| - Title: TableCell Dataclass |
| - Decision driver: Sebastian Lee |
| - Start Date: 2023-01-17 |
| - Proposal PR: https://github.com/deepset-ai/haystack/pull/3875 |
| - Github Issue: https://github.com/deepset-ai/haystack/issues/3616 |
|
|
| # Summary |
|
|
| When returning answers for a TableQA pipeline we would like to return the column and row index as the answer location |
| within the table since the table is either returned as a list of lists in Haystack. |
| This would allow users to easily look up the answer in the returned table to fetch the text directly from the table, |
| identify the row or column labels for that answer, or generally perform operations on the table near or around the |
| answer cell. |
|
|
| # Basic Example |
|
|
| When applicable, write a snippet of code showing how the new feature would be used. |
| ```python |
| import pandas as pd |
| from haystack.nodes import TableReader |
| from haystack import Document |
| |
| data = { |
| "actors": ["brad pitt", "leonardo di caprio", "george clooney"], |
| "age": ["58", "47", "60"], |
| "number of movies": ["87", "53", "69"], |
| "date of birth": ["18 december 1963", "11 november 1974", "6 may 1961"], |
| } |
| table_doc = Document(content=pd.DataFrame(data), content_type="table") |
| reader = TableReader(model_name_or_path="google/tapas-base-finetuned-wtq", max_seq_len=128) |
| prediction = reader.predict(query="Who was in the most number of movies?", documents=[table_doc]) |
| answer = prediction["answers"][0] |
| |
| # New feature |
| # answer.context -> [["actor", "age", "number of movies"], ["Brad Pitt",...], [...]] |
| # answer.offsets_in_context[0] -> (row=1, col=1) |
| print(answer.context[answer.offsets_in_context[0].row][answer.offsets_in_context[0].col]) |
| ``` |
|
|
| # Motivation |
|
|
| ## Why do we need this feature? |
| To allow users to easily look up the answer cell in the returned table to fetch the answer text |
| directly from the table, identify the row or column labels for that answer, or generally perform operations on the table |
| near or around the answer cell. |
|
|
| Currently, we return the location of the answer in the **linearized** version of the table, so we can use the |
| `Span` dataclass. The `Span` dataclass is reproduced below: |
| ```python |
| @dataclass |
| class Span: |
| start: int |
| end: int |
| """ |
| Defining a sequence of characters (Text span) or cells (Table span) via start and end index. |
| For extractive QA: Character where answer starts/ends |
| For TableQA: Cell where the answer starts/ends (counted from top left to bottom right of table) |
| |
| :param start: Position where the span starts |
| :param end: Position where the span ends |
| """ |
| ``` |
| This is inconvenient for users because they would need to know how the table is linearized (column major or row major) |
| so they could reconstruct the column and row indices of the answer before they could locate the answer cell in the table. |
|
|
| ## What use cases does it support? |
| Some examples are already stated above but to recap, to easily perform operations on the table near or around the answer cell. |
|
|
| ## What's the expected outcome? |
| The addition of a new dataclass called `TableCell` that would look like |
| ```python |
| @dataclass |
| class TableCell: |
| row: int |
| col: int |
| """ |
| Defining a table cell via the row and column index. |
| |
| :param row: Row index of the cell |
| :param col: Column index of the cell |
| """ |
| ``` |
|
|
| # Detailed design |
|
|
| **New terminology:** `TableCell`, the new name for the dataclass to |
| store the column and row index of the answer cell. |
|
|
| **Basic Example:** [Above Basic Example](#basic-example) |
|
|
| ## Code changes |
| - Addition of `TableCell` dataclass to https://github.com/deepset-ai/haystack/blob/main/haystack/schema.py |
| ```python |
| @dataclass |
| class TableCell: |
| row: int |
| col: int |
| """ |
| Defining a table cell via the row and column index. |
| |
| :param row: Row index of the cell |
| :param col: Column index of the cell |
| """ |
| ``` |
|
|
| - Updating code (e.g. schema objects, classes, functions) that use `Span` to also support `TableCell` where appropriate. |
| This includes: |
| - Updating the `Answer` dataclass to support `TableCell` as a valid type for `offsets_in_document` and `offsets_in_context` |
| ```python |
| @dataclass |
| class Answer: |
| answer: str |
| type: Literal["generative", "extractive", "other"] = "extractive" |
| score: Optional[float] = None |
| context: Optional[Union[str, List[List]]] = None |
| offsets_in_document: Optional[List[Span], List[TableCell]] = None |
| offsets_in_context: Optional[List[Span], List[TableCell]] = None |
| document_id: Optional[str] = None |
| meta: Optional[Dict[str, Any]] = None |
| ``` |
| - Similar to how we can return a list of `Span`s, we would allow a list of `TableCell`s to be returned to handle the case |
| when multiple `TableCell`s are returned to form a final answer. |
| - Updating any functions that accept table answers as input to use the new `col` and `row` variables instead of `start` and `end` variables. |
| This type of check for table answers is most likely already done by checking if the `context` is of type `pd.DataFrame`. |
| - `TableReader` and `RCIReader` to return `TableCell` objects instead of `Span`. |
|
|
| Changes related to the Edge Case/Bug below |
| - Update `Document.content` and `Answer.context` to use `List[List]` instead of `pd.DataFrame`. |
| - Update `TableReader` nodes to convert table from `List[List]` into `pd.DataFrame` before inputting to the model. |
