Database Optimization
EXPLAIN Analysis
Always run EXPLAIN ANALYZE before optimizing. Read the output bottom-up.
sql
-- PostgreSQL EXPLAIN (ANALYZE, BUFFERS, FORMAT TEXT) SELECT ...; -- MySQL EXPLAIN ANALYZE SELECT ...;
Key metrics to watch:
- •Seq Scan on large tables = missing index
- •Nested Loop with high row count = consider hash/merge join
- •Sort without index = add index on sort column
- •Rows estimated vs actual divergence = stale statistics, run
ANALYZE
Index Strategies
B-tree (default, most cases)
sql
CREATE INDEX idx_users_email ON users (email); CREATE INDEX idx_orders_user_date ON orders (user_id, created_at DESC);
Use for: equality, range queries, sorting. Column order matters in composite indexes: put equality columns first, then range/sort columns.
Partial Index (PostgreSQL)
sql
CREATE INDEX idx_orders_pending ON orders (created_at) WHERE status = 'pending';
Use when queries always filter on a specific condition. Dramatically smaller than full indexes.
GIN (PostgreSQL - arrays, JSONB, full-text)
sql
CREATE INDEX idx_products_tags ON products USING GIN (tags);
CREATE INDEX idx_docs_search ON documents USING GIN (to_tsvector('english', content));
GiST (PostgreSQL - spatial, range types)
sql
CREATE INDEX idx_locations_point ON locations USING GiST (coordinates); CREATE INDEX idx_events_period ON events USING GiST (tsrange(start_at, end_at));
Covering Index (index-only scans)
sql
-- PostgreSQL CREATE INDEX idx_users_email_name ON users (email) INCLUDE (name); -- MySQL CREATE INDEX idx_users_email_name ON users (email, name);
N+1 Query Detection
Symptom: 1 query to fetch parent + N queries for each child.
python
# BAD: N+1
users = db.query(User).all()
for user in users:
print(user.orders) # triggers query per user
# GOOD: eager load
users = db.query(User).options(joinedload(User.orders)).all()
javascript
// BAD: N+1
const users = await User.findAll();
for (const user of users) {
const orders = await Order.findAll({ where: { userId: user.id } });
}
// GOOD: batch load
const users = await User.findAll({ include: [Order] });
Detection: enable query logging, count queries per request. More than 10 queries for a single endpoint is a red flag.
Connection Pooling
code
Rule of thumb: pool_size = (core_count * 2) + disk_count Typical web app: 10-20 connections per app instance
PostgreSQL:
- •Use PgBouncer in transaction mode for serverless/high-connection scenarios
- •Set
idle_in_transaction_session_timeout = '30s' - •Monitor with
pg_stat_activity
MySQL:
- •Set
max_connectionsbased on available RAM (each connection uses ~10MB) - •Use ProxySQL for connection multiplexing
- •Monitor with
SHOW PROCESSLIST
Read Replicas
- •Route all
SELECTqueries to replicas - •Route all writes to primary
- •Account for replication lag (typically 10-100ms)
- •Never read-after-write from a replica; use primary for consistency-critical reads
- •Use connection-level routing, not query-level
python
# SQLAlchemy read replica routing
class RoutingSession(Session):
def get_bind(self, mapper=None, clause=None):
if self._flushing or self.is_modified():
return engines["primary"]
return engines["replica"]
Partition Strategies
Range Partitioning (time-series data)
sql
-- PostgreSQL
CREATE TABLE events (
id bigint GENERATED ALWAYS AS IDENTITY,
created_at timestamptz NOT NULL,
data jsonb
) PARTITION BY RANGE (created_at);
CREATE TABLE events_2025_q1 PARTITION OF events
FOR VALUES FROM ('2025-01-01') TO ('2025-04-01');
CREATE TABLE events_2025_q2 PARTITION OF events
FOR VALUES FROM ('2025-04-01') TO ('2025-07-01');
Hash Partitioning (even distribution)
sql
CREATE TABLE sessions (
id uuid PRIMARY KEY,
user_id bigint NOT NULL
) PARTITION BY HASH (user_id);
CREATE TABLE sessions_0 PARTITION OF sessions FOR VALUES WITH (MODULUS 4, REMAINDER 0);
CREATE TABLE sessions_1 PARTITION OF sessions FOR VALUES WITH (MODULUS 4, REMAINDER 1);
Partition when tables exceed 50-100GB or when you need to drop old data quickly.
Query Optimization Checklist
- •Run
EXPLAIN ANALYZEand read the plan - •Check for sequential scans on tables with >10K rows
- •Verify index usage (check
idx_scaninpg_stat_user_indexes) - •Look for implicit type casts that prevent index use
- •Replace
SELECT *with specific columns - •Add
LIMITto queries that only need a subset - •Use
EXISTSinstead ofCOUNT(*) > 0 - •Batch
INSERT/UPDATEoperations (500-1000 rows per batch) - •Avoid functions on indexed columns in
WHEREclauses - •Monitor slow query log (pg:
log_min_duration_statement = 100)
Dangerous Patterns
- •
LIKE '%term%'on unindexed columns (use full-text search instead) - •
ORDER BY RANDOM()(useTABLESAMPLEor application-level randomization) - •
SELECT DISTINCTmasking a join problem - •Missing
WHEREonUPDATE/DELETE(always verify withSELECTfirst) - •Long-running transactions holding locks
- •Using
OFFSETfor deep pagination (use keyset/cursor pagination instead)