Java 类名:com.alibaba.alink.operator.batch.similarity.VectorNearestNeighborPredictBatchOp
Python 类名:VectorNearestNeighborPredictBatchOp

功能介绍

该组件为向量最近邻预测功能,接收 VectorNearestNeighborTrainBatchOp 训练的模型
该功能由预测时候的topN和radius参数控制, 如果填写了topN,则输出前N个最近邻,如果填写了radius,则输出radius范围内的邻居。如果两个同时设置,则输出radius范围内前N个最近邻。
如果不设置 OutputCol,输出列会替换输入的向量列。

参数说明

| 名称 | 中文名称 | 描述 | 类型 | 是否必须? | 取值范围 | 默认值 | | —- | —- | —- | —- | —- | —- | —- |

| selectedCol | 选中的列名 | 计算列对应的列名 | String | ✓ | 所选列类型为 [DENSE_VECTOR, SPARSE_VECTOR, STRING, VECTOR] | |

| modelFilePath | 模型的文件路径 | 模型的文件路径 | String | | | null |

| outputCol | 输出结果列 | 输出结果列列名,可选,默认null | String | | | null |

| radius | radius值 | radius值 | Double | | | null |

| reservedCols | 算法保留列名 | 算法保留列 | String[] | | | null |

| topN | TopN的值 | TopN的值 | Integer | | [1, +inf) | null |

| numThreads | 组件多线程线程个数 | 组件多线程线程个数 | Integer | | | 1 |

代码示例

Python 代码

  1. from pyalink.alink import *
  2. import pandas as pd
  3. useLocalEnv(1)
  4. df = pd.DataFrame([
  5. [0, "0 0 0"],
  6. [1, "1 1 1"],
  7. [2, "2 2 2"]
  8. ])
  9. inOp = BatchOperator.fromDataframe(df, schemaStr='id int, vec string')
  10. train = VectorNearestNeighborTrainBatchOp().setIdCol("id").setSelectedCol("vec").linkFrom(inOp)
  11. predict = VectorNearestNeighborPredictBatchOp().setSelectedCol("vec").setTopN(3).linkFrom(train, inOp)
  12. predict.print()

Java 代码

  1. import org.apache.flink.types.Row;
  2. import com.alibaba.alink.operator.batch.BatchOperator;
  3. import com.alibaba.alink.operator.batch.similarity.VectorNearestNeighborPredictBatchOp;
  4. import com.alibaba.alink.operator.batch.similarity.VectorNearestNeighborTrainBatchOp;
  5. import com.alibaba.alink.operator.batch.source.MemSourceBatchOp;
  6. import org.junit.Test;
  7. import java.util.Arrays;
  8. import java.util.List;
  9. public class VectorNearestNeighborPredictBatchOpTest {
  10. @Test
  11. public void testVectorNearestNeighborPredictBatchOp() throws Exception {
  12. List <Row> df = Arrays.asList(
  13. Row.of(0, "0 0 0"),
  14. Row.of(1, "1 1 1"),
  15. Row.of(2, "2 2 2")
  16. );
  17. BatchOperator <?> inOp = new MemSourceBatchOp(df, "id int, vec string");
  18. BatchOperator <?> train =
  19. new VectorNearestNeighborTrainBatchOp().setIdCol("id").setSelectedCol("vec").linkFrom(
  20. inOp);
  21. BatchOperator <?> predict =
  22. new VectorNearestNeighborPredictBatchOp().setSelectedCol("vec").setTopN(3).linkFrom(
  23. train, inOp);
  24. predict.print();
  25. }
  26. }

运行结果

| id | vec | | —- | —- |

| 0 | {“ID”:”[0,1,2]”,”METRIC”:”[0.0,1.7320508075688772,3.4641016151377544]”} |

| 1 | {“ID”:”[1,2,0]”,”METRIC”:”[0.0,1.7320508075688772,1.7320508075688772]”} |

| 2 | {“ID”:”[2,1,0]”,”METRIC”:”[0.0,1.7320508075688772,3.4641016151377544]”} |