AI Workflow: Business Priorities and Data Ingestion
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AI Workflow: Business Priorities and Data Ingestion
This course is part of IBM AI Enterprise Workflow Specialization
Instructors: Mark J Grover
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There are 3 modules in this course
This is the first course of a six part specialization. You are STRONGLY encouraged to complete these courses in order as they are not individual independent courses, but part of a workflow where each course builds on the previous ones.
This first course in the IBM AI Enterprise Workflow Certification specialization introduces you to the scope of the specialization and prerequisites. Specifically, the courses in this specialization are meant for practicing data scientists who are knowledgeable about probability, statistics, linear algebra, and Python tooling for data science and machine learning. A hypothetical streaming media company will be introduced as your new client. You will be introduced to the concept of design thinking, IBMs framework for organizing large enterprise AI projects. You will also be introduced to the basics of scientific thinking, because the quality that distinguishes a seasoned data scientist from a beginner is creative, scientific thinking. Finally you will start your work for the hypothetical media company by understanding the data they have, and by building a data ingestion pipeline using Python and Jupyter notebooks. By the end of this course you should be able to: 1. Know the advantages of carrying out data science using a structured process 2. Describe how the stages of design thinking correspond to the AI enterprise workflow 3. Discuss several strategies used to prioritize business opportunities 4. Explain where data science and data engineering have the most overlap in the AI workflow 5. Explain the purpose of testing in data ingestion 6. Describe the use case for sparse matrices as a target destination for data ingestion 7. Know the initial steps that can be taken towards automation of data ingestion pipelines Who should take this course? This course targets existing data science practitioners that have expertise building machine learning models, who want to deepen their skills on building and deploying AI in large enterprises. If you are an aspiring Data Scientist, this course is NOT for you as you need real world expertise to benefit from the content of these courses. What skills should you have? It is assumed you have a solid understanding of the following topics prior to starting this course: Fundamental understanding of Linear Algebra; Understand sampling, probability theory, and probability distributions; Knowledge of descriptive and inferential statistical concepts; General understanding of machine learning techniques and best practices; Practiced understanding of Python and the packages commonly used in data science: NumPy, Pandas, matplotlib, scikit-learn; Familiarity with IBM Watson Studio; Familiarity with the design thinking process.
The goal of this first module is to introduce you to the overall specialization requirements, evaluate your understanding of some key prerequisite knowledge, and familiarize you with several process models commonly used today. In this course we will use the process of design thinking, but it is the consistent application of a process in practice that is important, not the exact process itself. There are a number of reasons for choosing the design thinking process, but the most important is that it is being applied in a cross-disciplinary wayβthat is outside of data science.
What's included
3 videos13 readings3 assignments
3 videosβ’Total 12 minutes
- Course Introductionβ’3 minutes
- IBM Watson Studio - Create a projectβ’5 minutes
- Workflow Overviewβ’4 minutes
13 readingsβ’Total 61 minutes
- About this Courseβ’5 minutes
- Target Audienceβ’2 minutes
- Required skillsβ’2 minutes
- An introduction to IBM Watson Studio and IBM Design Thinkingβ’12 minutes
- Overview of IBM Watson Studioβ’2 minutes
- Am I Ready?β’1 minute
- Am I ready to take this Specialization?β’3 minutes
- Readiness Quiz Reviewβ’12 minutes
- Advantages and Disadvantages of Process Modelsβ’2 minutes
- Data Science Process Modelsβ’2 minutes
- The Design Thinking Processβ’2 minutes
- Data Science Workflow Combined with Design Thinkingβ’13 minutes
- Process Models, Design Thinking, and Introduction: Summary/Reviewβ’3 minutes
3 assignmentsβ’Total 72 minutes
- Readiness Quizβ’60 minutes
- Process Models, Design Thinking, and Introduction: End of Module Quizβ’10 minutes
- Process Models & Design Thinking: Check for Understandingβ’2 minutes
Throughout this module you will learn or reinforce what you already know about identifying and articulating business opportunities. In this module you will learn the importance of applying a scientific thought process to the task of understanding the business use case. This process has many similarities to that of being an investigator. You will also generate a healthy respect for the need to pause, step back and think scientifically about the main processes in this stage.
