Compare commits

..

8 Commits

Author SHA1 Message Date
Lucas Armand 405a8f1c0d returned to worker-sdk 2025-12-10 16:37:09 -08:00
Lucas Armand 12f4f23d39 remove parse request 2025-12-10 15:16:23 -08:00
Lucas Armand e2a771bb5a update ace and wan workers 2025-12-10 15:09:27 -08:00
Lucas Armand 0cd64adfc4 remove input 2025-12-10 14:47:47 -08:00
Lucas Armand 6f795b8fb8 remove input from workers 2025-12-10 14:46:10 -08:00
Lucas Armand 4bcc508473 reduce vllm benchmark runs to 2 2025-11-25 16:54:17 -08:00
Lucas Armand 74d7330800 add wan and ace workers 2025-11-25 16:08:40 -08:00
Lucas Armand 2ce0450809 Add worker.pys 2025-11-25 16:08:38 -08:00
9 changed files with 756 additions and 62 deletions
+1 -1
View File
@@ -8,4 +8,4 @@ Requests~=2.32
transformers~=4.52 transformers~=4.52
utils==1.0.* utils==1.0.*
hf_transfer>=0.1.9 hf_transfer>=0.1.9
vastai-sdk>=0.2.0 git+https://github.com/vast-ai/vast-sdk.git@worker-sdk
+12 -1
View File
@@ -133,8 +133,19 @@ cd "$SERVER_DIR"
echo "launching PyWorker server" echo "launching PyWorker server"
set +e set +e
python3 -m "workers.$BACKEND.server" |& tee -a "$PYWORKER_LOG"
# Try worker entrypoint first
echo "trying workers.${BACKEND}.worker"
python3 -m "workers.${BACKEND}.worker" |& tee -a "$PYWORKER_LOG"
PY_STATUS=${PIPESTATUS[0]} PY_STATUS=${PIPESTATUS[0]}
# If that fails, fall back to server
if [ "${PY_STATUS}" -ne 0 ]; then
echo "workers.${BACKEND}.worker failed with status ${PY_STATUS}, trying workers.${BACKEND}.server"
python3 -m "workers.${BACKEND}.server" |& tee -a "$PYWORKER_LOG"
PY_STATUS=${PIPESTATUS[0]}
fi
set -e set -e
if [ "${PY_STATUS}" -ne 0 ]; then if [ "${PY_STATUS}" -ne 0 ]; then
+184
View File
@@ -0,0 +1,184 @@
import random
import sys
from vastai import Worker, WorkerConfig, HandlerConfig, LogActionConfig, BenchmarkConfig
# ComyUI model configuration
MODEL_SERVER_URL = 'http://127.0.0.1'
MODEL_SERVER_PORT = 18288
MODEL_LOG_FILE = '/var/log/portal/comfyui.log'
MODEL_HEALTHCHECK_ENDPOINT = "/health"
# ComyUI-specific log messages
MODEL_LOAD_LOG_MSG = [
"To see the GUI go to: "
]
MODEL_ERROR_LOG_MSGS = [
"MetadataIncompleteBuffer",
"Value not in list: ",
"[ERROR] Provisioning Script failed"
]
MODEL_INFO_LOG_MSGS = [
'"message":"Downloading'
]
benchmark_lyrics = [
"[verse]\nGuardian cloaked in twilight hue\nShadows melt where he breaks through\nEchoes swirl in mystic flight\nHooded hero owns the night\n\n[verse]\nThrough the chaos shapes arise\nFeral whispers, glowing eyes\nOrcs and creatures side by side\nMarch within the inky tide\n\n[chorus]\nRise above the fear and gloom\nLet your courage fully bloom\nIn the darkness stand your ground\nHear the night proclaim your sound",
"[verse]\nMorning sun on fields of gold\nGentle stories unfold\nEvery breeze a quiet song\nWhere the peaceful hearts belong\n\n[verse]\nLanterns glow at stable doors\nRustling leaves on orchard floors\nSimple joys in every hand\nLife grows soft in fertile land\n\n[chorus]\nLet the day drift slow and free\nRoot your soul where you can be\nIn this haven warm and bright\nFeel the earth breathe pure delight",
"[verse]\nLittle feet on dusty ground\nChasing dreams without a sound\nSoccer ball in morning light\nHopes take wing in youthful flight\n\n[verse]\nChrome reflections paint the day\nSwagger in the steps that play\nCopper tones in shining air\nChildhood gleaming everywhere\n\n[chorus]\nKick the world with boundless cheer\nHold the magic close and near\nIn each moment bold and true\nLet the sky belong to you",
"[verse]\nSunset bleeds across the street\nGilded calm in summer heat\nLow-rise towers rimmed with fire\nDreams ignite as lights climb higher\n\n[verse]\nFootsteps scatter through the haze\nFutures shimmer in the blaze\nEvery window tells a tale\nFloating through a tangerine veil\n\n[chorus]\nLet the neon softly glow\nLet your restless heartbeat slow\nIn this city forged in light\nCarry hope into the night",
