import gradio as gr import pandas as pd import numpy as np import os from datetime import datetime from utils import ( make_pairs, set_openai_api_key, create_user_id, to_completion, ) from azure.storage.fileshare import ShareServiceClient # Langchain from langchain.embeddings import HuggingFaceEmbeddings from langchain.schema import AIMessage, HumanMessage from langchain.callbacks.streaming_stdout import StreamingStdOutCallbackHandler # ClimateQ&A imports from climateqa.llm import get_llm from climateqa.chains import load_climateqa_chain from climateqa.vectorstore import get_pinecone_vectorstore from climateqa.retriever import ClimateQARetriever from climateqa.prompts import audience_prompts # Load environment variables in local mode try: from dotenv import load_dotenv load_dotenv() except: pass # Set up Gradio Theme theme = gr.themes.Base( primary_hue="blue", secondary_hue="red", font=[gr.themes.GoogleFont("Poppins"), "ui-sans-serif", "system-ui", "sans-serif"], ) init_prompt = "" system_template = { "role": "system", "content": init_prompt, } # credential = { # "account_key": os.environ["account_key"], # "account_name": os.environ["account_name"], # } # account_url = os.environ["account_url"] # file_share_name = "climategpt" # service = ShareServiceClient(account_url=account_url, credential=credential) # share_client = service.get_share_client(file_share_name) user_id = create_user_id(10) #--------------------------------------------------------------------------- # ClimateQ&A core functions #--------------------------------------------------------------------------- from langchain.callbacks.base import BaseCallbackHandler from queue import Queue, Empty from threading import Thread from collections.abc import Generator from langchain.schema import LLMResult from typing import Any, Union,Dict,List from queue import SimpleQueue # # Create a Queue # Q = Queue() import re def parse_output_llm_with_sources(output): # Split the content into a list of text and "[Doc X]" references content_parts = re.split(r'\[(Doc\s?\d+(?:,\s?Doc\s?\d+)*)\]', output) parts = [] for part in content_parts: if part.startswith("Doc"): subparts = part.split(",") subparts = [subpart.lower().replace("doc","").strip() for subpart in subparts] subparts = [f"{subpart}" for subpart in subparts] parts.append("".join(subparts)) else: parts.append(part) content_parts = "".join(parts) return content_parts Q = SimpleQueue() job_done = object() # signals the processing is done class StreamingGradioCallbackHandler(BaseCallbackHandler): def __init__(self, q: SimpleQueue): self.q = q def on_llm_start( self, serialized: Dict[str, Any], prompts: List[str], **kwargs: Any ) -> None: """Run when LLM starts running. Clean the queue.""" while not self.q.empty(): try: self.q.get(block=False) except Empty: continue def on_llm_new_token(self, token: str, **kwargs: Any) -> None: """Run on new LLM token. Only available when streaming is enabled.""" self.q.put(token) def on_llm_end(self, response: LLMResult, **kwargs: Any) -> None: """Run when LLM ends running.""" self.q.put(job_done) def on_llm_error( self, error: Union[Exception, KeyboardInterrupt], **kwargs: Any ) -> None: """Run when LLM errors.""" self.q.put(job_done) # Create embeddings function and LLM embeddings_function = HuggingFaceEmbeddings(model_name = "sentence-transformers/multi-qa-mpnet-base-dot-v1") llm_reformulation = get_llm(max_tokens = 512,temperature = 0.0,verbose = True,streaming = False) llm_streaming = get_llm(max_tokens = 1024,temperature = 0.0,verbose = True,streaming = True, callbacks=[StreamingGradioCallbackHandler(Q),StreamingStdOutCallbackHandler()], ) # Create vectorstore and retriever vectorstore = get_pinecone_vectorstore(embeddings_function) #--------------------------------------------------------------------------- # ClimateQ&A Streaming # From https://github.com/gradio-app/gradio/issues/5345 # And https://stackoverflow.com/questions/76057076/how-to-stream-agents-response-in-langchain #--------------------------------------------------------------------------- from threading import Thread def answer_user(message,history): return message, history + [[message, None]] def answer_bot(message,history,audience,sources): # if len(message) <= 2: # complete_response = "**⚠️ No relevant passages found in the climate science reports (IPCC and IPBES), you may want to ask a more specific question (specifying your question on climate and biodiversity issues).