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AI Governance

Effective governance with responsible AI.

Overview

AI governance aims to strike a balance between innovation and protection, promoting the responsible and ethical use of AI technology. We are committed to fostering a holistic AI governance covering the framework of policies, laws, and regulations that guide AI systems’ development, deployment, and use.

Our AI governance framework encompasses a broad spectrum of considerations, including accountability, transparency, fairness, privacy, security, and the overall impact of AI on individuals and society. The core elements of our AI governance framework are:

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01/09

Policy development

Establish a clear set of policies and principles that govern AI systems’ development, deployment, and use. This includes ethical guidelines, data protection policies, fairness and accountability standards, and legal compliance requirements.

02/09

Stakeholder Engagement

Engage with various stakeholders, including government entities, regulatory bodies, industry experts, AI developers, and affected communities. The engagement also requires gathering input, incorporating diverse perspectives, and ensuring transparency and inclusivity in decision-making processes.

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03/09

Risk assessment

Conduct thorough evaluations to identify potential risks and harms associated with AI systems. This includes analyzing biases, privacy concerns, security vulnerabilities, and potential societal impacts. Mitigate risks through the implementation of appropriate safeguards and controls.

04/09

Data governance

Establish robust data governance practices to ensure data quality, privacy protection, and compliance with relevant regulations. This includes data collection, storage, sharing, anonymization techniques, and protocols for obtaining informed consent.

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05/09

Human-in-the-loop approach

We adopt a “human-in-the-loop” approach, where human oversight is integrated into AI systems. This ensures that human judgement is involved in decision-making, helping mitigate the potential biases or errors by AI algorithms.

06/09

Algorithmic transparency and explainability

Promote transparency and explainability in AI systems to understand how decisions are made. Document and disclose AI systems’ algorithms, models, and data sources. Provide mechanisms for individuals to seek explanations for decisions that affect them.

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07/09

Fairness and bias mitigation

Implement measures to identify and address biases in AI systems to ensure fairness and prevent discrimination. Regularly monitor and audit AI systems for bias, and employ techniques such as data preprocessing, algorithmic adjustments, and diverse representation in training data.

08/09

Accountability and auditing

Establish mechanisms for holding developers and deployers of AI systems accountable for their actions. Conduct audits and evaluations of AI systems to assess compliance with regulations, policies, and ethical guidelines.

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09/09

Continuous learning and improvement

Foster a culture of continuous learning and improvement in AI governance practices. Stay updated with advancements in AI technology, monitor emerging risks, and adapt governance frameworks accordingly. Encourage collaboration and knowledge sharing among stakeholders.

Overall, AI governance is a balancing act between fostering innovation and ensuring that AI technologies are developed and used to benefit society, respect fundamental rights, and uphold ethical principles. With our AI Governance framework, we help customers harness AI for positive societal impact while minimizing potential risks and drawbacks.

KEY SECURITY CONSIDERATIONS

Our AI governance framework encompasses a broad spectrum of considerations, including accountability, transparency, fairness, privacy, security, and the overall impact of AI on individuals and society. The core elements of our AI governance framework are:

blank

01/09

Policy development

Establish a clear set of policies and principles that govern AI systems’ development, deployment, and use. This includes ethical guidelines, data protection policies, fairness and accountability standards, and legal compliance requirements.

02/09

Stakeholder Engagement

Engage with various stakeholders, including government entities, regulatory bodies, industry experts, AI developers, and affected communities. The engagement also requires gathering input, incorporating diverse perspectives, and ensuring transparency and inclusivity in decision-making processes.

blank
blank

03/09

Risk assessment

Conduct thorough evaluations to identify potential risks and harms associated with AI systems. This includes analyzing biases, privacy concerns, security vulnerabilities, and potential societal impacts. Mitigate risks through the implementation of appropriate safeguards and controls.

04/09

Data governance

Establish robust data governance practices to ensure data quality, privacy protection, and compliance with relevant regulations. This includes data collection, storage, sharing, anonymization techniques, and protocols for obtaining informed consent.

blank
blank

05/09

Human-in-the-loop approach

We adopt a “human-in-the-loop” approach, where human oversight is integrated into AI systems. This ensures that human judgement is involved in decision-making, helping mitigate the potential biases or errors by AI algorithms.

