PUBLISHED WORK

Frameworks, comparative analyses, and authored methodologies

Original work authored by Maura Randall β€” built through applied research and hands-on collaboration with AI systems inside real product, team, and leadership constraints.


Comparative Analyses

Neutral, side-by-side comparisons designed to surface tradeoffs, assumptions, and second-order effects β€” especially the ones that only show up once AI meets real-world constraints.

Prompt vs. Context vs. Collaboration Engineering

The evolution of how we work with AI β€” from crafting the ask, to designing the inputs, to rethinking the interaction itself. Context engineering is a real step forward. It’s also the midpoint, not the destination.

Read / view β†’

Building the Plane vs. Rebuilding the Cockpit at 30,000 Feet

Teams are already mid-flight. Augmenting them with AI means redesigning collaboration β€” context systems, decision ownership, trust boundaries, handoffs, and feedback loops β€” without decelerating delivery.

Read / view β†’

Human-in-the-Loop vs. The Human–AI Loop

Oversight checkpoints vs. continuous collaboration: what changes when humans remain active collaborators throughout the lifecycle.

Read / view β†’

Not All AI Should Be Your Teammate

When “copilot” framing helps β€” and when it increases cognitive load, reduces trust, and slows teams down.

Read / view β†’

Which Model Is My AI Tool Using?

Model opacity impacts trust, reliability, and product decisions β€” especially in enterprise and regulated environments.

Read / view β†’

Prompt Engineering vs. Collaboration Engineering

The deeper two-way analysis: why prompt quality alone fails at scale β€” and how roles, handoffs, feedback loops, memory, and decision ownership change outcomes.

Read / view β†’

Inside the Loop

An authored methodology for building, leading, and learning with AI as a collaborator β€” with clear roles, trust boundaries, and feedback loops that keep humans in decision ownership.

The Human–AI Loop

The core methodology and library hub β€” built to make human-led collaboration with AI repeatable and scalable.

View β†’

The Human–AI Triad

A practical team model: distinct roles, differentiated strengths, and a human-led loop that makes collaboration more reliable.

View β†’

The Collaboration Loop

A repeatable workflow for turning ambiguity into clarity β€” without outsourcing judgment or blurring ownership.

View β†’

The Five Principles of Human–AI Collaboration

The principles that keep the loop transparent, contextual, iterative, human-led, and ethically grounded.

View β†’

The 8 Beliefs Behind the Human–AI Loop Coming soon

The belief system that keeps the loop resilient under real-world constraints β€” especially leadership pressure and ambiguity.

Draft / in progress

Frameworks & Methods

Reusable models and clarity tools that help teams operationalize trust, communication, and realistic expectations with AI.

Anthropomorphism Isn’t the Problem

A more precise take: it’s not “humanizing AI” that breaks teams β€” it’s unclear collaboration boundaries and misplaced trust.

View β†’

When AI “Forgets”

Memory limits change workflows, reliability expectations, and the emotional experience of collaboration.

View β†’

Why AI Hallucinates

A practical explainer: where hallucinations come from, why they happen, and how to design around them.

View β†’

Impostor Syndrome vs. AI Hallucinations

A human + AI confidence mirror β€” and a collaboration-first path that helps both teams and tools improve.

View β†’

Tools in Action

Working builds that demonstrate these collaboration patterns in practice β€” with plain-English context, intent, and usage notes.

Tool Library (GitHub)

Production-ready tools that show how I design human–AI collaboration β€” prompts, workflows, system patterns, and role-based AI participation.

View the Tool Library β†’

Tool Spotlights Coming soon

Short writeups explaining the collaboration pattern each tool proves β€” what problem it solves, how it was designed, and where it works (or doesn’t).

Links added as posts go live

The work behind the work

“For 20 years I built platforms that connected people at scale. The question I’m asking now is the same one β€” just with a new kind of teammate in the room.”

That question has a methodology now. The Human–AI Loop is where I document what I’ve learned, built, and proven about what humans and AI can achieve together.

Β© 2026 Maura Randall Β· All apps MIT licensed Built by The Triad: Maura (direction + final call) Β· CP (divergence + prototyping) Β· Soph (synthesis + documentation)