mirror of
https://github.com/trustgraph-ai/trustgraph.git
synced 2026-04-25 08:26:21 +02:00
629 lines
24 KiB
Markdown
629 lines
24 KiB
Markdown
# GraphRAG Performance Optimisation Technical Specification
|
||
|
||
## Overview
|
||
|
||
This specification describes comprehensive performance optimisations for the GraphRAG (Graph Retrieval-Augmented Generation) algorithm in TrustGraph. The current implementation suffers from significant performance bottlenecks that limit scalability and response times. This specification addresses four primary optimisation areas:
|
||
|
||
1. **Graph Traversal Optimisation**: Eliminate inefficient recursive database queries and implement batched graph exploration
|
||
2. **Label Resolution Optimisation**: Replace sequential label fetching with parallel/batched operations
|
||
3. **Caching Strategy Enhancement**: Implement intelligent caching with LRU eviction and prefetching
|
||
4. **Query Optimisation**: Add result memoisation and embedding caching for improved response times
|
||
|
||
## Goals
|
||
|
||
- **Reduce Database Query Volume**: Achieve 50-80% reduction in total database queries through batching and caching
|
||
- **Improve Response Times**: Target 3-5x faster subgraph construction and 2-3x faster label resolution
|
||
- **Enhance Scalability**: Support larger knowledge graphs with better memory management
|
||
- **Maintain Accuracy**: Preserve existing GraphRAG functionality and result quality
|
||
- **Enable Concurrency**: Improve parallel processing capabilities for multiple concurrent requests
|
||
- **Reduce Memory Footprint**: Implement efficient data structures and memory management
|
||
- **Add Observability**: Include performance metrics and monitoring capabilities
|
||
- **Ensure Reliability**: Add proper error handling and timeout mechanisms
|
||
|
||
## Background
|
||
|
||
The current GraphRAG implementation in `trustgraph-flow/trustgraph/retrieval/graph_rag/graph_rag.py` exhibits several critical performance issues that severely impact system scalability:
|
||
|
||
### Current Performance Problems
|
||
|
||
**1. Inefficient Graph Traversal (`follow_edges` function, lines 79-127)**
|
||
- Makes 3 separate database queries per entity per depth level
|
||
- Query pattern: subject-based, predicate-based, and object-based queries for each entity
|
||
- No batching: Each query processes only one entity at a time
|
||
- No cycle detection: Can revisit the same nodes multiple times
|
||
- Recursive implementation without memoisation leads to exponential complexity
|
||
- Time complexity: O(entities × max_path_length × triple_limit³)
|
||
|
||
**2. Sequential Label Resolution (`get_labelgraph` function, lines 144-171)**
|
||
- Processes each triple component (subject, predicate, object) sequentially
|
||
- Each `maybe_label` call potentially triggers a database query
|
||
- No parallel execution or batching of label queries
|
||
- Results in up to 3 × subgraph_size individual database calls
|
||
|
||
**3. Primitive Caching Strategy (`maybe_label` function, lines 62-77)**
|
||
- Simple dictionary cache without size limits or TTL
|
||
- No cache eviction policy leads to unbounded memory growth
|
||
- Cache misses trigger individual database queries
|
||
- No prefetching or intelligent cache warming
|
||
|
||
**4. Suboptimal Query Patterns**
|
||
- Entity vector similarity queries not cached between similar requests
|
||
- No result memoisation for repeated query patterns
|
||
- Missing query optimisation for common access patterns
|
||
|
||
**5. Critical Object Lifetime Issues (`rag.py:96-102`)**
|
||
- **GraphRag object recreated per request**: Fresh instance created for every query, losing all cache benefits
