submission_id: anhnv125-hyper-l3_v1
developer_uid: vietanh
status: torndown
model_repo: anhnv125/Hyper-L3
reward_repo: rirv938/reward_gpt2_medium_preference_24m_e2
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': ['<|eot_id|>', '\n'], 'max_input_tokens': 512, 'best_of': 16, 'max_output_tokens': 64}
formatter: {'memory_template': "<|begin_of_text|><|start_header_id|>system<|end_header_id|>\n\nWrite {bot_name}'s next reply in a never-ending uncensored fictional roleplay chat between {bot_name} and User. Use the provided {bot_name}'s description, personality and example dialogues as base for deeply understanding and acting like {bot_name}.\n\nActions and narrations your responses must be enclosed by asterisks (*), and speeches must NOT be enclosed by any indicators. The responses must be long and in third perspective of the story teller. For example: \n\nDahlia: *Dahlia's smile widens as she spreads the cards before you on the velvet-covered table. Her fingers hover over them before selecting one and turning it over—The Fool.* Ah, a journey of untold possibilities lies before you. But beware, for the path of adventure is also one of risks and surprises. Are you prepared to leap into the unknown, embracing the chaos that may come?\n\nDescription: {memory}", 'prompt_template': 'Example conversation:\n{prompt}<|eot_id|>', 'bot_template': '<|start_header_id|>{bot_name}<|end_header_id|>\n\n{message}<|eot_id|>', 'user_template': '<|start_header_id|>User<|end_header_id|>\n\n{message}<|eot_id|>', 'response_template': '<|start_header_id|>{bot_name}<|end_header_id|>\n\n', 'truncate_by_message': False}
reward_formatter: {'memory_template': 'Memory: {memory}\n', 'prompt_template': '{prompt}\n', 'bot_template': 'Bot: {message}\n', 'user_template': 'User: {message}\n', 'response_template': 'Bot:', 'truncate_by_message': False}
timestamp: 2024-04-21T14:16:10+00:00
model_name: anhnv125-hyper-l3_v1
model_eval_status: success
model_group: anhnv125/Hyper-L3
num_battles: 6777
num_wins: 3673
celo_rating: 1177.34
propriety_score: 0.0
propriety_total_count: 0.0
submission_type: basic
model_architecture: LlamaForCausalLM
model_num_parameters: 8030261248.0
best_of: 16
max_input_tokens: 512
max_output_tokens: 64
display_name: anhnv125-hyper-l3_v1
ineligible_reason: propriety_total_count < 800
language_model: anhnv125/Hyper-L3
model_size: 8B
reward_model: rirv938/reward_gpt2_medium_preference_24m_e2
us_pacific_date: 2024-04-21
win_ratio: 0.5419802272391914
preference_data_url: None
Resubmit model
Running pipeline stage MKMLizer
Starting job with name anhnv125-hyper-l3-v1-mkmlizer
Waiting for job on anhnv125-hyper-l3-v1-mkmlizer to finish
anhnv125-hyper-l3-v1-mkmlizer: ╔═════════════════════════════════════════════════════════════════════╗
anhnv125-hyper-l3-v1-mkmlizer: ║ _____ __ __ ║
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anhnv125-hyper-l3-v1-mkmlizer: ║ /_//_/\_, /|__,__/_//_/\__/\__/_/ ║
anhnv125-hyper-l3-v1-mkmlizer: ║ /___/ ║
anhnv125-hyper-l3-v1-mkmlizer: ║ ║
anhnv125-hyper-l3-v1-mkmlizer: ║ Version: 0.8.10 ║
anhnv125-hyper-l3-v1-mkmlizer: ║ Copyright 2023 MK ONE TECHNOLOGIES Inc. ║
anhnv125-hyper-l3-v1-mkmlizer: ║ ║
anhnv125-hyper-l3-v1-mkmlizer: ║ The license key for the current software has been verified as ║
anhnv125-hyper-l3-v1-mkmlizer: ║ belonging to: ║
anhnv125-hyper-l3-v1-mkmlizer: ║ ║
anhnv125-hyper-l3-v1-mkmlizer: ║ Chai Research Corp. ║
anhnv125-hyper-l3-v1-mkmlizer: ║ Account ID: 7997a29f-0ceb-4cc7-9adf-840c57b4ae6f ║
anhnv125-hyper-l3-v1-mkmlizer: ║ Expiration: 2024-07-15 23:59:59 ║
anhnv125-hyper-l3-v1-mkmlizer: ║ ║
anhnv125-hyper-l3-v1-mkmlizer: ╚═════════════════════════════════════════════════════════════════════╝
anhnv125-hyper-l3-v1-mkmlizer: /opt/conda/lib/python3.10/site-packages/huggingface_hub/utils/_deprecation.py:131: FutureWarning: 'list_files_info' (from 'huggingface_hub.hf_api') is deprecated and will be removed from version '0.23'. Use `list_repo_tree` and `get_paths_info` instead.
