Compare commits
21 Commits
| Author | SHA1 | Date | |
|---|---|---|---|
| 814c3acd4c | |||
| 22bca74087 | |||
| 9c795e2a01 | |||
| 830b532781 | |||
| d6a6e34c6b | |||
| ac1e109c48 | |||
| 70d51bafe1 | |||
| 63909736bb | |||
| f4f7080df1 | |||
| d51a338e8f | |||
| 92a04bd7af | |||
| c98d661513 | |||
| f6fd1c6ac1 | |||
| 055e346c8c | |||
| 1cedb28acf | |||
| ec25dda3ad | |||
| 0397af719d | |||
| 3786cf978d | |||
| a86d4bcf9c | |||
| e9b6a14a5e | |||
| cadac033e1 |
+2
-1
@@ -190,10 +190,11 @@ class SystemMetrics:
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self.additional_disk_usage = disk_usage - self.last_disk_usage
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self.last_disk_usage = disk_usage
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def reset(self):
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def reset(self, expected: float | None) -> None:
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# autoscaler excepts model_loading_time to be populated only once, when the instance has
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# finished benchmarking and is ready to receive requests. This applies to restarted instances
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# as well: they should send model_loading_time once when they are done loading
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if self.model_loading_time == expected:
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self.model_loading_time = None
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+42
-13
@@ -145,14 +145,15 @@ class Metrics:
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#######################################Private#######################################
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async def __send_delete_requests_and_reset(self):
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async def send_data(report_addr: str, success: bool) -> bool:
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async def post(report_addr: str, idxs: list[int], success_flag: bool) -> bool:
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data = {
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"worker_id": self.id,
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"request_idxs": [r.request_idx for r in self.model_metrics.requests_deleting if r.success == success],
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"success": success
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"request_idxs": idxs,
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"success": success_flag,
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}
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log.debug(f"Deleting requests that {'succeeded' if success else 'failed'}: {data['request_idxs']}")
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log.debug(
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f"Deleting requests that {'succeeded' if success_flag else 'failed'}: {data['request_idxs']}"
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)
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full_path = report_addr.rstrip("/") + "/delete_requests/"
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for attempt in range(1, 4):
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try:
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@@ -162,26 +163,50 @@ class Metrics:
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res.raise_for_status()
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return True
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except asyncio.TimeoutError:
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log.debug(f"delete_requests timed out")
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log.debug("delete_requests timed out")
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except (ClientResponseError, Exception) as e:
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log.debug(f"delete_requests failed with error: {e}")
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await asyncio.sleep(2)
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log.debug(f"retrying delete_request, attempt: {attempt}")
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return False
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# Take a snapshot of what we plan to send this tick.
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# New arrivals after this snapshot will remain in the queue for the next tick.
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snapshot = list(self.model_metrics.requests_deleting)
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success_idxs = [r.request_idx for r in snapshot if r.success is True]
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failed_idxs = [r.request_idx for r in snapshot if r.success is False]
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if not success_idxs and not failed_idxs:
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return # nothing to do
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for report_addr in self.report_addr:
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success = await send_data(report_addr, success=True) and await send_data(report_addr, success=False)
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if success is True:
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self.model_metrics.requests_deleting.clear()
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sent_success = True
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sent_failed = True
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if success_idxs:
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sent_success = await post(report_addr, success_idxs, True)
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if failed_idxs:
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sent_failed = await post(report_addr, failed_idxs, False)
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if sent_success and sent_failed:
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# Remove only the items we actually sent from the live queue.
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sent_set = set(success_idxs) | set(failed_idxs)
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self.model_metrics.requests_deleting[:] = [
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r for r in self.model_metrics.requests_deleting
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if r.request_idx not in sent_set
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]
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break
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async def __send_metrics_and_reset(self):
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loadtime_snapshot = self.system_metrics.model_loading_time
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def compute_autoscaler_data() -> AutoScalerData:
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return AutoScalerData(
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id=self.id,
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version=self.version,
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loadtime=(self.system_metrics.model_loading_time or 0.0),
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loadtime=(loadtime_snapshot or 0.0),
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new_load=self.model_metrics.workload_processing,
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cur_load=self.model_metrics.cur_load,
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rej_load=self.model_metrics.workload_rejected,
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@@ -229,11 +254,15 @@ class Metrics:
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self.system_metrics.update_disk_usage()
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sent = False
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for report_addr in self.report_addr:
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success = await send_data(report_addr)
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if success is True:
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if await send_data(report_addr):
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sent = True
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break
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if sent:
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# clear the one-shot loadtime only if we actually sent *this* value
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self.system_metrics.reset(expected=loadtime_snapshot)
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self.update_pending = False
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self.model_metrics.reset()
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self.system_metrics.reset()
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self.last_metric_update = time.time()
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@@ -12,9 +12,21 @@ A docker image is provided but you may use any if the above requirements are met
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## Benchmarking
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A simple image generation benchmark runs when each worker initializes to validate GPU performance and identify underperforming machines.
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### Custom Benchmark Workflows
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The benchmark uses Stable Diffusion v1.5 with ComfyUI's default text-to-image workflow. Configure the benchmark complexity and duration using these variables:
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You can provide a custom ComfyUI workflow for benchmarking by creating `workers/comfyui-json/misc/benchmark.json`. This allows you to test performance using your preferred models and workflow complexity.
