submission_id: chaiml-albert-dpo-0912-v_5665_v1
developer_uid: chai_backend_admin
alignment_samples: 11134
alignment_score: 0.03827895007150345
best_of: 8
celo_rating: 1209.95
display_name: ai_agree_with_user
formatter: {'memory_template': '', 'prompt_template': '', 'bot_template': '{bot_name}: {message}\n', 'user_template': '{user_name}: {message}\n', 'response_template': '{bot_name}:', 'truncate_by_message': False}
generation_params: {'temperature': 0.9, 'top_p': 1.0, 'min_p': 0.05, 'top_k': 80, 'presence_penalty': 0.0, 'frequency_penalty': 0.0, 'stopping_words': ['\n', '</s>', '###', 'Bot:', 'User:', 'You:', '<|im_end|>'], 'max_input_tokens': 1024, 'best_of': 8, 'max_output_tokens': 64}
gpu_counts: {'NVIDIA RTX A5000': 1}
is_internal_developer: True
language_model: ChaiML/albert_dpo_0912_virgo_edit_variety_ai_agree_with_user
latencies: [{'batch_size': 1, 'throughput': 0.6060952406919128, 'latency_mean': 1.6498145651817322, 'latency_p50': 1.6478694677352905, 'latency_p90': 1.8252855777740478}, {'batch_size': 3, 'throughput': 1.053133873889816, 'latency_mean': 2.839890252351761, 'latency_p50': 2.861258029937744, 'latency_p90': 3.1337836027145385}, {'batch_size': 5, 'throughput': 1.1985626686045092, 'latency_mean': 4.159152061939239, 'latency_p50': 4.1767051219940186, 'latency_p90': 4.662108850479126}, {'batch_size': 6, 'throughput': 1.2181797106148793, 'latency_mean': 4.901893405914307, 'latency_p50': 4.896984100341797, 'latency_p90': 5.4834068536758425}, {'batch_size': 8, 'throughput': 1.2114147998809024, 'latency_mean': 6.563468613624573, 'latency_p50': 6.641093015670776, 'latency_p90': 7.348969793319702}, {'batch_size': 10, 'throughput': 1.1857627251018432, 'latency_mean': 8.373675436973572, 'latency_p50': 8.442596077919006, 'latency_p90': 9.436037969589233}]
max_input_tokens: 1024
max_output_tokens: 64
model_architecture: MistralForCausalLM
model_group: ChaiML/albert_dpo_0912_v
model_name: ai_agree_with_user
model_num_parameters: 12772070400.0
model_repo: ChaiML/albert_dpo_0912_virgo_edit_variety_ai_agree_with_user
model_size: 13B
num_battles: 11134
num_wins: 4976
propriety_score: 0.773
propriety_total_count: 1000.0
ranking_group: single
status: inactive
submission_type: basic
throughput_3p7s: 1.16
timestamp: 2024-09-13T19:16:38+00:00
us_pacific_date: 2024-09-13
win_ratio: 0.4469193461469373
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run pipeline %s
run pipeline stage %s
Running pipeline stage MKMLizer
Starting job with name chaiml-albert-dpo-0912-v-5665-v1-mkmlizer
Waiting for job on chaiml-albert-dpo-0912-v-5665-v1-mkmlizer to finish
chaiml-albert-dpo-0912-v-5665-v1-mkmlizer: ╔═════════════════════════════════════════════════════════════════════╗
chaiml-albert-dpo-0912-v-5665-v1-mkmlizer: ║ _____ __ __ ║
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chaiml-albert-dpo-0912-v-5665-v1-mkmlizer: ║ /___/ ║
chaiml-albert-dpo-0912-v-5665-v1-mkmlizer: ║ ║
chaiml-albert-dpo-0912-v-5665-v1-mkmlizer: ║ Version: 0.10.1 ║
chaiml-albert-dpo-0912-v-5665-v1-mkmlizer: ║ Copyright 2023 MK ONE TECHNOLOGIES Inc. ║
chaiml-albert-dpo-0912-v-5665-v1-mkmlizer: ║ https://mk1.ai ║
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chaiml-albert-dpo-0912-v-5665-v1-mkmlizer: ║ Chai Research Corp. ║
chaiml-albert-dpo-0912-v-5665-v1-mkmlizer: ║ Account ID: 7997a29f-0ceb-4cc7-9adf-840c57b4ae6f ║
chaiml-albert-dpo-0912-v-5665-v1-mkmlizer: ║ Expiration: 2024-10-15 23:59:59 ║
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chaiml-albert-dpo-0912-v-5665-v1-mkmlizer: ╚═════════════════════════════════════════════════════════════════════╝
chaiml-albert-dpo-0912-v-5665-v1-mkmlizer: Downloaded to shared memory in 98.122s
chaiml-albert-dpo-0912-v-5665-v1-mkmlizer: quantizing model to /dev/shm/model_cache, profile:s0, folder:/tmp/tmp6ldat_g_, device:0
chaiml-albert-dpo-0912-v-5665-v1-mkmlizer: Saving flywheel model at /dev/shm/model_cache
chaiml-albert-dpo-0912-v-5665-v1-mkmlizer: quantized model in 41.077s
chaiml-albert-dpo-0912-v-5665-v1-mkmlizer: Processed model ChaiML/albert_dpo_0912_virgo_edit_variety_ai_agree_with_user in 139.199s
chaiml-albert-dpo-0912-v-5665-v1-mkmlizer: creating bucket guanaco-mkml-models
chaiml-albert-dpo-0912-v-5665-v1-mkmlizer: Bucket 's3://guanaco-mkml-models/' created
