mirror of
https://github.com/ANL-CEEESA/MIPLearn.git
synced 2025-12-06 09:28:51 -06:00
Implement {get,put}_vector_list
This commit is contained in:
@@ -46,7 +46,7 @@ class FeaturesExtractor:
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self._extract_user_features_constrs(instance, sample)
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self._extract_user_features_instance(instance, sample)
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self._extract_var_features_AlvLouWeh2017(sample)
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sample.put(
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sample.put_vector_list(
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"var_features",
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self._combine(
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sample,
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@@ -82,7 +82,7 @@ class FeaturesExtractor:
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sample.put_vector("lp_constr_sa_rhs_up", constraints.sa_rhs_up)
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sample.put_vector("lp_constr_slacks", constraints.slacks)
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self._extract_var_features_AlvLouWeh2017(sample, prefix="lp_")
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sample.put(
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sample.put_vector_list(
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"lp_var_features",
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self._combine(
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sample,
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@@ -103,7 +103,7 @@ class FeaturesExtractor:
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],
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),
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)
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sample.put(
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sample.put_vector_list(
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"lp_constr_features",
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self._combine(
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sample,
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@@ -118,7 +118,7 @@ class FeaturesExtractor:
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)
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instance_features_user = sample.get("instance_features_user")
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assert instance_features_user is not None
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sample.put(
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sample.put_vector(
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"lp_instance_features",
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instance_features_user
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+ [
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@@ -178,7 +178,7 @@ class FeaturesExtractor:
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user_features_i = list(user_features_i)
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user_features.append(user_features_i)
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sample.put("var_categories", categories)
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sample.put("var_features_user", user_features)
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sample.put_vector_list("var_features_user", user_features)
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def _extract_user_features_constrs(
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self,
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@@ -227,7 +227,7 @@ class FeaturesExtractor:
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lazy.append(instance.is_constraint_lazy(cname))
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else:
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lazy.append(False)
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sample.put("constr_features_user", user_features)
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sample.put_vector_list("constr_features_user", user_features)
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sample.put_vector("constr_lazy", lazy)
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sample.put("constr_categories", categories)
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@@ -250,7 +250,7 @@ class FeaturesExtractor:
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)
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constr_lazy = sample.get("constr_lazy")
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assert constr_lazy is not None
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sample.put("instance_features_user", user_features)
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sample.put_vector("instance_features_user", user_features)
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sample.put_scalar("static_lazy_count", sum(constr_lazy))
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# Alvarez, A. M., Louveaux, Q., & Wehenkel, L. (2017). A machine learning-based
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@@ -331,7 +331,7 @@ class FeaturesExtractor:
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for v in f:
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assert isfinite(v), f"non-finite elements detected: {f}"
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features.append(f)
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sample.put(f"{prefix}var_features_AlvLouWeh2017", features)
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sample.put_vector_list(f"{prefix}var_features_AlvLouWeh2017", features)
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def _combine(
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self,
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@@ -3,13 +3,25 @@
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# Released under the modified BSD license. See COPYING.md for more details.
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from abc import ABC, abstractmethod
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from typing import Dict, Optional, Any, Union, List
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from copy import deepcopy
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from typing import Dict, Optional, Any, Union, List, Tuple, cast
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import h5py
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import numpy as np
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from overrides import overrides
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Scalar = Union[None, bool, str, int, float]
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Vector = Union[None, List[bool], List[str], List[int], List[float]]
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VectorList = Union[
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List[List[bool]],
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List[List[str]],
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List[List[int]],
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List[List[float]],
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List[Optional[List[bool]]],
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List[Optional[List[str]]],
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List[Optional[List[int]]],
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List[Optional[List[float]]],
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]
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class Sample(ABC):
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@@ -31,6 +43,14 @@ class Sample(ABC):
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def put_vector(self, key: str, value: Vector) -> None:
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pass
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@abstractmethod
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def get_vector_list(self, key: str) -> Optional[Any]:
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pass
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@abstractmethod
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def put_vector_list(self, key: str, value: VectorList) -> None:
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pass
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@abstractmethod
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def get(self, key: str) -> Optional[Any]:
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pass
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@@ -65,17 +85,24 @@ class Sample(ABC):
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return
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assert False, f"Value has unsupported type: {value}"
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def _assert_scalar(self, value: Any) -> None:
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def _assert_is_scalar(self, value: Any) -> None:
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if value is None:
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return
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if isinstance(value, (str, bool, int, float)):
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return
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assert False, f"Scalar expected; found instead: {value}"
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def _assert_vector(self, value: Any) -> None:
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def _assert_is_vector(self, value: Any) -> None:
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assert isinstance(value, list), f"List expected; found instead: {value}"
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for v in value:
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self._assert_scalar(v)
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self._assert_is_scalar(v)
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def _assert_is_vector_list(self, value: Any) -> None:
