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GPU_puzzlers.py
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GPU_puzzlers.py
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# # GPU Puzzles
# - by [Sasha Rush](http://rush-nlp.com) - [srush_nlp](https://twitter.com/srush_nlp)
# ![](https://github.com/srush/GPU-Puzzles/raw/main/cuda.png)
# GPU architectures are critical to machine learning, and seem to be
# becoming even more important every day. However, you can be an expert
# in machine learning without ever touching GPU code. It is hard to gain
# intuition working through abstractions.
# This notebook is an attempt to teach beginner GPU programming in a
# completely interactive fashion. Instead of providing text with
# concepts, it throws you right into coding and building GPU
# kernels. The exercises use NUMBA which directly maps Python
# code to CUDA kernels. It looks like Python but is basically
# identical to writing low-level CUDA code.
# In a few hours, I think you can go from basics to
# understanding the real algorithms that power 99% of deep learning
# today. If you do want to read the manual, it is here:
# [NUMBA CUDA Guide](https://numba.readthedocs.io/en/stable/cuda/index.html)
# I recommend doing these in Colab, as it is easy to get started. Be
# sure to make your own copy, turn on GPU mode in the settings (`Runtime / Change runtime type`, then set `Hardware accelerator` to `GPU`), and
# then get to coding.
# [![Open In Colab](https://colab.research.google.com/assets/colab-badge.svg)](https://colab.research.google.com/github/srush/GPU-Puzzles/blob/main/GPU_puzzlers.ipynb)
# (If you are into this style of puzzle, also check out my [Tensor
# Puzzles](https://github.com/srush/Tensor-Puzzles) for PyTorch.)
!pip install -qqq git+https://github.com/danoneata/chalk@srush-patch-1
!wget -q https://github.com/srush/GPU-Puzzles/raw/main/robot.png https://github.com/srush/GPU-Puzzles/raw/main/lib.py
import numba
import numpy as np
import warnings
from lib import CudaProblem, Coord
warnings.filterwarnings(
action="ignore", category=numba.NumbaPerformanceWarning, module="numba"
)
# ## Puzzle 1: Map
#
# Implement a "kernel" (GPU function) that adds 10 to each position of vector `a`
# and stores it in vector `out`. You have 1 thread per position.
# **Warning** This code looks like Python but it is really CUDA! You cannot use
# standard python tools like list comprehensions or ask for Numpy properties
# like shape or size (if you need the size, it is given as an argument).
# The puzzles only require doing simple operations, basically
# +, *, simple array indexing, for loops, and if statements.
# You are allowed to use local variables.
# If you get an
# error it is probably because you did something fancy :).
# *Tip: Think of the function `call` as being run 1 time for each thread.
# The only difference is that `cuda.threadIdx.x` changes each time.*
# +
def map_spec(a):
return a + 10
def map_test(cuda):
def call(out, a) -> None:
local_i = cuda.threadIdx.x
# FILL ME IN (roughly 1 lines)
return call
SIZE = 4
out = np.zeros((SIZE,))
a = np.arange(SIZE)
problem = CudaProblem(
"Map", map_test, [a], out, threadsperblock=Coord(SIZE, 1), spec=map_spec
)
problem.show()
# +
problem.check()
# -
# ## Puzzle 2 - Zip
#
# Implement a kernel that adds together each position of `a` and `b` and stores it in `out`.
# You have 1 thread per position.
# +
def zip_spec(a, b):
return a + b
def zip_test(cuda):
def call(out, a, b) -> None:
local_i = cuda.threadIdx.x
# FILL ME IN (roughly 1 lines)
return call
SIZE = 4
out = np.zeros((SIZE,))
a = np.arange(SIZE)
b = np.arange(SIZE)
problem = CudaProblem(
"Zip", zip_test, [a, b], out, threadsperblock=Coord(SIZE, 1), spec=zip_spec
)
problem.show()
# +
# +
problem.check()
# -
# ## Puzzle 3 - Guards
#
# Implement a kernel that adds 10 to each position of `a` and stores it in `out`.
# You have more threads than positions.
# +
def map_guard_test(cuda):
def call(out, a, size) -> None:
local_i = cuda.threadIdx.x
# FILL ME IN (roughly 2 lines)
return call
SIZE = 4
out = np.zeros((SIZE,))
a = np.arange(SIZE)
problem = CudaProblem(
"Guard",
map_guard_test,
[a],
out,
[SIZE],
threadsperblock=Coord(8, 1),
spec=map_spec,
)
problem.show()
# +
problem.check()