|
|
| ## Edge Case/Bug |
| Internally, Haystack stores a table as a pandas DataFrame in the `Answer` dataclass, which does not treat the column |
| labels as the first row in the table. |
| However, in Haystack's rest-api the table is converted into a list of lists format where the column labels are |
| stored as the first row, which can be seen [here](https://github.com/deepset-ai/haystack/pull/3872), which is consistent |
| with the `Document.to_dict()` method seen [here](https://github.com/deepset-ai/haystack/blob/6af4f14fe0d375a1ae0ced18930a9239401231c7/haystack/schema.py#L164-L165). |
|
|
| This means that the current `Span` and (new) `TableCell` dataclass point to the wrong location when the table is |
| converted to a list of lists. |
|
|
| For example, the following code |
| ```python |
| import pandas as pd |
| from haystack import Document |
| |
| data = { |
| "actors": ["brad pitt", "leonardo di caprio", "george clooney"], |
| "age": ["58", "47", "60"], |
| "number of movies": ["87", "53", "69"], |
| "date of birth": ["18 december 1963", "11 november 1974", "6 may 1961"], |
| } |
| table_doc = Document(content=pd.DataFrame(data), content_type="table") |
| span = (0, 0) |
| print(table_doc.content.iloc[span]) # prints "brad pitt" |
| |
| dict_table_doc = table_doc.to_dict() |
| print(dict_table_doc["content"][span[0]][span[1]]) # prints "actors" |
| ``` |
|
|
| We have decided to store the table internally as a list of lists to avoid this issue. See discussion starting [here](https://github.com/deepset-ai/haystack/pull/3875#discussion_r1088766318). |
|
|
| # Drawbacks |
|
|
| Look at the feature from the other side: what are the reasons why we should _not_ work on it? Consider the following: |
|
|
| - What's the implementation cost, both in terms of code size and complexity? |
|
|
| I don't believe this will require too much code change since we already check for Table like answers by checking if the |
| returned context is of type string or pandas Dataframe. |
|
|
| - Can the solution you're proposing be implemented as a separate package, outside of Haystack? |
|
|
| Technically yes, but since it affects core classes like `TableReader`, and `RCIReader` it makes sense to implement in |
| Haystack. |
|
|
| - Does it teach people more about Haystack? |
|
|
| It would update already existing documentation and tutorials of Haystack. |
|
|
| - How does this feature integrate with other existing and planned features? |
|
|
| This feature directly integrates and impacts the TableQA feature of Haystack. |
|
|
| - What's the cost of migrating existing Haystack pipelines (is it a breaking change?)? |
|
|
| Yes there are breaking changes that would affect end users. |
| 1. The way to access the offsets in returned Answers would be different. |
| Following the deprecation policy we will support both `Span` and `TableCell` (can be toggled between using a boolean flag) |
| for 2 additional versions of Haystack. |
| 2. Tables in Haystack Documents and Answers will change from type pandas Dataframe to a list of lists. |
|
|
| # Alternatives |
|
|
| ## What's the impact of not adding this feature? |
| Requiring users to figure out how to interpret the linearized answer cell coordinates to reconstruct the row and column indices |
| to be able to access the answer cell in the returned table. |
|
|
| ## Other designs |
| 1. Expand `Span` dataclass to have optional `col` and `row` fields. This would require a similar check as `TableCell`, but instead |
| require checking for which of the elements are populated, which seems unnecessarily complex. |
| ```python |
| @dataclass |
| class Span: |
| start: int = None |
| end: int = None |
| col: int = None |
| row: int = None |
| ``` |
| 2. Use the existing `Span` dataclass and put the row index and column index as the `start` and `end` respectively. |
| This may be confusing to users since it is not obvious that `start` should refer to `row` and `end` should refer to `column`. |
| ```python |
| answer_cell_offset = Span(start=row_idx, end=col_idx) |
| ``` |
| 3. Provide a convenience function shown [here](https://github.com/deepset-ai/haystack/issues/3616#issuecomment-1361300067) |
| to help users convert the linearized `Span` back to row and column indices. I believe this solution is non-ideal since it would |
| require a user of the rest_api to access a python function to convert the linearized indices back into row and column indices. |
| |
| # Adoption strategy |
| |
| ## How will the existing Haystack users adopt it? |
| Haystack users would immediately experience this change once they update their installation of Haystack if they were using |
| the TableQA reader. This would be a breaking change since it would change the `offsets_in_document` and |
| `offsets_in_context` in the returned `Answer`. I'm not sure if there would be a straightforward way to write a migration |
| script for this change. |
| |
| # How we teach this |
| |
| Would implementing this feature mean the documentation must be re-organized |
| or updated? Does it change how Haystack is taught to new developers at any level? |
| |
| - The API docs for `TableCell` would need to be added. |
| - The documentation page for [Table Question Answering](https://docs.haystack.deepset.ai/docs/table_qa) would need to be updated. |
| - Update the (TableQa tutorial)[https://github.com/deepset-ai/haystack-tutorials/blob/main/tutorials/15_TableQA.ipynb] |
| to reflect the `Span` is no longer linearzied. |
|
|
| # Unresolved questions |
|
|
| No more unresolved questions. |
|
|