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← Dispatches

Agents

Named practitioner synthesis

#191

T3digested
Topic
Agent Evaluation
First seen
2026-07-16 19:08:00
Last seen
2026-07-16 19:08:00

Source raw items (1)

  • Blog / Newsletter2026-07-16 19:07:19
    Agents

    <p>Intelligent agents are considered by many to be the ultimate goal of AI. The classic book by Stuart Russell and Peter Norvig, <em>Artificial Intelligence: A Modern Approach</em> (Prentice Hall, 1995), defines the field of AI research as “<em>the study and design of rational agents.</em>”</p> <p>The unprecedented capabilities of foundation models have opened the door to agentic applications that were previously unimaginable. These new capabilities make it finally possible to develop autonomous, intelligent agents to act as our assistants, coworkers, and coaches. They can help us create a website, gather data, plan a trip, do market research, manage a customer account, automate data entry, prepare us for interviews, interview our candidates, negotiate a deal, etc. The possibilities seem endless, and the potential economic value of these agents is enormous.</p> <p>This section will start with an overview of agents and then continue with two aspects that determine the capabilities of