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Main Authors: Borovkov, Nikita, Rykov, Elisei, Tsymboi, Olga, Filimonov, Sergei, Surnachev, Nikita, Bitman, Dmitry, Potapov, Anatolii
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.23855
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author Borovkov, Nikita
Rykov, Elisei
Tsymboi, Olga
Filimonov, Sergei
Surnachev, Nikita
Bitman, Dmitry
Potapov, Anatolii
author_facet Borovkov, Nikita
Rykov, Elisei
Tsymboi, Olga
Filimonov, Sergei
Surnachev, Nikita
Bitman, Dmitry
Potapov, Anatolii
contents We present a deployed system that automates end-to-end customer support workflows inside an enterprise Business Process Management (BPM) platform. The approach is scalable in production and reaches selective automation within two weeks for a new process, leveraging supervision already generated at scale: structured per-case UI interaction traces and low-overhead copilot feedback, where operators either accept a suggestion or provide a correction. A staged deployment pipeline trains a next UI action policy, learns a critic from copilot feedback to calibrate abstention, and executes only high-confidence steps in the background while deferring uncertain decisions to operators and resuming from the updated UI state. This setup lets one operator supervise multiple concurrent sessions and be interrupted only when the system is uncertain. The system operates on a schema-driven view of the BPM interface and includes monitoring and safe fallbacks for production. In production, it automated 45% of sessions and reduced average handling time by 39% without degrading support quality level.
format Preprint
id arxiv_https___arxiv_org_abs_2604_23855
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Learning Selective LLM Autonomy from Copilot Feedback in Enterprise Customer Support Workflows
Borovkov, Nikita
Rykov, Elisei
Tsymboi, Olga
Filimonov, Sergei
Surnachev, Nikita
Bitman, Dmitry
Potapov, Anatolii
Computation and Language
Software Engineering
We present a deployed system that automates end-to-end customer support workflows inside an enterprise Business Process Management (BPM) platform. The approach is scalable in production and reaches selective automation within two weeks for a new process, leveraging supervision already generated at scale: structured per-case UI interaction traces and low-overhead copilot feedback, where operators either accept a suggestion or provide a correction. A staged deployment pipeline trains a next UI action policy, learns a critic from copilot feedback to calibrate abstention, and executes only high-confidence steps in the background while deferring uncertain decisions to operators and resuming from the updated UI state. This setup lets one operator supervise multiple concurrent sessions and be interrupted only when the system is uncertain. The system operates on a schema-driven view of the BPM interface and includes monitoring and safe fallbacks for production. In production, it automated 45% of sessions and reduced average handling time by 39% without degrading support quality level.
title Learning Selective LLM Autonomy from Copilot Feedback in Enterprise Customer Support Workflows
topic Computation and Language
Software Engineering
url https://arxiv.org/abs/2604.23855