|
||
- **Query object extremely short-lived**: Created and destroyed within single query execution (lines 201-207)
|
||
- **Label cache reset per request**: Cache warming and accumulated knowledge lost between requests
|
||
- **Client recreation overhead**: Database clients potentially re-established for each request
|
||
- **No cross-request optimisation**: Cannot benefit from query patterns or result sharing
|
||
|
||
### Performance Impact Analysis
|
||
|
||
Current worst-case scenario for a typical query:
|
||
- **Entity Retrieval**: 1 vector similarity query
|
||
- **Graph Traversal**: entities × max_path_length × 3 × triple_limit queries
|
||
- **Label Resolution**: subgraph_size × 3 individual label queries
|
||
|
||
For default parameters (50 entities, path length 2, 30 triple limit, 150 subgraph size):
|
||
- **Minimum queries**: 1 + (50 × 2 × 3 × 30) + (150 × 3) = **9,451 database queries**
|
||
- **Response time**: 15-30 seconds for moderate-sized graphs
|
||
- **Memory usage**: Unbounded cache growth over time
|
||
- **Cache effectiveness**: 0% - caches reset on every request
|
||
- **Object creation overhead**: GraphRag + Query objects created/destroyed per request
|
||
|
||
This specification addresses these gaps by implementing batched queries, intelligent caching, and parallel processing. By optimizing query patterns and data access, TrustGraph can:
|
||
- Support enterprise-scale knowledge graphs with millions of entities
|
||
- Provide sub-second response times for typical queries
|
||
- Handle hundreds of concurrent GraphRAG requests
|
||
- Scale efficiently with graph size and complexity
|
||
|
||
## Technical Design
|
||
|
||
### Architecture
|
||
|
||
The GraphRAG performance optimisation requires the following technical components:
|
||
|
||
#### 1. **Object Lifetime Architectural Refactor**
|
||
- **Make GraphRag long-lived**: Move GraphRag instance to Processor level for persistence across requests
|
||
- **Preserve caches**: Maintain label cache, embedding cache, and query result cache between requests
|
||
- **Optimize Query object**: Refactor Query as lightweight execution context, not data container
|
||
- **Connection persistence**: Maintain database client connections across requests
|
||
|
||
Module: `trustgraph-flow/trustgraph/retrieval/graph_rag/rag.py` (modified)
|
||
|
||
#### 2. **Optimized Graph Traversal Engine**
|
||
- Replace recursive `follow_edges` with iterative breadth-first search
|
||
- Implement batched entity processing at each traversal level
|
||
- Add cycle detection using visited node tracking
|
||
- Include early termination when limits are reached
|
||
|
||
Module: `trustgraph-flow/trustgraph/retrieval/graph_rag/optimized_traversal.py`
|
||
|
||
#### 3. **Parallel Label Resolution System**
|
||
- Batch label queries for multiple entities simultaneously
|
||
- Implement async/await patterns for concurrent database access
|
||
- Add intelligent prefetching for common label patterns
|
||
- Include label cache warming strategies
|
||
|
||
Module: `trustgraph-flow/trustgraph/retrieval/graph_rag/label_resolver.py`
|
||
|
||
#### 4. **Conservative Label Caching Layer**
|
||
- LRU cache with short TTL for labels only (5min) to balance performance vs consistency
|
||
- Cache metrics and hit ratio monitoring
|
||
- **No embedding caching**: Already cached per-query, no cross-query benefit
|
||
- **No query result caching**: Due to graph mutation consistency concerns
|
||
|
||
Module: `trustgraph-flow/trustgraph/retrieval/graph_rag/cache_manager.py`
|
||
|
||
#### 5. **Query Optimisation Framework**
|
||
- Query pattern analysis and optimisation suggestions
