Looking for help populating and using structs within a polars Dataframe/Series.
I know there is a JSON workaround to get structs into the df... but there should be a more straight forward solution rather than this "awkward" workaround?!
Once the structs made it into a df ... how do I get them out?
Here is some code I use to better understand how polars handles various data types:
use polars::prelude::*;
enum FriendType {
Goodfriend,
Badfriend,
}
struct MyStruct {
pub person: Option<String>,
pub relation: FriendType,
}
impl MyStruct {
fn new(person: &str, relation: FriendType) -> Self {
MyStruct {
person: Some(person.to_string()),
relation,
}
}
}
fn main() {
// HOW to get the MyStruct_col into a polars series/dataframe
let df = df![
"Integer_col" => [1,2,3,4],
"Float_col" => [1.1,0.3,9.6,4.2],
"String_col" => ["apple", "pear", "lemon", "plum"],
"values_nulls" => [Some(1), None, Some(3), Some(8)],
// "MyStruct_col" => [MyStruct::new("Peter",Badfriend),
// MyStruct::new("Mary",Goodfriend),
// MyStruct::new("Elon",Goodfriend),
// MyStruct::new("Joe",Badfriend),
// ],
]
.unwrap();
// HOW do I get them out again?
for each_column_name in df.get_column_names() {
let df_col = df.column(each_column_name).unwrap();
println!("\nFound TYPE: {}", df_col.dtype());
/*----------------------------INTEGER_COLUMN----------------------------------------------*/
if df_col.dtype() == &DataType::Int32 {
let df_col_chunked = df_col.i32().unwrap();
for each_element in df_col_chunked {
match each_element {
Some(_) => each_element,
None => continue,
};
let single_element = each_element.unwrap();
println!(
"Element: {:?} as String: {}",
single_element,
single_element.to_string()
)
}
}
/*----------------------------FLOAT64_COLUMN----------------------------------------------*/
if df_col.dtype() == &DataType::Float64 {
let df_col_chunked = df_col.f64().unwrap();
for each_element in df_col_chunked {
match each_element {
Some(_) => each_element,
None => continue,
};
let single_element = each_element.unwrap();
println!(
"Element: {} as String: {}",
single_element,
single_element.to_string()
)
}
};
/*----------------------------STRING_COLUMN----------------------------------------------*/
if df_col.dtype() == &DataType::Utf8 {
let df_col_chunked = df_col.utf8().unwrap();
for each_element in df_col_chunked {
match each_element {
Some(_) => each_element,
None => continue,
};
let single_element = each_element.unwrap();
println!(
"Element: {} as String: {}",
single_element,
single_element.to_string()
)
}
};
/*----------------------------STRUCT_COLUMN----------------------------------------------*/
// if (df_col.dtype() == &MyStruct) {
// let df_col_chunked = df_col.struct_().unwrap();
// for each_element in df_col_chunked {
// match each_element {
// Some(_) => each_element,
// None => continue,
// };
//
// let single_element = each_element.unwrap();
//
// println!(
// "Element: {} as String: {}",
// single_element,
// single_element.to_string()
// )
// }
// };
}
}