Django has some good automatic serialization of ORM models returned from DB to JSON format.

How to serialize SQLAlchemy query result to JSON format?

I tried jsonpickle.encode but it encodes query object itself. I tried json.dumps(items) but it returns

TypeError: <Product('3', 'some name', 'some desc')> is not JSON serializable

Is it really so hard to serialize SQLAlchemy ORM objects to JSON /XML? Isn't there any default serializer for it? It's very common task to serialize ORM query results nowadays.

What I need is just to return JSON or XML data representation of SQLAlchemy query result.

SQLAlchemy objects query result in JSON/XML format is needed to be used in javascript datagird (JQGrid http://www.trirand.com/blog/)

  • This is a workaround that works for me. enter link description here
    – octaedro
    Oct 20, 2019 at 13:37
  • I must warn you that serializing many sqlalchemy models (such as a list of them) will be very slow. If you care about performance, select dictionaries instead.
    – kolypto
    Jan 9, 2021 at 21:54
  • stackoverflow.com/a/58660606/2782670
    – bgth
    Dec 27, 2021 at 20:17
  • On table models create a wrapper and in it define the to_dict method and write the coloumn data you want to serialize and use this wrapper to get the data from the database Jan 21, 2022 at 0:18

37 Answers 37


You could just output your object as a dictionary:

class User:
   def as_dict(self):
       return {c.name: getattr(self, c.name) for c in self.__table__.columns}

And then you use User.as_dict() to serialize your object.

As explained in Convert sqlalchemy row object to python dict

  • 5
    @charlax, How'd I fix a DateTime? By using this I get 'datetime.datetime(2013, 3, 22, 16, 50, 11) is not JSON serializable' when I do json.dumps
    – Asken
    Mar 22, 2013 at 16:07
  • 3
    If you use sqlalchemy's "declarative" method you can add something like this to a custom Base class - this is pretty handy as you can then call my_orm_object.toDict() on any ORM object you have. Similarly you can define a .toJSON() method which uses your toDict method and a custom encoder for handling dates, blobs etc
    – FredL
    Apr 15, 2013 at 10:17
  • 8
    to also support datetime: return {c.name: unicode(getattr(self, c.name)) for c in self.__table__.columns}
    – Shoham
    May 22, 2016 at 8:23
  • 2
    This doesn't work if your class variables are not the same as your column names. Any idea how to get the class names instead? Dec 16, 2016 at 20:34
  • 4
    For Python 3 users, @Shoham's answer needs a small change: return {c.name: str(getattr(self, c.name)) for c in self.__table__.columns} Mar 3, 2020 at 15:58

Python 3.7+ and Flask 1.1+ can use the built-in dataclasses package

from dataclasses import dataclass
from datetime import datetime
from flask import Flask, jsonify
from flask_sqlalchemy import SQLAlchemy

app = Flask(__name__)
db = SQLAlchemy(app)

class User(db.Model):
  id: int
  email: str

  id = db.Column(db.Integer, primary_key=True, auto_increment=True)
  email = db.Column(db.String(200), unique=True)

def users():
  users = User.query.all()
  return jsonify(users)  

if __name__ == "__main__":
  users = User(email="[email protected]"), User(email="[email protected]")

The /users/ route will now return a list of users.

  {"email": "[email protected]", "id": 1},
  {"email": "[email protected]", "id": 2}

Auto-serialize related models

class Account(db.Model):
  id: int
  users: User

  id = db.Column(db.Integer)
  users = db.relationship(User)  # User model would need a db.ForeignKey field

The response from jsonify(account) would be this.

         "email":"[email protected]",
         "email":"[email protected]",

Overwrite the default JSON Encoder

from flask.json import JSONEncoder

class CustomJSONEncoder(JSONEncoder):
  "Add support for serializing timedeltas"

  def default(o):
    if type(o) == datetime.timedelta:
      return str(o)
    if type(o) == datetime.datetime:
      return o.isoformat()
    return super().default(o)

app.json_encoder = CustomJSONEncoder      
  • 2
    This looks like the right kind of simple. Does it also work for deserialization?
    – Ender2050
    Sep 4, 2019 at 3:43
  • 24
    Note that id: int = Column will work, but id = Column won't, it seem like YOU HAVE TO declare static typing for the json to serialized the field, otherwise you get an empty {} object. Oct 10, 2019 at 12:50
  • 3
    This worked for me, why isn't this the accepted answer? I have been playing around app_context for hours to to get this to work with Flask-Marshmallow. Nov 9, 2019 at 0:15
  • 2
    Worked for me as well. Note that if you're on Python 3.6, you'll want to just install the package: pipenv install dataclasses. And then it'll work just fine. May 25, 2020 at 14:00
  • 3
    Nice. Aside, for related models: given the need for a true class in users: User, I could not find a way to also use the reverse relation, from User to Account, without running into circular dependencies. (I assume that preventing circular dependencies may also be why SQLAlchemy supports string values for class names in, e.g., users = db.relationship('User', back_populates = 'accounts'). But that won't help while declaring the attributes, where User would then need some accounts: Account attribute.)
    – Arjan
    Sep 11, 2020 at 9:58

