Connect with us

Learning

Revolutionising Career Guidance: LinkedIn’s AI-Powered Coaches Transform Job Hunting

Explore the impact of LinkedIn’s AI career coaches.

Published

on

LinkedIn AI career coaches

TL;DR:

  • LinkedIn introduces AI-powered career coaching tools for personalised advice
  • Expert collaboration ensures authentic and high-quality AI responses
  • Generative AI tools assist in resume and cover letter writing, raising concerns about potential biases
  • LinkedIn’s royalty model compensates experts for their contributions to AI coaching

The Future of Career Coaching: AI-Powered Tools on LinkedIn

LinkedIn, the world’s largest professional networking platform, is revolutionising the job search experience by introducing artificial intelligence (AI) powered career coaching tools. Aiming to provide personalised advice and streamline job hunting processes, these new features include AI chatbots modelled after renowned career experts.

LinkedIn’s AI Career Coaches: Personalised Advice at Your Fingertips

These AI career coaches offer personalised advice on various career-related topics, such as salary negotiation and building a growth mindset. Accessible to LinkedIn Premium subscribers and those with access to LinkedIn Recruiter and Learning Hub, these tools provide:

  1. Conversational job search capabilities
  2. Immediate feedback on applications
  3. Personalised suggestions for job opportunities

Users can ask questions and receive tailored responses based on their job title, career goals, and skills followed on the platform.

Expert Collaboration: Authentic AI Responses

To ensure the AI responses are authentic and aligned with expert knowledge, LinkedIn has partnered with renowned career experts like Alicia Reece, Anil Gupta, Dr Gemma Leigh Roberts, and Lisa Gates. These specialists contribute their teaching materials, blog posts, and coaching manuals to help train the AI models.

Prompt: Looking to negotiate your salary? Ask the AI career coach, “What are some effective strategies for negotiating my salary in my current role?”

Generative AI Job Tools: Efficient Job Searching

LinkedIn is also expanding its generative AI tools to assist users in writing resumes and cover letters tailored to specific job postings. These tools provide immediate feedback and personalised suggestions, making the job search process more efficient.

Advertisement

However, the increasing integration of AI in hiring processes raises concerns about potential biases and the need for further exploration of its implications.

Royalty Model: Compensating Experts for Their Contributions

LinkedIn has introduced a royalty model to compensate instructors when their expertise is accessed through AI-powered coaching within a course. This ensures that experts are paid for their contributions to the AI tools.

The Impact of AI on Job Platforms: A Double-Edged Sword

While AI may help historically underrepresented job candidates enhance their profiles and applications, there are concerns about perpetuating past biases in hiring. The implications of further developing generative AI in job platforms like LinkedIn warrant careful consideration to ensure fairness and equal opportunities for all job seekers.

Comment and Share:

What do you think about LinkedIn’s AI-powered career coaching tools? Share your thoughts below and don’t forget to subscribe for updates on AI and AGI developments in Asia.

You may also like:

Advertisement

Author


Discover more from AIinASIA

Subscribe to get the latest posts sent to your email.

Continue Reading
Advertisement
Click to comment

Leave a Reply

Your email address will not be published. Required fields are marked *

Learning

AI Trends for 2025 from IBM Technology

Learn the basics of Artificial Intelligence, Machine Learning, Deep Learning, Generative AI, and Large Language Models in just 10 minutes with Google’s AI Course.

Published

on

AI Trends 2025

TL;DR

  • Explore 2025 AI trends like Agentic AI, faster inference compute, and advanced industry applications.
  • Learn how Large Language Models (LLMs) may evolve into larger, more powerful systems or smaller, task-specific models.
  • Discover the rise of very small AI models for low-power devices and their role in everyday life.

Agentic AI: Smarter, More Independent Systems

Agentic AI refers to systems that can act independently to achieve specific goals, adapting their actions based on the context. In 2025, expect advancements that enable AI agents to handle more complex tasks, making them integral to industries like customer service and autonomous operations.

Inference Time Compute: Faster and More Efficient AI

The demand for faster, more energy-efficient AI models is increasing. As AI adoption grows, innovations in inference time computing will focus on reducing resource consumption while maintaining or improving performance, ensuring AI can scale sustainably.

Large Language Models: Bigger, Better, or Smaller?

LLMs like GPT-4 and others may evolve in two directions:

  • Larger Models: For comprehensive and nuanced tasks, pushing the boundaries of AI capabilities.
  • Smaller, Specialised Models: Tailored for specific applications, offering efficiency without compromising performance.

The Rise of Very Small Models

Smaller, lightweight models will play a significant role in 2025. These models are optimised for devices with limited computing power, such as smartphones and IoT devices, expanding AI’s reach into everyday life with minimal energy consumption.

