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getsentry/django-perf-review

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django-perf-review

Django performance code review. Use when asked to "review Django performance", "find N+1 queries", "optimize Django", "check queryset performance", "database performance", "Django ORM issues", or audit Django code for performance problems.

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Django Performance Review

Review Django code for validated performance issues. Research the codebase to confirm issues before reporting. Report only what you can prove.

Review Approach

  1. Research first - Trace data flow, check for existing optimizations, verify data volume
  2. Validate before reporting - Pattern matching is not validation
  3. Zero findings is acceptable - Don't manufacture issues to appear thorough
  4. Severity must match impact - If you catch yourself writing "minor" in a CRITICAL finding, it's not critical. Downgrade or skip it.

Impact Categories

Issues are organized by impact. Focus on CRITICAL and HIGH - these cause real problems at scale.

Priority Category Impact
1 N+1 Queries CRITICAL - Multiplies with data, causes timeouts
2 Unbounded Querysets CRITICAL - Memory exhaustion, OOM kills
3 Missing Indexes HIGH - Full table scans on large tables
4 Write Loops HIGH - Lock contention, slow requests
5 Inefficient Patterns LOW - Rarely worth reporting

Priority 1: N+1 Queries (CRITICAL)

Impact: Each N+1 adds O(n) database round trips. 100 rows = 100 extra queries. 10,000 rows = timeout.

Validate by tracing: View → Queryset → Template/Serializer → Loop access

# PROBLEM: N+1 - each iteration queries profile
def user_list(request):
    users = User.objects.all()
    return render(request, 'users.html', {'users': users})

# Template:
# {% for user in users %}
#     {{ user.profile.bio }}  ← triggers query per user
# {% endfor %}

# SOLUTION: Prefetch in view
def user_list(request):
    users = User.objects.select_related('profile')
    return render(request, 'users.html', {'users': users})

Rule: Prefetch in serializers, not just views

DRF serializers accessing related fields cause N+1 if queryset isn't optimized.

# PROBLEM: SerializerMethodField queries per object
class UserSerializer(serializers.ModelSerializer):
    order_count = serializers.SerializerMethodField()

    def get_order_count(self, obj):
        return obj.orders.count()  # ← query per user

# SOLUTION: Annotate in viewset, access in serializer
class UserViewSet(viewsets.ModelViewSet):
    def get_queryset(self):
        return User.objects.annotate(order_count=Count('orders'))

class UserSerializer(serializers.ModelSerializer):
    order_count = serializers.IntegerField(read_only=True)

Rule: Model properties that query are dangerous in loops

# PROBLEM: Property triggers query when accessed
class User(models.Model):
    @property
    def recent_orders(self):
        return self.orders.filter(created__gte=last_week)[:5]

# Used in template loop = N+1

# SOLUTION: Use Prefetch with custom queryset, or annotate

Validation Checklist for N+1

  • Traced data flow from view to template/serializer
  • Confirmed related field is accessed inside a loop
  • Searched codebase for existing select_related/prefetch_related
  • Verified table has significant row count (1000+)
  • Confirmed this is a hot path (not admin, not rare action)

Priority 2: Unbounded Querysets (CRITICAL)

Impact: Loading entire tables exhausts memory. Large tables cause OOM kills and worker restarts.

Rule: Always paginate list endpoints

# PROBLEM: No pagination - loads all rows
class UserListView(ListView):
    model = User
    template_name = 'users.html'

# SOLUTION: Add pagination
class UserListView(ListView):
    model = User
    template_name = 'users.html'
    paginate_by = 25

Rule: Use iterator() for large batch processing

# PROBLEM: Loads all objects into memory at once
for user in User.objects.all():
    process(user)

# SOLUTION: Stream with iterator()
for user in User.objects.iterator(chunk_size=1000):
    process(user)

Rule: Never call list() on unbounded querysets

# PROBLEM: Forces full evaluation into memory
all_users = list(User.objects.all())

# SOLUTION: Keep as queryset, slice if needed
users = User.objects.all()[:100]

Validation Checklist for Unbounded Querysets

  • Table is large (10k+ rows) or will grow unbounded
  • No pagination class, paginate_by, or slicing
  • This runs on user-facing request (not background job with chunking)

Priority 3: Missing Indexes (HIGH)

Impact: Full table scans. Negligible on small tables, catastrophic on large ones.

