Exemplo n.º 1
0
  def test_guess_format_invalid_csv_format(self):
    indexer = Indexer("test", None)
    stream = StringIO.StringIO(IndexerTest.simpleCSVString)

    guessed_format = indexer.guess_format({'file': {"stream": stream, "name": "test.csv"}})

    guessed_format["fieldSeparator"] = "invalid separator"

    fields = indexer.guess_field_types({"file": {"stream": stream, "name": "test.csv"}, "format": guessed_format})['columns']
    assert_equal(fields, [])

    stream.seek(0)
    guessed_format = indexer.guess_format({'file':  {"stream": stream, "name": "test.csv"}})

    guessed_format["recordSeparator"] = "invalid separator"

    fields = indexer.guess_field_types({"file": {"stream": stream, "name": "test.csv"}, "format": guessed_format})['columns']
    assert_equal(fields, [])

    stream.seek(0)
    guessed_format = indexer.guess_format({'file':  {"stream": stream, "name": "test.csv"}})

    guessed_format["quoteChar"] = "invalid quoteChar"

    fields = indexer.guess_field_types({"file": {"stream": stream, "name": "test.csv"}, "format": guessed_format})['columns']
    assert_equal(fields, [])
Exemplo n.º 2
0
    def test_guess_format_invalid_csv_format(self):
        indexer = Indexer("test", None)
        stream = StringIO.StringIO(IndexerTest.simpleCSVString)

        guessed_format = indexer.guess_format(
            {'file': {
                "stream": stream,
                "name": "test.csv"
            }})

        guessed_format["fieldSeparator"] = "invalid separator"

        fields = indexer.guess_field_types({
            "file": {
                "stream": stream,
                "name": "test.csv"
            },
            "format": guessed_format
        })['columns']
        assert_equal(fields, [])

        stream.seek(0)
        guessed_format = indexer.guess_format(
            {'file': {
                "stream": stream,
                "name": "test.csv"
            }})

        guessed_format["recordSeparator"] = "invalid separator"

        fields = indexer.guess_field_types({
            "file": {
                "stream": stream,
                "name": "test.csv"
            },
            "format": guessed_format
        })['columns']
        assert_equal(fields, [])

        stream.seek(0)
        guessed_format = indexer.guess_format(
            {'file': {
                "stream": stream,
                "name": "test.csv"
            }})

        guessed_format["quoteChar"] = "invalid quoteChar"

        fields = indexer.guess_field_types({
            "file": {
                "stream": stream,
                "name": "test.csv"
            },
            "format": guessed_format
        })['columns']
        assert_equal(fields, [])
Exemplo n.º 3
0
def guess_field_types(request):
  file_format = json.loads(request.POST.get('fileFormat', '{}'))

  if file_format['inputFormat'] == 'file':
    indexer = Indexer(request.user, request.fs)
    stream = request.fs.open(file_format["path"])
    _convert_format(file_format["format"], inverse=True)

    format_ = indexer.guess_field_types({
      "file": {
        "stream": stream,
        "name": file_format['path']
        },
      "format": file_format['format']
    })
  elif file_format['inputFormat'] == 'table':
    sample = get_api(request, {'type': 'hive'}).get_sample_data({'type': 'hive'}, database=file_format['databaseName'], table=file_format['tableName'])
    db = dbms.get(request.user)
    table_metadata = db.get_table(database=file_format['databaseName'], table_name=file_format['tableName'])

    format_ = {
        "sample": sample['rows'][:4],
        "columns": [
            Field(col.name, HiveFormat.FIELD_TYPE_TRANSLATE.get(col.type, 'string')).to_dict()
            for col in table_metadata.cols
        ]
    }
  elif file_format['inputFormat'] == 'query':
    #TODO get schema from explain query
    pass

  return JsonResponse(format_)
Exemplo n.º 4
0
    def test_guess_csv_format(self):
        stream = StringIO.StringIO(IndexerTest.simpleCSVString)
        indexer = Indexer("test", None)

        guessed_format = indexer.guess_format(
            {'file': {
                "stream": stream,
                "name": "test.csv"
            }})

        fields = indexer.guess_field_types({
            "file": {
                "stream": stream,
                "name": "test.csv"
            },
            "format": guessed_format
        })['columns']
        # test format
        expected_format = self.simpleCSVFormat

        assert_equal(expected_format, guessed_format)

