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import torch
import torch.nn as nn

# Positional encoding (section 5.1)
class Embedder:
    def __init__(self, **kwargs):
        self.kwargs = kwargs
        self.create_embedding_fn()
        
    def create_embedding_fn(self):
        embed_fns = []
        d = self.kwargs['input_dims']
        out_dim = 0
        if self.kwargs['include_input']:
            embed_fns.append(lambda x : x)
            out_dim += d
            
        max_freq = self.kwargs['max_freq_log2']
        N_freqs = self.kwargs['num_freqs']
        
        if self.kwargs['log_sampling']:
            freq_bands = 2.**torch.linspace(0., max_freq, steps=N_freqs)
        else:
            freq_bands = torch.linspace(2.**0., 2.**max_freq, steps=N_freqs)
            
        for freq in freq_bands:
            for p_fn in self.kwargs['periodic_fns']:
                embed_fns.append(lambda x, p_fn=p_fn, freq=freq : p_fn(x * freq))
                out_dim += d
                    
        self.embed_fns = embed_fns
        self.out_dim = out_dim
        
    def embed(self, inputs):
        return torch.cat([fn(inputs) for fn in self.embed_fns], -1)

def get_embedder(multires, i=0):
    if i == -1:
        return nn.Identity(), 3
    
    embed_kwargs = {
                'include_input' : True,
                'input_dims' : 1,
                'max_freq_log2' : multires-1,
                'num_freqs' : multires,
                'log_sampling' : True,
                'periodic_fns' : [torch.sin, torch.cos],
    }
    
    embedder_obj = Embedder(**embed_kwargs)
    embed = lambda x, eo=embedder_obj : eo.embed(x)
    return embed, embedder_obj.out_dim