This presentation attempts to explain some of the concepts used when describing data science, machine learning, and deep learning. IT also describes data science as a process, rather than as a set of specific tools and services.
This document summarizes a seminar presentation on machine learning. It defines machine learning as applications of artificial intelligence that allow computers to learn automatically from data without being explicitly programmed. It discusses three main algorithms of machine learning: supervised learning, unsupervised learning, and reinforcement learning. Supervised learning uses labelled training data, unsupervised learning finds patterns in unlabelled data, and reinforcement learning involves learning through rewards and punishments. Examples applications discussed include data mining, natural language processing, image recognition, and expert systems.
Currently hundreds of tools are promising to make artificial intelligence accessible to the masses. Tools like DataRobot, H20 Driverless AI, Amazon SageMaker or Microsoft Azure Machine Learning Studio.
These tools promise to accelerate the time-to-value of data science projects by simplifying model building.
In the workshop we will approach the AI Topic head on!
What is AI? What can AI do today? What do I need to start my own project?
We do all this using Microsoft's Machine Learning Studio.
Trainer: Philipp von Loringhoven - Chef, Designer, Developer, Markeeter - Data Nerd!
He has acquired a lot of expertise in marketing, business intelligence and product development during his time at the Rocket Internet startups (Wimdu, Lamudi) and Projekt-A (Tirendo).
Today he supports customers of the Austrian digitisation agency TOWA as Director Data Consulting to generate an added value from their data.
Deep Learning: Towards General Artificial IntelligenceRukshan Batuwita
For the past several years Deep Learning methods have revolutionized the areas in Pattern Recognition, namely, Computer Vision, Speech Recognition, Natural Language Processing etc. These techniques have been mainly developed by academics, closely working with tech giants such as Google, Microsoft and Facebook where the research outcomes have been successfully integrated into commercial products such as Google image and voice search, Google Translate, Microsoft Cortana, Facebook M and many more interesting applications that are yet to come. More recently, Google DeepMind Technologies has been working on Artificial General Intelligence using Deep Reinforcement Learning methods, where their AlphaGo system beat the world champion of the complex Chinese game 'Go' in March 2016. This talk will present a thorough introduction to major Deep Learning techniques, recent breakthroughs and some exciting applications.
Artificial Intelligence And Its ApplicationsKnoldus Inc.
Artificial Intelligence(AI) is the simulation of human intelligence by machines. In other words, it is the method by which machines demonstrate certain aspects of human intelligence like learning, reasoning and self- correction. Since its inception, AI has demonstrated unprecedented growth. This learning process is inspired by us, the humans. In this knolx, we are going to discuss about this adaptation of learning processes.
Useful Techniques in Artificial IntelligenceIla Group
The document discusses artificial intelligence techniques presented by Dr. Will Browne at Cranfield University. It provides examples of applications of AI techniques in various fields such as finance, industry, engineering and control. It then describes common AI techniques such as expert systems, case-based reasoning, genetic algorithms, neural networks, fuzzy logic and cellular automata. The document emphasizes exploring appropriate techniques for problems and avoiding issues like lack of transparency, garbage in-garbage out, and difficulties generalizing from training data.
Learn the fundamentals of Deep Learning, Machine Learning, and AI, how they've impacted everyday technology, and what's coming next in Artificial Intelligence technology.
This document provides an introduction to artificial intelligence (AI). It discusses the history and foundations of AI, including early philosophers who discussed the possibility of machine intelligence. It also defines key AI concepts like intelligence, rational thinking, and acting like humans. The document outlines different types of AI systems and why AI is powerful due to combining knowledge from many disciplines. It concludes with an overview of the history of AI from its beginnings in the 1940s to the growth of expert systems.
Artificial Intelligence AI Topics History and Overviewbutest
The document discusses the history and concepts of artificial intelligence including machine learning. It provides definitions of key AI terms and describes some famous early AI programs. It also discusses machine learning methods and applications, different types of learning, and challenges in the field. Games AI is explored through techniques like min-max trees used in chess programs. The Turing Test is introduced as a proposal to measure intelligence along with proposed modifications.
Fundamentals of Artificial Intelligence — QU AIO Leadership in AIJunaid Qadir
1. The document discusses Junaid Qadir's background and research interests which include ethics of AI, safety of AI, and mitigating antisocial online behavior.
2. It provides an overview of the fundamentals of artificial intelligence, including definitions of AI, the history and development of AI, and examples of modern AI applications.
3. The document then focuses on machine learning, describing supervised and unsupervised learning, deep learning, and reinforcement learning. It also discusses important concerns regarding bias, interpretability, privacy, and reliability in machine learning models.
Introduction to Artificial IntelligenceLuca Bianchi
Artificial intelligence has been defined in many ways as our understanding has evolved. Currently, AI is divided into narrow, general and super intelligence based on capabilities. Machine learning is a key approach in AI and involves algorithms that can learn from data to improve performance. Deep learning uses neural networks with many layers to learn representations of data and has achieved success in areas like computer vision and natural language processing.