        # test fields
        expected_fields = self.simpleCSVFields

        for expected, actual in zip(expected_fields, fields):
            for key in ("name", "type"):
                assert_equal(expected[key], actual[key])
Exemplo n.º 5
0
def guess_field_types(request):
    file_format = json.loads(request.POST.get('fileFormat', '{}'))

    if file_format['inputFormat'] == 'file':
        indexer = Indexer(request.user, request.fs)
        stream = request.fs.open(file_format["path"])
        _convert_format(file_format["format"], inverse=True)

        format_ = indexer.guess_field_types({
            "file": {
                "stream": stream,
                "name": file_format['path']
            },
            "format": file_format['format']
        })
    elif file_format['inputFormat'] == 'table':
        sample = get_api(request, {
            'type': 'hive'
        }).get_sample_data({'type': 'hive'},
                           database=file_format['databaseName'],
                           table=file_format['tableName'])
        db = dbms.get(request.user)
        table_metadata = db.get_table(database=file_format['databaseName'],
                                      table_name=file_format['tableName'])

        format_ = {
            "sample":
            sample['rows'][:4],
            "columns": [
                Field(col.name,
                      HiveFormat.FIELD_TYPE_TRANSLATE.get(col.type,
                                                          'string')).to_dict()
                for col in table_metadata.cols
            ]
        }
    elif file_format[
            'inputFormat'] == 'query':  # Only support open query history
        # TODO get schema from explain query, which is not possible
        notebook = Notebook(document=Document2.objects.get(
            id=file_format['query'])).get_data()
        snippet = notebook['snippets'][0]
        sample = get_api(request, snippet).fetch_result(notebook,
                                                        snippet,
                                                        4,
                                                        start_over=True)

        format_ = {
            "sample":
            sample['rows'][:4],
            "columns": [
                Field(
                    col['name'],
                    HiveFormat.FIELD_TYPE_TRANSLATE.get(col['type'],
                                                        'string')).to_dict()
                for col in sample.meta
            ]
        }

    return JsonResponse(format_)
Exemplo n.º 6
0
def guess_field_types(request):
  file_format = json.loads(request.POST.get('fileFormat', '{}'))
  indexer = Indexer(request.user, request.fs)
  stream = request.fs.open(file_format["path"])
  _convert_format(file_format["format"], inverse = True)
  format_ = indexer.guess_field_types({"file":stream, "format":file_format['format']})

  return JsonResponse(format_)
Exemplo n.º 7
0
    def test_end_to_end(self):
        if not is_live_cluster():
            raise SkipTest()

        cluster = shared_cluster()
        fs = cluster.fs
        collection_name = "test_collection"
        indexer = Indexer("test", fs=fs, jt=cluster.jt)
        input_loc = "/tmp/test.csv"

        # upload the test file to hdfs
        fs.create(input_loc, data=TestIndexer.simpleCSVString, overwrite=True)

        # open a filestream for the file on hdfs
        stream = fs.open(input_loc)

        # guess the format of the file
        file_type_format = indexer.guess_format(
            {'file': {
                "stream": stream,
                "name": "test.csv"
            }})

        field_types = indexer.guess_field_types({
            "file": {
                "stream": stream,
                "name": "test.csv"
            },
            "format": file_type_format
        })

        format_ = field_types.copy()
        format_['format'] = file_type_format

        # find a field name available to use for the record's uuid
        unique_field = indexer.get_unique_field(format_)
        is_unique_generated = indexer.is_unique_generated(format_)

