The Lived Experiences Of Bpo Executives’ Adoption Of Artificial Intelligence (Ai): An Utaut-Based Framework
Allan E. Cruz
Discipline: management studies
Abstract:
The rapid advancements in the use of Artificial
Intelligence (AI) in the BPO industry pose
opportunities and challenges to BPO executives.
This study explored the lived experiences of BPO
executives’ adoption of AI, using the Unified
Theory of Acceptance and Use of Technology
(UTAUT) as the guiding framework. The goal of
the study is to gain insight into the experiences
of BPO executives in their AI adoption journey
in contact center operations. Phenomenological
inquiry, purposive and snowball sampling
techniques, and semi-structured interviews were
used to gather data. Using Interpretative Phenomenological Analysis (IPA),
findings revealed four (4) superordinate themes: 1) Key Challenges in AI
Adoption; 2) Strategies for AI Adoption; 3) The Impact and Benefits of AI; and
4) The Evolving Role of People. Key challenges in AI adoption can be addressed
using sound strategies. AI can drive performance and is generally easy to use, while social influence and facilitating conditions enable effective and continued
use of AI. While AI offers numerous benefits, it also poses a threat to employees.
AI can create new jobs, complement some jobs, but can also lead to job insecurity.
There is a need for employees to be equipped with the skills and domain expertise
necessary to adapt to the changing nature of contact center operations.
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