Tri-City AI Links

Zero-Shot vs Few-Shot Learning: When to Use Examples in LLMs

Zero-Shot vs Few-Shot Learning: When to Use Examples in LLMs

Learn the difference between zero-shot and few-shot learning in LLMs. Discover when to use examples to improve AI accuracy and how to choose the right approach for your project.

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Legal AI Safety: How to Avoid Hallucinations After Mata v. Avianca

Legal AI Safety: How to Avoid Hallucinations After Mata v. Avianca

Learn from the Mata v. Avianca disaster to build AI safety policies that prevent hallucinations and legal sanctions in professional workflows.

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LLM Risk Management: Technical Controls and Escalation Paths for AI Governance

LLM Risk Management: Technical Controls and Escalation Paths for AI Governance

Learn how to manage LLM risks with dynamic controls, behavioral guardrails, and clear escalation paths to ensure AI governance and safety.

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Evaluating RAG Pipelines: Mastering Recall, Precision, and Faithfulness

Evaluating RAG Pipelines: Mastering Recall, Precision, and Faithfulness

Learn how to evaluate RAG pipelines using recall, precision, and faithfulness. Master the metrics needed to stop LLM hallucinations and improve retrieval quality.

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Debugging Prompts: Systematic Methods to Improve LLM Outputs

Debugging Prompts: Systematic Methods to Improve LLM Outputs

Learn systematic methods to debug and improve LLM outputs, from task decomposition and RAG to advanced mathematical steering and prompt chaining.

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Differential Privacy in LLM Training: Balancing Data Protection and Model Performance

Differential Privacy in LLM Training: Balancing Data Protection and Model Performance

Explore how Differential Privacy protects sensitive data in LLM training. Learn about DP-SGD, the epsilon-delta tradeoff, and how to balance privacy with model accuracy.

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COPPA and Generative AI: Navigating Children's Data Privacy Rules

COPPA and Generative AI: Navigating Children's Data Privacy Rules

Learn how the 2025-2026 COPPA updates change data collection for Generative AI. Discover new rules on parental consent, biometrics, and data retention to avoid FTC penalties.

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MoE Architectures: Balancing Cost and Quality in Large Language Models

MoE Architectures: Balancing Cost and Quality in Large Language Models

Explore the trade-offs of Mixture-of-Experts (MoE) in LLMs. Learn how sparse activation reduces compute costs while increasing memory demands for better AI scale.

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Building PII Detection and Redaction Pipelines for LLMs

Building PII Detection and Redaction Pipelines for LLMs

Learn how to build PII detection and redaction pipelines for LLMs using hybrid Regex/NER methods and tools like Microsoft Presidio to ensure data privacy.

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Multimodal Evolution in Generative AI: 3D, Haptics, and Sensor Fusion

Multimodal Evolution in Generative AI: 3D, Haptics, and Sensor Fusion

Discover how AI is evolving from late fusion to unified architectures. We explore the rise of 3D, haptics, and sensor fusion in 2026.

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Bias in Generative AI: How Training Data, Selection, and Algorithmic Design Shape Outcomes

Bias in Generative AI: How Training Data, Selection, and Algorithmic Design Shape Outcomes

Explore how training data selection and algorithm design drive bias in generative AI. Learn about real-world impacts, mitigation techniques like the MIT method, and practical steps to reduce discrimination.

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Red Teaming Prompts for Generative AI: Finding Safety and Security Gaps

Red Teaming Prompts for Generative AI: Finding Safety and Security Gaps

Learn how to identify and fix safety gaps in generative AI using red teaming strategies. Covers prompt injection, automation tools, and regulatory compliance.

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