Course Catalog
AITECH - Cisco AI Technical Practitioner v1.0
Code: AITECH 1.0
Duration: 2 Day
$1995 USD

OVERVIEW

The Cisco AI Technical Practitioner (AITECH) training is designed for technical professionals seeking to transition from traditional knowledge-based work to innovation-driven roles augmented by Artificial Intelligence (AI). This comprehensive program equips you with the skills to effectively design technical solutions, automate tasks, and lead technical teams using cutting-edge AI tools and methodologies. From AI-powered code generation and data analysis to advanced model customization and workflow automation, this training prepares IT and network engineers, data analysts, AIOPs specialists, solutions architects, technical leads, managers, and business process analysts to harness the full potential of AI within their organizations.

This training prepares you for the 810-110 AITECH v1.0 exam. If passed, you earn the AI Technical Practitioner certification. This training also earns you 8 Continuing Education (CE) credits toward recertification.

DELIVERY FORMAT

This course is available in the following formats:

Virtual Classroom

Duration: 2 Day
Classroom

Duration: 2 Day

CLASS SCHEDULE

Delivery Format: Virtual Classroom
Date: Jul 27 2026 - Jul 28 2026 | 08:30 - 16:30 EDT
Location: Online
Course Length: 2 Day

$ 1995

Delivery Format: Virtual Classroom
Date: Sep 21 2026 - Sep 22 2026 | 08:30 - 16:30 EDT
Location: Online
Course Length: 2 Day

$ 1995

Delivery Format: Virtual Classroom
Date: Nov 09 2026 - Nov 10 2026 | 08:30 - 16:30 EST
Location: Online
Course Length: 2 Day

$ 1995

GOALS
  • Describe common Generative AI models, tools, and practical workflows
  • Apply a strategic framework to build a professional AI toolkit by evaluating platforms for enterprise readiness, analyzing AI service economics, and making the architectural decision between cloud and local deployment
  • Explain the importance of effective prompts and apply basic techniques to craft and refine prompts for improved Generative AI outputs
  • Develop multimodal business assets by utilizing generative AI tools to create and refine text, visual, and audio content
  • Apply security frameworks and governance practices to mitigate dataset bias, protect sensitive data, and neutralize AI-specific threats
  • Validate AI-generated outputs by identifying quality issues and biases, and applying specific techniques to correct those errors for professional use
  • Construct complex, multi-step prompts by applying advanced methodologies to manage ambiguity and elicit specific LLM responses
  • Apply generative AI tools to conduct research and synthesize information, and use AI as a catalyst for brainstorming
  • Explain the fundamental role of APIs in AI systems and the principles of secure API usage
  • Evaluate the impact of AI on software engineering workflows by analyzing its role in optimizing code quality, velocity, and lifecycle management
  • Conduct exploratory data analysis and transformation by utilizing generative AI tools to clean datasets and generative insights
  • Evaluate AI model customization strategies by differentiating between fine-tuning and RAG and analyzing local deployment architectures
  • Design directive AI-powered workflows and describe the architecture of autonomous agentic systems
OUTLINE

  • Generative AI Ecosystem
  • AI ArchitectÂ’s Toolkit
  • Prompt Engineering for Technical Precision
  • AI-Driven Multimodal Asset Creation
  • Generative AI Security and Privacy Fundamentals
  • Debugging and Correcting AI-Generated Outputs
  • Advanced Prompting Strategies
  • AI-Powered Discovery and Synthesis
  • AI Systems Integration with APIs
  • AI-Driven Software Engineering
  • AI for Data Engineering and Exploration
  • Customizing AI Models
  • AI-Powered Workflows and Agentic AI
  • Generative AI Ecosystem
  • AI ArchitectÂ’s Toolkit
  • Prompt Engineering for Technical Precision
  • AI-Driven Multimodal Asset Creation
  • Generative AI Security and Privacy Fundamentals
  • Debugging and Correcting AI-Generated Outputs
  • Advanced Prompting Strategies
  • AI-Powered Discovery and Synthesis
  • AI Systems Integration with APIs
  • AI-Driven Software Engineering
  • AI for Data Engineering and Exploration
  • Customizing AI Models
  • AI-Powered Workflows and Agentic AI
LABS

Will Be Updated Soon!
Will Be Updated Soon!
WHO SHOULD ATTEND
  • IT and Network Engineers
  • Data Analysts
  • AIOPs Specialists
  • Solutions Architects
  • Technical Leads
  • Managers
  • Business Process Analysts
PREREQUISITES

None