def _check_dimensions_hessian(hessian, f_tree, params_tree): extended_registry = get_registry(extended=True) flat_f = tree_leaves(f_tree, registry=extended_registry) flat_p = tree_leaves(params_tree, registry=extended_registry) if len(flat_f) == 1: if np.squeeze(hessian).ndim == 0: if len(flat_p) != 1: raise ValueError( "Hessian dimension does not match those of params.") elif np.squeeze(hessian).ndim == 2: if np.squeeze(hessian).shape != (len(flat_p), len(flat_p)): raise ValueError( "Hessian dimension does not match those of params.") else: raise ValueError( "Hessian must be 0- or 2-d if f is scalar-valued.") else: if hessian.ndim != 3: raise ValueError("Hessian must be 3d if f is multidimensional.") if hessian.shape[0] != len(flat_f): raise ValueError( "First Hessian dimension does not match that of f.") if hessian.shape[1:] != (len(flat_p), len(flat_p)): raise ValueError( "Last two Hessian dimensions do not match those of params.")
def _check_dimensions_matrix(matrix, outer_tree, inner_tree): extended_registry = get_registry(extended=True) flat_outer = tree_leaves(outer_tree, registry=extended_registry) flat_inner = tree_leaves(inner_tree, registry=extended_registry) if matrix.shape[0] != len(flat_outer): raise ValueError( "First dimension of matrix does not match that of outer_tree.") if matrix.shape[1] != len(flat_inner): raise ValueError( "Second dimension of matrix does not match that of inner_tree.")
def test_block_tree_to_hessian_bijection(): params = {"a": np.arange(4), "b": [{"c": (1, 2), "d": np.array([5, 6])}]} f_tree = {"e": np.arange(3), "f": (5, 6, [7, 8, {"g": 1.0}])} registry = get_registry(extended=True) n_p = len(tree_leaves(params, registry=registry)) n_f = len(tree_leaves(f_tree, registry=registry)) expected = np.arange(n_f * n_p**2).reshape(n_f, n_p, n_p) block_hessian = hessian_to_block_tree(expected, f_tree, params) got = block_tree_to_hessian(block_hessian, f_tree, params) assert_array_equal(expected, got)
def block_tree_to_matrix(block_tree, outer_tree, inner_tree): """Convert a block tree to a matrix. A block tree most often arises when one applies an operation to a function that maps between two trees. Two main examples are the Jacobian of the function f : inner_tree -> outer_tree, which results in a block tree structure, or the covariance matrix of a tree, in which case outer_tree = inner_tree. Args: block_tree: A (block) pytree, must match dimensions of outer_tree and inner_tree outer_tree: A pytree. inner_tree: A pytree. Returns: matrix (np.ndarray): 2d array containing information stored in block_tree. """ flat_outer = tree_leaves(outer_tree) flat_inner = tree_leaves(inner_tree) flat_block_tree = tree_leaves(block_tree) flat_outer_np = [ _convert_to_numpy(leaf, only_pandas=True) for leaf in flat_outer ] flat_inner_np = [ _convert_to_numpy(leaf, only_pandas=True) for leaf in flat_inner ] size_outer = [np.size(a) for a in flat_outer_np] size_inner = [np.size(a) for a in flat_inner_np] n_blocks_outer = len(size_outer) n_blocks_inner = len(size_inner) block_rows_raw = [ flat_block_tree[n_blocks_inner * i:n_blocks_inner * (i + 1)] for i in range(n_blocks_outer) ] block_rows = [] for s1, row in zip(size_outer, block_rows_raw): shapes = [(s1, s2) for s2 in size_inner] row_np = [_convert_to_numpy(leaf, only_pandas=False) for leaf in row] row_reshaped = _reshape_list(row_np, shapes) row_concatenated = np.concatenate(row_reshaped, axis=1) block_rows.append(row_concatenated) matrix = np.concatenate(block_rows, axis=0) _check_dimensions_matrix(matrix, flat_outer, flat_inner) return matrix
