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Abstract

Subject area

Entrepreneurship, management and emerging markets.

Study level/applicability

Undergraduate and Graduate courses in Entrepreneurship, Managing in Developing Countries/Emerging Markets, Small Business Management, Social Entrepreneurship, International Business

Case overview

IntEnt is a business incubator that provides training and other support services to nascent entrepreneurs, helping turn their investment ideas into successful business ventures. But IntEnt focuses on a unique clientele: diasporas, or migrants and their descendants, who dream of establishing a new venture back in their country of origin.The incubator is well known and respected by policymakers and migrants alike. Despite these successes, Mr Molenaar has struggled to grow and diversify IntEnt's funding base. He also is under increasing pressure from the foundation's stakeholders to define and measure the foundation's performance. But Molenaar is committed to expanding IntEnt's operations and continue to bridge the divide between diaspora investment interest and action.

Expected learning outcomes

To understand and describe the financial-, human-, and social-capital challenges faced by transnational diaspora business ventures during the business development and launch phase.To explain how business incubators can provide solutions to the specific, unique problems that transnational diaspora entrepreneurs face, particularly in emerging markets. To discuss the governance challenges associated with operating a transnational business venture as well as those of an incubator aimed to support transnational entrepreneurship.

Supplementary materials

Teaching note.

Details

Emerald Emerging Markets Case Studies, vol. 1 no. 1
Type: Case Study
ISSN: 2045-0621

Keywords

Case study
Publication date: 12 September 2023

Syeda Maseeha Qumer

This case is designed to enable students to understand the role of women in artificial intelligence (AI); understand the importance of ethics and diversity in the AI field;…

Abstract

Learning outcomes

This case is designed to enable students to understand the role of women in artificial intelligence (AI); understand the importance of ethics and diversity in the AI field; discuss the ethical issues of AI; study the implications of unethical AI; examine the dark side of corporate-backed AI research and the difficult relationship between corporate interests and AI ethics research; understand the role played by Gebru in promoting diversity and ethics in AI; and explore how Gebru can attract more women researchers in AI and lead the movement toward inclusive and equitable technology.

Case overview/synopsis

The case discusses how Timnit Gebru (She), a prominent AI researcher and former co-lead of the Ethical AI research team at Google, is leading the way in promoting diversity, inclusion and ethics in AI. Gebru, one of the most high-profile black women researchers, is an influential voice in the emerging field of ethical AI, which identifies issues based on bias, fairness, and responsibility. Gebru was fired from Google in December 2020 after the company asked her to retract a research paper she had co-authored about the pitfalls of large language models and embedded racial and gender bias in AI. While Google maintained that Gebru had resigned, she said she had been fired from her job after she had raised issues of discrimination in the workplace and drawn attention to bias in AI. In early December 2021, a year after being ousted from Google, Gebru launched an independent community-driven AI research organization called Distributed Artificial Intelligence Research (DAIR) to develop ethical AI, counter the influence of Big Tech in research and development of AI and increase the presence and inclusion of black researchers in the field of AI. The case discusses Gebru’s journey in creating DAIR, the goals of the organization and some of the challenges she could face along the way. As Gebru seeks to increase diversity in the field of AI and reduce the negative impacts of bias in the training data used in AI models, the challenges before her would be to develop a sustainable revenue model for DAIR, influence AI policies and practices inside Big Tech companies from the outside, inspire and encourage more women to enter the AI field and build a decentralized base of AI expertise.

Complexity academic level

This case is meant for MBA students.

Social implications

Teaching Notes are available for educators only.

Subject code

CCS 11: Strategy

Details

The Case For Women, vol. no.
Type: Case Study
ISSN: 2732-4443

Keywords

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