Not at all. Actually, you’re early!
Less than two percent of the world own cryptocurrencies. This nascency in adoption is a main reason individuals can make so much money in this space right now. Call it first mover’s advantage.
Early crypto adopters have faced a high barrier of entry navigating the space. It can take a certain degree of finance and tech savvy — with a healthy dose of suspicion for government tomfoolery — to get involved.
As a technology, blockchain — and associated cryptocurrencies that lubricate their networks — form part of the next generation of disruptive technologies terraforming…
That’s an annualised return of 234%. Compare that with:
Albert Einstein is reputed to have said:
“Compound interest is the eighth wonder of the world. He who understands it, earns it — he who doesn’t, pays it.”
Understanding compound interest can transform your life, whether you’re investing for financial independence or scaling your startup business.
A sequel article is here.
Many people mistake compound interest for simple interest, which grows your assets linearly. Compounding assets grow exponentially*, which mathematically skyrockets their value. This effect is dramatically enhanced by the interest rate (i.e. exponent) and time in the market.
When COVID-19 swept the world in early 2020, researchers swarmed in with their modelling expertise to forecast epidemic spread and derive optimum interventions. Here’s a high-level view of the whole party.
The majority of mathematical models are derived from the SIR and SEIR compartment models. The primary use cases are population-level forecasting (e.g. predict timing of epidemic peak and hospitalisation numbers) and informing interventions strategies (e.g. lockdowns, quarantine, social distancing and wearing masks).
Let’s compare and contrast differential equations (DE) to data-driven approaches like machine learning (ML).
In a nutshell — albeit with caveats — they can be thought of different approaches to modelling various phenomena. Do you make the rules? Or should you let your juicy data learn the rules for you?
Both types of models absolutely drive the world around us. Let’s dig in.
Edit: I have written a sequel article here.
In 2021, the Binance Smart Chain (BSC) established itself as the premier blockchain for high-rewards staking and low gas fees. This double-whammy has generated great excitement among passive income crypto investors.
In this article, we’ll do a mathematical deep dive of some top passive income protocols on the BSC. These shall include single-token staking stables like CAKE (110% APY) and BUNNY (225%), along with some even-higher returning dual-token staking LPs like HOTCROSS-BNB (849%) and the ridiculous WINGS-BNB (12,000%+). For reference, the staple passive income vehicle of the stock market are dividend shares, which return 1–10% per year.
This is Part…
In the spirit of responsible data science, I think this article should be called something along the lines of "Attempting to predict bitcoin prices with ML -- can it be done?", with a section at the end dedicated to why the answer is a big "no". Similar story for predicting Dogecoin or stock prices.
Equity pricing is one of those use cases that simply doesn't suit ML. You're looking at prices that essentially operate as random walks. Thus you can't predict these prices based on its own values with any meaningful accuracy. This has been shown time and time…
This article is Part I of an series on deep-diving how machine learning algorithms are evaluated.
Here, we’ll visually review the most popular supervised learning metrics for
In short, the more advanced classification metrics allow you to calibrate the importance of Type I and II errors for your use case, while dealing with imbalanced datasets. We’ll also visually explore some connections between classification metrics and probability.
Property valuation is an imprecise science. Individual appraisers and valuers bring their own experience, metrics and skills to a job. Consistency is difficult, with UK and Australian-based studies suggesting valuations between two professionals can differ by up to 40%. Crikey!
Perhaps a well-trained machine could perform this task in place of a human, with greater consistency and accuracy.
Let’s prototype this idea and train some ML models using data about a house’s features, costs and neighbourhood profile to predict its value. Our target variable — property price — is numerical, hence the ML task is regression. …
Many are concerned about stock market performance surrounding the election. I am. Let’s take a data-driven deep dive (DDDD) into the situation.
Short answer: Democrats, but not because of Democratic leadership.
I write about data science, modelling and investing. I shoot short films on the weekends. Always learning.