HierarchicalKV is a part of NVIDIA Merlin and provides hierarchical key-value storage to meet RecSys requirements.
The key capability of HierarchicalKV is to store key-value (feature-embedding) on high-bandwidth memory (HBM) of GPUs and in host memory.
You can also use the library for generic key-value storage.
When building large recommender systems, machine learning (ML) engineers face the following challenges:
- GPUs are needed, but HBM on a single GPU is too small for the large DLRMs that scale to several terabytes.
- Improving communication performance is getting more difficult in larger and larger CPU clusters.
- It is difficult to efficiently control consumption growth of limited HBM with customized strategies.
- Most generic key-value libraries provide low HBM and host memory utilization.
HierarchicalKV alleviates these challenges and helps the machine learning engineers in RecSys with the following benefits:
- Supports training large RecSys models on HBM and host memory at the same time.
- Provides better performance by full bypassing CPUs and reducing the communication workload.
- Implements table-size restraint strategies that are based on LRU or customized strategies. The strategies are implemented by CUDA kernels.
- Operates at a high working-status load factor that is close to 1.0.
- Buckets are locally ordered
- Store keys and values separately
- Store all the keys in HBM
- Build-in and customizable eviction strategy
HierarchicalKV makes NVIDIA GPUs more suitable for training large and super-large models of search, recommendations, and advertising. The library simplifies the common challenges to building, evaluating, and serving sophisticated recommenders models.
The main classes and structs are below, but reading the comments in the source code is recommended:
For regular API doc, please refer to API Docs
industry-validated
means the API has been well-tested and verified in at least one real-world scenario.
Name | Description | Function |
---|---|---|
insert_or_assign | Insert or assign for the specified keys. Overwrite one key with minimum score when bucket is full. |
industry-validated |
insert_and_evict | Insert new keys, and evict keys with minimum score when bucket is full. | industry-validated |
find_or_insert | Search for the specified keys, and insert them when missed. | well-tested |
assign | Update for each key and bypass when missed. | well-tested |
accum_or_assign | Search and update for each key. If found, add value as a delta to the original value. If missed, update it directly. |
well-tested |
find_or_insert* | Search for the specified keys and return the pointers of values. Insert them firstly when missing. | well-tested |
find | Search for the specified keys. | industry-validated |
find* | Search and return the pointers of values, thread-unsafe but with high performance. | well-tested |
export_batch | Exports a certain number of the key-value-score tuples. | industry-validated |
export_batch_if | Exports a certain number of the key-value-score tuples which match specific conditions. | industry-validated |
warmup | Move the hot key-values from HMEM to HBM | June 15, 2023 |
The score
is introduced to define the importance of each key, the larger, the more important, the less likely they will be evicted. Eviction only happens when a bucket is full.
The score_type
must be uint64_t
. For more detail, please refer to class EvictStrategy
.
Name | Definition of Score |
---|---|
Lru | Device clock in a nanosecond, which could differ slightly from host clock. |
Lfu | Frequency increment provided by caller via the input parameter of scores of insert-like APIs as the increment of frequency. |
EpochLru | The high 32bits is the global epoch provided via the input parameter of global_epoch , the low 32bits is equal to (device_clock >> 20) & 0xffffffff with granularity close to 1 ms. |
EpochLfu | The high 32bits is the global epoch provided via the input parameter of global_epoch , the low 32bits is the frequency, the frequency will keep constant after reaching the max value of 0xffffffff . |
Customized | Fully provided by the caller via the input parameter of scores of insert-like APIs. |
- Note:
- The
insert-like
APIs mean the APIs ofinsert_or_assign
,insert_and_evict
,find_or_insert
,accum_or_assign
, andfind_or_insert
. - The
global_epoch
should be maintained by the caller and input as the input parameter ofinsert-like
APIs.
- The
It's recommended to keep the default configuration for the options ending with *
.
Name | Type | Default | Description |
---|---|---|---|
init_capacity | size_t | 0 | The initial capacity of the hash table. |
max_capacity | size_t | 0 | The maximum capacity of the hash table. |
max_hbm_for_vectors | size_t | 0 | The maximum HBM for vectors, in bytes. |
dim | size_t | 64 | The dimension of the value vectors. |
max_bucket_size* | size_t | 128 | The length of each bucket. |
max_load_factor* | float | 0.5f | The max load factor before rehashing. |
block_size* | int | 128 | The default block size for CUDA kernels. |
io_block_size* | int | 1024 | The block size for IO CUDA kernels. |
device_id* | int | -1 | The ID of device. Managed internally when set to -1 |
io_by_cpu* | bool | false | The flag indicating if the CPU handles IO. |
reserved_key_start_bit | int | 0 | The start bit offset of reserved key in the 64 bit |
- Fore more details refer to
struct HashTableOptions
.
