#ai/ml testing tools
Explore tagged Tumblr posts
habilelabs · 1 year ago
Text
Testing AI and ML systems involve determining how well they operate and how accurate they are. Let's know about AI & ML Testing and Future of Software Testing.
0 notes
theomeganerd · 21 days ago
Text
The Witcher 4 Tech Demo Debuts
Tumblr media
youtube
CD PROJEKT RED and Epic Games Present The Witcher 4 Unreal Engine 5 Tech Demo at The State of Unreal 2025!
At Unreal Fest Orlando, the State of Unreal keynote opened with a live on-stage presentation that offered an early glimpse into the latest Unreal Engine 5 features bringing the open world of The Witcher 4 to life.
Spotlight:
Tech demo showcased how the CD PROJEKT RED and Epic Games are working together to power the world of The Witcher 4 on PC, PlayStation, and Xbox, and bring large open-world support to Unreal Engine. The tech demo takes place in the never-before-seen region of Kovir.
As Unreal Fest 2025 kicked off, CD PROJEKT RED joined Epic Games on stage to present a tech demo of The Witcher 4 in Unreal Engine 5 (UE5). Presented in typical CDPR style, the tech demo follows the main protagonist Ciri in the midst of a monster contract and shows off some of the innovative UE5 technology and features that will power the game’s open world.
The tech demo takes place in the region of Kovir — which will make its very first appearance in the video game series in The Witcher 4. The presentation followed main protagonist Ciri — along with her horse Kelpie — as she made her way through the rugged mountains and dense forests of Kovir to the bustling port town of Valdrest. Along the way, CD PROJEKT RED and Epic Games dove deep into how each feature is helping drive performance, visual fidelity, and shape The Witcher 4’s immersive open world.
 Watch the full presentation from Unreal Fest 2025 now at LINK.
Since the strategic partnership was announced in 2022, CDPR has been working with Epic Games to develop new tools and enhance existing features in Unreal Engine 5 to expand the engine’s open-world development capabilities and establish robust tools geared toward CD PROJEKT RED’s open-world design philosophies. The demo, which runs on a PlayStation 5 at 60 frames per second, shows off in-engine capabilities set in the world of The Witcher 4, including the new Unreal Animation Framework, Nanite Foliage rendering, MetaHuman technology with Mass AI crowd scaling, and more. The tools showcased are being developed, tested, and eventually released to all UE developers, starting with today’s Unreal Engine 5.6 release. This will help other studios create believable and immersive open-world environments that deliver performance at 60 FPS without compromising on quality — even at vast scales. While the presentation was running on a PlayStation console, the features and technology will be supported across all platforms the game will launch on.
The Unreal Animation Framework powers realistic character movements in busy scenes. FastGeo Streaming, developed in collaboration with Epic Games, allows environments to load quickly and smoothly. Nanite Foliage fills forests and fields with dense detail without sacrificing performance. The Mass system handles large, dynamic crowds with ease, while ML Deformer adds subtle, realistic touches to character animation — right down to muscle movement.
Speaking on The Witcher 4 Unreal Engine 5 tech demo, Joint-CEO of CD PROJEKT RED, 
Michał Nowakowski stated:
“We started our partnership with Epic Games to push open-world game technology forward. To show this early look at the work we’ve been doing using Unreal Engine running at 60 FPS on PlayStation 5, is a significant milestone — and a testament of the great cooperation between our teams. But we're far from finished. I look forward to seeing more advancements and inspiring technology from this partnership as development of The Witcher 4 on Unreal Engine 5 continues.”
Tim Sweeney, Founder and CEO of Epic Games said: 
“CD PROJEKT RED is one of the industry’s best open-world game studios, and we’re grateful that they’re working with us to push Unreal Engine forward with The Witcher 4. They are the perfect partner to help us develop new world-building features that we can share with all Unreal Engine developers.”
For more information on The Witcher 4, please visit the official website. More information about The Witcher series can be found on the official official website, X, Bluesky, and Facebook.
Tumblr media Tumblr media Tumblr media Tumblr media
24 notes · View notes
demifiendrsa · 21 days ago
Text
youtube
The Witcher 4 — Unreal Engine 5 Tech Demo
The Witcher IV is in development for PlayStation 5, Xbox Series X|S, and PC. A release date has yet to be announced.
Latest details
As Unreal Fest 2025 kicked off, CD Projekt RED joined Epic Games on stage to present a tech demo of The Witcher IV in Unreal Engine 5. Presented in typical CD Projekt RED style, the tech demo follows the main protagonist Ciri in the midst of a monster contract and shows off some of the innovative Unreal Engine 5 technology and features that will power the game’s open world. The tech demo takes place in the region of Kovir—which will make its very first appearance in the video game series in The Witcher IV. The presentation followed main protagonist Ciri—along with her horse Kelpie—as she made her way through the rugged mountains and dense forests of Kovir to the bustling port town of Valdrest. Along the way, CD PROJEKT RED and Epic Games dove deep into how each feature is helping drive performance, visual fidelity, and shape The Witcher IV‘s immersive open world. Watch the full presentation from Unreal Fest 2025 now at LINK. Since the strategic partnership was announced in 2022, CDPR has been working with Epic Games to develop new tools and enhance existing features in Unreal Engine 5 to expand the engine’s open-world development capabilities and establish robust tools geared toward CD PROJEKT RED’s open-world design philosophies. The demo, which runs on a PlayStation 5 at 60 frames per second, shows off in-engine capabilities set in the world of The Witcher IV, including the new Unreal Animation Framework, Nanite Foliage rendering, MetaHuman technology with Mass AI crowd scaling, and more. The tools showcased are being developed, tested, and eventually released to all UE developers, starting with today’s Unreal Engine 5.6 release. This will help other studios create believable and immersive open-world environments that deliver performance at 60 FPS without compromising on quality—even at vast scales. While the presentation was running on a PlayStation console, the features and technology will be supported across all platforms the game will launch on. The Unreal Animation Framework powers realistic character movements in busy scenes. FastGeo Streaming, developed in collaboration with Epic Games, allows environments to load quickly and smoothly. Nanite Foliage fills forests and fields with dense detail without sacrificing performance. The Mass system handles large, dynamic crowds with ease, while ML Deformer adds subtle, realistic touches to character animation—right down to muscle movement.
