diff --git a/src/backend/base/langflow/components/processing/converter.py b/src/backend/base/langflow/components/processing/converter.py index 3bfd8c5da..72717fd1b 100644 --- a/src/backend/base/langflow/components/processing/converter.py +++ b/src/backend/base/langflow/components/processing/converter.py @@ -118,7 +118,9 @@ class TypeConverterComponent(Component): if isinstance(input_value, str): input_value = Message(text=input_value) - return convert_to_message(input_value) + result = convert_to_message(input_value) + self.status = result + return result def convert_to_data(self) -> Data: """Convert input to Data type.""" @@ -128,7 +130,9 @@ class TypeConverterComponent(Component): if isinstance(input_value, str): input_value = Message(text=input_value) - return convert_to_data(input_value) + result = convert_to_data(input_value) + self.status = result + return result def convert_to_dataframe(self) -> DataFrame: """Convert input to DataFrame type.""" @@ -138,4 +142,6 @@ class TypeConverterComponent(Component): if isinstance(input_value, str): input_value = Message(text=input_value) - return convert_to_dataframe(input_value) + result = convert_to_dataframe(input_value) + self.status = result + return result diff --git a/src/backend/base/langflow/initial_setup/starter_projects/Custom Component Maker.json b/src/backend/base/langflow/initial_setup/starter_projects/Custom Component Maker.json index 2d2e416e4..c4b07b9d7 100644 --- a/src/backend/base/langflow/initial_setup/starter_projects/Custom Component Maker.json +++ b/src/backend/base/langflow/initial_setup/starter_projects/Custom Component Maker.json @@ -524,8 +524,8 @@ }, "tool_mode": false }, - "type": "Memory", - "selected_output": "dataframe" + "selected_output": "dataframe", + "type": "Memory" }, "dragging": false, "height": 262, @@ -774,8 +774,8 @@ }, "tool_mode": false }, - "type": "Prompt", - "selected_output": "prompt" + "selected_output": "prompt", + "type": "Prompt" }, "dragging": false, "height": 685, @@ -1196,8 +1196,8 @@ }, "tool_mode": false }, - "type": "URL", - "selected_output": "text" + "selected_output": "text", + "type": "URL" }, "dragging": false, "height": 365, @@ -1559,8 +1559,8 @@ }, "tool_mode": false }, - "type": "URL", - "selected_output": "text" + "selected_output": "text", + "type": "URL" }, "dragging": false, "height": 661, @@ -1916,8 +1916,8 @@ }, "tool_mode": false }, - "type": "URL", - "selected_output": "text" + "selected_output": "text", + "type": "URL" }, "dragging": false, "height": 365, @@ -2259,9 +2259,9 @@ }, "tool_mode": false }, + "selected_output": "text_output", "showNode": true, - "type": "AnthropicModel", - "selected_output": "text_output" + "type": "AnthropicModel" }, "dragging": false, "id": "AnthropicModel-I7I40", @@ -2572,9 +2572,9 @@ }, "tool_mode": false }, + "selected_output": "message", "showNode": false, - "type": "ChatInput", - "selected_output": "message" + "type": "ChatInput" }, "dragging": false, "id": "ChatInput-gwwtq", @@ -2961,7 +2961,7 @@ "show": true, "title_case": false, "type": "code", - "value": "from typing import Any\n\nfrom langflow.custom import Component\nfrom langflow.io import HandleInput, Output, TabInput\nfrom langflow.schema import Data, DataFrame, Message\n\n\ndef convert_to_message(v) -> Message:\n \"\"\"Convert input to Message type.\n\n Args:\n v: Input to convert (Message, Data, DataFrame, or dict)\n\n Returns:\n Message: Converted Message object\n \"\"\"\n return v if isinstance(v, Message) else v.to_message()\n\n\ndef convert_to_data(v: DataFrame | Data | Message | dict) -> Data:\n \"\"\"Convert input to Data type.\n\n Args:\n v: Input to convert (Message, Data, DataFrame, or dict)\n\n Returns:\n Data: Converted Data object\n \"\"\"\n if isinstance(v, dict):\n return Data(v)\n return v if isinstance(v, Data) else v.to_data()\n\n\ndef convert_to_dataframe(v: DataFrame | Data | Message | dict) -> DataFrame:\n \"\"\"Convert input to DataFrame type.