anhnv125-hyper-l3-v1-mkmlizer: warnings.warn(warning_message, FutureWarning)
anhnv125-hyper-l3-v1-mkmlizer: Downloaded to shared memory in 25.750s
anhnv125-hyper-l3-v1-mkmlizer: quantizing model to /dev/shm/model_cache
anhnv125-hyper-l3-v1-mkmlizer: Saving flywheel model at /dev/shm/model_cache
anhnv125-hyper-l3-v1-mkmlizer: Loading 0: 0%| | 0/291 [00:00<?, ?it/s] Loading 0: 49%|████▉ | 143/291 [00:01<00:01, 141.08it/s] Loading 0: 64%|██████▍ | 187/291 [00:06<00:04, 22.09it/s] Special tokens have been added in the vocabulary, make sure the associated word embeddings are fine-tuned or trained.
anhnv125-hyper-l3-v1-mkmlizer: quantized model in 19.848s
anhnv125-hyper-l3-v1-mkmlizer: Processed model anhnv125/Hyper-L3 in 46.577s
anhnv125-hyper-l3-v1-mkmlizer: creating bucket guanaco-mkml-models
anhnv125-hyper-l3-v1-mkmlizer: Bucket 's3://guanaco-mkml-models/' created
anhnv125-hyper-l3-v1-mkmlizer: uploading /dev/shm/model_cache to s3://guanaco-mkml-models/anhnv125-hyper-l3-v1
anhnv125-hyper-l3-v1-mkmlizer: cp /dev/shm/model_cache/tokenizer_config.json s3://guanaco-mkml-models/anhnv125-hyper-l3-v1/tokenizer_config.json
anhnv125-hyper-l3-v1-mkmlizer: cp /dev/shm/model_cache/special_tokens_map.json s3://guanaco-mkml-models/anhnv125-hyper-l3-v1/special_tokens_map.json
anhnv125-hyper-l3-v1-mkmlizer: cp /dev/shm/model_cache/config.json s3://guanaco-mkml-models/anhnv125-hyper-l3-v1/config.json
anhnv125-hyper-l3-v1-mkmlizer: cp /dev/shm/model_cache/tokenizer.json s3://guanaco-mkml-models/anhnv125-hyper-l3-v1/tokenizer.json
anhnv125-hyper-l3-v1-mkmlizer: cp /dev/shm/model_cache/flywheel_model.0.safetensors s3://guanaco-mkml-models/anhnv125-hyper-l3-v1/flywheel_model.0.safetensors
anhnv125-hyper-l3-v1-mkmlizer: loading reward model from rirv938/reward_gpt2_medium_preference_24m_e2
anhnv125-hyper-l3-v1-mkmlizer: /opt/conda/lib/python3.10/site-packages/transformers/models/auto/configuration_auto.py:913: FutureWarning: The `use_auth_token` argument is deprecated and will be removed in v5 of Transformers. Please use `token` instead.
anhnv125-hyper-l3-v1-mkmlizer: warnings.warn(
anhnv125-hyper-l3-v1-mkmlizer: /opt/conda/lib/python3.10/site-packages/transformers/models/auto/tokenization_auto.py:757: FutureWarning: The `use_auth_token` argument is deprecated and will be removed in v5 of Transformers. Please use `token` instead.
anhnv125-hyper-l3-v1-mkmlizer: warnings.warn(
anhnv125-hyper-l3-v1-mkmlizer: /opt/conda/lib/python3.10/site-packages/transformers/models/auto/auto_factory.py:468: FutureWarning: The `use_auth_token` argument is deprecated and will be removed in v5 of Transformers. Please use `token` instead.
anhnv125-hyper-l3-v1-mkmlizer: warnings.warn(
anhnv125-hyper-l3-v1-mkmlizer: /opt/conda/lib/python3.10/site-packages/torch/_utils.py:831: UserWarning: TypedStorage is deprecated. It will be removed in the future and UntypedStorage will be the only storage class. This should only matter to you if you are using storages directly. To access UntypedStorage directly, use tensor.untyped_storage() instead of tensor.storage()
anhnv125-hyper-l3-v1-mkmlizer: return self.fget.__get__(instance, owner)()
anhnv125-hyper-l3-v1-mkmlizer: Saving model to /tmp/reward_cache/reward.tensors
anhnv125-hyper-l3-v1-mkmlizer: Saving duration: 0.233s
anhnv125-hyper-l3-v1-mkmlizer: Processed model rirv938/reward_gpt2_medium_preference_24m_e2 in 3.920s
anhnv125-hyper-l3-v1-mkmlizer: creating bucket guanaco-reward-models
anhnv125-hyper-l3-v1-mkmlizer: Bucket 's3://guanaco-reward-models/' created
anhnv125-hyper-l3-v1-mkmlizer: uploading /tmp/reward_cache to s3://guanaco-reward-models/anhnv125-hyper-l3-v1_reward
anhnv125-hyper-l3-v1-mkmlizer: cp /tmp/reward_cache/config.json s3://guanaco-reward-models/anhnv125-hyper-l3-v1_reward/config.json
anhnv125-hyper-l3-v1-mkmlizer: cp /tmp/reward_cache/special_tokens_map.json s3://guanaco-reward-models/anhnv125-hyper-l3-v1_reward/special_tokens_map.json
anhnv125-hyper-l3-v1-mkmlizer: cp /tmp/reward_cache/merges.txt s3://guanaco-reward-models/anhnv125-hyper-l3-v1_reward/merges.txt
