{"id":"W2150693201","doi":"10.1145/2367736.2367741","title":"Implementing the data center energy productivity metric","year":2012,"lang":"en","type":"article","venue":"ACM Journal on Emerging Technologies in Computing Systems","topic":"Cloud Computing and Resource Management","field":"Computer Science","cited_by":13,"is_retracted":false,"has_abstract":true,"ca_institutions":"Hewlett-Packard (Canada); Advanced Micro Devices (Canada)","funders":"U.S. Department of Energy","keywords":"Metric (unit); Data center; Productivity; Computer science; Work (physics); Center (category theory); Efficient energy use; Software; Performance metric; Energy (signal processing); Industrial engineering; Engineering; Operations management; Statistics; Mathematics; Operating system; Electrical engineering; Business; Economics; Marketing","routes":{"ca_aff":true,"ca_fund":false,"ca_venue":false,"about_ca":false,"invisible_to_affiliation_only":false},"retraction":null,"screen":null,"direct_labels":[],"prediction":{"model_version":"codex-gemma-dda1882f352a","candidate_categories":["open_science"],"consensus_categories":["open_science"],"category_scores_codex":[0.007846471,0.0002983078,0.0003537768,0.0008063894,0.00096465,0.0005018329,0.009492598,0.0000987354,8.840562e-7],"category_scores_gemma":[0.001530975,0.0001984593,0.00008607057,0.001989119,0.00008060561,0.0001401527,0.01293458,0.0009077377,0.00000827513],"about_ca_system_candidate":false,"about_ca_system_consensus":false,"about_ca_system_score_codex":0.000234124,"about_ca_system_score_gemma":0.0000283152,"about_ca_topic_candidate":false,"about_ca_topic_consensus":false,"about_ca_topic_score_codex":0.00007252917,"about_ca_topic_score_gemma":0.000004364972,"domain_scores_codex":[0.9960701,0.0004304401,0.0007891618,0.0006197718,0.0007403063,0.001350177],"domain_scores_gemma":[0.9947555,0.000657723,0.0006742032,0.003772523,0.00007830762,0.00006172382],"domain_codex":null,"domain_gemma":null,"domain_candidate":null,"domain_consensus":null,"study_design_codex":"design_other","study_design_gemma":"simulation_or_modeling","study_design_scores_codex":[0.000005961904,0.0003841949,0.05303104,0.00006081365,0.000179175,0.00005883274,0.0009438781,0.03261894,0.00003357358,0.04519214,0.01431465,0.8531768],"study_design_scores_gemma":[0.0007181775,0.0001325996,0.002884313,0.0006193962,0.000023123,0.0009298783,0.003072182,0.6328675,0.0002097951,0.001683519,0.3561581,0.0007014134],"study_design_candidate":"design_other","study_design_consensus":null,"genre_codex":"empirical","genre_gemma":"empirical","genre_scores_codex":[0.5571935,0.01024588,0.389926,0.02445173,0.0126348,0.0005856705,0.000003539155,0.002923341,0.0020356],"genre_scores_gemma":[0.9917387,0.00003446659,0.00730521,0.0001034613,0.0007276466,0.00000693987,0.000001099029,0.00002106813,0.00006137796],"genre_candidate":"empirical","genre_consensus":"empirical","teacher_disagreement_score":0.8524754,"threshold_uncertainty_score":0.9958665,"prediction_status":"machine_predicted_unvalidated"},"machine_scores":{"provisional":true,"baseline":true,"maturity_gate_passed":false,"score_opus":0.04619087704575515,"score_gpt":0.2999974301104432,"score_spread":0.253806553064688,"validation_status":"score_only:v0-immature-baseline","note":"Baseline scores from an immature model (maturity gate not passed). Scores rank; they never assert a category."}}