137 lines
6.0 KiB
Python
137 lines
6.0 KiB
Python
import time
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from datetime import datetime
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from llm_server import opts
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from llm_server.database.database import get_distinct_ips_24h, sum_column
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from llm_server.helpers import deep_sort, round_up_base
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from llm_server.llm.info import get_running_model
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from llm_server.netdata import get_power_states
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from llm_server.routes.cache import redis
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from llm_server.routes.queue import priority_queue
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from llm_server.routes.stats import calculate_avg_gen_time, get_active_gen_workers, get_total_proompts, server_start_time
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def calculate_wait_time(gen_time_calc, proompters_in_queue, concurrent_gens, active_gen_workers):
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if active_gen_workers < concurrent_gens:
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return 0
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elif active_gen_workers >= concurrent_gens:
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# Calculate how long it will take to complete the currently running gens and the queued requests.
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# If the proompters in the queue are equal to the number of workers, just use the calculated generation time.
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# Otherwise, use how many requests we can process concurrently times the calculated generation time. Then, round
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# that number up to the nearest base gen_time_calc (ie. if gen_time_calc is 8 and the calculated number is 11.6, we will get 18). Finally,
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# Add gen_time_calc to the time to account for the currently running generations.
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# This assumes that all active workers will finish at the same time, which is unlikely.
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# Regardless, this is the most accurate estimate we can get without tracking worker elapsed times.
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proompters_in_queue_wait_time = gen_time_calc if (proompters_in_queue / concurrent_gens) <= 1 \
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else round_up_base(((proompters_in_queue / concurrent_gens) * gen_time_calc), base=gen_time_calc)
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return proompters_in_queue_wait_time + gen_time_calc if active_gen_workers > 0 else 0
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elif proompters_in_queue == 0 and active_gen_workers == 0:
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# No queue, no workers
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return 0
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else:
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# No queue
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return gen_time_calc
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# TODO: have routes/__init__.py point to the latest API version generate_stats()
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def generate_stats(regen: bool = False):
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if not regen:
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c = redis.get('proxy_stats', dict)
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if c:
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return c
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model_name, error = get_running_model() # will return False when the fetch fails
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if isinstance(model_name, bool):
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online = False
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else:
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online = True
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redis.set('running_model', model_name)
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# t = elapsed_times.copy() # copy since we do multiple operations and don't want it to change
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# if len(t) == 0:
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# estimated_wait = 0
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# else:
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# waits = [elapsed for end, elapsed in t]
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# estimated_wait = int(sum(waits) / len(waits))
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active_gen_workers = get_active_gen_workers()
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proompters_in_queue = len(priority_queue)
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estimated_avg_tps = redis.get('estimated_avg_tps', float, default=0)
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if opts.average_generation_time_mode == 'database':
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average_generation_time = redis.get('average_generation_elapsed_sec', float, default=0)
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# What to use in our math that calculates the wait time.
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# We could use the average TPS but we don't know the exact TPS value, only
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# the backend knows that. So, let's just stick with the elapsed time.
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gen_time_calc = average_generation_time
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estimated_wait_sec = calculate_wait_time(gen_time_calc, proompters_in_queue, opts.concurrent_gens, active_gen_workers)
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elif opts.average_generation_time_mode == 'minute':
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average_generation_time = calculate_avg_gen_time()
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gen_time_calc = average_generation_time
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estimated_wait_sec = ((gen_time_calc * proompters_in_queue) / opts.concurrent_gens) + (active_gen_workers * gen_time_calc)
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else:
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raise Exception
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if opts.netdata_root:
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netdata_stats = {}
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power_states = get_power_states()
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for gpu, power_state in power_states.items():
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netdata_stats[gpu] = {
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'power_state': power_state,
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# 'wh_wasted_1_hr': get_gpu_wh(int(gpu.strip('gpu')))
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}
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else:
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netdata_stats = {}
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base_client_api = redis.get('base_client_api', str)
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proompters_5_min = redis.get('proompters_5_min', int)
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output = {
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'stats': {
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'proompters': {
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'5_min': proompters_5_min,
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'24_hrs': get_distinct_ips_24h(),
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},
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'proompts_total': get_total_proompts() if opts.show_num_prompts else None,
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'uptime': int((datetime.now() - server_start_time).total_seconds()) if opts.show_uptime else None,
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'average_generation_elapsed_sec': int(gen_time_calc),
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'estimated_avg_tps': estimated_avg_tps,
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'tokens_generated': sum_column('prompts', 'response_tokens') if opts.show_total_output_tokens else None,
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'nvidia': netdata_stats
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},
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'online': online,
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'endpoints': {
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'blocking': f'https://{base_client_api}',
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'streaming': f'wss://{base_client_api}/v1/stream' if opts.enable_streaming else None,
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},
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'queue': {
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'processing': active_gen_workers,
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'queued': proompters_in_queue,
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'estimated_wait_sec': int(estimated_wait_sec),
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},
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'timestamp': int(time.time()),
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'config': {
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'gatekeeper': 'none' if opts.auth_required is False else 'token',
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'context_size': opts.context_size,
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'concurrent': opts.concurrent_gens,
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'model': opts.manual_model_name if opts.manual_model_name else model_name,
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'mode': opts.mode,
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'simultaneous_requests_per_ip': opts.simultaneous_requests_per_ip,
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},
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'keys': {
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'openaiKeys': '∞',
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'anthropicKeys': '∞',
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},
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'backend_info': redis.get_dict('backend_info') if opts.show_backend_info else None,
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}
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result = deep_sort(output)
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# It may take a bit to get the base client API, so don't cache until then.
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if base_client_api:
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redis.set_dict('proxy_stats', result) # Cache with no expiry
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return result
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