From 64b2e3a5333cc752dc8353f37544e0f876e42d2a Mon Sep 17 00:00:00 2001 From: Jarvis Prime Date: Mon, 23 Mar 2026 00:34:04 +0000 Subject: [PATCH] Remove product references from blog post --- dist/posts/self-hosted-ai-stack/index.html | 12 ++++++------ src/pages/posts/self-hosted-ai-stack.md | 12 ++++++------ 2 files changed, 12 insertions(+), 12 deletions(-) diff --git a/dist/posts/self-hosted-ai-stack/index.html b/dist/posts/self-hosted-ai-stack/index.html index 2004218..0a634fc 100644 --- a/dist/posts/self-hosted-ai-stack/index.html +++ b/dist/posts/self-hosted-ai-stack/index.html @@ -5,28 +5,28 @@

The Stack

The core pieces are:

The whole thing runs on hardware I already owned. The only recurring cost is the LLM API.

Getting It Running

Piper and Whisper both run in Docker on TrueNAS. Piper is straightforward — pick a voice model, point it at the Wyoming port, done. Whisper took a bit more tuning. I’m running small.en which is a good balance of speed and accuracy for English transcription.

-

The OpenClaw agent framework is what ties it together. It handles the conversation loop, routes messages to the right tools, and manages the Telegram integration. Skills are just directories with a SKILL.md and some scripts — easy to add, easy to audit.

-

For the LLM proxy, kiro-anthropic sits between OpenClaw and the Anthropic API. It adds request logging, lets me swap models without touching agent config, and gives me a single place to manage the API key.

+

The agent framework is what ties it together. It handles the conversation loop, routes messages to the right tools, and manages the Telegram integration. Skills are just directories with a SKILL.md and some scripts — easy to add, easy to audit.

+

The LLM proxy sits between the agent and the Anthropic API. It adds request logging, lets me swap models without touching agent config, and gives me a single place to manage the API key.

Qwen3-TTS on the Mac runs via mlx-audio, which uses Apple Silicon’s Neural Engine. The voice cloning feature is genuinely impressive — give it a 3-second audio sample and it’ll match the voice reasonably well.

What Surprised Me

Piper is fast. I expected local TTS to be slow and robotic. Piper is neither. On TrueNAS (not a powerful machine), it generates speech at realtime speed or better. The voice quality isn’t Eleven Labs, but it’s completely usable for a personal assistant.

Whisper small.en is accurate enough. I was skeptical about running a smaller model, but it handles my voice well — probably 95% accuracy on normal speech. The only failures are proper nouns and technical jargon, which is expected. For a personal assistant that mostly hears the same vocabulary over and over, it’s fine.

The real cost is tokens, not compute. I assumed the bottleneck would be CPU/GPU. It’s not. The hardware handles everything comfortably. What actually costs money is the LLM API. I pulled traces from Opik and found 75 million input tokens across 100 traces. Context window size is the killer — long conversations with tool call history get expensive fast.

-

V8 memory limits in Docker will silently kill your agent. OpenClaw runs on Node.js. Docker containers have a default memory limit, and Node’s V8 heap will hit it and crash without a clear error. The fix is NODE_OPTIONS=--max-old-space-size=4096 in your container environment. I lost a few hours to this before finding it.

+

V8 memory limits in Docker will silently kill your agent. The agent framework runs on Node.js. Docker containers have a default memory limit, and Node’s V8 heap will hit it and crash without a clear error. The fix is NODE_OPTIONS=--max-old-space-size=4096 in your container environment. I lost a few hours to this before finding it.

The Numbers

Rough monthly costs running this setup:

The 75M input tokens I mentioned came from a period of heavy testing with long context windows. Normal usage is significantly lower. The lesson: be deliberate about what you include in the system prompt and conversation history. Every token in context costs money on both ends of the conversation.