def _update_bounds_and_flatten(nan_tree, bounds, direction): registry = get_registry(extended=True, data_col=direction) flat_nan_tree = tree_leaves(nan_tree, registry=registry) if bounds is not None: registry = get_registry(extended=True) flat_bounds = tree_leaves(bounds, registry=registry) seperator = 10 * "$" params_names = leaf_names(nan_tree, registry=registry, separator=seperator) bounds_names = leaf_names(bounds, registry=registry, separator=seperator) flat_nan_dict = dict(zip(params_names, flat_nan_tree)) invalid = {"names": [], "bounds": []} for bounds_name, bounds_leaf in zip(bounds_names, flat_bounds): # if a bounds leaf is None we treat it as saying the the corresponding # subtree of params has no bounds. if bounds_leaf is not None: if bounds_name in flat_nan_dict: flat_nan_dict[bounds_name] = bounds_leaf else: invalid["names"].append(bounds_name) invalid["bounds"].append(bounds_leaf) if invalid["bounds"]: msg = ( f"{direction} could not be matched to params pytree. The bounds " f"{invalid['bounds']} with names {invalid['names']} are not part of " "params.") raise InvalidBoundsError(msg) flat_nan_tree = list(flat_nan_dict.values()) updated = np.array(flat_nan_tree, dtype=np.float64) return updated
def _convert_evals_to_numpy(raw_evals, key, registry, is_scalar_out=False, is_vector_out=False): """harmonize the output of the function evaluations. The raw_evals might contain dictionaries of which we only need one entry, scalar np.nan where we need arrays filled with np.nan or pandas objects. The processed evals only contain numpy arrays. """ # get rid of dictionaries evals = [ val[key] if isinstance(val, dict) and key is not None else val for val in raw_evals ] # convert pytrees to arrays if is_scalar_out: evals = [ np.array([val], dtype=float) if not _is_scalar_nan(val) else val for val in evals ] elif is_vector_out: evals = [ val.astype(float) if not _is_scalar_nan(val) else val for val in evals ] else: evals = [ np.array(tree_leaves(val, registry=registry), dtype=np.float64) if not _is_scalar_nan(val) else val for val in evals ] # find out the correct output shape try: array = next(x for x in evals if hasattr(x, "shape") or isinstance(x, dict)) out_shape = array.shape except StopIteration: out_shape = "scalar" # convert to correct output shape if out_shape == "scalar": evals = [np.atleast_1d(val) for val in evals] else: for i in range(len(evals)): if isinstance(evals[i], float) and np.isnan(evals[i]): evals[i] = np.full(out_shape, np.nan) return evals
def get_bounds( params, lower_bounds=None, upper_bounds=None, soft_lower_bounds=None, soft_upper_bounds=None, registry=None, add_soft_bounds=False, ): """Consolidate lower/upper bounds with bounds available in params. Updates bounds defined in params. If no bounds are available the entry is set to -np.inf for the lower bound and np.inf for the upper bound. If a bound is defined in params and lower_bounds or upper_bounds, the bound from lower_bounds or upper_bounds will be used. Args: params (pytree): The parameter pytree. lower_bounds (pytree): Must be a subtree of params. upper_bounds (pytree): Must be a subtree of params. registry (dict): pybaum registry. Returns: np.ndarray: Consolidated and flattened lower_bounds. np.ndarray: Consolidated and flattened upper_bounds. """ fast_path = _is_fast_path( params=params, lower_bounds=lower_bounds, upper_bounds=upper_bounds, add_soft_bounds=add_soft_bounds, ) if fast_path: return _get_fast_path_bounds( params=params, lower_bounds=lower_bounds, upper_bounds=upper_bounds, ) registry = get_registry(extended=True) if registry is None else registry n_params = len(tree_leaves(params, registry=registry)) # Fill leaves with np.nan. If params contains a data frame with bounds as a column, # that column is NOT overwritten (as long as an extended registry is used). nan_tree = tree_map(lambda leaf: np.nan, params, registry=registry) lower_flat = _update_bounds_and_flatten(nan_tree, lower_bounds, direction="lower_bound") upper_flat = _update_bounds_and_flatten(nan_tree, upper_bounds, direction="upper_bound") if len(lower_flat) != n_params: raise InvalidBoundsError( "lower_bounds do not match dimension of params.") if len(upper_flat) != n_params: raise InvalidBoundsError( "upper_bounds do not match dimension of params.") lower_flat[np.isnan(lower_flat)] = -np.inf upper_flat[np.isnan(upper_flat)] = np.inf