InternThinker
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Internthinker
Overview :
InternThinker is a powerful reasoning AI model developed by the Shanghai Artificial Intelligence Laboratory (Shanghai AI Lab), aiming to explore open, controllable, and reliable General Artificial Intelligence (AGI) through a 'fusion of general and specialized knowledge' approach. The model exhibits long-chain thinking capabilities and can engage in self-reflection and correction during the reasoning process, achieving superior results in various complex reasoning tasks such as mathematics, coding, and reasoning puzzles. Its innovation lies in its metacognitive capabilities, allowing it to autonomously generate high-density intellectual data and gather feedback in large-scale sandbox environments, leading to the independent construction of high-quality thinking chains and significantly enhancing the model's performance in complex task handling.
Target Users :
The target audience includes researchers, data analysts, software developers, and other professionals who require complex reasoning and data analysis. InternThinker's robust reasoning capabilities and metacognitive skills make it an ideal tool for solving intricate problems, particularly in fields that demand deep analysis and creative solutions.
Total Visits: 4.2K
Website Views : 64.9K
Use Cases
During the 2024 National High School Mathematics Competition, InternThinker was able to recall knowledge points and gradually reason through calculations to form an answer.
When solving problems similar to '24 points,' InternThinker demonstrated reflection and correction abilities, quickly adjusting its problem-solving approach.
In a new Leetcode problem, InternThinker not only answered the question but also performed a self-check of its code.
Features
Autonomously generate high-density intellectual data: InternThinker can independently create high-quality data that supports complex reasoning tasks.
Metacognitive abilities: The model possesses metacognitive skills that enhance problem-solving efficiency through self-reflection and correction.
Long-chain thinking capability: The model can conduct lengthy logical reasoning when dealing with complex tasks.
Multi-scenario application: The model excels in various scenarios including mathematics, coding, and reasoning puzzles.
Self-learning and evolution: Through feedback from the sandbox environment, the model can learn and evolve on its own to improve performance.
Independent construction of high-quality thinking chains: Capable of building high-quality thinking chains without relying on existing strong reasoning models.
How to Use
1. Log into the InternThinker trial platform: Visit https://internlm-chat.intern-ai.org.cn and log in.
2. Select the InternThinker model: Click on 'InternThinker' on the left side of the platform to enter the model experience interface.
3. Enter reasoning tasks: Input the complex reasoning task or question that you need the model to solve in the interactive interface.
4. Observe the model's reasoning process: The model will display its thinking process, including problem understanding, knowledge retrieval, planning, and execution.
5. Obtain results and reflect: The model provides solutions and may also demonstrate its self-reflection and correction process.
6. Feedback and iteration: Users can provide feedback based on the model's output, aiding its self-learning and performance enhancement.
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