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35 Commits

Author SHA1 Message Date
Edgar Lin fdd50a2aaa correct version pin for aiohttp 2025-12-10 19:14:34 -08:00
LucasArmandVast 70f8a8f534 Merge pull request #72 from vast-ai/hotfix-pin-pycares
Hotfix: pin pycares
2025-12-10 20:41:44 -05:00
Lucas Armand 7be8aa6397 pin pycares 2025-12-10 17:38:03 -08:00
Colter-Downing 138fc3ac47 Merge pull request #71 from vast-ai/AUTO-comfyui-updates
Auto comfyui updates
2025-12-04 10:55:12 -08:00
Colter Downing 222ac2a0dd default endpoint name 2025-12-04 10:54:55 -08:00
Colter Downing 40aed9b5f8 adding s3 as an option 2025-12-04 10:52:57 -08:00
Colter Downing d4d36bf86e done with comfy updates 2025-12-03 20:45:55 -08:00
Colter Downing e839cfc6e8 include view in API wrapper 2025-12-03 20:22:45 -08:00
Colter Downing f04138e13b update to be able to get images 2025-12-03 20:16:25 -08:00
Colter-Downing de3aa87c8f Merge pull request #70 from vast-ai/AUTO-tgi-client-edits
update tgi client
2025-12-03 18:40:01 -08:00
Colter Downing 6b5b1341a7 update tgi client 2025-12-03 18:38:42 -08:00
Colter-Downing 8be92c03de Merge pull request #69 from vast-ai/AUTO-874--fix-openai-worker-client
defaults to ENDPOINT_NAME and DEFAULT_MODEL but uses the flag first
2025-12-03 16:59:56 -08:00
Colter Downing adedb8ba90 defaults to ENDPOINT_NAME and DEFAULT_MODEL but uses the flag first if present 2025-12-03 16:57:28 -08:00
LucasArmandVast 2f543c01ad Merge pull request #68 from vast-ai/fix-vllm-concurrency
Increase model wait time for vLLM
2025-12-03 16:13:51 -05:00
Lucas Armand 0bcd2219ea Increase model wait time for vLLM 2025-12-03 12:38:52 -08:00
LucasArmandVast 0339b471c5 Merge pull request #66 from vast-ai/synthesis
PyWorker Error Handling
2025-11-25 16:02:26 -08:00
Lucas Armand e143162438 bumpy pyworker version 2025-11-25 16:01:23 -08:00
Lucas Armand 7986e51e9e early errors 2025-11-24 15:24:06 -08:00
Lucas Armand 9c6ab78503 Move model log line 2025-11-24 15:22:23 -08:00
Lucas Armand 45e0c7d9ca Move model log rotate to top 2025-11-24 15:02:33 -08:00
LucasArmandVast 7a792fd176 Merge pull request #64 from vast-ai/add-llama-log
add llama log
2025-11-21 10:24:27 -08:00
Lucas Armand e0449cb3c7 add llama log 2025-11-21 10:22:16 -08:00
Lucas Armand a4339bd3f1 hotfix: add f 2025-11-12 16:10:55 -08:00
Lucas Armand 2b26e5e20c hotfix: remove g 2025-11-12 16:01:57 -08:00
LucasArmandVast d3727d4fd7 Merge pull request #58 from vast-ai/update-client-scripts
Update client scripts
2025-11-12 10:22:42 -08:00
Lucas Armand a47c9d1ed0 remove test bugs 2025-11-11 18:13:46 -08:00
Lucas Armand 0b14562a63 dont exit on pyworker fail 2025-11-11 17:57:08 -08:00
Lucas Armand de9b50abb9 use set +e 2025-11-11 17:53:36 -08:00
Lucas Armand c510801723 fix 2025-11-11 17:49:34 -08:00
Lucas Armand a12523b1d2 Added bad code to tgi server to test 2025-11-11 17:41:12 -08:00
Lucas Armand eedf81c0a3 Updated readme and .gitignore 2025-11-11 17:18:40 -08:00
Lucas Armand 3adec1826d minor changes 2025-11-11 17:11:38 -08:00
Lucas Armand b55bfa9611 Updated clients, include vastai-sdk, handle non-UTF-8 2025-11-11 17:09:28 -08:00
LucasArmandVast 7db54f3bd7 Merge pull request #55 from vast-ai/use-mtoken
Use mtoken
2025-11-10 11:54:04 -08:00
LucasArmandVast d63a060202 Merge pull request #56 from vast-ai/obfuscate-mtoken
Obfuscate mtoken in logs
2025-11-10 11:53:17 -08:00
15 changed files with 1231 additions and 764 deletions
+1
View File
@@ -3,3 +3,4 @@
__pycache__ __pycache__
bin/ bin/
lib64 lib64
.venv
+4 -3
View File
@@ -39,11 +39,12 @@ reporting these metrics to the autoscaler.
If you are using a Vast.ai template that includes PyWorker integration (marked as autoscaler compatible), it should work out of the box. The template will typically start the appropriate PyWorker server automatically. Here's a few: If you are using a Vast.ai template that includes PyWorker integration (marked as autoscaler compatible), it should work out of the box. The template will typically start the appropriate PyWorker server automatically. Here's a few:
* **TGI (Text Generation Inference):** [Vast.ai Template](https://cloud.vast.ai?ref_id=140778&template_id=72d8dcb41ea3a58e06c741e2c725bc00) * **vLLM:** [Vast.ai Template](https://cloud.vast.ai?ref_id=62897&template_id=63ae93902bf3978bea033782592b784d)
* **ComfyUI:** [Vast.ai Template](https://cloud.vast.ai?ref_id=140778&template_id=ad72c8bf7cf695c3c9ddf0eaf6da0447) * **TGI (Text Generation Inference):** [Vast.ai Template](https://cloud.vast.ai?ref_id=62897&template_id=6fa6bd5bdf5f0df63db80e40b086037d)
* **ComfyUI:** [Vast.ai Template](https://cloud.vast.ai?ref_id=62897&template_id=e6748878ba688e765e3e9fca29541938)
Currently available workers: Currently available workers:
* `hello_world`: A simple example worker for a basic LLM server. * `openai`: A simple example worker for a basic vLLM server.
* `comfyui`: A worker for the ComfyUI image generation backend. * `comfyui`: A worker for the ComfyUI image generation backend.
* `tgi`: A worker for the Text Generation Inference backend. * `tgi`: A worker for the Text Generation Inference backend.
+2 -2
View File
@@ -30,7 +30,7 @@ from lib.data_types import (
BenchmarkResult BenchmarkResult
) )
VERSION = "0.2.0" VERSION = "0.2.1"
MSG_HISTORY_LEN = 100 MSG_HISTORY_LEN = 100
log = logging.getLogger(__file__) log = logging.getLogger(__file__)
@@ -417,7 +417,7 @@ class Backend:
async def tail_log(): async def tail_log():
log.debug(f"tailing file: {self.model_log_file}") log.debug(f"tailing file: {self.model_log_file}")
async with await open_file(self.model_log_file) as f: async with await open_file(self.model_log_file, encoding='utf-8', errors='ignore') as f:
while True: while True:
line = await f.readline() line = await f.readline()
if line: if line:
+21 -1
View File
@@ -3,15 +3,17 @@ import logging
from typing import List from typing import List
import ssl import ssl
from asyncio import run, gather from asyncio import run, gather
import asyncio
from lib.backend import Backend from lib.backend import Backend
from lib.metrics import Metrics
from aiohttp import web from aiohttp import web
log = logging.getLogger(__file__) log = logging.getLogger(__file__)
def start_server(backend: Backend, routes: List[web.RouteDef], **kwargs): def start_server(backend: Backend, routes: List[web.RouteDef], **kwargs):
try:
log.debug("getting certificate...") log.debug("getting certificate...")
use_ssl = os.environ.get("USE_SSL", "false") == "true" use_ssl = os.environ.get("USE_SSL", "false") == "true"
if use_ssl is True: if use_ssl is True:
@@ -38,3 +40,21 @@ def start_server(backend: Backend, routes: List[web.RouteDef], **kwargs):
await gather(site.start(), backend._start_tracking()) await gather(site.start(), backend._start_tracking())
run(main()) run(main())
except Exception as e:
err_msg = f"PyWorker failed to launch: {e}"
log.error(err_msg)
async def beacon():
metrics = Metrics()
metrics._set_version(getattr(backend, "version", "0"))
metrics._set_mtoken(getattr(backend, "mtoken", ""))
try:
while True:
metrics._model_errored(err_msg)
await metrics._Metrics__send_metrics_and_reset()
await asyncio.sleep(10)
finally:
await metrics.aclose()
run(beacon())
+4 -1
View File
@@ -1,4 +1,6 @@
aiohttp[speedups]==3.10.1 aiohttp==3.10.1
aiodns~=3.6.0
pycares~=4.11.0
anyio~=4.4 anyio~=4.4
lib~=4.0 lib~=4.0
nltk~=3.9 nltk~=3.9
@@ -8,3 +10,4 @@ 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
+46 -4
View File
@@ -41,6 +41,14 @@ echo_var DEBUG_LOG
echo_var PYWORKER_LOG echo_var PYWORKER_LOG
echo_var MODEL_LOG echo_var MODEL_LOG
# if instance is rebooted, we want to clear out the log file so pyworker doesn't read lines
# from the run prior to reboot. past logs are saved in $MODEL_LOG.old for debugging only
if [ -e "$MODEL_LOG" ]; then
echo "Rotating model log at $MODEL_LOG to $MODEL_LOG.old"
cat "$MODEL_LOG" >> "$MODEL_LOG.old"
: > "$MODEL_LOG"
fi
# Populate /etc/environment with quoted values # Populate /etc/environment with quoted values
if ! grep -q "VAST" /etc/environment; then if ! grep -q "VAST" /etc/environment; then
env -0 | grep -zEv "^(HOME=|SHLVL=)|CONDA" | while IFS= read -r -d '' line; do env -0 | grep -zEv "^(HOME=|SHLVL=)|CONDA" | while IFS= read -r -d '' line; do
@@ -124,9 +132,43 @@ cd "$SERVER_DIR"
echo "launching PyWorker server" echo "launching PyWorker server"
# if instance is rebooted, we want to clear out the log file so pyworker doesn't read lines set +e
# from the run prior to reboot. past logs are saved in $MODEL_LOG.old for debugging only python3 -m "workers.$BACKEND.server" |& tee -a "$PYWORKER_LOG"
[ -e "$MODEL_LOG" ] && cat "$MODEL_LOG" >> "$MODEL_LOG.old" && : > "$MODEL_LOG" PY_STATUS=${PIPESTATUS[0]}
set -e
if [ "${PY_STATUS}" -ne 0 ]; then
echo "PyWorker exited with status ${PY_STATUS}; notifying autoscaler..."
