Xu Ya, vice president of engineering and head of data and artificial intelligence business at LinkedIn, said that considering that the engineering and product teams are based on OpenAI’s latest GPT model (including ChatGPT and GPT-4) as well as some open source models implemented many changes, a timeline that is unprecedented for a large company like LinkedIn. The tool includes features such as generative AI collaborative articles, personalized writing suggestions for job descriptions and LinkedIn profiles.
Xu Ya explained that the development team she led was able to automatically generate job descriptions and serve real-time traffic in just one month. A cross-functional team with a common goal was key. She added: "This does not mean that we work 20 hours a day or get off work late, but put down other things and focus on completing important work."
Xu Ya said that since LinkedIn is owned by Microsoft subsidiary, she did see the future of this technology in advance. Last fall, she, along with LinkedIn CEO Ryan Roslansky and other colleagues, quickly began envisioning how ChatGPT and other GPT models could create more application and service opportunities for LinkedIn members and customers.
LinkedIn company prioritizes engineering philosophy
Xu Ya said that her team’s early priority engineering philosophy was “rooted in exploration rather than building mature end products.” She explained that maturation of appropriate features and experiences will happen over time, but by putting generative AI technology in the hands of every interested engineer and product manager, such exploration will be encouraged.
By creating the LinkedIn Gateway, you can access OpenAI models and open source models from Hugging Face, and provide LinkedIn’s Generative AI Playground, which enables engineers to explore using advanced generative AI models from OpenAI companies and other sources. LinkedIn data facilitates this exploration. The company also convened thousands of engineers to participate in LinkedIn's largest-ever internal hackathon.
In addition, people at LinkedIn need to better understand how large language models work, including how to do just-in-time engineering, and what potential problems and limitations the models have.
Xu Ya said: "We provide different levels of education, such as company meetings, lunch and learn courses, as well as deeper education for those who are more deeply involved in artificial intelligence development and research and development."
Collaboration is also an important part of integrating and supporting generative AI. She said, “Because of our collaborative culture, we encourage different teams to share resources. This allows them to develop quickly in situations where the number of developers with access to certain generative AI models is limited due to capacity. We work within teams on and pass on their experiences about quotas, access, incentive models, and other best practices so that they can better help each other."
Run fast, but run together
Xu Ya It was also emphasized that LinkedIn is aware that in the process of generative artificial intelligence, there are some areas that need to be completed intensively. She explained that while there's always some tension between running fast and running together, the company tries to maintain those checks and balances, especially when it comes to responsible AI. “While this may slow down the team, we need to be thoughtful about it,” she said.
For example, the company publishes AI-generated articles through an evaluation pipeline, with iterative output that is reviewed by humans and changes They work on the fly until you get a satisfactory score. Xu Ya explained that LinkedIn very carefully considers what risks are tolerable and what are intolerable risks. The company has no tolerance for objectionable content and has a low tolerance for gray area content. It relies on staff to flag content for removal.
She added that she hopes to avoid any bad and damaging information and only allow safe and informative content to be generated and published. For example, she noted that Kevin Roose's recent New York Times article included a transcript of his chat with Microsoft's Bing chatbot. The article points out that it would be concerning if someone shared a guide on how to make a bomb, but if someone gave poor advice on how to complete the task in a chat with the chatbot, or in Roose's case commented on his Marriage, then would be less of a concern.
Xu Ya said, "This technology cannot only exist in the laboratory, but must be put into practical applications. In this way, people can make full use of it in ways that were never expected in the laboratory, but it needs to be Make sure you have the right processes in place." She cited Microsoft Chief Technology Officer Kevin Scott's recent comments on the topic.
The above is the detailed content of How LinkedIn launched an AI tool based on ChatGPT in three months. For more information, please follow other related articles on the PHP Chinese website!

