tencent cloud

Tencent Cloud TI Platform

Product Introduction
Overview
Product Pricing
Benefits to Customers
Use Cases
Purchase Guide
Billing Overview
Purchase Mode
Renewal Instructions
Overdue Payment Instructions
Security Compliance
Data Security Protection Mechanism
Monitoring, Auditing, and Logging
Security Compliance Qualifications
Quick Start
Platform Usage Preparation
Operation Guide
Model Hub
Task-Based Modeling
Dev Machine
Model Management
Model Evaluation
Online Services
Resource Group Management
Managing Data Sources
Tikit
GPU Virtualization
Practical Tutorial
Deploying and Reasoning of LLM
LLM Training and Evaluation
Built-In Training Image List
Custom Training Image Specification
Angel Training Acceleration Feature Introduction
Implementing Resource Isolation Between Sub-users Based on Tags
API Documentation
History
Introduction
API Category
Making API Requests
Online Service APIs
Data Types
Error Codes
Related Agreement
Service Level Agreement
Privacy Policy
Data Processing And Security Agreement
Open-Source Software Information
Contact Us

Overview of Task-Based Modeling

PDF
Focus Mode
Font Size
Last updated: 2025-05-12 17:39:43
Task-based modeling provides a wizard-guided way to submit training tasks for model building. You can directly use the built-in images of the platform to quickly submit training tasks with mainstream high-performance and distributed training frameworks. You can also start tasks through custom training images. The detailed description of functional modules is as follows:
Creating training tasks: Create and submit a training task based on a built-in framework or custom training image. You can use platform datasets, COS data, or CFS file systems as training samples. You can also set training task algorithm parameters, enable log shipping, and bind a VPC.
Managing task operations: Provide normal management operations, including start, stop, and deletion of training tasks. It supports the task replication feature. You can quickly launch training tasks with different configurations to compare model training effects.
Monitoring task operations: Provide running logs of training, and support visual monitoring of training metrics, training resource consumptions, and training tasks started via TiKit.
TensorBoard: Start TensorBoard for monitoring tasks.

Help and Support

Was this page helpful?

Help us improve! Rate your documentation experience in 5 mins.

Feedback