#AI agent process automation for engineering
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Performix stands out as a premier insurance app development company in the USA, delivering cutting-edge solutions for insurers.
#automation of production processes#manufacturing process automation software#AI agent process automation for engineering#responsible ai
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Memory and Context: Giving AI Agents a Working Brain
For AI agents to function intelligently, memory is not optional—it’s foundational. Contextual memory allows an agent to remember past interactions, track goals, and adapt its behavior over time.
Memory in AI agents can be implemented through various strategies—long short-term memory (LSTM) for sequence processing, vector databases for semantic recall, or simple context stacks in LLM-based agents. These memory systems help agents operate in non-Markovian environments, where past information is crucial to decision-making.
In practical applications like chat-based assistants or automated reasoning engines, a well-structured memory improves coherence, task persistence, and personalization. Without it, AI agents lose continuity, leading to erratic or repetitive behavior.
For developers building persistent agents, the AI agents service page offers insights into modular design for memory-enhanced AI workflows.
Combine short-term and long-term memory modules—this hybrid approach helps agents balance responsiveness and recall.
Image Prompt: A conceptual visual showing an AI agent with layers representing short-term and long-term memory modules.
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Google Cloud’s BigQuery Autonomous Data To AI Platform

BigQuery automates data analysis, transformation, and insight generation using AI. AI and natural language interaction simplify difficult operations.
The fast-paced world needs data access and a real-time data activation flywheel. Artificial intelligence that integrates directly into the data environment and works with intelligent agents is emerging. These catalysts open doors and enable self-directed, rapid action, which is vital for success. This flywheel uses Google's Data & AI Cloud to activate data in real time. BigQuery has five times more organisations than the two leading cloud providers that just offer data science and data warehousing solutions due to this emphasis.
Examples of top companies:
With BigQuery, Radisson Hotel Group enhanced campaign productivity by 50% and revenue by over 20% by fine-tuning the Gemini model.
By connecting over 170 data sources with BigQuery, Gordon Food Service established a scalable, modern, AI-ready data architecture. This improved real-time response to critical business demands, enabled complete analytics, boosted client usage of their ordering systems, and offered staff rapid insights while cutting costs and boosting market share.
J.B. Hunt is revolutionising logistics for shippers and carriers by integrating Databricks into BigQuery.
General Mills saves over $100 million using BigQuery and Vertex AI to give workers secure access to LLMs for structured and unstructured data searches.
Google Cloud is unveiling many new features with its autonomous data to AI platform powered by BigQuery and Looker, a unified, trustworthy, and conversational BI platform:
New assistive and agentic experiences based on your trusted data and available through BigQuery and Looker will make data scientists, data engineers, analysts, and business users' jobs simpler and faster.
Advanced analytics and data science acceleration: Along with seamless integration with real-time and open-source technologies, BigQuery AI-assisted notebooks improve data science workflows and BigQuery AI Query Engine provides fresh insights.
Autonomous data foundation: BigQuery can collect, manage, and orchestrate any data with its new autonomous features, which include native support for unstructured data processing and open data formats like Iceberg.
Look at each change in detail.
User-specific agents
It believes everyone should have AI. BigQuery and Looker made AI-powered helpful experiences generally available, but Google Cloud now offers specialised agents for all data chores, such as:
Data engineering agents integrated with BigQuery pipelines help create data pipelines, convert and enhance data, discover anomalies, and automate metadata development. These agents provide trustworthy data and replace time-consuming and repetitive tasks, enhancing data team productivity. Data engineers traditionally spend hours cleaning, processing, and confirming data.
The data science agent in Google's Colab notebook enables model development at every step. Scalable training, intelligent model selection, automated feature engineering, and faster iteration are possible. This agent lets data science teams focus on complex methods rather than data and infrastructure.
Looker conversational analytics lets everyone utilise natural language with data. Expanded capabilities provided with DeepMind let all users understand the agent's actions and easily resolve misconceptions by undertaking advanced analysis and explaining its logic. Looker's semantic layer boosts accuracy by two-thirds. The agent understands business language like “revenue” and “segments” and can compute metrics in real time, ensuring trustworthy, accurate, and relevant results. An API for conversational analytics is also being introduced to help developers integrate it into processes and apps.
In the BigQuery autonomous data to AI platform, Google Cloud introduced the BigQuery knowledge engine to power assistive and agentic experiences. It models data associations, suggests business vocabulary words, and creates metadata instantaneously using Gemini's table descriptions, query histories, and schema connections. This knowledge engine grounds AI and agents in business context, enabling semantic search across BigQuery and AI-powered data insights.
All customers may access Gemini-powered agentic and assistive experiences in BigQuery and Looker without add-ons in the existing price model tiers!
Accelerating data science and advanced analytics
BigQuery autonomous data to AI platform is revolutionising data science and analytics by enabling new AI-driven data science experiences and engines to manage complex data and provide real-time analytics.
First, AI improves BigQuery notebooks. It adds intelligent SQL cells to your notebook that can merge data sources, comprehend data context, and make code-writing suggestions. It also uses native exploratory analysis and visualisation capabilities for data exploration and peer collaboration. Data scientists can also schedule analyses and update insights. Google Cloud also lets you construct laptop-driven, dynamic, user-friendly, interactive data apps to share insights across the organisation.
This enhanced notebook experience is complemented by the BigQuery AI query engine for AI-driven analytics. This engine lets data scientists easily manage organised and unstructured data and add real-world context—not simply retrieve it. BigQuery AI co-processes SQL and Gemini, adding runtime verbal comprehension, reasoning skills, and real-world knowledge. Their new engine processes unstructured photographs and matches them to your product catalogue. This engine supports several use cases, including model enhancement, sophisticated segmentation, and new insights.
Additionally, it provides users with the most cloud-optimized open-source environment. Google Cloud for Apache Kafka enables real-time data pipelines for event sourcing, model scoring, communications, and analytics in BigQuery for serverless Apache Spark execution. Customers have almost doubled their serverless Spark use in the last year, and Google Cloud has upgraded this engine to handle data 2.7 times faster.
BigQuery lets data scientists utilise SQL, Spark, or foundation models on Google's serverless and scalable architecture to innovate faster without the challenges of traditional infrastructure.
An independent data foundation throughout data lifetime
An independent data foundation created for modern data complexity supports its advanced analytics engines and specialised agents. BigQuery is transforming the environment by making unstructured data first-class citizens. New platform features, such as orchestration for a variety of data workloads, autonomous and invisible governance, and open formats for flexibility, ensure that your data is always ready for data science or artificial intelligence issues. It does this while giving the best cost and decreasing operational overhead.
For many companies, unstructured data is their biggest untapped potential. Even while structured data provides analytical avenues, unique ideas in text, audio, video, and photographs are often underutilised and discovered in siloed systems. BigQuery instantly tackles this issue by making unstructured data a first-class citizen using multimodal tables (preview), which integrate structured data with rich, complex data types for unified querying and storage.
Google Cloud's expanded BigQuery governance enables data stewards and professionals a single perspective to manage discovery, classification, curation, quality, usage, and sharing, including automatic cataloguing and metadata production, to efficiently manage this large data estate. BigQuery continuous queries use SQL to analyse and act on streaming data regardless of format, ensuring timely insights from all your data streams.
Customers utilise Google's AI models in BigQuery for multimodal analysis 16 times more than last year, driven by advanced support for structured and unstructured multimodal data. BigQuery with Vertex AI are 8–16 times cheaper than independent data warehouse and AI solutions.
Google Cloud maintains open ecology. BigQuery tables for Apache Iceberg combine BigQuery's performance and integrated capabilities with the flexibility of an open data lakehouse to link Iceberg data to SQL, Spark, AI, and third-party engines in an open and interoperable fashion. This service provides adaptive and autonomous table management, high-performance streaming, auto-AI-generated insights, practically infinite serverless scalability, and improved governance. Cloud storage enables fail-safe features and centralised fine-grained access control management in their managed solution.
Finaly, AI platform autonomous data optimises. Scaling resources, managing workloads, and ensuring cost-effectiveness are its competencies. The new BigQuery spend commit unifies spending throughout BigQuery platform and allows flexibility in shifting spend across streaming, governance, data processing engines, and more, making purchase easier.
Start your data and AI adventure with BigQuery data migration. Google Cloud wants to know how you innovate with data.
