Cancer is the foremost cause behind the most death pace of people around the world. Breast cancer among females is the foremost cause of deaths worldwide. There have been various investigation or experimentation aimed at the discovery and interpretation of facts taken on initial expectation and discovery of chest cancer disease to initiate action & increase the opportunity of fortitude. Utmost research targets x-ray pictures of the breasts. Although, photographs of the breasts made by X-rays occasionally produces a threat of fake recognition which can compromise the medical status of infectious person. It’s crucial and important to discover disease detection systems which is simpler to invest into impact and effort with exceptional datasets, modest and more secure, which could deliver an additional reliable prognosis. The proposed manuscript recommends an associated model of diverse Deep Learning Algorithms (DLA)comprising Artificial Neural Network (ANN) and Recurrent Neural Networks(RNN) for efficiently detecting and predicting breast cancer disease. The study exploration utilizes the x-rays facsimile database (as base research datasets) for prediction, detection, and diagnosis of breast cancer. This anticipated research prototype may be associated with several clinical examination data i.e. text, audio, image, video, blood, urine and many more.