if add_soft_bounds: lower_flat_soft = _update_bounds_and_flatten( nan_tree, soft_lower_bounds, direction="soft_lower_bound") lower_flat_soft[np.isnan(lower_flat_soft)] = -np.inf lower_flat = np.maximum(lower_flat, lower_flat_soft) upper_flat_soft = _update_bounds_and_flatten( nan_tree, soft_upper_bounds, direction="soft_upper_bound") upper_flat_soft[np.isnan(upper_flat_soft)] = np.inf upper_flat = np.minimum(upper_flat, upper_flat_soft) if (lower_flat > upper_flat).any(): msg = "Invalid bounds. Some lower bounds are larger than upper bounds." raise InvalidBoundsError(msg) return lower_flat, upper_flat
def second_derivative( func, params, *, func_kwargs=None, method="central_cross", n_steps=1, base_steps=None, scaling_factor=1, lower_bounds=None, upper_bounds=None, step_ratio=2, min_steps=None, f0=None, n_cores=DEFAULT_N_CORES, error_handling="continue", batch_evaluator="joblib", return_func_value=False, return_info=False, key=None, ): """Evaluate second derivative of func at params according to method and step options Internally, the function is converted such that it maps from a 1d array to a 1d array. Then the Hessians of that function are calculated. The resulting derivative estimate is always a :class:`numpy.ndarray`. The parameters and the function output can be pandas objects (Series or DataFrames with value column). In that case the output of second_derivative is also a pandas object and with appropriate index and columns. Detailed description of all options that influence the step size as well as an explanation of how steps are adjusted to bounds in case of a conflict, see :func:`~estimagic.differentiation.generate_steps.generate_steps`. Args: func (callable): Function of which the derivative is calculated. params (numpy.ndarray, pandas.Series or pandas.DataFrame): 1d numpy array or :class:`pandas.DataFrame` with parameters at which the derivative is calculated. If it is a DataFrame, it can contain the columns "lower_bound" and "upper_bound" for bounds. See :ref:`params`. func_kwargs (dict): Additional keyword arguments for func, optional. method (str): One of {"forward", "backward", "central_average", "central_cross"} These correspond to the finite difference approximations defined in equations [7, x, 8, 9] in Rideout [2009], where ("backward", x) is not found in Rideout [2009] but is the natural extension of equation 7 to the backward case. Default "central_cross". n_steps (int): Number of steps needed. For central methods, this is the number of steps per direction. It is 1 if no Richardson extrapolation is used. base_steps (numpy.ndarray, optional): 1d array of the same length as params. base_steps * scaling_factor is the absolute value of the first (and possibly only) step used in the finite differences approximation of the derivative. If base_steps * scaling_factor conflicts with bounds, the actual steps will be adjusted. If base_steps is not provided, it will be determined according to a rule of thumb as long as this does not conflict with min_steps. scaling_factor (numpy.ndarray or float): Scaling factor which is applied to base_steps. If it is an numpy.ndarray, it needs to be as long as params. scaling_factor is useful if you want to increase or decrease the base_step relative to the rule-of-thumb or user provided base_step, for example to benchmark the effect of the step size. Default 1. lower_bounds (numpy.ndarray): 1d array with lower bounds for each parameter. If params is a DataFrame and has the columns "lower_bound", this will be taken as lower_bounds if now lower_bounds have been provided explicitly. upper_bounds (numpy.ndarray): 1d array with upper bounds for each parameter. If params is a DataFrame and has the columns "upper_bound", this will be taken as upper_bounds if no upper_bounds have been provided explicitly. step_ratio (float, numpy.array): Ratio between two consecutive Richardson extrapolation steps in the same direction. default 2.0. Has to be larger