13 KiB
keydr - Terminal Typing Tutor Architecture Plan
Context
Problem: No terminal-based typing tutor exists that combines keybr.com's adaptive learning algorithm (gradual letter unlocking, per-key confidence tracking, phonetic pseudo-word generation) with code syntax training. Existing tools either lack adaptive learning entirely (ttyper, smassh, typr) or have incomplete implementations (gokeybr intentionally ignores error stats, ivan-volnov/keybr is focused on Anki integration).
Goal: Build a full-featured Rust TUI typing tutor that clones keybr.com's core algorithm, extends it to code syntax training, and provides a polished statistics dashboard - all in the terminal.
Research Summary
keybr.com Algorithm (from reading source: packages/keybr-lesson/lib/guided.ts, keybr-phonetic-model/lib/phoneticmodel.ts, keybr-result/lib/keystats.ts)
Letter Unlocking: Letters sorted by frequency. Starts with minimum 6. New letter unlocked only when ALL included keys have confidence >= 1.0. Weakest key (lowest confidence) gets "focused" - drills bias heavily toward it.
Confidence Model: confidence = target_time_ms / filtered_time_to_type, where target_time_ms = 60000 / target_speed_cpm (default target: 175 CPM ~ 35 WPM). filtered_time_to_type is an exponential moving average (alpha=0.1) of raw per-key typing times.
Phonetic Word Generation: Markov chain transition table maps character bigrams to next-character probability distributions. Chain is walked with a Filter that restricts to unlocked characters only. Focused letter gets prefix biasing - the generator searches for chain states containing the focused letter and starts from there. Words are 3-10 chars; space probability boosted by 1.3^word_length to keep words short.
Scoring: score = (speed_cpm * complexity) / (errors + 1) * (length / 50)
Learning Rate: Polynomial regression (degree 1-3 based on sample count) on last 30 per-key time samples, with R^2 threshold of 0.5 for meaningful predictions.
Key Insights from Prior Art
- gokeybr: Trigram-based scoring with
frequency * effort(speed)is a good complementary approach. Its Bellman-Ford shortest-path for drill generation is clever but complex. - ttyper: Clean Rust/Ratatui architecture to reference. Uses
crosstermevents,State::Test | State::Resultsenum,Configfrom TOML. Dependencies:ratatui ^0.25,crossterm ^0.27,clap,serde,toml,rand,rust-embed. - keybr-code: Uses PEG grammars to generate code snippets for 12+ languages. Each grammar produces realistic syntax patterns.
Architecture
Technology Stack
- TUI: Ratatui + Crossterm (the standard Rust TUI stack, battle-tested by ttyper and many others)
- CLI: Clap (derive)
- Serialization: Serde + serde_json + toml
- HTTP: Reqwest (blocking, for GitHub API)
- Persistence: JSON files via
dirscrate (XDG paths) - Embedded Assets: rust-embed
- Error Handling: anyhow + thiserror
- Time: chrono
Project Structure
src/
main.rs # CLI parsing, terminal init, main event loop
app.rs # App state machine (TEA pattern), message dispatch
event.rs # Crossterm event polling thread -> AppMessage channel
config.rs # Config loading (~/.config/keydr/config.toml)
engine/
mod.rs
letter_unlock.rs # Letter ordering, unlock logic, focus selection
key_stats.rs # Per-key EMA, confidence, best-time tracking
scoring.rs # Lesson score formula, gamification (levels, streaks)
learning_rate.rs # Polynomial regression for speed prediction
filter.rs # Active character set filter
generator/
mod.rs # TextGenerator trait
phonetic.rs # Markov chain pseudo-word generator
transition_table.rs # Binary transition table (de)serialization
code_syntax.rs # PEG grammar interpreter for code snippets
passage.rs # Book passage loading
github_code.rs # GitHub API code fetching + caching
session/
mod.rs
lesson.rs # LessonState: target text, cursor, timing
input.rs # Keystroke processing, match/mismatch, backspace
result.rs # LessonResult computation from raw events
store/
mod.rs # StorageBackend trait
json_store.rs # JSON file persistence with atomic writes
schema.rs # Serializable data models
ui/
mod.rs # Root render dispatcher
theme.rs # Theme TOML parsing, color resolution
layout.rs # Responsive screen layout (ratatui Rect splitting)
components/
mod.rs
typing_area.rs # Main typing widget (correct/incorrect/pending coloring)
stats_sidebar.rs # Live WPM, accuracy, key confidence bars
keyboard_diagram.rs # Visual keyboard with finger colors + focus highlight
progress_bar.rs # Letter unlock progress
chart.rs # WPM-over-time line charts (ratatui Chart widget)
menu.rs # Mode selection menu
dashboard.rs # Post-lesson results view
stats_dashboard.rs # Historical statistics with graphs
keyboard/
mod.rs
layout.rs # KeyboardLayout, key positions, finger assignments
finger.rs # Finger enum, hand assignment
assets/
models/en.bin # Pre-built English phonetic transition table
themes/*.toml # Built-in themes (catppuccin, dracula, gruvbox, nord, etc.)
