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Tetrate 布道师,云原生社区 创始人,CNCF Ambassador,云原生技术专家。
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HAMi Website Refactor: Why HAMi Docs and Website Underwent a Complete Redesign

2026-03-17 08:55:52

This redesign is more than a style update—it’s a step toward clearer technical communication and better user experience. Try the new HAMi website at https://project-hami.io and submit issues here.

Over the past two months, I conducted a thorough refactor of the documentation website (see GitHub). Externally, it looks like a “visual redesign”, but from the perspective of community maintainers and content builders, it’s a comprehensive upgrade of information architecture, content system, and frontend experience.

This article aims to systematically explain three things: why we did this refactor, what exactly changed, and what these changes mean for the HAMi community.

Why Refactor the Website and Documentation

HAMi is a CNCF-hosted open source project initiated and contributed by Dynamia, with growing influence in GPU virtualization, heterogeneous compute scheduling, and AI infrastructure. The community content is expanding, and user types are becoming more diverse: from first-time visitors to engineers and enterprise users seeking deployment docs, architecture diagrams, case studies, and ecosystem information.

The original site was functional, but as content grew, several issues became apparent:

  • The homepage lacked information density, making it hard to quickly grasp the project’s overall value.
  • Connections between docs, blogs, and community info were not smooth; content entry points were scattered.
  • Search experience was unstable; external solutions were not ideal in practice.
  • Mobile experience had many details needing improvement, especially navigation, card layouts, and footer areas.
  • Visual style was inconsistent, making it hard to convey community influence and engineering maturity.

For a fast-evolving open source community, the website is not just a “place for docs”, but the public interface of the community. It needs to serve as project introduction, knowledge gateway, adoption proof, community connector, and brand expression.

So the goal of this refactor was clear: not just superficial beautification, but to truly upgrade the website into HAMi’s systematic community entry point.

What Was Done in This Refactor

This update was not a single-point change, but a series of systematic improvements.

Homepage Redesign and Complete Information Architecture Overhaul

The most obvious change is the homepage.

We redesigned the homepage structure, moving away from simply stacking content blocks, and instead organizing the page around the main narrative: “Project Positioning → Core Capabilities → Ecosystem Entry → Content Accumulation → Community Trust”.

Specifically, the homepage received several key upgrades:

  • Rebuilt the Hero section to strengthen first-screen information delivery and action entry.
  • Optimized CTA design so users can quickly access docs, blogs, and resources.
  • Added and enhanced multiple homepage sections to showcase project value and community reach in a more structured way.
  • Adjusted visual hierarchy, background atmosphere, and scroll rhythm, transforming the homepage from a “content list” into a “narrative page”.

These changes include Hero animations and atmosphere layers, research/story sections, new resource entry sections, refreshed CTAs, unified background design, and ongoing reduction of visual noise. Together, they solve a core problem: enabling visitors to understand what HAMi is and why it’s worth exploring further within seconds.

Architecture Diagrams

Key diagrams were redrawn for clearer technical communication. This helps users grasp HAMi’s role in AI infrastructure.

Figure 1: HAMi website homepage architecture diagram
Figure 1: HAMi website homepage architecture diagram

For HAMi, this change is critical. The community faces not just a single feature, but a set of system-level challenges involving Kubernetes, schedulers, GPU Operators, heterogeneous devices, and enterprise platforms. Improved diagrams make the website a better technical entry point.

Added Case Studies, Community, and Ecosystem Sections to Make Impact Visible

Another important direction was strengthening the “community proof” layer.

Many open source project sites fall into the trap of having complete docs, but users can’t tell if the project is truly adopted, if the community is active, or if the ecosystem is expanding. The HAMi website redesign consciously addresses this.

Figure 2: HAMi ecosystem and device support
Figure 2: HAMi ecosystem and device support
Figure 3: HAMi adopters
Figure 3: HAMi adopters
Figure 4: HAMi contributor organizations
Figure 4: HAMi contributor organizations

Blog & Reading Experience

Blog cards, lists, and metadata were unified for easier reading and sharing. Blogs are now a core communication layer.

Figure 5: HAMi website blog list page
Figure 5: HAMi website blog list page

Mobile Optimization

Navigation, card layouts, footer, and search were improved for smoother mobile browsing.

Figure 6: HAMi website mobile view
Figure 6: HAMi website mobile view

Footer & Search

Footer layout was enhanced for better navigation and credibility. Built-in search replaced unreliable external solutions, improving content accessibility.

Figure 7: HAMi website footer
Figure 7: HAMi website footer
Figure 8: HAMi website built-in search
Figure 8: HAMi website built-in search

What This Redesign Means for the HAMi Community

From screenshots, it looks like “the website looks better”. But from a community-building perspective, its significance is deeper.

First, HAMi’s external expression is more systematic.

The website is no longer just a collection of scattered pages, but is forming a complete narrative chain: users can understand project value from the homepage, capability details from docs, practical paths from blogs, and community impact from ecosystem modules.

Second, community content assets are reorganized.

Previously, valuable articles, diagrams, and explanations existed but were hard to find. Now, through homepage sections, navigation, and search refactor, these contents are more effectively connected.

Third, HAMi’s community image is more mature.

A mature open source project needs not just an active code repository, but clear, stable, and sustainable website expression. Structure, style, and usability are part of the community’s engineering capability.

Fourth, this lays the foundation for expanding case studies, adopters, contributors, and ecosystem content.

With the framework sorted, adding more case studies, collaboration entry points, or showcasing more adopters and partners will be more natural and easier for users to understand.

As a Community Contributor, My Top Three Takeaways from This Redesign

In summary, I believe this refactor got three things right:

  • Upgraded the website from a “content dump” to a “community gateway”.
  • Combined visual optimization with information architecture adjustment, not just a skin change.
  • Improved basic experiences like search, mobile, navigation, and footer.

These may not be as flashy as launching a new feature, but they directly impact content dissemination, user comprehension, and the project’s long-term image.

For infrastructure projects like HAMi, technical capability is fundamental, but clearly communicating, organizing, and continuously presenting that capability is also a form of infrastructure.

Summary

This HAMi documentation and website refactor is essentially an upgrade to the community’s “expression layer” infrastructure.

It improves visual and reading experience, reorganizes content, homepage narrative, search paths, mobile access, and community signal display. Homepage redesign, architecture diagram redraw, unified blog style, mobile optimization, enhanced footer, and switching from external to built-in search together constitute a true “refactor”.