than one. The step ratio is only used if n_steps > 1. min_steps (numpy.ndarray): Minimal possible step sizes that can be chosen to accommodate bounds. Must have same length as params. By default min_steps is equal to base_steps, i.e step size is not decreased beyond what is optimal according to the rule of thumb. f0 (numpy.ndarray): 1d numpy array with func(x), optional. n_cores (int): Number of processes used to parallelize the function evaluations. Default 1. error_handling (str): One of "continue" (catch errors and continue to calculate derivative estimates. In this case, some derivative estimates can be missing but no errors are raised), "raise" (catch errors and continue to calculate derivative estimates at fist but raise an error if all evaluations for one parameter failed) and "raise_strict" (raise an error as soon as a function evaluation fails). batch_evaluator (str or callable): Name of a pre-implemented batch evaluator (currently 'joblib' and 'pathos_mp') or Callable with the same interface as the estimagic batch_evaluators. return_func_value (bool): If True, return function value at params, stored in output dict under "func_value". Default False. This is useful when using first_derivative during optimization. return_info (bool): If True, return additional information on function evaluations and internal derivative candidates, stored in output dict under "func_evals" and "derivative_candidates". Derivative candidates are only returned if n_steps > 1. Default False. key (str): If func returns a dictionary, take the derivative of func(params)[key]. Returns: result (dict): Result dictionary with keys: - "derivative" (numpy.ndarray, pandas.Series or pandas.DataFrame): The estimated second derivative of func at params. The shape of the output depends on the dimension of params and func(params): - f: R -> R leads to shape (1,), usually called second derivative - f: R^m -> R leads to shape (m, m), usually called Hessian - f: R -> R^n leads to shape (n,), usually called Hessian - f: R^m -> R^n leads to shape (n, m, m), usually called Hessian tensor - "func_value" (numpy.ndarray, pandas.Series or pandas.DataFrame): Function value at params, returned if return_func_value is True. - "func_evals_one_step" (pandas.DataFrame): Function evaluations produced by internal derivative method when altering the params vector at one dimension, returned if return_info is True. - "func_evals_two_step" (pandas.DataFrame): This features is not implemented yet and therefore set to None. Once implemented it will contain function evaluations produced by internal derivative method when altering the params vector at two dimensions, returned if return_info is True. - "func_evals_cross_step" (pandas.DataFrame): This features is not implemented yet and therefore set to None. Once implemented it will contain function evaluations produced by internal derivative method when altering the params vector at two dimensions in different directions, returned if return_info is True. """ lower_bounds, upper_bounds = get_bounds(params, lower_bounds, upper_bounds) # handle keyword arguments func_kwargs = {} if func_kwargs is None else func_kwargs partialed_func = functools.partial(func, **func_kwargs) # convert params to numpy registry = get_registry(extended=True) x, params_treedef = tree_flatten(params, registry=registry) x = np.atleast_1d(x).astype(np.float64) if np.isnan(x).any(): raise ValueError("The parameter vector must not contain NaNs.") implemented_methods = { "forward", "backward", "central_average", "central_cross" } if method not in implemented_methods: raise ValueError(f"Method has to be in {implemented_methods}.") # generate the step array steps = generate_steps( x=x, method=("central" if "central" in method else method), n_steps=n_steps, target="second_derivative", base_steps=base_steps, scaling_factor=scaling_factor, lower_bounds=lower_bounds, upper_bounds=upper_bounds, step_ratio=step_ratio, min_steps=min_steps, ) # generate