I get a lot of emails asking about how I got interested in machine learning and about my background. I don’t think my story is special or interesting, but I’m happy to share it and honored I’m asked. This post feels a little self-indulgent. I figure it can be the definitive version of my story […]
Machine Learning for Money
A question I get asked a lot is: How can I make money with machine learning? You can get a job with your machine learning skills as a machine learning engineer, data analyst or data scientist. That is the goal of a great many people that contact me. There are also other options. In this […]
Work on Machine Learning Problems That Matter To You
It is difficult to stay motivated when self-studying machine learning. The standard test datasets can be quite obtuse and disconnected from you and from your everyday life. Boring even. A trick that you might like to use is to find and work on a dataset that matters to you. In this post, we will look at […]
Build a Machine Learning Portfolio
Complete Small Focused Projects and Demonstrate Your Skills A portfolio is typically used by designers and artists to show examples of prior work to prospective clients and employers. Design, art and photography are examples where the work product is creative and empirical, where telling someone you can do it is not valued the same as […]
What Is Holding You Back From Your Machine Learning Goals?
Identify and Tackle Your Self-Limiting Beliefs and Finally Make Progress I get a lot of email from developers and students looking to get started in machine learning. The first question I ask them is what is stopping them from getting started? I try to get to the heart of what they are struggling with, and almost […]
The Missing Roadmap to Self-Study Machine Learning
In this post I lay out a concrete self-study roadmap for applied machine learning that you can use to orient yourself and figure out your next step. I think a lot about frameworks and systematic approaches (as evidenced on my blog). I would consider this post a vast expansion of my previous thoughts on a self-study […]
Data Cleaning: Turn Messy Data into Tidy Data
Data preparation is difficult because the process is not objective, or at least it does not feel that way. Questions like “what is the best form of the data to describe the problem?” are not objective. You have to think from the perspective of the problem you want to solve and try a few different […]
The Data Analytics Handbook: Researchers and Academics Review
What is the difference between a Data Analyst and a Data Scientist. This question is considered from the perspective of researchers and academics in the third instalment in the series of The Data Analytics Handbook. The first book contained 7 interviews with working analysts and data scientists. The second book contained 9 interviews with CEOs and managers. This third […]
Machine Learning with Quantum Computers
I recently watched a Google Tech Talk with Eric Ladizinsky who visited the Quantum AI Lab at Google to talk about his D-Wave quantum computer. The talk is called Evolving Scalable Quantum Computers and is great, I highly recommend it. I’ve had quantum computing on my mind and another tech talk went by titled Quantum […]
Machine Learning that Matters
Reading bootstrapping machine learning, Louis mentioned a paper that I had to go off and read. The title of the paper is Machine Learning that Matters (PDF) by Kiri Wagstaff from JPL and was published in 2012. Kiri’s thesis is that the machine learning research community has lost its way. She suggests that much of machine […]