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Databricks Accredited Platform Administrator Accreditation

The Databricks Accredited Platform Administrator is a 20-minute, unproctored accreditation exam that will test your knowledge about managing and administering the Databricks Lakehouse Platform using Unity Catalog. It will assess your ability to perform the fundamentals of administering the platform, administer identities, configure and secure the platform, manage compute resources, administer and secure data within the platform, and administer CI/CD tooling within the platform. Test takers that pass the exam will be awarded the Databricks Accredited Platform Administrator badge and certificate.

Skill Level
Associate
Duration
20m
Prerequisites

N/A

Self-Paced

Custom-fit learning paths for data, analytics, and AI roles and career paths through on-demand videos

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Registration options

Databricks has a delivery method for wherever you are on your learning journey

Runtime

Self-Paced

Custom-fit learning paths for data, analytics, and AI roles and career paths through on-demand videos

Register now

Instructors

Instructor-Led

Public and private courses taught by expert instructors across half-day to two-day courses

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Learning

Blended Learning

Self-paced and weekly instructor-led sessions for every style of learner to optimize course completion and knowledge retention. Go to Subscriptions Catalog tab to purchase

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Scale

Skills@Scale

Comprehensive training offering for large scale customers that includes learning elements for every style of learning. Inquire with your account executive for details

Upcoming Public Classes

Generative AI Engineer

Generative AI Engineering with Databricks

This course, updated June 2024, is the latest version of the Generative AI Engineering with Databricks course. It is aimed at data scientists, machine learning engineers, and other data practitioners looking to build generative AI applications with the latest and most popular frameworks and Databricks capabilities. 

Please note that this is the free version (for Databricks customers and partners) of this course which includes lectures and demos. The paid version of this course, which includes hands-on labs, will be available as ILT, blended learning, and via Databricks Academy Lab subscriptions on June 21, 2024. 

Below, we describe each of the four, four-hour modules included in this course.

Generative AI Solution Development: This is your introduction to contextual generative AI solutions using the retrieval-augmented generation (RAG) method. First, you’ll be introduced to RAG architecture and the significance of contextual information using Mosaic AI Playground. Next, we’ll show you how to prepare data for generative AI solutions and connect this process with building a RAG architecture. Finally, you’ll explore concepts related to context embedding, vectors, vector databases, and the utilization of Mosaic AI Vector Search.

Generative AI Application Development: Ready for information and practical experience in building advanced LLM applications using multi-stage reasoning LLM chains and agents? In this module, you'll first learn how to decompose a problem into its components and select the most suitable model for each step to enhance business use cases. Following this, we’ll show you how to construct a multi-stage reasoning chain utilizing LangChain and HuggingFace transformers. Finally, you’ll be introduced to agents and will design an autonomous agent using generative models on Databricks.

Generative AI Application Evaluation and Governance: This is your introduction to evaluating and governing generative AI systems. First, you’ll explore the meaning behind and motivation for building evaluation and governance/security systems. Next, we’ll connect evaluation and governance systems to the Databricks Data Intelligence Platform. Third, we’ll teach you about a variety of evaluation techniques for specific components and types of applications. Finally, the course will conclude with an analysis of evaluating entire AI systems with respect to performance and cost.

Generative AI Application Deployment and Monitoring: Ready to learn how to deploy, operationalize, and monitor generative deploying, operationalizing, and monitoring generative AI applications? This module will help you gain skills in the deployment of generative AI applications using tools like Model Serving. We’ll also cover how to operationalize generative AI applications following best practices and recommended architectures. Finally, we’ll discuss the idea of monitoring generative AI applications and their components using Lakehouse Monitoring.

Free
12h
Associate
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Questions?

If you have any questions, please refer to our Frequently Asked Questions page.