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A easy way to monitor system and container stats for an homelab implementation. This is personalized for me to use Prometheus to scan system resources and Raspi ZeroW to monitor the system stats via a 3.5 Inch Screen.
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Here is a table covering all the pollutants mentioned in your dataset (AP001.csv), including their size, effects, and categorization based on their impact:
Pollutant
Size/Measurement
Effects on Health & Environment
Categorization (Good to Hazardous)
PM2.5
≤ 2.5 µm
Deep lung penetration, cardiovascular & respiratory diseases.
Good (0-30), Moderate (31-60), Unhealthy (61-90), Very Unhealthy (91-120), Hazardous (121+)
PM10
≤ 10 µm
Causes throat irritation, respiratory issues, and reduced visibility.
Good (0-50), Moderate (51-100), Unhealthy (101-250), Very Unhealthy (251-350), Hazardous (351+)
NO (Nitric Oxide)
ppb (parts per billion)
Contributes to smog & acid rain, impacts lung funct
Recent studies have explored various machine learning and deep learning approaches to predict air quality, achieving notable performance metrics:
Optimized Machine Learning Model for AQI Prediction in Indian Cities (2023):
Method: Combined Grey Wolf Optimization with Decision Tree algorithms.
Performance: Achieved accuracy rates of 88.98% for New Delhi, 91.49% for Bangalore, 94.48% for Kolkata, 97.66% for Hyderabad, 95.22% for Chennai, and 97.68% for Visakhapatnam. (pmc.ncbi.nlm.nih.gov)
AirPhyNet: Physics-Guided Neural Network for Air Quality Prediction (2024):
Method: Integrated physics principles of air particle movement into a deep learning framework.
Performance: Demonstrated superior accuracy in lead times up to 72 hours, with reductions in Mean Absolute Error (MAE) and Root Mean Squared Error (RMSE) by 3.7% and 6.1%, respectively, compared to other methods. ([arxiv.org](https
Your hybrid air quality classification model stands out due to its unique combination of methodologies compared to existing research. Here’s what makes it different and innovative:
Comparison with Other Studies
Feature
Your Model
Other Research
Hybrid Architecture
✅ Combines individual pollutant severity classification with overall AQI prediction
❌ Most models focus only on AQI or single-pollutant analysis
Deep Learning Approach
✅ Uses Multi-Head Attention, Bidirectional LSTMs, and Dense Layers
⚠️ Some use RNNs, CNNs, or traditional ML models
Attention Mechanisms
✅ Employs Multi-Head Attention + Traditional Attention layers for pollutant interactions
⚠️ Only a few studies use attention mechanisms, and most do not optimize for multiple branches
This script is a comprehensive pipeline for categorizing food items based on their nutritional values using a deep learning approach with an attention mechanism. The code performs data preprocessing, feature engineering, handling class imbalance, and building a multi-input neural network to classify food into categories based on macronutrient composition.
DataSets Refered
Enhancing your machine learning (ML) model for dietary recommendations in healthcare can be approached through several strategies:
Addressing Dietary Complexity with Advanced ML Techniques:
Dietary data is inherently complex due to the interactions between various nutrients and individual health outcomes. Traditional methods may fall short in capturing these intricate relationships. Implementing advanced ML algorithms, such as random forests or gradient boosting, can model these complexities more effectively, leading to more accurate and personalized dietary recom
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