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βš™οΈ SWE-rebench: Nebius AI R&D team presents new dataset for SWE tasks.

Researchers built an automated system to collect and validate thousands of real-world tasks from GitHub, designed for training and evaluation of LLMs in software engineering.

Main features of the system:
1️⃣ Automatic data collection: Continuously extracts issue-PR pairs from Python repositories.
2️⃣ LLM-based environment setup: LLM analyzes repositories, creates install instructions, and updates them if errors happen.
3️⃣ Execution-based validation: Each task is tested by automatic setup, test run, and dependency freezing to make it reproducible.
4️⃣ LLM quality annotation: Tasks are labeled for clarity, difficulty, and test correctness to support filtering.

Result:
SWE-rebench dataset: 21,000+ ready-to-use interactive tasks.
Continuous updates: Fresh data is added regularly.
Transparent evaluation: Tasks are used for public SWE-rebench leaderboard.

πŸš€ SWE-rebench gives researchers and developers real and validated tasks to work with LLMs in SWE field.

Technical report: arXiv
Dataset: SWE-rebench



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βš™οΈ SWE-rebench: Nebius AI R&D team presents new dataset for SWE tasks.

Researchers built an automated system to collect and validate thousands of real-world tasks from GitHub, designed for training and evaluation of LLMs in software engineering.

Main features of the system:
1️⃣ Automatic data collection: Continuously extracts issue-PR pairs from Python repositories.
2️⃣ LLM-based environment setup: LLM analyzes repositories, creates install instructions, and updates them if errors happen.
3️⃣ Execution-based validation: Each task is tested by automatic setup, test run, and dependency freezing to make it reproducible.
4️⃣ LLM quality annotation: Tasks are labeled for clarity, difficulty, and test correctness to support filtering.

Result:
SWE-rebench dataset: 21,000+ ready-to-use interactive tasks.
Continuous updates: Fresh data is added regularly.
Transparent evaluation: Tasks are used for public SWE-rebench leaderboard.

πŸš€ SWE-rebench gives researchers and developers real and validated tasks to work with LLMs in SWE field.

Technical report: arXiv
Dataset: SWE-rebench

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Telegram Gives Up On Crypto Blockchain Project

Durov said on his Telegram channel today that the two and a half year blockchain and crypto project has been put to sleep. Ironically, after leaving Russia because the government wanted his encryption keys to his social media firm, Durov’s cryptocurrency idea lost steam because of a U.S. court. β€œThe technology we created allowed for an open, free, decentralized exchange of value and ideas. TON had the potential to revolutionize how people store and transfer funds and information,” he wrote on his channel. β€œUnfortunately, a U.S. court stopped TON from happening.”

What is Telegram?

Telegram’s stand out feature is its encryption scheme that keeps messages and media secure in transit. The scheme is known as MTProto and is based on 256-bit AES encryption, RSA encryption, and Diffie-Hellman key exchange. The result of this complicated and technical-sounding jargon? A messaging service that claims to keep your data safe.Why do we say claims? When dealing with security, you always want to leave room for scrutiny, and a few cryptography experts have criticized the system. Overall, any level of encryption is better than none, but a level of discretion should always be observed with any online connected system, even Telegram.

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