ERROR_MSG="PyWorker exited: code ${PY_STATUS}"
MTOKEN="${MASTER_TOKEN:-}"
VERSION="${PYWORKER_VERSION:-0}"
IFS=',' read -r -a REPORT_ADDRS <<< "${REPORT_ADDR}"
for addr in "${REPORT_ADDRS[@]}"; do
curl -sS -X POST -H 'Content-Type: application/json' \
-d "$(cat <<JSON
{
"id": ${CONTAINER_ID:-0},
"mtoken": "${MTOKEN}",
"version": "${VERSION}",
"loadtime": 0,
"new_load": 0,
"cur_load": 0,
"rej_load": 0,
"max_perf": 0,
"cur_perf": 0,
"error_msg": "${ERROR_MSG}",
"num_requests_working": 0,
"num_requests_recieved": 0,
"additional_disk_usage": 0,
"working_request_idxs": [],
"cur_capacity": 0,
"max_capacity": 0,
"url": "${URL}"
}
JSON
)" "${addr%/}/worker_status/" || true
done
fi
(python3 -m "workers.$BACKEND.server" |& tee -a "$PYWORKER_LOG") &
echo "launching PyWorker server done" echo "launching PyWorker server done"
+91 -9
View File
@@ -1,15 +1,105 @@
# ComfyUI PyWorker # ComfyUI PyWorker
This is the base PyWorker for ComfyUI. It provides a unified interface for running any ComfyUI workflow through a proxy-based architecture. This is the base PyWorker for ComfyUI. It provides a unified interface for running any ComfyUI workflow through a proxy-based architecture. See the [Serverless documentation](https://docs.vast.ai/serverless) for guides and how-to's.
The cost for each request has a static value of `1`. ComfyUI does not handle concurrent workloads and there is no current provision to load multiple instances of ComfyUI per worker node. The cost for each request has a static value of `1`. ComfyUI does not handle concurrent workloads and there is no current provision to load multiple instances of ComfyUI per worker node.
## Instance Setup
1. Pick a template
- [ComfyUI (Serverless)](https://cloud.vast.ai/?ref_id=62897&creator_id=62897&name=ComfyUI%20(Serverless))
2. Follow the [getting started guide](https://docs.vast.ai/documentation/serverless/quickstart) for help with configuring your serverless setup. For testing, we recommend that you use the default options presented by the web interface.
## Requirements ## Requirements
This worker requires both [ComfyUI](https://github.com/comfyanonymous/ComfyUI) and [ComfyUI API Wrapper](https://github.com/ai-dock/comfyui-api-wrapper). This worker requires both [ComfyUI](https://github.com/comfyanonymous/ComfyUI) and [ComfyUI API Wrapper](https://github.com/ai-dock/comfyui-api-wrapper).
A docker image is provided but you may use any if the above requirements are met. A docker image is provided but you may use any if the above requirements are met.
## Client
The client demonstrates how to use the Vast Serverless SDK to generate images, save them locally, and optionally upload to S3-compatible storage.
### Setup
1. Clone the PyWorker repository to your local machine and install the necessary requirements for running the test client.
```bash
git clone https://github.com/vast-ai/pyworker
cd pyworker
pip install uv
uv venv -p 3.12
source .venv/bin/activate
uv pip install -r requirements.txt
```
2. Set your API key:
```bash
export VAST_API_KEY=<your_api_key>
```
### Usage
```bash
# Default prompt
python -m workers.comfyui-json.client
# Custom prompt
python -m workers.comfyui-json.client --prompt "a cat sitting on a rainbow"
# With options
python -m workers.comfyui-json.client --prompt "sunset" --width 1024 --height 1024 --steps 30
# Using a custom workflow file
python -m workers.comfyui-json.client --workflow my_workflow.json
# With S3 upload
python -m workers.comfyui-json.client --s3
```
### CLI Flags
| Flag | Default | Description |
|------|---------|-------------|
| `--endpoint` | `my-comfyui-endpoint` | Vast endpoint name |
| `--prompt` | (default) | Text prompt for image generation |
| `--workflow` | (none) | Path to custom workflow JSON file |
| `--width` | 512 | Image width in pixels |
| `--height` | 512 | Image height in pixels |
| `--steps` | 20 | Number of denoising steps |
| `--seed` | (random) | Random seed for reproducibility |
| `--s3` | (disabled) | Upload generated images to S3 |
### Output
Images are saved to `./generated_images/comfy_{seed}.png`.
### S3 Upload (Optional)
You can optionally upload generated images to an S3-compatible storage service (AWS S3, Cloudflare R2, Backblaze B2, etc.) by using the `--s3` flag.
**1. Set environment variables:**
```bash
export S3_ENDPOINT_URL="https://your-account.r2.cloudflarestorage.com"
export S3_BUCKET_NAME="my-bucket"
export S3_ACCESS_KEY_ID="your-access-key-id"
export S3_SECRET_ACCESS_KEY="your-secret-access-key"
```
**2. Run with S3 upload enabled:**
```bash
python -m workers.comfyui-json.client --prompt "a beautiful landscape" --s3
```
Images will be saved locally AND uploaded to `s3://{bucket}/comfyui/{filename}`.
**Note:** Requires `boto3` (`pip install boto3`).
## Benchmarking ## Benchmarking
### Custom Benchmark Workflows ### Custom Benchmark Workflows
@@ -212,11 +302,3 @@ WEBHOOK_TIMEOUT=30 # Webhook timeout in seconds
} }
} }
``` ```
## Client Libraries
See the test client examples for implementation details on how to integrate with the ComfyUI worker.
---
See Vast's serverless documentation for more details on how to use ComfyUI with autoscaler.
+287 -131
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@@ -1,156 +1,312 @@
import logging import os
import sys
import json
import uuid import uuid
import random import random
from urllib.parse import urljoin import asyncio
import json import logging
import argparse
import aiohttp
import requests from vastai import Serverless
from lib.test_utils import print_truncate_res # ---------------------- Config ----------------------
from utils.endpoint_util import Endpoint DEFAULT_PROMPT = "a beautiful sunset over mountains, digital art, highly detailed"
from utils.ssl import get_cert_file_path ENDPOINT_NAME = "my-comfyui-endpoint"
from .data_types import count_workload DEFAULT_WIDTH = 512
DEFAULT_HEIGHT = 512
DEFAULT_STEPS = 20
COST = 100 # Fixed cost for ComfyUI requests
logging.basicConfig( # Optional S3 Configuration (from environment variables)
level=logging.DEBUG, S3_ENDPOINT_URL = os.getenv("S3_ENDPOINT_URL")
format="%(asctime)s[%(levelname)-5s] %(message)s", S3_BUCKET_NAME = os.getenv("S3_BUCKET_NAME")
datefmt="%Y-%m-%d %H:%M:%S", S3_ACCESS_KEY_ID = os.getenv("S3_ACCESS_KEY_ID")
) S3_SECRET_ACCESS_KEY = os.getenv("S3_SECRET_ACCESS_KEY")
log = logging.getLogger(__file__)
logging.basicConfig(level=logging.INFO, format="%(levelname)s - %(message)s")
log = logging.getLogger(__name__)
def call_text2image_workflow( def get_s3_client():
endpoint_group_name: str, api_key: str, server_url: str """Create and return an S3 client configured for the S3-compatible endpoint"""
) -> None:
"""Simple Text2Image using the new modifier-based approach"""
def make_request(url: str, payload: dict, timeout: int = None, verify=True, context: str = "request"):
"""Helper function for making requests with consistent error handling"""
try: try:
response = requests.post( import boto3
url, from botocore.config import Config
json=payload, except ImportError:
timeout=timeout, log.error("boto3 is required for S3 uploads. Install with: pip install boto3")
verify=verify return None
if not all([S3_ENDPOINT_URL, S3_BUCKET_NAME, S3_ACCESS_KEY_ID, S3_SECRET_ACCESS_KEY]):
log.error("S3 environment variables not fully configured. Required:")
log.error(" S3_ENDPOINT_URL, S3_BUCKET_NAME, S3_ACCESS_KEY_ID, S3_SECRET_ACCESS_KEY")
return None
return boto3.client(
"s3",
endpoint_url=S3_ENDPOINT_URL,
aws_access_key_id=S3_ACCESS_KEY_ID,
aws_secret_access_key=S3_SECRET_ACCESS_KEY,
config=Config(signature_version="s3v4"),
) )
response.raise_for_status()
return response.json()
except requests.exceptions.HTTPError as http_err: # ---------------------- API Functions ----------------------
log.error(f"HTTP error occurred during {context}: {http_err}") async def call_generate(
log.error(f"Status Code: {response.status_code}") client: Serverless,
log.error("Response content:", response.text) *,
return None endpoint_name: str,
except requests.exceptions.Timeout: prompt: str,
log.error(f"Timeout occurred during {context}: {url}") width: int,
return None height: int,
except requests.exceptions.ConnectionError: steps: int,
log.error(f"Connection error occurred during {context}: {url}") seed: int,
return None ) -> dict:
except json.JSONDecodeError as json_err: """Generate image using Text2Image modifier"""
log.error(f"Failed to decode JSON response during {context}: {json_err}") endpoint = await client.get_endpoint(name=endpoint_name)
if 'response' in locals(): payload = {
print("Response content:", response.text)
return None
except Exception as err:
log.error(f"An unexpected error occurred during {context}: {err}")
if 'response' in locals():
log.error("Response content (if available):", response.text)
return None
WORKER_ENDPOINT = "/generate/sync"
# This worker has concurrency = 1. All workloads have cost value 1.0
COST = count_workload()
# Route to get worker URL
route_payload = {
"endpoint": endpoint_group_name,
"api_key": api_key,
"cost": COST,
}
# First request - get routing information
route_response = make_request(
url=urljoin(server_url, "/route/"),
payload=route_payload,
timeout=4,
context="route request"
)
if route_response is None:
return None
if "url" not in route_response or not route_response["url"]:
log.error("Error: No worker in 'Ready' state. Please wait while the serverless engine removes errored workers or finishes loading new workers.")