"[verse]\nOcean breathes in rolling arcs\nSprays of diamond, glowing sparks\nWaves unfold a perfect line\nNatures rhythm feels divine\n\n[verse]\nSun above in golden sweep\nPaints the rise of every deep\nShimmer drifting through the blue\nWorld reborn in every view\n\n[chorus]\nLet the tide pull you along\nHear the waters ancient song\nIn the cresting waves youll find\nQuiet peace for heart and mind",
"[verse]\nGlass aglow with swirling light\nFruits and mints in colors bright\nIcy whispers clink and chime\nFlowing forms suspend in time\n\n[verse]\nCreamy spirals drift within\nGentle currents slowly spin\nWarm reflections lingering sweet\nMixing flavors at your feet\n\n[chorus]\nSip the glow and let it rise\nTaste the sunset in disguise\nIn this moment clear and true\nLet the warmth flow into you",
"[verse]\nEngines rumble down the lane\nCopper clouds of steam and rain\nOilpunk dreams in metal shine\nRider drifting down the line\n\n[verse]\nLeather jacket, steady glare\nStories sparking in the air\nMagazine lights frame his face\nKing of roads in timeless grace\n\n[chorus]\nThrottle up beyond the bend\nFeel the force of steel ascend\nRide the night and hold on tight\nClaim the world in streaks of light",
"[verse]\nCut-out shapes in swirling play\nTextures dance in bold array\nCats in denim, grinning wide\nStrut across the patterned tide\n\n[verse]\nPosters hum with neon glow\nSurreal scenes begin to grow\nColors crisp as folded art\nPatchwork beating like a heart\n\n[chorus]\nLet the collage come alive\nWatch the vibrant pieces thrive\nIn this joyful, crafted space\nEvery shape finds its own place",
"[verse]\nTiny world in crystal glass\nAncient tales behind the mass\nVillage lights in winter gleam\nFrozen in a mystic dream\n\n[verse]\nLantern beams in swirling air\nSoft enchantment everywhere\nShadows drift with gentle grace\nMagic sealed within the space\n\n[chorus]\nHold the sphere and you will see\nEchoes of a memory\nIn the glow of fragile light\nLives a realm of pure delight",
"[verse]\nArmor hums with power bright\nChopping sparks in jungle night\nMecha spirits shift and scream\nThrough the ferns like shattered beams\n\n[verse]\nAxes blaze in glowing arcs\nLighting up the shadowed marks\nNature roars in trembling air\nClash of steel and cosmic flare\n\n[chorus]\nRaise the fire, strike the ground\nLet your legend shake the sound\nIn the wild where echoes roam\nForge the fight and carve your home",
"[verse]\nCrowds ignite in vibrant flare\nBeats explode through smoky air\nDJ robes replaced with flame\nPope on decks in holy frame\n\n[verse]\nLeather gleams in blinding light\nTurntables spin with sacred might\nChoirs echo in the bass\nHeaven pulses through the place\n\n[chorus]\nLift the roof and shake the floor\nSacred rhythm evermore\nLet the music take control\nFeel the blessing in your soul",
]
benchmark_dataset = [
{
"input": {
"request_id": "",
"workflow_json": {
"14": {
"inputs": {
"tags": "funk, pop, soul, rock, melodic, guitar, drums, bass, keyboard, percussion, 105 BPM, energetic, upbeat, groovy, vibrant, dynamic",
"lyrics": lyrics,
"lyrics_strength": 0.99,
"clip": ["40", 1]
},
"class_type": "TextEncodeAceStepAudio",
"_meta": {
"title": "TextEncodeAceStepAudio"
}
},
"17": {
"inputs": {
"seconds": 180,
"batch_size": 1
},
"class_type": "EmptyAceStepLatentAudio",
"_meta": {
"title": "EmptyAceStepLatentAudio"
}
},
"18": {
"inputs": {
"samples": ["52", 0],
"vae": ["40", 2]
},
"class_type": "VAEDecodeAudio",
"_meta": {
"title": "VAE Decode Audio"
}
},
"40": {
"inputs": {
"ckpt_name": "ace_step_v1_3.5b.safetensors"
},
"class_type": "CheckpointLoaderSimple",
"_meta": {
"title": "Load Checkpoint"
}
},
"44": {
"inputs": {
"conditioning": ["14", 0]
},
"class_type": "ConditioningZeroOut",
"_meta": {
"title": "ConditioningZeroOut"
}
},
"49": {
"inputs": {
"model": ["51", 0],
"operation": ["50", 0]
},
