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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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How Does Bitcoin Mining Work?

Bitcoin mining is the process of adding new transactions to the Bitcoin blockchain. It’s a tough job. People who choose to mine Bitcoin use a process called proof of work, deploying computers in a race to solve mathematical puzzles that verify transactions.To entice miners to keep racing to solve the puzzles and support the overall system, the Bitcoin code rewards miners with new Bitcoins. β€œThis is how new coins are created” and new transactions are added to the blockchain, says Okoro.

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