grammars/*.toml # Code syntax grammars (rust, python, js, go, etc.)
layouts/*.toml # Keyboard layouts (qwerty, dvorak, colemak)
Core Data Flow
┌─────────────┐
│ Event Loop │
└──────┬──────┘
│ AppMessage
▼
┌──────────┐ ┌─────────────────┐ ┌───────────┐
│Generator │────▶│ App State │────▶│ UI Layer │
│(phonetic,│ │ (TEA pattern) │ │ (ratatui) │
│ code, │ │ │ │ │
│ passage) │ │ ┌─────────────┐ │ └───────────┘
└──────────┘ │ │ Engine │ │
│ │ (key_stats, │ │ ┌───────────┐
│ │ unlock, │ │────▶│ Store │
│ │ scoring) │ │ │ (JSON) │
│ └─────────────┘ │ └───────────┘
└─────────────────┘
App State Machine
Start → Menu
Menu → Lesson (on mode select)
Menu → StatsDashboard (on 's')
Menu → Settings (on 'c')
Lesson → LessonResult (on completion or ESC)
LessonResult → Lesson (on 'r' retry)
LessonResult → Menu (on 'q'/ESC)
LessonResult → StatsDashboard (on 's')
StatsDashboard → Menu (on ESC)
Settings → Menu (on ESC, saves config)
Any → Quit (on Ctrl+C)
The Adaptive Algorithm
Step 1 - Letter Order: English frequency order: e t a o i n s h r d l c u m w f g y p b v k j x q z
Step 2 - Unlock Logic (after each lesson):
min_letters = 6
for each letter in frequency_order:
if included.len() < min_letters:
include(letter)
elif all included keys have confidence >= 1.0:
include(letter)
else:
break
Step 3 - Focus Selection:
focused = included_keys
.filter(|k| k.confidence < 1.0)
.min_by(|a, b| a.confidence.cmp(&b.confidence))
Step 4 - Stats Update (per key, after each lesson):
alpha = 0.1
stat.filtered_time = alpha * new_time + (1 - alpha) * stat.filtered_time
stat.best_time = min(stat.best_time, stat.filtered_time)
stat.confidence = (60000.0 / target_speed_cpm) / stat.filtered_time
Step 5 - Text Generation Biasing:
- Only allow characters in the unlocked set (Filter)
- When a focused letter exists, find Markov chain prefixes containing it and start words from those prefixes
- This naturally creates words heavy in the weak letter
Code Syntax Extension
After all 26 prose letters are unlocked, the system transitions to code syntax training:
- Introduces code-relevant characters:
{ } [ ] ( ) < > ; : . , = + - * / & | ! ? _ " ' # @ \ ~ ^ % - Uses PEG grammars per language to generate realistic code snippets
- Gradual character unlocking continues for syntax characters
- Users select their target programming languages in config
Theme System
Themes are TOML files with semantic color names:
[colors]
bg = "#1e1e2e"
text_correct = "#a6e3a1"
text_incorrect = "#f38ba8"
text_pending = "#585b70"
text_cursor_bg = "#f5e0dc"
focused_key = "#f9e2af"
# ... etc
Resolution order: CLI flag → config → user themes dir → bundled → default fallback.
