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Data for Student Success March 3, 2010 NCES and MIS Conference

Data for Student Success March 3, 2010 NCES and MIS Conference. “It is about focusing on building a culture of quality data through professional development and web based dynamic inquiries for school improvement.”. Creation of Data 4 Student Success Introduction to the Grant.

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Data for Student Success March 3, 2010 NCES and MIS Conference

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  1. Data for Student Success March 3, 2010NCES and MIS Conference “It is about focusing on building a culture of quality data through professional development and web based dynamic inquiries for school improvement.”

  2. Creation of Data 4 Student SuccessIntroduction to the Grant Federal Title II Part D of the NCLB Act of 2001 Enhancing Education through Technology Grant awarded through CEPI Awarded to a 3 county partnership - Calhoun, Macomb and Shiawassee Beginning date: January 1, 2007

  3. Introduction to the Grant Emphasis on training – at least 25% of funds must be spent on professional development Focus on high-need LEA partners Expand the tools and professional development activities to all ISDs across the state

  4. What happens with many District’s Data? Local districts submit data to the State through the Michigan Student Data System (MSDS), Registry of Education Personnel (REP), etc on intervals throughout the year. In the recent past, data quality was poor because Districts/buildings seldom used their own data. Data Quality has improved significantly as Districts/buildings actually use & understand the purpose/importance of the data. Data-based decision making to inform school improvement, a key to increasing student achievement, requires separate, labor intensive effort

  5. Goals of Data for Student Success Build and bring to scale a program that helps schools develop cultures of quality data in which there are consistent and sustained efforts to: Focus on existing data that give insight into specific school improvement questions Validate data provided to the State and used to support school improvement decisions

  6. Grant Goals Continued • Identify critical questions whose answers would benefit school districts in decision making to inform instruction • Provide inquiries designed around the critical questions • Provide focused professional development on data-based decision making • Provide a scaffold of support for the Comprehensive Needs Assessment and High Priority Schools

  7. Grant Deliverables Local Data Initiatives Making connections to local data warehouses Local Professional Development Materials and approach development Proving ground for scaling up Animated Tutorials available online http://www.data4ss.org Dynamic Inquiries Putting longitudinal State data to work

  8. Grant Deliverables continued Train-the-trainers sessions held on the use of data to inform instruction Launch Events were held at various Intermediate School District (regional based) locations across the State of Michigan. Involvement of the Michigan Department of Education Field Service consultants MDE Fall School Improvement Conference and many other presentations at Stakeholder events

  9. Grant Budget Categories (Four Years) Professional Development/Training - $2,250,000 Dynamic Inquiry Development - $585,000 Contracted Project Management - $580,000 Local Data Warehouse Initiatives (Years 1 and 2) - $1,250,000

  10. Training began with • 3 core partner ISDs: • Calhoun • Macomb • Shiawassee • In conjunction with the • State of Michigan’s • Center for Education Performance and Information • Michigan Department of Education

  11. Training Includes Launch Events were held at various Intermediate School District (regional based) locations across the State of Michigan. Training Kits / Materials Binders On-line videos Workshop facilitation tools Involvement of the Michigan Department of Education MDE Fall School Improvement Conference and many other presentations at Stakeholder events

  12. Dynamic Inquiry Tool Interactive inquiries that allow a user to drill down into their student data Six inquiries based on essential questions aligned with the school improvement process: MEAP Proficiency Students Near Proficiency Comparative Item Analysis Cohort Proficiency Student History Administrative Data Quality

  13. MEAP Proficiency Inquiry “How did students perform on MEAP tests by content area, strand, and GLCE?”

  14. How Did We Perform? What percent and number of our students met proficiency on MEAP in each content area? What percent met advanced? What number of students failed to perform at proficiency? Who are these students? In what subgroups do these students belong?

  15. Compared To What? Did we meet our AYP target? What percent of students were moved from one proficiency level to a higher level? How did our performance compare with our district, ISD, and state? Have we made progress over time?

