Augmented Analytics Training Course.

Augmented Analytics Training Course.

Introduction

Augmented Analytics leverages artificial intelligence (AI), machine learning (ML), and natural language processing (NLP) to automate data preparation, insight generation, and data-driven decision-making. This course introduces the concept of augmented analytics and provides participants with the tools and techniques to apply AI-driven analytics to business intelligence (BI) processes. With a focus on automating data insights, augmented analytics allows businesses to generate actionable results without requiring advanced technical skills, making it an essential tool for modern data-driven organizations.

Objectives

By the end of this course, participants will:

  • Understand the principles and evolution of augmented analytics.
  • Learn how to integrate AI, machine learning, and NLP into analytics workflows.
  • Gain hands-on experience using augmented analytics tools to automate data processing, exploration, and insight generation.
  • Learn how to create and evaluate AI-driven reports and dashboards.
  • Apply augmented analytics to solve real-world business challenges and improve decision-making.
  • Understand the ethical and practical implications of using AI in data analytics.

Who Should Attend?

This course is designed for:

  • Data analysts, data scientists, and BI professionals who want to automate their analytics workflows.
  • Business intelligence and data professionals looking to integrate AI and ML into their decision-making processes.
  • Managers and decision-makers interested in understanding how augmented analytics can benefit their organizations.
  • Anyone looking to stay ahead in the rapidly evolving field of data science and AI-driven analytics.

Day 1: Introduction to Augmented Analytics

Morning Session: Fundamentals of Augmented Analytics

  • Defining augmented analytics and its role in the future of data analytics.
  • The evolution of data analytics: From descriptive to predictive to prescriptive analytics.
  • Key components of augmented analytics: AI, machine learning, and natural language processing (NLP).
  • How augmented analytics improves the BI process: Automating data preparation, exploration, and insight generation.
  • Examples of augmented analytics in action: Case studies from various industries (e.g., finance, healthcare, retail).
  • Hands-on: Introduction to an augmented analytics tool (e.g., Tableau, Power BI with AI capabilities).

Afternoon Session: Data Preprocessing with Augmented Analytics

  • The importance of data preparation in analytics and the role of AI in automating this process.
  • Techniques for data cleansing, transformation, and feature engineering using augmented analytics tools.
  • Integrating machine learning models for automated feature selection and outlier detection.
  • Hands-on: Using augmented analytics tools to clean and prepare a dataset for analysis.

Day 2: AI and Machine Learning in Augmented Analytics

Morning Session: Machine Learning for Automated Insights

  • Overview of machine learning models used in augmented analytics: Regression, classification, clustering, and anomaly detection.
  • How machine learning is integrated into augmented analytics platforms for automated insights generation.
  • The role of AI in automating data exploration and the discovery of patterns and trends in data.
  • Hands-on: Building and deploying a simple machine learning model within an augmented analytics tool.

Afternoon Session: Natural Language Processing (NLP) for Augmented Analytics

  • Introduction to natural language processing and its role in making data insights more accessible.
  • Using NLP to generate reports, summaries, and insights directly from data.
  • Conversational analytics: Interacting with data through natural language queries and voice interfaces.
  • Hands-on: Using NLP features within an augmented analytics platform to generate insights and reports from raw data.

Day 3: Creating AI-Driven Dashboards and Reports

Morning Session: Building AI-Powered Dashboards

  • Designing dashboards that automatically surface insights using augmented analytics.
  • Techniques for enhancing interactivity: Predictive models, scenario analysis, and “what-if” analyses.
  • Integrating real-time data streams and AI-driven predictions into dashboards for decision-makers.
  • Hands-on: Creating an AI-powered dashboard in an augmented analytics tool (e.g., Power BI with machine learning integration).

Afternoon Session: Automated Report Generation with Augmented Analytics

  • Leveraging AI to generate written reports and summaries based on analytics.
  • Best practices for creating automated reporting workflows that generate insights in plain language.
  • Customizing automated reports for different stakeholders: executives, analysts, and operations teams.
  • Hands-on: Using an augmented analytics tool to create automated reports with machine-generated text and visualizations.

Day 4: Advanced Augmented Analytics Techniques

Morning Session: Predictive Analytics with Augmented Analytics

  • Overview of predictive analytics and its integration into augmented analytics platforms.
  • Using machine learning to forecast trends and outcomes based on historical data.
  • Model evaluation and performance tracking in augmented analytics tools.
  • Hands-on: Building a predictive model for forecasting using an augmented analytics tool.

Afternoon Session: Prescriptive Analytics with Augmented Analytics

  • Introduction to prescriptive analytics: AI-driven recommendations and decision support.
  • Using optimization algorithms and simulations for automated decision-making.
  • How augmented analytics platforms generate actionable insights for business strategies.
  • Hands-on: Creating a prescriptive analytics model for business decision-making.

Day 5: Ethical Considerations, Best Practices, and Future Trends

Morning Session: Ethical Implications of Augmented Analytics

  • Understanding the ethical challenges in AI and machine learning in augmented analytics.
  • Ensuring transparency, fairness, and accountability in AI-driven analytics processes.
  • Best practices for preventing algorithmic bias and ensuring ethical decision-making.
  • Legal and regulatory considerations in using AI in business analytics.
  • Hands-on: Analyzing a case study on ethical considerations in the application of augmented analytics.

Afternoon Session: Advanced Applications and Future of Augmented Analytics

  • Emerging trends in augmented analytics: The role of deep learning, reinforcement learning, and AI chatbots.
  • The impact of augmented analytics on different industries (finance, healthcare, retail, marketing).
  • Best practices for implementing augmented analytics in organizations.
  • Future challenges: Explainability, scalability, and human-machine collaboration.
  • Final Project: Participants will apply augmented analytics tools to a real-world business problem, demonstrating the techniques learned throughout the course.
  • Wrap-up and Q&A: Recap of key takeaways and next steps for continuing the journey with augmented analytics.

Materials and Tools:

  • Software and Tools: Power BI, Tableau, Qlik, Google Cloud AI, Microsoft Azure AI, IBM Watson Analytics, Python (scikit-learn, TensorFlow, etc.), R (tidyverse, caret).
  • Resources: Course slides, datasets for hands-on exercises, Python/R notebooks, sample AI models.
  • Case Studies: Real-world examples of augmented analytics implementations in industries like finance, healthcare, and retail.

Post-Course Support:

  • Access to recorded sessions, course slides, and additional resources.
  • Post-course webinars for exploring advanced topics in augmented analytics.
  • Community forum for sharing projects, discussing challenges, and collaborating with peers.
  • One-on-one mentoring sessions for applying augmented analytics in your organization.