A flat implementation

You could use something like this:

from sqlalchemy.ext.declarative import DeclarativeMeta

class AlchemyEncoder(json.JSONEncoder):

    def default(self, obj):
        if isinstance(obj.__class__, DeclarativeMeta):
            # an SQLAlchemy class
            fields = {}
            for field in [x for x in dir(obj) if not x.startswith('_') and x != 'metadata']:
                data = obj.__getattribute__(field)
                    json.dumps(data) # this will fail on non-encodable values, like other classes
                    fields[field] = data
                except TypeError:
                    fields[field] = None
            # a json-encodable dict
            return fields

        return json.JSONEncoder.default(self, obj)

and then convert to JSON using:

c = YourAlchemyClass()
print json.dumps(c, cls=AlchemyEncoder)

It will ignore fields that are not encodable (set them to 'None').

It doesn't auto-expand relations (since this could lead to self-references, and loop forever).

A recursive, non-circular implementation

If, however, you'd rather loop forever, you could use:

from sqlalchemy.ext.declarative import DeclarativeMeta

def new_alchemy_encoder():
    _visited_objs = []

    class AlchemyEncoder(json.JSONEncoder):
        def default(self, obj):
            if isinstance(obj.__class__, DeclarativeMeta):
                # don't re-visit self
                if obj in _visited_objs:
                    return None

                # an SQLAlchemy class
                fields = {}
                for field in [x for x in dir(obj) if not x.startswith('_') and x != 'metadata']:
                    fields[field] = obj.__getattribute__(field)
                # a json-encodable dict
                return fields

            return json.JSONEncoder.default(self, obj)

    return AlchemyEncoder

And then encode objects using:

print json.dumps(e, cls=new_alchemy_encoder(), check_circular=False)

This would encode all children, and all their children, and all their children... Potentially encode your entire database, basically. When it reaches something its encoded before, it will encode it as 'None'.

A recursive, possibly-circular, selective implementation

Another alternative, probably better, is to be able to specify the fields you want to expand:

def new_alchemy_encoder(revisit_self = False, fields_to_expand = []):
    _visited_objs = []

    class AlchemyEncoder(json.JSONEncoder):
        def default(self, obj):
            if isinstance(obj.__class__, DeclarativeMeta):
                # don't re-visit self
                if revisit_self:
                    if obj in _visited_objs:
                        return None

                # go through each field in this SQLalchemy class
                fields = {}
                for field in [x for x in dir(obj) if not x.startswith('_') and x != 'metadata']:
                    val = obj.__getattribute__(field)

                    # is this field another SQLalchemy object, or a list of SQLalchemy objects?
                    if isinstance(val.__class__, DeclarativeMeta) or (isinstance(val, list) and len(val) > 0 and isinstance(val[0].__class__, DeclarativeMeta)):
                        # unless we're expanding this field, stop here
                        if field not in fields_to_expand:
                            # not expanding this field: set it to None and continue
                            fields[field] = None

                    fields[field] = val
                # a json-encodable dict
                return fields

            return json.JSONEncoder.default(self, obj)

    return AlchemyEncoder

You can now call it with:

print json.dumps(e, cls=new_alchemy_encoder(False, ['parents']), check_circular=False)

To only expand SQLAlchemy fields called 'parents', for example.

  • that's a great response, however I get a "could not encode "BaseQuery" whenever it hits a relationship with the non-flat methods, any ideas?
    – Ben Kilah
    Nov 4, 2013 at 23:29
  • 1
    @SashaB How about targeting more granularly against cases where a relationship is repeated? For example, if I have online_order and address, both with a relationship to user, but online_order also has an relationship to address. If I wanted to serialize all of this, I'd have to include address in the fields_to_expand, but I wouldn't want to redundantly serialize address due to its relationship to both user and online_order.
    – Chrispy
    Jan 28, 2015 at 22:11
  • 2
    @BenKilah Let me guess, you're using Flask-SqlAlchemy and your models are inheriting from db.Model, not Base. If that's the case, modify for field in [x for x in dir(obj) if not x.startswith('_') and x != 'metadata']: so that it reads for field in [x for x in dir(obj) if not x.startswith('_') and x != 'metadata' and not x.startswith('query')]:. Keep in mind this solution will prevent you from having a property/relationship with the name 'query'
    – Pakman
    Mar 6, 2015 at 23:59
  • same way like I did, but much more complex. stackoverflow.com/questions/7102754/…
    – user4985526
    Jun 2, 2016 at 7:46
  • 2
    You can use my solution github.com/n0nSmoker/SQLAlchemy-serializer
    – n0nSmoker
    Dec 26, 2017 at 10:31

