Expand description
Context Column — the cortical column abstraction for data source pipelines.
Each data source (filesystem, GitHub, Jira, DB, shell) is modeled as a neocortical column with four processing layers:
L4 (Input) — raw data ingestion, normalization → ContentChunks L2/3 (Predict) — compression mode selection, predictive coding L5 (Output) — verification, budget check, quality gate L6 (Feedback) — top-down modulation from active task context
Scientific basis: Mountcastle (Nature Rev Neurosci 2022) — every cortical column applies the same computational template to different input modalities.
The trait is async-ready (returns Results) so that network-backed columns (GitHub API, DB queries) work naturally alongside local columns (filesystem).
Structs§
- Column
Compressed - Result of L2/3 (prediction/compression layer) processing.
- Column
Context - Parameters flowing top-down from L6 to modulate processing.
- Column
Input - Result of L4 (input layer) processing.
- Column
Output - Result of L5 (output/verification layer) processing.
- Cross
Source Hint - A lateral connection hint to related data in other columns.
- Filesystem
Column - The filesystem column — processes local files through the cortical pipeline.
- Provider
Column - Provider-backed column — wraps any
ContextProvideras a cortical column.
Traits§
- Context
Column - The cortical column trait — uniform processing pipeline for any data source.