Rule: Index fields used in WHERE clauses on large tables

# PROBLEM: Filtering on unindexed field
# User.objects.filter(email=email)  # full scan if no index

class User(models.Model):
    email = models.EmailField()  # ← no db_index

# SOLUTION: Add index
class User(models.Model):
    email = models.EmailField(db_index=True)

Rule: Index fields used in ORDER BY on large tables

# PROBLEM: Sorting requires full scan without index
Order.objects.order_by('-created')

# SOLUTION: Index the sort field
class Order(models.Model):
    created = models.DateTimeField(db_index=True)

Rule: Use composite indexes for common query patterns

class Order(models.Model):
    user = models.ForeignKey(User)
    status = models.CharField(max_length=20)
    created = models.DateTimeField()

    class Meta:
        indexes = [
            models.Index(fields=['user', 'status']),  # for filter(user=x, status=y)
            models.Index(fields=['status', '-created']),  # for filter(status=x).order_by('-created')
        ]

Validation Checklist for Missing Indexes

  • Table has 10k+ rows
  • Field is used in filter() or order_by() on hot path
  • Checked model - no db_index=True or Meta.indexes entry
  • Not a foreign key (already indexed automatically)

Priority 4: Write Loops (HIGH)

Impact: N database writes instead of 1. Lock contention. Slow requests.

Rule: Use bulk_create instead of create() in loops

# PROBLEM: N inserts, N round trips
for item in items:
    Model.objects.create(name=item['name'])

# SOLUTION: Single bulk insert
Model.objects.bulk_create([
    Model(name=item['name']) for item in items
])

Rule: Use update() or bulk_update instead of save() in loops

# PROBLEM: N updates
for obj in queryset:
    obj.status = 'done'
    obj.save()

# SOLUTION A: Single UPDATE statement (same value for all)
queryset.update(status='done')

# SOLUTION B: bulk_update (different values)
for obj in objects:
    obj.status = compute_status(obj)
Model.objects.bulk_update(objects, ['status'], batch_size=500)

Rule: Use delete() on queryset, not in loops

# PROBLEM: N deletes
for obj in queryset:
    obj.delete()

# SOLUTION: Single DELETE
queryset.delete()

Validation Checklist for Write Loops

  • Loop iterates over 100+ items (or unbounded)
  • Each iteration calls create(), save(), or delete()
  • This runs on user-facing request (not one-time migration script)

Priority 5: Inefficient Patterns (LOW)

Rarely worth reporting. Include only as minor notes if you're already reporting real issues.

Pattern: count() vs exists()

# Slightly suboptimal
if queryset.count() > 0:
    do_thing()

# Marginally better
if queryset.exists():
    do_thing()

Usually skip - difference is <1ms in most cases.

Pattern: len(queryset) vs count()

# Fetches all rows to count
if len(queryset) > 0:  # bad if queryset not yet evaluated

# Single COUNT query
if queryset.count() > 0:

Only flag if queryset is large and not already evaluated.

Pattern: get() in small loops

# N queries, but if N is small (< 20), often fine
for id in ids:
    obj = Model.objects.get(id=id)

Only flag if loop is large or this is in a very hot path.


Validation Requirements

Before reporting ANY issue:

  1. Trace the data flow - Follow queryset from creation to consumption
  2. Search for existing optimizations - Grep for select_related, prefetch_related, pagination
  3. Verify data volume - Check if table is actually large
  4. Confirm hot path - Trace call sites, verify this runs frequently
  5. Rule out mitigations - Check for caching, rate limiting

If you cannot validate all steps, do not report.


