submission_id: chaiml-test-feed-convo-v1-1e5_v8
developer_uid: zonemercy
alignment_samples: 10802
alignment_score: -0.30081658620858476
best_of: 8
celo_rating: 1250.74
display_name: chaiml-test-feed-convo-v1-1e5_v8
formatter: {'memory_template': "Bot's name: {bot_name}\nBot never initiate sex act unless User started first in the conversation\n####\n", 'prompt_template': '', 'bot_template': 'Bot: {message}</s>', 'user_template': 'User: {message}</s>', 'response_template': 'Bot:', 'truncate_by_message': True}
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': ['</s>', 'Bot:', 'User:', 'You:'], 'max_input_tokens': 1024, 'best_of': 8, 'max_output_tokens': 64}
is_internal_developer: True
language_model: ChaiML/Test-Feed-Convo-v1-1e5
max_input_tokens: 1024
max_output_tokens: 64
model_architecture: MistralForCausalLM
model_group: ChaiML/Test-Feed-Convo-v
model_name: chaiml-test-feed-convo-v1-1e5_v8
model_num_parameters: 12772070400.0
model_repo: ChaiML/Test-Feed-Convo-v1-1e5
model_size: 13B
num_battles: 10802
num_wins: 5504
propriety_score: 0.7658688865764828
propriety_total_count: 961.0
ranking_group: single
status: inactive
submission_type: basic
timestamp: 2024-09-11T18:54:37+00:00
us_pacific_date: 2024-09-11
win_ratio: 0.5095352712460656
Download Preference Data
Resubmit model
Shutdown handler not registered because Python interpreter is not running in the main thread
run pipeline %s
run pipeline stage %s
Running pipeline stage MKMLizer
Starting job with name chaiml-test-feed-convo-v1-1e5-v8-mkmlizer
Waiting for job on chaiml-test-feed-convo-v1-1e5-v8-mkmlizer to finish
chaiml-test-feed-convo-v1-1e5-v8-mkmlizer: ╔═════════════════════════════════════════════════════════════════════╗
chaiml-test-feed-convo-v1-1e5-v8-mkmlizer: ║ _____ __ __ ║
chaiml-test-feed-convo-v1-1e5-v8-mkmlizer: ║ / _/ /_ ___ __/ / ___ ___ / / ║
chaiml-test-feed-convo-v1-1e5-v8-mkmlizer: ║ / _/ / // / |/|/ / _ \/ -_) -_) / ║
chaiml-test-feed-convo-v1-1e5-v8-mkmlizer: ║ /_//_/\_, /|__,__/_//_/\__/\__/_/ ║
chaiml-test-feed-convo-v1-1e5-v8-mkmlizer: ║ /___/ ║
chaiml-test-feed-convo-v1-1e5-v8-mkmlizer: ║ ║
chaiml-test-feed-convo-v1-1e5-v8-mkmlizer: ║ Version: 0.10.1 ║
chaiml-test-feed-convo-v1-1e5-v8-mkmlizer: ║ Copyright 2023 MK ONE TECHNOLOGIES Inc. ║
chaiml-test-feed-convo-v1-1e5-v8-mkmlizer: ║ https://mk1.ai ║
chaiml-test-feed-convo-v1-1e5-v8-mkmlizer: ║ ║
chaiml-test-feed-convo-v1-1e5-v8-mkmlizer: ║ The license key for the current software has been verified as ║
chaiml-test-feed-convo-v1-1e5-v8-mkmlizer: ║ belonging to: ║
chaiml-test-feed-convo-v1-1e5-v8-mkmlizer: ║ ║
chaiml-test-feed-convo-v1-1e5-v8-mkmlizer: ║ Chai Research Corp. ║
chaiml-test-feed-convo-v1-1e5-v8-mkmlizer: ║ Account ID: 7997a29f-0ceb-4cc7-9adf-840c57b4ae6f ║
chaiml-test-feed-convo-v1-1e5-v8-mkmlizer: ║ Expiration: 2024-10-15 23:59:59 ║
chaiml-test-feed-convo-v1-1e5-v8-mkmlizer: ║ ║
chaiml-test-feed-convo-v1-1e5-v8-mkmlizer: ╚═════════════════════════════════════════════════════════════════════╝
