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      監(jiān)獄屬于公安機(jī)關(guān)嗎?

      時(shí)間:2024-11-05 07:53 人氣:0 編輯:招聘街

      一、監(jiān)獄屬于公安機(jī)關(guān)嗎?

        看守所以縣級(jí)以上的行政區(qū)域?yàn)閱挝辉O(shè)置,由本級(jí)公安機(jī)關(guān)管轄;拘留所是依據(jù)中國(guó)現(xiàn)行的法律、法規(guī)、條例和相關(guān)規(guī)定而設(shè)置的羈押場(chǎng)所,由公安部門統(tǒng)一負(fù)責(zé)管理;派出所是公安局的派出機(jī)構(gòu),也是有公安局管轄,監(jiān)獄隸屬于司法局,監(jiān)獄有省直監(jiān)獄和市直監(jiān)獄,省直歸省司法廳監(jiān)獄管理局管,市直就歸是司法局管。   綜上述,派出所、拘留所、看守所的上級(jí)單位是公安局,監(jiān)獄的上級(jí)單位是司法局。

      二、監(jiān)獄劃入公安機(jī)關(guān)嗎?

      監(jiān)獄是司法系統(tǒng),公安是政府職能部門,不是一個(gè)系統(tǒng),不會(huì)劃入公安機(jī)關(guān)的

      三、監(jiān)獄的單位性質(zhì)是什么?是機(jī)關(guān)嗎?

      監(jiān)獄中的獄警是機(jī)關(guān)工作人員,監(jiān)獄雖在地方,但它屬省司法廳直接管理,經(jīng)費(fèi)都是省直撥的,應(yīng)該說(shuō)單位現(xiàn)在還是可以的。

      四、三亞監(jiān)獄屬于省直機(jī)關(guān)嗎?

      不是,三亞是地級(jí)市,所以三亞監(jiān)獄是直屬于三亞的市級(jí)直屬機(jī)關(guān),它隸屬于三亞市政府

      五、監(jiān)獄單位的性質(zhì)是屬于黨政機(jī)關(guān)嗎?

      隸屬于司法行政機(jī)關(guān),往上算到省一級(jí),一般受本省(自治區(qū)或直轄市)司法廳(局)管轄的,籠統(tǒng)的講,也屬于黨政機(jī)關(guān),具體的講,劃分到政法機(jī)關(guān)里面。

      六、監(jiān)獄系統(tǒng)的上級(jí)機(jī)關(guān)是哪里?歸哪個(gè)部門管?

      監(jiān)獄是國(guó)家的刑罰執(zhí)行機(jī)關(guān),省級(jí)監(jiān)獄都屬于省監(jiān)獄管理局下屬單位,所以監(jiān)獄系統(tǒng)的上級(jí)主管機(jī)關(guān)應(yīng)該是司法部門,由省級(jí)政府的司法廳實(shí)行部門管理,上級(jí)部門是各省、自治區(qū)、直轄市司法廳(局)設(shè)立的省級(jí)監(jiān)獄管理局,監(jiān)獄管理局負(fù)責(zé)管理全轄區(qū)的監(jiān)獄工作。

      七、黑龍江省新建監(jiān)獄是機(jī)關(guān)單位嗎,我想知道是機(jī)關(guān)單位?

      下設(shè): 教育處、獄政處、獄偵處、生活衛(wèi)生處、勞動(dòng)改造處、房產(chǎn)處、刑罰執(zhí)行處、等太多了,二十來(lái)個(gè)處室,還有集團(tuán)公司

      八、全省監(jiān)獄、強(qiáng)戒機(jī)關(guān)考試錄用醫(yī)護(hù)公務(wù)員好嗎?

      可以,屬于內(nèi)勤崗位,相對(duì)輕松,壓力不大,不需要下監(jiān)區(qū)

      九、白城監(jiān)獄除了楨來(lái)監(jiān)獄還有哪個(gè)監(jiān)獄?白城監(jiān)獄?

