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‫المستخدمه‬ ‫التقنيات‬
‫الرقمية‬ ‫المكتبات‬ ‫لتطوير‬
Mohamed.rafie@ddl.ae ‫طرباي‬ ‫الرافعي‬
‫الرقمي‬ ‫المعرفة‬ ‫مركز‬–‫للمعرفة‬ ‫مكتوم‬ ‫آل‬ ‫راشد‬ ‫بن‬ ‫محمد‬ ‫مؤسسة‬
‫االساسية‬ ‫النقاط‬
‫التحتيه‬ ‫البنيه‬ ‫إلدارة‬ ‫المستخدمه‬ ‫التقنيات‬ ‫اهم‬
‫ال‬ ‫بإستخدام‬ ‫االرشيف‬ ‫لتطوير‬ ‫المستخدمة‬ ‫التقنيات‬ ‫اهم‬Block Chain
‫الصناعي‬ ‫الذكاء‬ ‫بإستخدام‬ ‫الخدمات‬ ‫لتطوير‬ ‫التقنيات‬ ‫اهم‬
1
2
3
‫ال‬ ‫بمساعدة‬ ‫التحتيه‬ ‫البنية‬ ‫تطوير‬Docker‫وال‬Kubernetes
‫برمجيات‬ ‫لتنصيب‬ ‫الحاجه‬ ‫بدون‬ ‫لخادم‬ ‫خادم‬ ‫من‬ ‫ونقلها‬ ‫ويب‬ ‫خادم‬ ‫اي‬ ‫علي‬ ‫مباشرة‬ ‫تشغيلها‬ ‫يمكن‬ ‫النظام‬ ‫من‬ ‫نسخه‬ ‫لتكوين‬ ‫يهدف‬ ‫الدوكر‬
‫الزيارات‬ ‫عدد‬ ‫حسب‬ ‫مرن‬ ‫بشكل‬ ‫تخفيضها‬ ‫او‬ ‫الخوادم‬ ‫عدد‬ ‫وزيادة‬ ‫الخوادم‬ ‫علي‬ ‫الضغط‬ ‫حجم‬ ‫مع‬ ‫للتعامل‬ ‫يهدف‬ ‫الكوبرنيتس‬
‫الدوكر‬ ‫عمل‬ ‫فكرة‬
‫الكوبرنيتس‬ ‫عمل‬ ‫فكرة‬
‫ال‬ ‫بإستخدام‬ ‫االرشيف‬ ‫خدمات‬ ‫تطوير‬Block Chain
‫لإلختراق‬ ‫قابله‬ ‫غير‬ ‫المؤسسات‬ ‫بين‬ ‫للتواصل‬ ‫اونالين‬ ‫بيانات‬ ‫قاعدة‬!
‫اورا‬ ‫لوجود‬ ‫الحاجه‬ ‫بدون‬ ‫الكتروني‬ ‫بشكل‬ ‫المؤسسات‬ ‫بين‬ ‫والتواصل‬ ‫الحكوميه‬ ‫االعتمادات‬ ‫لتحويل‬ ‫عليها‬ ‫االعتماد‬ ‫يمكن‬‫مختومه‬ ‫ق‬
‫للمؤسسه‬ ‫للذهاب‬ ‫الحاجه‬ ‫بدون‬ ‫اونالين‬ ‫العقاري‬ ‫الشهر‬ ‫تحويل‬ ‫امكانية‬
‫البيانات‬ ‫في‬ ‫التنقيب‬ ‫مفهوم‬Data Mining:‫والعالقات‬ ‫التوجهات‬ ‫إلكتشاف‬ ‫البيانات‬ ‫استخدام‬ ‫عملية‬ ‫هي‬
‫البيانات‬ ‫من‬ ‫المستخرجة‬ ‫المعلومات‬ ‫نوع‬
-Descriptive‫تم‬ ‫الذي‬ ‫ما‬
-Predictive‫المستقبل‬ ‫في‬ ‫يحدث‬ ‫ان‬ ‫المتوقع‬ ‫هو‬ ‫ما‬
‫المكتبات‬ ‫خدمات‬ ‫تطوير‬ ‫في‬ ‫الصناعي‬ ‫الذكاء‬ ‫استخدام‬
Association
‫البعض‬ ‫بعضها‬ ‫بجانب‬ ‫الرف‬ ‫علي‬ ‫ترتب‬ ‫ان‬ ‫يجب‬ ‫التي‬ ‫الكتب‬ ‫اهم‬ ‫هي‬ ‫ما‬
‫السابقه‬ ‫استعاراته‬ ‫علي‬ ‫بناء‬ ‫المستخدم‬ ‫علي‬ ‫كتب‬ ‫اقتراح‬
Time Series Analysis
‫لها‬ ‫والتجهيز‬ ‫الذروة‬ ‫اوقات‬ ‫توقع‬ ‫امكانية‬
Classification
‫جديد‬ ‫مستعير‬ ‫دخول‬ ‫عند‬...‫اهتماماته‬ ‫توقع‬ ‫امكانية‬
‫بيانات‬ ‫علي‬ ‫بناء‬ ‫توقع‬ ‫يمكن‬ ‫االلكترونيه‬ ‫الكتب‬ ‫لمتاجر‬ ‫بالنسبة‬،‫الشخص‬
،‫ال‬ ‫ام‬ ‫بالشراء‬ ‫سيقوم‬ ‫هل‬
Regression
‫المتوقعه‬ ‫مشترياته‬ ‫قيمة‬ ‫هي‬ ‫وما‬
Summarization
‫بشكل‬ ‫المحتوي‬ ‫عن‬ ‫سريعه‬ ‫نبذه‬ ‫واعطاء‬ ‫االلكترونيه‬ ‫الكتب‬ ‫تلخيص‬‫آلي‬
‫المكتبات‬ ‫مجال‬ ‫في‬ ‫الصناعي‬ ‫الذكاء‬ ‫بإستخدام‬ ‫عنها‬ ‫االجابه‬ ‫يمكن‬ ‫التي‬ ‫لالسئلة‬ ‫امثله‬
Machine Learning tasks categories
1. Classification
2. Regression
3. Clustering
4. Anomaly detection
5. Association
6. Recommendation
7. Dimensionality reduction
8. Computer Vision
9. Text Analytics
Common modeling techniques
Supervised Learning
• describe and distinguishes classes for future prediction (on new data) based on training data
• Classification & Prediction
• Common Methods: Decision Trees, Regression, Nearest Neighbours, Neural Networks
Unsupervised Learning
• Analyses data where labels are unknown to create groups/classes for objects that are similar to each other
within the group but dissimilar to objects in other clusters
• Cluster
• Common Methods: K-means, Hierarchical, Two-Step
Association
• Analyzing data to detect items that occur together
• Association
• Common Methods Apriori, CARMA
Classification [supervised learning]
• Classification is concerned with building models that separate data into distinct classes. These models are
built by inputting a set of training data for which the classes are pre-labelled in order for the algorithm to
