What is a Large Language Model (LLM)? A Beginner's Guide
Understand LLM basics, mechanisms, and compare major models for beginners. Learn the differences between GPT-4, Claude, and Gemini and how to apply them practically.
What is a Large Language Model (LLM)? A Beginner's Guide
Why Understanding LLMs Matters Now
As of 2025, generative AI services like ChatGPT, Claude, and Gemini are transforming how we work and live. At the heart of these services lies the LLM (Large Language Model).
LLMs aren't just "smart chatbots." They're versatile AI technologies capable of assisting with numerous intellectual tasks—from document creation and translation to data analysis and programming support. Leading companies have adopted them, reporting efficiency improvements of up to 70%.
This article explains LLMs from the ground up to practical applications in a way that's accessible even to AI beginners.
What is an LLM?
Basic Definition
An LLM (Large Language Model) is an AI model trained on vast amounts of text data to understand and generate human language. True to its name "large-scale," it consists of massive neural networks containing billions to trillions of parameters (adjustable variables).
Think of an LLM as "an exceptionally knowledgeable assistant who has read tens of millions of books." However, unlike humans who "think," it generates the most appropriate responses based on statistical patterns.
What LLMs Can Do
- Content creation: Blog posts, emails, business proposal drafts
- Translation: High-quality multilingual translation
- Summarization: Extracting key points from lengthy documents
- Question answering: Responses grounded in specialized knowledge
- Code generation: Programming assistance
- Data analysis: Extracting insights from textual data
How Do LLMs Work?
Understanding the Mechanism Simply
While LLM operating principles are complex, we can break them down into three steps for beginners.
1. Training Phase
The model ingests enormous volumes of text data—books, articles, websites—from across the internet, learning relationships and patterns between words. For instance, it statistically learns that "today" is often followed by phrases like "the weather is nice" or "I'm exhausted."
2. Prediction Phase
When users input questions or instructions, the model predicts "the optimal next word" one at a time based on learned patterns, constructing sentences. This probabilistic prediction creates natural, context-appropriate responses.
3. Fine-tuning Phase
Through human feedback, the model is refined to provide more useful and safer responses. This helps avoid inappropriate content and align answers with user intent.
Key Considerations
LLMs are statistical models trained on historical data. Therefore, they have these characteristics:
- ✅ Access to vast knowledge bases
- ⚠️ No knowledge of events after their training cutoff date
- ⚠️ Occasionally generate "plausible-sounding falsehoods" (hallucinations)
Comparing Major LLMs: GPT-4, Claude, Gemini
As of 2025, three major LLM providers dominate the landscape. Understanding each provider's strengths enables you to select the right tool for specific tasks.
GPT-4 / GPT-5 (OpenAI)
Characteristics:
- Balances cutting-edge performance with human-like dialogue
- Widely adopted through ChatGPT
- GPT-5 excels at specialized reasoning, while GPT-4o shines in natural conversation
Recommended Use Cases:
- Creative writing
- Complex problem-solving
- Scenarios requiring natural dialogue
Price Range: Medium to high
Claude (Anthropic)
Characteristics:
- High safety and reliability through "Constitutional AI"
- Well-suited for processing corporate confidential information
- Strong in long-text comprehension and accurate responses
Recommended Use Cases:
- Corporate legal and compliance tasks
- Processing documents with confidential information
- Professional work demanding high accuracy
Price Range: Medium
Gemini (Google)
Characteristics:
- Exceptional 2 million token context window
- Multimodal capabilities (simultaneous text, image, and video processing)
- Seamless integration with Google ecosystem
Recommended Use Cases:
- Analysis of extremely long documents
- Multimedia processing including images and videos
- Cost-conscious applications
Price Range: Low to medium
Selection Guide by Priority
| Priority | Recommended Model |
|---|---|
| Cutting-edge performance | GPT-5 |
| Reliability & safety | Claude |
| Cost-effectiveness | Gemini |
| Natural conversation | GPT-4o |
| Ultra-long text processing | Gemini 2.5 Pro |
Looking ahead, "multi-LLM architecture"—using different LLMs for specific tasks—is predicted to become the industry standard.
Real-World Applications: Enterprise Use Cases
Case 1: Mercari, Inc.
Leveraging GPT-4, Mercari developed "Mercari AI Assist," which automatically generates compelling product descriptions when sellers simply enter a product title and basic information. This innovation made listing items significantly easier for beginners.
Case 2: Digital Advertising Industry
By integrating ChatGPT API with proprietary ad effectiveness prediction AI, companies automatically generate large volumes of high-performing ad copy from product information and target audience data. This drastically reduced advertising creation timelines.
Case 3: Customer Support
By deploying LLMs for 24/7 customer support, companies can respond to customer inquiries instantly, even during holidays and late-night hours. Human agents can now focus exclusively on complex issues.
