Baidu AI Cloud upgrades two AI infrastructures
hughmini
发表于 2024-9-26 16:57:16
1199
0
0
On September 25, Baidu AI Cloud announced at its 2024 Baidu Cloud Smart Conference that it would comprehensively upgrade the two AI infrastructures of Baige AI heterogeneous computing platform 4.0 and Qianfan big model platform 3.0, and upgrade the three AI native application products of code assistant, intelligent customer service and digital human, respectively, for computing power, models and AI applications.
"In 2024, the industrial landing of the big model is accelerating. At present, on the Qianfan big model platform, Wenxin's big model has been adjusted more than 700 million times a day, helping users fine tune 30000 big models and develop more than 700000 enterprise level applications. In the past year, Wenxin's flagship big model has reduced the price by more than 90%, and the main model is free of charge, minimizing the cost of enterprise innovation trial and error." Shen Shao, executive vice president of Baidu Group and president of Baidu AI Cloud Business Group, said that the big model and the supporting computing management platform, model and application development platform are rapidly becoming a new infrastructure.
Big computing power is the fundamental condition for the implementation of large models. It is reported that in order to meet the full journey computing needs of enterprise landing large-scale models from cluster creation and development experiments to model training and reasoning, and to address the two challenges of high cost and difficult operation of large-scale GPU clusters, Baidu AI Cloud upgraded and released the 100Ge AI heterogeneous computing platform 4.0, and comprehensively upgraded computing management capabilities for 10000 card and 100000 card clusters.
During the cluster creation phase, enterprises typically need to perform a large amount of complex and tedious computing power configuration and debugging work. Baige 4.0 comes pre installed with mainstream large model training tools, which can achieve tool level deployment in seconds and reduce the preparation time for running a 10000 card cluster from a few weeks to 1 hour, greatly improving deployment efficiency and shortening business deployment cycles.
In the development experiment stage, enterprises need to conduct multiple tests on models with different architectures and parameters based on business goals, and then develop the best model training strategy to ensure the performance and effectiveness of subsequent training. The newly upgraded observability system of Baige 4.0 can comprehensively monitor aspects such as multi-core adaptation, cluster efficiency, and task automatic fault tolerance, providing intuitive decision-making basis and helping users better control the overall project.
At present, Baige has achieved an effective training time ratio of over 99.5% on the Wanka cluster, leading the industry and greatly saving customers' computing power and time costs. In addition, Baige 4.0 has significantly improved the model training efficiency of the cluster through a series of innovations in cluster design, task scheduling, parallel strategy, and video memory optimization, with an overall performance improvement of 30% compared to the industry average.
In addition, in order to meet the needs of enterprise customers for model invocation, model development and application development, Baidu AI Cloud released Qianfan Model Platform 3.0. In terms of model calling, the upgraded Qianfan platform can not only call nearly a hundred domestic and foreign large models, including the Wenxin series, but also support calling various traditional small models such as voice and visual. While expanding the types of models, Baidu AI Cloud continues to reduce the cost of model invocation.
The continuous improvement of tool platforms has also promoted the explosive growth of the large-scale model industry in the past year. The Qianfan platform has precipitated eight industry solutions, including manufacturing, energy, transportation, government affairs, finance, automobile, education, and the Internet.
CandyLake.com 系信息发布平台,仅提供信息存储空间服务。
声明:该文观点仅代表作者本人,本文不代表CandyLake.com立场,且不构成建议,请谨慎对待。
声明:该文观点仅代表作者本人,本文不代表CandyLake.com立场,且不构成建议,请谨慎对待。
猜你喜欢
- Fei Haojun: Empowering the Development of Small and Micro Enterprises in Two Major Directions
- Li Xiang's review of two major issues in March: misjudgment of the pace of pure electric strategy, excessive focus on sales and competition
- Ideal merger of retail and delivery departments to fully sell cars may also be difficult to achieve internal sales targets
- The consolidation index surged by 15%! Two major benefits stimulate Maersk to release November European price increase notice
-
知名做空机构香橼研究(Citron Research)周四(11月21日)在社交媒体平台X上发布消息称,该公司已决定做空“比特币大户”微策略(Microstrategy)这家公司,并认为该公司已经将自己变身成为一家比特币投资基金 ...
- caffycat
- 昨天 11:18
- 支持
- 反对
- 回复
- 收藏
-
每经AI快讯,11月20日,文远知行宣布旗下自动驾驶环卫车S6与无人扫路机S1分别在新加坡滨海湾海岸大道与滨海艺术中心正式投入运营。据介绍,这是新加坡首个商业化运营的自动驾驶环卫项目。 ...
- star8699
- 3 天前
- 支持
- 反对
- 回复
- 收藏
-
上证报中国证券网讯(记者王子霖)11月20日,斗鱼发布2024年第三季度未经审计的财务报告。本季度斗鱼依托丰富的游戏内容生态,充分发挥主播资源和新业务潜力,持续为用户提供高质量的直播内容及游戏服务,进一步 ...
- goodfriendboy
- 3 天前
- 支持
- 反对
- 回复
- 收藏
-
人民网北京11月22日电 (记者栗翘楚、任妍)2024广州车展,在新能源汽车占据“半壁江山”的同时,正加速向智能网联新能源汽车全面过渡,随着“端到端”成为新宠,智能驾驶解决方案成为本届广州车展各大车企竞 ...
- 3233340
- 昨天 17:06
- 支持
- 反对
- 回复
- 收藏