You can convert a RowProxy to a dict like this:

 d = dict(row.items())

Then serialize that to JSON ( you will have to specify an encoder for things like datetime values ) It's not that hard if you just want one record ( and not a full hierarchy of related records ).

json.dumps([(dict(row.items())) for row in rs])
  • 1
    This works for my custom sql query with db.engine.connect() as con: rs = con.execute(sql)
    – JZ.
    Oct 21, 2016 at 20:27
  • 1
    This is much more simple and works. What is the difference between this answer and the accepted answer?
    – Sundeep
    Aug 23, 2018 at 13:24

I recommend using marshmallow. It allows you to create serializers to represent your model instances with support to relations and nested objects.

Here is a truncated example from their docs. Take the ORM model, Author:

class Author(db.Model):
    id = db.Column(db.Integer, primary_key=True)
    first = db.Column(db.String(80))
    last = db.Column(db.String(80))

A marshmallow schema for that class is constructed like this:

class AuthorSchema(Schema):
    id = fields.Int(dump_only=True)
    first = fields.Str()
    last = fields.Str()
    formatted_name = fields.Method("format_name", dump_only=True)

    def format_name(self, author):
        return "{}, {}".format(author.last, author.first)

...and used like this:

author_schema = AuthorSchema()

...would produce an output like this:

        "first": "Tim",
        "formatted_name": "Peters, Tim",
        "id": 1,
        "last": "Peters"

Have a look at their full Flask-SQLAlchemy Example.

A library called marshmallow-sqlalchemy specifically integrates SQLAlchemy and marshmallow. In that library, the schema for the Author model described above looks like this:

class AuthorSchema(ModelSchema):
    class Meta:
        model = Author

The integration allows the field types to be inferred from the SQLAlchemy Column types.

marshmallow-sqlalchemy here.


You can use introspection of SqlAlchemy as this :

mysql = SQLAlchemy()
from sqlalchemy import inspect

class Contacts(mysql.Model):  
    __tablename__ = 'CONTACTS'
    id = mysql.Column(mysql.Integer, primary_key=True)
    first_name = mysql.Column(mysql.String(128), nullable=False)
    last_name = mysql.Column(mysql.String(128), nullable=False)
    phone = mysql.Column(mysql.String(128), nullable=False)
    email = mysql.Column(mysql.String(128), nullable=False)
    street = mysql.Column(mysql.String(128), nullable=False)
    zip_code = mysql.Column(mysql.String(128), nullable=False)
    city = mysql.Column(mysql.String(128), nullable=False)
    def toDict(self):
        return { c.key: getattr(self, c.key) for c in inspect(self).mapper.column_attrs }

def getContacts():
    contacts = Contacts.query.all()
    contactsArr = []
    for contact in contacts:
    return jsonify(contactsArr)

def getContact(id):
    contact = Contacts.query.get(id)
    return jsonify(contact.toDict())

Get inspired from an answer here : Convert sqlalchemy row object to python dict

  • In terms of minimal solutions, I combined the toDict() above with tom's CustomJSONEncoder (note slight modifications) to get datetimes into ISO format. Ah the power of stack overflow!
    – Bill Gale
    Oct 9, 2020 at 2:30
  • i found the magic ingredient in this piece of code contact.toDict()
    – kamasuPaul
    May 3, 2022 at 6:48

For security reasons you should never return all the model's fields. I prefer to selectively choose them.

Flask's json encoding now supports UUID, datetime and relationships (and added query and query_class for flask_sqlalchemy db.Model class). I've updated the encoder as follows:


    from sqlalchemy.ext.declarative import DeclarativeMeta
    from flask import json

    class AlchemyEncoder(json.JSONEncoder):
        def default(self, o):
            if isinstance(o.__class__, DeclarativeMeta):
                data = {}
                fields = o.__json__() if hasattr(o, '__json__') else dir(o)
                for field in [f for f in fields if not f.startswith('_') and f not in ['metadata', 'query', 'query_class']]:
                    value = o.__getattribute__(field)
                        data[field] = value
                    except TypeError:
                        data[field] = None
                return data
            return json.JSONEncoder.default(self, o)


# json encoding
from app.json_encoder import AlchemyEncoder
app.json_encoder = AlchemyEncoder

With this I can optionally add a __json__ property that returns the list of fields I wish to encode:


class Queue(db.Model):
    id = db.Column(db.Integer, primary_key=True)
    song_id = db.Column(db.Integer, db.ForeignKey('song.id'), unique=True, nullable=False)
    song = db.relationship('Song', lazy='joined')
    type = db.Column(db.String(20), server_default=u'audio/mpeg')
    src = db.Column(db.String(255), nullable=False)
    created_at = db.Column(db.DateTime, server_default=db.func.now())
    updated_at = db.Column(db.DateTime, server_default=db.func.now(), onupdate=db.func.now())

    def __init__(self, song):
        self.song = song
        self.src = song.full_path

    def __json__(self):
        return ['song', 'src', 'type', 'created_at']