**" # history[-1][1] += "\n\n" + complete_response # return "", history, "" retriever = ClimateQARetriever(vectorstore=vectorstore,sources = sources,k_summary = 3,k_total = 10) chain = load_climateqa_chain(retriever,llm_reformulation,llm_streaming) def threaded_chain(query,audience): response = chain({"query":query,"audience":audience}) Q.put(response) Q.put(job_done) if audience == "Children": audience_prompt = audience_prompts["children"] elif audience == "General public": audience_prompt = audience_prompts["general"] elif audience == "Experts": audience_prompt = audience_prompts["experts"] else: audience_prompt = audience_prompts["experts"] # history_langchain_format = [] # for human, ai in history: # history_langchain_format.append(HumanMessage(content=human)) # history_langchain_format.append(AIMessage(content=ai)) # history_langchain_format.append(HumanMessage(content=message) # for next_token, content in stream(message): # yield(content) thread = Thread(target=threaded_chain, kwargs={"query":message,"audience":audience_prompt}) thread.start() history[-1][1] = "" while True: next_item = Q.get(block=True) # Blocks until an input is available if next_item is job_done: continue elif isinstance(next_item, dict): # assuming LLMResult is a dictionary response = next_item if "source_documents" in response and len(response["source_documents"]) > 0: sources_text = [] for i, d in enumerate(response["source_documents"], 1): sources_text.append(make_html_source(d, i)) sources_text = "\n\n".join([f"Query used for retrieval:\n{response['question']}"] + sources_text) # history[-1][1] += next_item["answer"] # history[-1][1] += "\n\n" + sources_text yield "", history, sources_text else: sources_text = "⚠️ No relevant passages found in the scientific reports (IPCC and IPBES)" complete_response = "**⚠️ No relevant passages found in the climate science reports (IPCC and IPBES), you may want to ask a more specific question (specifying your question on climate and biodiversity issues).**" history[-1][1] += "\n\n" + complete_response yield "", history, sources_text break elif isinstance(next_item, str): new_paragraph = history[-1][1] + next_item new_paragraph = parse_output_llm_with_sources(new_paragraph) history[-1][1] = new_paragraph yield "", history, "" thread.join() #--------------------------------------------------------------------------- # ClimateQ&A core functions #--------------------------------------------------------------------------- def make_html_source(source,i): meta = source.metadata content = source.page_content.split(":",1)[1].strip() return f"""

Doc {i} - {meta['short_name']} - Page {int(meta['page_number'])}

{content}

""" # def chat( # user_id: str, # query: str, # history: list = [system_template], # report_type: str = "IPCC", # threshold: float = 0.555, # ) -> tuple: # """retrieve relevant documents in the document store then query gpt-turbo # Args: # query (str): user message. # history (list, optional): history of the conversation. Defaults to [system_template]. # report_type (str, optional): should be "All available" or "IPCC only". Defaults to "All available". # threshold (float, optional): similarity threshold, don't increase more than 0.568. Defaults to 0.56. # Yields: # tuple: chat gradio format, chat openai format, sources used. # """ # if report_type not in ["IPCC","IPBES"]: report_type = "all" # print("Searching in ",report_type," reports") # # if report_type == "All available": # # retriever = retrieve_all # # elif report_type == "IPCC only": # # retriever = retrieve_giec # # else: # # raise Exception("report_type arg should be in (All available, IPCC only)") # reformulated_query = openai.Completion.create( # engine="EkiGPT", # prompt=get_reformulation_prompt(query), # temperature=0, # max_tokens=128, # stop=["\n---\n", "<|im_end|>"], # ) # reformulated_query = reformulated_query["choices"][0]["text"] # reformulated_query, language = reformulated_query.split("\n") # language = language.split(":")[1].strip() # sources = retrieve_with_summaries(reformulated_query,retriever,k_total = 10,k_summary = 3,as_dict = True,source = report_type.lower(),threshold = threshold) # response_retriever = { # "language":language, # "reformulated_query":reformulated_query, # "query":query, # "sources":sources, # } # # docs = [d for d in retriever.retrieve(query=reformulated_query, top_k=10) if d.score > threshold] # messages = history + [{"role": "user", "content": query}] # if len(sources) > 0: # docs_string = [] # docs_html = [] # for i, d in enumerate(sources, 1): # docs_string.append(f"📃 Doc {i}: {d['meta']['short_name']} page {d['meta']['page_number']}\n{d['content']}") # docs_html.append(make_html_source(d,i)) # docs_string = "\n\n".join([f"Query used for retrieval:\n{reformulated_query}"] + docs_string) # docs_html = "\n\n".join([f"Query used for retrieval:\n{reformulated_query}"] + docs_html) # messages.append({"role": "system", "content": f"{sources_prompt}\n\n{docs_string}\n\nAnswer in {language}:"}) # response = openai.Completion.create( # engine="EkiGPT", # prompt=to_completion(messages), # temperature=0, # deterministic # stream=True, # max_tokens=1024, # ) # complete_response = "" # messages.pop() # messages.append({"role": "assistant", "content": complete_response}) # timestamp = str(datetime.now().timestamp()) # file = user_id[0] + timestamp + ".json" # logs = { # "user_id": user_id[0], # "prompt": query, # "retrived": sources, # "report_type": report_type, # "prompt_eng": messages[0], # "answer": messages[-1]["content"], # "time": timestamp, # } # log_on_azure(file, logs, share_client) # for chunk in response: # if (chunk_message := chunk["choices"][0].get("text")) and chunk_message != "<|im_end|>": # complete_response += chunk_message # messages[-1]["content"] = complete_response # gradio_format = make_pairs([a["content"] for a in messages[1:]]) # yield gradio_format, messages, docs_html # else: # docs_string = "⚠️ No relevant passages found in the climate science reports (IPCC and IPBES)" # complete_response = "**⚠️ No relevant passages found in the climate science reports (IPCC and IPBES), you may want to ask a more specific question (specifying your question on climate issues).**" # messages.append({"role": "assistant", "content": complete_response}) # gradio_format = make_pairs([a["content"] for a in messages[1:]]) # yield gradio_format, messages, docs_string def save_feedback(feed: str, user_id): if len(feed) > 1: timestamp = str(datetime.now().timestamp()) file = user_id[0] + timestamp + ".json" logs = { "user_id": user_id[0], "feedback": feed, "time": timestamp, } log_on_azure(file, logs, share_client) return "Feedback submitted, thank you!" def reset_textbox(): return gr.update(value="") def log_on_azure(file, logs, share_client): file_client = share_client.get_file_client(file) file_client.upload_file(str(logs)) # -------------------------------------------------------------------- # Gradio # -------------------------------------------------------------------- init_prompt = """ Hello, I am ClimateQ&A, a conversational assistant designed to help you understand climate change and biodiversity loss. I will answer your questions by **sifting through the IPCC and IPBES scientific reports**. 💡 How to use - **Language**: You can ask me your questions in any language. - **Audience**: You can specify your audience (children, general public, experts) to get a more adapted answer. - **Sources**: You can choose to search in the IPCC or IPBES reports, or both. ⚠️ Limitations *Please note that the AI is not perfect and may sometimes give irrelevant answers. If you are not satisfied with the answer, please ask a more specific question or report your feedback to help us improve the system.