Osteosarcoma is a
life-threatening bone cancer that usually attacks young adults and
children, independent of age. It habitually starts in quick-growing bone
areas close to the ends of the arm or leg bones, such as the distal
femur, proximal tibia, and proximal humerus. However, it can still be
revealed in any bone, including the pelvis, jaw, and shoulder. The
starting and the preeminent conclusion of any cancer are to identify the
tumor as before long as conceivable, and it's moreover pertinent for
Osteosarcoma. Osteosarcoma has a few arrange in its life cycle. The need
of categorizing cancer patients into tall or short risk categories has
prompted several research organizations in the biomedical and
bioinformatics fields to consider using Profound Learning (Deep
Learning) methodologies. Fast.ai, a Deep Learning Framework for
enhancing the efficiency and accu-racy of osteosarcoma tumor
categorization into tumor classes, is presented in this study (tumor vs
non-tumor). At the conclusion of the study, we found that employing
neural networks may provide excellent precision and capability in
osteosarcoma classification and model comparison.