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EscapeFromTarkov-Trainer

-important note- before publishing this repository, I gave all the details to EFT developers, so that they can fix their game (so this trainer should not be usable anymore... or not). Indeed I don't care for offline game trainers, but I don't want a multiplayer or online game to be ruined by cheaters. I was just interested by the reverse-engineering part.

I'm not responsible for any consequences that result from using this code. BattleState / BattlEye will probably ban you if you try to use it. (and if you still want to use it, you should rename all methods/types/fields, as BattlEye is collecting strings from game process).

This is an attempt -for educational purposes only- to alter a Unity game at runtime without patching the binaries (so without using Cecil nor Reflexil). EFT is using BattlEye, so we cannot use SharpMonoInjector.

Features

This trainer gives:

  • HUD (ammo left in chamber / magazine, fire mode)
  • Door unlocker
  • Wallhack
  • Exfiltration points outline
  • Autohealth (offline raid only)
  • No bullet hits (offline raid only)

demo demo

Mono injection

EFT is using:

  • Battleye for process isolation, so you cannot use trivial mono injection techniques as SharpMonoInjector.
  • Hash verification and a basic assembly obfuscation to prevent assembly patching. It is still possible to use Reflexil or DnSpy to patch the game and the loader, but this is to be done for each update. You can also paste a patched payload just after the hash check, and before the file is really loaded by the mono runtime.

Given I was not able to “force push” my code into the EFT AppDomain, I searched a way for my code to be pulled by EFT directly. So, using ILSpy, I audited all calls to Assembly.Load* methods, and given EFT is using the NLog framework, I was able to find the following:

ilspy

NLog is auto-loading all assemblies located in the Managed folder (where the main Nlog.dll is located), if they start with the name NLog.

So from here I was able to load my code, given I copied my NLog.EFT.Trainer.dll to the managed folder:

process monitor

After that, I needed a way to have an initial call to my code. In the .NET world you have something named module initializers, but before going this way, I found again another trick using NLog:

ilspy

If you create a file named “Nlog.dll.nlog” along with the NLog.dll file, it will be auto-loaded by default:

process monitor

So I just crafted a proper config file, making NLog invoking the ctor of my stub Logger Target :

config

[Target(nameof(EFTTarget))]
public sealed class EFTTarget : TargetWithLayout
{
	public EFTTarget()
	{
		Loader.Load();
	}
}

Then, I’m now loaded in the Game AppDomain, I can hook to the current gameObjects:

public class Loader
{
    public static GameObject HookObject
    {
        get
        {
            var result = GameObject.Find("Application (Main Client)");
            if (result == null)
            {
                result = new GameObject("Trainer");
                Object.DontDestroyOnLoad(result);
            }
            return result;
        }
    }
    
    public static void Load()
    {
        HookObject.AddComponent<TrainerBehaviour>();
    }
}

I can then use all the EFT API surface. Finding GameObjects, getting components and calling methods. When something is private or obfuscated, I can even use Reflection:

private static void UnlockDoors(Player player)
{
    var doors = FindObjectsOfType<Door>();
    foreach (var door in doors)
    {
        // door unlocker
        if (door == null)
            continue;

        if (door.DoorState != EDoorState.Locked)
            continue;

        var offset = player.Transform.position - door.transform.position;
        var sqrLen = offset.sqrMagnitude;

        // only unlock if near player, else you'll get a ban from BattlEye if you brute-force-unlock all doors
        if (sqrLen <= 20.0f)
            door.DoorState = EDoorState.Shut;
    }
}

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  • C# 70.5%
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