  16. MEAP Proficiency - All Students

  17. MEAP Proficiency - Statistical Information

  18. MEAP Proficiency - Student Drill Down

  19. MEAP ProficiencyAYP Subgroups

  20. MEAP ProficiencyOther Subgroups

  21. Sub Group Statistical Information

  22. Students Near Proficiency Inquiry “What are the demographic characteristics of students who are close to being proficient on a specified test?”

  23. Students Near Proficiency - Graph

  24. Students Near Proficiency - Drilldown

  25. Cohort Proficiency Inquiry “How did students perform on MEAP this year compared to their performance on MEAP last year?”

  26. Growth Model Pilot • Use performance level change to track students performance from year to year • Measure whether students who are not yet proficient are “on track” to becoming proficient within three years • Determine that if students are “on track” toward becoming proficient within three years, those students will count toward making AYP even if they are not yet proficient • Identify students who are “on track” toward proficiency within three years will apply only to grades 4-8 for ELA and math

  27. Cohort Proficiency - Graph

  28. Cohort Proficiency - Statistical Information

  29. Cohort Proficiency - Drilldown

  30. Student History “What is the complete academic history of an individual or group of students?”

  31. Student History Provide student level data from the following datasets: Single Record Student Database, School Code Master, Registry of Education Personnel, Michigan Educational Assessment Program (MEAP), and Mi-ACCESS Sorts student data into multiple areas: Student Identification, Student Attendance and Prior Enrollment, Program Participation, and Achievement History Useful for students transferring to a new school

  32. Student History - Identification

  33. Student History - Attendance

  34. Student History - Participation

  35. Student History - Achievement

  36. Comparative Item Analysis Inquiry “How did student performance on a strand, GLCE, and item compare to the State?”

  37. Comparative Item Analysis - Chart

  38. Comparative Item Analysis – Released Items

  39. Comparative Item Analysis – Released Items

  40. Comparative Item Analysis – Released Items - Students

  41. Let’s Investigate the Dynamic Inquiry Tool…

  42. Let’s take a tour… www.data4ss.org

  43. Now we have investigated State level achievement data, let’s consider more timely and varied local data

  44. Local Warehouse & Assessment Data • Allows you to dig deeper and get to root cause • Also allows you to monitor and adjust

  45. Local Data Warehouse • Local Data Warehouse Data is more timely – often uploaded nightly – so monitoring of student achievement and instructional adjustments can be made in the classroom. • The State of Michigan is not currently collecting local data (daily updates) in its databases

  46. Local Data Warehouse • Local warehouse data can include multiple types of data: • Achievement: Local Tests, Across Assessments, Grades, Transcript history, state and national test scores, pretests, etc • Demographic Enrollment, Attendance, Gender, Migrant, other local district indicators, nutritional eligibility • Process: Programs, Response to intervention, special services, parental involvement, progress monitoring, graduation/employment surveys • Perception: survey data, failure and achievement aggregate statistics

  47. How do Data4SS and local data warehousing tools work together? • Together they provide the ability to triangulate data multiple types of data from multiple sources • Both provide non-negotiable state data • Data4SS is based on enrollment at time of MEAP • Local warehouse is based on live/current enrollment • Local warehouse provides analysis of district required assessments • Local warehouse provides analysis of classroom performance data • Local warehouse provides frequent systematic monitoring for growth to avoid unexpected results

  48. Available Data in Macomb ISD’s Warehouse Right Now • Achievement Data • MEAP • MME • DIBELS • DRA • MLPP • PLAN • EXPLORE • ACT • End of Course Exams • Common Assessment • Grades • GPA • Courses • Credits • Teachers • Student Data • Subgroups • Lunch Status • Special Education • Language • Ethnicity • Discipline/Positive Behavior Support Data • Attendance • Parental Involvement • Process Data • Title One Programs • Extra Curricular Activities • Programming

  49. Of all the data sets listed on the previous slide, only MEAP, MME, and summary data for students based on SRSD are available on Data 4SS for analysis And none of that data is very timely…

  50. Local Data Warehouse has a Variety of Uses • Summary Reports– Annual/semi-annual long-term results, after instruction • Monitoring Reports–On-going, check of progress • Trend Data– Will help us see progress over time. • Evaluative Data– Will help us determine our effectiveness and make predictions. Local Data Warehouse Data is USED by classroom teachers

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