"class_type": "LatentApplyOperationCFG",
"_meta": {
"title": "LatentApplyOperationCFG"
}
},
"50": {
"inputs": {
"multiplier": 1.15
},
"class_type": "LatentOperationTonemapReinhard",
"_meta": {
"title": "LatentOperationTonemapReinhard"
}
},
"51": {
"inputs": {
"shift": 6,
"model": ["40", 0]
},
"class_type": "ModelSamplingSD3",
"_meta": {
"title": "ModelSamplingSD3"
}
},
"52": {
"inputs": {
"seed": "__RANDOM_INT__",
"steps": 65,
"cfg": 4,
"sampler_name": "er_sde",
"scheduler": "linear_quadratic",
"denoise": 1,
"model": ["49", 0],
"positive": ["14", 0],
"negative": ["44", 0],
"latent_image": ["17", 0]
},
"class_type": "KSampler",
"_meta": {
"title": "KSampler"
}
},
"59": {
"inputs": {
"filename_prefix": "audio/ComfyUI",
"quality": "V0",
"audioUI": "",
"audio": ["18", 0]
},
"class_type": "SaveAudioMP3",
"_meta": {
"title": "Save Audio (MP3)"
}
}
}
}
} for lyrics in benchmark_lyrics
]
worker_config = WorkerConfig(
model_server_url=MODEL_SERVER_URL,
model_server_port=MODEL_SERVER_PORT,
model_log_file=MODEL_LOG_FILE,
model_healthcheck_url=MODEL_HEALTHCHECK_ENDPOINT,
handlers=[
HandlerConfig(
route="/generate/sync",
allow_parallel_requests=False,
max_queue_time=10.0,
benchmark_config=BenchmarkConfig(
dataset=benchmark_dataset,
runs=1
),
workload_calculator= lambda _ : 1000.0
)
],
log_action_config=LogActionConfig(
on_load=MODEL_LOAD_LOG_MSG,
on_error=MODEL_ERROR_LOG_MSGS,
on_info=MODEL_INFO_LOG_MSGS
)
)
Worker(worker_config).run()
+81
View File
@@ -0,0 +1,81 @@
import random
import sys
from vastai import Worker, WorkerConfig, HandlerConfig, LogActionConfig, BenchmarkConfig
# ComyUI model configuration
MODEL_SERVER_URL = 'http://127.0.0.1'
MODEL_SERVER_PORT = 18288
MODEL_LOG_FILE = '/var/log/portal/comfyui.log'
MODEL_HEALTHCHECK_ENDPOINT = "/health"
# ComyUI-specific log messages
MODEL_LOAD_LOG_MSG = [
"To see the GUI go to: "
]
MODEL_ERROR_LOG_MSGS = [
"MetadataIncompleteBuffer",
"Value not in list: ",
"[ERROR] Provisioning Script failed"
]
MODEL_INFO_LOG_MSGS = [
'"message":"Downloading'
]
benchmark_prompts = [
"Cartoon hoodie hero; orc, anime cat, bunny; black goo; buff; vector on white.",
"Cozy farming-game scene with fine details.",
"2D vector child with soccer ball; airbrush chrome; swagger; antique copper.",
"Realistic futuristic downtown of low buildings at sunset.",
"Perfect wave front view; sunny seascape; ultra-detailed water; artful feel.",
"Clear cup with ice, fruit, mint; creamy swirls; fluid-sim CGI; warm glow.",
"Male biker with backpack on motorcycle; oilpunk; award-worthy magazine cover.",
"Collage for textile; surreal cartoon cat in cap/jeans before poster; crisp.",
"Medieval village inside glass sphere; volumetric light; macro focus.",
"Iron Man with glowing axe; mecha sci-fi; jungle scene; dynamic light.",
"Pope Francis DJ in leather jacket, mixing on giant console; dramatic.",
]
benchmark_dataset = [
{
"input": {
"request_id": f"test-{random.randint(1000, 99999)}",
"modifier": "Text2Image",
"modifications": {
"prompt": prompt,
"width": 512,
"height": 512,
"steps": 20,
"seed": random.randint(0, sys.maxsize)
}
}
} for prompt in benchmark_prompts
]
worker_config = WorkerConfig(
model_server_url=MODEL_SERVER_URL,
model_server_port=MODEL_SERVER_PORT,
model_log_file=MODEL_LOG_FILE,
model_healthcheck_url=MODEL_HEALTHCHECK_ENDPOINT,
handlers=[
HandlerConfig(
route="/generate/sync",
allow_parallel_requests=False,
max_queue_time=10.0,
benchmark_config=BenchmarkConfig(
dataset=benchmark_dataset,
)
)
],
log_action_config=LogActionConfig(
on_load=MODEL_LOAD_LOG_MSG,
on_error=MODEL_ERROR_LOG_MSGS,
on_info=MODEL_INFO_LOG_MSGS
)
)
Worker(worker_config).run()
+19 -27
View File
@@ -34,30 +34,12 @@ uv pip install -r requirements.txt
Several examples have been provided in the client to help you get started with your own implementation. Several examples have been provided in the client to help you get started with your own implementation.
First, set your API key as an environment variable: ### Completions
Call to `/v1/completions` with json response
```bash ```bash
export VAST_API_KEY=<your_api_key> python -m workers.openai.client -k <API_KEY> -e <ENDPOINT_NAME> --completion --model <MODEL_NAME>
```
The `--model` and `--endpoint` flags are optional. If not provided, they default to `Qwen/Qwen3-8B` and `my-vllm-endpoint` respectively.
### Chat Completion (streaming)
Call to `/v1/chat/completions` with streaming response
```bash
python -m workers.openai.client --chat-stream --endpoint <ENDPOINT_NAME> --model <MODEL_NAME>
```
### Interactive Chat (streaming)
Interactive session with calls to `/v1/chat/completions`.
Type `clear` to clear the chat history or `quit` to exit.
```bash
python -m workers.openai.client --interactive --endpoint <ENDPOINT_NAME> --model <MODEL_NAME>
``` ```
### Chat Completion (json) ### Chat Completion (json)
@@ -65,7 +47,15 @@ python -m workers.openai.client --interactive --endpoint <ENDPOINT_NAME> --model
Call to `/v1/chat/completions` with json response Call to `/v1/chat/completions` with json response
```bash ```bash
python -m workers.openai.client --chat --endpoint <ENDPOINT_NAME> --model <MODEL_NAME> python -m workers.openai.client -k <API_KEY> -e <ENDPOINT_NAME> --chat --model <MODEL_NAME>
```
### Chat Completion (streaming)
Call to `/v1/chat/completions` with streaming response
```bash
python -m workers.openai.client -k <API_KEY> -e <ENDPOINT_NAME> --chat-stream --model <MODEL_NAME>
``` ```
### Tool Use (json) ### Tool Use (json)
@@ -75,14 +65,16 @@ Call to `/v1/chat/completions` with tool and json response.
This test defines a simple tool which will list the contents of the local pyworker directory. The output is then analysed by the model. This test defines a simple tool which will list the contents of the local pyworker directory. The output is then analysed by the model.
```bash ```bash
python -m workers.openai.client --tools --endpoint <ENDPOINT_NAME> --model <MODEL_NAME> python -m workers.openai.client -k <API_KEY> -e <ENDPOINT_NAME> --tools --model <MODEL_NAME>
``` ```
### Completions ### Interactive Chat (streaming)
Call to `/v1/completions` with json response Interactive session with calls to `/v1/chat/completions`.
Type `clear` to clear the chat history or `quit` to exit.
```bash ```bash
python -m workers.openai.client --completion --endpoint <ENDPOINT_NAME> --model <MODEL_NAME> python -m workers.openai.client -k <API_KEY> -e <ENDPOINT_NAME> --interactive --model <MODEL_NAME>
``` ```
+15 -31
View File
@@ -18,7 +18,7 @@ logging.basicConfig(
log = logging.getLogger(__file__) log = logging.getLogger(__file__)
# ---------------------- Prompts ---------------------- # ---------------------- Prompts ----------------------
COMPLETIONS_PROMPT = "Zebras are primarily grazers and can subsist on lower-quality vegetation. They are preyed on mainly by" COMPLETIONS_PROMPT = "the capital of USA is"
CHAT_PROMPT = "Think step by step: Tell me about the Python programming language." CHAT_PROMPT = "Think step by step: Tell me about the Python programming language."
TOOLS_PROMPT = ( TOOLS_PROMPT = (
"Can you list the files in the current working directory and tell me what you see? " "Can you list the files in the current working directory and tell me what you see? "
@@ -97,9 +97,9 @@ def _tool_state_to_message_tool_calls(state: Dict[int, Dict[str, Any]]) -> List[
# ---- OpenAI-compatible calls (non-streaming) ---- # ---- OpenAI-compatible calls (non-streaming) ----
async def call_completions(client: Serverless, *, model: str, prompt: str, endpoint_name: str, **kwargs) -> Dict[str, Any]: async def call_completions(client: Serverless, *, model: str, prompt: str, **kwargs) -> Dict[str, Any]:
endpoint = await client.get_endpoint(name=endpoint_name) endpoint = await client.get_endpoint(name=ENDPOINT_NAME)
payload = { payload = {
"input": { "input": {
@@ -113,9 +113,9 @@ async def call_completions(client: Serverless, *, model: str, prompt: str, endpo
resp = await endpoint.request("/v1/completions", payload, cost=payload["input"]["max_tokens"]) resp = await endpoint.request("/v1/completions", payload, cost=payload["input"]["max_tokens"])
return resp["response"] return resp["response"]
async def call_chat_completions(client: Serverless, *, model: str, messages: List[Dict[str, Any]], endpoint_name: str, **kwargs) -> Dict[str, Any]: async def call_chat_completions(client: Serverless, *, model: str, messages: List[Dict[str, Any]], **kwargs) -> Dict[str, Any]:
endpoint = await client.get_endpoint(name=endpoint_name) endpoint = await client.get_endpoint(name=ENDPOINT_NAME)
payload = { payload = {
"input": { "input": {
@@ -132,9 +132,9 @@ async def call_chat_completions(client: Serverless, *, model: str, messages: Lis
return resp["response"] return resp["response"]
# ---- Streaming variants ---- # ---- Streaming variants ----
async def stream_completions(client: Serverless, *, model: str, prompt: str, endpoint_name: str, **kwargs): async def stream_completions(client: Serverless, *, model: str, prompt: str, **kwargs):
endpoint = await client.get_endpoint(name=endpoint_name) endpoint = await client.get_endpoint(name=ENDPOINT_NAME)
payload = { payload = {
"input": { "input": {
@@ -150,9 +150,9 @@ async def stream_completions(client: Serverless, *, model: str, prompt: str, end
resp = await endpoint.request("/v1/completions", payload, cost=payload["input"]["max_tokens"], stream=True) resp = await endpoint.request("/v1/completions", payload, cost=payload["input"]["max_tokens"], stream=True)
return resp["response"] # async generator return resp["response"] # async generator
async def stream_chat_completions(client: Serverless, *, model: str, messages: List[Dict[str, Any]], endpoint_name: str, **kwargs): async def stream_chat_completions(client: Serverless, *, model: str, messages: List[Dict[str, Any]], **kwargs):
endpoint = await client.get_endpoint(name=endpoint_name) endpoint = await client.get_endpoint(name=ENDPOINT_NAME)
payload = { payload = {
"input": { "input": {
@@ -174,10 +174,9 @@ async def stream_chat_completions(client: Serverless, *, model: str, messages: L
class APIDemo: class APIDemo:
"""Demo and testing functionality for the API client""" """Demo and testing functionality for the API client"""
def __init__(self, client: Serverless, model: str, endpoint_name: str, tool_manager: Optional[ToolManager] = None): def __init__(self, client: Serverless, model: str, tool_manager: Optional[ToolManager] = None):
self.client = client self.client = client
self.model = model self.model = model
self.endpoint_name = endpoint_name
self.tool_manager = tool_manager or ToolManager() self.tool_manager = tool_manager or ToolManager()
# ----- Streaming handler ----- # ----- Streaming handler -----
@@ -186,16 +185,11 @@ class APIDemo:
reasoning_content = "" reasoning_content = ""
printed_reasoning = False printed_reasoning = False
printed_answer = False printed_answer = False
finish_reason = None
async for chunk in stream: async for chunk in stream:
choice = (chunk.get("choices") or [{}])[0] choice = (chunk.get("choices") or [{}])[0]
delta = choice.get("delta", {}) delta = choice.get("delta", {})
# Track finish reason
if choice.get("finish_reason"):
finish_reason = choice.get("finish_reason")
# reasoning tokens # reasoning tokens
rc = delta.get("reasoning_content") rc = delta.get("reasoning_content")
if rc and show_reasoning: if rc and show_reasoning:
@@ -225,8 +219,6 @@ class APIDemo:
print(f"Reasoning tokens: {len(reasoning_content.split())}") print(f"Reasoning tokens: {len(reasoning_content.split())}")
if printed_answer: if printed_answer:
print(f"Response tokens: {len(full_response.split())}") print(f"Response tokens: {len(full_response.split())}")
if finish_reason:
print(f"Finish reason: {finish_reason}")
return full_response return full_response
@@ -239,7 +231,6 @@ class APIDemo:
client=self.client, client=self.client,
model=self.model, model=self.model,
prompt=COMPLETIONS_PROMPT, prompt=COMPLETIONS_PROMPT,
endpoint_name=self.endpoint_name,
max_tokens=MAX_TOKENS, max_tokens=MAX_TOKENS,
