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In this era where technology is not just an enabler but a driver of business innovation, Artificial Intelligence (AI) stands at the forefront of this transformation. AI is no longer a futuristic concept; it’s a tangible, powerful tool reshaping how businesses operate and compete across various industries. Generative AI, a subset of AI, has started ruling the world in the last year, and every industry is being impacted.
AI’s vast and varied capabilities, from streamlining operations and enhancing customer experiences to driving data-driven decision-making and innovation. Organizations will focus not just on the theoretical aspects of AI in business but, more importantly, on real-world applications and strategies proving successful. Whether you’re a startup embracing AI for agility or an established corporation using AI to maintain a competitive edge, understanding how to integrate this technology into your business strategy effectively is critical. Incorporating AI into business is not just about adopting new technology but fundamentally rethinking how we approach problems, make decisions, and create value.
This involves understanding the AI maturity curve, where businesses evolve from experimental AI projects to scaling AI across the organization.
An important facet is developing an AI-literate workforce and fostering a culture that embraces data-driven decision-making.
This comprehensive discussion aims to equip business leaders, strategists, and technologists with insights and actionable strategies to harness AI’s power effectively and responsibly. As AI continues to evolve, staying ahead in this AI-driven business landscape requires not only technological advancements.
Episode # 121
An excellent quote from the guest speaker, ‘Bitcoin introduced the blockchain to the world, and similar to this, ChatGPT has introduced machine learning to the world.’
What to Expect in Today’s Discussion:
Writing in the Age of AI has become crucial and a skill that requires a mindset to be grasped. Writing a book is a long-standing item on my to-do list, and today, I have got an exceptional expert on the show to learn from him about writing books and how to write books with the support of Artificial Intelligence.
I have been writing blogs for the last 12 years; I wrote my first blog in the year 2011, and interesting to see it was on 16th August 2021.
Without any doubt, writing a book offers a unique platform to share knowledge, experiences, and expertise.
It establishes one as an authority in a particular domain and provides an opportunity to reach and impact a larger audience.
For technical experts, writing books becomes even more crucial. It’s an avenue to translate complex technical jargon into consumable content.
In doing so, they bridge the gap between technological advancements and make it understandable for the wider community; it’s become like demystifying and democratizing knowledge.
However, writing a book is no mean feat. It demands time, patience, and a high level of commitment, which I am also struggling to overcome over the years.
Here’s where Artificial Intelligence comes into play.
Today, in our podcast, we’re privileged to have a guest who embodies the confluence of traditional book-writing and modern AI tools. Having authored over 300 books, he not only understands the nuances of the writing process but has also harnessed the capabilities of AI to amplify his online business. His journey offers invaluable insights for anyone looking to venture into writing, especially in the technical domain.
Jonathan is an expert at using Artificial Intelligence tools to accelerate your online business.
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In today’s rapidly evolving technological landscape, the term “AI Frontier” is more than just a buzzword; it represents the uncharted territories of innovation and possibilities that AI promises. As organizations worldwide stand on the cusp of integrating AI into their core operations, the quest for knowledge on navigating this frontier becomes paramount not only for the organizations but for an individual how to navigate and start taking action to learn and grow.
Our guest today has ventured into this frontier and laid down markers, guiding others through his profound insights and groundbreaking work. As we dive deeper into today’s discussion, you will be privy to a firsthand account of the challenges and triumphs at the forefront of AI development. From understanding the nuances of AI integration to decoding its vast potential across sectors, our thought leader will shed light on the intricacies that organizations grapple with. How do businesses discern hype from genuine AI opportunities? What does it take to transform an AI concept into a tangible asset? These questions, and many more, will be unraveled as we journey through the AI frontier together, guided by the insights of a true industry pioneer.
A global thought leader who has been in AI for 15 years and has 4 patents in AI, he has served clients like Microsoft, IBM, Pearson Education, and more, producing $500 million in value for them.