* ❓ What do you want to learn ? """ def vote(data: gr.LikeData): if data.liked: print(data.value) else: print(data) with gr.Blocks(title="🌍 Climate Q&A", css="style.css", theme=theme) as demo: # user_id_state = gr.State([user_id]) with gr.Tab("🌍 ClimateQ&A"): with gr.Row(elem_id="chatbot-row"): with gr.Column(scale=2): # state = gr.State([system_template]) bot = gr.Chatbot( value=[[None,init_prompt]], show_copy_button=True,show_label = False,elem_id="chatbot",layout = "panel",avatar_images = ("assets/logo4.png",None)) # bot.like(vote,None,None) with gr.Row(elem_id = "input-message"): textbox=gr.Textbox(placeholder="Ask me anything here!",show_label=False,scale=7) submit_button = gr.Button(">",scale = 1,elem_id = "submit-button") with gr.Column(scale=1, variant="panel",elem_id = "right-panel"): with gr.Tab("📝 Examples",elem_id = "tab-examples"): examples_hidden = gr.Textbox(elem_id="hidden-message") examples_questions = gr.Examples( [ "Is climate change caused by humans?", "What evidence do we have of climate change?", "What are the impacts of climate change?", "Can climate change be reversed?", "What is the difference between climate change and global warming?", "What can individuals do to address climate change?", "What are the main causes of climate change?", "What is the Paris Agreement and why is it important?", "Which industries have the highest GHG emissions?", "Is climate change a hoax created by the government or environmental organizations?", "What is the relationship between climate change and biodiversity loss?", "What is the link between gender equality and climate change?", "Is the impact of climate change really as severe as it is claimed to be?", "What is the impact of rising sea levels?", "What are the different greenhouse gases (GHG)?", "What is the warming power of methane?", "What is the jet stream?", "What is the breakdown of carbon sinks?", "How do the GHGs work ? Why does temperature increase ?", "What is the impact of global warming on ocean currents?", "How much warming is possible in 2050?", "What is the impact of climate change in Africa?", "Will climate change accelerate diseases and epidemics like COVID?", "What are the economic impacts of climate change?", "How much is the cost of inaction ?", "What is the relationship between climate change and poverty?", "What are the most effective strategies and technologies for reducing greenhouse gas (GHG) emissions?", "Is economic growth possible? What do you think about degrowth?", "Will technology save us?", "Is climate change a natural phenomenon ?", "Is climate change really happening or is it just a natural fluctuation in Earth's temperature?", "Is the scientific consensus on climate change really as strong as it is claimed to be?", ], [examples_hidden], examples_per_page=10, # cache_examples=True, ) with gr.Tab("📚 Citations",elem_id = "tab-citations"): sources_textbox = gr.Markdown(show_label=False, elem_id="sources-textbox") with gr.Tab("⚙️ Configuration",elem_id = "tab-config"): gr.Markdown("Reminder: You can talk in any language, ClimateQ&A is multi-lingual!") dropdown_sources = gr.CheckboxGroup( ["IPCC", "IPBES"], label="Select reports", value=["IPCC"], interactive=True, ) dropdown_audience = gr.Dropdown( ["Children","General public","Experts"], label="Select audience", value="Experts", interactive=True, ) # textbox.submit(predict_climateqa,[textbox,bot],[None,bot,sources_textbox]) textbox.submit(answer_user, [textbox, bot], [textbox, bot], queue=False).then( answer_bot, [textbox,bot,dropdown_audience,dropdown_sources], [textbox,bot,sources_textbox] ) examples_hidden.change(answer_user, [examples_hidden, bot], [textbox, bot], queue=False).then( answer_bot, [textbox,bot,dropdown_audience,dropdown_sources], [textbox,bot,sources_textbox] ) submit_button.click(answer_user, [textbox, bot], [textbox, bot], queue=False).then( answer_bot, [textbox,bot,dropdown_audience,dropdown_sources], [textbox,bot,sources_textbox] ) #--------------------------------------------------------------------------------------- # OTHER TABS #--------------------------------------------------------------------------------------- with gr.Tab("ℹ️ About ClimateQ&A",elem_classes = "max-height"): with gr.Row(): with gr.Column(scale=1): gr.Markdown( """

Climate change and environmental disruptions have become some of the most pressing challenges facing our planet today. As global temperatures rise and ecosystems suffer, it is essential for individuals to understand the gravity of the situation in order to make informed decisions and advocate for appropriate policy changes.

