Artificial Intelligence (AI) and Accountability.pptx
1. Artificial Intelligence (AI) and Accountability
Dr. A. Prabaharan
Professor & Research Director,
Public Action
www.indopraba.blogspot.com
2. AI & Accountability
Accountability in AI refers
to the responsibility and
answerability of AI
developers, providers, and
users for the actions,
decisions, and impacts of
AI systems.
Here are some key aspects
of accountability in AI:
www.indopraba.blogspot.com
3. Developer Accountability
AI developers are accountable for the
design, development, and deployment of
AI systems.
They are responsible for ensuring that AI
technologies are developed in a manner
that complies with ethical principles, legal
requirements, and industry standards, and
that they adhere to best practices for
responsible AI development.
www.indopraba.blogspot.com
4. Provider Accountability
AI providers, including organizations or
entities that deploy AI systems, are
accountable for the use and operation of AI
technologies.
They are responsible for ensuring that AI
systems are deployed in accordance with
ethical guidelines, regulatory requirements,
and contractual obligations, and that they
mitigate risks associated with AI deployment.
www.indopraba.blogspot.com
5. User Accountability
AI users, including individuals or
organizations that interact with AI systems,
are accountable for the decisions and actions
they take based on AI-generated outputs or
recommendations.
They are responsible for critically evaluating
AI recommendations, verifying information,
and making informed decisions based on AI
predictions or suggestions.
www.indopraba.blogspot.com
6. Transparency and Explainability
Accountability in AI requires transparency and
explainability about AI systems' decision-making
processes, data sources, and underlying
assumptions.
Transparent and explainable AI enables
stakeholders to understand how AI systems work,
assess their reliability, and hold AI developers and
providers accountable for their actions and
decisions.
www.indopraba.blogspot.com
7. Bias Mitigation and Fairness
Accountability in AI involves mitigating biases
and ensuring fairness in AI systems' outcomes.
AI developers and providers are accountable
for addressing bias in AI algorithms, ensuring
that AI systems treat individuals fairly and
equitably across different demographic
groups and contexts, and mitigating potential
harms arising from biased AI decisions.
www.indopraba.blogspot.com
8. Ethical Considerations
Accountability in AI raises ethical
considerations related to privacy,
autonomy, and human rights.
AI developers, providers, and users are
accountable for respecting individuals'
privacy rights, preserving autonomy and
human dignity, and upholding ethical
principles in AI development and
deployment.
www.indopraba.blogspot.com
9. Mitigation Strategies
Various strategies can be employed to
mitigate bias in AI, including data
preprocessing techniques (e.g., data
augmentation, debiasing), algorithmic
fairness interventions (e.g., fairness-
aware algorithms, post-processing
techniques), and diversity and inclusion
efforts (e.g., diverse data collection,
stakeholder engagement).
www.indopraba.blogspot.com
10. Ethical Considerations
Addressing bias in AI raises ethical
considerations related to fairness,
transparency, accountability, and social
responsibility.
Ethical frameworks, such as the principle
of beneficence, non-maleficence,
autonomy, and justice, can guide the
development and deployment of AI
systems in a manner that aligns with
ethical principles and societal values.
www.indopraba.blogspot.com
11. Regulatory Compliance
Accountability in AI includes compliance with
regulatory requirements and legal obligations
governing AI technologies.
AI developers and providers are accountable for
complying with laws, regulations, and industry
standards related to data privacy, cybersecurity,
consumer protection, and other regulatory
domains relevant to AI deployment.
12. Continuous Monitoring and Evaluation
Accountability in AI requires continuous
monitoring and evaluation of AI systems'
performance, reliability, and impacts.
AI developers and providers are accountable
for monitoring AI systems' behavior,
identifying potential risks or issues, and taking
corrective actions to address deficiencies or
mitigate harms arising from AI deployment.
13. End Note
Overall, accountability in AI is essential for
promoting responsible AI development
and deployment, fostering trust and
confidence in AI technologies, and
ensuring that AI systems serve the
common good and contribute to positive
societal outcomes.
It requires collaboration, transparency, and
ethical considerations across the AI
ecosystem, from development to
deployment and use.