I've been stuck trying to connect to an SQL Server using AWS Lambda functions for a long while now.

To do so i'm trying to use any library (tried with pyodbc, pypyodbc, etc), packaging everything into a zip file and uploading the code.

The code is pretty much the same for every library, but the errors are different.

The code:

import pypyodbc

def lambda_handler(event, context):
    conn = pypyodbc.connect('DRIVER={SQL Server};'

    cur = conn.cursor()

    cur.execute("SELECT * FROM Table")

    item_count = 0

    for row in cur:
        item_count += 1



    return item_count

Common issues that i have covered: - I'm adding to the zip the project contents, not the folder. - I'm also adding to the zip file the libraries needed for the code to run.

If i try to use pyodbc, the zip i'm uploading looks like this:

.idea (dir)
pyodbc (dir)

The error i get:

Unable to import module 'lambda_function': No module named pyodbc

After searching for quite a while about this, i couldn't find anything that helps. Only one comment that said that pyodbc needed to be instaled on a linux enviroment for the lambda function to work. But i don't have that Enviroment available, also i don't know if that will fix this.

If i try to use pypyodbc, the zip i'm uploading looks like this:


The error i get:

module initialization error: 'ODBC Library is not found. Is LD_LIBRARY_PATH set?'

For this one i tried to install multiple python packages suggested by other stackoverflow posts (python-pyodb, unixodbc), but i failed every time.

Then there was one comment around saying "Make sure to put native ODBC libraries under the lib folder in your zip deployment package"

Maybe that is some help? I don't know how to get native ODBC libraries..

Oh and one last thing. Both libraries work if i run them from my local machine. I can get access to the target server. It fails if i do it from the lambda function.

Hopefully someone can help me and, apparently, the whole internet with this.

  • 1
    you can create an ec2-instance and create the virtual env and install all your dependencies and zip them. and try to use that zip file to install. Dec 6, 2017 at 21:47
  • I will see if i can try that. That's the only approach left i have but i was trying to avoid it.. Thanks Usman. Dec 7, 2017 at 1:53
  • @EmilianoRodriguez I'm having the same issue. Is Usman Azhar's comment really what you had to resort to or is there a better way of doing it? Mar 14, 2018 at 17:00
  • I was in a project testing this functionality but we gave up trying to implement this method and moved to other things. If i remember correctly i was stuck trying to build the package to upload, but couldn't achieve that. My best attempt was to build the package on a linux machine. There's a new comment in this section from a few days ago, maybe you should check it out to see if it helps. Mar 19, 2018 at 16:26

3 Answers 3

  • you need to know Lambda copy your function in local /var/task/
  • create a instance using Lambda official AMI https://docs.aws.amazon.com/lambda/latest/dg/current-supported-versions.html
  • start instance, login
  • yum install gcc gcc-c++
  • go in to /home/ec2-user
  • Download the last unixodbc manager from: ftp://ftp.unixodbc.org/pub/unixODBC/
  • wget ftp://ftp.unixodbc.org/pub/unixODBC/unixODBC-2.3.5.tar.gz
  • tar xvzf unixODBC-2.3.5.tar.gz
  • cd unixODBC-2.3.5
  • configure it with the correct sysconfdir value

    ./configure --sysconfdir=/var/task --disable-gui --disable-drivers --enable-iconv --with-iconv-char-enc=UTF8 --with-iconv-ucode-enc=UTF16LE --prefix=/home

  • make install
  • Go to /home dir and copy bin,include,lib,share directory on your computer where the Lambda project is (ex: C:\AWS\Lambda\sql_query)
  • install on your EC2 instance the the Microsoft driver libmsodbcsql-13.1.so.9.1 and then copy the driver file on your PC local directory (ex: C:\AWS\Lambda\sql_query\msodbcsql\msodbcsql\lib64 )
  • Take a look https://blogs.msdn.microsoft.com/sqlnativeclient/2017/02/04/odbc-driver-13-1-for-linux-released/
  • On your computer, in the same root directory create file odbcinst.ini

[ODBC Driver 13 for SQL Server] Description=Microsoft ODBC Driver 13 for SQL Server Driver=/var/task/msodbcsql/msodbcsql/lib64/libmsodbcsql-13.1.so.9.1 UsageCount=1

  • On your computer, in the same root directory create file odbc.ini

    [ODBC Driver 13 for SQL Server] Driver = ODBC Driver 13 for SQL Server Description = My ODBC Driver 13 for SQL Server Trace = No

  • on your python program use pyodbc:

    import pyodbc def lambda_handler(event, context): server = "xxxxxxxxxxxxxxxxxxxx" database = "xxxxxxxxxxxxxxxxxxxx" username = "xxxxxxxxxxxxxxxxxxxx" password = "xxxxxxxxxxxxxxxxxxxx" cnxn = pyodbc.connect('DRIVER={ODBC Driver 13 for SQL Server};SERVER='+server+';DATABASE='+database+';UID='+username+';PWD='+ password) cursor = cnxn.cursor() ...other things....