I add @jsonapi to my view, return the resultlist and then my output is as follows:



    "created_at": "Thu, 23 Jul 2015 11:36:53 GMT",

            "full_path": "/static/music/Audioslave/Audioslave [2002]/1 Cochise.mp3",
            "id": 2,
            "path_name": "Audioslave/Audioslave [2002]/1 Cochise.mp3"
    "src": "/static/music/Audioslave/Audioslave [2002]/1 Cochise.mp3",
    "type": "audio/mpeg"

  • Beautiful! Once again, proof that sometimes you don't need a fat package for every stupid little task--that learning DSL can be harder than doing it the "hard" way. I looked at many many JSON and REST packages before landing here. True, this still requires a package, flask_jsontools (to add @jsonapi to @app.route in views.py etc), but I love the simplicity of it. I think it is cheap Flask added datetime but not date so I added it myself to json_encoder.py: value=...^if isinstance(value, date):^data[field] = datetime.combine(value, time.min).isoformat()^else:^try:...
    – juanitogan
    Feb 14, 2016 at 2:52

Here's one way to make your SqlAlchemy objects serializable: implement a custom JSONEncoder and add it to the base class:


from sqlalchemy.ext.declarative import declarative_base
from flask.ext.jsontools import JsonSerializableBase

Base = declarative_base(cls=(DynamicJSONEncoder,))

class User(Base):

Now the User model is magically serializable.

Here's one way to implement a custom JSONEncoder: it will allow you to customize how an instance is represented in JSON by implementing the __json__() method:

from flask.json import JSONEncoder

class DynamicJSONEncoder(JSONEncoder):
    """ JSON encoder for custom classes:

        Uses __json__() method if available to prepare the object.
        Especially useful for SQLAlchemy models

    def default(self, o):
        # Custom JSON-encodeable objects
        if hasattr(o, '__json__'):
            return o.__json__()

        # Default
        return super().default(o)
  • 2
    This only solves half the problem, as it only serializes a single row. How to serialize the whole query result? Oct 22, 2014 at 1:28
  • @SteveBennett use the jsontools' jsonapi to encode the response. That will automatically encode the return object Jul 21, 2015 at 13:47
  • I have a very simple sqlalchemy model, and I'm getting: TypeError: <ORM.State object at 0x03577A50> is not JSON serializable
    – Matej
    Sep 16, 2015 at 19:41
  • 2
    It worked eventually by explicitly calling __json__() on my model object: return my_object.__json__()
    – Matej
    Sep 16, 2015 at 19:49
  • 1
    @Matej and others! please add this to your flask app.py file: app.json_encoder = DynamicJSONEncoder now, you can return your models directly without using __json__()!
    – shaioz
    Apr 26, 2023 at 21:10

A more detailed explanation. In your model, add:

def as_dict(self):
       return {c.name: str(getattr(self, c.name)) for c in self.__table__.columns}

The str() is for python 3 so if using python 2 use unicode(). It should help deserialize dates. You can remove it if not dealing with those.

You can now query the database like this

some_result = User.query.filter_by(id=current_user.id).first().as_dict()

First() is needed to avoid weird errors. as_dict() will now deserialize the result. After deserialization, it is ready to be turned to json

  • it will raise an error if id has uuid type! Dec 7, 2023 at 14:37

While the original question goes back awhile, the number of answers here (and my own experiences) suggest it's a non-trivial question with a lot of different approaches of varying complexity with different trade-offs.

That's why I built the SQLAthanor library that extends SQLAlchemy's declarative ORM with configurable serialization/de-serialization support that you might want to take a look at.

The library supports:

  • Python 2.7, 3.4, 3.5, and 3.6.
  • SQLAlchemy versions 0.9 and higher
  • serialization/de-serialization to/from JSON, CSV, YAML, and Python dict
  • serialization/de-serialization of columns/attributes, relationships, hybrid properties, and association proxies
  • enabling and disabling of serialization for particular formats and columns/relationships/attributes (e.g. you want to support an inbound password value, but never include an outbound one)
  • pre-serialization and post-deserialization value processing (for validation or type coercion)
  • a pretty straightforward syntax that is both Pythonic and seamlessly consistent with SQLAlchemy's own approach

You can check out the (I hope!) comprehensive docs here: https://sqlathanor.readthedocs.io/en/latest

Hope this helps!


Custom serialization and deserialization.

"from_json" (class method) builds a Model object based on json data.

"deserialize" could be called only on instance, and merge all data from json into Model instance.

