Research Knowledge Base: AI × Networks

Deep research at the intersection of AI/ML and network systems. Structured as a 3D knowledge graph with mental models, mathematical rigor, and systematic validation.

Knowledge Domains

Networks

Pure networking concepts: ORAN architecture, 5G NR, RAN scheduling, beamforming, latency budgets, network slicing.

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AI / ML

Pure AI/ML concepts: Transformers, attention, KV cache, RL policy gradients, LLM serving, diffusion models, GNNs.

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AI × Networks

The intersection: ML for RAN, RL for resource allocation, edge inference, LLM for config, traffic prediction, federated learning.

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Papers

Research paper analyses across all 4 rounds: core claims, methodology, limitations, AI×Networks connections.

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How This Works

Every topic goes through 4 research rounds before completion:

Round Focus Output
Round 1 Mental model + intuition Plain-language understanding, spatial metaphor, why it exists
Round 2 Internal mechanics + math Key equations, derivations, algorithmic steps, complexity analysis
Round 3 Where it breaks + debates Failure modes, edge cases, open problems, expert arguments
Round 4 AI × Networks connection Intersection links, cross-links to ≥2 existing KB nodes

Current Backlog

See BACKLOG.md for the full topic queue, prioritized by intersection research value.

Last updated: June 2026