temperature=DEFAULT_TEMPERATURE, temperature=DEFAULT_TEMPERATURE,
) )
@@ -258,7 +249,6 @@ class APIDemo:
client=self.client, client=self.client,
model=self.model, model=self.model,
messages=messages, messages=messages,
endpoint_name=self.endpoint_name,
max_tokens=MAX_TOKENS, max_tokens=MAX_TOKENS,
temperature=DEFAULT_TEMPERATURE temperature=DEFAULT_TEMPERATURE
) )
@@ -271,7 +261,6 @@ class APIDemo:
client=self.client, client=self.client,
model=self.model, model=self.model,
messages=messages, messages=messages,
endpoint_name=self.endpoint_name,
max_tokens=MAX_TOKENS, max_tokens=MAX_TOKENS,
temperature=DEFAULT_TEMPERATURE temperature=DEFAULT_TEMPERATURE
) )
@@ -298,7 +287,6 @@ class APIDemo:
client=self.client, client=self.client,
model=self.model, model=self.model,
messages=messages, messages=messages,
endpoint_name=self.endpoint_name,
tools=minimal_tool, tools=minimal_tool,
tool_choice="none", tool_choice="none",
max_tokens=10 max_tokens=10
@@ -324,7 +312,6 @@ class APIDemo:
client=self.client, client=self.client,
model=self.model, model=self.model,
messages=messages, messages=messages,
endpoint_name=self.endpoint_name,
tools=self.tool_manager.get_ls_tool_definition(), tools=self.tool_manager.get_ls_tool_definition(),
tool_choice="auto", tool_choice="auto",
max_tokens=MAX_TOKENS, max_tokens=MAX_TOKENS,
@@ -402,7 +389,6 @@ class APIDemo:
client=self.client, client=self.client,
model=self.model, model=self.model,
messages=messages, messages=messages,
endpoint_name=self.endpoint_name,
max_tokens=MAX_TOKENS, max_tokens=MAX_TOKENS,
temperature=DEFAULT_TEMPERATURE, temperature=DEFAULT_TEMPERATURE,
) )
@@ -441,6 +427,7 @@ class APIDemo:
print("=" * 60) print("=" * 60)
print("INTERACTIVE STREAMING CHAT") print("INTERACTIVE STREAMING CHAT")
print("=" * 60) print("=" * 60)
print(f"Using model: {self.model}")
print("Type 'quit' to exit, 'clear' to clear history") print("Type 'quit' to exit, 'clear' to clear history")
print() print()
@@ -467,7 +454,6 @@ class APIDemo:
client=self.client, client=self.client,
model=self.model, model=self.model,
messages=messages, messages=messages,
endpoint_name=self.endpoint_name,
max_tokens=MAX_TOKENS, max_tokens=MAX_TOKENS,
temperature=0.7 temperature=0.7
) )
@@ -487,8 +473,8 @@ class APIDemo:
# ---------------------- CLI ---------------------- # ---------------------- CLI ----------------------
def build_arg_parser() -> argparse.ArgumentParser: def build_arg_parser() -> argparse.ArgumentParser:
p = argparse.ArgumentParser(description="Vast vLLM Demo (Serverless SDK)") p = argparse.ArgumentParser(description="Vast vLLM Demo (Serverless SDK)")
p.add_argument("--model", default=DEFAULT_MODEL, help=f"Model to use for requests (default: {DEFAULT_MODEL})") p.add_argument("--model", required=True, help="Model to use for requests (required)")
p.add_argument("--endpoint", default=ENDPOINT_NAME, help=f"Vast endpoint name (default: {ENDPOINT_NAME})") p.add_argument("--endpoint", default="my-vllm-endpoint", help="Vast endpoint name (default: my-vllm-endpoint)")
modes = p.add_mutually_exclusive_group(required=False) modes = p.add_mutually_exclusive_group(required=False)
modes.add_argument("--completion", action="store_true", help="Test completions endpoint") modes.add_argument("--completion", action="store_true", help="Test completions endpoint")
@@ -516,14 +502,12 @@ async def main_async():
print("Please specify exactly one test mode") print("Please specify exactly one test mode")
sys.exit(1) sys.exit(1)
print("=" * 60)
print(f"Using model: {args.model}") print(f"Using model: {args.model}")
print(f"Using endpoint: {args.endpoint}") print("=" * 60)
try: try:
async with Serverless() as client: async with Serverless() as client:
demo = APIDemo(client, args.model, args.endpoint, ToolManager()) demo = APIDemo(client, args.model, ToolManager())
if args.completion: if args.completion:
await demo.demo_completions() await demo.demo_completions()
+78
View File
@@ -0,0 +1,78 @@
import nltk
import random
import os
from vastai import Worker, WorkerConfig, HandlerConfig, LogActionConfig, BenchmarkConfig
