I'm attempting to write the results of a regression back to MySQL, but am having problems iterating through the fitted values and getting the NaNs to write as null values. Originally, I did the iteration this way:

```
for i in dataframe:
cur = cnx.cursor()
query = ("UPDATE Regression_Data.Input SET FITTEDVALUES="+(dataframe['yhat'].__str__())+" where timecount="+(datafrane['timecount'].__str__())+";")
cur.execute(query)
cnx.commit()
cur.close()
```

.....which SQL thew back to me by saying:

```
"mysql.connector.errors.ProgrammingError: 1064 (42000): You have an error in your SQL syntax; check the manual that corresponds to your MySQL server version for the right syntax to use near 'NaN'
```

So, I've been trying to filter out the NaNs by only asking Python to commit when yhat does not equal NaN:

```
for i in dataframe:
if cleandf['yhat']>(-1000):
cur = cnx.cursor()
query = ("UPDATE Regression_Data.Input SET FITTEDVALUES="+(dataframe['yhat'].__str__())+" where timecount="+(datafrane['timecount'].__str__())+";")
cur.execute(query)
cnx.commit()
cur.close()
```

But then I get this:

```
ValueError: The truth value of an array with more than one element is ambiguous. Use a.any() or a.all()
```

So, I try to get around it with this in my above syntax:

```
if cleandf['yhat'][i]>(-1000):
```

but then get this:

```
ValueError: Can only tuple-index with a MultiIndex
```

And then tried adding itterows() to both as in:

```
for i in dataframe.iterrows():
if cleandf['yhat'][i]>(-1000):
```

but get the same problems as above.

I'm not sure what I'm doing wrong here, but assume it's something with iterating in Pandas DataFrames. But, even if I got the iteration right, I would want to write Nulls into SQL where the NaN appeared.

So, how do you think I should do this?

`write_frame`

and`read_frame`

, like in this answer? – Andy Hayden Jan 21 '13 at 23:38