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2024: Larisa Stepanova headed "Cassator Online"

At the end of May 2024, it became known that the former representative of the Prosecutor General's Office in the Supreme Court, Larisa Stepanova, headed the new project "Cassator Online." This is a specialized AI service designed to appeal against court decisions.

According to the Kommersant newspaper, the platform is based on a new neural network. It analyzes court decisions for errors, violations of law, procedural violations, etc. If the AI algorithm finds grounds in the materials provided to cancel the decision, then the applicant will receive a message that they are ready to work with his case.

Larisa Stepanova headed the new project "Cassator Online"

Service developer Layla Shukyurova notes that neural network training was carried out using publicly available databases of judicial acts of the Constitutional and Supreme Courts, district arbitration and cassation courts. The organizers of the project promise free verification of materials, and the preparation of the cassation appeal will be carried out by agreement with the user. In the future, the platform's capabilities are planned to be expanded. In particular, it is expected that the AI service will be able to independently prepare complaints, as well as predict the most likely court decisions in typical cases.

It is assumed that the "Cassator Online" will be useful not only to participants in litigation, including representatives of business and government agencies, but also to the courts themselves. If the project participants manage to train the neural network to find violations of legal norms in decisions with high accuracy, then this AI will help improve the quality of court decisions, said Gaik Maryan, representative of the Ministry of Internal Affairs of the Russian Federation in the Supreme and Constitutional Courts. However, Shukyurova admits that the qualitative development of the system requires time and large amounts of data on which the neural network will be able to improve its skills.[1]

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