AI Skillset Course
Consent and Transparency Challenges in AI - LinkedIn Learning
Current
Intermediate

Consent and Transparency Challenges in AI

LinkedIn Learning · LinkedIn Learning · Updated March 2026

Platform rating

4.4/5

Champ rating

8.1/10

Duration

1-2 hours video

Classes

8

Address the critical challenges of obtaining informed consent and maintaining transparency in AI systems. This course examines regulatory requirements, ethical considerations, and practical strategies for building trustworthy AI.

What you'll get

Understand consent requirements for AI systems
Implement transparency mechanisms in AI applications
Address regulatory compliance for data and consent
Build trust through ethical AI practices

Fit

Best for

Leaders
Analysts
Researchers
Decision-makers

Not ideal for

Learners seeking only entry-level overviews

Prerequisites & pricing

Prerequisites

Basic AI literacy

Pricing

Subscription

Certification

Certificate

AI Ethics
Transparency
Consent
Trust
GDPR Compliance
Go to Course

Alternatives to Consent and Transparency Challenges in AI

Current

AI Ethics for Professionals

edX · Davidson College

4.5
8.3/10
1 week

Davidson College course on AI ethics covering bias, privacy, transparency, and accountability for professionals working with AI systems.

Free (verified: $49)
View
Current

Using AI Responsibly - Microsoft Copilot Video Tutorial

LinkedIn Learning · LinkedIn Learning

4.4
8.2/10
4 minutes video

Learn about AI fluency and why responsible AI use matters in your career. This video tutorial covers practical approaches to using AI tools like Microsoft Copilot ethically and effectively.

Subscription
View
Current

AI Ethics

DataCamp · DataCamp

4.4
8.1/10
1 hour

Explore the ethical implications of AI. Learn about bias, fairness, transparency, privacy, and responsible AI development practices.

$25/month subscription
View
Current

AI Ethics & Responsible AI

Skool · AI Ethics Community

4.4
8.1/10
Self-paced community

Discuss and implement responsible AI practices. Bias detection, fairness, transparency, safety, and ethical AI development principles.

Free community
View