# -
# ## Puzzle 4 - Map 2D
#
# Implement a kernel that adds 10 to each position of `a` and stores it in `out`.
# Input `a` is 2D and square. You have more threads than positions.
# +
def map_2D_test(cuda):
def call(out, a, size) -> None:
local_i = cuda.threadIdx.x
local_j = cuda.threadIdx.y
# FILL ME IN (roughly 2 lines)
return call
SIZE = 2
out = np.zeros((SIZE, SIZE))
a = np.arange(SIZE * SIZE).reshape((SIZE, SIZE))
problem = CudaProblem(
"Map 2D", map_2D_test, [a], out, [SIZE], threadsperblock=Coord(3, 3), spec=map_spec
)
problem.show()
# +
problem.check()
# -
# ## Puzzle 5 - Broadcast
#
# Implement a kernel that adds `a` and `b` and stores it in `out`.
# Inputs `a` and `b` are vectors. You have more threads than positions.
# +
def broadcast_test(cuda):
def call(out, a, b, size) -> None:
local_i = cuda.threadIdx.x
local_j = cuda.threadIdx.y
# FILL ME IN (roughly 2 lines)
return call
SIZE = 2
out = np.zeros((SIZE, SIZE))
a = np.arange(SIZE).reshape(SIZE, 1)
b = np.arange(SIZE).reshape(1, SIZE)
problem = CudaProblem(
"Broadcast",
broadcast_test,
[a, b],
out,
[SIZE],
threadsperblock=Coord(3, 3),
spec=zip_spec,
)
problem.show()
# +
problem.check()
# -
# ## Puzzle 6 - Blocks
#
# Implement a kernel that adds 10 to each position of `a` and stores it in `out`.
# You have fewer threads per block than the size of `a`.
# *Tip: A block is a group of threads. The number of threads per block is limited, but we can
# have many different blocks. Variable `cuda.blockIdx` tells us what block we are in.*
# +
def map_block_test(cuda):
def call(out, a, size) -> None:
i = cuda.blockIdx.x * cuda.blockDim.x + cuda.threadIdx.x
# FILL ME IN (roughly 2 lines)
return call
SIZE = 9
out = np.zeros((SIZE,))
a = np.arange(SIZE)
problem = CudaProblem(
"Blocks",
map_block_test,
[a],
out,
[SIZE],
threadsperblock=Coord(4, 1),
blockspergrid=Coord(3, 1),
spec=map_spec,
)
problem.show()
# +
problem.check()
# -
# ## Puzzle 7 - Blocks 2D
#
# Implement the same kernel in 2D. You have fewer threads per block
# than the size of `a` in both directions.
# +
def map_block2D_test(cuda):
def call(out, a, size) -> None:
i = cuda.blockIdx.x * cuda.blockDim.x + cuda.threadIdx.x
# FILL ME IN (roughly 4 lines)
return call
SIZE = 5
out = np.zeros((SIZE, SIZE))
a = np.ones((SIZE, SIZE))
problem = CudaProblem(
"Blocks 2D",
map_block2D_test,
[a],
out,
[SIZE],
threadsperblock=Coord(3, 3),
blockspergrid=Coord(2, 2),
spec=map_spec,
)
problem.show()
# +
problem.check()
# -
# ## Puzzle 8 - Shared
#
# Implement a kernel that adds 10 to each position of `a` and stores it in `out`.
# You have fewer threads per block than the size of `a`.
# **Warning**: Each block can only have a *constant* amount of shared
# memory that threads in that block can read and write to. This needs
# to be a literal python constant not a variable. After writing to
# shared memory you need to call `cuda.syncthreads` to ensure that
# threads do not cross.
# (This example does not really need shared memory or syncthreads, but it is a demo.)
# +
TPB = 4
def shared_test(cuda):
def call(out, a, size) -> None:
shared = cuda.shared.array(TPB, numba.float32)
i = cuda.blockIdx.x * cuda.blockDim.x + cuda.threadIdx.x
local_i = cuda.threadIdx.x
if i < size:
shared[local_i] = a[i]
cuda.syncthreads()
# FILL ME IN (roughly 2 lines)
return call
SIZE = 8
out = np.zeros(SIZE)
a = np.ones(SIZE)
problem = CudaProblem(
"Shared",
shared_test,
[a],
out,
[SIZE],
threadsperblock=Coord(TPB, 1),
blockspergrid=Coord(2, 1),
spec=map_spec,
)
problem.show()
# +
problem.check()
