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Person: "googlegemma"
not much happened today
mai-thinking-1 mai-image-2.5 mai-code-1-flash gemma-4-12b microsoft google vllm-project ollama llama-cpp model-training reinforcement-learning model-architecture multimodality model-deployment model-efficiency fine-tuning on-device-ai eliebakouch nrehiew_ mustafasuleyman minjiyoon90 lateinteraction harold_matmul googlegemma googleaidevs mtschannen armandjoulin osanseviero
Microsoft released the detailed technical report for MAI-Thinking-1, a generalist reasoning model trained without third-party distillation, achieving 97% on AIME 2025 and outperforming Sonnet 4.6 in human preference tests. The report was praised for transparency, revealing no synthetic data use, a unique scaling ladder recipe, and detailed training data composition including 50% code and 17.5% STEM. Microsoft also introduced Frontier Tuning for workflow-specific model adaptation, claiming efficiency gains up to 10× and GPT-5.4-level quality in Excel tasks, alongside new models like MAI-Image-2.5 and MAI-Code-1-Flash. Meanwhile, Google launched Gemma 4 12B, an Apache 2.0 multimodal model with an innovative encoder-free architecture designed for on-device use with 16GB VRAM, collapsing vision and audio encoders into the LLM backbone, receiving positive community feedback and immediate tooling support.
not much happened today
gemma-4 google huggingface intel ollama unsloth reasoning agentic-workflows multimodality on-device-ai local-inference model-benchmarking moe vision audio-processing memory-optimization open-source model-performance fchollet demishassabis clementdelangue quixiai googlegemma ggerganov osanseviero maartengr basecampbernie prince_canuma measure_plan kimmonismus anemll arena stochasticchasm reach_vb zeneca everlier erick_lindberg_ anomalistg
Gemma 4 was launched by Google under an Apache 2.0 license, marking a significant open-model release focused on reasoning, agentic workflows, multimodality, and on-device use. It outperforms models 10x larger and has immediate ecosystem support including vLLM, llama.cpp, Ollama, Intel hardware, Unsloth, and Hugging Face Inference Endpoints. Local inference benchmarks showed strong performance on consumer hardware, including RTX 4090 and Mac mini M4. Early benchmarking praised its efficiency and ranking improvements over previous versions. Meanwhile, Hermes Agent emerged as a popular open-source agent harness, noted for stability and capability on long tasks, with users switching from OpenClaw to Hermes.