learn from. The model is then used by inputting a different dataset for which the classes are withheld,
allowing the model to predict their class membership based on what it has learned from the training set.
Binary classification examples (divide data to two options only)
• spam filtering is a classification task
• Tumor diagnosis can be treated as a classification problem.
• determining credit risk using personal information such as income, outstanding debt
Multi-class classification examples
• handwritten recognition each character is a multi-class classification problem
• image recognition is a multi-class classification task
• Xbox Kinect360, which infers body parts and position
Regression [supervised learning]
• The goal is to predict a numerical label for an unlabeled observation
Regression algorithms: Linear regression, Decision trees
Examples
• home valuation
• Asset trading, and forecasting
• Sales or inventory forecasting
Anomaly Detection [supervised learning]
the goal is to find outliers, noise, deviations in a dataset
Anomaly detection applications
• In manufacturing, it is used for automatically finding defective products.
• In data centers, it is used for detecting bad systems.
• Websites use it for fraud detection.
• Detecting security attacks. Network traffic associated with a security attack is unlike normal
network traffic. Similarly, hacker activity on a machine will be different from a normal user
activity.
Clustering [unsupervised learning]
• The aim is to split a dataset into a specified number of clusters or segments.
• Elements in the same cluster are more similar to each other than to those in other clusters.
• Elbow diagram we use to find the best no of clusters
Clustering algorithms
1) k-means
• The number of clusters (k) must be given explicitly.
• Identify the best k cluster centers in an iterative manner
• Clusters are assumed to be spherical.
2) OPTICS /DBSCAN
• it is a density-based clustering algorithm. represents clusters by its nature
Example
• creating customer segments, which can be targeted with different marketing programs
Association [unsupervised learning]
• Association is most easily explained by introducing market basket analysis, a typical task for
which it is well-known.
• attempts to identify associations between the various items that have been chosen by a
particular shopper and placed in their market basket and assigns support and confidence
measures for comparison.
• The value of this lies in cross-marketing and customer behavior analysis.
Dimensionality Reduction [unsupervised learning]
• The goal in dimensionality reduction is to reduce the number of features in a dataset without
significantly impacting the predictive performance of a model and this will reduce the
computational complexity and cost of machine learning.
Recommendation [Reinforcement]
• The goal of a recommendation system is to recommend a product to a user based on past
behavior to determine user preferences.
• Unlike Association, Recommendation focus on user behavior and suggest according to this user
behavior.
• It is reinforcement because we not sure of result until user choose one of our recommendation, if
not, then our recommendation was not correct.