|
||
- Batch query coordinator for database access
|
||
- Connection pooling and query timeout management
|
||
- Performance monitoring and metrics collection
|
||
|
||
Module: `trustgraph-flow/trustgraph/retrieval/graph_rag/query_optimizer.py`
|
||
|
||
### Data Models
|
||
|
||
#### Optimized Graph Traversal State
|
||
|
||
The traversal engine maintains state to avoid redundant operations:
|
||
|
||
```python
|
||
@dataclass
|
||
class TraversalState:
|
||
visited_entities: Set[str]
|
||
current_level_entities: Set[str]
|
||
next_level_entities: Set[str]
|
||
subgraph: Set[Tuple[str, str, str]]
|
||
depth: int
|
||
query_batch: List[TripleQuery]
|
||
```
|
||
|
||
This approach allows:
|
||
- Efficient cycle detection through visited entity tracking
|
||
- Batched query preparation at each traversal level
|
||
- Memory-efficient state management
|
||
- Early termination when size limits are reached
|
||
|
||
#### Enhanced Cache Structure
|
||
|
||
```python
|
||
@dataclass
|
||
class CacheEntry:
|
||
value: Any
|
||
timestamp: float
|
||
access_count: int
|
||
ttl: Optional[float]
|
||
|
||
class CacheManager:
|
||
label_cache: LRUCache[str, CacheEntry]
|
||
embedding_cache: LRUCache[str, CacheEntry]
|
||
query_result_cache: LRUCache[str, CacheEntry]
|
||
cache_stats: CacheStatistics
|
||
```
|
||
|
||
#### Batch Query Structures
|
||
|
||
```python
|
||
@dataclass
|
||
class BatchTripleQuery:
|
||
entities: List[str]
|
||
query_type: QueryType # SUBJECT, PREDICATE, OBJECT
|
||
limit_per_entity: int
|
||
|
||
@dataclass
|
||
class BatchLabelQuery:
|
||
entities: List[str]
|
||
predicate: str = LABEL
|
||
```
|
||
|
||
### APIs
|
||
|
||
#### New APIs:
|
||
|
||
**GraphTraversal API**
|
||
```python
|
||
async def optimized_follow_edges_batch(
|
||
entities: List[str],
|
||
max_depth: int,
|
||
triple_limit: int,
|
||
max_subgraph_size: int
|
||
) -> Set[Tuple[str, str, str]]
|
||
```
|
||
|
||
**Batch Label Resolution API**
|
||
```python
|
||
async def resolve_labels_batch(
|
||
entities: List[str],
|
||
cache_manager: CacheManager
|
||
) -> Dict[str, str]
|
||
```
|
||
|
||
**Cache Management API**
|
||
```python
|
||
class CacheManager:
|
||
async def get_or_fetch_label(self, entity: str) -> str
|
||
async def get_or_fetch_embeddings(self, query: str) -> List[float]
|
||
async def cache_query_result(self, query_hash: str, result: Any, ttl: int)
|
||
def get_cache_statistics(self) -> CacheStatistics
|
||
```
|
||
|
||
#### Modified APIs:
|
||
|
||
**GraphRag.query()** - Enhanced with performance optimisations:
|
||
- Add cache_manager parameter for cache control
|
||
- Include performance_metrics return value
|
||
- Add query_timeout parameter for reliability
|
||
|
||
**Query class** - Refactored for batch processing:
|
||
- Replace individual entity processing with batch operations
|
||
- Add async context managers for resource cleanup
|
||
- Include progress callbacks for long-running operations
|
||
|
||
### Implementation Details
|
||
|
||
#### Phase 0: Critical Architectural Lifetime Refactor
|
||
|
||
**Current Problematic Implementation:**
|
||
```python
|
||
# INEFFICIENT: GraphRag recreated every request
|
||
class Processor(FlowProcessor):
|
||
async def on_request(self, msg, consumer, flow):
|
||
# PROBLEM: New GraphRag instance per request!
|
||
self.rag = GraphRag(
|
||
embeddings_client = flow("embeddings-request"),
|
||
graph_embeddings_client = flow("graph-embeddings-request"),
|
||
triples_client = flow("triples-request"),
|
||
prompt_client = flow("prompt-request"),
|
||
verbose=True,
|
||
)
|
||
# Cache starts empty every time - no benefit from previous requests
|
||
response = await self.rag.query(...)
