Error Messages¶
This section lists descriptions and background for common error messages and warnings raised or emitted by SQLAlchemy.
SQLAlchemy normally raises errors within the context of a SQLAlchemy-specific exception class. For details on these classes, see Core Exceptions and ORM Exceptions.
SQLAlchemy errors can roughly be separated into two categories, the programming-time error and the runtime error. Programming-time errors are raised as a result of functions or methods being called with incorrect arguments, or from other configuration-oriented methods such as mapper configurations that can’t be resolved. The programming-time error is typically immediate and deterministic. The runtime error on the other hand represents a failure that occurs as a program runs in response to some condition that occurs arbitrarily, such as database connections being exhausted or some data-related issue occurring. Runtime errors are more likely to be seen in the logs of a running application as the program encounters these states in response to load and data being encountered.
Since runtime errors are not as easy to reproduce and often occur in response to some arbitrary condition as the program runs, they are more difficult to debug and also affect programs that have already been put into production.
Within this section, the goal is to try to provide background on some of the most common runtime errors as well as programming time errors.
Connections and Transactions¶
QueuePool limit of size <x> overflow <y> reached, connection timed out, timeout <z>¶
This is possibly the most common runtime error experienced, as it directly involves the work load of the application surpassing a configured limit, one which typically applies to nearly all SQLAlchemy applications.
The following points summarize what this error means, beginning with the most fundamental points that most SQLAlchemy users should already be familiar with.
The SQLAlchemy Engine object uses a pool of connections by default - What this means is that when one makes use of a SQL database connection resource of an
Engine
object, and then releases that resource, the database connection itself remains connected to the database and is returned to an internal queue where it can be used again. Even though the code may appear to be ending its conversation with the database, in many cases the application will still maintain a fixed number of database connections that persist until the application ends or the pool is explicitly disposed.Because of the pool, when an application makes use of a SQL database connection, most typically from either making use of
Engine.connect()
or when making queries using an ORMSession
, this activity does not necessarily establish a new connection to the database at the moment the connection object is acquired; it instead consults the connection pool for a connection, which will often retrieve an existing connection from the pool to be re-used. If no connections are available, the pool will create a new database connection, but only if the pool has not surpassed a configured capacity.The default pool used in most cases is called
QueuePool
. When you ask this pool to give you a connection and none are available, it will create a new connection if the total number of connections in play are less than a configured value. This value is equal to the pool size plus the max overflow. That means if you have configured your engine as:engine = create_engine("mysql://u:p@host/db", pool_size=10, max_overflow=20)
The above
Engine
will allow at most 30 connections to be in play at any time, not including connections that were detached from the engine or invalidated. If a request for a new connection arrives and 30 connections are already in use by other parts of the application, the connection pool will block for a fixed period of time, before timing out and raising this error message.In order to allow for a higher number of connections be in use at once, the pool can be adjusted using the
create_engine.pool_size
andcreate_engine.max_overflow
parameters as passed to thecreate_engine()
function. The timeout to wait for a connection to be available is configured using thecreate_engine.pool_timeout
parameter.The pool can be configured to have unlimited overflow by setting
create_engine.max_overflow
to the value “-1”. With this setting, the pool will still maintain a fixed pool of connections, however it will never block upon a new connection being requested; it will instead unconditionally make a new connection if none are available.However, when running in this way, if the application has an issue where it is using up all available connectivity resources, it will eventually hit the configured limit of available connections on the database itself, which will again return an error. More seriously, when the application exhausts the database of connections, it usually will have caused a great amount of resources to be used up before failing, and can also interfere with other applications and database status mechanisms that rely upon being able to connect to the database.
Given the above, the connection pool can be looked at as a safety valve for connection use, providing a critical layer of protection against a rogue application causing the entire database to become unavailable to all other applications. When receiving this error message, it is vastly preferable to repair the issue using up too many connections and/or configure the limits appropriately, rather than allowing for unlimited overflow which does not actually solve the underlying issue.
What causes an application to use up all the connections that it has available?
The application is fielding too many concurrent requests to do work based on the configured value for the pool - This is the most straightforward cause. If you have an application that runs in a thread pool that allows for 30 concurrent threads, with one connection in use per thread, if your pool is not configured to allow at least 30 connections checked out at once, you will get this error once your application receives enough concurrent requests. Solution is to raise the limits on the pool or lower the number of concurrent threads.
