earllm-build
Build, maintain, and extend the EarLLM One Android project — a Kotlin/Compose app that connects Bluetooth earbuds to an LLM via voice pipeline.
Best use case
earllm-build is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
Build, maintain, and extend the EarLLM One Android project — a Kotlin/Compose app that connects Bluetooth earbuds to an LLM via voice pipeline.
Teams using earllm-build should expect a more consistent output, faster repeated execution, less prompt rewriting.
When to use this skill
- You want a reusable workflow that can be run more than once with consistent structure.
When not to use this skill
- You only need a quick one-off answer and do not need a reusable workflow.
- You cannot install or maintain the underlying files, dependencies, or repository context.
Installation
Claude Code / Cursor / Codex
Manual Installation
- Download SKILL.md from GitHub
- Place it in
.claude/skills/earllm-build/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How earllm-build Compares
| Feature / Agent | earllm-build | Standard Approach |
|---|---|---|
| Platform Support | Not specified | Limited / Varies |
| Context Awareness | High | Baseline |
| Installation Complexity | Unknown | N/A |
Frequently Asked Questions
What does this skill do?
Build, maintain, and extend the EarLLM One Android project — a Kotlin/Compose app that connects Bluetooth earbuds to an LLM via voice pipeline.
Where can I find the source code?
You can find the source code on GitHub using the link provided at the top of the page.
SKILL.md Source
# EarLLM One — Build & Maintain ## Overview Build, maintain, and extend the EarLLM One Android project — a Kotlin/Compose app that connects Bluetooth earbuds to an LLM via voice pipeline. ## When to Use This Skill - When the user mentions "earllm" or related topics - When the user mentions "earbudllm" or related topics - When the user mentions "earbud app" or related topics - When the user mentions "voice pipeline kotlin" or related topics - When the user mentions "bluetooth audio android" or related topics - When the user mentions "sco microphone" or related topics ## Do Not Use This Skill When - The task is unrelated to earllm build - A simpler, more specific tool can handle the request - The user needs general-purpose assistance without domain expertise ## How It Works EarLLM One is a multi-module Android app (Kotlin + Jetpack Compose) that captures voice from Bluetooth earbuds, transcribes it, sends it to an LLM, and speaks the response back. ## Project Location `C:\Users\renat\earbudllm` ## Module Dependency Graph ``` app ──→ voice ──→ audio ──→ core-logging │ │ ├──→ bluetooth ──→ core-logging └──→ llm ──→ core-logging ``` ## Modules And Key Files | Module | Purpose | Key Files | |--------|---------|-----------| | **core-logging** | Structured logging, performance tracking | `EarLogger.kt`, `PerformanceTracker.kt` | | **bluetooth** | BT discovery, pairing, A2DP/HFP profiles | `BluetoothController.kt`, `BluetoothState.kt`, `BluetoothPermissions.kt` | | **audio** | Audio routing (SCO/BLE), capture, headset buttons | `AudioRouteController.kt`, `VoiceCaptureController.kt`, `HeadsetButtonController.kt` | | **voice** | STT (SpeechRecognizer + Vosk stub), TTS, pipeline | `SpeechToTextController.kt`, `TextToSpeechController.kt`, `VoicePipeline.kt` | | **llm** | LLM interface, stub, OpenAI-compatible client | `LlmClient.kt`, `StubLlmClient.kt`, `RealLlmClient.kt`, `SecureTokenStore.kt` | | **app** | UI, ViewModel, Service, Settings, all screens | `MainViewModel.kt`, `EarLlmForegroundService.kt`, 6 Compose screens | ## Build Configuration - **SDK**: minSdk 26, targetSdk 34, compileSdk 34 - **Build tools**: AGP 8.2.2, Kotlin 1.9.22, Gradle 8.5 - **Compose BOM**: 2024.02.00 - **Key deps**: OkHttp, AndroidX Security (EncryptedSharedPreferences), DataStore, Media ## Target Hardware | Device | Model | Key Details | |--------|-------|-------------| | Phone | Samsung Galaxy S24 Ultra | Android 14, One UI 6.1, Snapdragon 8 Gen 3 | | Earbuds | Xiaomi Redmi Buds 6 Pro | BT 5.3, A2DP/HFP/AVRCP, ANC, LDAC | ## Critical Technical Facts These are verified facts from official documentation and device testing. Treat them as ground truth when making decisions: 1. **Bluetooth SCO is limited to 8kHz mono input** on most devices. Some support 16kHz mSBC. BLE Audio (Android 12+, `TYPE_BLE_HEADSET = 26`) supports up to 32kHz stereo. Always prefer BLE Audio when available. 2. **`startBluetoothSco()` is deprecated since Android 12 (API 31).** Use `AudioManager.setCommunicationDevice(AudioDeviceInfo)` and `clearCommunicationDevice()` instead. The project already implements both paths in `AudioRouteController.kt`. 