submission_id: cycy233-l3-ss-v0-c2_v1
developer_uid: shiroe40
alignment_samples: 10327
alignment_score: -0.46016526113775924
best_of: 16
celo_rating: 1203.12
display_name: auto
formatter: {'memory_template': "<|begin_of_text|><|start_header_id|>system<|end_header_id|>\n\n{bot_name}'s Persona: {memory}\n\n", 'prompt_template': '{prompt}<|eot_id|>', 'bot_template': '<|start_header_id|>assistant<|end_header_id|>\n\n{bot_name}: {message}<|eot_id|>', 'user_template': '<|start_header_id|>user<|end_header_id|>\n\n{user_name}: {message}<|eot_id|>', 'response_template': '<|start_header_id|>assistant<|end_header_id|>\n\n{bot_name}:', 'truncate_by_message': False}
generation_params: {'temperature': 1.0, 'top_p': 0.9, 'min_p': 0.05, 'top_k': 80, 'presence_penalty': 0.0, 'frequency_penalty': 0.0, 'stopping_words': ['<|end_header_id|>', '<|eot_id|>'], 'max_input_tokens': 512, 'best_of': 16, 'max_output_tokens': 64, 'reward_max_token_input': 256}
is_internal_developer: False
language_model: cycy233/L3-ss-v0-c2
max_input_tokens: 512
max_output_tokens: 64
model_architecture: LlamaForCausalLM
model_group: cycy233/L3-ss-v0-c2
model_name: auto
model_num_parameters: 8030261248.0
model_repo: cycy233/L3-ss-v0-c2
model_size: 8B
num_battles: 10327
num_wins: 5032
propriety_score: 0.7096774193548387
propriety_total_count: 961.0
ranking_group: single
reward_formatter: {'bot_template': '{bot_name}: {message}\n', 'memory_template': "{bot_name}'s Persona: {memory}\n####\n", 'prompt_template': '{prompt}\n<START>\n', 'response_template': '{bot_name}:', 'truncate_by_message': False, 'user_template': '{user_name}: {message}\n'}
reward_repo: Jellywibble/gpt2_xl_pairwise_89m_step_347634
status: torndown
submission_type: basic
timestamp: 2024-08-13T02:24:01+00:00
us_pacific_date: 2024-08-12
win_ratio: 0.48726638907717634
Download Preference Data
Resubmit model
Running pipeline stage MKMLizer
Starting job with name cycy233-l3-ss-v0-c2-v1-mkmlizer
Waiting for job on cycy233-l3-ss-v0-c2-v1-mkmlizer to finish
cycy233-l3-ss-v0-c2-v1-mkmlizer: ╔═════════════════════════════════════════════════════════════════════╗
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cycy233-l3-ss-v0-c2-v1-mkmlizer: ║ ║
cycy233-l3-ss-v0-c2-v1-mkmlizer: ║ Version: 0.9.9 ║
cycy233-l3-ss-v0-c2-v1-mkmlizer: ║ Copyright 2023 MK ONE TECHNOLOGIES Inc. ║
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cycy233-l3-ss-v0-c2-v1-mkmlizer: ║ Expiration: 2024-10-15 23:59:59 ║
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cycy233-l3-ss-v0-c2-v1-mkmlizer: ╚═════════════════════════════════════════════════════════════════════╝
cycy233-l3-ss-v0-c2-v1-mkmlizer: Downloaded to shared memory in 31.019s
cycy233-l3-ss-v0-c2-v1-mkmlizer: quantizing model to /dev/shm/model_cache, profile:s0, folder:/tmp/tmp_2gdc_da, device:0
cycy233-l3-ss-v0-c2-v1-mkmlizer: Saving flywheel model at /dev/shm/model_cache
cycy233-l3-ss-v0-c2-v1-mkmlizer: quantized model in 26.508s
cycy233-l3-ss-v0-c2-v1-mkmlizer: Processed model cycy233/L3-ss-v0-c2 in 57.527s
cycy233-l3-ss-v0-c2-v1-mkmlizer: creating bucket guanaco-mkml-models
