Gen AI for Business #7

Gen AI for Business #7

Welcome to Gen AI for Business edition # 7, your comprehensive weekly rundown of who's making news in Generative AI for Business. This edition covers the latest news, strategies, tools, and innovations in the B2B sector, from chips to regulations to models to how-to’s.?

What we need to realize is that Generative AI is POISED to revolutionize the enterprise landscape, but it comes with several misconceptions. Here is my list of 7—what would you add?

  1. Data is what will make or break your Gen AI implementation. Firstly, the idea that more data is always better is flawed; I believe that quality of your data is more important than quantity. It's also not all-knowing and can't provide business-specific answers without relevant data. Despite appearing sentient, AI only generates responses based on data patterns. While versatile, AI isn't a cure-all; traditional analytics often outperform AI in certain areas.
  2. Ethical AI discussions aren't new—they've been around since the 1950s.?
  3. AI isn't set to replace most jobs but will automate routine tasks, enabling humans to focus on creative work. See some examples in the news section below.
  4. Focusing solely on use cases can miss broader benefits, so integrating AI with workforce strategies is crucial.?
  5. Contrary to belief, implementing AI requires substantial computational power and secure infrastructure. You need to establish your ROI first on that investment.?
  6. AI isn't a quick fix for poor processes or infrastructure – you need to evaluate and fix them first; it needs careful setup and regular updates.?
  7. Think long term: the rapid evolution of AI tools means businesses often underestimate its long-term impact, making continuous adaptation essential.

If you enjoyed this newsletter, please leave a like or a comment and share! Knowledge is power.?

Thank you for reading,

Eugina, CMO to watch, inventor with 12 patents, new market category creator, award-winning author

News about models and everything related to them

Let's break down some of the key developments around models from last week. Large Language Models (LLMs) like GPT-4 use vast amounts of text and neural networks to understand and generate human-like language, excelling in tasks like translation and summarization. Compare this with Google's Gemini 1.5 Pro, which is fantastic for multimedia, while OpenAI's GPT-4o shines in reasoning and coding. Super Tiny Language Models (STLMs) are now emerging, offering high performance with fewer parameters, making AI more sustainable. For top LLMs, check out TechRadar and Scale AI. Plus, new models like Mistral AI's Codestral for coding and Marketeam.ai's marketing LLM are making waves.

  • As we got a lot of new subscribers in the last couple of weeks, first of all welcome, secondly, here is a great refresher on How Do Large Language Models Work? LLM AI Demystified? Large language models (LLMs) work by training on vast amounts of text data to understand and generate human-like language. They use neural network architectures, especially transformers, to process and predict text sequences. Key concepts include tokenization, embedding, attention mechanisms, and fine-tuning. These models learn patterns, context, and nuances in language, enabling applications in natural language processing tasks such as translation, summarization, and conversational AI.

  • GPT-4o and Gemini 1.5 Pro: How the New AI Models Compare - CNET I love the Pepsi and Coke comparison. Google's Gemini 1.5 Pro and OpenAI's GPT-4o are the latest advancements in generative AI, each with unique strengths and weaknesses. Gemini 1.5 Pro excels with a massive context window of up to 1 million tokens, enabling it to process extensive information, including videos and audio. It performs well in multimedia tasks, such as video captioning and audio processing, and provides detailed answers in general reasoning tasks. Conversely, GPT-4o shows superior performance in commonsense reasoning, complex mathematical problems, and code generation tasks. It also tends to follow user instructions more accurately and reliably than Gemini 1.5 Pro. Both models have their respective advantages, making the choice between them dependent on specific use cases and requirements. GPT-4o is generally better for detailed reasoning and coding, while Gemini 1.5 Pro is advantageous for processing large datasets and multimedia content. Which one is your “Pepsi” or “Coke”?

  • We know about LLMs = large language models and SLMs = small language models, have your heard of The Emergence of Super Tiny Language Models (STLMs) for Sustainable AI Transforms the Realm of NLP - MarkTechPost? The invention is created by a research team from A*STAR, Nanyang Technological University, and Singapore Management University. These models aim to offer high performance with significantly reduced computational and energy requirements compared to traditional large language models. Techniques like byte-level tokenization, weight tying, and efficient training strategies help achieve up to 95% parameter reduction while maintaining competitive accuracy. This innovation addresses sustainability and accessibility challenges in natural language processing (NLP).