return None
if "status" in route_response:
print(f"Autoscaler status: {route_response['status']}")
return None
# Extract data from route response
url = route_response["url"]
auth_data = dict(
signature=route_response["signature"],
cost=route_response["cost"],
endpoint=route_response["endpoint"],
reqnum=route_response["reqnum"],
url=route_response["url"],
request_idx=route_response["request_idx"],
)
# Build the payload for the worker request
worker_payload = {
"input": { "input": {
"request_id": str(uuid.uuid4()), "request_id": str(uuid.uuid4()),
"modifier": "Text2Image", "modifier": "Text2Image",
"modifications": { "modifications": {
"prompt": "a beautiful landscape with mountains and lakes", "prompt": prompt,
"width": 1024, "width": width,
"height": 1024, "height": height,
"steps": 20, "steps": steps,
"seed": random.randint(0, 2**32 - 1) "seed": seed,
}, },
"workflow_json": {} # Empty since using modifier approach
} }
} }
return await endpoint.request("/generate/sync", payload, cost=COST)
req_data = dict(payload=worker_payload, auth_data=auth_data)
worker_url = urljoin(url, WORKER_ENDPOINT)
print(f"url: {worker_url}")
# Second request - call the worker endpoint async def call_generate_workflow(
worker_response = make_request( client: Serverless,
url=worker_url, *,
payload=req_data, endpoint_name: str,
verify=get_cert_file_path(), workflow_json: dict,
context="worker request" ) -> dict:
"""Generate using custom workflow JSON"""
endpoint = await client.get_endpoint(name=endpoint_name)
payload = {
"input": {
"request_id": str(uuid.uuid4()),
"workflow_json": workflow_json,
}
}
return await endpoint.request("/generate/sync", payload, cost=COST)
# ---------------------- Demo Class ----------------------
class APIDemo:
def __init__(self, client: Serverless, endpoint_name: str, upload_s3: bool = False):
self.client = client
self.endpoint_name = endpoint_name
self.upload_s3 = upload_s3
self.s3_client = get_s3_client() if upload_s3 else None
if upload_s3 and not self.s3_client:
log.warning("S3 upload requested but client creation failed. Images will only be saved locally.")
def extract_filename(self, response: dict) -> str | None:
"""Extract the generated image filename from ComfyUI response"""
if "comfyui_response" in response:
for data in response["comfyui_response"].values():
if isinstance(data, dict) and "outputs" in data:
for node_output in data["outputs"].values():
if "images" in node_output and node_output["images"]:
return node_output["images"][0].get("filename")
return None
async def save_image(self, worker_url: str, filename: str, local_name: str) -> str | None:
"""Fetch and save image locally from the worker, optionally upload to S3"""
os.makedirs("generated_images", exist_ok=True)
return await self._fetch_image(worker_url, filename, local_name)
def _upload_to_s3(self, local_path: str, s3_key: str) -> str | None:
"""Upload a local file to S3 and return the S3 URL"""
if not self.s3_client:
return None
try:
self.s3_client.upload_file(
local_path,
S3_BUCKET_NAME,
s3_key,
ExtraArgs={"ContentType": "image/png"}
)
s3_url = f"{S3_ENDPOINT_URL}/{S3_BUCKET_NAME}/{s3_key}"
print(f" ☁️ Uploaded to S3: {s3_key}")
return s3_url
except Exception as e:
log.error(f"Failed to upload to S3: {e}")
return None
async def _fetch_image(self, worker_url: str, filename: str, local_name: str) -> str | None:
"""Fetch image from worker's /view endpoint and save locally"""
if not worker_url:
return None
try:
url = f"{worker_url}/view"
params = {"filename": filename, "type": "output"}
async with aiohttp.ClientSession() as session:
async with session.get(url, params=params, ssl=False) as resp:
if resp.status == 200:
path = f"generated_images/{local_name}"
image_data = await resp.read()
with open(path, "wb") as f:
f.write(image_data)
print(f" 💾 Saved: {path}")
# Upload to S3 if enabled
if self.upload_s3 and self.s3_client:
s3_key = f"comfyui/{local_name}"
self._upload_to_s3(path, s3_key)
return path
return None
except Exception:
return None
async def demo_prompt(
self,
prompt: str,
width: int,
height: int,
steps: int,
seed: int | None,
):
"""Demo: Generate image from text prompt"""
print("=" * 60)
print("COMFYUI TEXT-TO-IMAGE DEMO")
print("=" * 60)
if seed is None:
seed = random.randint(0, 2**32 - 1)
print(f"Prompt: {prompt[:100]}..." if len(prompt) > 100 else f"Prompt: {prompt}")
print(f"Size: {width}x{height}, Steps: {steps}, Seed: {seed}")
print("\n🎨 Generating image...")
response = await call_generate(
self.client,
endpoint_name=self.endpoint_name,
prompt=prompt,
width=width,
height=height,
steps=steps,
seed=seed,
) )
return worker_response print("\n✅ Generation complete!")
# Get worker URL for fetching images
worker_url = response.get("url", "")
print(f"Worker URL: {worker_url}")
# Fetch and save image
if "response" in response:
filename = self.extract_filename(response["response"])
if filename:
path = await self.save_image(worker_url, filename, f"comfy_{seed}.png")
if not path:
print(f"❌ Failed to fetch image")
else:
print("❌ No image in response")
else:
print("❌ Unexpected response format")
async def demo_workflow(self, workflow_file: str):
"""Demo: Generate using custom workflow file"""
print("=" * 60)
print("COMFYUI CUSTOM WORKFLOW DEMO")
print("=" * 60)
if not os.path.exists(workflow_file):
log.error(f"Workflow file not found: {workflow_file}")
return
with open(workflow_file, "r") as f:
workflow_json = json.load(f)
print(f"Workflow: {workflow_file}")
print("\n🎨 Generating...")
response = await call_generate_workflow(
self.client,
endpoint_name=self.endpoint_name,
workflow_json=workflow_json,
)
print("\n✅ Generation complete!")
worker_url = response.get("url", "")
if "response" in response:
filename = self.extract_filename(response["response"])
if filename:
path = await self.save_image(worker_url, filename, "workflow.png")
if not path:
print(f"❌ Failed to fetch image")
else:
print("❌ No image in response")
else:
print("❌ Unexpected response format")
# ---------------------- CLI ----------------------
def build_arg_parser() -> argparse.ArgumentParser:
p = argparse.ArgumentParser(description="Vast ComfyUI-JSON Demo (Serverless SDK)")
p.add_argument("--endpoint", default=ENDPOINT_NAME, help=f"Vast endpoint name (default: {ENDPOINT_NAME})")
p.add_argument("--prompt", type=str, default=DEFAULT_PROMPT, metavar="TEXT",
help=f"Prompt text (default: '{DEFAULT_PROMPT[:30]}...')")
p.add_argument("--workflow", type=str, metavar="FILE", help="Use custom workflow JSON file instead")
p.add_argument("--width", type=int, default=DEFAULT_WIDTH, help=f"Image width (default: {DEFAULT_WIDTH})")
p.add_argument("--height", type=int, default=DEFAULT_HEIGHT, help=f"Image height (default: {DEFAULT_HEIGHT})")
p.add_argument("--steps", type=int, default=DEFAULT_STEPS, help=f"Steps (default: {DEFAULT_STEPS})")
p.add_argument("--seed", type=int, default=None, help="Seed (default: random)")
p.add_argument("--s3", action="store_true",
help="Upload generated images to S3 (requires S3_ENDPOINT_URL, S3_BUCKET_NAME, S3_ACCESS_KEY_ID, S3_SECRET_ACCESS_KEY env vars)")
return p
async def main_async():
args = build_arg_parser().parse_args()
print("=" * 60)
print(f"Using endpoint: {args.endpoint}")
if args.s3:
print(f"S3 upload: enabled (bucket: {S3_BUCKET_NAME})")
try:
async with Serverless() as client:
demo = APIDemo(client, args.endpoint, upload_s3=args.s3)
if args.workflow:
await demo.demo_workflow(workflow_file=args.workflow)
else:
await demo.demo_prompt(
prompt=args.prompt,
width=args.width,
height=args.height,
steps=args.steps,
seed=args.seed,
)
except AttributeError as e:
if "API key" in str(e):
log.error("API key missing. Set VAST_API_KEY environment variable.")
