Skip to content
Snippets Groups Projects

Examples

Merged Kostas Vilkelis requested to merge examples into main
All threads resolved!
1 file
+ 31
0
Compare changes
  • Side-by-side
  • Inline
+ 31
0
@@ -34,12 +34,43 @@ documentation/pymf.md
## What is pymf?
Pymf is a Python package for finding mean-field corrections to the non-interacting part of a Hamiltonian. It is designed to be simple to use and flexible enough to handle a wide range of systems. Pymf works by solving the mean-field equations self-consistently.
Finding a mean-field solution is a 4-step process:
- Define the non-interacting and interacting part of the Hamiltonian separately as hopping dictionaries.
- Combine the non-interacting and interacting parts togher with your filling into a `Model` object.
- Provide a starting guess and the number of k-points to use the `solver` function and find the mean-field correction.
- Add the mean-field correction to the non-interacting part to calculate the total Hamiltonian.
```python
import pymf
model = pymf.Model(h_0, h_int, filling=filling)
mf_sol = pymf.solver(model, guess)
h_full = pymf.add_tb(h_0, mf_sol)
```
## Why pymf?
Here is why you should use pymf:
* Minimal
It contains the minimum of what you need to solve mean-field equations.
* Simple
The workflow is simple and straightforward.
* Time-effective
As pymf uses tight-binding dictionaries as input and returns, you can calculate the mean-field corrections on a coarse grid, but use the full Hamiltonian on a fine grid for observables afterward.
## How does pymf work?
## What does pymf not do yet?
* Superconductivity
## Installation
```bash
Loading