Often published by companies or the government, white papers in technology describe new products, technologies, methods and propose solutions, or share expert knowledge and research on a particular topic.
A white paper is different from a research paper or a report because of its in depth analysis and opinions from experts. They provide detailed information, offer solutions, or argue a specific point of view, often one they back. They are valuable to understand complicated concepts and developments by the company or organisation publishing them.
Here are the top whitepapers on AI –
AI Policy Briefs
MIT has released a set of policy briefs for U.S. AI governance. The key paper, “A Framework for U.S. AI Governance,” suggests using current regulatory frameworks to oversee AI, focusing on specific AI applications. This initiative, led by MIT’s Dan Huttenlocher and Asu Ozdaglar, aims to balance AI leadership and risk management. It’s timely, given the growing global focus on AI regulation, addressing governance challenges for both broad and specific AI technologies, and is part of MIT’s commitment to addressing AI’s societal impacts.
AI regulation: a pro-innovation approach
The UK’s Department for Science Innovation and Technology (DSIT) published a White Paper on March 29, 2023, outlining a “pro-innovation approach to AI regulation.” Trying to catch up with the rapid pace of AI development, UK opts for a decentralised, sector-specific framework using existing laws and its principles-based guidance. It is different from the EU’s AI Act, which adopts a horizontal legislative approach. The UK has aimed to foster innovation in AI applications while ensuring safety and accountability.
The White Paper’s key features include its flexibility in defining AI systems, principles-based approach, sector-focused guidance, and plans for regulatory sandboxes to encourage AI innovation. The DSIT’s strategy reflects a desire to align with international AI frameworks while maintaining a distinct path from the EU’s approach.
Achieving AI ROI Through Training Data Diversity
This Clickworker whitepaper discusses enhancing AI-powered chatbots, focusing on voice bots. It highlights the importance of robust training data to prevent user frustration with inefficient AI. The paper addresses the challenges in voice recognition and natural language processing, crucial for creating effective voice bots.
There is potential for voice bots in improving customer service and the need for diverse, real-world training data for optimal AI function. Clickworker, the company behind the whitepaper, offers solutions for creating this training data, drawing from its global community of workers. The whitepaper also compares voice bots to text bots, emphasising user preferences for the former due to their natural and efficient communication mode.
Coding on Copilot
This whitepaper by William Harding and Matthew Kloster analyses the impact of GitHub Copilot on code quality. It reveals a significant increase in code generation speed and volume due to Copilot but raises concerns about maintainability and quality. The study, based on 153 million lines of code, indicates a rise in code churn and a trend toward more added and copy/pasted code, which suggests a decline in code quality.
The paper discusses the challenges posed by AI-generated code, noting that it often leads to an increase in added code but lacks suggestions for updating or deleting code. This could lead to issues in code maintenance and readability. The research highlights that experienced developers are more cautious in accepting AI suggestions compared to junior developers, hinting at long-term maintainability concerns.
Accelerating Sustainability with AI: A Playbook
This paper published by Microsoft discusses the critical role of AI in addressing the urgent challenges of climate change and environmental sustainability. The paper emphasises AI as a vital tool for measuring, predicting complex systems, speeding up the development of sustainability solutions, and empowering the sustainability workforce.
The paper outlines AI’s potential to improve wildfire prediction, advance renewable energy technologies, and enhance climate-resilient agriculture. It also highlights the need for robust training data to ensure AI’s effective deployment in sustainability efforts.
Microsoft proposes a five-point playbook to maximise AI’s potential for sustainability. This includes investing in AI for sustainability solutions, developing digital and data infrastructure, minimising resource use in AI operations, advancing AI policy and governance for sustainability, and building workforce capacity to use AI for sustainability.
Adaptation of Large Foundation Models
Google’s whitepaper focuses on adapter tuning methods for customising large pre-trained AI models to specific tasks using provided training datasets. This technical reference is designed for developers, product managers, business leaders, and security engineers, detailing how data is handled and the limitations involved.
The paper explains foundation models, which are trained on extensive data, enabling them to learn patterns applicable across different domains. Google’s approach emphasises the use of adapters for efficient fine-tuning, aligning the model with specific domains without rebuilding the entire foundation model.
Security and privacy are highlighted, with assurances that customer data is protected and not used without permission. The paper also discusses Google Cloud’s design considerations for adapter tuning on Vertex AI, emphasising security measures like encryption, access transparency, and automatic deletion of temporary data.
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