Day 2 :
Keynote Forum
Erwin E Sniedzins
Mount Knowledge Inc., Canada
Keynote: Machine learning for data acquisition in dynamic real-time
Time : 09:00 - 09:40
Biography:
Prof. Erwin Sniedzins has patented the Knowledge Generator™ (KG); a Machine Learning, “MicroSelf-Reinforcement Learning, Artificial Intelligence, Personalize ‘Gamification’ of ANY digitized textual content application in DYNAMIC real-time. The KG technology enables people to turn Data into Knowledge (DiK) 32% better and easier with more confidence and fun. No teacher or course designer is required. Erwin is the President of Mount Knowledge Inc. The company is a global leader in ML, AI, neural networks, automatic gamification of any textual data and reinforcement learning. Erwin has authored and published 12 books, Keynote speaker, Professor at Hebei University and Mt. Everest expedition leader.
Abstract:
Big Data is inundating educators, students, employers and employees causing a lot of stress, frustration and lack of confidence in data acquisition. More than 3.8 billion people are seeking relief from 3.4 exabytes of daily data bombardment. Genetic Algorithm Neural Networks (GANN) and machine learning provides a bridge and filtration solution between exabytes of data and megabytes of personalized data for knowledge acquisition by using Natural Language Processing (NLP) and automatic gamification in dynamic real-time. AI and ML is transforming humanity’s cerebral evolution as a replacement of repetitive habitual motions and thoughts. In its evolutionary process humans developed their primary biological interfaces to interpret the data that they were receiving through their five senses- seeing, hearing, smelling, touching and tasting. In recent years GANN and NLP have entered to provide, Data into Knowledge (DiK) solutions. Research with GANN and NLP has enabled tools to be developed that selectively filters big data and combine this data into microself-reinforcement learning and personalized gamification of any DiK in dynamic real-time. The combination of GA, NLP, MSRL and dynamic gamification has enabled people to experience relieve in their quest to turn DiK 32% better, faster and easier and with more confidence over traditional learning methods.
Keynote Forum
Samir El-Masri
Digitalization.Cloud, UAE
Keynote: Digital Transformation and the convergence of new emerging digital technologies
Time : 09:40 - 10:20
Biography:
Samir El Masri has completed his Electronic Engineering’s degree from the Lebanese University, his Master’s degree and Ph.D. from Grenoble National Polytechnic Institute, France. He has worked at Hokkaido University, Japan as a Researcher and Senior Project Manager and he was Assistant/Associate Professor at the University of Western Sydney and University of Sydney, Australia. He has also worked in the IT industry as a Senior Project/Program Manager in leading IT consulting companies in Sydney Australia. He has worked on large eHealth projects with several grants from KACST in Saudi Arabia where he has strong collaborations with local and international healthcare organizations. His main interest is in education, development and research activities. Moreover, he has more than 100 published research papers in international journals, books, and conferences.
Abstract:
Digital transformation is a journey which stems from strong beliefs in the digital economy by senior management supported by a digital transformation strategy. Strategy is much more difficult to deploy than develop and it may only be achieved when the transformation is led by CEOs reinforced by mature capabilities. Unfortunately, most digital transformation initiatives have failed in the past and many more will fail in the future. These failures have been mainly due to organizations undertaking digital change instead of digital transformation in addition to the lack of capabilities and non-readiness of the company to manage this transformation. New digital emerging technologies remain the backbone and the enabler of any digital transformation activities. The digitization of operations, workforce, marketing and new digital business models will be realized by the convergence of all new emerging digital technologies through new products/services, price, customer experience and platform values. In this talk, data science, machine learning, analytics, big data, IOT and their interrelationships will be demonstrated. Examples of how digital initiatives could help the industry by improving efficiency, avoiding trips, reducing unplanned downtime and transforming from time-based to condition-based maintenance will also be illustrated.
Keynote Forum
Sylvester Juwe
British Gas, United Kingdom
Keynote: Machine learning: An enabler of business strategy and innovation
Time : 10:45 - 11:25
Biography:
Sylvester Juwe is a highly experienced and qualified Artificial Intelligence Lead, currently a Senior Data Science Manager at British Gas, United Kingdom. Operating at strategic levels, he leads on the leveraging sophisticated machine learning and big data analytics and capabilities in enabling and driving business strategy thereby creating business value. Experienced in the exploitation of a range of data mining, advanced analytical and artificial intelligence techniques to understand customer behavior, derive critical insights, optimize operations and solve complex business problems.