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Understanding AI for business and how to develop AI strategy for your organization is vital for everyone. Navigating the complex world of AI for business can be a daunting task, and with so much hype, it is now a daunting task for everyone.
However, understanding the Artificial Intelligence potential and integrating it into your organization’s strategy can unlock new opportunities for growth and efficiency. In this podcast, you will get some of the very simplified areas for you to help you how to develop an AI strategy for your business.
Before anything else, it’s crucial to have a solid understanding of what AI is, its capabilities, and how it can be utilized in various industry contexts. AI isn’t just a buzzword—it’s a tool that can automate tasks, provide insights, and even help you make more informed business decisions. Then you need to focus on what you aim to achieve with AI. Whether it’s improving customer service, increasing efficiency, or gaining a competitive edge, having clear objectives will guide your AI strategy rather than just going to adopt AI for the sake of AI.
Kavita has a Ph.D. from the University of Illinois at Urbana Champaign, specializing in NLP, Search Technologies, and Machine Learning, and she also wrote a book ‘The business case for AI’.
Wondering if your business is ready for the AI revolution and if you are already aligned with AI strategy? You are not going to join the race of AI/ML just for the sake of AI/ML. These are the common questions that come to nowadays in everyone’s mind that I need to get on the bus of AI/ML, and my organization or the business should not be left behind. Whereas some fundamentals need to be looked into before embarking on this journey, and in this open talk with the guest, we tried to find some questions and answers that can help you.
We need to start with the basics. First, ask yourself if data drive your business goals. Do you have a robust data infrastructure? Can you readily access and analyze relevant and high-quality data? Are you able to act on the insights this data provides? If you nodded, you’re already on the path to becoming AI-ready!
Now, let’s discuss aligning AI and data analytics with your business goals. Maybe you want to drive up sales, streamline operations, or deliver a better customer experience. Your roadmap is data analytics – it will guide you on the best route to reach your destination. Remember, AI isn’t a magic wand but a handy tool in your toolbox. Used wisely, it can power up your business journey.
Frank will share his journey of moving from working full-time at Dell to starting his consulting firm, focusing on helping customers get results from the data. He addresses the most common misconceptions about AI and data analytics and how you handle them.
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The final dissertation project as part of the MSc Artificial Intelligence program started in September 2022, this is the third month, and I thought to start sharing publically.
The major topic of my research is the healthcare sector, specifically maternal, specifically Maternal & Infant Health. I have created a details project proposal and submitted it to the university.
Here you will get the technical aspects of the work I am doing to complete my research, as it involves artificial intelligence and Machine learning on a huge dataset. I am into an interesting challenge, which almost daily enables me to learn something new.
Today onward, I will update here the progress and will also try to update the key aspects of the last 3 months work. let’s get started
A few tweets will give you a glimpse of the work over the last few weeks.
November 23, 2022: It began with the writing of this blog based on the difficulties of “preprocessing” datasets, I decided to revisit the CSV files and shorten the columns to the required only columns. Earlier, I did all this work after uploading it to the autonomous database.
Challenge: CSV file has approximately 3.6 million records, and MS excel can only support 1,048,576 rows. found some ideas to split it, and here is the method I have used to split the CSV file into multiple files and then work on it.
moved it into the desired folder, where my dataset files are available, and used the terminal window to execute the below command.
split -l 1000000 2021natdata.csv
This has created the files based on the data, so I have 4 files with naming conventions like xaa, xab, xac, xad.
now, these files need to be converted to CSV format, so I have used this statement, and all this found on google research.
for i in *;
do mv "$i" "$i.csv";
done
It gives me all four files in CSV format, and I have to do it for all my source dataset files.
How to convert large CSV files into multiple files.
Nov 24, 2022: Today’s task was to update the column name to some meaningful name so that it is easy to understand while just reading the column’s name.
for example, column name ‘dmar’ to ‘MaritalStatus’ and ‘rf_cesar’ to ‘PreviousCesarean’
It was pretty challenging with the 16 different CSV files, and the average records were 1 million in each CSV file.
Loaded all CSVs data into Oracle Autonomous Datawarehouse in less than 30 minutes