6 notes · View notes
satoshi-mochida · 21 days ago
Text
The Witcher IV - State of Unreal 2025 ‘Cinematic’ trailer and tech demo - Gematsu
Tumblr media
CD Projekt RED has released a new cinematic trailer and technical demonstration of The Witcher IV as part of State of Unreal 2025. The technical demonstration is running on a base PlayStation 5 at 60 frames per second with ray-tracing.
Here are the latest details:
As Unreal Fest 2025 kicked off, CD Projekt RED joined Epic Games on stage to present a tech demo of The Witcher IV in Unreal Engine 5. Presented in typical CD Projekt RED style, the tech demo follows the main protagonist Ciri in the midst of a monster contract and shows off some of the innovative Unreal Engine 5 technology and features that will power the game’s open world.
The tech demo takes place in the region of Kovir—which will make its very first appearance in the video game series in The Witcher IV. The presentation followed main protagonist Ciri—along with her horse Kelpie—as she made her way through the rugged mountains and dense forests of Kovir to the bustling port town of Valdrest. Along the way, CD PROJEKT RED and Epic Games dove deep into how each feature is helping drive performance, visual fidelity, and shape The Witcher IV‘s immersive open world.
Watch the full presentation from Unreal Fest 2025 now at LINK. Since the strategic partnership was announced in 2022, CDPR has been working with Epic Games to develop new tools and enhance existing features in Unreal Engine 5 to expand the engine’s open-world development capabilities and establish robust tools geared toward CD PROJEKT RED’s open-world design philosophies. The demo, which runs on a PlayStation 5 at 60 frames per second, shows off in-engine capabilities set in the world of The Witcher IV, including the new Unreal Animation Framework, Nanite Foliage rendering, MetaHuman technology with Mass AI crowd scaling, and more. The tools showcased are being developed, tested, and eventually released to all UE developers, starting with today’s Unreal Engine 5.6 release. This will help other studios create believable and immersive open-world environments that deliver performance at 60 FPS without compromising on quality—even at vast scales. While the presentation was running on a PlayStation console, the features and technology will be supported across all platforms the game will launch on.
The Unreal Animation Framework powers realistic character movements in busy scenes. FastGeo Streaming, developed in collaboration with Epic Games, allows environments to load quickly and smoothly. Nanite Foliage fills forests and fields with dense detail without sacrificing performance. The Mass system handles large, dynamic crowds with ease, while ML Deformer adds subtle, realistic touches to character animation—right down to muscle movement.
“We started our partnership with Epic Games to push open-world game technology forward,” said CD Projekt RED joint CEO Michal Nowakowski in a press release. “To show this early look at the work we’ve been doing using Unreal Engine running at 60 [frames per second] on PlayStation 5, is a significant milestone—and a testament of the great cooperation between our teams. But we’re far from finished. I look forward to seeing more advancements and inspiring technology from this partnership as development of The Witcher IV on Unreal Engine 5 continues.” Epic Games founder and CEO Tim Sweeney added, “CD Projekt RED is one of the industry’s best open-world game studios, and we’re grateful that they’re working with us to push Unreal Engine forward with The Witcher IV. They are the perfect partner to help us develop new world-building features that we can share with all Unreal Engine developers.”
The Witcher IV will be available for PlayStation 5, Xbox Series, and PC. A release date has yet to be announced.
Watch the footage below.
Cinematic Trailer
youtube
Technical Demonstration
youtube
6 notes · View notes
vague-humanoid · 7 months ago
Text
For years, hashing technology has made it possible for platforms to automatically detect known child sexual abuse materials (CSAM) to stop kids from being retraumatized online. However, rapidly detecting new or unknown CSAM remained a bigger challenge for platforms as new victims continued to be victimized. Now, AI may be ready to change that.
Today, a prominent child safety organization, Thorn, in partnership with a leading cloud-based AI solutions provider, Hive, announced the release of an API expanding access to an AI model designed to flag unknown CSAM. It's the earliest use of AI technology striving to expose unreported CSAM at scale.
An expansion of Thorn's CSAM detection tool, Safer, the AI feature uses "advanced machine learning (ML) classification models" to "detect new or previously unreported CSAM," generating a "risk score to make human decisions easier and faster."
The model was trained in part using data from the National Center for Missing and Exploited Children (NCMEC) CyberTipline, relying on real CSAM data to detect patterns in harmful images and videos. Once suspected CSAM is flagged, a human reviewer remains in the loop to ensure oversight. It could potentially be used to probe suspected CSAM rings proliferating online.
It could also, of course, make mistakes, but Kevin Guo, Hive's CEO, told Ars that extensive testing was conducted to reduce false positives or negatives substantially. While he wouldn't share stats, he said that platforms would not be interested in a tool where "99 out of a hundred things the tool is flagging aren't correct."
9 notes · View notes
stuarttechnologybob · 1 month ago
Text
What is the difference between AI testing and automation testing?
Automation Testing Services
Tumblr media
As technology continues to evolve, so do the methods used to test software. Two popular approaches in the industry today are AI testing and Automation Testing. While they are often used together or mentioned side by side, they serve different purposes and bring unique advantages to software development. Let's explore how they differ.
What Is Automation Testing?
Automation Testing involves writing and crafting test scripts or using testing tools and resources to run the tests automatically without human intervention. As it's commonly used to speed up repetitive testing tasks like regression testing, performance checks, or functional validations. These tests follow a fixed set of rules and are often best suited for stable, predictable applications with its implementation. Automation Test improves overall efficiency, reduces human error, and helps the developers and coders to release software faster and with precise detailing.
