On Query decorator example
This documentation outlines the steps to set up and enable communication between Agent and flask app based webpage, using the uAgents framework. flask app sends a query to Agent, and Agent processes this query and responds. Both agent and app use a simple request-response model for communication.
Guide
Supporting documentation
Agent Script
Agent Script
This agent handles queries related to job searches using SerpAPI. It provides information about available jobs for a job title specified by the user.
Self hosted
JobSearchAgent.py# import required libraries import json import aiohttp from uagents import Agent, Context, Model from uagents.setup import fund_agent_if_low # Define Request and Response Data Models class Request(Model): query: str class Response(Model): response: str # Define asynchronous function to handle job search queries using a serpapi url async def get_job_summary(query: str, location: str, api_key: str): url = "https://serpapi.com/search.json" params = { "q": query + " careers", "location": location, "engine": "google_jobs", "api_key": api_key, } async with aiohttp.ClientSession() as session: async with session.get(url, params=params) as response: if response.status == 200: data = await response.json() jobs = data.get("jobs_results", []) if jobs: job = jobs[0] if jobs else None # Ensuring there is a job to report if not job: return "No job details available." res_str = json.dumps( { "Title": job.get("title", "N/A"), "Company": job.get("company_name", "N/A"), "Location": job.get("location", "N/A"), "Link": job.get("link", "N/A"), "Posted": job.get("detected_extensions", {}).get( "posted_at", "N/A" ), "Type": job.get("detected_extensions", {}).get( "schedule_type", "N/A" ), "Description": job.get("description", "N/A"), }, indent=2, ) return res_str else: return "No job results found." else: return f"Failed to fetch data: {response.status}" # Define Search Agent SearchAgent = Agent( name="SearchAgent", port=8000, seed="<YOUR_AGENT_SECRET_PHRASE>", endpoint=["http://127.0.0.1:8000/submit"], ) # Update your agent's secret phrase # Registering agent on Almanac and funding it fund_agent_if_low(SearchAgent.wallet.address()) # On agent startup printing address @SearchAgent.on_event("startup") async def agent_details(ctx: Context): ctx.logger.info(f"Search Agent Address is {SearchAgent.address}") # On_query decorator to handle jobs request @SearchAgent.on_query(model=Request, replies={Response}) async def query_handler(ctx: Context, sender: str, msg: Request): ctx.logger.info("Query received") try: ctx.logger.info(f"Fetching job details for query: {msg.query}") response = await get_job_summary( msg.query, "United Kingdom", "<YOUR_SERPAPI_API_KEY_HERE>" # Update your serpapi API key ) # Replace your serpAPI key. ctx.logger.info(f"Response: {response}") await ctx.send(sender, Response(response=response)) except Exception as e: error_message = f"Error fetching job details: {str(e)}" ctx.logger.error(error_message) await ctx.send(sender, Response(response=str(error_message))) if __name__ == "__main__": SearchAgent.run()
Please update agent's secret phrase and serpapi API key. You can find serpapi API key on SerpAPI API key (opens in a new tab)
Flask App Script
Async Agent-Based Flask App for Keyword base Job Search Results Retrieval.
