AI ethics & governance
Take an interdisciplinary approach that supports agile innovation and ensures governance of your AI systems.
AI brings unprecedented opportunities to businesses, but also incredible responsibility. The output from AI systems has a real bearing on people’s lives, raising considerable questions around AI ethics, data governance, trust, and legality. The more decisions a business puts into the hands of AI, the more they accept significant risks, such as reputational, employment/HR, data privacy, health and safety issues. However, according to an Accenture global research study, 88% of respondents do not have confidence in AI-based decisions.
So how do we learn to trust AI?
Responsible AI is the practice of designing, developing, and deploying AI with good intention to empower employees and businesses, and fairly impact customers and society—allowing companies to engender trust and scale AI with confidence.
With Responsible AI, you can shape key objectives and establish your governance strategy, creating systems that enable AI and your business to flourish.
Build responsibility into your AI to ensure that the algorithms – and underlying data – are as unbiased and representative as possible.
To build trust among employees and customers, develop explainable AI that is transparent across processes and functions.
Empower individuals in your business to raise doubts or concerns with AI systems and effectively govern technology, without stifling innovation.
Leverage a privacy and security-first approach to ensure personal and/or sensitive data is never used unethically.
By creating an ethical underpinning for AI, you can mitigate risk and establish systems that benefit your shareholders, employees and society at large.
An interdisciplinary, innovation-friendly approach can help you design responsibility into your AI from the start.
Operational: Set up governance and systems that will enable AI to flourish.
Technical: Ensure systems and platforms are trustworthy and explainable by design.
Organizational: Democratize the new way of working and facilitate human + machine collaboration.
Reputational: Articulate the responsible AI mission and ensure it’s anchored to your company’s values, ethical guardrails, and accountability structure.
Develop workshops tailored to your business’ needs across every pillar of our Responsible AI approach.
Use your customized set of Responsible AI principles to help establish your governance strategy, shape key objectives, and outline desired outcomes.
Architect and deploy AI models, systems, and platforms that are trustworthy and explainable by design.
Identify new and changing roles and see where you need to upskill, re-skill, or hire employees to accommodate the new way of working.
Articulate a Responsible Business mission, anchored to your company’s core values and informed by brand and public risk assessments and guidance.
The Algorithmic Assessment is a technical evaluation that helps identify and address potential risks and unintended consequences of AI systems across your business, to engender trust and build supportive systems around AI decision making.
Use cases are first prioritized to ensure you are evaluating and remediating those that have the highest risk and impact.
Once priorities are defined, they are evaluated through our Algorithmic Assessment, involving a series of qualitative and quantitative checks to support various stages of AI development. The assessment consists of four key steps: