Commit Graph

436 Commits

Author SHA1 Message Date
Jin Hai
cf71c7193a Go: update server config (#17027)
### Summary

```
RAGFlow(admin)> list services;
+--------+--------------+----+---------------------+------+---------------+-----------+
| enable | host         | id | name                | port | service_type  | status    |
+--------+--------------+----+---------------------+------+---------------+-----------+
|        | localhost    | 0  | redis               | 6379 | cache         | alive     |
|        | localhost    | 1  | minio               | 9000 | file_store    | alive     |
|        | localhost    | 2  | elasticsearch       | 1200 | retrieval     | alive     |
|        | localhost    | 3  | mysql               | 3306 | meta_data     | alive     |
| false  | localhost    | 4  | jaeger              | 4318 | tracing       | unknown   |
|        | localhost    | 5  | clickhouse          | 9900 | olap          | unknown   |
|        | localhost    | 6  | nats                | 4222 | message_queue | CONNECTED |
|        | 192.168.1.68 | 7  | ragflow-server-9384 | 9384 | api_server    | alive     |
+--------+--------------+----+---------------------+------+---------------+-----------+

```

Signed-off-by: Jin Hai <haijin.chn@gmail.com>
2026-07-17 13:54:19 +08:00
Lynn
f9d7f3d2b4 Fix: add default models for some ocr providers (#16982) 2026-07-16 19:18:48 +08:00
Haruko386
5307ecd520 Go: add tools for moonshot, baidu and minimax (#17000)
### Summary

As title
related to #16990
2026-07-16 19:03:59 +08:00
Jin Hai
c7a623ff81 Go: introduce clickhouse (#16996)
### Summary

Introduce Clickhouse for data statistics.

Signed-off-by: Jin Hai <haijin.chn@gmail.com>
2026-07-16 18:36:56 +08:00
Zane
eeb59ec4f2 feat(stt): support Fun-ASR-Flash in Tongyi-Qianwen provider (#16844)
## What this PR does

Adds support for Alibaba Cloud's hosted Fun-ASR-Flash snapshots to the
existing Tongyi-Qianwen speech-to-text provider.

- registers `fun-asr-flash-2026-06-15` as a speech-to-text model;
- routes only `fun-asr-flash*` models to the documented workspace-native
multimodal-generation endpoint;
- supports local audio through size-checked data URIs as well as
URL/data-URI inputs;
- uses the documented SSE response mode for incremental streaming
transcription;
- closes the streamed HTTP response on completion, failure, or early
consumer cancellation;
- preserves the existing `dashscope.MultiModalConversation` path for all
other Qwen audio models;
- keeps RAGFlow's existing synchronous and streaming adapter interfaces.

## Why

Fun-ASR-Flash does not use the legacy Qwen audio request shape currently
used by `QWenSeq2txt`. Its synchronous API expects `input_audio` at:

`/api/v1/services/aigc/multimodal-generation/generation`

Without a narrowly scoped adapter path, the hosted model cannot be
selected successfully through RAGFlow's Tongyi-Qianwen speech-to-text
provider.

Closes #16843.

## Compatibility

The new behavior is gated by the `fun-asr-flash` model-name prefix.
Existing Qwen audio models continue through the original code path
unchanged.

## Validation

- `pytest test/unit_test/rag/llm/test_sequence2txt_model.py`: 10 passed
- Ruff check: passed
- Ruff format check: passed
- `llm_factories.json` validation: passed
- Real hosted-API validation with WAV audio
- Real RAGFlow upload/indexing validation with MP3 audio

The unit tests cover the native Fun-ASR-Flash request, regression
behavior for the legacy Qwen path, SSE streaming, and early response
cleanup.

## Documentation

- https://help.aliyun.com/document_detail/2979031.html
- https://help.aliyun.com/document_detail/2869541.html
### Why a dedicated adapter path is necessary (official evidence)

Alibaba Cloud's [Fun-ASR RESTful API
reference](https://help.aliyun.com/en/model-studio/fun-asr-recorded-speech-recognition-http-api)
makes the incompatibilities with RAGFlow's existing Qwen audio path
explicit:

| Adapter change | Official API requirement | Why the existing path is
insufficient |
| --- | --- | --- |
| Call the workspace-native HTTP endpoint | The Fun-ASR-Flash
synchronous section states that SDK calls are not supported and
specifies `POST /api/v1/services/aigc/multimodal-generation/generation`.
| The existing adapter calls `dashscope.MultiModalConversation`, so a
direct HTTP path is required. |
| Use the `input_audio` message shape | `input.messages`, `content`,
`type: input_audio`, `input_audio`, and `input_audio.data` are
documented as required for an audio request. | The existing Qwen path
sends the legacy `audio` content shape, which does not match this API
contract. |
| Send `parameters.format` | The request schema marks `parameters` and
`format` as **Required**, and says the value must match the actual audio
format. | The legacy request has no Fun-ASR-Flash `parameters.format`
field, so the adapter must derive and send it. |
| Encode local files as Data URIs | `input_audio.data` accepts either a
public URL or a Base64 Data URI; the reference gives the exact
`data:{MIME_TYPE};base64,...` form. | RAGFlow supplies local file paths,
which the remote API cannot read directly. |
| Parse `output.text` | The documented non-streaming response returns
the accumulated transcription in `output.text`. | The legacy Qwen
response parser reads `output.choices[].message.content`, so a separate
response parser is required. |
| Enforce the Base64 input limit | The reference requires the
Base64-encoded audio to remain within the 10 MB input limit. | The
adapter checks encoded size before reading/sending local audio and
directs oversized inputs to the existing public-URL path. |
| Use SSE for streaming | The reference specifies `X-DashScope-SSE:
enable` and documents intermediate and final SSE events. | The adapter
parses those events instead of wrapping one blocking response as a
synthetic stream. |
| Release streamed responses | Streaming responses must be closed when
iteration completes or stops early. | A `finally` cleanup releases the
HTTP response on completion, errors, and consumer cancellation. |

`sample_rate` is documented as **Optional**. The implementation omits it
instead of declaring a fixed value that may not match remote or
compressed audio.

The [official speech-to-text model
list](https://help.aliyun.com/en/model-studio/asr-model/) separately
confirms that `fun-asr-flash-2026-06-15` is an offline HTTP model with a
five-minute audio limit.

---------

Signed-off-by: LauraGPT <LauraGPT@users.noreply.github.com>
Co-authored-by: openhands <openhands@all-hands.dev>
Co-authored-by: LauraGPT <LauraGPT@users.noreply.github.com>
2026-07-16 09:37:37 +08:00
Jakob
d55de09b7d Updated RAGcon model provider (go) (#16950)
### Summary
We have updated our model driver to work with go.
It is based on OpenAI-API-Compatible model provider.

Draft
#15519

Our old model provider
#13425
2026-07-15 20:59:23 +08:00
zhifu gao
06e36d24f4 feat(stt): add FunASR / SenseVoice provider (#16473)
### Summary

Adds FunASR as a self-hosted speech-to-text provider through its
OpenAI-compatible `/v1/audio/transcriptions` endpoint.

This is a focused replacement for #15526 by @Rene0422 and relates to
#15448. The unrelated Markdown parser changes from the previous branch
are intentionally removed so this PR contains only the FunASR provider
integration.

- register FunASR as a `SPEECH2TEXT` factory;
- add `FunASRSeq2txt` with `sensevoice` and `http://localhost:8000/v1`
defaults, an optional API key, URL normalization, and inherited
transcription handling;
- wire FunASR into the current local-provider schema with a prefilled
local URL and official documentation link;
- discover the server's `/v1/models` dynamically and expose every
returned model as speech-to-text in the model picker;
- use RAGFlow's existing default provider icon fallback instead of
referencing a missing `funasr` asset;
- list FunASR in the supported-provider documentation;
- add focused backend and frontend regression tests.

### Validation

- focused backend pytest suite -> `7 passed`
- real CPU `funasr-server` + RAGFlow provider smoke test -> discovered
`fun-asr-nano`, `sensevoice`, and `paraformer`; transcribed a real WAV
as `我现在在录一段测试音频` (`10` tokens, `0.504s`)
- `ruff check` and `ruff format --check` on the changed Python files
- `python3 -m py_compile` on the provider and its test
- JSON parse and a semantic assertion for exactly one enabled FunASR
`SPEECH2TEXT` factory
- focused frontend Jest test -> `2 passed`
- ESLint and Prettier on all changed TypeScript files
- `npm run build` -> production build succeeded (`14,181` modules
transformed)
- `git diff --check`

### Deployment

Run FunASR separately and point the RAGFlow provider at it:

```bash
pip install funasr
funasr-server --device cuda --model sensevoice
```

The API key remains optional because the stock local server does not
require authentication. A key can still be supplied when the endpoint is
protected by a gateway.

---------

Signed-off-by: LauraGPT <LauraGPT@users.noreply.github.com>
Co-authored-by: LauraGPT <LauraGPT@users.noreply.github.com>
2026-07-15 19:02:05 +08:00
Haruko386
166ed3c159 Json: add some aliyun models (#16926)
### Summary

As title
2026-07-15 15:42:54 +08:00
Jin Hai
b506d8ec5f Go: add more frameworks (#16915)
### Summary

1. Add hooks for server init
2. Add hooks for router init
3. Add jaeger and otel related config

Signed-off-by: Jin Hai <haijin.chn@gmail.com>
2026-07-14 22:20:26 +08:00
Yingfeng
30739b7f8e Fix compilation workflow (#16819)
Dataset_nav can not support large number of documents, introducing AHC
clustering as well as retrieval engine as the clustering database
2026-07-10 21:11:19 +08:00
Lynn
0ba1d37a10 Feat: optional url v1 (#16774) 2026-07-09 15:53:06 +08:00
Lynn
1430d0e431 Fix: provider name (#16733) 2026-07-09 10:19:10 +08:00
Kevin Hu
2c59d07bdb Feat: add wiki folder (#16749)
### Summary

Add wiki folders.
2026-07-08 20:08:14 +08:00
Jin Hai
21266286cb Go: add more commands and GCS supports (#16741)
### Summary

1. GCS supports
2. More commands
```
RAGFlow(admin)> ping store;
SUCCESS
RAGFlow(admin)> ping engine;
SUCCESS
RAGFlow(admin)> ping cache;
SUCCESS
```

---------

Signed-off-by: Jin Hai <haijin.chn@gmail.com>
2026-07-08 17:49:02 +08:00
Wang Qi
48ef1f4965 Dev: Fix nats host (#16656) 2026-07-06 11:50:37 +08:00
Jin Hai
83d09b16ce Fix Go: list providers order issue. (#16616)
### Summary

As title.

---------

Signed-off-by: Jin Hai <haijin.chn@gmail.com>
2026-07-03 18:27:32 +08:00
Jin Hai
1aa8abe373 Go: file syncer service framework (#16579)
### Summary

./ragflow_main --syncer to start file syncer


config yaml file has following config
```
file_syncer:
  max_concurrent_syncs: 4 # concurrent file sync threads
  sync_interval: 3 # check interval

```

---------

Signed-off-by: Jin Hai <haijin.chn@gmail.com>
2026-07-03 11:14:02 +08:00
Kevin Hu
62f94cd59b Feat: Add knowledge compilation workflows (#16515)
## Summary
- Add knowledge compilation template APIs, services, and builtin
template seed data
- Add advanced knowledge compile structure/artifact/RAPTOR workflow
support
- Update parsing, dataset/document APIs, and supporting services for
compilation workflows
2026-07-02 23:22:07 +08:00
Lynn
400476f0b3 Feat: SoMark (#16482)
Follow #15486
Co-authored-by: limuting <limuting233@gmail.com>
Co-authored-by: lutianyi <lutianyi233@163.com>
Co-authored-by: justinychuang <huangyicheng@soulcode.cn>
Co-authored-by: maybehokori <138367708+maybehokori@users.noreply.github.com>
2026-07-01 13:29:28 +08:00
Lynn
b6fa5ce4ea Fix: ollama provider (#16519) 2026-07-01 13:24:31 +08:00
sxxtony
06b07bbfd6 Add CAJAL scientific paper agent template (#14641)
### What problem does this PR solve?

Closes https://github.com/infiniflow/ragflow/issues/14571.

Adds CAJAL as a first-class local scientific-writing option in RAGFlow:

- registers `agnuxo/cajal-4b-p2pclaw` as a known Ollama chat model with
a 32K context setting
- adds a built-in “CAJAL scientific paper agent” template under the
existing agent template catalog
- preconfigures the agent for grounded scientific writing: retrieval
first, citation traceability, LaTeX-ready output, and explicit
limitations when evidence is missing
- adds unit coverage to ensure the template normalizes through RAGFlow’s
production template loader, keeps graph form data in sync, and exposes
the Ollama model option

Behavior/evidence gathered for the requested model:

- Hugging Face model metadata for `Agnuxo/CAJAL-4B-P2PCLAW` reports
`pipeline_tag=text-generation` and tags including `gguf`, `llama.cpp`,
`vllm`, `scientific-research`, `papers`, `academic-writing`, `latex`,
and `license:apache-2.0`.
- The model card documents CAJAL as a 4B scientific paper generation
model with 32K context, local inference, LaTeX/citation specialization,
and CPU-only support around 5 tok/s on Ryzen 7 5800X.
- Local CPU generation could not be completed on this machine because
the advertised Ollama model name is not currently resolvable from
Ollama’s registry: both
`https://registry.ollama.ai/v2/agnuxo/cajal-4b-p2pclaw/manifests/latest`
and
`https://registry.ollama.ai/v2/library/agnuxo/cajal-4b-p2pclaw/manifests/latest`
returned `404 Not Found`; the Hugging Face repo tree currently exposes
an 8.4 GB `model.safetensors` but no GGUF artifact in `main`. The
template therefore targets the documented Ollama model name for users
who have the local CAJAL deployment/model file available.

Verification run locally:

```bash
python3 -m pytest test/test_cajal_template_unit.py -q
# 3 passed in 0.34s

python3 - <<'PY'
import json, glob
for f in sorted(glob.glob('agent/templates/*.json') + ['conf/llm_factories.json']):
    with open(f, encoding='utf-8') as fp: json.load(fp)
print('json_ok')
PY
# json_ok

python3 -m ruff check test/test_cajal_template_unit.py
# All checks passed!

git diff --check
```

`uv run pytest
test/testcases/test_web_api/test_agent_app/test_cajal_template_unit.py
-q` was also attempted first, but dependency setup failed before test
collection while building `ormsgpack==1.5.0` from uv with a package
metadata parse error. Clearing uv’s `ormsgpack` cache and retrying
reproduced the same build failure, so the focused unit test was run with
the system Python environment instead.

### Type of change

- [ ] Bug Fix (non-breaking change which fixes an issue)
- [x] New Feature (non-breaking change which adds functionality)
- [ ] Documentation Update
- [ ] Refactoring
- [ ] Performance Improvement
- [ ] Other (please describe):

---------

Co-authored-by: sxxtony <sxxtony@users.noreply.github.com>
Co-authored-by: yzc <yzc@users.noreply.github.com>
Co-authored-by: Zhichang Yu <yuzhichang@gmail.com>
2026-07-01 09:35:37 +08:00
Rene Arredondo
dc8b6d767c fix(agent): inject uploaded attachments into LLM context (#15215) (#15220)
## Summary

Fixes #15215 — attachments uploaded to an agent were not reaching the
LLM.

When a user uploads a file in an agent chat, `canvas.run` parses it into
the `sys.files` global (text content for documents, `data:image/...`
URIs
for images — see `agent/canvas.py:752-768`). But the LLM/Agent
component's
`_prepare_prompt_variables` only substitutes variables the user's prompt
template explicitly references via `{var}` placeholders. The default
prompt is `[{"role": "user", "content": "{sys.query}"}]` with no
`{sys.files}`, so the parsed attachment content never reaches the model.

In the reporter's logs, this is why the agent saw only the bare query
`附件 摘要 attachment summary` and went searching the dataset instead of
reading the uploaded PDF.

## Fix

`agent/component/llm.py` — added `_collect_sys_files()` and an
auto-injection step in `_prepare_prompt_variables`:

- If `sys.files` is non-empty **and** neither `sys_prompt` nor any entry
  in `prompts` already contains `{sys.files}` (no double-injection),
  split the entries into text vs. `data:image/...` URIs.
- Image URIs are merged into `self.imgs`, which the existing logic uses
  to switch the chat model to `IMAGE2TEXT` and pass `images=...` to
  `async_chat`.
- Text content is appended to the last `user` role message in `msg`,
  mirroring how `dialog_service.async_chat_solo` handles attachments for
  the non-agent chat path (`api/db/services/dialog_service.py:318-321`).

Both `LLM._invoke_async` and `Agent._invoke_async` (tool-using) go
through `_prepare_prompt_variables`, so plain LLM nodes and Agent nodes
are fixed in both streaming and non-streaming paths.

## Test plan

- [ ] Upload a PDF attachment to an agent with the default `{sys.query}`
prompt and ask "summarize the attachment" — the model should answer
      from the file content rather than searching the knowledge base.
- [ ] Upload an image attachment to an agent and ask about its contents
—
      the model should switch to the vision-capable LLM and answer from
      the image.
- [ ] Verify that an agent whose prompt **does** include `{sys.files}`
      still works and does **not** include the file content twice.
- [ ] Verify that an agent run with no attachments behaves unchanged.
- [ ] Run `uv run pytest` to make sure no existing tests regress.