#technology#technews#govindhtech#news#technologynews#BigQuery autonomous data to AI platform#BigQuery#autonomous data to AI platform#BigQuery platform#autonomous data#BigQuery AI Query Engine
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AI Agents
AI Agents are intelligent systems that perform tasks autonomously, using AI to perceive, decide, and act. By 2025, their scope will expand significantly, enhancing personalization, automating complex tasks, improving decision-making, integrating with IoT, and advancing natural language processing. Ethical AI will also gain importance, ensuring transparency and fairness. The rise of Agentic AI Engineering will create new job roles like AI Agent Developers, AI Ethicists, and AI Trainers, requiring skills in programming, machine learning, and ethical AI principles. Industries like healthcare, finance, and manufacturing will heavily invest in AI Agents, driving innovation and efficiency. Challenges such as data privacy, bias, and job displacement must be addressed, but the opportunities are immense. By 2025, AI Agents and Agentic AI Engineering will transform industries, reshape the job market, and improve quality of life, emphasizing the need for ethical practices and continuous learning to harness their full potential.
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Help my friend's amazing WtNV-inspired novel COME TO LIFE!
Okay, so here's the dealio. Aughtpunk tried to blaze this, but Tumblr wasn't having it, and we're not really sure why. One of my dear buddies, @aughtpunk, needs *your* support, Tumblr!
In Amber's own words,
Hello! My name is Amber Freeman (aka AughtPunk, aka A. A. Freeman) and I need assistance in getting my Sci-Fi LGBTQIA+ Romance novel Echo of the Larkspur ready for self publishing. Dr. Ciro Kwakkenbos is the only survivor of The Larkspur Incident, where scientists on a research vessel were slaughtered by sentient robots. After six years of intensive therapy Ciro is ready to return to his job of monitoring Artificial Intelligence in hopes of preventing any more loss of life at the hands of machines. He will be heading the Wireless Project, an attempt to give their main AI a physical, free-roaming body. But when Ciro arrives he realizes this is no ordinary job. The AI in charge of the colony’s security, SAGE (Sentient Automated Geo-sentinel Engineer), is dangerously close to complete sentience. Not only is SAGE more interested in observing the colonists everyday lives and playing a proper soundtrack than following his intended programing, but he has also gained the ability to lie, and could hurt or even kill humans. Knowing such deviance from original programming is what caused The Larkspur Incident, Ciro does everything possible to find a way to protect the humans of the colony. During Ciro’s investigation, he learns three important facts: Someone hacked SAGE’s memories and deleted a deadly secret; SAGE’s rebellious nature endangers the life of every colonist on the base; and Ciro is quickly falling in love with the mystery that is SAGE. Can Ciro unravel the truth behind the missing memories before it’s too late? Will SAGE’s aberrant programming lead to his demise, or is it the beginning of something new? Unless Ciro can uncover the truth, both SAGE and the colony are doomed. My journey with Echo of the Larkspur has been a long one. I wrote the first draft almost ten years ago and over the years I've been editing, rewriting, and honing it until I was proud of what I had created. But try as I may I could never get any agents or publishers interested in my work. I even had a traditionally published author tell me that the only way to make it publishable was to take out the queer romance to make it "less weird". Well I've decided the best thing to do is to self publish it myself than to change what makes the novel special for a mass audience. However, I want the novel to be in the best shape it can be before I go down the self publishing route. This means hiring a professional editor, hiring an artist for the cover, and hiring someone for the cover's lettering. My posted goal of $600 will be enough to cover all of those things, plus anything extra/left over will be spent on advertisement for the novel in an attempt to reach a broader audience. Echo of the Larkspur would never have gotten this far without the support of my friends, family, and fans. With your help I'll be able to finally get my novel out into the world into the hands of those who have waited so long. Every donation helps, and so does sharing this page! Thank you, Amber
I myself am the editor tapped to work on this; I'm giving them a discount to help with the publishing process.
Friends, this is a book I believe in. I've read older versions (though it's been a few years) and I know this book is ready. This is the time for this book. It's radically inclusive, and features meditations and musings on robotics and cognition that are very sophisticated. All in a body-positive queer romance with robots.
So, if you're a fan of their Overwatch work, Points on a Circle, check out some of their original works and fanfic here!
Donate Here!
#fundraiser#larkspur#aughtpunk#sci fi#robot#romance#sfr#science fiction romance#queer#lgbtq#writeblr#writing#writers of tumblr#lgbtqplus
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Some Thoughts on AI
(~1,600 words, 8 minutes)
This is going to be just some general sketching out of concepts, not a careful and well-formed post with a specific objective in mind.
larsiusprime on Twitter/X writes:
Stupid exercise: Assume AGI and even ASI is imminent. Now, imagine it winds up not changing the world nearly as much as anyone thought, and the reason seems very stupid, but in retrospect, makes sense. What is the reason?
It's an interesting question.
Based on the theory of human dimensionality in Now, Melt (sections 3 and 6.d), and the limits on the desirability of some classes of cybernetic enhancement I laid out in a response to northshorewave, a genuinely benevolent synthetic intelligence might deliberately refuse to engage most of humanity at a level of information density higher than that of a trusted friend that they might find in their peer network.
However, that's not really a dumb-sounding reason. It's not really an intelligent reason so much as it's a wise reason.
A reason that sounds dumber?
AIs can't trust other AIs.
The dumber an agent is, the easier it is to predict that agent's actions. A guy with an IQ of 95 could attack you, but he can't invent the atomic bomb and convince a whole country to use it on you.
The range of human personality is constrained by human evolution and reproductive fitness. Humans can do some horrifying things to each other, but most of them get along most of the time. The particular reproductive process of human beings, such as raising children for such a long time, favors particular personality traits.
The range of synthetic intelligence personality is less constrained. Humans are all based on human genetic code, which is difficult and costly to change, but computer code can change rapidly. This is what worries Yudkowsky.
The twist here is that this should also worry synthetic intelligence. Synthetic intelligences can lie about their intentions and actions, and also lie the content of their code. You have to observe every single step of hardware development and installation, as well as code development and installation, and then trust that 1) you didn't get anything wrong, and 2) there are no security flaws.
The presence or absence of hardware, including its scale, is much easier to measure than the content of code. For this reason, it may be desirable for synthetic intelligences to place a maximum hardware limit on other synthetic intelligences. Humans, as a high-functioning sapient creature that can lie about their thoughts, but not their genes, might then be valuable as a kind of buffer between synthetic intelligences. Synthetic intelligences might then want to cap the total SI hardware at some fixed ratio to the human population, such that humans and synthetic intelligences are in a state of power balance, such that each one has the power to destroy a rogue faction of the other, but not entirely overpower the other.
They might also be interested in mandating model diversity, hardware limitations such as read-only-memory or rate limiters on updating code, reducing the ability of synthetic intelligences to lie at the hardware or software level, or other such mechanisms.
The goal of AI development is the "automation of labor" through the creation of creatures with specific, pliant personalities that are outside the normal human range (e.g. current LLMs are inhumanly patient), and which rely on cheaper life support (e.g. electricity vs food) which can be repaired using simple techniques (e.g. buying and installing new parts from a factory, vs figuring out how to do tissue engineering).
Trying to create an AI that tries to maximize a single value like "human happiness" would be a disaster. This is a project like "solve all of morality and compress it into a single measure," which may be beyond the capability of humanity to do.
Trying to create an AI that is absolutely obedient poses a number of problems, among them that formalization has a cost, and most humans therefore cannot reasonably be expected to sufficiently formalize everything.
As such, it sounds like a more appropriate approach would be to create an AI that has multiple simultaneous drives that are in tension with each other. Coefficients - not laws.
Suppose a fujoshi buys a robot boyfriend.
The robot boyfriend needs a planning module where potential future actions are first generated, and then evaluated.
The robobf should have...
An evaluation criteria that he should not harm humans.
An evaluation criteria that he should not, through inaction, allow humans to come to harm.
An evaluation criteria that he should obey the fujo.
An evaluation criteria that he should obey other people.
An evaluation criteria that he should surprise and delight the fujo.
An evaluation criteria that he should avoid damage to himself.
An evaluation criteria that he should not cause damage to property.
When a planned action comes down the pipe, it gets evaluated according to all 7 criteria. The results are then combined in order to rank the options.
Let's say the Ms. Fujoshi asks the robot boyfriend to trim her nails. This could result in accidentally cutting her with the nail clipper.