The application is not returning connections to the pool - This is the next most common reason, which is that the application is making use of the connection pool, but the program is failing to release these connections and is instead leaving them open. The connection pool as well as the ORM
Session
do have logic such that when the session and/or connection object is garbage collected, it results in the underlying connection resources being released, however this behavior cannot be relied upon to release resources in a timely manner.A common reason this can occur is that the application uses ORM sessions and does not call
Session.close()
upon them one the work involving that session is complete. Solution is to make sure ORM sessions if using the ORM, or engine-boundConnection
objects if using Core, are explicitly closed at the end of the work being done, either via the appropriate.close()
method, or by using one of the available context managers (e.g. “with:” statement) to properly release the resource.The application is attempting to run long-running transactions - A database transaction is a very expensive resource, and should never be left idle waiting for some event to occur. If an application is waiting for a user to push a button, or a result to come off of a long running job queue, or is holding a persistent connection open to a browser, don’t keep a database transaction open for the whole time. As the application needs to work with the database and interact with an event, open a short-lived transaction at that point and then close it.
The application is deadlocking - Also a common cause of this error and more difficult to grasp, if an application is not able to complete its use of a connection either due to an application-side or database-side deadlock, the application can use up all the available connections which then leads to additional requests receiving this error. Reasons for deadlocks include:
Using an implicit async system such as gevent or eventlet without properly monkeypatching all socket libraries and drivers, or which has bugs in not fully covering for all monkeypatched driver methods, or less commonly when the async system is being used against CPU-bound workloads and greenlets making use of database resources are simply waiting too long to attend to them. Neither implicit nor explicit async programming frameworks are typically necessary or appropriate for the vast majority of relational database operations; if an application must use an async system for some area of functionality, it’s best that database-oriented business methods run within traditional threads that pass messages to the async part of the application.
A database side deadlock, e.g. rows are mutually deadlocked
Threading errors, such as mutexes in a mutual deadlock, or calling upon an already locked mutex in the same thread
Keep in mind an alternative to using pooling is to turn off pooling entirely. See the section Switching Pool Implementations for background on this. However, note that when this error message is occurring, it is always due to a bigger problem in the application itself; the pool just helps to reveal the problem sooner.
DBAPI Errors¶
The Python database API, or DBAPI, is a specification for database drivers which can be located at Pep-249. This API specifies a set of exception classes that accommodate the full range of failure modes of the database.
SQLAlchemy does not generate these exceptions directly. Instead, they are
intercepted from the database driver and wrapped by the SQLAlchemy-provided
exception DBAPIError
, however the messaging within the exception is
generated by the driver, not SQLAlchemy.
InterfaceError¶
Exception raised for errors that are related to the database interface rather than the database itself.
This error is a DBAPI Error and originates from the database driver (DBAPI), not SQLAlchemy itself.
The InterfaceError
is sometimes raised by drivers in the context
of the database connection being dropped, or not being able to connect
to the database. For tips on how to deal with this, see the section
Dealing with Disconnects.
DatabaseError¶
Exception raised for errors that are related to the database itself, and not the interface or data being passed.
This error is a DBAPI Error and originates from the database driver (DBAPI), not SQLAlchemy itself.
DataError¶
Exception raised for errors that are due to problems with the processed data like division by zero, numeric value out of range, etc.
This error is a DBAPI Error and originates from the database driver (DBAPI), not SQLAlchemy itself.
OperationalError¶
Exception raised for errors that are related to the database’s operation and not necessarily under the control of the programmer, e.g. an unexpected disconnect occurs, the data source name is not found, a transaction could not be processed, a memory allocation error occurred during processing, etc.
This error is a DBAPI Error and originates from the database driver (DBAPI), not SQLAlchemy itself.
The OperationalError
is the most common (but not the only) error class used
by drivers in the context of the database connection being dropped, or not
being able to connect to the database. For tips on how to deal with this, see
the section Dealing with Disconnects.
IntegrityError¶
Exception raised when the relational integrity of the database is affected, e.g. a foreign key check fails.
This error is a DBAPI Error and originates from the database driver (DBAPI), not SQLAlchemy itself.
InternalError¶
Exception raised when the database encounters an internal error, e.g. the cursor is not valid anymore, the transaction is out of sync, etc.
