I've been trying to test various methods for making my code to run. To begin with, I have this list:

member_list = [111,222,333,444,555,...]

I tried to pass it into this query:

query = pd.read_sql_query(
select member id
from queried_table
where yearmonth between ? and ?
    and member_id in ?
""", db2conn, params = [201601, 201603, member_list])

However, I get an error that says:

'Invalid parameter type. param-index=2 param-type=list', 'HY105'

So I looked around and tried using formatted strings:

query = pd.read_sql_query(
select member id
from queried_table
where yearmonth between ? and ?
    and member_id in (%s)
""" % ','.join(['?']*len(member_list), db2conn, params = [201601, 201603, tuple(member_list)])

Now, I get the error:

'The SQL contains 18622 parameter markers, but 3 parameters were supplied', 'HY000'

because it's looking to fill in all the ? placeholders in the formatted string.

So, ultimately, is there a way to somehow evaluate the list and pass each individual element to bind to the ? or is there another method I could use to get this to work?

Btw, I'm using pyodbc as my connector.

Thanks in advance!

3 Answers 3


Break this up into three parts to help isolate the problem and improve readability:

  1. Build the SQL string
  2. Set parameter values
  3. Execute pandas.read_sql_query

Build SQL

First ensure ? placeholders are being set correctly. Use str.format with str.join and len to dynamically fill in ?s based on member_list length. Below examples assume 3 member_list elements.


member_list = (1,2,3)
sql = """select member_id, yearmonth
         from queried_table
         where yearmonth between {0} and {0}
         and member_id in ({1})"""
sql = sql.format('?', ','.join('?' * len(member_list)))


select member_id, yearmonth
from queried_table
where yearmonth between ? and ?
and member_id in (?,?,?)

Set Parameter Values

Now ensure parameter values are organized into a flat tuple


# generator to flatten values of irregular nested sequences,
# modified from answers http://stackoverflow.com/questions/952914/making-a-flat-list-out-of-list-of-lists-in-python
def flatten(l):
    for el in l:
            yield from flatten(el)
        except TypeError:
            yield el

params = tuple(flatten((201601, 201603, member_list)))


(201601, 201603, 1, 2, 3)


Finally bring the sql and params values together in the read_sql_query call

query = pd.read_sql_query(sql, db2conn, params)
  • The flatten function did it!!! However, I think I just ran into a problem with a parameter cap. Apparently, my member list has 84000+ members, but when I try to dynamically fill in the ? placeholders for all those members, Python limited to a max of 18,622. Looks like I'm going to have to split my member list to do this. Thanks for you help! Apr 25, 2016 at 16:35
  • Happy to help. Since you're working with that many member_list values, will likely get better performance (and fix the parameter limitation) by populating another table then inner join to filter results. pandas.DataFrame.to_sql might help with table creation.
    – Bryan
    Apr 25, 2016 at 16:43
  • 2
    For pymysql you need a %s placeholder, so it should be ','.join(['%s'] * len(member_list))
    – slhck
    Apr 10, 2018 at 11:35
  • 1
    Bryan's answer is awesome! One note though, params is not by default the 3rd argument in pd.read_sql_query, so it only worked when I specified that params=params as such: pd.read_sql_query(sql, db2conn, params=params) more: pandas.pydata.org/pandas-docs/stable/reference/api/… Mar 17, 2021 at 21:39
  • Surely there's a way to achieve this that just lets you pass the list in directly as a param, though, no!?
    – HaPsantran
    Mar 15 at 19:56

WARNING! Although my proposed solution here works, it is prone to SQL injection attacks. Therefor, it should never be used directly in backend code! It is only safe for offline analysis.

If you're using python 3.6+ you could also use a formatted string litteral for your query (cf https://docs.python.org/3/whatsnew/3.6.html#whatsnew36-pep498)

start, end = 201601, 201603
selected_members = (111, 222, 333, 444, 555)  # requires to be a tuple

query = f"""
    SELECT member_id, yearmonth FROM queried_table
    WHERE yearmonth BETWEEN {start} AND {end}
      AND member_id IN {selected_members}

df = pd.read_sql_query(query, db2conn)
  • note: 'start' and 'end' might need to be cast as strings depending on the type of the 'yearmonth' column in your DB table...
    – bluu
    Jun 8, 2018 at 12:26
  • 15
    While your proposed method will work, it wouldn't be recommended because it would be prone to SQL injection attacks. Jun 8, 2018 at 12:31
  • There is indeed a slight risk (but a lot of things would make the query fail anyway). That being said, the proposed solution doesn't provide a whole lot more security (just checking that the past list is enumerable via the usage of join). I think if you take it far enough that might also be prone to injection attacks... Anyway, first it wasn't not clear to me that the query served a front-end directy; second, the responsibility of validating the input should be in a function wrapping that query, not the query string itself...
    – bluu
    Jun 12, 2018 at 12:13
  • 2
    This is a very bad idea and a major risk. What if selected_members contained 1); drop table Students'; -- ? Parameters eliminate the risk of SQL injection because the parameter values never become part of the query. doesn't provide a whole lot more security actually, it does Feb 10, 2022 at 11:30
  • 1
    Good point Panagiotis! I'll update my answer with a warning message. And sorry for my past comments, I wasn't conscious on those types of threats back then...
    – bluu
    Feb 22, 2022 at 17:12
query = 'Select count(*) cnt from TBL_DESK_AUDIT  where trunc(DATETIMECREATED) = trunc(sysdate) and DESK_NAME =' + "'"+dataframe_list1[0][0] + "'"
df_TBL_DESK_AUDIT = pd.read_sql_query(query, connect);

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