else:
log.error(f"Error: {e}")
sys.exit(1)
except Exception as e:
log.error(f"Error: {e}")
import traceback
traceback.print_exc()
sys.exit(1)
if __name__ == "__main__": if __name__ == "__main__":
from lib.test_utils import test_args asyncio.run(main_async())
args = test_args.parse_args()
endpoint_api_key = Endpoint.get_endpoint_api_key(
endpoint_name=args.endpoint_group_name,
account_api_key=args.api_key,
instance=args.instance,
)
if endpoint_api_key:
result = call_text2image_workflow(
api_key=endpoint_api_key,
endpoint_group_name=args.endpoint_group_name,
server_url=args.server_url,
)
if result is None:
log.error("Text2Image workflow failed")
else:
print(result)
else:
log.error(f"Failed to get API key for endpoint {args.endpoint_group_name}")
+33
View File
@@ -4,6 +4,7 @@ import dataclasses
import base64 import base64
from typing import Optional, Union, Type from typing import Optional, Union, Type
import aiohttp
from aiohttp import web, ClientResponse from aiohttp import web, ClientResponse
from lib.backend import Backend, LogAction from lib.backend import Backend, LogAction
@@ -13,6 +14,7 @@ from .data_types import ComfyWorkflowData
MODEL_SERVER_URL = os.getenv("MODEL_SERVER_URL", "http://127.0.0.1:18288") MODEL_SERVER_URL = os.getenv("MODEL_SERVER_URL", "http://127.0.0.1:18288")
COMFYUI_URL = os.getenv("COMFYUI_URL", "http://127.0.0.1:18188") # Raw ComfyUI server
# This is the last log line that gets emitted once comfyui+extensions have been fully loaded # This is the last log line that gets emitted once comfyui+extensions have been fully loaded
MODEL_SERVER_START_LOG_MSG = "To see the GUI go to: " MODEL_SERVER_START_LOG_MSG = "To see the GUI go to: "
@@ -108,8 +110,39 @@ async def handle_ping(_):
return web.Response(body="pong") return web.Response(body="pong")
async def handle_view(request: web.Request) -> web.Response:
"""Proxy /view requests to raw ComfyUI server to fetch generated images"""
# Forward query params to raw ComfyUI (not the API wrapper)
query_string = request.query_string
url = f"{COMFYUI_URL}/view?{query_string}"
log.debug(f"Proxying /view request to: {url}")
try:
async with aiohttp.ClientSession() as session:
async with session.get(url) as resp:
if resp.status == 200:
content = await resp.read()
return web.Response(
body=content,
status=200,
content_type=resp.content_type or "image/png"
)
else:
text = await resp.text()
return web.Response(
text=text,
status=resp.status,
content_type="text/plain"
)
except Exception as e:
log.error(f"Error proxying /view: {e}")
return web.Response(text=str(e), status=500)
routes = [ routes = [
web.post("/generate/sync", backend.create_handler(ComfyWorkflowHandler())), web.post("/generate/sync", backend.create_handler(ComfyWorkflowHandler())),
web.get("/view", handle_view),
web.get("/ping", handle_ping), web.get("/ping", handle_ping),
] ]
+5 -12
View File
@@ -7,20 +7,13 @@ from lib.test_utils import print_truncate_res
from utils.endpoint_util import Endpoint from utils.endpoint_util import Endpoint
from utils.ssl import get_cert_file_path from utils.ssl import get_cert_file_path
""" from vastai import Serverless
NOTE: this client example uses a custom comfy workflow compatible with SD3 only
"""
logging.basicConfig(
level=logging.DEBUG,
format="%(asctime)s[%(levelname)-5s] %(message)s",
datefmt="%Y-%m-%d %H:%M:%S",
)
log = logging.getLogger(__file__)
def call_default_workflow( ENDPOINT_NAME = "my-comfyui-endpoint"
endpoint_group_name: str, api_key: str, server_url: str COST = 100 # Use a constant cost for image generation
) -> None:
def call_default_workflow(client: Serverless) -> None:
WORKER_ENDPOINT = "/prompt" WORKER_ENDPOINT = "/prompt"
COST = 100 COST = 100
route_payload = { route_payload = {
+33 -26
View File
@@ -8,14 +8,13 @@ This is the base PyWorker for OpenAI compatible inference servers. See the [Ser
This worker is compatible with any backend API that properly implements the `/v1/completions` and `/v1/chat/completions` endpoints. We currently have three templates you can choose from but you can also create your own without having to modify the PyWorker. This worker is compatible with any backend API that properly implements the `/v1/completions` and `/v1/chat/completions` endpoints. We currently have three templates you can choose from but you can also create your own without having to modify the PyWorker.
- [vLLM](https://cloud.vast.ai/?ref_id=62897&creator_id=62897&name=vLLM%20%2B%20Qwen%2FQwen3-8B%20(Serverless)) (recommended) - [vLLM](https://cloud.vast.ai/?ref_id=62897&creator_id=62897&name=vLLM%20(Serverless)) (recommended)
- [Ollama](https://cloud.vast.ai/?ref_id=62897&creator_id=62897&name=Ollama%20%2B%20Qwen3%3A32b%20(Serverless)) - [Ollama](https://cloud.vast.ai/?ref_id=62897&creator_id=62897&name=Ollama%20%2B%20Qwen3%3A32b%20(Serverless))
- [HuggingFace TGI](https://cloud.vast.ai/?ref_id=62897&creator_id=62897&name=TGI%20%2B%20Qwen3-8B%20(Serverless))
All of these templates can be configured via the template interface. You may want to change the model or startup arguments, depending on the template you selected. All of these templates can be configured via the template interface. You may want to change the model or startup arguments, depending on the template you selected.
2. Follow the [getting started guide](https://docs.vast.ai/serverless/getting-started) for help with configuring your serverless setup. For testing, we recommend that you use the default options presented by the web interface. 2. Follow the [getting started guide](https://docs.vast.ai/documentation/serverless/quickstart) for help with configuring your serverless setup. For testing, we recommend that you use the default options presented by the web interface.
## Client Setup (Demo) ## Client Setup (Demo)
@@ -34,38 +33,20 @@ 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.
### Completions First, set your API key as an environment variable:
Call to `/v1/completions` with json response
```bash ```bash
python -m workers.openai.client -k <API_KEY> -e <ENDPOINT_NAME> --completion --model <MODEL_NAME> export VAST_API_KEY=<your_api_key>
``` ```
### Chat Completion (json) The `--model` and `--endpoint` flags are optional. If not provided, they default to `Qwen/Qwen3-8B` and `my-vllm-endpoint` respectively.
Call to `/v1/chat/completions` with json response
```bash
python -m workers.openai.client -k <API_KEY> -e <ENDPOINT_NAME> --chat --model <MODEL_NAME>
```
### Chat Completion (streaming) ### Chat Completion (streaming)
Call to `/v1/chat/completions` with streaming response Call to `/v1/chat/completions` with streaming response
```bash ```bash
python -m workers.openai.client -k <API_KEY> -e <ENDPOINT_NAME> --chat-stream --model <MODEL_NAME> python -m workers.openai.client --chat-stream --endpoint <ENDPOINT_NAME> --model <MODEL_NAME>
```
### Tool Use (json)
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.
```bash
python -m workers.openai.client -k <API_KEY> -e <ENDPOINT_NAME> --tools --model <MODEL_NAME>
``` ```
### Interactive Chat (streaming) ### Interactive Chat (streaming)
@@ -75,6 +56,32 @@ Interactive session with calls to `/v1/chat/completions`.
Type `clear` to clear the chat history or `quit` to exit. Type `clear` to clear the chat history or `quit` to exit.
```bash ```bash
python -m workers.openai.client -k <API_KEY> -e <ENDPOINT_NAME> --interactive --model <MODEL_NAME> python -m workers.openai.client --interactive --endpoint <ENDPOINT_NAME> --model <MODEL_NAME>
```
### Chat Completion (json)
Call to `/v1/chat/completions` with json response
```bash
python -m workers.openai.client --chat --endpoint <ENDPOINT_NAME> --model <MODEL_NAME>
```
### Tool Use (json)
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.
```bash
python -m workers.openai.client --tools --endpoint <ENDPOINT_NAME> --model <MODEL_NAME>
```
### Completions
Call to `/v1/completions` with json response
```bash
python -m workers.openai.client --completion --endpoint <ENDPOINT_NAME> --model <MODEL_NAME>
``` ```
+359 -413
View File
@@ -1,14 +1,15 @@
import logging import logging
import sys
import json import json
import os
import sys
import subprocess import subprocess
from urllib.parse import urljoin import argparse
from typing import Dict, Any, Optional, Iterator, Union, List from typing import Any, Dict, List, Optional
import requests
from utils.endpoint_util import Endpoint
from utils.ssl import get_cert_file_path
from .data_types.client import CompletionConfig, ChatCompletionConfig
from vastai import Serverless
import asyncio
# ---------------------- Logging ----------------------
logging.basicConfig( logging.basicConfig(
level=logging.DEBUG, level=logging.DEBUG,
format="%(asctime)s[%(levelname)-5s] %(message)s", format="%(asctime)s[%(levelname)-5s] %(message)s",
@@ -16,135 +17,20 @@ logging.basicConfig(
) )
log = logging.getLogger(__file__) log = logging.getLogger(__file__)
COMPLETIONS_PROMPT = "the capital of USA is" # ---------------------- Prompts ----------------------
COMPLETIONS_PROMPT = "Zebras are primarily grazers and can subsist on lower-quality vegetation. They are preyed on mainly by"
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 = "Can you list the files in the current working directory and tell me what you see? What do you think this directory might be for?" TOOLS_PROMPT = (
"Can you list the files in the current working directory and tell me what you see? "
"What do you think this directory might be for?"
