Course Outline

Introduction

Overview of DataRobot Features and Architecture

Setting up a DataRobot Account

Preparing and Loading Data

Analyzing Datasets

Modeling with DataRobot

Beginning the Modeling Process

Streamlining Model Development With DataRobot

Evaluating Results of Automated Modeling

Interpreting Models and Text Features

Generating Model Documentation

Making Predictions from Datasets

Deploying Models Built in DataRobot

Monitoring and Managing Deployed Models

Integrating DataRobot in Production

Managing DataRobot Projects

Summary and Conclusion

Requirements

  • Experience with data analytics
  • Familiarity with machine learning

Audience

  • Data scientists
  • Data analysts
 7 Hours

Testimonials (5)

Related Courses

Artificial Intelligence (AI) with H2O

14 Hours

Big Data Business Intelligence for Telecom and Communication Service Providers

35 Hours

Big Data Business Intelligence for Criminal Intelligence Analysis

35 Hours

From Data to Decision with Big Data and Predictive Analytics

21 Hours

Introduction to R with Time Series Analysis

21 Hours

Matlab for Predictive Analytics

21 Hours

Predictive Modelling with R

14 Hours

RapidMiner for Machine Learning and Predictive Analytics

14 Hours

Visual Analytics – Data science

14 Hours

OptaPlanner in Practice

21 Hours

AI in business and Society & The future of AI - AI/Robotics

7 Hours

UiPath for Intelligent Process Automation (IPA)

14 Hours

Intelligent Testing

14 Hours

Introduction to Data Science and AI using Python

35 Hours

AI in Digital Marketing

7 Hours

Related Categories