It's a little awkward to get the "page number" of the record going backwards like that, usually a system that wants to bounce from the "detail" of a record back to the "paginated view of all of them" would just carry along the page number to the "detail" page.
But assuming you're working with a capable database you can get row numbers out of an arbitrary SELECT statement using a window function, which you can get with a DB like Postgresql, SQL Server or Oracle (notably not MySQL or SQLite).
Using PG we can start with some data:
test=> create table data(id SERIAL primary key, value varchar(20));
NOTICE: CREATE TABLE will create implicit sequence "data_id_seq" for serial column "data.id"
NOTICE: CREATE TABLE / PRIMARY KEY will create implicit index "data_pkey" for table "data"
test=> insert into data (value) values ('d1'), ('d2'), ('d3'), ('d4'), ('d5'), ('d6'), ('d7'), ('d8'), ('d9'), ('d10'), ('d11'), ('d12'), ('d13'), ('d14'), ('d15'), ('d16');
INSERT 0 16
we can then select this data and get an integer row count using the
row_number() window function:
test=> select value, row_number() over (order by id) as rownum from data;
value | rownum
d1 | 1
d2 | 2
d3 | 3
d4 | 4
d5 | 5
d6 | 6
d7 | 7
d8 | 8
d9 | 9
d10 | 10
d11 | 11
d12 | 12
d13 | 13
d14 | 14
d15 | 15
d16 | 16
Applying the windowed data inside of a subquery, we can select slices of the result based on this count:
test=> select value from (select value, row_number()
> over (order by id) as rownum from data) as sub where rownum between 5 and 10;
So if you had the record "d14" and a page size of 5 you could do this:
test=> select (rownum - 1) / 5 from (select value, row_number()
> over (order by id) as rownum from data) as sub where value='d14';
SQLAlchemy provides window functions via the over() method/function, so a SQLA query assuming a typical ORM mapping for this would look like:
subq = session.query(
pagenum = session.query((subq.c.rownum - 1) / 5).\
filter(subq.c.value == 'd14').scalar()
As far as using window functions vs. limit/offset for pagination, it's worth checking out the comparison I wrote over here comparing the performance of the various methods, as well as the windowed range query recipe I sometimes use.