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- 2. SigOpt optimizes... ● Machine Learning ● AI / Deep Learning ● Simulations OPTIMIZATION AS A SERVICE
- 3. SigOpt optimizes... ● Machine Learning ● AI / Deep Learning ● Simulations Resulting in... ● Better Results ● Faster Development ● Cheaper, Faster Tuning OPTIMIZATION AS A SERVICE
- 5. TUNABLE PARAMETERS IN DEEP LEARNING
- 6. TUNABLE PARAMETERS IN DEEP LEARNING
- 7. STANDARD TUNING METHODS Parameter Configuration ? Grid Search Random Search Manual Search - Architecture - Learning Rates - Window sizes - Transformations ML / AI Model Testing Data Cross Validation Training Data
- 8. OPTIMIZATION FEEDBACK LOOP Objective Metric Better Results REST API New configurations ML / AI Model Testing Data Cross Validation Training Data
- 9. SIMPLIFIED OPTIMIZATION Client Libraries ● Python ● Java ● R ● Matlab ● And more... Framework Integrations ● TensorFlow ● scikit-learn ● xgboost ● Keras ● Neon ● And more... Live Demo
- 10. COMPARATIVE PERFORMANCE ● Better Results, Faster and Cheaper Quickly get the most out of your models with our proven, peer-reviewed ensemble of Bayesian and Global Optimization Methods ○ A Stratified Analysis of Bayesian Optimization Methods (ICML 2016) ○ Evaluation System for a Bayesian Optimization Service (ICML 2016) ○ Interactive Preference Learning of Utility Functions for Multi-Objective Optimization (NIPS 2016) ○ And more... ● Fully Featured Tune any model in any pipeline ○ Scales to 100 continuous, integer, and categorical parameters and many thousands of evaluations ○ Parallel tuning support across any number of models ○ Simple integrations with many languages and libraries ○ Powerful dashboards for introspecting your models and optimization ○ Advanced features like multi-objective optimization, failure region support, and more ● Secure Black Box Optimization Your data and models never leave your system
- 11. SIGOPT CUSTOMERS SigOpt has successfully engaged with globally recognized leaders in insurance, credit card, algorithmic trading and consumer packaged goods industries. Use cases include: ● Trading Strategies ● Complex Models ● Simulations / Backtests ● Machine Learning and AI Select Customers
- 12. Contact us to set up an evaluation today sales@sigopt.com