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Machine Learning for dummies

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This presentation covers a lot about how machine learning works, what it is and some interesting things that it can do.

Published in: Data & Analytics
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Machine Learning for dummies

  1. 1. Interesting Topics in Machine akiya
  2. 2. Machine Learning ● Supervised ● Learning ● UnSupervise d ● Learning ● Semi- Supervised ● Learning X1 X2 Y 10 20 1 10 30 1 5 10 0 10 50 0 X1 X2 10 20 10 30 5 10 10 50
  3. 3. I got it ! I didn't get It :(
  4. 4. Lets start Differently
  5. 5. What is ML?
  6. 6. Gradient Descent (Parent Concept) ● Y = aX + b (a,b) are unknowns
  7. 7. Secret of ML lies in Gradient Descent. Moving from universe of points to universe of parameters.
  8. 8. Bored of Math? Here comes Applications
  9. 9. Recent Applications
  10. 10. Dedicated to stoners and day dreamers.
  11. 11. Google Hallucinations
  12. 12. Google Hallucinations Mordvintsev, Alexander; Olah, Christophe CVPR-15
  13. 13. Learning Human idea of object by Eye Gaze Jaley Dholakiya and Srinivas Krutiventi CVPR-2016
  14. 14. ● More the hidden ● implies ● More complex solution GRRR. . .
  15. 15. AlphaGo – Monte Carlo Tree Search
  16. 16. Monte Carlo Tree Search
  17. 17. Query Time Estimator ● Willcover ONLY mathematics. (not Hive) ● Estimating query time of hive ● On abstract Level . . . ● It is again similarto learning y = ax + b as described earlier.But slightlydifferently. ● y= (d.j).w1 + (t/vc)w2 + t.w3 + d.w4+j.w5+ w0 ● d=depth of sd tree , j= pending jobs , vc=vcores/running jobs, ● t=total cpu-time, y= estimated execution time ● w=[w0 w1 w2 w3 w4 w5] and var(w)=[0.05 0.08 0.1 0.1 0.03
  18. 18. Challenges ● Lot of Noise and ambiguity ● Instantaneous Nature of solution. ● Two experiments conducted ● 1. Random Forest Based ● 2. Monte Carlo based Particle Filter
  19. 19. Random Forest Forest of decision Trees
  20. 20. Particle Filter based
  21. 21. World Speaks You need to burn Like a Fire, To glow like it Machine Learning requires : 1. Intelligence 2. Hardwork 3. Struggle
  22. 22. Bullshit, You burn like Fire, will flow like water in rain :p, You can be forgetful, crazy, passionate,Lost, and still learn ML. Hmm, where was I?

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