      白城市四方陀子監(jiān)獄和五間戶監(jiān)獄,最近還有內(nèi)蒙古的監(jiān)獄(保安沼、烏塔其等四個(gè)監(jiān)獄)

      十、mahout面試題?

      之前看了Mahout官方示例 20news 的調(diào)用實(shí)現(xiàn);于是想根據(jù)示例的流程實(shí)現(xiàn)其他例子。網(wǎng)上看到了一個(gè)關(guān)于天氣適不適合打羽毛球的例子。

      訓(xùn)練數(shù)據(jù):

      Day Outlook Temperature Humidity Wind PlayTennis

      D1 Sunny Hot High Weak No

      D2 Sunny Hot High Strong No

      D3 Overcast Hot High Weak Yes

      D4 Rain Mild High Weak Yes

      D5 Rain Cool Normal Weak Yes

      D6 Rain Cool Normal Strong No

      D7 Overcast Cool Normal Strong Yes

      D8 Sunny Mild High Weak No

      D9 Sunny Cool Normal Weak Yes

      D10 Rain Mild Normal Weak Yes

      D11 Sunny Mild Normal Strong Yes

      D12 Overcast Mild High Strong Yes

      D13 Overcast Hot Normal Weak Yes

      D14 Rain Mild High Strong No

      檢測(cè)數(shù)據(jù):

      sunny,hot,high,weak

      結(jié)果:

      Yes=》 0.007039

      No=》 0.027418

      于是使用Java代碼調(diào)用Mahout的工具類實(shí)現(xiàn)分類。

      基本思想:

      1. 構(gòu)造分類數(shù)據(jù)。

      2. 使用Mahout工具類進(jìn)行訓(xùn)練,得到訓(xùn)練模型。

      3。將要檢測(cè)數(shù)據(jù)轉(zhuǎn)換成vector數(shù)據(jù)。

      4. 分類器對(duì)vector數(shù)據(jù)進(jìn)行分類。

      接下來(lái)貼下我的代碼實(shí)現(xiàn)=》

      1. 構(gòu)造分類數(shù)據(jù):

      在hdfs主要?jiǎng)?chuàng)建一個(gè)文件夾路徑 /zhoujainfeng/playtennis/input 并將分類文件夾 no 和 yes 的數(shù)據(jù)傳到hdfs上面。

      數(shù)據(jù)文件格式,如D1文件內(nèi)容: Sunny Hot High Weak

      2. 使用Mahout工具類進(jìn)行訓(xùn)練,得到訓(xùn)練模型。

      3。將要檢測(cè)數(shù)據(jù)轉(zhuǎn)換成vector數(shù)據(jù)。

      4. 分類器對(duì)vector數(shù)據(jù)進(jìn)行分類。

      這三步,代碼我就一次全貼出來(lái);主要是兩個(gè)類 PlayTennis1 和 BayesCheckData = =》

      package myTesting.bayes;

      import org.apache.hadoop.conf.Configuration;

      import org.apache.hadoop.fs.FileSystem;

      import org.apache.hadoop.fs.Path;

      import org.apache.hadoop.util.ToolRunner;

      import org.apache.mahout.classifier.naivebayes.training.TrainNaiveBayesJob;

      import org.apache.mahout.text.SequenceFilesFromDirectory;

      import org.apache.mahout.vectorizer.SparseVectorsFromSequenceFiles;

      public class PlayTennis1 {

      private static final String WORK_DIR = "hdfs://192.168.9.72:9000/zhoujianfeng/playtennis";

      /*

      * 測(cè)試代碼

      */

      public static void main(String[] args) {

      //將訓(xùn)練數(shù)據(jù)轉(zhuǎn)換成 vector數(shù)據(jù)

      makeTrainVector();

      //產(chǎn)生訓(xùn)練模型

      makeModel(false);

      //測(cè)試檢測(cè)數(shù)據(jù)

      BayesCheckData.printResult();

      }

      public static void makeCheckVector(){

      //將測(cè)試數(shù)據(jù)轉(zhuǎn)換成序列化文件

      try {

      Configuration conf = new Configuration();

      conf.addResource(new Path("/usr/local/hadoop/conf/core-site.xml"));