This error is a DBAPI Error and originates from the database driver (DBAPI), not SQLAlchemy itself.
The InternalError
is sometimes raised by drivers in the context
of the database connection being dropped, or not being able to connect
to the database. For tips on how to deal with this, see the section
Dealing with Disconnects.
ProgrammingError¶
Exception raised for programming errors, e.g. table not found or already exists, syntax error in the SQL statement, wrong number of parameters specified, etc.
This error is a DBAPI Error and originates from the database driver (DBAPI), not SQLAlchemy itself.
The ProgrammingError
is sometimes raised by drivers in the context
of the database connection being dropped, or not being able to connect
to the database. For tips on how to deal with this, see the section
Dealing with Disconnects.
NotSupportedError¶
Exception raised in case a method or database API was used which is not supported by the database, e.g. requesting a .rollback() on a connection that does not support transaction or has transactions turned off.
This error is a DBAPI Error and originates from the database driver (DBAPI), not SQLAlchemy itself.
SQL Expression Language¶
Compiler StrSQLCompiler can’t render element of type <element type>¶
This error usually occurs when attempting to stringify a SQL expression
construct that includes elements which are not part of the default compilation;
in this case, the error will be against the StrSQLCompiler
class.
In less common cases, it can also occur when the wrong kind of SQL expression
is used with a particular type of database backend; in those cases, other
kinds of SQL compiler classes will be named, such as SQLCompiler
or
sqlalchemy.dialects.postgresql.PGCompiler
. The guidance below is
more specific to the “stringification” use case but describes the general
background as well.
Normally, a Core SQL construct or ORM Query
object can be stringified
directly, such as when we use print()
:
>>> from sqlalchemy import column
>>> print(column('x') == 5)
x = :x_1
When the above SQL expression is stringified, the StrSQLCompiler
compiler class is used, which is a special statement compiler that is invoked
when a construct is stringified without any dialect-specific information.
However, there are many constructs that are specific to some particular kind
of database dialect, for which the StrSQLCompiler
doesn’t know how
to turn into a string, such as the PostgreSQL
“insert on conflict” construct:
>>> from sqlalchemy.dialects.postgresql import insert
>>> from sqlalchemy import table, column
>>> my_table = table('my_table', column('x'), column('y'))
>>> insert_stmt = insert(my_table).values(x='foo')
>>> insert_stmt = insert_stmt.on_conflict_do_nothing(
... index_elements=['y']
... )
>>> print(insert_stmt)
Traceback (most recent call last):
...
sqlalchemy.exc.UnsupportedCompilationError:
Compiler <sqlalchemy.sql.compiler.StrSQLCompiler object at 0x7f04fc17e320>
can't render element of type
<class 'sqlalchemy.dialects.postgresql.dml.OnConflictDoNothing'>
In order to stringify constructs that are specific to particular backend,
the ClauseElement.compile()
method must be used, passing either an
Engine
or a Dialect
object which will invoke the correct
compiler. Below we use a PostgreSQL dialect:
>>> from sqlalchemy.dialects import postgresql
>>> print(insert_stmt.compile(dialect=postgresql.dialect()))
INSERT INTO my_table (x) VALUES (%(x)s) ON CONFLICT (y) DO NOTHING
For an ORM Query
object, the statement can be accessed using the
Query.statement
accessor:
statement = query.statement
print(statement.compile(dialect=postgresql.dialect()))
See the FAQ link below for additional detail on direct stringification / compilation of SQL elements.
TypeError: <operator> not supported between instances of ‘ColumnProperty’ and <something>¶
This often occurs when attempting to use a column_property()
or
deferred()
object in the context of a SQL expression, usually within
declarative such as:
class Bar(Base):
__tablename__ = 'bar'
id = Column(Integer, primary_key=True)
cprop = deferred(Column(Integer))
__table_args__ = (
CheckConstraint(cprop > 5),
)
Above, the cprop
attribute is used inline before it has been mapped,
however this cprop
attribute is not a Column
,
it’s a ColumnProperty
, which is an interim object and therefore
does not have the full functionality of either the Column
object
or the InstrumentedAttribute
object that will be mapped onto the
Bar
class once the declarative process is complete.
While the ColumnProperty
does have a __clause_element__()
method,
which allows it to work in some column-oriented contexts, it can’t work in an
open-ended comparison context as illustrated above, since it has no Python
__eq__()
method that would allow it to interpret the comparison to the
number “5” as a SQL expression and not a regular Python comparison.