\n\n Args:\n v: Input to convert (Message, Data, DataFrame, or dict)\n\n Returns:\n DataFrame: Converted DataFrame object\n \"\"\"\n if isinstance(v, dict):\n return DataFrame([v])\n return v if isinstance(v, DataFrame) else v.to_dataframe()\n\n\nclass TypeConverterComponent(Component):\n display_name = \"Type Convert\"\n description = \"Convert between different types (Message, Data, DataFrame)\"\n icon = \"repeat\"\n\n inputs = [\n HandleInput(\n name=\"input_data\",\n display_name=\"Input\",\n input_types=[\"Message\", \"Data\", \"DataFrame\"],\n info=\"Accept Message, Data or DataFrame as input\",\n required=True,\n ),\n TabInput(\n name=\"output_type\",\n display_name=\"Output Type\",\n options=[\"Message\", \"Data\", \"DataFrame\"],\n info=\"Select the desired output data type\",\n real_time_refresh=True,\n value=\"Message\",\n ),\n ]\n\n outputs = [\n Output(\n display_name=\"Message Output\",\n name=\"message_output\",\n method=\"convert_to_message\",\n )\n ]\n\n def update_outputs(self, frontend_node: dict, field_name: str, field_value: Any) -> dict:\n \"\"\"Dynamically show only the relevant output based on the selected output type.\"\"\"\n if field_name == \"output_type\":\n # Start with empty outputs\n frontend_node[\"outputs\"] = []\n\n # Add only the selected output type\n if field_value == \"Message\":\n frontend_node[\"outputs\"].append(\n Output(\n display_name=\"Message Output\",\n name=\"message_output\",\n method=\"convert_to_message\",\n ).to_dict()\n )\n elif field_value == \"Data\":\n frontend_node[\"outputs\"].append(\n Output(\n display_name=\"Data Output\",\n name=\"data_output\",\n method=\"convert_to_data\",\n ).to_dict()\n )\n elif field_value == \"DataFrame\":\n frontend_node[\"outputs\"].append(\n Output(\n display_name=\"DataFrame Output\",\n name=\"dataframe_output\",\n method=\"convert_to_dataframe\",\n ).to_dict()\n )\n\n return frontend_node\n\n def convert_to_message(self) -> Message:\n \"\"\"Convert input to Message type.\"\"\"\n input_value = self.input_data[0] if isinstance(self.input_data, list) else self.input_data\n\n # Handle string input by converting to Message first\n if isinstance(input_value, str):\n input_value = Message(text=input_value)\n\n return convert_to_message(input_value)\n\n def convert_to_data(self) -> Data:\n \"\"\"Convert input to Data type.\"\"\"\n input_value = self.input_data[0] if isinstance(self.input_data, list) else self.input_data\n\n # Handle string input by converting to Message first\n if isinstance(input_value, str):\n input_value = Message(text=input_value)\n\n return convert_to_data(input_value)\n\n def convert_to_dataframe(self) -> DataFrame:\n \"\"\"Convert input to DataFrame type.\"\"\"\n input_value = self.input_data[0] if isinstance(self.input_data, list) else self.input_data\n\n # Handle string input by converting to Message first\n if isinstance(input_value, str):\n input_value = Message(text=input_value)\n\n return convert_to_dataframe(input_value)\n" + "value": "from typing import Any\n\nfrom langflow.custom import Component\nfrom langflow.io import HandleInput, Output, TabInput\nfrom langflow.schema import Data, DataFrame, Message\n\n\ndef convert_to_message(v) -> Message:\n \"\"\"Convert input to Message type.\n\n Args:\n v: Input to convert (Message, Data, DataFrame, or dict)\n\n Returns:\n Message: Converted Message object\n \"\"\"\n return v if isinstance(v, Message) else v.to_message()\n\n\ndef convert_to_data(v: DataFrame | Data | Message | dict) -> Data:\n \"\"\"Convert input to Data type.\n\n Args:\n v: Input to convert (Message, Data, DataFrame, or dict)\n\n Returns:\n Data: Converted Data object\n \"\"\"\n if isinstance(v, dict):\n return Data(v)\n return v if isinstance(v, Data) else v.to_data()\n\n\ndef convert_to_dataframe(v: DataFrame | Data | Message | dict) -> DataFrame:\n \"\"\"Convert input to DataFrame type.