SGP 4.0: Singapore in the AI Era
The article below first appeared in COMMENTARY VOLUME 27, 2018…
The article below first appeared in COMMENTARY VOLUME 27, 2018…
I have been looking at the emerging tooling around reproducible…
Automating reptitive tasks is one of the hallmarks of software…
A good read from IBM on how a full stack…
Some of AI Singapore’s team members including myself have been…
Recurrent neural networks are a class of artificial neural networks…
And so…they have graduated! Our Pioneer Batch of 13 young…
Gradient descent is an optimisation method for finding the minimum of a function. It is commonly used in deep learning models to update the weights of the neural network through backpropagation.
In this post, I will summarise the common gradient descent optimisation algorithms used in popular deep learning frameworks (e.g. TensorFlow, Keras, PyTorch, Caffe). The purpose of this post is to make it easy to read and digest (using consistent nomenclature) since there aren’t many of such summaries out there, and as a cheat sheet if you want to implement them from scratch.
How many of you are master procrastinators? If you are, you…
Making your PyTorch models work in environments with only TensorFlow
A semi-supervised graph-based approach for text classification and inference The…
The AI Apprenticeship Programme idea was conceived to solve a…

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