Overzicht
This course provides a structured approach to designing agentive technology—systems that act independently to assist users. With a focus on real-world applications, it emphasizes the design of autonomous systems that can learn and adapt to user needs, creating more intuitive AI-driven interactions.
You will gain practical knowledge on defining agentive technology, identifying interaction patterns, and refining systems to improve user agency. By the end of the course, you’ll be able to create smarter, more responsive tools that support users in a variety of contexts.
What sets this course apart is its combination of theory and hands-on practice. You’ll be exposed to conceptual frameworks for agentive technology, with a focus on real-world use cases and the ethical implications of autonomous systems.
Ideal for product strategists, UX designers, and anyone interested in autonomous systems, this course assumes a basic background in digital product design. No coding experience is required, but understanding digital product thinking will help you maximize the course’s value.
Copyright @2017 Christopher Noessel. All rights reserved.
Originally published by Rosenfeld Media, LLC., This course edition is published by Packt Publishing under license from Rosenfeld Media LLC. No part of this material may be reproduced, distributed, or transmitted in any form or by any means-electronic, mechanical, photocopying, recording, or otherwise-without prior written permission from the author or the publisher.
Lesprogramma
- The Thermostat That Evolved
In this module, we will follow the thermostat's journey, uncover Drebbel's feedback loop, and compare simple tools with agents steering modern heating, ventilation, and air conditioning systems.
- Fait Accompli: Agentive Tech Is Here
In this section, we define agentive technology as persistent background assistants that lower physical and informational effort, distinguish them from robots and automation, and evaluate real products using this lens.
- Agentive Tech Can Change The World
In this section, we define agentive technology, assess auto* systems delegating skilled or uncomfortable tasks, and outline cooperative multi-agent strategies that reshape human effort, play, and infrastructure.
- Six Takeaways From the History of Agentive Thinking
In this section, we trace agentive thinking from myth to artificial-intelligence automation, comparing human and machine strengths and assessing feedback-driven, fluid agency that guides practical human-computer collaboration.
- A Modified Frame For Interaction
In this section, we redesign interaction with an agent-centric see-think-do loop, define rules, exceptions, triggers and behaviors, and plan disengagement strategies that sustain user trust in autonomous systems.
- Ramping Up With An Agent
In this section, we create agent setup flows that clearly state capabilities and constraints, capture user goals, preferences and permissions, then iteratively test-drive performance to launch reliable, trusted assistants.
- Everything Running Smoothly
In this section, we implement pause-restart controls and live monitoring pipelines, then design notifications and user overrides that maintain transparency, safety, and collaborative control of autonomous agents after deployment.
- Handling Exceptions
In this section, we implement scalable exception-handling patterns, iteratively tune triggers to cut false positives, and examine user-system trust during control handoff, disengagement and recovery in AI applications.
- Handoff and Takeback
In this section, we assess handoff and takeback in agentive systems, identify AI-human transition risks, outline interfaces for control reclamation, and emphasize practice regimes that maintain operator vigilance and expertise.
- Evaluating Agents
In this section, we pair traditional UI usability testing with heuristic reviews of agentive behaviour, while capturing user confidence, perceived benefits and measurable value to rigorously evaluate intelligent systems.
- How Will Our Practice Evolve?
In this section, we chart AI practice from concept pitching to building smarter, unobtrusive agents toward AGI. We hone persuasive messaging and critique key design strategies.
- Utopia, Dystopia, and Cat Videos
In this section, we contrast utopian and dystopian agent futures, dissect ethical dilemmas like autonomy versus accountability, and project how large-scale AI services reshape jobs, skills, equity, and societal dependency.
- Your Mission, Should You Choose to Accept It
We compare cinematic heads up displays with real agentive systems, distinguishing technical limits from ethical roles, and guiding designers to weave accurate automation into supportive human centered workflows.
Gegeven door
Packt - Course Instructors
Vakgebieden
Computer Science