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| | import torch
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| | from transformers import PretrainedConfig
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| |
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| | VALID_CONFIG_TYPE = {"llama", "qwen2", "qwen2_vl", "qwen2_5_vl", "qwen3", "qwen3_moe", "deepseek_v3"}
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| | def get_device_flops(unit="T"):
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| | def unit_convert(number, level):
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| | units = ["B", "K", "M", "G", "T", "P"]
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| | if number <= 0:
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| | return number
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| | ptr = 0
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| | while ptr < len(units) and units[ptr] != level:
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| | number /= 1000
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| | ptr += 1
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| | return number
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| |
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| | device_name = torch.cuda.get_device_name()
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| | flops = float("inf")
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| |
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| | if "MI300X" in device_name:
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| | flops = 1336e12
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| | elif "H100" in device_name or "H800" in device_name:
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| | flops = 989e12
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| | elif "A100" in device_name or "A800" in device_name:
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| | flops = 312e12
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| | elif "L40" in device_name:
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| | flops = 181.05e12
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| | elif "L20" in device_name:
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| | flops = 119.5e12
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| | elif "H20" in device_name:
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| | flops = 148e12
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| | elif "910B" in device_name:
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| | flops = 354e12
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| | flops_unit = unit_convert(flops, unit)
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| | return flops_unit
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| |
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| |
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| | class FlopsCounter:
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| | """
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| | Used to count mfu during training loop
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| |
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| | Example:
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| | flops_counter = FlopsCounter(config)
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| | flops_achieved, flops_promised = flops_counter.estimate_flops(tokens_list, delta_time)
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| |
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| | """
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| |
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| | def __init__(self, config: PretrainedConfig):
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| | if config.model_type not in VALID_CONFIG_TYPE:
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| | print(f"Only support config type of {VALID_CONFIG_TYPE}, but got {config.model_type}. MFU will always be zero.")
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| |
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| | self.estimate_func = {
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| | "qwen2": self._estimate_qwen2_flops,
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| | "llama": self._estimate_qwen2_flops,
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| | "qwen2_vl": self._estimate_qwen2_flops,
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| | "qwen2_5_vl": self._estimate_qwen2_flops,
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| | "qwen3": self._estimate_qwen2_flops,
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| | "qwen3_moe": self._estimate_qwen3_moe_flops,
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| | "deepseek_v3": self._estimate_deepseek_v3_flops,
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| | }
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| | self.config = config
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| |
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| | def _estimate_unknown_flops(self, tokens_sum, batch_seqlens, delta_time):
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| | return 0
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| | def _estimate_qwen2_flops(self, tokens_sum, batch_seqlens, delta_time):
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| | hidden_size = self.config.hidden_size
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| | vocab_size = self.config.vocab_size
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| | num_hidden_layers = self.config.num_hidden_layers
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| | num_key_value_heads = self.config.num_key_value_heads
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| | num_attention_heads = self.config.num_attention_heads
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| | intermediate_size = self.config.intermediate_size
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| |
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| | head_dim = getattr(self.config, "head_dim", self.config.hidden_size // self.config.num_attention_heads)
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| | q_size = num_attention_heads * head_dim
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| | k_size = num_key_value_heads * head_dim
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| | v_size = num_key_value_heads * head_dim
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| |
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| | mlp_N = hidden_size * intermediate_size * 3
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| | attn_linear_N = hidden_size * (q_size + k_size + v_size + num_attention_heads * head_dim)
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| | emd_and_lm_head_N = vocab_size * hidden_size * 2
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| |
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| | dense_N = (mlp_N + attn_linear_N) * num_hidden_layers + emd_and_lm_head_N
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| |
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| | dense_N_flops = 6 * dense_N * tokens_sum
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| |
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| |
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| | seqlen_square_sum = 0
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| | for seqlen in batch_seqlens:
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| | seqlen_square_sum += seqlen * seqlen
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| | attn_qkv_flops = 12 * seqlen_square_sum * head_dim * num_attention_heads * num_hidden_layers
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| |
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| |
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| | flops_all_token = dense_N_flops + attn_qkv_flops
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| | flops_achieved = flops_all_token * (1.0 / delta_time) / 1e12
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| | return flops_achieved
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| |
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| | def _estimate_deepseek_v3_flops(self, tokens_sum, batch_seqlens, delta_time):
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| | hidden_size = self.config.hidden_size
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| | vocab_size = self.config.vocab_size
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| | moe_intermediate_size = self.config.moe_intermediate_size
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| | num_hidden_layers = self.config.num_hidden_layers
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| | first_k_dense_replace = self.config.first_k_dense_replace