Abstract:
Listening to the voice of customers plays a prominent role in a customer-centric business strategy. But with the business environment’s increased complexity and dynamism for a customer-centric business to thrive in its value delivery, there is a growing need for personalization of business offering and continuous evolution of business decisions in such a way that they align with changes in customer needs. These requirements could be challenging, particularly in organizations with a large customer base. In response, this talk presents how advanced analytics and machine learning techniques have enabled operational efficiency and business effectiveness in large organizations. Specifically, this address highlights how tree-based machine learning methods have been employed in understanding and prescribing solutions to complex and evolving operational business problems. Furthermore, it presents insights into, how uplift modeling has improved response rates and returns on marketing spends in large-scale targeted campaigns. Underpinning this talk is a discussion of the leadership approach that informed these innovations.
- WORKSHOP
Session Introduction
Manoj Mishra
Union Insurance, UAE
Title: Emerging trends in machine learning
Time : 11:25 - 12:10
Biography:
Abstract:
- Machine Learning | Artificial intelligence applications | Deep Learning | Deep Learning Frameworks | Data analytics in cloud | Pattern Recognition | Facial Expression and Emotion Detection | Artificial Neural Networks (ANN) & Chainer | Augmented Reality (AR) and Virtual Reality (VR)
Chair
Shabir Momin
ZengaTV, Singapore
Co-Chair
Santosh Godbole
SSN Solutions Limited, India
Session Introduction
Harshavardhana Kikkeri
Kaaya Tech Inc, USA
Title: Heralding the era of machine teaching – where you clothes become your virtual AI trainer
Time : 13:10 - 13:40
Biography:
Abstract:
Santosh Godbole
SSN Solutions Limited, India
Title: Applying big data analytics and machine learning in precision marketing
Time : 13:40 - 14:10
Biography:
Abstract:
Biography:
Abstract:
Ahmed AlMaqabi
Almaqabi, Kingdom of Bahrain
Title: Could machine learning and other technologies disrupt audit industry ?
Time : 14:40 - 15:10
Biography:
Abstract:
Kai Khalid Miethig
Tariq Faqeeh Engineering, Bahrain
Title: W-AI-STE and architecture waste management in buildings with the support of machine learning and artifical intelligence
Time : 15:30 - 16:00
Biography:
Abstract:
Abed Benaichouche
Inception Institute of Artificial Intelligence, Abu Dhabi, UAE
Title: Overview of recent advance of deep learning application in computer vision
Time : 16:00 - 16:30
Biography:
Abstract:
- POSTER PRESENTATION 16:30-17:30
Session Introduction
Balasubramanyam Pisupati
Robert Bosch Engineering and Business Solutions Limited, India
Title: Ensemble of time series forecasting in complex structure
Biography:
Abstract:
Beesung Kam & Byung Kwan Choi
Pusan National University, South Korea
Title: Predicting future rank and score of graduation by using student’s status and temporal behavior
Biography:
Abstract:
Semakula Abdumajidhu
Makerere University, Uganda
Title: Sooty mold effect on cassava yields using convolutional neural networks
Biography:
Abstract:
Rohit Agarwal & Gaurav Pawar
Mobisy Technologies Pvt Ltd, India
Title: An overview of deep learning based object detection techniques in retail domain
Biography:
Abstract:
Biography:
Abstract:
Aisha Al Owais
Sharjah Center for Astronomy and Space Sciences, UAE
Title: Deep learning - An application of machine learning to classify images
Biography:
Abstract:
Living in the 21st century, mankind’s most powerful weapon is technology. The field of technology we are interested in is computer science, specifically Artificial Intelligence (AI). As the name suggests, AI is about turning devices into intelligent agents that take actions based on the environment they perceive. They are also flexible in terms of changing their goal- what they are meant to do as well as adjusting their actions depending on its changing environment. What makes AI agents peculiar is their ability to learn and remember from their mistakes. Furthermore, Machine Learning (ML) is one of AI’s applications that enable systems to learn automatically, improve through experience and adjust its actions without human intervention. This takes us to Deep Learning (DL), a new subfield of ML concerned with algorithms inspired by the structure and function of the human’s brain called artificial neural networks. It has networks which are capable of learning data obtained from instructed or unlabeled data; therefore it is also known Deep Neural Network (DNN). All those terms lead us to what we are mostly interested in, Convolutional Neural Networks (CNNs), which is a deep neural network that is particularly wall-adapted to classify images, in our case to classify images of meteorites.