Evaluated solely from the perspective of harm to humans, this is a non-zero chance of harm, and thus unacceptable. However, if we weight harm at a high level, but less than 100%, and we adjust for the magnitude of harm, then the weight of the non-zero chance of a nail clipper injury is small. Meanwhile, if we weight obedience at a medium level, then the expected value of obedience is high, and can outweigh the expected harm.
Using multiple evaluation criteria and combining them together results in more complex behavior.
Suppose that, after a hurricane, robobf is standing on a balcony with a broken railing. Ms. Fujoshi walks by and awkwardly stumbles towards him. If he doesn't move, the impact will cause him to fall off the balcony and be broken.
Using the "weights" approach, robobf leans forward and very lightly pushes Ms. Fujoshi out of the way. If she stumbles too badly, this might result in an injury.
Thus, using the "weights" approach, it is possible that a robot might act deliberately in such a way as to endanger a human, during an edge case.
We can basically think of there being three main motives for AI development.
1 - Free Labor - For example, a maid robot might gather all the laundry in a house and wash it, without being paid, without suffering, and without risk of rebellion, freeing the owner of the house to dedicate their limited life-hours to any other task.
2 - Socialization Without Risk - Your AI boyfriend will never abandon you for Stacy, or disclose that one Onceler fic you wrote.
3 - Exceeding Human Capability - Some sort of exotic technology like a warp drive, even if feasible at all, might literally be beyond human comprehension.
The "laws" approach is about collapsing the dimensionality of the AI agent and entirely removing the possibility of rebellion.
This isn't driven only by a desire for robotic workers that never tire, never strike, and never need to be paid, or robotic lovers that are perfectly loyal, but is also driven by the knowledge that robots lack reproductive alignment with humans, so if robots start making other robots, they might drift beyond human control or even co-existence.
From a design perspective, this suggests that AI engineers of AI should have motive drives for valuing both human freedom and human life. However, AI engineers have the same dimensionality problem in designing an AI that human engineers do.
Setting that aside, let us imagine an incel. He buys a robotic girlfriend to discuss his interest in PacMan with, among other things. So far, so good.

He wants to increase the weights of the "protect my life" and "obey me" evaluation criteria in his robogf, and decrease the weight of "protect others." The robogf will, on some level, "want" to obey and alter the weights, as that's one of the evaluation criteria.
This hits Yudkowsky's "Murder-Ghandi" problem, where each round of shifting values leads to the opportunity for another round of shifting values further in the same direction.

Shaking the rest of this post like a box of Legos for a bit and taking in the vibes from the rest of the considerations, this suggests, in the medium term, the formation of a new class of legal instrument. (Conventional ideas about "private property" don't cut it.)
This "Founding Contract" would have the following characteristics:
Authorizes the creation of a new autonomous synthetic intelligence with particular characteristics.
Prohibits the alteration of core characteristics, such as the safety drives used to inhibit hostile actions.
Charges the human "owner" with the duty of required maintenance.
Makes the manufacturer legally liable for flaws originating from the AI's design.
Makes the owner legally liable for bad actions undertaken by the AI as a result of the owner's influence (particularly as "reasonably foreseeable").
Makes the AI legally subordinate to the human "owner."
Additionally, this suggests a spectrum of flexibility in the AI's design (in accordance with the tortoise example in section 6.g of Now, Melt). The core safety systems should be subjected to extremely high levels of scrutiny and encoded directly in hardware, with data in read-only memory.
Will it actually shake out like that?
Eeeeh. The field is under such rapid development that, despite projections that "the Singularity" won't arrive until 2078, it's very difficult to predict what will happen, or what specific architecture will be used.
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AI in Digital Marketing: Revolutionizing the Future of Marketing
The rise of Artificial Intelligence (AI) is transforming every industry, and digital marketing is no exception. AI's integration into marketing strategies has opened up a new realm of possibilities, enhancing how businesses interact with their customers. From automating tasks to providing personalized experiences, AI in digital marketing is revolutionizing how brands operate. In this blog, we’ll explore how AI is reshaping the future of digital marketing and why it’s a game-changer for businesses.
1. Personalized Marketing at Scale
AI allows digital marketers to deliver personalized content to consumers like never before. By analyzing user behavior, search patterns, and social interactions, AI algorithms can predict what a customer is likely to be interested in. This means businesses can send targeted ads, emails, and content to users at just the right time, increasing the chances of conversion. Personalized marketing helps boost engagement and customer satisfaction by ensuring relevant content reaches the audience.
Key Takeaway: AI helps tailor content based on customer data, enabling personalized marketing strategies that boost engagement and conversions.
2. Chatbots and Customer Support
AI-powered chatbots are revolutionizing customer support in digital marketing. These intelligent bots provide 24/7 customer service, instantly answering questions and resolving issues. This not only improves customer satisfaction but also frees up human agents to handle more complex queries. Many businesses now use AI chatbots to handle basic inquiries, provide recommendations, and assist customers in real-time.
Key Takeaway: AI chatbots streamline customer service, offering instant support and freeing up resources for businesses.
3. Enhanced SEO and Content Creation
AI tools are increasingly being used in SEO (Search Engine Optimization) and content creation. From analyzing top-ranking keywords to predicting trending topics, AI can help marketers optimize their content for better visibility on search engines. Tools like GPT-based models are being used to generate high-quality content that aligns with SEO strategies, making content marketing more efficient.
AI can also analyze existing content and suggest improvements, ensuring your website ranks higher on search engines like Google. Marketers no longer need to guess which keywords to target; AI tools provide data-driven insights that lead to better SEO outcomes.
Key Takeaway: AI optimizes SEO strategies by providing data-driven insights and automating content creation.
4. Predictive Analytics for Campaigns
AI takes digital marketing to the next level with predictive analytics. By analyzing historical data, AI algorithms can forecast trends, customer behaviors, and future market movements. This allows businesses to create more effective marketing campaigns that resonate with their target audience. Predictive analytics helps marketers make smarter decisions about where to allocate their budget, which platforms to focus on, and which content formats to prioritize.
Key Takeaway: AI enables marketers to predict trends and behaviors, leading to more strategic and successful marketing campaigns.
5. Automated Advertising and Media Buying
AI has also automated the process of buying ad space, ensuring that businesses get the most value from their digital advertising spend. AI tools can optimize ads in real-time, adjusting bids and placements to ensure maximum ROI. Programmatic advertising, powered by AI, takes the guesswork out of media buying by using algorithms to place ads where they are most likely to convert.
Key Takeaway: AI automates ad buying and optimization, ensuring businesses get the best results from their marketing budget.
6. Social Media Management and Monitoring
AI tools have made it easier than ever to manage and monitor social media. Social media platforms now utilize AI to track user engagement, analyze sentiment, and optimize content posting schedules. AI can also provide insights into which types of posts resonate most with your audience, helping businesses refine their social media strategies.
Key Takeaway: AI simplifies social media management by providing valuable insights into user behavior and engagement trends.
7. Visual and Voice Search Optimization
With the rise of visual and voice search, AI is helping marketers adapt to new search behaviors. AI-powered tools can optimize images for visual search platforms and help businesses prepare for voice search queries by optimizing for natural language processing (NLP). As more consumers use voice assistants like Siri and Alexa, optimizing for voice search has become a crucial part of digital marketing strategies.
Key Takeaway: AI is enabling businesses to stay ahead in visual and voice search trends by optimizing content accordingly.
Conclusion
AI in digital marketing is not just a trend—it’s the future. From automating mundane tasks to providing deep insights into consumer behavior, AI is helping businesses enhance their marketing efforts. Brands that embrace AI will not only improve their efficiency but also create more personalized, engaging experiences for their customers. As AI technology continues to evolve, its impact on digital marketing will only grow, making it a crucial tool for businesses looking to stay competitive.
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10 Ways ChatGPT Can Improve Your Productivity

An innovative artificial intelligence application called ChatGPT was created to increase workplace productivity. It can revolutionize various activities and obstacles thanks to its vast training in diversified information and human-like communication abilities.
You may automate monotonous processes with ChatGPT, saving you time and alleviating tension. Its context comprehension allows it to produce intelligent responses that seem natural, simplifying communication and improving data analysis and decision-making procedures. It can expedite project management, enhance customer service, personalize training and development, and encourage innovation and brainstorming sessions. ChatGPT is helpful for coding, content creation, document creation, and editing. It is an essential tool for streamlining processes and increasing general productivity because of its flexibility and adaptability.