# vLLM model configuration
MODEL_SERVER_URL = 'http://127.0.0.1'
MODEL_SERVER_PORT = 18000
MODEL_LOG_FILE = '/var/log/portal/vllm.log'
MODEL_HEALTHCHECK_ENDPOINT = "/health"
# vLLM-specific log messages
MODEL_LOAD_LOG_MSG = [
"Application startup complete.",
]
MODEL_ERROR_LOG_MSGS = [
"INFO exited: vllm",
"RuntimeError: Engine",
"Traceback (most recent call last):"
]
MODEL_INFO_LOG_MSGS = [
'"message":"Download'
]
nltk.download("words")
WORD_LIST = nltk.corpus.words.words()
def completions_benchmark_generator() -> dict:
prompt = " ".join(random.choices(WORD_LIST, k=int(250)))
model = os.environ.get("MODEL_NAME")
if not model:
raise ValueError("MODEL_NAME environment variable not set")
benchmark_data = {
"model": model,
"prompt": prompt,
"temperature": 0.7,
"max_tokens": 500,
}
return benchmark_data
worker_config = WorkerConfig(
model_server_url=MODEL_SERVER_URL,
model_server_port=MODEL_SERVER_PORT,
model_log_file=MODEL_LOG_FILE,
model_healthcheck_url=MODEL_HEALTHCHECK_ENDPOINT,
handlers=[
HandlerConfig(
route="/v1/completions",
workload_calculator= lambda data: data.get("max_tokens", 0),
allow_parallel_requests=True,
max_queue_time=60.0,
benchmark_config=BenchmarkConfig(
generator=completions_benchmark_generator,
concurrency=100,
runs=2
)
),
HandlerConfig(
route="/v1/chat/completions",
workload_calculator= lambda data: data.get("max_tokens", 0),
allow_parallel_requests=True,
max_queue_time=60.0,
)
],
log_action_config=LogActionConfig(
on_load=MODEL_LOAD_LOG_MSG,
on_error=MODEL_ERROR_LOG_MSGS,
on_info=MODEL_INFO_LOG_MSGS
)
)
Worker(worker_config).run()
+76
View File
@@ -0,0 +1,76 @@
import nltk
import random
from vastai import Worker, WorkerConfig, HandlerConfig, LogActionConfig, BenchmarkConfig
# TGI model configuration
MODEL_SERVER_URL = 'http://0.0.0.0'
MODEL_SERVER_PORT = 5001
MODEL_LOG_FILE = "/workspace/infer.log"
MODEL_HEALTHCHECK_ENDPOINT = "/health"
# TGI-specific log messages
MODEL_LOAD_LOG_MSG = [
'"message":"Connected","target":"text_generation_router"',
'"message":"Connected","target":"text_generation_router::server"',
]
MODEL_ERROR_LOG_MSGS = [
"Error: WebserverFailed",
"Error: DownloadError",
"Error: ShardCannotStart",
]
MODEL_INFO_LOG_MSGS = [
'"message":"Download'
]
nltk.download("words")
WORD_LIST = nltk.corpus.words.words()
def benchmark_generator() -> dict:
prompt = " ".join(random.choices(WORD_LIST, k=int(250)))
benchmark_data = {
"inputs": prompt,
"parameters": {
"max_new_tokens": 128,
"temperature": 0.7,
"return_full_text": False
}
}
return benchmark_data
worker_config = WorkerConfig(
model_server_url=MODEL_SERVER_URL,
model_server_port=MODEL_SERVER_PORT,
model_log_file=MODEL_LOG_FILE,
model_healthcheck_url=MODEL_HEALTHCHECK_ENDPOINT,
handlers=[
HandlerConfig(
route="/generate",
allow_parallel_requests=True,
max_queue_time=60.0,
benchmark_config=BenchmarkConfig(
generator=benchmark_generator,
concurrency=50
),
workload_calculator= lambda x: x["parameters"]["max_new_tokens"]
),
HandlerConfig(
route="/generate_stream",
allow_parallel_requests=True,
max_queue_time=60.0,
workload_calculator= lambda x: x["parameters"]["max_new_tokens"]
)
],
log_action_config=LogActionConfig(
on_load=MODEL_LOAD_LOG_MSG,
on_error=MODEL_ERROR_LOG_MSGS,
on_info=MODEL_INFO_LOG_MSGS
)
)
Worker(worker_config).run()
+288
View File
@@ -0,0 +1,288 @@
import random
import sys
from vastai import Worker, WorkerConfig, HandlerConfig, LogActionConfig, BenchmarkConfig
# ComyUI model configuration
MODEL_SERVER_URL = 'http://127.0.0.1'
MODEL_SERVER_PORT = 18288
MODEL_LOG_FILE = '/var/log/portal/comfyui.log'
MODEL_HEALTHCHECK_ENDPOINT = "/health"
# ComyUI-specific log messages
MODEL_LOAD_LOG_MSG = [
"To see the GUI go to: "
]
MODEL_ERROR_LOG_MSGS = [
"MetadataIncompleteBuffer",
"Value not in list: ",
"[ERROR] Provisioning Script failed"
]
MODEL_INFO_LOG_MSGS = [
'"message":"Downloading'
]
benchmark_prompts = [
"Cartoon hoodie hero; orc, anime cat, bunny; black goo; buff; vector on white.",
"Cozy farming-game scene with fine details.",
"2D vector child with soccer ball; airbrush chrome; swagger; antique copper.",
