Erin LeDell

@ledell
1.1K Followers
951 Following
69 Posts
Chief #MachineLearning Scientist h2o.ai 🌊 open source AI & #AutoML. PhD in Biostatistics UC Berkeley, founder wimlds.org, co-founder rladies.org. #rstats πŸ•οΈ πŸ³οΈβ€πŸŒˆ
Twitterhttps://twitter.com/ledell
Githubhttps://github.com/ledell

Today marks the 54th anniversary of the Stonewall Rebellion. 54 years ago, members of the LGBTQ+ protested for our right to be seen, heard, and protected. It was a moment in time that forever transformed the gay liberation movement.

For more information on how to preserve and honor the legacy of Stonewall, check out the Stonewall National Monument Visitor Center, https://stonewallvisitorcenter.org/.

Home - Stonewall National Monument Visitor Center

Stonewall National Monument Visitor Center
WIRED piece out from my awesome colleague @SashaMTL
Describes what we need to do with AI moving forward and highlights the scholars who have written the instructions. https://www.wired.com/story/the-call-to-halt-dangerous-ai-research-ignores-a-simple-truth/
Why Halt AI Research When We Already Know How To Make It Safer

The Open Letter proposing a pause on giant AI experiments exaggerates hypothetical future harms while ignoring steps that can be taken immediately to mitigate them.

WIRED

#MAIHT3k Ep 8 is now up! @alex
and I greeted the new year by taking on the #ChatGPT hype + of course, some Fresh AI Hell.

https://peertube.dair-institute.org/w/4ZH8grz4rJR5tGkAKEaV7L

And if you want to join the next episode live, we'll be streaming at 9:30am Pacific this Friday (April 7).

http://twitch.tv/dair_institute

Mystery AI Hype Theater 3000, Episode 8 - The ChatGPT Awakens

PeerTube

We had a fantastic evening yesterday and learned so much from and with @ledell πŸ€“
We started with the fundamentals in autoML, went to the core principles of H2O’s algorithm, and got insights into explainability and some newer kids on the block: {agua} and H2O Wave 🌊

If you missed the meeting and want to read upon it, here are some links on what we've learned:

πŸš€ Getting started with #autoML: https://github.com/ledell/phd-thesis

πŸš€ More on #H2O: https://www.automl.org/wp-content/uploads/2020/07/AutoML_2020_paper_61.pdf

GitHub - ledell/phd-thesis: My UC Berkeley Ph.D. dissertation.

My UC Berkeley Ph.D. dissertation. Contribute to ledell/phd-thesis development by creating an account on GitHub.

GitHub
@wait_sasha Yep, the recording is available at the same link above.
Thanks to @[email protected] for the heads up! πŸ‘€

Very cool to see a team of researchers πŸ‡¨πŸ‡³πŸ‡΅πŸ‡°πŸ‡ΈπŸ‡¦πŸ‡°πŸ‡· using @[email protected] H2O #AutoML for water quality prediction. 🌊

"the proposed stacked model outperforms other models with 97% accuracy, 96% precision, 99% recall, and 98% F1-score for water-quality prediction"

https://www.mdpi.com/2073-4441/15/3/475

Water-Quality Prediction Based on H2O AutoML and Explainable AI Techniques

Rapid expansion of the world’s population has negatively impacted the environment, notably water quality. As a result, water-quality prediction has arisen as a hot issue during the last decade. Existing techniques fall short in terms of good accuracy. Furthermore, presently, the dataset available for analysis contains missing values; these missing values have a significant effect on the performance of the classifiers. An automated system for water-quality prediction that deals with the missing values efficiently and achieves good accuracy for water-quality prediction is proposed in this study. To handle the accuracy problem, this study makes use of the stacked ensemble H2O AutoML model; to handle the missing values, this study makes use of the KNN imputer. Moreover, the performance of the proposed system is compared to that of seven machine learning algorithms. Experiments are performed in two scenarios: removing missing values and using the KNN imputer. The contribution of each feature regarding prediction is explained using SHAP (SHapley Additive exPlanations). Results reveal that the proposed stacked model outperforms other models with 97% accuracy, 96% precision, 99% recall, and 98% F1-score for water-quality prediction.

MDPI
A few of us from @[email protected] will be part of a #ResponsibleAI panel, live on @[email protected] tomorrow (Friday) at 7am PT / 10am ET. Link below! πŸ‘‡

RT @[email protected]

Responsible AI Panel πŸ™πŸ“š

I’m hosting: @[email protected], @[email protected] and @[email protected] tomorrow to learn:

βœ… Current state of Interpretability in ML
βœ… How to effectively deploy these techniques
βœ… How @[email protected] solves explainability in ML

https://youtu.be/tsrApIFmWmE

πŸ¦πŸ”—: https://twitter.com/bhutanisanyam1/status/1618649368827158529

Responsible AI Panel | @ChaiTimeDataScience 161

YouTube
Great to hear from @[email protected] on one of my favorite tech podcasts. Timnit is always πŸ’―% on point with her takes on the tech/AI industry.