Agent skill

digital-brain

This skill should be used when the user asks to "write a post", "check my voice", "look up contact", "prepare for meeting", "weekly review", "track goals", or mentions personal brand, content creation, network management, or voice consistency.

Stars 1,415
Forks 109

Install this agent skill to your Project

npx add-skill https://github.com/foryourhealth111-pixel/Vibe-Skills/tree/main/bundled/skills/digital-brain

SKILL.md

Digital Brain

A structured personal operating system for managing digital presence, knowledge, relationships, and goals with AI assistance. Designed for founders building in public, content creators growing their audience, and tech-savvy professionals seeking AI-assisted personal management.

Important: This skill uses progressive disclosure. Module-specific instructions are in each subdirectory's .md file. Only load what's needed for the current task.

When to Activate

Activate this skill when the user:

  • Requests content creation (posts, threads, newsletters) - load identity/voice.md first
  • Asks for help with personal brand or positioning
  • Needs to look up or manage contacts/relationships
  • Wants to capture or develop content ideas
  • Requests meeting preparation or follow-up
  • Asks for weekly reviews or goal tracking
  • Needs to save or retrieve bookmarked resources
  • Wants to organize research or learning materials

Trigger phrases: "write a post", "my voice", "content ideas", "who is [name]", "prepare for meeting", "weekly review", "save this", "my goals"

Core Concepts

Progressive Disclosure Architecture

The Digital Brain follows a three-level loading pattern:

Level When Loaded Content
L1: Metadata Always This SKILL.md overview
L2: Module Instructions On-demand [module]/[MODULE].md files
L3: Data Files As-needed .jsonl, .yaml, .md data

File Format Strategy

Formats chosen for optimal agent parsing:

  • JSONL (.jsonl): Append-only logs - ideas, posts, contacts, interactions
  • YAML (.yaml): Structured configs - goals, values, circles
  • Markdown (.md): Narrative content - voice, brand, calendar, todos
  • XML (.xml): Complex prompts - content generation templates

Append-Only Data Integrity

JSONL files are append-only. Never delete entries:

  • Mark as "status": "archived" instead of deleting
  • Preserves history for pattern analysis
  • Enables "what worked" retrospectives

Detailed Topics

Module Overview

digital-brain/
├── identity/     → Voice, brand, values (READ FIRST for content)
├── content/      → Ideas, drafts, posts, calendar
├── knowledge/    → Bookmarks, research, learning
├── network/      → Contacts, interactions, intros
├── operations/   → Todos, goals, meetings, metrics
└── agents/       → Automation scripts

Identity Module (Critical for Content)

Always read identity/voice.md before generating any content.

Contains:

  • voice.md - Tone, style, vocabulary, patterns
  • brand.md - Positioning, audience, content pillars
  • values.yaml - Core beliefs and principles
  • bio-variants.md - Platform-specific bios
  • prompts/ - Reusable generation templates

Content Module

Pipeline: ideas.jsonldrafts/posts.jsonl

  • Capture ideas immediately to ideas.jsonl
  • Develop in drafts/ using templates/
  • Log published content to posts.jsonl with metrics
  • Plan in calendar.md

Network Module

Personal CRM with relationship tiers:

  • inner - Weekly touchpoints
  • active - Bi-weekly touchpoints
  • network - Monthly touchpoints
  • dormant - Quarterly reactivation checks

Operations Module

Productivity system with priority levels:

  • P0: Do today, blocking
  • P1: This week, important
  • P2: This month, valuable
  • P3: Backlog, nice to have

Practical Guidance

Content Creation Workflow

1. Read identity/voice.md (REQUIRED)
2. Check identity/brand.md for topic alignment
3. Reference content/posts.jsonl for successful patterns
4. Use content/templates/ as starting structure
5. Draft matching voice attributes
6. Log to posts.jsonl after publishing

Pre-Meeting Preparation

1. Look up contact: network/contacts.jsonl
2. Get history: network/interactions.jsonl
3. Check pending: operations/todos.md
4. Generate brief with context

Weekly Review Process

1. Run: python agents/scripts/weekly_review.py
2. Review metrics in operations/metrics.jsonl
3. Check stale contacts: agents/scripts/stale_contacts.py
4. Update goals progress in operations/goals.yaml
5. Plan next week in content/calendar.md

Examples

Example: Writing an X Post

Input: "Help me write a post about AI agents"

Process:

  1. Read identity/voice.md → Extract voice attributes
  2. Check identity/brand.md → Confirm "ai_agents" is a content pillar
  3. Reference content/posts.jsonl → Find similar successful posts
  4. Draft post matching voice patterns
  5. Suggest adding to content/ideas.jsonl if not publishing immediately

Output: Post draft in user's authentic voice with platform-appropriate format.

