Fine-Tuning vs Prompting for AI Agents: When to Customize Models for Agentic Tasks
Learn when prompting plus RAG is enough for AI agents and when fine-tuning delivers better reliability, domain control, and cost-efficiency at scale.
Browse the latest agentic ai articles, tutorials, and research from Blockchain Council.(70 articles)
Learn when prompting plus RAG is enough for AI agents and when fine-tuning delivers better reliability, domain control, and cost-efficiency at scale.
Learn how AI agents use crypto wallets to pay for APIs, manage stablecoins, interact with smart contracts, and operate under secure spending controls.
Learn how an agentic wallet on blockchain enables AI agents to transact, trade, and pay autonomously with guardrails, monitoring, and governance.
Agentic AI in cybersecurity is enabling autonomous SOC analyst and incident response agents to triage alerts, investigate threats, and execute containment under policy guardrails.
Agentic AI for supply chain enables continuous, goal-driven forecasting, dynamic inventory policies, and risk-aware procurement with governed automation across ERP and planning tools.
Learn how guardrails for AI agents reduce hallucinations, stop prompt injection, and block unsafe actions using layered controls, policy enforcement, and continuous monitoring.
Learn how AI agents transform customer support with smarter triage, end-to-end resolution automation, and AI-driven QA that scales coverage while improving CSAT and compliance.
Agentic AI in healthcare operations is transforming scheduling, documentation, and claims automation with goal-driven workflows, human oversight, and measurable ROI.
AI agents for cybersecurity are transforming SOCs with autonomous triage, faster threat hunting, and policy-driven incident response that reduces MTTD and MTTR.
Learn how governance and compliance for agentic AI relies on identity-centric control, end-to-end auditability, layered logging, and enforceable policies aligned to key standards.
Learn agentic AI architecture patterns: single-agent, supervisor-agent, and hierarchical systems, with use cases, trade-offs, and a practical selection guide.
Agentic AI for finance is enabling continuous reconciliation, risk monitoring, and faster reporting with guardrails, audit trails, and human approval for material decisions.