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CBP-16 Simulation and BPU Analysis

This project makes use of the code provided from the 5th Championship Branch Prediction competition held in 2016 (CBP-16). An augmented simulator is created here for studying modern branch prediction units (BPUs). For the uninitiated, a BPU plays an important role in increasing processor instructions per cycle (IPC) by speculatively executing instructions before a branch instruction is resolved. The two main components of this work is via the programs simnlog and simpython. These facilitate a deeper understanding of BPU performance as well as opens the door to BPU simulation from a friendlier programming, Python. Many machine learning toolkits, and thus many ML practitioners, are based around the Python ecosystem. We provide scripts in this language for the analysis of BPU performance as well as a C++ simulator that instantiates and runs Python-written BPUs. BPUs written in a high-level framework, e.g., TensorFlow or scikit-learn, can be evaluated using the 200 training traces and 440 evaluation traces from CBP-16 (or other traces in the BT9 format).

Installation

  1. Clone this repository
  2. As of 2023-03-09, it looks like the files hosted at http://hpca23.cse.tamu.edu/cbp2016/ are no longer available. If this is still the case, then the following step will not work without manual intervention. Proceed by downloading all of the files from this Google Drive link and placing them in the data folder.
  3. Run the following (may prompt for sudo password for dependency installation (e.g., boost libraries) for setting up the original CBP-16 code and pulling in trace files:
    cd scripts
    ./setup_cbp16.sh
    cd ..
  4. Run the following to build the simulator with Python bindings and simulator that logs prediction data to binary files.
    cd cbp16sim
    make
    # Or if you only want to use program or the other
    #make simnlog
    #make simpython
    make clean
    cd ..
  5. If you want to be able to run the Python scripts in the scripts/ directory, you'll need to install the required libraries.
    pip install -r requirements.txt

simpython

After following the installation instructions, you can run this program from the cbp16sim directory. This program allows for the simulation and evaluation of Python-based BPUs. By default, the program runs a dummy predictor that (excessively) logs trace inputs and always predicts taken. To run the program:

$ cd cbp16sim
$ ./simpython
usage: ./simpython <trace> [<predictor_module>]
$ # Example usage (for default dummy predictor):
$ PYTHONPATH=src/simpython/ ./simpython ../cbp2016.eval/traces/LONG_SERVER-1.bt9.trace.gz
$ # Example usage (for custom my_predictor.py with PREDICTOR class in the same directory):
$ PYTHONPATH=. ./simpython ../cbp2016.eval/traces/LONG_SERVER-1.bt9.trace.gz my_predictor.py

Setting the PYTHONPATH environmental variable is important to informing the program where your BPU module is located. This will be need to set by you unless your program is on a Python standard library path (e.g., where packages from pip are installed).

To create your own module, you will need to inherit from the BASEPREDICTOR abstract base class located in cbp16sim/src/simpython/predictor.py. For example usage, see how the methods are implemented in the dummy_predictor.py file in the same directory. You will need to name your class that inherits from BASEPREDICTOR a special name: PREDICTOR. This is the name that the program looks for. Minimally, your BPU must implement the GetPrediction(...) method, but you may also want to implement UpdatePredictor(...) (which updates the predictor with the actual taken direction) and/or TrackOtherInst(...) to track unconditional branches.

sim'n'log

After following the installation instructions, you can run this program from the cbp16sim directory. Note that by default the program is compiled to run the TAGE-SC-L BPU (winner of CBP-16 in all categories). To change the BPU to one of the other submissions, you'll need to replace the corresponding predictor.cc and predictor.h files in the cbp16sim/src/simnlog directory. Primitive but functional. Here is some example usage:

$ cd cbp16sim
$ ./simnlog
usage: ./simnlog <trace>
$ # Example usage:
$ ./simnlog ../cbp2016.eval/traces/LONG_SERVER-1.bt9.trace.gz 

The program generates somewhat large binary files that log relevant branch data and predictions. If you want to generate these logged files in bulk, you can run something like the following (this only looks at short traces):

find ../cbp2016.eval/evaluationTraces/ -iname 'SHORT_*.gz' | xargs -n 1 ./simnlog

If you want to get fancy and have the CPU compute power to handle it, you can run the program in parallel via xargs by xargs -n 1 -P 8 - this tells xargs to run 8 instances of the program in parallel for the next 8 inputs given by find.

Afterwards, if you would like to generate plots of the data and perform other analyses, you can run some of the scripts from the scripts/ directory. Before running simnlog, you can analyze the results files from previously generated runs using the original CBP-16 simulator or the extracted results from the CBP website (both stored in cbp2016.eval/results). This can be simply run using the analyze_cbp16_results.py script. To look at the generated binary files, you will first need to aggregate statistics using the process_traces.py script. The parameters of the file will default to look at generated .dat files and store results in a processed_traces directory. You will need to take a look in the file to make directory modifications at the moment. After, you can run the analyze_processed_trace.py script to generate plots (like the one above and below) and some statistics.

If you want to play with the generated Python files yourself, here is the boilerplate code you should follow.

# The field names of the generated binary format. Each element is a struct of 24 bytes
# containing the following data.
names = 'branchTaken', 'predDir', 'conditional', 'opType', 'branchTarget', 'PC'
# These are the numerical formats for each piece of data (first three are Booleans)
formats = 'u1', 'u1', 'u1', 'u4', 'u8', 'u8'
# The memory offsets for each element (note that there is 1 byte of padding at offset 3)
offsets = 0, 1, 2, 4, 8, 16
# Creation of the NumPy dtype
import numpy as np
bpu_dtype = np.dtype(dict(names=names, formats=formats, offsets=offsets))

After, you can load in the file and even treat it as a pandas DataFrame, the keys being the 6 field names in the above code.

with open('filename.dat', 'rb') as f:
    data = f.read()
    a = np.frombuffer(data, bpu_dtype)

import pandas as pd
df = pd.DataFrame(a)

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Branch predictor simulation, analysis, and Python compatibility for the 5th Championship Branch Prediction in 2016 (CBP-16)

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