Grain Theory: Type-Level Granularity Correctness in Data Pipelines
Abstract
Data transformation correctness is a fundamental challenge in data engineering: how can we verify that pipelines produce correct results before executing on production data? Existing practice relies on iterative testing over materialized data. A common cause of errors is the absence of formal reasoning about grain -- the level of detail of data -- so transformations inadvertently change granularity, yielding pathologies like fan traps (metric duplication) and chasm traps (data loss). We introduce grain theory, a type-theoretic framework that elevates grain to a composable property of any algebraic data type. It has two phases. First, a denotation of data: grain itself, defined by irreducibility and isomorphism, with no reference to functional dependencies; three grain relations forming a bounded lattice whose axioms recover Armstrong's on product types; the entity key as a derived grain; and grain-determined behavioral classes -- together the type-level triple (G[R], EK[R], BC[R]). Second, a denotation of transformations: every transformation h has a grain lift φ(h). For collections of product types under the relational algebra we prove an equi-join grain inference theorem and present CalcG, a decidable algorithm that composes grain lifts across a pipeline DAG. The central theorem -- the grain homomorphism -- ties the phases together: grain projection commutes with transformation, and grain lifts compose (φ(h2 h1) = φ(h2) φ(h1)). Grain-correctness is therefore verifiable at design time, before any code or query runs. As corollaries, fan traps emerge as schema-detectable grain-relation violations; chasm traps localize to a specific ordering-chain pattern; and behavioral-class violations, such as point-in-time queries on the wrong collection type, become compile-time type errors. All theorems are mechanically verified in Lean 4.
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