This document provides an introduction and overview of deep learning, including its history and key figures. Deep learning is a breakthrough in machine learning that uses neural networks with multiple hidden layers to learn representations of data. It has gained traction in recent years due to increases in data, processing power, and algorithmic advances. Popular deep learning algorithms and tools are described.
This document introduces machine learning algorithms. It discusses supervised and unsupervised learning problems and strategies. It provides examples of machine learning applications including neural networks for handwritten digit recognition, evolutionary algorithms for nozzle design, and Bayesian networks for gene expression analysis.
AI, Machine Learning and Deep Learning - The OverviewSpotle.ai
The deck takes you into a fascinating journey of Artificial Intelligence, Machine Learning and Deep Learning, dissect how they are connected and in what way they differ. Supported by illustrative case studies, the deck is your ready reckoner on the fundamental concepts of AI, ML and DL.
Explore more videos, masterclasses with global experts, projects and quizzes on https://spotle.ai/learn
The document is a PowerPoint presentation on artificial intelligence that contains the following key points:
1. It discusses the origins and early history of AI research from the 1950s conference at Dartmouth College.
2. It covers various aspects of AI including knowledge representation, natural language processing, emotion and social skills in machines, and creativity in AI systems.
3. It provides an overview of artificial neural networks and how they are inspired by biological neural systems, focusing on artificial neurons, learning processes, and function approximation using neural networks.
Artificial Intelligence Research Topics for PhD Manuscripts 2021 - PhdassistancePhD Assistance
This document discusses several artificial intelligence research topics that could be explored for a PhD thesis. It begins by introducing the rapid growth of AI in recent years. It then outlines topics such as machine learning, deep learning, reinforcement learning, robotics, natural language processing, computer vision, recommender systems, and the internet of things. For each topic, it provides a brief overview and lists some recent research papers as potential thesis ideas. In conclusion, the document aims to help PhD students interested in AI research by surveying the current state of the field and highlighting subtopics that could be investigated further.
Ajit Jaokar, Data Science for IoT professor at Oxford University “Enterprise ...Dataconomy Media
“Enterprise AI - Artificial Intelligence for the Enterprise."
AI is impacting many areas today. This talk discusses how AI will impact the Enterprise and what it means in the near future. The talk is based on my course I teach at the University of Oxford.
The document summarizes a presentation on artificial general intelligence (AGI) given at the IntelliFest 2012 conference. It discusses the limitations of narrow AI and the constructivist approach needed for AGI. This involves self-constructing systems that can learn new tasks and adapt. The presentation highlights the HUMANOBS project, which uses a new architecture and programming language called Replicode to develop humanoid robots that can learn social skills through observation. Attention and temporal grounding are also identified as important issues for developing practical AGI systems.
The document provides an overview of artificial intelligence including definitions, types of AI tasks, foundations of AI, history of AI, current capabilities and limitations of AI systems, and techniques for problem solving and planning. It discusses machine learning, natural language processing, expert systems, neural networks, search problems, constraint satisfaction problems, linear and non-linear planning approaches. The key objectives of the course are introduced as understanding common AI concepts and having an idea of current and future capabilities of AI systems.
Machine learning is a scientific discipline that develops algorithms to allow systems to learn from data and improve automatically without being explicitly programmed. The document discusses several key machine learning concepts including supervised learning algorithms like decision trees and Naive Bayes classification. Decision trees use branching to represent classification or regression rules learned from data to make predictions. Naive Bayes classification is a simple probabilistic classifier that applies Bayes' theorem with strong independence assumptions between features.
DWX 2018 Session about Artificial Intelligence, Machine and Deep LearningMykola Dobrochynskyy
Artificial intelligence, machine learning, and deep learning provide benefits but also risks that should be addressed ethically and responsibly. AI has progressed due to exponential data growth, large unstructured datasets, improved hardware, and falling error rates. Deep learning in particular has advanced areas like computer vision, speech recognition and games. While concerns exist around a potential artificial general intelligence, AI also enables applications in healthcare, transportation, science and more. Individuals and companies are encouraged to start experimenting with and adopting machine learning.
Artificial Intelligence and Soft Computing.Brief view of AI it's components and the importance of soft computing in AI.Several applications of AI and various fields of application.
Artificial Intelligence (AI) Interview Questions and Answers | EdurekaEdureka!
(** Machine Learning Engineer Masters Program: https://www.edureka.co/masters-progra... **)
This PPT on Artificial Intelligence Interview Questions covers all the important concepts involved in the field of AI. This PPT is ideal for both beginners as well as professionals who want to learn or brush up their knowledge on AI concepts. Below are the topics covered in this tutorial:
1. Artificial Intelligence Basic Level Interview Question
2. Artificial Intelligence Intermediate Level Interview Question
3. Artificial Intelligence Scenario based Interview Question
Check out the entire Machine Learning Playlist: https://bit.ly/2NG9tK4
Follow us to never miss an update in the future.
