******************************************************************************** Step 1 ******************************************************************************** ------Action------ THOUGHT: None ACTION TYPE: None ACTION CONTENT: None -----Response----- RESPONSE (User Message): USER QUERY: "I'm planning to write a blog post about 2023. Can you assist by giving me an interesting fact about this year and then creating an image based on the fact? I would also like the image segmented into individual elements so I can explain the image piece by piece to my readers." Any files mentioned in the query will be located at /root/input_data. E.g. if the query mentions example.png, it will be located at /root/input_data/example.png. Use the code base located at `/root/mnm/mnm` to solve this query. Your current directory is `/root/playground`. If the import path in retrieved code block says `testing/dir_name/file_name.py` and you want to import variable, function or class called `obj` from this file, then import using `from testing.dir_name.file_name import obj`. The code base path has either been installed via pip or has been already been added to the system path via ``` import sys sys.path.extend(['/root/mnm']) ``` ******************************************************************************** Step 2 ******************************************************************************** ------Action------ THOUGHT: First, I need to find a function that can retrieve an interesting fact about the year 2023. Once I have the fact, I will search for a function that can generate an image based on the text description of the fact. Finally, I will look for a function that can segment the generated image into individual elements. I will start by searching for the function to retrieve an interesting fact about the year 2023. ACTION TYPE: search ACTION CONTENT: text: interesting fact AND (text: 2023 OR text: year) -----Response----- RESPONSE (Retrieval Result): QUERY: text: interesting fact AND (text: 2023 OR text: year) CODE BLOCKS: --- file_path=mnm/tool_api.py lines=[863, 877] type=FUNCTION content={ def get_year_fact(year: str, ckpt=None): """ It provides interesting facts about years. """ url = f"https://numbersapi.p.rapidapi.com/{year}/year" params = {"fragment": "true", "json": "true"} headers = { "X-RapidAPI-Key": RAPID_API_KEY, "X-RapidAPI-Host": "numbersapi.p.rapidapi.com", } response = requests.get(url, headers=headers, params=params) result_formatted = response.json() return result_formatted } --- file_path=mnm/tool_api.py lines=[943, 971] type=FUNCTION content={ def search_movie(movie_title: str, movie_year: str, ckpt=None): """ Retrieve basic movie information, including title, year, genre, and director. """ # paren_start = input['movie_title'].find('(') url = "http://www.omdbapi.com/" params = { "t": movie_title, "y": movie_year, "plot": "short", "r": "json", "apikey": OMDB_API_KEY, } response = requests.get(url, params=params) result_formatted = response.json() selected_keys = ["Title", "Year", "Genre", "Director", "Plot"] desc = "" if len(result_formatted) > 0: for k, v in result_formatted.items(): # print(k, v) if k in selected_keys and len(v) > 0: desc += f"{k}: {v}\n" else: desc = "Movie not found!" result_formatted = {"text": desc} return result_formatted } --- file_path=mnm/tool_api.py lines=[985, 1011] type=FUNCTION content={ def wikipedia_simple_search(text: str, ckpt=None): """ Performs a basic search on Wikipedia to retrieve a summary of the most relevant page. Args: text (str): The search query text. ckpt: Unused parameter, can be anything (default is None). Returns: dict: A dictionary containing the formatted text summary of the most relevant Wikipedia page. Raises: This function may raise exceptions related to network issues or JSON decoding if the Wikipedia API changes or is unreachable. Examples: result = wikipedia_simple_search("Python programming language") # result might be something like: # {'text': 'Python is a high-level, interpreted, general-purpose programming language. Its design philosophy emphasizes code readability with its use of significant indentation.'} """ ... } --- (All code blocks matching the query were returned.) ******************************************************************************** Step 3 ******************************************************************************** ------Action------ THOUGHT: The function `get_year_fact` from `tool_api.py` seems to be the right choice for retrieving an interesting fact about the year 2023. I will write code to call this function and get the fact. Once I have the fact, I will proceed to find a function to generate an image based on the text description. ACTION TYPE: code ACTION CONTENT: from mnm.tool_api import get_year_fact # Retrieve an interesting fact about the year 2023 fact_about_2023 = get_year_fact("2023") -----Response----- RESPONSE (Execution Result): CODE EXECUTED WITHOUT ERROR, STDOUT WAS EMPTY RELEVANT VARIABLES (only shown if string rep. has changed after code exec): {"get_year_fact": , "fact_about_2023": {'text': 'the Compact of Free Association between the United States and the Federated