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Insights

Product, design, AI, and engineering perspectives from our team.

Change Management for AI Adoption: Getting Staff to Actually Use It
24 June 2026

Change Management for AI Adoption: Getting Staff to Actually Use It

AI rollouts stall not because the technology fails, but because the people side is an afterthought. This post breaks down why adoption flatlines and provides a practical eight-step change management playbook to drive genuine, sustained AI usage across your teams.

10 min readChris Kerr
Upskilling Your Engineering Team for AI: A Practical Plan for CTOs
24 June 2026

Upskilling Your Engineering Team for AI: A Practical Plan for CTOs

Most engineering teams can integrate an API — far fewer are ready to build production AI systems that are observable, compliant, and resilient. This post gives CTOs a concrete plan: how to map current capabilities, build tiered learning paths, design hands-on projects, and decide when to train versus hire.

10 min readChris Kerr
Fine-Tuning Small Language Models for Domain-Specific Tasks
23 June 2026

Fine-Tuning Small Language Models for Domain-Specific Tasks

Fine-tuning a small language model can outperform a frontier model on narrow tasks — but only when the task, data, and economics actually justify the overhead. This article covers when fine-tuning makes sense, how to prepare data and evaluate properly, and how to honestly assess the cost trade-off against prompting a frontier model API.

10 min readChris Kerr
Caching Strategies for LLM Applications: Reducing Latency and Cost
23 June 2026

Caching Strategies for LLM Applications: Reducing Latency and Cost

Caching is one of the most underused levers for reducing cost and latency in production LLM applications. This article covers prompt caching, semantic caching, and response caching — what each layer does, when to use it, and how to think about invalidation and observability.

11 min readChris Kerr
Structured Outputs and Function Calling: Making LLMs Reliable
23 June 2026

Structured Outputs and Function Calling: Making LLMs Reliable

Structured outputs and function calling are the mechanisms that make LLMs viable in production workflows — but reliable implementation requires deliberate schema design, validation layers, and observability from the start. This guide covers how to use both patterns effectively, when to choose each, and the failure modes that catch teams off-guard at scale.

9 min readChris Kerr
Agentic RAG: When Retrieval Needs Reasoning
22 June 2026

Agentic RAG: When Retrieval Needs Reasoning

Standard RAG works well when one retrieval pass is enough. Agentic RAG is the architecture for problems that require planning, iterative retrieval, and reasoning over results from multiple sources. This post covers the patterns, the platform options, and the real engineering trade-offs.

7 min readChris Kerr
Australia's Voluntary AI Safety Standard: A Compliance Checklist
22 June 2026

Australia's Voluntary AI Safety Standard: A Compliance Checklist

Australia's Voluntary AI Safety Standard sets out ten guardrails for responsible AI adoption. This practical checklist walks Australian businesses through each guardrail — what it requires, what to do, and how to sequence the work based on your current AI maturity.

10 min readChris Kerr
The EU AI Act: What Australian Software Exporters Must Do Now
22 June 2026

The EU AI Act: What Australian Software Exporters Must Do Now

The EU AI Act applies to Australian software and AI vendors selling into Europe, regardless of where they are headquartered. This post explains how the risk tiers work, what high-risk obligations actually require, and a practical compliance path for Australian exporters.

10 min readChris Kerr
AI in the Australian Public Sector: Procurement Realities
22 June 2026

AI in the Australian Public Sector: Procurement Realities

Deploying AI in the Australian public sector means navigating procurement panels, the Australian Privacy Principles, data sovereignty requirements, and algorithmic accountability obligations — all before a model runs in production. This post outlines the practical realities for technical leaders working inside or alongside government agencies.

9 min readChris Kerr