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Main Authors: Tablan, Valentin, Taylor, Scott, Hurtado, Gabriel, Bernhem, Kristoffer, Uhrenholt, Anders, Farei, Gabriele, Moilanen, Karo
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2511.08301
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author Tablan, Valentin
Taylor, Scott
Hurtado, Gabriel
Bernhem, Kristoffer
Uhrenholt, Anders
Farei, Gabriele
Moilanen, Karo
author_facet Tablan, Valentin
Taylor, Scott
Hurtado, Gabriel
Bernhem, Kristoffer
Uhrenholt, Anders
Farei, Gabriele
Moilanen, Karo
contents The transition from human-centric to agent-centric software development practices is disrupting existing knowledge sharing environments for software developers. Traditional peer-to-peer repositories and developer communities for shared technical knowledge and best practice have witnessed dramatic drops in participation in a short period of time. At the same time, agentic functional equivalents are yet to emerge leaving AI agents, which already generate a significant proportion of all new software code produced, without access to repositories of valuable shared learning. In this paper, we introduce Spark, a novel shared agentic memory architecture which is designed to emulate the collective intelligence and know-how of human developer communities. Spark enables AI coding agents to both contribute to and draw from a persistent and continuously evolving experiential memory. Agents operating in the same general problem space use the Spark shared memory as a repository of new knowledge to achieve collective continual learning. We evaluate Spark as a coach for AI coding agents performing software development tasks. We demonstrate that recommendations made by Spark improve the quality of code generated by generic code generation models at varying sizes and capability tiers. Boosted by Spark, a small open-weights model with 30 billion parameters was able to match the code quality afforded by a much larger state-of-the-art model. Separately, we measure the intrinsic quality of recommendations generated by Spark against a wide range of criteria inspired by software development best practice, and achieve helpfulness levels of up to 98.2% in the top two (out of five) qualitative helpfulness bands.
format Preprint
id arxiv_https___arxiv_org_abs_2511_08301
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Smarter Together: Creating Agentic Communities of Practice through Shared Experiential Learning
Tablan, Valentin
Taylor, Scott
Hurtado, Gabriel
Bernhem, Kristoffer
Uhrenholt, Anders
Farei, Gabriele
Moilanen, Karo
Artificial Intelligence
Software Engineering
The transition from human-centric to agent-centric software development practices is disrupting existing knowledge sharing environments for software developers. Traditional peer-to-peer repositories and developer communities for shared technical knowledge and best practice have witnessed dramatic drops in participation in a short period of time. At the same time, agentic functional equivalents are yet to emerge leaving AI agents, which already generate a significant proportion of all new software code produced, without access to repositories of valuable shared learning. In this paper, we introduce Spark, a novel shared agentic memory architecture which is designed to emulate the collective intelligence and know-how of human developer communities. Spark enables AI coding agents to both contribute to and draw from a persistent and continuously evolving experiential memory. Agents operating in the same general problem space use the Spark shared memory as a repository of new knowledge to achieve collective continual learning. We evaluate Spark as a coach for AI coding agents performing software development tasks. We demonstrate that recommendations made by Spark improve the quality of code generated by generic code generation models at varying sizes and capability tiers. Boosted by Spark, a small open-weights model with 30 billion parameters was able to match the code quality afforded by a much larger state-of-the-art model. Separately, we measure the intrinsic quality of recommendations generated by Spark against a wide range of criteria inspired by software development best practice, and achieve helpfulness levels of up to 98.2% in the top two (out of five) qualitative helpfulness bands.
title Smarter Together: Creating Agentic Communities of Practice through Shared Experiential Learning
topic Artificial Intelligence
Software Engineering
url https://arxiv.org/abs/2511.08301