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Data Science Research Methods: Python Edition
In this course, you will become familiar with the essentials of the exploration procedure—from developing a decent inquiry to designing great information assortment methodologies to putting outcomes in context.
Self-Paced
Learning Style
Microsoft
Provider
Intermediate
Difficulty
18 Hours
Course Duration
Course Info
Certificate
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In this course, you will become familiar with the essentials of the exploration procedure—from developing a decent inquiry to designing great information assortment methodologies to putting outcomes in context.
Course Information
About this course:
Data researchers are frequently trained in the examination of information. But, the objective of data science is to deliver a decent understanding of certain issues or thoughts and create valuable models on this understanding. In view of the principle of "trash in, trash out," it is essential that the data researcher realizes how to assess the nature of the information that comes into data examination. This is particularly the situation when information is gathered explicitly for some analysis (e.g., an overview).
In this course, you will become familiar with the essentials of the exploration procedure—from developing a decent inquiry to designing great information assortment methodologies to putting outcomes in context. In spite of the fact that the data researcher may frequently have a key impact on information investigation, the whole research process must work durably for legitimate insights to be gathered.
Created as a language in view of measurable analysis and modeling, Python has become a basic device for doing genuine Data Science. With this version of Data Science Research Methods, the entirety of the labs are finished with Python, while the videos are tool-agnostic. In the event that you lean toward your Data Science to be finished with R, it would be ideal if you see Data Science Research Methods: R Edition.
Course Objective:
- Data science research design.
- Data analysis and inference.
- Survey Design and Measurement
- Planning for Analysis
- Power and Sample Size Planning
- Reliability and Validity
- Experimental data modeling and analysis.
- Factorial Designs
- Knowledge Check
Audience:
Data Analyst
Programmers
Prerequisite:
- Fundamental information on math
- Some programming experience – Python is liked.
- A willingness to learn through self-guided investigation.
Career & Salary Insight
Outline
More Information
Brand | Microsoft |
---|---|
Subjects | App Development |
Lab Access | No |
Technology | Microsoft |
Learning Style | Self-Paced Learning |
Learning Type | Course |
Difficulty | Intermediate |
Course Duration | 18 Hours |
Language | English |
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Reviews

Tom Robertson
(Data Science Enthusiast)
Tom is an innovator first, and then a Data Scientist & Software Architect. He has integrated expertise in business, product, technology and management. Tom has been involved in creating category defining new products in AI and big data for different industries, which generated more than hundred million revenue cumulatively, and served more than 10 million users.
As a Data Scientist and Software Architect Tom has extensive experience in data science, engineering, architecture and software development. To date Tom has accumulated over a decade of experience in R, Python & Linux Shell programming.
Tom has expertise on Python, SQL, and Spark. He has worked on several libraries including but not limited to Scikit-learn, Pandas, NumPy, Matplotlib, Seaborn, SciPy, NLTK, Keras, and Tensorflow.
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