- Level Foundation
- Duration 13 hours
- Course by Google Cloud
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Offered by
About
Business professionals in non-technical roles have a unique opportunity to lead or influence machine learning projects. If you have questions about machine learning and want to understand how to use it, without the technical jargon, this course is for you. Learn how to translate business problems into machine learning use cases and vet them for feasibility and impact. Find out how you can discover unexpected use cases, recognize the phases of an ML project and considerations within each, and gain confidence to propose a custom ML use case to your team or leadership or translate the requirements to a technical team.Modules
Module 1: Welcome to the course
1
Videos
- Introduction
2
Readings
- How to download course resources
- How to send feedback
Module 2: Introduction
1
Videos
- Introduction
Understanding ML with examples
1
Videos
- AI vs ML vs Deep Learning
Module 2: Machine learning projects
2
Videos
- Phase 1: Assess feasibility
- Practice assessing the feasibility of ML use cases
Assignments
1
Assignment
- Identifying business value for using ML
1
Readings
- Worksheet
Module 3: Introduction
1
Videos
- Common ML problem types
Machine Learning Defined
3
Videos
- Standard algorithm and data
- Data quality
- Predictive insights and decisions
Real-life Use Cases
5
Videos
- More ML examples
- Practice series: Analyze the ML use case
- Saving the world's bees
- Google Assistant for accessibility
- Exercise review and Why ML now
1
Readings
- Module 3: Worksheet
Assessment
1
Assignment
- Defining ML as a practice
Module 4: Introduction
1
Videos
- Features and labels
Tools to label datasets
1
Videos
- Building labeled datasets
Guidelines for training ML models
2
Videos
- Training an ML model
- General best practices
Getting started with Qwiklabs
1
External Tool
- Identifying damaged car parts with AutoML Vision
2
Videos
- Introduction to hands-on labs
- Lab 1: Review
Assessment
1
Assignment
- Building and evaluating ML models
Module 5: Introduction
1
Videos
- Human bias in ML
Guiding Principles
2
Videos
- Google's AI Principles
- Common types of human bias
ML fairness
1
Videos
- Evaluating model fairness
Hands-on Lab 2
1
External Tool
- Inspecting a dataset for bias using TensorFlow Data Validation and Facets
2
Videos
- Guidelines and Hands-on Lab
- Lab 2: Review
Assessment
1
Assignment
- Using ML responsibly and ethically
Module 6: Introduction
2
Videos
- Replacing rule-based systems with ML
- Automate processes and understand unstructured data
Beyond the basics
2
Videos
- Personalize applications with ML
- Creative uses of ML
Worksheet and Hands-on Lab 3
1
External Tool
- Sentiment Analysis with Natural Language API
2
Videos
- Sentiment analysis and Hands-on Lab
- Lab 3: Review
1
Readings
- Sentiment Analysis Worksheet
Assessment
1
Assignment
- Discovering ML use cases in day-to-day business
Module 7: Introduction
1
Videos
- Key consideration 1: business value
Key consideration 2
2
Videos
- Data strategy (pillars 1–3)
- Data strategy (pillars 4–7)
Key consideration 3 and 4
2
Videos
- Data governance
- Build successful ML teams
Key consideration 5 and Hands-on Lab
1
External Tool
- Evaluate an ML model with BigQuery ML
2
Videos
- Create a culture of innovation and Hands-on Lab
- Lab 4: Review
Assessment
1
Assignment
- Managing ML projects successfully
Module 8: Course Summary
1
Videos
- Summary
Auto Summary
"Managing Machine Learning Projects with Google Cloud" is a foundational course designed for business professionals in non-technical roles. Offered by Coursera, it helps learners understand and lead machine learning projects by translating business problems into feasible ML use cases. The course spans 780 minutes and is available through Starter, Professional, and Paid subscriptions. Gain confidence in proposing ML solutions and collaborating effectively with technical teams. Perfect for those looking to influence ML initiatives without deep technical knowledge.

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