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Overview

The CloudModeling toolkit monitors the unreported/fluctuating resource allocations in the IaaS Cloud services. Currently, we have the designed and implemented CacheInspector, a lightweight runtime that determines the performance and allocated capacity of shared caches on multi-tenant public clouds.

CacheInspector

CacheInspector includes a profiling and a sampling phase. In the profiling phase, CacheInspector determines the throughput and latency of each level of the memory hierarchy. In the sampling phase, CacheInspector detects, for each cache level, the cache size available to the application at each point in time. The profiling phase involves introducing increasing pressure in each cache level through a set of carefully crafted microbenchmarks. This process can be time-consuming, but only needs to happen once to determine the performance limits of each cache level and the memory. In contrast, the sampling phase only takes a few 100s milliseconds to run, and repeats periodically to capture changes in allocated cache capacity.

Installation

  1. Install the prerequisite python packages:
pip3 install numpy scipy matplotlib
  1. Setup huge page:
# cat /proc/meminfo | grep -i ^HugePages
HugePages_Total:       0
HugePages_Free:        0
HugePages_Rsvd:        0
HugePages_Surp:        0
Hugepagesize:       2048 kB

# sudo sysctl -w vm.nr_hugepages=512
vm.nr_hugepages = 512

# cat /proc/meminfo | grep -i ^HugePages
HugePages_Total:     512
HugePages_Free:      512
HugePages_Rsvd:        0
HugePages_Surp:        0
Hugepagesize:       2048 kB
  1. Clone and build CloudModeling toolkit source code:
# git clone https://github.com/songweijia/CloudModeling
# cd CloudModeling/CacheInspector
# mkdir build
# cmake ..
# make -j

On successful building, the CacheInspector binary ci is ready. Try ci --help to show how to see how to use it.

# ci --help
=== CacheInspector Usage ===

1. Cache/Memory throughput test: --sequential_throughput
Compulsory arguments:
   --buffer_size <buffer size in KiB>
Optional arguments:
   [--total_size <total data size in MiB, default is 128MiB>]
   [--num_datapoints <number of data points,default is 32>]
   [--show_perf_counters]
   [--timing_by <clock_gettime|rdtsc|perf_cpu_cycle|hw_cpu_cycle, default is clock_gettime>]

2. Cache/Memory read latency test: --read_latency
Compulsory arguments:
   --buffer_size <buffer size in KiB>
Optional arguments:
   [--num_datapoints <number of data points,default is 32>]
   [--timing_by <clock_gettime|rdtsc|perf_cpu_cycle|hw_cpu_cycle, default is clock_gettime>]
   [--show_perf_counters]

3. Cache/Memory throughput/latency test with schedule: --schedule
Compulsory arguments:
   --schedule_file <schedule file, please see default sample.schedule>
Optional arguments:
   [--timing_by <clock_gettime|rdtsc|perf_cpu_cycle|hw_cpu_cycle, default is clock_gettime>]
   [--show_perf_counters]

4. Cache size test: --cache_size
Compulsory arguments:
   --faster_throughput <the throughput of the faster cache tier in GiB/s (CLOCK_GETTIME) or Bytes/tick (RDTSC) or Bytes/cycle (*_CPU_CYCLE)>
   --slower_throughput <the throughput of the slower cache tier in GiB/s (CLOCK_GETTIME) or Bytes/tick (RDTSC) or Bytes/cycle (*_CPU_CYCLE)>
Optional arguments:
   [--is_write] This option specifies that given throughput numbers are for write. If not specified, those numbers are for read.
   [--cache_size_hint <the hint of the the cache size in KiB, default is 20480>]
   [--num_datapoints <number of data points, default is 1>]
   [--timing_by <clock_gettime|rdtsc|perf_cpu_cycle|hw_cpu_cycle, default is clock_gettime>]

*. Print this message: --help

To install cache inspector,

sudo make install

The binary ci, library libci.a, headers in include/ci/, and profiler script profile.py will be installed in /usr/local

Profiling

The profiling stage is defined by a schedule file, which defines the buffer sizes and corresponding throughput and latency test parameters. A schedule file looks as follows:

# sample schedule file format:
#(1) buffer_size(bytes)
#(2) enable_thp
#(3) thp_total_data_size(bytes)
#(4) thp_num_datapoints
#(5) enable_lat
#(6) lat_num_datapoints
4096,1,0x8000000,32,1,32
8192,1,0x8000000,32,1,32
9216,1,0x8000000,32,1,32
10240,1,0x8000000,32,1,32
11264,1,0x8000000,32,1,32
12288,1,0x8000000,32,1,32
13312,1,0x8000000,32,1,32

Each line of the schedule file, except the commented lines, defines a mini test by six comma-separated attributes: the buffer size (buffer_size), throughput test enabler (enable_thp), the total data size to test in a throughput test (thp_total_data_size), the number of data points of throughput test to collect (thp_num_datapoints), latency test enabler(enable_lat), the number of data points of latency test to collect(lat_num_datapoints). The profiling stage is started by calling ci command with the schedule as follows (We need root priviledge to disable processor scheduler. And we suggest pin the process on a fixed core using taskset):

# sudo taskset 0x4 ./ci --schedule --schedule_file <schedule> > schedule.output

Once it is finished, you can call the profiling tool to get the throughput and latency information of this platform.

