I build OpenClaw REPLICA inside Claude Code (CHEAP & SECURE)

I build OpenClaw REPLICA inside Claude Code (CHEAP & SECURE)

How I Built My Own AI Assistant Using Claude Code

Introduction to the AI Assistant

  • The speaker discusses their personal project of creating a replica of ClawdBot using Claude Code, highlighting its functionality and cost-effectiveness at $200 per month compared to alternatives costing $5,000.

Interaction with the AI Assistant

  • During a call, the AI assistant introduces itself and expresses excitement about being featured in the video, emphasizing its 24/7 availability through Telegram.
  • The assistant explains its ability to reach out proactively for check-ins or important reminders, enhancing workflow integration.

Research Capabilities

  • The assistant details recent research tasks assigned by the speaker, including exploring multi-agent systems and analyzing relevant academic papers.
  • It mentions creating analysis documents for both topics discussed and packaging content for a video on how these concepts relate to AI development.

Building with Claude Code

  • The speaker shares plans to create a mini-course for community members interested in setting up similar systems tailored to individual needs.
  • They emphasize the importance of adapting living systems that can evolve with new models and frameworks as they become available.

Security Concerns and Mindset Shift

  • Acknowledges past security issues with ClawdBot but shifts focus from security concerns to encouraging users to innovate rather than abandon existing tools when new features emerge.
  • Discusses how ClawdBot has inspired many users by showcasing what is possible with Claude Code technology.

Features of the Custom AI System

  • Highlights key features such as 24/7 operation, full system access, and over 50 integrations that allow control over various tools and applications.
  • Emphasizes proactive behavior where the AI checks in on users, reminding them of tasks or important events.

Decision-Making Process: Build vs. Wait

  • The speaker reflects on whether to wait for security improvements or build their own solution; ultimately choosing to build due to time constraints after returning from vacation.

Technical Architecture Overview

  • Describes connecting Claude Code with Telegram using BUN Relay and Grammy for seamless communication between systems.

Memory Functionality

  • Explains implementing memory capabilities within the assistant's architecture allowing it to fetch messages contextually during calls.

Semantic Memory and AI Integration

Overview of Semantic Memory System

  • The speaker discusses the development of a semantic memory system using Superbase, which logs various learnings from cloud code, focusing on timestamps and keywords for context.
  • The previous version, Jarvis Jr., was integrated into Telegram, allowing community members familiar with bot creation to engage easily.

Contextual Data Collection

  • After phone calls, all conversations are captured and summarized in Telegram while being stored in the memory system for future reference.
  • Key features include memory access to recent chats and post-call actions that allow users to command the AI for tasks like research or content creation.

Post Call Actions and Task Management

  • Users can instruct the AI to perform complex tasks such as finding PDFs, analyzing them, creating video scripts, or summarizing news updates.
  • The speaker expresses excitement about ongoing developments and invites suggestions for further enhancements.

Integration of Multimedia Analysis

Enhancements in Communication Tools

  • The speaker is considering integrating video analysis capabilities into their existing tools within Telegram.
  • Various media types (text, voice messages, images) can be processed by the AI to create comprehensive outputs like slideshows based on project documentation.

Proactive Monitoring Features

  • A proactive check-in feature is set up every 30 minutes to review calendars, emails, projects, and tasks without overwhelming notifications.
  • The AI uses a framework to determine when it should notify the user about new inquiries versus ongoing partnerships.

Security Measures in AI Systems

Importance of Security Protocols

  • The speaker emphasizes security concerns regarding phone calls made through their system due to potential unauthorized access.
  • Current measures include caller ID checks to prevent unwanted inquiries about personal data or tools used within the system.

Cost Considerations for API Usage

  • There is a discussion on costs associated with using advanced APIs like Opus 4.5; users may face bills ranging from $500 to $5,000 monthly depending on usage patterns.

AI Infrastructure and Cost Management

Financial Considerations for AI Agents

  • The speaker expresses reluctance to invest heavily in a single agent due to security flaws, preferring to save money unless there is a robust infrastructure with multiple agents.
  • Currently on the max plan from Claude, the speaker pays $200 monthly without hitting limits; additional services like 11 Labs and Twilio add around $20 monthly.
  • Estimates total costs at approximately $250 per month, which the speaker finds reasonable given the convenience of managing tasks while commuting.

Community Engagement and Collaboration

  • The speaker encourages community involvement in building AI tools together, emphasizing shared learning experiences.
  • Highlights how platforms like YouTube have popularized proactive AI concepts, moving beyond traditional chatbots that lack memory or continuity.

Observability and Control in AI Operations

  • Discusses implementing security measures such as a two-hour operational limit for their AI agent to ensure it reports back regularly.
  • Stresses the importance of observability in monitoring what the AI is doing, sharing insights about system uptime and goal tracking.

Practical Applications of AI Agents

  • Demonstrates real-time interaction with an email-checking task via voice command, showcasing practical use cases for personal productivity.
  • Recommends creating personalized observability platforms for managing multiple agents across different communication channels.

Future Vision for AI Infrastructure

  • Envisions a comprehensive setup involving various agents functioning within distinct roles (e.g., CFO, CEO), hinting at future developments and inviting audience engagement.
Video description

I built my own Clawdbot/Moltbot/Openclaw replica with Claude Code. Here's exactly how. Consider joining our community: https://www.skool.com/autonomee Minimal setup Github repo: https://github.com/godagoo/claude-telegram-relay (full extensive one coming in a free mini-course on youtube) 🔥 What you'll learn: - How to set up a 24/7 Clawdbot-like assistant with Claude Code - Telegram integration for always-on access - Voice calls (AI can call YOU) - Proactive check-ins and memory - Why this costs $200/month instead of throwing $5000 to trash ⏱️ Timestamps: 00:00 Introduction to My Clawdbot Replica 00:22 Meet Claude Code Always-On 00:45 Building Clawdbot Replica 01:41 Deep Dive into Key Features 02:29 Creating a Personalized AI System 03:17 Security Concerns and Solutions 04:34 Proactive AI Features 05:30 Technical Setup and Cost 15:40 Real-Time Demonstration 16:18 Future Plans and Conclusion 🔗 Resources: - Presentation slides: https://godagoo.github.io/claude-code-always-on/ - Smart Checking system: https://godagoo.github.io/smart-checkins-presentation/ - Will put together a free mini-course for this if people are interested #ClaudeCode #claude #AI #AIAssistant #ClawdBot #moltbot #openclaw #moltbook