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Basic Operations
The rocksdb
library provides a persistent key value store. Keys and values are arbitrary byte arrays. The keys are ordered within the key value store according to a user-specified comparator function.
A rocksdb
database has a name which corresponds to a file system directory. All of the contents of database are stored in this directory. The following example shows how to open a database, creating it if necessary:
#include <cassert>
#include "rocksdb/db.h"
rocksdb::DB* db;
rocksdb::Options options;
options.create_if_missing = true;
rocksdb::Status status = rocksdb::DB::Open(options, "/tmp/testdb", &db);
assert(status.ok());
...
If you want to raise an error if the database already exists, add the following line before the rocksdb::DB::Open
call:
options.error_if_exists = true;
If you are porting code from leveldb
to rocksdb
, you can convert your leveldb::Options
object to a rocksdb::Options
object using rocksdb::LevelDBOptions
, which has the same functionality as leveldb::Options
:
#include "rocksdb/utilities/leveldb_options.h"
rocksdb::LevelDBOptions leveldb_options;
leveldb_options.option1 = value1;
leveldb_options.option2 = value2;
...
rocksdb::Options options = rocksdb::ConvertOptions(leveldb_options);
Users can choose to always set options fields explicitly in code, as shown above. Alternatively, you can also set it through a string to string map, or an option string. See Option String and Option Map.
Some options can be changed dynamically while DB is running. For example:
rocksdb::Status s;
s = db->SetOptions({{"write_buffer_size", "131072"}});
assert(s.ok());
s = db->SetDBOptions({{"max_background_flushes", "2"}});
assert(s.ok());
RocksDB automatically keeps options used in the database in OPTIONS-xxxx files under the DB directory. Users can choose to preserve the option values after DB restart by extracting options from these option files. See RocksDB Options File.
You may have noticed the rocksdb::Status
type above. Values of this type are returned by most functions in rocksdb
that may encounter an error. You can check if such a result is ok, and also print an associated error message:
rocksdb::Status s = ...;
if (!s.ok()) cerr << s.ToString() << endl;
When you are done with a database, there are 3 ways to gracefully close the database -
- Simply delete the database object. This will release all the resources that were held while the database was open. However, if any error is encountered when releasing any of the resources, for example error when closing the info_log file, it will be lost.
- Call
DB::Close()
, followed by deleting the database object. TheDB::Close()
returnsStatus
, which can be examined to determine if there were any errors. Regardless of errors,DB::Close()
will release all resources and is irreversible. - Call
DB::WaitForCompact()
withWaitForCompactOptions.close_db=true
.DB::WaitForCompact()
will internally callDB::Close()
after waiting for running background jobs to finish. This is a recommended choice for users who want to wait for background work before closing rather than aborting and potentially redoing some work on re-open.
Example:
... open the db as described above ...
... do something with db ...
delete db;
Or
... open the db as described above ...
... do something with db ...
Status s = db->Close();
... log status ...
delete db;
Or
... open the db as described above ...
... do something with db ...
opt = WaitForCompactOptions();
opt.close_db = true;
Status s = db->WaitForCompact(opt);
... log status ...
delete db;
The database provides Put
, Delete
, Get
, and MultiGet
methods to modify/query the database. For example, the following code moves the value stored under key1 to key2.
std::string value;
rocksdb::Status s = db->Get(rocksdb::ReadOptions(), key1, &value);
if (s.ok()) s = db->Put(rocksdb::WriteOptions(), key2, value);
if (s.ok()) s = db->Delete(rocksdb::WriteOptions(), key1);
Right now, value size must be smaller than 4GB. RocksDB also allows Single Delete which is useful in some special cases.
Each Get
results into at least a memcpy from the source to the value string. If the source is in the block cache, you can avoid the extra copy by using a PinnableSlice.
PinnableSlice pinnable_val;
rocksdb::Status s = db->Get(rocksdb::ReadOptions(), key1, &pinnable_val);
The source will be released once pinnable_val is destructed or ::Reset is invoked on it. Read more here.
When reading multiple keys from the database, MultiGet
can be used. There are two variations of MultiGet
: 1. Read multiple keys from a single column family in a more performant manner, i.e it can be faster than calling Get
in a loop, and 2. Read keys across multiple column families consistent with each other.
