Devin Robison - Optimizing model performance | JupyterCon 2020
Brief Summary
Optimizing performance of a machine learning model can be a labor-intensive process. It is often overlooked in real-life applications. In this talk, we'll see a Jupyter Notebook walkthrough of GPU-accelerated libraries - RAPIDS, Optuna and xfeat as a potential solution to address some of the constraints of Feature Engineering and Hyperparameter Optimizations, and use MLflow for experiment tracking
Outline
This talk will walk through a demo Jupyter notebook on how we can use RAPIDS, Optuna, xfeat, and MLflow to illustrate the use of feature engineering and hyperparameter optimisation on a classification problem, in conjunction with experiment tracking and eventual production deployment.
Feature Engineering is a process to transform raw data into features that can represent the underlying patterns of the data better. Hyperparameter optimization is a process that can complement a good model by tuning its parameters. These can significantly boost a model's accuracy. RAPIDS framework provides a suite of libraries that can execute end-to-end data science pipelines entirely on GPUs. Optuna is a lightweight framework for automatic hyperparameter optimization, and xfeat is a feature engineering and exploration library using GPUs and Optuna. MLflow is a framework for tracking experiment state, ensuring reproducibility, and model storage / deployment.
We’ll utilize xfeat for performing feature engineering operations to add more features to the dataset using Numerical and Categorical encoding strategies - like arithmetic combinations, target encoding, etc., cuML, a library in RAPIDS, has a set of Machine Learning models that are GPU-accelerated. Optuna will be used to select the most pertinent features among the original and the newly added features, along with the hyper parameters for the model we use. Lastly, MLflow will be used to record the entire process, and publish the final model as a REST service.
Using the combination of the libraries, we will be abl
Watch on YouTube ↗
(saves to browser)
Sign in to unlock AI tutor explanation · ⚡30
Playlist
Uploads from JupyterCon · JupyterCon · 42 of 60
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
▶
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
Interview Joshua Patterson NVIDIA
JupyterCon
Dave Stuart - Jupyter as an Enterprise “Do It Yourself” (DIY) Analytic Platform | JupyterCon 2020
JupyterCon
Jeffrey Mew - Supercharge your Data Science workflow | JupyterCon 2020
JupyterCon
Michelle Ufford- Supercharging SQL Users with Jupyter Notebooks | JupyterCon 2020
JupyterCon
Alan Yu - What we learned from introducing Jupyter Notebooks to the SQL community | JupyterCon 2020
JupyterCon
Chris Holdgraf- 2i2c: sustaining open source through hosted Jupyter infrastructure | JupyterCon 2020
JupyterCon
Yiwen Li - Intro to Elyra - an AI centric extension for JupyterLab | JupyterCon 2020
JupyterCon
Luciano Resende - What's new on Elyra - A set of AI centric JupyterLab extensions | JupyterCon 2020
JupyterCon
Alan Chin - Explore and Extend AI Pipeline Runtimes with Elyra and JupyterLab | JupyterCon 2020
JupyterCon
Eduardo Blancas- Streamline your Data Science projects with Ploomber | JupyterCon 2020
JupyterCon
Thorin Tabor - Democratizing the accessibility of computational workflows | JupyterCon 2020
JupyterCon
Simon Willison- Using Datasette with Jupyter to publish your data | JupyterCon 2020
JupyterCon
Brendan O'Brien - Using Qri (“query”) to fetch, query, combine and publish datasets.|JupyterCon 2020
JupyterCon
Georgiana Dolocan - Putting the JupyterHub puzzle pieces together | JupyterCon 2020
JupyterCon
Yuvi Panda- Running nonjupyter applications on JupyterHub with jupyter-server-proxy| JupyterCon 2020
JupyterCon
Richard Wagner- The Streetwise Guide to JupyterHub Security | JupyterCon 2020
JupyterCon
TamNguyen- Handling Custom Jupyter Data Sources | JupyterCon 2020
JupyterCon
Immanuel Bayer- ipyannotator - the infinitely hackable annotation framework | JupyterCon 2020
JupyterCon