### Type of change

- [x] Bug Fix (non-breaking change which fixes an issue)
- [ ] New Feature (non-breaking change which adds functionality)
- [ ] Documentation Update
- [ ] Refactoring
- [ ] Performance Improvement
- [ ] Other (please describe):

---------

Co-authored-by: yzc <yuzhichang@gmail.com>
2026-06-30 15:48:59 +08:00
Wang Qi
9b726a519e Fix: failed to get embedding model by embd_id: model config not found BAAI/bge-m3@...@SILICONFLOW (#16445) 2026-06-29 15:40:29 +08:00
Tim Wang
ca96d61e73 Feat: Add New API model provider for OpenAI-compatible gateways (#15991)
## Summary

Add support for **"New API"** as a model provider, enabling connection
to [New API](https://github.com/QuantumNous/new-api) /
[one-api](https://github.com/songquanpeng/one-api) compatible gateways
that aggregate multiple LLM backends behind a unified OpenAI-compatible
`/v1` endpoint.

### Features

- **All model types**: Chat, Embedding, Rerank, Image2Text, TTS,
Speech2Text
- **List Models discovery**: `NewAPI(OpenAIAPICompatible)` class in
`model_meta.py` queries the gateway's `/v1/models` to auto-discover
available models via the native `GET /api/v1/providers/<name>/models`
endpoint
- **Model parameter editing**: Pencil icon on each discovered model row
to edit `model_type`, `max_tokens`, and `features` (e.g. tool call
support) before submitting
- **Custom model addition**: "Add Custom Model" button at the bottom of
the List Models dropdown for models not returned by the API
- **Gear icon settings**: Enabled the Settings gear button on provider
instances to manage models on existing instances (viewMode)
- **viewMode credential passthrough**: Fixed List Models in viewMode —
merges `initialValues` credentials when `api_key`/`base_url` fields are
hidden by `hideWhenInstanceExists`

### Changes

**Backend** (8 files):
- `rag/llm/chat_model.py` — `NewAPIChat(Base)` class
- `rag/llm/embedding_model.py` — `NewAPIEmbed(OpenAIEmbed)` class (no
auto `/v1` append)
- `rag/llm/rerank_model.py` — `NewAPIRerank(Base)` class (uses `/rerank`
endpoint)
- `rag/llm/cv_model.py` — `NewAPICv(GptV4)` class
- `rag/llm/tts_model.py` — `NewAPITTS(OpenAITTS)` class
- `rag/llm/sequence2txt_model.py` — `NewAPISeq2txt(GPTSeq2txt)` class
- `rag/llm/model_meta.py` — `NewAPI(OpenAIAPICompatible)` class for List
Models discovery
- `conf/llm_factories.json` — New API factory entry with all model type
tags

**Frontend** (8 files + 1 new SVG):
- `web/src/assets/svg/llm/new-api.svg` — New API logo icon
- `web/src/constants/llm.ts` — `LLMFactory.NewAPI` enum + `IconMap`
entry
- `web/src/components/svg-icon.tsx` — `NewAPI` added to `svgIcons`
-
`web/src/pages/user-setting/setting-model/modal/provider-modal/field-config/local-llm-configs.ts`
— New API `buildLocalConfig`
-
`web/src/pages/user-setting/setting-model/modal/provider-modal/constants.ts`
— `LIST_MODEL_PROVIDERS` includes NewAPI
- `web/src/pages/user-setting/setting-model/components/used-model.tsx` —
Enable Settings gear button
-
`web/src/pages/user-setting/setting-model/modal/provider-modal/hooks/use-list-models-picker.ts`
— viewMode credential merge + model editing state/handlers
-
`web/src/pages/user-setting/setting-model/modal/provider-modal/hooks/use-list-models-options.tsx`
— Pencil edit icon per model row
-
`web/src/pages/user-setting/setting-model/modal/provider-modal/index.tsx`
— `AddCustomModelDialog` import + edit dialog rendering

**Note on Go implementation**: A Go model driver (`NewAPIModel`
delegating to `OpenAIModel`) has been prepared but is deferred until the
Go runtime is enabled in a future release (current v0.26.0 images use
`API_PROXY_SCHEME=python` and do not compile Go binaries). Will submit
as a follow-up PR.

## Related

- Depends on: #15996 (provider instance API improvements — server-side
credential lookup, idempotent `add_model`, security fixes — required for
viewMode gear icon and batch model submission)

## Test plan

- [ ] Add New API provider with api_key and base_url pointing to an
OpenAI-compatible gateway
- [ ] Click "List Models" — should discover and display available models
from `/v1/models`
- [ ] Click pencil icon on a model — should open edit dialog to change
model_type, max_tokens, features
- [ ] Select multiple models and click OK — should add all selected
models
- [ ] Click gear icon on the added instance — should open viewMode with
List Models working
- [ ] In viewMode, select new models including pre-existing ones, click
OK — should succeed (requires #15996)
- [ ] Verify all model types work: create a Chat assistant, Embedding
KB, Rerank setting

🤖 Generated with [Claude Code](https://claude.com/claude-code)

---------

Co-authored-by: Tim Wang <wanghualoong@users.noreply.github.com>
Co-authored-by: Claude Opus 4.6 <noreply@anthropic.com>
2026-06-26 18:47:20 +08:00
Lynn
bf1eabea72 Feat: support new qwen model (#16385) 2026-06-26 17:30:16 +08:00
Hz_
0de8f3e127 feat: add missing qwen models to all_models.json (#16379)
Add 19 missing qwen models and 3 aliases to all_models.json.