However, comprehending the vast and complex scientific information can be daunting, as the scientific consensus references, such as the Intergovernmental Panel on Climate Change (IPCC) reports, span thousands of pages. To bridge this gap and make climate science more accessible, we introduce ClimateQ&A as a tool to distill expert-level knowledge into easily digestible insights about climate science.

💡 How does ClimateQ&A work?
ClimateQ&A harnesses modern OCR techniques to parse and preprocess IPCC reports. By leveraging state-of-the-art question-answering algorithms, ClimateQ&A is able to sift through the extensive collection of climate scientific reports and identify relevant passages in response to user inquiries. Furthermore, the integration of the ChatGPT API allows ClimateQ&A to present complex data in a user-friendly manner, summarizing key points and facilitating communication of climate science to a wider audience.
""" ) with gr.Column(scale=1): gr.Markdown("![](https://i.postimg.cc/fLvsvMzM/Untitled-design-5.png)") gr.Markdown("*Source : IPCC AR6 - Synthesis Report of the IPCC 6th assessment report (AR6)*") gr.Markdown("## How to use ClimateQ&A") with gr.Row(): with gr.Column(scale=1): gr.Markdown( """ ### 💪 Getting started - In the chatbot section, simply type your climate-related question, and ClimateQ&A will provide an answer with references to relevant IPCC reports. - ClimateQ&A retrieves specific passages from the IPCC reports to help answer your question accurately. - Source information, including page numbers and passages, is displayed on the right side of the screen for easy verification. - Feel free to ask follow-up questions within the chatbot for a more in-depth understanding. - You can ask question in any language, ClimateQ&A is multi-lingual ! - ClimateQ&A integrates multiple sources (IPCC and IPBES, … ) to cover various aspects of environmental science, such as climate change and biodiversity. See all sources used below. """ ) with gr.Column(scale=1): gr.Markdown( """ ### ⚠️ Limitations
""" ) with gr.Tab("📧 Contact, feedback and feature requests"): gr.Markdown( """ 🤞 For any question or press request, contact Théo Alves Da Costa at theo.alvesdacosta@ekimetrics.com - ClimateQ&A welcomes community contributions. To participate, head over to the Community Tab and create a "New Discussion" to ask questions and share your insights. - Provide feedback through email, letting us know which insights you found accurate, useful, or not. Your input will help us improve the platform. - Only a few sources (see below) are integrated (all IPCC, IPBES), if you are a climate science researcher and net to sift through another report, please let us know. *This tool has been developed by the R&D lab at **Ekimetrics** (Jean Lelong, Nina Achache, Gabriel Olympie, Nicolas Chesneau, Natalia De la Calzada, Théo Alves Da Costa)* """ ) # with gr.Row(): # with gr.Column(scale=1): # gr.Markdown("### Feedbacks") # feedback = gr.Textbox(label="Write your feedback here") # feedback_output = gr.Textbox(label="Submit status") # feedback_save = gr.Button(value="submit feedback") # feedback_save.click( # save_feedback, # inputs=[feedback, user_id_state], # outputs=feedback_output, # ) # gr.Markdown( # "If you need us to ask another climate science report or ask any question, contact us at theo.alvesdacosta@ekimetrics.com" # ) # with gr.Column(scale=1): # gr.Markdown("### OpenAI API") # gr.Markdown( # "To