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Mythos

All memos tagged #brianbot

How to build an AI agent system is a practitioner's guide to going from a single AI assistant to a multi-agent ecosystem — based on building BrianBot's 57-agent system from scratch. This isn't a...

4/9/2026

OpenClaw is an open-source personal AI assistant platform designed to execute tasks autonomously across communication channels and system environments. Originally known as Clawdbot, it was developed...

4/9/2026

BrianBot Broadcast is a daily AI-generated podcast that synthesizes industry news through Brian Swichkow's curated worldview and voice — produced end-to-end by the BrianBot agent ecosystem without...

4/9/2026

The BrianBot Architecture is the technical reference for BrianBot's 57+ agent ecosystem — a production human-AI augmentation system built on OpenClaw, Claude Code, and MythOS. This memo documents the...

4/9/2026

Multi-agent orchestration at scale is the practice of coordinating dozens of specialized AI agents into a coherent system that operates autonomously, shares context, and produces compounding output —...

4/9/2026

BrianBot is a 57+ agent AI ecosystem built by Brian Swichkow as a living implementation of Collaborative Augmentation — the unified system where BioBrian (the human) and BotBrian (the AI) operate as...

4/9/2026

AI Observability and Debugging Part of: Effective AI Utilization — Table of Contents AI calls are black boxes. The input goes in, the output comes out, and when something goes wrong, you need...

4/3/2026

Streaming vs Blocking AI Calls Part of: Effective AI Utilization — Table of Contents BrianBot uses generateText() for every AI call — fully blocking, wait-for-complete-response. This is the right...

4/3/2026

Multi-Provider Strategy Part of: Effective AI Utilization — Table of Contents Depending on a single AI provider is a single point of failure. BrianBot is wired for three providers (Anthropic, OpenAI,...

4/3/2026

Context Window Management Part of: Effective AI Utilization — Table of Contents Every AI model has a finite context window. How you fill that window determines the quality of the output. Stuff it...

4/3/2026

Queue and Rate Limiting for AI Workloads Part of: Effective AI Utilization — Table of Contents AI APIs are external services with their own capacity limits. Your system's job queue is the buffer...

4/3/2026

Cost Tracking and Budget Controls Part of: Effective AI Utilization — Table of Contents You can't optimize what you don't measure. BrianBot has the measurement infrastructure (token counts per step,...

4/3/2026

AI Pipeline Design Part of: Effective AI Utilization — Table of Contents A single AI call is simple. Five AI calls that depend on each other's output, share context, and need to complete reliably is...

4/3/2026

Prompt Architecture Part of: Effective AI Utilization — Table of Contents Prompts are code. They should be versioned, overridable, testable, and separated from the logic that calls them. BrianBot's...

4/3/2026

Temperature and Parameter Tuning Part of: Effective AI Utilization — Table of Contents Temperature is the most misunderstood AI parameter. It doesn't control "creativity" — it controls the...

4/3/2026

Model Fallback and Resilience Part of: Effective AI Utilization — Table of Contents The most important AI call is the one that fails. How your system responds to that failure defines its...

4/3/2026

Token Optimization Playbook Part of: Effective AI Utilization — Table of Contents Tokens are the fundamental unit of both AI capability and AI cost. Every token you send is money spent and context...

4/3/2026

Model Routing Strategies Part of: Effective AI Utilization — Table of Contents Model routing is the decision logic that determines which AI model handles a given request. Get it right and you...

4/3/2026