odbc_api/guide.rs
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#![allow(clippy::needless_doctest_main)]
/*!
# Introduction to `odbc-api` (documentation only)
## About ODBC
ODBC is an open standard which allows you to connect to various data sources. Mostly these data
sources are databases, but ODBC drivers are also available for various file types like Excel or
CSV.
Your application does not link against a driver, but will link against an ODBC driver manager
which must be installed on the system you intend to run the application. On modern Windows
Platforms ODBC is always installed, on OS-X or Linux distributions a driver manager like
[unixODBC](http://www.unixodbc.org/) must be installed.
To connect to a data source a driver for the specific data source in question must be installed.
On windows you can type 'ODBC Data Sources' into the search box to start a little GUI which
shows you the various drivers and preconfigured data sources on your system.
This however is not a guide on how to configure and setup ODBC. This is a guide on how to use
the Rust bindings for applications which want to utilize ODBC data sources.
## Quickstart
```no_run
//! A program executing a query and printing the result as csv to standard out. Requires
//! `anyhow` and `csv` crate.
use anyhow::Error;
use odbc_api::{buffers::TextRowSet, Cursor, Environment, ConnectionOptions, ResultSetMetadata};
use std::{
ffi::CStr,
io::{stdout, Write},
path::PathBuf,
};
/// Maximum number of rows fetched with one row set. Fetching batches of rows is usually much
/// faster than fetching individual rows.
const BATCH_SIZE: usize = 5000;
fn main() -> Result<(), Error> {
// Write csv to standard out
let out = stdout();
let mut writer = csv::Writer::from_writer(out);
// If you do not do anything fancy it is recommended to have only one Environment in the
// entire process.
let environment = Environment::new()?;
// Connect using a DSN. Alternatively we could have used a connection string
let mut connection = environment.connect(
"DataSourceName",
"Username",
"Password",
ConnectionOptions::default(),
)?;
// Execute a one of query without any parameters.
match connection.execute("SELECT * FROM TableName", ())? {
Some(mut cursor) => {
// Write the column names to stdout
let mut headline : Vec<String> = cursor.column_names()?.collect::<Result<_,_>>()?;
writer.write_record(headline)?;
// Use schema in cursor to initialize a text buffer large enough to hold the largest
// possible strings for each column up to an upper limit of 4KiB.
let mut buffers = TextRowSet::for_cursor(BATCH_SIZE, &mut cursor, Some(4096))?;
// Bind the buffer to the cursor. It is now being filled with every call to fetch.
let mut row_set_cursor = cursor.bind_buffer(&mut buffers)?;
// Iterate over batches
while let Some(batch) = row_set_cursor.fetch()? {
// Within a batch, iterate over every row
for row_index in 0..batch.num_rows() {
// Within a row iterate over every column
let record = (0..batch.num_cols()).map(|col_index| {
batch
.at(col_index, row_index)
.unwrap_or(&[])
});
// Writes row as csv
writer.write_record(record)?;
}
}
}
None => {
eprintln!(
"Query came back empty. No output has been created."
);
}
}
Ok(())
}
```
## 32 Bit and 64 Bit considerations.
To consider whether you want to work with 32 Bit or 64 Bit data sources is especially important
for windows users, as driver managers (and possibly drivers) may both exist at the same time
in the same system.
In any case, depending on the platform part of your target triple either 32 Bit or 64 Bit
drivers are going to work, but not both. On a private windows machine (even on a modern 64 Bit
Windows) it is not unusual to find lots of 32 Bit drivers installed on the system, but none for
64 Bits. So for windows users it is worth thinking about not using the default toolchain which
is likely 64 Bits and to switch to a 32 Bit one. On other platforms you are usually fine
sticking with 64 Bits, as there are not usually any drivers preinstalled anyway, 64 Bit or
otherwise.
No code changes are required, so you can also just build both if you want to.
## Connecting to a data source
### Setting up the ODBC Environment
To connect with a data source we need a connection. To create a connection we need an ODBC
environment.
```no_run
use odbc_api::Environment;
let env = Environment::new()?;
# Ok::<(), odbc_api::Error>(())
```
This is it. Our ODBC Environment is ready for action. We can use it to list data sources and
drivers, but most importantly we can use it to create connections.
These bindings currently support two ways of creating a connections:
### Connect using a connection string
Connection strings do not require that the data source is preconfigured by the driver manager
this makes them very flexible.
```no_run
use odbc_api::{ConnectionOptions, Environment};
let env = Environment::new()?;
let connection_string = "
Driver={ODBC Driver 18 for SQL Server};\
Server=localhost;\
UID=SA;\
PWD=My@Test@Password1;\
";
let mut conn = env.connect_with_connection_string(connection_string, ConnectionOptions::default())?;
# Ok::<(), odbc_api::Error>(())
```
There is a syntax to these connection strings, but few people go through the trouble to learn
it. Most common strategy is to google one that works for with your data source. The connection
borrows the environment, so you will get a compiler error, if your environment goes out of scope
before the connection does.
