Genetic Bottleneck and the Emergence of High Intelligence by Scaling-out and High Throughput

Arifa Khan, Saravanan P, Venkatesan S. K.
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Abstract

We study the biological evolution of low-latency natural neural networks for short-term survival, and its parallels in the development of low latency high-performance Central Processing Unit in computer design and architecture. The necessity of accurate high-quality display of motion picture led to the special processing units known as the GPU, just as how special visual cortex regions of animals produced such low-latency computational capacity. The human brain, especially considered as nothing but a scaled-up version of a primate brain evolved in response to genomic bottleneck, producing a brain that is trainable and prunable by society, and as a further extension, invents language, writing and storage of narratives displaced in time and space. We conclude that this modern digital invention of social media and the archived collective common corpus has further evolved from just simple CPU-based low-latency fast retrieval to high-throughput parallel processing of data using GPUs to train Attention based Deep Learning Neural Networks producing Generative AI with aspects like toxicity, bias, memorization, hallucination, with intriguing close parallels in humans and their society. We show how this paves the way for constructive approaches to eliminating such drawbacks from human society and its proxy and collective large-scale mirror, the Generative AI of the LLMs.
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基因瓶颈与通过扩展和高通量实现高智能
我们研究了低延迟自然神经网络的生物进化以实现短期生存,以及计算机设计和体系结构中低延迟高性能中央处理器的发展。人脑,尤其被认为是灵长类动物大脑的放大版,是在基因组瓶颈下进化而来的,它产生了一个可被社会训练和修剪的大脑,并作为进一步的延伸,发明了语言、书写和存储在时间和空间中移动的叙述。我们的结论是,社交媒体和归档的共同语料库这一现代数字发明,已经从简单的基于 CPU 的低延迟快速检索,进一步发展到使用 GPU 对数据进行高吞吐量并行处理,以训练基于注意力的深度学习神经网络,产生了具有毒性、偏差、记忆、幻觉等方面的生成式人工智能,与人类及其社会有着惊人的相似之处。我们展示了这如何为消除人类社会及其代理和集体大规模镜像--LLMs 的生成式人工智能--中的这些弊端铺平了建设性的道路。
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