男女羞羞视频在线观看,国产精品黄色免费,麻豆91在线视频,美女被羞羞免费软件下载,国产的一级片,亚洲熟色妇,天天操夜夜摸,一区二区三区在线电影
Global EditionASIA 中文雙語Fran?ais
Business
Home / Business / Technology

Nation's firms eye lightweight LLMs as AI race heats up

Smaller large models require fewer calculations, less powerful processors

By CHENG YU | CHINA DAILY | Updated: 2024-03-11 09:02
Share
Share - WeChat
An employee introduces an AI large model to a visitor (middle) during the 2nd Global Digital Trade Expo in Hangzhou, Zhejiang province. [ZHU HAIWEI/FOR CHINA DAILY]

More Chinese companies are developing lightweight large language models after US-based technology firm OpenAI launched a text-to-video model, Sora, last month, hiking the stakes in the global AI race.

The lightweight model, also known as a smaller large model, basically refers to those that require fewer parameters. This means they will have limited capacity to process and generate text compared to large models.

Simply put, these small models are like compact cars, while large models are like luxury sport utility vehicles.

In February, Chinese artificial intelligence startup ModelBest Inc launched its latest lightweight large model, generating much attention in the AI industry.

Dubbed as MiniCPM-2B, the model is embedded with a capacity of 2 billion parameters, much smaller than the 1.7 trillion parameters that OpenAI's massive GPT-4.0 can handle.

In December, US tech giant Microsoft released Phi-2, a small language model capable of common-sense reasoning and language understanding, although this packed 2.7 billion parameters.

Li Dahai, CEO of ModelBest, said the new model's performance is close to that of Mistral-7B from French AI company Mistral on open-sourced general benchmarks with better ability on Chinese, mathematics and coding. Its overall performance exceeds some peer large models with some 10-billion-level parameters, Li said.

"Both large and smaller large models have their advantages, depending on the specific requirements of a task and their constraints, but Chinese companies may find a way out to leverage small models amid an AI boom," said Li.

Zhou Hongyi, founder and chairman of 360 Security Technology, and a member of the 14th National Committee of the Chinese People's Political Consultative Conference at the ongoing two sessions, had also said previously in an interview that creating a universal large model that surpasses GPT-4.0 may be challenging at the moment.

Though GPT-4.0 currently "knows everything, it is not specialized", he said.

"If we can excel in a particular business domain by training a model with unique business data and integrating it with many business tools within that sector, such a model will not only have intelligence, but also possess unique knowledge, even hands and feet," he said.

Li said that if such a lightweight model can be applied to industries, its commercial value will be huge.

"If the model is compressed, it will require fewer calculations to operate, which also means less powerful processors and less time to complete responses," Li said.

"With the popularity of such end-side models, the inference cost of more electronic devices, such as mobile phones, will further decrease in the future," he added.

Top
BACK TO THE TOP
English
Copyright 1995 - . All rights reserved. The content (including but not limited to text, photo, multimedia information, etc) published in this site belongs to China Daily Information Co (CDIC). Without written authorization from CDIC, such content shall not be republished or used in any form. Note: Browsers with 1024*768 or higher resolution are suggested for this site.
License for publishing multimedia online 0108263

Registration Number: 130349
FOLLOW US
CLOSE
 
主站蜘蛛池模板: 和硕县| 双辽市| 荔浦县| 衡水市| 开远市| 忻州市| 周口市| 当阳市| 安泽县| 广河县| 来凤县| 巴里| 铜川市| 嘉黎县| 江山市| 和政县| 田林县| 景泰县| 海林市| 灌南县| 台州市| 西宁市| 义马市| 雷州市| 梨树县| 南城县| 清远市| 竹北市| 庆云县| 前郭尔| 新余市| 荔波县| 抚顺县| 永修县| 双辽市| 浙江省| 崇仁县| 诸暨市| 西充县| 隆林| 惠安县| 高青县| 万源市| 江孜县| 若尔盖县| 和政县| 兴安县| 蒙城县| 蓬莱市| 高雄县| 潍坊市| 丰县| 巴中市| 德昌县| 腾冲县| 榆树市| 兰考县| 翁源县| 望城县| 方山县| 临桂县| 南宁市| 通州市| 高雄市| 修水县| 丹巴县| 苏尼特右旗| 三原县| 南溪县| 武乡县| 尤溪县| 财经| 侯马市| 新丰县| 中阳县| 阳谷县| 观塘区| 汉沽区| 资兴市| 潜江市| 襄樊市| 邵东县|