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This document provides legal notices and disclaimers for an Intel presentation. It states that the presentation is for informational purposes only and that Intel makes no warranties. It also notes that performance can vary depending on system configuration and that sample source code is released under an Intel license agreement. Finally, it lists various trademarks.
This presentation deals with the basics of AI and it's connection with neural network. Additionally, it explains the pros and cons of AI along with the applications.
This document provides an overview of artificial intelligence (AI) including definitions of AI, different approaches to AI (strong/weak, applied, cognitive), goals of AI, the history of AI, and comparisons of human and artificial intelligence. Specifically:
1) AI is defined as the science and engineering of making intelligent machines, and involves building systems that think and act rationally.
2) The main approaches to AI are strong/weak, applied, and cognitive AI. Strong AI aims to build human-level intelligence while weak AI focuses on specific tasks.
3) The goals of AI include replicating human intelligence, solving complex problems, and enhancing human-computer interaction.
4) The history of AI
This document provides an introduction and agenda for a machine learning marketing use case presentation. It begins with introducing the presenter and their company Cup of Data, which is hiring data scientists. The basic agenda is then outlined, covering goals, the data science process, a machine learning primer, optimization techniques, and marketing examples. The remainder of the document dives deeper into each section of the agenda, providing overviews and explanations of topics like the data science workflow process, data preparation techniques, grouping algorithms, and deep learning.
Data Science Salon: Introduction to Machine Learning - Marketing Use CaseFormulatedby
This document provides an introduction and agenda for a machine learning marketing use case presentation. It includes an overview of the data science process, machine learning algorithms, and examples of machine learning in marketing. It discusses data preparation, feature selection, preprocessing, transformation, and algorithm selection. It also provides a primer on deep learning, the benefits of deep learning for feature extraction, and examples of innovations using deep learning. The presentation aims to help understand how to apply machine learning and deep learning techniques to optimize marketing.
This document provides an introduction to artificial intelligence (AI). It discusses the history and foundations of AI, including early philosophers who discussed the possibility of machine intelligence. It also defines key AI concepts like intelligence, rational thinking, and acting like humans. The document outlines different types of AI systems and why AI is powerful due to combining knowledge from many disciplines. It concludes with an overview of the history of AI from its beginnings in the 1940s to the growth of expert systems.
Artificial Intelligence AI Topics History and Overviewbutest
The document discusses the history and concepts of artificial intelligence including machine learning. It provides definitions of key AI terms and describes some famous early AI programs. It also discusses machine learning methods and applications, different types of learning, and challenges in the field. Games AI is explored through techniques like min-max trees used in chess programs. The Turing Test is introduced as a proposal to measure intelligence along with proposed modifications.
Fundamentals of Artificial Intelligence — QU AIO Leadership in AIJunaid Qadir
1. The document discusses Junaid Qadir's background and research interests which include ethics of AI, safety of AI, and mitigating antisocial online behavior.
2. It provides an overview of the fundamentals of artificial intelligence, including definitions of AI, the history and development of AI, and examples of modern AI applications.
3. The document then focuses on machine learning, describing supervised and unsupervised learning, deep learning, and reinforcement learning. It also discusses important concerns regarding bias, interpretability, privacy, and reliability in machine learning models.
Introduction to Artificial IntelligenceLuca Bianchi
Artificial intelligence has been defined in many ways as our understanding has evolved. Currently, AI is divided into narrow, general and super intelligence based on capabilities. Machine learning is a key approach in AI and involves algorithms that can learn from data to improve performance. Deep learning uses neural networks with many layers to learn representations of data and has achieved success in areas like computer vision and natural language processing.
This document provides an introduction and overview of deep learning, including its history and key figures. Deep learning is a breakthrough in machine learning that uses neural networks with multiple hidden layers to learn representations of data. It has gained traction in recent years due to increases in data, processing power, and algorithmic advances. Popular deep learning algorithms and tools are described.
This document introduces machine learning algorithms. It discusses supervised and unsupervised learning problems and strategies. It provides examples of machine learning applications including neural networks for handwritten digit recognition, evolutionary algorithms for nozzle design, and Bayesian networks for gene expression analysis.
AI, Machine Learning and Deep Learning - The OverviewSpotle.ai
The deck takes you into a fascinating journey of Artificial Intelligence, Machine Learning and Deep Learning, dissect how they are connected and in what way they differ. Supported by illustrative case studies, the deck is your ready reckoner on the fundamental concepts of AI, ML and DL.
Explore more videos, masterclasses with global experts, projects and quizzes on https://spotle.ai/learn
The document is a PowerPoint presentation on artificial intelligence that contains the following key points:
1. It discusses the origins and early history of AI research from the 1950s conference at Dartmouth College.
2. It covers various aspects of AI including knowledge representation, natural language processing, emotion and social skills in machines, and creativity in AI systems.