-
By default, the keys of
0xFFFFFFFFFFFFFFFD
,0xFFFFFFFFFFFFFFFE
, and0xFFFFFFFFFFFFFFFF
are reserved for internal using. changeoptions.reserved_key_start_bit
if you want to use the above keys.reserved_key_start_bit
has a valid range from 0 to 62. The default value is 0, which is the above default reserved keys. Whenreserved_key_start_bit
is set to any value other than 0, the least significant bit (bit 0) is always0
for any reserved key. -
Setting
reserved_key_start_bit = 1
:- This setting reserves the two least significant bits 1 and 2 for the reserved keys.
- In binary, the last four bits range from
1000
to1110
. Here, the least significant bit (bit 0) is always0
, and bits from 3 to 63 are set to1
. - The new reserved keys in hexadecimal representation are as follows:
0xFFFFFFFFFFFFFFFE
0xFFFFFFFFFFFFFFFC
0xFFFFFFFFFFFFFFF8
0xFFFFFFFFFFFFFFFA
-
Setting
reserved_key_start_bit = 2
:- This configuration reserves bits 2 and 3 as reserved keys.
- The binary representation for the last five bits ranges from
10010
to11110
, with the least significant bit (bit 0) always set to0
, and bits from 4 to 63 are set to1
.
-
if you change the reserved_key_start_bit, you should use same value for save/load For more detail, please refer to
init_reserved_keys
#include "merlin_hashtable.cuh"
using TableOptions = nv::merlin::HashTableOptions;
using EvictStrategy = nv::merlin::EvictStrategy;
int main(int argc, char *argv[])
{
using K = uint64_t;
using V = float;
using S = uint64_t;
// 1. Define the table and use LRU eviction strategy.
using HKVTable = nv::merlin::HashTable<K, V, S, EvictStrategy::kLru>;
std::unique_ptr<HKVTable> table = std::make_unique<HKVTable>();
// 2. Define the configuration options.
TableOptions options;
options.init_capacity = 16 * 1024 * 1024;
options.max_capacity = options.init_capacity;
options.dim = 16;
options.max_hbm_for_vectors = nv::merlin::GB(16);
// 3. Initialize the table memory resource.
table->init(options);
// 4. Use table to do something.
return 0;
}
- The
key_type
must beint64_t
oruint64_t
. - The
score_type
must beuint64_t
.
HierarchicalKV is co-maintianed by NVIDIA Merlin Team and NVIDIA product end-users, and also open for public contributions, bug fixes, and documentation. [Contribute]
Basically, HierarchicalKV is a headers only library, the commands below only create binaries for benchmark and unit testing.
Your environment must meet the following requirements:
- CUDA version >= 11.2
- NVIDIA GPU with compute capability 8.0, 8.6, 8.7 or 9.0
- GCC supports `C++17' standard or later.
- Bazel version >= 3.7.2 (Bazel compile only)
git clone --recursive https://github.com/NVIDIA-Merlin/HierarchicalKV.git
cd HierarchicalKV && mkdir -p build && cd build
cmake -DCMAKE_BUILD_TYPE=Release -Dsm=80 .. && make -j
For Debug:
cmake -DCMAKE_BUILD_TYPE=Debug -Dsm=80 .. && make -j
For Benchmark:
./merlin_hashtable_benchmark
For Unit Test:
./merlin_hashtable_test
- DON'T use the option of
--recursive
forgit clone
. - Please modify the environment variables in the
.bazelrc
file in advance if using the customized docker images. - The docker images maintained on
nvcr.io/nvidia/tensorflow
are highly recommended.
