Quickstarts¶
Use the following quickstarts to help you get up to speed with Snowflake ML.
| Quickstart | Level | Description | 
|---|---|---|
| Beginner | Build, deploy and manage an XGBoost model in production, including full intro of Snowflake’s MLOps capabilities | |
| Scale Embeddings with Snowflake Notebooks on Container Runtime | Intermediate | Experiment with an open source embedding model and serve for large batch inference | 
| Defect Detection Using Distributed PyTorch with Snowflake Notebooks | Intermediate | Detect defects with PyTorch-based computer vision models using GPUs | 
| Getting Started with Distributed PyTorch with Snowflake Notebooks | Intermediate | Build and deploy a recommendation model with PyTorch using GPUs | 
| Building ML Models to Crack the Code of Customer Conversions | Intermediate | Build a complete ML pipeline that classifies text data, performs sentiment analysis with gen AI, and predicts customer purchases using XGBoost | 
| Quickstart | Level | Description | 
|---|---|---|
| Getting Started with Snowflake Notebooks on Container Runtime | Beginner | Introductory quickstart covering the basics of using Snowflake Notebooks on Container Runtime | 
| Beginner | Develop a model in Snowflake Notebooks, including preprocessing, feature engineering and model training | |
| Beginner | Train an XGBoost model on GPUs in Snowflake Notebooks | |
| Distributed Multi-Node and Multi GPU Audio Transcription with Snowflake ML | Intermediate | Perform multi-node, multi-GPU audio transcriptions using Container Runtime with OpenAI’s Whisper’s large-v3 on HuggingFace | 
| Quickstart | Level | Description | 
|---|---|---|
| Introduction to Snowflake Feature Store with Snowflake Notebooks | Beginner | Introductory quickstart covering the basics of using Snowflake Feature Store | 
| Beginner | Introductory quickstart covering the basics of using APIs in Snowflake Feature Store | |
| Beginner | Introductory quickstart covering the basics of using ML Observability in Snowflake | |
| Develop and Manage ML Models with Feature Store and Model Registry | Intermediate | Demonstrates an ML experiment cycle including feature creation, training data generation, model training and inference |