Nabil Belgasmi
Banque de Tunisie, Tunisia
Title: Multiobjective deep reinforcement learning approach for ATM cash replenishment planning
Biography:
Abstract:
- PRODUCT LAUNCH BY SHABIR MOMIN & SANTOSH GODBOLE (11:10 - 11:25)
Session Introduction
SHABIR MOMIN & SANTOSH GODBOLE
SSN Solutions, London
Title: Product Launch
Time : 11:10 - 11:25
Biography:
Abstract:
- WORKSHOP
Session Introduction
Tanya Dixit and Sriharsha Allenki
Qualcomm, India
Title: Deep Learning – A beginner’s guide to start coding neural networks and apply in areas of computer vision and natural language processing
Time : 11:25 - 12:10
Biography:
Abstract:
- Workshop
Chair
Tanya Dixit & Sriharsha Allenki
Qualcomm, India
- Computer Science and Technology | Machine Learning | Big Data, Data Science and Data Mining | Big Data Analytics | Business Intelligence | The role of AI & Machine Learning in Medical Science | Deep Learning | Object Detection with Digits | Computer Vision and Image Processing | Pattern Recognition | Robotic Process Automation (RPA) | Natural Language Processing (NLP) and Speech Recognition | Deep Learning Frameworks
Chair
Niladri Shekhar Dutta
Ericsson, UAE
Co-Chair
Abbas M Al-Bakry
University of Information Technology and Communications, Iraq
Biography:
Abstract:
Jayatu Sen Chaudhury
American Express, India
Title: Machine learning applications in credit card domain
Time : 13:10 - 13:40
Biography:
Jayatu Sen Chaudhury is the Vice President, Global Commercial and Merchant Data Science and Head of Enterprise Digital & Analytics India for American Express, India. Prior to this role, he was the Head of Global Information Management, Big Data Labs & Advanced Risk Capabilities. He has been a part of American Express since 2001, working in the various decision science functions for both US and international markets. He has earned his PhD in Financial Economics from IGIDR, Economic Research Institute funded by the Central Bank of the Country (Reserve Bank of India). Prior to joining American Express, he has worked in decision science for two years each in GE Capital and ICICI Bank.
Abstract:
Given the huge volumes of data available (both structured and un-structured) for American Express card members, American Express has adopted machine learning in all its core business processes of credit and fraud risk management, marketing analytics and operations. Work entailed building in-house data warehouses with right level of privacy controls and then using state of art machine learning algorithms from open sources to solve unique business problems across various business verticals. Adoption of machine learning has ensured building of robust economic models leveraging the best possible information, delivering the highest predictive power with utmost accuracy. The models are updated at the highest possible frequency ensuring the models incorporate the most recent information. This has led to significant improvement in the controls for fraud risk and also improved the targeting of appropriate segments with far higher accuracy in marketing. As a part of the presentation, 3-4 actual use cases of core American Express processes and how machine learning has completely changed the game will be discussed. Discussion will also include the new areas where company is thinking of doing research and bringing the best value for its card members.
Niladri Shekhar Dutta
Ericsson, UAE
Title: The advent of big data analytics in the world of ICT and digital
Time : 13:40 - 14:10
Biography:
Niladri Shekhar Dutta is a seasoned professional with more than 13 years of global consulting experience. He is a Consulting Practitioner with focus on operations and transformation consulting for top-tier telecommunication operators globally. He has worked in more than 30+ consulting engagements in varied culture and markets across Western Europe, Middle East, North and Central Africa, India and New Zealand. His expertise is primarily around C-level advisory, digital transformation, digital enterprise architecture, business and operational process management, IT operational strategy, digital risk and revenue management consulting. He is responsible for driving consulting business across the MEA region for Ericsson and is involved in both sales and delivery. He has his MBA in Marketing and Finance from Symbiosis, Pune, India and is an Engineering graduate in Electronics from University of Nagpur, India. He is presently also undergoing a specialized PG program from MIT Sloan and Columbia facilitated by Emeritus on Digital Business.