‫االسئلة‬ ‫على‬ ‫االجابة‬

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التقنيات المستخدمة لتطوير المكتبات

  • 1. ‫المستخدمه‬ ‫التقنيات‬ ‫الرقمية‬ ‫المكتبات‬ ‫لتطوير‬ Mohamed.rafie@ddl.ae ‫طرباي‬ ‫الرافعي‬ ‫الرقمي‬ ‫المعرفة‬ ‫مركز‬–‫للمعرفة‬ ‫مكتوم‬ ‫آل‬ ‫راشد‬ ‫بن‬ ‫محمد‬ ‫مؤسسة‬
  • 2. ‫االساسية‬ ‫النقاط‬ ‫التحتيه‬ ‫البنيه‬ ‫إلدارة‬ ‫المستخدمه‬ ‫التقنيات‬ ‫اهم‬ ‫ال‬ ‫بإستخدام‬ ‫االرشيف‬ ‫لتطوير‬ ‫المستخدمة‬ ‫التقنيات‬ ‫اهم‬Block Chain ‫الصناعي‬ ‫الذكاء‬ ‫بإستخدام‬ ‫الخدمات‬ ‫لتطوير‬ ‫التقنيات‬ ‫اهم‬ 1 2 3
  • 3. ‫ال‬ ‫بمساعدة‬ ‫التحتيه‬ ‫البنية‬ ‫تطوير‬Docker‫وال‬Kubernetes ‫برمجيات‬ ‫لتنصيب‬ ‫الحاجه‬ ‫بدون‬ ‫لخادم‬ ‫خادم‬ ‫من‬ ‫ونقلها‬ ‫ويب‬ ‫خادم‬ ‫اي‬ ‫علي‬ ‫مباشرة‬ ‫تشغيلها‬ ‫يمكن‬ ‫النظام‬ ‫من‬ ‫نسخه‬ ‫لتكوين‬ ‫يهدف‬ ‫الدوكر‬ ‫الزيارات‬ ‫عدد‬ ‫حسب‬ ‫مرن‬ ‫بشكل‬ ‫تخفيضها‬ ‫او‬ ‫الخوادم‬ ‫عدد‬ ‫وزيادة‬ ‫الخوادم‬ ‫علي‬ ‫الضغط‬ ‫حجم‬ ‫مع‬ ‫للتعامل‬ ‫يهدف‬ ‫الكوبرنيتس‬
  • 6. ‫ال‬ ‫بإستخدام‬ ‫االرشيف‬ ‫خدمات‬ ‫تطوير‬Block Chain ‫لإلختراق‬ ‫قابله‬ ‫غير‬ ‫المؤسسات‬ ‫بين‬ ‫للتواصل‬ ‫اونالين‬ ‫بيانات‬ ‫قاعدة‬! ‫اورا‬ ‫لوجود‬ ‫الحاجه‬ ‫بدون‬ ‫الكتروني‬ ‫بشكل‬ ‫المؤسسات‬ ‫بين‬ ‫والتواصل‬ ‫الحكوميه‬ ‫االعتمادات‬ ‫لتحويل‬ ‫عليها‬ ‫االعتماد‬ ‫يمكن‬‫مختومه‬ ‫ق‬ ‫للمؤسسه‬ ‫للذهاب‬ ‫الحاجه‬ ‫بدون‬ ‫اونالين‬ ‫العقاري‬ ‫الشهر‬ ‫تحويل‬ ‫امكانية‬
  • 7. ‫البيانات‬ ‫في‬ ‫التنقيب‬ ‫مفهوم‬Data Mining:‫والعالقات‬ ‫التوجهات‬ ‫إلكتشاف‬ ‫البيانات‬ ‫استخدام‬ ‫عملية‬ ‫هي‬ ‫البيانات‬ ‫من‬ ‫المستخرجة‬ ‫المعلومات‬ ‫نوع‬ -Descriptive‫تم‬ ‫الذي‬ ‫ما‬ -Predictive‫المستقبل‬ ‫في‬ ‫يحدث‬ ‫ان‬ ‫المتوقع‬ ‫هو‬ ‫ما‬ ‫المكتبات‬ ‫خدمات‬ ‫تطوير‬ ‫في‬ ‫الصناعي‬ ‫الذكاء‬ ‫استخدام‬
  • 8. Association ‫البعض‬ ‫بعضها‬ ‫بجانب‬ ‫الرف‬ ‫علي‬ ‫ترتب‬ ‫ان‬ ‫يجب‬ ‫التي‬ ‫الكتب‬ ‫اهم‬ ‫هي‬ ‫ما‬ ‫السابقه‬ ‫استعاراته‬ ‫علي‬ ‫بناء‬ ‫المستخدم‬ ‫علي‬ ‫كتب‬ ‫اقتراح‬ Time Series Analysis ‫لها‬ ‫والتجهيز‬ ‫الذروة‬ ‫اوقات‬ ‫توقع‬ ‫امكانية‬ Classification ‫جديد‬ ‫مستعير‬ ‫دخول‬ ‫عند‬...‫اهتماماته‬ ‫توقع‬ ‫امكانية‬ ‫بيانات‬ ‫علي‬ ‫بناء‬ ‫توقع‬ ‫يمكن‬ ‫االلكترونيه‬ ‫الكتب‬ ‫لمتاجر‬ ‫بالنسبة‬،‫الشخص‬ ،‫ال‬ ‫ام‬ ‫بالشراء‬ ‫سيقوم‬ ‫هل‬ Regression ‫المتوقعه‬ ‫مشترياته‬ ‫قيمة‬ ‫هي‬ ‫وما‬ Summarization ‫بشكل‬ ‫المحتوي‬ ‫عن‬ ‫سريعه‬ ‫نبذه‬ ‫واعطاء‬ ‫االلكترونيه‬ ‫الكتب‬ ‫تلخيص‬‫آلي‬ ‫المكتبات‬ ‫مجال‬ ‫في‬ ‫الصناعي‬ ‫الذكاء‬ ‫بإستخدام‬ ‫عنها‬ ‫االجابه‬ ‫يمكن‬ ‫التي‬ ‫لالسئلة‬ ‫امثله‬
  • 9. Machine Learning tasks categories 1. Classification 2. Regression 3. Clustering 4. Anomaly detection 5. Association 6. Recommendation 7. Dimensionality reduction 8. Computer Vision 9. Text Analytics
  • 10. Common modeling techniques Supervised Learning • describe and distinguishes classes for future prediction (on new data) based on training data • Classification & Prediction • Common Methods: Decision Trees, Regression, Nearest Neighbours, Neural Networks Unsupervised Learning • Analyses data where labels are unknown to create groups/classes for objects that are similar to each other within the group but dissimilar to objects in other clusters • Cluster • Common Methods: K-means, Hierarchical, Two-Step Association • Analyzing data to detect items that occur together • Association • Common Methods Apriori, CARMA
