---
license: apache-2.0
---
# Lite-Mistral-150M-v2-Instruct
This is a Lite series model based on the Mistral architecture, comprising approximately 157 million parameters.
## Improvements from v1:
- Extended Training: Further refinement of the model, resulting in improved benchmark performance and overall text generation quality.
- Tokenizer changes.
## How coherent is the 150M model?
Let's look at real-world examples:
## Example 1
```
Input:
user
What is the capital of France?
assistant
The capital of France is Paris.
user
What is the capital of Spain?
Response:
assistant
The capital of Spain is Madrid, which is known for its beautiful architecture and rich history.
```
## Example 2
```
Input:
user
Who wrote the play "Romeo and Juliet"?
Response:
assistant
The play "Romeo and Juliet" was written by William Shakespeare.
```
## Example 3
```
Input:
user
Tell me a joke
Response:
assistant
Why did the chicken cross the playground? Because it wanted to see who could get the ball!
```
## Example 4 (RP)
```
Input:
user
Let's roleplay. I'll be a customer at a restaurant, and you be the waiter. Ready?
assistant
Certainly! I'll play the role of a waiter. Please go ahead and start the roleplay when you're ready.
user
Hello, I'd like to see the menu please.
assistant
Good evening, sir! Welcome to our restaurant. Here's our menu for today. May I recommend our chef's special, the grilled salmon with lemon butter sauce? Let me know if you have any questions about our dishes.
user
I'll have the salmon. What wines do you recommend to go with it?
Response:
assistant
To go with your salmon, we suggest a pair of red-tailed or white-tailed jackfights. The grilled salmon is creamy and has a nice acidity. The lemon butter sauce is a great addition to this dish.
```
While the model performs well for straightforward tasks, it may lack depth in complex topics or sophisticated creative abilities.
It's optimized for scenarios where computational efficiency is paramount. It offers a compact solution for tasks that require a balance between resource constraints and acceptable performance.
As a lightweight model, it may exhibit reduced accuracy and coherence compared to larger language models.
## Benchmarks:
Benchmark | 5-shot | 0-shot |
---|---|---|
ARC Easy | 47.26 | 45.58 |
BoolQ | 43.33 | 44.16 |
HellaSWAG | 28.70 | 28.72 |
MMLU | 26.09 | 25.28 |
OpenBookQA | 16.00 | 18.20 |
PIQA | 62.79 | 62.02 |
Winogrande | 51.30 | 51.78 |