【Hadoop】3、Hadoop-MapReduce使用avro进行数据的序列化与反序列化

package cn.cutter.demo.hadoop.avro;

import org.apache.hadoop.io.Text;

import java.text.DateFormat;
import java.text.ParseException;
import java.text.SimpleDateFormat;
import java.util.Date; /**
* @ClassName NcdcRecordParser
* @Description TODO
* @Author xiaof
* @Date 2019/2/17 16:36
* @Version 1.0
**/
public class NcdcRecordParser {
private static final int MISSING_TEMPERATURE = 9999; private static final DateFormat DATE_FORMAT =
new SimpleDateFormat("yyyyMMddHHmm"); private String stationId;
private String observationDateString;
private String year;
private String airTemperatureString;
private int airTemperature;
private boolean airTemperatureMalformed;
private String quality; public void parse(String record) {
stationId = record.substring(4, 10) + "-" + record.substring(10, 15);
observationDateString = record.substring(15, 27);
year = record.substring(15, 19);
airTemperatureMalformed = false;
// Remove leading plus sign as parseInt doesn't like them
if (record.charAt(87) == '+') {
airTemperatureString = record.substring(88, 92);
airTemperature = Integer.parseInt(airTemperatureString);
} else if (record.charAt(87) == '-') {
airTemperatureString = record.substring(87, 92);
airTemperature = Integer.parseInt(airTemperatureString);
} else {
airTemperatureMalformed = true;
}
airTemperature = Integer.parseInt(airTemperatureString);
quality = record.substring(92, 93);
} public void parse(Text record) {
parse(record.toString());
} public boolean isValidTemperature() {
return !airTemperatureMalformed && airTemperature != MISSING_TEMPERATURE
&& quality.matches("[01459]");
} public boolean isMalformedTemperature() {
return airTemperatureMalformed;
} public boolean isMissingTemperature() {
return airTemperature == MISSING_TEMPERATURE;
} public String getStationId() {
return stationId;
} public Date getObservationDate() {
try {
System.out.println(observationDateString);
return DATE_FORMAT.parse(observationDateString);
} catch (ParseException e) {
throw new IllegalArgumentException(e);
}
} public String getYear() {
return year;
} public int getYearInt() {
return Integer.parseInt(year);
} public int getAirTemperature() {
return airTemperature;
} public String getAirTemperatureString() {
return airTemperatureString;
} public String getQuality() {
return quality;
} }

通过avro输出数据,我们的数据集是:

0067011990999991950051507004+68750+023550FM-12+038299999V0203301N00671220001CN9999999N9+00001+99999999999
0043011990999991950051512004+68750+023550FM-12+038299999V0203201N00671220001CN9999999N9+00221+99999999999
0043011990999991950051518004+68750+023550FM-12+038299999V0203201N00261220001CN9999999N9-00111+99999999999
0043012650999991949032412004+62300+010750FM-12+048599999V0202701N00461220001CN0500001N9+01111+99999999999
0043012650999991949032418004+62300+010750FM-12+048599999V0202701N00461220001CN0500001N9+00781+99999999999
package cn.cutter.demo.hadoop.avro;

