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Main Authors: Gaurav, Nishant, Akarsh, Adit, Ranjan, Ankit, Bajaj, Manoj
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.20278
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author Gaurav, Nishant
Akarsh, Adit
Ranjan, Ankit
Bajaj, Manoj
author_facet Gaurav, Nishant
Akarsh, Adit
Ranjan, Ankit
Bajaj, Manoj
contents While CodeMem establishes executable code as the optimal representation for agentic procedural memory, the mechanism for autonomously synthesizing this memory from a blank slate remains underexplored. This paper operationalizes the transition of Large Language Models from passive tool-users to active workflow architects. Through a high-fidelity case study of a cross-service orchestration task involving Outlook and OneDrive, we identify and address four structural bottlenecks in automated skill generation: the Discovery Gap involving navigation of large tool registries, the Verification Gap regarding grounding tool response structures, the Decomposition Gap which replaces inefficient search with Linear State Anchoring, and the Scaling Gap focused on concurrency and persistence. We demonstrate that by enforcing a scientific methodology of hypothesize, probe, and code, agents can autonomously write robust, production-grade code skills.
format Preprint
id arxiv_https___arxiv_org_abs_2512_20278
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Synthesizing Procedural Memory: Challenges and Architectures in Automated Workflow Generation
Gaurav, Nishant
Akarsh, Adit
Ranjan, Ankit
Bajaj, Manoj
Artificial Intelligence
While CodeMem establishes executable code as the optimal representation for agentic procedural memory, the mechanism for autonomously synthesizing this memory from a blank slate remains underexplored. This paper operationalizes the transition of Large Language Models from passive tool-users to active workflow architects. Through a high-fidelity case study of a cross-service orchestration task involving Outlook and OneDrive, we identify and address four structural bottlenecks in automated skill generation: the Discovery Gap involving navigation of large tool registries, the Verification Gap regarding grounding tool response structures, the Decomposition Gap which replaces inefficient search with Linear State Anchoring, and the Scaling Gap focused on concurrency and persistence. We demonstrate that by enforcing a scientific methodology of hypothesize, probe, and code, agents can autonomously write robust, production-grade code skills.
title Synthesizing Procedural Memory: Challenges and Architectures in Automated Workflow Generation
topic Artificial Intelligence
url https://arxiv.org/abs/2512.20278