Build vs Buy: Making Smart Decisions About Custom LLM Models cover art

Build vs Buy: Making Smart Decisions About Custom LLM Models

Build vs Buy: Making Smart Decisions About Custom LLM Models

Listen for free

View show details

Tom explores the critical decision between building custom LLM models versus using off-the-shelf solutions. Drawing from insights at the AWS Expo, he breaks down the real costs, challenges, and strategic considerations for organizations evaluating domain-specific AI implementations.

Build vs Buy: Making Smart Decisions About Custom LLM Models

Key Topics Covered

When to Build Custom LLM Models

  • Domain-specific applications requiring specialized knowledge
  • Handling proprietary or confidential information
  • Real-world example: AIDoc's experience at AWS Expo
  • Understanding your organization's unique requirements

True Costs of Building

  1. Data Preparation
    • Gathering organizational historical knowledge
    • Creating validation and training datasets
    • Organizing proprietary information
  2. Training Expenses
    • GPU infrastructure costs (billions spent by OpenAI, Anthropic monthly)
    • Ongoing computational requirements
    • Budget considerations for organizations
  3. Maintenance & Updates
    • Keeping pace with base model improvements
    • Avoiding being locked into outdated versions
    • Continuous investment requirements

When to Buy Off-the-Shelf

  • Non-hyper-specific use cases
  • Data collation and comparison tasks
  • General analysis and processing needs
  • Cost-effective solutions for standard workflows

Optimizing Model Selection

  • Using platforms like AWS Bedrock for model diversity
  • Balancing accuracy vs. cost vs. performance
  • Example: Claude Opus vs. Sonnet vs. Haiku trade-offs
  • Avoiding "overkill" with expensive models
  • Testing and validation strategies

Key Takeaways

  • Don't default to the most expensive model
  • Test multiple options before committing
  • Understand total cost of ownership for custom builds
  • Match model capabilities to actual requirements
  • Consider the rapid pace of AI ecosystem changes

Mentioned Companies/Platforms

  • AWS (Amazon Web Services)
  • AWS Bedrock
  • AIDoc
  • OpenAI
  • Anthropic (Claude models: Opus, Sonnet, Haiku)

Resources

  • AWS Expo insights and presentations
  • Open source foundation models for custom building

Chapters

  • 0:02 - Introduction: The Build vs Buy Debate
  • 0:25 - When Building Custom Models Makes Sense
  • 2:02 - The Real Costs of Building Your Own Model
  • 3:35 - Real-World Example: AIDoc at AWS Expo
  • 4:09 - The Case for Off-the-Shelf Solutions
  • 5:44 - Optimizing Model Selection and Cost
  • 6:46 - Final Recommendations and Wrap-Up
adbl_web_anon_alc_button_suppression_t1
No reviews yet