Summercamp

time

ML

knowledge

Day 0

Day 1

Machine learning without a PhD

  • Simple NN (acc. 92%)
  • Multilayered NN (acc 95%)
  • Optimized MNN (acc 99.5%)

Day 1

time

ML

knowledge

Day 2

Machine learning hands-on

  • Weights/Biases
  • Activator functions
  • Cost functions
  • Cross entropy

Day 2

Machine learning hands-on

Day 2

time

Hands-on

ML

knowledge

Day 3

Open AI

  • Free data
  • Easy reward measurements
  • Implement your networks within
    the "gym" of openAI
  • Compete with others and help
    ML to progress

Day 3

OpenAI programmer that introduced:

  • OpenAI Gym
  • OpenAI Universe
  • Sources to start learning
    (as a software developer)

Day 3

time

Hands-on

ML

knowledge

Day 3/4

Day 4

Linear algebra 

  • Scalars, Vectors, Matrices, Tensors
  • Addition, Multiplication
  • Linear dependent/independent

Day 4

Day 4

time

Hands-on

ML

knowledge

Day 4

time

Math

knowledge

Day 5

Machine learning

 

by Stanford University​ 

Day 5

Machine learning

 

by Stanford University​ 

  • What is ML?
  • Supervised 
  • Unsupervised
  • Model representation
  • Cost function
  • Etc..

Day 5

time

Hands-on

ML

knowledge

Day 6

time

Hands-on

ML

knowledge

+

Conclusion

  • ML is hard
  • Literature is key
  • Experienced colleagues can help a lot
  • Discussing with colleagues helps as well

Future?

Sources

Summercamp

By rachnerd

Summercamp

  • 241