Nanodegree key: nd088
Version: 1.0.0
Locale: en-us
This is a product management course focused on AI
Content
Part 01 : Introduction to AI in Business
Learn the foundations of AI and how these technologies can learn from data and improve or inform product development.
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Module 01: Introduction to AI in Business
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Lesson 01: Welcome!
Welcome to this course on AI for Product Managers! Learn about the course structure and resources available to you.
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Lesson 02: Introduction to AI and Machine Learning
Get an overview of AI and machine learning and where they are used in industry. This lesson covers terminology and applications of supervised learning, unsupervised learning, and neural networks.
- Concept 01: Overview
- Concept 02: What is AI?
- Concept 03: What Can AI Do?
- Concept 04: The AI Universe
- Concept 05: Why Deep Learning?
- Concept 06: Industry Applications
- Concept 07: Affecting Industry
- Concept 08: Machine Learning Concepts
- Concept 09: Supervised Learning
- Concept 10: Unsupervised Learning
- Concept 11: Unsupervised vs. Supervised Approaches
- Concept 12: Reinforcement Learning
- Concept 13: Neural Networks
- Concept 14: Current State of AI
- Concept 15: Outro
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Lesson 03: Nanodegree Career Services
The Careers team at Udacity is here to help you move forward in your career - whether it's finding a new job, exploring a new career path, or applying new skills to your current job.
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Lesson 04: Using AI and Machine Learning in Business
How do you build a successful AI product? Learn which kinds of narrow business cases can stand to benefit the most from machine learning, and identify the components of an effective, AI product team.
- Concept 01: Overview
- Concept 02: AI Approach
- Concept 03: Business Needs
- Concept 04: The Business Case
- Concept 05: Project Statement
- Concept 06: Breaking it All Down
- Concept 07: Metrics
- Concept 08: Metrics Quiz
- Concept 09: Metrics Example: LinkedIn
- Concept 10: Need for AI
- Concept 11: Need for AI Example
- Concept 12: Things to Remember
- Concept 13: Team Overview
- Concept 14: Key Roles
- Concept 15: Project Management
- Concept 16: Summary
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Part 02 : Creating a Dataset
Build a custom data annotation job to create novel datasets.
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Module 01: Creating a Dataset
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Lesson 01: Data Fit and Annotation
Learn how data can affect the performance of a machine learning model and see how to create your own labeled dataset using Appen's annotation platform.
- Concept 01: Answering Questions with Data
- Concept 02: As Good as the Data
- Concept 03: Data Fit
- Concept 04: Data Collection & Relevance Quiz
- Concept 05: Data Completeness
- Concept 06: Appen's Data Annotation Platform
- Concept 07: Template Jobs Quiz
- Concept 08: Case Study: Parking Signs & Figure Eight
- Concept 09: The Platform
- Concept 10: Job Design
- Concept 11: Instructions & Examples
- Concept 12: Example Design Quiz
- Concept 13: Test Questions
- Concept 14: Auditing Results
- Concept 15: Planning for Failure
- Concept 16: Planning for Longevity
- Concept 17: Summary of Topics
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Lesson 02: Project: Create a Medical Image Annotation Job
Given a dataset and business goal, design your own data labeling job using Appen’s platform.
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Part 03 : Build a Model
Learn how to train and evaluate a neural network using automated machine learning tools.
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Module 01: Build a Model
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Lesson 01: Training and Evaluating a Model
Learn strategies for training a model from scratch or using transfer learning. Evaluate a model using machine learning tools, such as AutoML.
- Concept 01: Introduction
- Concept 02: Lesson Outline
- Concept 03: Overview of Modeling
- Concept 04: Activation Functions
- Concept 05: Perceptron Quiz
- Concept 06: Activation Function Quiz
- Concept 07: Modeling, Key Points
- Concept 08: Training Data
- Concept 09: A Pet Model
- Concept 10: Training Data is Key
- Concept 11: Training Data Quiz
- Concept 12: Training Data Summary
- Concept 13: Model Evaluation
- Concept 14: Model Evaluation Quiz
- Concept 15: Model Evaluation, Key Points
- Concept 16: Transfer Learning
- Concept 17: Automated ML
- Concept 18: Automated ML vs Custom Modeling
- Concept 19: Automated ML, Summary
- Concept 20: Outro
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Lesson 02: Project: Build a Model
Build a classification model to classify images of chest xrays using Google AutoML, an automated machine learning tool.
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Lesson 03: Take 30 Min to Improve your LinkedIn
Find your next job or connect with industry peers on LinkedIn. Ensure your profile attracts relevant leads that will grow your professional network.
- Concept 01: Get Opportunities with LinkedIn
- Concept 02: Use Your Story to Stand Out
- Concept 03: Why Use an Elevator Pitch
- Concept 04: Create Your Elevator Pitch
- Concept 05: Use Your Elevator Pitch on LinkedIn
- Concept 06: Create Your Profile With SEO In Mind
- Concept 07: Profile Essentials
- Concept 08: Work Experiences & Accomplishments
- Concept 09: Build and Strengthen Your Network
- Concept 10: Reaching Out on LinkedIn
- Concept 11: Boost Your Visibility
- Concept 12: Up Next
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Part 04 : Measuring Impact and Updating Models
As a product manager, you should be constantly looking to improve your machine learning models and product; learn strategies to mitigate bias, scale a product, and continuously update a model.
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Module 01: Measuring Impact and Updating Models
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Lesson 01: Measuring Business Impact & Mitigating Bias
Learn best practices for measuring model success, strategies for mitigating unwanted bias in a model, and scaling a product so that it's available to a large audience.
- Concept 01: Introduction to Business Impact
- Concept 02: Case Studies and Challenges
- Concept 03: Measuring Success
- Concept 04: Outcome vs. Output
- Concept 05: Outcomes Quiz
- Concept 06: Chatbot Example
- Concept 07: A/B Testing & Versioning
- Concept 08: Monitor Bias
- Concept 09: Text Bias Quiz
- Concept 10: Addressing Unwanted Bias
- Concept 11: Continuous Learning
- Concept 12: Spam Filter
- Concept 13: Model Optimization & Staleness
- Concept 14: Compliance and Ethics
- Concept 15: Privacy-First Approach
- Concept 16: Scaling a Product
- Concept 17: Summary of Skills
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Lesson 02: Case Study: Video Annotation
Review an end-to-end, AI product development cycle from solution ideation to prototyping and testing and finally, product launch (and continuous improvement) for a video annotation product.
- Concept 01: Intro & AI Product Development
- Concept 02: Identify the Business Problem
- Concept 03: Video Annotation Problem
- Concept 04: Prototype & Impact
- Concept 05: Real-Data Prototype
- Concept 06: Product Efficacy Quiz
- Concept 07: Test, Refine -> Final Product
- Concept 08: Release, Measure, Update
- Concept 09: Always Learning
- Concept 10: Conclusion
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Lesson 03: Project: Capstone Proposal
Complete a proposal for a complete AI product of your own design; consider users, data source, design practices, and iteration over time.
Project Description - Create an AI Product Business Proposal
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