TL;DR
- Businesses almost never need to train their own AI model.
- Three options exist: proprietary SaaS models, open-source models you can host, and fully custom-trained models, which are rarely needed.
- Even when a model cannot be retrained, you can customize it using five levers: Instructions, Context, Retrieval, Tools, and Agents.
- These five levers unlock most of the value businesses think they need fine-tuning for.
1.0 The Three Ways to Use AI Models in Your Business
1.1 Proprietary SaaS Models
Models like GPT, Claude, Gemini, and Sora run on the provider’s infrastructure.
- Easiest to deploy
- Best performance for reasoning and multimodal tasks
- No hosting or maintenance required
- No access to model weights
- Data flows through the vendor’s systems (with enterprise controls)
Best for: most companies and most use cases.
1.2 Open Source Models With Weights
Examples: Llama, Mixtral, Qwen, DeepSeek, Whisper, FLUX, Janus, StarCoder.
These can be deployed:
- Locally
- On private servers
- In your cloud VPC
- In air-gapped environments
- Through shared hosted infrastructure (Groq, Together, Fireworks, Anyscale)
Advantages:
- Complete data control
- Customizable
- No vendor lock-in
- Predictable cost structure
Best for: privacy-sensitive workflows and internal tools.
1.3 Training Your Own Model (Rare)
Requires:
- Massive proprietary datasets
- Expensive GPU clusters
- A machine learning team
- Months of engineering
Almost no business needs this today.
Best for:
- Big tech companies
- Research labs
- Extreme domain-specific needs
2.0 The 5 Levers of Customizing Any AI Model
These five levers deliver 80 to 90 percent of the value businesses expect from “training a model.”
2.1 Instructions
How you shape the AI’s personality and decision style.
Examples:
- Tone and communication style
- Level of detail
- Decision logic
- Brand voice
Instructions define how the model behaves.
2.2 Context
How you teach AI “your world.”
Examples:
- SOPs
- Playbooks
- Case studies
- Past work
- Email examples
- Meeting notes
Context loads your experience into the model.
2.3 Retrieval
How the AI accesses live data it doesn’t store internally.
Examples:
- CRM
- Notes
- Emails
- Reports
- Pricing sheets
- Conversations and transcripts
Retrieval makes the AI accurate, current, and personalized.
2.4 Tools
Actions the AI can take on your behalf.
Examples:
- Creating tasks
- Updating CRM records
- Looking up customer history
- Checking inventory
- Generating reports
- Sending emails
Tools turn the model from “chat” into operations.
2.5 Agents
Multi-step automated workflows.
Examples:
- Analyze → Decide → Create → Deliver
- Routing support tickets
- Producing proposals
- Creating daily or weekly reports
- Performing quality checks
Agents create real-time savings by chaining decisions and actions.
3.0 Putting It All Together
When leaders ask, “Should we train a model?”, the practical answer is:
You don’t need a custom-trained model, you need a customized AI system.
That system comes from applying:
- Instructions
- Context
- Retrieval
- Tools
- Agents
This solves nearly all business use cases without touching model weights.
4.0 Your 30 Day Play
- Pick one workflow that happens frequently
- Write out the ideal steps
- Add clear instructions
- Attach the right context
- Connect retrieval to your data
- Add one or two tools
- Chain them into a simple agent
You now have a “custom AI” without training anything.
5.0 Signal Metric of the Week
Execution Automation Ratio
Percentage of a workflow completed by AI instead of a human.
Target: 20 to 40 percent for your first agent, then expand.
6.0 Your Turn
Which workflow in your business do you want to customize with AI?
Reply to this email with a description.
We will choose one for a future teardown.own. one example for a future teardown.
Thanks for reading Signal > Noise, where we separate real business signal from the AI hype.
See you next Tuesday,
Avi Kumar
Founder · Kuware.ai
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