AI–baserat träningsstöd för löpning
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Examensarbete för kandidatexamen
Bachelor Thesis
Bachelor Thesis
Modellbyggare
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Sammanfattning
In the field of middle- and long–distance running in athletics, personalized training plans are
an important factor for athletic success, yet the creation and adjustment of these plans remain
a time–consuming process for coaches. Coaching methodologies often vary based on individual
experience and philosophy, placing high demands on the flexibility of digital tools. This thesis
explores how advanced AI models can be utilized to automate parts of this decision–making
logic, aiming to reduce the administrative workload for coaches and enable an increased focus
on technical analysis and active coaching. Through a needs analysis, a training platform has
been developed to serve as an AI–based decision support system. The system integrates a
regression model for predicting running pace, based on individual Garmin data, with a model
based on retrieval–augmented generation for generating structured training schedules from
educational material and the athlete’s profile. To enable individualized adjustments, a Large
Language Model has been fine-tuned on specific coaching logic to handle athlete’s current
physical condition. The result is a web–based prototype demonstrating how AI and machine
learning can complement human expertise within middle- and long–distance running.
