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* Support hybrid vector retrieval * Enable figures and table reading in Azure DI * Retrieve with multi-modal * Fix mixing up table * Add txt loader * Add Anthropic Chat * Raising error when retrieving help file * Allow same filename for different people if private is True * Allow declaring extra LLM vendors * Show chunks on the File page * Allow elasticsearch to get more docs * Fix Cohere response (#86) * Fix Cohere response * Remove Adobe pdfservice from dependency kotaemon doesn't rely more pdfservice for its core functionality, and pdfservice uses very out-dated dependency that causes conflict. --------- Co-authored-by: trducng <trungduc1992@gmail.com> * Add confidence score (#87) * Save question answering data as a log file * Save the original information besides the rewritten info * Export Cohere relevance score as confidence score * Fix style check * Upgrade the confidence score appearance (#90) * Highlight the relevance score * Round relevance score. Get key from config instead of env * Cohere return all scores * Display relevance score for image * Remove columns and rows in Excel loader which contains all NaN (#91) * remove columns and rows which contains all NaN * back to multiple joiner options * Fix style --------- Co-authored-by: linhnguyen-cinnamon <cinmc0019@CINMC0019-LinhNguyen.local> Co-authored-by: trducng <trungduc1992@gmail.com> * Track retriever state * Bump llama-index version 0.10 * feat/save-azuredi-mhtml-to-markdown (#93) * feat/save-azuredi-mhtml-to-markdown * fix: replace os.path to pathlib change theflow.settings * refactor: base on pre-commit * chore: move the func of saving content markdown above removed_spans --------- Co-authored-by: jacky0218 <jacky0218@github.com> * fix: losing first chunk (#94) * fix: losing first chunk. * fix: update the method of preventing losing chunks --------- Co-authored-by: jacky0218 <jacky0218@github.com> * fix: adding the base64 image in markdown (#95) * feat: more chunk info on UI * fix: error when reindexing files * refactor: allow more information exception trace when using gpt4v * feat: add excel reader that treats each worksheet as a document * Persist loader information when indexing file * feat: allow hiding unneeded setting panels * feat: allow specific timezone when creating conversation * feat: add more confidence score (#96) * Allow a list of rerankers * Export llm reranking score instead of filter with boolean * Get logprobs from LLMs * Rename cohere reranking score * Call 2 rerankers at once * Run QA pipeline for each chunk to get qa_score * Display more relevance scores * Define another LLMScoring instead of editing the original one * Export logprobs instead of probs * Call LLMScoring * Get qa_score only in the final answer * feat: replace text length with token in file list * ui: show index name instead of id in the settings * feat(ai): restrict the vision temperature * fix(ui): remove the misleading message about non-retrieved evidences * feat(ui): show the reasoning name and description in the reasoning setting page * feat(ui): show version on the main windows * feat(ui): show default llm name in the setting page * fix(conf): append the result of doc in llm_scoring (#97) * fix: constraint maximum number of images * feat(ui): allow filter file by name in file list page * Fix exceeding token length error for OpenAI embeddings by chunking then averaging (#99) * Average embeddings in case the text exceeds max size * Add docstring * fix: Allow empty string when calling embedding * fix: update trulens LLM ranking score for retrieval confidence, improve citation (#98) * Round when displaying not by default * Add LLMTrulens reranking model * Use llmtrulensscoring in pipeline * fix: update UI display for trulen score --------- Co-authored-by: taprosoft <tadashi@cinnamon.is> * feat: add question decomposition & few-shot rewrite pipeline (#89) * Create few-shot query-rewriting. Run and display the result in info_panel * Fix style check * Put the functions to separate modules * Add zero-shot question decomposition * Fix fewshot rewriting * Add default few-shot examples * Fix decompose question * Fix importing rewriting pipelines * fix: update decompose logic in fullQA pipeline --------- Co-authored-by: taprosoft <tadashi@cinnamon.is> * fix: add encoding utf-8 when save temporal markdown in vectorIndex (#101) * fix: improve retrieval pipeline and relevant score display (#102) * fix: improve retrieval pipeline by extending first round top_k with multiplier * fix: minor fix * feat: improve UI default settings and add quick switch option for pipeline * fix: improve agent logics (#103) * fix: improve agent progres display * fix: update retrieval logic * fix: UI display * fix: less verbose debug log * feat: add warning message for low confidence * fix: LLM scoring enabled by default * fix: minor update logics * fix: hotfix image citation * feat: update docx loader for handle merged table cells + handle zip file upload (#104) * feat: update docx loader for handle merged table cells * feat: handle zip file * refactor: pre-commit * fix: escape text in download UI * feat: optimize vector store query db (#105) * feat: optimize vector store query db * feat: add file_id to chroma metadatas * feat: remove unnecessary logs and update migrate script * feat: iterate through file index * fix: remove unused code --------- Co-authored-by: taprosoft <tadashi@cinnamon.is> * fix: add openai embedidng exponential back-off * fix: update import download_loader * refactor: codespell * fix: update some default settings * fix: update installation instruction * fix: default chunk length in simple QA * feat: add share converstation feature and enable retrieval history (#108) * feat: add share converstation feature and enable retrieval history * fix: update share conversation UI --------- Co-authored-by: taprosoft <tadashi@cinnamon.is> * fix: allow exponential backoff for failed OCR call (#109) * fix: update default prompt when no retrieval is used * fix: create embedding for long image