What Is AI Testing?
AI testing uses artificial intelligence technologies like ML, NLP, and pattern recognition to boost their software testing process and operations. Unlike Automation Tests, AI testing can learn from data, predict where bugs might occur, and even adapt test cases when an application changes. While it makes the testing process more innovative and flexible, especially in complex and tough applications where manual updates to test scripts are time-consuming.
Key Differences Between AI Testing and Automation Testing:
Approach: Automation Test follows pre-written scripts, while AI testing uses the data analysis and learning to make precise decisions with ease.
Flexibility: Automation Test requires the updates if the software changes or adapts to new terms; AI testing can adapt automatically and without any interpretation.
Efficiency: While both of the testing methods aim to save time, AI testing offers more intelligent insights and better prioritization of test cases with its adaptation.
Use Cases: Automation Tests are ideal and suitable for regression tests and routine tasks and common testing. AI testing is better suited for dynamic applications and predictive testing.
Both methods are valuable, and many companies use a combination of Automation Testing and AI testing to achieve reliable and intelligent quality assurance. Choosing the correct method depends on the project's complexity and testing needs. Automation Test is best for repetitive and everyday tasks like checking login pages, payment forms, or user dashboards and analytics. It's also helpful in regression testing — where old features must be retested after  certain updates or standard system upgrades.
Companies like Suma Soft, IBM, Cyntexa, and Cignex offer advanced automation test solutions that support fast delivery, better performance, and improved software quality for businesses of all sizes.
2 notes · View notes
pixelizes · 2 months ago
Text
How AI & Machine Learning Are Changing UI/UX Design
Tumblr media
Artificial Intelligence (AI) and Machine Learning (ML) are revolutionizing UI/UX design by making digital experiences more intelligent, adaptive, and user-centric. From personalized interfaces to automated design processes, AI is reshaping how designers create and enhance user experiences. In this blog, we explore the key ways AI and ML are transforming UI/UX design and what the future holds.
For more UI/UX trends and insights, visit Pixelizes Blog.
AI-Driven Personalization
One of the biggest changes AI has brought to UI/UX design is hyper-personalization. By analyzing user behavior, AI can tailor content, recommendations, and layouts to individual preferences, creating a more engaging experience.
How It Works:
AI analyzes user interactions, including clicks, time spent, and preferences.
Dynamic UI adjustments ensure users see what’s most relevant to them.
Personalized recommendations, like Netflix suggesting shows or e-commerce platforms curating product lists.
Smart Chatbots & Conversational UI
AI-powered chatbots have revolutionized customer interactions by offering real-time, intelligent responses. They enhance UX by providing 24/7 support, answering FAQs, and guiding users seamlessly through applications or websites.
Examples:
Virtual assistants like Siri, Alexa, and Google Assistant.
AI chatbots in banking, e-commerce, and healthcare.
NLP-powered bots that understand user intent and sentiment.
Predictive UX: Anticipating User Needs
Predictive UX leverages ML algorithms to anticipate user actions before they happen, streamlining interactions and reducing friction.
Real-World Applications:
Smart search suggestions (e.g., Google, Amazon, Spotify).
AI-powered auto-fill forms that reduce typing effort.
Anticipatory design like Google Maps estimating destinations.
AI-Powered UI Design Automation
AI is streamlining design workflows by automating repetitive tasks, allowing designers to focus on creativity and innovation.
Key AI-Powered Tools:
Adobe Sensei: Automates image editing, tagging, and design suggestions.
Figma AI Plugins & Sketch: Generate elements based on user input.
UX Writing Assistants that enhance microcopy with NLP.
Voice & Gesture-Based Interactions
With AI advancements, voice and gesture control are becoming standard features in UI/UX design, offering more intuitive, hands-free interactions.
Examples:
Voice commands via Google Assistant, Siri, Alexa.
Gesture-based UI on smart TVs, AR/VR devices.
Facial recognition & biometric authentication for secure logins.
AI in Accessibility & Inclusive Design
AI is making digital products more accessible to users with disabilities by enabling assistive technologies and improving UX for all.
How AI Enhances Accessibility:
Voice-to-text and text-to-speech via Google Accessibility.
Alt-text generation for visually impaired users.
Automated color contrast adjustments for better readability.
Sentiment Analysis for Improved UX
AI-powered sentiment analysis tools track user emotions through feedback, reviews, and interactions, helping designers refine UX strategies.
Uses of Sentiment Analysis:
Detecting frustration points in customer feedback.
Optimizing UI elements based on emotional responses.
Enhancing A/B testing insights with AI-driven analytics.
Future of AI in UI/UX: What’s Next?
As AI and ML continue to evolve, UI/UX design will become more intuitive, adaptive, and human-centric. Future trends include:
AI-generated UI designs with minimal manual input.
Real-time, emotion-based UX adaptations.
Brain-computer interface (BCI) integrations for immersive experiences.
Final Thoughts
AI and ML are not replacing designers—they are empowering them to deliver smarter, faster, and more engaging experiences. As we move into a future dominated by intelligent interfaces, UI/UX designers must embrace AI-powered design methodologies to create more personalized, accessible, and user-friendly digital products.
Explore more at Pixelizes.com for cutting-edge design insights, AI tools, and UX trends.
2 notes · View notes
raomarketingpro · 7 months ago
Text
Free AI Tools
Artificial Intelligence (AI) has revolutionized the way we work, learn, and create. With an ever-growing number of tools, it’s now easier than ever to integrate AI into your personal and professional life without spending a dime. Below, we’ll explore some of the best free AI tools across various categories, helping you boost productivity, enhance creativity, and automate mundane tasks.
Wanna know about free ai tools
1. Content Creation Tools
ChatGPT (OpenAI)
One of the most popular AI chatbots, ChatGPT, offers a free plan that allows users to generate ideas, write content, answer questions, and more. Its user-friendly interface makes it accessible for beginners and professionals alike.
