


Zuoyebang is testing a large education model internally, and has already had a number of artificial intelligence achievements
According to news from Duozhi.com on June 6, according to 36Kr news, Zuoyebang is currently testing a large education model based on the Chinese market, including multi-disciplinary problem solving, Chinese and English composition correction, multi-language dialogue directions, etc. Application scenarios include tool APPs, smart hardware, books and other businesses. Zuoyebang insiders confirmed the news to Duozhi.com.
It is understood that Zuoyebang launched a large-scale self-research education model project at the beginning of this year, and mobilized technical elites from various business modules to form an original team. In March this year, Zuoyebang announced in an internal email that it would once again increase investment and adjust its organizational structure. At present, the project is led by CTO Luo Liang to provide basic R&D support and AIGC general direction construction, and R&D funds are allocated with priority.
Duozhi.com learned from the Zuoyebang recruitment website and various recruitment platforms that currently, Zuoyebang is urgently recruiting deep learning algorithm engineers, NLP algorithm engineers, advertising recommendation algorithm engineers, etc. Two months ago, Zuoyebang also recruited speech algorithm engineers. It is mentioned in the NLP algorithm engineer job description that he will participate in the exploration and research of the combination of LLM and deep models in application scenarios, and be responsible for specific work such as model training, fine-tune, and prompts.
(Screenshot of Zuoyebang recruitment page)
From the perspective of recruitment, Zuoyebang is increasing its exploration of artificial intelligence. Duozhi.com learned that Zuoyebang has made great progress in product-level applications such as problem-solving ability, Chinese and English composition correction, and knowledge Q&A.
Currently, the name of the Zuoyebang model has not yet been confirmed, and it is understood that the application is under way.
Duozhi.com learned that in the past two years, Zuoyebang has made some achievements in the direction of artificial intelligence:
First, in the visual direction, the OCR text recognition technology in the question bank is very mature, and even solves blur, tilt, low pixels, interference and other situations. In addition, in terms of visuals, Zhuoyebang has also developed AI test paper restoration technology, which restores the test papers that have been completed by students and corrected by teachers into the original electronic version. The handwriting can be removed, leaving the original printed version. Currently, this technology has been applied to meow machines.
Second, the question bank implements analysis and draws inferences. If Chinese has automatic problem-solving capabilities, mathematics can also automatically solve problems and includes problem-solving steps; in English, selection and fill-in-the-blank can all be automatically analyzed.
Thirdly, in terms of voice and NLP technology, Zuoyebang has an intelligent comment system and personalized speech synthesis. For example, in literacy courses, tutors can use speech synthesis to give personalized comments to students, which improves the efficiency of tutors.
From these technical explorations, we can see that it is not surprising that Zuoyebang develops a large education model.
Currently, many in the education industry are developing large models. For example, TAL is developing a large mathematical model MathGPT, and Youdao has developed the "Ziyue" education model... The style of Zuoyebang is accustomed to multi-line operations and multi-faceted breakthroughs. , the large model of this homework gang is also testing different scenarios.
It can be said that large models have inspired another round of innovation in the education industry. (Dozhi.com King)
The above is the detailed content of Zuoyebang is testing a large education model internally, and has already had a number of artificial intelligence achievements. For more information, please follow other related articles on the PHP Chinese website!

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