This paper addresses the need for a more practical, flexible and scalable approach to garment manufacturing amidst the fashion industry's current shift towards transformable production. The current trend for personalized, on-demand orders has resulted in a need for greater involvement of static units capable of carrying out certain tasks (e.g. assembly, cutting, ironing) and mobile robots during the garment production process. Previous research has dealt with the development of a scheduler for these types of robots once all orders have been received. Although meaningful, this model remains impractical in realistic production settings. This paper introduces TransPRES (Transformable Production REsource Scheduler), a deep reinforcement learning-based scheduler that assigns three different kinds of static and mobile robots to individual tasks based on demand. This newly proposed method uses a tailor-made state to represent the transformable production, and an action that schedules the corresponding resource based on its type. To evaluate this approach, we developed a transformable production simulator that generates garment manufacturing orders with varying numbers of tasks, processing times, hierarchy, and resources required to complete them. Furthermore, we extended a heuristic-based approach and an additional reinforcement learning-based approach for comparison within a transformable production environment. Results show that our method outperforms previous approaches by being able to schedule 11% more tasks using 2 ms per flop which, in turn, demonstrates its effectiveness for the future of transformable production.