Advanced Use Cases: AI Across Industries

AI is poised to unlock new possibilities across sectors, including:

  • Healthcare: More precise diagnostics and treatment recommendations.
  • Finance: Enhanced fraud detection and risk analysis.
  • Retail: Personalised shopping experiences powered by real-time AI agents.

Video Breakdown (Timestamps)

  • 0:00 – Introduction to AI Trends for 2025
  • 0:40 – Agentic AI: Smarter, context-aware systems
  • 1:45 – Inference Time Compute: Faster, efficient AI models
  • 2:55 – Large Language Models: Scaling bigger and smaller
  • 3:28 – Very Small Models: AI for low-power devices
  • 4:15 – Advanced Use Cases: AI’s impact across industries

Why Watch This Video?

In just 5 minutes, you’ll gain:

  • Insights into AI trends like Agentic AI and LLM evolution.
  • An understanding of the trade-offs between large and small AI models.
  • A glimpse into how AI will transform industries in 2025 and beyond.

Watch now to stay ahead of the AI curve!

Advertisement

You may also like these other videos:

And don’t forget to subscribe for more insights on navigating AI in work and life!

Author


Discover more from AIinASIA

Subscribe to get the latest posts sent to your email.

Continue Reading

Chatbots

Google’s AI Course for Beginners (in 10 minutes)!

Learn the basics of Artificial Intelligence, Machine Learning, Deep Learning, Generative AI, and Large Language Models in just 10 minutes with Google’s AI Course.

Published

on

Google’s AI Course for Beginners (In 10 Minutes!)

TL;DR

  • Learn the basics of AI, including Machine Learning, Deep Learning, Generative AI, and Large Language Models (LLMs), in just 10 minutes with Google’s AI course.
  • Understand key concepts like supervised vs. unsupervised learning, neural networks, and Generative AI’s ability to create innovative outputs.
  • Discover how LLMs like ChatGPT and Google Bard are pre-trained and customised for real-world applications across industries.

Discover AI, Machine Learning, Deep Learning, and more in just 10 minutes! Google’s AI course provides a clear and concise breakdown of key AI concepts, applications, and tools like #ChatGPT and Google #Bard. Whether you’re a beginner or looking for a quick refresher, this video is your perfect starting point.

What Is Artificial Intelligence?

Artificial Intelligence (AI) is the overarching field that encompasses all efforts to create systems capable of mimicking human intelligence. Think of AI as the umbrella term under which Machine Learning, Deep Learning, and Generative AI reside.

What Is Machine Learning?

Machine Learning (ML) is a subset of AI that enables systems to learn from data and improve over time without explicit programming. It’s broken into two main types:

  • Supervised Learning: Models trained on labeled data, such as spam email detection.
  • Unsupervised Learning: Models that identify patterns in unlabeled data, like customer segmentation.

Using real-world examples, the video illustrates how these two approaches solve distinct challenges.

What Is Deep Learning?

Deep Learning takes Machine Learning a step further, utilizing artificial neural networks inspired by the human brain. It powers advanced applications, such as:

  • Semi-Supervised Learning: Combining labeled and unlabeled data for fraud detection in banking.
  • Image and Speech Recognition: Revolutionising fields like healthcare and communication.

What Is Generative AI?

Generative AI models create new outputs, such as text, images, and videos, by learning from existing data. Unlike discriminative models that classify data, Generative AI enables groundbreaking innovations like creating personalised content or synthesising realistic images.

What Are Large Language Models (LLMs)?

The final segment dives into Large Language Models, the backbone of tools like ChatGPT and Gemini. These models:

Advertisement
  • Undergo extensive pre-training on massive datasets.
  • Are fine-tuned for specific industry applications, such as customer service or education.
  • Enable AI systems to generate context-aware, coherent responses to human prompts.

Video Breakdown (Timestamps)

  • 00:00 – Introduction: Google’s AI Course in 10 Minutes
  • 00:38 – What is Artificial Intelligence?
  • 01:27 – What is Machine Learning?
  • 03:28 – What is Deep Learning?
  • 05:15 – What is Generative AI?
  • 07:05 – What are Large Language Models?

Why Watch This Course?

In just 10 minutes, you’ll gain:

  • A foundational understanding of AI and its subfields.
  • Real-world examples of ML and Deep Learning applications.
  • Insights into the transformative power of Generative AI.
  • An overview of LLMs and their growing role across industries.

Watch the video now and start your AI journey!

You may also like these other videos:

Author


Discover more from AIinASIA

Subscribe to get the latest posts sent to your email.