Pull the docker image:
docker pull nvcr.io/nvidia/tensorflow:22.09-tf2-py3
docker run --gpus all -it --rm nvcr.io/nvidia/tensorflow:22.09-tf2-py3
Compile in docker container:
git clone https://github.com/NVIDIA-Merlin/HierarchicalKV.git
cd HierarchicalKV && bash bazel_build.sh
For Benchmark:
./benchmark_util
- GPU: 1 x NVIDIA A100 80GB PCIe: 8.0
- Key Type = uint64_t
- Value Type = float32 * {dim}
- Key-Values per OP = 1048576
- Evict strategy: LRU
λ
: load factorfind*
means thefind
API that directly returns the addresses of values.find_or_insert*
means thefind_or_insert
API that directly returns the addresses of values.- Throughput Unit: Billion-KV/second
- dim = 8, capacity = 128 Million-KV, HBM = 4 GB, HMEM = 0 GB
λ | insert_or_assign | find | find_or_insert | assign | find* | find_or_insert* | insert_and_evict |
---|---|---|---|---|---|---|---|
0.50 | 1.093 | 2.470 | 1.478 | 1.770 | 3.726 | 1.447 | 1.075 |
0.75 | 1.045 | 2.452 | 1.335 | 1.807 | 3.374 | 1.309 | 1.013 |
1.00 | 0.655 | 2.481 | 0.612 | 1.815 | 1.865 | 0.619 | 0.511 |
λ | export_batch | export_batch_if | contains |
---|---|---|---|
0.50 | 2.087 | 12.258 | 3.121 |
0.75 | 2.045 | 12.447 | 3.094 |
1.00 | 1.950 | 2.657 | 3.096 |
- dim = 32, capacity = 128 Million-KV, HBM = 16 GB, HMEM = 0 GB
λ | insert_or_assign | find | find_or_insert | assign | find* | find_or_insert* | insert_and_evict |
---|---|---|---|---|---|---|---|
0.50 | 0.961 | 2.272 | 1.278 | 1.706 | 3.718 | 1.435 | 0.931 |
0.75 | 0.930 | 2.238 | 1.177 | 1.693 | 3.369 | 1.316 | 0.866 |
1.00 | 0.646 | 2.321 | 0.572 | 1.783 | 1.873 | 0.618 | 0.469 |
λ | export_batch | export_batch_if | contains |
---|---|---|---|
0.50 | 0.692 | 10.784 | 3.100 |
0.75 | 0.569 | 10.240 | 3.075 |
1.00 | 0.551 | 0.765 | 3.096 |
- dim = 64, capacity = 64 Million-KV, HBM = 16 GB, HMEM = 0 GB
λ | insert_or_assign | find | find_or_insert | assign | find* | find_or_insert* | insert_and_evict |
---|---|---|---|---|---|---|---|
0.50 | 0.834 | 1.982 | 1.113 | 1.499 | 3.950 | 1.502 | 0.805 |
0.75 | 0.801 | 1.951 | 1.033 | 1.493 | 3.545 | 1.359 | 0.773 |
1.00 | 0.621 | 2.021 | 0.608 | 1.541 | 1.965 | 0.613 | 0.481 |
λ | export_batch | export_batch_if | contains |
---|---|---|---|
0.50 | 0.316 | 8.199 | 3.239 |
0.75 | 0.296 | 8.549 | 3.198 |
1.00 | 0.288 | 0.395 | 3.225 |
- dim = 64, capacity = 128 Million-KV, HBM = 16 GB, HMEM = 16 GB
λ | insert_or_assign | find | find_or_insert | assign | find* | find_or_insert* |
---|---|---|---|---|---|---|
0.50 | 0.083 | 0.124 | 0.109 | 0.131 | 3.705 | 1.435 |
0.75 | 0.083 | 0.122 | 0.111 | 0.129 | 3.221 | 1.274 |
1.00 | 0.073 | 0.123 | 0.095 | 0.126 | 1.854 | 0.617 |
λ | export_batch | export_batch_if | contains |
---|---|---|---|
0.50 | 0.318 | 8.086 | 3.122 |
0.75 | 0.294 | 5.549 | 3.111 |
1.00 | 0.287 | 0.393 | 3.075 |
- dim = 64, capacity = 512 Million-KV, HBM = 32 GB, HMEM = 96 GB
λ | insert_or_assign | find | find_or_insert | assign | find* | find_or_insert* |
---|---|---|---|---|---|---|
0.50 | 0.049 | 0.069 | 0.049 | 0.069 | 3.484 | 1.370 |
0.75 | 0.049 | 0.069 | 0.049 | 0.069 | 3.116 | 1.242 |
1.00 | 0.047 | 0.072 | 0.047 | 0.070 | 1.771 | 0.607 |
λ | export_batch | export_batch_if | contains |
---|---|---|---|
0.50 | 0.316 | 8.181 | 3.073 |
0.75 | 0.293 | 8.950 | 3.052 |
1.00 | 0.292 | 0.394 | 3.026 |
If you encounter any issues or have questions, go to https://github.com/NVIDIA-Merlin/HierarchicalKV/issues and submit an issue so that we can provide you with the necessary resolutions and answers.
We are very grateful to external initial contributors @Zhangyafei and @Lifan for their design, coding, and review work.
Apache License 2.0