--- dataset_info: features: - name: task dtype: string - name: org dtype: string - name: model dtype: string - name: hardware dtype: string - name: date dtype: string - name: prefill struct: - name: efficency struct: - name: unit dtype: string - name: value dtype: float64 - name: energy struct: - name: cpu dtype: float64 - name: gpu dtype: float64 - name: ram dtype: float64 - name: total dtype: float64 - name: unit dtype: string - name: decode struct: - name: efficiency struct: - name: unit dtype: string - name: value dtype: float64 - name: energy struct: - name: cpu dtype: float64 - name: gpu dtype: float64 - name: ram dtype: float64 - name: total dtype: float64 - name: unit dtype: string - name: preprocess struct: - name: efficiency struct: - name: unit dtype: string - name: value dtype: float64 - name: energy struct: - name: cpu dtype: float64 - name: gpu dtype: float64 - name: ram dtype: float64 - name: total dtype: float64 - name: unit dtype: string splits: - name: benchmark_results num_bytes: 1886 num_examples: 7 - name: train num_bytes: 1886 num_examples: 7 download_size: 29864 dataset_size: 3772 configs: - config_name: default data_files: - split: benchmark_results path: data/train-* - split: train path: data/train-* --- # Analysis of energy usage for HUGS models Based on the [energy_star branch](https://github.com/huggingface/optimum-benchmark/tree/energy_star_dev) of [optimum-benchmark](https://github.com/huggingface/optimum-benchmark), and using [codecarbon](https://pypi.org/project/codecarbon/2.1.4/). # Fields - **task**: Task the model was benchmarked on - **org**: Organization hosting the model - **model**: The specific model. Model names at HF are usually constructed with {org}/{model} - **date**: The date that the benchmark was fun - **prefill**: The esimated energy and efficiency for prefilling. - **decode**: The estimated energy and efficiency for decoding. - **preprocess**: The estimated energy and efficiency for preprocessing.