Reading Big Data By Machine Learning: The Used of Computer Science for Human Life
Abstract
Machine learning (ML) models use big data to learn and improve predictability
and performance automatically through experience and data, without being
programmed to do so by humans. Artificial Intelligence (AI) techniques are being
increasingly deployed in finance, in areas such as asset management, algorithmic trading,
credit underwriting or blockchain-based finance, enabled by the abundance of available
data and by affordable computing capacity. The purpose of this study is to describe in
detail how the power of artificial intelligence with its complex system can help the needs
of digital technology in the banking sector. The research method used is the elaboration
of great thoughts and facts about artificial intelligence. Scientific data is interpreted with
analytical power that is as precise as possible, so as to produce a description that meets
the logic of structured thinking. The data is taken from relevant and up-to-date literature,
the work of scientists who have been disseminated in various weighty scientific
publications at the world level. The report can help policy makers to assess the
implications of these new technologies and to identify the benefits and risks related to
their use. It suggests policy responses that that are intended to support AI innovation in
finance while ensuring that its use is consistent with promoting financial stability, market
integrity and competition, while protecting financial consumers. Emerging risks from the
deployment of AI techniques need to be identified and mitigated to support and promote
the use of responsible AI. Existing regulatory and supervisory requirements may need to
be clarified and sometimes adjusted, as appropriate, to address some of the perceived
incompatibilities of existing arrangements with AI applications.

