agent-memoriaGives your OpenClaw agent persistent memory across every session. MEMORIA maintains a structured knowledge layer: who you are, what you're building, every de...
Install via ClawdBot CLI:
clawdbot install contrario/agent-memoriaGrade Fair — based on market validation, documentation quality, package completeness, maintenance status, and authenticity signals.
Generated Mar 21, 2026
A freelance developer working on multiple client projects simultaneously needs to maintain context across different codebases, technical decisions, and client preferences. MEMORIA helps track project statuses, technical stack decisions, and client communication styles to avoid repeating conversations and ensure consistent recommendations.
A founder juggling product development, investor communications, and team management needs persistent memory of strategic decisions, lessons from past experiments, and key stakeholder relationships. MEMORIA maintains decision logs, tracks active goals, and surfaces patterns to prevent repeating mistakes and align all interactions with the company vision.
A researcher conducting experiments and publishing papers needs to track hypotheses, experimental results, and literature insights across long-term projects. MEMORIA logs decisions about methodologies, records lessons from failed experiments, and maintains context about collaborators and publication preferences to accelerate discovery cycles.
A consultant advising multiple enterprise clients needs to remember each client's infrastructure, past recommendations, implementation preferences, and ongoing challenges. MEMORIA stores client-specific stacks, decision rationales, and recurring problems to provide consistent, personalized advice without requiring clients to repeat context.
A creator producing technical tutorials or educational content needs to track audience preferences, content performance insights, and production workflows across different platforms. MEMORIA maintains preferences for detail level and format, logs lessons from past content, and tracks current focus areas to ensure coherent, audience-tailored output.
Offer MEMORIA as a paid skill within AI agent marketplaces with tiered pricing. Basic tier provides core memory functionality, while premium tiers add advanced features like automated pattern detection, integration with project management tools, and priority support. Revenue comes from one-time purchases or annual subscriptions.
License MEMORIA to companies for team-wide deployment with enhanced collaboration features. This includes shared memory files for projects, audit logs for decision tracking, and compliance with data governance policies. Revenue is generated through per-seat monthly subscriptions with volume discounts for larger organizations.
Integrate MEMORIA with popular development environments and productivity tools as a memory layer plugin. Offer APIs for third-party integrations, enabling tools like IDEs, note-taking apps, and project managers to read/write structured memory. Revenue comes from partnership agreements and API usage fees.
💬 Integration Tip
Start by manually creating a basic memory.md file with your key details, then let the agent populate it through natural conversation during your first few sessions to build context organically.
Scored Jun 17, 2026
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