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# Copyright (c) 2020 ARM Limited
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# Authors: Andreas Hansson
from __future__ import print_function
from __future__ import absolute_import
import math
import optparse
import m5
from m5.objects import *
from m5.util import addToPath
from m5.stats import periodicStatDump
addToPath('../')
from common import ObjectList
from common import MemConfig
# this script is helpful to sweep the efficiency of a specific memory
# controller configuration, by varying the number of banks accessed,
# and the sequential stride size (how many bytes per activate), and
# observe what bus utilisation (bandwidth) is achieved
parser = optparse.OptionParser()
hybrid_generators = {
"HYBRID" : lambda x: x.createHybrid,
}
# Use a single-channel DDR3-1600 x64 (8x8 topology) by default
parser.add_option("--nvm-type", type="choice", default="NVM_2400_1x64",
choices=ObjectList.mem_list.get_names(),
help = "type of memory to use")
parser.add_option("--mem-type", type="choice", default="DDR4_2400_16x4",
choices=ObjectList.mem_list.get_names(),
help = "type of memory to use")
parser.add_option("--nvm-ranks", "-n", type="int", default=1,
help = "Number of ranks to iterate across")
parser.add_option("--mem-ranks", "-r", type="int", default=2,
help = "Number of ranks to iterate across")
parser.add_option("--rd-perc", type="int", default=100,
help = "Percentage of read commands")
parser.add_option("--nvm-perc", type="int", default=100,
help = "Percentage of NVM commands")
parser.add_option("--mode", type="choice", default="HYBRID",
choices=hybrid_generators.keys(),
help = "Hybrid: Random DRAM + NVM traffic")
parser.add_option("--addr-map", type="choice",
choices=ObjectList.dram_addr_map_list.get_names(),
default="RoRaBaCoCh", help = "NVM address map policy")
(options, args) = parser.parse_args()
if args:
print("Error: script doesn't take any positional arguments")
sys.exit(1)
# at the moment we stay with the default open-adaptive page policy,
# and address mapping
# start with the system itself, using a multi-layer 2.0 GHz
# crossbar, delivering 64 bytes / 3 cycles (one header cycle)
# which amounts to 42.7 GByte/s per layer and thus per port
system = System(membus = IOXBar(width = 32))
system.clk_domain = SrcClockDomain(clock = '2.0GHz',
voltage_domain =
VoltageDomain(voltage = '1V'))
# set 2 ranges, the first, smaller range for DDR
# the second, larger (1024) range for NVM
# the NVM range starts directly after the DRAM range
system.mem_ranges = [AddrRange('128MB'),
AddrRange(Addr('128MB'), size ='1024MB')]
# do not worry about reserving space for the backing store
system.mmap_using_noreserve = True
# force a single channel to match the assumptions in the DRAM traffic
# generator
options.mem_channels = 1
options.external_memory_system = 0
options.hybrid_channel = True
MemConfig.config_mem(options, system)
# the following assumes that we are using the native controller
# with NVM and DRAM interfaces, check to be sure
if not isinstance(system.mem_ctrls[0], m5.objects.MemCtrl):
fatal("This script assumes the controller is a MemCtrl subclass")
if not isinstance(system.mem_ctrls[0].dram, m5.objects.DRAMInterface):
fatal("This script assumes the first memory is a DRAMInterface subclass")
if not isinstance(system.mem_ctrls[0].nvm, m5.objects.NVMInterface):
fatal("This script assumes the second memory is a NVMInterface subclass")
# there is no point slowing things down by saving any data
system.mem_ctrls[0].dram.null = True
system.mem_ctrls[0].nvm.null = True
# Set the address mapping based on input argument
system.mem_ctrls[0].dram.addr_mapping = options.addr_map
system.mem_ctrls[0].nvm.addr_mapping = options.addr_map
# stay in each state for 0.25 ms, long enough to warm things up, and
# short enough to avoid hitting a refresh
period = 250000000
# stay in each state as long as the dump/reset period, use the entire
# range, issue transactions of the right burst size, and match
# the maximum bandwidth to ensure that it is saturated
# get the number of banks
nbr_banks_dram = system.mem_ctrls[0].dram.banks_per_rank.value
# determine the burst length in bytes
burst_size_dram = int((system.mem_ctrls[0].dram.devices_per_rank.value *
system.mem_ctrls[0].dram.device_bus_width.value *
system.mem_ctrls[0].dram.burst_length.value) / 8)
# next, get the page size in bytes
page_size_dram = system.mem_ctrls[0].dram.devices_per_rank.value * \
system.mem_ctrls[0].dram.device_rowbuffer_size.value
# get the number of regions
nbr_banks_nvm = system.mem_ctrls[0].nvm.banks_per_rank.value
# determine the burst length in bytes
burst_size_nvm = int((system.mem_ctrls[0].nvm.devices_per_rank.value *
system.mem_ctrls[0].nvm.device_bus_width.value *
system.mem_ctrls[0].nvm.burst_length.value) / 8)
burst_size = max(burst_size_dram, burst_size_nvm)
# next, get the page size in bytes
buffer_size_nvm = system.mem_ctrls[0].nvm.devices_per_rank.value * \
system.mem_ctrls[0].nvm.device_rowbuffer_size.value
# match the maximum bandwidth of the memory, the parameter is in seconds
# and we need it in ticks (ps)
itt = min(system.mem_ctrls[0].dram.tBURST.value,
system.mem_ctrls[0].nvm.tBURST.value) * 1000000000000
# assume we start at 0 for DRAM
max_addr_dram = system.mem_ranges[0].end
min_addr_nvm = system.mem_ranges[1].start
max_addr_nvm = system.mem_ranges[1].end
# use min of the page size and 512 bytes as that should be more than
# enough
max_stride = min(256, buffer_size_nvm, page_size_dram)
# create a traffic generator, and point it to the file we just created
system.tgen = PyTrafficGen()
# add a communication monitor
system.monitor = CommMonitor()
# connect the traffic generator to the bus via a communication monitor
system.tgen.port = system.monitor.slave
system.monitor.master = system.membus.slave
# connect the system port even if it is not used in this example
system.system_port = system.membus.slave
# every period, dump and reset all stats
periodicStatDump(period)
# run Forrest, run!
root = Root(full_system = False, system = system)
root.system.mem_mode = 'timing'
m5.instantiate()
def trace():
addr_map = ObjectList.dram_addr_map_list.get(options.addr_map)
generator = hybrid_generators[options.mode](system.tgen)
for stride_size in range(burst_size, max_stride + 1, burst_size):
num_seq_pkts_dram = int(math.ceil(float(stride_size) /
burst_size_dram))
num_seq_pkts_nvm = int(math.ceil(float(stride_size) / burst_size_nvm))
yield generator(period,
0, max_addr_dram, burst_size_dram,
min_addr_nvm, max_addr_nvm, burst_size_nvm,
int(itt), int(itt),
options.rd_perc, 0,
num_seq_pkts_dram, page_size_dram,
nbr_banks_dram, nbr_banks_dram,
num_seq_pkts_nvm, buffer_size_nvm,
nbr_banks_nvm, nbr_banks_nvm,
addr_map, options.mem_ranks,
options.nvm_ranks, options.nvm_perc)
yield system.tgen.createExit(0)
system.tgen.start(trace())
m5.simulate()
print("Hybrid DRAM + NVM sweep with max_stride: %d" % (max_stride))
print("NVM burst: %d, NVM banks: %d" % (burst_size_nvm, nbr_banks_nvm))
print("DRAM burst: %d, DRAM banks: %d" % (burst_size_dram, nbr_banks_dram))