# -
# ## Puzzle 9 - Pooling
#
# Implement a kernel that sums together the last 3 position of `a` and stores it in `out`.
# You have 1 thread per position. You only need 1 global read and 1 global write per thread.
# *Tip: Remember to be careful about syncing.*
# +
def pool_spec(a):
out = np.zeros(*a.shape)
for i in range(a.shape[0]):
out[i] = a[max(i - 2, 0) : i + 1].sum()
return out
TPB = 8
def pool_test(cuda):
def call(out, a, size) -> None:
shared = cuda.shared.array(TPB, numba.float32)
i = cuda.blockIdx.x * cuda.blockDim.x + cuda.threadIdx.x
local_i = cuda.threadIdx.x
# FILL ME IN (roughly 8 lines)
return call
SIZE = 8
out = np.zeros(SIZE)
a = np.arange(SIZE)
problem = CudaProblem(
"Pooling",
pool_test,
[a],
out,
[SIZE],
threadsperblock=Coord(TPB, 1),
blockspergrid=Coord(1, 1),
spec=pool_spec,
)
problem.show()
# +
problem.check()
# -
# ## Puzzle 10 - Dot Product
#
# Implement a kernel that computes the dot-product of `a` and `b` and stores it in `out`.
# You have 1 thread per position. You only need 2 global reads and 1 global write per thread.
# *Note: For this problem you don't need to worry about number of shared reads. We will
# handle that challenge later.*
# +
def dot_spec(a, b):
return a @ b
TPB = 8
def dot_test(cuda):
def call(out, a, b, size) -> None:
shared = cuda.shared.array(TPB, numba.float32)
i = cuda.blockIdx.x * cuda.blockDim.x + cuda.threadIdx.x
local_i = cuda.threadIdx.x
# FILL ME IN (roughly 9 lines)
return call
SIZE = 8
out = np.zeros(1)
a = np.arange(SIZE)
b = np.arange(SIZE)
problem = CudaProblem(
"Dot",
dot_test,
[a, b],
out,
[SIZE],
threadsperblock=Coord(SIZE, 1),
blockspergrid=Coord(1, 1),
spec=dot_spec,
)
problem.show()
# +
problem.check()
# -
# ## Puzzle 11 - 1D Convolution
#
# Implement a kernel that computes a 1D convolution between `a` and `b` and stores it in `out`.
# You need to handle the general case. You only need 2 global reads and 1 global write per thread.
# +
def conv_spec(a, b):
out = np.zeros(*a.shape)
len = b.shape[0]
for i in range(a.shape[0]):
out[i] = sum([a[i + j] * b[j] for j in range(len) if i + j < a.shape[0]])
return out
MAX_CONV = 4
TPB = 8
TPB_MAX_CONV = TPB + MAX_CONV
def conv_test(cuda):
def call(out, a, b, a_size, b_size) -> None:
i = cuda.blockIdx.x * cuda.blockDim.x + cuda.threadIdx.x
local_i = cuda.threadIdx.x
# FILL ME IN (roughly 17 lines)
return call
# Test 1
SIZE = 6
CONV = 3
out = np.zeros(SIZE)
a = np.arange(SIZE)
b = np.arange(CONV)
problem = CudaProblem(
"1D Conv (Simple)",
conv_test,
[a, b],
out,
[SIZE, CONV],
Coord(1, 1),
Coord(TPB, 1),
spec=conv_spec,
)
problem.show()
# +
problem.check()
# -
# Test 2
# +
out = np.zeros(15)
a = np.arange(15)
b = np.arange(4)
problem = CudaProblem(
"1D Conv (Full)",
conv_test,
[a, b],
out,
[15, 4],
Coord(2, 1),
Coord(TPB, 1),
spec=conv_spec,
)
problem.show()
# -
# +
problem.check()