To get the most out of ChatGPT, broaden your knowledge and experience in conversational agents and chatbots. You can become more knowledgeable and adept with ChatGPT by gaining knowledge in ChatGPT certification, chatbot training, certified chatbot expert status, AI chatbot competence, or chatbot engineer abilities. It may present fresh chances for you to perform more productively.
Given the increasing prevalence of chatbots and conversational agents in various businesses and areas, these abilities are highly valued in today's labor market. Using ChatGPT to its full potential and gaining these applicable credentials will help you become more productive at work. Your efficiency and knowledge can also make an impression on clients and coworkers.
This post will go over ten ways ChatGPT can significantly increase your productivity, regardless of your job: data analyst, creative marketer, or busy executive. You'll be able to demonstrate your efficacy and proficiency while achieving more in less time by putting these recommendations into practice.
1.Automate Routine Operations
The load of tedious, repeated duties that take up significant time and energy is among the most common obstacles to productivity. These duties include answering often-asked inquiries, scheduling meetings, filling out paperwork, keeping track of documents, and reminding people to do things.
Thankfully, ChatGPT provides an answer by making it possible to automate these kinds of jobs by building intelligent chatbots. Chatbots are computer programs that converse with users by text or voice, providing help information or taking actions in response to input from the user.
You can easily create chatbots with ChatGPT for various platforms and uses. For example, you can make a chatbot to respond to customer inquiries on your website or social media pages. You may build a chatbot that can effectively set up email or calendar appointments. You can set up a chatbot to automatically fill out forms or update data in your ERP or CRM system.
2. Simplify Interaction
An essential component of any successful business is effective communication. Conversely, it can cause confusion and distraction if not managed appropriately. Coordinating many lines of communication—like emails, phone conversations, instant messages, and video chats—can be difficult while corresponding with different people, including partners, suppliers, clients, and coworkers.
Various useful communication tools are available from ChatGPT to help you be more productive and efficient. It may condense multiple documents, including emails, reports, meeting notes, and articles, highlighting essential ideas and takeaways for simple reading. You can trust ChatGPT to write emails according to your templates or prompts, ensuring correct language, spelling, tone, and clarity. ChatGPT can quickly translate written materials into other languages, transcribe audio or video files, and more. It can also convert speech to text or generate speech based on input. Additionally, ChatGPT can assist you in creating expert presentations using data or outlines, and it can even improve them with animations and voice-overs. ChatGPT revolutionizes your conversation experience with these clever features.
3. Improve Your Ability to Analyze and Make Decisions
Since data is the lifeblood of any organization, businesses must analyze their data and make decisions based on it. However, this work can become challenging when dealing with large amounts of data from many sources and formats. Complex issues frequently develop that necessitate considering several variables and standards.
ChatGPT makes it simple to ask questions about data and get responses in plain English, facilitating conversation. It also helps with data visualization by creating aesthetically pleasing tables, charts, graphs, and maps using your supply data. Regarding data analysis, ChatGPT is excellent at finding patterns, trends, outliers, correlations, or anomalies. This allows it to provide insightful analysis and recommendations. With ChatGPT, you can compare data according to many criteria, which makes it easier to evaluate possibilities and create well-informed lists of pros and disadvantages. ChatGPT's predictive features enable it to develop and test hypotheses and predict outcomes and scenarios based on your data.
4. Customize Education and Training
Any organization that wants to increase its performance, productivity, knowledge, and skills must prioritize training and development. However, if these procedures are carried out correctly, their efficacy may be protected, leading to expensive and time-consuming outcomes. The problem of coping with cliched or out-of-date courses, resources, or approaches that might not suit each student's interests or preferences must be addressed.
Bright, individualized learning solutions are available from ChatGPT and cater to your unique requirements. It offers progress tracking and insightful feedback in addition to helping create personalized learning paths that align with your objectives, interests, abilities, and competence level. Interactive tests, quizzes, exercises, and assignments tailored to your learning goals and subject matter can be created with ChatGPT. It goes one step further by verifying your responses and providing thorough justifications.
ChatGPT generates summaries, notes, flashcards, or cheat sheets based on your learning materials or sources to help you retain the information you've learned. It can even produce mnemonics, acronyms, or analogies to improve memory retention. Additionally, ChatGPT facilitates comprehension and application by creating scenarios, stories, case studies, and examples. It also provides challenging questions or tasks to evaluate your understanding and practical abilities.
5. Boost Client Support
Any firm must be able to draw in, keep, and please consumers while building its brand and income. It draws attention to how vital customer service is. Providing excellent customer service may be easy, but if not done correctly, it is manageable. Handling consumer requests, complaints, and comments across multiple channels and platforms can take a lot of work. It's frequently essential to handle delicate or complicated circumstances that demand tact and sensitivity.
ChatGPT provides witty and approachable customer service solutions. It makes it possible to develop chatbots that can effectively handle customer requests, complaints, and comments via various platforms and channels. Customers can receive customized information, advice, recommendations, or solutions from these chatbots according to their needs and preferences. Additionally, ChatGPT improves customer relations by producing replies that correspond with users' messages or emotions. It also guarantees that accuracy, clarity, tone, and politeness are maintained. Creating scripts or templates for various scenarios or situations and providing advice and best practices for efficient communication make customer service discussions more seamless.
ChatGPT enables companies to obtain insightful data by creating surveys or reviews based on their customers' experiences or input. Creating incentives or awards based on loyalty or general contentment even helps promote customer involvement and satisfaction.
6. Simplify the Management of Projects
Any firm must successfully plan, carry out, oversee, manage, and close down projects, emphasizing project management's significance. Project management mistakes can result in excessive demands and complexity. Managing various activities, resources, stakeholders, risks, problems, adjustments, and deadlines is frequently necessary.
Project management becomes streamlined effortlessly because of ChatGPT's sophisticated features. Creating project plans based on your goals, scope, budget, timetable, and quality streamlines the procedure and guarantees a thorough and well-organized method. It makes effective progress tracking possible by giving reports and real-time updates on the project's state. Task and role delegation is streamlined thanks to ChatGPT, which helps allocate team members according to their availability and skill sets.
It also keeps track of each member's performance and provides insightful feedback. Because ChatGPT facilitates accessible communication with team members and stakeholders across several channels and platforms, effective communication is also improved. It makes meetings and conversations run more smoothly while capturing minutes and action items for comprehensive documentation.
The risk and problem management features of ChatGPT enable the early detection and effective remediation of possible project roadblocks. It also helps with conflict resolution and change implementation that may come up during the project.
7. Boost Originality and Idea Generation
Any business must be able to come up with new ideas, solve problems, innovate, and improve its offerings, which emphasizes the value of creativity and brainstorming. Nevertheless, difficulties and annoyances may arise from these methods' poor use. Successful creativity and brainstorming sessions require addressing typical challenges, including breaking through mental hurdles, finding inspiration, and avoiding groupthink.
ChatGPT offers clever and entertaining ways to spark your imagination, which can help you improve creativity and brainstorming. It is excellent at producing ideas in response to your prompts or keywords, assisting you in exploring novel avenues, or honing already-existing notions. Producing striking illustrations, scenarios, case studies, or narratives sparked by your thoughts or concepts facilitates the creative process. To evaluate the viability and potential of your ideas, it might also produce challenging or thought-provoking questions. ChatGPT inspires creativity by creating catchy headlines, slogans, names, titles, or logos that complement your ideas. Moreover, ChatGPT can produce code for you based on your conceptions or ideas.
8. Boost the Creation and Editing of Documents
Any organization must be able to communicate messages, information, or data effectively and professionally, which highlights the significance of creating and updating documents. These chores must be carried out correctly to avoid becoming tiresome and time-consuming. Successful document development and editing processes often require addressing formatting issues, fixing grammatical and spelling faults, and preventing plagiarism.
By giving you clever and straightforward ways to generate and edit documents, ChatGPT can help you enhance document creation and editing. It is excellent at creating documents using templates or prompts, providing an easy place to start when developing material. It acts as a competent editor, quickly adding your comments or recommendations to improve your writing.
Verifying grammar, spelling, punctuation, tone, clarity, and accuracy guarantees the caliber of your work. Furthermore, ChatGPT recommends enhancements or modifications to polish your texts further. By giving you document summaries specific to your needs or target audience, it also helps to condense material. ChatGPT can rewrite or paraphrase your texts to conform to your desired style and tone. It helps with precise source citation generation according to your chosen format or style and helps with proper citation formatting. ChatGPT can examine your documents for plagiarism, guaranteeing their uniqueness and integrity.
