New Survey Highlights Startup Struggles with GenAI Oversight and Talent Gaps

The rise of generative AI is creating a buzz in the startup world and founders are considering it as a tool for innovation. The technology holds promises of accelerating product development and speeding up time-to-market. However, a closer look reveals that the rapid adoption is equipped with some serious challenges. A recent report titled ‘Beyond […]

Data Engineering and Generative AI in Health and Pharma

Healthcare is on the verge of profound change. Traditional approaches to patient care that offer one-size-fits-all solutions are gradually giving way to precision medicine—an individualized treatment approach tailored to an individual’s genetic formation, environmental factors, and lifestyle preferences, which has proven to significantly improve health outcomes. At the core of this revolution lies an unprecedented […]

How AI-Powered Payment Technology shaping the future

Artificial Intelligence (AI) has become one of the most transformative technologies in modern industries and the payment sector is no exception. Fintech companies, startups and even traditional players are now focusing on using AI to enhance transaction speed, improve security and deliver personalized user experiences. Businesses today are looking for ways to make transactions smoother, […]

The Landscape of Generative AI Beyond 2024 in Different Sectors

The adage “data is the new oil” captures the immense value of information in today’s world. However, unlike oil, a finite resource subject to depletion; data possesses a crucial advantage—it’s constantly growing. This ever-expanding reservoir of information fuels the transformative potential of generative AI. As we stand on the precipice of a new era in […]

Medical Image Denoising with CNN

In this article, I will discuss different approaches to CT image denoising with CNN and some traditional approaches as well.

Photo by Daniel Öberg on Unsplash

Denoising CT images with Convolutional Neural Networks (CNNs) represents a significant advancement in medical imaging technology. CT (Computed Tomography) scans are invaluable for diagnosing and monitoring various medical conditions, but they often suffer from noise due to low-dose radiation used to minimize patient exposure. This noise can obscure important details and affect diagnostic accuracy. CNNs, a class of deep-learning neural networks, have proven exceptionally effective in addressing this issue. These networks are trained on large datasets of noisy and clean images, learning to identify and eliminate noise while preserving critical anatomical details. To get more ideas on how to do the denoising in CT images for image quality improvement you can read this paper, which contains lots of information and hands-on example implementation with dataset.

The process involves passing the noisy CT images through multiple layers of the CNN, each designed to extract features and reduce noise incrementally. As a result, the output images are clearer, allowing for more precise diagnoses. Moreover, CNN-based denoising operates faster than traditional methods, enabling real-time processing in clinical settings. This technology not only enhances the quality of medical imaging but also has the potential to significantly improve patient outcomes by aiding in early and accurate disease detection.

In the suggested paper you can find all types of necessary datasets and lots of reference works for medical image denoising tasks.


Medical Image Denoising with CNN was originally published in Becoming Human: Artificial Intelligence Magazine on Medium, where people are continuing the conversation by highlighting and responding to this story.

Generative AI Hiring Surge: Where to Apply Today

Generative AI is expanding at a rapid pace. It brings some new job opportunities for professionals who are skilled in machine learning, natural language processing and several other related technologies. Companies are lately seeking such talented individuals who can develop and implement generative AI models. They basically are aiming to introduce innovation and efficiency into […]

Role of AI in Business Intelligence— PoV

How will Generative AI transform Business Intelligence? Explore its scope in automating insights, enhancing data quality, and democratizing data access across organizations.

Business Intelligence | Artificial Intelligence | Data Synthesis Augmentation
Image by pixelmart1 on Freepik

Why this blog?

Are you eager to harness the full potential of AI in your data workflows? Deep dive into the transformative power of Generative AI in Business Intelligence, empowering you to automate insights, elevate data quality, and democratize data access. Whether you’re a data scientist, analyst, or business leader, this blog offers invaluable insights to propel your organization forward in the data-driven world.

How will Generative AI transform the Business Intelligence (BI) world?

Point of view by an expert in Factspan
Written by Vikas Chavan | Image by Author

I feel, Gen AI will transform the Business Intelligence world by significantly impacting and improving the following areas:

  • Text-to-SQL Automation: Generative AI converts natural language queries into SQL, making data insights accessible to everyone in the organization, not just those with technical expertise. This will speed up the decision-making process and improve the productivity of the knowledge workers.
  • Automated Insights Generation & Generating visual insights: With continuous data analysis, Generative AI can automatically uncover trends, anomalies, and patterns in real time. This proactive insight generation helps businesses stay ahead of issues and seize opportunities swiftly.
  • Data Synthesis and Augmentation: AI enhances data quality by generating synthetic data to fill gaps and combining multiple data sources. This creates a more comprehensive and robust dataset, leading to better insights and predictions.
  • Automated data modeling and schema design — LLMs can help streamline this process, there are challenges in implementing this on a scale, though but with maturity and time, this will be improved upon.
  • Data preparation and management — LLMs can play a role in the space of MDM, they can automate data cataloging making it faster and more efficient. It can continuously monitor or improve data quality by validating the anomalies.