3. It provides an overview of artificial neural networks and how they are inspired by biological neural systems, focusing on artificial neurons, learning processes, and function approximation using neural networks.
Artificial Intelligence Research Topics for PhD Manuscripts 2021 - PhdassistancePhD Assistance
This document discusses several artificial intelligence research topics that could be explored for a PhD thesis. It begins by introducing the rapid growth of AI in recent years. It then outlines topics such as machine learning, deep learning, reinforcement learning, robotics, natural language processing, computer vision, recommender systems, and the internet of things. For each topic, it provides a brief overview and lists some recent research papers as potential thesis ideas. In conclusion, the document aims to help PhD students interested in AI research by surveying the current state of the field and highlighting subtopics that could be investigated further.
Ajit Jaokar, Data Science for IoT professor at Oxford University “Enterprise ...Dataconomy Media
“Enterprise AI - Artificial Intelligence for the Enterprise."
AI is impacting many areas today. This talk discusses how AI will impact the Enterprise and what it means in the near future. The talk is based on my course I teach at the University of Oxford.
The document summarizes a presentation on artificial general intelligence (AGI) given at the IntelliFest 2012 conference. It discusses the limitations of narrow AI and the constructivist approach needed for AGI. This involves self-constructing systems that can learn new tasks and adapt. The presentation highlights the HUMANOBS project, which uses a new architecture and programming language called Replicode to develop humanoid robots that can learn social skills through observation. Attention and temporal grounding are also identified as important issues for developing practical AGI systems.
The document provides an overview of artificial intelligence including definitions, types of AI tasks, foundations of AI, history of AI, current capabilities and limitations of AI systems, and techniques for problem solving and planning. It discusses machine learning, natural language processing, expert systems, neural networks, search problems, constraint satisfaction problems, linear and non-linear planning approaches. The key objectives of the course are introduced as understanding common AI concepts and having an idea of current and future capabilities of AI systems.
Machine learning is a scientific discipline that develops algorithms to allow systems to learn from data and improve automatically without being explicitly programmed. The document discusses several key machine learning concepts including supervised learning algorithms like decision trees and Naive Bayes classification. Decision trees use branching to represent classification or regression rules learned from data to make predictions. Naive Bayes classification is a simple probabilistic classifier that applies Bayes' theorem with strong independence assumptions between features.
DWX 2018 Session about Artificial Intelligence, Machine and Deep LearningMykola Dobrochynskyy
Artificial intelligence, machine learning, and deep learning provide benefits but also risks that should be addressed ethically and responsibly. AI has progressed due to exponential data growth, large unstructured datasets, improved hardware, and falling error rates. Deep learning in particular has advanced areas like computer vision, speech recognition and games. While concerns exist around a potential artificial general intelligence, AI also enables applications in healthcare, transportation, science and more. Individuals and companies are encouraged to start experimenting with and adopting machine learning.
Artificial Intelligence and Soft Computing.Brief view of AI it's components and the importance of soft computing in AI.Several applications of AI and various fields of application.
Artificial Intelligence (AI) Interview Questions and Answers | EdurekaEdureka!
(** Machine Learning Engineer Masters Program: https://www.edureka.co/masters-progra... **)
This PPT on Artificial Intelligence Interview Questions covers all the important concepts involved in the field of AI. This PPT is ideal for both beginners as well as professionals who want to learn or brush up their knowledge on AI concepts. Below are the topics covered in this tutorial:
1. Artificial Intelligence Basic Level Interview Question
2. Artificial Intelligence Intermediate Level Interview Question
3. Artificial Intelligence Scenario based Interview Question
Check out the entire Machine Learning Playlist: https://bit.ly/2NG9tK4
Follow us to never miss an update in the future.
YouTube: https://www.youtube.com/user/edurekaIN
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Facebook: https://www.facebook.com/edurekaIN/
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This document provides legal notices and disclaimers for an Intel presentation. It states that the presentation is for informational purposes only and that Intel makes no warranties. It also notes that performance can vary depending on system configuration and that sample source code is released under an Intel license agreement. Finally, it lists various trademarks.
This presentation deals with the basics of AI and it's connection with neural network. Additionally, it explains the pros and cons of AI along with the applications.
This document provides an overview of artificial intelligence (AI) including definitions of AI, different approaches to AI (strong/weak, applied, cognitive), goals of AI, the history of AI, and comparisons of human and artificial intelligence. Specifically:
1) AI is defined as the science and engineering of making intelligent machines, and involves building systems that think and act rationally.
2) The main approaches to AI are strong/weak, applied, and cognitive AI. Strong AI aims to build human-level intelligence while weak AI focuses on specific tasks.