|
||
|
||
# VERY SHORT-LIVED: Query object created/destroyed per request
|
||
class GraphRag:
|
||
async def query(self, query, user="trustgraph", collection="default", ...):
|
||
q = Query(rag=self, user=user, collection=collection, ...) # Created
|
||
kg = await q.get_labelgraph(query) # Used briefly
|
||
# q automatically destroyed when function exits
|
||
```
|
||
|
||
**Optimized Long-Lived Architecture:**
|
||
```python
|
||
class Processor(FlowProcessor):
|
||
def __init__(self, **params):
|
||
super().__init__(**params)
|
||
self.rag_instance = None # Will be initialized once
|
||
self.client_connections = {}
|
||
|
||
async def initialize_rag(self, flow):
|
||
"""Initialize GraphRag once, reuse for all requests"""
|
||
if self.rag_instance is None:
|
||
self.rag_instance = LongLivedGraphRag(
|
||
embeddings_client=flow("embeddings-request"),
|
||
graph_embeddings_client=flow("graph-embeddings-request"),
|
||
triples_client=flow("triples-request"),
|
||
prompt_client=flow("prompt-request"),
|
||
verbose=True,
|
||
)
|
||
return self.rag_instance
|
||
|
||
async def on_request(self, msg, consumer, flow):
|
||
# REUSE the same GraphRag instance - caches persist!
|
||
rag = await self.initialize_rag(flow)
|
||
|
||
# Query object becomes lightweight execution context
|
||
response = await rag.query_with_context(
|
||
query=v.query,
|
||
execution_context=QueryContext(
|
||
user=v.user,
|
||
collection=v.collection,
|
||
entity_limit=entity_limit,
|
||
# ... other params
|
||
)
|
||
)
|
||
|
||
class LongLivedGraphRag:
|
||
def __init__(self, ...):
|
||
# CONSERVATIVE caches - balance performance vs consistency
|
||
self.label_cache = LRUCacheWithTTL(max_size=5000, ttl=300) # 5min TTL for freshness
|
||
# Note: No embedding cache - already cached per-query, no cross-query benefit
|
||
# Note: No query result cache due to consistency concerns
|
||
self.performance_metrics = PerformanceTracker()
|
||
|
||
async def query_with_context(self, query: str, context: QueryContext):
|
||
# Use lightweight QueryExecutor instead of heavyweight Query object
|
||
executor = QueryExecutor(self, context) # Minimal object
|
||
return await executor.execute(query)
|
||
|
||
@dataclass
|
||
class QueryContext:
|
||
"""Lightweight execution context - no heavy operations"""
|
||
user: str
|
||
collection: str
|
||
entity_limit: int
|
||
triple_limit: int
|
||
max_subgraph_size: int
|
||
max_path_length: int
|
||
|
||
class QueryExecutor:
|
||
"""Lightweight execution context - replaces old Query class"""
|
||
def __init__(self, rag: LongLivedGraphRag, context: QueryContext):
|
||
self.rag = rag
|
||
self.context = context
|
||
# No heavy initialization - just references
|
||
|
||
async def execute(self, query: str):
|
||
# All heavy lifting uses persistent rag caches
|
||
return await self.rag.execute_optimized_query(query, self.context)
|
||
```
|
||
|
||
This architectural change provides:
|
||
- **10-20% database query reduction** for graphs with common relationships (vs 0% currently)
|
||
- **Eliminated object creation overhead** for every request
|
||
- **Persistent connection pooling** and client reuse
|
||
- **Cross-request optimization** within cache TTL windows
|
||
|
||
**Important Cache Consistency Limitation:**
|
||
Long-term caching introduces staleness risk when entities/labels are deleted or modified in the underlying graph. The LRU cache with TTL provides a balance between performance gains and data freshness, but cannot detect real-time graph changes.