"Realistic futuristic downtown of low buildings at sunset.",
"Perfect wave front view; sunny seascape; ultra-detailed water; artful feel.",
"Clear cup with ice, fruit, mint; creamy swirls; fluid-sim CGI; warm glow.",
"Male biker with backpack on motorcycle; oilpunk; award-worthy magazine cover.",
"Collage for textile; surreal cartoon cat in cap/jeans before poster; crisp.",
"Medieval village inside glass sphere; volumetric light; macro focus.",
"Iron Man with glowing axe; mecha sci-fi; jungle scene; dynamic light.",
"Pope Francis DJ in leather jacket, mixing on giant console; dramatic.",
]
benchmark_dataset = [
{
"input": {
"workflow_json": {
"90": {
"inputs": {
"clip_name": "umt5_xxl_fp8_e4m3fn_scaled.safetensors",
"type": "wan",
"device": "default"
},
"class_type": "CLIPLoader",
"_meta": {
"title": "Load CLIP"
}
},
"91": {
"inputs": {
"text": "色调艳丽,过曝,静态,细节模糊不清,字幕,风格,作品,画作,画面,静止,整体发灰,最差质量,低质量,JPEG压缩残留,丑陋的,残缺的,多余的手指,画得不好的手部,画得不好的脸部,畸形的,毁容的,形态畸形的肢体,手指融合,静止不动的画面,杂乱的背景,三条腿,背景人很多,倒着走,裸露,NSFW",
"clip": [
"90",
0
]
},
"class_type": "CLIPTextEncode",
"_meta": {
"title": "CLIP Text Encode (Negative Prompt)"
}
},
"92": {
"inputs": {
"vae_name": "wan_2.1_vae.safetensors"
},
"class_type": "VAELoader",
"_meta": {
"title": "Load VAE"
}
},
"93": {
"inputs": {
"shift": 8.000000000000002,
"model": [
"101",
0
]
},
"class_type": "ModelSamplingSD3",
"_meta": {
"title": "ModelSamplingSD3"
}
},
"94": {
"inputs": {
"shift": 8,
"model": [
"102",
0
]
},
"class_type": "ModelSamplingSD3",
"_meta": {
"title": "ModelSamplingSD3"
}
},
"95": {
"inputs": {
"add_noise": "disable",
"noise_seed": 0,
"steps": 20,
"cfg": 3.5,
"sampler_name": "euler",
"scheduler": "simple",
"start_at_step": 10,
"end_at_step": 10000,
"return_with_leftover_noise": "disable",
"model": [
"94",
0
],
"positive": [
"99",
0
],
"negative": [
"91",
0
],
"latent_image": [
"96",
0
]
},
"class_type": "KSamplerAdvanced",
"_meta": {
"title": "KSampler (Advanced)"
}
},
"96": {
"inputs": {
"add_noise": "enable",
"noise_seed": "__RANDOM_INT__",
"steps": 20,
"cfg": 3.5,
"sampler_name": "euler",
"scheduler": "simple",
"start_at_step": 0,
"end_at_step": 10,
"return_with_leftover_noise": "enable",
"model": [
"93",
0
],
"positive": [
"99",
0
],
"negative": [
"91",
0
],
"latent_image": [
"104",
0
]
},
"class_type": "KSamplerAdvanced",
"_meta": {
"title": "KSampler (Advanced)"
}
},
"97": {
"inputs": {
"samples": [
"95",
0
],
"vae": [
"92",
0
]
},
"class_type": "VAEDecode",
"_meta": {
"title": "VAE Decode"
}
},
"98": {
"inputs": {
"filename_prefix": "video/ComfyUI",
"format": "auto",
"codec": "auto",
"video": [
"100",
0
]
},
"class_type": "SaveVideo",
"_meta": {
"title": "Save Video"
}
},
"99": {
"inputs": {
"text":prompt,
"clip": [
"90",
0
]
},
"class_type": "CLIPTextEncode",
"_meta": {
"title": "CLIP Text Encode (Positive Prompt)"
}
},
"100": {
"inputs": {
"fps": 16,
"images": [
"97",
0
]
},
"class_type": "CreateVideo",
"_meta": {
"title": "Create Video"
}
},
"101": {
"inputs": {
"unet_name": "wan2.2_t2v_high_noise_14B_fp8_scaled.safetensors",
"weight_dtype": "default"
},
"class_type": "UNETLoader",
"_meta": {
"title": "Load Diffusion Model"
}
},
"102": {
"inputs": {
"unet_name": "wan2.2_t2v_low_noise_14B_fp8_scaled.safetensors",
"weight_dtype": "default"
},
"class_type": "UNETLoader",
"_meta": {
"title": "Load Diffusion Model"
}
},
"104": {
"inputs": {
"width": 640,
"height": 640,
"length": 81,
"batch_size": 1
},
"class_type": "EmptyHunyuanLatentVideo",
"_meta": {
"title": "EmptyHunyuanLatentVideo"
}
}
}
}
} for prompt in benchmark_prompts
]
worker_config = WorkerConfig(
model_server_url=MODEL_SERVER_URL,
model_server_port=MODEL_SERVER_PORT,
model_log_file=MODEL_LOG_FILE,
model_healthcheck_url=MODEL_HEALTHCHECK_ENDPOINT,
handlers=[
HandlerConfig(
route="/generate/sync",
allow_parallel_requests=False,
max_queue_time=10.0,
benchmark_config=BenchmarkConfig(
dataset=benchmark_dataset,
runs=1
),
workload_calculator= lambda _ : 10000.0
)
],
log_action_config=LogActionConfig(
on_load=MODEL_LOAD_LOG_MSG,
on_error=MODEL_ERROR_LOG_MSGS,
on_info=MODEL_INFO_LOG_MSGS
)
)
Worker(worker_config).run()