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Intermediate2 days / 10 to 14 guided hourspublished

Data Sciences: Intermediate

Build repeatable data pipelines with SQL, notebooks, feature preparation, and troubleshooting drills.

Audience

  • Self-paced technical learners
  • Instructor-led cohorts
  • Enterprise teams preparing staff for hands-on operations

Prerequisites

  • Beginner course or equivalent experience
  • Comfort with command-line or admin consoles

Outcomes

  • Provision an isolated data sciences lab from template metadata.
  • Use snapshots, rollback, validation checks, and teardown safely.
  • Explain how Python, Jupyter, PostgreSQL fit into an enterprise training environment.
  • Produce evidence that an instructor or admin can review.
Course plan

Modules and labs

Each module maps to provisioned lab work, validation evidence, reset/rollback policy, and instructor visibility.

Module 1

Scenario design

Data Sciences Intermediate lab 1
Module 2

Multi-system implementation

Data Sciences Intermediate lab 2
Module 3

Troubleshooting and reporting

Data Sciences Intermediate capstone
Required templates

Python data science workstation

defined

Ubuntu 24.04 LTS

JupyterLab server

defined

Ubuntu 24.04 LTS

PostgreSQL database

defined

Ubuntu 24.04 LTS

Validation checks

Notebook reachable

JupyterLab returns a valid login page or authenticated health response.

VM reachable

The VM reports boot complete and responds through the tenant bastion path.