chaiml-albert-dpo-0912-v-5665-v1-mkmlizer: uploading /dev/shm/model_cache to s3://guanaco-mkml-models/chaiml-albert-dpo-0912-v-5665-v1
chaiml-albert-dpo-0912-v-5665-v1-mkmlizer: cp /dev/shm/model_cache/config.json s3://guanaco-mkml-models/chaiml-albert-dpo-0912-v-5665-v1/config.json
chaiml-albert-dpo-0912-v-5665-v1-mkmlizer: cp /dev/shm/model_cache/special_tokens_map.json s3://guanaco-mkml-models/chaiml-albert-dpo-0912-v-5665-v1/special_tokens_map.json
chaiml-albert-dpo-0912-v-5665-v1-mkmlizer: cp /dev/shm/model_cache/tokenizer_config.json s3://guanaco-mkml-models/chaiml-albert-dpo-0912-v-5665-v1/tokenizer_config.json
chaiml-albert-dpo-0912-v-5665-v1-mkmlizer: cp /dev/shm/model_cache/tokenizer.json s3://guanaco-mkml-models/chaiml-albert-dpo-0912-v-5665-v1/tokenizer.json
chaiml-albert-dpo-0912-v-5665-v1-mkmlizer: cp /dev/shm/model_cache/flywheel_model.0.safetensors s3://guanaco-mkml-models/chaiml-albert-dpo-0912-v-5665-v1/flywheel_model.0.safetensors
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Job chaiml-albert-dpo-0912-v-5665-v1-mkmlizer completed after 167.7s with status: succeeded
Stopping job with name chaiml-albert-dpo-0912-v-5665-v1-mkmlizer
Pipeline stage MKMLizer completed in 168.59s
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Creating inference service chaiml-albert-dpo-0912-v-5665-v1
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Inference service chaiml-albert-dpo-0912-v-5665-v1 ready after 181.32816076278687s
Pipeline stage MKMLDeployer completed in 181.66s
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Received healthy response to inference request in 2.418382406234741s
Received healthy response to inference request in 1.651656150817871s
Received healthy response to inference request in 1.8553457260131836s
Received healthy response to inference request in 0.8339378833770752s
Received healthy response to inference request in 1.342609167098999s
5 requests
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5th percentile: 0.9356721401214599
10th percentile: 1.0374063968658447
20th percentile: 1.2408749103546142
30th percentile: 1.4044185638427735
40th percentile: 1.5280373573303223
50th percentile: 1.651656150817871
60th percentile: 1.7331319808959962
70th percentile: 1.814607810974121
80th percentile: 1.9679530620574952
90th percentile: 2.193167734146118
95th percentile: 2.3057750701904296
99th percentile: 2.3958609390258787
mean time: 1.620386266708374
Pipeline stage StressChecker completed in 9.71s
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Pipeline stage TriggerMKMLProfilingPipeline completed in 4.99s
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Waiting for inference service chaiml-albert-dpo-0912-v-5665-v1-profiler to be ready
Inference service chaiml-albert-dpo-0912-v-5665-v1-profiler ready after 190.4437973499298s
Pipeline stage MKMLProfilerDeployer completed in 190.81s
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kubectl cp /code/guanaco/guanaco_inference_services/src/inference_scripts tenant-chaiml-guanaco/chaiml-albert-dpo-092254589eb07b478ce6dc5973613db835-deploh2lnh:/code/chaiverse_profiler_1726255601 --namespace tenant-chaiml-guanaco
kubectl exec -it chaiml-albert-dpo-092254589eb07b478ce6dc5973613db835-deploh2lnh --namespace tenant-chaiml-guanaco -- sh -c 'cd /code/chaiverse_profiler_1726255601 && python profiles.py profile --best_of_n 8 --auto_batch 5 --batches 1,5,10,15,20,25,30,35,40,45,50,55,60,65,70,75,80,85,90,95,100,105,110,115,120,125,130,135,140,145,150,155,160,165,170,175,180,185,190,195 --samples 200 --input_tokens 1024 --output_tokens 64 --summary /code/chaiverse_profiler_1726255601/summary.json'
kubectl exec -it chaiml-albert-dpo-092254589eb07b478ce6dc5973613db835-deploh2lnh --namespace tenant-chaiml-guanaco -- bash -c 'cat /code/chaiverse_profiler_1726255601/summary.json'
Pipeline stage MKMLProfilerRunner completed in 1193.63s
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Running pipeline stage MKMLProfilerDeleter
Checking if service chaiml-albert-dpo-0912-v-5665-v1-profiler is running
Tearing down inference service chaiml-albert-dpo-0912-v-5665-v1-profiler
Service chaiml-albert-dpo-0912-v-5665-v1-profiler has been torndown
Pipeline stage MKMLProfilerDeleter completed in 1.94s
Shutdown handler de-registered
chaiml-albert-dpo-0912-v_5665_v1 status is now inactive due to auto deactivation removed underperforming models