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| | num_query_heads = self.config.num_attention_heads
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| | moe_num_expert = self.config.n_routed_experts
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| |
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| | moe_topk = self.config.num_experts_per_tok
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| | share_expert_num = self.config.n_shared_experts
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| |
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| |
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| | moe_gata_N = hidden_size * moe_num_expert
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| |
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| | moe_expertmlp_N = hidden_size * moe_intermediate_size * (moe_topk + share_expert_num) * 3
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| |
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| | attn_linear_N = 0
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| | q_head_dim = self.config.qk_nope_head_dim + self.config.qk_rope_head_dim
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| | if self.config.q_lora_rank is None:
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| | attn_linear_N += hidden_size * num_query_heads * q_head_dim
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| | else:
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| | attn_linear_N += hidden_size * self.config.q_lora_rank
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| | attn_linear_N += num_query_heads * q_head_dim * self.config.q_lora_rank
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| |
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| | attn_linear_N += hidden_size * (self.config.kv_lora_rank + self.config.qk_rope_head_dim)
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| | attn_linear_N += num_query_heads * (q_head_dim - self.config.qk_rope_head_dim + self.config.v_head_dim) * self.config.kv_lora_rank
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| | attn_linear_N += num_query_heads * self.config.v_head_dim * hidden_size
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| | emd_and_lm_head_N = vocab_size * hidden_size * 2
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| |
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| | moe_N = (moe_gata_N + moe_expertmlp_N + attn_linear_N) * (num_hidden_layers - first_k_dense_replace) + (hidden_size * self.config.intermediate_size * 3 + attn_linear_N) * first_k_dense_replace + emd_and_lm_head_N
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| |
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| | dense_N_flops = 6 * moe_N * tokens_sum
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| |
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| |
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| | seqlen_square_sum = 0
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| | for seqlen in batch_seqlens:
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| | seqlen_square_sum += seqlen * seqlen * num_hidden_layers
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| |
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| | attn_qkv_flops = 12 * seqlen_square_sum * q_head_dim * num_query_heads
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| |
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| | flops_all_token = dense_N_flops + attn_qkv_flops
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| | flops_achieved = flops_all_token * (1.0 / delta_time) / 1e12
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| |
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| | return flops_achieved
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| |
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| | def _estimate_qwen3_moe_flops(self, tokens_sum, batch_seqlens, delta_time):
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| | hidden_size = self.config.hidden_size
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| | vocab_size = self.config.vocab_size
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| | num_hidden_layers = self.config.num_hidden_layers
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| | num_key_value_heads = self.config.num_key_value_heads
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| | num_attention_heads = self.config.num_attention_heads
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| | moe_intermediate_size = self.config.moe_intermediate_size
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| | moe_topk = self.config.num_experts_per_tok
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| | num_experts = self.config.num_experts
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| |
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| | head_dim = getattr(self.config, "head_dim", self.config.hidden_size // self.config.num_attention_heads)
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| | q_size = num_attention_heads * head_dim
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| | k_size = num_key_value_heads * head_dim
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| | v_size = num_key_value_heads * head_dim
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| |
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| |
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| |
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| | moe_mlp_N = hidden_size * moe_topk * moe_intermediate_size * 3 + hidden_size * num_experts
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| | attn_linear_N = hidden_size * (q_size + k_size + v_size + num_attention_heads * head_dim)
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| | emd_and_lm_head_N = vocab_size * hidden_size * 2
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| |
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| | dense_N = (moe_mlp_N + attn_linear_N) * num_hidden_layers + emd_and_lm_head_N
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| |
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| | dense_N_flops = 6 * dense_N * tokens_sum
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| |
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| |
|
| | seqlen_square_sum = 0
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| | for seqlen in batch_seqlens:
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| | seqlen_square_sum += seqlen * seqlen
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| | attn_qkv_flops = 12 * seqlen_square_sum * head_dim * num_attention_heads * num_hidden_layers
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| |
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| |
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| | flops_all_token = dense_N_flops + attn_qkv_flops
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| | flops_achieved = flops_all_token * (1.0 / delta_time) / 1e12
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| | return flops_achieved
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| |
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| |
|
| | def estimate_flops(self, batch_seqlens, delta_time):
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| | """
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| | Estimate the FLOPS based on the number of valid tokens in the current batch and the time taken.
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| |
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| | Args:
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| | batch_seqlens (List[int]): A list where each element represents the number of valid tokens in the current batch.
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| | delta_time (float): The time taken to process the batch, in seconds.
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| |
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| | Returns:
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| | estimated_flops (float): The estimated FLOPS based on the input tokens and time.
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| | promised_flops (float): The expected FLOPS of the current device.
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| | """
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| | tokens_sum = sum(batch_seqlens)
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| | func = self.estimate_func.get(self.config.model_type, self._estimate_unknown_flops)
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| | estimated_flops = func(tokens_sum, batch_seqlens, delta_time)
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| | promised_flops = get_device_flops()
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| | return estimated_flops, promised_flops
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| |
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