Models Ratings and How to DIY Model evaluations:

  • Don’t know which model to use for what task? This article will help you make that decision. The best LLMs of 2024 | TechRadar (tested by TechRadar)? OpenAI's GPT is recognized as the best overall LLM. GitHub Copilot, powered by GPT-4, is ideal for coding. Meta's LLama 3 offers great value, while Anthropic's Claude 3 excels in business use. Qwen, from Alibaba, is the top choice for chatbots, and OpenAI's GPT-4o stands out as the best multimodal LLM. Google's Gemini is recommended for translation tasks due to its cost-effectiveness and integration with Google Translate.?

  • Another ranking by Scale AI has published its first SEAL Leaderboards, ranking large language models (LLMs) based on performance in specific domains such as generative AI coding, instruction following, math, and multilingual capabilities. OpenAI’s GPT models led in most categories, while Anthropic’s Claude 3 Opus excelled in math. Google’s Gemini models also performed well. The rankings aim to provide transparency and are based on private, curated datasets evaluated by domain experts. Scale AI plans to update these rankings regularly and expand to include more models and domains. Scale AI publishes its first LLM Leaderboards, ranking AI model performance in specific domains - SiliconANGLE??


  • Let's talk about LLM evaluation? The Hugging Face blog details a comprehensive evaluation process for large language models (LLMs). The steps include defining the evaluation criteria, such as performance and safety, selecting appropriate benchmarks and tasks, implementing automated and human evaluations, and analyzing results to identify strengths and weaknesses. Key points include the importance of transparency, using diverse and representative datasets, and continuous monitoring and updating of models to ensure they meet evolving standards and user needs. Applying these criteria will help you evaluate models for Gen AI implementation in your business.?

  • Mapping the Mind of a Large Language Model \ Anthropic? Anthropic's research on mapping the mind of language models involves several key steps: understanding how models learn and process language, investigating their internal mechanisms, and comparing them with human cognition. The study uses various techniques to analyze model behavior, such as probing tasks, visualization methods, and systematic experimentation. This approach aims to improve AI interpretability, enhance model performance, and ensure alignment with human values.

Model Launches

  • Mistral AI introduces its first LLM for coding, fluent in 80 programming languages - ReadWrite? Mistral AI has introduced Codestral, its first large language model (LLM) designed for coding, proficient in over 80 programming languages including Python, Java, and C++. Backed by Amazon and Microsoft, Codestral aims to assist developers by reducing errors and improving coding efficiency. The model, which is not licensed for commercial use, has demonstrated strong performance in benchmarks and is available through Mistral's API platform.?

  • Marketeam.ai Launches 1st LLM for Marketing | MarTech Cube? Marketeam.ai has launched the first large language model (LLM) specifically designed for marketing applications. This AI tool aims to enhance marketing strategies by generating personalized content, optimizing campaigns, and providing deep insights into customer behavior. The model supports various marketing functions, including content creation, social media management, and data analysis.?

Gen AI news from different industries

Generative AI is revolutionizing Broadway theater and filmmaking, enhancing creativity and efficiency. In legal contexts, AI tools show promise but require careful oversight due to a significant error rate. In health, AI improves suicide risk detection, offering valuable support in crisis management. Canadian retailers are leveraging AI for personalized customer experiences, while experts highlight its transformative potential in loyalty programs. Air France and Airbus use AI to optimize operations and enhance sustainability. In banking, AI-driven tools like chatbots and fraud detection systems are boosting customer service and security. Lastly, AI is reshaping programming by automating routine tasks and enhancing creativity, while marketing is becoming more personalized and interactive with AI advancements.

Entertainment?

  • Theatre: AI is getting theatrical Generative AI is being explored in Broadway theater, raising questions about its impact on creativity. Recent New York performances have experimented with AI, like Annie Dorsen's "Prometheus Firebringer" using ChatGPT for script variations and "Artificial Flavors" by the Civilians, where AI created parts of a musical. While AI's current capabilities show limitations, it prompts reflection on the intersection of technology and art. AI's potential in theater includes generating narratives and aiding mental health through expressive tools, but it still struggles to replicate human creativity fully. I love Broadway shows because the words, the acting, and the music move me and my emotions. Can Gen AI do that?

  • Filmmaking Will generative AI change everything for filmmaking?? Generative AI is revolutionizing filmmaking by automating tasks such as scriptwriting, storyboarding, and video editing. This technology enables filmmakers to generate realistic visual effects, create lifelike characters, and streamline production processes, making filmmaking more efficient and cost-effective. By harnessing AI, filmmakers can focus more on creativity and storytelling while AI handles routine tasks.?