For example,
std::vector<Slice> keys;
std::vector<PinnableSlice> values;
std::vector<Status> statuses;
for ... {
keys.emplace_back(key);
}
values.resize(keys.size());
statuses.resize(keys.size());
db->MultiGet(ReadOptions(), cf, keys.size(), keys.data(), values.data(), statuses.data());
In order to avoid the overhead of memory allocations, the keys
, values
and statuses
above can be of type std::array
on stack or any other type that provides contiguous storage.
Or
std::vector<ColumnFamilyHandle*> column_families;
std::vector<Slice> keys;
std::vector<std::string> values;
for ... {
keys.emplace_back(key);
column_families.emplace_back(column_family);
}
values.resize(keys.size());
std::vector<Status> statuses = db->MultiGet(ReadOptions(), column_families, keys, &values);
For a more in-depth discussion of performance benefits of using MultiGet, see MultiGet Performance.
Note that if the process dies after the Put of key2 but before the delete of key1, the same value may be left stored under multiple keys. Such problems can be avoided by using the WriteBatch
class to atomically apply a set of updates:
#include "rocksdb/write_batch.h"
...
std::string value;
rocksdb::Status s = db->Get(rocksdb::ReadOptions(), key1, &value);
if (s.ok()) {
rocksdb::WriteBatch batch;
batch.Delete(key1);
batch.Put(key2, value);
s = db->Write(rocksdb::WriteOptions(), &batch);
}
The WriteBatch
holds a sequence of edits to be made to the database, and these edits within the batch are applied in order. Note that we called Delete
before Put
so that if key1
is identical to key2
, we do not end up erroneously dropping the value entirely.
Apart from its atomicity benefits, WriteBatch
may also be used to speed up bulk updates by placing lots of individual mutations into the
same batch.
By default, each write to rocksdb
is asynchronous: it returns after pushing the write from the process into the operating system. The transfer from operating system memory to the underlying persistent storage happens asynchronously. The sync
flag can be turned on for a particular write to make the write operation not return until the data being written has been pushed all the way to persistent storage. (On Posix systems, this is implemented by calling either fsync(...)
or fdatasync(...)
or msync(..., MS_SYNC)
before the write operation returns.)
rocksdb::WriteOptions write_options;
write_options.sync = true;
db->Put(write_options, ...);
With non-sync writes, RocksDB only buffers WAL write in OS buffer or internal buffer (when options.manual_wal_flush = true). They are often much faster than synchronous writes. The downside of non-sync writes is that a crash of the machine may cause the last few updates to be lost. Note that a crash of just the writing process (i.e., not a reboot) will not cause any loss since even when sync
is false, an update is pushed from the process memory into the operating system before it is considered done.
Non-sync writes can often be used safely. For example, when loading a large amount of data into the database you can handle lost updates by restarting the bulk load after a crash. A hybrid scheme is also possible where DB::SyncWAL()
is called by a separate thread.
We also provide a way to completely disable Write Ahead Log for a particular write. If you set write_options.disableWAL
to true, the write will not go to the log at all and may be lost in an event of process crash.
RocksDB by default uses fdatasync()
to sync files, which might be faster than fsync() in certain cases. If you want to use fsync(), you can set Options::use_fsync
to true. You should set this to true on filesystems like ext3 that can lose files after a reboot.
For more information about write performance optimizations and factors influencing performance, see Pipelined Write and Write Stalls.
A database may only be opened by one process at a time. The rocksdb
implementation acquires a lock from the operating system to prevent misuse. Within a single process, the same rocksdb::DB
object may be safely shared by multiple concurrent threads. I.e., different threads may write into or fetch iterators or call Get
on the same database without any external synchronization (the rocksdb implementation will automatically do the required synchronization). However other objects (like Iterator and WriteBatch) may require external synchronization. If two threads share such an object, they must protect access to it using their own locking protocol. More details are available in the public header files.
Merge operators provide efficient support for read-modify-write operation. More on the interface and implementation can be found on:
The following example demonstrates how to print all (key, value) pairs in a database.
rocksdb::Iterator* it = db->NewIterator(rocksdb::ReadOptions());
for (it->SeekToFirst(); it->Valid(); it->Next()) {
cout << it->key().ToString() << ": " << it->value().ToString() << endl;
}
assert(it->status().ok()); // Check for any errors found during the scan
delete it;
The following variation shows how to process just the keys in the
range [start, limit)
:
for (it->Seek(start);
it->Valid() && it->key().ToString() < limit;
it->Next()) {
...
}
assert(it->status().ok()); // Check for any errors found during the scan
You can also process entries in reverse order. (Caveat: reverse iteration may be somewhat slower than forward iteration.)
for (it->SeekToLast(); it->Valid(); it->Prev()) {
...
