Exemple #1
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def valids():
    # the returned fixture value will be shared for
    # all tests needing it
    t = gia((3, 4))
    t.flat[0] = fl.getNAN(t.dtype)
    t.flat[-1] = fl.getNAN(t.dtype)
    space = Bld._buildInfoSpace(t, 5)
    exp = {
        1: [t[:, 1:2].squeeze(), t[1:2, :].squeeze()],
        0: [t[1:2, 1:2].squeeze(axis=0)],
        2: [t[1:, :-1], t[:-1, 1:], t[:, 1:-1]]
    }
    return [
        (space, exp),
    ]
Exemple #2
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 def getctx(ispace, val):
     icontext = ispace[val]
     try:
         INTNAN = getNAN(icontext.context[0].data.dtype)
     except IndexError:
         return icontext
     icontext = [
         x if x.data[0] != INTNAN else InformationContext.create(
             data=x.data[::-1], **x.info) for x in icontext.context
     ]
     return InformationContext(icontext)
Exemple #3
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 def feed(self, seq, restriction):
     seq = _check_input(seq, BaseSequence)
     nan = getNAN(seq.data.dtype)
     fillvalue = np.max(seq.data) + 1
     arr = np.ones(shape=seq.shape, dtype=seq.dtype) * nan
     # self.reset()
     for i, searchidx in enumerate(seq.sequence):
         truth = seq.data[i]
         arr.flat[searchidx] = fillvalue
         yield truth, self.builder.build_infospace(arr,
                                                   searchval=fillvalue,
                                                   restriction=restriction)
         arr.flat[searchidx] = truth
Exemple #4
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 def build_infospace(array,
                     searchval=None,
                     searchidx=None,
                     restriction=None):
     intnan = fl.getNAN(array.dtype)
     if searchval:
         origin = np.argwhere(array == searchval)[0]
     elif searchidx:
         origin = np.unravel_index(searchidx, array.shape)
     else:
         raise Exception("No value or index given.")
     sval = array[tuple(origin)]
     if restriction is not None:
         array = _getSubssetInRangeOf(array, restriction, sval)
     spacedict = _buildInfoSpace(arr=array, val=sval)
     space = _set_searchval_to_intnan(spacedict, sval, intnan)
     return space
Exemple #5
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def _get_nan_position(data):
    """Find index position of np.nan value.

    Note
    ====
    Now supports all kind of dtypes.
    """
    if data.dtype in (np.float32, np.float64):
        nans = tuple(np.transpose(np.isnan(data).nonzero()))
    else:
        nanval = getNAN(data.dtype)
        nans = tuple(np.transpose((data == nanval).nonzero()))
    if not nans:
        raise Exception("Non np.nan value found.")
    if len(nans) > 1:
        message = "Only one np.nan value allowed, found {}."
        raise Exception(message.format(len(nans)))
    return nans[0]
Exemple #6
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def setrandomNANs(arr, size=None, seed=None):
    """Set random NAN values to IndexArray."""
    INTNAN = getNAN(arr.dtype)

    def _randomNAN(mi, ma, size):
        return np.random.randint(mi, ma, size)

    if seed:
        np.random.seed(seed)
    mi = 1
    ma = arr.size
    if not size:
        size = _randomNAN(mi, ma, 1)
    result = arr.copy()

    for i in _randomNAN(mi, ma, size):
        result.flat[i] = INTNAN
    return result
Exemple #7
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 def _set_context(self, value):
     if not all([isinstance(x, CTX) for x in value]):
         err_msg = "All values must be of type {}, got {}".format(
             CTX, [type(x) for x in value])
         raise TypeError(err_msg)
     if not all([isinstance(x.data, np.ndarray) for x in value]):
         err_msg = "All values must be of type np.ndarray, got {}.".format(
             [type(x) for x in value])
         raise TypeError(err_msg)
     if not all([x.data.ndim == value[0].data.ndim for x in value]):
         err_msg = "All arrays must have the same dimension."
         raise ValueError(err_msg)
     for i, arr in enumerate(value):
         if arr.data.size <= 1:
             del value[i]
         elif np.sum([y == getNAN(arr.data.dtype) for y in arr.data]) != 1:
             err_msg = "All arrays must have exactly one(!) NaN value,"\
                 " got in \n{}.".format(arr.data)
             raise ValueError(err_msg)
     self._context = value
Exemple #8
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    def build_infospace(array,
                        searchval=None,
                        searchidx=None,
                        restriction=None):
        intnan = fl.getNAN(array.dtype)
        if searchval is not None:
            origin = np.argwhere(array == searchval)[0]
        elif searchidx is not None:
            origin = np.unravel_index(searchidx, array.shape)
        else:
            raise Exception("No value or index given, got {} {}".format(
                searchval, searchidx))
        sval = array[origin]

        # Candidates are slices going through searchval
        candidates = []
        for i in range(len(origin)):
            tmp = list(origin)
            tmp[i] = slice(None, None, None)
            candidates.append(tmp)

        # Result is 1d array going forward (+1)
        # and backward (-1) in each dimension
        result = []
        for i, x in enumerate(candidates):
            source = origin[i]
            assert array[x][
                source] == sval, "Error in indexing: {} != {}".format(
                    array[x][source], sval)
            tmp = array[x].copy()
            tmp.data[source] = intnan
            if restriction is not None:
                tmp = tmp[slice(max(source - restriction, 0),
                                min(source + restriction, array[x].size) + 1)]
            if tmp.data[tmp.mask == False].size > 1:
                data = tmp.data[tmp.mask == False]
                result.append(IC.create(data=data, id=(i, ), size=data.size))
        ispace = InformationSpace({1: IC(result)})
        return ispace
Exemple #9
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 def __init__(self, vht, *args, **kwargs):
     super().__init__(vht, vpt=1, *args, **kwargs)
     self.vht = self.vht.astype(np.int32)
     self.weights = np.insert(_get_pascal_weights(vht), [0], [0] * vht,
                              axis=0)
     self.nan = getNAN(self.vht.dtype)
Exemple #10
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 def nan(self):
     return getNAN(self.dtype)