Legal

  • Legal GenAI tools mislead 17% of time: Stanford study? A Stanford University study found that legal generative AI tools produce "hallucinations" 17% of the time, leading to incorrect legal citations. These tools often lack self-awareness about their mistakes, which can reinforce incorrect assumptions. The research highlighted significant variability in performance, with higher error rates in complex tasks and localized legal knowledge. The findings raise concerns about the reliability of these AI models in legal contexts, suggesting the need for careful and supervised integration into legal practices read it as “AI is NOT going to take my job.”

Health?

  • AI in action: Enhancing suicide risk detection in behavioral health? A study by NeuroFlow found that natural language processing (NLP) can significantly enhance suicide risk detection in behavioral health. NLP analyzed text entries from 425 users, identifying suicidal ideation in over half of the cases that traditional methods missed. This technology, combined with human intervention, supports timely crisis management and continuous patient monitoring, making it especially valuable in underserved communities. The study highlights the potential of AI to improve mental health outcomes by identifying at-risk individuals more accurately and efficiently.

Retail

  • Canadian retailers enhancing customer experience through generative AI, finds KPMG The whole report will require purchase, but snippets in this article are still good. Canadian retailers are increasingly adopting generative AI to enhance customer experience, with 81% planning to implement it within the next year. Common uses include fraud detection, inventory management, and personalized recommendations. The technology is seen as critical for staying competitive, though challenges include managing and organizing data effectively. Retailers believe AI can significantly boost revenue and improve marketing efforts, but they must use it responsibly to avoid potential legal and reputational risks.?

  • Experts Unpack The Future Of Loyalty Programs & Gen AI - B&T? Experts at the Asia Pacific Loyalty Awards discussed the future of loyalty programs with the integration of Generative AI (Gen AI). They emphasized that AI is transforming loyalty strategies by enabling personalized customer interactions, predictive modeling, and efficient data analysis. Key points include the importance of executive support, simplicity in program design, and continuous adaptation to technological changes.?

Transportation (Aviation)?

  • How Air France is using Artificial Intelligence (AI) to optimize its business activities and improve the customer experience Air France is leveraging artificial intelligence (AI) to optimize its business operations and improve efficiency across various facets. Key initiatives include using AI-driven solutions for eco-piloting to reduce fuel consumption, implementing SkyBreathe? for fuel efficiency, and integrating AI into customer service via chatbots like AFBotLine. Additionally, AI aids in predictive maintenance and operational decision-making to enhance overall performance. These efforts align with Air France's broader sustainability goals, including significant reductions in CO2 emissions and increased use of sustainable aviation fuels

  • ?How Airbus uses generative artificial intelligence to reinvent itself? Airbus is leveraging generative artificial intelligence (AI) to transform its operations and drive innovation. By implementing AI, Airbus aims to enhance aircraft design, streamline manufacturing processes, and improve overall efficiency. This technology allows for the creation of advanced simulations and optimizations that lead to better performance and reduced costs. Airbus's commitment to AI underscores its strategy to stay at the forefront of aerospace technology, ensuring continued advancements and competitiveness in the industry.?

Banking

  • Successful use cases drive banks positive sentiment in Gen AI? Generative AI is gaining positive sentiment in banking, driven by successful use cases like Bank of America's Erica, which has handled over 2 billion interactions, and NatWest's Cora, addressing 10.5 million customer queries. AI enhances customer experiences and fraud detection, as seen with Mastercard's Decision Intelligence Pro and Revolut's scam detection feature. These examples show AI's potential to improve efficiency and security in banking, leading to increased investment and innovation in the sector.?

Software engineering

  • How does AI impact my job as a programmer? – Chelsea Troy explores how AI tools can affect programming careers. It highlights that AI can automate repetitive tasks, enhance debugging, and provide code suggestions, allowing programmers to focus on more complex problem-solving and creative aspects of their work. However, it also emphasizes the need for programmers to adapt by continuously learning and evolving with new AI technologies to remain relevant and effective in their roles.

Marketing

  • How AI will reinvent Marketing - by Andrew Chen AI will transform marketing by enabling the creation of unlimited, cost-effective content and labor. This will lead to mass personalization and global product launches with marketing materials tailored to different languages and cultures. AI will enhance customer interactions to concierge-level service, provide detailed product walkthroughs, and efficiently resolve issues. Traditional marketing channels may become less effective as AI generates vast content, giving rise to new channels like AI companions for personalized interactions. Additionally, AI will merge marketing and sales, enabling mass 1:1 interactions through AI-driven conversations.

