empyrean.CometaryCovariance¶
- class CometaryCovariance(table, **kwargs)
Bases:
TableCovariance matrix for cometary elements [q, e, i, raan, ap, tp].
Methods
__init__(table, **kwargs)apply_mask(mask)Return a new table with rows filtered to match a boolean mask.
as_column([nullable, metadata])Embed the Table as a column in another Table.
attributes()Return a dictionary of the table's attributes.
chunk_counts()Returns the number of discrete memory chunks that make up each of the Table's underlying arrays.
column(column_name)Returns the column with the given name as a raw pyarrow ChunkedArray.
drop_duplicates([subset, keep])Drop duplicate rows from a ~quivr.Table.
empty(**kwargs)Create an empty instance of the table.
flattened_table()Completely flatten the Table's underlying Arrow table, taking into account any nested structure, and return the data table itself.
fragmented()Returns true if the Table has any fragmented arrays.
from_csv(input_file[, validate])Read a table from a CSV file.
from_dataframe(df[, validate])Load a DataFrame into the Table.
from_feather(path[, validate])Read a table from a Feather file.
from_flat_dataframe(df[, validate])Load a flattened DataFrame into the Table.
from_kwargs([validate, permit_nulls])Create a Table instance from keyword arguments.
from_matrix(matrix)Create from covariance matrices.
from_parquet(path[, memory_map, ...])Read a table from a Parquet file.
from_pyarrow(table[, validate, permit_nulls])Create a new table from a pyarrow Table.
from_sigmas(sigmas)Create diagonal-only covariances from sigma values.
invalid_mask()Return a boolean mask indicating which rows are invalid.
is_valid()Validate the table against the schema.
null_mask()Return a boolean mask indicating which rows of the entire table are null.
nulls(size, **kwargs)Create a table with nulls.
select(column_name, value)Select from the table by exact match, returning a new Table which only contains rows for which the value in column_name equals value.
separate_invalid()Separates rows that have invalid data from those that have valid data.
set_column(name, data)Return a copy of the table with a particular column replaced with new data.
sort_by(by)Sorts the Table by the given column name (or multiple columns).
take(row_indices)Return a new Table with only the rows at the given indices.
to_csv(path[, attribute_columns])Write the table to a CSV file.
to_dataframe([flatten, attr_handling])Returns self as a pandas DataFrame.
to_feather(path, **kwargs)Write the table to a Feather file.
to_matrix()Return (N, 6, 6) numpy array.
to_parquet(path, **kwargs)Write the table to a Parquet file.
to_structarray()Returns self as a StructArray.
unique_indices([subset, keep])Get the indices of the first or last occurrence of each unique row in the table.
validate()Validate the table against the schema, raising an exception if invalid.
where(expr)Return a new table with rows filtered to match an expression.
with_table(table)Attributes
cov_ap_apA column for storing 64-bit floating point numbers.
cov_ap_tpA column for storing 64-bit floating point numbers.
cov_e_apA column for storing 64-bit floating point numbers.
cov_e_eA column for storing 64-bit floating point numbers.
cov_e_iA column for storing 64-bit floating point numbers.
cov_e_raanA column for storing 64-bit floating point numbers.
cov_e_tpA column for storing 64-bit floating point numbers.
cov_i_apA column for storing 64-bit floating point numbers.
cov_i_iA column for storing 64-bit floating point numbers.
cov_i_raanA column for storing 64-bit floating point numbers.
cov_i_tpA column for storing 64-bit floating point numbers.
cov_q_apA column for storing 64-bit floating point numbers.
cov_q_eA column for storing 64-bit floating point numbers.
cov_q_iA column for storing 64-bit floating point numbers.
cov_q_qA column for storing 64-bit floating point numbers.
cov_q_raanA column for storing 64-bit floating point numbers.
cov_q_tpA column for storing 64-bit floating point numbers.
cov_raan_apA column for storing 64-bit floating point numbers.
cov_raan_raanA column for storing 64-bit floating point numbers.
cov_raan_tpA column for storing 64-bit floating point numbers.
cov_tp_tpA column for storing 64-bit floating point numbers.
schemasigmasReturn (N, 6) array of 1-sigma uncertainties (sqrt of diagonal).
table- Parameters:
table (Table)
kwargs (AttributeValueType)
- cov_ap_ap
A column for storing 64-bit floating point numbers.
- cov_ap_tp
A column for storing 64-bit floating point numbers.
- cov_e_ap
A column for storing 64-bit floating point numbers.
- cov_e_e
A column for storing 64-bit floating point numbers.
- cov_e_i
A column for storing 64-bit floating point numbers.
- cov_e_raan
A column for storing 64-bit floating point numbers.
- cov_e_tp
A column for storing 64-bit floating point numbers.
- cov_i_ap
A column for storing 64-bit floating point numbers.
- cov_i_i
A column for storing 64-bit floating point numbers.
- cov_i_raan
A column for storing 64-bit floating point numbers.
- cov_i_tp
A column for storing 64-bit floating point numbers.
- cov_q_ap
A column for storing 64-bit floating point numbers.
- cov_q_e
A column for storing 64-bit floating point numbers.
- cov_q_i
A column for storing 64-bit floating point numbers.
- cov_q_q
A column for storing 64-bit floating point numbers.
- cov_q_raan
A column for storing 64-bit floating point numbers.
- cov_q_tp
A column for storing 64-bit floating point numbers.
- cov_raan_ap
A column for storing 64-bit floating point numbers.
- cov_raan_raan
A column for storing 64-bit floating point numbers.
- cov_raan_tp
A column for storing 64-bit floating point numbers.
- cov_tp_tp
A column for storing 64-bit floating point numbers.
- classmethod from_matrix(matrix)
Create from covariance matrices.
- classmethod from_sigmas(sigmas)
Create diagonal-only covariances from sigma values.
- schema: ClassVar[Schema] = cov_q_q: double cov_q_e: double cov_e_e: double cov_q_i: double cov_e_i: double cov_i_i: double cov_q_raan: double cov_e_raan: double cov_i_raan: double cov_raan_raan: double cov_q_ap: double cov_e_ap: double cov_i_ap: double cov_raan_ap: double cov_ap_ap: double cov_q_tp: double cov_e_tp: double cov_i_tp: double cov_raan_tp: double cov_ap_tp: double cov_tp_tp: double