TOP 5 MUST-KNOW DATA SCIENCE FRAMEWORKS

Page 1

TOP 5 MUST-KNOW DATA SCIENCE FRAMEWORKS Data Science has begun to witness a bright-ever future since companies worldwide have been becoming highly refined in their approach towards polishing their niche. The companies have been looking forward to improving the sales, winning more clients, scale- up customer satisfaction, and earning more effortlessly. The role of Data scientists has been significant for most organizations. According to the Glassdoor reports, theData Scientist job position has witnessed about 5X job growth with an average salary of USD 120,931. With expert data science professionals focusing on data science frameworks, many businesses have been able to successfully expedite data science projects.

What is Data Science Framework and Why to Use One? In software terminology, a framework means a set of individual software components which are available in the form of code and ready to be run either independently or collectively to implement a sophisticated task on any device. The major part is ready to run with libraries and you need not make efforts to reinvent them, all you have to learn is to customize them to build your application-specific software according to your business needs. The data science programming framework is software readily developed which incorporates reusable features so that you can develop your projects effortlessly and quickly. Hence, it is logical and practical to use a data science framework. With the frameworks developed by giants like Google and Facebook, data scientists have been leveraging the benefits of easy- to-use interfaces. While programming languages evolve, they will never be completely obsolete, hence data scientists and programmers prefer working with thedata science frameworks and consider them as advanced and cutting edge technology with numerous benefits.

Features of Data Science Framework Data science frameworks offer numerous benefits to the data science professionals and the technology teams with the features listed below. 1. Creation ofhigh-end codes Data science Frameworks can let the coders create ideal design patterns and prevent any possible insecure codes. The codes developed would be rather easier to write, test, and debug. 2. Utilization of pre-tested and pre-optimized Frameworks Data science professionals can save time by utilizing the pre-


Turn static files into dynamic content formats.

Create a flipbook
Issuu converts static files into: digital portfolios, online yearbooks, online catalogs, digital photo albums and more. Sign up and create your flipbook.