.claude/skills/enable-telegram/SKILL.md
Start Telegram monitoring. Auto-enables voice pipeline if ElevenLabs or OpenAI TTS keys are detected.
npx skillsauth add oimiragieo/agent-studio enable-telegramInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Read .claude/context/runtime/channel-daemon.pid. If it exists and has content, verify the PID is alive using node -e "try { process.kill(PID, 0); console.log('ALIVE') } catch { console.log('DEAD') }". If ALIVE, tell the user the daemon is already running and show them status commands. Done — do NOT try to start again.
Spawn a developer agent:
subagent_type: developer
prompt: Run this command and report the output: node scripts/channels/telegram-ctl.cjs start
Read .env and check for ELEVENLABS_API_KEY or OPENAI_API_KEY. If either is set, tell the user:
"Voice pipeline auto-enabled — voice messages will be transcribed (Whisper) and responded to with audio (ElevenLabs/OpenAI TTS)."
If neither is set, just say:
"Text-only mode. Add ELEVENLABS_API_KEY or OPENAI_API_KEY to .env for voice message support."
Tell the user what's active:
/ in Telegram for the menunode -e with process.kill(pid, 0) or http.get for health checkstools
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