Externally, it helps more people quickly understand HAMi; internally, it provides a stable platform for the community to accumulate case studies, expand the ecosystem, and serve adopters and contributors.

The website is not an accessory to the open source community, but part of its long-term influence. HAMi’s redesign is about taking this seriously.

If you’re interested in Kubernetes GPU virtualization, add me on WeChat jimmysong or scan the QR code below.

GTC 2026 Eve: AI is Becoming the New Infrastructure

2026-03-15 11:34:06

AI is quietly reshaping the infrastructure landscape, and GTC 2026 may become a key node in this transformation.

Next week, one of the most important technology conferences in the AI industry, NVIDIA GTC 2026, will be held in San Jose, USA.

For many people, GTC is just a GPU technology conference. But if you follow the development of the AI industry over the past few years, you’ll find an interesting phenomenon:

Many important narratives about AI infrastructure are gradually taking shape at GTC.

From CUDA, DGX, to AI Factory, and most recently Jensen Huang’s proposed AI Five-Layer Cake, NVIDIA is constantly attempting to redefine the computing infrastructure of the AI era.

This is why many people call GTC:

AI’s “Woodstock.”

Figure 1: NVIDIA GTC Conference
Figure 1: NVIDIA GTC Conference

This year’s GTC (March 16-19) is expected to cover various levels of the AI stack, including:

  • AI Chips
  • AI Data Centers
  • AI Agents
  • Robotics
  • Inference Computing

According to NVIDIA’s official blog, this year’s keynote will focus on the complete AI stack from chips to applications.

If we put these signals together, we can actually see a larger trend:

AI is transforming from an “applied technology” into “infrastructure.”

The Perspective of Industrial Revolutions

From a longer time scale, the technological revolutions in human history are essentially infrastructure revolutions.

We usually divide industrial revolutions into four times.

In the table below, you can see the infrastructure corresponding to each industrial revolution:

Industrial Revolution Infrastructure
Steam Revolution Steam Engine
Electrical Revolution Power Grid
Digital Revolution Computer
Internet Era Network
Table 1: Industrial Revolutions and Corresponding Infrastructure

First Industrial Revolution: Steam

The steam engine allowed humans to utilize mechanical power on a large scale for the first time. Production no longer relied on human or animal power, but on machines.

Second Industrial Revolution: Electricity

Electricity changed not only the source of power, but also the organization of production. Assembly lines, large-scale manufacturing, and modern industrial systems are all built on the foundation of the power grid.

Third Industrial Revolution: Computers

Computers allowed information to be processed digitally. Software became a production tool.

Fourth Industrial Revolution: Internet and Intelligence

The internet connects all computers together. Cloud computing transforms computing resources into infrastructure. And AI gives machines a certain degree of “cognitive ability.”

The True Significance of AI

If we observe these industrial revolutions, we discover a pattern:

Each industrial revolution produces a new General Purpose Infrastructure.

And AI is likely to become the next-generation infrastructure.

NVIDIA even directly stated in a recent article:

AI is essential infrastructure, like electricity and the internet.

In other words:

AI is no longer just an applied technology, but a new factor of production.

NVIDIA’s Five-Layer Cake

Recently, Jensen Huang proposed a very interesting concept: AI Five-Layer Cake.

Figure 2: AI Five Layer Cake (Image source: <a href="https://blogs.nvidia.com/blog/ai-5-layer-cake/" target="_blank" rel="noopener">NVIDIA</a>)
Figure 2: AI Five Layer Cake (Image source: NVIDIA)

AI is broken down into five layers:

  1. Energy
  2. Chips
  3. AI Infrastructure
  4. Models
  5. Applications

This model actually illustrates one thing:

AI is a complete industrial system.

Jensen Huang even described AI at Davos as:

“One of the largest-scale infrastructure constructions in human history.”

Signals GTC 2026 May Release

This year’s GTC is expected to release several important directions.

Inference Computing

The focus of AI in the past was training. But the main load of AI in the future is likely to be Inference.

Analysts expect that by 2030, 75% of computing demand in the AI data center market will come from inference.

Agentic AI

The past AI model was:

User → Model → Answer

The Agent model is more complex:

User → Agent → Tools → Model → Action

The flowchart below shows the main interaction paths in the Agent model:

Figure 3: Agentic AI Interaction Flow
Figure 3: Agentic AI Interaction Flow

AI is no longer just answering questions, but executing tasks.

Agent Platform

Recent media reports suggest that NVIDIA may launch a new Agent platform: NemoClaw, aimed at helping enterprises deploy AI Agents.

If this project is truly released, it means NVIDIA’s stack will become the following structure:

Figure 4: NVIDIA Agent Platform Architecture
Figure 4: NVIDIA Agent Platform Architecture

This is actually a complete AI stack.

Agents Change Computing Workloads

The emergence of Agents brings new computing workload issues.

Past AI workloads were mainly:

  • Training
  • Inference

But Agents bring a third type of workload:

Agent Workloads

The figure below shows the diverse workload types related to Agents:

Figure 5: Agent Workloads Structure
Figure 5: Agent Workloads Structure

The characteristic of this workload is highly fragmented. GPUs are no longer occupied for long periods, but rather face many small requests. This poses new challenges for infrastructure.

AI-Native Infrastructure

For the past few years, I’ve been thinking about a question:

What is AI-native infrastructure?

It is clearly not just “Kubernetes with GPUs.” I’m more inclined to believe it needs to possess several characteristics.

GPU as a First-Class Resource

In the cloud computing era, CPU is the core resource. In the AI era, GPU is the core resource.

Heterogeneous Computing

Real-world AI chips are not limited to NVIDIA:

  • NVIDIA
  • Ascend
  • Cambricon
  • Metax
  • Moore Threads

Future AI infrastructure must be able to manage heterogeneous computing.

GPU Sharing

GPU is a very expensive resource. If it cannot be shared, utilization will be very low. This is why GPU virtualization and slicing are becoming increasingly important.

AI Scheduling

AI scheduling includes not only traditional CPU and Memory, but also:

GPU
VRAM
Topology
Bandwidth

A Possible AI Tech Stack

Combining the above trends, the future AI stack may present the following structure:

Figure 6: AI Tech Stack Evolution
Figure 6: AI Tech Stack Evolution

This structure is very close to NVIDIA’s Five-Layer Cake.

My Judgment

Combining signals from GTC, AI Factory, Agents, and AI Five-Layer Cake, we can see a very obvious trend:

AI is rewriting computing infrastructure.