Models added: qwen-image-2.0-pro (2026-06-22, 2026-04-22), qwen3.5-ocr,
qwen3.7-max-2026-05-17, qwen3.5-livetranslate-flash-realtime,
qwen3.5-omni-plus/flash-realtime, qwen-deep-research-2025-12-15,
qwen-flash-character-2026-02-26, qwen-plus-2025-11-05,
qwen-deep-search-planning, qwen3-s2s-flash-realtime-2025-09-22,
qwen-max-1201/longcontext/0107, qwen-1.8b-longcontext-chat

Aliases: qwen3.5-plus-2026-04-20, qwen-turbo-0919, qwen-1.8b-chat
2026-06-26 15:35:30 +08:00
Jin Hai
65afaa1292 Model config: add tools (#16371)
### What problem does this PR solve?

```
{
      "name": "glm-4-flash",
      "max_tokens": 128000,
      "model_types": [
        "chat"
      ],
      "tools": {
        "support": true
      }
}
```

```
RAGFlow(admin)> list provider 'zhipu-ai' models;
+------------+---------------+------------+---------------+----------------+-----------+-----------+
| dimensions | max_dimension | max_tokens | model_type    | name           | thinking  | tools     |
+------------+---------------+------------+---------------+----------------+-----------+-----------+
|            |               | 204800     | [chat]        | glm-5          | supported | supported |
|            |               | 204800     | [chat]        | glm-5-turbo    | supported | supported |
```

### Type of change

- [x] Bug Fix (non-breaking change which fixes an issue)

---------

Signed-off-by: Jin Hai <haijin.chn@gmail.com>
2026-06-26 11:37:51 +08:00
Jin Hai
7214a23614 Go: fix duplicate models (#16197)
### What problem does this PR solve?

1. Remove unused file
2. Remove duplicate models
3. Resort the function order

### Type of change

- [x] Bug Fix (non-breaking change which fixes an issue)
- [x] Refactoring

Signed-off-by: Jin Hai <haijin.chn@gmail.com>
2026-06-19 09:57:58 +08:00
Haruko386
b53b5bf12c Json add paddleOCR models (#16156)
close #15853

### What problem does this PR solve?

As title

### Type of change

- [x] Other (add models):
2026-06-18 17:57:41 +08:00
Wang Qi
b3ac03b96c Set default Paddle OCR URL (#16128)
Set default Paddle OCR URL
2026-06-17 14:29:20 +08:00
Rander
1235da7093 refactor(paddleocr): migrate from sync API to async Job API (#15967)
## Summary

Migrate PaddleOCR integration from the deprecated synchronous HTTP API
to the new asynchronous Job API (`submit → poll → fetch`), aligning with
PaddleOCR 3.6.0+ architecture.

## Changes

### Python (`deepdoc/parser/paddleocr_parser.py`)
- Replace synchronous `requests.post()` with async Job API flow (submit
→ poll → fetch)
- Authentication: `token {token}` → `Bearer {token}`
- File transfer: base64 JSON body → multipart file upload
- Polling: exponential backoff (initial 3s, ×1.5, max 15s, timeout
controlled by `request_timeout`)
- Result: fetch full JSONL from result URL, preserving `prunedResult`
with bbox info for crop functionality
- Rename `api_url` → `base_url` (backward compatible: `api_url` still
accepted as fallback)

### Python (`rag/llm/ocr_model.py`)
- Prefer `paddleocr_base_url` / `PADDLEOCR_BASE_URL`, fallback to
`paddleocr_api_url` / `PADDLEOCR_API_URL`

### Go (`internal/entity/models/paddleocr.go`)
- Add `Client-Platform: ragflow` header to submit and poll requests
- Change polling from fixed 3s to exponential backoff (initial 3s, ×1.5,
max 15s)

### Python (`common/constants.py`)
- Add `PADDLEOCR_BASE_URL` to env keys and default config

## Backward Compatibility

- Old env var `PADDLEOCR_API_URL` still works (used as fallback)
- Frontend field `paddleocr_api_url` still works (backend reads it as
fallback)
- No user-facing configuration changes required for existing setups

## Why not use the `paddleocr` SDK package directly?

RAGFlow's `_transfer_to_sections()` relies on `prunedResult` (containing
`block_bbox`, `block_label`, `parsing_res_list`) from the raw API
response for PDF crop functionality. The SDK's public `parse_document()`
API only returns `DocParsingResult` with `markdown_text`, discarding the
bbox data. Therefore we implement the async Job API flow directly via
HTTP, following the same logic as the SDK internally.
2026-06-16 19:34:21 +08:00
Hz_
8047857de0 fix(go): all_models.json (#16075)
### What problem does this PR solve?

This PR fixes Go admin server startup failure caused by duplicate model
aliases in conf/all_models.json.

The model provider loader builds a global lookup table from both model
name and alias values. Some aliases duplicated another model's name or
another
alias, for example amazon.titan-embed-text-v1, which caused startup to
fail with a duplicate alias error. This PR removes conflicting duplicate
aliases
  while keeping all model definitions intact.
2026-06-16 15:31:17 +08:00
Hz_
4a33455a20 feat(go-models): add more providers (#16017)
### What problem does this PR solve?

add more providers.
2026-06-16 12:54:19 +08:00
Haruko386
cafd8a1125 Json: add many models to all_models.json (#16013)
### What problem does this PR solve?

As title

### Type of change

- [x] Other (please describe): add some models
2026-06-15 15:25:49 +08:00
Hz_
eb6ea284a8 feat(go-models): Add google models to all_models.json (#16007)
### What problem does this PR solve?

Add google models to all_models.json
2026-06-15 11:37:56 +08:00
zaviermeekz-cpu
83e2180e80 fix: use /api/tags endpoint for Ollama model listing (#16000) (#16003)
After upgrading to v0.26.0, the Ollama provider returns an empty model
list because the Go rewrite uses `/api/ps` (only running models) instead
of `/api/tags` (all installed models). This PR changes the endpoint to
`/api/tags`, restoring the ability to list and add Ollama models.

