O’REILLY、INTEL AI 主办
Put AI to work
2018年4月10-11日:培训
2018年4月11-13日:辅导课 & 会议
北京,中国

Schedule: 企业人工智能 (AI in the Enterprise) sessions

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09:3009:45 Thursday, April 12, 2018
Location: 紫金大厅A(Grand Hall A)
Secondary topics:  计算机视觉(Computer Vision)
Reza Zadeh (Matroid | Stanford)
Reza Zadeh details three challenges on the way to building cutting-edge ML products, with a focus on computer vision, offering examples, recommendations, and lessons learned. 了解更多信息.
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11:1511:55 Thursday, April 12, 2018
Location: 紫金大厅B(Grand Hall B)
Secondary topics:  设计AI平台(Designing AI platforms)
Simon Chan (Salesforce)
Building an end-to-end AI application in production is tremendously more complicated than simply doing algorithm modeling in a lab. Simon Chan explains how to cross the gap between AI research fantasy into real-world applications. 了解更多信息.
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13:1013:50 Thursday, April 12, 2018
Location: 多功能厅2(Function Room 2)
Secondary topics:  自然语言与语音技术(Natural Language and Speech Technologies)
Emmanuel Ameisen (Stripe), Yan Kou (Insight Data Science)
Emmanuel Ameisen and Yan Kou share a guide for moving your company toward deep learning using a collection of NLP best practices gathered from conversations with 75+ teams from Google, Facebook, Amazon, Twitter, Salesforce, Airbnb, Capital One, Bloomberg, and others. 了解更多信息.
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14:0014:40 Thursday, April 12, 2018
Location: 多功能厅5A+B(Function Room 5A+B)
Secondary topics:  自然语言与语音技术(Natural Language and Speech Technologies)
Yi Zhang (University of California, Santa Cruz | Rulai)
美国加州大学圣克鲁斯分校终身教授,Rul.ai公司的创始人张奕博士将向您全面剖析智能对话机器人。在这里您可以了解到在建设智能对话机器人中,如何评估各种技术方案,如何建设合适的团队,并且设计出以用户为中心的机器人。 她也会分享智能对话机器人在不同行业的使用案例。 了解更多信息.
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13:1013:50 Friday, April 13, 2018
Location: 多功能厅2(Function Room 2)
Secondary topics:  制造业与工业自动化 (Manufacturing and Industrial Automation), 增强学习(Reinforcement Learning)
Mark Hammond (Microsoft)
Mark Hammond dives into two case studies highlighting how deep reinforcement learning can be applied to real-world industrial applications. 了解更多信息.