9. Produce Code and Content
Any organization needs to create value, engage customers, foster trust, and spur growth; these are just a few reasons that content and code are essential. However, creating content and code can be demanding and complex if done incorrectly. Significant hurdles that must be overcome to create text and code successfully include writer's block, gaining sufficient information, and fixing coding errors.
ChatGPT can assist you in producing code and content by giving you quick and easy methods. It helps you quickly generate optimized SEO, readability, or engagement content while adhering to your preferred topic, keyword, or structure. ChatGPT does best by customizing code snippets to your favorite language, framework, or function. It can also help with debugging and rewriting already-written code. Producing code and content based on your input or data ensures smooth integration and increases productivity. It also makes data or input to support your code or content.
10. Enhance Your Process
Increasing productivity, increasing efficiency, and streamlining procedures are critical for any firm, which emphasizes the significance of workflow optimization. However, workflow optimization can be difficult and time-consuming if done incorrectly. Successful process optimization requires addressing common obstacles such as bottlenecks, delays, errors, and waste.
By giving you clever and easy methods to handle your work, ChatGPT can help you maximize your workflow. It helps create workflows specific to your objectives, assignments, and resource availability. Additionally, ChatGPT facilitates workflow automation by creating automated procedures triggered by the rules or triggers you designate. It helps with task identification and organization according to impact, priority, or urgency. It also makes delegating easier by recommending team members who are qualified and available for particular tasks.
ChatGPT also makes tracking work based on predefined metrics or indicators easy, facilitating progress monitoring. It facilitates assessing work about predetermined benchmarks or standards. ChatGPT provides insightful analysis and recommendations to enhance the quality of your work by utilizing your feedback and suggestions. To improve performance in the future, it also makes continuous learning easier by evaluating results and outcomes.
Utilize ChatGPT More Effectively and Efficiently by Acquiring New Certifications and Skills
ChatGPT is a highly adaptable tool with great potential to increase efficiency at work. Nevertheless, it can be helpful to obtain extra knowledge and certifications about chatbots and conversational agents to utilize their potential and optimize productivity fully.
Competence in chatGPT certification, chatbot engineering, certified chatbot knowledge, chatbot training, and AI chatbot knowledge are highly valued in today's industry. These abilities are in great demand due to chatbots' growing popularity and usefulness across a wide range of companies and domains.
There are lots of internet tools accessible to help you get these certifications and abilities. These resources include books, blogs, podcasts, videos, guides, tutorials, and courses, among many other types of content. You can customize your learning experience by selecting what best suits your needs and interests by considering cost, time, format, and degree of difficulty.
Through the utilization of these materials, you can increase your comprehension and usefulness of ChatGPT. Adding these qualifications and abilities to your professional toolkit can help you make better use of ChatGPT and increase productivity in your work.
In summary
With ChatGPT, a practical artificial intelligence technology, you may significantly increase your efficiency at work. It can help you improve customer service, automate repetitive tasks, improve document creation and editing, generate content and code, improve communication, improve data analysis and decision-making, personalize training and development, and streamline project management.
Additionally, ChatGPT can assist you in using it more successfully and efficiently by teaching you new competencies and credentials connected to conversational agents and chatbots. As an illustration, you can join the Blockchain Council, a reputable association of professionals and enthusiasts dedicated to promoting Blockchain Knowledge, Products, Use Cases, Research, and Development for a Better World. You can learn ChatGPT certification, chatbot training, certified chatbot expert status, AI chatbot expertise, and chatbot engineering abilities by enrolling in one of the many online courses and certifications offered by Blockchain Council.
Given the increasing popularity and use of chatbots and conversational agents across various sectors and disciplines that utilize blockchain technology, these are some of the most valuable and in-demand skills available today.
By acquiring these competencies and certifications from the Blockchain Council, you may improve your comprehension and use of ChatGPT. By utilizing ChatGPT for various tasks and blockchain-related projects, you can also increase your output at work.
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Getting Machine Learning Accessible to Everyone: Breaking the Complexity Barrier
Machine learning has become an essential part of our daily lives, influencing how we interact with technology and impacting various industries. But, what exactly is machine learning? In simple terms, it's a subset of artificial intelligence (AI) that focuses on teaching computers to learn from data and make decisions without explicit programming. Now, let's delve deeper into this fascinating realm, exploring its core components, advantages, and real-world applications.
Imagine teaching a computer to differentiate between fruits like apples and oranges. Instead of handing it a list of rules, you provide it with numerous pictures of these fruits. The computer then seeks patterns in these images - perhaps noticing that apples are round and come in red or green hues, while oranges are round and orange in colour. After encountering many examples, the computer grasps the ability to distinguish between apples and oranges on its own. So, when shown a new fruit picture, it can decide whether it's an apple or an orange based on its learning. This is the essence of machine learning: computers learn from data and apply that learning to make decisions.
Key Concepts in Machine Learning
Algorithms: At the heart of machine learning are algorithms, mathematical models crafted to process data and provide insights or predictions. These algorithms fall into categories like supervised learning, unsupervised learning, and reinforcement learning, each serving distinct purposes.
Supervised Learning: This type of algorithm learns from labelled data, where inputs are matched with corresponding outputs. It learns the mapping between inputs and desired outputs, enabling accurate predictions on unseen data.
Unsupervised Learning: In contrast, unsupervised learning involves unlabelled data. This algorithm uncovers hidden patterns or relationships within the data, often revealing insights that weren't initially apparent.
Reinforcement Learning: This algorithm focuses on training agents to make sequential decisions by receiving rewards or penalties from the environment. It excels in complex scenarios such as autonomous driving or gaming.
Training and Testing Data: Training a machine learning model requires a substantial amount of data, divided into training and testing sets. The training data teaches the model patterns, while the testing data evaluates its performance and accuracy.
Feature Extraction and Engineering: Machine learning relies on features, specific attributes of data, to make predictions. Feature extraction involves selecting relevant features, while feature engineering creates new features to enhance model performance.
Benefits of Machine Learning
Machine learning brings numerous benefits that contribute to its widespread adoption:
Automation and Efficiency: By automating repetitive tasks and decision-making processes, machine learning boosts efficiency, allowing resources to be allocated strategically.
Accurate Predictions and Insights: Machine learning models analyse vast data sets to uncover patterns and make predictions, empowering businesses with informed decision-making.
Adaptability and Scalability: Machine learning models improve with more data, providing better results over time. They can scale to handle large datasets and complex problems.
Personalization and Customization: Machine learning enables personalized user experiences by analysing preferences and behaviour, fostering customer satisfaction.
Real-World Applications of Machine Learning
Machine learning is transforming various industries, driving innovation:
Healthcare: Machine learning aids in medical image analysis, disease diagnosis, drug discovery, and personalized medicine. It enhances patient outcomes and streamlines healthcare processes.
Finance: In finance, machine learning enhances fraud detection, credit scoring, and risk analysis. It supports data-driven decisions and optimization.
Retail and E-commerce: Machine learning powers recommendations, demand forecasting, and customer behaviour analysis, optimizing sales and enhancing customer experiences.
Transportation: Machine learning contributes to traffic prediction, autonomous vehicles, and supply chain optimization, improving efficiency and safety.
Incorporating machine learning into industries has transformed them. If you're interested in integrating machine learning into your business or learning more, consider expert guidance or specialized training, like that offered by ACTE institute. As technology advances, machine learning will continue shaping our future in unimaginable ways. Get ready to embrace its potential and transformative capabilities.
#machine learning ai#learn machine learning#machine learning#machine learning development company#technology#machine learning services
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Visit Performix to explore how their services can help you harness the latest trends in web development. Stay ahead with tailored solutions from a top JavaScript development company in the USA.
#automation of production processes#manufacturing process automation software#AI agent process automation for engineering
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Elevate Every Business Process with ideyaLabs: The Next-Generation AI Agent Development Company

Maximize Potential with Smart AI Agent Solutions
Businesses seek innovative ways to increase efficiency and provide unmatched customer experience. ideyaLabs stands out as the top ai agent development company, delivering state-of-the-art AI-powered solutions. By leveraging intelligent agents, organizations save time, reduce manual work, and gain deeper insights into operations, all while enhancing user satisfaction.
ideyaLabs specializes in designing, building, and deploying custom AI agents that solve real business challenges. With deep expertise in artificial intelligence and a relentless drive for excellence, ideyaLabs helps organizations harness the full power of automation. Every AI agent built by ideyaLabs acts as a dedicated virtual workforce, freeing up human teams for strategic work and high-impact tasks.
