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Responsible AI: Your in-depth guide to safe AI
We explore how machine learning models, AI regulation, and ethical AI can shape a future where AI technology aligns with human life and values.
Peadar Coyle, Co-founder & CTO
1. Mai 2024
We owe a lot in our lives to the progress of technology, and Arthur C. Clarke, the Science fiction writer, said “Any sufficiently advanced technology is equivalent to magic.” Such changes bring opportunities and risks, so it leads to some questions, like “What would our future become if we let progress step over ethics?” or “Can an organization tap into the immense AI potential without slipping into a moral abyss?”.
According to major industry players who invested billions into AI research and development, the answer is clear - the path forward demands greater effort in steering AI towards responsible use. This blog post explores how machine learning (ML) models, AI regulation, and ethical AI can shape a future where AI technology aligns with human life and values.
Keep reading to:
Understand the importance of responsible AI governance in creating a fair, safe, and trustworthy AI-driven world.
Discover the responsible AI best practices and principles as required by governance.
What is responsible AI?
Responsible AI is a paradigm shift in how we approach AI development and machine learning models. The goal is to create AI that works with ethical considerations safely and fairly.
To produce this shift towards responsible AI, humanity as a whole needs to:
Be aware of the benefits and risks of using artificial intelligence.
Improve AI governance using universal practices and principles.
The 7 principles and practices of responsible AI
Responsible AI doesn't start with governments and laws. It starts with the companies and individuals who are hands-on in developing new technology. The following principles are becoming increasingly popular as the AI industry evolves and are used by tech giants like Microsoft. Any new or existing AI development process should, in some capacity, implement these principles.
1. Transparency
Without transparency, there's no responsible AI. When we know how AI systems operate, we can understand what they can and can’t do. This data helps us make more informed decisions about the use of AI systems.
At AudioStack we regularly conduct research into explainable AI.
2. Fairness
AI must make the world better and more efficient and treat everyone equally. Knowing that the AI systems are fair and unbiased, we can trust they don’t discriminate against any particular group of people.
At AudioStack we regularly test that our systems are fair and unbiased, and we are conducting further research and development in this area.
3. Accountability
Accountability is also critical to responsible AI. It applies to both developing and using every machine learning model and AI system. And it's how we can:
Hold responsible people who might try to use an AI system for bad.
Prevent them from trying in the first place.
At AudioStack we have robust content moderation policies included in our acceptable use policy, which are enforced by our customer success team, furthermore where we need to work with law enforcement agencies we do so. We also maintain detailed logs of all activity on our platform so we can trace activity by bad actors.
4. Privacy
Respecting people’s privacy and protecting personal data matters because training AI requires using a great amount of data that belongs to people. The more privacy-enhanced AI becomes, the more we can develop trustworthy AI technologies. And more people will be happy to use artificial intelligence. At AudioStack we use techniques such as voice captchas to enable privacy to be respected
5. Security
Security is crucial to protect sensitive data and prevent harmful bias or potential threats. In an AI system, good security makes it trustworthy and unlikely to cause unintended consequences to people.
At AudioStack we are SOC2, GDPR and TCFv2.2 compliant - these showcase our security controls, furthermore as part of enhancing our security posture we have both independent third party security audits yearly and have a vulnerability disclosure policy or “bug bounty” where independent members of the information security community can tell us about security vulnerabilities.
6. Robustness
No matter how much we train AI, unexpected situations will occur. That’s why we need responsible AI systems that work well under various conditions. Systems that won't break or cause harm or unfair results.
At AudioStack we regularly run red-teaming sessions against our systems to see if there are safeguards against harm or unfair results.
7. Beneficial use
The goal is to make AI a responsible tool for everyone. To get there, we must create applications that help people and society. This principle allows an AI system to minimize the risk and create positive outcomes, like improving fairness and efficiency.
At AudioStack we are pioneers in Responsible AI - we’re members of the Content Authenticity Initiative and we work with regulators and policy folks to make sure we’re creating positive outcomes. For example we were recently working with a major NGO about how to integrate Responsible AI into their policies. Furthermore we also have ethics policies and various internal policies and controls - under SOC2 to improve our ethical framework - you can see more here https://audiostack.ai/ethics
Why is responsible AI important?
Responsible AI best practices and principles ensure generative AI systems and models transform our lives while:
Keeping humans in charge.
Ensuring it does more good than harm.
AI can be a great tool, but, as John D. Rockefeller said, “Every right implies a responsibility; Every opportunity, an obligation, Every possession, a duty.”
After all, artificial intelligence can greatly impact our lives. Through every ML model, decision tree, natural language processing, and other computational linguistics it uses, responsible AI must serve the good. AI must align with our society’s ethics, laws, and values.
How do we keep an AI system trustworthy and unbiased?
There are 3 key ways to keep your AI system trustworthy. In a nutshell, it comes down to feeding any artificial intelligence model good, diverse data, ensuring algorithms accommodate that diversity, and testing the resulting software for mislabeling or poor correlations.
Here's a bit more detail on how we can make that happen:
Set clear computational linguistics decision-making processes by feeding ML models and pre-trained NLP models exclusively with comprehensive, high-quality data sets.
Train developers of ML models to design algorithms that reflect a broad range of perspectives and experiences, select diverse data, and interpret data impartially.
Train ML models and evaluate their decision-making processes with adversarial testing and gendered correlations.
Did you know? 🤔
Adversal testing looks for inputs to an ML model, or AI system created to cause the system to make a mistake. For example, adversarial examples are when you subtly alter an image in a way that is almost imperceptible to humans but causes AI image recognition systems to mislabel it.