Best For:
Writing articles, emails, and brainstorming ideas.
Limitations:
Free tier usage is capped; may require upgrading for heavy use.
Copy.ai
Copy.ai focuses on helping users craft engaging marketing copy, blog posts, and social media captions.
2. Image Generation Tools
DALL·EOpenAI’s DALL·E can generate stunning, AI-created artwork from text prompts. The free tier allows users to explore creative possibilities, from surreal art to photo-realistic images.
Craiyon (formerly DALL·E Mini)This free AI image generator is great for creating quick, fun illustrations. It’s entirely free but may not match the quality of professional tools.
3. Video Editing and Creation
Runway MLRunway ML offers free tools for video editing, including AI-based background removal, video enhancement, and even text-to-video capabilities.
Pictory.aiTurn scripts or blog posts into short, engaging videos with this free AI-powered tool. Pictory automates video creation, saving time for marketers and educators.
4. Productivity Tools
Notion AINotion's AI integration enhances the already powerful productivity app. It can help generate meeting notes, summarize documents, or draft content directly within your workspace.
Otter.aiOtter.ai is a fantastic tool for transcribing meetings, interviews, or lectures. It offers a free plan that covers up to 300 minutes of transcription monthly.
5. Coding and Data Analysis
GitHub Copilot (Free for Students)GitHub Copilot, powered by OpenAI, assists developers by suggesting code and speeding up development workflows. It’s free for students with GitHub’s education pack.
Google ColabGoogle’s free cloud-based platform for coding supports Python and is perfect for data science projects and machine learning experimentation.
6. Design and Presentation
Canva AICanva’s free tier includes AI-powered tools like Magic Resize and text-to-image generation, making it a top choice for creating professional presentations and graphics.
Beautiful.aiThis AI presentation tool helps users create visually appealing slides effortlessly, ideal for professionals preparing pitch decks or educational slides.
7. AI for Learning
Duolingo AIDuolingo now integrates AI to provide personalized feedback and adaptive lessons for language learners.
Khanmigo (from Khan Academy)This AI-powered tutor helps students with math problems and concepts in an interactive way. While still in limited rollout, it’s free for Khan Academy users.
Why Use Free AI Tools?
Free AI tools are perfect for testing the waters without financial commitments. They’re particularly valuable for:
Conclusion
AI tools are democratizing access to technology, allowing anyone to leverage advanced capabilities at no cost. Whether you’re a writer, designer, developer, or educator, there’s a free AI tool out there for you. Start experimenting today and unlock new possibilities!
4o
5 notes · View notes
xaltius · 4 months ago
Text
The Dos and Don’ts of AI & ML in Digital Marketing
Tumblr media
Artificial intelligence (AI) and machine learning (ML) are revolutionizing the digital marketing landscape, offering unprecedented opportunities for personalization, automation, and optimization. However, like any powerful tool, AI and ML must be wielded wisely. This blog outlines the dos and don'ts of leveraging these technologies effectively in your digital marketing strategies.
The Dos:
Do Define Clear Objectives: Before implementing any AI/ML solution, clearly define your marketing goals. What are you trying to achieve? Increased conversions? Improved customer engagement? Specific objectives will guide your AI/ML strategy and ensure you're measuring the right metrics.
Do Focus on Data Quality: AI/ML algorithms are only as good as the data they are trained on. Prioritize collecting clean, accurate, and relevant data. Invest in data cleansing and validation processes to ensure the reliability of your AI-driven insights.
Do Start Small and Iterate: Don't try to implement everything at once. Begin with a specific use case, such as automating social media posting or personalizing email campaigns. Test, refine, and iterate on your approach before scaling up.
Do Prioritize Personalization: AI/ML excels at personalization. Leverage these technologies to create tailored content, product recommendations, and offers for individual customers based on their behavior, preferences, and demographics.
Do Embrace Automation: AI can automate repetitive tasks, freeing up marketers to focus on strategic initiatives. Identify areas where AI can streamline workflows, such as ad campaign optimization, content curation, or customer service interactions.
Do Focus on Transparency and Explainability: Understand how your AI/ML models work and ensure they are transparent and explainable. This is crucial for building trust and addressing ethical concerns.
Do Measure and Analyze Results: Track the performance of your AI/ML-driven marketing campaigns and analyze the data to identify areas for improvement. Use data to inform your decisions and optimize your strategies.
Do Stay Updated: The field of AI/ML is constantly evolving. Keep up with the latest advancements, new tools, and best practices to ensure you're maximizing the potential of these technologies.
The Don'ts:
Don't Treat AI as a Magic Bullet: AI/ML is a powerful tool, but it's not a magic solution. It requires careful planning, implementation, and ongoing management. Don't expect overnight results without putting in the effort.
Don't Neglect Human Oversight: While AI can automate tasks, it's essential to maintain human oversight. Human judgment is still crucial for strategic decision-making, creative development, and ethical considerations.
Don't Over-Rely on Automation: While automation is beneficial, don't over-automate to the point where you lose the human touch. Maintain a balance between automation and human interaction to ensure a personalized and engaging customer experience.
Don't Ignore Ethical Implications: AI/ML raises ethical concerns about data privacy, bias, and transparency. Be mindful of these issues and ensure that your AI-driven marketing practices are ethical and responsible.
Don't Forget About Data Security: Protecting customer data is paramount. Implement robust security measures to safeguard your data from unauthorized access and breaches.
Don't Be Afraid to Experiment: AI/ML is a field of experimentation. Don't be afraid to try new approaches, test different algorithms, and learn from your mistakes.
Don't Underestimate the Importance of Training: Proper training is essential for effectively using AI/ML tools and understanding their capabilities and limitations. Invest in training for your marketing team to ensure they have the skills they need to succeed.
