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Empero AI releases Qwythos-9B-v2, fixing looping with 1M-token context

Empero AI has released Qwythos-9B-v2, an updated version of its large language model designed to eliminate looping and degeneration issues that previously affected a small percentage of its outputs. This new version achieves a 0% looping rate through a technique called Final-Token Preference Optimization, without sacrificing its 1 million token context window or reasoning capabilities. Internal benchmarks show that Qwythos-9B-v2 maintains or slightly improves performance on knowledge and reasoning tasks, though there is a minor decrease in coding benchmark scores. AI

IMPACT Enhances LLM reliability by fixing looping issues, potentially simplifying deployment for developers using long context windows.

RANK_REASON Model release from a lab (Empero AI) with a specific model name and version. [lever_c_demoted from frontier_release: ic=1 ai=1.0]

Read on dev.to — LLM tag →

AI-generated summary · Google Gemini · from 1 sources. How we write summaries →

Empero AI releases Qwythos-9B-v2, fixing looping with 1M-token context

COVERAGE [1]

  1. dev.to — LLM tag TIER_1 English(EN) · Pneumetron ·

    Empero AI Releases Qwythos-9B-v2: Addressing Looping and Enhancing Robustness in a 1M-Token LLM

    <h2> What Changed </h2> <p>Empero AI has launched Qwythos-9B-v2, a significant update to its Qwythos-9B large language model. The primary objective of this release was to address and eliminate the looping and degeneration behavior observed in the previous version, particularly un…