Главная
Study mode:
on
1
Intro
2
Apache Spark a unified computing engine
3
Apache Spark: APIS
4
Inside a Spark Application
5
Azure Databricks Managed Apache Spark platform optimized for Azure First party service
6
Hidden Technical Debt in ML Systems
7
Azure Integration
8
Databricks Core Concepts
9
Anomaly Detection - Network Intrusion KOD Cup 1999 Data
10
Demo Architecture
11
Estimators and Transformers
12
Custom Transformers and Estimators
13
Productionizing Machine Learning Workloads
14
Spark Structured Streaming
15
Databricks Developer Tooling
16
Try the demo!
Description:
Dive deep into Azure Databricks, a fast and collaborative Apache® Spark™ based analytics platform optimized for Azure. Explore Spark's technical overview, Azure Databricks' key collaboration features, cluster management, and tight data integration with Azure data sources. Follow a detailed walkthrough of an advanced analytics pipeline built using Spark and Azure Databricks. Learn about Apache Spark APIs, Spark Application internals, and hidden technical debt in ML systems. Discover Databricks core concepts, anomaly detection techniques using the KDD Cup 1999 Network Intrusion dataset, and how to create custom transformers and estimators. Gain insights into productionizing machine learning workloads, Spark Structured Streaming, and Databricks developer tooling. By the end of this 49-minute conference talk, acquire the knowledge to build and deploy sophisticated analytics pipelines using Azure Databricks.

Building Advance Analytics Pipelines with Azure Databricks

NDC Conferences
Add to list