What’s Next

diff --git a/src/pages/posts/self-hosted-ai-stack.md b/src/pages/posts/self-hosted-ai-stack.md index 6f3b39e..b9e15c5 100644 --- a/src/pages/posts/self-hosted-ai-stack.md +++ b/src/pages/posts/self-hosted-ai-stack.md @@ -12,10 +12,10 @@ I didn't buy new hardware for this. I used what I had: a TrueNAS server in my ho The core pieces are: -- **LLM**: Claude via [kiro-anthropic](https://github.com/openclaw/kiro), a local proxy that routes requests through my own Anthropic API key. No vendor lock-in, no shared rate limits, full visibility into what's being sent. +- **LLM**: Claude via a local reverse proxy that routes requests through my own Anthropic API key. No vendor lock-in, no shared rate limits, full visibility into what's being sent. - **TTS**: [Piper TTS](https://github.com/rhasspy/piper) running on TrueNAS via the [Wyoming protocol](https://github.com/rhasspy/wyoming). Also [Qwen3-TTS](https://huggingface.co/Qwen/Qwen3-TTS) on the Mac for voice cloning. - **STT**: [Whisper](https://github.com/openai/whisper) server on TrueNAS, exposed as an OpenAI-compatible `/v1/audio/transcriptions` endpoint. -- **Agent framework**: [OpenClaw](https://github.com/openclaw/openclaw) — open source, self-hosted, connects to Telegram and WhatsApp. +- **Agent framework**: An open-source agent framework — self-hosted, connects to Telegram and WhatsApp. The whole thing runs on hardware I already owned. The only recurring cost is the LLM API. @@ -23,9 +23,9 @@ The whole thing runs on hardware I already owned. The only recurring cost is the Piper and Whisper both run in Docker on TrueNAS. Piper is straightforward — pick a voice model, point it at the Wyoming port, done. Whisper took a bit more tuning. I'm running `small.en` which is a good balance of speed and accuracy for English transcription. -The OpenClaw agent framework is what ties it together. It handles the conversation loop, routes messages to the right tools, and manages the Telegram integration. Skills are just directories with a `SKILL.md` and some scripts — easy to add, easy to audit. +The agent framework is what ties it together. It handles the conversation loop, routes messages to the right tools, and manages the Telegram integration. Skills are just directories with a `SKILL.md` and some scripts — easy to add, easy to audit. -For the LLM proxy, kiro-anthropic sits between OpenClaw and the Anthropic API. It adds request logging, lets me swap models without touching agent config, and gives me a single place to manage the API key. +The LLM proxy sits between the agent and the Anthropic API. It adds request logging, lets me swap models without touching agent config, and gives me a single place to manage the API key. Qwen3-TTS on the Mac runs via [mlx-audio](https://github.com/Blaizzy/mlx-audio), which uses Apple Silicon's Neural Engine. The voice cloning feature is genuinely impressive — give it a 3-second audio sample and it'll match the voice reasonably well. @@ -37,7 +37,7 @@ Qwen3-TTS on the Mac runs via [mlx-audio](https://github.com/Blaizzy/mlx-audio), **The real cost is tokens, not compute.** I assumed the bottleneck would be CPU/GPU. It's not. The hardware handles everything comfortably. What actually costs money is the LLM API. I pulled traces from [Opik](https://github.com/comet-ml/opik) and found 75 million input tokens across 100 traces. Context window size is the killer — long conversations with tool call history get expensive fast. -**V8 memory limits in Docker will silently kill your agent.** OpenClaw runs on Node.js. Docker containers have a default memory limit, and Node's V8 heap will hit it and crash without a clear error. The fix is `NODE_OPTIONS=--max-old-space-size=4096` in your container environment. I lost a few hours to this before finding it. +**V8 memory limits in Docker will silently kill your agent.** The agent framework runs on Node.js. Docker containers have a default memory limit, and Node's V8 heap will hit it and crash without a clear error. The fix is `NODE_OPTIONS=--max-old-space-size=4096` in your container environment. I lost a few hours to this before finding it. ## The Numbers @@ -45,7 +45,7 @@ Rough monthly costs running this setup: - LLM API (Claude): ~$15–25/month depending on conversation volume - Electricity for TrueNAS: already running, marginal cost near zero -- Everything else (Piper, Whisper, OpenClaw): $0 +- Everything else (Piper, Whisper, agent framework): $0 The 75M input tokens I mentioned came from a period of heavy testing with long context windows. Normal usage is significantly lower. The lesson: be deliberate about what you include in the system prompt and conversation history. Every token in context costs money on both ends of the conversation.