Skip to course details

Private cohort training for data engineering teams

Move data workloads from virtual machines to containers and Kubernetes with less guesswork.

This course teaches engineers how to inspect existing VM-based data jobs, package repeatable Docker images, read Kubernetes workload specs and plan handoffs between data pipelines and platform operations.

Technician checks a laptop beside server racks during infrastructure work
Infrastructure context before the class moves into Docker and Kubernetes lab work.

Route selector

Choose the pressure point that brought the team here.

The class can start from an infrastructure migration, a Docker packaging gap, or a Kubernetes handoff problem. The selector below changes the suggested lab route before the call.

Start with a workload census. Map the VM jobs, data stores, secrets touchpoints and scheduler expectations before choosing which pieces move into containers.

Lab chain

Read the stack as one delivery chain.

Each station turns a familiar data engineering task into an operational decision: what stays on a VM, what belongs in an image, and what Kubernetes must own.

Workload survey

Teams list the jobs, volumes, environment variables, service accounts and upstream schedules that must survive a runtime change.

  • Separate long-running services from repeatable batch jobs.
  • Mark data paths that cannot be hidden inside an image.
  • Decide which checks belong before a migration sprint.
Learners in a computer classroom during a technical training session
Small-group instruction keeps the runtime discussion close to real workload constraints.
Engineer reviewing software work on a laptop during a planning session
Exercises stay tied to code, schedules, images and operational handoffs.

Course route

A course route built around data workloads.

Virtualization baseline

Inspect VM-hosted data jobs, dependencies, storage assumptions and scheduler behavior before packaging decisions are made.

Docker packaging

Turn repeatable batch work into image build steps, runtime variables and local verification routines a team can maintain.

Kubernetes operating layer

Read job, deployment and config patterns so data engineers can collaborate with platform teams without guessing at cluster behavior.

Data platform handoff

Draft the ownership map for logs, retries, secrets, data volumes and runbooks before the first production migration.

Tuition call prep

Prepare the call before asking for tuition.

The course is quoted after scope because team size, current runtime and delivery format change the lab depth. Build a short phone brief locally in the browser; it is not submitted from this site.

Best delivery shape
Current runtime pressure
Call brief: 8 learners need a remote workshop focused on VM-hosted scheduled jobs.

Operator details

Scheduling and training coordination.

Training is coordinated through the course operator listed here. Call to confirm fit, delivery format and quoted tuition before any enrollment is scheduled.

1106 S Croatan Hwy Kill Devil Hills, NC 27948 United States (252) 441-9555
Read enrollment, cancellation and data handling terms