[徵才] Appier Inc. 誠徵機器學習資料探勘工程師
Appier Inc. Taipei and Silicon Valley-based start up looking for machine
learning and data mining engineer
【Company name】
美商沛星互動科技股份有限公司 Appier Inc.
【Company Intro】
Appier is formed by a group of experienced computer scientists, data
analysts, and online marketers with substantial experience in data mining
and Apps distribution. Our team members come from Intel, Yahoo, Group M,
Harvard, Berkeley, Stanford and many other world renown institutes.
Appier is recently selected to RocketSpace -- the best startup accelerator
in US.
【Job Description】
1. Work with a team of world class developers to build a top-notch mobile app
promotion platform.
2. Utilize machine learning techniques to tackle challenging Mobile App
marketing and ad targeting problems
3. Implement your cool algorithm on a real world large-scale user behavior
data.
4. Work with a team of smart, creative, and driven people.
5. Work at the prime location of Taipei, surrounded by many fun places.
【Requirements】
1. Strong background in AI, Data Mining, and machine learning.
2. Experienced with MapReduce and other big data processing techniques is a
plus
3. Previous participation in KDD cup is a plus too.
3. Have previous experience in implementing machine learning algorithms on
real world user data set (you know, real world data always requires some
dirty hack:).
5. Enjoy tackling challenging tasks and exploring unknowns.
6. Able to carry out independent research and have strong problem-solving
techniques.
7. self-driven and innovation is part of your gene :)
【Website】
http://www.appier.com/
【月薪】
40k ~ 100k
Updated at 2015/5/18: 60K ~150K
For latest information, please visit
https://www.104.com.tw/job/?jobno=46izo
【聯絡人】
蔡靜雅 vanessa@appier.com
hr@plaxie.com
--
※ 發信站: 批踢踢實業坊(ptt.cc)
◆ From: 220.135.94.48
→
02/25 11:58, , 1F
02/25 11:58, 1F
推
02/26 21:59, , 2F
02/26 21:59, 2F
→
02/26 21:59, , 3F
02/26 21:59, 3F
※ 編輯: springgod 來自: 220.135.94.48 (02/27 11:29)
※ 編輯: springgod (1.34.163.22), 05/18/2015 15:03:40
討論串 (同標題文章)
完整討論串 (本文為第 1 之 2 篇):