cycy233-l3-ss-v0-c2-v1-mkmlizer: Bucket 's3://guanaco-mkml-models/' created
cycy233-l3-ss-v0-c2-v1-mkmlizer: uploading /dev/shm/model_cache to s3://guanaco-mkml-models/cycy233-l3-ss-v0-c2-v1
cycy233-l3-ss-v0-c2-v1-mkmlizer: cp /dev/shm/model_cache/config.json s3://guanaco-mkml-models/cycy233-l3-ss-v0-c2-v1/config.json
cycy233-l3-ss-v0-c2-v1-mkmlizer: cp /dev/shm/model_cache/special_tokens_map.json s3://guanaco-mkml-models/cycy233-l3-ss-v0-c2-v1/special_tokens_map.json
cycy233-l3-ss-v0-c2-v1-mkmlizer: cp /dev/shm/model_cache/tokenizer_config.json s3://guanaco-mkml-models/cycy233-l3-ss-v0-c2-v1/tokenizer_config.json
cycy233-l3-ss-v0-c2-v1-mkmlizer: cp /dev/shm/model_cache/tokenizer.json s3://guanaco-mkml-models/cycy233-l3-ss-v0-c2-v1/tokenizer.json
cycy233-l3-ss-v0-c2-v1-mkmlizer: cp /dev/shm/model_cache/flywheel_model.0.safetensors s3://guanaco-mkml-models/cycy233-l3-ss-v0-c2-v1/flywheel_model.0.safetensors
cycy233-l3-ss-v0-c2-v1-mkmlizer: loading reward model from Jellywibble/gpt2_xl_pairwise_89m_step_347634
cycy233-l3-ss-v0-c2-v1-mkmlizer: Loading 0: 0%| | 0/291 [00:00<?, ?it/s] Loading 0: 2%|▏ | 6/291 [00:00<00:04, 59.55it/s] Loading 0: 5%|▌ | 16/291 [00:00<00:04, 66.49it/s] Loading 0: 11%|█ | 31/291 [00:00<00:03, 85.86it/s] Loading 0: 15%|█▍ | 43/291 [00:00<00:02, 83.76it/s] Loading 0: 18%|█▊ | 52/291 [00:00<00:02, 82.83it/s] Loading 0: 21%|██ | 61/291 [00:00<00:02, 83.69it/s] Loading 0: 24%|██▍ | 70/291 [00:00<00:02, 83.73it/s] Loading 0: 27%|██▋ | 79/291 [00:00<00:02, 84.40it/s] Loading 0: 30%|███ | 88/291 [00:02<00:09, 20.99it/s] Loading 0: 33%|███▎ | 97/291 [00:02<00:07, 27.03it/s] Loading 0: 36%|███▋ | 106/291 [00:02<00:05, 34.00it/s] Loading 0: 40%|███▉ | 115/291 [00:02<00:04, 41.12it/s] Loading 0: 43%|████▎ | 124/291 [00:02<00:03, 48.11it/s] Loading 0: 46%|████▌ | 133/291 [00:02<00:02, 54.66it/s] Loading 0: 49%|████▉ | 142/291 [00:02<00:02, 57.59it/s] Loading 0: 52%|█████▏ | 151/291 [00:02<00:02, 62.88it/s] Loading 0: 55%|█████▍ | 160/291 [00:03<00:01, 66.69it/s] Loading 0: 58%|█████▊ | 169/291 [00:03<00:01, 62.47it/s] Loading 0: 61%|██████ | 178/291 [00:03<00:01, 64.33it/s] Loading 0: 64%|██████▍ | 187/291 [00:04<00:05, 19.91it/s] Loading 0: 67%|██████▋ | 196/291 [00:04<00:03, 25.56it/s] Loading 0: 70%|███████ | 205/291 [00:04<00:02, 32.52it/s] Loading 0: 76%|███████▌ | 220/291 [00:04<00:01, 45.30it/s] Loading 0: 79%|███████▊ | 229/291 [00:05<00:01, 51.19it/s] Loading 0: 82%|████████▏ | 238/291 [00:05<00:00, 56.74it/s] Loading 0: 85%|████████▍ | 247/291 [00:05<00:00, 62.07it/s] Loading 0: 88%|████████▊ | 256/291 [00:05<00:00, 66.96it/s] Loading 0: 91%|█████████ | 265/291 [00:05<00:00, 70.04it/s] Loading 0: 94%|█████████▍| 274/291 [00:05<00:00, 71.68it/s] Loading 0: 97%|█████████▋| 283/291 [00:05<00:00, 72.85it/s] Loading 0: 100%|██████████| 291/291 [00:11<00:00, 5.14it/s] /opt/conda/lib/python3.10/site-packages/transformers/models/auto/configuration_auto.py:957: FutureWarning: The `use_auth_token` argument is deprecated and will be removed in v5 of Transformers. Please use `token` instead.