Digital Marketing & AI Certification Program: Your Path to AI-Powered Marketing Mastery
Want to become a sought-after digital marketing professional with expertise in AI and ML? Consider enrolling in a Digital Marketing & AI Certification Program. These programs provide comprehensive training on the latest AI/ML tools and techniques, preparing you to leverage the power of these technologies in your marketing strategies. You'll learn how to:
Develop and implement AI/ML-driven marketing campaigns.
Analyze data and generate actionable insights.
Choose and use the right AI/ML marketing tools.
Address ethical considerations related to AI/ML in marketing.
Conclusion:
AI and ML are transforming the landscape of digital marketing, offering unprecedented opportunities for growth and innovation. By following these dos and don'ts, marketers can harness the power of these technologies effectively and responsibly, driving better results and achieving their marketing goals. The future of digital marketing is intelligent, and it's powered by AI and ML.
4 notes · View notes
christianbale121 · 4 months ago
Text
AI Agent Development: How to Create Intelligent Virtual Assistants for Business Success
In today's digital landscape, businesses are increasingly turning to AI-powered virtual assistants to streamline operations, enhance customer service, and boost productivity. AI agent development is at the forefront of this transformation, enabling companies to create intelligent, responsive, and highly efficient virtual assistants. In this blog, we will explore how to develop AI agents and leverage them for business success.
Tumblr media
Understanding AI Agents and Virtual Assistants
AI agents, or intelligent virtual assistants, are software programs that use artificial intelligence, machine learning, and natural language processing (NLP) to interact with users, automate tasks, and make decisions. These agents can be deployed across various platforms, including websites, mobile apps, and messaging applications, to improve customer engagement and operational efficiency.
Key Features of AI Agents
Natural Language Processing (NLP): Enables the assistant to understand and process human language.
Machine Learning (ML): Allows the assistant to improve over time based on user interactions.
Conversational AI: Facilitates human-like interactions.
Task Automation: Handles repetitive tasks like answering FAQs, scheduling appointments, and processing orders.
Integration Capabilities: Connects with CRM, ERP, and other business tools for seamless operations.
Steps to Develop an AI Virtual Assistant
1. Define Business Objectives
Before developing an AI agent, it is crucial to identify the business goals it will serve. Whether it's improving customer support, automating sales inquiries, or handling HR tasks, a well-defined purpose ensures the assistant aligns with organizational needs.
2. Choose the Right AI Technologies
Selecting the right technology stack is essential for building a powerful AI agent. Key technologies include:
NLP frameworks: OpenAI's GPT, Google's Dialogflow, or Rasa.
Machine Learning Platforms: TensorFlow, PyTorch, or Scikit-learn.
Speech Recognition: Amazon Lex, IBM Watson, or Microsoft Azure Speech.
Cloud Services: AWS, Google Cloud, or Microsoft Azure.
3. Design the Conversation Flow
A well-structured conversation flow is crucial for user experience. Define intents (what the user wants) and responses to ensure the AI assistant provides accurate and helpful information. Tools like chatbot builders or decision trees help streamline this process.
4. Train the AI Model
Training an AI assistant involves feeding it with relevant datasets to improve accuracy. This may include:
Supervised Learning: Using labeled datasets for training.
Reinforcement Learning: Allowing the assistant to learn from interactions.
Continuous Learning: Updating models based on user feedback and new data.
5. Test and Optimize
Before deployment, rigorous testing is essential to refine the AI assistant's performance. Conduct:
User Testing: To evaluate usability and responsiveness.
A/B Testing: To compare different versions for effectiveness.
Performance Analysis: To measure speed, accuracy, and reliability.
6. Deploy and Monitor
Once the AI assistant is live, continuous monitoring and optimization are necessary to enhance user experience. Use analytics to track interactions, identify issues, and implement improvements over time.
Benefits of AI Virtual Assistants for Businesses
1. Enhanced Customer Service
AI-powered virtual assistants provide 24/7 support, instantly responding to customer queries and reducing response times.
2. Increased Efficiency
By automating repetitive tasks, businesses can save time and resources, allowing employees to focus on higher-value tasks.
3. Cost Savings
AI assistants reduce the need for large customer support teams, leading to significant cost reductions.
4. Scalability
Unlike human agents, AI assistants can handle multiple conversations simultaneously, making them highly scalable solutions.
5. Data-Driven Insights
AI assistants gather valuable data on customer behavior and preferences, enabling businesses to make informed decisions.
Future Trends in AI Agent Development
1. Hyper-Personalization
AI assistants will leverage deep learning to offer more personalized interactions based on user history and preferences.
2. Voice and Multimodal AI
The integration of voice recognition and visual processing will make AI assistants more interactive and intuitive.
3. Emotional AI
Advancements in AI will enable virtual assistants to detect and respond to human emotions for more empathetic interactions.
4. Autonomous AI Agents
Future AI agents will not only respond to queries but also proactively assist users by predicting their needs and taking independent actions.
Conclusion
AI agent development is transforming the way businesses interact with customers and streamline operations. By leveraging cutting-edge AI technologies, companies can create intelligent virtual assistants that enhance efficiency, reduce costs, and drive business success. As AI continues to evolve, embracing AI-powered assistants will be essential for staying competitive in the digital era.
5 notes · View notes
nividawebsolutions · 6 months ago
Text
Top Trends in Software Development for 2025
The software development industry is evolving at an unprecedented pace, driven by advancements in technology and the increasing demands of businesses and consumers alike. As we step into 2025, staying ahead of the curve is essential for businesses aiming to remain competitive. Here, we explore the top trends shaping the software development landscape and how they impact businesses. For organizations seeking cutting-edge solutions, partnering with the Best Software Development Company in Vadodara, Gujarat, or India can make all the difference.
Tumblr media
1. Artificial Intelligence and Machine Learning Integration:
Artificial Intelligence (AI) and Machine Learning (ML) are no longer optional but integral to modern software development. From predictive analytics to personalized user experiences, AI and ML are driving innovation across industries. In 2025, expect AI-powered tools to streamline development processes, improve testing, and enhance decision-making.