Closes #16000
2026-06-15 10:20:15 +08:00
Haruko386
4115282c5f Json[model-provider] add nvidia, moonshot, minimax, claude, GPT models (#15970)
### What problem does this PR solve?

As title

### Type of change

- [x] Other (please describe): add models
2026-06-12 19:16:10 +08:00
Haruko386
547139da29 fix(Go-models): preserve model name lookup when aliases exist (#15969)
### What problem does this PR solve?

As title

### Type of change

- [x] Bug Fix (non-breaking change which fixes an issue)
- [x] Documentation Update
2026-06-12 19:15:28 +08:00
Jin Hai
e96bc37d06 Go: use NATS as the message queue (#15327)
### What problem does this PR solve?

```
RAGFlow(admin)> mq publish 'msg2';
SUCCESS
RAGFlow(admin)> mq publish 'msg3';
SUCCESS
RAGFlow(admin)> mq list;
+---------+---------------+
| message | subject       |
+---------+---------------+
| msg1    | tasks.RAGFLOW |
| msg2    | tasks.RAGFLOW |
| msg3    | tasks.RAGFLOW |
+---------+---------------+
RAGFlow(admin)> mq pull 2;
+---------+---------------+
| message | subject       |
+---------+---------------+
| msg1    | tasks.RAGFLOW |
| msg2    | tasks.RAGFLOW |
+---------+---------------+
RAGFlow(admin)> mq pull noack;
+---------+---------------+
| message | subject       |
+---------+---------------+
| abc     | tasks.RAGFLOW |
+---------+---------------+
RAGFlow(admin)> mq show
+-------------------+----------------+--------+---------------+---------------+-------------------+---------------+
| ack_pending_count | consumer_count | memory | message_count | pending_count | redelivered_count | waiting_count |
+-------------------+----------------+--------+---------------+---------------+-------------------+---------------+
| 2                 | 1              | 0      | 2             | 0             | 1                 | 0             |
+-------------------+----------------+--------+---------------+---------------+-------------------+---------------+

RAGFlow(admin)> list ingestors;
+--------------+-------------------------------------------+--------+
| host         | name                                      | status |
+--------------+-------------------------------------------+--------+
| 192.168.1.38 | ingestor-8f0e4bd5650a4ac58b0151969fbf6935 | alive  |
+--------------+-------------------------------------------+--------+

RAGFlow(admin)> list ingestion tasks;
+----------------------------------+----------------------------------+-----------+------+-------------+----------------------------------+
| document_id                      | id                               | status    | step | user        | user_id                          |
+----------------------------------+----------------------------------+-----------+------+-------------+----------------------------------+
| ffe64fae423411f1a2d938a74640adcc | 90d3d0f6528941c1ac8eb0360effccc4 | COMPLETED | 5    | aaa@aaa.com | 2ba4881420fa11f19e9c38a74640adcc |
+----------------------------------+----------------------------------+-----------+------+-------------+----------------------------------+

RAGFlow(admin)> remove ingestion tasks '90d3d0f6528941c1ac8eb0360effccc4';
+---------+----------------------------------+
| delete  | task_id                          |
+---------+----------------------------------+
| success | 90d3d0f6528941c1ac8eb0360effccc4 |
+---------+----------------------------------+

RAGFlow(admin)> stop ingestion tasks 'e89e20d9a25848a1b79bd9345ddbfe1d';
+----------+----------------------------------+
| status   | task_id                          |
+----------+----------------------------------+
| STOPPING | e89e20d9a25848a1b79bd9345ddbfe1d |
+----------+----------------------------------+

# Publish a message
RAGFlow(admin)> mq publish 'cdd';
SUCCESS

# List current tasks in the message queue
RAGFlow(admin)> mq list
+----------------------------------+---------------+
| message                          | subject       |
+----------------------------------+---------------+
| 7ce392a3c1624cd2be4b5276e8825059 | tasks.RAGFLOW |
+----------------------------------+---------------+

# Consume a task from the message queue
RAGFlow(admin)> mq pull
+------+-----+----------------+
| ack  | id  | type           |
+------+-----+----------------+
| true | cdd | ingestion_test |
+------+-----+----------------+

# User mode
# List ingestion tasks, followed by dataset id
RAGFlow(user)> list ingestion tasks from '0abe79f9423311f1ad8d38a74640adcc';
+---------------------------+---------------+----------------------------------+----------------------------------+----------------------------------+--------+-----------+---------------------------+---------------+----------------------------------+
| create_date               | create_time   | dataset_id                       | document_id                      | id                               | schema | status    | update_date               | update_time   | user_id                          |
+---------------------------+---------------+----------------------------------+----------------------------------+----------------------------------+--------+-----------+---------------------------+---------------+----------------------------------+
| 2026-05-30T20:21:06+08:00 | 1780143666289 | 0abe79f9423311f1ad8d38a74640adcc | ffe64fae423411f1a2d938a74640adcc | 8d758cd14a8b4ba8ab505003fb52017d |        | COMPLETED | 2026-05-30T20:21:26+08:00 | 1780143686431 | 2ba4881420fa11f19e9c38a74640adcc |
+---------------------------+---------------+----------------------------------+----------------------------------+----------------------------------+--------+-----------+---------------------------+---------------+----------------------------------+

RAGFlow(user)> list ingestion tasks;
+---------------------------+---------------+----------------------------------+----------------------------------+----------------------------------+--------+-----------+---------------------------+---------------+----------------------------------+
| create_date               | create_time   | dataset_id                       | document_id                      | id                               | schema | status    | update_date               | update_time   | user_id                          |
+---------------------------+---------------+----------------------------------+----------------------------------+----------------------------------+--------+-----------+---------------------------+---------------+----------------------------------+
| 2026-06-02T19:02:31+08:00 | 1780398151417 | 0abe79f9423311f1ad8d38a74640adcc | ffe64fae423411f1a2d938a74640adcc | e89e20d9a25848a1b79bd9345ddbfe1d |        | COMPLETED | 2026-06-02T19:02:52+08:00 | 1780398172208 | 2ba4881420fa11f19e9c38a74640adcc |
+---------------------------+---------------+----------------------------------+----------------------------------+----------------------------------+--------+-----------+---------------------------+---------------+----------------------------------+

# Create an ingestion task
# First argument is document id, second argument is dataset id
RAGFlow(user)> start ingestion 'ffe64fae423411f1a2d938a74640adcc' from '0abe79f9423311f1ad8d38a74640adcc';
+----------------------------------+-------------------------------------------+
| document_id                      | result                                    |
+----------------------------------+-------------------------------------------+
| ffe64fae423411f1a2d938a74640adcc | task_id: 8d758cd14a8b4ba8ab505003fb52017d |
+----------------------------------+-------------------------------------------+

# Pause an ingestion task, first argument is ingestion id
RAGFlow(user)> stop ingestion '8d758cd14a8b4ba8ab505003fb52017d';
+---------------------------+---------------+----------------------------------+----------------------------------+----------------------------------+--------+-----------+---------------------------+---------------+----------------------------------+
| create_date               | create_time   | dataset_id                       | document_id                      | id                               | schema | status    | update_date               | update_time   | user_id                          |
+---------------------------+---------------+----------------------------------+----------------------------------+----------------------------------+--------+-----------+---------------------------+---------------+----------------------------------+
| 2026-05-30T20:21:06+08:00 | 1780143666289 | 0abe79f9423311f1ad8d38a74640adcc | ffe64fae423411f1a2d938a74640adcc | 8d758cd14a8b4ba8ab505003fb52017d |        | COMPLETED | 2026-05-30T20:21:26+08:00 | 1780143686431 | 2ba4881420fa11f19e9c38a74640adcc |
+---------------------------+---------------+----------------------------------+----------------------------------+----------------------------------+--------+-----------+---------------------------+---------------+----------------------------------+

# Delete an ingestion task
RAGFlow(api/default)> remove ingestion tasks 'f366450a27d54677aec1c7090add30f0';
+---------+----------------------------------+
| remove  | task_id                          |
+---------+----------------------------------+
| success | f366450a27d54677aec1c7090add30f0 |
+---------+----------------------------------+