# -
# ## Puzzle 12 - Prefix Sum
#
# Implement a kernel that computes a sum over `a` and stores it in `out`.
# If the size of `a` is greater than the block size, only store the sum of
# each block.
# We will do this using the [parallel prefix sum](https://en.wikipedia.org/wiki/Prefix_sum) algorithm in shared memory.
# That is, each step of the algorithm should sum together half the remaining numbers.
# Follow this diagram:
# ![](https://user-images.githubusercontent.com/35882/178757889-1c269623-93af-4a2e-a7e9-22cd55a42e38.png)
# +
TPB = 8
def sum_spec(a):
out = np.zeros((a.shape[0] + TPB - 1) // TPB)
for j, i in enumerate(range(0, a.shape[-1], TPB)):
out[j] = a[i : i + TPB].sum()
return out
def sum_test(cuda):
def call(out, a, size: int) -> None:
cache = cuda.shared.array(TPB, numba.float32)
i = cuda.blockIdx.x * cuda.blockDim.x + cuda.threadIdx.x
local_i = cuda.threadIdx.x
# FILL ME IN (roughly 12 lines)
return call
# Test 1
SIZE = 8
out = np.zeros(1)
inp = np.arange(SIZE)
problem = CudaProblem(
"Sum (Simple)",
sum_test,
[inp],
out,
[SIZE],
Coord(1, 1),
Coord(TPB, 1),
spec=sum_spec,
)
problem.show()
# +
problem.check()
# -
# Test 2
# +
SIZE = 15
out = np.zeros(2)
inp = np.arange(SIZE)
problem = CudaProblem(
"Sum (Full)",
sum_test,
[inp],
out,
[SIZE],
Coord(2, 1),
Coord(TPB, 1),
spec=sum_spec,
)
problem.show()
# +
problem.check()
# -
# ## Puzzle 13 - Axis Sum
#
# Implement a kernel that computes a sum over each column of `a` and stores it in `out`.
# +
TPB = 8
def sum_spec(a):
out = np.zeros((a.shape[0], (a.shape[1] + TPB - 1) // TPB))
for j, i in enumerate(range(0, a.shape[-1], TPB)):
out[..., j] = a[..., i : i + TPB].sum(-1)
return out
def axis_sum_test(cuda):
def call(out, a, size: int) -> None:
cache = cuda.shared.array(TPB, numba.float32)
i = cuda.blockIdx.x * cuda.blockDim.x + cuda.threadIdx.x
local_i = cuda.threadIdx.x
batch = cuda.blockIdx.y
# FILL ME IN (roughly 12 lines)
return call
BATCH = 4
SIZE = 6
out = np.zeros((BATCH, 1))
inp = np.arange(BATCH * SIZE).reshape((BATCH, SIZE))
problem = CudaProblem(
"Axis Sum",
axis_sum_test,
[inp],
out,
[SIZE],
Coord(1, BATCH),
Coord(TPB, 1),
spec=sum_spec,
)
problem.show()
# +
problem.check()
# -
# ## Puzzle 14 - Matrix Multiply!
#
# Implement a kernel that multiplies square matrices `a` and `b` and
# stores the result in `out`.
#
# *Tip: The most efficient algorithm here will copy a block into
# shared memory before computing each of the individual row-column
# dot products. This is easy to do if the matrix fits in shared
# memory. Do that case first. Then update your code to compute
# a partial dot-product and iteratively move the part you
# copied into shared memory.* You should be able to do the hard case
# in 6 global reads.
# +
def matmul_spec(a, b):
return a @ b
TPB = 3
def mm_oneblock_test(cuda):
def call(out, a, b, size: int) -> None:
a_shared = cuda.shared.array((TPB, TPB), numba.float32)
b_shared = cuda.shared.array((TPB, TPB), numba.float32)
i = cuda.blockIdx.x * cuda.blockDim.x + cuda.threadIdx.x
j = cuda.blockIdx.y * cuda.blockDim.y + cuda.threadIdx.y
local_i = cuda.threadIdx.x
local_j = cuda.threadIdx.y
# FILL ME IN (roughly 14 lines)
return call
# Test 1
SIZE = 2
out = np.zeros((SIZE, SIZE))
inp1 = np.arange(SIZE * SIZE).reshape((SIZE, SIZE))
inp2 = np.arange(SIZE * SIZE).reshape((SIZE, SIZE)).T
problem = CudaProblem(
"Matmul (Simple)",
mm_oneblock_test,
[inp1, inp2],
out,
[SIZE],
Coord(1, 1),
Coord(TPB, TPB),
spec=matmul_spec,
)
problem.show(sparse=True)
# +
problem.check()
# -
# Test 2
# +
SIZE = 8
out = np.zeros((SIZE, SIZE))
inp1 = np.arange(SIZE * SIZE).reshape((SIZE, SIZE))
inp2 = np.arange(SIZE * SIZE).reshape((SIZE, SIZE)).T
problem = CudaProblem(
"Matmul (Full)",
mm_oneblock_test,
[inp1, inp2],
out,
[SIZE],
Coord(3, 3),
Coord(TPB, TPB),
spec=matmul_spec,
)
problem.show(sparse=True)
# -
# +
problem.check()
# -