15-March-2023
first of all my apology for not being able to update this, as the initial idea was to document the journey.
However with the extensive work required me to do for this dissertation, I was not able to cope with the pace and was not able to update this post.
I submitted my dissertation during the first week of March, and from now onward I will try to write separate blogs to help others to pursue their career dreams.
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Module 1: Learning from data
Module 2: Principles of machine learning
Module 3: Regression
Module 4: Variable selection and shrinkage methods

Module 1: An introduction to artificial intelligence
Module 2: Machine learning in business
Module 3: Natural language processing in business
Module 4: Robotics in business

Module 1: Artificial intelligence ecosystem
Module 2: AI and machine learning: Understanding the black box
Module 3: Understanding deep learning and neural networks
Module 4: Working with intelligent machines
Module 5: The ethics of artificial intelligence

Module 1: AI and machine learning — applications and foundations
Module 2: Using AI for disease diagnosis and patient monitoring
Module 3: Natural language processing and data analytics in health care
Module 4: Interpretability in machine learning — Benefits and challenges
Module 5: Patient risk stratification and augmenting clinical workflows
Module 6: Taking an integrated approach to hospital management and optimization

Module 1: The business case for AI
Module 2: Algorithms: Learning and problem-solving
Module 3: AI-driven use cases in industries
Module 4: AI governance and ethics

Module 1: Introduction to machine learning
Module 2: Implementing machine learning in a business
Module 3: Sensing the physical world
Module 4: Helping machines learn to use language

Whether you consider yourself computer smart or not, there’s a strong chance artificial intelligence (AI) has already impacted the way you interact with systems, organizations, and other people. You may transform those individual experiences into useful information and career advancement through these courses
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An open talk on the challenges of having a data pipeline for the images, audio and videos, The Hub enables to have several famous machine learning datasets with just a single command, like CIFAR-10, MNIST or Fashion-MNIST, Google Objection, ImageNet, COCO, and many others.
As I came from a Relational Database management system (RDBS) background, this talk gives me a new perspective and helps to think outside of the known areas. Enjoy the talk with the CEO of Active Loop. This session was recorded in October 2021 and is now being published.
A great insight talk with the guest speaker on a topic, a product owner focuses on a dataset format to offer API for creating, storing, and collaborating on any size of AI datasets.
An overview of Oracle’s different Artificial Intelligence, machine learning, and data science solutions available on Oracle Cloud. If you are new to this website, it is a learning and sharing platform where we will learn publicly.
Before I cover today’s show schedule, let me admit that procrastination is sometimes very dangerous, as I could not record/host the podcast for the last 4 months. It wasn’t easy to have a work-life balance due to the two factors. First, as I am doing MSc in AI and the previous 4-5 months were crucial to complete the key subjects, now I am on the last topic of robotics, which will be completed very soon. And 2nd factor was that I was dedicating a lot of my time to office work, where I worked with several EMEA-based customers and helped them migrate on-premise workloads to the Oracle cloud.
On the procrastination, James clear’s book ‘Atomic habit’ and specifically the article “Procrastination: A Scientific Guide on How to Stop Procrastinating” has helped me to come out of the phase and be back with the podcast 
Let’s dive into today’s topic. Oracle has solutions that broadly cover three areas from the product’s point of view. We will also talk about some of the use cases along with these products.
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A deepfake refers to a specific kind of media or photo where a person in an image or video is transacted with another person however it will look like the original person in an image or video.
To make a deep fake video, a creator swaps one person’s face and replaces it with another, using a deep learning algorithm generative adversarial networks (GAN).
A formal definition as per Wikipedia:
Deepfakes are synthetic media in which a person in an existing image or video is replaced with someone else’s likeness. While the act of faking content is not new, deepfakes leverage powerful techniques from machine learning and artificial intelligence to manipulate or generate visual and audio content with a high potential to deceive. The main machine learning methods used to create deepfakes are based on deep learning and involve training generative neural network architectures, such as autoencoders or generative adversarial networks (GANs) – Source: Wikipedia
An inspirational talk with the guest speaker on a variety of topics, like