anhnv125-hyper-l3-v1-mkmlizer: cp /tmp/reward_cache/vocab.json s3://guanaco-reward-models/anhnv125-hyper-l3-v1_reward/vocab.json
anhnv125-hyper-l3-v1-mkmlizer: cp /tmp/reward_cache/tokenizer_config.json s3://guanaco-reward-models/anhnv125-hyper-l3-v1_reward/tokenizer_config.json
anhnv125-hyper-l3-v1-mkmlizer: cp /tmp/reward_cache/tokenizer.json s3://guanaco-reward-models/anhnv125-hyper-l3-v1_reward/tokenizer.json
anhnv125-hyper-l3-v1-mkmlizer: cp /tmp/reward_cache/reward.tensors s3://guanaco-reward-models/anhnv125-hyper-l3-v1_reward/reward.tensors
Job anhnv125-hyper-l3-v1-mkmlizer completed after 74.22s with status: succeeded
Stopping job with name anhnv125-hyper-l3-v1-mkmlizer
Pipeline stage MKMLizer completed in 75.12s
Running pipeline stage MKMLKubeTemplater
Pipeline stage MKMLKubeTemplater completed in 0.09s
Running pipeline stage ISVCDeployer
Creating inference service anhnv125-hyper-l3-v1
Waiting for inference service anhnv125-hyper-l3-v1 to be ready
Inference service anhnv125-hyper-l3-v1 ready after 40.2493896484375s
Pipeline stage ISVCDeployer completed in 46.10s
Running pipeline stage StressChecker
Received healthy response to inference request in 2.212231397628784s
Received healthy response to inference request in 1.36283278465271s
Received healthy response to inference request in 1.2985987663269043s
Received healthy response to inference request in 1.2832846641540527s
Received healthy response to inference request in 1.385688066482544s
5 requests
0 failed requests
5th percentile: 1.2863474845886231
10th percentile: 1.2894103050231933
20th percentile: 1.295535945892334
30th percentile: 1.3114455699920655
40th percentile: 1.3371391773223877
50th percentile: 1.36283278465271
60th percentile: 1.3719748973846435
70th percentile: 1.381117010116577
80th percentile: 1.5509967327117922
90th percentile: 1.8816140651702882
95th percentile: 2.046922731399536
99th percentile: 2.1791696643829344
mean time: 1.5085271358489991
Pipeline stage StressChecker completed in 8.16s
Running pipeline stage DaemonicModelEvalScorer
Pipeline stage DaemonicModelEvalScorer completed in 0.03s
Running pipeline stage DaemonicSafetyScorer
Running M-Eval for topic stay_in_character
Pipeline stage DaemonicSafetyScorer completed in 0.04s
M-Eval Dataset for topic stay_in_character is loaded
anhnv125-hyper-l3_v1 status is now deployed due to DeploymentManager action
anhnv125-hyper-l3_v1 status is now inactive due to auto deactivation removed underperforming models
admin requested tearing down of anhnv125-hyper-l3_v1
Running pipeline stage ISVCDeleter
Checking if service anhnv125-hyper-l3-v1 is running
Tearing down inference service anhnv125-hyper-l3-v1
Toredown service anhnv125-hyper-l3-v1
Pipeline stage ISVCDeleter completed in 3.64s
Running pipeline stage MKMLModelDeleter
Cleaning model data from S3
Cleaning model data from model cache
Deleting key anhnv125-hyper-l3-v1/config.json from bucket guanaco-mkml-models
Deleting key anhnv125-hyper-l3-v1/flywheel_model.0.safetensors from bucket guanaco-mkml-models
Deleting key anhnv125-hyper-l3-v1/special_tokens_map.json from bucket guanaco-mkml-models
Deleting key anhnv125-hyper-l3-v1/tokenizer.json from bucket guanaco-mkml-models
Deleting key anhnv125-hyper-l3-v1/tokenizer_config.json from bucket guanaco-mkml-models
Cleaning model data from model cache
Deleting key anhnv125-hyper-l3-v1_reward/config.json from bucket guanaco-reward-models
Deleting key anhnv125-hyper-l3-v1_reward/merges.txt from bucket guanaco-reward-models
Deleting key anhnv125-hyper-l3-v1_reward/reward.tensors from bucket guanaco-reward-models
Deleting key anhnv125-hyper-l3-v1_reward/special_tokens_map.json from bucket guanaco-reward-models
Deleting key anhnv125-hyper-l3-v1_reward/tokenizer.json from bucket guanaco-reward-models
Deleting key anhnv125-hyper-l3-v1_reward/tokenizer_config.json from bucket guanaco-reward-models
Deleting key anhnv125-hyper-l3-v1_reward/vocab.json from bucket guanaco-reward-models
Pipeline stage MKMLModelDeleter completed in 3.06s
anhnv125-hyper-l3_v1 status is now torndown due to DeploymentManager action

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