
9 Pitfalls to avoid predicting Sales Opportunities
In this post, we’ll explore some of the common challenges that can derail your efforts to predict sales opportunities accurately. Drawing from experience, I’ll highlight potential solutions to avoid these pitfalls and build a more reliable system.

Our Top 7 Forecasting Models We Benchmarked For Monash
Top 7 Forecasting Models We Benchmarked For Monash

Building an AI SaaS product on a shoestring budget with aws serverless (Part 1)
In this post we’ll show you what you need to consider when building an enterprise class AI SaaS product from someone who’s been there and done it.

Revin: What really grinds my gears
A review of Revin - Reversible Instance Normalization used in time series forecasting

NeurIPs Ariel Challenge: What's it like to take part in a Kaggle competition?
An opinion piece on participating in a Kaggle competition

Multivariate Time Series models: Do we really need them?
A comparison of local, global, univariate and multivariate configurations using the DLinear and NLinear models

LTSF-Linear: Embarrassingly simple time series forecasting models
A review of the 2022 Paper Are Transformers Effective for Time Series Forecasting that introduced DLinear and NLinear models

Pytorch vs MXNet: Which is faster?
An analysis of the computational efficiency of Pytorch and MXNet

The F1 Score: Time Series Model Championships
A ranking system of time series models based on the Monash dataset benchmarks using the mase metric and the formula 1 scoring system.

GenAI: I don't care what it is and you shouldn't either
A look at the history of AI and how the terms AI, Machine Learning, Deep Learning and Generative AI have evolved over time.

1Cycle scheduling: State of the art timeseries forecasting
How to get state of the art timeseries forecasting results using machine learning with my variant of DeepAR and 1Cycle Scheduling

Super-convergence: Supercharge your Neural Networks
A look at 1Cycle scheduling, one of my favourite techniques at improving model performance and practical guidance on how to use it

A fistful of MASE: Deconstructing DeepAR
A deep dive into the GluonTS DeepAR neural network model architecture for time series forecasting and an ablation study of the covariates.

Predicting covariates: Is it a good idea?
A study which evaluates the effectiveness of predicting covariates in LSTM Neural Networks for Time Series Forecasting


Teacher Forcing: A look at what it is and the alternatives
Review of teacher forcing, free running, scheduled-sampling, professor forcing and attention forcing for training auto-regresssive neural networks

Human-level control through deep reinforcement learning
Recreating the experiments from the classic 2015 Deepmind Paper by Mnih et al.: Human-level control through deep reinforcement learning

Revisiting Playing Atari with Deep Reinforcement Learning
Recreating the experiments from the classic DQN Deepmind paper by Mnih et al.: Playing Atari with Deep Reinforcement Learning

A discussion about the future of AI in 2024
From the Cloudapps Winning with AI podcast on YouTube: A discussion with Joshua Harris about the future of AI in 2024

A discussion about the history of AI
From the Cloudapps Winning with AI podcast on YouTube: A discussion with Joshua Harris about the history of AI