|
||
|
||
#### Phase 1: Graph Traversal Optimisation
|
||
|
||
**Current Implementation Problems:**
|
||
```python
|
||
# INEFFICIENT: 3 queries per entity per level
|
||
async def follow_edges(self, ent, subgraph, path_length):
|
||
# Query 1: s=ent, p=None, o=None
|
||
res = await self.rag.triples_client.query(s=ent, p=None, o=None, limit=self.triple_limit)
|
||
# Query 2: s=None, p=ent, o=None
|
||
res = await self.rag.triples_client.query(s=None, p=ent, o=None, limit=self.triple_limit)
|
||
# Query 3: s=None, p=None, o=ent
|
||
res = await self.rag.triples_client.query(s=None, p=None, o=ent, limit=self.triple_limit)
|
||
```
|
||
|
||
**Optimized Implementation:**
|
||
```python
|
||
async def optimized_traversal(self, entities: List[str], max_depth: int) -> Set[Triple]:
|
||
visited = set()
|
||
current_level = set(entities)
|
||
subgraph = set()
|
||
|
||
for depth in range(max_depth):
|
||
if not current_level or len(subgraph) >= self.max_subgraph_size:
|
||
break
|
||
|
||
# Batch all queries for current level
|
||
batch_queries = []
|
||
for entity in current_level:
|
||
if entity not in visited:
|
||
batch_queries.extend([
|
||
TripleQuery(s=entity, p=None, o=None),
|
||
TripleQuery(s=None, p=entity, o=None),
|
||
TripleQuery(s=None, p=None, o=entity)
|
||
])
|
||
|
||
# Execute all queries concurrently
|
||
results = await self.execute_batch_queries(batch_queries)
|
||
|
||
# Process results and prepare next level
|
||
next_level = set()
|
||
for result in results:
|
||
subgraph.update(result.triples)
|
||
next_level.update(result.new_entities)
|
||
|
||
visited.update(current_level)
|
||
current_level = next_level - visited
|
||
|
||
return subgraph
|
||
```
|
||
|
||
#### Phase 2: Parallel Label Resolution
|
||
|
||
**Current Sequential Implementation:**
|
||
```python
|
||
# INEFFICIENT: Sequential processing
|
||
for edge in subgraph:
|
||
s = await self.maybe_label(edge[0]) # Individual query
|
||
p = await self.maybe_label(edge[1]) # Individual query
|
||
o = await self.maybe_label(edge[2]) # Individual query
|
||
```
|
||
|
||
**Optimized Parallel Implementation:**
|
||
```python
|
||
async def resolve_labels_parallel(self, subgraph: List[Triple]) -> List[Triple]:
|
||
# Collect all unique entities needing labels
|
||
entities_to_resolve = set()
|
||
for s, p, o in subgraph:
|
||
entities_to_resolve.update([s, p, o])
|
||
|
||
# Remove already cached entities
|
||
uncached_entities = [e for e in entities_to_resolve if e not in self.label_cache]
|
||
|
||
# Batch query for all uncached labels
|
||
if uncached_entities:
|
||
label_results = await self.batch_label_query(uncached_entities)
|
||
self.label_cache.update(label_results)
|
||
|
||
# Apply labels to subgraph
|
||
return [
|
||
(self.label_cache.get(s, s), self.label_cache.get(p, p), self.label_cache.get(o, o))
|
||
for s, p, o in subgraph
|
||
]
|
||
```
|
||
|
||
#### Phase 3: Advanced Caching Strategy
|
||
|
||
**LRU Cache with TTL:**
|
||
```python
|
||
class LRUCacheWithTTL:
|
||
def __init__(self, max_size: int, default_ttl: int = 3600):
|
||
self.cache = OrderedDict()
|
||
self.max_size = max_size
|
||
self.default_ttl = default_ttl
|
||
self.access_times = {}
|
||
|
||
async def get(self, key: str) -> Optional[Any]:
|
||
if key in self.cache:
|
||
# Check TTL expiration
|
||
if time.time() - self.access_times[key] > self.default_ttl:
|
||
del self.cache[key]
|
||
del self.access_times[key]
|
||
return None
|
||
|
||
# Move to end (most recently used)
|
||
self.cache.move_to_end(key)
|
||
return self.cache[key]
|
||
return None
|
||
|
||
async def put(self, key: str, value: Any):
|
||
if key in self.cache:
|
||
self.cache.move_to_end(key)
|
||
else:
|
||
if len(self.cache) >= self.max_size:
|
||
# Remove least recently used
|
||
oldest_key = next(iter(self.cache))
|
||
del self.cache[oldest_key]
|
||
del self.access_times[oldest_key]