cycy233-l3-ss-v0-c2-v1-mkmlizer: warnings.warn(
cycy233-l3-ss-v0-c2-v1-mkmlizer: /opt/conda/lib/python3.10/site-packages/transformers/models/auto/auto_factory.py:469: FutureWarning: The `use_auth_token` argument is deprecated and will be removed in v5 of Transformers. Please use `token` instead.
cycy233-l3-ss-v0-c2-v1-mkmlizer: warnings.warn(
cycy233-l3-ss-v0-c2-v1-mkmlizer: Saving model to /tmp/reward_cache/reward.tensors
cycy233-l3-ss-v0-c2-v1-mkmlizer: Saving duration: 1.403s
cycy233-l3-ss-v0-c2-v1-mkmlizer: Processed model Jellywibble/gpt2_xl_pairwise_89m_step_347634 in 10.824s
cycy233-l3-ss-v0-c2-v1-mkmlizer: Bucket 's3://guanaco-reward-models/' created
cycy233-l3-ss-v0-c2-v1-mkmlizer: uploading /tmp/reward_cache to s3://guanaco-reward-models/cycy233-l3-ss-v0-c2-v1_reward
cycy233-l3-ss-v0-c2-v1-mkmlizer: cp /tmp/reward_cache/special_tokens_map.json s3://guanaco-reward-models/cycy233-l3-ss-v0-c2-v1_reward/special_tokens_map.json
cycy233-l3-ss-v0-c2-v1-mkmlizer: cp /tmp/reward_cache/tokenizer_config.json s3://guanaco-reward-models/cycy233-l3-ss-v0-c2-v1_reward/tokenizer_config.json
cycy233-l3-ss-v0-c2-v1-mkmlizer: cp /tmp/reward_cache/config.json s3://guanaco-reward-models/cycy233-l3-ss-v0-c2-v1_reward/config.json
cycy233-l3-ss-v0-c2-v1-mkmlizer: cp /tmp/reward_cache/merges.txt s3://guanaco-reward-models/cycy233-l3-ss-v0-c2-v1_reward/merges.txt
cycy233-l3-ss-v0-c2-v1-mkmlizer: cp /tmp/reward_cache/vocab.json s3://guanaco-reward-models/cycy233-l3-ss-v0-c2-v1_reward/vocab.json
cycy233-l3-ss-v0-c2-v1-mkmlizer: cp /tmp/reward_cache/tokenizer.json s3://guanaco-reward-models/cycy233-l3-ss-v0-c2-v1_reward/tokenizer.json
cycy233-l3-ss-v0-c2-v1-mkmlizer: cp /tmp/reward_cache/reward.tensors s3://guanaco-reward-models/cycy233-l3-ss-v0-c2-v1_reward/reward.tensors
Job cycy233-l3-ss-v0-c2-v1-mkmlizer completed after 94.51s with status: succeeded
Stopping job with name cycy233-l3-ss-v0-c2-v1-mkmlizer
Pipeline stage MKMLizer completed in 95.45s
Running pipeline stage MKMLKubeTemplater
Pipeline stage MKMLKubeTemplater completed in 0.13s
Running pipeline stage ISVCDeployer
Creating inference service cycy233-l3-ss-v0-c2-v1
Waiting for inference service cycy233-l3-ss-v0-c2-v1 to be ready
Inference service cycy233-l3-ss-v0-c2-v1 ready after 221.6962230205536s
Pipeline stage ISVCDeployer completed in 223.23s
Running pipeline stage StressChecker
Received healthy response to inference request in 2.4767916202545166s
Received healthy response to inference request in 1.5493505001068115s
Received healthy response to inference request in 1.5614070892333984s
Received healthy response to inference request in 1.487123966217041s
Received healthy response to inference request in 1.5385067462921143s
5 requests
0 failed requests
5th percentile: 1.4974005222320557
10th percentile: 1.5076770782470703
20th percentile: 1.5282301902770996
30th percentile: 1.5406754970550538
40th percentile: 1.5450129985809327
50th percentile: 1.5493505001068115
60th percentile: 1.5541731357574462
70th percentile: 1.558995771408081
80th percentile: 1.7444839954376223
90th percentile: 2.1106378078460692
95th percentile: 2.2937147140502927
99th percentile: 2.4401762390136716
mean time: 1.7226359844207764
Pipeline stage StressChecker completed in 9.24s
cycy233-l3-ss-v0-c2_v1 status is now deployed due to DeploymentManager action
cycy233-l3-ss-v0-c2_v1 status is now inactive due to auto deactivation removed underperforming models
cycy233-l3-ss-v0-c2_v1 status is now torndown due to DeploymentManager action

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