Coursera – Large–Scale Database Systems Specialization

Coursera – Large–Scale Database Systems Specialization

Free Download Coursera – Large–Scale Database Systems Specialization


Released 12/2024
By David Silberberg - Johns Hopkins University
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Genre: eLearning | Language: English + subtitle | Duration: 47 Lessons ( 6h 30m ) | Size: 1.42 GB


Master Distributed Databases and Cloud Analytics. Gain advanced skills in distributed database systems, cloud computing, data reliability, and machine learning to design and optimize large-scale data solutions.

What you'll learn


Master database systems, including transaction management, query optimization, and data warehousing principles for large-scale environments.
Develop proficiency in cloud computing concepts, using Hadoop and Accumulo for data processing and storage in distributed systems.
Apply machine learning techniques such as clustering and collaborative filtering to analyze big data and enhance system reliability.
Skills you'll gain
Transaction Management & Concurrency Control
Query Optimization for Distributed Systems
Distributed Database Architecture Design
MapReduce & Distributed Data Processing
Cloud Computing & Hadoop Ecosystem
Machine Learning in Distributed Environments
Reliability Protocols & Fault Tolerance
Data Security & Privacy in Distributed Systems
The specialization "Large-Scale Database Systems" is intended for post-graduate students seeking to develop advanced skills in distributed database systems, cloud computing, and machine learning. Through three comprehensive courses, you will dive into key topics such as distributed database architecture, transaction management, concurrency control, query optimization, and data reliability protocols, equipping you to handle complex data environments. You will also gain hands-on experience with cloud computing concepts, including Hadoop and the MapReduce framework, essential for large-scale data processing. In addition, you'll explore machine learning applications such as collaborative filtering, clustering, and classification techniques, learning to optimize these models for scalable analysis in distributed systems.
By the end of the specialization, you will have developed an understanding of optimizing large-scale data warehouses and implementing machine learning algorithms for scalable analysis. This specialization will prepare you to design and optimize high-performance, fault-tolerant data solutions, making you well-equipped to work with large-scale distributed systems in industries like data analytics, cloud services, and machine learning development.
Applied Learning Project
Learners will engage in scenarios that simulate real-world challenges in managing and optimizing distributed database systems while incorporating self-reflective readings. Through self-reflective readings, learners will connect the technical concepts of distributed database theory, query optimization, and machine learning integration to their own professional goals and experiences. They will reflect on the implications of their decisions in designing fault-tolerant systems, improving scalability, and balancing performance with security in real-world scenarios.
This holistic approach ensures that learners develop a reflective mindset for tackling the complexities of distributed systems in data-driven industries like cloud computing, machine learning, and large-scale data analytics.
Homepage:
https://www.coursera.org/specializations/large-scale-database-systems






DOWNLOAD NOW: Coursera – Large–Scale Database Systems Specialization


Buy Premium From My Links To Get Resumable Support,Max Speed & Support Me



Coursera – Large–Scale Database Systems Specialization Torrent Download , Coursera – Large–Scale Database Systems Specialization Watch Free Online , Coursera – Large–Scale Database Systems Specialization Download Online

Free Download Coursera – Large–Scale Database Systems Specialization is known for its high-speed downloads. It uses multiple file hosting services such as Rapidgator.net, Nitroflare.com, Uploadgig.com, and Mediafire.com to host its files

Related News:
{related-news}