|
||
|
||
self.cache[key] = value
|
||
self.access_times[key] = time.time()
|
||
```
|
||
|
||
#### Phase 4: Query Optimisation and Monitoring
|
||
|
||
**Performance Metrics Collection:**
|
||
```python
|
||
@dataclass
|
||
class PerformanceMetrics:
|
||
total_queries: int
|
||
cache_hits: int
|
||
cache_misses: int
|
||
avg_response_time: float
|
||
subgraph_construction_time: float
|
||
label_resolution_time: float
|
||
total_entities_processed: int
|
||
memory_usage_mb: float
|
||
```
|
||
|
||
**Query Timeout and Circuit Breaker:**
|
||
```python
|
||
async def execute_with_timeout(self, query_func, timeout: int = 30):
|
||
try:
|
||
return await asyncio.wait_for(query_func(), timeout=timeout)
|
||
except asyncio.TimeoutError:
|
||
logger.error(f"Query timeout after {timeout}s")
|
||
raise GraphRagTimeoutError(f"Query exceeded timeout of {timeout}s")
|
||
```
|
||
|
||
## Cache Consistency Considerations
|
||
|
||
**Data Staleness Trade-offs:**
|
||
- **Label cache (5min TTL)**: Risk of serving deleted/renamed entity labels
|
||
- **No embedding caching**: Not needed - embeddings already cached per-query
|
||
- **No result caching**: Prevents stale subgraph results from deleted entities/relationships
|
||
|
||
**Mitigation Strategies:**
|
||
- **Conservative TTL values**: Balance performance gains (10-20%) with data freshness
|
||
- **Cache invalidation hooks**: Optional integration with graph mutation events
|
||
- **Monitoring dashboards**: Track cache hit rates vs staleness incidents
|
||
- **Configurable cache policies**: Allow per-deployment tuning based on mutation frequency
|
||
|
||
**Recommended Cache Configuration by Graph Mutation Rate:**
|
||
- **High mutation (>100 changes/hour)**: TTL=60s, smaller cache sizes
|
||
- **Medium mutation (10-100 changes/hour)**: TTL=300s (default)
|
||
- **Low mutation (<10 changes/hour)**: TTL=600s, larger cache sizes
|
||
|
||
## Security Considerations
|
||
|
||
**Query Injection Prevention:**
|
||
- Validate all entity identifiers and query parameters
|
||
- Use parameterized queries for all database interactions
|
||
- Implement query complexity limits to prevent DoS attacks
|
||
|
||
**Resource Protection:**
|
||
- Enforce maximum subgraph size limits
|
||
- Implement query timeouts to prevent resource exhaustion
|
||
- Add memory usage monitoring and limits
|
||
|
||
**Access Control:**
|
||
- Maintain existing user and collection isolation
|
||
- Add audit logging for performance-impacting operations
|
||
- Implement rate limiting for expensive operations
|
||
|
||
## Performance Considerations
|
||
|
||
### Expected Performance Improvements
|
||
|
||
**Query Reduction:**
|
||
- Current: ~9,000+ queries for typical request
|
||
- Optimized: ~50-100 batched queries (98% reduction)
|
||
|
||
**Response Time Improvements:**
|
||
- Graph traversal: 15-20s → 3-5s (4-5x faster)
|
||
- Label resolution: 8-12s → 2-4s (3x faster)
|
||
- Overall query: 25-35s → 6-10s (3-4x improvement)
|
||
|
||
**Memory Efficiency:**
|
||
- Bounded cache sizes prevent memory leaks
|
||
- Efficient data structures reduce memory footprint by ~40%
|
||
- Better garbage collection through proper resource cleanup
|
||
|
||
**Realistic Performance Expectations:**
|
||
- **Label cache**: 10-20% query reduction for graphs with common relationships
|
||
- **Batching optimization**: 50-80% query reduction (primary optimization)
|
||
- **Object lifetime optimization**: Eliminate per-request creation overhead
|
||
- **Overall improvement**: 3-4x response time improvement primarily from batching
|
||
|
||
**Scalability Improvements:**
|
||
- Support for 3-5x larger knowledge graphs (limited by cache consistency needs)
|
||
- 3-5x higher concurrent request capacity
|
||
- Better resource utilization through connection reuse
|
||
|
||
### Performance Monitoring
|
||
|
||
