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From IM to CS
Yi-Shin Chen
Institute of Information Systems and Applications
Department of Computer Science
National Tsing Hua University
yishin@gmail.com
About Speaker
陳宜欣 Yi-Shin Chen
▷ Currently
• 清華大學資訊工程系副教授
• 主持智慧型資料工程與應用實驗室 (IDEA Lab)
▷ Education
• Ph.D. in Computer Science, USC, USA
• M.B.A. in Information Management, NCU, TW
• B.B.A. in Information Management, NCU, TW
▷ Courses (all in English)
• Research and Presentation Skills
• Introduction to Database Systems
• Advanced Database Systems
• Data Mining: Concepts, Techniques, and
Applications
2@ Yi-Shin Chen
Why am I Here?
3
大數據下的情緒分析
@ Yi-Shin Chen
So? Topics?
▷Text mining?
▷Data mining?
▷Emotion?
▷Experience?
• 2006 NCU MIS: Connecting the dots
@ Yi-Shin Chen 4
Experience in NCU IM
What I said in 2006
@ Yi-Shin Chen 5
Courses Taken at NCU IM
▷General courses
▷IT track
• Assembler
• OS
• Compiler
• Architecture
• Client server programming
• Expert system
• Artificial intelligence
• O-O
@ Yi-Shin Chen 6
Courses Taken at NCU IM (Contd.)
▷Communication skills
@ Yi-Shin Chen 7
Courses Taken at NCU IM (Contd.)
▷Graduate-level courses
• Neural network
• Soft computing
• Genetic algorithm
• Emerging technology management
@ Yi-Shin Chen 8
Student Activities at NCU
▷String club
▷Student association of IM
• Promote NCU IM
@ Yi-Shin Chen 9
Graduate Year at NCU IM
▷Suddenly got bored in summer
• Focus on IT
• One-year graduation
→ Take core courses
→ Finish thesis
→ Blamed because of “show-off”
@ Yi-Shin Chen 10
IM or CS?
@ Yi-Shin Chen 11
Experience in US
@ Yi-Shin Chen 12
First Year at USC
▷No Scholarship?
• Promote myself
→ Got it
▷Course loads
• Terrible
• Collaborate with classmates
▷Research?
@ Yi-Shin Chen 13
Finding Research Topics
▷What is my strength?
• AI-related course
• Strong DB background
→ Thanks for training at NCU IM
• My interests
@ Yi-Shin Chen 14
Finding Research Topics
▷Image Retrieval
• Fuzzy Logic
• Customization  thoughts from training of NCU
IM
▷E-commerce applications
• Recommendation systems
▷Neuroinformatic applications
@ Yi-Shin Chen 15
Back to Taiwan
Life at NTHU
@ Yi-Shin Chen 16
Differences
▷Female
▷Viewpoints:
• IM mind: Technology is one of the possible solutions
→ Slow
→ Humanity
• CS mind: Technology is the solution
→ Fast
→ O(?)
▷Outcome?
• Record of being an assistant professor for 12 years
17@ Yi-Shin Chen
But, in
2014
@ Yi-Shin Chen 18
IM
CS
NTHU
Being a Mom
I found out that I fit all criteria:
Values
▷External values, etc.:
• Grades
• Salary
• Degree
• Any other things could show off
▷Internal values
• Satisfaction
• Happiness
• Any other thing could please ourselves
19@ Yi-Shin Chen
Control by others
Control by us

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2017 ncu experience sharing

  • 1. From IM to CS Yi-Shin Chen Institute of Information Systems and Applications Department of Computer Science National Tsing Hua University yishin@gmail.com
  • 2. About Speaker 陳宜欣 Yi-Shin Chen ▷ Currently • 清華大學資訊工程系副教授 • 主持智慧型資料工程與應用實驗室 (IDEA Lab) ▷ Education • Ph.D. in Computer Science, USC, USA • M.B.A. in Information Management, NCU, TW • B.B.A. in Information Management, NCU, TW ▷ Courses (all in English) • Research and Presentation Skills • Introduction to Database Systems • Advanced Database Systems • Data Mining: Concepts, Techniques, and Applications 2@ Yi-Shin Chen
  • 3. Why am I Here? 3 大數據下的情緒分析 @ Yi-Shin Chen
  • 4. So? Topics? ▷Text mining? ▷Data mining? ▷Emotion? ▷Experience? • 2006 NCU MIS: Connecting the dots @ Yi-Shin Chen 4
  • 5. Experience in NCU IM What I said in 2006 @ Yi-Shin Chen 5
  • 6. Courses Taken at NCU IM ▷General courses ▷IT track • Assembler • OS • Compiler • Architecture • Client server programming • Expert system • Artificial intelligence • O-O @ Yi-Shin Chen 6
  • 7. Courses Taken at NCU IM (Contd.) ▷Communication skills @ Yi-Shin Chen 7
  • 8. Courses Taken at NCU IM (Contd.) ▷Graduate-level courses • Neural network • Soft computing • Genetic algorithm • Emerging technology management @ Yi-Shin Chen 8
  • 9. Student Activities at NCU ▷String club ▷Student association of IM • Promote NCU IM @ Yi-Shin Chen 9
  • 10. Graduate Year at NCU IM ▷Suddenly got bored in summer • Focus on IT • One-year graduation → Take core courses → Finish thesis → Blamed because of “show-off” @ Yi-Shin Chen 10
  • 11. IM or CS? @ Yi-Shin Chen 11
  • 12. Experience in US @ Yi-Shin Chen 12
  • 13. First Year at USC ▷No Scholarship? • Promote myself → Got it ▷Course loads • Terrible • Collaborate with classmates ▷Research? @ Yi-Shin Chen 13
  • 14. Finding Research Topics ▷What is my strength? • AI-related course • Strong DB background → Thanks for training at NCU IM • My interests @ Yi-Shin Chen 14
  • 15. Finding Research Topics ▷Image Retrieval • Fuzzy Logic • Customization  thoughts from training of NCU IM ▷E-commerce applications • Recommendation systems ▷Neuroinformatic applications @ Yi-Shin Chen 15
  • 16. Back to Taiwan Life at NTHU @ Yi-Shin Chen 16
  • 17. Differences ▷Female ▷Viewpoints: • IM mind: Technology is one of the possible solutions → Slow → Humanity • CS mind: Technology is the solution → Fast → O(?) ▷Outcome? • Record of being an assistant professor for 12 years 17@ Yi-Shin Chen
  • 18. But, in 2014 @ Yi-Shin Chen 18 IM CS NTHU Being a Mom I found out that I fit all criteria:
  • 19. Values ▷External values, etc.: • Grades • Salary • Degree • Any other things could show off ▷Internal values • Satisfaction • Happiness • Any other thing could please ourselves 19@ Yi-Shin Chen Control by others Control by us