chaiml-test-feed-convo-v1-1e5-v8-mkmlizer: Downloaded to shared memory in 29.717s
chaiml-test-feed-convo-v1-1e5-v8-mkmlizer: quantizing model to /dev/shm/model_cache, profile:s0, folder:/tmp/tmpjyw2v3rb, device:0
chaiml-test-feed-convo-v1-1e5-v8-mkmlizer: Saving flywheel model at /dev/shm/model_cache
chaiml-test-feed-convo-v1-1e5-v8-mkmlizer: quantized model in 36.338s
chaiml-test-feed-convo-v1-1e5-v8-mkmlizer: Processed model ChaiML/Test-Feed-Convo-v1-1e5 in 66.055s
chaiml-test-feed-convo-v1-1e5-v8-mkmlizer: creating bucket guanaco-mkml-models
chaiml-test-feed-convo-v1-1e5-v8-mkmlizer: cp /dev/shm/model_cache/flywheel_model.0.safetensors s3://guanaco-mkml-models/chaiml-test-feed-convo-v1-1e5-v8/flywheel_model.0.safetensors
chaiml-test-feed-convo-v1-1e5-v8-mkmlizer: Loading 0: 0%| | 0/363 [00:00<?, ?it/s] Loading 0: 1%|▏ | 5/363 [00:00<00:12, 29.22it/s] Loading 0: 4%|▎ | 13/363 [00:00<00:07, 49.04it/s] Loading 0: 5%|▌ | 19/363 [00:00<00:08, 42.38it/s] Loading 0: 7%|▋ | 24/363 [00:00<00:07, 42.68it/s] Loading 0: 9%|▊ | 31/363 [00:00<00:06, 49.80it/s] Loading 0: 10%|█ | 37/363 [00:00<00:06, 47.85it/s] Loading 0: 12%|█▏ | 42/363 [00:00<00:07, 45.84it/s] Loading 0: 13%|█▎ | 49/363 [00:01<00:06, 50.78it/s] Loading 0: 15%|█▌ | 55/363 [00:01<00:06, 44.75it/s] Loading 0: 17%|█▋ | 61/363 [00:01<00:08, 34.13it/s] Loading 0: 18%|█▊ | 65/363 [00:01<00:09, 32.55it/s] Loading 0: 20%|█▉ | 71/363 [00:01<00:07, 37.94it/s] Loading 0: 21%|██ | 76/363 [00:01<00:07, 38.81it/s] Loading 0: 22%|██▏ | 81/363 [00:01<00:07, 40.17it/s] Loading 0: 24%|██▍ | 87/363 [00:02<00:06, 41.35it/s] Loading 0: 25%|██▌ | 92/363 [00:02<00:06, 41.29it/s] Loading 0: 27%|██▋ | 99/363 [00:02<00:05, 46.52it/s] Loading 0: 29%|██▊ | 104/363 [00:02<00:05, 46.65it/s] Loading 0: 30%|███ | 109/363 [00:02<00:05, 46.24it/s] Loading 0: 31%|███▏ | 114/363 [00:02<00:06, 40.00it/s] Loading 0: 33%|███▎ | 119/363 [00:02<00:06, 40.51it/s] Loading 0: 35%|███▍ | 126/363 [00:02<00:05, 46.68it/s] Loading 0: 36%|███▋ | 132/363 [00:03<00:05, 45.20it/s] Loading 0: 38%|███▊ | 137/363 [00:03<00:05, 42.00it/s] Loading 0: 39%|███▉ | 142/363 [00:03<00:07, 31.21it/s] Loading 0: 40%|████ | 146/363 [00:03<00:06, 32.01it/s] Loading 0: 41%|████▏ | 150/363 [00:03<00:06, 30.59it/s] Loading 0: 43%|████▎ | 156/363 [00:03<00:05, 35.96it/s] Loading 0: 44%|████▍ | 161/363 [00:03<00:05, 38.77it/s] Loading 0: 46%|████▌ | 166/363 [00:04<00:04, 41.39it/s] Loading 0: 47%|████▋ | 171/363 [00:04<00:04, 42.51it/s] Loading 0: 48%|████▊ | 176/363 [00:04<00:05, 36.36it/s] Loading 0: 50%|█████ | 183/363 [00:04<00:04, 43.89it/s] Loading 0: 52%|█████▏ | 188/363 [00:04<00:04, 43.44it/s] Loading 0: 53%|█████▎ | 193/363 [00:04<00:03, 43.42it/s] Loading 0: 55%|█████▍ | 198/363 [00:04<00:03, 43.36it/s] Loading 0: 56%|█████▌ | 203/363 [00:05<00:04, 37.06it/s] Loading 0: 58%|█████▊ | 211/363 [00:05<00:03, 45.82it/s] Loading 0: 60%|█████▉ | 217/363 [00:05<00:03, 43.96it/s] Loading 0: 61%|██████▏ | 223/363 [00:05<00:04, 34.25it/s] Loading 0: 63%|██████▎ | 227/363 [00:05<00:03, 34.31it/s] Loading 