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Artificial Intelligence Product and Process Innovation (bundle)
Preliminary Information
Read This Before Starting
How to Get Your Certification
Machine Learning Product Innovation Cycle
Introduction (1:23)
Factors impacting an artificial intelligence product: an overview (13:38)
Interlude: How Managers Should Look at Data and Machine Learning Products (3:12)
Product Research an introduction Part-1 (13:30)
Interlude: The ingredients of an AI Product Research (3:02)
Product Research An Introduction Part-2 (7:34)
Interlude: How Managers Should Invest Resources To Create Business Value (3:09)
Product Research An Introduction Part-3 (12:02)
Interlude: Guidelines to Build AI Products That Work for Users. (2:42)
Interlude: Insights For Successful A.I. Product Development (3:30)
Design and implement a product incorporating machine intelligence Part-1 (15:38)
Interlude: How to Spot relevant Machine Learning Trends To Use In Your Products (3:38)
Design And Implement A Product Incorporating Machine Learning Part-2 (17:13)
Design and implement a product incorporating machine intelligence Part-3 (15:10)
Launching the new product (8:17)
Interlude: The Complexity Of Real A.I. Projects Implementation : A CTO View Point (3:29)
Product maintenance and improvement over time (8:10)
View Point: CTO View Point On Machine Learning and A.I. Trends (3:20)
View Point: AI Strategist On The Challenges of Real Implementations (2:34)
How to succeed at AI Product Development (4:30)
AI and Machine Learning Foundation for Managers
Introduction (0:39)
Artificial Intelligence, Machine Learning and the process overview (17:03)
Understanding the machine learning process Part-1 (11:17)
Understanding The Machine Learning Process Part-2 (12:54)
Understanding the machine learning process Part-3 (11:41)
Supervised Learning: Regression Part-1 (7:31)
Supervised Learning: Regression Part-2 (19:03)
Supervised Learning: Introduction to Classification (8:26)
Supervised Learning: Classification with KNN (6:53)
Supervised Learning: Classification: Logistic Regression (14:35)
Supervised Learning: Logistic Regression Advanced Topics (6:02)
Supervised Learning: Classification: Support Vector Machines (14:15)
Supervised Learning: Classification: Decision Tree (14:55)
Supervised Learning: Classification: Random Forest (7:49)
How to select the proper algorithm to solve a machine learning problem (3:48)
A recipe to select the proper algorithm (3:53)
Why we need the Deep Learning Technology (3:50)
Supervised Learning: Deep Learning Fundamentals (22:08)
Bridging Artificial Neural Networks with Deep Neural Networks (4:22)
Supervised Learning: Convolution Neural Networks (22:50)
Supervised Learning: Recurring Neural Networks. (16:20)
Unsupervised Learning: Intro and clustering methods (12:33)
Unsupervised Learning: Principal Component Analysis (12:59)
Course Slides
Science Driven Product and Service Innovation Recipes
Introduction (4:30)
The A.I. Product Innovation Cycle Part-1 (14:28)
The A.I. Product Innovation Cycle Part-2 (10:54)
The A.I. Product Innovation Cycle Part-3 (14:52)
Job to be done framework applied to A.I. products (11:05)
Science based Product Development Process (23:28)
JBTD from Product Strategy to A.I. product development example: Webinar Content Retrieval: Part-1 (15:41)
JBTD from Product Strategy to A.I. product development example: Webinar Content Retrieval Part2 (8:35)
JBTD from Product Strategy to A.I. product development example: Webinar Content Retrieval Part-3 (18:01)
Lead User Innovation approach applied to A.I. Products (21:57)
Section Slides
Design an Intelligent System
Designing Intelligent Systems Introduction (2:02)
When and how to use an intelligent system (20:53)
High level Design of a Novel Intelligent System in the Lodging Industry (12:51)
Introduction to Designing Intelligent Experiences (21:49)
Balancing Intelligent Experiences Part-1 (17:20)
Balancing Intelligent Experiences Part-2 (8:22)
Modes Intelligence interacts with the users. Part-1 (17:15)
Modes Intelligence interacts with the users. Part-2 (9:11)
Comparing Intelligent Experiences: YouTube versus Spotify (21:36)
Setting Intelligent Systems Goals Part-1 (17:38)
Setting Intelligent Systems Goals Part-2 (10:40)
Measuring Intelligent Systems Performances Part-1 (10:02)
Measuring Intelligent Systems Performances Part-2 (13:32)
