karrierfejlesztésrl
KarrierfejlesztésRL is an emerging conceptual framework that combines traditional career development practices with reinforcement learning techniques to create adaptive, evidence‑based career guidance. The term blends the Hungarian word for career development, karrierfejlesztés, with the abbreviation RL, commonly used to denote reinforcement learning, a subfield of machine learning that models decision making as a sequence of actions rewarded by feedback. In this paradigm, an individual’s career trajectory is treated as an agent that selects career actions—such as training, job switching, or skill acquisition—while the system evaluates outcomes against a reward function defined by career success metrics (salary growth, job satisfaction, skill relevance). Over time, the algorithm refines its recommendation policy, aiming to maximize long‑term career value.
The framework emerged in the mid‑2010s as digital platforms began exploring AI for human resource management.
Critics caution that reinforcement learning models require large, high‑quality datasets and can reinforce existing biases if