EXAONE Deep
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EXAONE Deep
Overview :
EXAONE Deep is an advanced reasoning AI model launched by LG AI Research, signifying Korea's competitiveness in the global AI market. With 3.2 billion parameters, it demonstrates outstanding performance, particularly in solving mathematical and scientific problems. The release of this model marks LG's entry into the era of autonomous decision-making in the AI field, and its open-source nature allows more developers to utilize this technology for research and development. EXAONE Deep's lightweight design and on-device model make it suitable for multiple industries, including education, scientific research, and programming.
Target Users :
EXAONE Deep is suitable for educators, scientific researchers, and developers as it effectively solves complex problems in professional fields and provides efficient reasoning capabilities. Its open-source nature allows users to adjust and optimize the model based on their needs.
Total Visits: 25.3M
Top Region: US(17.94%)
Website Views : 72.9K
Use Cases
In education, it helps students solve mathematical and scientific problems, improving learning outcomes.
Researchers utilize EXAONE Deep for complex scientific research, enhancing research efficiency.
Developers use EXAONE Deep as a base model to develop new applications.
Features
Efficiently solves complex mathematical and scientific problems.
Supports autonomous reasoning and hypothesis verification.
Maintains up to 95% performance in a lightweight model.
Exhibits superior performance across various evaluation metrics, including mathematical and scientific reasoning abilities.
Provides secure local processing capabilities, protecting user privacy.
Offers good economic efficiency and is suitable for various devices.
Open-source nature facilitates widespread development and application.
Holds significant application potential in various industries, such as education and research.
How to Use
Visit the official EXAONE Deep website and download the model.
Install and set up according to the user manual.
Select appropriate parameters and configurations, and start the model.
Test and verify the model's reasoning capabilities by providing data.
Continuously adjust the model based on feedback to optimize performance.
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