States of Micronesia and the Marshall Islands expires', 'number': 2023, 'found': True, 'type': 'year'}} ******************************************************************************** Step 4 ******************************************************************************** ------Action------ THOUGHT: Now that I have the interesting fact about the year 2023, I need to search for a function that can generate an image based on a text description. After generating the image, I will look for a function to segment the image into individual elements. ACTION TYPE: search ACTION CONTENT: text: generate image AND text: description -----Response----- RESPONSE (Retrieval Result): QUERY: text: generate image AND text: description CODE BLOCKS: --- file_path=mnm/tool_api.py lines=[228, 249] type=FUNCTION content={ def image_generation(text: str, ckpt=MODEL_SELECTION["image_generation"]): """ It takes a text prompt and generates an image that matches the text description. """ if ckpt == "stabilityai/stable-diffusion-xl-base-1.0": text = text_processing(text) from diffusers import DiffusionPipeline generator = DiffusionPipeline.from_pretrained( pretrained_model_name_or_path=ckpt, torch_dtype=torch.float16, use_safetensors=True, variant="fp16", ).to(DEVICE) result = generator(prompt=text).images[0] result_formatted = {"image": result} return result_formatted } --- file_path=mnm/tool_api.py lines=[195, 226] type=FUNCTION content={ def automatic_speech_recognition(audio: str, ckpt=MODEL_SELECTION['automatic_speech_recognition']): """ Performs automatic speech recognition on an audio file using a pre-trained model. Args: audio (str): The file path to the audio file to be transcribed. ckpt (str, optional): The checkpoint identifier of the pre-trained model to use. Defaults to the model specified in MODEL_SELECTION["automatic_speech_recognition"]. Returns: dict: A dictionary containing the transcription of the audio file with the key 'text'. Raises: ImportError: If the required libraries (librosa, transformers) are not installed. Examples: >>> transcription = automatic_speech_recognition("path/to/audio/file.wav") >>> print(transcription) {'text': 'The transcribed text of the audio.'} """ ... } --- file_path=mnm/tool_api.py lines=[251, 267] type=FUNCTION content={ def image_captioning( image, ckpt=MODEL_SELECTION["image_captioning"] ): # alternative: nlpconnect/vit-gpt2-image-captioning (testing, blip is better than vit-gpt2)z """ It takes an image and generates a text caption of the image. """ image = image_processing(image) pipe = pipeline("image-to-text", model=ckpt) result = pipe( image ) # [{'generated_text': 'there is a small white dog sitting next to a cell phone'}] result_formatted = {"text": result[0]["generated_text"]} return result_formatted } --- (16 additional code blocks not shown. Search again with the same query to see additional results.) Prototypes for the next 7 out of 14 classes/functions found in unexpanded results (search again with the same query to see details): def visual_question_answering(image, question, ckpt=MODEL_SELECTION['visual_question_answering']): ... # mnm/tool_api.py def text_generation(text: str, ckpt=MODEL_SELECTION['text_generation']): ... # mnm/tool_api.py def image_editing(image, prompt: str, ckpt=MODEL_SELECTION['image_editing']): ... # mnm/tool_api.py def image_classification(image, ckpt=MODEL_SELECTION['image_classification']): ... # mnm/tool_api.py def optical_character_recognition(image, ckpt=MODEL_SELECTION['optical_character_recognition']): ... # mnm/tool_api.py def image_segmentation(image, ckpt=MODEL_SELECTION['image_segmentation']): ... # mnm/tool_api.py def object_detection(image, ckpt=MODEL_SELECTION['object_detection']): ... # mnm/tool_api.py ******************************************************************************** Step 5 ******************************************************************************** ------Action------ THOUGHT: The function `image_generation` from `tool_api.py` is suitable for generating an image based on the text description of the fact. I will write code to call this function with the fact text. After generating the image, I will search for the function to segment the image into individual elements. ACTION TYPE: code ACTION CONTENT: from mnm.tool_api import image_generation # Generate an image based on the interesting fact about the year 2023 generated_image = image_generation(fact_about_2023['text']) -----Response----- RESPONSE (Execution Result): CODE EXECUTED WITHOUT ERROR, STDOUT WAS EMPTY RELEVANT VARIABLES (only shown if string rep. has changed after code exec): {"image_generation": , "generated_image": {'image': }} ******************************************************************************** Step 6 ******************************************************************************** ------Action------ THOUGHT: Now that the image has been generated, I need to find a function that can segment the image into individual elements. I will search for the image segmentation function in the codebase. ACTION TYPE: search ACTION CONTENT: text: image segmentation -----Response----- RESPONSE (Retrieval Result): QUERY: text: image