Главная
Study mode:
on
1
Intro
2
Introduction
3
What is AIML
4
The Snowflake Data Cloud
5
What is Snowflake
6
Snowflake Park
7
Snowflake SQL
8
ML Modeling API
9
Snowflake Optimized Warehouses
10
Snowflake Data Frames
11
Snowflake Container Services
12
Supported workloads
13
Launch Partners
14
FreeMedium Snowflake
15
Streaming Snowflake
16
Governance
17
Power Functions
18
Forecasting
19
Anomaly Detection
20
Snowflake vs SageMaker
21
Snowflake vs Python Worksheets
Description:
Watch a 53-minute conference talk from Data Con LA 2023 where Snowflake's Field CTO of Data Science, Puneet Lakhanpal, explores how to accelerate AI/ML model production using the Snowflake Data Cloud. Learn about the three key stages of AI/ML model production - development, operations, and application deployment - while discovering how Snowflake's platform provides centralized data access, elastic compute capabilities, and secure generative AI integration. Dive deep into practical implementations using Snowpark for AI/ML development, Container Services for governed Generative AI/LLMs, Streamlit for building intelligent applications, and ML Powered Functions. Gain insights into Snowflake's comprehensive ecosystem, including SQL integration, ML Modeling API, optimized warehouses, data frames, streaming capabilities, governance features, and how it compares with alternatives like SageMaker and Python worksheets.

Turbocharging AI/ML Development with Snowflake Data Cloud

Data Con LA
Add to list
0:00 / 0:00