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sispub
courses
machinelearning-introduction-workshop
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4116e3f5
Commit
4116e3f5
authored
5 years ago
by
schmittu
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class: inverse, center, middle, remark-frontslide-content
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---
class: center, middle, inverse, remark-slide-content-large
# About us
---
class: remark-slide-content-large
## About Scientific IT Services (SIS)
---
class: remark-slide-content-large
## About Scientific IT Services (SIS)
- IT Services close to research
---
class: remark-slide-content-large
## About Scientific IT Services (SIS)
- IT Services close to research
- Zoo of experts with diverse background
---
class: remark-slide-content-large
## About Scientific IT Services (SIS)
- IT Services close to research
- Zoo of experts with diverse background
### Here today:
* Dr. Tarun Chadha
* Dr. Mikolaj Rybinski
* Dr. Uwe Schmitt
---
class: remark-slide-content-large
## About Scientific IT Services (SIS)
- Scientific Computing Services: Euler, ...
---
class: remark-slide-content-large
## About Scientific IT Services (SIS)
- Scientific Computing Services: Euler, ...
- Data Science Support
---
class: remark-slide-content-large
## About Scientific IT Services (SIS)
- Scientific Computing Services: Euler, ...
- Data Science Support
- Software Development: openBIS, ...
---
class: remark-slide-content-large
## About Scientific IT Services (SIS)
- Scientific Computing Services: Euler, ...
- Data Science Support
- Software Development: openBIS, ...
- Scientific Visualization
---
class: remark-slide-content-large
## About Scientific IT Services (SIS)
- Scientific Computing Services: Euler, ...
- Data Science Support
- Software Development: openBIS, ...
- Scientific Visualization
- Consulting and Training: Code Clinics, ...
---
class: remark-slide-content-large
## About Scientific IT Services (SIS)
- Scientific Computing Services: Euler, ...
- Data Science Support
- Software Development: openBIS, ...
- Scientific Visualization
- Consulting and Training: Code Clinics, ...
- Research Data Management
---
class: remark-slide-content-large
## About Scientific IT Services (SIS)
- Scientific Computing Services: Euler, ...
- Data Science Support
- Software Development: openBIS, ...
- Scientific Visualization
- Consulting and Training: Code Clinics, ...
- Research Data Management
- Research Data Analysis
---
class: remark-slide-content-large
## About Scientific IT Services (SIS)
- Scientific Computing Services: Euler, ...
- Data Science Support
- Software Development: openBIS, ...
- Scientific Visualization
- Consulting and Training: Code Clinics, ...
- Research Data Management
- Research Data Analysis
- Personalized Health Data Services
---
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<span
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Contact us !
<br/>
<br/>
https://sis.id.ethz.ch/
</span>
---
class: center, middle, inverse, remark-slide-content-large
# About the course
---
class: remark-slide-content-large
# About the course
* First version, might be a bit rough, not sure if time planning is good.
---
class: remark-slide-content-large
# About the course
* First version, might be a bit rough, not sure if time planning is good.
* Pragmatic approach, little math.
---
class: remark-slide-content-large
# About the course
* First version, might be a bit rough, not sure if time planning is good.
* Pragmatic approach, little math.
* Introduction only !
---
class: remark-slide-content-large
# About the course (2)
What will you learn ?
* Basic concepts of Machine Learning (ML).
---
class: remark-slide-content-large
# About the course (2)
What will you learn ?
* Basic concepts of Machine Learning (ML).
* More classical machine learning than artificial neural networks.
---
class: remark-slide-content-large
# About the course (2)
What will you learn ?
* Basic concepts of Machine Learning (ML).
* More classical machine learning than artificial neural networks.
* General overview of supervised learning and related methods.
---
class: remark-slide-content-large
# About the course (2)
What will you learn ?
* Basic concepts of Machine Learning (ML).
* More classical machine learning than artificial neural networks.
* General overview of supervised learning and related methods.
* How to start with ML using `scikit-learn` and `Keras`.
---
class: remark-slide-content-large
# About the course (3)
What will you NOT learn?
* How to program with Python.
---
class: remark-slide-content-large
# About the course (3)
What will you NOT learn?
* How to program with Python.
* How exactly ML methods work.
---
class: remark-slide-content-large
# About the course (3)
What will you NOT learn?
* How to program with Python.
* How exactly ML methods work.
* Unsupervised learning methods.
