Create Agent
Skill Verified ActiveCreate a new Hindsight-powered subagent with long-term memory. Use when the user wants a specialized agent that learns and remembers across sessions.
Empower users to create specialized AI agents that learn and remember across sessions, enhancing conversational AI and task automation.
Features
- Create subagents with long-term memory
- Support for interactive agent creation
- Ingest content from prepared directories
- Manage knowledge pages and memory search
- Integrate with Hindsight memory system
Use Cases
- Building specialized AI agents for complex tasks
- Developing personalized chatbots with user-specific memory
- Automating workflows that require learning and adaptation over time
- Creating AI employees that approximate human learning capabilities
Non-Goals
- Managing the Hindsight server itself
- Directly interacting with memory banks outside of agent creation context
- Providing a generic agent framework not powered by Hindsight
Installation
First, add the marketplace
/plugin marketplace add vectorize-io/hindsight/plugin install claude-code@hindsight-localQuality Score
VerifiedTrust Signals
Similar Extensions
Orchestrate
100Wire Commands, Agents, and Skills together for complex features. Use when building features that need research, planning, and implementation phases.
Context Compression
100This skill should be used when the user asks to "compress context", "summarize conversation history", "implement compaction", "reduce token usage", or mentions context compression, structured summarization, tokens-per-task optimization, or long-running agent sessions exceeding context limits.
Wrap Up Ritual
100End-of-session ritual that audits changes, runs quality checks, captures learnings, and produces a session summary. Use when saying "wrap up", "done for the day", "finish coding", or ending a coding session.
TradeMemory Protocol
100Domain knowledge for the Evolution Engine — LLM-powered autonomous strategy discovery from raw OHLCV data. Covers the generate-backtest-select-evolve loop, vectorized backtesting, out-of-sample validation, and strategy graduation. Use when discovering trading patterns, running backtests, evolving strategies, or reviewing evolution logs. Triggers on "evolve", "discover patterns", "backtest", "evolution", "strategy generation", "candidate strategy".
Agentdb Memory Patterns
99Implement persistent memory patterns for AI agents using AgentDB. Includes session memory, long-term storage, pattern learning, and context management. Use when building stateful agents, chat systems, or intelligent assistants.
Mcp Setup
100Configure popular MCP servers for enhanced agent capabilities