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Internal designs

Intermediate representation (IR)#

Taichi's computation IR is designed to be

  • Static-single assignment;
  • Hierarchical, instead of LLVM-style control-flow graph + basic blocks;
  • Differentiable;
  • Statically and strongly typed.

For example, a simple Taichi kernel

show_ir.py
import taichi as titi.init(print_ir=True)
@ti.kerneldef foo():    for i in range(10):        if i < 4:            print(i)
foo()

may be compiled into

kernel {  $0 = offloaded range_for(0, 10) grid_dim=0 block_dim=32  body {    <i32> $1 = loop $0 index 0    <i32> $2 = const [4]    <i32> $3 = cmp_lt $1 $2    <i32> $4 = const [1]    <i32> $5 = bit_and $3 $4    $6 : if $5 {      print $1, "\n"    }  }}
note

Use ti.init(print_ir=True) to print IR of all instantiated kernels.

note

See Life of a Taichi kernel for more details about the JIT compilation system of Taichi.

Data structure organization#

The internal organization of Taichi's data structure is defined using the Structural Node ("SNode", /snōd/) tree system. The SNode system might be confusing for new developers: it is important to distinguish three concepts: SNode containers, SNode cells, and SNode components.

  • A SNode container can have multiple SNode cells. The numbers of cells are recommended to be powers of two.

    • For example, S = ti.root.dense(ti.i, 128) creates an SNode S, and each S container has 128 S cells.
  • A SNode cell can have multiple SNode components.

    • For example, P = S.dense(ti.i, 4); Q = S.dense(ti.i, 4) inserts two components (one P container and one Q container) into each S cell.
  • Note that each SNode component is a SNode container of a lower-level SNode.

A hierarchical data structure in Taichi, dense or sparse, is essentially a tree with interleaved container and cell levels. Note that containers of place SNodes do not have cells. Instead, they directly contain numerical values.

Consider the following example:

# misc/listgen_demo.py
x = ti.field(ti.i32)y = ti.field(ti.i32)z = ti.field(ti.i32)
S0 = ti.rootS1 = S0.pointer(ti.i, 4)
S2 = S1.dense(ti.i, 2)S2.place(x, y) # S3: x; S4: y
S5 = S1.dense(ti.i, 2)S5.place(z) # S6: z
  • The whole data structure is an S0root container, containing
    • 1x S0root cell, which has only one component, which is
      • An S1pointer container, containing
        • 4x S1pointer cells, each with two components, which are
          • An S2dense container, containing
            • 2x S2dense cells, each with two components, which are
              • An S3place_x container which directly contains a x: ti.i32 value
              • An S4place_y container which directly contains a y: ti.i32 value
          • An S5dense container, containing
            • 2x S5dense cells, each with one component, which is
              • An S6place container which directly contains a z: ti.i32 value

The following figure shows the hierarchy of the data structure. The numbers are indices of the containers and cells.

image

Note that the S0root container and cell do not have an index.

In summary, we will have the following containers:

  • 1x S0root container
  • 1x S1pointer container
  • 4x S2dense containers
  • 4x S5dense containers
  • 8x S3place_x containers, each directly containing an i32 value
  • 8x S4place_y containers, each directly containing an i32 value
  • 8x S6place_z containers, each directly containing an i32 value

... and the following cells:

  • 1x S0root cell
  • 4x S1pointer cells
  • 8x S2dense cells
  • 8x S5dense cells

Again, note that S3place_x, S4place_y and S6place_z containers do not have corresponding cells.

In struct compilers of supported backends, each SNode has two types: container type and cell type. Again, components of a higher level SNode cell are containers of a lower level SNode.

Note that cells are never exposed to end-users.

List generation generates lists of SNode containers (instead of SNode cells).

note

We are on our way to remove usages of children, instances, and elements in Taichi. These are very ambiguous terms and should be replaced with standardized terms: container, cell, and component.

List generation#

Struct-fors in Taichi loop over all active elements of a (sparse) data structure in parallel. Evenly distributing work onto processor cores is challenging on sparse data structures: naively splitting an irregular tree into pieces can easily lead to partitions with drastically different numbers of leaf elements.

Our strategy is to generate lists of active SNode containers, layer by layer. The list generation computation happens on the same device as normal computation kernels, depending on the arch argument when the user calls ti.init().

List generations flatten the data structure leaf elements into a 1D list, circumventing the irregularity of incomplete trees. Then we can simply invoke a regular parallel for over the 1D list.