Businesses in Gujarat and beyond are leveraging AI to gain a competitive edge. Collaborating with the Best Software Development Company in Gujarat ensures access to AI-driven solutions tailored to specific industry needs.
2. Low-Code and No-Code Development Platforms:
The demand for faster development cycles has led to the rise of low-code and no-code platforms. These platforms empower non-technical users to create applications through intuitive drag-and-drop interfaces, significantly reducing development time and cost.
For startups and SMEs in Vadodara, partnering with the Best Software Development Company in Vadodara ensures access to these platforms, enabling rapid deployment of business applications without compromising quality.
3. Cloud-Native Development:
Cloud-native technologies, including Kubernetes and microservices, are becoming the backbone of modern applications. By 2025, cloud-native development will dominate, offering scalability, resilience, and faster time-to-market.
The Best Software Development Company in India can help businesses transition to cloud-native architectures, ensuring their applications are future-ready and capable of handling evolving market demands.
4. Edge Computing:
As IoT devices proliferate, edge computing is emerging as a critical trend. Processing data closer to its source reduces latency and enhances real-time decision-making. This trend is particularly significant for industries like healthcare, manufacturing, and retail.
Organizations seeking to leverage edge computing can benefit from the expertise of the Best Software Development Company in Gujarat, which specializes in creating applications optimized for edge environments.
5. Cybersecurity by Design:
With the increasing sophistication of cyber threats, integrating security into the development process has become non-negotiable. Cybersecurity by design ensures that applications are secure from the ground up, reducing vulnerabilities and protecting sensitive data.
The Best Software Development Company in Vadodara prioritizes cybersecurity, providing businesses with robust, secure software solutions that inspire trust among users.
6. Blockchain Beyond Cryptocurrencies:
Blockchain technology is expanding beyond cryptocurrencies into areas like supply chain management, identity verification, and smart contracts. In 2025, blockchain will play a pivotal role in creating transparent, tamper-proof systems.
Partnering with the Best Software Development Company in India enables businesses to harness blockchain technology for innovative applications that drive efficiency and trust.
7. Progressive Web Apps (PWAs):
Progressive Web Apps (PWAs) combine the best features of web and mobile applications, offering seamless experiences across devices. PWAs are cost-effective and provide offline capabilities, making them ideal for businesses targeting diverse audiences.
The Best Software Development Company in Gujarat can develop PWAs tailored to your business needs, ensuring enhanced user engagement and accessibility.
8. Internet of Things (IoT) Expansion:
IoT continues to transform industries by connecting devices and enabling smarter decision-making. From smart homes to industrial IoT, the possibilities are endless. In 2025, IoT solutions will become more sophisticated, integrating AI and edge computing for enhanced functionality.
For businesses in Vadodara and beyond, collaborating with the Best Software Development Company in Vadodara ensures access to innovative IoT solutions that drive growth and efficiency.
9. DevSecOps:
DevSecOps integrates security into the DevOps pipeline, ensuring that security is a shared responsibility throughout the development lifecycle. This approach reduces vulnerabilities and ensures compliance with industry standards.
The Best Software Development Company in India can help implement DevSecOps practices, ensuring that your applications are secure, scalable, and compliant.
10. Sustainability in Software Development:
Sustainability is becoming a priority in software development. Green coding practices, energy-efficient algorithms, and sustainable cloud solutions are gaining traction. By adopting these practices, businesses can reduce their carbon footprint and appeal to environmentally conscious consumers.
Working with the Best Software Development Company in Gujarat ensures access to sustainable software solutions that align with global trends.
11. 5G-Driven Applications:
The rollout of 5G networks is unlocking new possibilities for software development. Ultra-fast connectivity and low latency are enabling applications like augmented reality (AR), virtual reality (VR), and autonomous vehicles.
The Best Software Development Company in Vadodara is at the forefront of leveraging 5G technology to create innovative applications that redefine user experiences.
12. Hyperautomation:
Hyperautomation combines AI, ML, and robotic process automation (RPA) to automate complex business processes. By 2025, hyperautomation will become a key driver of efficiency and cost savings across industries.
Partnering with the Best Software Development Company in India ensures access to hyperautomation solutions that streamline operations and boost productivity.
13. Augmented Reality (AR) and Virtual Reality (VR):
AR and VR technologies are transforming industries like gaming, education, and healthcare. In 2025, these technologies will become more accessible, offering immersive experiences that enhance learning, entertainment, and training.
The Best Software Development Company in Gujarat can help businesses integrate AR and VR into their applications, creating unique and engaging user experiences.
Conclusion:
The software development industry is poised for significant transformation in 2025, driven by trends like AI, cloud-native development, edge computing, and hyperautomation. Staying ahead of these trends requires expertise, innovation, and a commitment to excellence.
For businesses in Vadodara, Gujarat, or anywhere in India, partnering with the Best Software Development Company in Vadodara, Gujarat, or India ensures access to cutting-edge solutions that drive growth and success. By embracing these trends, businesses can unlock new opportunities and remain competitive in an ever-evolving digital landscape.
5 notes · View notes
aionlinemoney · 7 months ago
Text
The Role of Machine Learning Engineer: Combining Technology and Artificial Intelligence
Tumblr media
Artificial intelligence has transformed our daily lives in a greater way than we can’t imagine over the past year, Impacting how we work, communicate, and solve problems. Today, Artificial intelligence furiously drives the world in all sectors from daily life to the healthcare industry. In this blog we will learn how machine learning engineer build systems that learn from data and get better over time, playing a huge part in the development of artificial intelligence (AI). Artificial intelligence is an important field, making it more innovative in every industry. In the blog, we will look career in Machine learning in the field of engineering.
What is Machine Learning Engineering?
Machine Learning engineer is a specialist who designs and builds AI models to make complex challenges easy. The role in this field merges data science and software engineering making both fields important in this field. The main role of a Machine learning engineer is to build and design software that can automate AI models. The demand for this field has grown in recent years. As Artificial intelligence is a driving force in our daily needs, it become important to run the AI in a clear and automated way.