      String input = WORK_DIR+Path.SEPARATOR+"testinput";

      String output = WORK_DIR+Path.SEPARATOR+"tennis-test-seq";

      Path in = new Path(input);

      Path out = new Path(output);

      FileSystem fs = FileSystem.get(conf);

      if(fs.exists(in)){

      if(fs.exists(out)){

      //boolean參數(shù)是,是否遞歸刪除的意思

      fs.delete(out, true);

      }

      SequenceFilesFromDirectory sffd = new SequenceFilesFromDirectory();

      String[] params = new String[]{"-i",input,"-o",output,"-ow"};

      ToolRunner.run(sffd, params);

      }

      } catch (Exception e) {

      // TODO Auto-generated catch block

      e.printStackTrace();

      System.out.println("文件序列化失敗!");

      System.exit(1);

      }

      //將序列化文件轉(zhuǎn)換成向量文件

      try {

      Configuration conf = new Configuration();

      conf.addResource(new Path("/usr/local/hadoop/conf/core-site.xml"));

      String input = WORK_DIR+Path.SEPARATOR+"tennis-test-seq";

      String output = WORK_DIR+Path.SEPARATOR+"tennis-test-vectors";

      Path in = new Path(input);

      Path out = new Path(output);

      FileSystem fs = FileSystem.get(conf);

      if(fs.exists(in)){

      if(fs.exists(out)){

      //boolean參數(shù)是,是否遞歸刪除的意思

      fs.delete(out, true);

      }

      SparseVectorsFromSequenceFiles svfsf = new SparseVectorsFromSequenceFiles();

      String[] params = new String[]{"-i",input,"-o",output,"-lnorm","-nv","-wt","tfidf"};

      ToolRunner.run(svfsf, params);

      }

      } catch (Exception e) {

      // TODO Auto-generated catch block

      e.printStackTrace();

      System.out.println("序列化文件轉(zhuǎn)換成向量失敗!");

      System.out.println(2);

      }

      }

      public static void makeTrainVector(){

      //將測(cè)試數(shù)據(jù)轉(zhuǎn)換成序列化文件

      try {

      Configuration conf = new Configuration();

      conf.addResource(new Path("/usr/local/hadoop/conf/core-site.xml"));

      String input = WORK_DIR+Path.SEPARATOR+"input";

      String output = WORK_DIR+Path.SEPARATOR+"tennis-seq";

      Path in = new Path(input);

      Path out = new Path(output);

      FileSystem fs = FileSystem.get(conf);

      if(fs.exists(in)){

      if(fs.exists(out)){

      //boolean參數(shù)是,是否遞歸刪除的意思

      fs.delete(out, true);

      }

      SequenceFilesFromDirectory sffd = new SequenceFilesFromDirectory();

      String[] params = new String[]{"-i",input,"-o",output,"-ow"};

      ToolRunner.run(sffd, params);

      }

      } catch (Exception e) {

      // TODO Auto-generated catch block

      e.printStackTrace();

      System.out.println("文件序列化失敗!");

      System.exit(1);

      }

      //將序列化文件轉(zhuǎn)換成向量文件

      try {

      Configuration conf = new Configuration();

      conf.addResource(new Path("/usr/local/hadoop/conf/core-site.xml"));

      String input = WORK_DIR+Path.SEPARATOR+"tennis-seq";

      String output = WORK_DIR+Path.SEPARATOR+"tennis-vectors";

      Path in = new Path(input);

      Path out = new Path(output);

      FileSystem fs = FileSystem.get(conf);

      if(fs.exists(in)){

      if(fs.exists(out)){

      //boolean參數(shù)是,是否遞歸刪除的意思

      fs.delete(out, true);

      }

      SparseVectorsFromSequenceFiles svfsf = new SparseVectorsFromSequenceFiles();

      String[] params = new String[]{"-i",input,"-o",output,"-lnorm","-nv","-wt","tfidf"};

      ToolRunner.run(svfsf, params);