        # generate morphline
        morphline = indexer.generate_morphline_config(collection_name, format_,
                                                      unique_field)

        schema_fields = indexer.get_kept_field_list(format_['columns'])
        if is_unique_generated:
            schema_fields += [{"name": unique_field, "type": "string"}]

        # create the collection from the specified fields
        collection_manager = CollectionManagerController("test")
        if collection_manager.collection_exists(collection_name):
            collection_manager.delete_collection(collection_name, None)
        collection_manager.create_collection(collection_name,
                                             schema_fields,
                                             unique_key_field=unique_field)

        # index the file
        indexer.run_morphline(collection_name, morphline, input_loc)
Exemplo n.º 8
0
def guess_field_types(request):
    file_format = json.loads(request.POST.get('fileFormat', '{}'))
    indexer = Indexer(request.user, request.fs)
    stream = request.fs.open(file_format["path"])
    _convert_format(file_format["format"], inverse=True)
    format_ = indexer.guess_field_types({
        "file": {
            "stream": stream,
            "name": file_format['path']
        },
        "format": file_format['format']
    })

    return JsonResponse(format_)
Exemplo n.º 9
0
  def test_end_to_end(self):
    if not is_live_cluster() or True: # Skipping as requires morplines libs to be setup
      raise SkipTest()

    cluster = shared_cluster()
    fs = cluster.fs
    make_logged_in_client(username="******", groupname="default", recreate=True, is_superuser=False)
    user = User.objects.get(username="******")
    collection_name = "test_collection"
    indexer = Indexer("test", fs=fs, jt=cluster.jt)
    input_loc = "/tmp/test.csv"

    # upload the test file to hdfs
    fs.create(input_loc, data=TestIndexer.simpleCSVString, overwrite=True)

    # open a filestream for the file on hdfs
    stream = fs.open(input_loc)

    # guess the format of the file
    file_type_format = indexer.guess_format({'file': {"stream": stream, "name": "test.csv"}})

    field_types = indexer.guess_field_types({"file":{"stream": stream, "name": "test.csv"}, "format": file_type_format})

    format_ = field_types.copy()
    format_['format'] = file_type_format

    # find a field name available to use for the record's uuid
    unique_field = indexer.get_unique_field(format_)
    is_unique_generated = indexer.is_unique_generated(format_)

    # generate morphline
    morphline = indexer.generate_morphline_config(collection_name, format_, unique_field)

    schema_fields = indexer.get_kept_field_list(format_['columns'])
    if is_unique_generated:
      schema_fields += [{"name": unique_field, "type": "string"}]


    # create the collection from the specified fields
    collection_manager = CollectionManagerController("test")
    if collection_manager.collection_exists(collection_name):
      collection_manager.delete_collection(collection_name, None)
    collection_manager.create_collection(collection_name, schema_fields, unique_key_field=unique_field)

    # index the file
    indexer.run_morphline(MockedRequest(user=user, fs=cluster.fs, jt=cluster.jt), collection_name, morphline, input_loc)
Exemplo n.º 10
0
  def test_guess_csv_format(self):
    stream = StringIO.StringIO(TestIndexer.simpleCSVString)
    indexer = Indexer("test")

    guessed_format = indexer.guess_format({'file': {"stream": stream, "name": "test.csv"}})

    fields = indexer.guess_field_types({"file":{"stream": stream, "name": "test.csv"}, "format": guessed_format})['columns']
    # test format
    expected_format = self.simpleCSVFormat

    assert_equal(expected_format, guessed_format)