  • and now play the game !


Here's a Python 3.9 solution that uses Docker and Lambda layers.

See this Github gist comment.

Based on:

  1. Create this Dockerfile:

    # Dockerfile
    FROM amazon/aws-lambda-python:3.9
    WORKDIR /root
    # Get development tools to enable compiling
    RUN yum -y update
    RUN yum -y groupinstall "Development Tools"
    # Get unixODBC and install it
    RUN yum -y install tar gzip
    RUN curl ftp://ftp.unixodbc.org/pub/unixODBC/unixODBC-2.3.11.tar.gz -O
    RUN tar xvzf unixODBC-2.3.11.tar.gz
    WORKDIR /root/unixODBC-2.3.11
    RUN ./configure --sysconfdir=/opt/python --disable-gui --disable-drivers --enable-iconv --with-iconv-char-enc=UTF8 --with-iconv-ucode-enc=UTF16LE --prefix=/root/unixODBC-install
    RUN make install
    RUN mv /root/unixODBC-install/bin /opt/bin
    RUN mv /root/unixODBC-install/lib /opt/lib
    WORKDIR /root
    # Install msodbcsql
    RUN curl https://packages.microsoft.com/config/rhel/7/prod.repo > /etc/yum.repos.d/mssql-release.repo
    RUN yum -y install e2fsprogs openssl
    RUN ACCEPT_EULA=Y yum -y install msodbcsql mssql-tools --disablerepo=amzn*
    RUN rm -r /opt/microsoft/msodbcsql
    # Install pyodbc
    # Need "unixODBC-devel" to avoid "src/pyodbc.h:56:10: fatal error: sql.h: No such file or directory" during pip install
    RUN yum -y install unixODBC-devel
    RUN export CFLAGS="-I/opt/microsoft/msodbcsql17/include"
    RUN export LDFLAGS="-L/opt/microsoft/msodbcsql17/lib"
    RUN pip install pyodbc==4.0.32 adodbapi== pyDes==2.0.1 --upgrade --target /opt/python
    # Add a requirements.txt file and enable this section to install other (non sql server) data-load requirements
    # COPY requirements.txt /tmp/requirements.txt
    # RUN pip install --requirement /tmp/requirements.txt --target /opt/python
    # Create odbc.ini and odbcinst.ini
    RUN echo $'[ODBC Driver 17 for SQL Server]\nDriver = ODBC Driver 17 for SQL Server\nDescription = My ODBC Driver 17 for SQL Server\nTrace = No' > /opt/python/odbc.ini
    RUN so_file=$(ls /opt/microsoft/**/lib64/libmsodbcsql-*.so.* | grep msodbcsql17) && echo $'[ODBC Driver 17 for SQL Server]\nDescription = Microsoft ODBC Driver 17 for SQL Server\nDriver = '"$so_file"$'\nUsageCount = 1' > /opt/python/odbcinst.ini
    # Generate the zipped file that can be uploaded as a Lambda Layer
    WORKDIR /opt
    RUN zip -r /layer.zip .
  2. Build the Dockerfile and extract the resulting zip file:

    # Build the image (this will take a while...)
    $ docker build --platform=linux/amd64 -t mssql-lambda .
    # Copy the zipped file to /tmp/pyodbc.zip on your computer
    $ docker run --platform=linux/amd64 --rm --volume /tmp:/tmp mssql-lambda cp /layer.zip /tmp/
  3. Upload /tmp/layer.zip from your computer to AWS as a Lambda Layer.

  4. Create and run a Python 3.9 Lambda to test things out: (Make sure you configure it to use the Layer you created in the previous step)

    import pyodbc
    def lambda_handler(event, context):
        driver = '{ODBC Driver 17 for SQL Server}'
        server = 'XXX'
        port = '1433'
        database =  'XXX'
        username = 'XXX'
        password = 'XXX' # ideally put this in a SecretsManager secret instead of directly in the code
        connection = pyodbc.connect(f'DRIVER={driver};SERVER={server},{port};DATABASE={database};UID={username};PWD={password}')
        cursor = connection.cursor()
        query = """
            select @@version
        for row in cursor.fetchall():

I think your problem is uploading the layer without the appropriate folder structure specified in the documentation

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