jobsearchapp.pyimport json from flask import Flask, jsonify, request from uagents import Model from uagents.query import query app = Flask(__name__) # Define the address of your agent to send requests to AGENT_ADDRESS = "<YOUR_AGENT_ADDRESS_HERE>" # Update your agent address here # Define a data model for incoming requests class Request(Model): query: str # Define a route to handle job search queries @app.route("/search-jobs") async def search_jobs(): keyword = request.args.get("q") if not keyword: return jsonify({"error": "No query provided.", "status": "error"}), 400 # Make a call to the agent with the request and handle the response response = await make_agent_call(Request(query=keyword)) # Check if the response indicates an unsuccessful agent call if isinstance(response, str) and response.startswith("Unsuccessful"): return jsonify({"error": response, "status": "failed"}), 500 try: # Parse the response to a Python dictionary job_data = json.loads(response) # Return the job data in a structured format return jsonify({"results": job_data, "status": "success"}) except json.JSONDecodeError: # Handle JSON decoding error return jsonify({"error": "Invalid response format", "status": "error"}), 500 # Function to send a query to the agent async def agent_query(req): try: response = await query(destination=AGENT_ADDRESS, message=req, timeout=15.0) # Decode the response and extract data data = json.loads(response.decode_payload()) return data.get("response", "No data found") except Exception as e: # Return a formatted error message if the agent call fails return f"Unsuccessful agent call - {str(e)}" # Function to initiate an agent call async def make_agent_call(req: Request): response = await agent_query(req) return response # Main function to run the Flask application if __name__ == "__main__": app.run(debug=True)
Steps to run the app
- Update
Agent Address
injobsearchapp.py
andserpapi_api_key
(opens in a new tab) inJobSearchAgent.py
. - Run both the script
JobSearchAgent.py
and update the agents address injobsearchapp.py
. - Rerun
JobSearchAgent.py
andjobsearchapp.py
together - Open new terminal window and run
curl "http://127.0.0.1:5000/search-jobs?q=<your_job_serach_query>"
- Replace
your_job_search_query
with your query in above command.
Expected Output
JobSearchAgent.py
INFO: [SearchAgent]: Almanac registration is up to date! INFO: [SearchAgent]: Search Agent Address is agent1qdmgt4txxlvve4fmk8cw6jcp4gd2l709ctllx7jvz0kx4jzace5hu8n00hj INFO: [SearchAgent]: Starting server on http://0.0.0.0:8000 (Press CTRL+C to quit) INFO: [SearchAgent]: Query received INFO: [SearchAgent]: Fetching job details for query: data analyst INFO: [SearchAgent]: Fetching job details for query: data analyst INFO: [SearchAgent]: Response: { "Title": "Data Analyst - eCommerce", "Company": "Next Plc", "Location": " Leicester, United Kingdom ", "Link": "N/A", "Posted": "3 days ago", "Type": "Full-time", "Description": "Let\u2019s talk numbers. When it comes to UK retail, it\u2019s hard to find a bigger name. We sell thousands of items an hour and are expanding our eCommerce business by the second. For anyone in Data, this is the place to learn. To grow. And to thrive.\n\nOur International eCommerce Third parties team help to connect NEXT with other large selling platforms such as Zalando and La Redoute to sell thousands of products. These platforms deliver strong growth for NEXT and to continue to support this growth we need ever improving data points and manipulation.\n\nThe role\nAre you an expert in interpreting data? Here, you\u2019ll be at the forefront of understanding and interpreting customer data to drive strategic decisions and enhance online customer experiences. So what does this mean day-to-day for you as a Data Analyst at NEXT, specifically?\n\u2022 Presenting complex analytical findings into clear, concise reports and communicating your analysis to the wider team.\n\u2022 Building reports and visualizations for the... wider team and business.\n\u2022 Exploring the latest technologies and selecting the right tools for the job.\n\u2022 Interrogating large volumes of data from a range of sources, including transactional and online.\n\u2022 Supporting the creation of partner dashboards converting key partner information.\n\u2022 Proactively identifying opportunities to support improvements to the customer experience.\n\u2022 Manage and own new partner data requirements.\n\u2022 Communicating and collaborating with cross functional teams within eCommerce and the wider business.\n\nYou\u2019ll be doing all this from our Leicestershire Head Office. Our offices are inspiring, yes. But we understand that life happens. So, we\u2019re big on making sure your work, works for you which is why we offer flexible working. Bring your energy. Play to your strengths. Make things bigger and better than before. Let\u2019s Take It On.