Future competition may not just be “who has the best model,” but:

Who has the best AI Infrastructure.

Just like the past few decades:

  • Electricity determines industrial capability
  • Internet determines information capability
  • Cloud computing determines software capability

The future may be:

AI Infrastructure determines intelligence capability.

Summary

If we stretch the time scale a bit longer, we may be in a new historical stage.

AI is no longer just a technological tool. It is becoming new infrastructure.

Just like:

  • Electricity
  • Internet
  • Cloud computing

And AI-native infrastructure is likely to become one of the most important technology directions for the next decade.

When GPUs Move Toward Open Scheduling: Structural Shifts in AI Native Infrastructure

2026-02-13 22:32:46

The future of GPU scheduling isn’t about whose implementation is more “black-box”—it’s about who can standardize device resource contracts into something governable.

Figure 1: GPU Open Scheduling
Figure 1: GPU Open Scheduling

Introduction

Have you ever wondered: why are GPUs so expensive, yet overall utilization often hovers around 10–20%?

Figure 2: GPU Utilization Problem: Expensive GPUs with only 10-20% utilization
Figure 2: GPU Utilization Problem: Expensive GPUs with only 10-20% utilization

This isn’t a problem you solve with “better scheduling algorithms.” It’s a structural problem - GPU scheduling is undergoing a shift from “proprietary implementation” to “open scheduling,” similar to how networking converged on CNI and storage converged on CSI.

In the HAMi 2025 Annual Review, we noted: “HAMi 2025 is no longer just about GPU sharing tools—it’s a more structural signal: GPUs are moving toward open scheduling.”

By 2025, the signals of this shift became visible: Kubernetes Dynamic Resource Allocation (DRA) graduated to GA and became enabled by default, NVIDIA GPU Operator started defaulting to CDI (Container Device Interface), and HAMi’s production-grade case studies under CNCF are moving “GPU sharing” from experimental capability to operational excellence.

This post analyzes this structural shift from an AI Native Infrastructure perspective, and what it means for Dynamia and the industry.

Why “Open Scheduling” Matters

In multi-cloud and hybrid cloud environments, GPU model diversity significantly amplifies operational costs. One large internet company’s platform spans H200/H100/A100/V100/4090 GPUs across five clusters. If you can only allocate “whole GPUs,” resource misalignment becomes inevitable.

“Open scheduling” isn’t a slogan—it’s a set of engineering contracts being solidified into the mainstream stack.

Standardized Resource Expression

Before: GPUs were extended resources. The scheduler didn’t understand if they represented memory, compute, or device types.

Figure 3: Open Scheduling Standardization Evolution
Figure 3: Open Scheduling Standardization Evolution

Now: Kubernetes DRA provides objects like DeviceClass, ResourceClaim, and ResourceSlice. This lets drivers and cluster administrators define device categories and selection logic (including CEL-based selectors), while Kubernetes handles the full loop: match devices → bind claims → place Pods onto nodes with access to allocated devices.

Even more importantly, Kubernetes 1.34 stated that core APIs in the resource.k8s.io group graduated to GA, DRA became stable and enabled by default, and the community committed to avoiding breaking changes going forward. This means the ecosystem can invest with confidence in a stable, standard API.

Standardized Device Injection

Before: Device injection relied on vendor-specific hooks and runtime class patterns.

Now: The Container Device Interface (CDI) abstracts device injection into an open specification. NVIDIA’s Container Toolkit explicitly describes CDI as an open specification for container runtimes, and NVIDIA GPU Operator 25.10.0 defaults to enabling CDI on install/upgrade—directly leveraging runtime-native CDI support (containerd, CRI-O, etc.) for GPU injection.

This means “devices into containers” is also moving toward replaceable, standardized interfaces.

HAMi: From “Sharing Tool” to “Governable Data Plane”

On this standardization path, HAMi’s role needs redefinition: it’s not about replacing Kubernetes—it’s about turning GPU virtualization and slicing into a declarative, schedulable, governable data plane.

Data Plane Perspective

HAMi’s core contribution expands the allocatable unit from “whole GPU integers” to finer-grained shares (memory and compute), forming a complete allocation chain:

  1. Device discovery: Identify available GPU devices and models
  2. Scheduling placement: Use Scheduler Extender to make native schedulers “understand” vGPU resource models (Filter/Score/Bind phases)
  3. In-container enforcement: Inject share constraints into container runtime
  4. Metric export: Provide observable metrics for utilization, isolation, and more

This transforms “sharing” from ad-hoc “it runs” experimentation into engineering capability that can be declared in YAML, scheduled by policy, and validated by metrics.

Scheduling Mechanism: Enhancement, Not Replacement

HAMi’s scheduling doesn’t replace Kubernetes—it uses a Scheduler Extender pattern to let the native scheduler understand vGPU resource models:

  • Filter: Filter nodes based on memory, compute, device type, topology, and other constraints
  • Score: Apply configurable policies like binpack, spread, topology-aware scoring
  • Bind: Complete final device-to-Pod binding

This architecture positions HAMi naturally as an execution layer under higher-level “AI control planes” (queuing, quotas, priorities)—working alongside Volcano, Kueue, Koordinator, and others.

Figure 4: HAMi Scheduling Architecture (Filter → Score → Bind)
Figure 4: HAMi Scheduling Architecture (Filter → Score → Bind)

Production Evidence: From “Can We Share?” to “Can We Operate?”

CNCF public case studies provide concrete answers: in a hybrid, multi-cloud platform built on Kubernetes and HAMi, 10,000+ Pods run concurrently, and GPU utilization improves from 13% to 37% (nearly 3×).