Rebecca Kelly- A shared Python, R and Q Jupyter Notebook - A Quant Sandbox Dream |JupyterCon 2020
JupyterCon
Itay Dafna - Leap of faith: Transitioning from Excel to Jupyter-based applications | JupyterCon 2020
JupyterCon
Damián Avila - Using the Jupyterverse to power MADS | JupyterCon 2020
JupyterCon
Chiin Rui Tan- From Zero to Hero | JupyterCon 2020
JupyterCon
Firas Moosvi- Teaching an Active Learning class with Jupyter Book| JupyterCon 2020
JupyterCon
Daniel Mietchen- Jupyter in the Wikimedia ecosystem | JupyterCon 2020
JupyterCon
Qiusheng Wu- How Jupyter and geemap enable interactive mapping and analysis | JupyterCon 2020
JupyterCon
Stephanie Juneau- Jupyterenabled astrophysical analysis for researchers and students|JupyterCon 2020
JupyterCon
Denton Gentry- The Care and Feeding of JupyterHub for Climate Solution Models| JupyterCon 2020
JupyterCon
Tingkai Liu- FlyBrainLab: Interactive Computing in the Connectomic/Synaptomic Era | JupyterCon 2020
JupyterCon
Kunal Bhalla- A Notebook Style Guide| JupyterCon 2020
JupyterCon
Julia Wagemann - How to avoid 'Death by Jupyter Notebooks' | JupyterCon 2020
JupyterCon
David Pugh - Best practices for managing Jupyter-based data science | JupyterCon 2020
JupyterCon
Karla Spuldaro - Debugging notebooks and python scripts in JupyterLab | JupyterCon 2020
JupyterCon
Shreyas Dalia - assert browserTest == True # Frontend Testing JupyterLab | JupyterCon 2020
JupyterCon
Chris Holdgraf - The new Jupyter Book stack | JupyterCon 2020
JupyterCon
Hamel Husain - Fastpages - A new, open source Jupyter notebook blogging system | JupyterCon 2020
JupyterCon
Marc Wouts - Jupytext: Jupyter Notebooks as Markdown Documents | JupyterCon 2020
JupyterCon
Sheeba Samuel- ProvBook |JupyterCon 2020
JupyterCon
Philipp Rudiger - To Jupyter and back again | JupyterCon 2020
JupyterCon
Jacob Tomlinson - What is my GPU doing? | JupyterCon 2020
JupyterCon
Afshin Darian - A visual debugger in Jupyter | JupyterCon 2020
JupyterCon
Eric Charles - Jupyter Real Time Collaboration| JupyterCon 2020
JupyterCon
Devin Robison - Optimizing model performance | JupyterCon 2020
JupyterCon
Junhua zhao - PayPal Notebooks: ML & Data Science experience | JupyterCon 2020
JupyterCon
April Wang - Redesigning Notebooks for Better Collaboration | JupyterCon 2020
JupyterCon
Bryan Weber - Distributing and Collecting Jupyter Notebooks for Manual Grading| JupyterCon 2020
JupyterCon
Georgiana Dolocan - The Littlest JupyterHub distribution | JupyterCon 2020
JupyterCon
Tim Metzler - Electronic Examination using Jupyter Notebook | JupyterCon 2020
JupyterCon
Blaine Mooers - Why develop a snippet library for Jupyter in your subject domain? | JupyterCon 2020
JupyterCon
Ryan Abernathey - Cloud Native Repositories for Big Scientific Data | JupyterCon 2020
JupyterCon
Tanya Rai - Introducing Bento: Jupyter Notebooks @ Facebook | JupyterCon 2020
JupyterCon
Kenton McHenry - From Papers to Notebooks | JupyterCon 2020
JupyterCon
Ryan Herr - After model.fit, before you deploy| JupyterCon 2020
JupyterCon
Ana Ruvalcaba - Community building is a sustainability strategy | JupyterCon 2020
JupyterCon
Martin Renou - Xeus: an ecosystem of Jupyter kernels | JupyterCon 2020
JupyterCon
Michael Wilson - Teaching teenagers to understand Dark Energy | JupyterCon 2020
JupyterCon
Davide De Marchi - Voilà dashboards for policy support | JupyterCon 2020
JupyterCon
Marcos Lopez Caniego - ESASky's JupyterLab widget| JupyterCon 2020
JupyterCon
Praveen Kanamarlapud - Kernel Life Cycle Management | JupyterCon 2020
JupyterCon
Aaron Bray - Pulse Physiology Engine | JupyterCon 2020
JupyterCon
Aaron Watters - Using WebGL2 transform/feedback in Jupyter widgets | JupyterCon 2020
JupyterCon
More on: ML Maths Basics
View skill →Related AI Lessons
⚡
⚡
⚡
⚡
Python Programming Course in Delhi
Medium · Python
Choosing the Right Architecture: A Software Engineer’s Field Guide to Neural Networks
Medium · Data Science
Chandra OCR 2: When Open Source Reads What Others Miss
Medium · Machine Learning
The hidden value of teaching ML to Non-ML teams
Medium · Machine Learning
🎓
Tutor Explanation
DeepCamp AI