Measuring Intelligent Systems Performances Part-3 (7:04)
Performance Evaluation Real Examples Part-1 (8:42)
Performance Evaluation Real Examples Part-2 (19:02)
Summary and conclusions (1:12)
Section Slides
CHOOCH.AI: New To The World: Very High Tech: SAAS in Computer Vision: Business&Technical Use Case
Business opportunity analysis, benefits versus risk analysis. (14:36)
Product Research and Product Design phase (22:21)
Product Development and Operations Part-1 (15:55)
Product Development and Operations Part-2 (18:59)
Initial Launch, Marketing Positioning and Capital raise (23:02)
Section Slides
Trybe.AI: New To the World: Improving personal Behavior: Design Product with Limited Data Use Case
Introduction, Combining AI with Behavioral science: First Product Iteration (14:51)
Product Development Process: Early prototyping and leveraging existing technologies (18:01)
Pivoting to a new simplified product: AI and data remains central to the value proposition (13:36)
E-commerce classification system: large scale system, growing and monitoring intelligence over time
Introduction: Learning Objectives (3:35)
Classification: Overview and business relevance (12:17)
Classification: Selecting the proper intelligence Part-1 (48:48)
Classification: Selecting the proper intelligence Part-2 (24:58)
Classification: Monitoring and growing intelligence over time (22:44)
Classification: When and why to stop growing the intelligent system (10:08)
Section Slide
Banking Use Case: Envisioning a new Intelligent product for the banking industry
Introduction (10:06)
How Banking Really Works (5:50)
Cash Management in Banking (8:40)
Cash Management 2.0 (9:26)
Cash Management 2.0 part b (4:10)
Building a new type of cash management process (6:44)
A proposal for using ML and Data aggregation to improve cash management processes (4:12)
Summary and conclusions (2:16)
Smart Images in large internet websites: Hybrid intelligence and measuring Intelligence impact
Introduction and learning objectives (6:40)
Understanding the business scenario and value drivers (12:34)
Comparative analysis and intelligent system goal setting (17:06)
Intelligent solution design and implementation Part-1 (19:56)
Intelligent solution design and implementation Part-2 (10:08)
Evaluating intelligence impact on primary business goals (18:35)
Section Slides
Readings and Weekly Relevant Material
Reducing Complexity may result in reducing operating costs and delivery time
The 7 process Challenges you must know to plan, develop and maintain A.I. Solutions
A Recipe To Decide When To Use The Different Types Of Deep Learning
Prediction of Customer Churn: Machine Learning In Practice
Strategy For AI Success: Data Dominance
5 Roadblocks to Getting an ML System in Production
Saving time and reducing costs with transfer learning
How to deal with situations where it is not easy to source data
The Black Box Problem: Why We need Explainability (5:24)
Improving Operational Efficiency in Data Labeling
Predicting Breast Cancer 5 years Earlier
The Challenges Data Scientists Face When Developing AI Solutions That Managers should know.
Use Cases For Machine Learning In The Insurance Industry
Augmented Intelligence: How Google Is Trying To Combine A.I. And Interactive Design To Help Pathologists Detect Cancer
How to succeed at AI Product Development
How AI Is Impacting The Logistic: Overviews of Use Cases And Tech Trends
Summarizing News For The Busy Professionals: Natural Language Processing At Work.
Intelligent Scanning Using Deep Learning for MRI
Emerging Technology Can Reduce Dependence on Data Operations And Reduce Implementation Costs.
Emerging Frontiers in Predictive Modeling: Semi-Supervised Learning to Speeds Up Business Outcome (3:37)
The Case For General AI: New Algorithm Can Respond 90% of School Admission Tests (2:06)
How to handle a growing Intelligent system and what his critical for a manager to know.
Retail Industry Must Adapt To The Changes From Many Areas Of Business: How AI is Playing A Role
4 Key Factors Driving Health Care A.I. Adoption.
Why Physicians Aren't Adopting A.I.?
$17B Recoup Thanks to Automated Machine Learning: Retail Secretes Unveiled
The Root Of Biases In Artificial Intelligence Algorithms
Final Use Case Upload
New Lecture
Initial Launch, Marketing Positioning and Capital raise
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