# profile.py schedule.output

It will generate pdf files like the followings:

Intel Xeon E5-2690 v0
latency profile read throughput profile
X Gene APM883208 X-1
latency profile read throughput profile

Sampling

To sampling the size of a specific cache layer, we need the data in the above profiles. We use the throughput of L3 cache and memory to detect the allocation of L3 cache:

# sudo taskset 0x4 --cache_size --cache_size --faster_throughput 33.53 --slower_throughput 12.95 --num_datapoints 3
search log:
        (20480,26.43), (40960,12.67), (30720,13.11), (25600,14.05), (23040,14.93), (21760,16.55), (21120,19.31), (20800,22.39), (20640,24.27), (20720,23.34), (20760,22.74), (20740,22.87), (20730,0.00), 
[0] 20730 KiB

To use the cache inspector in your application, you can include ci/ci.hpp in your C/C++ source code and use the following API to decide the size of your cache resource:

/**
 * evaluate the cache size for a given instance
 * @param cache_size_hint_KiB
 * @param upper_thp - if we are measuring L2 cache, this is going to be 
 *        the pre-evaluated throughput for L2 cache. The unit of the throughput
 *        is decided by timing configuration used (see config.mk):
 *        1) For 'cpu_cycles', the throughput is in bytes per cpu cycle
 *        2) For 'rdtsc', the throughput is in bytes per tsc cycle
 *        3) For 'clock_gettime', the throughput is in GiB per second
 * @param lower_thp - if we are measuring L3 cache, this is going to be
 *        the pre-evaluated throughput of L3 cache (or memory if no L3 cache)
 * @param css - the output parameter, pointing to an array of uint32_t with
 *        'num_samples' entries. They are in KiB.
 * @param num_samples - the number of evaluated cache sizes. Multiple cache size
 *        estimations give the distribution of the cache size. Let's say the 
 *        throughput of L2 and L3 cache are 20/30GiB/s respectively. the 10GiB/s
 *        gap will be interpolated by 'num_samples' data points. The i-th point
 *        shows where estimation of cache size will be to get this throughput:
 *        20 + 10*i/(num_samples+1) GiB/s throughput. Defaulted to 1.
 * @param is_write - true, if upper_thp/lower_thp is write throughput
 *        False, otherwise.
 * @param timing - timing mechanism: CLOCK_GETTIME | RDTSC | PERF_CPU_CYCLE | HW_CPU_CYCLE
 * @param search_depth - how many iterations through the binary search.
 * @param num_iter_per_sample - how many iteration for each data points we will
 *        run.
 * @param num_bytes_per_iter - how many bytes to scan, this will be passed to
 *        sequential_throughput() in bytes_per_iter. Default to 256MiB.
 * @param buf - the caller can provide a buffer for test. This parameter is useful when running cache_size detector
 *        periodically to avoid reallocating memory buffer in size eval_cache_size(), which takes hundreds of
 *        milliseconds to warm up.
 * @param buf_size - the size of the 'buf' provided by caller. We suggest size 256 MiB.
 * @param warm_up_cpu - do we need to warm up the cpu before testing? In systems, especailly those CPU is managed by a
 *        'powersave' policy, the CPU cores are generally running at a frequency as low as possible. This will affect
 *        the performance results. Assuming we use CLOCK_GETTIME timing mechanism, if the CPU is running at 2.9GHz, the
 *        L1 throughput will only be 3/4 of that when CPU is running at 3.8GHz. What about using HW_CPU_CYCLES? Changing
 *        CPU frequency is problematic still because memory response time is not affected by CPU clock, and the
 *        evaluated speed for memory throughput is 31 percent faster with 2.9GHz than with 3.8GHz. Since our cache size
 *        evaluation mechanism relies heavily on stable CPU frequency, we suggest always boost the cpu to its highest
 *        frequecy before testing. This can be avoid if the caller is sure about a stable CPU frequency.
 * @return 0 for success, otherwise failure
 */
extern int eval_cache_size(
        const uint32_t cache_size_hint_KiB,
        const double upper_thp,
        const double lower_thp,
        uint32_t* css,
        const int num_samples = 1,
        const bool is_write = true,
        const timing_mechanism_t timing = CLOCK_GETTIME,
        const int32_t search_depth = 12,
        const uint32_t num_iter_per_sample = 5,
        const uint64_t num_bytes_per_iter = (1ull << 28),
        void* buf = nullptr,
        const uint64_t buf_size = 0,
        const bool warm_up_cpu = true);

Please use src/ci.cpp as an example. The document is the comments inside source and header files.

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