submission_id: mistralai-mistral-nemo_9330_v167
developer_uid: jnly36
best_of: 8
celo_rating: 1241.16
display_name: mistralai-mistral-nemo_9330_v167
family_friendly_score: 0.599438202247191
family_friendly_standard_error: 0.005451609432315035
formatter: {'memory_template': "{bot_name}'s Persona: {memory}\n####\n", 'prompt_template': '{prompt}\n<START>\n', 'bot_template': '{bot_name}: {message}\n', 'user_template': '{user_name}: {message}\n', 'response_template': '{bot_name}:', 'truncate_by_message': False}
generation_params: {'temperature': 1.0, 'top_p': 1.0, 'min_p': 0.0, 'top_k': 40, 'presence_penalty': 0.0, 'frequency_penalty': 0.0, 'stopping_words': ['\n'], 'max_input_tokens': 1024, 'best_of': 8, 'max_output_tokens': 64}
is_internal_developer: False
language_model: mistralai/Mistral-Nemo-Instruct-2407
max_input_tokens: 1024
max_output_tokens: 64
model_architecture: MistralForCausalLM
model_group: mistralai/Mistral-Nemo-I
model_name: mistralai-mistral-nemo_9330_v167
model_num_parameters: 12772070400.0
model_repo: mistralai/Mistral-Nemo-Instruct-2407
model_size: 13B
num_battles: 8458
num_wins: 4365
ranking_group: single
status: inactive
submission_type: basic
timestamp: 2024-10-14T17:44:26+00:00
us_pacific_date: 2024-10-14
win_ratio: 0.516079451406952
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run pipeline %s
run pipeline stage %s
Running pipeline stage MKMLizer
Starting job with name mistralai-mistral-nemo-9330-v167-mkmlizer
Waiting for job on mistralai-mistral-nemo-9330-v167-mkmlizer to finish
mistralai-mistral-nemo-9330-v167-mkmlizer: ╔═════════════════════════════════════════════════════════════════════╗
mistralai-mistral-nemo-9330-v167-mkmlizer: ║ _____ __ __ ║
mistralai-mistral-nemo-9330-v167-mkmlizer: ║ / _/ /_ ___ __/ / ___ ___ / / ║
mistralai-mistral-nemo-9330-v167-mkmlizer: ║ / _/ / // / |/|/ / _ \/ -_) -_) / ║
mistralai-mistral-nemo-9330-v167-mkmlizer: ║ /_//_/\_, /|__,__/_//_/\__/\__/_/ ║
mistralai-mistral-nemo-9330-v167-mkmlizer: ║ /___/ ║
mistralai-mistral-nemo-9330-v167-mkmlizer: ║ ║
mistralai-mistral-nemo-9330-v167-mkmlizer: ║ Version: 0.11.12 ║
mistralai-mistral-nemo-9330-v167-mkmlizer: ║ Copyright 2023 MK ONE TECHNOLOGIES Inc. ║
mistralai-mistral-nemo-9330-v167-mkmlizer: ║ https://mk1.ai ║
mistralai-mistral-nemo-9330-v167-mkmlizer: ║ ║
mistralai-mistral-nemo-9330-v167-mkmlizer: ║ The license key for the current software has been verified as ║
mistralai-mistral-nemo-9330-v167-mkmlizer: ║ belonging to: ║
mistralai-mistral-nemo-9330-v167-mkmlizer: ║ ║
mistralai-mistral-nemo-9330-v167-mkmlizer: ║ Chai Research Corp. ║
mistralai-mistral-nemo-9330-v167-mkmlizer: ║ Account ID: 7997a29f-0ceb-4cc7-9adf-840c57b4ae6f ║
mistralai-mistral-nemo-9330-v167-mkmlizer: ║ Expiration: 2024-10-15 23:59:59 ║
mistralai-mistral-nemo-9330-v167-mkmlizer: ║ ║
mistralai-mistral-nemo-9330-v167-mkmlizer: ╚═════════════════════════════════════════════════════════════════════╝
mistralai-mistral-nemo-9330-v167-mkmlizer: Downloaded to shared memory in 53.214s
mistralai-mistral-nemo-9330-v167-mkmlizer: quantizing model to /dev/shm/model_cache, profile:s0, folder:/tmp/tmpzky_8s_o, device:0
mistralai-mistral-nemo-9330-v167-mkmlizer: Saving flywheel model at /dev/shm/model_cache
