Power of Data-Driven Teaching in Schools

abdulrhmansayed


What
You’ll Learn
  • Introduction to Data Driven Teaching in Schools
  • Understanding the Approach
  • Initiating the approach and implementation
  • Adopting the data driven practices
  • Enhancing personalised learning
  • Informed decision making
  • Driving continuous challenges

Requirements

  • Understanding and implementing the data driven approaches

Description

Module 1:

Understanding Data-Driven Teaching in Schools:

  • Learning Objectives:

    • Define data-driven teaching and its significance.

    • Understand the types of educational data available (academic, behavioural, attendance).

  • Topics:

    • The role of data in modern education.

    • Overview of critical data sources in schools.

  • Activities:

    • Reflection: Assess your school’s current use of data.

    • Case Study: How a school improved outcomes using data.

Module 2: Collecting and Organizing Data

  • Learning Objectives:

    • Learn methods to collect meaningful and accurate data.

    • Organize data effectively for analysis and application.

  • Topics:

    • Data collection tools and techniques (surveys, LMS, assessments).

    • We are ensuring ethical data collection practices.

  • Activities:

    • Hands-on: Using data management tools (Google Sheets, Excel, or SIS).

    • Discussion: Identifying data gaps in your institution.

Module 3: Analyzing Data for Insights

  • Learning Objectives:

    • Develop skills to interpret and analyze educational data.

    • Use data visualization tools to identify trends and patterns.

  • Topics:

    • Key metrics for student performance and teacher effectiveness.

    • Introduction to data visualization software.

  • Activities:

    • Workshop: Create a dashboard to track student performance.

    • Group Exercise: Interpret data to suggest actionable insights.

Module 4: Applying Data to Instruction

  • Learning Objectives:

    • Learn to use data for personalized instruction and intervention.

    • Understand strategies to differentiate teaching based on data.

  • Topics:

    • Designing data-informed lesson plans.

    • Using formative assessments to guide teaching.

  • Activities:

    • Role-Play: Customizing a lesson for diverse learners using data.

    • Case Study: Successful intervention strategies.

Module 5: Driving Equity Through Data

  • Learning Objectives:

    • Use data to identify and address inequities in education.

    • Develop strategies for inclusive teaching.

  • Topics:

    • Recognizing patterns of inequity using data.

    • Implementing targeted interventions for underserved groups.

  • Activities:

    • Discussion: Addressing unconscious bias with data.

    • Action Plan: Develop an equity-focused strategy for your school.

Module 6: Building a Data-Driven Culture

  • Learning Objectives:

    • Foster a school-wide commitment to data-informed decision-making.

    • Train staff and stakeholders to use data effectively.

  • Topics:

    • Leadership’s role in promoting data use.

    • Overcoming resistance to data-driven practices.

  • Activities:

    • Simulation: Leading a data-driven staff meeting.

    • Workshop: Designing a professional development session on data use.

Module 7: Tools and Technology for Data-Driven Teaching

  • Learning Objectives:

    • Explore technology tools that support data collection and analysis.

    • Leverage AI and EdTech for predictive insights.

  • Topics:

    • Overview of Learning Management Systems (LMS).

    • Introduction to AI in education analytics.

  • Activities:

    • Demo: Exploring EdTech tools like Power BI, Tableau, and AI platforms.

    • Lab: Automating data reporting.

Who this course is for:

  • Educators/ heads of schools

Get on Udemy

Share This Article
Leave a comment