
The Ruby AI Podcast Running Self-Hosted Models with Ruby and Chris Hasinski
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Dec 2, 2025 Chris Hasinski, an AI and Ruby expert with a machine learning background from UC Davis, shares impactful insights into self-hosting AI models. He discusses the benefits of control and cost savings, along with challenges like latency. Chris recounts his ML journey, covering applications beyond text and fine-tuning techniques. He highlights Ruby's potential in ML, the importance of quality data, and nuances of local model performance. With insights into monitoring and developer experience, his vision includes enhancing Ruby's role in the evolving AI landscape.
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Self-Hosting Guarantees And Cost Tradeoffs
- Self-hosting models gives reproducible behavior and control over updates that hosted providers do not guarantee.
- Paying for hardware instead of tokens unlocks cost-effective use cases like large-scale embedding or live voice processing.
Mix Hosted And Self-Hosted Strategically
- Self-hosted models may be lower quality but offer stability, fine-tuning, and model choice.
- You can mix hosted and self-hosted models to balance prototype speed and long-term cost control.
From Protein Folding To Practical ML
- Chris described his start in bioinformatics working on protein folding before AI advanced the field.
- He later applied ML to tasks like nudity detection and recommendations across web projects.