自从 ChatGPT、Stable Diffusion 发布以来,各种相关开源项目百花齐放,着实让人应接不暇。今天,着重挑选几个优质的开源项目分享给大家,对我们的日常工作、学习生活,都会有很大的帮助。

Word文档拆分后的子文档字体格式变了的解决办法:1、在大纲模式拆分文档前,先选中正文内容创建一个新的样式,给样式取一个与众不同的名字;2、选中第二段正文内容,通过选择相似文本的功能将剩余正文内容全部设置为新建样式格式;3、进入大纲模式进行文档拆分,操作完成后打开子文档,正文字体格式就是拆分前新建的样式内容。

面对一夜爆火的 ChatGPT ,我最终也没抵得住诱惑,决定体验一下,不过这玩意要注册需要外国手机号以及科学上网,将许多人拦在门外,本篇博客将体验当下爆火的 ChatGPT 以及无需注册和科学上网,拿来即用的 ChatGPT 使用攻略,快来试试吧!

用 ChatGPT 辅助写论文这件事,越来越靠谱了。 ChatGPT 发布以来,各个领域的从业者都在探索 ChatGPT 的应用前景,挖掘它的潜力。其中,学术文本的理解与编辑是一种极具挑战性的应用场景,因为学术文本需要较高的专业性、严谨性等,有时还需要处理公式、代码、图谱等特殊的内容格式。现在,一个名为「ChatGPT 学术优化(chatgpt_academic)」的新项目在 GitHub 上爆火,上线几天就在 GitHub 上狂揽上万 Star。项目地址:https://github.com/

阅读论文可以说是我们的日常工作之一,论文的数量太多,我们如何快速阅读归纳呢?自从ChatGPT出现以后,有很多阅读论文的服务可以使用。其实使用ChatGPT API非常简单,我们只用30行python代码就可以在本地搭建一个自己的应用。 阅读论文可以说是我们的日常工作之一,论文的数量太多,我们如何快速阅读归纳呢?自从ChatGPT出现以后,有很多阅读论文的服务可以使用。其实使用ChatGPT API非常简单,我们只用30行python代码就可以在本地搭建一个自己的应用。使用 Python 和 C

ChatGPT可以联网后,OpenAI还火速介绍了一款代码生成器,在这个插件的加持下,ChatGPT甚至可以自己生成机器学习模型了。 上周五,OpenAI刚刚宣布了惊爆的消息,ChatGPT可以联网,接入第三方插件了!而除了第三方插件,OpenAI也介绍了一款自家的插件「代码解释器」,并给出了几个特别的用例:解决定量和定性的数学问题;进行数据分析和可视化;快速转换文件格式。此外,Greg Brockman演示了ChatGPT还可以对上传视频文件进行处理。而一位叫Andrew Mayne的畅销作

本篇文章给大家带来了关于php的相关知识,其中主要介绍了我是怎么用ChatGPT学习PHP中AOP的实现,感兴趣的朋友下面一起来看一下吧,希望对大家有帮助。


Hot AI Tools

Undresser.AI Undress
AI-powered app for creating realistic nude photos

AI Clothes Remover
Online AI tool for removing clothes from photos.

Undress AI Tool
Undress images for free

Clothoff.io
AI clothes remover

AI Hentai Generator
Generate AI Hentai for free.

Hot Article

Hot Tools

Safe Exam Browser
Safe Exam Browser is a secure browser environment for taking online exams securely. This software turns any computer into a secure workstation. It controls access to any utility and prevents students from using unauthorized resources.

PhpStorm Mac version
The latest (2018.2.1) professional PHP integrated development tool

MinGW - Minimalist GNU for Windows
This project is in the process of being migrated to osdn.net/projects/mingw, you can continue to follow us there. MinGW: A native Windows port of the GNU Compiler Collection (GCC), freely distributable import libraries and header files for building native Windows applications; includes extensions to the MSVC runtime to support C99 functionality. All MinGW software can run on 64-bit Windows platforms.

WebStorm Mac version
Useful JavaScript development tools

mPDF
mPDF is a PHP library that can generate PDF files from UTF-8 encoded HTML. The original author, Ian Back, wrote mPDF to output PDF files "on the fly" from his website and handle different languages. It is slower than original scripts like HTML2FPDF and produces larger files when using Unicode fonts, but supports CSS styles etc. and has a lot of enhancements. Supports almost all languages, including RTL (Arabic and Hebrew) and CJK (Chinese, Japanese and Korean). Supports nested block-level elements (such as P, DIV),
