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Do any libraries provide automatic support for indexing Pandas DataFrames with Whoosh, PyLucene, pymur or other python search libraries. DataFrames already have metadata about about names and types of the columns, so it should be able create a default schema and index without further specification and only pass in additional options for deviating from the default like omitting some fields. This is analogous to how Pandas handles sql with pandas.DataFrame.to_sql and pandas.io.sql.read_frame. When pandas.DataFrame.to_sql saves a DataFrame to an RDMS, it creates the table automatically without needing a schema specification. Do any libraries already do this for text search engines? I am not finding anything with websearch, but it seems somebody must have thought of this before.

To illustrate what I have in made to index a set of documents in Whoosh you do something like:

from whoosh.index import create_in
from whoosh.fields import *
schema = Schema(title=TEXT(stored=True), path=ID(stored=True), content=TEXT)
ix = create_in("indexdir", schema)
writer = ix.writer()
writer.add_document(title=u"First document", path=u"/a",
                    content=u"This is the first document we've added!")
writer.add_document(title=u"Second document", path=u"/b",
                    content=u"The second one is even more interesting!")

The process for other search libraries is pretty similar, but for a DataFrame this is almost all redundant. You can infer the schema from the DataFrame and you probably want to index all the whole DataFrame. If not you just create a view for the part you want to index and index all of that. So if you have a dataframe mydf you should really just need to say something like

from some.library import DFIndex
dfindex = DFIndex(mydf)

On the query side you would then probably have an interface that returns a (view of) a DataFrame in response to a query. Maybe something like:

resultdf = dfindex.query({"title": "software"}, nresults=20)

Writing the core functionality to do this is relatively simple, but designing the interface well is more subtle and there is no point reinventing the wheel. This also seems like it could be useful to many people and somebody may have already done it.

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Can you clarify your questions? Maybe provide an example of what you would like to achieve? –  joris Apr 3 at 7:37

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