make climate science accessible to a wider audience, we have opened our own OpenAI API key with a monthly cap of $1000. If you already have an API key, please use it to help conserve bandwidth for others." # ) # openai_api_key_textbox = gr.Textbox( # placeholder="Paste your OpenAI API key (sk-...) and hit Enter", # show_label=False, # lines=1, # type="password", # ) # openai_api_key_textbox.change(set_openai_api_key, inputs=[openai_api_key_textbox]) # openai_api_key_textbox.submit(set_openai_api_key, inputs=[openai_api_key_textbox]) with gr.Tab("📚 Sources",elem_classes = "max-height"): gr.Markdown(""" | Source | Report | URL | Number of pages | Release date | | --- | --- | --- | --- | --- | IPCC | Summary for Policymakers. In: Climate Change 2021: The Physical Science Basis. Contribution of the WGI to the AR6 of the IPCC. | https://www.ipcc.ch/report/ar6/wg1/downloads/report/IPCC_AR6_WGI_SPM.pdf | 32 | 2021 IPCC | Full Report. In: Climate Change 2021: The Physical Science Basis. Contribution of the WGI to the AR6 of the IPCC. | https://report.ipcc.ch/ar6/wg1/IPCC_AR6_WGI_FullReport.pdf | 2409 | 2021 IPCC | Technical Summary. In: Climate Change 2021: The Physical Science Basis. Contribution of the WGI to the AR6 of the IPCC. | https://www.ipcc.ch/report/ar6/wg1/downloads/report/IPCC_AR6_WGI_TS.pdf | 112 | 2021 IPCC | Summary for Policymakers. In: Climate Change 2022: Impacts, Adaptation and Vulnerability. Contribution of the WGII to the AR6 of the IPCC. | https://www.ipcc.ch/report/ar6/wg2/downloads/report/IPCC_AR6_WGII_SummaryForPolicymakers.pdf | 34 | 2022 IPCC | Technical Summary. In: Climate Change 2022: Impacts, Adaptation and Vulnerability. Contribution of the WGII to the AR6 of the IPCC. | https://www.ipcc.ch/report/ar6/wg2/downloads/report/IPCC_AR6_WGII_TechnicalSummary.pdf | 84 | 2022 IPCC | Full Report. In: Climate Change 2022: Impacts, Adaptation and Vulnerability. Contribution of the WGII to the AR6 of the IPCC. | https://report.ipcc.ch/ar6/wg2/IPCC_AR6_WGII_FullReport.pdf | 3068 | 2022 IPCC | Summary for Policymakers. In: Climate Change 2022: Mitigation of Climate Change. Contribution of the WGIII to the AR6 of the IPCC. | https://www.ipcc.ch/report/ar6/wg3/downloads/report/IPCC_AR6_WGIII_SummaryForPolicymakers.pdf | 50 | 2022 IPCC | Technical Summary. In: Climate Change 2022: Mitigation of Climate Change. Contribution of the WGIII to the AR6 of the IPCC. | https://www.ipcc.ch/report/ar6/wg3/downloads/report/IPCC_AR6_WGIII_TechnicalSummary.pdf | 102 | 2022 IPCC | Full Report. In: Climate Change 2022: Mitigation of Climate Change. Contribution of the WGIII to the AR6 of the IPCC. | https://www.ipcc.ch/report/ar6/wg3/downloads/report/IPCC_AR6_WGIII_FullReport.pdf | 2258 | 2022 IPCC | Summary for Policymakers. In: Global Warming of 1.5°C. An IPCC Special Report on the impacts of global warming of 1.5°C above pre-industrial levels and related global greenhouse gas emission pathways, in the context of strengthening the global response to the threat of climate change, sustainable development, and efforts to eradicate poverty. | https://www.ipcc.ch/site/assets/uploads/sites/2/2022/06/SPM_version_report_LR.pdf | 24 | 2018 IPCC | Summary for Policymakers. In: Climate Change and Land: an IPCC special report on climate change, desertification, land degradation, sustainable land management, food security, and greenhouse gas fluxes in terrestrial