3) The goals of AI include replicating human intelligence, solving complex problems, and enhancing human-computer interaction.
4) The history of AI
This document provides an introduction and agenda for a machine learning marketing use case presentation. It begins with introducing the presenter and their company Cup of Data, which is hiring data scientists. The basic agenda is then outlined, covering goals, the data science process, a machine learning primer, optimization techniques, and marketing examples. The remainder of the document dives deeper into each section of the agenda, providing overviews and explanations of topics like the data science workflow process, data preparation techniques, grouping algorithms, and deep learning.
Data Science Salon: Introduction to Machine Learning - Marketing Use CaseFormulatedby
This document provides an introduction and agenda for a machine learning marketing use case presentation. It includes an overview of the data science process, machine learning algorithms, and examples of machine learning in marketing. It discusses data preparation, feature selection, preprocessing, transformation, and algorithm selection. It also provides a primer on deep learning, the benefits of deep learning for feature extraction, and examples of innovations using deep learning. The presentation aims to help understand how to apply machine learning and deep learning techniques to optimize marketing.
This document provides an overview of deep learning and neural networks. It begins with definitions of machine learning, artificial intelligence, and the different types of machine learning problems. It then introduces deep learning, explaining that it uses neural networks with multiple layers to learn representations of data. The document discusses why deep learning works better than traditional machine learning for complex problems. It covers key concepts like activation functions, gradient descent, backpropagation, and overfitting. It also provides examples of applications of deep learning and popular deep learning frameworks like TensorFlow. Overall, the document gives a high-level introduction to deep learning concepts and techniques.
chalenges and apportunity of deep learning for big data analysis fmaru kindeneh
The document discusses challenges and opportunities in analyzing complex data using deep learning. It begins with an introduction to complex data and deep learning. It then provides background on machine learning, different data types, feature engineering, and challenges in deep learning. The problem specification defines complex data and proposes research questions on how deep learning can better handle complex data properties. The method section outlines a literature review and case studies to define complex data and study its impact on deep learning models.
Distributed Models Over Distributed Data with MLflow, Pyspark, and PandasDatabricks
Does more data always improve ML models? Is it better to use distributed ML instead of single node ML?
In this talk I will show that while more data often improves DL models in high variance problem spaces (with semi or unstructured data) such as NLP, image, video more data does not significantly improve high bias problem spaces where traditional ML is more appropriate. Additionally, even in the deep learning domain, single node models can still outperform distributed models via transfer learning.
Data scientists have pain points running many models in parallel automating the experimental set up. Getting others (especially analysts) within an organization to use their models Databricks solves these problems using pandas udfs, ml runtime and MLflow.
Lessons learned from building practical deep learning systemsXavier Amatriain
1. There are many lessons to be learned from building practical deep learning systems, including choosing the right evaluation metrics, being thoughtful about your data and potential biases, and understanding dependencies between data, models, and systems.
2. It is important to optimize only what matters and beware of biases in your data. Simple models are often better than complex ones, and feature engineering is crucial.
3. Both supervised and unsupervised learning are important, and ensembles often perform best. Your AI infrastructure needs to support both experimentation and production.
3 blades webinar dec 12 deploying deep learning models to productionGreg Werner
1. This document provides an overview of deploying deep learning models, including the goals of deployment, a primer on deep learning, deployment options, common use cases, and examples.
2. Deep learning models require continuous training with new data to improve performance over time. Effective deployment involves automating the training process through continuous integration and deployment pipelines.
3. Tools that simplify deployment by abstracting away deep learning frameworks and runtimes, like 3Blades, allow users to easily "push and forget" models with serverless computing resources.
Machine Learning (ML) and Deep Learning (DL) are two powerful subsets of Artificial Intelligence (AI), but they are often misunderstood or used interchangeably. This presentation breaks down the key differences between these two technologies, exploring their definitions, applications, and how they work. While ML focuses on algorithms that allow machines to learn from data and make predictions, DL is a specialized branch of ML that uses complex neural networks to solve more intricate problems. Learn how these technologies are being applied in fields like healthcare, autonomous vehicles, and natural language processing, and understand their unique strengths and challenges.
This document provides an introduction to deep learning. It begins with a refresher on machine learning, covering classification, regression, supervised learning, unsupervised learning, and reinforcement learning. It then discusses neural networks and their basic components like layers, nodes, and weights. An example of unsupervised learning is given about learning Chinese. Deep learning is introduced as using large neural networks to learn complex feature hierarchies from large amounts of data. Key aspects of deep learning covered include representation learning, layer-wise training, and using unsupervised pre-training before supervised fine-tuning. Applications and impact areas of deep learning are also mentioned.
This document provides an overview of deep learning concepts including:
- Deep learning uses neural networks inspired by the human brain to learn representations of data without being explicitly programmed.
- Key deep learning concepts are explained such as convolutional neural networks, activation functions, gradient descent, and overfitting.
