游雁
2024-06-09 6e0d1388264f79ce5e2a3c8944de1bad491d30eb
funasr/datasets/openai_datasets/datasets.py
@@ -211,14 +211,15 @@
            if self.batch_type != "example":
                b, t = outputs["input_ids"].shape
                if b * t > self.batch_size * self.batch_size_scale_ratio_max:
                    beg = torch.randint(0, 2, ()).item()
                    if b < 2:
                        beg = 0
                if b > 1 and b * t > self.batch_size * self.batch_size_scale_ratio_max:
                    # beg = torch.randint(0, 2, ()).item()
                    # if b < 2:
                    #     beg = 0
                    logging.info(
                        f"Warning, b * t: {b * t} > {self.batch_size_scale_ratio_max} * {self.batch_size}, b: {b}, t: {t}, drop half data {idx}th, beg:{beg}"
                        f"Warning, b*t: {b}*{t}={b * t} > batch_size*relax: {self.batch_size_scale_ratio_max}*{self.batch_size}={self.batch_size_scale_ratio_max*self.batch_size}, drop half data {idx}th, beg:{beg}"
                    )
                    samples = samples[beg : beg + b : 2]
                    # samples = samples[beg : beg + b : 2]
                    samples = samples[:-1]
                    continue
            break