class APIClient: )
"""Lightweight client focused solely on API communication"""
# Remove the generic WORKER_ENDPOINT since we're now going direct
DEFAULT_COST = 100
DEFAULT_TIMEOUT = 4
def __init__(
self,
endpoint_group_name: str,
api_key: str,
server_url: str,
endpoint_api_key: str,
):
self.endpoint_group_name = endpoint_group_name
self.api_key = api_key
self.server_url = server_url
self.endpoint_api_key = endpoint_api_key
def _get_worker_url(self, cost: int = DEFAULT_COST) -> Dict[str, Any]:
"""Get worker URL and auth data from routing service"""
if not self.endpoint_api_key:
raise ValueError("No valid endpoint API key available")
route_payload = {
"endpoint": self.endpoint_group_name,
"api_key": self.endpoint_api_key,
"cost": cost,
}
response = requests.post(
urljoin(self.server_url, "/route/"),
json=route_payload,
timeout=self.DEFAULT_TIMEOUT,
)
response.raise_for_status()
return response.json()
def _create_auth_data(self, message: Dict[str, Any]) -> Dict[str, Any]:
"""Create auth data from routing response"""
return {
"signature": message["signature"],
"cost": message["cost"],
"endpoint": message["endpoint"],
"reqnum": message["reqnum"],
"url": message["url"],
}
def _make_request(
self,
payload: Dict[str, Any],
endpoint: str,
method: str = "POST",
stream: bool = False,
) -> Union[Dict[str, Any], Iterator[str]]:
"""Make request directly to the specific worker endpoint"""
# Get worker URL and auth data
cost = payload.get("max_tokens", self.DEFAULT_COST)
message = self._get_worker_url(cost=cost)
worker_url = message["url"]
auth_data = self._create_auth_data(message)
req_data = {"payload": {"input": payload}, "auth_data": auth_data}
url = urljoin(worker_url, endpoint)
log.debug(f"Making direct request to: {url}")
log.debug(f"Payload: {req_data}")
# Make the request using the specified method
if method.upper() == "POST":
response = requests.post(
url, json=req_data, stream=stream, verify=get_cert_file_path()
)
elif method.upper() == "GET":
response = requests.get(
url, params=req_data, stream=stream, verify=get_cert_file_path()
)
else:
raise ValueError(f"Unsupported HTTP method: {method}")
response.raise_for_status()
if stream:
return self._handle_streaming_response(response)
else:
return response.json()
def _handle_streaming_response(self, response: requests.Response) -> Iterator[str]:
"""Handle streaming response and yield tokens"""
try:
for line in response.iter_lines(decode_unicode=True):
if line:
if line.startswith("data: "):
data_str = line[6:]
if data_str.strip() == "[DONE]":
break
try:
data = json.loads(data_str)
yield data # Yield the full chunk
except json.JSONDecodeError:
continue
except Exception as e:
log.error(f"Error handling streaming response: {e}")
raise
def call_completions(
self, config: CompletionConfig
) -> Union[Dict[str, Any], Iterator[str]]:
payload = config.to_dict()
return self._make_request(
payload=payload, endpoint="/v1/completions", stream=config.stream
)
def call_chat_completions(
self, config: ChatCompletionConfig
) -> Union[Dict[str, Any], Iterator[str]]:
payload = config.to_dict()
return self._make_request(
payload=payload, endpoint="/v1/chat/completions", stream=config.stream
)
ENDPOINT_NAME = "my-vllm-endpoint" # change this to your vLLM endpoint name
DEFAULT_MODEL = "Qwen/Qwen3-8B" # must support tool calling
MAX_TOKENS = 1024
DEFAULT_TEMPERATURE = 0.7
# ---------------------- Tooling ----------------------
class ToolManager: class ToolManager:
"""Handles tool definitions and execution""" """Handles tool definitions and execution"""
@@ -164,7 +50,7 @@ class ToolManager:
@staticmethod @staticmethod
def get_ls_tool_definition() -> List[Dict[str, Any]]: def get_ls_tool_definition() -> List[Dict[str, Any]]:
"""Get the ls tool definition""" """OpenAI-compatible tool schema"""
return [ return [
{ {
"type": "function", "type": "function",
@@ -178,98 +64,228 @@ class ToolManager:
def execute_tool_call(self, tool_call: Dict[str, Any]) -> str: def execute_tool_call(self, tool_call: Dict[str, Any]) -> str:
"""Execute a tool call and return the result""" """Execute a tool call and return the result"""
function_name = tool_call["function"]["name"] function_name = (tool_call.get("function") or {}).get("name")
if function_name == "list_files": if function_name == "list_files":
return self.list_files() return self.list_files()
else:
raise ValueError(f"Unknown tool function: {function_name}") raise ValueError(f"Unknown tool function: {function_name}")
# ----- Helpers to handle streamed tool_calls assembly -----
def _merge_tool_call_delta(state: Dict[int, Dict[str, Any]], tc_delta: Dict[str, Any]) -> None:
"""
OpenAI-style streaming sends partial tool_calls with an index and partial fields.
We merge into a per-index state dict until the assistant message finishes.
"""
idx = tc_delta.get("index")
if idx is None:
return
entry = state.setdefault(idx, {"id": None, "function": {"name": None, "arguments": ""}, "type": "function"})
if tc_delta.get("id"):
entry["id"] = tc_delta["id"]
fn_delta = tc_delta.get("function") or {}
if "name" in fn_delta and fn_delta["name"]:
entry["function"]["name"] = fn_delta["name"]
if "arguments" in fn_delta and fn_delta["arguments"]:
entry["function"]["arguments"] += fn_delta["arguments"]
def _tool_state_to_message_tool_calls(state: Dict[int, Dict[str, Any]]) -> List[Dict[str, Any]]:
return [state[i] for i in sorted(state.keys())]
# ---- OpenAI-compatible calls (non-streaming) ----
async def call_completions(client: Serverless, *, model: str, prompt: str, endpoint_name: str, **kwargs) -> Dict[str, Any]:
endpoint = await client.get_endpoint(name=endpoint_name)
payload = {
"input": {
"model": model,
"prompt": prompt,
"max_tokens": kwargs.get("max_tokens", MAX_TOKENS),
"temperature": kwargs.get("temperature", DEFAULT_TEMPERATURE),
}
}
log.debug("POST /v1/completions %s", json.dumps(payload)[:500])
resp = await endpoint.request("/v1/completions", payload, cost=payload["input"]["max_tokens"])
return resp["response"]
async def call_chat_completions(client: Serverless, *, model: str, messages: List[Dict[str, Any]], endpoint_name: str, **kwargs) -> Dict[str, Any]:
endpoint = await client.get_endpoint(name=endpoint_name)
payload = {
"input": {
"model": model,
"messages": messages,
"max_tokens": kwargs.get("max_tokens", MAX_TOKENS),
"temperature": kwargs.get("temperature", DEFAULT_TEMPERATURE),
**({"tools": kwargs["tools"]} if "tools" in kwargs else {}),
**({"tool_choice": kwargs["tool_choice"]} if "tool_choice" in kwargs else {}),
}
}
log.debug("POST /v1/chat/completions %s", json.dumps(payload)[:500])
resp = await endpoint.request("/v1/chat/completions", payload, cost=payload["input"]["max_tokens"])
return resp["response"]
# ---- Streaming variants ----
async def stream_completions(client: Serverless, *, model: str, prompt: str, endpoint_name: str, **kwargs):
endpoint = await client.get_endpoint(name=endpoint_name)
payload = {
"input": {
"model": model,
"prompt": prompt,
"max_tokens": kwargs.get("max_tokens", MAX_TOKENS),
"temperature": kwargs.get("temperature", DEFAULT_TEMPERATURE),
"stream": True,
**({"stop": kwargs["stop"]} if "stop" in kwargs else {}),
}
}
log.debug("STREAM /v1/completions %s", json.dumps(payload)[:500])
resp = await endpoint.request("/v1/completions", payload, cost=payload["input"]["max_tokens"], stream=True)
return resp["response"] # async generator
async def stream_chat_completions(client: Serverless, *, model: str, messages: List[Dict[str, Any]], endpoint_name: str, **kwargs):
endpoint = await client.get_endpoint(name=endpoint_name)
payload = {
"input": {
"model": model,
"messages": messages,
"max_tokens": kwargs.get("max_tokens", MAX_TOKENS),
"temperature": kwargs.get("temperature", DEFAULT_TEMPERATURE),
"stream": True,
**({"tools": kwargs["tools"]} if "tools" in kwargs else {}),
**({"tool_choice": kwargs["tool_choice"]} if "tool_choice" in kwargs else {}),
}
}
log.debug("STREAM /v1/chat/completions %s", json.dumps(payload)[:500])
resp = await endpoint.request("/v1/chat/completions", payload, cost=payload["input"]["max_tokens"], stream=True)
return resp["response"] # async generator
# ---------------------- Demo Runner ----------------------
class APIDemo: class APIDemo:
"""Demo and testing functionality for the API client""" """Demo and testing functionality for the API client"""
def __init__( def __init__(self, client: Serverless, model: str, endpoint_name: str, tool_manager: Optional[ToolManager] = None):
self, client: APIClient, 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()
def handle_streaming_response( # ----- Streaming handler -----
self, response_stream, show_reasoning: bool = True async def handle_streaming_response(self, stream, show_reasoning: bool = True) -> str:
) -> str:
"""
Handle streaming chat response and display all output.
"""
full_response = "" full_response = ""
reasoning_content = "" reasoning_content = ""
reasoning_started = False printed_reasoning = False
content_started = False printed_answer = False
finish_reason = None
for chunk in response_stream: async for chunk in stream:
# Normalize the chunk choice = (chunk.get("choices") or [{}])[0]
if isinstance(chunk, str): delta = choice.get("delta", {})
chunk = chunk.strip()
if chunk.startswith("data: "):
chunk = chunk[6:].strip()
if chunk in ["[DONE]", ""]:
continue
try:
parsed_chunk = json.loads(chunk)
except json.JSONDecodeError:
continue
elif isinstance(chunk, dict):
parsed_chunk = chunk
else:
continue
# Parse delta from the chunk # Track finish reason
choices = parsed_chunk.get("choices", []) if choice.get("finish_reason"):
if not choices: finish_reason = choice.get("finish_reason")
continue
delta = choices[0].get("delta", {}) # reasoning tokens
reasoning_token = delta.get("reasoning_content", "") rc = delta.get("reasoning_content")
content_token = delta.get("content", "") if rc and show_reasoning:
if not printed_reasoning:
# Print reasoning token if applicable
if show_reasoning and reasoning_token:
if not reasoning_started:
print("\n🧠 Reasoning: ", end="", flush=True) print("\n🧠 Reasoning: ", end="", flush=True)
reasoning_started = True printed_reasoning = True
print(f"\033[90m{reasoning_token}\033[0m", end="", flush=True) print(rc, end="", flush=True)
reasoning_content += reasoning_token reasoning_content += rc
# Print content token # content tokens
if content_token: content_part = delta.get("content")
if not content_started: if content_part:
if show_reasoning and reasoning_started: if not printed_answer:
print(f"\n💬 Response: ", end="", flush=True) if show_reasoning and printed_reasoning:
print("\n💬 Response: ", end="", flush=True)
else: else:
print("Assistant: ", end="", flush=True) print("Assistant: ", end="", flush=True)
content_started = True printed_answer = True
print(content_token, end="", flush=True) print(content_part, end="", flush=True)
full_response += content_token full_response += content_part
print() # Ensure newline after response
print() # newline
if show_reasoning: if show_reasoning:
if reasoning_started or content_started: if printed_reasoning or printed_answer:
print("\nStreaming completed.") print("\nStreaming completed.")