parameter vectors at which func has to be evaluated as numpy arrays evaluation_points = {"one_step": [], "two_step": [], "cross_step": []} for step_arr in steps: # single direction steps for i, j in product(range(n_steps), range(len(x))): if np.isnan(step_arr[i, j]): evaluation_points["one_step"].append(np.nan) else: point = x.copy() point[j] += step_arr[i, j] evaluation_points["one_step"].append(point) # two and cross direction steps for i, j, k in product(range(n_steps), range(len(x)), range(len(x))): if j > k or np.isnan(step_arr[i, j]) or np.isnan(step_arr[i, k]): evaluation_points["two_step"].append(np.nan) evaluation_points["cross_step"].append(np.nan) else: point = x.copy() point[j] += step_arr[i, j] point[k] += step_arr[i, k] evaluation_points["two_step"].append(point) if j == k: evaluation_points["cross_step"].append(np.nan) else: point = x.copy() point[j] += step_arr[i, j] point[k] -= step_arr[i, k] evaluation_points["cross_step"].append(point) # convert the numpy arrays to whatever is needed by func evaluation_points = { # entries are either a numpy.ndarray or np.nan, we unflatten only step_type: [_unflatten_if_not_nan(p, params_treedef, registry) for p in points] for step_type, points in evaluation_points.items() } # we always evaluate f0, so we can fall back to one-sided derivatives if # two-sided derivatives fail. The extra cost is negligible in most cases. if f0 is None: evaluation_points["one_step"].append(params) # do the function evaluations for one and two step, including error handling batch_error_handling = "raise" if error_handling == "raise_strict" else "continue" raw_evals = _nan_skipping_batch_evaluator( func=partialed_func, arguments=list( itertools.chain.from_iterable(evaluation_points.values())), n_cores=n_cores, error_handling=batch_error_handling, batch_evaluator=batch_evaluator, ) # extract information on exceptions that occurred during function evaluations exc_info = "\n\n".join([val for val in raw_evals if isinstance(val, str)]) raw_evals = [ val if not isinstance(val, str) else np.nan for val in raw_evals ] n_one_step, n_two_step, n_cross_step = map(len, evaluation_points.values()) raw_evals = { "one_step": raw_evals[:n_one_step], "two_step": raw_evals[n_one_step:n_two_step + n_one_step], "cross_step": raw_evals[n_two_step + n_one_step:], } # store full function value at params as func_value and a processed version of it # that we need to calculate derivatives as f0 if f0 is None: f0 = raw_evals["one_step"][-1] raw_evals["one_step"] = raw_evals["one_step"][:-1] func_value = f0 f0_tree = f0[key] if key is not None and isinstance(f0, dict) else f0 f0 = tree_leaves(f0_tree, registry=registry) f0 = np.array(f0, dtype=np.float64) # convert the raw evaluations to numpy arrays raw_evals = { step_type: _convert_evals_to_numpy(evals, key, registry) for step_type, evals in raw_evals.items() } # reshape arrays into dimension (n_steps, dim_f, dim_x) or (n_steps, dim_f, dim_x, # dim_x) for finite differences evals = {} evals["one_step"] = _reshape_one_step_evals(raw_evals["one_step"], n_steps, len(x)) evals["two_step"] = _reshape_two_step_evals(raw_evals["two_step"], n_steps, len(x)) evals["cross_step"] = _reshape_cross_step_evals(raw_evals["cross_step"], n_steps, len(x), f0) # apply finite difference formulae hess_candidates = {} for m in ["forward", "backward", "central_average", "central_cross"]: hess_candidates[m] = finite_differences.hessian(evals, steps, f0, m) # get the best derivative estimate out of all derivative estimates that could be # calculated, given the function evaluations. orders = { "central_cross": ["central_cross", "central_average", "forward", "backward"], "central_average": ["central_average", "central_cross", "forward", "backward"], "forward": ["forward", "backward", "central_average", "central_cross"], "backward": ["backward", "forward", "central_average", "central_cross"], } if n_steps == 1: hess = _consolidate_one_step_derivatives(hess_candidates, orders[method]) updated_candidates = None else: raise ValueError( "Richardson extrapolation is not implemented for the second derivative yet." ) # raise error if necessary if error_handling in ("raise", "raise_strict") and np.isnan(hess).any(): raise Exception(exc_info) # results processing derivative = hessian_to_block_tree(hess, f0_tree, params) result = {"derivative": derivative} if return_func_value: result["func_value"] = func_value if return_info: info = _collect_additional_info(steps, evals, updated_candidates, target="second_derivative") result = {**result, **info} return result
def first_derivative( func, params, *, func_kwargs=None, method="central", n_steps=1, base_steps=None, scaling_factor=1, lower_bounds=None, upper_bounds=None, step_ratio=2, min_steps=None, f0=None, n_cores=DEFAULT_N_CORES, error_handling="continue", batch_evaluator="joblib", return_func_value=False, return_info=False, key=None, ): """Evaluate first derivative of func at params according to method and step options. Internally, the function is converted such that it maps from a 1d array to a 1d array. Then the Jacobian of that function is calculated. The parameters and the function output can be estimagic-pytrees; for more details on estimagi-pytrees see :ref:`eeppytrees`. By default the resulting Jacobian will be returned as a block-pytree. For a detailed description of all options that influence the step size as well as an explanation of how steps are adjusted to bounds in case of a conflict, see :func:`~estimagic.differentiation.generate_steps.generate_steps`. Args: func (callable): Function of which the derivative is calculated. params (pytree): A pytree. See :ref:`params`. func_kwargs (dict): Additional keyword arguments for func, optional. method (str): One of ["central", "forward", "backward"], default "central". n_steps (int): Number of steps needed. For central methods, this is the number of steps per direction. It is 1 if no Richardson extrapolation is used. base_steps (numpy.ndarray, optional): 1d array of the same length as params. base_steps * scaling_factor is the absolute value of the first (and possibly only) step used in the finite differences approximation of the derivative. If base_steps * scaling_factor conflicts with bounds, the actual steps will be adjusted. If base_steps is not provided, it will be determined according to a rule of thumb as long as this does not conflict with min_steps. scaling_factor (numpy.ndarray or float): Scaling factor which is applied to base_steps. If it is an numpy.ndarray, it needs to be as long as params. scaling_factor is useful if you want to increase or decrease the base_step relative to the rule-of-thumb or user provided base_step, for example to benchmark the effect of the step size. Default 1. lower_bounds (pytree): To be written. upper_bounds (pytree): To be written. step_ratio (float, numpy.array): Ratio between two consecutive Richardson extrapolation steps in the same direction. default 2.0. Has to be larger than one. The step ratio is only used if n_steps > 1. min_steps (numpy.ndarray): Minimal possible step sizes that can be chosen to accommodate bounds. Must have same length as params. By default min_steps is equal to base_steps, i.e step size is not decreased beyond what is optimal according to the rule of thumb. f0 (numpy.ndarray): 1d numpy array with func(x), optional. n_cores (int): Number of processes used to parallelize the function evaluations. Default 1. error_handling (str): One of "continue" (catch errors and continue to calculate derivative estimates. In this case, some derivative estimates can be missing but no errors are raised), "raise" (catch errors and continue to calculate derivative estimates at fist but raise an error if all evaluations for one parameter failed) and "raise_strict" (raise an error as soon as a function evaluation fails). batch_evaluator (str or callable): Name of a pre-implemented batch evaluator (currently 