0: 64%|██████▎ | 231/363 [00:05<00:04, 32.79it/s] Loading 0: 66%|██████▌ | 238/363 [00:05<00:03, 39.68it/s] Loading 0: 67%|██████▋ | 244/363 [00:06<00:02, 39.81it/s] Loading 0: 69%|██████▊ | 249/363 [00:06<00:02, 38.85it/s] Loading 0: 70%|███████ | 255/363 [00:06<00:02, 42.24it/s] Loading 0: 72%|███████▏ | 260/363 [00:06<00:02, 41.24it/s] Loading 0: 73%|███████▎ | 265/363 [00:06<00:02, 41.11it/s] Loading 0: 74%|███████▍ | 270/363 [00:06<00:02, 43.15it/s] Loading 0: 76%|███████▌ | 275/363 [00:06<00:02, 36.75it/s] Loading 0: 78%|███████▊ | 283/363 [00:06<00:01, 45.40it/s] Loading 0: 80%|███████▉ | 289/363 [00:07<00:01, 43.83it/s] Loading 0: 81%|████████ | 294/363 [00:07<00:01, 40.79it/s] Loading 0: 83%|████████▎ | 301/363 [00:07<00:01, 47.47it/s] Loading 0: 85%|████████▍ | 307/363 [00:14<00:19, 2.82it/s] Loading 0: 86%|████████▌ | 312/363 [00:14<00:13, 3.72it/s] Loading 0: 88%|████████▊ | 320/363 [00:14<00:07, 5.74it/s] Loading 0: 90%|████████▉ | 325/363 [00:14<00:05, 7.37it/s] Loading 0: 91%|█████████ | 330/363 [00:14<00:03, 9.11it/s] Loading 0: 93%|█████████▎| 337/363 [00:14<00:02, 12.95it/s] Loading 0: 94%|█████████▍| 342/363 [00:15<00:01, 15.70it/s] Loading 0: 96%|█████████▌| 347/363 [00:15<00:00, 19.15it/s] Loading 0: 97%|█████████▋| 352/363 [00:15<00:00, 22.96it/s] Loading 0: 98%|█████████▊| 357/363 [00:15<00:00, 23.51it/s]
Job chaiml-test-feed-convo-v1-1e5-v8-mkmlizer completed after 107.32s with status: succeeded
Stopping job with name chaiml-test-feed-convo-v1-1e5-v8-mkmlizer
Pipeline stage MKMLizer completed in 109.10s
run pipeline stage %s
Running pipeline stage MKMLTemplater
Pipeline stage MKMLTemplater completed in 0.10s
run pipeline stage %s
Running pipeline stage MKMLDeployer
Creating inference service chaiml-test-feed-convo-v1-1e5-v8
Waiting for inference service chaiml-test-feed-convo-v1-1e5-v8 to be ready
Inference service chaiml-test-feed-convo-v1-1e5-v8 ready after 161.1964225769043s
Pipeline stage MKMLDeployer completed in 161.59s
run pipeline stage %s
Running pipeline stage StressChecker
Received healthy response to inference request in 3.2739031314849854s
Received healthy response to inference request in 2.169628143310547s
Received healthy response to inference request in 1.674001932144165s
Received healthy response to inference request in 3.150174379348755s
Received healthy response to inference request in 2.89860200881958s
5 requests
0 failed requests
5th percentile: 1.7731271743774415
10th percentile: 1.8722524166107177
20th percentile: 2.0705029010772704
30th percentile: 2.3154229164123534
40th percentile: 2.607012462615967
50th percentile: 2.89860200881958
60th percentile: 2.99923095703125
70th percentile: 3.09985990524292
80th percentile: 3.174920129776001
90th percentile: 3.224411630630493
95th percentile: 3.2491573810577394
99th percentile: 3.268953981399536
mean time: 2.6332619190216064
Pipeline stage StressChecker completed in 15.68s
run pipeline stage %s
Running pipeline stage TriggerMKMLProfilingPipeline