Abstract:
With the advent of technology transformation in the fast changing and ever evolving world of Information, Communications and Technology (ICT), the importance of data is supreme. This is often being referred to as big data and is perhaps the single most entity which forms the backbone of any major transformation within any large global corporation across industries. Data is no longer being looked and used as a tactical medium for storage or operations; on the contrary it becomes extremely strategic in nature. In fact the 3 main pillars of today’s disruptive world of digital are driven by big data, IoT and cloud. Out of which big data is the nucleus of transformation. In the world of digital, this is very well centered on three main life cycle entities. They are the customer, the product and the revenue. Each of these, i.e. customer life cycle, product life cycle and revenue life cycles behave very differently from one another. The practical emphases of data in each of these entities are also very different and unique. The concepts of big data within these 3 life cycles are core to the change we witness in the world of digital. Each data entity centered on these life cycles is instrumental in C-level decision making and major change management that happens within the organization. The data element acts as a central aspect to strategic decisions whether it comes to newproduct/service development or behavior of customer or user data, appreciation or acknowledgement of revenue. All use cases around big data will be largely centered on these and any specific case would be a secondary derivation of the above. With big data being so strategic in nature a large part of the focus has now shifted to data extraction and normalization to ensure meaningful information is extracted and utilized for business benefits by customers. Like the traditional mindset used to be, focus was largely around data operations and reporting. We will soon see a world where we cannot live without any form of data and in truest sense the phrase big data would essentially be big and super imposed in all aspects of our lives, right from our behavior, buying and consumption of products and services to distribution of our resources. The extraction and transformation of data for key benefits will be very much a business as usual thing, without which survival will become questionable within ICT industry, especially whilst looking at the concept of digital disruption. This article largely focuses on the key aspects of the same within the world of ICT and how a corporation is heavily dependent on such aspects for generation of its sales and management of its operations.
Manoj Mishra
Union Insurance, UAE
Title: Data virtualization - Using data virtualization for an integrated analytics platform
Time : 14:10 - 14:40
Biography:
Abstract:
Eman AbuKhousa & Najati Ali-Hasan
UAE University, UAE
Title: Predictive big data analytics and healthcare fraud - From detection to prevention
Time : 14:40 - 15:10
Biography:
Eman Abu Khousa is a Researcher-Instructor (Big Data Applications) at the College of Information Technology, UAE.
Najati Ali Hasan is an experienced health information technology (IT) professional with 25-year experience in the field. Najati is an expert in advising GCC clients on strategies for selections & implementations of health IT with focus on achieving demonstrable clinical, operational and financial benefits. Najati is well versed in the revenue-cycle-management (RCM) field with knowledge of the various nuances and requirements of GCC countries. Najati’s other areas of expertise include smart use of health IT for enhanced patient experience, EDI, data analytics and applications of Artificial Intelligence/Machine Learning (AI/ML) in healthcare. Najati has co-authored three articles for conferences and journals – one having received a best-paper award. Najati’s work experience spans top USA medical centers to world class suppliers of health IT.
Abstract:
Tilila El Moujahid
Microsoft Corporation, UAE
Title: Using genomics cloud platform and machine learning for genome variant analysis
Time : 15:10 - 15:40
Biography:
Abstract:
Abbas M Al-Bakry
University of Information Technology and Communications, Iraq
Title: Computer aided diagnosis In cloud environment based on multi agents system
Time : 16:00 - 16:30
Biography:
Abstract:
Rohit Agarwal & Gaurav Pawar
Mobisy Technologies Pvt Ltd, India
Title: An overview of deep learning based object detection techniques in retail domain
Time : 16:30 - 17:00
Biography:
Gaurav Pawar has completed his BE degree in Electronics and Telecommunication with more than 3 years of practical hands-on experience in computer vision and machine learning. He is specialized in building quick prototypes using python environment by leveraging GPU platform. He has expertise in using popular deep learning libraries such as TensorFlow, PyTorch and Keras. Currently, he is interested in solving data science problems in Indian retail industry using images and other source of data.
Abstract:
Sharan Kumar Santhanakrishnan & Rakhsanth Rammohan
St.Josephs’s College of Engineering, India
Title: Efficient way for detecting and tracking of object irrespective of speed of the motion
Time : 17:00 - 17:30
Biography:
Abstract:
Aisha Al Owais
Sharjah Center for Astronomy and Space Sciences, UAE
Title: Deep learning - An application of machine learning to classify images
Time : 17:30 - 18:00
Biography:
Abstract:
Session Introduction
Jayatu Sen Chaudhury
American Express, India
Title: Machine learning applications in credit card domain
Biography:
Abstract:
Niladri Shekhar Dutta
Ericsson, UAE
Title: The advent of big data analytics in the world of ICT and digital
Biography:
Abstract:
Chair
Abbas M Al-Bakry
University of Information Technology and Communications, Iraq