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Python and Machine Learning
Applications in Industry
Michał Krasoń
Data Scientist
AI Engineer
Stermedia.ai
INTELLIGENT
FACTORIES
AI DRIVEN
FACTORIES
By leveraging data, sensors, and
robots, U. S. manufacturing
output is 40% higher that two
decades ago.Due to the use of
data, sensors and robots,
industrial production is 40%
higher than 20 years ago
By incorporating advanced IoT
technologies and AI, factories can
generate trillions trillions by 2025
Inefficiencies and
waste result in billions
of dollars lost every
year
60 -70%
of wasted
materials
40%
higher output
$3.7
trillion
in new value
AI changes the production
TRADITIONAL
FACTORIES
why ML and AI is important now?
Key factors:
• Hardware
• Algorithms
• Data
• Networking
• Cloud
What is machine learning?
Artificial intelligence (AI)
Machine learning (ML)
Deep learning (DL)
Deals with processes in which the
computer solves tasks in a way that
imitates human behavior.
Artificial intelligence
(AI)
Machine learning (ML) Algorithms that allow computers to
learn from examples without being
explicitly programmed
Deep learning (DL) An ML subset that uses deep neural
networks as models
ML vs non-ML
‘Traditional’ programming
Machine learning
Output
Historical
output
New
data
Historical
data
Data
Program
(model)
Program
Output
machine learning: applications in industry
ML vs nie - MLML : applications in industry
Task:
Predicting the wear of diamond drill tips
ML : applications in industry
Task:
Reduction of nitrous oxide emissions from turbines
ML : applications in industry
Task:
Automatic fault detection - quality control on the line
ML : applications in industry
Task:
Anomaly detection on industrial cameras
ML : usage
Task:
Selection of the best candidates for the position
machine learning: types of algorithms
types of ML algorithms
Supervised Unsupervised Reinforcement learning
supervised learning
1. Regression:
a. Linear regression
b. Gradient boosted decision tree (GBDT)
2. Classification:
a. K nearest neighbours
b. SVM
unsupervised learning
1. Clustering
2. Dimensionality reduction
deep learning
1. A lot of complex data (texts, images)
2. Neural networks
a. "Classic" deep networks
b. Convolutional - image recognition (CV)
c. Recurrent - Natural Language Processing (NLP)
why Python?
Less code to achieve results
A lot of ML-dedicated libraries
Readable, structured code
Easy prototyping
Production - ready
case study: demand prediction
cs: prediction of demand
Situation:
production hall, we want to predict the use of additional parts on individual days
Data
the need for elements and consumption of additional parts in the last 4 months, the need for elements in the future
Problem:
few dates, many elements affecting consumption
krok 1: wybór klasy modeli, train- test split
1. Too little data to use advanced ML algorithms
2. Dependence is intuitively linear - we use linear models
The teaching part The test part
step 2: limiting the number of variables
Too many elements make modeling difficult. We do feature selection:
1. Study of correlation with the target variable
2. Dimensionality reduction, grouping of elements
3. Use of automatic methods of eliminating features
step 3: choice of model, prediction
1. We adjust models to learning data, we choose the best based on cross validation
2. We perform the prediction on the test set
Michał Krasoń
Data Scientist
e-mail: michal.krason@stermedia.ai
Linkedin: https://www.linkedin.com/in/michalkrason
www.stermedia.ai
Thank you :)

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Python and Machine Learning Applications in Industry

  • 1. Python and Machine Learning Applications in Industry Michał Krasoń Data Scientist AI Engineer Stermedia.ai
  • 2. INTELLIGENT FACTORIES AI DRIVEN FACTORIES By leveraging data, sensors, and robots, U. S. manufacturing output is 40% higher that two decades ago.Due to the use of data, sensors and robots, industrial production is 40% higher than 20 years ago By incorporating advanced IoT technologies and AI, factories can generate trillions trillions by 2025 Inefficiencies and waste result in billions of dollars lost every year 60 -70% of wasted materials 40% higher output $3.7 trillion in new value AI changes the production TRADITIONAL FACTORIES
  • 3. why ML and AI is important now? Key factors: • Hardware • Algorithms • Data • Networking • Cloud
  • 4. What is machine learning? Artificial intelligence (AI) Machine learning (ML) Deep learning (DL) Deals with processes in which the computer solves tasks in a way that imitates human behavior. Artificial intelligence (AI) Machine learning (ML) Algorithms that allow computers to learn from examples without being explicitly programmed Deep learning (DL) An ML subset that uses deep neural networks as models
  • 5. ML vs non-ML ‘Traditional’ programming Machine learning Output Historical output New data Historical data Data Program (model) Program Output
  • 7. ML vs nie - MLML : applications in industry Task: Predicting the wear of diamond drill tips
  • 8. ML : applications in industry Task: Reduction of nitrous oxide emissions from turbines
  • 9. ML : applications in industry Task: Automatic fault detection - quality control on the line
  • 10. ML : applications in industry Task: Anomaly detection on industrial cameras
  • 11. ML : usage Task: Selection of the best candidates for the position
  • 12. machine learning: types of algorithms
  • 13. types of ML algorithms Supervised Unsupervised Reinforcement learning
  • 14. supervised learning 1. Regression: a. Linear regression b. Gradient boosted decision tree (GBDT) 2. Classification: a. K nearest neighbours b. SVM
  • 15. unsupervised learning 1. Clustering 2. Dimensionality reduction
  • 16. deep learning 1. A lot of complex data (texts, images) 2. Neural networks a. "Classic" deep networks b. Convolutional - image recognition (CV) c. Recurrent - Natural Language Processing (NLP)
  • 17. why Python? Less code to achieve results A lot of ML-dedicated libraries Readable, structured code Easy prototyping Production - ready
  • 18. case study: demand prediction
  • 19. cs: prediction of demand Situation: production hall, we want to predict the use of additional parts on individual days Data the need for elements and consumption of additional parts in the last 4 months, the need for elements in the future Problem: few dates, many elements affecting consumption
  • 20. krok 1: wybór klasy modeli, train- test split 1. Too little data to use advanced ML algorithms 2. Dependence is intuitively linear - we use linear models The teaching part The test part
  • 21. step 2: limiting the number of variables Too many elements make modeling difficult. We do feature selection: 1. Study of correlation with the target variable 2. Dimensionality reduction, grouping of elements 3. Use of automatic methods of eliminating features
  • 22. step 3: choice of model, prediction 1. We adjust models to learning data, we choose the best based on cross validation 2. We perform the prediction on the test set
  • 23. Michał Krasoń Data Scientist e-mail: michal.krason@stermedia.ai Linkedin: https://www.linkedin.com/in/michalkrason www.stermedia.ai Thank you :)