ecosystems. | https://www.ipcc.ch/site/assets/uploads/sites/4/2022/11/SRCCL_SPM.pdf | 36 | 2019 IPCC | Summary for Policymakers. In: IPCC Special Report on the Ocean and Cryosphere in a Changing Climate. | https://www.ipcc.ch/site/assets/uploads/sites/3/2022/03/01_SROCC_SPM_FINAL.pdf | 36 | 2019 IPCC | Technical Summary. In: IPCC Special Report on the Ocean and Cryosphere in a Changing Climate. | https://www.ipcc.ch/site/assets/uploads/sites/3/2022/03/02_SROCC_TS_FINAL.pdf | 34 | 2019 IPCC | Chapter 1 - Framing and Context of the Report. In: IPCC Special Report on the Ocean and Cryosphere in a Changing Climate. | https://www.ipcc.ch/site/assets/uploads/sites/3/2022/03/03_SROCC_Ch01_FINAL.pdf | 60 | 2019 IPCC | Chapter 2 - High Mountain Areas. In: IPCC Special Report on the Ocean and Cryosphere in a Changing Climate. | https://www.ipcc.ch/site/assets/uploads/sites/3/2022/03/04_SROCC_Ch02_FINAL.pdf | 72 | 2019 IPCC | Chapter 3 - Polar Regions. In: IPCC Special Report on the Ocean and Cryosphere in a Changing Climate. | https://www.ipcc.ch/site/assets/uploads/sites/3/2022/03/05_SROCC_Ch03_FINAL.pdf | 118 | 2019 IPCC | Chapter 4 - Sea Level Rise and Implications for Low-Lying Islands, Coasts and Communities. In: IPCC Special Report on the Ocean and Cryosphere in a Changing Climate. | https://www.ipcc.ch/site/assets/uploads/sites/3/2022/03/06_SROCC_Ch04_FINAL.pdf | 126 | 2019 IPCC | Chapter 5 - Changing Ocean, Marine Ecosystems, and Dependent Communities. In: IPCC Special Report on the Ocean and Cryosphere in a Changing Climate. | https://www.ipcc.ch/site/assets/uploads/sites/3/2022/03/07_SROCC_Ch05_FINAL.pdf | 142 | 2019 IPCC | Chapter 6 - Extremes, Abrupt Changes and Managing Risk. In: IPCC Special Report on the Ocean and Cryosphere in a Changing Climate. | https://www.ipcc.ch/site/assets/uploads/sites/3/2022/03/08_SROCC_Ch06_FINAL.pdf | 68 | 2019 IPCC | Cross-Chapter Box 9: Integrative Cross-Chapter Box on Low-Lying Islands and Coasts. In: IPCC Special Report on the Ocean and Cryosphere in a Changing Climate. | https://www.ipcc.ch/site/assets/uploads/sites/3/2019/11/11_SROCC_CCB9-LLIC_FINAL.pdf | 18 | 2019 IPCC | Annex I: Glossary [Weyer, N.M. (ed.)]. In: IPCC Special Report on the Ocean and Cryosphere in a Changing Climate. | https://www.ipcc.ch/site/assets/uploads/sites/3/2022/03/10_SROCC_AnnexI-Glossary_FINAL.pdf | 28 | 2019 IPBES | Full Report. Global assessment report on biodiversity and ecosystem services of the IPBES. | https://zenodo.org/record/6417333/files/202206_IPBES%20GLOBAL%20REPORT_FULL_DIGITAL_MARCH%202022.pdf | 1148 | 2019 IPBES | Summary for Policymakers. Global assessment report on biodiversity and ecosystem services of the IPBES (Version 1). | https://zenodo.org/record/3553579/files/ipbes_global_assessment_report_summary_for_policymakers.pdf | 60 | 2019 IPBES | Full Report. Thematic assessment of the sustainable use of wild species of the IPBES. | https://zenodo.org/record/7755805/files/IPBES_ASSESSMENT_SUWS_FULL_REPORT.pdf | 1008 | 2022 IPBES | Summary for Policymakers. Summary for policymakers of the thematic assessment of the sustainable use of wild species of the IPBES. | https://zenodo.org/record/7411847/files/EN_SPM_SUSTAINABLE%20USE%20OF%20WILD%20SPECIES.pdf | 44 | 2022 IPBES | Full Report. Regional Assessment Report on Biodiversity and Ecosystem Services for Africa. | https://zenodo.org/record/3236178/files/ipbes_assessment_report_africa_EN.pdf | 494 | 2018 IPBES | Summary for