Cache Expert High-Level Architecture The Dagger Engine serves a GraphQL-based API for building and executing DAG workflows. Each operation takes immutable objects/scalar values as inputs and produces an immutable object/scalar value as output. "Mutability" is simulated as a DAG of these operations on immutable values, similar to functional programming. This enables caching: since inputs are immutable and operations are deterministic, cache keys can be derived from the operation and its inputs. DAGs of operations can be serialized as IDs, which have associated digests that serve as the operations' cache keys. Quick Reference Jump to the right doc for your task: Task Read Understand how IDs encode operations and digests ids.md Understand cache-relevant dagql execution flow dagql-api-server.md Understand base/session cache storage and lifecycle cache-storage.md Debug cache misses and cache behavior regressions debugging.md Understand filesync cache behavior filesync.md Core References To build cache expertise, read these in order: ids.md - How IDs and digests define cache identity dagql-api-server.md - How Select / preselect / call drive cache usage cache-storage.md - How results are stored, indexed, released, and persisted Optional References Load on-demand for specific tasks: debugging.md - Practical debugging loop and instrumentation points filesync.md - Host filesystem sync internals and filesync cache model
cache-expert
安装
npx skills add https://github.com/dagger/dagger --skill cache-expert