deepgram-cost-tuning
Optimize Deepgram costs and usage for budget-conscious deployments. Use when reducing transcription costs, implementing usage controls, or optimizing pricing tier utilization. Trigger: "deepgram cost", "reduce deepgram spending", "deepgram pricing", "deepgram budget", "optimize deepgram usage", "deepgram billing".
Best use case
deepgram-cost-tuning is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
Optimize Deepgram costs and usage for budget-conscious deployments. Use when reducing transcription costs, implementing usage controls, or optimizing pricing tier utilization. Trigger: "deepgram cost", "reduce deepgram spending", "deepgram pricing", "deepgram budget", "optimize deepgram usage", "deepgram billing".
Teams using deepgram-cost-tuning should expect a more consistent output, faster repeated execution, less prompt rewriting.
When to use this skill
- You want a reusable workflow that can be run more than once with consistent structure.
When not to use this skill
- You only need a quick one-off answer and do not need a reusable workflow.
- You cannot install or maintain the underlying files, dependencies, or repository context.
Installation
Claude Code / Cursor / Codex
Manual Installation
- Download SKILL.md from GitHub
- Place it in
.claude/skills/deepgram-cost-tuning/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How deepgram-cost-tuning Compares
| Feature / Agent | deepgram-cost-tuning | Standard Approach |
|---|---|---|
| Platform Support | Not specified | Limited / Varies |
| Context Awareness | High | Baseline |
| Installation Complexity | Unknown | N/A |
Frequently Asked Questions
What does this skill do?
Optimize Deepgram costs and usage for budget-conscious deployments. Use when reducing transcription costs, implementing usage controls, or optimizing pricing tier utilization. Trigger: "deepgram cost", "reduce deepgram spending", "deepgram pricing", "deepgram budget", "optimize deepgram usage", "deepgram billing".
Where can I find the source code?
You can find the source code on GitHub using the link provided at the top of the page.
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SKILL.md Source
# Deepgram Cost Tuning
## Overview
Optimize Deepgram API costs through smart model selection, audio preprocessing to reduce billable minutes, usage monitoring via the Deepgram API, budget guardrails, and feature-aware cost estimation. Deepgram bills per audio minute processed.
## Deepgram Pricing (2026)
| Product | Model | Price/Minute | Notes |
|---------|-------|-------------|-------|
| STT (Batch) | Nova-3 | $0.0043 | Best accuracy |
| STT (Batch) | Nova-2 | $0.0043 | Proven stable |
| STT (Streaming) | Nova-3 | $0.0059 | Real-time |
| STT (Streaming) | Nova-2 | $0.0059 | Real-time |
| STT (Batch) | Base | $0.0048 | Fastest |
| STT (Batch) | Whisper | $0.0048 | Multilingual |
| TTS | Aura-2 | Pay-per-character | See TTS pricing |
| Intelligence | Summarize/Topics/Sentiment | Included with STT | No extra cost |
**Add-on costs:**
- Diarization: +$0.0044/min
- Multichannel: billed per channel
## Instructions
### Step 1: Budget-Aware Transcription Service
```typescript
import { createClient } from '@deepgram/sdk';
interface BudgetConfig {
monthlyLimitUsd: number;
warningThreshold: number; // 0.0-1.0 (e.g., 0.8 = warn at 80%)
costPerMinute: number; // Base STT cost
}
class BudgetAwareTranscriber {
private client: ReturnType<typeof createClient>;
private config: BudgetConfig;
private monthlySpendUsd = 0;
private monthlyMinutes = 0;
constructor(apiKey: string, config: BudgetConfig) {
this.client = createClient(apiKey);
this.config = config;
}
async transcribe(source: any, options: any) {
// Estimate cost before transcription
const estimatedCost = this.estimateCost(options);
const projected = this.monthlySpendUsd + estimatedCost;
if (projected > this.config.monthlyLimitUsd) {
throw new Error(
`Budget exceeded: $${this.monthlySpendUsd.toFixed(2)} spent, ` +
`$${this.config.monthlyLimitUsd} limit`
);
}
if (projected > this.config.monthlyLimitUsd * this.config.warningThreshold) {
console.warn(
`Budget warning: ${((projected / this.config.monthlyLimitUsd) * 100).toFixed(0)}% ` +