- TensorFlow is introduced as an open-source library for machine learning that allows for implementing deep learning models at scale.
- Applications of deep learning like computer vision, natural language processing, and recommender systems are discussed.
Python is used for development with frameworks like Django and Flask, automation with libraries like subprocess and requests, and data science/ML with libraries like NumPy, Pandas, and Matplotlib. Artificial intelligence involves simulating human intelligence with machines through talking, thinking, learning, planning, and understanding. There are different types of AI like narrow AI that performs specific tasks and general AI that aims for human-level intelligence. Machine learning is a subset of AI that uses algorithms to learn from data without explicit programming, while deep learning uses neural networks inspired by the human brain. Natural language processing gives computers the ability to understand, generate, and interact with human language through techniques like text normalization, tokenization, part-of-speech tagging, text
This document discusses deep learning, including its relationship to artificial intelligence and machine learning. It describes deep learning techniques like artificial neural networks and how GPUs are useful for deep learning. Applications mentioned include computer vision, speech recognition, and bioinformatics. Both benefits like robustness and weaknesses like long training times are outlined. Finally, common deep learning algorithms, libraries and tools are listed.
Recent Advances in Machine Learning: Bringing a New Level of Intelligence to ...Brocade
Presentation by Brocade Chief Scientist and Fellow, David Meyer, given at Orange Gardens July 2016. What is Machine Learning and what is all the excitement about?
An associated blog is available here: http://community.brocade.com/t5/CTO-Corner/Networking-Meets-Artificial-Intelligence-A-Glimpse-into-the-Very/ba-p/88196
This document provides an overview of deep learning, machine learning, and artificial intelligence. It defines artificial intelligence as efforts to automate intellectual tasks normally performed by humans. Machine learning involves training systems using examples rather than explicit programming. Deep learning uses successive layers of representations in neural networks to transform input data into more useful representations. It has achieved near-human level performance on tasks like image classification and speech recognition. While popular, deep learning is not always the best approach and other machine learning methods exist.
Develop a fundamental overview of Google TensorFlow, one of the most widely adopted technologies for advanced deep learning and neural network applications. Understand the core concepts of artificial intelligence, deep learning and machine learning and the applications of TensorFlow in these areas.
The deck also introduces the Spotle.ai masterclass in Advanced Deep Learning With Tensorflow and Keras.
Designing Low-Latency Systems with Rust and ScyllaDB: An Architectural Deep DiveScyllaDB
Want to learn practical tips for designing systems that can scale efficiently without compromising speed?
Join us for a workshop where we’ll address these challenges head-on and explore how to architect low-latency systems using Rust. During this free interactive workshop oriented for developers, engineers, and architects, we’ll cover how Rust’s unique language features and the Tokio async runtime enable high-performance application development.
As you explore key principles of designing low-latency systems with Rust, you will learn how to:
- Create and compile a real-world app with Rust
- Connect the application to ScyllaDB (NoSQL data store)
- Negotiate tradeoffs related to data modeling and querying
- Manage and monitor the database for consistently low latencies
Massive Power Outage Hits Spain, Portugal, and France: Causes, Impact, and On...Aqusag Technologies
In late April 2025, a significant portion of Europe, particularly Spain, Portugal, and parts of southern France, experienced widespread, rolling power outages that continue to affect millions of residents, businesses, and infrastructure systems.
Complete Guide to Advanced Logistics Management Software in Riyadh.pdfSoftware Company
Explore the benefits and features of advanced logistics management software for businesses in Riyadh. This guide delves into the latest technologies, from real-time tracking and route optimization to warehouse management and inventory control, helping businesses streamline their logistics operations and reduce costs. Learn how implementing the right software solution can enhance efficiency, improve customer satisfaction, and provide a competitive edge in the growing logistics sector of Riyadh.
Procurement Insights Cost To Value Guide.pptxJon Hansen
Procurement Insights integrated Historic Procurement Industry Archives, serves as a powerful complement — not a competitor — to other procurement industry firms. It fills critical gaps in depth, agility, and contextual insight that most traditional analyst and association models overlook.
Learn more about this value- driven proprietary service offering here.
Technology Trends in 2025: AI and Big Data AnalyticsInData Labs
At InData Labs, we have been keeping an ear to the ground, looking out for AI-enabled digital transformation trends coming our way in 2025. Our report will provide a look into the technology landscape of the future, including:
-Artificial Intelligence Market Overview
-Strategies for AI Adoption in 2025
-Anticipated drivers of AI adoption and transformative technologies
-Benefits of AI and Big data for your business
-Tips on how to prepare your business for innovation
-AI and data privacy: Strategies for securing data privacy in AI models, etc.
Download your free copy nowand implement the key findings to improve your business.
Spark is a powerhouse for large datasets, but when it comes to smaller data workloads, its overhead can sometimes slow things down. What if you could achieve high performance and efficiency without the need for Spark?