"serialize" - recursive serialization

__write_only__ property is needed to define write only properties ("password_hash" for example).

class Serializable(object):
    __exclude__ = ('id',)
    __include__ = ()
    __write_only__ = ()

    def from_json(cls, json, selfObj=None):
        if selfObj is None:
            self = cls()
            self = selfObj
        exclude = (cls.__exclude__ or ()) + Serializable.__exclude__
        include = cls.__include__ or ()
        if json:
            for prop, value in json.iteritems():
                # ignore all non user data, e.g. only
                if (not (prop in exclude) | (prop in include)) and isinstance(
                        getattr(cls, prop, None), QueryableAttribute):
                    setattr(self, prop, value)
        return self

    def deserialize(self, json):
        if not json:
            return None
        return self.__class__.from_json(json, selfObj=self)

    def serialize_list(cls, object_list=[]):
        output = []
        for li in object_list:
            if isinstance(li, Serializable):
        return output

    def serialize(self, **kwargs):

        # init write only props
        if len(getattr(self.__class__, '__write_only__', ())) == 0:
            self.__class__.__write_only__ = ()
        dictionary = {}
        expand = kwargs.get('expand', ()) or ()
        prop = 'props'
        if expand:
            # expand all the fields
            for key in expand:
                getattr(self, key)
        iterable = self.__dict__.items()
        is_custom_property_set = False
        # include only properties passed as parameter
        if (prop in kwargs) and (kwargs.get(prop, None) is not None):
            is_custom_property_set = True
            iterable = kwargs.get(prop, None)
        # loop trough all accessible properties
        for key in iterable:
            accessor = key
            if isinstance(key, tuple):
                accessor = key[0]
            if not (accessor in self.__class__.__write_only__) and not accessor.startswith('_'):
                # force select from db to be able get relationships
                if is_custom_property_set:
                    getattr(self, accessor, None)
                if isinstance(self.__dict__.get(accessor), list):
                    dictionary[accessor] = self.__class__.serialize_list(object_list=self.__dict__.get(accessor))
                # check if those properties are read only
                elif isinstance(self.__dict__.get(accessor), Serializable):
                    dictionary[accessor] = self.__dict__.get(accessor).serialize()
                    dictionary[accessor] = self.__dict__.get(accessor)
        return dictionary

Use the built-in serializer in SQLAlchemy:

from sqlalchemy.ext.serializer import loads, dumps
obj = MyAlchemyObject()
# serialize object
serialized_obj = dumps(obj)

# deserialize object
obj = loads(serialized_obj)

If you're transferring the object between sessions, remember to detach the object from the current session using session.expunge(obj). To attach it again, just do session.add(obj).

  • Nifty, but does not convert to JSON.
    – blakev
    Dec 20, 2016 at 21:03
  • 2
    For JSON 'serialization' check out marshmallow-sqlalchemy. Definitely the best solution when you're exposing objects to clients. marshmallow-sqlalchemy.readthedocs.io
    – chribsen
    Dec 21, 2016 at 22:44
  • The serializer module is only appropriate for query structures. It is not needed for: instances of user-defined classes. These contain no references to engines, sessions or expression constructs in the typical case and can be serialized directly.
    – thomasd
    Jan 17, 2018 at 9:35

Here is a solution that lets you select the relations you want to include in your output as deep as you would like to go. NOTE: This is a complete re-write taking a dict/str as an arg rather than a list. fixes some stuff..

def deep_dict(self, relations={}):
    """Output a dict of an SA object recursing as deep as you want.

    Takes one argument, relations which is a dictionary of relations we'd
    like to pull out. The relations dict items can be a single relation
    name or deeper relation names connected by sub dicts

        Say we have a Person object with a family relationship
        Say the family object has homes as a relation then we can do
        Say homes has a relation like rooms you can do
            and so on...
    mydict =  dict((c, str(a)) for c, a in
                    self.__dict__.items() if c != '_sa_instance_state')
    if not relations:
        # just return ourselves
        return mydict

    # otherwise we need to go deeper
    if not isinstance(relations, dict) and not isinstance(relations, str):
        raise Exception("relations should be a dict, it is of type {}".format(type(relations)))

    # got here so check and handle if we were passed a dict
    if isinstance(relations, dict):
        # we were passed deeper info
        for left, right in relations.items():
            myrel = getattr(self, left)
            if isinstance(myrel, list):
                mydict[left] = [rel.deep_dict(relations=right) for rel in myrel]
                mydict[left] = myrel.deep_dict(relations=right)
    # if we get here check and handle if we were passed a string
    elif isinstance(relations, str):
        # passed a single item
        myrel = getattr(self, relations)
        left = relations
        if isinstance(myrel, list):
            mydict[left] = [rel.deep_dict(relations=None)
                                 for rel in myrel]
            mydict[left] = myrel.deep_dict(relations=None)

    return mydict

so for an example using person/family/homes/rooms... turning it into json all you need is

  • This is fine I think to just put in your base class so that all objects will have it. I'll leave the json encoding to you...
    – tahoe
    Dec 18, 2016 at 0:24
  • Note that this version will get all list relations so be cautious providing relations with a ton of items...
    – tahoe
    Dec 19, 2016 at 19:35
class CNAME:
   def as_dict(self):
       return {item.name: getattr(self, item.name) for item in self.__table__.columns}

list = []
for data in session.query(CNAME).all():

return jsonify(list)
  • 5
    Code dumps without any explanation are rarely helpful. Stack Overflow is about learning, not providing snippets to blindly copy and paste. Please edit your question and explain how it works better than what the OP provided.
    – Chris
    May 11, 2020 at 19:20

Even though it's a old post, Maybe I didn't answer the question above, but I want to talk about my serialization, at least it works for me.

