
Free Download InfiniBand Deep Dive Networking for AI focused Datacentres
Last updated 5/2026
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz, 2 Ch
Language: English | Duration: 7h 53m | Size: 8.7 GB
Learn InfiniBand fundamentals, RDMA, and NVIDIA networking stack to design and optimize AI and HPC infrastructure
What you'll learn
Describe the full InfiniBand architecture — from physical layer to upper-layer protocols like RDMA and GPU Direct
Design leaf-spine InfiniBand topologies suited for large-scale AI and HPC cluster deployments
Implement QoS using Service Levels (SL) and Virtual Lanes (VL) to prioritise AI and HPC workloads
Monitor and manage InfiniBand fabrics at scale using NVIDIA Unified Fabric Manager (UFM)
Diagnose and resolve common InfiniBand fabric issues using tools like ibdiagnet, ibtracert, mlxlink, and ibstat
Requirements
Basic understanding of computer networking concepts (e.g., IP, latency, bandwidth) is helpful.
Familiarity with Linux fundamentals (basic commands and navigation) is recommended.
No prior experience with InfiniBand or RDMA is needed — everything is explained from the ground up
Description
InfiniBand Deep Dive: Networking for AI Data Centres
Welcome! I'm here to help you truly understand InfiniBand — the high-performance fabric powering the world's most demanding AI and HPC environments.
As AI workloads explode in scale, the network is no longer an afterthought — it is the bottleneck. Slow fabrics mean idle GPUs, longer training times, and wasted investment in expensive compute. This course gives you the deep, practical knowledge to understand, deploy, and troubleshoot the technology at the heart of modern AI data centres.
What you'll learn
- Why traditional Ethernet and TCP/IP fall short for AI workloads — and how InfiniBand solves latency, throughput, and CPU bottleneck challenges
- The full InfiniBand architecture — Physical, Link, Network, Transport, and Upper layers — with real-world analogies that make concepts stick
- RDMA, Zero-Copy transfers, Queue Pairs, Memory Registration, and GPUDirect RDMA — the core technologies behind high-speed GPU communication
- How the Subnet Manager works — LID assignment, topology discovery, routing table programming, and failover with Standby SM
- Traffic isolation using Partition Keys (PKey) — configuring Full and Limited membership across multi-tenant AI clusters
- Quality of Service (QoS) — assigning Service Levels (SL), mapping to Virtual Lanes (VL), and configuring bandwidth weights in OpenSM
- Routing algorithms in depth — MINHOP, UPDN, Fat-Tree, Adaptive Routing — and why Adaptive Routing is critical for elephant flows in AI workloads
- Congestion control, Credit-Based Flow Control, credit loops, and how to prevent fabric deadlocks
- Fabric monitoring and management at scale using NVIDIA Unified Fabric Manager (UFM), including Cyber-AI and RBAC
- Hands-on troubleshooting using ibdiagnet, ibtracert, mlxlink, ibstat, smpquery, and more
This course is packed with visual analogies, architecture diagrams, and practical troubleshooting scenarios that make even the most complex concepts click. Whether you're a network engineer, a cloud infrastructure specialist, or an AI platform team member, this course will give you the edge to design and operate high-performance AI fabrics with confidence.
No InfiniBand experience required — just bring your curiosity and your ambition.
Let's get started!
NOTE - For learners preparing for NCP-AIN Exam
This course covers 40–50% of the NCP-AIN exam domains, with a focused deep dive on InfiniBand. It is a valuable study companion to cover a significant portion of topics for the certification.
Who this course is for
Network, Cloud, and Infrastructure Engineers who want to understand how modern AI and HPC systems use InfiniBand and RDMA
AI/ML Engineers, Platform Engineers, and Solutions Architects looking to learn the networking foundations behind scalable AI infrastructure
Buy Premium From My Links To Get Resumable Support,Max Speed & Support Me
DDownload
wmbkd.InfiniBand.Deep.Dive.Networking.for.AI.focused.Datacentres.part01.rar
wmbkd.InfiniBand.Deep.Dive.Networking.for.AI.focused.Datacentres.part02.rar
wmbkd.InfiniBand.Deep.Dive.Networking.for.AI.focused.Datacentres.part03.rar
wmbkd.InfiniBand.Deep.Dive.Networking.for.AI.focused.Datacentres.part04.rar
wmbkd.InfiniBand.Deep.Dive.Networking.for.AI.focused.Datacentres.part05.rar
wmbkd.InfiniBand.Deep.Dive.Networking.for.AI.focused.Datacentres.part06.rar
wmbkd.InfiniBand.Deep.Dive.Networking.for.AI.focused.Datacentres.part07.rar
wmbkd.InfiniBand.Deep.Dive.Networking.for.AI.focused.Datacentres.part08.rar
wmbkd.InfiniBand.Deep.Dive.Networking.for.AI.focused.Datacentres.part09.rar
Rapidgator
wmbkd.InfiniBand.Deep.Dive.Networking.for.AI.focused.Datacentres.part01.rar.html
wmbkd.InfiniBand.Deep.Dive.Networking.for.AI.focused.Datacentres.part02.rar.html
wmbkd.InfiniBand.Deep.Dive.Networking.for.AI.focused.Datacentres.part03.rar.html
wmbkd.InfiniBand.Deep.Dive.Networking.for.AI.focused.Datacentres.part04.rar.html
wmbkd.InfiniBand.Deep.Dive.Networking.for.AI.focused.Datacentres.part05.rar.html
wmbkd.InfiniBand.Deep.Dive.Networking.for.AI.focused.Datacentres.part06.rar.html
wmbkd.InfiniBand.Deep.Dive.Networking.for.AI.focused.Datacentres.part07.rar.html
wmbkd.InfiniBand.Deep.Dive.Networking.for.AI.focused.Datacentres.part08.rar.html
wmbkd.InfiniBand.Deep.Dive.Networking.for.AI.focused.Datacentres.part09.rar.html
AlfaFile
wmbkd.InfiniBand.Deep.Dive.Networking.for.AI.focused.Datacentres.part01.rar
wmbkd.InfiniBand.Deep.Dive.Networking.for.AI.focused.Datacentres.part02.rar
wmbkd.InfiniBand.Deep.Dive.Networking.for.AI.focused.Datacentres.part03.rar
wmbkd.InfiniBand.Deep.Dive.Networking.for.AI.focused.Datacentres.part04.rar
wmbkd.InfiniBand.Deep.Dive.Networking.for.AI.focused.Datacentres.part05.rar
wmbkd.InfiniBand.Deep.Dive.Networking.for.AI.focused.Datacentres.part06.rar
wmbkd.InfiniBand.Deep.Dive.Networking.for.AI.focused.Datacentres.part07.rar
wmbkd.InfiniBand.Deep.Dive.Networking.for.AI.focused.Datacentres.part08.rar
wmbkd.InfiniBand.Deep.Dive.Networking.for.AI.focused.Datacentres.part09.rar
No Password - Links are Interchangeable