`of $${this.config.monthlyLimitUsd} limit`
);
}
const { result, error } = await this.client.listen.prerecorded.transcribeUrl(
source, options
);
if (error) throw error;
// Track actual usage
const duration = result.metadata.duration / 60; // Convert to minutes
const actualCost = this.calculateCost(duration, options);
this.monthlyMinutes += duration;
this.monthlySpendUsd += actualCost;
return result;
}
private estimateCost(options: any): number {
// Conservative estimate — assume 5 minutes per file
return this.calculateCost(5, options);
}
private calculateCost(minutes: number, options: any): number {
let cost = minutes * this.config.costPerMinute;
if (options.diarize) cost += minutes * 0.0044; // Diarization add-on
return cost;
}
getUsageSummary() {
return {
minutesUsed: this.monthlyMinutes.toFixed(1),
spentUsd: this.monthlySpendUsd.toFixed(4),
remainingUsd: (this.config.monthlyLimitUsd - this.monthlySpendUsd).toFixed(4),
utilizationPercent: ((this.monthlySpendUsd / this.config.monthlyLimitUsd) * 100).toFixed(1),
};
}
}
// Usage:
const transcriber = new BudgetAwareTranscriber(process.env.DEEPGRAM_API_KEY!, {
monthlyLimitUsd: 100,
warningThreshold: 0.8,
costPerMinute: 0.0043,
});
```
### Step 2: Reduce Billable Minutes with Audio Preprocessing
```bash
# Remove silence — can save 10-40% of billable minutes
ffmpeg -i input.wav \
-af "silenceremove=stop_periods=-1:stop_duration=0.5:stop_threshold=-30dB" \
-ar 16000 -ac 1 -acodec pcm_s16le \
trimmed.wav
# Speed up audio (1.25x) — saves 20% of billable minutes
# Deepgram handles slightly sped-up audio well
ffmpeg -i input.wav \
-filter:a "atempo=1.25" \
-ar 16000 -ac 1 -acodec pcm_s16le \
faster.wav
```
```typescript
import { execSync } from 'child_process';
function measureSavings(inputPath: string) {
// Get original duration
const origDuration = parseFloat(
execSync(`ffprobe -v quiet -show_entries format=duration -of csv=p=0 "${inputPath}"`)
.toString().trim()
);
// Remove silence
execSync(`ffmpeg -y -i "${inputPath}" \
-af "silenceremove=stop_periods=-1:stop_duration=0.5:stop_threshold=-30dB" \
-ar 16000 -ac 1 -acodec pcm_s16le /tmp/trimmed.wav 2>/dev/null`);
const trimmedDuration = parseFloat(
execSync(`ffprobe -v quiet -show_entries format=duration -of csv=p=0 /tmp/trimmed.wav`)
.toString().trim()
);
const savings = ((1 - trimmedDuration / origDuration) * 100).toFixed(1);
const costSaved = ((origDuration - trimmedDuration) / 60 * 0.0043).toFixed(4);
console.log(`Original: ${origDuration.toFixed(1)}s`);
console.log(`Trimmed: ${trimmedDuration.toFixed(1)}s`);
console.log(`Savings: ${savings}% (${costSaved}/file at $0.0043/min)`);
}
```
### Step 3: Query Deepgram Usage API
```typescript
import { createClient } from '@deepgram/sdk';
async function getUsageDashboard(projectId: string) {
const client = createClient(process.env.DEEPGRAM_API_KEY!);
// Get usage for current month
const now = new Date();
const monthStart = new Date(now.getFullYear(), now.getMonth(), 1);
const { result } = await client.manage.getUsage(projectId, {
start: monthStart.toISOString(),
end: now.toISOString(),
});
// Aggregate by model
const byModel: Record<string, { minutes: number; cost: number }> = {};
for (const entry of (result as any).results ?? []) {
const model = entry.model ?? 'unknown';
if (!byModel[model]) byModel[model] = { minutes: 0, cost: 0 };
byModel[model].minutes += (entry.hours ?? 0) * 60 + (entry.minutes ?? 0);
}
console.log('=== Monthly Usage ===');
for (const [model, data] of Object.entries(byModel)) {
const cost = data.minutes * 0.0043;
console.log(`${model}: ${data.minutes.toFixed(1)} min ($${cost.toFixed(2)})`);
}
// Monthly projection
const dayOfMonth = now.getDate();
const daysInMonth = new Date(now.getFullYear(), now.getMonth() + 1, 0).getDate();
const totalMinutes = Object.values(byModel).reduce((s, d) => s + d.minutes, 0);
const projectedMinutes = (totalMinutes / dayOfMonth) * daysInMonth;
const projectedCost = projectedMinutes * 0.0043;
console.log(`\nProjected monthly: ${projectedMinutes.toFixed(0)} min ($${projectedCost.toFixed(2)})`);
}
```
### Step 4: Cost-Optimized Model Selection
```typescript