Figure 5: CNCF Production Case Studies: Ke Holdings 13%→37%, DaoCloud 80%+ utilization, SF Technology 57% savings
Figure 5: CNCF Production Case Studies: Ke Holdings 13%→37%, DaoCloud 80%+ utilization, SF Technology 57% savings

Here are highlights from several cases:

Case Study 1: Ke Holdings (February 5, 2026)

  • Environment: 5 clusters spanning public and private clouds
  • GPU models: H200/H100/A100/V100/4090 and more
  • Architecture: Separate “GPU clusters” for large training tasks (dedicated allocation) vs “vGPU clusters” with HAMi fine-grained memory slicing for high-density inference
  • Concurrent scale: 10,000+ Pods
  • Outcome: Overall GPU utilization improved from 13% to 37% (nearly 3×)

Case Study 2: DaoCloud (December 2, 2025)

  • Hard constraints: Must remain cloud-native, vendor-agnostic, and compatible with CNCF toolchain
  • Adoption outcomes:
    • Average GPU utilization: 80%+
    • GPU-related operating cost reduction: 20–30%
    • Coverage: 10+ data centers, 10,000+ GPUs
  • Explicit benefit: Unified abstraction layer across NVIDIA and domestic GPUs, reducing vendor dependency

Case Study 3: Prep EDU (August 20, 2025)

  • Negative experience: Isolation failures in other GPU-sharing approaches caused memory conflicts and instability
  • Positive outcome: HAMi’s vGPU scheduling, GPU type/UUID targeting, and compatibility with NVIDIA GPU Operator and RKE2 became decisive factors for production adoption
  • Environment: Heterogeneous RTX 4070/4090 cluster

Case Study 4: SF Technology (September 18, 2025)

  • Project: EffectiveGPU (built on HAMi)
  • Use cases: Large model inference, test services, speech recognition, domestic AI hardware (Huawei Ascend, Baidu Kunlun, etc.)
  • Outcomes:
    • GPU savings: Large model inference runs 65 services on 28 GPUs (37 saved); test cluster runs 19 services on 6 GPUs (13 saved)
    • Overall savings: Up to 57% GPU savings for production and test clusters
    • Utilization improvement: Up to 100% GPU utilization improvement with GPU virtualization
  • Highlights: Cross-node collaborative scheduling, priority-based preemption, memory over-subscription

These cases demonstrate a consistent pattern: GPU virtualization becomes economically meaningful only when it participates in a governable contract—where utilization, isolation, and policy can be expressed, measured, and improved over time.

Strategic Implications for Dynamia

From Dynamia’s perspective (and as VP of Open Source Ecosystem), the strategic value of HAMi becomes clear:

Two-Layer Architecture: Open Source vs Commercial

  • HAMi (CNCF open source project): Responsible for “adoption and trust,” focused on GPU virtualization and compute efficiency
  • Dynamia enterprise products and services: Responsible for “production and scale,” providing commercial distributions and enterprise services built on HAMi
Figure 6: Dynamia Dual Mechanism: Open Source vs Commercial
Figure 6: Dynamia Dual Mechanism: Open Source vs Commercial

This boundary is the foundation for long-term trust—project and company offerings remain separate, with commercial distributions and services built on the open source project.

Global Narrative Strategy

The internal alignment memo recommends a bilingual approach:

First layer: Lead globally with “GPU virtualization / sharing / utilization” (Chinese can directly use “GPU virtualization and heterogeneous scheduling,” but English first layer should avoid “heterogeneous” as a headline)

Second layer: When users discuss mixed GPUs or workload diversity, introduce “heterogeneous” to confirm capability boundaries—never as the opening hook

Core anchor: Maintain “HAMi (project and community) ≠ company products” as the non-negotiable baseline for long-term positioning

The Right Commercialization Landing

DaoCloud’s case study already set vendor-agnostic and CNCF toolchain compatibility as hard constraints, framing vendor dependency reduction as a business and operational benefit—not just a technical detail. Project-HAMi’s official documentation lists “avoid vendor lock” as a core value proposition.

In this context, the right commercialization landing isn’t “closed-source scheduling”—it’s productizing capabilities around real enterprise complexity:

  • Systematic compatibility matrix
  • SLO and tail-latency governance
  • Metering for billing
  • RBAC, quotas, multi-cluster governance
  • Upgrade and rollback safety
  • Faster path-to-production for DRA/CDI and other standardization efforts

Forward View: The Next 2–3 Years

My strong judgment: over the next 2–3 years, GPU scheduling competition will shift from “whose implementation is more black-box” to “whose contract is more open.”

The reasons are practical:

Hardware Form Factors and Supply Chains Are Diversifying

  • OpenAI’s February 12, 2026 “GPT‑5.3‑Codex‑Spark” release emphasizes ultra-low latency serving, including persistent WebSockets and a dedicated serving tier on Cerebras hardware
  • Large-scale GPU-backed financing announcements (for pan-European deployments) illustrate the infrastructure scale and financial engineering surrounding accelerator fleets

These signals suggest that heterogeneity will grow: mixed accelerators, mixed clouds, mixed workload types.

Low-Latency Inference Tiers Will Force Systematic Scheduling

Low-latency inference tiers (beyond just GPUs) will force resource scheduling toward “multi-accelerator, multi-layer cache, multi-class node” architectural design—scheduling must inherently be heterogeneous.

Open Scheduling Is Risk Management, Not Idealism

In this world, “open scheduling” isn’t idealism—it’s risk management. Building schedulable governable “control plane + data plane” combinations around DRA/CDI and other solidifying open interfaces, ones that are pluggable, multi-tenant governable, and co-evolvable with the ecosystem—this looks like the truly sustainable path for AI Native Infrastructure.

The next battleground isn’t “whose scheduling is smarter”—it’s “who can standardize device resource contracts into something governable.”

Conclusion

When you place HAMi 2025 back in the broader AI Native Infrastructure context, it’s no longer just the year of “GPU sharing tools”—it’s a more structural signal: GPUs are moving toward open scheduling.

Figure 7: Open Scheduling Future Vision
Figure 7: Open Scheduling Future Vision

The driving forces come from both ends:

  • Upstream: Standards like DRA/CDI continue to solidify
  • Downstream: Scale and diversity (multi-cloud, multi-model, even accelerators beyond GPUs)

For Dynamia, HAMi’s significance has transcended “GPU sharing tool”: it turns GPU virtualization and slicing into declarative, schedulable, measurable data planes—letting queues, quotas, priorities, and multi-tenancy actually close the governance loop.

AI Learning Resources: 44 Curated Collections from Our Cleanup

2026-02-08 20:20:05

“The best way to learn AI is to start building. These resources will guide your journey.”

Figure 1: AI Learning Resources Collection
Figure 1: AI Learning Resources Collection

In my ongoing effort to keep the AI Resources list focused on production-ready tools and frameworks, I’ve removed 44 collection-type projects—courses, tutorials, awesome lists, and cookbooks.

These resources aren’t gone—they’ve been moved here. This post is a curated collection of those educational materials, organized by type and topic. Whether you’re a complete beginner or an experienced practitioner, you’ll find something valuable here.

Why Remove Collections from AI Resources?

My AI Resources list now focuses on concrete tools and frameworks—projects you can directly use in production. Collections, while valuable, serve a different purpose: education and discovery.