chunks * fix: add exception handling for additional table retriever * fix: clean conversation & file selection UI * fix: elastic search with empty doc_ids * feat: add thumbnail PDF reader for quick multimodal QA * feat: add thumbnail handling logic in indexing * fix: UI text update * fix: PDF thumb loader page number logic * feat: add quick indexing pipeline and update UI * feat: add conv name suggestion * fix: minor UI change * feat: citation in thread * fix: add conv name suggestion in regen * chore: add assets for usage doc * chore: update usage doc * feat: pdf viewer (#110) * feat: update pdfviewer * feat: update missing files * fix: update rendering logic of infor panel * fix: improve thumbnail retrieval logic * fix: update PDF evidence rendering logic * fix: remove pdfjs built dist * fix: reduce thumbnail evidence count * chore: update gitignore * fix: add js event on chat msg select * fix: update css for viewer * fix: add env var for PDFJS prebuilt * fix: move language setting to reasoning utils --------- Co-authored-by: phv2312 <kat87yb@gmail.com> Co-authored-by: trducng <trungduc1992@gmail.com> * feat: graph rag (#116) * fix: reload server when add/delete index * fix: rework indexing pipeline to be able to disable vectorstore and splitter if needed * feat: add graphRAG index with plot view * fix: update requirement for graphRAG and lighten unnecessary packages * feat: add knowledge network index (#118) * feat: add Knowledge Network index * fix: update reader mode setting for knet * fix: update init knet * fix: update collection name to index pipeline * fix: missing req --------- Co-authored-by: jeff52415 <jeff.yang@cinnamon.is> * fix: update info panel return for graphrag * fix: retriever setting graphrag * feat: local llm settings (#122) * feat: expose context length as reasoning setting to better fit local models * fix: update context length setting for agents * fix: rework threadpool llm call * fix: fix improve indexing logic * fix: fix improve UI * feat: add lancedb * fix: improve lancedb logic * feat: add lancedb vectorstore * fix: lighten requirement * fix: improve lanceDB vs * fix: improve UI * fix: openai retry * fix: update reqs * fix: update launch command * feat: update Dockerfile * feat: add plot history * fix: update default config * fix: remove verbose print * fix: update default setting * fix: update gradio plot return * fix: default gradio tmp * fix: improve lancedb docstore * fix: fix question decompose pipeline * feat: add multimodal reader in UI * fix: udpate docs * fix: update default settings & docker build * fix: update app startup * chore: update documentation * chore: update README * chore: update README --------- Co-authored-by: trducng <trungduc1992@gmail.com> * chore: update README * chore: update README --------- Co-authored-by: trducng <trungduc1992@gmail.com> Co-authored-by: cin-ace <ace@cinnamon.is> Co-authored-by: Linh Nguyen <70562198+linhnguyen-cinnamon@users.noreply.github.com> Co-authored-by: linhnguyen-cinnamon <cinmc0019@CINMC0019-LinhNguyen.local> Co-authored-by: cin-jacky <101088014+jacky0218@users.noreply.github.com> Co-authored-by: jacky0218 <jacky0218@github.com> Co-authored-by: kan_cin <kan@cinnamon.is> Co-authored-by: phv2312 <kat87yb@gmail.com> Co-authored-by: jeff52415 <jeff.yang@cinnamon.is>
116 lines
7.3 KiB
Markdown
116 lines
7.3 KiB
Markdown
The file index stores files in a local folder and index them for retrieval.
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This file index provides the following infrastructure to support the indexing:
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- SQL table Source: store the list of files that are indexed by the system
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- Vector store: contain the embedding of segments of the files
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- Document store: contain the text of segments of the files. Each text stored
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in this document store is associated with a vector in the vector store.
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- SQL table Index: store the relationship between (1) the source and the
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docstore, and (2) the source and the vector store.
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The indexing and retrieval pipelines are encouraged to use the above software
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infrastructure.
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## Indexing pipeline
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The ktem has default indexing pipeline: `ktem.index.file.pipelines.IndexDocumentPipeline`.
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This default pipeline works as follow:
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- **Input**: list of file paths
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- **Output**: list of nodes that are indexed into database
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- **Process**:
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- Read files into texts. Different file types has different ways to read texts.
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- Split text files into smaller segments
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- Run each segments into embeddings.
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- Store the embeddings into vector store. Store the texts of each segment
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into docstore. Store the list of files in Source. Store the linking
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between Sources and docstore + vectorstore in Index table.
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You can customize this default pipeline if your indexing process is close to the
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default pipeline. You can create your own indexing pipeline if there are too
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much different logic.