'joblib' and 'pathos_mp') or Callable with the same interface as the estimagic batch_evaluators. return_func_value (bool): If True, return function value at params, stored in output dict under "func_value". Default False. This is useful when using first_derivative during optimization. return_info (bool): If True, return additional information on function evaluations and internal derivative candidates, stored in output dict under "func_evals" and "derivative_candidates". Derivative candidates are only returned if n_steps > 1. Default False. key (str): If func returns a dictionary, take the derivative of func(params)[key]. Returns: result (dict): Result dictionary with keys: - "derivative" (numpy.ndarray, pandas.Series or pandas.DataFrame): The estimated first derivative of func at params. The shape of the output depends on the dimension of params and func(params): - f: R -> R leads to shape (1,), usually called derivative - f: R^m -> R leads to shape (m, ), usually called Gradient - f: R -> R^n leads to shape (n, 1), usually called Jacobian - f: R^m -> R^n leads to shape (n, m), usually called Jacobian - "func_value" (numpy.ndarray, pandas.Series or pandas.DataFrame): Function value at params, returned if return_func_value is True. - "func_evals" (pandas.DataFrame): Function evaluations produced by internal derivative method, returned if return_info is True. - "derivative_candidates" (pandas.DataFrame): Derivative candidates from Richardson extrapolation, returned if return_info is True and n_steps > 1. """ _is_fast_params = isinstance(params, np.ndarray) and params.ndim == 1 registry = get_registry(extended=True) lower_bounds, upper_bounds = get_bounds(params, lower_bounds, upper_bounds) # handle keyword arguments func_kwargs = {} if func_kwargs is None else func_kwargs partialed_func = functools.partial(func, **func_kwargs) # convert params to numpy if not _is_fast_params: x, params_treedef = tree_flatten(params, registry=registry) x = np.array(x, dtype=np.float64) else: x = params.astype(float) if np.isnan(x).any(): raise ValueError("The parameter vector must not contain NaNs.") # generate the step array steps = generate_steps( x=x, method=method, n_steps=n_steps, target="first_derivative", base_steps=base_steps, scaling_factor=scaling_factor, lower_bounds=lower_bounds, upper_bounds=upper_bounds, step_ratio=step_ratio, min_steps=min_steps, ) # generate parameter vectors at which func has to be evaluated as numpy arrays evaluation_points = [] for step_arr in steps: for i, j in product(range(n_steps), range(len(x))): if np.isnan(step_arr[i, j]): evaluation_points.append(np.nan) else: point = x.copy() point[j] += step_arr[i, j] evaluation_points.append(point) # convert the numpy arrays to whatever is needed by func if not _is_fast_params: evaluation_points = [ # entries are either a numpy.ndarray or np.nan _unflatten_if_not_nan(p, params_treedef, registry) for p in evaluation_points ] # we always evaluate f0, so we can fall back to one-sided derivatives if # two-sided derivatives fail. The extra cost is negligible in most cases. if f0 is None: evaluation_points.append(params) # do the function evaluations, including error handling batch_error_handling = "raise" if error_handling == "raise_strict" else "continue" raw_evals = _nan_skipping_batch_evaluator( func=partialed_func, arguments=evaluation_points, n_cores=n_cores, error_handling=batch_error_handling, batch_evaluator=batch_evaluator, ) # extract information on exceptions that occurred during function evaluations exc_info = "\n\n".join([val for val in raw_evals if isinstance(val, str)]) raw_evals = [ val if not isinstance(val, str) else np.nan for val in raw_evals ] # store full function value at params as func_value and a processed version of it # that we need to calculate derivatives as f0 if f0 is None: f0 = raw_evals[-1] raw_evals = raw_evals[:-1] func_value = f0 use_key = key is not None and isinstance(f0, dict) f0_tree = f0[key] if use_key