By separating them, I:

  • Keep the resources list actionable and focused
  • Create a dedicated space for learning materials
  • Make it easier to find what you need

📚 Awesome Lists (14 Collections)

Awesome lists are community-curated collections of the best resources. They’re perfect for discovering new tools and staying updated.

Must-Explore Awesome Lists

Awesome Generative AI

  • Models, tools, tutorials, and research papers
  • Great for: Comprehensive overview of generative AI landscape

Awesome LLM

  • LLM resources: papers, tools, datasets, applications
  • Great for: Deep dive into large language models

Awesome AI Apps

  • Practical LLM applications, RAG examples, agent implementations
  • Great for: Real-world implementation examples

Awesome Claude Code

  • Claude Code commands, files, and workflows
  • Great for: Maximizing Claude Code productivity

Awesome MCP Servers

  • MCP servers for modular AI backend systems
  • Great for: Building with Model Context Protocol

Specialized Awesome Lists


🎓 Courses & Tutorials (9 Curricula)

Structured learning paths from universities and tech companies.

Microsoft’s AI Curriculum

AI for Beginners

  • 12 weeks, 24 lessons covering neural networks, deep learning, CV, NLP
  • Great for: Complete AI foundation
  • Format: Lessons, quizzes, projects

Machine Learning for Beginners

  • 12-week, 26-lesson curriculum on classic ML
  • Great for: ML fundamentals without deep math
  • Format: Project-based exercises

Generative AI for Beginners

  • 18 lessons on building GenAI applications
  • Great for: Practical GenAI development
  • Format: Hands-on projects

AI Agents for Beginners

  • 11 lessons on agent systems
  • Great for: Understanding autonomous agents
  • Format: Project-driven learning

EdgeAI for Beginners

  • Optimization, deployment, and real-world Edge AI
  • Great for: On-device AI applications
  • Format: Practical tutorials

MCP for Beginners

  • Model Context Protocol curriculum
  • Great for: Building with MCP
  • Format: Cross-language examples and labs

Official Platform Courses

Hugging Face Learn Center

  • Free courses on LLMs, deep RL, CV, audio
  • Great for: Hands-on Hugging Face ecosystem
  • Format: Interactive notebooks

OpenAI Cookbook

  • Runnable examples using OpenAI API
  • Great for: OpenAI API best practices
  • Format: Code examples and guides

PyTorch Tutorials

  • Basics to advanced deep learning
  • Great for: PyTorch mastery
  • Format: Comprehensive tutorials

🍳 Cookbooks & Example Collections (5 Collections)

Practical code examples and recipes.

Claude Cookbooks

  • Notebooks and examples for building with Claude
  • Great for: Anthropic Claude integration
  • Format: Jupyter notebooks

Hugging Face Cookbook

  • Practical AI cookbook with Jupyter notebooks
  • Great for: Open models and tools
  • Format: Hands-on examples

Tinker Cookbook

  • Training and fine-tuning examples
  • Great for: Fine-tuning workflows
  • Format: Platform-specific recipes

E2B Cookbook

  • Examples for building LLM apps
  • Great for: LLM application development
  • Format: Recipes and tutorials

arXiv Paper Curator

  • 6-week course on RAG systems
  • Great for: Production-ready RAG
  • Format: Project-based learning

📖 Guides & Handbooks (5 Resources)

In-depth guides on specific topics.

Prompt Engineering Guide

  • Comprehensive prompt engineering resources
  • Great for: Mastering prompt design
  • Format: Guides, papers, lectures, notebooks

Evaluation Guidebook

  • LLM evaluation best practices from Hugging Face
  • Great for: Assessing LLM performance
  • Format: Practical guide

Context Engineering

  • Design and optimize context beyond prompt engineering
  • Great for: Advanced context management
  • Format: Practical handbook

Context Engineering Intro

  • Template and guide for context engineering
  • Great for: Providing project context to AI assistants
  • Format: Template + guide

Vibe-Coding Workflow

  • 5-step prompt template for building MVPs with LLMs
  • Great for: Rapid prototyping with AI
  • Format: Workflow template

🗂️ Template & Workflow Collections

Reusable templates and workflows.

Claude Code Templates

  • Code templates for various programming scenarios
  • Great for: Claude AI development
  • Format: Template collection

n8n Workflows

  • 2,000+ professionally organized n8n workflows
  • Great for: Workflow automation
  • Format: Searchable catalog

N8N Workflows Catalog

  • Community-driven reusable workflow templates
  • Great for: Workflow import and versioning
  • Format: Template catalog

📊 Research & Evaluation

Academic and evaluation resources.

LLMSys PaperList

  • Curated list of LLM systems papers
  • Great for: Research on training, inference, serving
  • Format: Paper collection

Free LLM API Resources

  • LLM providers with free/trial API access
  • Great for: Experimentation without cost
  • Format: Provider list

🎨 Other Notable Resources

System Prompts and Models of AI Tools

  • Community-curated collection of system prompts and AI tool examples
  • Great for: Prompt and agent engineering
  • Format: Resource collection

ML Course CS-433

  • EPFL Machine Learning Course
  • Great for: Academic ML foundation
  • Format: Lectures, labs, projects

Machine Learning Engineering

  • ML engineering open-book: compute, storage, networking
  • Great for: Production ML systems
  • Format: Comprehensive guide

Realtime Phone Agents Course

  • Build low-latency voice agents
  • Great for: Voice AI applications
  • Format: Hands-on course

LLMs from Scratch

  • Build a working LLM from first principles
  • Great for: Understanding LLM internals
  • Format: Repository + book materials

💡 How to Use This Collection

For Complete Beginners

  1. Start with: Microsoft’s AI for Beginners
  2. Practice with: PyTorch Tutorials
  3. Explore: Awesome AI Apps for inspiration

For Developers

  1. Build skills: OpenAI Cookbook + Claude Cookbooks
  2. Find tools: Awesome Generative AI + Awesome LLM
  3. Learn workflows: n8n Workflows Catalog

For Researchers

  1. Stay updated: Awesome Generative AI + LLMSys PaperList
  2. Deep dive: Awesome LLM
  3. Implement: Hugging Face Cookbook

For Product Builders

  1. Find examples: Awesome AI Apps
  2. Learn workflows: n8n Workflows Catalog
  3. Study patterns: Awesome LLM Apps

🔄 What Was NOT Removed

Agent frameworks and production tools remain in the AI Resources list, including:

  • AutoGen - Microsoft’s multi-agent framework
  • CrewAI - High-performance multi-agent orchestration
  • LangGraph - Stateful multi-agent applications
  • Flowise - Visual agent platform
  • Langflow - Visual workflow builder
  • And 80+ more agent frameworks

These are functional tools you can use to build applications, not educational collections. They belong in the AI Resources list.