What's included
5 videos5 readings4 assignments
5 videosβ’Total 17 minutes
- Data Collection Overviewβ’2 minutes
- Introduction to Business Opportunitiesβ’3 minutes
- Introduction to Scientific Thinking for Businessβ’3 minutes
- Introduction to Gathering Dataβ’2 minutes
- AI Workflow: Gathering dataβ’7 minutes
5 readingsβ’Total 32 minutes
- Data Collection Objectivesβ’2 minutes
- Identifying the Business Opportunity: Through the Eyes of our Working Exampleβ’5 minutes
- Scientific Thinking for Businessβ’10 minutes
- Gathering Dataβ’12 minutes
- Data Collection: Summary/Reviewβ’3 minutes
4 assignmentsβ’Total 95 minutes
- Data Collection: End of Module Quizβ’5 minutes
- Business Opportunities: Check for Understandingβ’30 minutes
- Scientific Thinking for Business: Check for Understandingβ’30 minutes
- Gathering Data: Check for Understandingβ’30 minutes
Cleaning, parsing, assembling and gut-checking data is among the most time-consuming tasks that a data scientist has to perform. The time spent on data cleaning can start at 60% and increase depending on data quality and the project requirements. This module looks at the process of ingesting data and presents a case study working a real world scenario.
What's included
5 videos15 readings2 assignments1 ungraded lab
5 videosβ’Total 41 minutes
- Introduction to Data Ingestionβ’4 minutes
- AI Workflow: Data ingestionβ’6 minutes
- AI Workflow: Sparse Matrices for Data Pipeline Developmentβ’11 minutes
- Using Watson Studio to Complete the Case Studyβ’17 minutes
- Case Studyβ’3 minutes
15 readingsβ’Total 63 minutes
- Data Engineeringβ’3 minutes
- Limitations of Extract, Transform, Load (ETL)β’3 minutes
- Data Ingestion in the Modern Enterpriseβ’1 minute
- Enterprise Data Stores for Data Ingestionβ’3 minutes
- Why We Need a Data Ingestion Processβ’2 minutes
- Data Ingestion and Automationβ’3 minutes
- Sparse Matrices are Used Early in Data Ingestion Developmentβ’5 minutes
- Getting started Watson Studioβ’3 minutes
- Case Study Introductionβ’2 minutes
- Getting Startedβ’3 minutes
- Data Sourcesβ’2 minutes
- PART 1: Gathering the dataβ’10 minutes
- PART 2: Checks for quality assurance (Includes Assessment)β’10 minutes
- PART 3: Automating the process (Includes Assessment)β’10 minutes
- Data Ingestion: Summary/Reviewβ’3 minutes
2 assignmentsβ’Total 3 minutes
- Data Ingestion: End of Module Quizβ’0 minutes
- Ingesting Data: Check for Understandingβ’3 minutes
1 ungraded labβ’Total 60 minutes
- Case Study Answer Key Notebookβ’60 minutes
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Reviewed on May 28, 2020
This is a great course .Lectures and materials are excellent.case study is not organised properly.
Reviewed on Jan 2, 2021
Very helpful and good course to start my journey to AI Workflow - Thanks!
Reviewed on May 12, 2020
The Data Ingestion notebook was such a great experience.
Frequently asked questions
This course assumes that you are already familiar with basic data science concepts including probability and statistics, linear algebra, machine learning, and the use of Python and Jupyter. If you are unsure we do offer a Readiness Exam you can take to see if you are prepared.
No. The certification exam is administered by Pearson VUE and must be taken at one of their testing facilities. You may visit their site at https://home.pearsonvue.com/ for more information.
Please visit the Pearson VUE web site at https://home.pearsonvue.com/ for the latest information on taking the AI Enterprise Workflow certification test.
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