Last week's YouTube video detailed how we use the Chain Rule for Multivariate (Partial Derivative) Calculus. This week's video features three exercises to test your comprehension of the topic.
We publish a new video from my "Calculus for Machine Learning" course to YouTube every Wednesday. Playlist is here.
More detail about my broader "ML Foundations" curriculum and all of the associated open-source code is available in GitHub here.
Filtering by Category: Professional Development
A.I. for Good
This week's guest is the eloquent and inspiring James Hodson, founder and CEO of the AI for Good Foundation, which leverages data and machine learning to tackle the United Nations' Sustainable Development Goals.
In this episode, James details:
• Globally impactful case studies from his A.I. for Good organization across public health, DEI, and a practical database of A.I. progress on social issues
• How you yourself can get involved in helping apply A.I. for wide-reaching social benefit, whether you're a technical expert or not
• The hard and soft skills that he looks for in the data scientists that he hires
In addition to his leadership of A.I. for Good, James:
• Is an academic research fellow at the Jozef Stefan Institute, where he's focused on Natural Language Processing research
• Is Chief Science Officer at Cognism, a British tech startup
• Served as A.I. Research Manager at Bloomberg LP
• Completed a degree at Princeton University focused on Machine Translation
Thank you to Claudia Perlich for the intro to James! I learned a ton from him while filming this episode.
The episode's available on all major podcasting platforms, on YouTube, and at SuperDataScience.com.
Intro to Deep Reinforcement Learning at Columbia University
My goodness did I ever miss lecturing in-person! Was finally back in front of a live classroom on Friday, providing an intro to Deep Reinforcement Learning to engineering graduates at Columbia University in the City of New York.
Thank you Chong and Sam for having me. It's always a delight to lecture to your brilliant ELEN E6885 students, especially now that the pandemic is subsiding and I can interact with them meaningfully again.
You can see the slides from here as well as the associated GitHub repository here.
Fail More
Fail more! Failing is very very good. For Five-Minute Friday this week, I elaborate on why.
SuperDataScience episodes are available on all major podcasting platforms, YouTube, and at SuperDataScience.com.
The Chain Rule for Partial Derivatives
For this week's YouTube video, we apply the Chain Rule (introduced earlier in the series in the single-variable case) to find the partial derivatives of multivariate functions — such as Machine Learning functions!
We publish a new video from my "Calculus for Machine Learning" course to YouTube every Wednesday. Playlist is here.
More detail about my broader "ML Foundations" curriculum and all of the associated open-source code is available in GitHub here.
Courses in Data Science and Machine Learning
This week's guest is super fun Sadie St. Lawrence, an exceptionally popular data science instructor with over 300k students all-time. She fills us in on her exciting new ML Certificate and the global impact of her Women In Data org.
Sadie:
• Teaches data science at the University of California, Davis
• Her Coursera course is one of the all-time most popular
• Is Founder and CEO of Women in Data, a community of 20k across 15 countries
• Holds a Master's in Analytics from Villanova University
In this episode, she digs into:
• The content of her existing iconic data science course
• The curriculum of her epic forthcoming Machine Learning Certificate
• The mission, impact, and vision of the Women in Data organization
• Her path into data science from music performance
• Non-fungible tokens (NFTs) and the future of technology
Thanks to Harpreet Sahota for introducing me to Sadie! I absolutely loved filming this episode.
Listen or watch here.
Partial Derivative Notation
This week's YouTube video is a quick one on the common options for partial derivative notation.
We publish a new video from my "Calculus for Machine Learning" course to YouTube every Wednesday. Playlist is here.
More detail about my broader "ML Foundations" curriculum and all of the associated open-source code is available in GitHub here.
Accelerating Impact through Community — with Chrys Wu
This week's guest is global tech community builder Chrys Wu who details how you too can leverage communities to accelerate your career. This is the first SuperDataScience episode ever recorded in-person!