\n\n Args:\n v: Input to convert (Message, Data, DataFrame, or dict)\n\n Returns:\n DataFrame: Converted DataFrame object\n \"\"\"\n if isinstance(v, dict):\n return DataFrame([v])\n return v if isinstance(v, DataFrame) else v.to_dataframe()\n\n\nclass TypeConverterComponent(Component):\n display_name = \"Type Convert\"\n description = \"Convert between different types (Message, Data, DataFrame)\"\n icon = \"repeat\"\n\n inputs = [\n HandleInput(\n name=\"input_data\",\n display_name=\"Input\",\n input_types=[\"Message\", \"Data\", \"DataFrame\"],\n info=\"Accept Message, Data or DataFrame as input\",\n required=True,\n ),\n TabInput(\n name=\"output_type\",\n display_name=\"Output Type\",\n options=[\"Message\", \"Data\", \"DataFrame\"],\n info=\"Select the desired output data type\",\n real_time_refresh=True,\n value=\"Message\",\n ),\n ]\n\n outputs = [\n Output(\n display_name=\"Message Output\",\n name=\"message_output\",\n method=\"convert_to_message\",\n )\n ]\n\n def update_outputs(self, frontend_node: dict, field_name: str, field_value: Any) -> dict:\n \"\"\"Dynamically show only the relevant output based on the selected output type.\"\"\"\n if field_name == \"output_type\":\n # Start with empty outputs\n frontend_node[\"outputs\"] = []\n\n # Add only the selected output type\n if field_value == \"Message\":\n frontend_node[\"outputs\"].append(\n Output(\n display_name=\"Message Output\",\n name=\"message_output\",\n method=\"convert_to_message\",\n ).to_dict()\n )\n elif field_value == \"Data\":\n frontend_node[\"outputs\"].append(\n Output(\n display_name=\"Data Output\",\n name=\"data_output\",\n method=\"convert_to_data\",\n ).to_dict()\n )\n elif field_value == \"DataFrame\":\n frontend_node[\"outputs\"].append(\n Output(\n display_name=\"DataFrame Output\",\n name=\"dataframe_output\",\n method=\"convert_to_dataframe\",\n ).to_dict()\n )\n\n return frontend_node\n\n def convert_to_message(self) -> Message:\n \"\"\"Convert input to Message type.\"\"\"\n input_value = self.input_data[0] if isinstance(self.input_data, list) else self.input_data\n\n # Handle string input by converting to Message first\n if isinstance(input_value, str):\n input_value = Message(text=input_value)\n\n result = convert_to_message(input_value)\n self.status = result\n return result\n\n def convert_to_data(self) -> Data:\n \"\"\"Convert input to Data type.\"\"\"\n input_value = self.input_data[0] if isinstance(self.input_data, list) else self.input_data\n\n # Handle string input by converting to Message first\n if isinstance(input_value, str):\n input_value = Message(text=input_value)\n\n result = convert_to_data(input_value)\n self.status = result\n return result\n\n def convert_to_dataframe(self) -> DataFrame:\n \"\"\"Convert input to DataFrame type.\"\"\"\n input_value = self.input_data[0] if isinstance(self.input_data, list) else self.input_data\n\n # Handle string input by converting to Message first\n if isinstance(input_value, str):\n input_value = Message(text=input_value)\n\n result = convert_to_dataframe(input_value)\n self.status = result\n return result\n" }, "input_data": { "_input_type": "HandleInput", @@ -3010,9 +3010,9 @@ }, "tool_mode": false }, + "selected_output": "message_output", "showNode": true, - "type": "TypeConverterComponent", - "selected_output": "message_output" + "type": "TypeConverterComponent" }, "id": "TypeConverterComponent-Vb89B", "measured": { diff --git a/src/backend/base/langflow/initial_setup/starter_projects/Meeting Summary.json b/src/backend/base/langflow/initial_setup/starter_projects/Meeting Summary.json index 890353c73..c771753d2 100644 --- a/src/backend/base/langflow/initial_setup/starter_projects/Meeting Summary.json +++ b/src/backend/base/langflow/initial_setup/starter_projects/Meeting Summary.json @@ -446,9 +446,9 @@ }, "tool_mode": false }, + "selected_output": "transcription_result", "showNode": true, - "type": "AssemblyAITranscriptionJobPoller", - "selected_output": "transcription_result" + "type": "AssemblyAITranscriptionJobPoller" }, "id": "AssemblyAITranscriptionJobPoller-VCkre", "measured": { @@ -998,9 +998,9 @@ }, "tool_mode": false }, + "selected_output": "text_output", "showNode": true, - "type": "OpenAIModel", - "selected_output": "text_output" + "type": "OpenAIModel" }, "id": "OpenAIModel-adSHw", "measured": { @@ -1151,9 +1151,9 @@ }, "tool_mode": false }, + "selected_output": "prompt", "showNode": true, - "type": "Prompt", - "selected_output": "prompt" + "type": "Prompt" }, "id": "Prompt-Vzk5z", "measured": { @@ -2144,9 +2144,9 @@ }, "tool_mode": false }, + "selected_output": "text_output", "showNode": true, - "type": "OpenAIModel", - "selected_output": "text_output" + "type": "OpenAIModel" }, "id": "OpenAIModel-A8LqG", "measured": { @@ -2623,9 +2623,9 @@ }, "tool_mode": false }, + "selected_output": "prompt", "showNode": true, - "type": "Prompt", - "selected_output": "prompt" + "type": "Prompt" }, "id": "Prompt-iKEvN", "measured": { @@ -2948,9 +2948,9 @@ }, "tool_mode": false }, + "selected_output": "dataframe", "showNode": true, - "type": "Memory", - "selected_output": "dataframe" + "type": "Memory" }, "id": "Memory-YN8aN", "measured": { @@ -3248,9 +3248,9 @@ }, "tool_mode": false }, + "selected_output": "message", "showNode": false, - "type": "ChatInput", - "selected_output": "message" + "type": "ChatInput" }, "id": "ChatInput-xfgsq", "measured": { @@ -3428,7 +3428,7 @@ } ], "pinned": false, - "score": 1.8578044550916993e-05, + "score": 0.000018578044550916993, "template": { "_type": "Component", "api_key": { @@ -3692,9 +3692,9 @@ }, "tool_mode": false }, + "selected_output": "transcript_id", "showNode": true, - "type": "AssemblyAITranscriptionJobCreator", - "selected_output": "transcript_id" + "type": "AssemblyAITranscriptionJobCreator" }, "dragging": false, "id": "AssemblyAITranscriptionJobCreator-hXp0S", @@ -3894,9 +3894,9 @@ }, "tool_mode": false }, + "selected_output": "parsed_text", "showNode": true, - "type": "parser", - "selected_output": "parsed_text" + "type": "parser" }, "dragging": false, "id": "parser-uRyvX", @@ -3973,7 +3973,7 @@ "show": true, "title_case": false, "type": "code", - "value": "from typing import Any\n\nfrom langflow.custom import Component\nfrom langflow.io import HandleInput, Output, TabInput\nfrom langflow.schema import Data, DataFrame, Message\n\n\ndef convert_to_message(v) -> Message:\n \"\"\"Convert input to Message type.\n\n Args:\n v: Input to convert (Message, Data, DataFrame, or dict)\n\n Returns:\n Message: Converted Message object\n \"\"\"\n return v if isinstance(v, Message) else v.to_message()\n\n\ndef convert_to_data(v: DataFrame | Data | Message | dict) -> Data:\n \"\"\"Convert input to Data type.\n\n Args:\n v: Input to convert (Message, Data, DataFrame, or dict)\n\n Returns:\n Data: Converted Data object\n \"\"\"\n if isinstance(v, dict):\n return Data(v)\n return v if isinstance(v, Data) else v.to_data()\n\n\ndef convert_to_dataframe(v: DataFrame | Data | Message | dict) -> DataFrame:\n \"\"\"Convert input to DataFrame type.\n\n Args:\n v: Input to convert (Message, Data, DataFrame, or dict)\n\n Returns:\n DataFrame: Converted DataFrame object\n \"\"\"\n if isinstance(v, dict):\n return DataFrame([v])\n return v if isinstance(v, DataFrame) else v.to_dataframe()\n\n\nclass TypeConverterComponent(Component):\n display_name = \"Type Convert\"\n description = \"Convert between different types (Message, Data, DataFrame)\"\n icon = \"repeat\"\n\n inputs = [\n HandleInput(\n name=\"input_data\",\n display_name=\"Input\",\n input_types=[\"Message\", \"Data\", \"DataFrame\"],\n info=\"Accept Message, Data or DataFrame as input\",\n required=True,\n ),\n TabInput(\n name=\"output_type\",\n display_name=\"Output Type\",\n options=[\"Message\", \"Data\", \"DataFrame\"],\n info=\"Select the desired output data type\",\n real_time_refresh=True,\n value=\"Message\",\n ),\n ]\n\n outputs = [\n Output(\n display_name=\"Message Output\",\n name=\"message_output\",\n method=\"convert_to_message\",\n )\n ]\n\n def update_outputs(self, frontend_node: dict, field_name: str, field_value: Any) -> dict:\n \"\"\"Dynamically show only the relevant output based on the selected output type.