---
class: center, middle, inverse, remark-slide-content-large
# Schedule
---
class: remark-slide-content-large
# Day 1
- Chapter 0: Quick Introduction to numpy, pandas, matplotlib
---
class: remark-slide-content-large
# Day 1
- Chapter 0: Quick Introduction to numpy, pandas, matplotlib
- Chapter 1: General Introduction to Machine Learning
---
class: remark-slide-content-large
# Day 1
- Chapter 0: Quick Introduction to numpy, pandas, matplotlib
- Chapter 1: General Introduction to Machine Learning
- Chapter 2: Introduction to Classification
---
class: remark-slide-content-large
# Day 1
- Chapter 0: Quick Introduction to numpy, pandas, matplotlib
- Chapter 1: General Introduction to Machine Learning
- Chapter 2: Introduction to Classification
- Chapter 3: Overfitting and Cross Validation
---
class: remark-slide-content-large
# Day 1
- Chapter 0: Quick Introduction to numpy, pandas, matplotlib
- Chapter 1: General Introduction to Machine Learning
- Chapter 2: Introduction to Classification
- Chapter 3: Overfitting and Cross Validation
- Chapter 4: Measuring Quality of a Classifier
---
class: remark-slide-content-large
# Day 1
- Chapter 0: Quick Introduction to numpy, pandas, matplotlib
- Chapter 1: General Introduction to Machine Learning
- Chapter 2: Introduction to Classification
- Chapter 3: Overfitting and Cross Validation
- Chapter 4: Measuring Quality of a Classifier
- Chapter 5: Classification Algorithms Overview
---
class: remark-slide-content-large
# Day 2
- Chapter 6: Pipelines and Hyperparameter Optimisation
---
class: remark-slide-content-large
# Day 2
- Chapter 6: Pipelines and Hyperparameter Optimisation
- Chapter 7: Introduction to Regression
---
class: remark-slide-content-large
# Day 2
- Chapter 6: Pipelines and Hyperparameter Optimisation
- Chapter 7: Introduction to Regression
- Chapter 8: Introduction to Neural Networks
---
class: center, middle, inverse, remark-slide-content-large
# Quick poll
---
class: remark-slide-content-large
# Who used ... before ?
- Jupyter Notebooks
---
class: remark-slide-content-large
# Who used ... before ?
- Jupyter Notebooks
- Pandas
---
class: remark-slide-content-large
# Who used ... before ?
- Jupyter Notebooks
- Pandas
- Matplotlib
---
class: remark-slide-content-large
# Who used ... before ?
- Jupyter Notebooks
- Pandas
- Matplotlib
- seaborn
---
class: remark-slide-content-large
# Who used ... before ?
- Jupyter Notebooks
- Pandas
- Matplotlib
- seaborn
- numpy
---
class: center, middle, inverse, remark-slide-content-large
# Questions ?
---
class: remark-slide-content-large
# Get started
---
class: remark-slide-content-large
# Get started
1. Start Computer, chose `fedora` during startup
---
class: remark-slide-content-large
# Get started
1. Start Computer, chose `fedora` during startup
2. Login with your `NETHZ` credentials
---
class: remark-slide-content-large
# Get started
<p>
1. Start Computer, chose `fedora` during startup
<br/>
<br/>
---
class: remark-slide-content-large
# Get started
<p>
1. Start Computer, chose `fedora` during startup
<br/>
<br/>
<p>
2. Login with your `NETHZ` credentials
<br/>
<br/>
---
class: remark-slide-content-large
# Get started
<p>
1. Start Computer, chose `fedora` during startup
<br/>
<br/>
<p>
2. Login with your `NETHZ` credentials
<br/>
<br/>
<p>
3. Start Terminal (click `activity` top-left corner)
<br/>
<br/>
---
class: remark-slide-content-large
# Get started
<p>
1. Start Computer, chose `fedora` during startup
<br/>
<br/>
<p>
2. Login with your `NETHZ` credentials
<br/>
<br/>
<p>
3. Start Terminal (click `activity` top-left corner)
<br/>
<br/>
<p>
4. Enter
<br/><br/><div
style=
"font-family: Ubuntu Mono; font-size: .8em;"
><center>
curl https://sis.id.ethz.ch/mlw/install.sh | bash
</center></div>
<br/>
<br/>
---
class: remark-slide-content-large
# Get started
<p>
1. Start Computer, chose `fedora` during startup
<br/>
<br/>
<p>
2. Login with your `NETHZ` credentials
<br/>
<br/>
<p>
3. Start Terminal (click `activity` top-left corner)
<br/>
<br/>
<p>
4. Enter
<br/><br/><div
style=
"font-family: Ubuntu Mono; font-size: .8em;"
><center>
curl https://sis.id.ethz.ch/mlw/install.sh | bash
</center></div>
<br/>
<br/>
<p>
5. Wait and press `ENTER` when asked
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