Moving Data, Moving Target

Uncertainties remain in China’s overhauled cross-border data transfer regime

On March 22, 2024, the Cyberspace Administration of China (CAC) unveiled the current version of China’s rules governing outbound data transfers. The new “Provisions on Promoting and Regulating Cross-Border Data Flows” (or “2024 Provisions”) took effect immediately and eased restrictions affecting many businesses, while still underscoring the strength of the CAC’s authority over high-risk areas. For companies conducting data transfers falling within new exempted categories, the regulations brought relief after years of daunting uncertainty. Long reporting cycles, extensive preparation of materials, and long wait times for audit results had created seemingly insurmountable obstacles for businesses relying on data flows, leading to deep pessimism about China’s business environment.

The new rules, which eased burdens for some and pointed to possible solutions for others, were the latest chapter in a long story of regulatory uncertainty, and they won’t be the last. — Read More

#china

Scalable watermarking for identifying large language model outputs

Large language models (LLMs) have enabled the generation of high-quality synthetic text, often indistinguishable from human-written content, at a scale that can markedly affect the nature of the information ecosystem1–3. Watermarking can help identify synthetic text and limit accidental or deliberate misuse⁴, but has not been adopted in production systems owing to stringent quality, detectability and computational efficiency requirements. Here we describe SynthID-Text, a production-ready text watermarking scheme that preserves text quality and enables high detection accuracy, with minimal latency overhead. SynthID-Text does not affect LLM training and modifies only the sampling procedure; watermark detection is computationally efficient, without using the underlying LLM. To enable watermarking at scale, we develop an algorithm integrating watermarking with speculative sampling, an efficiency technique frequently used in production systems⁵. Evaluations across multiple LLMs empirically show that SynthID-Text provides improved detectability over comparable methods, and standard benchmarks and human side-by-side ratings indicate no change in LLM capabilities. To demonstrate the feasibility of watermarking in large-scale-production systems, we conducted a live experiment that assessed feedback from nearly 20 million Gemini⁶ responses, again confirming the preservation of text quality. We hope that the availability of SynthID-Text⁷ will facilitate further development of watermarking and responsible use of LLM systems. — Read More

#fake