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Big Data and Deep Learning <br />Program Description <br />This course will teach students to work on various real -world big data projects rising different Big Data tools as a <br />part of the solution strategy. The course will provide students' knowledge and skills to process big data on platform s <br />that can lumdle the variety, velocity, and volume of data. This comprehensive training on the framework provides <br />hands-on experience for solving real-time industry -based big data projects to become an expert in Big Data. <br />In this course, we will learn about the basics of deep neural networks and their applications to various tasks. The <br />course aim is to present the mathematical, statistical, and computational challenges of building stable representations <br />for lugh-dimensional data. <br />Course Objectives <br />• The student will learn how to format data using new technologies and techniques <br />• Learn about the f ndamentals of databases and learn basic principles of Big Data <br />• Learn the basic tools for statistical analysis, R and Python, and several machine learning algorithms. <br />• Learn the tools required for building Deep Learning models. <br />• Explore multiple architectures and understand how to fine-tune and continuously improve models <br />• Learn how the same task can be solved using multiple Deep Learning approaches <br />Course Delivery Option: Classroom, Online/Distance Learning/Distance Learning <br />Sequence and frequency of class sessions: Every 6 weeks <br />Related Job Titles/Occupations <br />Software Developers, Applications SCO Code 15-1132.00 <br />Instruction Details <br />Students will learn tools and analytical methods to use data for decision -making, collect and organize data at scale, <br />and gain an understanding of how data analysis can help to inform change within organizations. This course will <br />develop both the technical and computational skills that are in high demand across a range of industries. The course <br />gives practical exercises to familiarize students with the format of big data and how to handle and analyze large, <br />complex, and data structures. Students will have significant familiarity with the subject and be able to apply Deep <br />Learning to a variety of tasks. They will also be positioned to understand much of the current literature on the topic <br />and extend their knowledge through further study. <br />Program In Duration: <br />Course Name Clock Hours Duration Maximum Completion Time <br />Big Data and Deep Learning 480 hours 24 weeks 36 weeks <br />Pre -Requisite: Basic Computer I(nowledge <br />Instructional Material: <br />Textbooks <br />Big Data Fundamentals: Concepts, Drivers & Techniques (The Pearson Service Technology Series from <br />Thomas Erl) by Thomas Erl, Wajid Khattak, et al. <br />Deep Learning (Adaptive Computation and Machine Learning series) Part of Adaptive Computation and Machine <br />Learning series (21 Books) I by Ian Goodfellow, Yoshua Bengio, et al. <br />Total Charges for Period of Attendance & Estimated charges for the entire program: $6,000.00 <br />Tuition Fee: $5,225; Registration Fee: $75 (Non-refundable); Book $200.00 Equipment: $500 <br />The requirement for completing the program <br />End of the program students is required to complete all the projects and lab work assigned during the program. <br />Students will get the course completion certificate after completing the examination and the projects. Student may <br />take the Big Data and Deep Learning certification exams <br />50 <br />