The solution is to access the Column
directly using the
ColumnProperty.expression
attribute:
class Bar(Base):
__tablename__ = 'bar'
id = Column(Integer, primary_key=True)
cprop = deferred(Column(Integer))
__table_args__ = (
CheckConstraint(cprop.expression > 5),
)
This Compiled object is not bound to any Engine or Connection¶
This error refers to the concept of “bound metadata”, described at
Connectionless Execution, Implicit Execution. The issue occurs when one invokes the
Executable.execute()
method directly off of a Core expression object
that is not associated with any Engine
:
metadata = MetaData()
table = Table('t', metadata, Column('q', Integer))
stmt = select([table])
result = stmt.execute() # <--- raises
What the logic is expecting is that the MetaData
object has
been bound to a Engine
:
engine = create_engine("mysql+pymysql://user:pass@host/db")
metadata = MetaData(bind=engine)
Where above, any statement that derives from a Table
which
in turn derives from that MetaData
will implicitly make use of
the given Engine
in order to invoke the statement.
Note that the concept of bound metadata is a legacy pattern and in most
cases is highly discouraged. The best way to invoke the statement is
to pass it to the Connection.execute()
method of a Connection
:
with engine.connect() as conn:
result = conn.execute(stmt)
When using the ORM, a similar facility is available via the Session
:
result = session.execute(stmt)
A value is required for bind parameter <x> (in parameter group <y>)¶
This error occurs when a statement makes use of bindparam()
either
implicitly or explicitly and does not provide a value when the statement
is executed:
stmt = select([table.c.column]).where(table.c.id == bindparam('my_param'))
result = conn.execute(stmt)
Above, no value has been provided for the parameter “my_param”. The correct approach is to provide a value:
result = conn.execute(stmt, my_param=12)
When the message takes the form “a value is required for bind parameter <x> in parameter group <y>”, the message is referring to the “executemany” style of execution. In this case, the statement is typically an INSERT, UPDATE, or DELETE and a list of parameters is being passed. In this format, the statement may be generated dynamically to include parameter positions for every parameter given in the argument list, where it will use the first set of parameters to determine what these should be.
For example, the statement below is calculated based on the first parameter set to require the parameters, “a”, “b”, and “c” - these names determine the final string format of the statement which will be used for each set of parameters in the list. As the second entry does not contain “b”, this error is generated:
m = MetaData()
t = Table(
't', m,
Column('a', Integer),
Column('b', Integer),
Column('c', Integer)
)
e.execute(
t.insert(), [
{"a": 1, "b": 2, "c": 3},
{"a": 2, "c": 4},
{"a": 3, "b": 4, "c": 5},
]
)
sqlalchemy.exc.StatementError: (sqlalchemy.exc.InvalidRequestError)
A value is required for bind parameter 'b', in parameter group 1
[SQL: u'INSERT INTO t (a, b, c) VALUES (?, ?, ?)']
[parameters: [{'a': 1, 'c': 3, 'b': 2}, {'a': 2, 'c': 4}, {'a': 3, 'c': 5, 'b': 4}]]
Since “b” is required, pass it as None
so that the INSERT may proceed:
e.execute(
t.insert(), [
{"a": 1, "b": 2, "c": 3},
{"a": 2, "b": None, "c": 4},
{"a": 3, "b": 4, "c": 5},
]
)
Object Relational Mapping¶
Parent instance <x> is not bound to a Session; (lazy load/deferred load/refresh/etc.) operation cannot proceed¶
This is likely the most common error message when dealing with the ORM, and it occurs as a result of the nature of a technique the ORM makes wide use of known as lazy loading. Lazy loading is a common object-relational pattern whereby an object that’s persisted by the ORM maintains a proxy to the database itself, such that when various attributes upon the object are accessed, their value may be retrieved from the database lazily. The advantage to this approach is that objects can be retrieved from the database without having to load all of their attributes or related data at once, and instead only that data which is requested can be delivered at that time. The major disadvantage is basically a mirror image of the advantage, which is that if lots of objects are being loaded which are known to require a certain set of data in all cases, it is wasteful to load that additional data piecemeal.
