Machine Learning+
ASO Keyword Dashboard
Tracking 77 keywords for Machine Learning+ in Apple App Store
Machine Learning+ tracks 77 keywords (1 keyword ranks; 76 need traction). Key metrics: 100% top-10 coverage, opportunity 70.2, difficulty 37.8, best rank 7.
Tracked keywords
77
1 ranked • 76 not ranking yet
Top 10 coverage
100%
Best rank 7 • Latest leader —
Avg opportunity
70.2
Top keyword: quiz
Avg difficulty
37.8
Lower scores indicate easier wins
Opportunity leaders
- 66.4
quiz
Opportunity: 73.0 • Difficulty: 40.8 • Rank —
Competitors: 83
- 65.1
vision
Opportunity: 73.0 • Difficulty: 40.8 • Rank —
Competitors: 87
- 66.7
exam
Opportunity: 73.0 • Difficulty: 40.2 • Rank —
Competitors: 25
- 68.2
professionals
Opportunity: 73.0 • Difficulty: 41.4 • Rank —
Competitors: 74
- 66.8
topics
Opportunity: 73.0 • Difficulty: 42.1 • Rank —
Competitors: 140
Unranked opportunities
quiz
Opportunity: 73.0 • Difficulty: 40.8 • Competitors: 83
vision
Opportunity: 73.0 • Difficulty: 40.8 • Competitors: 87
exam
Opportunity: 73.0 • Difficulty: 40.2 • Competitors: 25
professionals
Opportunity: 73.0 • Difficulty: 41.4 • Competitors: 74
topics
Opportunity: 73.0 • Difficulty: 42.1 • Competitors: 140
High competition keywords
designed
Total apps: 113,960 • Major competitors: 1,088
Latest rank: — • Difficulty: 51.4
data
Total apps: 97,683 • Major competitors: 1,018
Latest rank: — • Difficulty: 51.5
world
Total apps: 91,946 • Major competitors: 1,984
Latest rank: — • Difficulty: 52.8
fun
Total apps: 91,337 • Major competitors: 2,115
Latest rank: — • Difficulty: 52.6
whether
Total apps: 89,248 • Major competitors: 1,093
Latest rank: — • Difficulty: 51.4
All tracked keywords
Includes opportunity, difficulty, rankings and competitor benchmarks
| Major Competitors | |||||||
|---|---|---|---|---|---|---|---|
| machine learning | 71 | 100 | 34 | 54 1,657 competing apps Median installs: 350 Avg rating: 4.1 | 7 | 7 | 17 major competitor apps |
| fun | 67 | 100 | 53 | 82 91,337 competing apps Median installs: 600 Avg rating: 4.1 | — | — | 2,115 major competitor apps |
| quiz | 73 | 100 | 41 | 66 9,916 competing apps Median installs: 400 Avg rating: 4.0 | — | — | 83 major competitor apps |
| whether | 67 | 100 | 51 | 82 89,248 competing apps Median installs: 400 Avg rating: 4.2 | — | — | 1,093 major competitor apps |
| designed | 66 | 100 | 51 | 84 113,960 competing apps Median installs: 350 Avg rating: 4.2 | — | — | 1,088 major competitor apps |
| control | 68 | 100 | 50 | 81 72,821 competing apps Median installs: 450 Avg rating: 3.9 | — | — | 984 major competitor apps |
| boost | 72 | 100 | 44 | 71 18,025 competing apps Median installs: 650 Avg rating: 4.2 | — | — | 360 major competitor apps |
| vision | 73 | 100 | 41 | 65 8,227 competing apps Median installs: 368 Avg rating: 4.1 | — | — | 87 major competitor apps |
| students | 72 | 100 | 43 | 71 18,936 competing apps Median installs: 300 Avg rating: 4.0 | — | — | 76 major competitor apps |
| validation | 70 | 100 | 30 | 50 991 competing apps Median installs: 250 Avg rating: 3.9 | — | — | 4 major competitor apps |
| exam | 73 | 100 | 40 | 67 10,253 competing apps Median installs: 400 Avg rating: 4.0 | — | — | 25 major competitor apps |
| engaging | 71 | 100 | 46 | 73 25,585 competing apps Median installs: 500 Avg rating: 4.1 | — | — | 386 major competitor apps |
| comprehensive | 69 | 100 | 47 | 77 41,020 competing apps Median installs: 350 Avg rating: 4.1 | — | — | 268 major competitor apps |
| ai | 69 | 100 | 50 | 79 52,965 competing apps Median installs: 500 Avg rating: 4.1 | — | — | 610 major competitor apps |
