Ads
related to: coursera data analytics by google docs- Explore the Certificates
Flexible online training.
No experience necessary.
- Data Analytics
Become a data analyst.
Prepare for a new career.
- Browse All Programs
Learn job-ready skills.
100% remote, online learning.
- Become a Data Analyst
Learn at your own pace.
Prepare for a new career.
- No Experience Necessary
Learn job-ready skills.
Flexible online training.
- Project Management
Become a project manager.
Learn at your own pace.
- Explore the Certificates
Search results
Results From The WOW.Com Content Network
Coursera Inc. (/ k ər ˈ s ɛ r ə /) is an American global massive open online course provider. It was founded in 2012 [2] [3] by Stanford University computer science professors Andrew Ng and Daphne Koller. [4] Coursera works with universities and other organizations to offer online courses, certifications, and degrees in a variety of subjects.
This data enables educators to spot struggling students weeks or months prior to being in danger of dropping out. Proponents of Learning Engineering posit that data analytics will contribute to higher success rates and lower drop-out rates. [13] Learning Engineering can also assist students by providing automatic and individualized feedback.
Dr. Wolfgang Greller and Dr. Hendrik Drachsler defined learning analytics holistically as a framework. They proposed that it is a generic design framework that can act as a useful guide for setting up analytics services in support of educational practice and learner guidance, in quality assurance, curriculum development, and in improving teacher effectiveness and efficiency.
DataOps is a set of practices, processes and technologies that combines an integrated and process-oriented perspective on data with automation and methods from agile software engineering to improve quality, speed, and collaboration and promote a culture of continuous improvement in the area of data analytics. [1]
A cloud-based architecture for enabling big data analytics. Data flows from various sources, such as personal computers, laptops, and smart phones, through cloud services for processing and analysis, finally leading to various big data applications. Cloud computing can offer access to large amounts of computational power and storage. [40]
The APIs provide functionality like analytics, machine learning as a service (the Prediction API) or access to user data (when permission to read the data is given). Another important example is an embedded Google map on a website, which can be achieved using the Static Maps API, [1] Places API [2] or Google Earth API. [3]
Ads
related to: coursera data analytics by google docs