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ai-content-optimizer
// Intelligent content optimization framework for preparing data and content for AI/ML training pipelines with quality analysis, dataset optimization, and hyperparameter suggestions.
// Intelligent content optimization framework for preparing data and content for AI/ML training pipelines with quality analysis, dataset optimization, and hyperparameter suggestions.
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| name | AI Content Optimizer |
| type | platform-challenge |
| description | Intelligent content optimization framework for preparing data and content for AI/ML training pipelines with quality analysis, dataset optimization, and hyperparameter suggestions. |
| version | 1.0.0 |
| author | Skill Builder |
| complexity | advanced |
| estimated_time | 30-40 minutes |
| difficulty | high |
| tags | ["content-optimization","data-preparation","ml-training","dataset-analysis","hyperparameter-tuning","quality-analysis","platform-challenge"] |
| activation_triggers | [{"keyword":"optimize content"},{"keyword":"prepare dataset"},{"keyword":"analyze quality"},{"keyword":"suggest hyperparameters"},{"pattern":"content_analysis|dataset_optimization|training_data"},{"intent":"prepare_training_data"}] |
| parameters | [{"name":"content_input","type":"string","required":true,"description":"Content text to analyze or dataset to optimize","example":"Your training content here..."},{"name":"analysis_type","type":"string","required":true,"enum":["quality_analysis","dataset_optimization","training_extraction","hyperparameter_suggestion"],"description":"Type of optimization analysis to perform","example":"quality_analysis"},{"name":"dataset_stats","type":"object","required":false,"description":"Optional dataset statistics for analysis","example":{"samples":10000,"classes":5}},{"name":"optimization_level","type":"string","required":false,"enum":["basic","intermediate","advanced"],"default":"intermediate","description":"Level of optimization to apply","example":"intermediate"}] |
| capabilities | ["Content quality scoring (readability, completeness, clarity, consistency)","Dataset duplicate detection and removal","Class balancing for imbalanced datasets","Quality filtering with configurable thresholds","Training pair extraction (QA generation)","Hyperparameter optimization suggestions","Dataset statistics and analysis","Model configuration validation","Content structure evaluation","Tokenization for AI models"] |
| cache | true |
| composable | true |
An intelligent content optimization framework for preparing data and content for AI/ML training pipelines.
This skill provides content and dataset optimization tools:
from content_optimizer import ContentOptimizer
optimizer = ContentOptimizer()
# Optimize content
content = "Your training content here..."
analysis = optimizer.quality_analyzer.analyze_quality(content)
# Optimize dataset
dataset = [{"text": "...", "label": "A"}]
optimization = optimizer.dataset_optimizer.optimize_dataset(dataset)
# Suggest hyperparameters
config = optimizer.model_optimizer.suggest_hyperparameters(len(dataset))
from scripts.content_analyzer import ContentAnalyzer
analyzer = ContentAnalyzer()
quality = analyzer.analyze_quality(
"Your training content here with good structure and clarity"
)
print(f"Readability Score: {quality['readability_score']}")
print(f"Completeness: {quality['completeness_percentage']}%")
from scripts.dataset_optimizer import DatasetOptimizer
optimizer = DatasetOptimizer()
optimized = optimizer.optimize_dataset([
{"text": "sample 1", "label": "A"},
{"text": "sample 2", "label": "B"}
])
print(f"Duplicates removed: {optimized['duplicates_removed']}")
print(f"Class balance: {optimized['class_balance']}")
from scripts.training_data_extractor import TrainingExtractor
extractor = TrainingExtractor()
pairs = extractor.generate_qa_pairs("Your content text")
print(f"Generated pairs: {len(pairs['qa_pairs'])}")
from scripts.model_optimizer import ModelOptimizer
optimizer = ModelOptimizer()
config = optimizer.suggest_hyperparameters(
dataset_size=10000,
model_type="transformer"
)
print(f"Batch size: {config['batch_size']}")
print(f"Learning rate: {config['learning_rate']}")
All modules return structured JSON:
{
"analysis_type": "string",
"quality_score": 0-100,
"readability_score": number,
"completeness_percentage": number,
"duplicates_found": number,
"class_distribution": "object",
"hyperparameters": {
"batch_size": number,
"learning_rate": number,
"epochs": number
},
"recommendations": ["array of actionable items"],
"optimization_potential": "percentage"
}
| Level | Meaning | Impact | Action |
|---|---|---|---|
| CRITICAL | Severe quality issues affecting model training | High risk | Fix before training |
| HIGH | Significant imbalance or data quality issues | Moderate risk | Optimize within sprint |
| MEDIUM | Minor quality concerns or class imbalance | Low-moderate risk | Plan improvement |
| LOW | Minor optimization opportunity | Low risk | Consider for future |