Plan Szkolenia

Day 1:

  • Introduction

Module 1: KNIME Server:

Collaboration - Connecting and Deploying Items to KNIME Server from KNIME Analytics Platform

  • How to Connect to KNIME Server
  • Permission Settings on KNIME Server

Module 2: KNIME Server: Automation & Deployment

Automation and Deployment - Remote Execution and KNIME WebPortal

  • Remote Execution on KNIME Server
  • KNIME Remote Workflow Editor
  • KNIME WebPortal

Day 2:

Module 3: KNIME Server: Management

Management - Versioning and Workflow Difference

  • Versioning
  • Workflow Comparison
  • Node Comparison

Module 4: Overview of KNIME Analytics Platform

  • Controlling the model flow
  • Model deployment on KNIME Server
  • Test Scenarios between KNIME AP & Server
  • Summary and Conclusion

Wymagania

  • A basic understanding of making sense of the data.
  • Experience with fundamental data processing.

Audience

  • data science managers
  • model administrators
  • data engineers
  • data analysts
  • data scientists
 14 godzin

Liczba uczestników



Cena za uczestnika

Opinie uczestników (5)

Szkolenia Powiązane

Kaggle

14 godzin

Accelerating Python Pandas Workflows with Modin

14 godzin

GPU Data Science with NVIDIA RAPIDS

14 godzin

Anaconda Ecosystem for Data Scientists

14 godzin

KNIME Analytics Platform for BI

21 godzin

Data Science with KNIME Analytics Platform

21 godzin

Platforma analityczna KNIME - szkolenie kompleksowe

35 godzin

KNIME with Python and R for Machine Learning

14 godzin

Introduction to Data Science and AI using Python

35 godzin

Big Data Business Intelligence for Telecom & Communication Service Providers

35 godzin

A Practical Introduction to Data Science

35 godzin

Data Science for Big Data Analytics

35 godzin

Data Science essential for Marketing/Sales professionals

21 godzin

F# for Data Science

21 godzin

Introduction to Data Science

35 godzin

Powiązane Kategorie