For example,

# misc/listgen_demo.py
import taichi as ti
ti.init(print_ir=True)
x = ti.field(ti.i32)
S0 = ti.rootS1 = S0.dense(ti.i, 4)S2 = S1.bitmasked(ti.i, 4)S2.place(x)
@ti.kerneldef func():    for i in x:        print(i)
func()

gives you the following IR:

$0 = offloaded clear_list S1dense$1 = offloaded listgen S0root->S1dense$2 = offloaded clear_list S2bitmasked$3 = offloaded listgen S1dense->S2bitmasked$4 = offloaded struct_for(S2bitmasked) block_dim=0 {  <i32 x1> $5 = loop index 0  print i, $5}

Note that func leads to two list generations:

  • (Tasks $0 and $1) based on the list of the (only) S0root container, generate the list of the (only) S1dense container;
  • (Tasks $2 and $3) based on the list of S1dense containers, generate the list of S2bitmasked containers.

The list of S0root SNode always has exactly one container, so we never clear or re-generate this list. Although the list of S1dense always has only one container, we still regenerate the list for uniformity. The list of S2bitmasked has 4 containers.

note

The list of place (leaf) nodes (e.g., S3 in this example) is never generated. Instead, we simply loop over the list of their parent nodes, and for each parent node we enumerate the place nodes on-the-fly (without actually generating a list).

The motivation for this design is to amortize list generation overhead. Generating one list element per leaf node (place SNode) element is too expensive, likely much more expensive than the essential computation happening on the leaf element. Therefore we only generate their parent element list, so that the list generation cost is amortized over multiple child elements of a second-to-last-level SNode element.

In the example above, although we have 16 instances of x, we only generate a list of 4 x S2bitmasked nodes (and 1 x S1dense node).

Statistics#

In some cases, it is helpful to gather certain quantitative information about internal events during Taichi program execution. The Statistics class is designed for this purpose.

Usage:

#include "taichi/util/statistics.h"
// add 1.0 to counter "codegen_offloaded_tasks"taichi::stat.add("codegen_offloaded_tasks");
// add the number of statements in "ir" to counter "codegen_statements"taichi::stat.add("codegen_statements", irpass::analysis::count_statements(this->ir));

Note the keys are std::string and values are double.

To print out all statistics in Python:

ti.core.print_stat()

Why Python frontend#

Embedding Taichi in python has the following advantages:

  • Easy to learn. Taichi has a very similar syntax to Python.
  • Easy to run. No ahead-of-time compilation is needed.
  • This design allows people to reuse existing python infrastructure:
    • IDEs. A python IDE mostly works for Taichi with syntax highlighting, syntax checking, and autocomplete.
    • Package manager (pip). A developed Taichi application and be easily submitted to PyPI and others can easily set it up with pip.
    • Existing packages. Interacting with other python components (e.g. matplotlib and numpy) is just trivial.
  • The built-in AST manipulation tools in python allow us to flexibly manipulate and analyze Python ASTs, as long as the kernel body function is parse-able by the Python parser.

However, this design has drawbacks too:

  • Taichi kernels must be parse-able by Python parsers. This means Taichi syntax cannot go beyond Python syntax.
    • For example, indexing is always needed when accessing elements in Taichi fields, even if the fields is 0D. Use x[None] = 123 to set the value in x if x is 0D. This is because x = 123 will set x itself (instead of its containing value) to be the constant 123 in Python syntax. For code consistency in Python- and Taichi-scope, we have to use the more verbose x[None] = 123 syntax.
  • Python has relatively low performance. This can cause a performance issue when initializing large Taichi fields with pure python scripts. A Taichi kernel should be used to initialize huge fields.

Virtual indices v.s. physical indices#

In Taichi, virtual indices are used to locate elements in fields, and physical indices are used to specify data layouts in memory.

For example,

  • In a[i, j, k], i, j, and k are virtual indices.
  • In for i, j in x:, i and j are virtual indices.
  • ti.i, ti.j, ti.k, ti.l, ... are physical indices.
  • In struct-for statements, LoopIndexStmt::index is a physical index.

The mapping between virtual indices and physical indices for each SNode is stored in SNode::physical_index_position. I.e., physical_index_position[i] answers the question: which physical index does the i-th virtual index correspond to?

Each SNode can have a different virtual-to-physical mapping. physical_index_position[i] == -1 means the i-th virtual index does not corrspond to any physical index in this SNode.

SNode s in handy dense fields (i.e., a = ti.field(ti.i32, shape=(128, 256, 512))) have trivial virtual-to-physical mapping, e.g. physical_index_position[i] = i.

However, more complex data layouts, such as column-major 2D fields can lead to SNodes with physical_index_position[0] = 1 and physical_index_position[1] = 0.

a = ti.field(ti.f32, shape=(128, 32, 8))
b = ti.field(ti.f32)ti.root.dense(ti.j, 32).dense(ti.i, 16).place(b)
ti.get_runtime().materialize()
mapping_a = a.snode().physical_index_position()
assert mapping_a == {0: 0, 1: 1, 2: 2}
mapping_b = b.snode().physical_index_position()
assert mapping_b == {0: 1, 1: 0}# Note that b is column-major:# the virtual first index exposed to the user comes second in memory layout.

Taichi supports up to 8 (constexpr int taichi_max_num_indices = 8) virtual indices and physical indices.