run_pipeline:run_in_cloud %s
starting trigger_guanaco_pipeline args=%s
Pipeline stage TriggerMKMLProfilingPipeline completed in 12.65s
Shutdown handler de-registered
chaiml-test-feed-convo-v1-1e5_v8 status is now deployed due to DeploymentManager action
Shutdown handler registered
run pipeline %s
run pipeline stage %s
Running pipeline stage MKMLProfilerDeleter
Skipping teardown as no inference service was successfully deployed
Pipeline stage MKMLProfilerDeleter completed in 0.11s
run pipeline stage %s
Running pipeline stage MKMLProfilerTemplater
Pipeline stage MKMLProfilerTemplater completed in 0.10s
run pipeline stage %s
Running pipeline stage MKMLProfilerDeployer
Creating inference service chaiml-test-feed-convo-v1-1e5-v8-profiler
Waiting for inference service chaiml-test-feed-convo-v1-1e5-v8-profiler to be ready
Inference service chaiml-test-feed-convo-v1-1e5-v8-profiler ready after 170.42550683021545s
Pipeline stage MKMLProfilerDeployer completed in 170.76s
run pipeline stage %s
Running pipeline stage MKMLProfilerRunner
kubectl cp /code/guanaco/guanaco_inference_services/src/inference_scripts tenant-chaiml-guanaco/chaiml-test-feed-con22e471ccef2eccf7fee8924196bc3842-deplofxslw:/code/chaiverse_profiler_1726081400 --namespace tenant-chaiml-guanaco
kubectl exec -it chaiml-test-feed-con22e471ccef2eccf7fee8924196bc3842-deplofxslw --namespace tenant-chaiml-guanaco -- sh -c 'cd /code/chaiverse_profiler_1726081400 && 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_1726081400/summary.json'
kubectl exec -it chaiml-test-feed-con22e471ccef2eccf7fee8924196bc3842-deplofxslw --namespace tenant-chaiml-guanaco -- bash -c 'cat /code/chaiverse_profiler_1726081400/summary.json'
%s, retrying in %s seconds...
Retrying (%r) after connection broken by '%r': %s
Retrying (%r) after connection broken by '%r': %s
Retrying (%r) after connection broken by '%r': %s
%s, retrying in %s seconds...
Retrying (%r) after connection broken by '%r': %s
Retrying (%r) after connection broken by '%r': %s
Retrying (%r) after connection broken by '%r': %s
clean up pipeline due to error=%s
run pipeline stage %s
Running pipeline stage MKMLProfilerDeleter
Checking if service chaiml-test-feed-convo-v1-1e5-v8-profiler is running
Retrying (%r) after connection broken by '%r': %s
Retrying (%r) after connection broken by '%r': %s
Retrying (%r) after connection broken by '%r': %s
%s, retrying in %s seconds...
Checking if service chaiml-test-feed-convo-v1-1e5-v8-profiler is running
Retrying (%r) after connection broken by '%r': %s
Retrying (%r) after connection broken by '%r': %s
Retrying (%r) after connection broken by '%r': %s
%s, retrying in %s seconds...
Checking if service chaiml-test-feed-convo-v1-1e5-v8-profiler is running
Retrying (%r) after connection broken by '%r': %s
Retrying (%r) after connection broken by '%r': %s
Retrying (%r) after connection broken by '%r': %s
Shutdown handler de-registered
chaiml-test-feed-convo-v1-1e5_v8 status is now inactive due to auto deactivation removed underperforming models