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### Customize the default pipeline
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The default pipeline provides the contact points in `flowsettings.py`.
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1. `FILE_INDEX_PIPELINE_FILE_EXTRACTORS`. Supply overriding file extractor,
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based on file extension. Example: `{".pdf": "path.to.PDFReader", ".xlsx": "path.to.ExcelReader"}`
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2. `FILE_INDEX_PIPELINE_SPLITTER_CHUNK_SIZE`. The expected number of characters
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of each text segment. Example: 1024.
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3. `FILE_INDEX_PIPELINE_SPLITTER_CHUNK_OVERLAP`. The expected number of
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characters that consecutive text segments should overlap with each other.
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Example: 256.
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### Create your own indexing pipeline
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Your indexing pipeline will subclass `BaseFileIndexIndexing`.
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You should define the following methods:
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- `run(self, file_paths)`: run the indexing given the pipeline
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- `get_pipeline(cls, user_settings, index_settings)`: return the
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fully-initialized pipeline, ready to be used by ktem.
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- `user_settings`: is a dictionary contains user settings (e.g. `{"pdf_mode": True, "num_retrieval": 5}`). You can declare these settings in the `get_user_settings` classmethod. ktem will collect these settings into the app Settings page, and will supply these user settings to your `get_pipeline` method.
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- `index_settings`: is a dictionary. Currently it's empty for File Index.
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- `get_user_settings`: to declare user settings, return a dictionary.
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By subclassing `BaseFileIndexIndexing`, You will have access to the following resources:
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- `self._Source`: the source table
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- `self._Index`: the index table
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- `self._VS`: the vector store
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- `self._DS`: the docstore
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Once you have prepared your pipeline, register it in `flowsettings.py`: `FILE_INDEX_PIPELINE = "<python.path.to.your.pipeline>"`.
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## Retrieval pipeline
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The ktem has default retrieval pipeline:
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`ktem.index.file.pipelines.DocumentRetrievalPipeline`. This pipeline works as
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follow:
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- Input: user text query & optionally a list of source file ids
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- Output: the output segments that match the user text query
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- Process:
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- If a list of source file ids is given, get the list of vector ids that
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associate with those file ids.
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- Embed the user text query.
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- Query the vector store. Provide a list of vector ids to limit query scope
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if the user restrict.
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- Return the matched text segments
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### Create your own retrieval pipeline
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Your retrieval pipeline will subclass `BaseFileIndexRetriever`. The retriever
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has the same database, vectorstore and docstore accesses like the indexing
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pipeline.
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You should define the following methods:
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- `run(self, query, file_ids)`: retrieve relevant documents relating to the
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query. If `file_ids` is given, you should restrict your search within these
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`file_ids`.
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- `get_pipeline(cls, user_settings, index_settings, selected)`: return the
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fully-initialized pipeline, ready to be used by ktem.
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- `user_settings`: is a dictionary contains user settings (e.g. `{"pdf_mode": True, "num_retrieval": 5}`). You can declare these settings in the `get_user_settings` classmethod. ktem will collect these settings into the app Settings page, and will supply these user settings to your `get_pipeline` method.
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- `index_settings`: is a dictionary. Currently it's empty for File Index.
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- `selected`: a list of file ids selected by user. If user doesn't select
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anything, this variable will be None.
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- `get_user_settings`: to declare user settings, return a dictionary.
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Once you build the retrieval pipeline class, you can register it in
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`flowsettings.py`: `FILE_INDEXING_RETRIEVER_PIPELIENS = ["path.to.retrieval.pipelie"]`. Because there can be
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multiple parallel pipelines within an index, this variable takes a list of
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string rather than a string.
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## Software infrastructure
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| Infra | Access | Schema | Ref |
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| ---------------- | ------------- | ------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------- | ---------------------------------------------------------- |
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| SQL table Source | self.\_Source | - id (int): id of the source (auto)<br>- name (str): the name of the file<br>- path (str): the path of the file<br>- size (int): the file size in bytes<br>- note (dict): allow extra optional information about the file<br>- date_created (datetime): the time the file is created (auto) | This is SQLALchemy ORM class. Can consult |
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| SQL table Index | self.\_Index | - id (int): id of the index entry (auto)<br>- source_id (int): the id of a file in the Source table<br>- target_id: the id of the segment in docstore or vector store<br>- relation_type (str): if the link is "document" or "vector" | This is SQLAlchemy ORM class |
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| Vector store | self.\_VS | - self.\_VS.add: add the list of embeddings to the vector store (optionally associate metadata and ids)<br>- self.\_VS.delete: delete vector entries based on ids<br>- self.\_VS.query: get embeddings based on embeddings. | kotaemon > storages > vectorstores > BaseVectorStore |
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| Doc store | self.\_DS | - self.\_DS.add: add the segments to document stores<br>- self.\_DS.get: get the segments based on id<br>- self.\_DS.get_all: get all segments<br>- self.\_DS.delete: delete segments based on id | kotaemon > storages > docstores > base > BaseDocumentStore |
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