\"\"\"\n if field_name == \"output_type\":\n # Start with empty outputs\n frontend_node[\"outputs\"] = []\n\n # Add only the selected output type\n if field_value == \"Message\":\n frontend_node[\"outputs\"].append(\n Output(\n display_name=\"Message Output\",\n name=\"message_output\",\n method=\"convert_to_message\",\n ).to_dict()\n )\n elif field_value == \"Data\":\n frontend_node[\"outputs\"].append(\n Output(\n display_name=\"Data Output\",\n name=\"data_output\",\n method=\"convert_to_data\",\n ).to_dict()\n )\n elif field_value == \"DataFrame\":\n frontend_node[\"outputs\"].append(\n Output(\n display_name=\"DataFrame Output\",\n name=\"dataframe_output\",\n method=\"convert_to_dataframe\",\n ).to_dict()\n )\n\n return frontend_node\n\n def convert_to_message(self) -> Message:\n \"\"\"Convert input to Message type.\"\"\"\n input_value = self.input_data[0] if isinstance(self.input_data, list) else self.input_data\n\n # Handle string input by converting to Message first\n if isinstance(input_value, str):\n input_value = Message(text=input_value)\n\n return convert_to_message(input_value)\n\n def convert_to_data(self) -> Data:\n \"\"\"Convert input to Data type.\"\"\"\n input_value = self.input_data[0] if isinstance(self.input_data, list) else self.input_data\n\n # Handle string input by converting to Message first\n if isinstance(input_value, str):\n input_value = Message(text=input_value)\n\n return convert_to_data(input_value)\n\n def convert_to_dataframe(self) -> DataFrame:\n \"\"\"Convert input to DataFrame type.\"\"\"\n input_value = self.input_data[0] if isinstance(self.input_data, list) else self.input_data\n\n # Handle string input by converting to Message first\n if isinstance(input_value, str):\n input_value = Message(text=input_value)\n\n return convert_to_dataframe(input_value)\n" + "value": "from typing import Any\n\nfrom langflow.custom import Component\nfrom langflow.io import HandleInput, Output, TabInput\nfrom langflow.schema import Data, DataFrame, Message\n\n\ndef convert_to_message(v) -> Message:\n \"\"\"Convert input to Message type.\n\n Args:\n v: Input to convert (Message, Data, DataFrame, or dict)\n\n Returns:\n Message: Converted Message object\n \"\"\"\n return v if isinstance(v, Message) else v.to_message()\n\n\ndef convert_to_data(v: DataFrame | Data | Message | dict) -> Data:\n \"\"\"Convert input to Data type.\n\n Args:\n v: Input to convert (Message, Data, DataFrame, or dict)\n\n Returns:\n Data: Converted Data object\n \"\"\"\n if isinstance(v, dict):\n return Data(v)\n return v if isinstance(v, Data) else v.to_data()\n\n\ndef convert_to_dataframe(v: DataFrame | Data | Message | dict) -> DataFrame:\n \"\"\"Convert input to DataFrame type.\n\n Args:\n v: Input to convert (Message, Data, DataFrame, or dict)\n\n Returns:\n DataFrame: Converted DataFrame object\n \"\"\"\n if isinstance(v, dict):\n return DataFrame([v])\n return v if isinstance(v, DataFrame) else v.to_dataframe()\n\n\nclass TypeConverterComponent(Component):\n display_name = \"Type Convert\"\n description = \"Convert between different types (Message, Data, DataFrame)\"\n icon = \"repeat\"\n\n inputs = [\n HandleInput(\n name=\"input_data\",\n display_name=\"Input\",\n input_types=[\"Message\", \"Data\", \"DataFrame\"],\n info=\"Accept Message, Data or DataFrame as input\",\n required=True,\n ),\n TabInput(\n name=\"output_type\",\n display_name=\"Output Type\",\n options=[\"Message\", \"Data\", \"DataFrame\"],\n info=\"Select the desired output data type\",\n real_time_refresh=True,\n value=\"Message\",\n ),\n ]\n\n outputs = [\n Output(\n display_name=\"Message Output\",\n name=\"message_output\",\n method=\"convert_to_message\",\n )\n ]\n\n def update_outputs(self, frontend_node: dict, field_name: str, field_value: Any) -> dict:\n \"\"\"Dynamically show only the relevant output based on the selected output type.