Abstract
Deep learning has emerged as a transformative technology, enabling advancements in fields such as
computer vision, natural language processing, and autonomous systems. Python, with its comprehensive libraries and
frameworks, has become the primary language for developing deep learning models. This paper explores the latest
advancements in Python-based deep learning, focusing on key frameworks, algorithms, and innovations. It also
discusses the challenges associated with implementing deep learning solutions, such as computational cost, data
quality, and model interpretability. Furthermore, it addresses sustainable approaches to deep learning, emphasizing
energy-efficient techniques, model optimization, and the adoption of green computing practices. By understanding
these advancements and challenges, we can push forward towards more efficient and sustainable deep learning
solutions using Python