```

### Type of change

- [x] New Feature (non-breaking change which adds functionality)

---------

Signed-off-by: Jin Hai <haijin.chn@gmail.com>
2026-06-12 14:56:44 +08:00
Hz_
30724140d2 feat(go): Add Z.ai model entries to all_models.json Add missing Qwen commercial models and provider aliases (#15929)
### What problem does this PR solve?

- Add Z.ai model definitions to `conf/all_models.json`.
- Add missing Qwen / DashScope commercial API-only models, including:
    - Qwen3.7 / Qwen3.6 / Qwen3.5 Max, Plus, Flash families
    - Qwen Coder and Math commercial models
- Qwen VL, OCR, Omni, ASR, TTS, translation, image generation, and image
editing models
- Add verified provider-specific aliases for supported Qwen models:
  - DashScope / Alibaba Cloud Model Studio model IDs
  - OpenRouter `qwen/...` aliases
  - Amazon Bedrock `qwen.qwen3-*` model IDs
- Add `thinking` metadata for Qwen models that officially support
thinking mode.
- Remove aliases that exactly duplicate their own canonical `name`.
2026-06-12 14:33:01 +08:00
Haruko386
e3be39d0de Json: add some models (#15947)
### What problem does this PR solve?

As title

### Type of change

- [x] Other (please describe): add models
2026-06-12 14:32:21 +08:00
Idriss Sbaaoui
9871a7e0b6 fix: replicate model provider (#15933)
### What problem does this PR solve?

FIx replicate model provider failing with valid api key 

### Type of change

- [x] Bug Fix (non-breaking change which fixes an issue)

---------

Co-authored-by: Wang Qi <wangq8@outlook.com>
2026-06-11 15:08:33 +08:00
Hz_
515acf4f60 fix(go): Fix case-insensitive model alias lookup (#15911)
## Summary

- Normalize model alias index keys to lowercase
- Detect lowercase alias collisions during provider manager
initialization
- Fix ListModels metadata mapping for mixed-case provider aliases
2026-06-10 20:36:43 +08:00
buua436
dcf623d60d feat: support multi-type factory models (#15893)
### What problem does this PR solve?
Support factory models with multiple model types, so visual chat models
can be exposed as both image2text and chat while preserving the database
model-type-per-record design.

This also updates the SILICONFLOW model list and adds a helper script to
refresh SiliconFlow models from the provider API.

### Type of change
- [x] New Feature (non-breaking change which adds functionality)
2026-06-10 15:35:21 +08:00
Wang Qi
899f76af6b Fix add OpenRouter base_url, UI need to select at least one model to verify (#15894)
Fix add OpenRouter base_url, UI need to select at least one model to verify
2026-06-10 14:59:27 +08:00
Hz_
38755c705a feat(go): Add DeepSeek models and Gitee alias metadata tests (#15885)
This PR expands conf/all_models.json with DeepSeek model entries and
provider aliases.

Changes:

- Added DeepSeek model entries across `V4`, `V3.2`, `V3.1`, `V3`, `R1`,
`Coder`, `Math`, `VL`, `OCR`, `Prover`, `MoE`, and `LLM` series.
- Normalized model name values to lowercase canonical IDs.
- Added alias values for official DeepSeek/Hugging Face names and
provider-specific names from OpenRouter, VolcEngine, SiliconFlow,
HuaweiCloud, and QiniuCloud.
- Preserved model metadata such as max_tokens, model_types, and thinking
where applicable.
- Added Gitee ListModels tests to verify DeepSeek aliases map back to
model metadata from all_models.json.
- Added an optional Gitee integration test gated by
GITEE_LIST_MODELS_INTEGRATION=1.

