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Dynamic Pricing Agent

## Q-Learning Reinforcement Learning Engine Applies epsilon-greedy Q-Learning policy to optimize shift pricing based on historical fill rates, time-to-shift, market conditions, and demand patterns. Generates per-shift recommendations with current rate, recommended rate, adjustment percentage, confidence score, and reasoning explanation.

Agent ID
DynamicPricingAgent
Sector Customer Experience Services / GigCX (Gig Customer Experience)
Status
Operational

Problem Statement

The challenge addressed

## Shift Fill Rate Optimization Determines optimal shift pricing to maximize fill rates for hard-to-fill slots while controlling costs on easily-filled positions.

Core Logic

How the agent solves it

## Q-Learning Reinforcement Learning Engine Applies epsilon-greedy Q-Learning policy to optimize shift pricing based on historical fill rates, time-to-shift, market conditions, and demand patterns. G...

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