> You can list the available drivers using [`crate::Environment::drivers`].
### Connect using a Data Source Name (DSN)
Should a data source be known by the driver manager we can access it using its name and
credentials. This is more convenient for the user or application developer, but requires a
configuration of the ODBC driver manager. Think of it as shifting work from users to
administrators.
```no_run
use odbc_api::{Environment, ConnectionOptions};
let env = Environment::new()?;
let mut conn = env.connect(
"YourDatabase", "SA", "My@Test@Password1",
ConnectionOptions::default()
)?;
# Ok::<(), odbc_api::Error>(())
```
How to configure such data sources is not the scope of this guide, and depends on the driver
manager in question.
> You can list the available data sources using [`crate::Environment::data_sources`].
### Connection pooling
ODBC specifies an interface to enable the driver manager to enable connection pooling for your
application. It is off by default, but if you use ODBC to connect to your data source instead of
implementing it in your application, or importing a library you may simply enable it in ODBC
instead.
Connection Pooling is governed by two attributes. The most important one is the connection
pooling scheme which is `Off` by default. It must be set even before you create your ODBC
environment. It is global mutable state on the process level. Setting it in Rust is therefore
unsafe.
The other one is changed via [`crate::Environment::set_connection_pooling_matching`]. It governs
how a connection is chosen from the pool. It defaults to strict which means the `Connection`
you get from the pool will have exactly the attributes specified in the connection string.
Here is an example of how to create an ODBC environment with connection pooling.
```
use odbc_api::{Environment, environment, sys::{AttrConnectionPooling, AttrCpMatch}};
fn main() {
// Enable connection pooling. Let driver decide whether the attributes of two connection
// are similar enough to change the attributes of a pooled one, to fit the requested
// connection, or if it is cheaper to create a new Connection from scratch.
// See <https://docs.microsoft.com/en-us/sql/odbc/reference/develop-app/driver-aware-connection-pooling>
//
// Safety: This call changes global mutable space in the underlying ODBC driver manager. Easiest
// to prove it is not causing a raise by calling it once right at the startup of your
// application.
unsafe {
Environment::set_connection_pooling(AttrConnectionPooling::DriverAware).unwrap();
}
// As long as `environment` is called for the first time **after** connection pooling is
// activated the static environment returned by it will have it activated.
let env = environment();
// ... use env to do db stuff
}
```
## Executing SQL statements
### Executing a single SQL statement
With our ODBC connection all set up and ready to go, we can execute an SQL query:
```no_run
use odbc_api::{Environment, ConnectionOptions};
let env = Environment::new()?;
let mut conn = env.connect(
"YourDatabase", "SA", "My@Test@Password1",
ConnectionOptions::default()
)?;
if let Some(cursor) = conn.execute("SELECT year, name FROM Birthdays;", ())? {
// Use cursor to process query results.
}
# Ok::<(), odbc_api::Error>(())
```
The first parameter of `execute` is the SQL statement text. The second parameter is used to pass
arguments of the SQL Statements itself (more on that later). Ours has none, so we use `()` to
not bind any arguments to the statement. You can learn all about passing parameters from the
[`parameter module level documentation`](`crate::parameter`). It may feature an example for
your use case.
Note that the result of the operation is an `Option`. This reflects that not every statement
returns a [`Cursor`](crate::Cursor). `INSERT` statements usually do not, but even `SELECT`
queries which would return zero rows can depending on the driver return either an empty cursor
or no cursor at all. Should a cursor exists, it must be consumed or closed. The `drop` handler
of Cursor will close it for us. If the `Option` is `None` there is nothing to close, so is all
taken care of, nice.
### Executing a many SQL statements in sequence
Execution of a statement, its bound parameters, its buffers and result set, are all managed by
ODBC using a statement handle. If you call [`crate::Connection::execute`] a new one is allocated
each time and the resulting cursor takes ownership of it (giving you an easier time with the
borrow checker). In a use case there you want to execute multiple SQL Statements over the same
connection in sequence, you may want to reuse an already allocated statement handle. This is
what the [`crate::Preallocated`] struct is for. Please note that if you want to execute the same
query with different parameters you can have potentially even better performance by utilizing
prepared Statements ([`crate::Prepared`]).
```
use odbc_api::{Connection, Error};
use std::io::{self, stdin, Read};
fn interactive(conn: &Connection) -> io::Result<()>{
let mut statement = conn.preallocate().unwrap();
let mut query = String::new();
stdin().read_line(&mut query)?;
while !query.is_empty() {
match statement.execute(&query, ()) {
Err(e) => println!("{}", e),
Ok(None) => println!("No results set generated."),
Ok(Some(cursor)) => {
// ...print cursor contents...