Another caveat of lazy loading beyond the usual efficiency concerns is that
in order for lazy loading to proceed, the object has to remain associated
with a Session in order to be able to retrieve its state. This error message
means that an object has become de-associated with its Session
and
is being asked to lazy load data from the database.
The most common reason that objects become detached from their Session
is that the session itself was closed, typically via the Session.close()
method. The objects will then live on to be accessed further, very often
within web applications where they are delivered to a server-side templating
engine and are asked for further attributes which they cannot load.
Mitigation of this error is via two general techniques:
Don’t close the session prematurely - Often, applications will close out a transaction before passing off related objects to some other system which then fails due to this error. Sometimes the transaction doesn’t need to be closed so soon; an example is the web application closes out the transaction before the view is rendered. This is often done in the name of “correctness”, but may be seen as a mis-application of “encapsulation”, as this term refers to code organization, not actual actions. The template that uses an ORM object is making use of the proxy pattern which keeps database logic encapsulated from the caller. If the
Session
can be held open until the lifespan of the objects are done, this is the best approach.Load everything that’s needed up front - It is very often impossible to keep the transaction open, especially in more complex applications that need to pass objects off to other systems that can’t run in the same context even though they’re in the same process. In this case, the application should try to make appropriate use of eager loading to ensure that objects have what they need up front.
When using this approach, it is usually necessary that the
Session.expire_on_commit
parameter be set toFalse
, so that after aSession.commit()
operation, the objects within the session aren’t expired, which would incur a lazy load if their attributes were subsequently accessed. Additionally, theSession.rollback()
method unconditionally expires all contents in theSession
and should also be avoided in non-error scenarios.See also
Relationship Loading Techniques - detailed documentation on eager loading and other relationship-oriented loading techniques
Committing - background on session commit
Refreshing / Expiring - background on attribute expiry
This Session’s transaction has been rolled back due to a previous exception during flush¶
The flush process of the Session
, described at
Flushing, will roll back the database transaction if an error is
encountered, in order to maintain internal consistency. However, once this
occurs, the session’s transaction is now “inactive” and must be explicitly
rolled back by the calling application, in the same way that it would otherwise
need to be explicitly committed if a failure had not occurred.
This is a common error when using the ORM and typically applies to an
application that doesn’t yet have correct “framing” around its
Session
operations. Further detail is described in the FAQ at
“This Session’s transaction has been rolled back due to a previous exception during flush.” (or similar).
For relationship <relationship>, delete-orphan cascade is normally configured only on the “one” side of a one-to-many relationship, and not on the “many” side of a many-to-one or many-to-many relationship.¶
This error arises when the “delete-orphan” cascade is set on a many-to-one or many-to-many relationship, such as:
class A(Base):
__tablename__ = "a"
id = Column(Integer, primary_key=True)
bs = relationship("B", back_populates="a")
class B(Base):
__tablename__ = "b"
id = Column(Integer, primary_key=True)
a_id = Column(ForeignKey("a.id"))
# this will emit the error message when the mapper
# configuration step occurs
a = relationship("A", back_populates="bs", cascade="all, delete-orphan")
configure_mappers()
Above, the “delete-orphan” setting on B.a
indicates the intent that
when every B
object that refers to a particular A
is deleted, that the
A
should then be deleted as well. That is, it expresses that the “orphan”
which is being deleted would be an A
object, and it becomes an “orphan”
when every B
that refers to it is deleted.
The “delete-orphan” cascade model does not support this functionality. The “orphan” consideration is only made in terms of the deletion of a single object which would then refer to zero or more objects that are now “orphaned” by this single deletion, which would result in those objects being deleted as well. In other words, it is designed only to track the creation of “orphans” based on the removal of one and only one “parent” object per orphan, which is the natural case in a one-to-many relationship where a deletion of the object on the “one” side results in the subsequent deletion of the related items on the “many” side.
The above mapping in support of this functionality would instead place the cascade setting on the one-to-many side, which looks like:
class A(Base):
__tablename__ = "a"
id = Column(Integer, primary_key=True)
bs = relationship("B", back_populates="a", cascade="all, delete-orphan")
class B(Base):
__tablename__ = "b"
id = Column(Integer, primary_key=True)
a_id = Column(ForeignKey("a.id"))
a = relationship("A", back_populates="bs")
Where the intent is expressed that when an A
is deleted, all of the
B
objects to which it refers are also deleted.