A machine learning engineer creates systems that help computers to learn and make decisions, similar to human tasks like recognizing voices, identifying images, or predicting results. Not similar to regular programming, which follows strict rules, machine learning focuses on teaching computers to find patterns in data and improve their predictions over time.
Responsibility of a Machine Learning Engineer:
Collecting and Preparing Data
Machine learning needs a lot of data to work well. These engineers spend a lot of time finding and organizing data. That means looking for useful data sources and fixing any missing information. Good data preparation is essential because it sets the foundation for building successful models.
Building and Training Models
The main task of Machine learning engineer is creating models that learn from data. Using tools like TensorFlow, PyTorch, and many more, they build proper algorithms for specific tasks. Training a model is challenging and requires careful adjustments and monitoring to ensure it’s accurate and useful.
Checking Model Performance
When a model is trained, then it is important to check how well it works. Machine learning engineers use scores like accuracy to see model performance. They usually test the model with separate data to see how it performs in real-world situations and make improvements as needed.
Arranging and Maintaining the Model
After testing, ML engineers put the model into action so it can work with real-time data. They monitor the model to make sure it stays accurate over time, as data can change and affect results. Regular updates help keep the model effective.
Working with Other Teams
ML engineers often work closely with data scientists, software engineers, and experts in the field. This teamwork ensures that the machine learning solution fits the business goals and integrates smoothly with other systems.
Important skill that should have to become Machine Learning Engineer:
Programming Languages
Python and R are popular options in machine learning, also other languages like Java or C++ can also help, especially for projects needing high performance.
Data Handling and Processing
Working with large datasets is necessary in Machine Learning. ML engineers should know how to use SQL and other database tools and be skilled in preparing and cleaning data before using it in models.
Machine Learning Structure
ML engineers need to know structure like TensorFlow, Keras, PyTorch, and sci-kit-learn. Each of these tools has unique strengths for building and training models, so choosing the right one depends on the project.
Mathematics and Statistics
A strong background in math, including calculus, linear algebra, probability, and statistics, helps ML engineers understand how algorithms work and make accurate predictions.
Why to become a Machine Learning engineer?
A career as a machine learning engineer is both challenging and creative, allowing you to work with the latest technology. This field is always changing, with new tools and ideas coming up every year. If you like to enjoy solving complex problems and want to make a real impact, ML engineering offers an exciting path.
Conclusion 
Machine learning engineer plays an important role in AI and data science, turning data into useful insights and creating systems that learn on their own. This career is great for people who love technology, enjoy learning, and want to make a difference in their lives. With many opportunities and uses, Artificial intelligence is a growing field that promises exciting innovations that will shape our future. Artificial Intelligence is changing the world and we should also keep updated our knowledge in this field, Read AI related latest blogs here.
2 notes · View notes
morningstartranslation · 1 year ago
Text
5 Reasons Why You Should Be Careful About Machine Translation
Machine translation (MT) usually refers to using algorithms and machine learning (ML) models to translate natural language text from one language to another without human intervention. The most common MT examples include but are not limited to Google Translate, Bing Microsoft Translator, Amazon Translate and DeepL.
With the rapid development of generative artificial intelligence (AI) and ChatGPT, many industries face unprecedented challenges, and the translation industry hasn't been spared. Taking efficiency and cost into consideration, more and more business clients tend to use machine translation to complete their projects.
However, is it always a wise choice? Here are 5 reasons why you should be careful about machine translation:
① Cultural Accuracy: Every culture possesses unique lexical terms, slang, and colloquialisms that machines haven't shown the capability to translate yet, inaccurate translations may lead to poor interpretation of your brand, vision, market position and business strategies.
② Human Touch: Human translation goes through a time-tested process of multiple editing and proofreading to ensure that the translation isn't only grammatically correct and readable, but always enhanced for the target audience. On the contrary, machine translation can only generate simple, toneless text, it's fast and budget-friendly, but it can never be intriguing.
③ Flexibility: Language is constantly evolving, one single term may have entirely different meanings in different contexts, let alone phrases, sentences or even longer paragraphs. MT tools can only generate translations based on the known corpus, they can't predict and correct specific grammatical and cultural errors like human do.
④ Layout: Good translation takes time, so does formatting/layout. When we assess the quality of translation, formatting/layout also palys an important part. Unfortunately, almost all MT tools can't handle this properly, they just ignore it or put some illustrative texts instead.
⑤ Confidentiality: As a responsible language service provider, we should never disclose customer information to any unauthorised third party. But as far as I am aware, some MT tools, especially ChatGPT, may collect and store different kinds of user input, which can be a great security risk for businesses.
In short, it's OK to use MT tools in less important content (i.e., content that does not require translation precision and extensive copywriting). But when it comes to business documents or audience-facing content, there is nothing can beat human translation.
Visit https://www.morningstartranslation.com/ to learn more.
6 notes · View notes
beeapothecary · 9 months ago
Text
AI Pollen Project Update 1
Hi everyone! I have a bunch of ongoing projects in honey and other things so I figured I should start documenting them here to help myself and anyone who might be interested. Most of these aren’t for a grade, but just because I’m interested or want to improve something.
One of the projects I’m working on is a machine learning model to help with pollen identification under visual methods. There’s very few people who are specialized to identify the origins of pollens in honey, which is pretty important for research! And the people who do it are super busy because it’s very time consuming. This is meant to be a tool and an aid so they can devote more time to the more important parts of the research, such as hunting down geographical origins, rather than the mundane parts like counting individual pollen and trying to group all the species in a sample.
