Stateless Decision Memory for Enterprise AI Agents
Vasundra Srinivasan

TL;DR
This paper introduces Deterministic Projection Memory (DPM), a stateless memory architecture for enterprise AI decision agents that improves determinism, auditability, and efficiency over traditional stateful methods.
Contribution
It proposes DPM, a novel append-only event log with task-conditioned projection, enabling stateless, deterministic, and scalable decision-making in regulated enterprise domains.
Findings
DPM matches summarization memory at high budgets
DPM outperforms at low budgets with 20x compression
DPM is 7-15x faster at binding budgets
Abstract
Enterprise deployment of long-horizon decision agents in regulated domains (underwriting, claims adjudication, tax examination) is dominated by retrieval-augmented pipelines despite a decade of increasingly sophisticated stateful memory architectures. We argue this reflects a hidden requirement: regulated deployment is load-bearing on four systems properties (deterministic replay, auditable rationale, multi-tenant isolation, statelessness for horizontal scale), and stateful architectures violate them by construction. We propose Deterministic Projection Memory (DPM): an append-only event log plus one task-conditioned projection at decision time. On ten regulated decisioning cases at three memory budgets, DPM matches summarization-based memory at generous budgets and substantially outperforms it when the budget binds: at a 20x compression ratio, DPM improves factual precision by +0.52…
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