MCP Task Assistant
Click on "Install Server".
Wait a few minutes for the server to deploy. Once ready, it will show a "Started" state.
In the chat, type
@followed by the MCP server name and your instructions, e.g., "@MCP Task Assistantadd a task to review project proposal"
That's it! The server will respond to your query, and you can continue using it as needed.
Here is a step-by-step guide with screenshots.
MCP Task Assistant (Learning Project)
This is Krishna's first end-to-end AI project. It combines:
A Task Manager — simple to-do list (add, list, complete tasks)
An MCP Server — exposes the task manager as "tools" that an AI can use
A FastAPI backend — turns everything into a real web service
(Next step) A RAG layer — lets the assistant also answer questions from documents
(Later step) Docker + AWS deployment — makes it a real, hosted app
Why this project matters
Most beginner AI projects are just a script in a notebook. This one is built the way real companies build things: as a service other programs (or an AI) can actually use.
Related MCP server: Sentinel Core Agent
Folder structure
mcp-task-assistant/
├── app/
│ ├── tasks_store.py # the "database" (in-memory for now)
│ ├── mcp_server.py # exposes tasks as MCP tools
│ └── main.py # FastAPI web app
├── requirements.txt
└── README.mdHow to run this on your own laptop
Step 1 — Install Python
Make sure you have Python 3.10 or newer. Check with:
python --versionStep 2 — Create a virtual environment
This keeps this project's packages separate from everything else on your computer.
python -m venv venvActivate it:
Windows:
venv\Scripts\activateMac/Linux:
source venv/bin/activate
Step 3 — Install the required packages
pip install -r requirements.txtStep 4 — Run the MCP server (this is the "tools" part)
python app/mcp_server.pyThis starts a server that exposes 3 tools: add_task, list_tasks, complete_task.
Step 5 — Run the FastAPI app (this is the "web service" part)
In a second terminal (with venv activated again):
uvicorn app.main:app --reloadThen open http://127.0.0.1:8000/docs in your browser — you'll see a live, clickable page where you can test adding and listing tasks.
Step 6 — Talk to the AI agent (Groq API — free tier)
Now that create_task / get_tasks / finish_task exist as MCP tools, we can let an actual AI decide when to use them, instead of you calling them by hand. We're using the Groq API — cloud-hosted, fast, and has a generous free tier. If you already have a Groq API key from an earlier project, you can reuse it — a key belongs to your account, not to one specific app.
1. Get / find your Groq API key
Go to https://console.groq.com/keys — reuse your existing key or create a new one.
2. Set up your key
Copy .env.example to a new file named .env, and paste your real key in:
GROQ_API_KEY=your-real-key-here3. Install the packages
pip install -r requirements.txt4. Run the agent
python app/agent.pyYou do NOT need to separately start mcp_server.py this time — the agent
starts it automatically in the background.
5. Try it out
Type things like:
add a task to finish my resume
add a task to practice interview questions
show me all my tasks
mark task 1 as doneWatch the terminal — you'll see a line like [Agent is calling tool: create_task ...]
right before it responds. That line is proof the AI is actually deciding to use
your tool, not just chatting.
Step 7 — Add document search (RAG)
Now your assistant can also answer questions using your own documents, not just manage tasks.
1. Install the new package
pip install -r requirements.txt(This installs chromadb, our free local search database. It also
downloads a small model the first time you use it, to understand text
meaning — after that first download, it works offline.)
2. Add your documents
Put any .txt files into the documents/ folder. A sample file
(company_leave_policy.txt) is already there so you can test right away.
3. Build the search index
Run this every time you add or change a document:
python app/build_index.py4. Ask questions
Run the agent as usual:
python app/agent.pyTry asking:
how many paid leave days do employees get?
what happens to unused leave at the end of the year?You should see [Agent is calling tool: search_documents ...] before it
answers — that means it actually looked in your document instead of
guessing.
Step 8 — Package with Docker
Docker packages your whole app — code, packages, everything — into one "box" (called an image) that runs the exact same way on any computer or server. This is how real companies ship software, instead of saying "it works on my machine."
1. Install Docker
Download Docker Desktop from https://www.docker.com/products/docker-desktop and install it. Make sure it's running before the next steps.
2. Build the image
From the main project folder:
docker build -t task-assistant .This reads the Dockerfile, installs everything, and builds your indexed
documents right into the image.
3. Run the container
Your Groq key still needs to be provided — we never bake secrets into the image itself. Run:
docker run -p 8000:8000 --env-file .env task-assistant4. Test it
Open http://127.0.0.1:8000/docs — same as before, but now it's running
inside a container. Try the new /chat endpoint with a message like:
{"message": "add a task to finish my resume"}What we'll add next
Deploy on AWS or Render
Add basic evaluation/logging
Step 9 — Frontend
There's now a real webpage, not just the /docs testing page. It lives in
app/static/ (index.html, style.css, app.js) and is served
automatically by FastAPI at the site's root URL.
Try it
pip install -r requirements.txt
uvicorn app.main:app --reloadOpen http://127.0.0.1:8000 (not /docs this time) — you'll see a proper
chat interface with a task sidebar. Type a message like "add a task to
finish my resume" and watch the assistant respond, show which tools it
used (a small transparency feature — most portfolio projects skip this),
and update the task list automatically.
Note: /docs still works too, for testing individual endpoints directly.
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