}
assert(it->status().ok()); // Check for any errors found during the scan
This is an example of processing entries in range (limit, start] in reverse order from one specific key:
for (it->SeekForPrev(start);
it->Valid() && it->key().ToString() > limit;
it->Prev()) {
...
}
assert(it->status().ok()); // Check for any errors found during the scan
See SeekForPrev.
For explanation of error handling, different iterating options and best practice, see Iterator.
To know about implementation details, see Iterator's Implementation
Snapshots provide consistent read-only views over the entire state of the key-value store. ReadOptions::snapshot
may be non-NULL to indicate that a read should operate on a particular version of the DB state.
If ReadOptions::snapshot
is NULL, the read will operate on an implicit snapshot of the current state.
Snapshots are created by the DB::GetSnapshot() method:
rocksdb::ReadOptions options;
options.snapshot = db->GetSnapshot();
... apply some updates to db ...
rocksdb::Iterator* iter = db->NewIterator(options);
... read using iter to view the state when the snapshot was created ...
delete iter;
db->ReleaseSnapshot(options.snapshot);
Note that when a snapshot is no longer needed, it should be released using the DB::ReleaseSnapshot interface. This allows the implementation to get rid of state that was being maintained just to support reading as of that snapshot.
The return value of the it->key()
and it->value()
calls above are instances of the rocksdb::Slice
type. Slice
is a simple structure that contains a length and a pointer to an external byte array. Returning a Slice
is a cheaper alternative to returning a std::string
since we do not need to copy potentially large keys and values. In addition, rocksdb
methods do not return null-terminated C-style strings since rocksdb
keys and values are allowed to contain '\0' bytes.
C++ strings and null-terminated C-style strings can be easily converted to a Slice:
rocksdb::Slice s1 = "hello";
std::string str("world");
rocksdb::Slice s2 = str;
A Slice can be easily converted back to a C++ string:
std::string str = s1.ToString();
assert(str == std::string("hello"));
Be careful when using Slices since it is up to the caller to ensure that the external byte array into which the Slice points remains live while the Slice is in use. For example, the following is buggy:
rocksdb::Slice slice;
if (...) {
std::string str = ...;
slice = str;
}
Use(slice);
When the if
statement goes out of scope, str
will be destroyed and the backing storage for slice
will disappear.
RocksDB now supports multi-operation transactions. See Transactions
The preceding examples used the default ordering function for key, which orders bytes lexicographically. You can however supply a custom comparator when opening a database. For example, suppose each database key consists of two numbers and we should sort by the first number, breaking ties by the second number. First, define a proper subclass of rocksdb::Comparator
that expresses these rules:
class TwoPartComparator : public rocksdb::Comparator {
public:
// Three-way comparison function:
// if a < b: negative result
// if a > b: positive result
// else: zero result
int Compare(const rocksdb::Slice& a, const rocksdb::Slice& b) const {
int a1, a2, b1, b2;
ParseKey(a, &a1, &a2);
ParseKey(b, &b1, &b2);
if (a1 < b1) return -1;
if (a1 > b1) return +1;
if (a2 < b2) return -1;
if (a2 > b2) return +1;
return 0;
}
// Ignore the following methods for now:
const char* Name() const { return "TwoPartComparator"; }
void FindShortestSeparator(std::string*, const rocksdb::Slice&) const { }
void FindShortSuccessor(std::string*) const { }
};
Now create a database using this custom comparator:
TwoPartComparator cmp;
rocksdb::DB* db;
rocksdb::Options options;
options.create_if_missing = true;
options.comparator = &cmp;
rocksdb::Status status = rocksdb::DB::Open(options, "/tmp/testdb", &db);
...
Column Families provide a way to logically partition the database. Users can provide atomic writes of multiple keys across multiple column families and read a consistent view from them.
You can Creating and Ingesting SST files to bulk load a large amount of data directly into DB with minimum impacts on the live traffic.
Backup allows users to create periodic incremental backups in a remote file system (think about HDFS or S3) and recover from any of them.
Checkpoints provides the ability to take a snapshot of a running RocksDB database in a separate directory. Files are hardlinked, rather than copied, if possible, so it is a relatively lightweight operation.
By default, RocksDB's I/O goes through operating system's page cache. Setting Rate Limiter can limit the speed that RocksDB issues file writes, to make room for read I/Os.
