
- Renames brand and roadmap docs
- Regenerates Cargo.lock and package-lock.json

Verified: svelte-check passes; pure-rust crates compile under new names.
2026-04-30 13:06:55 +00:00

198 lines
5.7 KiB
Rust

use crate::hardware::SystemProfile;
use crate::model_registry::{all_models, AccuracyTier, Engine, ModelEntry, SpeedTier};
use crate::types::Megabytes;
/// A model's suitability score for a given system. Higher is better.
/// No boolean flags — position in the ranked list conveys recommendation.
pub struct ScoredModel {
pub entry: &'static ModelEntry,
pub score: f64,
pub reason: String,
}
/// Scores a single model against a system profile.
/// Pure function, no side effects.
pub fn score_model(model: &'static ModelEntry, profile: &SystemProfile) -> Option<ScoredModel> {
if model.ram_required > profile.ram {
return None;
}
let mut score = 0.0;
let mut reasons: Vec<String> = Vec::new();
score += match model.speed_tier {
SpeedTier::Instant => 40.0,
SpeedTier::Fast => 30.0,
SpeedTier::Moderate => 20.0,
SpeedTier::Slow => 10.0,
};
score += match model.accuracy_tier {
AccuracyTier::Excellent => 30.0,
AccuracyTier::Great => 20.0,
AccuracyTier::Good => 10.0,
};
if let Some(gpu) = &profile.gpu {
let has_accel = match model.engine {
Engine::Whisper => {
gpu.acceleration.metal || gpu.acceleration.vulkan || gpu.acceleration.cuda
}
Engine::Parakeet | Engine::Moonshine => {
gpu.acceleration.cuda || gpu.acceleration.vulkan
}
};
if has_accel {
score += 15.0;
reasons.push("GPU accelerated on your system".into());
}
}
let headroom = Megabytes(profile.ram.0.saturating_sub(model.ram_required.0));
if headroom > Megabytes::from_gb(4.0) {
score += 10.0;
}
let reason = if reasons.is_empty() {
model.description.to_string()
} else {
reasons.join(". ")
};
Some(ScoredModel {
entry: model,
score,
reason,
})
}
/// Scores all models and returns them ranked.
/// Index 0 is the recommendation. No flag arguments.
pub fn rank_recommendations(profile: &SystemProfile) -> Vec<ScoredModel> {
let mut scored: Vec<ScoredModel> = all_models()
.iter()
.filter_map(|model| score_model(model, profile))
.collect();
scored.sort_by(|a, b| {
b.score
.partial_cmp(&a.score)
.unwrap_or(std::cmp::Ordering::Equal)
});
scored
}
#[cfg(test)]
mod tests {
use super::*;
use crate::hardware::{CpuFeatures, CpuInfo, GpuAcceleration, GpuInfo, GpuVendor, Os};
fn profile_with_ram(ram: Megabytes) -> SystemProfile {
SystemProfile {
ram,
cpu: CpuInfo {
logical_processors: 8,
brand: "Test CPU".into(),
features: CpuFeatures::default(),
},
gpu: None,
os: Os::Windows,
}
}
fn profile_with_gpu(ram: Megabytes) -> SystemProfile {
SystemProfile {
ram,
cpu: CpuInfo {
logical_processors: 8,
brand: "Test CPU".into(),
features: CpuFeatures::default(),
},
gpu: Some(GpuInfo {
vendor: GpuVendor::Nvidia,
vram: Megabytes(8192),
acceleration: GpuAcceleration {
cuda: true,
metal: false,
vulkan: true,
},
}),
os: Os::Windows,
}
}
#[test]
fn score_model_excludes_models_exceeding_available_ram() {
let profile = profile_with_ram(Megabytes(256));
let model = all_models()
.iter()
.find(|m| m.ram_required > Megabytes(256))
.expect("need a model larger than 256 MB");
let result = score_model(model, &profile);
assert!(result.is_none());
}
#[test]
fn score_model_includes_models_fitting_in_ram() {
let profile = profile_with_ram(Megabytes(16384));
let model = &all_models()[0];
let result = score_model(model, &profile);
assert!(result.is_some());
}
#[test]
fn score_model_boosts_gpu_accelerated_models() {
let model = all_models()
.iter()
.find(|m| m.engine == Engine::Parakeet)
.expect("need a Parakeet model");
let gpu_score = score_model(model, &profile_with_gpu(Megabytes(16384)))
.unwrap()
.score;
let cpu_score = score_model(model, &profile_with_ram(Megabytes(16384)))
.unwrap()
.score;
assert!(gpu_score > cpu_score);
}
#[test]
fn rank_recommendations_places_highest_score_first() {
let profile = profile_with_ram(Megabytes(16384));
let ranked = rank_recommendations(&profile);
assert!(ranked.len() >= 2);
assert!(ranked[0].score >= ranked[1].score);
}
#[test]
fn rank_recommendations_returns_empty_for_very_low_ram() {
let profile = profile_with_ram(Megabytes(128));
let ranked = rank_recommendations(&profile);
assert!(ranked.is_empty());
}
#[test]
fn parakeet_is_top_recommendation_when_hardware_supports_it() {
// Any machine that fits Parakeet in RAM should see it ranked first —
// Parakeet-TDT is English-only but beats Whisper on English at lower
// latency, so it's Magnotia's default recommendation when eligible.
// (Users on non-English languages adjust manually — handled at the
// settings-UI level, not at the scoring level for now.)
let profile = profile_with_ram(Megabytes(16384));
let ranked = rank_recommendations(&profile);
let top = ranked.first().expect("at least one model ranks");
assert_eq!(top.entry.engine, Engine::Parakeet);
}
}