In addition to accelerating your career with community, Chrys covers:
• K-pop music and its associated cultural movement
• How the Write/Speak/Code and Hacks/Hackers organizations she co-founded leverage community to make a massive global impact for marginalized genders and journalism, respectively
• Her top resources — social media accounts, blogs, and podcasts — for staying abreast of the latest in data science and machine learning
Chrys is a consultant who specializes in product development and change management. She's also a co-founder of both Write/Speak/Code and Hacks/Hackers, the latter of which has grown to 70 chapters across five continents.
Listen or watch here.
"Math for Machine Learning" course on Udemy complete!
After a year of filming and editing, my "Math for Machine Learning" course on Udemy is complete! To celebrate, we put together this epic video that overviews the 15-hour curriculum in under two minutes.
Over 83,000 students have registered for the course, which provides an introduction to all of the essential Linear Algebra and Calculus that one needs to be an expert Machine Learning practitioner. It's full of hundreds of hands-on code demos in the key Python tensor libraries — NumPy, TensorFlow, and PyTorch — to make learning fun and intuitive.
You can check out the course here.
Advanced Partial-Derivative Exercises
My "Machine Learning Foundations" video this week features fun geometrical examples in order to strengthen your command of the partial derivative theory that we covered in the preceding videos.
We publish a new video from my "Calculus for Machine Learning" course to YouTube every Wednesday. Playlist is here.
More detail about my broader "ML Foundations" curriculum and all of the associated open-source code is available in GitHub here.
Transformers for Natural Language Processing
This week's guest is award-winning author Denis Rothman. He details how Transformer models (like GPT-3) have revolutionized Natural Language Processing (NLP) in recent years. He also explains Explainable AI (XAI).
Denis:
• Is the author of three technical books on artificial intelligence
• His most recent book, "Transformers for NLP", led him to win this year's Data Community Content Creator Award for technical book author
• Spent 25 years as co-founder of French A.I. company Planilog
• Has been patenting A.I. algos such as those for chatbots since 1982
In this episode, Denis fills us in on:
• What Natural Language Processing is
• What Transformer architectures are (e.g., BERT, GPT-3)
• Tools we can use to explain *why* A.I. algorithms provide a particular output
We covered audience questions from Serg, Chiara, and Jean-charles during filming. For those we didn't get to ask, Denis is kindly answering via a LinkedIn post today!
The episode's available on all major podcasting platforms, YouTube, and at SuperDataScience.com.
Translations of Deep Learning Illustrated – Now available in Traditional Chinese
My book, Deep Learning Illustrated, recently became available in Traditional Chinese alongside the existing Russian, German, and Korean translations. The new edition instantly became a #1-bestseller in Taiwan.
Thanks to Neville Huang for diligently translating to Traditional Chinese from the original English. Neville also tipped me off to the #1-bestseller status — I've put the screenshot he shared with me on LinkedIn.
Advanced Partial Derivatives
This week's video builds on the preceding ones in my ML Foundations series to advance our understanding of partial derivatives by working through geometric examples. We use paper and pencil as well as Python code.
We publish a new video from my "Calculus for Machine Learning" course to YouTube every Wednesday. Playlist is here.
More detail about my broader "ML Foundations" curriculum and all of the associated open-source code is available in GitHub here.
Data Science for Private Investing — LIVE with Drew Conway
This week's guest is prominent data scientist and author Dr. Drew Conway. Working at Two Sigma, one of the world's largest hedge funds, Drew leads data science for private markets (e.g., real estate, private equity).
If you aren't familiar with Drew already, he:
• Serves as Senior Vice President for data science at Two Sigma
• Co-authored the classic O'Reilly Media book "ML for Hackers"
• Was co-founder and CEO of Alluvium, which was acquired in 2019
• Advised countless successful data-focused startups (e.g., Yhat, Reonomy)
• Obtained a PhD in politics from New York University
In this episode, he covers:
• What private investing is
• How data science can lead to better private investment decisions
• The differences between creating and executing models for public markets (such as stock exchanges) relative to private markets
• What he looks for in the data scientists he hires and how he interviews them
This is a special SuperDataScience episode because it's the first one recorded live in front of an audience (at the The New York R Conference in September). Eloquent Drew was the willing guinea pig for this experiment, which was a great success: We filmed in a single unbroken take and fielded excellent audience questions.
