Memory Schema
Manage structured note types using Basic Memory's Picoschema system. Schemas define what fields a note type should have, making notes uniform, queryable, and validatable.
When to Use
- New note type emerging — you notice several notes share the same structure (meetings, people, decisions)
- Validation check — confirm existing notes conform to their schema
- Schema drift — detect fields that notes use but the schema doesn't define (or vice versa)
- Schema evolution — add/remove/change fields as requirements evolve
- On demand — user asks to create, check, or manage schemas
Picoschema Syntax Reference
Schemas are defined in YAML frontmatter using Picoschema — a compact notation for describing note structure.
Basic Types
schema:
name: string, person's full name
age: integer, age in years
score: number, floating-point rating
active: boolean, whether currently active
Supported types: string, integer, number, boolean.
Optional Fields
Append ? to the field name:
schema:
title: string, required field
subtitle?: string, optional field
Enums
Use (enum) with a list of allowed values:
schema:
status(enum): [active, blocked, done, abandoned], current state
Optional enum:
schema:
priority?(enum): [low, medium, high, critical], task priority
Arrays
Use (array) for list fields:
schema:
tags(array): string, categorization labels
steps?(array): string, ordered steps to complete
Relations
Reference other entity types directly:
schema:
parent_task?: Task, parent task if this is a subtask
attendees?(array): Person, people who attended
Relations create edges in the knowledge graph, linking notes together.
Validation Settings
settings:
validation: warn # warn (log issues) or error (strict)
Complete Example
---
title: Meeting
type: schema
entity: Meeting
version: 1
schema:
topic: string, what was discussed
date: string, when it happened (YYYY-MM-DD)
attendees?(array): Person, who attended
decisions?(array): string, decisions made
action_items?(array): string, follow-up tasks
status?(enum): [scheduled, completed, cancelled], meeting state
settings:
validation: warn
---
Discovering Unschemaed Notes
Look for clusters of notes that share structure but have no schema:
-
Search by type:
search_notes(query="type:Meeting")— if many notes share atypebut noschema/Meeting.mdexists, it's a candidate. -
Infer a schema: Use
schema_inferto analyze existing notes and generate a suggested schema:schema_infer(noteType="Meeting") schema_infer(noteType="Meeting", threshold=0.5) # fields in 50%+ of notesThe threshold (0.0–1.0) controls how common a field must be to be included. Default is usually fine; lower it to catch rarer fields.
-
Review the suggestion — the inferred schema shows field names, types, and frequency. Decide which fields to keep, make optional, or drop.
Creating a Schema
Write the schema note to schema/<EntityName>:
write_note(
title="Meeting",
directory="schema",
note_type="schema",
metadata={
"entity": "Meeting",
"version": 1,
"schema": {
"topic": "string, what was discussed",
"date": "string, when it happened",
"attendees?(array)": "Person, who attended",
"decisions?(array)": "string, decisions made"
},
"settings": {"validation": "warn"}
},
content="""# Meeting
Schema for meeting notes.
## Observations
- [convention] Meeting notes live in memory/meetings/ or as daily entries
- [convention] Always include date and topic
- [convention] Action items should become tasks when complex"""
)
Key Principles
- Schema notes live in
schema/— one note per entity type note_type="schema"marks it as a schema definitionentity: Meetingin metadata names the type it applies toversion: 1in metadata — increment when making breaking changessettings.validation: warnis recommended to start — it logs issues without blocking writes
Validating Notes
Check how well existing notes conform to their schema:
# Validate all notes of a type
schema_validate(noteType="Meeting")
# Validate a single note
schema_validate(identifier="meetings/2026-02-10-standup")
Important: schema_validate checks for schema fields as observation categories in the note body — e.g., a status field expects - [status] active as an observation. Fields stored only in frontmatter metadata won't satisfy validation. To pass cleanly, include schema fields as both frontmatter values (for metadata search) and observations (for schema validation).
Validation reports:
- Missing required fields — the note lacks a field the schema requires (as an observation category)
- Unknown fields — the note has fields the schema doesn't define
- Type mismatches — a field value doesn't match the expected type
- Invalid enum values — a value isn't in the allowed set
Handling Validation Results
warnmode: Review warnings periodically. Fix notes that are clearly wrong; add optional fields to the schema for legitimate new patterns.errormode: Use for strict schemas where conformance matters (e.g., automated pipelines consuming notes).
Detecting Drift
Over time, notes evolve and schemas lag behind. Use schema_diff to find divergence:
schema_diff(noteType="Meeting")
Diff reports:
- Fields in notes but not in schema — candidates for adding to the schema (as optional)
- Schema fields rarely used — consider making optional or removing
- Type inconsistencies — fields used as different types across notes
Schema Evolution
When note structure changes:
- Run diff to see current state:
schema_diff(noteType="Meeting") - Update the schema note via
edit_note:edit_note( identifier="schema/Meeting", operation="find_replace", find_text="version: 1", content="version: 2", expected_replacements=1 ) - Add/remove/modify fields in the
schema:block - Re-validate to confirm existing notes still pass:
schema_validate(noteType="Meeting") - Fix outliers — update notes that don't conform to the new schema
Evolution Guidelines
- Additive changes (new optional fields) are safe — no version bump needed
- Breaking changes (new required fields, removed fields, type changes) should bump
version - Prefer optional over required — most fields should be optional to start
- Don't over-constrain — schemas should describe common structure, not enforce rigid templates
- Schema as documentation — even if validation is set to
warn, the schema serves as living documentation for what notes of that type should contain
Workflow Summary
1. Notice repeated note structure → infer schema (schema_infer)
2. Review + create schema note → write to schema/ (write_note)
3. Validate existing notes → check conformance (schema_validate)
4. Fix outliers → edit non-conforming notes (edit_note)
5. Periodically check drift → detect divergence (schema_diff)
6. Evolve schema as needed → update schema note (edit_note)