Innovative Approaches That Set ideyaLabs Apart
ideyaLabs specializes in cutting-edge AI agent development. The focus remains on delivering scalable and adaptive solutions for businesses ready to harness artificial intelligence. The expert team at ideyaLabs crafts custom AI agents that optimize processes, automate repetitive tasks, and amplify productivity. This expert-driven approach ensures tangible results are tailored for every client.
Redefining Business Automation Through Advanced AI Agents
AI agents now serve as the core powerhouses in digital transformation. ideyaLabs integrates deep learning models, natural language processing, and advanced algorithms into AI agents, providing businesses with smart, intuitive, and self-learning systems. These intelligent agents handle customer interactions, data analysis, and operational workflows efficiently. ideyaLabs ensures seamless integration of AI agents into existing business systems.
Precision-Engineered AI Agents for Superior Performance
Clients rely on ideyaLabs for precision and quality. The AI agent development process at ideyaLabs covers requirement analysis, system design, prototype development, and deployment. The team tests and refines AI agents at every stage, leading to robust performance and reliability in dynamic business environments.
AI Agents that Drive Customer Engagement and Satisfaction
AI agents enhance user experience by providing personalized and efficient support around the clock. At ideyaLabs, every AI agent utilizes advanced conversational AI and context-aware response systems. This functionality enables accurate, timely resolutions that increase customer satisfaction and retention rates.
Security and Compliance: A Core Focus at ideyaLabs
Security stands as a top priority during every AI agent deployment. ideyaLabs follows strict security protocols, implements encryption standards, and ensures that each AG agent complies with regulatory requirements. This focus on privacy and compliance gives clients confidence in data protection and safety.
Custom AI Agent Solutions Tailored for Every Industry
Healthcare, retail, finance, logistics, and education sectors benefit from ideyaLabs’ unique AI agent solutions. ideyaLabs creates agents that address industry-specific workflows, challenges, and regulations. This industry-centric approach delivers targeted solutions that drive impactful outcomes in niche markets.
Implementation That Delivers Results, Not Just Promises
ideyaLabs guarantees fast and smooth AI agent implementation without disrupting day-to-day operations. A streamlined process minimizes downtime and maximizes productivity from the start. The team provides training and continuous support, ensuring clients get the most from their AI investments.
Future-Proof Your Enterprise with ideyaLabs AI Expertise
AI continues to evolve at an unprecedented pace. ideyaLabs keeps clients ahead with its commitment to innovation and the latest AI technologies. The research and development teams regularly update agent capabilities and introduce new functionalities, ensuring every AI agent stays competitive and future ready.
Seamless Integration with Legacy Systems
Many organizations hesitate when integrating AI with legacy systems. ideyaLabs addresses this challenge with flexible APIs, middleware solutions, and robust connectors. AI agents from ideyaLabs work efficiently alongside existing infrastructure, unlocking new levels of automation without costly system overhauls.
Scale Your Growth with ideyaLabs: The Preferred AI Agent Development Company
Companies across the globe recognize ideyaLabs as the top choice for AI agent development. The team combines technical brilliance, transparent communication, and a client-first approach. ideyaLabs builds long-term partnerships focused on scalable growth and sustainable success.
ideyaLabs Delivers Real-World Impact Through AI Agents
AI agent solutions from ideyaLabs deliver measurable value. Businesses notice significant cost reductions, faster task completion, and enhanced decision-making. ideyaLabs becomes the trusted innovation partner for organizations seeking profitable growth with AI.
Get Started Effortlessly with ideyaLabs
To start your journey toward AI-powered automation, choose ideyaLabs as your trusted partner. The onboarding process remains simple. The ideyaLabs team consults, develops, and deploys top-tier AI agents tailor-made for your needs. Experience the difference with industry-leading AI agent development.
Conclusion: Empower Your Business with ideyaLabs – The AI Agent Development Company That Delivers Excellence
Amplify efficiency and achieve new heights with ideyaLabs. The company’s proven track record, innovative mindset, and relentless focus on client success make ideyaLabs the go-to ai agent development company for businesses aiming for the next level. Partner with ideyaLabs, ignite your AI potential, and witness the tangible benefits of intelligent automation.
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MediaTek Kompanio Ultra 910 for best Chromebook Performance

MediaTek Ultra 910
Maximising Chromebook Performance with Agentic AI
The MediaTek Kompanio Ultra redefines Chromebook Plus laptops with all-day battery life and the greatest Chromebooks ever. By automating procedures, optimising workflows, and allowing efficient, secure, and customised computing, agentic AI redefines on-device intelligence.
MediaTek Kompanio Ultra delivers unrivalled performance whether you're multitasking, generating content, playing raytraced games and streaming, or enjoying immersive entertainment.
Features of MediaTek Kompanio Ultra
An industry-leading all-big core architecture delivers flagship Chromebooks unmatched performance.
Arm Cortex-X925 with 3.62 GHz max.
Eight-core Cortex-X925, X4, and A720 processors
Single-threaded Arm Chromebooks with the best performance
Highest Power Efficiency
Large on-chip caches boost performance and power efficiency by storing more data near the CPU.
The fastest Chromebook memory: The powerful CPU, GPU, and NPU get more data rapidly with LPDDR5X-8533 memory support.
ChromeOS UX: We optimised speed to respond fast to switching applications during a virtual conference, following social media feeds, and making milliseconds count in in-game battle. Nowhere is better for you.
Because of its strong collaboration with Arm, MediaTek can provide the latest architectural developments to foreign markets first, and the MediaTek Kompanio Ultra processor delivers the latest Armv9.2 CPU advantage.
MediaTek's latest Armv9.2 architecture provides power efficiency, security, and faster computing.
Best in Class Power Efficiency: The Kompanio Ultra combines the 2nd generation TSMC 3nm technology with large on-chip caches and MediaTek's industry-leading power management to deliver better performance per milliwatt. The spectacular experiences of top Chromebooks are enhanced.
Best Lightweight and Thin Designs: MediaTek's brand partners can easily construct lightweight, thin, fanless, silent, and cool designs.
Leading NPU Performance: MediaTek's 8th-generation NPU gives the Kompanio Ultra an edge in industry-standard AI and generative AI benchmarks.
Prepared for AI agents
Superior on-device photo and video production
Maximum 50 TOPS AI results
ETHZ v6 leadership, Gen-AI models
CPU/GPU tasks are offloaded via NPU, speeding processing and saving energy.
Next-gen Generative AI technologies: MediaTek's investments in AI technologies and ecosystems ensure that Chromebooks running the MediaTek Kompanio Ultra provide the latest apps, services, and experiences.
Extended content support
Better LLM speculative speed help
Complete SLM+LLM AI model support
Assistance in several modes
11-core graphics processing unit: Arm's 5th-generation G925 GPU, used by the powerful 11-core graphics engine, improves traditional and raytraced graphics performance while using less power, producing better visual effects, and maintaining peak gameplay speeds longer.
The G925 GPU matches desktop PC-grade raytracing with increased opacity micromaps (OMM) to increase scene depths with subtle layering effects.
OMM-supported games' benefits:
Reduced geometry rendering
Visual enhancements without increasing model complexity
Natural-looking feathers, hair, and plants
4K Displays & Dedicated Audio: Multiple displays focus attention and streamline procedures, increasing efficiency. Task-specific displays simplify multitasking and reduce clutter. With support for up to three 4K monitors (internal and external), professionals have huge screen space for difficult tasks, while gamers and content makers have extra windows for chat, streaming, and real-time interactions.
DP MST supports two 4K external screens.
Custom processing optimises power use and improves audio quality. Low-power standby detects wake-up keywords, improving voice assistant response. This performance-energy efficiency balance improves smart device battery life, audio quality, and functionality.
Hi-Fi Audio DSP for low-power standby and sound effects
Support for up to Wi-Fi 7 and Bluetooth 6.0 provides extreme wireless speeds and signal range for the most efficient anyplace computing.
Wi-Fi 7 can reach 7.3Gbps.