| professionals | 73 | 100 | 41 | 68 12,639 competing apps Median installs: 250 Avg rating: 4.2 | — | — | 74 major competitor apps |
| topics | 73 | 100 | 42 | 67 10,464 competing apps Median installs: 450 Avg rating: 4.2 | — | — | 140 major competitor apps |
| feature | 70 | 100 | 49 | 75 33,242 competing apps Median installs: 500 Avg rating: 4.1 | — | — | 573 major competitor apps |
| companion | 70 | 100 | 45 | 74 27,817 competing apps Median installs: 350 Avg rating: 4.1 | — | — | 182 major competitor apps |
| probability | 70 | 100 | 31 | 51 1,095 competing apps Median installs: 532 Avg rating: 4.1 | — | — | 7 major competitor apps |
| world | 67 | 100 | 53 | 83 91,946 competing apps Median installs: 650 Avg rating: 4.1 | — | — | 1,984 major competitor apps |
| decision | 73 | 100 | 39 | 64 6,689 competing apps Median installs: 450 Avg rating: 4.1 | — | — | 61 major competitor apps |
| training | 70 | 100 | 46 | 74 30,145 competing apps Median installs: 400 Avg rating: 4.2 | — | — | 309 major competitor apps |
| data | 67 | 100 | 52 | 83 97,683 competing apps Median installs: 400 Avg rating: 4.0 | — | — | 1,018 major competitor apps |
| master | 70 | 100 | 47 | 74 28,929 competing apps Median installs: 650 Avg rating: 4.1 | — | — | 637 major competitor apps |
| based | 67 | 100 | 51 | 81 79,330 competing apps Median installs: 400 Avg rating: 4.1 | — | — | 1,056 major competitor apps |
App Description
Dive into the world of Machine Learning with our comprehensive quiz app, designed to boost your knowledge, confidence, and skills. Whether you're a student, practitioner, or just exploring the field, this app is your ultimate companion for learning and growth.
Topics Covered:
Introduction to Machine Learning:
-Definition, scope and applications in engineering domains
-Types of machine learning (supervised, unsupervised, reinforcement)
Mathematical Foundations:
-Linear algebra essentials
-Probability and statistics
-Calculus for optimization
Data Engineering for ML:
-Data collection, cleaning, and preprocessing
-Feature engineering and selection
-Handling missing and imbalanced data
Supervised Learning Algorithms:
-Regression models
-Classification techniques
-Evaluation metrics
Unsupervised Learning Algorithms:
-Clustering methods (k-means, DBSCAN, hierarchical)
-Dimensionality reduction (PCA, t-SNE)
-Applications in anomaly detection
Neural Networks and Deep Learning:
-Perceptrons and MLPs
-Activation functions
-Backpropagation
Advanced Deep Learning Architectures:
-Convolutional Neural Networks (CNNs)
-Recurrent Neural Networks (RNNs), LSTMs, GRUs
-Transformers and attention mechanisms
Reinforcement Learning:
-Markov decision processes
-Value-based methods (Q-learning)
-Policy-based methods
Model Training and Optimization:
-Gradient descent and variants (SGD, Adam, RMSProp)
-Hyperparameter tuning
-Regularization techniques
Model Evaluation and Validation:
-Cross-validation methods
-Bias-variance trade-off
-Overfitting and underfitting
ML Engineering and Deployment:
-Model pipelines and MLOps
-Deployment strategies (cloud, edge, embedded systems)
-CI/CD for ML
Scalable Machine Learning:
-Distributed training (Hadoop, Spark MLlib)
-Parallelization strategies
-GPU/TPU acceleration
Interpretability and Explainability:
-SHAP, LIME, feature importance
-Explainable AI in engineering applications
-Ethical considerations
ML for Engineering Applications:
-Predictive maintenance
-Computer vision for defect detection
-Control systems and optimization
Future Trends in Machine Learning:
-Federated learning
-Self-supervised learning
-AI safety and ethical AI engineering
Who is it for?
- Engineering students preparing for exam.
- Professionals brushing up on their kno