3. **Samsung One UI 7/8 has a known HFP corruption bug** where A2DP playback corrupts the SCO link. The app handles this with silence detection and automatic fallback to the phone's built-in mic. 4. **Redmi Buds 6 Pro tap controls must be set to "Default" (Play/Pause)** in the Xiaomi Earbuds companion app. If set to ANC or custom functions, events are handled internally by the earbuds and never reach Android. 5. **Android 14+ requires `FOREGROUND_SERVICE_MICROPHONE` permission** and `foregroundServiceType="microphone"` in the service declaration. `RECORD_AUDIO` must be granted before `startForeground()`. 6. **`VOICE_COMMUNICATION` audio source enables AEC** (Acoustic Echo Cancellation), which is critical to prevent TTS audio output from feeding back into the STT microphone input. Never change this source without understanding the echo implications. 7. **Never play TTS (A2DP) while simultaneously recording via SCO.** The correct sequence is: stop playback → switch to HFP → record → switch to A2DP → play response. ## Data Flow ``` Headset button tap → MediaSession (HeadsetButtonController) → TapAction.RECORD_TOGGLE → VoicePipeline.toggleRecording() → VoiceCaptureController captures PCM (16kHz mono) → stopRecording() returns ByteArray → SpeechToTextController.transcribe(pcmData) → LlmClient.chat(messages) → TextToSpeechController.speak(response) → Audio output via A2DP to earbuds ``` ## Adding A New Feature 1. Identify which module(s) are affected 2. Read existing code in those modules first 3. Follow the StateFlow pattern — expose state via `MutableStateFlow` / `StateFlow` 4. Update `MainViewModel.kt` if the feature needs UI integration 5. Add unit tests in the module's `src/test/` directory 6. Update docs if the feature changes behavior ## Modifying Audio Capture - `VoiceCaptureController.kt` handles PCM recording at 16kHz mono - WAV headers use hex byte values (not char literals) to avoid shell quoting issues - VU meter: RMS calculation → dB conversion → normalized 0-1 range - Buffer size: `getMinBufferSize().coerceAtLeast(4096)` ## Changing Bluetooth Behavior - `BluetoothController.kt` manages discovery, pairing, profile proxies - Earbuds detection uses name heuristics: "buds", "earbuds", "tws", "pods", "ear" - Always handle both Bluetooth Classic and BLE Audio paths ## Modifying The Llm Integration - `LlmClient.kt` defines the interface — keep it generic - `StubLlmClient.kt` for offline testing (500ms simulated delay) - `RealLlmClient.kt` uses OkHttp to call OpenAI-compatible APIs - API keys stored in `SecureTokenStore.kt` (EncryptedSharedPreferences) ## Generating A Build Artifact After code changes, regenerate the ZIP: ```powershell ## From Project Root powershell -Command "Remove-Item 'EarLLM_One_v1.0.zip' -Force -ErrorAction SilentlyContinue; Compress-Archive -Path (Get-ChildItem -Exclude '*.zip','_zip_verify','.git') -DestinationPath 'EarLLM_One_v1.0.zip' -Force" ``` ## Running Tests ```bash ./gradlew test --stacktrace # Unit tests ./gradlew connectedAndroidTest # Instrumented tests (device required) ``` ## Phase 2 Roadmap - Real-time streaming voice conversation with LLM through earbuds - Smart assistant: categorize speech into meetings, shopping lists, memos, emails - Vosk offline STT integration (currently stubbed) - Wake-word detection to avoid keeping SCO open continuously - Streaming TTS (Android built-in TTS does NOT support streaming) ## Stt Engine Reference | Engine | Size | WER | Streaming | Best For | |--------|------|-----|-----------|----------| | Vosk small-en | 40 MB | ~10% | Yes | Real-time mobile | | Vosk lgraph | 128 MB | ~8% | Yes | Better accuracy | | Whisper tiny | 40 MB | ~10-12% | No (batch) | Post-utterance polish | | Android SpeechRecognizer | 0 MB | varies | Yes | Online, no extra deps | ## Best Practices - Provide clear, specific context about your project and requirements - Review all suggestions before applying them to production code - Combine with other complementary skills for comprehensive analysis ## Common Pitfalls - Using this skill for tasks outside its domain expertise - Applying recommendations without understanding your specific context - Not providing enough project context for accurate analysis ## Limitations - Use this skill only when the task clearly matches the scope described above. - Do not treat the output as a substitute for environment-specific validation, testing, or expert review. - Stop and ask for clarification if required inputs, permissions, safety boundaries, or success criteria are missing.
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