function recommendModel(params: {
qualityNeeded: 'high' | 'medium' | 'low';
isRealtime: boolean;
languages: string[];
budgetPerMinute?: number;
}): { model: string; pricePerMin: number; reason: string } {
const { qualityNeeded, isRealtime, languages, budgetPerMinute } = params;
// Multilingual -> Whisper
if (languages.length > 1 || !['en', 'es', 'fr', 'de'].includes(languages[0])) {
return { model: 'whisper-large', pricePerMin: 0.0048, reason: 'Multilingual support' };
}
// Budget constraint
if (budgetPerMinute !== undefined && budgetPerMinute < 0.005) {
return { model: 'nova-2', pricePerMin: 0.0043, reason: 'Best price per quality' };
}
// Real-time -> Nova-3 (streaming price $0.0059/min)
if (isRealtime) {
return { model: 'nova-3', pricePerMin: 0.0059, reason: 'Best real-time accuracy' };
}
// Quality based
switch (qualityNeeded) {
case 'high':
return { model: 'nova-3', pricePerMin: 0.0043, reason: 'Highest accuracy' };
case 'medium':
return { model: 'nova-2', pricePerMin: 0.0043, reason: 'Good accuracy, proven' };
case 'low':
return { model: 'base', pricePerMin: 0.0048, reason: 'Fastest processing' };
}
}
```
### Step 5: Feature Cost Awareness
```typescript
// Feature cost breakdown per minute of audio
const featureCosts: Record<string, { cost: number; description: string }> = {
// Free features (included with STT)
smart_format: { cost: 0, description: 'Punctuation + paragraphs + numerals' },
punctuate: { cost: 0, description: 'Punctuation only' },
paragraphs: { cost: 0, description: 'Paragraph formatting' },
summarize: { cost: 0, description: 'AI summary (included with STT)' },
detect_topics: { cost: 0, description: 'Topic detection (included)' },
sentiment: { cost: 0, description: 'Sentiment analysis (included)' },
intents: { cost: 0, description: 'Intent recognition (included)' },
redact: { cost: 0, description: 'PII redaction (included)' },
// Paid add-ons
diarize: { cost: 0.0044, description: 'Speaker identification (+$0.0044/min)' },
multichannel: { cost: 0.0043, description: 'Per-channel billing (1x STT cost per channel)' },
};
function estimateJobCost(params: {
durationMinutes: number;
model: string;
features: string[];
channels?: number;
}): number {
const baseCost = params.durationMinutes * 0.0043;
let addOnCost = 0;
for (const feature of params.features) {
addOnCost += (featureCosts[feature]?.cost ?? 0) * params.durationMinutes;
}
// Multichannel: billed per channel
const channelMultiplier = params.channels ?? 1;
return (baseCost + addOnCost) * channelMultiplier;
}
// Example: 60 min meeting with diarization
// estimateJobCost({ durationMinutes: 60, model: 'nova-3', features: ['diarize'] })
// = (60 * 0.0043) + (60 * 0.0044) = $0.258 + $0.264 = $0.522
```
## Output
- Budget-aware transcription with auto-blocking
- Audio preprocessing to reduce billable minutes
- Usage dashboard via Deepgram API
- Cost-optimized model recommendation
- Feature cost breakdown with estimation
## Cost Optimization Quick Wins
| Strategy | Savings | Effort |
|----------|---------|--------|
| Remove silence from audio | 10-40% | Low (ffmpeg one-liner) |
| Disable diarization when not needed | ~50% | Low (remove option) |
| Use callback for long files | Indirect (no timeouts) | Low |
| Cache repeated transcriptions | 20-60% | Medium (Redis) |
| Speed up audio 1.25x | 20% | Low (ffmpeg) |
| Use Nova-2 instead of Nova-3 | 0% (same price) | None |
| Batch pre-recorded vs streaming | 37% ($0.0043 vs $0.0059) | Medium |
## Error Handling
| Issue | Cause | Solution |
|-------|-------|----------|
| Budget exceeded | No controls | Enable budget check before transcription |
| Unexpected charges | Diarization always on | Make diarization opt-in |
| Usage API empty | Wrong project ID | Get ID from `getProjects()` |
| Cost spike | Batch job without limits | Set concurrency limits + budget cap |
## Resources
- [Deepgram Pricing](https://deepgram.com/pricing)
- [Usage API](https://developers.deepgram.com/reference/get-usage)
- [Cost Optimization Guide](https://developers.deepgram.com/docs/cost-optimization)Related Skills
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