Iterative Retrieval Pattern
Solves the "context problem" in multi-agent workflows where subagents don't know what context they need until they start working.
The Problem
Subagents are spawned with limited context. They don't know:
- •Which files contain relevant code
- •What patterns exist in the codebase
- •What terminology the project uses
Standard approaches fail:
- •Send everything: Exceeds context limits
- •Send nothing: Agent lacks critical information
- •Guess what's needed: Often wrong
The Solution: Iterative Retrieval
A 4-phase loop that progressively refines context:
code
┌─────────────────────────────────────────────┐ │ │ │ ┌──────────┐ ┌──────────┐ │ │ │ DISPATCH │─────▶│ EVALUATE │ │ │ └──────────┘ └──────────┘ │ │ ▲ │ │ │ │ ▼ │ │ ┌──────────┐ ┌──────────┐ │ │ │ LOOP │◀─────│ REFINE │ │ │ └──────────┘ └──────────┘ │ │ │ │ Max 3 cycles, then proceed │ └─────────────────────────────────────────────┘
Phase 1: DISPATCH
Initial broad query to gather candidate files:
javascript
// Start with high-level intent
const initialQuery = {
patterns: ['src/**/*.ts', 'lib/**/*.ts'],
keywords: ['authentication', 'user', 'session'],
excludes: ['*.test.ts', '*.spec.ts']
};
// Dispatch to retrieval agent
const candidates = await retrieveFiles(initialQuery);
Phase 2: EVALUATE
Assess retrieved content for relevance:
javascript
function evaluateRelevance(files, task) {
return files.map(file => ({
path: file.path,
relevance: scoreRelevance(file.content, task),
reason: explainRelevance(file.content, task),
missingContext: identifyGaps(file.content, task)
}));
}
Scoring criteria:
- •High (0.8-1.0): Directly implements target functionality
- •Medium (0.5-0.7): Contains related patterns or types
- •Low (0.2-0.4): Tangentially related
- •None (0-0.2): Not relevant, exclude
Phase 3: REFINE
Update search criteria based on evaluation:
javascript
function refineQuery(evaluation, previousQuery) {
return {
// Add new patterns discovered in high-relevance files
patterns: [...previousQuery.patterns, ...extractPatterns(evaluation)],
// Add terminology found in codebase
keywords: [...previousQuery.keywords, ...extractKeywords(evaluation)],
// Exclude confirmed irrelevant paths
excludes: [...previousQuery.excludes, ...evaluation
.filter(e => e.relevance < 0.2)
.map(e => e.path)
],
// Target specific gaps
focusAreas: evaluation
.flatMap(e => e.missingContext)
.filter(unique)
};
}
Phase 4: LOOP
Repeat with refined criteria (max 3 cycles):
javascript
async function iterativeRetrieve(task, maxCycles = 3) {
let query = createInitialQuery(task);
let bestContext = [];
for (let cycle = 0; cycle < maxCycles; cycle++) {
const candidates = await retrieveFiles(query);
const evaluation = evaluateRelevance(candidates, task);
// Check if we have sufficient context
const highRelevance = evaluation.filter(e => e.relevance >= 0.7);
if (highRelevance.length >= 3 && !hasCriticalGaps(evaluation)) {
return highRelevance;
}
// Refine and continue
query = refineQuery(evaluation, query);
bestContext = mergeContext(bestContext, highRelevance);
}
return bestContext;
}
Practical Examples
Example 1: Bug Fix Context
code
Task: "Fix the authentication token expiry bug" Cycle 1: DISPATCH: Search for "token", "auth", "expiry" in src/** EVALUATE: Found auth.ts (0.9), tokens.ts (0.8), user.ts (0.3) REFINE: Add "refresh", "jwt" keywords; exclude user.ts Cycle 2: DISPATCH: Search refined terms EVALUATE: Found session-manager.ts (0.95), jwt-utils.ts (0.85) REFINE: Sufficient context (2 high-relevance files) Result: auth.ts, tokens.ts, session-manager.ts, jwt-utils.ts
Example 2: Feature Implementation
code
Task: "Add rate limiting to API endpoints" Cycle 1: DISPATCH: Search "rate", "limit", "api" in routes/** EVALUATE: No matches - codebase uses "throttle" terminology REFINE: Add "throttle", "middleware" keywords Cycle 2: DISPATCH: Search refined terms EVALUATE: Found throttle.ts (0.9), middleware/index.ts (0.7) REFINE: Need router patterns Cycle 3: DISPATCH: Search "router", "express" patterns EVALUATE: Found router-setup.ts (0.8) REFINE: Sufficient context Result: throttle.ts, middleware/index.ts, router-setup.ts
Integration with Agents
Use in agent prompts:
markdown
When retrieving context for this task: 1. Start with broad keyword search 2. Evaluate each file's relevance (0-1 scale) 3. Identify what context is still missing 4. Refine search criteria and repeat (max 3 cycles) 5. Return files with relevance >= 0.7
Best Practices
- •Start broad, narrow progressively - Don't over-specify initial queries
- •Learn codebase terminology - First cycle often reveals naming conventions
- •Track what's missing - Explicit gap identification drives refinement
- •Stop at "good enough" - 3 high-relevance files beats 10 mediocre ones
- •Exclude confidently - Low-relevance files won't become relevant