At S&P Global Commodity Insights, having a complete view of global energy and commodities markets enables customers to make data-driven decisions with confidence and create long-term, sustainable value. 🌍
Explore delta-rs + CDC and how these open-source innovations power lightweight, high-performance data applications beyond Spark! 🚀
Special Meetup Edition - TDX Bengaluru Meetup #52.pptxshyamraj55
We’re bringing the TDX energy to our community with 2 power-packed sessions:
🛠️ Workshop: MuleSoft for Agentforce
Explore the new version of our hands-on workshop featuring the latest Topic Center and API Catalog updates.
📄 Talk: Power Up Document Processing
Dive into smart automation with MuleSoft IDP, NLP, and Einstein AI for intelligent document workflows.
Book industry standards are evolving rapidly. In the first part of this session, we’ll share an overview of key developments from 2024 and the early months of 2025. Then, BookNet’s resident standards expert, Tom Richardson, and CEO, Lauren Stewart, have a forward-looking conversation about what’s next.
Link to recording, presentation slides, and accompanying resource: https://bnctechforum.ca/sessions/standardsgoals-for-2025-standards-certification-roundup/
Presented by BookNet Canada on May 6, 2025 with support from the Department of Canadian Heritage.
Role of Data Annotation Services in AI-Powered ManufacturingAndrew Leo
From predictive maintenance to robotic automation, AI is driving the future of manufacturing. But without high-quality annotated data, even the smartest models fall short.
Discover how data annotation services are powering accuracy, safety, and efficiency in AI-driven manufacturing systems.
Precision in data labeling = Precision on the production floor.
Noah Loul Shares 5 Steps to Implement AI Agents for Maximum Business Efficien...Noah Loul
Artificial intelligence is changing how businesses operate. Companies are using AI agents to automate tasks, reduce time spent on repetitive work, and focus more on high-value activities. Noah Loul, an AI strategist and entrepreneur, has helped dozens of companies streamline their operations using smart automation. He believes AI agents aren't just tools—they're workers that take on repeatable tasks so your human team can focus on what matters. If you want to reduce time waste and increase output, AI agents are the next move.
#StandardsGoals for 2025: Standards & certification roundup - Tech Forum 2025BookNet Canada
Book industry standards are evolving rapidly. In the first part of this session, we’ll share an overview of key developments from 2024 and the early months of 2025. Then, BookNet’s resident standards expert, Tom Richardson, and CEO, Lauren Stewart, have a forward-looking conversation about what’s next.
Link to recording, transcript, and accompanying resource: https://bnctechforum.ca/sessions/standardsgoals-for-2025-standards-certification-roundup/
Presented by BookNet Canada on May 6, 2025 with support from the Department of Canadian Heritage.
#StandardsGoals for 2025: Standards & certification roundup - Tech Forum 2025BookNet Canada
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Demystifying Ml, DL and AI
1. Demystifying ML / DL / AI
Practical guide of differences between Machine
Learning, Deep Learning and Artificial Intelligence
Presented by Greg Werner, 3Blades.io
2. Agenda
- Goals
- Data Science Process
- Machine Learning Primer
- Deep Learning Primer
- Optimization Techniques for ML/DL
- What about Artificial Intelligence?
- Common Use Cases
- Some Examples
3. Goals
1. What are the differences between ML and DL?
2. What are the most popular classes of algorithms?
3. Use cases
4. Examples
15. Deep Learning (cont.)
From Jeff Dean (“Deep Learning for Building Intelligent
Computer Systems”):
“When you hear the term deep learning, just think of a large
deep neural net. Deep refers to the number of layers typically
and so this kind of the popular term that’s been adopted in
the press. I think of them as deep neural networks generally.”
18. Deep Learning (cont.)
1. Input a set of training examples
2. For each training example xx, set corresponding input
activation and:
a. Feedforward
b. Output error
c. Backpropagate the error
3. Gradient descent
19. Deep Learning (cont.)
Deep learning excels with unstructured data sets.
Images of pixel data, documents of text data or files of audio data are some
examples.
20. Take Aways
● We can’t get around ‘Data Munging’, for now anyway
● ML and DL are actually related. DL is used mostly for
supervised and semi-supervised learning problems.
● Automating the ML/DL pipeline and offering collaboration
environments to complete all these tasks are necessary.
#7: Data Science Workflow
Define the Problem
What is the problem? Provide formal and informal definitions.
Why does the problem need to be solved? Motivation, benefits, how it will be used.
How would I solve the problem? Describe how the problem would be solved manually to flush domain knowledge.
Prepare Data
Data Selection. Availability, what is missing, what can be removed.
Data Preprocessing. Organize selected data by formatting, cleaning and sampling.
Data Transformation. Feature engineering using scaling, attribute decomposition and attribute aggregation.
Data visualizations such as with histograms.
Spot Check Algorithms
Test harness with default values.