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**Ways to provide the benchmark file:**
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- Fork this repository and add your `benchmark.json` file
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- Write the file during worker provisioning (onstart script or setup phase)
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An example file is provided in the repository. To ensure varied generations, use the placeholder `__RANDOM_INT__` in place of static seed values - it will be replaced with a random integer for each benchmark run.
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### Default Benchmark (Fallback)
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If `benchmark.json` is not available, a simple image generation benchmark runs when each worker initializes. This validates GPU performance and helps identify underperforming machines.
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The default benchmark uses Stable Diffusion v1.5 with ComfyUI's standard text-to-image workflow. Configure it using these environment variables:
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| Environment Variable | Default Value | Description |
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| -------------------- | ------------- | ----------- |
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@@ -24,7 +36,7 @@ The benchmark uses Stable Diffusion v1.5 with ComfyUI's default text-to-image wo
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Each benchmark run uses a random prompt from `misc/test_prompts.txt` and a random seed to ensure consistent GPU load patterns.
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### Calibrating Benchmark Duration
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#### Calibrating Fallback Benchmark Duration
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To screen for underperforming hardware, set `BENCHMARK_TEST_STEPS` to match your expected production workflow duration. This allows you to identify machines that won't meet performance requirements.
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@@ -5,12 +5,13 @@ import dataclasses
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from typing import Dict, Any
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from functools import cache
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from math import ceil
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from pathlib import Path
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import json
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import logging
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from lib.data_types import ApiPayload, JsonDataException
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with open("workers/comfyui/misc/test_prompts.txt", "r") as f:
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test_prompts = f.readlines()
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log = logging.getLogger(__file__)
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def count_workload() -> float:
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# Always 100.0 where there is a single instance of ComfyUI handling requests
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@@ -24,9 +25,32 @@ class ComfyWorkflowData(ApiPayload):
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@classmethod
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def for_test(cls):
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"""
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Use the variables available to simulate workflows of the required running time
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If the user has provided a benchmark workflow we can use it here to properly gauge performance.
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Otherwise, use the variables available to simulate workflows of the required running time
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Example: SD1.5, simple image gen 10000 steps, 512px x 512px will run for approximately 9 minutes @ ~18 it/s (RTX 4090)
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"""
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# Try to load benchmark.json
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benchmark_file = Path("workers/comfyui-json/misc/benchmark.json")
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if benchmark_file.exists():
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try:
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with open(benchmark_file, "r") as f:
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benchmark_workflow = json.load(f)
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return cls(
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input={
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"request_id": f"test-{random.randint(1000, 99999)}",
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"workflow_json": benchmark_workflow
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}
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)
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except (json.JSONDecodeError, IOError):
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# JSON is malformed or file can't be read, fall through to default
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log.error(f"Failed to benchmark using {benchmark_file}")
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# Fallback: read prompts and construct payload
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log.info("Using fallback method for benchmarking")
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with open("workers/comfyui-json/misc/test_prompts.txt", "r") as f:
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test_prompts = f.readlines()
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test_prompt = random.choice(test_prompts).rstrip()
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return cls(
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input={
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@@ -0,0 +1,107 @@
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{
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"3": {
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"inputs": {
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"seed": "__RANDOM_INT__",
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"steps": 20,
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"cfg": 8,
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"sampler_name": "euler",
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"scheduler": "normal",
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"denoise": 1,
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"model": [
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"4",
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0
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],
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"positive": [
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"6",
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0
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],
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"negative": [
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"7",
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0
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],
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"latent_image": [
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"5",
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0
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]
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},
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"class_type": "KSampler",
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"_meta": {
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"title": "KSampler"
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}
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},
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"4": {
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"inputs": {
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"ckpt_name": "v1-5-pruned-emaonly-fp16.safetensors"
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},
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"class_type": "CheckpointLoaderSimple",
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"_meta": {
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"title": "Load Checkpoint"
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}
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},
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"5": {
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"inputs": {
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"width": 512,
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"height": 512,
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"batch_size": 1
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},
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"class_type": "EmptyLatentImage",
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"_meta": {
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"title": "Empty Latent Image"
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}
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},
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"6": {
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"inputs": {
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"text": "beautiful scenery nature glass bottle landscape, , purple galaxy bottle,",
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"clip": [
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"4",
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1
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]
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},
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"class_type": "CLIPTextEncode",
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"_meta": {
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"title": "CLIP Text Encode (Prompt)"
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}
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},
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"7": {
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"inputs": {
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"text": "text, watermark",
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"clip": [
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"4",
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1
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]
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},
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"class_type": "CLIPTextEncode",
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"_meta": {
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"title": "CLIP Text Encode (Prompt)"
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}
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},
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"8": {
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"inputs": {
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"samples": [
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"3",
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0
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],
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"vae": [
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"4",
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2
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]
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},
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"class_type": "VAEDecode",
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"_meta": {
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"title": "VAE Decode"
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}
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},
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"9": {
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"inputs": {
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"filename_prefix": "ComfyUI",
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"images": [
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"8",
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0
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]
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},
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"class_type": "SaveImage",
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"_meta": {
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"title": "Save Image"
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}
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}
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}
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@@ -19,6 +19,7 @@ MODEL_SERVER_START_LOG_MSG = "To see the GUI go to: "
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MODEL_SERVER_ERROR_LOG_MSGS = [
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"MetadataIncompleteBuffer", # This error is emitted when the downloaded model is corrupted
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"Value not in list: ", # This error is emitted when the model file is not there at all
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"[ERROR] Provisioning Script failed", # Error inserted by provisioning script if models/nodes fail to download
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]
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Reference in New Issue
Block a user