Agent skill
jupyter-live-kernel
Use a live Jupyter kernel for stateful, iterative Python execution via hamelnb. Load this skill when the task involves exploration, iteration, or inspecting intermediate results — data science, ML experimentation, API exploration, or building up complex code step-by-step. Uses terminal to run CLI commands against a live Jupyter kernel. No new tools required.
Install this agent skill to your Project
npx add-skill https://github.com/NousResearch/hermes-agent/tree/main/skills/data-science/jupyter-live-kernel
Metadata
Additional technical details for this skill
- hermes
-
{ "tags": [ "jupyter", "notebook", "repl", "data-science", "exploration", "iterative" ], "category": "data-science" }
SKILL.md
Jupyter Live Kernel (hamelnb)
Gives you a stateful Python REPL via a live Jupyter kernel. Variables persist
across executions. Use this instead of execute_code when you need to build up
state incrementally, explore APIs, inspect DataFrames, or iterate on complex code.
When to Use This vs Other Tools
| Tool | Use When |
|---|---|
| This skill | Iterative exploration, state across steps, data science, ML, "let me try this and check" |
execute_code |
One-shot scripts needing hermes tool access (web_search, file ops). Stateless. |
terminal |
Shell commands, builds, installs, git, process management |
Rule of thumb: If you'd want a Jupyter notebook for the task, use this skill.
Prerequisites
- uv must be installed (check:
which uv) - JupyterLab must be installed:
uv tool install jupyterlab - A Jupyter server must be running (see Setup below)
Setup
The hamelnb script location:
SCRIPT="$HOME/.agent-skills/hamelnb/skills/jupyter-live-kernel/scripts/jupyter_live_kernel.py"
If not cloned yet:
git clone https://github.com/hamelsmu/hamelnb.git ~/.agent-skills/hamelnb
Starting JupyterLab
Check if a server is already running:
uv run "$SCRIPT" servers
If no servers found, start one:
jupyter-lab --no-browser --port=8888 --notebook-dir=$HOME/notebooks \
--IdentityProvider.token='' --ServerApp.password='' > /tmp/jupyter.log 2>&1 &
sleep 3
Note: Token/password disabled for local agent access. The server runs headless.
Creating a Notebook for REPL Use
If you just need a REPL (no existing notebook), create a minimal notebook file:
mkdir -p ~/notebooks
Write a minimal .ipynb JSON file with one empty code cell, then start a kernel session via the Jupyter REST API:
curl -s -X POST http://127.0.0.1:8888/api/sessions \
-H "Content-Type: application/json" \
-d '{"path":"scratch.ipynb","type":"notebook","name":"scratch.ipynb","kernel":{"name":"python3"}}'
Core Workflow
All commands return structured JSON. Always use --compact to save tokens.
1. Discover servers and notebooks
uv run "$SCRIPT" servers --compact
uv run "$SCRIPT" notebooks --compact
2. Execute code (primary operation)
uv run "$SCRIPT" execute --path <notebook.ipynb> --code '<python code>' --compact
State persists across execute calls. Variables, imports, objects all survive.
Multi-line code works with $'...' quoting:
uv run "$SCRIPT" execute --path scratch.ipynb --code $'import os\nfiles = os.listdir(".")\nprint(f"Found {len(files)} files")' --compact
3. Inspect live variables
uv run "$SCRIPT" variables --path <notebook.ipynb> list --compact
uv run "$SCRIPT" variables --path <notebook.ipynb> preview --name <varname> --compact
4. Edit notebook cells
# View current cells
uv run "$SCRIPT" contents --path <notebook.ipynb> --compact
# Insert a new cell
uv run "$SCRIPT" edit --path <notebook.ipynb> insert \
--at-index <N> --cell-type code --source '<code>' --compact
# Replace cell source (use cell-id from contents output)
uv run "$SCRIPT" edit --path <notebook.ipynb> replace-source \
--cell-id <id> --source '<new code>' --compact
# Delete a cell
uv run "$SCRIPT" edit --path <notebook.ipynb> delete --cell-id <id> --compact
5. Verification (restart + run all)
Only use when the user asks for a clean verification or you need to confirm the notebook runs top-to-bottom:
uv run "$SCRIPT" restart-run-all --path <notebook.ipynb> --save-outputs --compact
Practical Tips from Experience
-
First execution after server start may timeout — the kernel needs a moment to initialize. If you get a timeout, just retry.
-
The kernel Python is JupyterLab's Python — packages must be installed in that environment. If you need additional packages, install them into the JupyterLab tool environment first.
-
--compact flag saves significant tokens — always use it. JSON output can be very verbose without it.
-
For pure REPL use, create a scratch.ipynb and don't bother with cell editing. Just use
executerepeatedly. -
Argument order matters — subcommand flags like
--pathgo BEFORE the sub-subcommand. E.g.:variables --path nb.ipynb listnotvariables list --path nb.ipynb. -
If a session doesn't exist yet, you need to start one via the REST API (see Setup section). The tool can't execute without a live kernel session.
-
Errors are returned as JSON with traceback — read the
enameandevaluefields to understand what went wrong. -
Occasional websocket timeouts — some operations may timeout on first try, especially after a kernel restart. Retry once before escalating.
Timeout Defaults
The script has a 30-second default timeout per execution. For long-running
operations, pass --timeout 120. Use generous timeouts (60+) for initial
setup or heavy computation.
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