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Over 7.5 million U.S. students receive special education services under the Individuals with Disabilities Education Act, yet researchers have limited access to the Individualized Education Programs (IEPs) that define those services. IEPs are rich in detail but difficult to analyze at scale due to their unstructured, variable format and inclusion of legally protected student information. This presentation introduces two AI-based tools that address these challenges, developed under the SEAMLESS project (Special Education Applications of Machine Learning to Enhance Student Success). Zone Redactor extracts and de-identifies IEP text, while ClassifyED categorizes content—such as goals and services—by domain, grade level, and disability-related need. We report findings from a pilot partnership with a New England school serving students with specific learning disabilities, demonstrating how these tools support scalable analysis of special education data and open new possibilities for policy-relevant research.