else f0 scalar_out = np.isscalar(f0_tree) vector_out = isinstance(f0_tree, np.ndarray) and f0_tree.ndim == 1 if scalar_out: f0 = np.array([f0_tree], dtype=float) elif vector_out: f0 = f0_tree.astype(float) else: f0 = tree_leaves(f0_tree, registry=registry) f0 = np.array(f0, dtype=np.float64) # convert the raw evaluations to numpy arrays raw_evals = _convert_evals_to_numpy( raw_evals=raw_evals, key=key, registry=registry, is_scalar_out=scalar_out, is_vector_out=vector_out, ) # apply finite difference formulae evals = np.array(raw_evals).reshape(2, n_steps, len(x), -1) evals = np.transpose(evals, axes=(0, 1, 3, 2)) evals = Evals(pos=evals[0], neg=evals[1]) jac_candidates = {} for m in ["forward", "backward", "central"]: jac_candidates[m] = finite_differences.jacobian(evals, steps, f0, m) # get the best derivative estimate out of all derivative estimates that could be # calculated, given the function evaluations. orders = { "central": ["central", "forward", "backward"], "forward": ["forward", "backward"], "backward": ["backward", "forward"], } if n_steps == 1: jac = _consolidate_one_step_derivatives(jac_candidates, orders[method]) updated_candidates = None else: richardson_candidates = _compute_richardson_candidates( jac_candidates, steps, n_steps) jac, updated_candidates = _consolidate_extrapolated( richardson_candidates) # raise error if necessary if error_handling in ("raise", "raise_strict") and np.isnan(jac).any(): raise Exception(exc_info) # results processing if _is_fast_params and vector_out: derivative = jac elif _is_fast_params and scalar_out: derivative = jac.flatten() else: derivative = matrix_to_block_tree(jac, f0_tree, params) result = {"derivative": derivative} if return_func_value: result["func_value"] = func_value if return_info: info = _collect_additional_info(steps, evals, updated_candidates, target="first_derivative") result = {**result, **info} return result
def block_tree_to_hessian(block_hessian, f_tree, params_tree): """Convert a block tree to a Hessian array. Remark: In comparison to Jax we need this formatting function because we calculate the second derivative using second-order finite differences. Jax computes the second derivative by applying their jacobian function twice, which produces the desired block-tree shape of the Hessian automatically. If we apply our first derivative function twice we get the same block-tree shape. Args: block_hessian: A (block) pytree, must match dimensions of f_tree and params_tree f_tree (pytree): The function evaluated at params_tree. params_tree (pytree): The params_tree. Returns: matrix (np.ndarray): 2d array containing information stored in block_tree. """ flat_f = tree_leaves(f_tree) flat_p = tree_leaves(params_tree) flat_block_tree = tree_leaves(block_hessian) flat_f_np = [_convert_to_numpy(leaf, only_pandas=True) for leaf in flat_f] flat_p_np = [_convert_to_numpy(leaf, only_pandas=True) for leaf in flat_p] size_f = [np.size(a) for a in flat_f_np] size_p = [np.size(a) for a in flat_p_np] n_blocks_f = len(size_f) n_blocks_p = len(size_p) outer_blocks = [ flat_block_tree[(n_blocks_p**2) * i:(n_blocks_p**2) * (i + 1)] for i in range(n_blocks_f) ] inner_matrices = [] for outer_block_dim, list_inner_blocks in zip(size_f, outer_blocks): block_rows_raw = [ list_inner_blocks[n_blocks_p * i:n_blocks_p * (i + 1)] for i in range(n_blocks_p) ] block_rows = [] for s1, row in zip(size_p, block_rows_raw): shapes = [(outer_block_dim, s1, s2) for s2 in size_p] row_np = [ _convert_to_numpy(leaf, only_pandas=False) for leaf in row ] row_np_3d = [ leaf[np.newaxis] if leaf.ndim < 3 else leaf for leaf in row_np ] row_reshaped = _reshape_list(row_np_3d, shapes) row_concatenated = np.concatenate(row_reshaped, axis=2) block_rows.append(row_concatenated) inner_matrix = np.concatenate(block_rows, axis=1) inner_matrices.append(inner_matrix) hessian = np.concatenate(inner_matrices, axis=0) _check_dimensions_hessian(hessian, f_tree, params_tree) return hessian