The model will have 3 goals to aid these researchers:
Count overall pollen and individual species of pollen in a sample of honey
Provide the species of each pollen in a sample
Group pollen species together with a confidence listed per sample
Super luckily there’s pretty large pollen databases out there with different types of imaging techniques being used (SEM, electron microscopy, 40X magnification, etc). I’m kind of stumped on which python AI library to use, right now I’ve settled on using OpenCV to make and train the model, but I don’t know if there’s a better option for what I’m trying to do. If anyone has suggestions please let me know
This project will be open source and completely free once I’m done, and I also intend on making it so more confirmed pollen species samples with confirmed geographical origins can be added by researchers easily. I am a firm believer that ML is a tool that’s supposed to make the mundane parts easier so we have time to do what brings us joy, which is why Im working on this project!
I’m pretty busy with school, so I’ll make the next update once I have more progress! :)
Also a little note: genetic tests are more often used for honey samples since it is more accessible despite being more expensive, but this is still an important part of the research. Genetic testing also leaves a lot to be desired, like not being able to tell the exact species of the pollen which can help pinpoint geographical location or adulteration.
2 notes · View notes
partisan-by-default · 1 year ago
Text
Several big businesses have published source code that incorporates a software package previously hallucinated by generative AI.
Not only that but someone, having spotted this reoccurring hallucination, had turned that made-up dependency into a real one, which was subsequently downloaded and installed thousands of times by developers as a result of the AI's bad advice, we've learned. If the package was laced with actual malware, rather than being a benign test, the results could have been disastrous.
According to Bar Lanyado, security researcher at Lasso Security, one of the businesses fooled by AI into incorporating the package is Alibaba, which at the time of writing still includes a pip command to download the Python package huggingface-cli in its GraphTranslator installation instructions.
There is a legit huggingface-cli, installed using pip install -U "huggingface_hub[cli]".
But the huggingface-cli distributed via the Python Package Index (PyPI) and required by Alibaba's GraphTranslator – installed using pip install huggingface-cli – is fake, imagined by AI and turned real by Lanyado as an experiment.
He created huggingface-cli in December after seeing it repeatedly hallucinated by generative AI; by February this year, Alibaba was referring to it in GraphTranslator's README instructions rather than the real Hugging Face CLI tool.
5 notes · View notes
healthcaremarketanalysis · 9 months ago
Text
Revolutionizing Healthcare: The Role of Cloud Computing in Modern Healthcare Technologies
In today’s digital era, cloud computing is transforming industries, and healthcare is no exception. The integration of cloud computing healthcare technologies is reshaping patient care, medical research, and healthcare management. Let’s explore how cloud computing is revolutionizing healthcare and the benefits it brings.
Tumblr media
What is Cloud Computing in Healthcare?
Cloud computing in healthcare refers to the use of remote servers to store, manage, and process healthcare data, rather than relying on local servers or personal computers. This technology allows healthcare organizations to access vast amounts of data, collaborate with other institutions, and scale operations seamlessly.
Download PDF Brochure
Key Benefits of Cloud Computing in Healthcare
Enhanced Data Storage and Accessibility Cloud technology allows healthcare providers to store massive volumes of patient data, including medical records, images, and test results, securely. Clinicians can access this data from anywhere, ensuring that patient information is available for timely decision-making.
Improved Collaboration Cloud-based healthcare platforms enable easy sharing of patient data between healthcare providers, specialists, and labs. This facilitates better collaboration and more accurate diagnoses and treatment plans, especially in multi-disciplinary cases.
Cost Efficiency The cloud reduces the need for expensive hardware, software, and in-house IT teams. Healthcare providers only pay for the resources they use, making it a cost-effective solution. Additionally, the scalability of cloud systems ensures they can grow as healthcare organizations expand.
Better Data Security Protecting sensitive patient information is critical in healthcare. Cloud computing providers invest heavily in data security measures such as encryption, multi-factor authentication, and regular audits, ensuring compliance with regulatory standards like HIPAA.
Telemedicine and Remote Patient Monitoring Cloud computing powers telemedicine platforms, allowing patients to consult with doctors virtually, from the comfort of their homes. It also enables remote patient monitoring, where doctors can track patients' health metrics in real time, improving outcomes for chronic conditions.
Advanced Data Analytics The cloud supports the integration of advanced data analytics tools, including artificial intelligence (AI) and machine learning (ML), which can analyze large datasets to predict health trends, track disease outbreaks, and personalize treatment plans based on individual patient data.
Use Cases of Cloud Computing in Healthcare
Electronic Health Records (EHRs): Cloud-based EHRs allow healthcare providers to access and update patient records instantly, improving the quality of care.
Genomics and Precision Medicine: Cloud computing accelerates the processing of large datasets in genomics, supporting research and development in personalized medicine.
Hospital Information Systems (HIS): Cloud-powered HIS streamline hospital operations, from patient admissions to billing, improving efficiency.
Challenges in Cloud Computing for Healthcare
Despite its numerous benefits, there are challenges to implementing cloud computing in healthcare. These include:
Data Privacy Concerns: Although cloud providers offer robust security measures, healthcare organizations must ensure their systems are compliant with local and international regulations.
Integration with Legacy Systems: Many healthcare institutions still rely on outdated technology, making it challenging to integrate cloud solutions smoothly.
Staff Training: Healthcare professionals need adequate training to use cloud-based systems effectively.
Request Sample Pages
The Future of Cloud Computing in Healthcare
The future of healthcare will be increasingly cloud-centric. With advancements in AI, IoT, and big data analytics, cloud computing will continue to drive innovations in personalized medicine, population health management, and patient care. Additionally, with the growing trend of wearable devices and health apps, cloud computing will play a crucial role in integrating and managing data from diverse sources to provide a comprehensive view of patient health.
Conclusion
Cloud computing is not just a trend in healthcare; it is a transformative force driving the industry towards more efficient, secure, and patient-centric care. As healthcare organizations continue to adopt cloud technologies, we can expect to see improved patient outcomes, lower costs, and innovations that were once thought impossible.
Embracing cloud computing in healthcare is essential for any organization aiming to stay at the forefront of medical advancements and patient care.
Content Source:
2 notes · View notes