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amueller@nyu.edu
@amuellerml
@amueller
Amueller.io
Commodity
Machine Learning
and beyond
Andreas Müller
NYU, scikit-learn
To Apply Machine Learning!
What ML can do for you
Hi Andy,
I just received an email from the first tutorial
speaker, presenting right before you, saying
he's ill and won't be able to make it.
I know you have already committed yourself to
two presentations, but is there anyway you
could increase your tutorial time slot, maybe
just offer time to try out what you've taught?
Otherwise I have to do some kind of modern
dance interpretation of Python in data :-)
-LeahHi Andreas,
I am very interested in your Machine Learning
background. I work for X Recruiting who have
been engaged by Z, a worldwide leading supplier
of Y. We are expanding the core engineering
team and we are looking for really passionate
engineers who want to create their own story and
help millions of people.
Can we find a time for a call to chat for a few
minutes about this?
Thanks
Classification
Hi Andy,
I just received an email from the first tutorial
speaker, presenting right before you, saying
he's ill and won't be able to make it.
I know you have already committed yourself to
two presentations, but is there anyway you
could increase your tutorial time slot, maybe
just offer time to try out what you've taught?
Otherwise I have to do some kind of modern
dance interpretation of Python in data :-)
-LeahHi Andreas,
I am very interested in your Machine Learning
background. I work for X Recruiting who have
been engaged by Z, a worldwide leading supplier
of Y. We are expanding the core engineering
team and we are looking for really passionate
engineers who want to create their own story and
help millions of people.
Can we find a time for a call to chat for a few
minutes about this?
Thanks
Classification
Classification
Recommendations
Ranking
Applying machine learning is easy.
Applying machine learning is easy.
But it should be easier!
2750+ research papers
from sklearn.naive_bayes import MultinomialNB
from sklearn.feature_extraction.text import CountVectorizer
from pipeline import make_pipeline
spam_classifier = make_pipeline(CountVectorizer(),
MultinomialNB())
spam_classifier.fit(email_texts, is_spam)
spam_classifier.predict(new_emails)
Fully Functional Spam Classifier
“The scikit-learn tutorials / documentation is so
good, one doesn't need a textbook anymore to
learn a new machine learning method.”
This is not enough!
Data size
Automation /
Expertise needed
Data size
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Fits in Ram Single Machine Infinitely scalable
Library
One Click
Data size
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Amazon Machine Learning
Skll
A single machine is (usually) enough.
We need open box methods.
We need black-box methods.
predict
Hyperparameter Optimization
Spearmint
Hyperopt
SMAC
… scikit-learn
From Eric Brochu, Vlad M. Cora and Nando de Freitas
Bayesian Optimization
Meta-Learning
optimization
Algorithm + ParametersDataset 1
Meta-Learning
optimization
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Dataset 3
optimization
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ML model
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Next Stop
Azure ML
Amazon Machine Learning
36
Release June 2016
37
@amuellerml
@amueller
amueller@nyu.edu
http://amueller.io
Thank you.

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