Example: Contact Lookup

Input: "Prepare me for my call with Sarah Chen"

Process:

  1. Search network/contacts.jsonl for "Sarah Chen"
  2. Get recent entries from network/interactions.jsonl
  3. Check operations/todos.md for pending items with Sarah
  4. Compile brief: role, context, last discussed, follow-ups

Output: Pre-meeting brief with relationship context.

Guidelines

  1. Voice First: Always read identity/voice.md before any content generation
  2. Append Only: Never delete from JSONL files - archive instead
  3. Update Timestamps: Set updated field when modifying tracked data
  4. Cross-Reference: Knowledge informs content, network informs operations
  5. Log Interactions: Always log meetings/calls to interactions.jsonl
  6. Preserve History: Past content in posts.jsonl informs future performance

Integration

This skill integrates context engineering principles:

  • context-fundamentals - Progressive disclosure, attention budget management
  • memory-systems - JSONL for persistent memory, structured recall
  • tool-design - Scripts in agents/scripts/ follow tool design principles
  • context-optimization - Module separation prevents context bloat

References

Internal references:

  • Identity Module - Voice and brand details
  • Content Module - Content pipeline docs
  • Network Module - CRM documentation
  • Operations Module - Productivity system
  • Agent Scripts - Automation documentation

External resources:


Skill Metadata

Created: 2024-12-29 Last Updated: 2024-12-29 Author: Murat Can Koylan Version: 1.0.0

Expand your agent's capabilities with these related and highly-rated skills.

foryourhealth111-pixel/Vibe-Skills

pufferlib

This skill should be used when working with reinforcement learning tasks including high-performance RL training, custom environment development, vectorized parallel simulation, multi-agent systems, or integration with existing RL environments (Gymnasium, PettingZoo, Atari, Procgen, etc.). Use this skill for implementing PPO training, creating PufferEnv environments, optimizing RL performance, or developing policies with CNNs/LSTMs.

1,415 109
Explore
foryourhealth111-pixel/Vibe-Skills

fluidsim

Framework for computational fluid dynamics simulations using Python. Use when running fluid dynamics simulations including Navier-Stokes equations (2D/3D), shallow water equations, stratified flows, or when analyzing turbulence, vortex dynamics, or geophysical flows. Provides pseudospectral methods with FFT, HPC support, and comprehensive output analysis.

1,415 109
Explore
foryourhealth111-pixel/Vibe-Skills

metabolomics-workbench-database

Access NIH Metabolomics Workbench via REST API (4,200+ studies). Query metabolites, RefMet nomenclature, MS/NMR data, m/z searches, study metadata, for metabolomics and biomarker discovery.

1,415 109
Explore
foryourhealth111-pixel/Vibe-Skills

build-error-resolver

Compatibility alias for build-specific error resolution. Use this when VCO routes to build-error-resolver but the upstream agent is unavailable in the current runtime.

1,415 109
Explore
foryourhealth111-pixel/Vibe-Skills

geniml

This skill should be used when working with genomic interval data (BED files) for machine learning tasks. Use for training region embeddings (Region2Vec, BEDspace), single-cell ATAC-seq analysis (scEmbed), building consensus peaks (universes), or any ML-based analysis of genomic regions. Applies to BED file collections, scATAC-seq data, chromatin accessibility datasets, and region-based genomic feature learning.

1,415 109
Explore
foryourhealth111-pixel/Vibe-Skills

zinc-database

Access ZINC (230M+ purchasable compounds). Search by ZINC ID/SMILES, similarity searches, 3D-ready structures for docking, analog discovery, for virtual screening and drug discovery.

1,415 109
Explore

Didn't find tool you were looking for?

Be as detailed as possible for better results