Generative AI is set to transform Business Intelligence (BI), making it more intuitive, efficient, and powerful. This transformation, driven by Generative BI, will fundamentally change how businesses interact with and act on their data. By leveraging AI to automate tasks, uncover hidden insights, and democratize data access across the organization, Generative BI will empower all users to make more informed decisions.

It highlights the importance of fluid intelligence for quick adaptation and innovation, using Netflix’s success as an example. The blog also explains the concept of fluid intelligence, its role in business, and how technologies like AI and machine learning can enhance business agility and responsiveness.
Image by Author

What are the primary challenges organizations face when implementing Generative BI, and how can they overcome these obstacles?

  • Data Security: Ensuring data security is paramount, especially with sensitive information. Adopting privacy-preserving techniques and robust data governance frameworks can address this challenge.
  • Integration Complexity: Using modular and scalable architectures facilitates the seamless integration of generative models into existing systems, reducing complexity.
  • Managing User Expectations: Continuous education and setting realistic goals are crucial. Regular training sessions and workshops can familiarize users with the capabilities and limitations of Generative BI.

How can Generative BI improve operational efficiency and drive self-serving analytics and data literacy gaps for business users?

Generative BI enables business users to generate reports and dashboards without needing to write SQL queries or understand complex BI tools. By using natural language processing, Generative BI simplifies data interaction, allowing users to quickly obtain insights and make data-driven decisions independently. It can automate numerous repetitive and time-consuming tasks, significantly improving operational efficiency and driving cost savings.

For example, by automating the generation of reports and initial drafts, organizations can save substantial amounts of time and reduce personnel costs. Additionally, enhanced data analysis capabilities allow businesses to optimize their operations by identifying inefficiencies and areas for improvement, leading to further cost savings and productivity gains. We have been working on building the Insights co-pilot and have received good response from our stakeholders, it helps in generating the automated insights and visual data using NLQ.

How can organizations effectively balance the need for experimentation with Generative BI and the imperative to deliver measurable business value?

Balancing experimentation with the need to deliver measurable business value requires a strategic approach. Organizations should adopt an iterative development process, starting with small-scale pilot projects to test and refine Generative BI applications. Clear objectives and KPIs should be defined to measure the success of these experiments.

In my experience, involving cross-functional teams from the outset ensured that the projects were aligned with business goals and had practical applications. Regularly reviewing and adjusting the projects based on feedback and results helped maintain focus on delivering tangible value while we delivered these applications and kept innovating with the new advancements in this space.

How can a semantic layer improve self-service analytics when combined with Generative AI, and what challenges might organizations face in integrating semantic layers with LLMs. Do you think it will accelerate the implementation of Generative BI?

The semantic layer acts as an intermediary that unifies data across various sources, ensuring consistency in business terms and metrics. This consistency allows Generative BI tools to process and generate insights more accurately and contextually. For example, by interpreting standardized definitions, the semantic layer helps avoid discrepancies and enhances the relevance of AI-generated insights, making them more actionable for business users.

For a practical example of how Generative AI can enhance business analytics, check out our case study on Gen AI-infused business analytics for logistics queries management

Sourced from Factspan


Role of AI in Business Intelligence— PoV was originally published in Becoming Human: Artificial Intelligence Magazine on Medium, where people are continuing the conversation by highlighting and responding to this story.

Humanize AI Text Tool: Enhancing the Human-Friendliness of AI-Generated Text

The current digital manufacturing is being led by artificial intelligence (AI). We can provide information in any format including reports and blog articles using tools that are based on artificial intelligence. However, the AI-generated content should be read like it was written by a human being. Humanizing AI Writing Tool is here to do just […]

Generative AI: Revolutionizing Human Interaction and Comm

Lately, a call for a moratorium was witnessed and it was signed by more than 1,300 AI researchers. Together they urged a six-month pause in generative AI research citing the potential risks. Well, this sparked a crucial conversation with respect to the impact of the newest technology. It prompted a deeper understanding of the immense […]

What is Midjourney and how to use it for AI images?

This is an era of advanced-age technology and artificial intelligence (AI) is the backbone of it. The tool has invaded the digital art world too. AI-generated artwork has become a big hit and it is gradually stirring up excitement as well as creativity among internet users across the world. Midjourney is one of the most […]