Deep Learning Specialization on Coursera

Udacity High School Challenge - Udacity高中生挑战赛

+1投票

Udacity这两天推出了一个"Udacity High School Challenge", 规则很简单,大意是:

第一,需要是高中生,并找一个同学组建一个team,这两个人都是team leader;

第二,注册后尽可能的招募同学朋友一起学习,任何udacity上的课程都行;

第三,在8月26号之前每人完成一个课程就记一分,尽可能的多得分;

得分最多的前5个team的leader及他们的父母之一可以去斯坦福大学参观学习;如果因为签证的问题不能成行,将有替代的措施。非常好的机会,年轻高中同学们不要错过!

部分原文如下,详细信息可参考上面的链接,里面还包括视频等内容:

Here are the rules:

  • - If you are a high school (secondary school) student, pair up with a friend from your school. You two will be the team leaders.
  • - Visit the Udacity contest page, sign up, and create your team name.
  • - Sign up as many people as you can to take online college classes with you. These can be classmates, relatives, and even your teachers. You'll have a special code for the sign-up so that your team members can identify themselves as members of your team and get your team credit.
  • - Recruit your friends and encourage your team members to recruit their friends too. Start building your teams now to get ready for the June 25th start date!
  • - Your team members then take as many classes as they wish; all courses are free. Any course unit that is successfully completed before August 26th will count as one point for your team. The goal is to get as many points as you can!

Team leaders from the top five teams will win a trip to Stanford! If you are one of the winning teams' two team leaders, you and a parent can come and visit Stanford. We realize that in some cases it may be difficult to visit (e.g. visa problems), in which case we'll find something else for you to win.

Developing interactive online classes has been a thrill ride. Share the excitement of learning by taking classes with friends and family - and win a personal tour of Stanford! Start your team now!

时间: 2012年 6月 8日 分类:其他 作者: 52opencourse (20,750 基本)

1个回答

0 投票

附上视频:

已回复 2012年 6月 19日 作者: 52nlp (3,230 基本)
NLPJob

Keyword Extraction

TensorFlow Tutorial

Sentiment Analysis

Free Article Spinner

Text Analysis Online

Text Processing

Word Similarity

本站架设在 DigitalOcean 上, 采用创作共用版权协议, 要求署名、非商业用途和保持一致. 转载本站内容必须也遵循“署名-非商业用途-保持一致”的创作共用协议.