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Strategic AI Engineering And Ethics
Rating: 5.0 out of 5(1 rating)
2 students

Strategic AI Engineering And Ethics

Steps to developing artificial intelligence system, AI driven system design, How to develop AI software etc.
Created byEric Yeboah
Last updated 1/2026
English

What you'll learn

  • Steps to developing artificial intelligence system
  • Artificial iintelligence deployment guide
  • How to build and deploy AI/ML systems
  • Artificial intelligence Driven System Design
  • How to make your own artificial intelligence
  • How to develop artificial intelligence software
  • Artificial intelligence principles

Course content

6 sections30 lectures2h 38m total length
  • What is artificial intelligence engineering3:40
  • Key components of AI engineering9:51
  • Artificial intelligence principles4:49
  • Workload of AI engineering12:24
  • Critical consideration when developing an AI system11:07

Requirements

  • Desire to learn more about artificial intelligence
  • No special requirement

Description

   Artificial intellligence engineering is a technical discipline that focuses on the design, development, and deployment of artificial intelligence systems. Arificial intelligence engineering involves applying engineering principles and methodologies to create scalable, efficient, and reliable AI-based solutions. Data serves as the cornerstone of AI systems, necessitating careful engineering to ensure premium quality wide spread availability, and usability. AI engineers gather large diverse dataset from multiple sources such as databases, APIs and real-time streams. This data undergoes cleaning, normalization, and preprocessing, often facilitated by automated data pipelines that manage extraction, transformation and loading processes.. An AI engineers workload revolves around the AI systems lifecycle, which is a complex, multi-stage process. This process may involves building models from scratch or using pre-existing models through transfers learning, depending on the projects requirement.

  Once the model is trained, it must be integrated into the broader system, a phase that largely remains the same regardless of how the model was develop. System interaction involves connecting the AI model to various software components and ensuring that it can interact with external system, databases, and user interfaces. The deployment stage typically involves the same overarching strategies- whether the model is built from scratch or based on an existing model. However models built from scratch may require more extensive fine-tuning during deployment to ensure they meet performance requirements in a production environment.

Who this course is for:

  • Companies, AI professionals, managers, consultants, directors, students, government, CEO, institutions, universities, general public etc.