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Executive Guide to Predictive Modeling Strategy at Scale

Executive Guide to Predictive Modeling Strategy at Scale

1h 21mBeginner2018-12-11

Authors

Keith McCormick

Keith McCormick

Data Miner, Trainer, Speaker, Author

Course details

Building world-class predictive analytics solutions requires recognizing that the challenges of scale and sample size fluctuate greatly at different stages of a project. How do you know how much data to use? What is too little, what is too much? How does your infrastructure need to scale with the volume and demands of the project? This course walks step by step through the strategic and tactical aspects of determining how much data is needed to build an effective predictive modeling solution based on machine learning and what volumes of data are so large that they will create challenges. Instructor Keith McCormick reviews each stage—data selection, data preparation, modeling, scoring, and deployment—with scalability in mind, providing IT professionals, data scientists, and leadership with new insights, perspectives, and collaboration tools.

Note: This course is software agnostic. The emphasis is on strategy and planning. Examples, calculations, and software results shown are for training purposes only.

Learning objectives
Evaluating the proper amount of data
Assessing data quality and quantity
Seasonality and time alignment
Data preparation challenges
Data modeling challenges
Scoring machine-learning models
Deploying models and adjusting data prep and scoring
Monitoring and maintenance

Skills covered

Data ModelingMachine LearningArtificial Intelligence FoundationsArtificial Intelligence (AI)Data ScienceOne-Off

Concepts

0. Introduction

  • 01 - Scaling machine learning initiatives
  • 02 - Defining terms

1. The Phases of a Machine Learning Project

  • 03 - Data and supervised machine learning
  • 04 - The nine big data bottlenecks
  • 05 - The stages of predictive analytics data
  • 06 - Why you might have too little data

2. Designing a Machine Learning Dataset

  • 07 - How much data do I need
  • 08 - Balancing
  • 09 - Who truly has big data
  • 10 - Assessing data
  • 11 - Selecting - Data that should be left out
  • 12 - Seasonality and time alignment

3. Data Prep Challenges

  • 13 - Data and the data scientist
  • 14 - Aggregate and restructure
  • 15 - Dummy coding
  • 16 - Feature engineering

4. Modeling Challenges

  • 17 - Understanding the modeling process
  • 18 - Slow algorithms - Brute force
  • 19 - Slow algorithms - More calculations
  • 20 - Slow algorithms - More models
  • 21 - How to sample properly
  • 22 - Modeling with missing data

5. Scoring

  • 23 - Scoring traditional ML models
  • 24 - Scoring a black box model
  • 25 - Scoring an ensemble

6. Deployment

  • 26 - Batch vs. real-time scoring
  • 27 - Data prep and scoring
  • 28 - Combining batch and real-time scoring

7. Monitoring and Maintenance

  • 29 - What is model monitoring
  • 30 - How often should you rebuild

Conclusion

  • 31 - Next steps

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