mistralai-mistral-nemo-9330-v167-mkmlizer: quantized model in 37.003s
mistralai-mistral-nemo-9330-v167-mkmlizer: Processed model mistralai/Mistral-Nemo-Instruct-2407 in 90.217s
mistralai-mistral-nemo-9330-v167-mkmlizer: creating bucket guanaco-mkml-models
mistralai-mistral-nemo-9330-v167-mkmlizer: Bucket 's3://guanaco-mkml-models/' created
mistralai-mistral-nemo-9330-v167-mkmlizer: uploading /dev/shm/model_cache to s3://guanaco-mkml-models/mistralai-mistral-nemo-9330-v167
mistralai-mistral-nemo-9330-v167-mkmlizer: cp /dev/shm/model_cache/config.json s3://guanaco-mkml-models/mistralai-mistral-nemo-9330-v167/config.json
mistralai-mistral-nemo-9330-v167-mkmlizer: cp /dev/shm/model_cache/special_tokens_map.json s3://guanaco-mkml-models/mistralai-mistral-nemo-9330-v167/special_tokens_map.json
mistralai-mistral-nemo-9330-v167-mkmlizer: cp /dev/shm/model_cache/tokenizer_config.json s3://guanaco-mkml-models/mistralai-mistral-nemo-9330-v167/tokenizer_config.json
mistralai-mistral-nemo-9330-v167-mkmlizer: cp /dev/shm/model_cache/tokenizer.json s3://guanaco-mkml-models/mistralai-mistral-nemo-9330-v167/tokenizer.json
mistralai-mistral-nemo-9330-v167-mkmlizer: cp /dev/shm/model_cache/flywheel_model.0.safetensors s3://guanaco-mkml-models/mistralai-mistral-nemo-9330-v167/flywheel_model.0.safetensors
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Job mistralai-mistral-nemo-9330-v167-mkmlizer completed after 114.38s with status: succeeded
Stopping job with name mistralai-mistral-nemo-9330-v167-mkmlizer
Pipeline stage MKMLizer completed in 114.96s
run pipeline stage %s
Running pipeline stage MKMLTemplater
Pipeline stage MKMLTemplater completed in 0.15s
run pipeline stage %s
Running pipeline stage MKMLDeployer
Creating inference service mistralai-mistral-nemo-9330-v167
Waiting for inference service mistralai-mistral-nemo-9330-v167 to be ready
Inference service mistralai-mistral-nemo-9330-v167 ready after 140.49234342575073s
Pipeline stage MKMLDeployer completed in 141.02s
run pipeline stage %s
Running pipeline stage StressChecker
Received healthy response to inference request in 2.3513002395629883s
Received healthy response to inference request in 1.88478422164917s
Received healthy response to inference request in 1.738844871520996s
Received healthy response to inference request in 1.9776437282562256s
Received healthy response to inference request in 1.7825970649719238s
5 requests
0 failed requests
5th percentile: 1.7475953102111816
10th percentile: 1.7563457489013672
20th percentile: 1.7738466262817383
30th percentile: 1.803034496307373
40th percentile: 1.8439093589782716
50th percentile: 1.88478422164917
60th percentile: 1.9219280242919923
70th percentile: 1.9590718269348144
80th percentile: 2.0523750305175783
90th percentile: 2.2018376350402833
95th percentile: 2.2765689373016356
99th percentile: 2.3363539791107177
mean time: 1.9470340251922607
Pipeline stage StressChecker completed in 11.40s
Shutdown handler de-registered
mistralai-mistral-nemo_9330_v167 status is now deployed due to DeploymentManager action
mistralai-mistral-nemo_9330_v167 status is now inactive due to auto deactivation removed underperforming models