The error message then goes on to suggest the usage of the
relationship.single_parent
flag. This flag may be used
to enforce that a relationship which is capable of having many objects
refer to a particular object will in fact have only one object referring
to it at a time. It is used for legacy or other less ideal
database schemas where the foreign key relationships suggest a “many”
collection, however in practice only one object would actually refer
to a given target object at at time. This uncommon scenario
can be demonstrated in terms of the above example as follows:
class A(Base):
__tablename__ = "a"
id = Column(Integer, primary_key=True)
bs = relationship("B", back_populates="a")
class B(Base):
__tablename__ = "b"
id = Column(Integer, primary_key=True)
a_id = Column(ForeignKey("a.id"))
a = relationship(
"A",
back_populates="bs",
single_parent=True,
cascade="all, delete-orphan",
)
The above configuration will then install a validator which will enforce
that only one B
may be associated with an A
at at time, within
the scope of the B.a
relationship:
>>> b1 = B()
>>> b2 = B()
>>> a1 = A()
>>> b1.a = a1
>>> b2.a = a1
sqlalchemy.exc.InvalidRequestError: Instance <A at 0x7eff44359350> is
already associated with an instance of <class '__main__.B'> via its
B.a attribute, and is only allowed a single parent.
Note that this validator is of limited scope and will not prevent multiple
“parents” from being created via the other direction. For example, it will
not detect the same setting in terms of A.bs
:
>>> a1.bs = [b1, b2]
>>> session.add_all([a1, b1, b2])
>>> session.commit()
INSERT INTO a DEFAULT VALUES
()
INSERT INTO b (a_id) VALUES (?)
(1,)
INSERT INTO b (a_id) VALUES (?)
(1,)
However, things will not go as expected later on, as the “delete-orphan” cascade
will continue to work in terms of a single lead object, meaning if we
delete either of the B
objects, the A
is deleted. The other B
stays
around, where the ORM will usually be smart enough to set the foreign key attribute
to NULL, but this is usually not what’s desired:
>>> session.delete(b1)
>>> session.commit()
UPDATE b SET a_id=? WHERE b.id = ?
(None, 2)
DELETE FROM b WHERE b.id = ?
(1,)
DELETE FROM a WHERE a.id = ?
(1,)
COMMIT
For all the above examples, similar logic applies to the calculus of a many-to-many relationship; if a many-to-many relationship sets single_parent=True on one side, that side can use the “delete-orphan” cascade, however this is very unlikely to be what someone actually wants as the point of a many-to-many relationship is so that there can be many objects referring to an object in either direction.
Overall, “delete-orphan” cascade is usually applied on the “one” side of a one-to-many relationship so that it deletes objects in the “many” side, and not the other way around.
Changed in version 1.3.18: The text of the “delete-orphan” error message when used on a many-to-one or many-to-many relationship has been updated to be more descriptive.
Instance <instance> is already associated with an instance of <instance> via its <attribute> attribute, and is only allowed a single parent.¶
This error is emitted when the relationship.single_parent
flag
is used, and more than one object is assigned as the “parent” of an object at
once.
Given the following mapping:
class A(Base):
__tablename__ = "a"
id = Column(Integer, primary_key=True)
class B(Base):
__tablename__ = "b"
id = Column(Integer, primary_key=True)
a_id = Column(ForeignKey("a.id"))
a = relationship(
"A",
single_parent=True,
cascade="all, delete-orphan",
)
The intent indicates that no more than a single B
object may refer
to a particular A
object at once:
>>> b1 = B()
>>> b2 = B()
>>> a1 = A()
>>> b1.a = a1
>>> b2.a = a1
sqlalchemy.exc.InvalidRequestError: Instance <A at 0x7eff44359350> is
already associated with an instance of <class '__main__.B'> via its
B.a attribute, and is only allowed a single parent.
When this error occurs unexpectedly, it is usually because the
relationship.single_parent
flag was applied in response
to the error message described at For relationship <relationship>, delete-orphan cascade is normally configured only on the “one” side of a one-to-many relationship, and not on the “many” side of a many-to-one or many-to-many relationship., and the issue is in
fact a misunderstanding of the “delete-orphan” cascade setting. See that
message for details.
Core Exception Classes¶
See Core Exceptions for Core exception classes.
ORM Exception Classes¶
See ORM Exceptions for ORM exception classes.