#[test]
fn test_convert_with_q6_k_tensors() {
let vocab_size = 32;
let hidden_dim = 64;
let intermediate_dim = 128;
let embed_data = create_f32_embedding_data(vocab_size, hidden_dim);
let norm_data = create_f32_norm_weights(hidden_dim);
let q6k_data = create_q6_k_data(hidden_dim * hidden_dim);
let ffn_q6k = create_q6_k_data(hidden_dim * intermediate_dim);
let gguf_data = GGUFBuilder::new()
.architecture("llama")
.hidden_dim("llama", hidden_dim as u32)
.num_layers("llama", 1)
.num_heads("llama", 4)
.num_kv_heads("llama", 4)
.context_length("llama", 64)
.rope_freq_base("llama", 10000.0)
.rms_epsilon("llama", 1e-5)
.ffn_hidden_dim("llama", intermediate_dim as u32)
.add_f32_tensor(
"token_embd.weight",
&[vocab_size as u64, hidden_dim as u64],
&embed_data,
)
.add_f32_tensor("blk.0.attn_norm.weight", &[hidden_dim as u64], &norm_data)
.add_q6_k_tensor(
"blk.0.attn_q.weight",
&[hidden_dim as u64, hidden_dim as u64],
&q6k_data,
)
.add_q6_k_tensor(
"blk.0.attn_k.weight",
&[hidden_dim as u64, hidden_dim as u64],
&q6k_data,
)
.add_q6_k_tensor(
"blk.0.attn_v.weight",
&[hidden_dim as u64, hidden_dim as u64],
&q6k_data,
)
.add_q6_k_tensor(
"blk.0.attn_output.weight",
&[hidden_dim as u64, hidden_dim as u64],
&q6k_data,
)
.add_f32_tensor("blk.0.ffn_norm.weight", &[hidden_dim as u64], &norm_data)
.add_q6_k_tensor(
"blk.0.ffn_up.weight",
&[hidden_dim as u64, intermediate_dim as u64],
&ffn_q6k,
)
.add_q6_k_tensor(
"blk.0.ffn_down.weight",
&[intermediate_dim as u64, hidden_dim as u64],
&ffn_q6k,
)
.add_q6_k_tensor(
"blk.0.ffn_gate.weight",
&[hidden_dim as u64, intermediate_dim as u64],
&ffn_q6k,
)
.add_f32_tensor("output_norm.weight", &[hidden_dim as u64], &norm_data)
.build();
let apr = GgufToAprConverter::convert(&gguf_data).unwrap();
assert_eq!(apr.config.hidden_dim, hidden_dim);
}
#[test]
fn test_apr_transformer_from_apr_bytes_small_file() {
let result = AprTransformer::from_apr_bytes(&[0; 32]);
assert!(result.is_err());
}
#[test]
fn test_apr_transformer_from_apr_bytes_invalid_magic() {
let mut data = vec![0u8; 128];
data[0..4].copy_from_slice(b"NOAP");
let result = AprTransformer::from_apr_bytes(&data);
assert!(result.is_err());
}
#[test]
fn test_apr_transformer_from_apr_bytes_version_1() {
let mut data = vec![0u8; 128];
data[0..4].copy_from_slice(b"APR1");
data[4] = 1;
let _ = AprTransformer::from_apr_bytes(&data);
}
#[test]
fn test_apr_transformer_from_apr_bytes_version_2() {
let mut data = vec![0u8; 128];
data[0..4].copy_from_slice(b"APR2");
data[4] = 2;
let _ = AprTransformer::from_apr_bytes(&data);
}
#[test]
fn test_convert_preserves_rope_theta() {
let gguf_data = GGUFBuilder::new()
.architecture("llama")
.hidden_dim("llama", 64)
.num_layers("llama", 1)
.num_heads("llama", 4)
.num_kv_heads("llama", 4)
.context_length("llama", 64)
.rope_freq_base("llama", 50000.0) .rms_epsilon("llama", 1e-5)
.ffn_hidden_dim("llama", 128)
.add_f32_tensor(
"token_embd.weight",
&[32, 64],
&create_f32_embedding_data(32, 64),
)
.add_f32_tensor(
"blk.0.attn_norm.weight",
&[64],
&create_f32_norm_weights(64),
)
.add_q4_k_tensor("blk.0.attn_q.weight", &[64, 64], &create_q4_k_data(64 * 64))
.add_q4_k_tensor("blk.0.attn_k.weight", &[64, 64], &create_q4_k_data(64 * 64))
.add_q4_k_tensor("blk.0.attn_v.weight", &[64, 64], &create_q4_k_data(64 * 64))
.add_q4_k_tensor(
"blk.0.attn_output.weight",
&[64, 64],
&create_q4_k_data(64 * 64),
)
.add_f32_tensor("blk.0.ffn_norm.weight", &[64], &create_f32_norm_weights(64))
.add_q4_k_tensor(
"blk.0.ffn_up.weight",
&[64, 128],
&create_q4_k_data(64 * 128),
)
.add_q4_k_tensor(
"blk.0.ffn_down.weight",
&[128, 64],
&create_q4_k_data(128 * 64),
)
.add_q4_k_tensor(
"blk.0.ffn_gate.weight",