06/09

Algorithmic transparency and explainability

Promote transparency and explainability in AI systems to understand how decisions are made. Document and disclose AI systems’ algorithms, models, and data sources. Provide mechanisms for individuals to seek explanations for decisions that affect them.

blank
blank

07/09

Fairness and bias mitigation

Implement measures to identify and address biases in AI systems to ensure fairness and prevent discrimination. Regularly monitor and audit AI systems for bias, and employ techniques such as data preprocessing, algorithmic adjustments, and diverse representation in training data.

08/09

Accountability and auditing

Establish mechanisms for holding developers and deployers of AI systems accountable for their actions. Conduct audits and evaluations of AI systems to assess compliance with regulations, policies, and ethical guidelines.

blank
blank

09/09

Continuous learning and improvement

Foster a culture of continuous learning and improvement in AI governance practices. Stay updated with advancements in AI technology, monitor emerging risks, and adapt governance frameworks accordingly. Encourage collaboration and knowledge sharing among stakeholders.

Overall, AI governance is a balancing act between fostering innovation and ensuring that AI technologies are developed and used to benefit society, respect fundamental rights, and uphold ethical principles. With our AI Governance framework, we help customers harness AI for positive societal impact while minimizing potential risks and drawbacks.

Our AI governance framework encompasses a broad spectrum of considerations, including accountability, transparency, fairness, privacy, security, and the overall impact of AI on individuals and society. The core elements of our AI governance framework are:

blank

01/09

Policy development

Establish a clear set of policies and principles that govern AI systems’ development, deployment, and use. This includes ethical guidelines, data protection policies, fairness and accountability standards, and legal compliance requirements.

02/09

Stakeholder Engagement

Engage with various stakeholders, including government entities, regulatory bodies, industry experts, AI developers, and affected communities. The engagement also requires gathering input, incorporating diverse perspectives, and ensuring transparency and inclusivity in decision-making processes.

blank
blank

03/09

Risk assessment

Conduct thorough evaluations to identify potential risks and harms associated with AI systems. This includes analyzing biases, privacy concerns, security vulnerabilities, and potential societal impacts. Mitigate risks through the implementation of appropriate safeguards and controls.

04/09

Data governance

Establish robust data governance practices to ensure data quality, privacy protection, and compliance with relevant regulations. This includes data collection, storage, sharing, anonymization techniques, and protocols for obtaining informed consent.

blank
blank

05/09

Human-in-the-loop approach

We adopt a “human-in-the-loop” approach, where human oversight is integrated into AI systems. This ensures that human judgement is involved in decision-making, helping mitigate the potential biases or errors by AI algorithms.

06/09

Algorithmic transparency and explainability

Promote transparency and explainability in AI systems to understand how decisions are made. Document and disclose AI systems’ algorithms, models, and data sources. Provide mechanisms for individuals to seek explanations for decisions that affect them.

blank
blank

07/09

Fairness and bias mitigation

Implement measures to identify and address biases in AI systems to ensure fairness and prevent discrimination. Regularly monitor and audit AI systems for bias, and employ techniques such as data preprocessing, algorithmic adjustments, and diverse representation in training data.

08/09

Accountability and auditing

Establish mechanisms for holding developers and deployers of AI systems accountable for their actions. Conduct audits and evaluations of AI systems to assess compliance with regulations, policies, and ethical guidelines.

blank
blank

09/09

Continuous learning and improvement

Foster a culture of continuous learning and improvement in AI governance practices. Stay updated with advancements in AI technology, monitor emerging risks, and adapt governance frameworks accordingly. Encourage collaboration and knowledge sharing among stakeholders.

Overall, AI governance is a balancing act between fostering innovation and ensuring that AI technologies are developed and used to benefit society, respect fundamental rights, and uphold ethical principles. With our AI Governance framework, we help customers harness AI for positive societal impact while minimizing potential risks and drawbacks.

How can Mage help

The Mage AI platform can play a key role in enhancing security measures. Here are some ways the platform can address security concerns: