AI
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Enabling Compliance and Security in AI-Driven, Low-Code/No-Code Development
Low-code/no-code development offers a lot of opportunities for companies across sectors, but it can also bring new security risks and compliance concerns.
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The Use of Machine Learning in Cybersecurity: Threat Detection and Prevention
Learn how machine learning boosts cybersecurity by detecting and preventing threats effectively. Explore its pivotal role in safeguarding digital systems.
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AI and Microservice Architecture, A Perfect Match?
AI and Microservices blend, revolutionizing software with scalable, flexible, and efficient solutions, navigating through complexity and security hurdles.
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Breaking Barriers: The Rise of Synthetic Data in Machine Learning and AI
The demand for synthetic data keeps growing exponentially, exhibiting great potential to reshape the future of intelligent technologies.
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Cybersecurity: A Trojan Horse in Our Digital Walls?
An opinion piece on how cybersecurity attacks will evolve to be much more threatening when augmented by AI advances like LLMs and LMMs.
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The Future of Digital Products: Will AI-Assistants Replace Applications?
If AI assistants like ChatGPT continue to evolve at the same pace, we will witness the end of the era of the apps as we know them.
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Revolutionizing Real-Time Alerts With AI, NATS, and Streamlit
Build a real-time AI-powered weather alert chat application using OpenAI, NATs, and Streamlit. Understand how modern real-time alerting systems work.
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Vector Database for LLMs, Generative AI, and Deep Learning
Unlike traditional databases that handle scalar data (like numbers, strings, or dates), vector databases are optimized for high-dimensional data points.
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MLOps vs. DevOps: The Key Similarities and Differences
DevOps integrates software applications, and MLOps implements quality checks and tests for data pipelines and machine learning model training and deployment.
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A Guide to Vector Embeddings for Product and Software Engineers
This guide helps product and software engineers understand how vector embeddings are generated and how they can be effectively used in various applications.