The platform captures and analyzes every stroke a student makes while solving a problem on a tablet. It doesn't just check the final answer; it evaluates the sequence and logic of each step taken.
Thinkster combines its AI analytics with oversight from real, qualified math tutors. The AI handles personalization and scaling, while the human tutor provides motivational support, nuanced explanations, and high-level learning strategy.
A comprehensive portal for adults to monitor student progress. It displays time spent, accuracy, skills mastered, upcoming skills, and the tutor's notes in an easy-to-understand visual format.
The system dynamically adjusts the difficulty and topic focus of assigned worksheets based on continuous performance data. It reinforces weak areas and advances to new concepts only when prerequisite mastery is demonstrated.
Students solve problems by writing directly on the screen with a stylus or finger, mimicking the natural process of working out math on paper. The system captures this handwritten work for analysis.
Parents subscribe to Thinkster to provide their children with extra math practice outside of school hours. The AI identifies gaps the school curriculum might have missed, and the personalized worksheets ensure the child's homework time is efficient and targeted. This is ideal for students who need to catch up, stay challenged, or develop more confidence in math.
A school district implements Thinkster across multiple classrooms to provide differentiated instruction. Teachers use the class dashboard to identify groups of students struggling with specific standards and assign targeted practice. The AI handles the individualization, freeing up teacher time for small-group instruction while ensuring every student gets the practice they need.
Private tutors use Thinkster to enhance their services. Between live sessions, they assign Thinkster worksheets to gather detailed data on their student's independent work habits and mistakes. They then use this data to make their live tutoring sessions more effective, focusing explanation time on the root causes of errors identified by the AI.
Homeschooling parents use Thinkster as a core component of their math instruction. The adaptive curriculum provides a structured learning path aligned to standards, while the tutor feedback offers expert guidance the parent may not be able to provide. The detailed reporting also helps with creating portfolios and tracking progress for regulatory requirements.
Students use Thinkster to prepare for standardized tests. The tutor can craft a learning plan focused on test-specific topics and problem types. The AI's analysis of work habits helps identify if errors are due to content gaps, careless mistakes, or time management issues, allowing for a more holistic test prep strategy beyond just taking practice tests.
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