EnterpriseAI 2024年11月07日
The Growing E-Waste Footprint of GenAI
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随着生成式人工智能(GenAI)的快速发展,其对电子垃圾(e-waste)的影响日益显著。GenAI模型训练和推理需要大量计算资源,导致高性能计算设备的快速更新换代,从而产生大量电子垃圾。全球电子垃圾产量增长速度远超回收速度,对环境和人类健康构成严重威胁。钴等关键材料的开采也面临着环境和人权问题。文章探讨了GenAI带来的电子垃圾问题,并提出延长设备使用寿命、改进硬件设计等解决方案,呼吁科技公司和消费者共同关注并解决这一问题。

🤔**电子垃圾产量快速增长:**全球电子垃圾产量在2022年达到6200万吨,增长速度是回收速度的五倍,预计到2030年将达到8200万吨,对环境和人类健康构成严重威胁。

♻️**生成式AI加剧电子垃圾问题:**GenAI模型训练和推理需要高性能计算设备,这些设备的更新换代速度快,导致大量电子垃圾产生,例如服务器、GPU、CPU等。

⚠️**钴等关键材料开采面临挑战:**电子设备中使用的钴等关键材料的开采,例如在刚果民主共和国,存在着危险的工作环境和人权问题。

💡**延长设备使用寿命和改进硬件设计:**研究表明,延长设备使用寿命、改进硬件设计,例如易于拆卸和回收,可以有效减少电子垃圾的产生。

🌍**责任的转移:**科技公司和消费者都需要承担起减少电子垃圾的责任,但科技公司可能更倾向于追求产品更新换代,因此消费者需要做出选择,是否优先考虑可持续性。

The rapid advancement of digital technologies has led to the proliferation of electronic devices and systems, resulting in an alarming increase in electronic waste (e-waste).  GenAI, in particular, requires substantial computational resources for model training and inference, but the impact of this on e-waste is not fully understood. 

The latest Global E-Waste Monitor by the United States Institution for Training and Research (UNITAR) reveals that the world’s generation of e-waste is rising five times faster than documented e-waste recycling

In 2022, the world produced 62 million tonnes of electronic waste, marking an 82% rise from 2010 levels. If this trend persists, global e-waste generation is projected to increase by an additional 32%, potentially reaching 82 million tonnes by 2030.

Why does it matter? E-waste, such as discarded electronic equipment and products, is a major threat to public health and safety. Some of the e-waste such as batteries contain toxic additives and hazardous substances that can cause serious harm to human health. 

When consumers dispose of their electronics improperly or fail to recycle, the cycle of demand for new materials, like cobalt, continues to grow.

Cobalt is a critical component used in many electronic devices, including batteries. The world’s largest cobalt reserve is located in the Democratic Republic of the Congo (DRC), where over 255,000 citizens, including 40,000 children, mine cobalt under hazardous conditions. This relentless need for more cobalt exposes these workers to dangerous working conditions, toxic exposure, and long-term health risks. 

While the threat of e-waste is not new, GenAI is making it significantly worse. The main source of e-waste generated by Generative AI comes from the high-performance computing equipment used in data centers and server farms, such as servers, GPUs, CPUs, memory units, and storage drives.

Some e-waste contains valuable metals such as gold, silver, copper, and rare earth elements. However, it also contains hazardous materials such as chromium, lead, and mercury. 

According to an article published in the New York Times, “backyard recyclers” in Thailand, India, and Indonesia use nitric and hydrochloric acid to wash discarded circuit boards to recover gold. They are literally cooking the e-waste to get valuable metals hidden inside plastic, circuits, and wires. 

A key factor contributing to the high levels of e-waste generated by AI companies is the rapid pace of technological advancement in hardware. The typical lifespan of high-performance computing devices is just two to five years, after which they are replaced by more advanced models. 

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While several countries have enacted e-waste legislation, the approaches vary widely, leading to inconsistent and fragmented solutions. There is currently no federal law in the US that supports e-recycling. The insufficient recycling infrastructure and a lack of incentives for manufacturers to improve product design for recyclability have further exacerbated the issue. 

In the paper “E-Waste Challenges Of Generative Artificial Intelligence” published in Nature, the authors shared that expanding the lifespan of technologies is one of the most significant ways to cut down on e-waste. 

Only about 22% of e-waste is recycled today. The researchers recommend reusing or refurbishing components to cut down on e-waste. It would also help to design hardware in a way that makes it easier to recycle and upgrade. The study predicts that these strategies can reduce e-waste by up to 86% in the best-case scenario. 

As the issue of e-waste receives growing attention, there is increasing pressure on tech companies to make it easier for consumers to recycle and repair electronic devices. However, an increase in the lifespan of the hardware may not be in the best interests of these companies. As a result, the responsibility may shift to end users to decide if they want to prioritize sustainability. 

 

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电子垃圾 生成式AI GenAI 可持续发展 环境问题
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