Test:

/usr/local/go/bin/go clean -cache
/usr/local/go/bin/go test ./internal/entity/models -run
'TestGiteeListModels(MapsAllDeepSeekAliasesToModelMetadata|KeepsOwnedBySuffixAfterAliasMetadataLookup|
Integration)'
2026-06-10 13:59:23 +08:00
Jin Hai
55abf4f565 Go: new CLI command, list all models and show model (#15786)
### What problem does this PR solve?

```
RAGFlow(user)> list models;
+---------------------------+------------+-------------+--------------------+---------------------------------------------+
| alias                     | max_tokens | model_types | name               | thinking                                    |
+---------------------------+------------+-------------+--------------------+---------------------------------------------+
|                           | 1048576    | [chat]      | deepseek-v4-flash  | map[clear_thinking:true default_value:true] |
|                           | 1048576    | [chat]      | deepseek-v4-pro    | map[clear_thinking:true default_value:true] |
|                           | 1024000    | [chat]      | minimax-m3         | map[clear_thinking:true default_value:true] |
|                           | 64000      | [vision]    | glm-4.5v           | map[clear_thinking:true default_value:true] |
| [baai/bge-m3]             | 8192       | [embedding] | bge-m3             |                                             |
| [baai/bge-reranker-v2-m3] | 1024       | [rerank]    | bge-reranker-v2-m3 |                                             |
|                           |            | [tts]       | step-audio-tts-3b  |                                             |
| [qwen/qwen3-asr-1.7b]     |            | [asr]       | qwen3-asr-1.7b     |                                             |
| [paddleocr-vl-1.5]        |            | [ocr]       | paddleocr-vl-0.9b  |                                             |
+---------------------------+------------+-------------+--------------------+---------------------------------------------+
RAGFlow(user)> show model 'minimax-m3';
+--------------+---------------------------------------------+
| field        | value                                       |
+--------------+---------------------------------------------+
| name         | minimax-m3                                  |
| max_tokens   | 1024000                                     |
| model_types  | [chat]                                      |
| thinking     | map[clear_thinking:true default_value:true] |
| class        |                                             |
| alias        |                                             |
| ModelTypeMap |                                             |
+--------------+---------------------------------------------+
RAGFlow(user)> show model 'baai/bge-m3';
+--------------+---------------+
| field        | value         |
+--------------+---------------+
| model_types  | [embedding]   |
| thinking     |               |
| class        |               |
| alias        | [baai/bge-m3] |
| ModelTypeMap |               |
| name         | bge-m3        |
| max_tokens   | 8192          |
+--------------+---------------+
```

---------

Signed-off-by: Jin Hai <haijin.chn@gmail.com>
2026-06-08 21:38:15 +08:00
Lynn
b9f06e6095 Feat: model list (#15774)
### What problem does this PR solve?

Support model list for VolcEngine.

### Type of change

- [x] New Feature (non-breaking change which adds functionality)
2026-06-08 20:18:00 +08:00
oktofeesh
25df0a6725 fix(go-models): validate URL suffix config keys (#15734)
## Summary

Fixes typoed model-provider URL suffix keys and adds strict nested
decoding so future URL suffix config mistakes fail during provider
loading instead of being silently ignored.
2026-06-08 19:29:36 +08:00
Haruko386
8dc7f1d95e Go: implement ASR and TTS for xiaomi (#15765)
### What problem does this PR solve?

**Verified from CLI**
```
RAGFlow(user)> chat with 'mimo-v2.5@test@xiaomi' message 'who r u'
Answer: Hello! I'm MiMo-v2.5, a large language model developed by Xiaomi's LLM Core Team. You can think of me as a friendly AI assistant ready to help you answer questions, have conversations, or work on creative tasks. My context window can handle up to 1 million tokens, so we can dive into pretty long discussions or documents if you'd like. What can I help you with today?
Time: 3.831830

RAGFlow(user)> stream chat with 'mimo-v2.5@test@xiaomi' message 'who r u'
Answer:  there! I'm MiMo-v2.5, an AI assistant created by the Xiaomi LLM Core Team. I'm here to chat, help out, answer questions, or just have a friendly conversation. Think of me as a helpful buddy with a pretty big memory (1 million tokens worth!). What can I do for you today?😊
Time: 2.421630

RAGFlow(user)> think chat with 'mimo-v2.5@test@xiaomi' message 'who r u'
Thinking: The user is asking a simple question about who I am. According to my system prompt, I should:
- Identify myself as **MiMo-v2.5**
- State that I was developed by the **Xiaomi LLM Core Team**
- Answer in first person and be warm and conversational
Answer: Hey there! 👋

I'm **MiMo**, an AI assistant created by the **Xiaomi LLM Core Team**. Think of me as a friendly chat buddy who's here to help you with all sorts of questions and tasks!

I love having conversations, answering questions, brainstorming ideas, and helping people figure things out. Whether you want to chat, need help with something specific, or just want to explore ideas together — I'm here for it! 😊

What can I help you with today?
Time: 6.651589

RAGFlow(user)> tts with 'mimo-v2.5-tts@test@xiaomi' text 'hello? show yourself' play format 'wav' param '{"voice": "Chloe"}'
SUCCESS

RAGFlow(user)> asr with 'mimo-v2.5-asr@test@xiaomi' audio './internal/test.wav' param '{"language": "zh"}'
+------------------------------------------------------------------------------------------------------------------------+
| text                                                                                                                   |
+------------------------------------------------------------------------------------------------------------------------+
| 1 The examination and testimony of the experts enabled the commission to conclude that five shots may have been fired. |
+------------------------------------------------------------------------------------------------------------------------+
```

### Type of change

- [x] New Feature (non-breaking change which adds functionality)
- [x] Refactoring
2026-06-08 19:27:45 +08:00