Articles Women in Tech

Gender bias in AI: Why it matters and how to fix it?

Published on March 7, 2025
Untitled design-Mar-05-2025-01-33-31-2380-PM Gender bias in AI: Why it matters and how to fix it?

As we celebrate International Women’s Day, a global moment to champion gender equality and women’s rights, it's crucial to examine the challenges that persist in our increasingly digital world. While Artificial Intelligence (AI) promises innovation and efficiency, it also inherits and amplifies societal biases - particularly gender biases, that can reinforce discrimination rather than eliminate it.

From hiring algorithms that favour male applicants to healthcare AI that overlooks critical diagnoses in women, the impact of gender bias in AI is far-reaching. Addressing these issues is not just about technological fairness - it’s about ensuring that AI serves as a tool for inclusivity rather than a barrier to progress.

In this article, we explore the origins of gender bias in AI, its real-world implications and strategic solutions to build a more equitable future - because in the pursuit of true gender equality, every system, including AI, must be designed to empower, not exclude.

Understanding the root causes of gender bias in AI 

AI models are trained on vast datasets sourced from human-generated content. Unfortunately, these datasets often reflect historical and cultural biases, which AI systems then learn and perpetuate.

For instance, AI-powered translation tools frequently associate the English term nurse with female pronouns and doctor with male ones, mirroring entrenched societal stereotypes. This occurs because the underlying data reflects decades of biased language use rather than objective reality.

Real-world consequences of gender bias in AI

Gender bias in AI is not just theoretical, it has tangible and far-reaching consequences across multiple domains:

  • Employment discrimination: Amazon’s AI-driven recruitment tool was found to systematically downgrade CVs that included the word women’s - such as in women’s chess club captain. Since the AI was trained on a decade’s worth of applications in which men were the majority, it learned to favour male applicants, ultimately reinforcing gender disparities in hiring.
  • Gender disparities in healthcare: AI models used for diagnosing liver disease have been found to be twice as likely to misdiagnose female patients compared to male ones. The root cause? These models were primarily trained on male-centric datasets, leading to flawed predictive accuracy for women, which could result in inadequate or delayed treatment.
  • Reinforcement of gender stereotypes in language models: Large Language Models (LLMs) frequently associate women with domestic roles and men with professional or leadership positions. A UNESCO study found that AI-generated content consistently linked women with caregiving and homemaking tasks, perpetuating outdated and regressive gender norms.

How to combat gender bias in AI

Eliminating gender bias in AI requires a proactive and multi-layered intervention. Here are key strategies to create more equitable AI systems:

  • Diversifying training data: AI models must be trained on datasets that are representative of all genders, ethnicities and backgrounds. Ensuring a balanced dataset can prevent AI from learning and reinforcing existing biases.
  • Implementing bias audits and continuous monitoring: Regular audits should be conducted to identify and correct bias within AI systems. This includes testing outputs for discriminatory patterns and adjusting algorithms accordingly.
  • Encouraging diverse AI development teams: A lack of diversity in AI development teams often leads to unintentional biases being coded into systems. A more inclusive workforce, encompassing diverse gender, cultural and professional perspectives, can help mitigate blind spots in AI development.
  • Enhancing transparency in AI decision-making: AI models should be designed with explainability in mind. Transparent decision-making processes allow for external scrutiny, making it easier to identify and correct biases in real time.
  • Establishing ethical AI regulations: Governments and industry leaders must implement stringent ethical guidelines to ensure AI systems operate fairly. Accountability frameworks and legal standards can serve as safeguards against discriminatory AI practices.

Conclusion: the future of fair AI

The integration of AI into everyday life presents unparalleled opportunities, but if left unchecked, gender bias within AI systems can exacerbate inequalities rather than resolve them. Addressing these biases requires a commitment to diverse data, ethical development practices and regulatory oversight.

As we mark International Women’s Day, this is a powerful reminder that technology should not reinforce discrimination but instead drive equality. By fostering transparency, inclusivity and accountability, we can harness AI’s potential to create a future that is not just technologically advanced but also equitable and just.


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