    # test fields
    expected_fields = self.simpleCSVFields

    for expected, actual in zip(expected_fields, fields):
      for key in ("name", "type"):
        assert_equal(expected[key], actual[key])
Exemplo n.º 11
0
def guess_field_types(request):
  file_format = json.loads(request.POST.get('fileFormat', '{}'))

  if file_format['inputFormat'] == 'file':
    indexer = Indexer(request.user, request.fs)
    stream = request.fs.open(file_format["path"])
    _convert_format(file_format["format"], inverse=True)

    format_ = indexer.guess_field_types({
      "file": {
          "stream": stream,
          "name": file_format['path']
        },
      "format": file_format['format']
    })
  elif file_format['inputFormat'] == 'table':
    sample = get_api(request, {'type': 'hive'}).get_sample_data({'type': 'hive'}, database=file_format['databaseName'], table=file_format['tableName'])
    db = dbms.get(request.user)
    table_metadata = db.get_table(database=file_format['databaseName'], table_name=file_format['tableName'])

    format_ = {
        "sample": sample['rows'][:4],
        "columns": [
            Field(col.name, HiveFormat.FIELD_TYPE_TRANSLATE.get(col.type, 'string')).to_dict()
            for col in table_metadata.cols
        ]
    }
  elif file_format['inputFormat'] == 'query': # Only support open query history
    # TODO get schema from explain query, which is not possible
    notebook = Notebook(document=Document2.objects.get(id=file_format['query'])).get_data()
    snippet = notebook['snippets'][0]
    sample = get_api(request, snippet).fetch_result(notebook, snippet, 4, start_over=True)

    format_ = {
        "sample": sample['rows'][:4],
        "sample_cols": sample.meta,
        "columns": [
            Field(col['name'], HiveFormat.FIELD_TYPE_TRANSLATE.get(col['type'], 'string')).to_dict()
            for col in sample.meta
        ]
    }

  return JsonResponse(format_)
Exemplo n.º 12
0
  def test_guess_format(self):
    stream = StringIO.StringIO(IndexerTest.simpleCSVString)
    indexer = Indexer("test", None)

    guessed_format = indexer.guess_format({'file': {"stream": stream, "name": "test.csv"}})

    fields = indexer.guess_field_types({"file":{"stream": stream, "name": "test.csv"}, "format": guessed_format})['columns']
    # test format
    assert_equal('csv', guessed_format['type'])
    assert_equal(',', guessed_format['fieldSeparator'])
    assert_equal('\n', guessed_format['recordSeparator'])

    # test fields
    expected_fields = [
      {
        "name": "id",
        "type": "long"
      },
      {
        "name": "Rating",
        "type": "long"
      },
      {
        "name": "Location",
        "type": "string"
      },
      {
        "name": "Name",
        "type": "string"
      },
      {
        "name": "Time",
        "type": "string"
      }
    ]

    for expected, actual in zip(expected_fields, fields):
      for key in ("name", "type"):
        assert_equal(expected[key], actual[key])
Exemplo n.º 13
0
  def test_end_to_end(self):
    fs = cluster.get_hdfs()
    collection_name = "test_collection"
    indexer = Indexer("test", fs)
    input_loc = "/tmp/test.csv"

    # upload the test file to hdfs
    fs.create(input_loc, data=IndexerTest.simpleCSVString, overwrite=True)

    # open a filestream for the file on hdfs
    stream = fs.open(input_loc)

    # guess the format of the file
    file_type_format = indexer.guess_format({'file': {"stream": stream, "name": "test.csv"}})

    field_types = indexer.guess_field_types({"file":{"stream": stream, "name": "test.csv"}, "format": file_type_format})

    format_ = field_types.copy()
    format_['format'] = file_type_format

    # find a field name available to use for the record's uuid
    unique_field = indexer.get_uuid_name(format_)

    # generate morphline
    morphline = indexer.generate_morphline_config(collection_name, format_, unique_field)

    schema_fields = [{"name": unique_field, "type": "string"}] + indexer.get_kept_field_list(format_['columns'])

    # create the collection from the specified fields
    collection_manager = CollectionManagerController("test")
    if collection_manager.collection_exists(collection_name):
      collection_manager.delete_collection(collection_name, None)
    collection_manager.create_collection(collection_name, schema_fields, unique_key_field=unique_field)

    # index the file
    indexer.run_morphline(collection_name, morphline, input_loc)