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What is Artificial Intelligence (AI)?

What is Artificial Intelligence (AI)?

Artificial intelligence (AI) is transforming industries by turning data into intelligence that drives automation, innovation, and competitive advantage. From machine learning and generative AI to advanced decision systems, organizations are using AI to enhance efficiency, uncover insights, and deliver personalized experiences.

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Article

What is Artificial Intelligence (AI)?
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Artificial intelligence (AI) is a broad term that includes machine learning, deep learning, and many other artificial forms of intelligence, such as humanoids. It uses data, algorithms, and computational power to help machines learn from patterns and make decisions. Once a futuristic concept, AI now sits at the center of digital transformation, powering predictive analytics, personalized experiences, and process automation across industries.

How does AI work?

AI systems learn from data by the following methods:

  • Machine learning identifies patterns, makes predictions, and automates decision making across tasks like demand forecasting and fraud detection.
  • Deep learning uses multilayer neural networks to interpret complex, unstructured data such as images, video, and speech.
  • Natural language processing helps machines to understand and generate human language, powering chatbots, search, and generative tools.

As data volumes grow, AI’s learning cycles accelerate, allowing organizations to automate decision making, improve productivity, and unlock new sources of value.

What are the main types of AI?

AI encompasses multiple forms of intelligence and capability, each serving a distinct role in enterprise transformation:

  • Narrow AI performs specific tasks like language translation, credit scoring, or facial recognition; it’s the most common type in business use today.
  • General AI is a theoretical form of intelligence that can reason and learn across domains with human-level flexibility.

Subsets of AI include:

  • Generative AI, which creates new content such as text, code, and designs
  • Machine learning, which focuses on developing algorithms that allow computers to learn from data
  • Deep learning, a specialized form of machine learning that uses artificial neural networks to model complex patterns in data

Together, these disciplines enable organizations to move beyond automation to decision augmentation and innovation at scale.

How can artificial intelligence create business value?

Leading organizations are deploying AI to drive measurable impact across functions and industries. For example: 

  • Automation streamlines repetitive workflows to reduce cost and improve accuracy.
  • Insight generation reveals patterns that sharpen pricing, assortment, and forecasting.
  • Improved accuracy enhances diagnostic precision, risk detection, and forecasting.
  • Cost savings and growth fuels new revenue models through predictive maintenance, personalization, and dynamic pricing.

AI turns data into a competitive asset, helping companies respond faster, anticipate change, and create differentiated customer value.

What challenges come with AI adoption?

AI transformation introduces new risks and responsibilities. To realize its promise, organizations must address:

  • Data bias. Incomplete or skewed data can lead to inequitable or unreliable results.
  • Explainability. Complex models often lack transparency, complicating governance and compliance.
  • Security and privacy. Sensitive data must be safeguarded against misuse and breaches.
  • Regulatory uncertainty. Rules for ethical and responsible AI are still evolving globally.
  • Workforce readiness. Automation will reshape roles, requiring investment in reskilling and new ways of working.

A thoughtful approach to governance—anchored in trust, transparency, and accountability—is essential to scaling AI responsibly.

How can organizations adopt and scale AI effectively?

Move from experimentation to execution by focusing on value creation and scalability.

  1. Define and prioritize high-value use cases. Focus on scalable use cases that enhance business performance and generate tangible ROI. Rank by impact, feasibility, and time to value.
  2. Build strong data infrastructure and governance. Your data infrastructure and governance policies support the weight of your entire AI program. Build policies for model transparency, data ethics, and risk oversight.
  3. Use scalable, modular architecture and compliance. Avoid silos and ensure consistency across the organization by developing systems that are easy to replicate and processes that are intuitive.  
  4. Embed change management and workforce training. From the C-suite to the front line, equip teams to adopt new ways of working. Resources to reskill and upskill your workforce will help you succeed where others have failed.
  5. Foster a culture of continuous improvement. Equip teams with skills and tools to collaborate effectively with AI systems. Set up feedback loops, monitor performance, and iterate models and processes regularly.
  6. Ensure cross-functional ownership. Make ownership a team effort by clarifying roles, decision rights, and paths for escalation.
  7. Capture and track value. Set targets, measure realized benefits, report transparently, and reinvest in what works. 
 

What are the future trends in AI?

AI is evolving rapidly from reactive analytics to intelligent systems capable of reasoning, collaboration, and creativity, such as:

  • Multimodal AI, which combines text, image, audio, and video data for richer, contextual understanding
  • Agentic AI, autonomous systems that plan, reason, and act toward defined goals
  • Human–AI collaboration, which offers new frameworks that enhance human decision making rather than replace it

As these capabilities mature, businesses will increasingly integrate AI into core operations, enabling adaptive enterprises that learn and evolve in real time.

Harness intelligence for sustainable advantage

Artificial intelligence is reshaping the way organizations compete and grow. Those that treat AI as a strategic capability, not a single technology, will build learning enterprises that continuously adapt, improve, and outperform.

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