esu 4 data retreat: engaging in data-driven dialogue

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ESU 4 Data Retreat: Engaging in Data-Driven Dialogue. Mitzi Hoback, Ellen Stokebrand , & Suzanne Whisler NDE Data Conference, April 2012. Data Retreat at ESU 4. It’s all about improving learning for all students. . - PowerPoint PPT Presentation

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ESU 4 Data Retreat: Engaging in Data-Driven Dialogue

Mitzi Hoback, Ellen Stokebrand, & Suzanne Whisler NDE Data Conference, April 2012

Data Retreat at ESU 4

It’s all about improving learning for all students.

How do we know if what we are doing is making a difference for all students?

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Data Retreat Outcomes

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Big Ideas of Data RetreatTeachers and leaders matter!It is what teachers and leaders do that matters the most.Data should provide a starting point and focus for your actions, help assess your progress, and identify where you are being successful and where there is a need for more support. Use data in an ongoing way.

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Pledge of Confidentiality

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“Conversations are soft on people, hard on ideas”

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As you move through Data Retreat…

Start Your “To Do” List

This will help you complete your Roll-Out Plan at the end of Day 2

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Continuous Improvement Process

What is your school’s mission statement?

What is your current reality?What does your

data tell you?

What goal will you set based upon current

reality?

What actions need to be taken

to meet the goal?

How will you implement your

plan and monitor results?

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What question(s) do you plan to answer during this Data Retreat?Some examples:

To what extent have specific programs, services, or interventions improved outcomes?Which students have been on our “At Risk” list for more than one year and what progress has been made?How does absence affect assessment results?Do we see correlations in our data? Can we predict how our students will do on future assessments? (NeSA Tests)

What should be celebrated?

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If the data is not being used, stop collecting it.

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Student Data AnalysisLearnings Other Data

Implications Actions

What can we learn from this data?

Do we have other data to support these

results?

What are the implications of this

data?

What will we do as a result of the implications?

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ObservationsStrengths Challenges

Hypotheses

Data Sources

Norm-Referenced Tests (NRT’s)NeSA

ReadingWritingMathScience

DIBELSPLANACT

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A Vision For Results

“The vision should be “We’re going to get every kid over that bar.”

~Rick DuFour

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IndividualStudentData

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What evidence do you have that ALL students are learning?

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Identify Your At-Risk Students

Are there students not meeting your district’s expectations?

Who are they?How does this list compare to last year’s list? New students? Same students?What is your hypothesis regarding why these students aren’t meeting expectations?If the same students are on the list, what data do you have about the interventions you tried?

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Celebrations

How will you celebration milestones and successes?Celebrate early wins!Celebrate often! (Quarterly)

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Designing the Roll-Out Plan

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Team Task – Discuss & determine …How will help the staff take ownership of the plan?

How will we engage the rest of the staff in the data?

How will we engage the staff in the discussions, observations, hypotheses and ideas?

How will we engage them in the goals?

How will we engage them in the improvement tasks and culture of improvement?

Roll Out and Sustainability

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How will you roll out the action plan to the rest of the staff?

Sharing the Data“When we give teachers the opportunity to see even gradual improvements through the use of data, they can become passionate advocates of the system.” ~Schmoker

When and how will your team share the data with your

colleagues?23

Final Thoughts . . .

“Teamwork is the ability to work together toward a common vision. The ability to direct individual accomplishment toward organizational objectives. It is the fuel that allows common people to attain uncommon results. ”

~Andrew Carnegie

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“Commit to data analysis as a continuous process, not an event.”Douglas Reeves, 2009

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