      }

      } catch (Exception e) {

      // TODO Auto-generated catch block

      e.printStackTrace();

      System.out.println("序列化文件轉(zhuǎn)換成向量失敗!");

      System.out.println(2);

      }

      }

      public static void makeModel(boolean completelyNB){

      try {

      Configuration conf = new Configuration();

      conf.addResource(new Path("/usr/local/hadoop/conf/core-site.xml"));

      String input = WORK_DIR+Path.SEPARATOR+"tennis-vectors"+Path.SEPARATOR+"tfidf-vectors";

      String model = WORK_DIR+Path.SEPARATOR+"model";

      String labelindex = WORK_DIR+Path.SEPARATOR+"labelindex";

      Path in = new Path(input);

      Path out = new Path(model);

      Path label = new Path(labelindex);

      FileSystem fs = FileSystem.get(conf);

      if(fs.exists(in)){

      if(fs.exists(out)){

      //boolean參數(shù)是,是否遞歸刪除的意思

      fs.delete(out, true);

      }

      if(fs.exists(label)){

      //boolean參數(shù)是,是否遞歸刪除的意思

      fs.delete(label, true);

      }

      TrainNaiveBayesJob tnbj = new TrainNaiveBayesJob();

      String[] params =null;

      if(completelyNB){

      params = new String[]{"-i",input,"-el","-o",model,"-li",labelindex,"-ow","-c"};

      }else{

      params = new String[]{"-i",input,"-el","-o",model,"-li",labelindex,"-ow"};

      }

      ToolRunner.run(tnbj, params);

      }

      } catch (Exception e) {

      // TODO Auto-generated catch block

      e.printStackTrace();

      System.out.println("生成訓(xùn)練模型失敗!");

      System.exit(3);

      }

      }

      }

      package myTesting.bayes;

      import java.io.IOException;

      import java.util.HashMap;

      import java.util.Map;

      import org.apache.commons.lang.StringUtils;

      import org.apache.hadoop.conf.Configuration;

      import org.apache.hadoop.fs.Path;

      import org.apache.hadoop.fs.PathFilter;

      import org.apache.hadoop.io.IntWritable;

      import org.apache.hadoop.io.LongWritable;

      import org.apache.hadoop.io.Text;

      import org.apache.mahout.classifier.naivebayes.BayesUtils;

      import org.apache.mahout.classifier.naivebayes.NaiveBayesModel;

      import org.apache.mahout.classifier.naivebayes.StandardNaiveBayesClassifier;

      import org.apache.mahout.common.Pair;

      import org.apache.mahout.common.iterator.sequencefile.PathType;

      import org.apache.mahout.common.iterator.sequencefile.SequenceFileDirIterable;

      import org.apache.mahout.math.RandomAccessSparseVector;

      import org.apache.mahout.math.Vector;

      import org.apache.mahout.math.Vector.Element;

      import org.apache.mahout.vectorizer.TFIDF;

      import com.google.common.collect.ConcurrentHashMultiset;

      import com.google.common.collect.Multiset;

      public class BayesCheckData {

      private static StandardNaiveBayesClassifier classifier;

      private static Map<String, Integer> dictionary;

      private static Map<Integer, Long> documentFrequency;

      private static Map<Integer, String> labelIndex;

      public void init(Configuration conf){

      try {

      String modelPath = "/zhoujianfeng/playtennis/model";

      String dictionaryPath = "/zhoujianfeng/playtennis/tennis-vectors/dictionary.file-0";

      String documentFrequencyPath = "/zhoujianfeng/playtennis/tennis-vectors/df-count";

      String labelIndexPath = "/zhoujianfeng/playtennis/labelindex";

      dictionary = readDictionnary(conf, new Path(dictionaryPath));

      documentFrequency = readDocumentFrequency(conf, new Path(documentFrequencyPath));

      labelIndex = BayesUtils.readLabelIndex(conf, new Path(labelIndexPath));

      NaiveBayesModel model = NaiveBayesModel.materialize(new Path(modelPath), conf);

      classifier = new StandardNaiveBayesClassifier(model);

