Skip to main content

www.renderg.com

Project description

准备

  1. 创建虚拟环境

    python -m venv venv
    
  2. 安装 renderg-sdk

    pip install renderg-sdk
    
  3. 创建配置文件 config.json

    {
      "AUTH_KEY": "*******************",
      "CLUSTER_ID": 27,
      "PROJECT_ID": 21479,
      "ENV_ID": 7715,
      "ZONE_ID": 1003,
      "RAM_LIMIT": "64G"
    }
    
  • AUTH_KEY 用户身份认证,请联系 RenderG 渲染农场平台技术支持获取;
  • CLUSTER_ID 区域 ID ,一般为固定;
  • PROJECT_ID,提交任务默认项目,在客户端项目管理中创建;
  • ENV_ID ,提交任务默认环境,在客户端环境管理中创建;
  • ZONE_ID,提交任务默认配置,默认请使用 1003;
  • RAM_LIMIT,提交任务默认内存配置,64G、128G、256G 可选;

分析资产并上传

import os

from renderg_utils import utils, log
from analyze_houdini import AnalyzeHoudini
from renderg_api import RenderGAPI
from renderg_api.constants import TransferLines
from renderg_api.param_check import RenderGParamChecker
from renderg_transfer.RGUpload import RenderGUpload
from renderg_transfer.RGDownload import RenderGDownload


# ========分析资产和设置渲染参数==========

# 1. 读取配置文件并设置工作目录
config = utils.read_json("./config.json")
workspace = config.get("WORKSPACE", os.path.expandvars("%userprofile%/RenderG_WorkSpace"))

# 2. 设置日志模块
log.init_logging(log_dir=utils.get_workspace(workspace), console=True)
logger = log.get_logger()
logger.info("SDK Version: {}".format(utils.get_version()))


# 3.  创建任务信息
api = RenderGAPI(auth_key=config["AUTH_KEY"], cluster_id=config["CLUSTER_ID"])

analyze_info = {
    "dcc_file": r"D:\houdini_file\JSBL_lgt_qunji_wmy_v001.hip", # DCC 文件路径
    "dcc_version": "19.0.622", # DCC 版本号
    "api": api, # RenderGAPI 实例
    "project_id": config["PROJECT_ID"],  # 项目ID
    "env_id": config["ENV_ID"],  # 环境ID
    "workspace": workspace,  # 工作目录
    "logger": logger, # 日志记录器
}
# 4. 分析资产列表和场景渲染参数
analyze_obj = AnalyzeHoudini(**analyze_info)
analyze_obj.analyze()
logger.info(analyze_obj.info_path)

# 5. 设置选择参数信息
param_check_obj = RenderGParamChecker(api, analyze_obj)
render_params = {
    "ChunkSize": 1,  # 一机多帧
    "Mark": "",  # 任务备注信息
    "PriorityFrames": "010:",  # 优先渲染帧 例:101:100-108x2 代表渲染首尾帧和100-108步长为2的帧

    "zone_id": config["ZONE_ID"],  # CPU 配置信息
    "ram_limit": config["RAM_LIMIT"],  # 内存配置
}
param_check_obj.set_houdini_render_node({
    "/node/path/to/render": "1001-1100",
    "/node/path/to/render/1": "100-1100",
})

param_check_obj.execute(**render_params)

# ========上传任务并提交==========
# 1. 获取 info.cfg 和 任务 ID 信息
info_path = analyze_obj.info_path
job_id = analyze_obj.job_id

# 2. 配置上传任务信息 
upload_kwargs = {
    "api": api,
    "job_id": job_id,
    "info_path": info_path,
    "line": TransferLines.LINE_UNICOM,
    "speed": 200  # 上传速度限制,单位为 Mbps
}
# 3. 开始上传
renderg_upload = RenderGUpload(**upload_kwargs)
renderg_upload.upload()

# 4. 上传完成,提交任务,开始渲染
submit = api.job.submit_job(job_id)
logger.info(submit["msg"])

# 5. 下载
# 等待任务完成下载
download_kwargs = {
    "api": api,
    "job_id": job_id,
    "download_path": "d:/test",  # 下载保存到本地路径
    "line": TransferLines.LINE_UNICOM,
    "cluster_id": config["CLUSTER_ID"],
    "speed": 500  # 上传速度限制,单位为 Mbps
}
renderg_sync = RenderGDownload(**download_kwargs)
result = renderg_sync.auto_download_after_job_completed()

'''
# 自定义下载
download_others_json = {
    "api": api,
    "job_id": None,
    "download_path": "d:/test",  # 下载保存到本地路径
    "line": TransferLines.LINE_UNICOM,
    "cluster_id": config["CLUSTER_ID"],
    "speed": 3000  # 上传速度限制,单位为 Mbps
}
server_path = {
    "/{job_id}".format(job_id=job_id)
}  # 提供待下载目录列表
renderg_sync = RenderGDownload(**download_others_json)
renderg_sync.custom_download(server_path)
'''

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

renderg-sdk-0.1.22.tar.gz (18.4 MB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

renderg_sdk-0.1.22-py2.py3-none-any.whl (18.7 MB view details)

Uploaded Python 2Python 3

File details

Details for the file renderg-sdk-0.1.22.tar.gz.

File metadata

  • Download URL: renderg-sdk-0.1.22.tar.gz
  • Upload date:
  • Size: 18.4 MB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/4.0.2 CPython/3.7.6

File hashes

Hashes for renderg-sdk-0.1.22.tar.gz
Algorithm Hash digest
SHA256 8f2609b7113a63e520dc2350ab60e0c6fbb720bc9c87f7b417fdd5a8cc2c22a2
MD5 d9a744228899f792d0b12d8e1a2027d9
BLAKE2b-256 4f6a5e36ab798c8d61ba8d79d8e40a202a3313fe1ba142708509a10226c25d9e

See more details on using hashes here.

File details

Details for the file renderg_sdk-0.1.22-py2.py3-none-any.whl.

File metadata

  • Download URL: renderg_sdk-0.1.22-py2.py3-none-any.whl
  • Upload date:
  • Size: 18.7 MB
  • Tags: Python 2, Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/4.0.2 CPython/3.7.6

File hashes

Hashes for renderg_sdk-0.1.22-py2.py3-none-any.whl
Algorithm Hash digest
SHA256 b4342b9d0014565500df6cd288a72004ab7c5e4df2c233a93597e4f174fe7d94
MD5 75757be58be7f33e169451a684ab79c9
BLAKE2b-256 f3caadbb7a4f1552c0ff52692961807543ffaf62a717b291ec718a5ee5b0c9cc

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page