📝 Summary

I removed 44 collection-type projects from the AI Resources list to keep it focused on production tools:

  • 14 Awesome Lists - Discover new tools and stay updated
  • 9 Courses & Tutorials - Structured learning paths
  • 5 Cookbooks - Practical code examples
  • 5 Guides & Handbooks - In-depth resources
  • 4 Template Collections - Reusable workflows
  • 7 Other Resources - Research and evaluation

These resources remain incredibly valuable for learning and discovery. They just serve a different purpose than the production-focused tools in my AI Resources list.


Next Steps:

  1. Bookmark this post for future reference
  2. Explore the AI Resources list for production tools (agent frameworks, databases, etc.)
  3. Check out my blog for more AI engineering insights

Acknowledgments: This collection was compiled during my AI Resources cleanup initiative. Special thanks to all the maintainers of these awesome lists, courses, and collections for their invaluable contributions to the AI community.

Standing on Giants' Shoulders: The Traditional Infrastructure Powering Modern AI

2026-02-08 16:00:00

“If I have seen further, it is by standing on the shoulders of giants.” — Isaac Newton

Figure 1: Standing on Giants’ Shoulders: The Traditional Infrastructure Powering Modern AI
Figure 1: Standing on Giants’ Shoulders: The Traditional Infrastructure Powering Modern AI

In the excitement surrounding LLMs, vector databases, and AI agents, it’s easy to forget that modern AI didn’t emerge from a vacuum. Today’s AI revolution stands upon decades of infrastructure work—distributed systems, data pipelines, search engines, and orchestration platforms that were built long before “AI Native” became a buzzword.

This post is a tribute to those traditional open source projects that became the invisible foundation of AI infrastructure. They’re not “AI projects” per se, but without them, the AI revolution as we know it wouldn’t exist.

The Evolution: From Big Data to AI

Era Focus Core Technologies AI Connection
2000s Web Search & Indexing Lucene, Elasticsearch Semantic search foundations
2010s Big Data & Distributed Computing Hadoop, Spark, Kafka Data processing at scale
2010s Cloud Native Docker, Kubernetes Model deployment platforms
2010s Stream Processing Flink, Storm, Pulsar Real-time ML inference
2020s AI Native Transformers, Vector DBs Built on everything above
Table 1: Evolution of Data Infrastructure

Big Data Frameworks: The Data Engines

Before we could train models on petabytes of data, we needed ways to store, process, and move that data.

Apache Hadoop (2006)

GitHub: https://github.com/apache/hadoop

Hadoop democratized big data by making distributed computing accessible. Its HDFS filesystem and MapReduce paradigm proved that commodity hardware could process web-scale datasets.

Why it matters for AI:

  • Modern ML training datasets live in HDFS-compatible storage
  • Data lakes built on Hadoop became training data reservoirs
  • Proved that distributed computing could scale horizontally

Apache Kafka (2011)

GitHub: https://github.com/apache/kafka

Kafka redefined data streaming with its log-based architecture. It became the nervous system for real-time data flows in enterprises worldwide.

Why it matters for AI:

  • Real-time feature pipelines for ML models
  • Event-driven architectures for AI agent systems
  • Streaming inference pipelines
  • Model telemetry and monitoring backbones

Apache Spark (2014)

GitHub: https://github.com/apache/spark

Spark brought in-memory computing to big data, making iterative algorithms (like ML training) practical at scale.

Why it matters for AI:

  • MLlib made ML accessible to data engineers
  • Distributed data processing for model training
  • Spark ML became the de facto standard for big data ML
  • Proved that in-memory computing could accelerate ML workloads

Search Engines: The Retrieval Foundation

Before RAG (Retrieval-Augmented Generation) became a buzzword, search engines were solving retrieval at scale.

Elasticsearch (2010)

GitHub: https://github.com/elastic/elasticsearch

Elasticsearch made full-text search accessible and scalable. Its distributed architecture and RESTful API became the standard for search.

Why it matters for AI:

  • pioneered distributed inverted index structures
  • Proved that horizontal scaling was possible for search workloads
  • Many “AI search” systems actually use Elasticsearch under the hood
  • Query DSL influenced modern vector database query languages

OpenSearch (2021)

GitHub: https://github.com/opensearch-project/opensearch

When AWS forked Elasticsearch, it ensured search infrastructure remained truly open. OpenSearch continues the mission of accessible, scalable search.

Why it matters for AI:

  • Maintains open source innovation in search
  • Vector search capabilities added in 2023
  • Demonstrates community fork resilience

Databases: From SQL to Vectors

The evolution from relational databases to vector databases represents a paradigm shift—but both have AI relevance.

Traditional Databases That Paved the Way

  • Dgraph (2015) - Graph database proving that specialized data structures enable new use cases
  • TDengine (2019) - Time-series database for IoT ML workloads
  • OceanBase (2021) - Distributed database showing ACID transactions could scale

Why they matter for AI:

  • Proved that specialized database engines could outperform general-purpose ones
  • Database internals (indexing, sharding, replication) are now applied to vector databases
  • Multi-model databases (graph + vector + relational) are becoming the norm for AI apps

Cloud Native: The Runtime Foundation

When Docker and Kubernetes emerged, they weren’t built for AI—but AI couldn’t scale without them.

Docker (2013) & Kubernetes (2014)

GitHub: https://github.com/kubernetes/kubernetes

Kubernetes became the operating system for cloud-native applications. Its declarative API and controller pattern made it perfect for AI workloads.

Why it matters for AI:

  • Model deployment platforms (KServe, Seldon Core) run on K8s
  • GPU orchestration (NVIDIA GPU Operator, Volcano, HAMi) extends K8s
  • Kubeflow made K8s the standard for ML pipelines
  • Microservice patterns enable modular AI agent architectures

Service Mesh & Serverless

Istio (2016), Knative (2018) - Service mesh and serverless platforms that proved:

  • Network-level observability applies to AI model calls
  • Scale-to-zero is essential for cost-effective inference
  • Traffic splitting enables A/B testing of ML models

Why they matter for AI:

  • AI Gateway patterns evolved from API gateways + service mesh
  • Serverless inference platforms use Knative-style autoscaling
  • Observability patterns (tracing, metrics) are now standard for ML systems

API Gateways: From REST to LLM

API gateways weren’t designed for AI, but they became the foundation of AI Gateway patterns.