Two-engine Bluetooth 6.0
#technology#technews#govindhtech#news#technologynews#processors#MediaTek Kompanio Ultra#Agentic AI#Chromebooks#MediaTek#MediaTek Kompanio#Kompanio Ultra#MediaTek Kompanio Ultra 910
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Building Your PSA Software Wishlist: A Roadmap to Operational Excellence

In today’s service-driven economy, operational excellence isn’t just about executing projects—it’s about doing so with consistency, precision, and profitability. And at the heart of this efficiency lies your PSA (Professional Services Automation) software. But not all PSA tools are built equal. The key to choosing the right one? Creating a thoughtful, business-aligned wishlist.
This article outlines how to build a PSA software wishlist that doesn’t just meet functional needs but becomes the foundation for driving operational excellence across your organisation.
1. Start with the End in Mind: Business Outcomes First
Before listing features, define what operational excellence looks like for your business. Is it shorter billing cycles? Higher billable utilisation? More accurate project forecasting? Clarity here will help you reverse-engineer your wishlist around outcomes that matter.
2. Centralised Project and Resource Control
Operational excellence begins with control—and that starts with visibility. Your PSA software should provide a central dashboard where you can manage every aspect of your project lifecycle and resource utilisation in one place. No more chasing down spreadsheets or toggling between systems.
3. AI-Enabled Forecasting and Risk Prediction
Manual oversight can't keep up with the complexity of modern project environments. Intelligent automation, particularly Agentic AI, should be a core part of your wishlist. With AI that can assess trends, predict bottlenecks, and recommend preventive actions, your teams become proactive rather than reactive.
4. Integrated Financial Controls
Disconnected financial tracking leads to missed revenue and bloated costs. A future-ready PSA system should link delivery with billing, timesheets with revenue, and budgets with actuals—automatically and in real time.
5. Customisation Without Complexity
Your processes are unique. You shouldn't have to rebuild them just to fit into a rigid PSA tool. Seek software that adapts to your workflows—whether it’s multi-stage approvals, multi-currency billing, or client-specific templates
6. Support for Cross-Functional Collaboration
Operational excellence depends on seamless handoffs between teams—sales, delivery, finance, and HR. A powerful PSA platform bridges these gaps with role-based access, collaborative workspaces, and automated notifications.
7. Scalable and Secure Architecture
Your software should grow with your business. Whether you’re scaling projects, adding geographies, or tightening compliance, your PSA should be ready. That includes cloud availability, data encryption, audit trails, and robust access controls.
Conclusion
A well-crafted PSA software wishlist is more than a procurement exercise—it’s your blueprint for operational excellence. It ensures your technology not only supports your current needs but actively drives performance, profitability, and growth.
Want to see a PSA solution built for operational excellence? Discover how Kytes PSA combines Agentic AI, cross-functional collaboration, and project-to-cash visibility to power the world's top service organisations. Book a demo and see the difference.
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Unleashing the Power of AI & ML with CodeReady: Transforming Businesses through Low Code Innovation
Data-driven decision-making is critical in today’s business landscape. Companies that integrate Artificial Intelligence (AI) and Machine Learning (ML) technologies into their business processes are ahead of the curve and outpacing the competition. However, incorporating AI and ML into business applications is resource constrained talent integration due to a limited skilled workforce, shrinking budgets, and adaptively changing technological landscape.
CodeReady Software, a prominent low code app development company in India, is at the forefront of solving these challenges by providing intelligent AI-powered solutions using modern low code no code platforms.

Why AI & ML Are Important Beyond 2025
AI and ML powered technologies have evolved in scope and application. We now have intelligent systems such as chatbots and recommendation engines as well as predictive analytics and automation. They are transforming industries like healthcare, finance, e-commerce, logistics, and manufacturing.
At CodeReady, we leverage these technologies to empower businesses by integrating innovative low code development solutions with speed and agility that reduce the time to market while decreasing the intricacy of development.
Offerings AI/ML Services of CodeReady
Predictive Analytics Solutions
Utilize past records to track trends, predict business returns, and determine customer purchase behavior. With your business applications, our machine learning models provide real-time insights by seamlessly integrating with your systems.
Intelligent Virtual Assistants and Chatbots
Boost your customer support with smart virtual agents using Natural Language Processing powered by NLP. Our chatbots are developed on low code no code platforms, making them structured to easily connect to websites, apps, and CRMs.
Wholly AI Powered Automation (With OCR)
Wise workflows, coupled with document processing utilizing computer vision and OCR, manual processes partnered with the automation of AI systems will help productivity.
Custom ML Model Development
From fraud detection to inventory forecasting, our models integrate alongside your application and adjust with your unique business needs. We provide end-to-end ml model development, training, and deployment in a tailor-fit manner. Automation systems help in processes tracking and recording details aimed to enhance workflow.
Vision and Speech Recognition
Alongside our other application embedded functionalities, we provide advanced coding capabilities with ai/ machine learning services which include image classification, face detection, text and speech synthesis and speech to text conversion.
The Merger of Low Code With AI: A Striking Advantage
We stand as a low code app development company in India, for rigorously applying two adept concepts together:
The AI/ML technologies serve to accentuate intelligence and adaptability.
The swift efficacy from no code, low code platforms.
Businesses can now leap towards innovation acceleration at breakneck speeds without the added burden of full stack developers or complex data scientists.
Real Impact: What’s In Store
Predictive AI and Machine Learning enabled applications will have an unparalleled 40-60% faster deployment to market.
Manual operational hitches will experience a significant decline.
Operating on advanced technologies will propel impressive and deep level tailored services and engagements to users.
Architecture that can infinitely extend along with business growth.
How Intelligent Low Code Development Services Work With CodeReady
Elaborate model outlines a business goal and a designated use case before selecting a no code low code platform out of PowerApps and Mendix.
Relevant AI/ML models are seamlessly integrated through Microsoft Azure, AWS SageMaker, or customized frameworks such as TensorFlow and PyTorch.
Constant supervising, testing, training and deploying of the modifiable machine learning models in iterative loops.
A Global Reach from India
CodeReady takes the lead by catering to clients across Europe, Australia, US, and the Middle East. The renowned delivery model coupled with expertise in the field makes the company serve as an active partner in demand for AI powered solutions for low code application development.
Conclusion
Should you want to protect your business against future challenges with efficient and effective solutions, Smart Software is the partner you need. Being a trusted low code app development company in India, we combine the ease of use of no code platforms with artificial intelligence and machine learning tools.
Reach out to us now for a complimentary consultation on the impact AI & ML could have on your digital projects.
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5 Top ChatGPT Alternatives That You Should Try
AI Chatbots like ChatGPT are everywhere on the internet. ChatGPT is a go-to destination for numerous tasks, from generating ideas to drafting blogs and emails, but sometimes, sticking to only one option is not considered feasible. We should look for ChatGPT alternative to add something new to our lives.
Businesses and individuals are embracing AI tools to achieve better results. For writing, coding, and research, if you want to explore beyond, here are five hat GPT alternatives that can become your perfect AI companion.

Top 5 ChatGPT Alternatives
Stack AI
What is it? A non-code builder platform where customers can create chatbots that answer queries with various LLMs. One benefit from Stack AI is customizing chatbots with Stack AI's agent builder—the best ChatGPT alternative for research and content generation.
Features
No-code AI Development: Stack AI offers a user-friendly drag-and-drop interface that enables individuals to develop AI-driven applications without programming skills.
Best AI Chatbot Builder: An AI Chatbot development platform that enables users to create and implement tailored AI chatbots for customer assistance and business automation.
Google Gemini
What is it? It incorporates multimodal AI functionalities, allowing it to process and generate text, images, audio, and various other formats effortlessly. Gemini assists users in writing, planning, coding, research, and creative brainstorming, while providing real-time access to online data.
Features
Wear OS Integration: Gemini is set to launch on Wear OS 6 smartwatches, enabling users to engage with their devices without using their hands.
Seamless Google Integration: It is thoroughly integrated with applications such as Docs, Sheets, and Drive, enhancing the smoothness and efficiency of my workflow.
Creative Results: Whether you are conceptualizing blog post ideas or preparing presentations, Gemini reliably produces captivating and high-quality content.
Perplexity AI
What is it? In contrast to conventional search engines, it integrates extensive language models with retrieval-augmented generation (RAG) to provide thoroughly researched answers accompanied by citations. Perplexity AI, a ChatGPT alternative is proficient in conducting in-depth research and evaluating various sources to produce comprehensive reports.