I use FastAPI,SqlAlchemy and MySQL, but I don't use orm model;

# from sqlalchemy import create_engine
# from sqlalchemy.orm import sessionmaker
# engine = create_engine(config.SQLALCHEMY_DATABASE_URL, pool_pre_ping=True)
# SessionLocal = sessionmaker(autocommit=False, autoflush=False, bind=engine)

Serialization code

import decimal
import datetime

def alchemy_encoder(obj):
    """JSON encoder function for SQLAlchemy special classes."""
    if isinstance(obj, datetime.date):
        return obj.strftime("%Y-%m-%d %H:%M:%S")
    elif isinstance(obj, decimal.Decimal):
        return float(obj)

import json
from sqlalchemy import text

# db is SessionLocal() object 

app_sql = 'SELECT * FROM app_info ORDER BY app_id LIMIT :page,:page_size'

# The next two are the parameters passed in
page = 1
page_size = 10

# execute sql and return a <class 'sqlalchemy.engine.result.ResultProxy'> object
app_list = db.execute(text(app_sql), {'page': page, 'page_size': page_size})

# serialize
res = json.loads(json.dumps([dict(r) for r in app_list], default=alchemy_encoder))

If it doesn't work, please ignore my answer. I refer to it here



install simplejson by pip install simplejson and the create a class

class Serialise(object):

    def _asdict(self):
        Serialization logic for converting entities using flask's jsonify

        :return: An ordered dictionary
        :rtype: :class:`collections.OrderedDict`

        result = OrderedDict()
        # Get the columns
        for key in self.__mapper__.c.keys():
            if isinstance(getattr(self, key), datetime):
                result["x"] = getattr(self, key).timestamp() * 1000
                result["timestamp"] = result["x"]
                result[key] = getattr(self, key)

        return result

and inherit this class to every orm classes so that this _asdict function gets registered to every ORM class and boom. And use jsonify anywhere


Python 3.7+ in 2023

You can add the dataclass decorator to your model and define a custom JSON serializer, then json.dumps will work (by providing the custom encoder to cls). In the example below, db_row is an instance of the DB class:

json.dumps(db_row, cls=models.CustomJSONEncoder)
{"id": 25, "name": "A component", "author": "Bob", "modified": "2023-02-08T11:49:15.675837"}

The custom JSON serializer can be easily modified to make it compatible with any type that isn't natively JSON serializable.


from datetime import datetime
import dataclasses
import json
from sqlalchemy import Column, Integer, String, DateTime
from database import Base

@dataclasses.dataclass # <<-- add this decorator 
class DB(Base):
    """Model used for SQLite database entries."""

    __tablename__ = "components"

    id: int = Column(Integer, primary_key=True, index=True)
    name: str = Column(String)
    author: str = Column(String)
    modified: datetime = Column(DateTime(timezone=True), default=datetime.utcnow)

class CustomJSONEncoder(json.JSONEncoder): # <<-- Add this custom encoder 
    """Custom JSON encoder for the DB class."""

    def default(self, o):
        if dataclasses.is_dataclass(o): # this serializes anything dataclass can handle  
            return dataclasses.asdict(o)
        if isinstance(o, datetime): # this adds support for datetime
            return o.isoformat()
        return super().default(o)

To further extend it for any non-serializable type you might use in your database, add another if statement to the custom encoder class that returns something serializable (e.g. str).


It is not so straighforward. I wrote some code to do this. I'm still working on it, and it uses the MochiKit framework. It basically translates compound objects between Python and Javascript using a proxy and registered JSON converters.

Browser side for database objects is db.js It needs the basic Python proxy source in proxy.js.

On the Python side there is the base proxy module. Then finally the SqlAlchemy object encoder in webserver.py. It also depends on metadata extractors found in the models.py file.

