当前播放: GitHub大规模采用机器学习的痛点和破解之道
00:00 / 00:00
高清
  • 高清
1.0x
  • 2.0x
  • 1.5x
  • 1.25x
  • 1.0x
  • 0.5x
网页全屏
全屏
00:00
付费课程,可试看

GitHub大规模采用机器学习的痛点和破解之道

Jose David Baena GitHub Senior Software Engineer

Scaling up machine-learning (ML), data retrieval and reasoning algorithms from Artificial Intelligence (AI) for massive datasets is a major technical challenge in our time. The scaling process can also have different dimensions: performance, development productivity, number of employees…
In this talk I will showcase how we used to develop Machine learning features at GitHub, the pain points we had and how we changed our infrastructure and way of development in order to productionize multiple ML features in terms of hours/days.
In addition, I will explore with the audience the main factors I consider when scaling ML at medium to big companies.
By the end of the talk you should have an overview and applicable framework on how to help scaling ML processes in your company.

讲师简介

Jose David Baena is a Senior Software Engineer at GitHub. He has more than 10 years experience in backend development, from startups to big companies, from Europe to the United States.
His experience ranges from building distributed low latency systems for financial companies to high performant crawlers for social media.
At the moment, he designs architectures that are used by the Machine Learning and Data Science teams at GitHub. He is passionate about distributed systems, machine learning scalability and developer productivity.

展开
¥4.99 购买
开通VIP
登录 后留言

精选留言

由作者筛选后的优质留言将会公开显示,欢迎踊跃留言。
收起评论
其他推荐
29:53
亿级数据服务化平台的建设与发展
常越峰 个推大数据研发高级主管
试看
46:36
业务安全演变和管理解决之道
崔培豪 新浪微博安全产品专家
试看
44:34
大前端工程领域趋势探索及实践
马荃 美团到店终端基础服务技术专家
试看