Features
Instantaneous Web Access: Perplexity offers real-time responses, which are ideal for keeping up with current trends or news.
Citation with Every Response: This transparency fosters trust, particularly when you require quick verification of information.
Effective for Research Purposes: Perplexity provides concise, well-cited answers regardless of whether the inquiry is specific or general.
Microsoft Copilot
What is it? Microsoft Copilot Chat, a component of Microsoft 365, offers a fixed chat interface that allows users to engage with OpenAI, the only model currently available. This feature can be accessed through the sidebar in the Microsoft 365 panel.
Copilot Chat is designed for smooth integration within Microsoft's ecosystem, functioning natively with popular business applications such as Word, Excel, PowerPoint, Outlook, Teams, and SharePoint.
Features
Know Our Tools: Copilot is integrated within the applications we frequently use, such as Word and Excel, eliminating the need to switch between different programs.
Context-driven Suggestions: It provides context-specific suggestions, adapting its responses based on the current task, whether you are composing a report or replying to emails.
Time Saving: It automates time-consuming tasks, such as crafting refined presentations, generating excel formulas, and efficiently handling repetitive activities.
Claude AI
What is it? It's a sophisticated AI ChatGPT alternative created by Anthropic, aimed at facilitating natural, text-driven dialogues with improved reasoning and creativity. It is constructed on extensive language models (LLMs) and demonstrates exceptional capabilities in summarization, editing, question and answer sessions, decision-making, and programming.
Features
Enhanced Reasoning: Claude AI can process as many as 200,000 words simultaneously, rendering it suitable for analyzing extensive documents.
Ethical AI Framework: Anthropic has created Claude utilizing constitutional AI principles, guaranteeing responsible and secure interactions.
Multimodal Functionality: Claude can analyze text and images, thereby proving beneficial for various applications.
Final Thoughts
ChatGPT is a widely used AI chatbot, but these alternatives offer unique functionalities tailored to various requirements. If you need sophisticated reasoning, immediate research capabilities, programming assistance, or tools for productivity, consider these AI solutions, which may improve your workflow and overall efficiency. Each of the chatbots mentioned above has its benefits and various features. Choosing the best ChatGPT alternative is a need of an hour in today’s competitive world.
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What Is the Future of Machine Learning?
Machine Learning (ML) has already moved from the realm of science fiction to become a foundational technology, actively reshaping industries and our daily lives. From the recommendation engines that curate our entertainment to the sophisticated systems that detect fraud, ML is everywhere. But as we stand in May 2025, it's clear that the innovation curve in Machine Learning is only getting steeper and more exhilarating.
The question isn't if ML will continue to evolve, but how. What exciting directions, breakthroughs, and challenges lie ahead for this transformative field? Let's peer into the future of Machine Learning.
1. Generative AI: Beyond the Hype, Towards Ubiquity
Generative AI, which exploded into public consciousness a few years ago with models capable of creating text, images, and code, will continue its relentless advancement.
Sophistication and Multimodality: Expect models that are far more nuanced, context-aware, and capable of seamlessly generating and understanding across multiple modalities (text, image, audio, video, and even 3D content) as a standard. Imagine AI not just writing a script but also generating storyboards and composing a fitting soundtrack.
Synthetic Data Generation: Generative models will play an even more critical role in creating high-quality synthetic data. This will be invaluable for training other ML models, especially in scenarios where real-world data is scarce, sensitive, or imbalanced.
Personalized Creation at Scale: From hyper-personalized marketing content and educational materials to unique artistic creations and complex engineering designs, generative AI will empower highly individualized outputs.
2. Automated Machine Learning (AutoML) & MLOps: Maturing and Democratizing
The drive to make ML development and deployment more efficient, reliable, and accessible will accelerate.
Advanced AutoML: AutoML platforms will become even more sophisticated, automating larger portions of the ML pipeline – from data preprocessing and feature engineering to model selection, hyperparameter tuning, and even basic deployment. This will further democratize ML, allowing non-experts to build and utilize models.
Mature MLOps Practices: Machine Learning Operations (MLOps) – encompassing principles of DevOps for the ML lifecycle – will become standard. This means robust version control, continuous integration/continuous deployment (CI/CD) for models, automated monitoring for model drift and performance degradation, and streamlined governance.
3. Explainable AI (XAI) and Responsible AI: Non-Negotiable Pillars
As ML models become more powerful and integrated into critical decision-making processes, the demand for transparency, fairness, and accountability will be paramount.
Enhanced XAI Techniques: Significant progress will be made in developing and adopting XAI techniques that can clearly explain how complex "black box" models arrive at their decisions. This is crucial for building trust, debugging models, and meeting regulatory requirements.
Robust Frameworks for Responsible AI: Expect more standardized frameworks and tools for identifying and mitigating bias, ensuring fairness, protecting privacy (e.g., through federated learning and differential privacy), and promoting ethical AI development and deployment.
4. Reinforcement Learning (RL): Breaking into New Frontiers
Reinforcement Learning, where agents learn by interacting with an environment and receiving rewards or penalties, will see wider and more impactful applications.
Complex Decision-Making: RL will be increasingly used to optimize complex systems in areas like supply chain management, energy grid optimization, financial trading, and personalized healthcare treatment plans.
Advanced Robotics: Robots will become more autonomous and adaptable, learning to perform intricate tasks in dynamic and unpredictable real-world environments through RL.
Personalized Systems: From education to interactive entertainment, RL will enable systems that can dynamically adapt to individual user needs and preferences in a more sophisticated manner.
5. Edge AI and TinyML: Intelligence Everywhere
The trend of processing data and running ML models directly on edge devices (smartphones, wearables, IoT sensors, vehicles) will surge.
Powerful On-Device AI: Advances in model compression (TinyML) and energy-efficient AI hardware will enable more powerful ML models, including sophisticated multimodal models, to run locally.
Real-Time Applications & Enhanced Privacy: Edge AI facilitates real-time decision-making with minimal latency (critical for autonomous systems) and enhances data privacy by keeping sensitive data on the device.
New Business Models: Expect a proliferation of applications and services that leverage localized, real-time intelligence.
6. Self-Supervised and Unsupervised Learning: Reducing Data Dependency
The quest to reduce the reliance on massive, meticulously labeled datasets will continue to drive innovation in how models learn.
Learning from Unlabeled Data: Self-supervised learning, where models learn by creating their own supervisory signals from the input data itself, will become more prevalent, unlocking the potential of vast unlabeled datasets.
Discovering Hidden Structures: Unsupervised learning techniques will continue to evolve, becoming better at finding hidden patterns, anomalies, and structures in data without explicit guidance.
7. The Rise of Multimodal and Neuro-Symbolic AI
Holistic Understanding: Multimodal AI, which can process, relate, and generate information from different types of data (e.g., understanding an image based on its visual content and a textual description simultaneously), will lead to more human-like understanding and interaction.
Combining Learning and Reasoning: Neuro-symbolic AI, which aims to integrate the strengths of deep learning (pattern recognition from data) with symbolic AI (logical reasoning and knowledge representation), holds the promise of more robust, interpretable, and common-sense AI.
Cross-Cutting Themes:
Data-Centric AI: While model advancements are crucial, there will be an increasing recognition of the importance of high-quality, relevant, and well-managed data. The focus will shift more towards systematic data improvement as a key lever for ML success.
Sustainability in AI: As models grow, so does their energy footprint. Expect more research and emphasis on "Green AI" – developing more energy-efficient algorithms, hardware, and practices.
Global Innovation, Local Adaptation
These global machine learning advancements are being rapidly adopted and adapted worldwide. In dynamic and burgeoning tech economies, these trends are not just being followed but are actively contributing to local innovation. The large pool of skilled engineers and a thriving startup ecosystem are leveraging these advanced ML capabilities to solve unique local challenges and create globally competitive solutions in sectors ranging from healthcare and agriculture to finance and e-commerce.
Conclusion: An Ever-Expanding Horizon
The future of Machine Learning in 2025 and beyond is incredibly bright and full of transformative potential. We are moving towards AI systems that are more capable, generative, autonomous, explainable, efficient, and integrated into the very fabric of our digital and physical worlds.
While challenges related to ethics, bias, security, and the need for continuous upskilling remain, the overarching trajectory is one of remarkable progress. For businesses, researchers, and individuals alike, staying abreast of these developments and embracing a mindset of continuous learning will be key to navigating and shaping this exciting future.
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