Kong, APISIX, KGateway

These API gateways solved rate limiting, auth, and routing at scale. When LLMs emerged, the same patterns applied:

AI Gateway Evolution:

Traditional API Gateway (2010s)
Rate Limiting → Token Bucket Rate Limiting
Auth → API Key + Organization Management
Routing → Model Routing (GPT-4 → Claude → Local Models)
Observability → LLM-specific Telemetry (token usage, cost)
AI Gateway (2024)

Why they matter for AI:

  • Proved that centralized API management scales
  • Plugin architectures enable LLM-specific features
  • Traffic management patterns apply to prompt routing
  • Security patterns (mTLS, JWT) now protect AI endpoints

Workflow Orchestration: The Pipeline Backbone

Data engineering needs pipelines. ML engineering needs pipelines. AI agents need workflows.

Apache Airflow (2015)

GitHub: https://github.com/apache/airflow

Airflow made pipeline orchestration accessible with its DAG-based approach. It became the standard for ETL and data engineering.

Why it matters for AI:

  • ML pipeline orchestration (feature engineering, training, evaluation)
  • Proved that DAG-based workflow definition works at scale
  • Prompt engineering pipelines use Airflow-style orchestration
  • Scheduler patterns are now applied to AI agent workflows

n8n, Prefect, Flyte

Modern workflow platforms that evolved from Airflow’s foundations:

  • n8n (2019) - Visual workflow automation with AI capabilities
  • Prefect (2018) - Python-native workflow orchestration for ML
  • Flyte (2019) - Kubernetes-native workflow orchestration for ML/data

Why they matter for AI:

  • Multi-modal agents need workflow orchestration
  • RAG pipelines are essentially ETL pipelines for embeddings
  • Prompt chaining is DAG-based orchestration

Data Formats: The Lakehouse Foundation

Before we could train on massive datasets, we needed formats that supported ACID transactions and schema evolution.

Delta Lake, Apache Iceberg, Apache Hudi

These table formats brought reliability to data lakes:

Why they matter for AI:

  • Training datasets need versioning and reproducibility
  • Feature stores use Delta/Iceberg as storage formats
  • Proved that “big data” could have transactional semantics
  • Schema evolution handles ML feature drift

The Invisible Thread: Why These Projects Matter

What do all these projects have in common?

  1. They solved scaling first - AI training/inference needs horizontal scaling
  2. They proved distributed systems work - Modern AI is fundamentally distributed
  3. They created ecosystem patterns - Plugin systems, extension points, APIs
  4. They established best practices - Observability, security, CI/CD
  5. They built developer habits - YAML configs, declarative APIs, CLI tools

The AI Native Continuum

Modern “AI Native” infrastructure didn’t replace these projects—it builds on them:

Traditional Project AI Native Evolution Example
Hadoop HDFS Distributed model storage HDFS for datasets, S3 for checkpoints
Kafka Real-time feature pipelines Kafka → Feature Store → Model Serving
Spark ML Distributed ML training MLlib → PyTorch Distributed
Elasticsearch Vector search ES → Weaviate/Qdrant/Milvus
Kubernetes ML orchestration K8s → Kubeflow/KServe
Istio AI Gateway service mesh Istio → LLM Gateway with mTLS
Airflow ML pipeline orchestration Airflow → Prefect/Flyte for ML
Table 2: From Traditional to AI Native

Why We’re Removing Them from AI Resources List

This post honors these projects, but we’re also removing them from our AI Resources list. Here’s why:

They’re not “AI Projects”—they’re foundational infrastructure.

  • Hadoop, Kafka, Spark are data engineering tools, not ML frameworks
  • Elasticsearch is search, not semantic search
  • Kubernetes is general-purpose orchestration
  • API gateways serve REST/GraphQL, not just LLMs

But their absence doesn’t diminish their importance.

By removing them, we acknowledge that:

  1. AI has its own ecosystem - Transformers, vector DBs, LLM ops
  2. Traditional infra has its own domain - Data engineering, cloud native
  3. The intersection is where innovation happens - AI-native data platforms, LLM ops on K8s

The Giants We Stand On

The next time you:

  • Deploy a model on Kubernetes
  • Stream features through Kafka
  • Search embeddings with a vector database
  • Orchestrate a RAG pipeline with Prefect

Remember: You’re standing on the shoulders of Hadoop, Kafka, Elasticsearch, Kubernetes, and countless others. They built the roads we now drive on.

The Future: Building New Giants

Just as Hadoop and Kafka enabled modern AI, today’s AI infrastructure will become tomorrow’s foundation:

  • Vector databases may become the new standard for all search
  • LLM observability may evolve into general distributed tracing
  • AI agent orchestration may reinvent workflow automation
  • GPU scheduling may influence general-purpose resource management

The cycle continues. The giants of today will be the foundations of tomorrow.

Conclusion: Gratitude and Continuity

As we clean up our AI Resources list to focus on AI-native projects, we don’t forget where we came from. Traditional big data and cloud native infrastructure made the AI revolution possible.

To the Hadoop committers, Kafka maintainers, Kubernetes contributors, and all who built the foundation: Thank you.

Your work enabled ChatGPT, enabled Transformers, enabled everything we now call “AI.”

Standing on your shoulders, we see further.


Acknowledgments: This post was inspired by the need to refactor our AI Resources list. The 27 projects mentioned here are being removed—not because they’re unimportant, but because they deserve their own category: The Foundation.

My First Month at Dynamia: Why AI Native Infra Is Worth the Investment

2026-02-06 20:56:35

Time flies—it’s already been a month since I joined Dynamia. In this article, I want to share my observations from this past month: why AI Native Infra is a direction worth investing in, and some considerations for those thinking about their own career or technical direction.

Introduction

After nearly five years of remote work, I officially joined Dynamia last month as VP of Open Source Ecosystem. This decision was not sudden, but a natural extension of my journey from cloud native to AI Native Infra.

But this article is not just about my personal choice. I want to answer a more universal question: In the wave of AI infrastructure startups, why is compute governance a direction worth investing in?

For the past decade, I have worked continuously in the infrastructure space: from Kubernetes to Service Mesh, and now to AI Infra. I am increasingly convinced that the core challenge in the AI era is not “can the model run,” but “can compute resources be run efficiently, reliably, and in a controlled manner.” This conviction has only grown stronger through my observations and reflections during this first month at Dynamia.