segmentation CODE BLOCKS: --- file_path=mnm/tool_api.py lines=[413, 461] type=FUNCTION content={ def image_segmentation(image, ckpt=MODEL_SELECTION['image_segmentation']): """ Segments an image into different parts using a pre-trained MaskFormer model and outputs segmentation masks along with additional information for each segment. Args: image: The input image to be segmented. ckpt: A string or a dictionary key that specifies the pre-trained model checkpoint to be used for segmentation. Defaults to a pre-selected model checkpoint from a MODEL_SELECTION dictionary. Returns: A dictionary containing the original image and a list of objects. Each object in the list is a dictionary with keys 'mask', 'label', 'bbox', and 'inst_id', representing the segmentation mask, label, bounding box, and instance ID, respectively. Raises: ImportError: If required modules (numpy, torch, transformers, PIL) are not installed. Examples: # Assuming `image` is a PIL image and `MODEL_SELECTION` is defined segmentation_result = image_segmentation(image) for obj in segmentation_result['objects']: print(obj['label'], obj['bbox']) """ ... } --- file_path=mnm/tool_api.py lines=[536, 556] type=FUNCTION content={ def image_crop_left(image, ckpt=None): """ Crops the left half of the provided image and returns it in a formatted dictionary. Args: image: The image to be cropped. ckpt: Optional checkpoint data (unused in the current implementation). Returns: A dictionary containing the cropped image with the key 'image'. Examples: Assuming `image` is a PIL Image object: >>> result = image_crop_left(image) >>> result['image'] # This will contain the left half of the original image. """ ... } --- file_path=mnm/tool_api.py lines=[604, 625] type=FUNCTION content={ def image_crop_bottom(image, ckpt=None): """ Crops the bottom half of an image and returns it in a dictionary. Args: image: The image to be cropped. ckpt: Optional checkpoint data (unused in the current implementation). Returns: A dictionary containing the cropped image with the key 'image'. Examples: Assuming `image` is a PIL Image object: >>> cropped_image_result = image_crop_bottom(image) >>> cropped_image = cropped_image_result['image'] """ ... } --- (33 additional code blocks not shown. Search again with the same query to see additional results.) Prototypes for the next 7 out of 29 classes/functions found in unexpanded results (search again with the same query to see details): def image_crop_right(image, ckpt=None): ... # mnm/tool_api.py def image_crop_top(image, ckpt=None): ... # mnm/tool_api.py def tag(image, objects, ckpt=None): ... # mnm/tool_api.py def image_crop(image, object, ckpt=None): ... # mnm/tool_api.py def emoji(image, object, emoji, ckpt=None): ... # mnm/tool_api.py def background_blur(image, object, ckpt=None): ... # mnm/tool_api.py def image_classification(image, ckpt=MODEL_SELECTION['image_classification']): ... # mnm/tool_api.py ******************************************************************************** Step 7 ******************************************************************************** ------Action------ THOUGHT: The function `image_segmentation` from `tool_api.py` is the correct function to segment the generated image into individual elements. I will write code to call this function with the generated image. ACTION TYPE: code ACTION CONTENT: from mnm.tool_api import image_segmentation # Segment the generated image into individual elements segmented_image = image_segmentation(generated_image['image']) -----Response----- RESPONSE (Execution Result): CODE EXECUTED WITHOUT ERROR, STDOUT WAS EMPTY RELEVANT VARIABLES (only shown if string rep. has changed after code exec): {"image_segmentation": , "segmented_image": {'image': , 'objects': [{'mask': array([[0., 0., 0., ..., 0., 0., 0.], [0., 0., 0., ..., 0., 0., 0.], [0., 0., 0., ..., 0., 0., 0.], ..., [0., 0., 0., ..., 0., 0., 0.], [0., 0., 0., ..., 0., 0., 0.], [0., 0., 0., ..., 0., 0., 0.]], dtype=float32), 'label': 'boat', 'bbox': [461, 118, 521, 183], 'inst_id': 1}, {'mask': array([[0., 0., 0., ..., 0., 0., 0.], [0., 0., 0., ..., 0., 0., 0.]...} ******************************************************************************** Step 8 ******************************************************************************** ------Action------ THOUGHT: The image has been successfully segmented into individual elements. The task is now complete. I will provide a summary of the code used to solve the user's query. ACTION TYPE: code_summary ACTION CONTENT: from mnm.tool_api import get_year_fact, image_generation, image_segmentation fact_about_2023 = get_year_fact("2023") generated_image = image_generation(fact_about_2023['text']) segmented_image = image_segmentation(generated_image['image']) -----Response----- RESPONSE (User Message): Summary received and stored. ******************************************************************************** Step 9 ******************************************************************************** ------Action------ THOUGHT: The user has acknowledged the receipt of the code summary. The task is complete. ACTION TYPE: done ACTION CONTENT: True -----Response----- None