\"\"\"\n if field_name == \"output_type\":\n # Start with empty outputs\n frontend_node[\"outputs\"] = []\n\n # Add only the selected output type\n if field_value == \"Message\":\n frontend_node[\"outputs\"].append(\n Output(\n display_name=\"Message Output\",\n name=\"message_output\",\n method=\"convert_to_message\",\n ).to_dict()\n )\n elif field_value == \"Data\":\n frontend_node[\"outputs\"].append(\n Output(\n display_name=\"Data Output\",\n name=\"data_output\",\n method=\"convert_to_data\",\n ).to_dict()\n )\n elif field_value == \"DataFrame\":\n frontend_node[\"outputs\"].append(\n Output(\n display_name=\"DataFrame Output\",\n name=\"dataframe_output\",\n method=\"convert_to_dataframe\",\n ).to_dict()\n )\n\n return frontend_node\n\n def convert_to_message(self) -> Message:\n \"\"\"Convert input to Message type.\"\"\"\n input_value = self.input_data[0] if isinstance(self.input_data, list) else self.input_data\n\n # Handle string input by converting to Message first\n if isinstance(input_value, str):\n input_value = Message(text=input_value)\n\n result = convert_to_message(input_value)\n self.status = result\n return result\n\n def convert_to_data(self) -> Data:\n \"\"\"Convert input to Data type.\"\"\"\n input_value = self.input_data[0] if isinstance(self.input_data, list) else self.input_data\n\n # Handle string input by converting to Message first\n if isinstance(input_value, str):\n input_value = Message(text=input_value)\n\n result = convert_to_data(input_value)\n self.status = result\n return result\n\n def convert_to_dataframe(self) -> DataFrame:\n \"\"\"Convert input to DataFrame type.\"\"\"\n input_value = self.input_data[0] if isinstance(self.input_data, list) else self.input_data\n\n # Handle string input by converting to Message first\n if isinstance(input_value, str):\n input_value = Message(text=input_value)\n\n result = convert_to_dataframe(input_value)\n self.status = result\n return result\n" }, "input_data": { "_input_type": "HandleInput", @@ -4022,9 +4022,9 @@ }, "tool_mode": false }, + "selected_output": "message_output", "showNode": true, - "type": "TypeConverterComponent", - "selected_output": "message_output" + "type": "TypeConverterComponent" }, "id": "TypeConverterComponent-MzSbu", "measured": { diff --git a/src/backend/base/langflow/initial_setup/starter_projects/Memory Chatbot.json b/src/backend/base/langflow/initial_setup/starter_projects/Memory Chatbot.json index 149a9abcc..25625409e 100644 --- a/src/backend/base/langflow/initial_setup/starter_projects/Memory Chatbot.json +++ b/src/backend/base/langflow/initial_setup/starter_projects/Memory Chatbot.json @@ -1745,7 +1745,7 @@ "show": true, "title_case": false, "type": "code", - "value": "from typing import Any\n\nfrom langflow.custom import Component\nfrom langflow.io import HandleInput, Output, TabInput\nfrom langflow.schema import Data, DataFrame, Message\n\n\ndef convert_to_message(v) -> Message:\n \"\"\"Convert input to Message type.\n\n Args:\n v: Input to convert (Message, Data, DataFrame, or dict)\n\n Returns:\n Message: Converted Message object\n \"\"\"\n return v if isinstance(v, Message) else v.to_message()\n\n\ndef convert_to_data(v: DataFrame | Data | Message | dict) -> Data:\n \"\"\"Convert input to Data type.