Big News

OpenAI has unleashed exciting updates for free users, including the powerful new GPT-4o model, enhancing browsing, vision, data analysis, and more. Apple’s rumored upcoming iOS 18 will let you create custom emojis with AI, and rearrange app icons and widgets. OpenAI also formed a Safety and Security Committee to ensure ethical AI practices. Sixteen tech giants, including Amazon and Google, have pledged to limit AI development under the "Frontier AI Safety Commitments." Meanwhile, Samsung leads a consortium to develop next-gen AI chips, and PwC becomes OpenAI's first reseller, integrating AI across its workforce and services.

  • The day is finally here! Introducing GPT-4o and more tools to ChatGPT free users | OpenAI OpenAI has just rolled out some exciting updates: the new GPT-4o model is here available to free users, enhancing your ChatGPT experience with even more powerful capabilities. Enjoy browsing, vision, data analysis, file uploads, and GPTs.

  • Rumor: iOS 18 will let users create custom emoji using generative AI - 9to5Mac? Apple's upcoming iOS 18 will feature a new AI tool allowing users to create custom emojis using generative AI. This functionality enables the creation of unique emojis on the fly based on user text, expanding beyond the current emoji catalog. Additionally, iOS 18 will introduce more customization options, including the ability to re-color app icons and freely arrange app icons and widgets on the home screen. Are you excited about this potential update?

  • OpenAI Board Forms Safety and Security Committee and more ;)? OpenAI has established a Safety and Security Committee to oversee AI advancements and ensure ethical practices. The committee will address potential risks associated with AI development and deployment. Additionally, OpenAI has introduced a new AI model aimed at enhancing transparency and safety measures.?

  • 16 Companies Agree to Put Limits on Gen AI Systems -- THE Journal? Sixteen companies, including Amazon, Anthropic, Cohere, Google/Google DeepMind, G42, IBM, Inflection AI, Meta, Microsoft, Mistral AI, Naver, OpenAI, Samsung Electronics, Technology Innovation Institute, xAI, and Zhipu.ai, have agreed to limit the development of generative AI systems under the "Frontier AI Safety Commitments." This initiative aims to identify, assess, and manage risks associated with AI. The companies have pledged to halt development if safety thresholds are breached, ensuring AI models are safe and transparent. The commitment includes best practices like red-teaming, watermarking, and third-party testing. This collaborative effort marks a significant step in responsibly advancing AI technology.?

  • Tech giants form an industry group to help develop next-gen AI chip components | TechCrunch? The consortium formed to reduce reliance on Nvidia hardware includes several major tech companies. The primary members are Samsung, Microsoft, Meta Platforms, Naver, Cisco, AMD, Hewlett Packard Enterprise (HPE), and Broadcom. These companies are collaborating to develop alternative AI hardware solutions that are more cost-effective than Nvidia's offerings. Samsung is leading the initiative with its Mach-1 AI chip, and Naver has already signed a significant $750 million agreement with Samsung for these chips. Additionally, AMD and Broadcom are working on integrating AMD's Infinity Fabric with Broadcom's PCIe switches to provide scalable AI solutions. HPE is also involved, focusing on enterprise AI infrastructure.?

  • PwC agrees deal to become OpenAI's first reseller and largest enterprise user? PwC has become OpenAI's first reseller and its largest enterprise user, covering 100,000 users. This strategic alliance aims to integrate OpenAI's generative AI tools into PwC's services, enhancing capabilities in areas like tax, audit, and consulting. PwC will leverage OpenAI's technology to automate tasks, improve client interactions, and drive innovation across its operations. This partnership marks a significant step in the adoption of AI technologies in professional services, highlighting PwC's commitment to digital transformation and innovation.?

Gen AI for Business Trends, concerns, investments, and predictions:?

In early 2024, generative AI adoption has nearly doubled, with 65% of organizations now using it regularly, particularly in marketing, sales, and product development, according to McKinsey. This surge has generated significant business value, though challenges like inaccuracy and intellectual property risks remain. High-performing companies mitigate these risks with best practices and extensive multi-functional use, driving further investment in AI. Meanwhile, Jolla has launched privacy-focused AI hardware that processes data locally, emphasizing user control and security. In contrast, Microsoft's AI-integrated PCs aim to balance privacy with enhanced productivity. These advancements highlight the evolving landscape of AI, where privacy, efficiency, and innovation are paramount.

  • The state of AI in early 2024: Gen AI adoption spikes and starts to generate value | McKinsey? In 2024, generative AI (gen AI) adoption surged, with 65% of organizations using it regularly, nearly double from the previous year. Companies report significant business value, with gen AI commonly applied in marketing, sales, and product development. However, challenges like inaccuracy and intellectual property risks persist. High-performing organizations mitigate these risks through best practices and extensive use in multiple functions. Investments in AI, both generative and analytical, are expected to increase, with noticeable benefits in cost reduction and revenue generation.