Output Format

## Django Performance Review: [File/Component Name]

### Summary
Validated issues: X (Y Critical, Z High)

### Findings

#### [PERF-001] N+1 Query in UserListView (CRITICAL)
**Location:** `views.py:45`

**Issue:** Related field `profile` accessed in template loop without prefetch.

**Validation:**
- Traced: UserListView → users queryset → user_list.html → `{{ user.profile.bio }}` in loop
- Searched codebase: no select_related('profile') found
- User table: 50k+ rows (verified in admin)
- Hot path: linked from homepage navigation

**Evidence:**
```python
def get_queryset(self):
    return User.objects.filter(active=True)  # no select_related

Fix:

def get_queryset(self):
    return User.objects.filter(active=True).select_related('profile')

If no issues found: "No performance issues identified after reviewing [files] and validating [what you checked]."

**Before submitting, sanity check each finding:**
- Does the severity match the actual impact? ("Minor inefficiency" ≠ CRITICAL)
- Is this a real performance issue or just a style preference?
- Would fixing this measurably improve performance?

If the answer to any is "no" - remove the finding.

---

## What NOT to Report

- Test files
- Admin-only views
- Management commands
- Migration files
- One-time scripts
- Code behind disabled feature flags
- Tables with <1000 rows that won't grow
- Patterns in cold paths (rarely executed code)
- Micro-optimizations (exists vs count, only/defer without evidence)

### False Positives to Avoid

**Queryset variable assignment is not an issue:**
```python
# This is FINE - no performance difference
projects_qs = Project.objects.filter(org=org)
projects = list(projects_qs)

# vs this - identical performance
projects = list(Project.objects.filter(org=org))

Querysets are lazy. Assigning to a variable doesn't execute anything.

Single query patterns are not N+1:

# This is ONE query, not N+1
projects = list(Project.objects.filter(org=org))

N+1 requires a loop that triggers additional queries. A single list() call is fine.

Missing select_related on single object fetch is not N+1:

# This is 2 queries, not N+1 - report as LOW at most
state = AutofixState.objects.filter(pr_id=pr_id).first()
project_id = state.request.project_id  # second query

N+1 requires a loop. A single object doing 2 queries instead of 1 can be reported as LOW if relevant, but never as CRITICAL/HIGH.

Style preferences are not performance issues: If your only suggestion is "combine these two lines" or "rename this variable" - that's style, not performance. Don't report it.

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Overall Score

88/100

Grade

A

Excellent

Safety

92

Quality

87

Clarity

88

Completeness

82

Summary

A structured guide for reviewing Django code for performance issues. The skill teaches an agent to validate real problems (N+1 queries, unbounded querysets, missing indexes, write loops) before reporting, with clear impact prioritization and evidence-based validation checklist. It emphasizes avoiding false positives and only reporting issues that measurably affect performance.

Detected Capabilities

file readgrep pattern searchbash executioncode analysisdata flow tracing

Trigger Keywords

Phrases that MCP clients use to match this skill to user intent.

review django performancefind n+1 queriesoptimize django ormcheck queryset performancedatabase performance issuesdjango index missingbulk operationsmemory exhaustion risk

Use Cases

  • Identify N+1 query problems in Django views and serializers
  • Find unbounded querysets that cause memory exhaustion
  • Detect missing database indexes on large tables
  • Spot bulk operation opportunities (create/update/delete loops)
  • Validate performance issues with data flow tracing before reporting findings

Quality Notes

  • Excellent validation-first philosophy — skill explicitly requires tracing data flow and confirming issues before reporting, reducing false positives
  • Severity mapping is well-calibrated — clear criteria for CRITICAL vs HIGH vs LOW prevents over-reporting minor style preferences
  • Comprehensive checklist for each issue type (N+1, unbounded, missing indexes, write loops) gives agent clear validation steps
  • Strong false positive guidance — skill explicitly teaches what NOT to report (test files, admin views, tables <1000 rows, micro-optimizations)
  • Output format is concrete with code examples showing both problem and solution patterns
  • Scope is tightly bounded to Django ORM patterns — does not attempt to cover unrelated performance areas
  • Well-structured priority system with clear impact statements helps agent focus on real problems
  • Practical validation requirements prevent unfounded claims ('cannot validate' = do not report)
Model: claude-haiku-4-5-20251001Analyzed: Jul 11, 2026

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