Users can also choose to bypass operating system's page cache, using Direct I/O.
See IO for more details.
The result of the comparator's Name
method is attached to the database when it is created, and is checked on every subsequent database open. If the name changes, the rocksdb::DB::Open
call will fail. Therefore, change the name if and only if the new key format and comparison function are incompatible with existing databases, and it is ok to discard the contents of all existing databases.
You can however still gradually evolve your key format over time with a little bit of pre-planning. For example, you could store a version number at the end of each key (one byte should suffice for most uses). When you wish to switch to a new key format (e.g., adding an optional third part to the keys processed by TwoPartComparator
), (a) keep the same comparator name (b) increment the version number for new keys (c) change the comparator function so it uses the version numbers found in the keys to decide how to interpret them.
By default, we keep the data in memory in skiplist memtable and the data on disk in a table format described here: RocksDB Table Format.
Since one of the goals of RocksDB is to have different parts of the system easily pluggable, we support different implementations of both memtable and table format. You can supply your own memtable factory by setting Options::memtable_factory
and your own table factory by setting Options::table_factory
. For available memtable factories, please refer to rocksdb/memtablerep.h
and for table factories to rocksdb/table.h
. These features are both in active development and please be wary of any API changes that might break your application going forward.
You can also read more about memtable here.
Start with Setup Options and Basic Tuning. For more information about RocksDB performance, see the "Performance" section in the sidebar in the right side.
rocksdb
groups adjacent keys together into the same block and such a block is the unit of transfer to and from persistent storage. The default block size is approximately 4096 uncompressed bytes. Applications that mostly do bulk scans over the contents of the database may wish to increase this size. Applications that do a lot of point reads of small values may wish to switch to a smaller block size if performance measurements indicate an improvement. There isn't much benefit in using blocks smaller than one kilobyte, or larger than a few megabytes. Also note that compression will be more effective with larger block sizes. To change block size parameter, use Options::block_size
.
Options::write_buffer_size
specifies the amount of data to build up in memory before converting to a sorted on-disk file. Larger values increase performance, especially during bulk loads. Up to max_write_buffer_number write buffers may be held in memory at the same time, so you may wish to adjust this parameter to control memory usage. Also, a larger write buffer will result in a longer recovery time the next time the database is opened.
Related option is Options::max_write_buffer_number
, which is maximum number of write buffers that are built up in memory. The default is 2, so that when 1 write buffer is being flushed to storage, new writes can continue to the other write buffer. The flush operation is executed in a Thread Pool.
Options::min_write_buffer_number_to_merge
is the minimum number of write buffers that will be merged together before writing to storage. If set to 1, then all write buffers are flushed to L0 as individual files and this increases read amplification because a get request has to check all of these files. Also, an in-memory merge may result in writing lesser data to storage if there are duplicate records in each of these individual write buffers. Default: 1
Each block is individually compressed before being written to persistent storage. Compression is on by default since the default compression method is very fast, and is automatically disabled for uncompressible data. In rare cases, applications may want to disable compression entirely, but should only do so if benchmarks show a performance improvement:
rocksdb::Options options;
options.compression = rocksdb::kNoCompression;
... rocksdb::DB::Open(options, name, ...) ....
Also Dictionary Compression is also available.
The contents of the database are stored in a set of files in the filesystem and each file stores a sequence of compressed blocks. If options.block_cache
is non-NULL, it is used to cache frequently used uncompressed block contents. We use operating systems file cache to cache our raw data, which is compressed. So file cache acts as a cache for compressed data.
#include "rocksdb/cache.h"
rocksdb::BlockBasedTableOptions table_options;
table_options.block_cache = rocksdb::NewLRUCache(100 * 1048576); // 100MB uncompressed cache
rocksdb::Options options;
options.table_factory.reset(rocksdb::NewBlockBasedTableFactory(table_options));
rocksdb::DB* db;
rocksdb::DB::Open(options, name, &db);
... use the db ...
delete db
When performing a bulk read, the application may wish to disable caching so that the data processed by the bulk read does not end up displacing most of the cached contents. A per-iterator option can be used to achieve this:
rocksdb::ReadOptions options;
options.fill_cache = false;
rocksdb::Iterator* it = db->NewIterator(options);
for (it->SeekToFirst(); it->Valid(); it->Next()) {
...
}
You can also disable block cache by setting options.no_block_cache
to true.
See Block Cache for more details.
