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With the introduction of online \ assessments in recent years, new possibilities for efficiency improvement in \ education have arisen. SYLVA uses Wolfram technologies to provide a \ fully-integrated platform allowing educators to create assessments that can \ be graded automatically. To increase the accessibility for teachers with \ little or no programming knowledge we use NLP and GrammarRules to derive \ computable conditions for mathematical text questions. We analyze a dataset \ with arithmetic word problems. 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