Radix/examples/llama/test.zig

127 lines
5.4 KiB
Zig

const asynk = @import("async");
const flags = @import("tigerbeetle/flags");
const std = @import("std");
const stdx = @import("stdx");
const zml = @import("zml");
const llama_mod = @import("./llama.zig");
const LlamaLM = llama_mod.LlamaLM;
const Tensor = zml.Tensor;
pub fn main() !void {
try asynk.AsyncThread.main(std.heap.c_allocator, asyncMain, .{});
}
pub fn asyncMain() !void {
const CliArgs = struct {
pub const help =
\\ test-implementation --model=llama3.8B.safetensors --reference=activation.safetensors
;
model: []const u8,
reference: []const u8,
num_heads: ?i64 = null,
num_kv_heads: ?i64 = null,
rope_freq_base: ?i64 = null,
};
var gpa = std.heap.GeneralPurposeAllocator(.{ .thread_safe = true }){};
defer _ = gpa.deinit();
const allocator = gpa.allocator();
// Create ZML context
var context = try zml.Context.init();
defer context.deinit();
// Select platform
const platform = context.autoPlatform(.{});
// Parse program args
var args = std.process.args();
const cli_args = flags.parse(&args, CliArgs);
const model_file = cli_args.model;
// Memory arena dedicated to model shapes and weights
var arena_state = std.heap.ArenaAllocator.init(allocator);
defer arena_state.deinit();
const model_arena = arena_state.allocator();
std.log.info("Model file: {s}", .{model_file});
// Read model shapes.
var buffer_store = try zml.aio.detectFormatAndOpen(allocator, model_file);
defer buffer_store.deinit();
// Create the model and configure it.
var llama = try zml.aio.populateModel(LlamaLM, model_arena, buffer_store);
const num_heads: i64 = cli_args.num_heads orelse buffer_store.metadata("num_heads", .int64) orelse @panic("--num_heads is required for this model");
const num_kv_heads: i64 = cli_args.num_kv_heads orelse buffer_store.metadata("num_kv_heads", .int64) orelse num_heads;
const rope_impl = if (buffer_store.metadata("rope_impl", .string)) |val|
std.meta.stringToEnum(zml.nn.RopeOpts.Implementation, val).?
else
.sequential;
const llama_options: llama_mod.LlamaOptions = .{
.max_seq_len = 256,
.num_kv_heads = num_kv_heads,
.num_heads = num_heads,
.gen_opts = .{},
.rms_norm_eps = @floatCast(buffer_store.metadata("rms_norm_eps", .float64) orelse 1e-5),
.rope_opts = .{
.impl = rope_impl,
.freq_base = @floatCast(buffer_store.metadata("rope_freq_base", .float64) orelse @as(f32, @floatFromInt(cli_args.rope_freq_base orelse 10_000))),
},
};
std.log.info("Parsed llama config: {}", .{llama_options});
llama.init(llama_options);
// Load the weights.
var llama_weights = try zml.aio.loadBuffers(LlamaLM, .{llama_options}, buffer_store, model_arena, platform);
defer zml.aio.unloadBuffers(&llama_weights);
// Load the activations.
var activation_buffer_store = try zml.aio.torch.open(allocator, cli_args.reference);
defer activation_buffer_store.deinit();
// Test implementation
try testImplementation(platform, llama, llama_weights, activation_buffer_store);
}
fn testImplementation(
platform: zml.Platform,
llama: LlamaLM,
llama_weights: zml.Bufferized(LlamaLM),
buffer_store: zml.aio.BufferStore,
) !void {
try zml.testing.testLayer(platform, buffer_store, "embed_tokens", llama.model.embed_tokens, llama_weights.model.embed_tokens, 1e-3);
try zml.testing.testLayer(platform, buffer_store, "layers.0.self_attn.v_proj", llama.model.layers[0].self_attn.v_proj, llama_weights.model.layers[0].self_attn.v_proj, 1e-2);
try zml.testing.testLayer(platform, buffer_store, "layers.0.self_attn.q_proj", llama.model.layers[0].self_attn.q_proj, llama_weights.model.layers[0].self_attn.q_proj, 2e-2);
try zml.testing.testLayer(platform, buffer_store, "layers.0.self_attn.k_proj", llama.model.layers[0].self_attn.k_proj, llama_weights.model.layers[0].self_attn.k_proj, 2e-2);
try zml.testing.testLayer(platform, buffer_store, "layers.0.self_attn.o_proj", llama.model.layers[0].self_attn.o_proj, llama_weights.model.layers[0].self_attn.o_proj, 2e-2);
try zml.testing.testLayer(platform, buffer_store, "layers.0.mlp", llama.model.layers[0].mlp, llama_weights.model.layers[0].mlp, 1e-2);
try zml.testing.testLayer(platform, buffer_store, "layers.0.input_layernorm", llama.model.layers[0].input_layernorm, llama_weights.model.layers[0].input_layernorm, 1e-2);
try zml.testing.testLayer(platform, buffer_store, "layers.0.post_attention_layernorm", llama.model.layers[0].post_attention_layernorm, llama_weights.model.layers[0].post_attention_layernorm, 1e-2);
{
const test_case = "layers.0.self_attn";
std.log.info("Testing {s}", .{test_case});
// Small wrapper to explicitly tag the input, and ignore the extra arguments used in HF implementation.
const SelfAttnPrefill = struct {
inner: llama_mod.SelfAttn,
pub fn forward(self: @This(), x_: Tensor) struct { Tensor, llama_mod.KvCache } {
return self.inner.forward(x_.withTags(.{ .b, .s, .d }), null, null);
}
};
try zml.testing.testLayer(
platform,
buffer_store,
"layers.0.self_attn",
SelfAttnPrefill{ .inner = llama.model.layers[0].self_attn },
.{ .inner = llama_weights.model.layers[0].self_attn },
1e-3,
);
}
}