if reasoning_started: if printed_reasoning:
print(f"Reasoning tokens: {len(reasoning_content.split())}") print(f"Reasoning tokens: {len(reasoning_content.split())}")
if content_started: 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
def test_tool_support(self) -> bool: async def demo_completions(self) -> None:
"""Test if the endpoint supports function calling""" print("=" * 60)
log.debug("Testing endpoint tool calling support...") print("COMPLETIONS DEMO")
print("=" * 60)
# Try a simple request with minimal tools to test support response = await call_completions(
client=self.client,
model=self.model,
prompt=COMPLETIONS_PROMPT,
endpoint_name=self.endpoint_name,
max_tokens=MAX_TOKENS,
temperature=DEFAULT_TEMPERATURE,
)
print("\nResponse:")
print(json.dumps(response, indent=2))
async def demo_chat(self, use_streaming: bool = True) -> None:
print("=" * 60)
print(f"CHAT COMPLETIONS DEMO {'(STREAMING)' if use_streaming else '(NON-STREAMING)'}")
print("=" * 60)
messages = [{"role": "user", "content": CHAT_PROMPT}]
if use_streaming:
stream = await stream_chat_completions(
client=self.client,
model=self.model,
messages=messages,
endpoint_name=self.endpoint_name,
max_tokens=MAX_TOKENS,
temperature=DEFAULT_TEMPERATURE
)
try:
await self.handle_streaming_response(stream, show_reasoning=True)
except Exception as e:
log.error("\nError during streaming: %s", e, exc_info=True)
else:
response = await call_chat_completions(
client=self.client,
model=self.model,
messages=messages,
endpoint_name=self.endpoint_name,
max_tokens=MAX_TOKENS,
temperature=DEFAULT_TEMPERATURE
)
choice = (response.get("choices") or [{}])[0]
message = choice.get("message", {})
content = message.get("content", "")
reasoning = message.get("reasoning_content", "") or message.get("reasoning", "")
if reasoning:
print(f"\n🧠 Reasoning: \033[90m{reasoning}\033[0m")
print(f"\n💬 Assistant: {content}")
print(f"\nFull Response:\n{json.dumps(response, indent=2)}")
async def test_tool_support(self) -> bool:
"""Probe that tool schema is accepted (no actual call)"""
messages = [{"role": "user", "content": "Hello"}] messages = [{"role": "user", "content": "Hello"}]
minimal_tool = [ minimal_tool = [
{ {
@@ -277,179 +293,158 @@ class APIDemo:
"function": {"name": "test_function", "description": "Test function"}, "function": {"name": "test_function", "description": "Test function"},
} }
] ]
try:
config = ChatCompletionConfig( _ = await call_chat_completions(
client=self.client,
model=self.model, model=self.model,
messages=messages, messages=messages,
max_tokens=10, endpoint_name=self.endpoint_name,
tools=minimal_tool, tools=minimal_tool,
tool_choice="none", # Don't actually call the tool tool_choice="none",
max_tokens=10
) )
try:
response = self.client.call_chat_completions(config)
return True return True
except Exception as e: except Exception as e:
log.error(f"Error: Endpoint does not support tool calling: {e}") log.error("Endpoint does not support tool calling: %s", e)
return False return False
def demo_completions(self) -> None: async def demo_ls_tool(self) -> None:
"""Demo: test basic completions endpoint""" """Ask to list files using function calling, then provide final analysis"""
print("=" * 60)
print("COMPLETIONS DEMO")
print("=" * 60)
config = CompletionConfig(
model=self.model, prompt=COMPLETIONS_PROMPT, stream=False
)
log.info(
f"Testing completions with model '{self.model}' and prompt: '{config.prompt}'"
)
response = self.client.call_completions(config)
if isinstance(response, dict):
print("\nResponse:")
print(json.dumps(response, indent=2))
else:
log.error("Unexpected response format")
def demo_chat(self, use_streaming: bool = True) -> None:
"""
Demo: test chat completions endpoint with optional streaming
"""
print("=" * 60)
print(
f"CHAT COMPLETIONS DEMO {'(STREAMING)' if use_streaming else '(NON-STREAMING)'}"
)
print("=" * 60)
config = ChatCompletionConfig(
model=self.model,
messages=[{"role": "user", "content": CHAT_PROMPT}],
stream=use_streaming,
)
log.info(f"Testing chat completions with model '{self.model}'...")
response = self.client.call_chat_completions(config)
if use_streaming:
try:
self.handle_streaming_response(response, show_reasoning=True)
except Exception as e:
log.error(f"\nError during streaming: {e}")
import traceback
traceback.print_exc()
return
else:
if isinstance(response, dict):
choice = response.get("choices", [{}])[0]
message = choice.get("message", {})
content = message.get("content", "")
reasoning = message.get("reasoning_content", "") or message.get(
"reasoning", ""
)
if reasoning:
print(f"\n🧠 Reasoning: \033[90m{reasoning}\033[0m")
print(f"\n💬 Assistant: {content}")
print(f"\nFull Response:")
print(json.dumps(response, indent=2))
else:
log.error("Unexpected response format")
def demo_ls_tool(self) -> None:
"""Demo: ask LLM to list files in the current directory and describe what it sees"""
print("=" * 60) print("=" * 60)
print("TOOL USE DEMO: List Directory Contents") print("TOOL USE DEMO: List Directory Contents")
print("=" * 60) print("=" * 60)
# Test if tools are supported first if not await self.test_tool_support():
if not self.test_tool_support():
return return
# Request with tool available messages: List[Dict[str, Any]] = [{"role": "user", "content": TOOLS_PROMPT}]
messages = [{"role": "user", "content": TOOLS_PROMPT}]
config = ChatCompletionConfig( # First pass: let the model decide tools, stream tool_calls and partial content
stream = await stream_chat_completions(
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,
temperature=DEFAULT_TEMPERATURE,
) )
log.info(f"Making initial request with tool using model '{self.model}'...") assistant_content_buf: List[str] = []
response = self.client.call_chat_completions(config) tool_calls_state: Dict[int, Dict[str, Any]] = {}
printed_reasoning = False
printed_answer = False
if not isinstance(response, dict): async for chunk in stream:
raise ValueError("Expected dict response for tool use") choice = (chunk.get("choices") or [{}])[0]
delta = choice.get("delta", {})
choice = response.get("choices", [{}])[0] rc = delta.get("reasoning_content")
message = choice.get("message", {}) if rc:
if not printed_reasoning:
printed_reasoning = True
print("🧠 Reasoning: ", end="", flush=True)
print(rc, end="", flush=True)
print(f"Assistant response: {message.get('content', 'No content')}") content_part = delta.get("content")
if content_part:
assistant_content_buf.append(content_part)
if not printed_answer:
printed_answer = True
print("\n💬 Response: ", end="", flush=True)
print(content_part, end="", flush=True)
# Check for tool calls if "tool_calls" in delta and delta["tool_calls"]:
tool_calls = message.get("tool_calls") for tc_delta in delta["tool_calls"]:
if not tool_calls: _merge_tool_call_delta(tool_calls_state, tc_delta)
raise ValueError(
"No tool calls made - model may not support function calling"
)
print(f"Tool calls detected: {len(tool_calls)}") # If no tool calls, were done.
if not tool_calls_state:
print("\n(No tool calls were made.)")
return
# Execute the tool call # Build assistant message with tool_calls
for tool_call in tool_calls: assistant_message = {
function_name = tool_call["function"]["name"] "role": "assistant",
print(f"Executing tool: {function_name}") "content": "".join(assistant_content_buf) if assistant_content_buf else None,
"tool_calls": _tool_state_to_message_tool_calls(tool_calls_state),
tool_result = self.tool_manager.execute_tool_call(tool_call)
print(f"Tool result:\n{tool_result}")
# Add tool result and continue conversation
messages.append(message) # Add assistant's message with tool call
messages.append(
{
"role": "tool",
"tool_call_id": tool_call["id"],
"content": tool_result,
} }
) messages.append(assistant_message)
# Get final response # Execute tools and feed results back
final_config = ChatCompletionConfig( for tc in assistant_message["tool_calls"]:
tool_name = (tc.get("function") or {}).get("name")
call_id = tc.get("id")
raw_args = (tc.get("function") or {}).get("arguments") or "{}"
try:
args = json.loads(raw_args) if raw_args.strip() else {}
except Exception as e:
tool_result = json.dumps({"error": f"Argument parse failed: {str(e)}", "raw_arguments": raw_args})
messages.append({"role": "tool", "tool_call_id": call_id, "content": tool_result})
continue
try:
if tool_name == "list_files":
tool_result = self.tool_manager.list_files()
else:
tool_result = json.dumps({"error": f"Unknown tool '{tool_name}'"})
except Exception as e:
tool_result = json.dumps({"error": f"Tool '{tool_name}' failed: {str(e)}"})
print("\n[Tool executed]", tool_name)
print(tool_result[:500] + ("..." if len(tool_result) > 500 else ""))
messages.append({"role": "tool", "tool_call_id": call_id, "content": tool_result})
# Second pass: get final streamed answer after tool results
stream2 = await stream_chat_completions(
client=self.client,
model=self.model, model=self.model,
messages=messages, messages=messages,
tools=self.tool_manager.get_ls_tool_definition(), endpoint_name=self.endpoint_name,
max_tokens=MAX_TOKENS,
temperature=DEFAULT_TEMPERATURE,
) )
print("Getting final response...") final_buf = []
final_response = self.client.call_chat_completions(final_config) printed_reasoning2 = False
printed_answer2 = False
if isinstance(final_response, dict): async for chunk in stream2:
final_choice = final_response.get("choices", [{}])[0] choice = (chunk.get("choices") or [{}])[0]
final_message = final_choice.get("message", {}) delta = choice.get("delta", {})
final_content = final_message.get("content", "")
rc2 = delta.get("reasoning_content")
if rc2:
if not printed_reasoning2:
printed_reasoning2 = True
print("\n🧠 Reasoning (post-tools): ", end="", flush=True)
print(rc2, end="", flush=True)
c2 = delta.get("content")
if c2:
final_buf.append(c2)
if not printed_answer2:
printed_answer2 = True
print("\n💬 Response (final): ", end="", flush=True)
print(c2, end="", flush=True)
print("\n" + "=" * 60) print("\n" + "=" * 60)
print("FINAL LLM ANALYSIS:") print("FINAL LLM ANALYSIS:")
print("=" * 60) print("=" * 60)
print(final_content) print("".join(final_buf))
print("=" * 60) print("=" * 60)
def interactive_chat(self) -> None: async def interactive_chat(self) -> None:
"""Interactive chat session with streaming""" """Interactive chat session with streaming"""
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()
messages = [] messages: List[Dict[str, Any]] = []
while True: while True:
try: try:
@@ -467,16 +462,16 @@ class APIDemo:
messages.append({"role": "user", "content": user_input}) messages.append({"role": "user", "content": user_input})
config = ChatCompletionConfig(
model=self.model, messages=messages, stream=True, temperature=0.7
)
print("Assistant: ", end="", flush=True) print("Assistant: ", end="", flush=True)
stream = await stream_chat_completions(
response = self.client.call_chat_completions(config) client=self.client,
assistant_content = self.handle_streaming_response( model=self.model,
response, show_reasoning=True messages=messages,
endpoint_name=self.endpoint_name,
max_tokens=MAX_TOKENS,
temperature=0.7
) )
assistant_content = await self.handle_streaming_response(stream, show_reasoning=True)
# Add assistant response to conversation history # Add assistant response to conversation history
messages.append({"role": "assistant", "content": assistant_content}) messages.append({"role": "assistant", "content": assistant_content})
@@ -485,115 +480,66 @@ class APIDemo:
print("\n👋 Chat interrupted. Goodbye!") print("\n👋 Chat interrupted. Goodbye!")
