Big Data Integration and Processing

External: Coursera Courses ↗ · Coursera

Open Course on External: Coursera

Free to audit · Opens on External: Coursera

Big Data Integration and Processing

Coursera · Beginner ·📊 Data Analytics & Business Intelligence ·2mo ago
At the end of the course, you will be able to: *Retrieve data from example database and big data management systems *Describe the connections between data management operations and the big data processing patterns needed to utilize them in large-scale analytical applications *Identify when a big data problem needs data integration *Execute simple big data integration and processing on Hadoop and Spark platforms This course is for those new to data science. Completion of Intro to Big Data is recommended. No prior programming experience is needed, although the ability to install applications and utilize a virtual machine is necessary to complete the hands-on assignments. Refer to the specialization technical requirements for complete hardware and software specifications. Hardware Requirements: (A) Quad Core Processor (VT-x or AMD-V support recommended), 64-bit; (B) 8 GB RAM; (C) 20 GB disk free. How to find your hardware information: (Windows): Open System by clicking the Start button, right-clicking Computer, and then clicking Properties; (Mac): Open Overview by clicking on the Apple menu and clicking “About This Mac.” Most computers with 8 GB RAM purchased in the last 3 years will meet the minimum requirements.You will need a high speed internet connection because you will be downloading files up to 4 Gb in size. Software Requirements: This course relies on several open-source software tools, including Apache Hadoop. All required software can be downloaded and installed free of charge (except for data charges from your internet provider). Software requirements include: Windows 7+, Mac OS X 10.10+, Ubuntu 14.04+ or CentOS 6+ VirtualBox 5+.
Watch on External: Coursera ↗ (saves to browser)
Sign in to unlock AI tutor explanation · ⚡30

Related AI Lessons

SyntheholDB for Pharma & Clinical Research Teams: Stop Letting Data Access Kill Your Pipeline
Optimize pharma and clinical research pipelines by leveraging SyntheholDB for efficient data access and management
Dev.to · Jitendra Devabhaktuni
Public data is a national asset, not a revenue shortcut
Kenya can build a trusted data economy by creating public value from citizen-submitted data without exploiting citizens for revenue
Techpoint Africa
The Role of AI-Powered Analytics in Improving Operational Efficiency
Learn how AI-powered analytics improves operational efficiency by converting data into actionable insights
Dev.to AI
Why Data Quality Matters More Than Artificial Intelligence Models
Data quality is more crucial than AI models for effective decision-making and process automation
Medium · AI
Up next
How to Find Duplicates in SQL - one of the most-asked SQL interview questions.
Manish Sharma
Watch →