Note that the unit of disk transfer and caching is a block. Adjacent keys (according to the database sort order) will usually be placed in the same block. Therefore the application can improve its performance by placing keys that are accessed together near each other and placing infrequently used keys in a separate region of the key space.
For example, suppose we are implementing a simple file system on top of rocksdb
. The types of entries we might wish to store are:
filename -> permission-bits, length, list of file_block_ids
file_block_id -> data
We might want to prefix filename
keys with one letter (say '/') and the file_block_id
keys with a different letter (say '0') so that scans over just the metadata do not force us to fetch and cache bulky file contents.
Because of the way rocksdb
data is organized on disk, a single Get()
call may involve multiple reads from disk. The optional FilterPolicy
mechanism can be used to reduce the number of disk reads substantially.
rocksdb::Options options;
rocksdb::BlockBasedTableOptions bbto;
bbto.filter_policy.reset(rocksdb::NewBloomFilterPolicy(
10 /* bits_per_key */,
false /* use_block_based_builder*/));
options.table_factory.reset(rocksdb::NewBlockBasedTableFactory(bbto));
rocksdb::DB* db;
rocksdb::DB::Open(options, "/tmp/testdb", &db);
... use the database ...
delete db;
delete options.filter_policy;
The preceding code associates a Bloom Filter based filtering policy with the database. Bloom filter based filtering relies on keeping some number of bits of data in memory per key (in this case 10 bits per key since that is the argument we passed to NewBloomFilter). This filter will reduce the number of unnecessary disk reads needed for Get()
calls by a factor of approximately a 100. Increasing the bits per key will lead to a larger reduction at the cost of more memory usage. We recommend that applications whose working set does not fit in memory and that do a lot of random reads set a filter policy.
If you are using a custom comparator, you should ensure that the filter policy you are using is compatible with your comparator. For example, consider a comparator that ignores trailing spaces when comparing keys. NewBloomFilter
must not be used with such a comparator. Instead, the application should provide a custom filter policy that also ignores trailing spaces.
For example:
class CustomFilterPolicy : public rocksdb::FilterPolicy {
private:
FilterPolicy* builtin_policy_;
public:
CustomFilterPolicy() : builtin_policy_(NewBloomFilter(10, false)) { }
~CustomFilterPolicy() { delete builtin_policy_; }
const char* Name() const { return "IgnoreTrailingSpacesFilter"; }
void CreateFilter(const Slice* keys, int n, std::string* dst) const {
// Use builtin bloom filter code after removing trailing spaces
std::vector<Slice> trimmed(n);
for (int i = 0; i < n; i++) {
trimmed[i] = RemoveTrailingSpaces(keys[i]);
}
return builtin_policy_->CreateFilter(&trimmed[i], n, dst);
}
bool KeyMayMatch(const Slice& key, const Slice& filter) const {
// Use builtin bloom filter code after removing trailing spaces
return builtin_policy_->KeyMayMatch(RemoveTrailingSpaces(key), filter);
}
};
Advanced applications may provide a filter policy that does not use a bloom filter but uses some other mechanisms for summarizing a set of keys. See rocksdb/filter_policy.h
for detail.
rocksdb
associates checksums with all data it stores in the file system. There are two separate controls provided over how aggressively these checksums are verified:
-
ReadOptions::verify_checksums
forces checksum verification of all data that is read from the file system on behalf of a particular read. This is on by default. -
Options::paranoid_checks
may be set to true before opening a database to make the database implementation raise an error as soon as it detects an internal corruption. Depending on which portion of the database has been corrupted, the error may be raised when the database is opened, or later by another database operation. By default, paranoid checking is on.
Checksum verification can also be manually triggered by calling DB::VerifyChecksum()
. This API walks through all the SST files in all levels for all column families, and for each SST file, verifies the checksum embedded in the metadata and data blocks. At present, it is only supported for the BlockBasedTable format. The files are verified serially, so the API call may take a significant amount of time to finish. This API can be useful for proactive verification of data integrity in a distributed system, for example, where a new replica can be created if the database is found to be corrupt.
If a database is corrupted (perhaps it cannot be opened when paranoid checking is turned on), the rocksdb::RepairDB
function may be used to recover as much of the data as possible.
RocksDB keeps rewriting existing data files. This is to clean stale versions of keys, and to keep the data structure optimal for reads.
The information about compaction has been moved to Compaction. Users don't have to know internal of compactions before operating RocksDB.