\n\n Args:\n v: Input to convert (Message, Data, DataFrame, or dict)\n\n Returns:\n Data: Converted Data object\n \"\"\"\n if isinstance(v, dict):\n return Data(v)\n return v if isinstance(v, Data) else v.to_data()\n\n\ndef convert_to_dataframe(v: DataFrame | Data | Message | dict) -> DataFrame:\n \"\"\"Convert input to DataFrame type.\n\n Args:\n v: Input to convert (Message, Data, DataFrame, or dict)\n\n Returns:\n DataFrame: Converted DataFrame object\n \"\"\"\n if isinstance(v, dict):\n return DataFrame([v])\n return v if isinstance(v, DataFrame) else v.to_dataframe()\n\n\nclass TypeConverterComponent(Component):\n display_name = \"Type Convert\"\n description = \"Convert between different types (Message, Data, DataFrame)\"\n icon = \"repeat\"\n\n inputs = [\n HandleInput(\n name=\"input_data\",\n display_name=\"Input\",\n input_types=[\"Message\", \"Data\", \"DataFrame\"],\n info=\"Accept Message, Data or DataFrame as input\",\n required=True,\n ),\n TabInput(\n name=\"output_type\",\n display_name=\"Output Type\",\n options=[\"Message\", \"Data\", \"DataFrame\"],\n info=\"Select the desired output data type\",\n real_time_refresh=True,\n value=\"Message\",\n ),\n ]\n\n outputs = [\n Output(\n display_name=\"Message Output\",\n name=\"message_output\",\n method=\"convert_to_message\",\n )\n ]\n\n def update_outputs(self, frontend_node: dict, field_name: str, field_value: Any) -> dict:\n \"\"\"Dynamically show only the relevant output based on the selected output type.\"\"\"\n if field_name == \"output_type\":\n # Start with empty outputs\n frontend_node[\"outputs\"] = []\n\n # Add only the selected output type\n if field_value == \"Message\":\n frontend_node[\"outputs\"].append(\n Output(\n display_name=\"Message Output\",\n name=\"message_output\",\n method=\"convert_to_message\",\n ).to_dict()\n )\n elif field_value == \"Data\":\n frontend_node[\"outputs\"].append(\n Output(\n display_name=\"Data Output\",\n name=\"data_output\",\n method=\"convert_to_data\",\n ).to_dict()\n )\n elif field_value == \"DataFrame\":\n frontend_node[\"outputs\"].append(\n Output(\n display_name=\"DataFrame Output\",\n name=\"dataframe_output\",\n method=\"convert_to_dataframe\",\n ).to_dict()\n )\n\n return frontend_node\n\n def convert_to_message(self) -> Message:\n \"\"\"Convert input to Message type.\"\"\"\n input_value = self.input_data[0] if isinstance(self.input_data, list) else self.input_data\n\n # Handle string input by converting to Message first\n if isinstance(input_value, str):\n input_value = Message(text=input_value)\n\n return convert_to_message(input_value)\n\n def convert_to_data(self) -> Data:\n \"\"\"Convert input to Data type.\"\"\"\n input_value = self.input_data[0] if isinstance(self.input_data, list) else self.input_data\n\n # Handle string input by converting to Message first\n if isinstance(input_value, str):\n input_value = Message(text=input_value)\n\n return convert_to_data(input_value)\n\n def convert_to_dataframe(self) -> DataFrame:\n \"\"\"Convert input to DataFrame type.\"\"\"\n input_value = self.input_data[0] if isinstance(self.input_data, list) else self.input_data\n\n # Handle string input by converting to Message first\n if isinstance(input_value, str):\n input_value = Message(text=input_value)\n\n return convert_to_dataframe(input_value)\n" + "value": "from typing import Any\n\nfrom langflow.custom import Component\nfrom langflow.io import HandleInput, Output, TabInput\nfrom langflow.schema import Data, DataFrame, Message\n\n\ndef convert_to_message(v) -> Message:\n \"\"\"Convert input to Message type.\n\n Args:\n v: Input to convert (Message, Data, DataFrame, or dict)\n\n Returns:\n Message: Converted Message object\n \"\"\"\n return v if isinstance(v, Message) else v.to_message()\n\n\ndef convert_to_data(v: DataFrame | Data | Message | dict) -> Data:\n \"\"\"Convert input to Data type.