**Real-time Metrics:**
|
||
- Query execution times by operation type
|
||
- Cache hit ratios and effectiveness
|
||
- Database connection pool utilisation
|
||
- Memory usage and garbage collection impact
|
||
|
||
**Performance Benchmarking:**
|
||
- Automated performance regression testing
|
||
- Load testing with realistic data volumes
|
||
- Comparison benchmarks against current implementation
|
||
|
||
## Testing Strategy
|
||
|
||
### Unit Testing
|
||
- Individual component testing for traversal, caching, and label resolution
|
||
- Mock database interactions for performance testing
|
||
- Cache eviction and TTL expiration testing
|
||
- Error handling and timeout scenarios
|
||
|
||
### Integration Testing
|
||
- End-to-end GraphRAG query testing with optimisations
|
||
- Database interaction testing with real data
|
||
- Concurrent request handling and resource management
|
||
- Memory leak detection and resource cleanup verification
|
||
|
||
### Performance Testing
|
||
- Benchmark testing against current implementation
|
||
- Load testing with varying graph sizes and complexities
|
||
- Stress testing for memory and connection limits
|
||
- Regression testing for performance improvements
|
||
|
||
### Compatibility Testing
|
||
- Verify existing GraphRAG API compatibility
|
||
- Test with various graph database backends
|
||
- Validate result accuracy compared to current implementation
|
||
|
||
## Implementation Plan
|
||
|
||
### Direct Implementation Approach
|
||
Since APIs are allowed to change, implement optimizations directly without migration complexity:
|
||
|
||
1. **Replace `follow_edges` method**: Rewrite with iterative batched traversal
|
||
2. **Optimize `get_labelgraph`**: Implement parallel label resolution
|
||
3. **Add long-lived GraphRag**: Modify Processor to maintain persistent instance
|
||
4. **Implement label caching**: Add LRU cache with TTL to GraphRag class
|
||
|
||
### Scope of Changes
|
||
- **Query class**: Replace ~50 lines in `follow_edges`, add ~30 lines batch handling
|
||
- **GraphRag class**: Add caching layer (~40 lines)
|
||
- **Processor class**: Modify to use persistent GraphRag instance (~20 lines)
|
||
- **Total**: ~140 lines of focused changes, mostly within existing classes
|
||
|
||
## Timeline
|
||
|
||
**Week 1: Core Implementation**
|
||
- Replace `follow_edges` with batched iterative traversal
|
||
- Implement parallel label resolution in `get_labelgraph`
|
||
- Add long-lived GraphRag instance to Processor
|
||
- Implement label caching layer
|
||
|
||
**Week 2: Testing and Integration**
|
||
- Unit tests for new traversal and caching logic
|
||
- Performance benchmarking against current implementation
|
||
- Integration testing with real graph data
|
||
- Code review and optimization
|
||
|
||
**Week 3: Deployment**
|
||
- Deploy optimized implementation
|
||
- Monitor performance improvements
|
||
- Fine-tune cache TTL and batch sizes based on real usage
|
||
|
||
## Open Questions
|
||
|
||
- **Database Connection Pooling**: Should we implement custom connection pooling or rely on existing database client pooling?
|
||
- **Cache Persistence**: Should label and embedding caches persist across service restarts?
|
||
- **Distributed Caching**: For multi-instance deployments, should we implement distributed caching with Redis/Memcached?
|
||
- **Query Result Format**: Should we optimize the internal triple representation for better memory efficiency?
|
||
- **Monitoring Integration**: Which metrics should be exposed to existing monitoring systems (Prometheus, etc.)?
|
||
|
||
## References
|
||
|
||
- [GraphRAG Original Implementation](trustgraph-flow/trustgraph/retrieval/graph_rag/graph_rag.py)
|
||
- [TrustGraph Architecture Principles](architecture-principles.md)
|
||
- [Collection Management Specification](collection-management.md)
|