dash/src/bloom.h
Konstantin Akimov d914bf2b6e
feat: add bloom filter for Asset Lock transactions (#5521)
## Issue being fixed or feature implemented
There's one type of output that potentially can be useful for bloom
filter.
It's follow-up for TODO for dashpay/dash#4857.

Asset  Lock transactions have:
 - standard inputs (covered by regular bloom filter implementation)
 - standard outputs (covered by regular bloom filter implementation)
- special outputs that have public key to proof owing this credits on
platform and claiming it.

Asset Unlock transactions have:
 - no inputs (no need bloom)
 - standard outputs (covered by regular bloom filter implementation)

So far as there's only one special case, let's have this data in the
bloom filter because it can potentially help to show information such as
"Deposit to platform" on mobile clients.

## What was done?
 - added special case for Asset Lock transactions for bloom filter

## How Has This Been Tested?
Run unit/functional tests. Doesn't actually tested how bloom filter
works.


## Breaking Changes
N/A

## Checklist:
- [x] I have performed a self-review of my own code
- [x] I have commented my code, particularly in hard-to-understand areas
- [ ] I have added or updated relevant unit/integration/functional/e2e
tests
- [ ] I have made corresponding changes to the documentation
- [x] I have assigned this pull request to a milestone

---------

Co-authored-by: UdjinM6 <UdjinM6@users.noreply.github.com>
2023-08-02 10:08:39 -05:00

142 lines
5.3 KiB
C++

// Copyright (c) 2012-2015 The Bitcoin Core developers
// Distributed under the MIT software license, see the accompanying
// file COPYING or http://www.opensource.org/licenses/mit-license.php.
#ifndef BITCOIN_BLOOM_H
#define BITCOIN_BLOOM_H
#include <serialize.h>
#include <vector>
class COutPoint;
class CScript;
class CTransaction;
class CTxOut;
class uint256;
class uint160;
//! 20,000 items with fp rate < 0.1% or 10,000 items and <0.0001%
static const unsigned int MAX_BLOOM_FILTER_SIZE = 36000; // bytes
static const unsigned int MAX_HASH_FUNCS = 50;
/**
* First two bits of nFlags control how much IsRelevantAndUpdate actually updates
* The remaining bits are reserved
*/
enum bloomflags
{
BLOOM_UPDATE_NONE = 0,
BLOOM_UPDATE_ALL = 1,
// Only adds outpoints to the filter if the output is a pay-to-pubkey/pay-to-multisig script
BLOOM_UPDATE_P2PUBKEY_ONLY = 2,
BLOOM_UPDATE_MASK = 3,
};
/**
* BloomFilter is a probabilistic filter which SPV clients provide
* so that we can filter the transactions we send them.
*
* This allows for significantly more efficient transaction and block downloads.
*
* Because bloom filters are probabilistic, a SPV node can increase the false-
* positive rate, making us send it transactions which aren't actually its,
* allowing clients to trade more bandwidth for more privacy by obfuscating which
* keys are controlled by them.
*/
class CBloomFilter
{
private:
std::vector<unsigned char> vData;
unsigned int nHashFuncs;
unsigned int nTweak;
unsigned char nFlags;
unsigned int Hash(unsigned int nHashNum, const std::vector<unsigned char>& vDataToHash) const;
// Check matches for arbitrary script data elements
bool CheckScript(const CScript& script) const;
// Check particular CTxOut helper
bool ProcessTxOut(const CTxOut& txout, const uint256& hash, unsigned int index);
// Check additional matches for special transactions
bool CheckSpecialTransactionMatchesAndUpdate(const CTransaction& tx);
public:
/**
* Creates a new bloom filter which will provide the given fp rate when filled with the given number of elements
* Note that if the given parameters will result in a filter outside the bounds of the protocol limits,
* the filter created will be as close to the given parameters as possible within the protocol limits.
* This will apply if nFPRate is very low or nElements is unreasonably high.
* nTweak is a constant which is added to the seed value passed to the hash function
* It should generally always be a random value (and is largely only exposed for unit testing)
* nFlags should be one of the BLOOM_UPDATE_* enums (not _MASK)
*/
CBloomFilter(const unsigned int nElements, const double nFPRate, const unsigned int nTweak, unsigned char nFlagsIn);
CBloomFilter() : nHashFuncs(0), nTweak(0), nFlags(0) {}
SERIALIZE_METHODS(CBloomFilter, obj) { READWRITE(obj.vData, obj.nHashFuncs, obj.nTweak, obj.nFlags); }
void insert(const std::vector<unsigned char>& vKey);
void insert(const COutPoint& outpoint);
void insert(const uint256& hash);
bool contains(const std::vector<unsigned char>& vKey) const;
bool contains(const COutPoint& outpoint) const;
bool contains(const uint256& hash) const;
bool contains(const uint160& hash) const;
//! True if the size is <= MAX_BLOOM_FILTER_SIZE and the number of hash functions is <= MAX_HASH_FUNCS
//! (catch a filter which was just deserialized which was too big)
bool IsWithinSizeConstraints() const;
//! Also adds any outputs which match the filter to the filter (to match their spending txes)
bool IsRelevantAndUpdate(const CTransaction& tx);
};
/**
* RollingBloomFilter is a probabilistic "keep track of most recently inserted" set.
* Construct it with the number of items to keep track of, and a false-positive
* rate. Unlike CBloomFilter, by default nTweak is set to a cryptographically
* secure random value for you. Similarly rather than clear() the method
* reset() is provided, which also changes nTweak to decrease the impact of
* false-positives.
*
* contains(item) will always return true if item was one of the last N to 1.5*N
* insert()'ed ... but may also return true for items that were not inserted.
*
* It needs around 1.8 bytes per element per factor 0.1 of false positive rate.
* For example, if we want 1000 elements, we'd need:
* - ~1800 bytes for a false positive rate of 0.1
* - ~3600 bytes for a false positive rate of 0.01
* - ~5400 bytes for a false positive rate of 0.001
*
* If we make these simplifying assumptions:
* - logFpRate / log(0.5) doesn't get rounded or clamped in the nHashFuncs calculation
* - nElements is even, so that nEntriesPerGeneration == nElements / 2
*
* Then we get a more accurate estimate for filter bytes:
*
* 3/(log(256)*log(2)) * log(1/fpRate) * nElements
*/
class CRollingBloomFilter
{
public:
CRollingBloomFilter(const unsigned int nElements, const double nFPRate);
void insert(const std::vector<unsigned char>& vKey);
void insert(const uint256& hash);
bool contains(const std::vector<unsigned char>& vKey) const;
bool contains(const uint256& hash) const;
void reset();
private:
int nEntriesPerGeneration;
int nEntriesThisGeneration;
int nGeneration;
std::vector<uint64_t> data;
unsigned int nTweak;
int nHashFuncs;
};
#endif // BITCOIN_BLOOM_H