&[64, 128],
&create_q4_k_data(64 * 128),
)
.add_f32_tensor("output_norm.weight", &[64], &create_f32_norm_weights(64))
.build();
let apr = GgufToAprConverter::convert(&gguf_data).unwrap();
assert!((apr.config.rope_theta - 50000.0).abs() < 0.1);
}
#[test]
fn test_convert_preserves_epsilon() {
let gguf_data = GGUFBuilder::new()
.architecture("llama")
.hidden_dim("llama", 64)
.num_layers("llama", 1)
.num_heads("llama", 4)
.num_kv_heads("llama", 4)
.context_length("llama", 64)
.rope_freq_base("llama", 10000.0)
.rms_epsilon("llama", 1e-6) .ffn_hidden_dim("llama", 128)
.add_f32_tensor(
"token_embd.weight",
&[32, 64],
&create_f32_embedding_data(32, 64),
)
.add_f32_tensor(
"blk.0.attn_norm.weight",
&[64],
&create_f32_norm_weights(64),
)
.add_q4_k_tensor("blk.0.attn_q.weight", &[64, 64], &create_q4_k_data(64 * 64))
.add_q4_k_tensor("blk.0.attn_k.weight", &[64, 64], &create_q4_k_data(64 * 64))
.add_q4_k_tensor("blk.0.attn_v.weight", &[64, 64], &create_q4_k_data(64 * 64))
.add_q4_k_tensor(
"blk.0.attn_output.weight",
&[64, 64],
&create_q4_k_data(64 * 64),
)
.add_f32_tensor("blk.0.ffn_norm.weight", &[64], &create_f32_norm_weights(64))
.add_q4_k_tensor(
"blk.0.ffn_up.weight",
&[64, 128],
&create_q4_k_data(64 * 128),
)
.add_q4_k_tensor(
"blk.0.ffn_down.weight",
&[128, 64],
&create_q4_k_data(128 * 64),
)
.add_q4_k_tensor(
"blk.0.ffn_gate.weight",
&[64, 128],
&create_q4_k_data(64 * 128),
)
.add_f32_tensor("output_norm.weight", &[64], &create_f32_norm_weights(64))
.build();
let apr = GgufToAprConverter::convert(&gguf_data).unwrap();
assert!((apr.config.eps - 1e-6).abs() < 1e-8);
}
#[test]
fn test_convert_multi_layer() {
let hidden_dim = 64;
let intermediate_dim = 128;
let vocab_size = 32;
let embed_data = create_f32_embedding_data(vocab_size, hidden_dim);
let norm_data = create_f32_norm_weights(hidden_dim);
let q_data = create_q4_k_data(hidden_dim * hidden_dim);
let ffn_data = create_q4_k_data(hidden_dim * intermediate_dim);
let mut builder = GGUFBuilder::new()
.architecture("llama")
.hidden_dim("llama", hidden_dim as u32)
.num_layers("llama", 2)
.num_heads("llama", 4)
.num_kv_heads("llama", 4)
.context_length("llama", 64)
.rope_freq_base("llama", 10000.0)
.rms_epsilon("llama", 1e-5)
.ffn_hidden_dim("llama", intermediate_dim as u32)
.add_f32_tensor(
"token_embd.weight",
&[vocab_size as u64, hidden_dim as u64],
&embed_data,
);
for layer in 0..2 {
builder = builder
.add_f32_tensor(
&format!("blk.{}.attn_norm.weight", layer),
&[hidden_dim as u64],
&norm_data,
)
.add_q4_k_tensor(
&format!("blk.{}.attn_q.weight", layer),
&[hidden_dim as u64, hidden_dim as u64],
&q_data,
)
.add_q4_k_tensor(
&format!("blk.{}.attn_k.weight", layer),
&[hidden_dim as u64, hidden_dim as u64],
&q_data,
)
.add_q4_k_tensor(
&format!("blk.{}.attn_v.weight", layer),
&[hidden_dim as u64, hidden_dim as u64],
&q_data,
)
.add_q4_k_tensor(
&format!("blk.{}.attn_output.weight", layer),
&[hidden_dim as u64, hidden_dim as u64],
&q_data,
)
.add_f32_tensor(
&format!("blk.{}.ffn_norm.weight", layer),
&[hidden_dim as u64],
&norm_data,
)
.add_q4_k_tensor(
&format!("blk.{}.ffn_up.weight", layer),
&[hidden_dim as u64, intermediate_dim as u64],
&ffn_data,
)
.add_q4_k_tensor(
&format!("blk.{}.ffn_down.weight", layer),
&[intermediate_dim as u64, hidden_dim as u64],
&ffn_data,
)
.add_q4_k_tensor(
&format!("blk.{}.ffn_gate.weight", layer),
&[hidden_dim as u64, intermediate_dim as u64],
&ffn_data,
);
}
let gguf_data = builder
.add_f32_tensor("output_norm.weight", &[hidden_dim as u64], &norm_data)
.build();
let apr = GgufToAprConverter::convert(&gguf_data).unwrap();
assert_eq!(apr.config.num_layers, 2);
assert_eq!(apr.layers.len(), 2);
}