Our Blog
How We Got Responsible AI All Wrong
If you want to distill the idea of technology into a single sentence, a good place to start is with this: “Fire can cook your food or it can burn your house to the ground.” That is to say: technology isn’t good or bad in and of itself....
Why Amazon has an Alexa problem — and What You Can Learn from it
When Amazon launched Alexa, a lot of prognosticators and technologists were giddy about the possibilities. Here, finally, was an affordable machine heralding the era of real voice-activated compute, a simple device that could help you...
Is Big Data Dragging Us Towards Another AI Winter?
It can be hard to remember with the number of breathless press clippings in the past few years, but the history of artificial intelligence has been fraught with snags and setbacks. People with long memories remember the first pair of...
No, the World doesn’t Need Another Synthetic Data Company
Let’s begin with the obvious: every machine learning project starts with data. Whether that data needs to be labeled, collected, generated, cleaned, munged, or fussed with in any way, shape, or form, we all understand that machine...
Just Because the Data is Representative Doesn’t Mean it’s Useful
The blueprints for the first machine that could vaguely be called a computer were created by Charles Babbage in the 1830s. It was called the Difference Engine. The plans called for a monstrous, steam punk contraption, a collection of...
Using Explore-Exploit to Build a Better Breed of Active Learning
Explore-exploit is a paradigm that goes way beyond Machine Learning; it is actually the conceptualization of an everyday dilemma that we face at almost every instant of the day when we make even the simplest decision. The human brain is...
How We can Understand What Data your Model Needs – Without Looking at your Model
At Alectio, we’ve pioneered a technique that lets us understand how a model’s learning and what data the model needs without looking at either the model or the data. Simply put: we use machine learning to understand how a machine learning...
How to Tell if Active Learning Will Work for your Problem
Active learning is one of the most misunderstood techniques in machine learning. Many of us had some experience with it in school, using those well-curated academic datasets but few people use it in the business world to handle real-world...
Here’s why you need a data collection strategy
Let us introduce you to DailyDialog. DailyDialog is a manually labeled, multi-turn dialog dataset covering a whole host of emotions, topics, lengths, and types of statements. This dataset includes stuff like casual chats about the...
Why the end of Moore’s Law means the end of Big Data as we know it
The year is 1965. Lyndon B. Johnson is sworn in as president. The Rolling Stones releases “Satisfaction,” their first number one single in the United States. Vietnam War protests grow in size and frequency. Canada adopts its familiar...
All data is not created equal
Perhaps the most pervasive misconception in data science is “the more data, the better.” Just think about how many people you know who have been collecting and hoarding as much of it as possible. Think of how many colleagues and bosses...
Are you Spending Too Much Money Labeling Data?
How to save on data labeling without sacrificing model quality Technologists will remember the 2010s as the decade of Big Data. Data storage became cheap enough that companies started hoarding data without even knowing quite what to do...