[MINI] One Shot Learning
Data Skeptic22 Syys 2017

[MINI] One Shot Learning

One Shot Learning is the class of machine learning procedures that focuses learning something from a small number of examples. This is in contrast to "traditional" machine learning which typically requires a very large training set to build a reasonable model.

In this episode, Kyle presents a coded message to Linhda who is able to recognize that many of these new symbols created are likely to be the same symbol, despite having extremely few examples of each. Why can the human brain recognize a new symbol with relative ease while most machine learning algorithms require large training data? We discuss some of the reasons why and approaches to One Shot Learning.

Tämä jakso on lisätty Podme-palveluun avoimen RSS-syötteen kautta eikä se ole Podmen omaa tuotantoa. Siksi jakso saattaa sisältää mainontaa.

Jaksot(601)

Do We Need Deep Learning in Time Series

Do We Need Deep Learning in Time Series

Shereen Elsayed and Daniela Thyssens, both are PhD Student at Hildesheim University in Germany, come on today to talk about the work "Do We Really Need Deep Learning Models for Time Series Forecasting...

16 Kesä 202129min

Detecting Drift

Detecting Drift

Sam Ackerman, Research Data Scientist at IBM Research Labs in Haifa, Israel, joins us today to talk about his work Detection of Data Drift and Outliers Affecting Machine Learning Model Performance Ove...

11 Kesä 202127min

Darts Library for Time Series

Darts Library for Time Series

Julien Herzen, PhD graduate from EPFL in Switzerland, comes on today to talk about his work with Unit 8 and the development of the Python Library: Darts.

31 Touko 202125min

Forecasting Principles and Practice

Forecasting Principles and Practice

Welcome to Timeseries! Today's episode is an interview with Rob Hyndman, Professor of Statistics at Monash University in Australia, and author of Forecasting: Principles and Practices.

24 Touko 202131min

Prequisites for Time Series

Prequisites for Time Series

Today's experimental episode uses sound to describe some basic ideas from time series. This episode includes lag, seasonality, trend, noise, heteroskedasticity, decomposition, smoothing, feature engin...

21 Touko 20218min

Orders of Magnitude

Orders of Magnitude

Today's show in two parts. First, Linhda joins us to review the episodes from Data Skeptic: Pilot Season and give her feedback on each of the topics. Second, we introduce our new segment "Orders of Ma...

7 Touko 202133min

They're Coming for Our Jobs

They're Coming for Our Jobs

AI has, is, and will continue to facilitate the automation of work done by humans. Sometimes this may be an entire role. Other times it may automate a particular part of their role, scaling their effe...

3 Touko 202143min

Pandemic Machine Learning Pitfalls

Pandemic Machine Learning Pitfalls

Today on the show Derek Driggs, a PhD Student at the University of Cambridge. He comes on to discuss the work Common Pitfalls and Recommendations for Using Machine Learning to Detect and Prognosticate...

26 Huhti 202140min

Suosittua kategoriassa Tiede

tiedekulma-podcast
rss-poliisin-mieli
docemilia
rss-mita-tulisi-tietaa
rss-lapsuuden-rakentajat-podcast
filocast-filosofian-perusteet
rss-tiedetta-vai-tarinaa
rss-lihavuudesta-podcast
rss-bios-podcast
rss-duodecim-lehti
rss-metsantuntijat-podcast