  • 11. Classification [supervised learning] • Classification is concerned with building models that separate data into distinct classes. These models are built by inputting a set of training data for which the classes are pre-labelled in order for the algorithm to learn from. The model is then used by inputting a different dataset for which the classes are withheld, allowing the model to predict their class membership based on what it has learned from the training set. Binary classification examples (divide data to two options only) • spam filtering is a classification task • Tumor diagnosis can be treated as a classification problem. • determining credit risk using personal information such as income, outstanding debt Multi-class classification examples • handwritten recognition each character is a multi-class classification problem • image recognition is a multi-class classification task • Xbox Kinect360, which infers body parts and position
  • 12. Regression [supervised learning] • The goal is to predict a numerical label for an unlabeled observation Regression algorithms: Linear regression, Decision trees Examples • home valuation • Asset trading, and forecasting • Sales or inventory forecasting
  • 13. Anomaly Detection [supervised learning] the goal is to find outliers, noise, deviations in a dataset Anomaly detection applications • In manufacturing, it is used for automatically finding defective products. • In data centers, it is used for detecting bad systems. • Websites use it for fraud detection. • Detecting security attacks. Network traffic associated with a security attack is unlike normal network traffic. Similarly, hacker activity on a machine will be different from a normal user activity.
  • 14. Clustering [unsupervised learning] • The aim is to split a dataset into a specified number of clusters or segments. • Elements in the same cluster are more similar to each other than to those in other clusters. • Elbow diagram we use to find the best no of clusters Clustering algorithms 1) k-means • The number of clusters (k) must be given explicitly. • Identify the best k cluster centers in an iterative manner • Clusters are assumed to be spherical. 2) OPTICS /DBSCAN • it is a density-based clustering algorithm. represents clusters by its nature Example • creating customer segments, which can be targeted with different marketing programs
  • 15. Association [unsupervised learning] • Association is most easily explained by introducing market basket analysis, a typical task for which it is well-known. • attempts to identify associations between the various items that have been chosen by a particular shopper and placed in their market basket and assigns support and confidence measures for comparison. • The value of this lies in cross-marketing and customer behavior analysis.
  • 16. Dimensionality Reduction [unsupervised learning] • The goal in dimensionality reduction is to reduce the number of features in a dataset without significantly impacting the predictive performance of a model and this will reduce the computational complexity and cost of machine learning.
  • 17. Recommendation [Reinforcement] • The goal of a recommendation system is to recommend a product to a user based on past behavior to determine user preferences. • Unlike Association, Recommendation focus on user behavior and suggest according to this user behavior. • It is reinforcement because we not sure of result until user choose one of our recommendation, if not, then our recommendation was not correct.