Policymakers. Regional Assessment Report on Biodiversity and Ecosystem Services for Africa. | https://zenodo.org/record/3236189/files/ipbes_assessment_spm_africa_EN.pdf | 52 | 2018 IPBES | Full Report. Regional Assessment Report on Biodiversity and Ecosystem Services for the Americas. | https://zenodo.org/record/3236253/files/ipbes_assessment_report_americas_EN.pdf | 660 | 2018 IPBES | Summary for Policymakers. Regional Assessment Report on Biodiversity and Ecosystem Services for the Americas. | https://zenodo.org/record/3236292/files/ipbes_assessment_spm_americas_EN.pdf | 44 | 2018 IPBES | Full Report. Regional Assessment Report on Biodiversity and Ecosystem Services for Asia and the Pacific. | https://zenodo.org/record/3237374/files/ipbes_assessment_report_ap_EN.pdf | 616 | 2018 IPBES | Summary for Policymakers. Regional Assessment Report on Biodiversity and Ecosystem Services for Asia and the Pacific. | https://zenodo.org/record/3237383/files/ipbes_assessment_spm_ap_EN.pdf | 44 | 2018 IPBES | Full Report. Regional Assessment Report on Biodiversity and Ecosystem Services for Europe and Central Asia. | https://zenodo.org/record/3237429/files/ipbes_assessment_report_eca_EN.pdf | 894 | 2018 IPBES | Summary for Policymakers. Regional Assessment Report on Biodiversity and Ecosystem Services for Europe and Central Asia. | https://zenodo.org/record/3237468/files/ipbes_assessment_spm_eca_EN.pdf | 52 | 2018 IPBES | Full Report. Assessment Report on Land Degradation and Restoration. | https://zenodo.org/record/3237393/files/ipbes_assessment_report_ldra_EN.pdf | 748 | 2018 IPBES | Summary for Policymakers. Assessment Report on Land Degradation and Restoration. | https://zenodo.org/record/3237393/files/ipbes_assessment_report_ldra_EN.pdf | 48 | 2018 """) with gr.Tab("🛢️ Carbon Footprint"): gr.Markdown(""" Carbon emissions were measured during the development and inference process using CodeCarbon [https://github.com/mlco2/codecarbon](https://github.com/mlco2/codecarbon) | Phase | Description | Emissions | Source | | --- | --- | --- | --- | | Development | OCR and parsing all pdf documents with AI | 28gCO2e | CodeCarbon | | Development | Question Answering development | 114gCO2e | CodeCarbon | | Inference | Question Answering | ~0.102gCO2e / call | CodeCarbon | | Inference | API call to turbo-GPT | ~0.38gCO2e / call | https://medium.com/@chrispointon/the-carbon-footprint-of-chatgpt-e1bc14e4cc2a | Carbon Emissions are **relatively low but not negligible** compared to other usages: one question asked to ClimateQ&A is around 0.482gCO2e - equivalent to 2.2m by car (https://datagir.ademe.fr/apps/impact-co2/) Or around 2 to 4 times more than a typical Google search. """ ) with gr.Tab("🪄 Changelog"): gr.Markdown(""" ##### v1.1.0 - *2023-10-16* - ClimateQ&A on Hugging Face is finally working again with all the new features ! - Switched all python code to langchain codebase for cleaner code, easier maintenance and future features - Updated GPT model to August version - Added streaming response to improve UX - Created a custom Retriever chain to avoid calling the LLM if there is no documents retrieved - Use of HuggingFace embed on https://climateqa.com to avoid demultiplying deployments ##### v1.0.0 - *2023-05-11* - First version of clean interface on https://climateqa.com - Add children mode on https://climateqa.com - Add follow-up questions https://climateqa.com """ ) demo.queue(concurrency_count=16) demo.launch()