  • Quite complicated from the first glance... What I need - is to get SQLAlchemy objects query result in JSON/XML format to use it in javascript datagird (JQGrid trirand.com/blog)
    – Zelid
    Feb 16, 2011 at 22:33
  • Sometimes problems are more complicated than you exect at first glance... This handles objects returned as foreign keys, and tries to avoid the infinite recursion that happens with deeply nested relations. However, you could probably write some custom queries that return base types only and serialize those with simplejson directly.
    – Keith
    Feb 16, 2011 at 22:40
  • 1
    Right, maybe I'll really go with querying for dicts using SQLAlchemy and will use benefits of ORM performing save/update actions only.
    – Zelid
    Feb 16, 2011 at 22:54
def alc2json(row):
    return dict([(col, str(getattr(row,col))) for col in row.__table__.columns.keys()])

I thought I'd play a little code golf with this one.

FYI: I am using automap_base since we have a separately designed schema according to business requirements. I just started using SQLAlchemy today but the documentation states that automap_base is an extension to declarative_base which seems to be the typical paradigm in the SQLAlchemy ORM so I believe this should work.

It does not get fancy with following foreign keys per Tjorriemorrie's solution, but it simply matches columns to values and handles Python types by str()-ing the column values. Our values consist Python datetime.time and decimal.Decimal class type results so it gets the job done.

Hope this helps any passers-by!


I know this is quite an older post. I took solution given by @SashaB and modified as per my need.

I added following things to it:

  1. Field ignore list: A list of fields to be ignored while serializing
  2. Field replace list: A dictionary containing field names to be replaced by values while serializing.
  3. Removed methods and BaseQuery getting serialized

My code is as follows:

def alchemy_json_encoder(revisit_self = False, fields_to_expand = [], fields_to_ignore = [], fields_to_replace = {}):
   Serialize SQLAlchemy result into JSon
   :param revisit_self: True / False
   :param fields_to_expand: Fields which are to be expanded for including their children and all
   :param fields_to_ignore: Fields to be ignored while encoding
   :param fields_to_replace: Field keys to be replaced by values assigned in dictionary
   :return: Json serialized SQLAlchemy object
   _visited_objs = []
   class AlchemyEncoder(json.JSONEncoder):
      def default(self, obj):
        if isinstance(obj.__class__, DeclarativeMeta):
            # don't re-visit self
            if revisit_self:
                if obj in _visited_objs:
                    return None

            # go through each field in this SQLalchemy class
            fields = {}
            for field in [x for x in dir(obj) if not x.startswith('_') and x != 'metadata' and x not in fields_to_ignore]:
                val = obj.__getattribute__(field)
                # is this field method defination, or an SQLalchemy object
                if not hasattr(val, "__call__") and not isinstance(val, BaseQuery):
                    field_name = fields_to_replace[field] if field in fields_to_replace else field
                    # is this field another SQLalchemy object, or a list of SQLalchemy objects?
                    if isinstance(val.__class__, DeclarativeMeta) or \
                            (isinstance(val, list) and len(val) > 0 and isinstance(val[0].__class__, DeclarativeMeta)):
                        # unless we're expanding this field, stop here
                        if field not in fields_to_expand:
                            # not expanding this field: set it to None and continue
                            fields[field_name] = None

                    fields[field_name] = val
            # a json-encodable dict
            return fields

        return json.JSONEncoder.default(self, obj)
   return AlchemyEncoder

Hope it helps someone!


following code will serialize sqlalchemy result to json.

import json
from collections import OrderedDict

def asdict(self):
    result = OrderedDict()
    for key in self.__mapper__.c.keys():
        if getattr(self, key) is not None:
            result[key] = str(getattr(self, key))
            result[key] = getattr(self, key)
    return result

def to_array(all_vendors):
    v = [ ven.asdict() for ven in all_vendors ]
    return json.dumps(v) 

Calling fun,

def all_products():
    all_products = Products.query.all()
    return to_array(all_products)

The AlchemyEncoder is wonderful but sometimes fails with Decimal values. Here is an improved encoder that solves the decimal problem -

class AlchemyEncoder(json.JSONEncoder):
# To serialize SQLalchemy objects 
def default(self, obj):
    if isinstance(obj.__class__, DeclarativeMeta):
        model_fields = {}
        for field in [x for x in dir(obj) if not x.startswith('_') and x != 'metadata']:
            data = obj.__getattribute__(field)
            print data
                json.dumps(data)  # this will fail on non-encodable values, like other classes
                model_fields[field] = data
            except TypeError:
                model_fields[field] = None
        return model_fields
    if isinstance(obj, Decimal):
        return float(obj)
    return json.JSONEncoder.default(self, obj)

When using sqlalchemy to connect to a db I this is a simple solution which is highly configurable. Use pandas.

import pandas as pd
import sqlalchemy

#sqlalchemy engine configuration
engine = sqlalchemy.create_engine....

def my_function():
  #read in from sql directly into a pandas dataframe
  #check the pandas documentation for additional config options
  sql_DF = pd.read_sql_table("table_name", con=engine)

  # "orient" is optional here but allows you to specify the json formatting you require
  sql_json = sql_DF.to_json(orient="index")

  return sql_json


(Tiny tweak on Sasha B's really excellent answer)