This article answers three questions: What is AI Native Infra? Why is GPU virtualization a necessity? Why did I choose Dynamia and HAMi?

What Is AI Native Infra

The core of AI Native Infrastructure is not about adding another platform layer, but about redefining the governance target: expanding from “services and containers” to “model behaviors and compute assets.”

I summarize it as three key shifts:

  • Models as execution entities: Governance now includes not just processes, but also model behaviors.
  • Compute as a scarce asset: GPU, memory, and bandwidth must be scheduled and metered precisely.
  • Uncertainty as the default: Systems must remain observable and recoverable amid fluctuations.

In essence, AI Native Infra is about upgrading compute governance from “resource allocation” to “sustainable business capability.”

Why GPU Virtualization Is Essential

Many teams focus on model inference optimization, but in production, enterprises first encounter the problem of “underutilized GPUs.” This is where GPU virtualization delivers value.

  • Structural idleness: Small tasks monopolize large GPUs, leaving them idle for long periods.
  • Pseudo-isolation risks: Native sharing lacks hard boundaries, so a single task OOM can cause cascading failures.
  • Scheduling failures: Some users queue for GPUs while others occupy but do not use them, leading to both shortages and idleness.
  • Fragmentation waste: There may be enough total GPU, but not enough full cards, making efficient packing impossible.
  • Vendor lock-in anxiety: Proprietary, tightly coupled solutions make migration costs uncontrollable.

In short: GPUs must not only be allocatable, but also splittable, isolatable, schedulable, and governable.

The Relationship Between HAMi and Dynamia

This is the most frequently asked question. Here is the shortest answer:

  • HAMi: A CNCF-hosted open source project and community focused on GPU virtualization and heterogeneous compute scheduling.
  • Dynamia: The founding and leading company behind HAMi, providing enterprise-grade products and services based on HAMi.

Open source projects are not the same as company products, but the two evolve together. HAMi drives industry adoption and technical trust, while Dynamia brings these capabilities into enterprise production environments at scale. This “dual engine” approach is what makes Dynamia unique.

What HAMi Provides

HAMi (Heterogeneous AI Computing Virtualization Middleware) delivers three key capabilities on Kubernetes:

  • Virtualization and partitioning: Split physical GPUs into logical resources on demand to improve utilization.
  • Scheduling and topology awareness: Place workloads optimally based on topology to reduce communication bottlenecks.
  • Isolation and observability: Support quotas, policies, and monitoring to reduce production risks.

Currently, HAMi has attracted over 360 contributors from 16 countries, with more than 200 enterprise end users, and its international influence continues to grow.

Market Trends: The AI Infrastructure Startup Wave

AI infrastructure is experiencing a new wave of startups. The vLLM team’s company raised $150 million, SGLang’s commercial spin-off RadixArk is valued at $4 billion, and Databricks acquired MosaicML for $1.3 billion—all pointing to a consensus: Whoever helps enterprises run large models more efficiently and cost-effectively will hold the keys to next-generation AI infrastructure.

Against this backdrop, the positioning of Dynamia and HAMi is even clearer. Many teams focus on “model performance acceleration” and “inference optimization” (like vLLM, SGLang), while we focus on “resource scheduling and virtualization”—enabling better orchestration of existing accelerated hardware resources.

The two are complementary: the former makes individual models run faster and cheaper, while the latter ensures that compute allocation at the cluster level is efficient, fair, and controllable. This is similar to extending Kubernetes’ CPU/memory scheduling philosophy to GPU and heterogeneous compute management in the AI era.

Why AI Native Infra Is Worth the Investment

My observations this month have convinced me that compute governance is the most undervalued yet most promising area in AI infrastructure. If you are considering a career or technical investment, here is my assessment:

First, this is a real and urgent pain point

Model training and inference optimization attract a lot of attention, but in production, enterprises first encounter the problem of “underutilized GPUs”—structural idleness, scheduling failures, fragmentation waste, and vendor lock-in anxiety. Without solving these problems, even the fastest models cannot scale in production. GPU virtualization and heterogeneous compute scheduling are the “infrastructure below infrastructure” for enterprise AI transformation.

Second, this is a clear long-term track

Frameworks like vLLM and SGLang emerge constantly, making individual models run faster. But who ensures that compute allocation at the cluster level is efficient, fair, and controllable? This is similar to extending Kubernetes’ success in CPU/memory scheduling to GPU and heterogeneous compute management in the AI era. This is not something that can be finished in a year or two, but a direction for continuous construction over the next five to ten years.

Third, this is an open and verifiable path

Dynamia chose to build on HAMi as an open source foundation, first solving general capabilities, then supporting enterprise adoption. This means the technical direction is transparent and verifiable in the community. You can form your own judgment by participating in open source, observing adoption, and evaluating the ecosystem—rather than relying on the black-box promises of proprietary solutions.

Fourth, this is a window of opportunity that is opening now

AI infrastructure is being redefined. Investing in its construction today will continue to yield value in the coming years. The vLLM team’s company raised $150 million, SGLang’s commercial spin-off RadixArk is valued at $4 billion, Databricks acquired MosaicML for $1.3 billion—all validating the same trend: Whoever helps enterprises run large models more efficiently will hold the keys to next-generation AI infrastructure.

I hope to bring my experience in cloud native and open source communities to the next stage of HAMi and Dynamia: turning GPU resources from a “cost center” into an “operational asset.” This is not just my career choice, but my judgment and investment in the direction of next-generation infrastructure.

Join the HAMi Community
Add me on WeChat (jimmysong) to join the HAMi community focused on GPU virtualization and heterogeneous compute scheduling.

If you are also interested in HAMi, GPU virtualization, AI Native Infra, or Dynamia, feel free to reach out.

Summary

From cloud native to AI Native Infra, my observations this month have only strengthened my conviction: The true upper limit of AI applications is determined by the infrastructure’s ability to govern compute resources.

HAMi addresses the fundamental issues of GPU virtualization and heterogeneous compute scheduling, while Dynamia is driving these capabilities into large-scale production. If you are also looking for a technical direction worth long-term investment, AI Native Infra—especially compute governance and scheduling—is a track with real pain points, a clear path, an open ecosystem, and an opening window of opportunity.

Joining Dynamia is not just a career choice, but a commitment to building the next generation of infrastructure. I hope the observations and reflections in this article can provide some reference for you as you evaluate technical directions and career opportunities.

If you are also interested in HAMi, GPU virtualization, AI Native Infra, or Dynamia, feel free to reach out.