\n\n Args:\n v: Input to convert (Message, Data, DataFrame, or dict)\n\n Returns:\n Data: Converted Data object\n \"\"\"\n if isinstance(v, dict):\n return Data(v)\n return v if isinstance(v, Data) else v.to_data()\n\n\ndef convert_to_dataframe(v: DataFrame | Data | Message | dict) -> DataFrame:\n \"\"\"Convert input to DataFrame type.\n\n Args:\n v: Input to convert (Message, Data, DataFrame, or dict)\n\n Returns:\n DataFrame: Converted DataFrame object\n \"\"\"\n if isinstance(v, dict):\n return DataFrame([v])\n return v if isinstance(v, DataFrame) else v.to_dataframe()\n\n\nclass TypeConverterComponent(Component):\n display_name = \"Type Convert\"\n description = \"Convert between different types (Message, Data, DataFrame)\"\n icon = \"repeat\"\n\n inputs = [\n HandleInput(\n name=\"input_data\",\n display_name=\"Input\",\n input_types=[\"Message\", \"Data\", \"DataFrame\"],\n info=\"Accept Message, Data or DataFrame as input\",\n required=True,\n ),\n TabInput(\n name=\"output_type\",\n display_name=\"Output Type\",\n options=[\"Message\", \"Data\", \"DataFrame\"],\n info=\"Select the desired output data type\",\n real_time_refresh=True,\n value=\"Message\",\n ),\n ]\n\n outputs = [\n Output(\n display_name=\"Message Output\",\n name=\"message_output\",\n method=\"convert_to_message\",\n )\n ]\n\n def update_outputs(self, frontend_node: dict, field_name: str, field_value: Any) -> dict:\n \"\"\"Dynamically show only the relevant output based on the selected output type.\"\"\"\n if field_name == \"output_type\":\n # Start with empty outputs\n frontend_node[\"outputs\"] = []\n\n # Add only the selected output type\n if field_value == \"Message\":\n frontend_node[\"outputs\"].append(\n Output(\n display_name=\"Message Output\",\n name=\"message_output\",\n method=\"convert_to_message\",\n ).to_dict()\n )\n elif field_value == \"Data\":\n frontend_node[\"outputs\"].append(\n Output(\n display_name=\"Data Output\",\n name=\"data_output\",\n method=\"convert_to_data\",\n ).to_dict()\n )\n elif field_value == \"DataFrame\":\n frontend_node[\"outputs\"].append(\n Output(\n display_name=\"DataFrame Output\",\n name=\"dataframe_output\",\n method=\"convert_to_dataframe\",\n ).to_dict()\n )\n\n return frontend_node\n\n def convert_to_message(self) -> Message:\n \"\"\"Convert input to Message type.\"\"\"\n input_value = self.input_data[0] if isinstance(self.input_data, list) else self.input_data\n\n # Handle string input by converting to Message first\n if isinstance(input_value, str):\n input_value = Message(text=input_value)\n\n result = convert_to_message(input_value)\n self.status = result\n return result\n\n def convert_to_data(self) -> Data:\n \"\"\"Convert input to Data type.\"\"\"\n input_value = self.input_data[0] if isinstance(self.input_data, list) else self.input_data\n\n # Handle string input by converting to Message first\n if isinstance(input_value, str):\n input_value = Message(text=input_value)\n\n result = convert_to_data(input_value)\n self.status = result\n return result\n\n def convert_to_dataframe(self) -> DataFrame:\n \"\"\"Convert input to DataFrame type.\"\"\"\n input_value = self.input_data[0] if isinstance(self.input_data, list) else self.input_data\n\n # Handle string input by converting to Message first\n if isinstance(input_value, str):\n input_value = Message(text=input_value)\n\n result = convert_to_dataframe(input_value)\n self.status = result\n return result\n" }, "input_data": { "_input_type": "HandleInput", diff --git a/src/frontend/tests/core/features/freeze.spec.ts b/src/frontend/tests/core/features/freeze.spec.ts index 7cc56b460..8a44c08a0 100644 --- a/src/frontend/tests/core/features/freeze.spec.ts +++ b/src/frontend/tests/core/features/freeze.spec.ts @@ -161,7 +161,7 @@ test( await page .getByTestId("inputlist_str_urls_0") - .fill("https://www.lipsum.com/"); + .fill("https://www.lipsum.com/feed/html"); await runChatOutput(page);