Run family of algorithms across all the transformed and scaled versions of dataset.
View comparisons with box plots.
Improve Results (Tuning)
Algorithm Tuning: discovering the best models in model parameter space. This may include hyper parameter optimizations with additional helper services.
Ensemble Methods: where the predictions made by multiple models are combined.
Feature Engineering: where the attribute decomposition and aggregation seen in data preparation is tested further.
Present Results
Context (Why): how the problem definition arose in the first place.
Problem (Question): describe the problem as a question.
Solution (Answer): describe the answer the the question in the previous step.
Findings: Bulleted lists of discoveries you made along the way that interests the audience. May include discoveries in the data, methods that did or did not work or the model performance benefits you observed.
Limitations: describe where the model does not work.
Conclusions (Why+Question+Answer)
#8: Data Selection what data is available, what data is missing and what data can be removed.
Data Preprocessing: organize, clean and sample.
Data Transformation: scaling, attribute decomposition and attribute aggregation.
#9: This is a subset of the available data that you need to train your ML/DL models.
What is the extent of the data, where is it located and is there anything missing to solve your problem.
Usually, this process is a little more involved with Machine Learning due to the data set types used to train and save Machine Learning models.
With Machine Learning, more is not better, usually.
#10: Formatting: related to data formats and schemas. ETL tools are great for this step.
Cleaning: cleaning data is the removal or fixing of missing data.
Sampling: sometimes you can get a smaller representation of your data to improve training times.
#11: Scaling: provide consistency with values between 0 and 1 with standard units of measure.
Decomposition: feature separation. Hour and time is an example.
Aggregation: counts for login instead of full time stamp is an example.
#12: Test Harness: The goal of the test harness is to be able to quickly and consistently test algorithms against a fair representation of the problem being solved.
Performance Measure: classification, regression or clustering.
Cross Validation: use the entire data set to train your model. In short this is to separate your data into a number of chunks (folds) except one and the final test is done on that fold.
Testing Algorithms: test with groups
#14: Regression
Regression is actually a loose term because its and algebraic process.
Ordinary Least Squares Regression (OLSR)
Linear Regression
Logistic Regression
Stepwise Regression
Multivariate Adaptive Regression Splines (MARS)
Locally Estimated Scatterplot Smoothing (LOESS)
Instance Based
Also called winner-take-all methods and memory-based learning. Focus is put on the representation of the stored instances and similarity measures used between instances.
k-Nearest Neighbor (kNN)
Learning Vector Quantization (LVQ)
Self-Organizing Map (SOM)
Locally Weighted Learning (LWL)
Regularization
Penalizes more complex algorithms.
Ridge Regression
Least Absolute Shrinkage and Selection Operator (LASSO)
Elastic Net
Least-Angle Regression (LARS)
Decision Tree
Often fast and accurate, used for both classification and regression.
Classification and Regression Tree (CART)
Iterative Dichotomiser 3 (ID3)
C4.5 and C5.0 (different versions of a powerful approach)
Chi-squared Automatic Interaction Detection (CHAID)
Decision Stump
M5
Conditional Decision Trees
Bayesian
Used in classification and regression.
Naive Bayes
Gaussian Naive Bayes
Multinomial Naive Bayes
Averaged One-Dependence Estimators (AODE)
Bayesian Belief Network (BBN)
Bayesian Network (BN)
Clustering Algorithms
Organizes data into groups.
k-Means
k-Medians
Expectation Maximisation (EM)
Hierarchical Clustering
Association Rule
Association rule learning methods extract rules that best explain observed relationships between variables in data. Paints relationships between large multi-dimensional data sets.
Apriori algorithm
Eclat algorithm
Artificial Neural Networks (ANN), usually included with Deep Learning
The most popular artificial neural network algorithms are:
Perceptron
Back-Propagation
Hopfield Network
Radial Basis Function Network (RBFN)
Deep Learning
Used in semi-supervised learning
Deep Boltzmann Machine (DBM)
Deep Belief Networks (DBN)
Convolutional Neural Network (CNN)
Stacked Auto-Encoders
Dimensionality Reduction
Used to visualize dimensional data or to simplify data which can then be used in a supervised learning method.
Principal Component Analysis (PCA)
Principal Component Regression (PCR)
Partial Least Squares Regression (PLSR)
Sammon Mapping
Multidimensional Scaling (MDS)
Projection Pursuit
Linear Discriminant Analysis (LDA)
Mixture Discriminant Analysis (MDA)
Quadratic Discriminant Analysis (QDA)
Flexible Discriminant Analysis (FDA)
Ensemble
Boosting
Bootstrapped Aggregation (Bagging)
AdaBoost
Stacked Generalization (blending)
Gradient Boosting Machines (GBM)
Gradient Boosted Regression Trees (GBRT)
Random Forest
#18: “Deep Neural Nets” was first coined by Hinton and has been used since then with Deep Learning.