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图智能 101

图智能 101

作者: MatrixOnEarth | 来源:发表于2022-11-03 19:36 被阅读0次

    Why

    Graph无处不在

    graph is everywhere

    Graph Intelligence helps

    graph intelligence helps

    It's the right time now!

    Gartner预测,graph技术在数据和分析创新中的使用率从2021年的10%,到2025年会增长到80%。我们目前正在经历从early adoption到early mainstream的穿越大峡谷的时期,既不太早也不太晚,时间刚刚好。


    now is the right time

    What

    如何建模图

    A graph 𝒢 is an ordered pair 𝒢 = (𝑉, 𝐸) comprising:

    • 𝑉, a set of vertices (or nodes)
    • 𝐸⊆{(𝑥,𝑦)|𝑥,𝑦∈𝑉}, a set of edges (or links), which are pairs of nodes
      Example:


      directed graph

    Different Types of Graph

    • Are edges directed?
      Directed Graph vs. Undirected Graph
    • Are there multiple types of nodes or multiple types of edges?
      Homogeneous Graph vs Heterogeneous Graph

    如何表示图

    不同的表示方式会指向不同的计算模式。


    graph的两种计算模式

    如何计算图

    如下图所示,图的计算步骤如下:

    • 遍历图中的所有结点,或者采样图中的一些结点。每次选择其中一个结点,称为目标结点(target node);
    • 一个𝐿-层的GNN至少需要聚合目标结点的L-跳领域的信息。因此,我们需要以围绕目标结点构造一个L-跳的ego network。图中是一个2-跳ego network的例子,其中绿色结点是第1跳,蓝色结点是第2跳;
    • 计算并更新ego-network里的每个结点的embedding。embeddings会使用到图的结构信息和结点与边的特征。


      ego network

    那么,这些embedding是如何计算和更新的呢?主要是使用Message Passing的计算方法。Message Passing有一些计算范式如GAS(Gather-ApplyEdge-Scatter), SAGA(Scatter-ApplyEdge-Gather-ApplyVertex)等。我们这里介绍归纳得比较全面的SAGA计算范式。假设需要计算和更新下图中的\vec{x_1}:

    graph
    • Scatter
      Propagate message from source vertex to edge.

      scatter
    • ApplyEdge
      Transform message along each edge.

      ApplyEdge
    • Gather
      Gather transformed message to the destination vertex.

      Gather
    • ApplyVertex
      Transform the gathered output to get updated vertex.

      ApplyVertex

    公式如下:


    Formula

    分析一下,会发现,SAGA模式中ApplyEdge和ApplyVertex是传统deep learning中的NN(Neural Network)操作,我们可以复用;而Scatter和Gather是GNN新引入的操作。即,Graph Computing = Graph Ops + NN Ops

    operation characteristics

    不同的图数据集规模

    • One big graph


      one big graph
    • Many small graphs


      many small graphs

    不同的图任务

    • Node-level prediction
      预测图中结点的类别或性质


      Node-level Prediction
    • Edge-level prediction
      预测图中两个结点是否存在边,以及边的类别或性质


      Edge-level Prediction
    • Graph-level prediction
      预测整图或子图的类别或性质


      Graph-level Prediction

    How

    Workflow

    general workflow

    以fraud detection为例:

    • Tabformer数据集


      Tabformer data
    • workflow


      fraud detection workflow

    软件栈

    software stack
    • 计算平面


      compute plane
    • 数据平面


      data plane

    SW Challenges

    Graph Sampler

    For many small graphs datasets, full batch training works most time. Full batch training means we can do training on whole graph;
    When it comes to one large graph datasets, in many real scenarios, we meet Neighbor Explosion problem;

    Neighbor Explosion:


    neighboe explosion

    Graph sampler comes to rescue. Only sample a fraction of target nodes, and furthermore, for each target node, we sample a sub-graph of its ego-network for training. This is called mini-batch training.
    Graph sampling is triggered for each data loading. And the hops of the sampled graph equals the GNN layer number 𝐿. Which means graph sampler in data loader is important in GNN training.

    sampling take a lot of time

    Challenge: How to optimize sampler both as standalone and in training pipe?

    When graph comes to huge(billions of nodes, tens of billions of edges), we meet new at-scale challenges:

    • How to store the huge graph across node? -> graph partition
    • How to build a training system w/ not only distributed model computing but also distributed graph store and sampling?
      • How to cut the graph while minimize cross partition connections?


        graph partition

    A possible GNN distributed training architecture:


    GNN distributed training

    Scatter-Gather

    • Fuse adjacent graphs ops

    One common fuse pattern for GCN & GraphSAGE:


    Aggregate

    Challenge:
    How to fuse more GNN patterns on different ApplyEdge and ApplyVertex,automatically?

    • How to implement fused Aggregate


      Aggregate implementations

    Challenge:
    - Different graph data structures lead to different implementations in same logic operations;
    - Different graph characteristics favors different data structures;(like low-degree graphs favor COO, high-degree graphs favor CSR)
    - **How to find the applicable zone for each and hide such complexity to data scientists? **

    More

    • Inference challenge
      • GNN inference needs full batch inference, how to make it efficient?
      • Distributed inference for big graph?
      • Vector quantization for node and edge features?
      • GNN distilled to MLP?
    • SW-HW co-design challenge
      • How to relief irregular memory access in scatter-gather?
      • Do we need some data flow engine for acceleration?

    Finishing words

    "There is plenty of room at the top" 对技术人员很重要。但为避免入宝山而空返,我们更需要建立起技术架构,这就像是地图一样,只有按图索骥才能更好地探索和利用好top里的plenty of room。


    There is plenty of room at the top

    References

    1. Graph + AI: What’s Next? Progress in Democratizing Graph for All
    2. Recent Advances in Efficient and Scalable Graph Neural Networks
    3. Crossing the Chasm – Technology adoption lifecycle
    4. Understanding and Bridging the Gaps in Current GNN Performance Optimizations
    5. Automatic Generation of High-Performance Inference Kernels for Graph Neural Networks on Multi-Core Systems
    6. Understanding GNN Computational Graph: A Coordinated Computation, IO, And Memory Perspective
    7. Graphiler: A Compiler For Graph Neural Networks
    8. Scatter-Add in Data Parallel Architectures
    9. fuseGNN: Accelerating Graph Convolutional Neural Network Training on GPGPU
    10. VQ-GNN: A Universal Framework to Scale up Graph Neural Networks using Vector Quantization
    11. NeuGraph: Parallel Deep Neural Network Computation on Large Graphs
    12. Completing a member knowledge graph with Graph Neural Networks
    13. PinnerFormer: Sequence Modeling for User Representation at Pinterest
    14. Gartner and Graph Analytics

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