// // This confidential and proprietary software may be used only as // authorised by a licensing agreement from ARM Limited // (C) COPYRIGHT 2020-2022 ARM Limited // ALL RIGHTS RESERVED // The entire notice above must be reproduced on all authorised // copies and copies may only be made to the extent permitted // by a licensing agreement from ARM Limited. === Type Conversion ==== CAST Casts a tensor from one data type to another. include::{generated}/operators/CAST.adoc[] *Operation Function:* [source,c++] ---- for_each(index in shape) { in_t in = tensor_read(input, shape, index); out_t out; if (out_t == bool_t) { out = (in != 0) ? true : false; } else if (in_t == bool_t) { out = (in) ? 1 : 0; } else if (out_t == fp16_t || out_t == bf16_t || out_t == fp32_t) { out = round_to_nearest_float(in); } else if (in_t == fp16_t || in_t == bf16_t || in_t == fp32_t) { out = apply_clip(round_to_nearest_int(in), minimum, maximum); } else if (sizeof(out_t) >= sizeof(in_t)) { out = sign_extend(in); } else { out = truncate(in); } tensor_write(output, shape, index, out) } ---- ==== RESCALE Rescale quantized values into a new domain. This function scales by factor: multiplier * 2^-shift^. include::{generated}/operators/RESCALE.adoc[] *Operation Function:* [source,c++] ---- for_each(index in shape) { // uint16 values can have zero_point 0 or 32768 // int8/uint8 can have zero point within their valid range // No other types can have zero point != 0 ERROR_IF(in_t != int8_t && in_t != uint8_t && in_t != uint16_t && input_zp != 0); ERROR_IF(out_t != int8_t && out_t != uint8_t && out_t != uint16_t && output_zp != 0); ERROR_IF(in_t == uint16_t && (input_zp != 0 || input_zp != 32768)); ERROR_IF(out_t == uint16_t && (output_zp != 0 || output_zp != 32768)); ERROR_IF(scale32 && in_t == int48_t); ERROR_IF(!scale32 && double_round); int48_t value = tensor_read(input, shape, index); value = value - input_zp; int c = (per_channel) ? index[rank(input) - 1] : 0; int32_t result = (scale32) ? apply_scale_32(value, multiplier[c], shift[c], double_round) : apply_scale_16(value, multiplier[c], shift[c]); result = (out_t)apply_clip(result + output_zp, minimum, maximum); tensor_write(output, shape, index, result); } ----