Sarcouncil Journal of Multidisciplinary
Sarcouncil Journal of Multidisciplinary
An Open access peer reviewed international Journal
Publication Frequency- Monthly
Publisher Name-SARC Publisher
ISSN Online- 2945-3445
Country of origin- PHILIPPINES
Frequency- 3.6
Language- English
Keywords
- Social sciences, Medical sciences, Engineering, Biology
Editors

Dr Hazim Abdul-Rahman
Associate Editor
Sarcouncil Journal of Applied Sciences

Entessar Al Jbawi
Associate Editor
Sarcouncil Journal of Multidisciplinary

Rishabh Rajesh Shanbhag
Associate Editor
Sarcouncil Journal of Engineering and Computer Sciences

Dr Md. Rezowan ur Rahman
Associate Editor
Sarcouncil Journal of Biomedical Sciences

Dr Ifeoma Christy
Associate Editor
Sarcouncil Journal of Entrepreneurship And Business Management
Designing Trustworthy Human-AI Collaboration: Building Intelligent Systems That Learn from Users, Not Replace Them
Keywords: Human-AI collaboration, trust-based automation, reinforcement learning from human feedback, explainable AI, enterprise decision support.
Abstract: As artificial intelligence systems mature in enterprise settings, a critical frontier emerges not in replacing human judgment but in enhancing it through thoughtful collaboration. This article introduces a pioneering framework for Human-AI Collaboration where automation recommends, humans decide, and systems continuously learn from those decisions. Drawing from implementations in enterprise-grade scheduling, quoting, and customer service platforms, the article explores how reinforcement through override—where human choices refine AI's future suggestions—bridges the trust gap that often impedes adoption. By embedding explainability into interfaces, surfacing contextual knowledge, and architecting graceful fallback options, these systems elevate productivity without disempowering users. The article demonstrates that true AI success lies in collaborative reliability rather than autonomous performance, where intelligent systems function as extensions of user expertise rather than replacements. The framework presented offers enterprise architects and practitioners a blueprint for designing AI systems that earn trust, drive adoption, and evolve responsibly alongside changing business requirements—a vision crucial for the future of work in high-variance environments.
Author
- Raj Kumar Reddy Kommera
- Independent Researcher USA