Dalton Whyte [Software Engineer · AI Specialist]

Building intelligent
systems with precision

Software engineer with a Master's in Signal Processing and Machine Intelligence. I specialize in applying AI and ML directly into production software — designing systems that learn, adapt, and perform at scale. Always connecting and working globally.

Machine Learning Signal Processing Python TensorFlow PyTorch DSP MLOps AI-Assisted Dev
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Writing 10 articles
AI Engineering

How AI Is Fundamentally Changing the Way We Write Software

We're entering an era where AI is not just a feature you ship — it's the engineering primitive you build with. From code generation to intelligent pipelines, here's what that shift really means for engineers on the ground.

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02
Signal Processing

Signal Processing Intuitions That Make You a Better ML Engineer

Fourier transforms, convolutions, and filtering — these aren't just DSP tools. They're the hidden mathematics powering modern deep learning.

03
MLOps

Deploying ML Models to Production: What No One Tells You

Training a model is 20% of the work. The other 80% is making it survive contact with real users, real data, and real infrastructure.

04
Deep Learning

Time Series Forecasting with Transformers: A Practical Guide

Transformers aren't just for text. Here's how attention mechanisms can be applied to sequential signal data with remarkable results.

05
Feature Engineering

Feature Engineering for Audio and Sensor Data Using DSP

Raw signals are rarely what your model needs. A hands-on breakdown of spectrograms, MFCCs, wavelets, and why they matter for ML.

06
AI-Assisted Dev

Using LLMs for Intelligent Code Review: Lessons from the Field

After integrating LLM-powered code review into a production pipeline, here's what actually worked, what failed, and what surprised me.

07
Architecture

Designing Scalable ML Architectures: Patterns That Hold Up

Microservices, model serving, feature stores, and event streaming — how to architect ML systems that don't collapse under their own weight.

08
Engineering

Closing the Gap Between ML Research and Production Engineering

Why great research papers become terrible software, and how engineers with academic backgrounds can bridge that divide intentionally.

09
Audio Intelligence

Real-Time Audio Processing with ML: Architecture and Tradeoffs

Building low-latency audio intelligence systems means making hard tradeoffs between accuracy, speed, and memory. Here's my framework.

10
Perspective

Africa's AI Moment: Why the Next Wave of ML Engineering Talent Is Here

The global AI race needs builders everywhere. Why the broader African tech ecosystem are positioned to lead — not just participate.