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assert isinstance(value, list), f"List expected; found instead: {value}"
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for v in value:
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if v is None:
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continue
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self._assert_is_vector(v)
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class MemorySample(Sample):
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@@ -93,20 +120,29 @@ class MemorySample(Sample):
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def get_scalar(self, key: str) -> Optional[Any]:
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return self.get(key)
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@overrides
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def put_scalar(self, key: str, value: Scalar) -> None:
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self._assert_scalar(value)
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self.put(key, value)
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@overrides
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def get_vector(self, key: str) -> Optional[Any]:
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return self.get(key)
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@overrides
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def get_vector_list(self, key: str) -> Optional[Any]:
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return self.get(key)
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@overrides
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def put_scalar(self, key: str, value: Scalar) -> None:
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self._assert_is_scalar(value)
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self.put(key, value)
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@overrides
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def put_vector(self, key: str, value: Vector) -> None:
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if value is None:
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return
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self._assert_vector(value)
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self._assert_is_vector(value)
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self.put(key, value)
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@overrides
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def put_vector_list(self, key: str, value: VectorList) -> None:
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self._assert_is_vector_list(value)
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self.put(key, value)
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@overrides
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@@ -145,23 +181,55 @@ class Hdf5Sample(Sample):
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def get_vector(self, key: str) -> Optional[Any]:
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ds = self.file[key]
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assert len(ds.shape) == 1
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print(ds.dtype)
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if h5py.check_string_dtype(ds.dtype):
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return ds.asstr()[:].tolist()
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else:
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return ds[:].tolist()
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@overrides
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def get_vector_list(self, key: str) -> Optional[Any]:
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ds = self.file[key]
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lens = ds.attrs["lengths"]
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if h5py.check_string_dtype(ds.dtype):
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padded = ds.asstr()[:].tolist()
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else:
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padded = ds[:].tolist()
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return _crop(padded, lens)
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@overrides
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def put_scalar(self, key: str, value: Any) -> None:
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self._assert_scalar(value)
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self._assert_is_scalar(value)
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self.put(key, value)
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@overrides
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def put_vector(self, key: str, value: Vector) -> None:
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if value is None:
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return
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self._assert_vector(value)
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self._assert_is_vector(value)
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self.put(key, value)
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@overrides
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def put_vector_list(self, key: str, value: VectorList) -> None:
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self._assert_is_vector_list(value)
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if key in self.file:
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del self.file[key]
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padded, lens = _pad(value)
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data = None
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for v in value:
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if v is None or len(v) == 0:
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continue
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if isinstance(v[0], str):
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data = np.array(padded, dtype="S")
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elif isinstance(v[0], bool):
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data = np.array(padded, dtype=bool)
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else:
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data = np.array(padded)
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break
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assert data is not None
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ds = self.file.create_dataset(key, data=data)
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ds.attrs["lengths"] = lens
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@overrides
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def get(self, key: str) -> Optional[Any]:
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ds = self.file[key]
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@@ -175,3 +243,45 @@ class Hdf5Sample(Sample):
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if key in self.file:
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del self.file[key]
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self.file.create_dataset(key, data=value)
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def _pad(veclist: VectorList) -> Tuple[VectorList, List[int]]:
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veclist = deepcopy(veclist)
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lens = [len(v) if v is not None else -1 for v in veclist]
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maxlen = max(lens)
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# Find appropriate constant to pad the vectors
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constant: Union[int, float, str, None] = None
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for v in veclist:
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if v is None or len(v) == 0:
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continue
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if isinstance(v[0], int):
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constant = 0
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elif isinstance(v[0], float):
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constant = 0.0
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elif isinstance(v[0], str):
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constant = ""
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else:
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assert False, f"Unsupported data type: {v[0]}"
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assert constant is not None, "veclist must not be completely empty"
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# Pad vectors
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for (i, vi) in enumerate(veclist):
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if vi is None:
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vi = veclist[i] = []
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assert isinstance(vi, list)
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for k in range(len(vi), maxlen):
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vi.append(constant)
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return veclist, lens
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def _crop(veclist: VectorList, lens: List[int]) -> VectorList:
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result: VectorList = cast(VectorList, [])
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for (i, v) in enumerate(veclist):
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if lens[i] < 0:
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result.append(None) # type: ignore
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else:
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assert isinstance(v, list)
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result.append(v[: lens[i]])
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return result
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