      } catch (IOException e) {

      // TODO Auto-generated catch block

      e.printStackTrace();

      System.out.println("檢測(cè)數(shù)據(jù)構(gòu)造成vectors初始化時(shí)報(bào)錯(cuò)。。。。");

      System.exit(4);

      }

      }

      /**

      * 加載字典文件,Key: TermValue; Value:TermID

      * @param conf

      * @param dictionnaryDir

      * @return

      */

      private static Map<String, Integer> readDictionnary(Configuration conf, Path dictionnaryDir) {

      Map<String, Integer> dictionnary = new HashMap<String, Integer>();

      PathFilter filter = new PathFilter() {

      @Override

      public boolean accept(Path path) {

      String name = path.getName();

      return name.startsWith("dictionary.file");

      }

      };

      for (Pair<Text, IntWritable> pair : new SequenceFileDirIterable<Text, IntWritable>(dictionnaryDir, PathType.LIST, filter, conf)) {

      dictionnary.put(pair.getFirst().toString(), pair.getSecond().get());

      }

      return dictionnary;

      }

      /**

      * 加載df-count目錄下TermDoc頻率文件,Key: TermID; Value:DocFreq

      * @param conf

      * @param dictionnaryDir

      * @return

      */

      private static Map<Integer, Long> readDocumentFrequency(Configuration conf, Path documentFrequencyDir) {

      Map<Integer, Long> documentFrequency = new HashMap<Integer, Long>();

      PathFilter filter = new PathFilter() {

      @Override

      public boolean accept(Path path) {

      return path.getName().startsWith("part-r");

      }

      };

      for (Pair<IntWritable, LongWritable> pair : new SequenceFileDirIterable<IntWritable, LongWritable>(documentFrequencyDir, PathType.LIST, filter, conf)) {

      documentFrequency.put(pair.getFirst().get(), pair.getSecond().get());

      }

      return documentFrequency;

      }

      public static String getCheckResult(){

      Configuration conf = new Configuration();

      conf.addResource(new Path("/usr/local/hadoop/conf/core-site.xml"));

      String classify = "NaN";

      BayesCheckData cdv = new BayesCheckData();

      cdv.init(conf);

      System.out.println("init done...............");

      Vector vector = new RandomAccessSparseVector(10000);

      TFIDF tfidf = new TFIDF();

      //sunny,hot,high,weak

      Multiset<String> words = ConcurrentHashMultiset.create();

      words.add("sunny",1);

      words.add("hot",1);

      words.add("high",1);

      words.add("weak",1);

      int documentCount = documentFrequency.get(-1).intValue(); // key=-1時(shí)表示總文檔數(shù)

      for (Multiset.Entry<String> entry : words.entrySet()) {

      String word = entry.getElement();

      int count = entry.getCount();

      Integer wordId = dictionary.get(word); // 需要從dictionary.file-0文件(tf-vector)下得到wordID,

      if (StringUtils.isEmpty(wordId.toString())){

      continue;

      }

      if (documentFrequency.get(wordId) == null){

      continue;

      }

      Long freq = documentFrequency.get(wordId);

      double tfIdfValue = tfidf.calculate(count, freq.intValue(), 1, documentCount);

      vector.setQuick(wordId, tfIdfValue);

      }

      // 利用貝葉斯算法開始分類,并提取得分最好的分類label

      Vector resultVector = classifier.classifyFull(vector);

      double bestScore = -Double.MAX_VALUE;

      int bestCategoryId = -1;

      for(Element element: resultVector.all()) {

      int categoryId = element.index();

      double score = element.get();

      System.out.println("categoryId:"+categoryId+" score:"+score);

      if (score > bestScore) {

      bestScore = score;

      bestCategoryId = categoryId;

      }

      }

      classify = labelIndex.get(bestCategoryId)+"(categoryId="+bestCategoryId+")";

      return classify;

      }

      public static void printResult(){

      System.out.println("檢測(cè)所屬類別是:"+getCheckResult());

      }

      }

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