Listen or watch here.
Deep Reinforcement Learning
Five-Minute Friday today is an intro to (deep) reinforcement learning, which has diverse cutting-edge applications: E.g., machines defeating humans at complex strategic games and robotic hands solving Rubik’s cubes.
You can watch or listen here.
O'Reilly + JK October & November ML Foundations LIVE Classes open for registration
We're halfway through my live 14-class "ML Foundations" curriculum, which I'm offering via O'Reilly Media. The first Probability class is on Wednesday with five of the seven remaining classes open for registration now:
• Oct 6 — Intro to Probability
• Oct 13 — Probability II and Information Theory
• Oct 27 — Intro to Statistics
• Nov 3 — Statistics II: Regression and Bayesian
• Nov 17 — Intro to Data Structures and Algorithms
The final two classes will be in December and are on Computer Science topics: Hashing, Trees, Graphs, and Optimization. Registration for them should open soon.
All of the training dates and registration links are provided at jonkrohn.com/talks.
A detailed curriculum and all of the code for my ML Foundations series is available open-source in GitHub here.
Calculating Partial Derivatives with PyTorch AutoDiff
My recent videos have detailed how to calculate partial derivatives by hand. In today's, I demo how we can compute them automatically using PyTorch, enabling us to easily differentiate complex equations like ML models.
We publish a new video from my "Calculus for Machine Learning" course to YouTube every Wednesday. Playlist is here.
More detail about my broader "ML Foundations" curriculum and all of the associated open-source code is available in GitHub here.
Accelerating Start-up Growth with A.I. Specialists
This week's guest is the game-changing Dr. Parinaz Sobhani. She leads ML at Georgian — a private fund that sends her "special ops" data science teams into its portfolio companies to accelerate their A.I. capabilities.
In this episode, Parinaz details:
• Case studies of Georgian's A.I. approach in action across industries (e.g. insurance, law, real estate)
• Tools and techniques her team leverages, with a particular focus on the transfer learning of transformer-based models of natural language
• What she looks for in the data scientists and ML engineers she hires
• Environmental and sociodemographic considerations of A.I.
• Her academic research (Parinaz holds a PhD in A.I. from the University of Ottawa where she specialized in natural language processing)
Listen or watch here.
...and thanks to Maureen for making this connection to Parinaz!
Partial Derivative Exercises
Last week's YouTube tutorial was an epic intro to Partial Derivative Calculus — a critical foundation for understanding Machine Learning. This week's video features coding exercises that test your comprehension of that material.
We publish a new video from my "Calculus for Machine Learning" course to YouTube every Wednesday. Playlist is here.
More detail about my broader "ML Foundations" curriculum and all of the associated open-source code is available in GitHub here.
Bayesian Statistics
Expert Rob Trangucci joins me this week to provide an introduction to Bayesian Statistics, a uniquely powerful data-modeling approach.
If you haven't heard of Bayesian Stats before, today's episode introduces it from the ground up. It also covers why in many common situations, it can be more effective than other data-modeling approaches like Machine Learning and Frequentist Statistics.
Today's episode is a rich resource on:
• The centuries-old history of Bayesian Stats
• Its particular strengths
• Real-world applications, including to Covid epidemiology (Rob's particular focus at the moment)
• The best software libraries for applying Bayesian Statistics yourself
• Pros and cons of pursuing a PhD in the data science field
Rob is a core developer on the open-source STAN project — a leading Bayesian software library. Having previously worked as a statistician in renowned professor Andrew Gelman's lab at Columbia University in the City of New York, Rob's now pursuing a PhD in statistics at the University of Michigan.
Listen or watch here.