import org.apache.avro.Schema;
import org.apache.avro.generic.GenericData;
import org.apache.avro.generic.GenericRecord;
import org.apache.avro.mapred.*;
import org.apache.avro.mapreduce.AvroJob;
import org.apache.avro.mapreduce.AvroKeyOutputFormat;
import org.apache.hadoop.conf.Configured;
import org.apache.hadoop.fs.Path;
import org.apache.hadoop.io.LongWritable;
import org.apache.hadoop.io.NullWritable;
import org.apache.hadoop.io.Text;
import org.apache.hadoop.mapred.*;
import org.apache.hadoop.mapreduce.Job;
import org.apache.hadoop.mapreduce.Mapper;
import org.apache.hadoop.mapreduce.Reducer;
import org.apache.hadoop.mapreduce.lib.input.FileInputFormat;
import org.apache.hadoop.mapreduce.lib.input.TextInputFormat;
import org.apache.hadoop.mapreduce.lib.output.FileOutputFormat;
import org.apache.hadoop.util.Tool;
import org.apache.hadoop.util.ToolRunner; import java.io.FileInputStream;
import java.io.IOException; /**
* @ClassName AvroGenericMaxTemperature
* @Description 通过avro记录的数据文件,使用MapReduce进行解析读取数据
* @Author xiaof
* @Date 2019/2/17 15:23
* @Version 1.0
**/
public class AvroGenericMaxTemperature extends Configured implements Tool { //转换json数据,avro的模式解析
private static final Schema SCHEMA = new Schema.Parser().parse("{\"name\":\"WeatherRecord\",\"doc\":\"A weather reading\",\"type\":\"record\",\"fields\":[{\"name\":\"year\",\"type\":\"int\"},{\"name\":\"temperature\",\"type\":\"int\"},{\"name\":\"stationId\",\"type\":\"string\"}]}"); public static class MaxTemperatureMapper extends Mapper<LongWritable, Text, AvroKey<Integer>, AvroValue<GenericRecord>> {
//创建天气解析类对象,数据记录对象
private NcdcRecordParser ncdcRecordParser = new NcdcRecordParser();
private GenericRecord genericRecord = new GenericData.Record(SCHEMA); @Override
protected void map(LongWritable key, Text value, Context context) throws IOException, InterruptedException {
//1.解析数据
ncdcRecordParser.parse(value.toString()); //2.判断数据有效性
if(ncdcRecordParser.isValidTemperature()) {
//3.获取对应的数据进入记录record中,然后输出到上下文对象
genericRecord.put("year", ncdcRecordParser.getYearInt());
genericRecord.put("temperature", ncdcRecordParser.getAirTemperature());
genericRecord.put("stationId", ncdcRecordParser.getStationId());
context.write(new AvroKey<Integer>(ncdcRecordParser.getYearInt()), new AvroValue<GenericRecord>(genericRecord));
}
}
} public static class MaxTemperatureReducer extends Reducer<AvroKey<Integer>, AvroValue<GenericRecord>, AvroKey<GenericRecord>, NullWritable> {
@Override
protected void reduce(AvroKey<Integer> key, Iterable<AvroValue<GenericRecord>> values, Context context) throws IOException, InterruptedException {
//遍历所有的数据,获取最大的数据
GenericRecord max = null;
for(AvroValue<GenericRecord> value : values) {
//获取数据的值,判断max等于空,或者当前温度大于max记录的温度,那么就更新max
GenericRecord record = value.datum();
if(max == null || (Integer) record.get("temperature") > (Integer) max.get("temperature")) {
max = newWeatherRecord(record);
}
} context.write(new AvroKey(max), NullWritable.get());
} private GenericRecord newWeatherRecord(GenericRecord value) {
GenericRecord record = new GenericData.Record(SCHEMA);
record.put("year", value.get("year"));
record.put("temperature", value.get("temperature"));
record.put("stationId", value.get("stationId")); return record;
}
} @Override
public int run(String[] strings) throws Exception {
if (strings.length != 2) {
System.err.printf("Usage: %s [generic options] <input> <output>\n",
getClass().getSimpleName());
ToolRunner.printGenericCommandUsage(System.err);
return -1;
}
Job job = Job.getInstance(this.getConf(), "Max temperature");
job.setJarByClass(this.getClass()); job.getConfiguration().setBoolean(Job.MAPREDUCE_JOB_USER_CLASSPATH_FIRST, true); FileInputFormat.addInputPath(job, new Path(strings[0]));
FileOutputFormat.setOutputPath(job, new Path(strings[1])); AvroJob.setMapOutputKeySchema(job, Schema.create(Schema.Type.INT));
AvroJob.setMapOutputValueSchema(job, SCHEMA);
AvroJob.setOutputKeySchema(job, SCHEMA); job.setInputFormatClass(TextInputFormat.class);
job.setOutputFormatClass(AvroKeyOutputFormat.class); job.setMapperClass(MaxTemperatureMapper.class);
job.setReducerClass(MaxTemperatureReducer.class); return job.waitForCompletion(true) ? 0: 1; } public static void main(String[] args) throws Exception { System.setProperty("hadoop.home.dir", "F:\\hadoop-2.7.7");
String paths[] = {"H:\\ideaworkspace\\1-tmp\\input\\1.txt", "H:\\ideaworkspace\\1-tmp\\output1"}; int exitCode = ToolRunner.run(new AvroGenericMaxTemperature(), paths);
System.exit(exitCode); }
}

结果使用avro-tool进行查看:

H:\>java -jar avro-tools-1.8.2.jar tojson H:\ideaworkspace\1-tmp\output1\part-r-
00000.avro

【Hadoop】3、Hadoop-MapReduce使用avro进行数据的序列化与反序列化

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