\n\nSo if you\u2019re an expert in this field, have strong SQL/Azure/Databricks skills and considerable data analysis knowledge, have a commercial understanding and background, work with initiative and can build great working relationships within the business, this is the place for you \u2013 and your career.\n\nThe benefits\n\nWe\u2019ll discuss more of what you\u2019ll get when you work for NEXT at interview, but here\u2019s an overview of what you can expect:\n\u2022 Profit\u2013related bonus\n\u2022 Contributions into a pension scheme\n\u2022 Life assurance\n\u2022 Sharesave scheme, which allows you to invest in NEXT and claim your share of our success\n\u2022 A newly refurbished subsidized restaurant and bar\n\u2022 On-site nursery (salary sacrifice scheme) in Leicester\n\u2022 Staff shop\n\u2022 Juice bar and coffee shop\n\u2022 Free parking on-site, including car sharing\n\u2022 Free company bus service to and from Leicester city center and other areas\n\u2022 25% staff discount on most NEXT products \u2013 either in our stores or delivered directly to your desk\n\u2022 National and local discounts on goods and services\n\u2022 A digital GP healthcare service" }
- Curl Response
{ "results": { "Company": "Next Plc", "Description": "Let\u2019s talk numbers. When it comes to UK retail, it\u2019s hard to find a bigger name. We sell thousands of items an hour and are expanding our eCommerce business by the second. For anyone in Data, this is the place to learn. To grow. And to thrive.\n\nOur International eCommerce Third parties team help to connect NEXT with other large selling platforms such as Zalando and La Redoute to sell thousands of products. These platforms deliver strong growth for NEXT and to continue to support this growth we need ever improving data points and manipulation.\n\nThe role\nAre you an expert in interpreting data? Here, you\u2019ll be at the forefront of understanding and interpreting customer data to drive strategic decisions and enhance online customer experiences. So what does this mean day-to-day for you as a Data Analyst at NEXT, specifically?\n\u2022 Presenting complex analytical findings into clear, concise reports and communicating your analysis to the wider team.\n\u2022 Building reports and visualisations for the... wider team and business.\n\u2022 Exploring the latest technologies and selecting the right tools for the job.\n\u2022 Interrogating large volumes of data from a range of sources, including transactional and online.\n\u2022 Supporting the creation of partner dashboards converting key partner information.\n\u2022 Proactively identifying opportunities to support improvements to the customer experience.\n\u2022 Manage and own new partner data requirements.\n\u2022 Communicating and collaborating with cross functional teams within eCommerce and the wider business.\n\nYou\u2019ll be doing all this from our Leicestershire Head Office. Our offices are inspiring, yes. But we understand that life happens. So, we\u2019re big on making sure your work, works for you which is why we offer flexible working. Bring your energy. Play to your strengths. Make things bigger and better than before. Let\u2019s Take It On.\n\nSo if you\u2019re an expert in this field, have strong SQL/Azure/Databricks skills and considerable data analysis knowledge, have a commercial understanding and background, work with initiative and can build great working relationships within the business, this is the place for you \u2013 and your career.\n\nThe benefits\n\nWe\u2019ll discuss more of what you\u2019ll get when you work for NEXT at interview, but here\u2019s an overview of what you can expect:\n\u2022 Profit\u2013related bonus\n\u2022 Contributions into a pension scheme\n\u2022 Life assurance\n\u2022 Sharesave scheme, which allows you to invest in NEXT and claim your share of our success\n\u2022 A newly refurbished subsidised restaurant and bar\n\u2022 On-site nursery (salary sacrifice scheme) in Leicester\n\u2022 Staff shop\n\u2022 Juice bar and coffee shop\n\u2022 Free parking on-site, including car sharing\n\u2022 Free company bus service to and from Leicester city center and other areas\n\u2022 25% staff discount on most NEXT products \u2013 either in our stores or delivered directly to your desk\n\u2022 National and local discounts on goods and services\n\u2022 A digital GP healthcare service", "Link": "N/A", "Location": " Leicester, United Kingdom ", "Posted": "3 days ago", "Title": "Data Analyst - eCommerce", "Type": "Full-time" }, "status": "success" }