Built-in themes: Catppuccin Mocha, Catppuccin Latte, Dracula, Gruvbox Dark, Nord, Tokyo Night, Solarized Dark, One Dark, plus an ANSI-safe default.
Persistence
JSON files in ~/.local/share/keydr/:
key_stats.json- Per-key EMA, confidence, sample historylesson_history.json- Last 500 lesson resultsprofile.json- Unlock state, settings, gamification data
Atomic writes (temp file → fsync → rename) to prevent corruption. Schema version field for forward-compatible migrations.
Implementation Phases
Phase 1: Foundation (Core Loop + Basic Typing)
Create the terminal init/restore with crossterm, event polling thread, TEA-based App state machine, basic typing against a hardcoded word list with correct/incorrect coloring.
Key files: main.rs, app.rs, event.rs, session/lesson.rs, session/input.rs, ui/components/typing_area.rs, ui/layout.rs
Phase 2: Adaptive Engine + Statistics
Implement per-key stats (EMA, confidence), letter unlocking, focus selection, scoring, live stats sidebar, and progress bar.
Key files: engine/key_stats.rs, engine/letter_unlock.rs, engine/scoring.rs, engine/filter.rs, session/result.rs, ui/components/stats_sidebar.rs, ui/components/progress_bar.rs
Phase 3: Phonetic Text Generation
Build the English transition table (offline tool or build script), implement the Markov chain walker with filter and focus biasing, integrate with the lesson system.
Key files: generator/transition_table.rs, generator/phonetic.rs, generator/mod.rs, a build.rs or tools/ script for table generation
Phase 4: Persistence + Theming
JSON storage backend, atomic writes, config loading, theme parsing, built-in theme files, apply themes throughout all UI components.
Key files: store/json_store.rs, store/schema.rs, config.rs, ui/theme.rs, assets/themes/*.toml
Phase 5: Results + Dashboard
Post-lesson results screen, historical stats dashboard with charts (ratatui Chart widget), learning rate prediction.
Key files: ui/components/dashboard.rs, ui/components/stats_dashboard.rs, ui/components/chart.rs, engine/learning_rate.rs
Phase 6: Code Practice + Passages
PEG grammar interpreter for code syntax generation, book passage mode, GitHub code fetching + caching.
Key files: generator/code_syntax.rs, generator/passage.rs, generator/github_code.rs, assets/grammars/*.toml
Phase 7: Keyboard Diagram + Layouts
Visual keyboard widget with finger color coding, multiple layout support (QWERTY, Dvorak, Colemak).
Key files: keyboard/layout.rs, keyboard/finger.rs, ui/components/keyboard_diagram.rs, assets/layouts/*.toml
Phase 8: Polish + Gamification
Level system, streaks, badges, CLI completeness, error handling, performance, testing, documentation.
Verification
After each phase, verify by:
cargo buildcompiles without errorscargo testpasses all unit tests- Manual testing: launch
cargo run, exercise the new features, verify UI rendering - For Phase 2+: verify letter unlocking by typing accurately and watching new letters appear
- For Phase 3+: verify generated words only contain unlocked letters and bias toward the focused key
- For Phase 4+: verify stats persist across app restarts
- For Phase 5+: verify charts render correctly with historical data
Dependencies (Cargo.toml)
[dependencies]
ratatui = "0.30"
crossterm = "0.28"
clap = { version = "4.5", features = ["derive"] }
serde = { version = "1.0", features = ["derive"] }
serde_json = "1.0"
toml = "0.8"
rand = { version = "0.8", features = ["small_rng"] }
reqwest = { version = "0.12", features = ["json", "blocking"] }
dirs = "6.0"
rust-embed = "8.5"
chrono = { version = "0.4", features = ["serde"] }
anyhow = "1.0"
thiserror = "2.0"