break break
except Exception as e: except Exception as e:
log.error(f"\nError: {e}") log.error("\nError: %s", e)
continue continue
def main(): # ---------------------- CLI ----------------------
"""Main function with CLI switches for different tests""" def build_arg_parser() -> argparse.ArgumentParser:
from lib.test_utils import test_args 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("--endpoint", default=ENDPOINT_NAME, help=f"Vast endpoint name (default: {ENDPOINT_NAME})")
# Add mandatory model argument modes = p.add_mutually_exclusive_group(required=False)
test_args.add_argument( modes.add_argument("--completion", action="store_true", help="Test completions endpoint")
"--model", required=True, help="Model to use for requests (required)" modes.add_argument("--chat", action="store_true", help="Test chat completions endpoint (non-streaming)")
) modes.add_argument("--chat-stream", action="store_true", help="Test chat completions endpoint with streaming")
modes.add_argument("--tools", action="store_true", help="Test function calling with ls tool (non-streaming+streamed phases)")
modes.add_argument("--interactive", action="store_true", help="Start interactive streaming chat session")
return p
# Add test mode arguments
test_args.add_argument(
"--completion", action="store_true", help="Test completions endpoint"
)
test_args.add_argument(
"--chat",
action="store_true",
help="Test chat completions endpoint (non-streaming)",
)
test_args.add_argument(
"--chat-stream",
action="store_true",
help="Test chat completions endpoint with streaming",
)
test_args.add_argument(
"--tools",
action="store_true",
help="Test function calling with ls tool (non-streaming)",
)
test_args.add_argument(
"--interactive",
action="store_true",
help="Start interactive streaming chat session",
)
args = test_args.parse_args() async def main_async():
args = build_arg_parser().parse_args()
# Check that only one test mode is selected selected = sum([args.completion, args.chat, args.chat_stream, args.tools, args.interactive])
test_modes = [ if selected == 0:
args.completion,
args.chat,
args.chat_stream,
args.tools,
args.interactive,
]
selected_count = sum(test_modes)
if selected_count == 0:
print("Please specify exactly one test mode:") print("Please specify exactly one test mode:")
print(" --completion : Test completions endpoint") print(" --completion : Test completions endpoint")
print(" --chat : Test chat completions endpoint (non-streaming)") print(" --chat : Test chat completions endpoint (non-streaming)")
print(" --chat-stream : Test chat completions endpoint with streaming") print(" --chat-stream : Test chat completions endpoint with streaming")
print(" --tools : Test function calling with ls tool (non-streaming)") print(" --tools : Test function calling with ls tool")
print(" --interactive : Start interactive streaming chat session") print(" --interactive : Start interactive streaming chat session")
print( print(f"\nExample: python {os.path.basename(sys.argv[0])} --model Qwen/Qwen3-8B --chat-stream --endpoint my-vllm-endpoint")
f"\nExample: python {sys.argv[0]} --model Qwen/Qwen3-8B --chat-stream -k YOUR_KEY -e YOUR_ENDPOINT"
)
sys.exit(1) sys.exit(1)
elif selected_count > 1: elif selected > 1:
print("Please specify exactly one test mode") print("Please specify exactly one test mode")
sys.exit(1) sys.exit(1)
try:
endpoint_api_key = Endpoint.get_endpoint_api_key(
endpoint_name=args.endpoint_group_name,
account_api_key=args.api_key,
instance=args.instance,
)
if not endpoint_api_key:
log.error(
f"Could not retrieve API key for endpoint '{args.endpoint_group_name}'. Exiting."
)
sys.exit(1)
# Create the core API client
client = APIClient(
endpoint_group_name=args.endpoint_group_name,
api_key=args.api_key,
server_url=Endpoint.get_autoscaler_server_url(args.instance),
endpoint_api_key=endpoint_api_key,
)
# Create tool manager and demo (passing the model parameter)
tool_manager = ToolManager()
demo = APIDemo(client, args.model, tool_manager)
print(f"Using model: {args.model}")
print("=" * 60) print("=" * 60)
print(f"Using model: {args.model}")
print(f"Using endpoint: {args.endpoint}")
try:
async with Serverless() as client:
demo = APIDemo(client, args.model, args.endpoint, ToolManager())
# Run the selected test
if args.completion: if args.completion:
demo.demo_completions() await demo.demo_completions()
elif args.chat: elif args.chat:
demo.demo_chat(use_streaming=False) await demo.demo_chat(use_streaming=False)
elif args.chat_stream: elif args.chat_stream:
demo.demo_chat(use_streaming=True) await demo.demo_chat(use_streaming=True)
elif args.tools: elif args.tools:
demo.demo_ls_tool() await demo.demo_ls_tool()
elif args.interactive: elif args.interactive:
demo.interactive_chat() await demo.interactive_chat()
except Exception as e: except Exception as e:
log.error(f"Error during test: {e}", exc_info=True) log.error("Error during test: %s", e, exc_info=True)
sys.exit(1) sys.exit(1)
if __name__ == "__main__": if __name__ == "__main__":
main() asyncio.run(main_async())
+2
View File
@@ -11,6 +11,7 @@ MODEL_SERVER_START_LOG_MSG = [
"llama runner started", # Ollama "llama runner started", # Ollama
'"message":"Connected","target":"text_generation_router"', # TGI '"message":"Connected","target":"text_generation_router"', # TGI
'"message":"Connected","target":"text_generation_router::server"', # TGI '"message":"Connected","target":"text_generation_router::server"', # TGI
"main: model loaded" # llama.cpp
] ]
MODEL_SERVER_ERROR_LOG_MSGS = [ MODEL_SERVER_ERROR_LOG_MSGS = [
@@ -34,6 +35,7 @@ backend = Backend(
model_server_url=os.environ["MODEL_SERVER_URL"], model_server_url=os.environ["MODEL_SERVER_URL"],
model_log_file=os.environ["MODEL_LOG"], model_log_file=os.environ["MODEL_LOG"],
allow_parallel_requests=True, allow_parallel_requests=True,
max_wait_time=600.0,
benchmark_handler=CompletionsHandler(benchmark_runs=3, benchmark_words=256), benchmark_handler=CompletionsHandler(benchmark_runs=3, benchmark_words=256),
log_actions=[ log_actions=[
*[(LogAction.ModelLoaded, info_msg) for info_msg in MODEL_SERVER_START_LOG_MSG], *[(LogAction.ModelLoaded, info_msg) for info_msg in MODEL_SERVER_START_LOG_MSG],
+93 -9
View File
@@ -1,19 +1,103 @@
This is the base PyWorker for TGI, designed to create PyWorkers that can utilize various LLMs. It offers two primary endpoints: # HuggingFace TGI PyWorker
1. `generate`: Generates the LLM's response to a given prompt in a single request. This is the base PyWorker for HuggingFace Text Generation Inference (TGI) servers. See the [Serverless documentation](https://docs.vast.ai/serverless) for guides and how-to's.
2. `generate_stream`: Streams the LLM's response token by token.
Both endpoints use the following API payload format: ## Instance Setup
1. Pick a template
This worker is compatible with any TGI backend. We have a template you can use or you can create your own.
- [HuggingFace TGI](https://cloud.vast.ai/?ref_id=62897&creator_id=62897&name=TGI%20(Serverless))
The template can be configured via the template interface. You may want to change the model or startup arguments.
2. Follow the [getting started guide](https://docs.vast.ai/documentation/serverless/quickstart) for help with configuring your serverless setup. For testing, we recommend that you use the default options presented by the web interface.
## Client Setup (Demo)
1. Clone the PyWorker repository to your local machine and install the necessary requirements for running the test client.
```bash
git clone https://github.com/vast-ai/pyworker
cd pyworker
pip install uv
uv venv -p 3.12
source .venv/bin/activate
uv pip install -r requirements.txt
```
## Using the Test Client
The test client demonstrates both streaming and non-streaming generation using TGI's native API.
First, set your API key as an environment variable:
```bash
export VAST_API_KEY=<your_api_key>
```
The `--endpoint` flag is optional. If not provided, it defaults to `my-tgi-endpoint`.
### Generate (Streaming)
Call to `/generate_stream` with streaming response:
```bash
python -m workers.tgi.client --generate-stream --endpoint <ENDPOINT_NAME>
```
### Generate (Non-Streaming)
Call to `/generate` with json response:
```bash
python -m workers.tgi.client --generate --endpoint <ENDPOINT_NAME>
```
### Interactive Session (Streaming)
Interactive session with streaming responses. Type `quit` to exit.
```bash
python -m workers.tgi.client --interactive --endpoint <ENDPOINT_NAME>
```
## API Endpoints
TGI provides two primary endpoints:
### Generate (Non-Streaming)
`/generate` - Returns the complete response in a single request.
```json ```json
{ {
"inputs": "PROMPT", "inputs": "Your prompt here",
"parameters": { "parameters": {
"max_new_tokens": 250 "max_new_tokens": 1024,
"temperature": 0.7,
"return_full_text": false
} }
} }
``` ```
Note that the max_new_tokens parameter, rather than the prompt size, impacts performance. For example, if an ### Generate Stream (Streaming)
instance is benchmarked to process 100 tokens per second, a request with max_new_tokens = 200 will take
approximately 2 seconds to complete. `/generate_stream` - Streams the response token by token.
