First **normalize the two features** to the same scale, simple way to do it is by normalizing to [0,1] interval^{1}:

```
students_score = (throughput-1)/40000.0
judge_score = judge/10.0
```

Now you have two normalized scores, and you need to decide how much weight each is getting, and evaluate with a **linear combination** of those:

```
final_score = a * students_score + b * judge_score
```

Where `a,b`

are parameters you can tune, and `students_score ,judge_score`

are the normalized results calculated above

You might also be able to chose optimal `a,b`

using **linear regression** - if you are willing to manually give score to a sample of contestants

(1) It is sometimes better to normalize with something dynamic like `max { throughputfor all }`

for example, and not the hard absolute super limit (40000 in your case)