Responsible AI eases technology development & adoption
There's no doubt that AI and ML models have an exponential ability to improve everything about our planet. And for us to make the most of this invention, we need a forward-looking approach that puts humans (not results) first.
In other words, responsible AI needs to be popular AI.
Tools should be accessible and beneficial to a broad range of people. And they should help people avoid real-world risks associated with biased or harmful outcomes. To do that, development processes need to comply with both existing and emerging regulations on data privacy. Developers and organizations need to be externally motivated by legislation to keep up with compliance and take responsibility for their inventions.
The need for responsible AI standardization
Nobel-prized author Thomas Mann believed “Order and simplification are the first steps toward the mastery of a subject.”
A standardized development process is, indeed, the first step to enabling an organization to create responsible AI and machine learning.
We have safety standards for cars and food. Similarly, we need AI regulation for developers to make their technologies human-centered.
With the right standards, we can:
Protect our privacy, as every organization handles our data responsibly.
Remove bias by promoting justice, as AI systems treat everyone equally and avoid unfair outcomes.
Provide users with increased safety, as technologies like self-driving cars, medical diagnosis, and financial systems are reliable and safe.
Google’s responsible AI practices and principles
Google is the company that invested the highest amount of money into AI research and development.
Over the past decade, the tech giant spent up to $200 billion to create artificial intelligence applications. And they did it because they understand responsible AI principles help the organization:
Build trust with users.
Avoid discrimination and privacy issues.
While, like many companies, they haven’t always gotten things right, Google’s main pillar for responsible AI is transparency. They’ve published many resources on the topic, and overall, that’s a positive thing, considering that the industry titan is here to stay.
Some specific examples of Google's practices that support responsible AI principles and AI ethics include:
Google AI Principles: Seven principles that guide continuous improvement in the company's responsible AI work.
Google AI for Social Good program: An initiative that funds and supports research and organizations that use AI to solve social and environmental problems.
Google Model Cards: A way for teams to document their AI models and make them more transparent.
Google AI Explainability Toolkit: A set of tools and resources that help teams make their AI models more explainable.
Google AI Fairness Testing Tools: A set of tools for teams to identify and mitigate bias in every AI system.
More responsible AI examples
More and more companies are actively working on implementing the principles of responsible AI. Every big name in the industry has some sort of program to reduce the risk of misusing AI and address issues like transparency and accountability.
Facebook’s five pillars of responsible AI
Facebook is an organization that uses AI in various ways, from managing News Feeds to tackling the risk of misinformation and has a Responsible AI (RAI) team. This team, alongside external experts and regulators, develops machine learning systems responsibly.
Facebook's RAI focuses on five key areas:
Privacy & Security
Fairness & Inclusion
Robustness & Safety
Transparency & Control
Accountability & Governance
OpenAI’s ChatGPT usage policies
OpenAI's Chat GPT policies ensure AI ethics by:
Supporting the responsible use of its models and services.
Restricting usage in sensitive areas like law enforcement and health diagnostics.
Users must be informed about AI's involvement in products, especially in the medical, financial, and legal sectors.
Automated systems must disclose AI usage, and real-person simulations need explicit consent.
Salesforce’s generative AI 5 guidelines for responsible development
Salesforce outlines five key guidelines for the responsible development and implementation of generative AI:
Accuracy: Demands verifiable results, advocating for using customer data in training models and clear communication about uncertainties.
Safety: Prioritizes mitigating bias, toxicity, and harmful outputs, including thorough assessments and protecting personal data privacy.
Honesty: Insists on respecting data provenance, consent, and transparency regarding AI-generated content.
Empowerment: Aims to balance automation and human involvement to enhance human capabilities.
Sustainability: Advocates for developing the right-sized AI models to reduce the carbon footprint.
IBM’s fairness tool
AI Fairness 360 is an open-source toolkit designed by IBM Research. The organization supported its implementation to help detect, report and mitigate bias in machine learning models across the AI application lifecycle.
Users can contribute new metrics and algorithms, share experiences, and learn from the community. This responsible AI toolkit offers:
Over 70 metrics to measure individual and group fairness in AI systems.
Algorithms addressing bias in different stages of AI systems.
Various instruments and resources for understanding and addressing AI systems biases.
Hugging Face Responsible AI
Hugging Face is a prominent organization in the AI and NLP field. The company has consistently shown commitment to responsible AI principles and practices. Key aspects of their use of AI include:
Open source and transparency: They're offering open-source instruments and models that attract feedback and improvement from the community, thus leading to more ethical and unbiased AI solutions.
Community collaboration: By encouraging contributions from a diverse range of users and developers, they foster an inclusive environment.
White box approach: Hugging Face promotes a white box approach by providing detailed documentation and interpretability tools for their models, in contrast with the black box nature of many other AI systems.
Ethical guidelines and standards: The organization adheres to responsible AI guidelines and standards, ensuring their models and instruments consider the potential impacts on society and individuals.
Future plans
The world and AI are evolving, as are industry guidelines and regulations. To keep up with it all, AudioStack is following concrete goals like:
Verifying the credentials of any organization that wants to create news content using its technology.
Collaborating with expert partners to curb the creation and spread of abusive content.
Staying at the forefront of a rapid evolution in synthetic media and AI governance.
About AudioStack
AudioStack is the world's leading end-to-end enterprise solution for AI audio production. Our proprietary technology connects AI-powered media creation forms such as AI script generation, text-to-speech, speech-to-speech, generative music, and dynamic versioning. AudioStack unlocks cost and time-efficient audio that is addressable at scale, without compromising on quality.