This specifically converts datetime objects to strings which in the original answer would be converted to None:

# Standard library imports
from datetime import datetime
import json

# 3rd party imports
from sqlalchemy.ext.declarative import DeclarativeMeta

class JsonEncoder(json.JSONEncoder):
    def default(self, obj):
        if isinstance(obj.__class__, DeclarativeMeta):
            dict = {}

            # Remove invalid fields and just get the column attributes
            columns = [x for x in dir(obj) if not x.startswith("_") and x != "metadata"]

            for column in columns:
                value = obj.__getattribute__(column)

                    dict[column] = value
                except TypeError:
                    if isinstance(value, datetime):
                        dict[column] = value.__str__()
                        dict[column] = None
            return dict

        return json.JSONEncoder.default(self, obj)
class SqlToDict:
    def __init__(self, data) -> None:
        self.data = data

    def to_timestamp(self, date):
        if isinstance(date, datetime):
            return int(datetime.timestamp(date))
            return date

    def to_dict(self) -> List:
        arr = []
        for i in self.data:
            keys = [*i.keys()]
            values = [*i]
            values = [self.to_timestamp(d) for d in values]
            arr.append(dict(zip(keys, values)))
        return arr

For example:


Very late 2023

but Faster than json method with: O[n] and 2n space req

My implementation also supports Type Checking and ability to hide some attributes which can trim unnecessary data. and optional debug flag to inspect contents. uses python 3.10 walrus operator.

def obj_to_dict(obj, remove=['_sa_instance_state'], debug=False):
    result = {}

    if type(obj).__name__ == "Row":
        return dict(obj)

    for k in (obj := obj.__dict__):
        if k not in remove:
            result[key] = obj[k]

    print(result) if debug else None
    return result

Under Flask, this works and handles datatime fields, transforming a field of type
'time': datetime.datetime(2018, 3, 22, 15, 40) into
"time": "2018-03-22 15:40:00":

obj = {c.name: str(getattr(self, c.name)) for c in self.__table__.columns}

# This to get the JSON body
return json.dumps(obj)

# Or this to get a response object
return jsonify(obj)

The built in serializer chokes with utf-8 cannot decode invalid start byte for some inputs. Instead, I went with:

def row_to_dict(row):
    temp = row.__dict__
    temp.pop('_sa_instance_state', None)
    return temp

def rows_to_list(rows):
    ret_rows = []
    for row in rows:
    return ret_rows

@website_blueprint.route('/api/v1/some/endpoint', methods=['GET'])
def some_api():
    rows = rows_to_list(SomeModel.query.all())
    response = app.response_class(
    return response

Maybe you can use a class like this

from sqlalchemy.ext.declarative import declared_attr
from sqlalchemy import Table

class Custom:
    """Some custom logic here!"""

    __table__: Table  # def for mypy

    def __tablename__(cls):  # pylint: disable=no-self-argument
        return cls.__name__  # pylint: disable= no-member

    def to_dict(self) -> Dict[str, Any]:
        """Serializes only column data."""
        return {c.name: getattr(self, c.name) for c in self.__table__.columns}

Base = declarative_base(cls=Custom)

class MyOwnTable(Base):

With that all objects have the to_dict method


This is a JSONEncoder version that preserves model column order and only keeps recursively defined column and relationship fields. It also formats most JSON unserializable types:

import json
from datetime import datetime
from decimal import Decimal

import arrow
from sqlalchemy.ext.declarative import DeclarativeMeta

class SQLAlchemyJSONEncoder(json.JSONEncoder):
    SQLAlchemy ORM JSON Encoder
    If you have a "backref" relationship defined in your SQLAlchemy model,
    this encoder raises a ValueError to stop an infinite loop.

    def default(self, obj):
        if isinstance(obj, datetime):
            return arrow.get(obj).isoformat()
        elif isinstance(obj, Decimal):
            return float(obj)
        elif isinstance(obj, set):
            return sorted(obj)
        elif isinstance(obj.__class__, DeclarativeMeta):
            for attribute, relationship in obj.__mapper__.relationships.items():
                if isinstance(relationship.__getattribute__("backref"), tuple):
                    raise ValueError(
                        f'{obj.__class__} object has a "backref" relationship '
                        "that would cause an infinite loop!"
            dictionary = {}
            column_names = [column.name for column in obj.__table__.columns]
            for key in column_names:
                value = obj.__getattribute__(key)
                if isinstance(value, datetime):
                    value = arrow.get(value).isoformat()
                elif isinstance(value, Decimal):
                    value = float(value)
                elif isinstance(value, set):
                    value = sorted(value)
                dictionary[key] = value
            for key in [
                for attribute in dir(obj)
                if not attribute.startswith("_")
                and attribute != "metadata"
                and attribute not in column_names
                value = obj.__getattribute__(key)
                dictionary[key] = value
            return dictionary

        return super().default(obj)

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