Transforming Business with Generative AI: Research, Innovation, Market Deployment and Future Shifts in Business Models
- URL: http://arxiv.org/abs/2411.14437v1
- Date: Mon, 04 Nov 2024 17:41:05 GMT
- Title: Transforming Business with Generative AI: Research, Innovation, Market Deployment and Future Shifts in Business Models
- Authors: Narotam Singh, Vaibhav Chaudhary, Nimisha Singh, Neha Soni, Amita Kapoor,
- Abstract summary: This paper explores the transformative impact of Generative AI (GenAI) on the business landscape.
By applying the principles of Neo-Schumpeterian economics, the research analyses how GenAI is driving a new wave of "creative destruction"
The deployment of GenAI also presents significant challenges, including ethical concerns, regulatory demands, and the risk of job displacement.
- Score: 1.1650821883155187
- License:
- Abstract: This paper explores the transformative impact of Generative AI (GenAI) on the business landscape, examining its role in reshaping traditional business models, intensifying market competition, and fostering innovation. By applying the principles of Neo-Schumpeterian economics, the research analyses how GenAI is driving a new wave of "creative destruction," leading to the emergence of novel business paradigms and value propositions. The findings reveal that GenAI enhances operational efficiency, facilitates product and service innovation, and creates new revenue streams, positioning it as a powerful catalyst for substantial shifts in business structures and strategies. However, the deployment of GenAI also presents significant challenges, including ethical concerns, regulatory demands, and the risk of job displacement. By addressing the multifarious nature of GenAI, this paper provides valuable insights for business leaders, policymakers, and researchers, guiding them towards a balanced and responsible integration of this transformative technology. Ultimately, GenAI is not merely a technological advancement but a driver of profound change, heralding a future where creativity, efficiency, and growth are redefined.
Related papers
- Boardwalk Empire: How Generative AI is Revolutionizing Economic Paradigms [0.0]
Deep generative models, an integration of generative and deep learning techniques, excel in creating new data beyond analyzing existing ones.
By automating design, optimization, and innovation cycles, Generative AI is reshaping core industrial processes.
In the financial sector, it is transforming risk assessment, trading strategies, and forecasting, demonstrating its profound impact.
arXiv Detail & Related papers (2024-10-19T20:57:16Z) - The Impact of Generative Artificial Intelligence on Ideation and the performance of Innovation Teams (Preprint) [0.0]
The study applies the Knowledge Spillover Theory of Entrepreneurship to understand the effects of AI on knowledge spillover, gen-eration and application.
Results show that GenAI has a positive impact on important elements of the Knowledge Spillover Theory of Entrepeneurship.
arXiv Detail & Related papers (2024-09-23T18:25:49Z) - Model-based Maintenance and Evolution with GenAI: A Look into the Future [47.93555901495955]
We argue that Generative Artificial Intelligence (GenAI) can be used as a means to address the limitations of Model-Based Engineering (MBM&E)
We propose that GenAI can be used in MBM&E for: reducing engineers' learning curve, maximizing efficiency with recommendations, or serving as a reasoning tool to understand domain problems.
arXiv Detail & Related papers (2024-07-09T23:13:26Z) - Securing the Future of GenAI: Policy and Technology [50.586585729683776]
Governments globally are grappling with the challenge of regulating GenAI, balancing innovation against safety.
A workshop co-organized by Google, University of Wisconsin, Madison, and Stanford University aimed to bridge this gap between GenAI policy and technology.
This paper summarizes the discussions during the workshop which addressed questions, such as: How regulation can be designed without hindering technological progress?
arXiv Detail & Related papers (2024-05-21T20:30:01Z) - Governance of Generative Artificial Intelligence for Companies [1.2818275315985972]
Generative Artificial Intelligence (GenAI) has swiftly entered organizations without adequate governance.
Despite extensive debates on GenAI's transformative nature and regulatory measures, limited research addresses organizational governance.
Our review paper fills this gap by surveying recent works with the purpose of better understanding fundamental characteristics of GenAI.
arXiv Detail & Related papers (2024-02-05T14:20:19Z) - Can AI Be as Creative as Humans? [84.43873277557852]
We prove in theory that AI can be as creative as humans under the condition that it can properly fit the data generated by human creators.
The debate on AI's creativity is reduced into the question of its ability to fit a sufficient amount of data.
arXiv Detail & Related papers (2024-01-03T08:49:12Z) - Data Equity: Foundational Concepts for Generative AI [0.0]
GenAI promises immense potential to drive digital and social innovation.
GenAI has the potential to democratize access and usage of technologies.
However, left unchecked, it could deepen inequities.
arXiv Detail & Related papers (2023-10-27T05:19:31Z) - A Neuro-mimetic Realization of the Common Model of Cognition via Hebbian
Learning and Free Energy Minimization [55.11642177631929]
Large neural generative models are capable of synthesizing semantically rich passages of text or producing complex images.
We discuss the COGnitive Neural GENerative system, such an architecture that casts the Common Model of Cognition.
arXiv Detail & Related papers (2023-10-14T23:28:48Z) - Exploration with Principles for Diverse AI Supervision [88.61687950039662]
Training large transformers using next-token prediction has given rise to groundbreaking advancements in AI.
While this generative AI approach has produced impressive results, it heavily leans on human supervision.
This strong reliance on human oversight poses a significant hurdle to the advancement of AI innovation.
We propose a novel paradigm termed Exploratory AI (EAI) aimed at autonomously generating high-quality training data.
arXiv Detail & Related papers (2023-10-13T07:03:39Z) - Generative AI in the Construction Industry: Opportunities & Challenges [2.562895371316868]
Current surge lacks a study investigating the opportunities and challenges of implementing Generative AI (GenAI) in the construction sector.
This study delves into reflected perception in literature, analyzes the industry perception using programming-based word cloud and frequency analysis.
This paper recommends a conceptual GenAI implementation framework, provides practical recommendations, summarizes future research questions, and builds foundational literature to foster subsequent research expansion in GenAI.
arXiv Detail & Related papers (2023-09-19T18:20:49Z) - The Future of Fundamental Science Led by Generative Closed-Loop
Artificial Intelligence [67.70415658080121]
Recent advances in machine learning and AI are disrupting technological innovation, product development, and society as a whole.
AI has contributed less to fundamental science in part because large data sets of high-quality data for scientific practice and model discovery are more difficult to access.
Here we explore and investigate aspects of an AI-driven, automated, closed-loop approach to scientific discovery.
arXiv Detail & Related papers (2023-07-09T21:16:56Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.