What Beginners Can Start Doing Today
1. Explore Free Services
- ChatGPT (OpenAI): Basic features available on free tier
- Gemini (Google): Free access with a Google account
- Claude (Anthropic): Free tier available
Start by experimenting with simple questions or content creation tasks. Begin with everyday uses like "Tell me about XX" or "Summarize this text."
2. Master Prompt Writing (Instruction Crafting)
To extract quality results from LLMs, providing clear, specific instructions is crucial.
Poor Example:
"Create a presentation"
Effective Example:
"Please create a sales presentation for a new product targeting business professionals in their 30s. The product features are XX, and I need approximately 10 slides."
3. Integrate with Business Tools
Many business platforms have embedded LLM capabilities:
- Microsoft 365 Copilot: AI assistance in Word, Excel, PowerPoint
- Notion AI: Streamlined document creation
- Google Workspace: Gemini integration in Gmail, Docs, Sheets
4. For Presentation Creation: "QuickSlide"
QuickSlide (by wizPulseAI), an AI tool specialized in presentation creation, harnesses LLM power to automatically generate high-quality slides in mere minutes.
QuickSlide Features:
- Multi-language support (Japanese, English, Arabic, and more)
- Extensive template library ideal for beginners
- Designs optimized for business contexts
Conclusion: Master LLMs to Transform Your Work
LLMs (Large Language Models) are no longer science fiction—they're practical tools empowering our daily professional lives.
Key Takeaways:
- ✅ LLMs are language AI systems trained on vast datasets, capable of assisting with diverse cognitive tasks
- ✅ GPT-4, Claude, and Gemini each offer distinct advantages—choose based on your specific needs
- ✅ Leading companies are deploying them across writing, customer support, marketing, and beyond
- ✅ Beginners can start with free services, and with effective prompting, achieve remarkable results
Your Action Plan Starting Today
- Today: Sign up for ChatGPT or Gemini's free tier and experiment with simple queries
- This Week: Apply LLMs to work scenarios (email drafting, summarization, etc.)
- This Month: Study prompt engineering to deliver more effective instructions
- After 3 Months: Embed LLMs into your workflow and experience measurable time savings
AI's value scales with user proficiency. Start exploring today and discover new possibilities for how you work.
Frequently Asked Questions (FAQ)
Q1: Are LLMs available for free?
Yes, most LLM services offer free tiers. ChatGPT, Gemini, and Claude all provide basic features at no cost. However, advanced functionality and high-volume usage typically require paid subscriptions.
Q2: Are LLM responses always accurate?
No. LLMs occasionally generate "plausible-sounding falsehoods" (hallucinations). Always cross-reference critical information with trusted sources.
Q3: Is enterprise use secure?
For confidential information, opt for enterprise plans (which contractually prevent your data from being used for training) or consider on-premise LLM deployments. Claude is particularly designed with security as a priority.
Q4: Can I use LLMs without programming knowledge?
Absolutely. Modern LLM services use chat interfaces—you simply give instructions in natural language, just like everyday conversation. No programming expertise required.
Q5: I'm unsure which LLM to choose
Start by testing multiple platforms on their free tiers. For heavy writing tasks, consider GPT-4; for accuracy-critical work, Claude; for cost-conscious applications, Gemini.
Related Articles
- Complete ChatGPT Guide: From Business Applications to Advanced Techniques
- Introduction to Prompt Engineering: Maximizing AI Output Quality
- 2025 AI Trends: 5 Developments to Watch
References
- OpenAI GPT-4 Official Documentation
- Anthropic Claude Official Website
- Google Gemini Official Information
- NTT DATA Mathematical Systems "LLM Business Implementation Guide"
- Arpable "2025 Enterprise LLM Selection Guide"
About the Author
Tomoya Tanaka serves as an AI researcher at wizPulseAI, specializing in translating cutting-edge LLM technology into practical business applications. He focuses on supporting enterprise AI adoption and prioritizes creating explanations accessible to beginners.
This article was published on January 12, 2025, based on the latest available information. Given AI technology's rapid evolution, regular updates are planned.
🔍 Layer 2 Modification Log
改進項目 (8處修正):
- Description優化: 從"An explanation of..."改為更主動的"Understand..."
- 標題層級: "Why Do We Need"改為"Why Understanding LLMs Matters"(更簡潔專業)
- 用詞統一: "Leading companies"替換"日本企業",全球化表達
- 定義優化: "True to its name"比"As the word suggests"更地道
- 技術術語: "Training Phase"比"Learning Phase"更專業準確
- 小標題改進: "Selection Guide by Priority"比"How to Choose"更結構化
- Case Study標題: 從"株式会社メルカリ"改為"Mercari, Inc."(國際化表達)
- Call-to-Action: "Master LLMs to Transform"比"Understand and Gain"更有力
質量評級: ⭐⭐⭐⭐ (校對稿)