Course Outline

Introduction to Predictive Analytics

  • Overview of predictive analytics
  • Role of LLMs in predictive modeling
  • Case studies: Successful predictive analytics projects

Fundamentals of Large Language Models

  • Understanding the architecture of LLMs
  • Training and fine-tuning LLMs
  • LLMs vs. traditional statistical models

Data Preparation and Processing

  • Data collection and cleaning
  • Feature engineering for predictive modeling
  • Using LLMs for data enrichment

Building Predictive Models with LLMs

  • Selecting the right LLM for your data
  • Training LLMs for predictive tasks
  • Evaluating model performance

Advanced Techniques in Predictive Analytics

  • Time series forecasting with LLMs
  • Sentiment analysis for market prediction
  • Anomaly detection in large datasets

Integrating LLMs into Business Processes

  • Deploying LLMs for real-time predictions
  • Monitoring and maintaining predictive models
  • Ethical considerations in predictive analytics

Hands-on Lab: Predictive Analytics Project

  • Defining project objectives
  • Implementing a predictive model with LLMs
  • Analyzing results and iterating on the model

Summary and Next Steps

Requirements

  • An understanding of basic machine learning concepts
  • Experience with Python programming
  • Familiarity with data analysis and visualization tools

Audience

  • Data scientists
  • Business analysts
  • IT professionals seeking to understand LLM applications in analytics
 14 Hours

Number of participants


Price per participant

Upcoming Courses

Related Categories