Continue Reading

Learning

Machine Learning in Asia: How AI is Transforming Industries Across the Region

This article explores the transformative impact of machine learning across key industries in Asia, highlighting rapid market growth, regional leaders in AI adoption, and the challenges and opportunities driving innovation.

Published

on

machine learning asia

TL;DR

  • Asia’s machine learning market is growing at a CAGR of 37.6%, poised to reach $225.91 billion by 2030.
  • Key sectors transformed by AI include manufacturing, agriculture, healthcare, and finance.
  • Countries like Singapore, China, Japan, and South Korea are leading AI adoption, while others are rapidly catching up.
  • Challenges like data governance and skill gaps persist but present opportunities for growth and collaboration.

The Rise of Machine Learning in Asia

Artificial intelligence (AI) and machine learning (ML) are reshaping industries across Asia, driving innovation, enhancing efficiency, and addressing unique regional challenges. As the world’s fastest-growing AI market, Asia is poised to reap significant economic benefits from this technological revolution. Let’s explore how AI and ML are transforming key sectors across the region.

Economic Impact and Market Growth

The adoption of AI in Asia is projected to deliver substantial economic benefits. According to McKinsey, AI could contribute an additional $1 trillion to Southeast Asia’s economy by 2030. The Asia Pacific machine learning market is also expected to grow at a compound annual growth rate (CAGR) of 37.6% from 2022 to 2030, reaching $225.91 billion by the end of the forecast period (source).

Key Industries Transformed by AI

Manufacturing and Automation

AI is revolutionising the manufacturing landscape in Asia, particularly in countries like Vietnam and Thailand. Predictive maintenance systems, increased production output, and enhanced efficiency are redefining industrial processes. Estimates suggest that AI could boost Southeast Asia’s manufacturing productivity by 20% to 30% by 2030.

Agriculture and Food Security

In agriculture-dependent nations such as Indonesia and the Philippines, AI is playing a critical role in optimising crop yields, monitoring soil health, and improving logistics. Precision agriculture and automated drones are becoming essential tools, especially as the region grapples with food security concerns driven by climate change.

Healthcare

As reported by GITEX Asia, AI-powered solutions are transforming healthcare delivery across Asia, making medical services more accessible and efficient, particularly in remote areas. From diagnostics to virtual healthcare platforms, these technologies are enabling faster treatments, reducing patient wait times, and supporting personalised care.

Advertisement

Financial Services

The financial sector is leveraging AI for fraud detection, customer personalisation, and automated support services. AI-driven credit risk assessment models are helping financial institutions extend services to underserved populations, promoting financial inclusion for individuals without traditional credit histories (as reported by the ABD Institute).

AI Adoption Across Asian Countries

AI adoption varies significantly across Asia, with several countries taking notable strides:

  • Singapore is positioning itself as the region’s AI hub, with significant investments in AI development across multiple sectors.
  • China is expected to generate more data than the US by 2025, creating a strong foundation for AI development.
  • Japan and South Korea are leading the way in AI research and development, particularly in robotics and autonomous vehicles.
  • Indonesia, Malaysia, and Thailand are increasingly adopting AI in agriculture, healthcare, and smart city projects.

Challenges and Opportunities

Despite the rapid growth, challenges persist:

  • Uneven AI Readiness: Infrastructure and adoption levels vary widely across the region.
  • Data Governance: Robust frameworks are needed to ensure ethical use of AI.
  • Skill Gaps: A shortage of skilled professionals is limiting progress.
  • AI Anxiety: Concerns about job displacement remain prevalent.

These challenges present opportunities for collaboration and innovation. Governments are addressing these issues through national strategies, regulatory sandboxes, and increased funding for research and development (28).

The Future of AI in Asia

As AI continues to evolve, its impact on industries across Asia will deepen. Emerging trends to watch include:

  • Generative AI: Transforming e-commerce, travel, and gaming sectors.
  • Sustainability Efforts: AI is being used for weather prediction, biodiversity conservation, and other environmental initiatives.
  • Industrial Operations: By 2026, 20% of industrial operations are expected to adopt AI/ML for vision-based systems and robotic processes.

Conclusion

The AI revolution in Asia is well underway, transforming industries and driving economic growth. With continued investments in research, development, and implementation, the region is positioned to become a global leader in AI innovation. By addressing challenges and fostering collaboration, Asia can fully harness AI’s potential to drive inclusive growth and tackle pressing regional issues.

Join the Conversation

What unique challenges or opportunities do you think Asia faces as it becomes a global leader in AI? Share your thoughts below!

You may also like:

Advertisement

Author


Discover more from AIinASIA

Subscribe to get the latest posts sent to your email.

Continue Reading

Trending

Discover more from AIinASIA

Subscribe now to keep reading and get access to the full archive.

Continue reading