}
}
stdin().read_line(&mut query)?;
}
Ok(())
}
```
### Executing prepared queries
Should your use case require you to execute the same query several times with different parameters,
prepared queries are the way to go. These give the database a chance to cache the access plan
associated with your SQL statement. It is not unlike compiling your program once and executing it
several times.
```
use odbc_api::{Connection, Error, IntoParameter};
use std::io::{self, stdin, Read};
fn interactive(conn: &Connection) -> io::Result<()>{
let mut prepared = conn.prepare("SELECT * FROM Movies WHERE title=?;").unwrap();
let mut title = String::new();
stdin().read_line(&mut title)?;
while !title.is_empty() {
match prepared.execute(&title.as_str().into_parameter()) {
Err(e) => println!("{}", e),
// Most drivers would return a result set even if no Movie with the title is found,
// the result set would just be empty. Well, most drivers.
Ok(None) => println!("No result set generated."),
Ok(Some(cursor)) => {
// ...print cursor contents...
}
}
stdin().read_line(&mut title)?;
}
Ok(())
}
```
## Fetching results
ODBC offers two ways of retrieving values from a cursor over a result set. Row by row fetching and
bulk fetching using application provided buffers.
### Fetching results by filling application provided buffers
The most efficient way to query results is not query an ODBC data source row by row, but to
ask for a whole bulk of rows at once. The ODBC driver and driver manager will then fill these
row sets into buffers which have been previously bound. This is also the most efficient way to
query a single row many times for many queries, if the application can reuse the bound buffer.
This crate allows you to provide your own buffers by implementing the [`crate::RowSetBuffer`]
trait. That however requires `unsafe` code.
This crate also provides three implementations of the [`crate::RowSetBuffer`] trait, ready to be
used in safe code:
* [`crate::buffers::ColumnarBuffer`]: Binds to the result set column wise. This is usually helpful
in dataengineering or data sciense tasks. This buffer type can be used in situations there the
schema of the queried data is known at compile time, as well as for generic applications which do
work with wide range of different data. Checkt the struct documentation for examples.
* [`crate::buffers::TextRowSet`]: Queries all data as text bound in columns. Since the columns are
homogeneous, you can also use this, to iterate row wise over the buffer. Excellent if you want
to print the contents of a table, or are for any reason only interessted in the text
representation of the values.
* [`crate::buffers::RowVec`]: A good choice if you know the schema at compile time and your
application logic is build in a row by row fashion, rather than column by column.
You can read more about them in the documentation of the [`crate::buffers`] module.
## Inserting values into a table
### Inserting a single row into a table
Inserting a single row can be done by executing a statement and binding the fields as parameters
in a tuple.
```no_run
use odbc_api::{Connection, Error, IntoParameter};
fn insert_birth_year(conn: &Connection, name: &str, year: i16) -> Result<(), Error>{
conn.execute(
"INSERT INTO Birthdays (name, year) VALUES (?, ?)",
(&name.into_parameter(), &year)
)?;
Ok(())
}
```
### Columnar bulk inserts
Inserting values row by row can introduce a lot of overhead. ODBC allows you to perform either
row or column wise bulk inserts. Especially in pipelines for data science you may already have
buffers in a columnar layout at hand. [`crate::ColumnarBulkInserter`] can be used for bulk inserts.
```no_run
use odbc_api::{Connection, Error, IntoParameter, buffers::BufferDesc};
fn insert_birth_years(conn: &Connection, names: &[&str], years: &[i16]) -> Result<(), Error> {
// All columns must have equal length.
assert_eq!(names.len(), years.len());
let prepared = conn.prepare("INSERT INTO Birthdays (name, year) VALUES (?, ?)")?;
// Create a columnar buffer which fits the input parameters.
let buffer_description = [
BufferDesc::Text { max_str_len: 255 },
BufferDesc::I16 { nullable: false },
];
// The capacity must be able to hold at least the largest batch. We do everything in one go, so
// we set it to the length of the input parameters.
let capacity = names.len();
// Allocate memory for the array column parameters and bind it to the statement.
let mut prebound = prepared.into_column_inserter(capacity, buffer_description)?;
// Length of this batch
prebound.set_num_rows(capacity);
// Fill the buffer with values column by column
let mut col = prebound
.column_mut(0)
.as_text_view()
.expect("We know the name column to hold text.");
for (index, name) in names.iter().enumerate() {
col.set_cell(index, Some(name.as_bytes()));
}
let col = prebound
.column_mut(1)
.as_slice::<i16>()
.expect("We know the year column to hold i16.");
col.copy_from_slice(years);
prebound.execute()?;
Ok(())
}
```
*/