```json
{
"inputs": "Your prompt here",
"parameters": {
"max_new_tokens": 1024,
"temperature": 0.7,
"do_sample": true,
"return_full_text": false
}
}
```
## Performance Notes
The `max_new_tokens` parameter (not the prompt size) primarily impacts performance. For example, if an instance is benchmarked to process 100 tokens per second, a request with `max_new_tokens = 200` will take approximately 2 seconds to complete.
+202 -105
View File
@@ -1,11 +1,13 @@
import logging import logging
import sys
import json import json
from urllib.parse import urljoin import os
import requests import sys
from utils.endpoint_util import Endpoint import argparse
from utils.ssl import get_cert_file_path
from vastai import Serverless
import asyncio
# ---------------------- Logging ----------------------
logging.basicConfig( logging.basicConfig(
level=logging.DEBUG, level=logging.DEBUG,
format="%(asctime)s[%(levelname)-5s] %(message)s", format="%(asctime)s[%(levelname)-5s] %(message)s",
@@ -13,113 +15,208 @@ logging.basicConfig(
) )
log = logging.getLogger(__file__) log = logging.getLogger(__file__)
# ---------------------- Defaults ----------------------
DEFAULT_PROMPT = "Think step by step: Tell me about the Python programming language."
def call_generate(endpoint_group_name: str, api_key: str, server_url: str) -> None: ENDPOINT_NAME = "TGI-Prod2" # change this to your TGI endpoint name
WORKER_ENDPOINT = "/generate" MAX_TOKENS = 1024
COST = 100 DEFAULT_TEMPERATURE = 0.7
route_payload = {
"endpoint": endpoint_group_name,
"api_key": api_key, # ---------------------- API Calls ----------------------
"cost": COST, async def call_generate(client: Serverless, *, endpoint_name: str, prompt: str, **kwargs) -> dict:
"""Non-streaming generation via /generate endpoint"""
endpoint = await client.get_endpoint(name=endpoint_name)
payload = {
"inputs": prompt,
"parameters": {
"max_new_tokens": kwargs.get("max_tokens", MAX_TOKENS),
"temperature": kwargs.get("temperature", DEFAULT_TEMPERATURE),
"return_full_text": False,
} }
response = requests.post(
urljoin(server_url, "/route/"),
json=route_payload,
timeout=4,
)
response.raise_for_status() # Raise an exception for bad status codes
message = response.json()
url = message["url"]
auth_data = dict(
signature=message["signature"],
cost=message["cost"],
endpoint=message["endpoint"],
reqnum=message["reqnum"],
url=url,
)
payload = dict(inputs="tell me about cats", parameters=dict(max_new_tokens=500))
req_data = dict(payload=payload, auth_data=auth_data)
url = urljoin(url, WORKER_ENDPOINT)
print(f"url: {url}")
response = requests.post(
url,
json=req_data,
verify=get_cert_file_path(),
)
response.raise_for_status()
res = response.json()
print(res)
def call_generate_stream(
endpoint_group_name: str, api_key: str, server_url: str
) -> None:
WORKER_ENDPOINT = "/generate_stream"
COST = 100
route_payload = {
"endpoint": endpoint_group_name,
"api_key": api_key,
"cost": COST,
} }
response = requests.post( log.debug("POST /generate %s", json.dumps(payload)[:500])
urljoin(server_url, "/route/"), resp = await endpoint.request("/generate", payload, cost=payload["parameters"]["max_new_tokens"])
json=route_payload, return resp["response"]
timeout=4,
async def call_generate_stream(client: Serverless, *, endpoint_name: str, prompt: str, **kwargs):
"""Streaming generation via /generate_stream endpoint"""
endpoint = await client.get_endpoint(name=endpoint_name)
payload = {
"inputs": prompt,
"parameters": {
"max_new_tokens": kwargs.get("max_tokens", MAX_TOKENS),
"temperature": kwargs.get("temperature", DEFAULT_TEMPERATURE),
"do_sample": True,
"return_full_text": False,
}
}
log.debug("STREAM /generate_stream %s", json.dumps(payload)[:500])
resp = await endpoint.request(
"/generate_stream",
payload,
cost=payload["parameters"]["max_new_tokens"],
stream=True,
) )
response.raise_for_status() # Raise an exception for bad status codes return resp["response"] # async generator
message = response.json()
url = message["url"]
print(f"url: {url}") # ---------------------- Demo Runner ----------------------
auth_data = dict( class APIDemo:
signature=message["signature"], """Demo and testing functionality for the TGI API client"""
cost=message["cost"],
endpoint=message["endpoint"], def __init__(self, client: Serverless, endpoint_name: str):
reqnum=message["reqnum"], self.client = client
url=message["url"], self.endpoint_name = endpoint_name
async def handle_streaming_response(self, stream) -> str:
"""Process streaming response and print tokens"""
full_response = ""
printed_answer = False
async for event in stream:
tok = (event.get("token") or {}).get("text")
if tok:
if not printed_answer:
printed_answer = True
print("\n💬 Response: ", end="", flush=True)
print(tok, end="", flush=True)
full_response += tok
print() # newline
if printed_answer:
print(f"\nStreaming completed. Response tokens: {len(full_response.split())}")
return full_response
async def demo_generate(self) -> None:
"""Demo non-streaming generation"""
print("=" * 60)
print("GENERATE DEMO (NON-STREAMING)")
print("=" * 60)
response = await call_generate(
client=self.client,
endpoint_name=self.endpoint_name,
prompt=DEFAULT_PROMPT,
max_tokens=MAX_TOKENS,
temperature=DEFAULT_TEMPERATURE,
) )
payload = dict(inputs="tell me about dogs", parameters=dict(max_new_tokens=500))
req_data = dict(payload=payload, auth_data=auth_data) print(f"\n💬 Response: {response.get('generated_text', '')}")
url = urljoin(url, WORKER_ENDPOINT) print(f"\nFull Response:\n{json.dumps(response, indent=2)}")
response = requests.post(url, json=req_data, stream=True)
response.raise_for_status() # Raise an exception for bad status codes async def demo_generate_stream(self) -> None:
for line in response.iter_lines(): """Demo streaming generation"""
payload = line.decode().lstrip("data:").rstrip() print("=" * 60)
if payload: print("GENERATE DEMO (STREAMING)")
print("=" * 60)
stream = await call_generate_stream(
client=self.client,
endpoint_name=self.endpoint_name,
prompt=DEFAULT_PROMPT,
max_tokens=MAX_TOKENS,
temperature=DEFAULT_TEMPERATURE,
)
try: try:
data = json.loads(payload) await self.handle_streaming_response(stream)
print(data["token"]["text"], end="") except Exception as e:
sys.stdout.flush() log.error("\nError during streaming: %s", e, exc_info=True)
except (json.JSONDecodeError, KeyError) as e:
log.warning(f"Failed to parse streaming response: {e}") async def interactive_chat(self) -> None:
continue """Interactive session with streaming generation"""
print("=" * 60)
print("INTERACTIVE STREAMING SESSION")
print("=" * 60)
print(f"Using endpoint: {self.endpoint_name}")
print("Type 'quit' to exit")
print() print()
while True:
try:
user_input = input("You: ").strip()
if user_input.lower() == "quit":
print("👋 Goodbye!")
break
elif not user_input:
continue
print("Assistant: ", end="", flush=True)
stream = await call_generate_stream(
client=self.client,
endpoint_name=self.endpoint_name,
prompt=user_input,
max_tokens=MAX_TOKENS,
temperature=DEFAULT_TEMPERATURE,
)
full_response = ""
async for event in stream:
tok = (event.get("token") or {}).get("text")
if tok:
print(tok, end="", flush=True)
full_response += tok
print() # newline
except KeyboardInterrupt:
print("\n👋 Session interrupted. Goodbye!")
break
except Exception as e:
log.error("\nError: %s", e)
continue
# ---------------------- CLI ----------------------
def build_arg_parser() -> argparse.ArgumentParser:
p = argparse.ArgumentParser(description="Vast TGI Demo (Serverless SDK)")
p.add_argument("--endpoint", default=ENDPOINT_NAME, help=f"Vast endpoint name (default: {ENDPOINT_NAME})")
modes = p.add_mutually_exclusive_group(required=False)
modes.add_argument("--generate", action="store_true", help="Test generate endpoint (non-streaming)")
modes.add_argument("--generate-stream", action="store_true", help="Test generate endpoint with streaming")
modes.add_argument("--interactive", action="store_true", help="Start interactive streaming session")
return p
async def main_async():
args = build_arg_parser().parse_args()
selected = sum([args.generate, args.generate_stream, args.interactive])
if selected == 0:
print("Please specify exactly one test mode:")
print(" --generate : Test generate endpoint (non-streaming)")
print(" --generate-stream : Test generate endpoint with streaming")
print(" --interactive : Start interactive streaming session")
print(f"\nExample: python {os.path.basename(sys.argv[0])} --generate-stream --endpoint my-tgi-endpoint")
sys.exit(1)
elif selected > 1:
print("Please specify exactly one test mode")
sys.exit(1)
print("=" * 60)
print(f"Using endpoint: {args.endpoint}")
try:
async with Serverless() as client:
demo = APIDemo(client, args.endpoint)
if args.generate:
await demo.demo_generate()
elif args.generate_stream:
await demo.demo_generate_stream()
elif args.interactive:
await demo.interactive_chat()
except Exception as e:
log.error("Error during test: %s", e, exc_info=True)
sys.exit(1)
if __name__ == "__main__": if __name__ == "__main__":
from lib.test_utils import test_args asyncio.run(main_async())
args = test_args.parse_args()
endpoint_api_key = Endpoint.get_endpoint_api_key(
endpoint_name=args.endpoint_group_name,
account_api_key=args.api_key,
instance=args.instance,
)
if endpoint_api_key:
try:
call_generate(
api_key=endpoint_api_key,
endpoint_group_name=args.endpoint_group_name,
server_url=args.server_url,
)
call_generate_stream(
api_key=endpoint_api_key,
endpoint_group_name=args.endpoint_group_name,
server_url=args.server_url,
)
except Exception as e:
log.error(f"Error during API call: {e}")
else:
log.error(f"Failed to get API key for endpoint {args.endpoint_group_name} ")