The GetApproximateSizes
method can be used to get the approximate number of bytes of file system space used by one or more key ranges.
rocksdb::Range ranges[2];
ranges[0] = rocksdb::Range("a", "c");
ranges[1] = rocksdb::Range("x", "z");
uint64_t sizes[2];
db->GetApproximateSizes(ranges, 2, sizes);
The preceding call will set sizes[0]
to the approximate number of bytes of file system space used by the key range [a..c)
and sizes[1]
to the approximate number of bytes used by the key range [x..z)
.
All file operations (and other operating system calls) issued by the rocksdb
implementation are routed through a rocksdb::Env
object. Sophisticated clients may wish to provide their own Env
implementation to get better control. For example, an application may introduce artificial delays in the file IO paths to limit the impact of rocksdb
on other activities in the system.
class SlowEnv : public rocksdb::Env {
.. implementation of the Env interface ...
};
SlowEnv env;
rocksdb::Options options;
options.env = &env;
Status s = rocksdb::DB::Open(options, ...);
rocksdb
may be ported to a new platform by providing platform specific implementations of the types/methods/functions exported by rocksdb/port/port.h
. See rocksdb/port/port_example.h
for more details.
In addition, the new platform may need a new default rocksdb::Env
implementation. See rocksdb/util/env_posix.h
for an example.
To be able to efficiently tune your application, it is always helpful if you have access to usage statistics. You can collect those statistics by setting Options::table_properties_collectors
or Options::statistics
. For more information, refer to rocksdb/table_properties.h
and rocksdb/statistics.h
. These should not add significant overhead to your application and we recommend exporting them to other monitoring tools. See Statistics. You can also profile single requests using Perf Context and IO Stats Context. Users can register EventListener for callbacks for some internal events.
By default, old write-ahead logs are deleted automatically when they fall out of scope and application doesn't need them anymore. There are options that enable the user to archive the logs and then delete them lazily, either in TTL fashion or based on size limit.
The options are Options::WAL_ttl_seconds
and Options::WAL_size_limit_MB
. Here is how they can be used:
-
If both set to 0, logs will be deleted asap and will never get into the archive.
-
If
WAL_ttl_seconds
is 0 and WAL_size_limit_MB is not 0, WAL files will be checked every 10 min and if total size is greater thenWAL_size_limit_MB
, they will be deleted starting with the earliest until size_limit is met. All empty files will be deleted. -
If
WAL_ttl_seconds
is not 0 and WAL_size_limit_MB is 0, then WAL files will be checked everyWAL_ttl_seconds / 2
and those that are older than WAL_ttl_seconds will be deleted. -
If both are not 0, WAL files will be checked every 10 min and both checks will be performed with ttl being first.
To set up RocksDB options:
- Set Up Options And Basic Tuning
- Some detailed Tuning Guide
Details about the rocksdb
implementation may be found in the following documents:
Contents
- RocksDB Wiki
- Overview
- RocksDB FAQ
- Terminology
- Requirements
- Contributors' Guide
- Release Methodology
- RocksDB Users and Use Cases
- RocksDB Public Communication and Information Channels
-
Basic Operations
- Iterator
- Prefix seek
- SeekForPrev
- Tailing Iterator
- Compaction Filter
- Multi Column Family Iterator
- Read-Modify-Write (Merge) Operator
- Column Families
- Creating and Ingesting SST files
- Single Delete
- Low Priority Write
- Time to Live (TTL) Support
- Transactions
- Snapshot
- DeleteRange
- Atomic flush
- Read-only and Secondary instances
- Approximate Size
- User-defined Timestamp
- Wide Columns
- BlobDB
- Online Verification
- Options
- MemTable
- Journal
- Cache
- Write Buffer Manager
- Compaction
- SST File Formats
- IO
- Compression
- Full File Checksum and Checksum Handoff
- Background Error Handling
- Huge Page TLB Support
- Tiered Storage (Experimental)
- Logging and Monitoring
- Known Issues
- Troubleshooting Guide
- Tests
- Tools / Utilities
-
Implementation Details
- Delete Stale Files
- Partitioned Index/Filters
- WritePrepared-Transactions
- WriteUnprepared-Transactions
- How we keep track of live SST files
- How we index SST
- Merge Operator Implementation
- RocksDB Repairer
- Write Batch With Index
- Two Phase Commit
- Iterator's Implementation
- Simulation Cache
- [To Be Deprecated] Persistent Read Cache
- DeleteRange Implementation
- unordered_write
- Extending RocksDB
- RocksJava
- Lua
- Performance
- Projects Being Developed
- Misc