Jolla debuts privacy-focused AI hardware | TechCrunch

  • Gen AI's second wave? Key strategies for successful Gen AI implementation include starting with high-impact use cases, investing in robust data infrastructure, and fostering a culture of experimentation. The article highlights the importance of cross-functional teams and continuous learning to adapt to rapid technological advancements.


  • This one is an interesting one. AI products like ChatGPT much hyped but not much used, study says A recent study by the Reuters Institute and Oxford University reveals that only a small fraction of people regularly use generative AI products like ChatGPT. Surveying 12,000 people across six countries, including the UK, the research found that just 2% of British respondents use these tools daily. However, younger individuals, particularly those aged 18 to 24, show higher adoption rates. Dr. Richard Fletcher, the report's lead author, noted a "mismatch" between the hype surrounding AI and public interest. How much are you using these tools??

  • As someone who created a new market category in telco and have built a category defining startup in telco, I can agree that this advice is spot on. Any AI founder need to realize that it’s a long and consistent game and you will need to utilize all available channels to edicate and deliver thought leadership. How to Build a Category-Defining AI Startup? Building a category-defining AI startup involves embracing a marketing-led approach from the outset. This includes simultaneous go-to-market strategies (product-led growth, enterprise sales, partnerships), creating a compelling market category, and continuously updating positioning based on market needs and technological advances. Marketing must drive the narrative, establish credibility, and educate the market on the transformative potential of the technology. Effective execution requires a growth mindset across all marketing functions, fostering rapid adoption and solidifying the company's position as an industry leader.

  • Gen AI investment opportunities center on data, cybersecurity, and cloud, Deloitte survey finds? Deloitte's survey on generative AI investment reveals that 78% of industry leaders have high interest in AI capabilities, with enterprise spending expected to increase by 30% in 2024. Key investment areas include data management, cloud consumption, and cybersecurity, which are critical for enabling AI solutions. Financial services and government sectors, in particular, plan significant increases in cybersecurity spending. The report highlights that robust data management and protection are essential for leveraging AI's potential and gaining industry advantages.?

  • A big concern of getting your teams ready for Gen Ai is addressed in this article with some actionable steps. How to transition nontechnical teams to use GenAI - Fast Company? To transition non-technical teams to use generative AI, start by educating and training them on AI basics and practical applications. Implement AI gradually, beginning with simple, everyday tasks to build confidence. Select user-friendly AI tools to facilitate ease of use and encourage collaboration between technical and non-technical staff to bridge knowledge gaps. Regularly monitor the integration process and adapt strategies as needed to ensure smooth adoption and maximize AI benefits. What would you add??

What/where/how are Gen AI solutions being implemented today?

Woebot, the AI-driven mental-health chatbot, is making waves by offering CBT support through text conversations, making mental health care more accessible. Meanwhile, Insider Monkey highlights 18 promising AI business ideas for 2024, including AI-driven cybersecurity and personalized healthcare. South Korea is also stepping up, with SK Telecom launching AI assistants for businesses. McKinsey notes key lessons from AI adoption in financial services, and Bain & Company reports that retailers are scaling AI investments to enhance personalized shopping and productivity as consumers increasingly embrace AI in their daily lives. The future of AI is not just bright, it’s dazzling!

  • Woebot, a Mental-Health Chatbot, Tries Out Generative AI - IEEE Spectrum Woebot is an AI-driven chatbot designed to provide mental health support through cognitive behavioral therapy (CBT). It engages users in text-based conversations, helping them to manage their mental health by offering therapeutic techniques and emotional support. Woebot utilizes natural language processing to understand and respond to users' emotions, providing a sense of companionship and personalized assistance. The goal is to make mental health care more accessible and reduce the stigma associated with seeking help. While promising, Woebot is not a replacement for human therapists but a supplemental tool to support mental well-being.

  • 18 Best AI Business Ideas in 2024 - Insider Monkey? 18 promising AI business ideas for 2024. These include AI-driven cybersecurity, personalized healthcare solutions, autonomous vehicles, AI in financial services for fraud detection and trading, intelligent virtual assistants, and AI-powered e-commerce platforms. Other notable ideas are AI in agriculture for precision farming, smart home devices, AI-driven content creation, and AI-based education tools.

  • The Korea Economic Daily article details South Korea's push in AI, including significant investment in AI research, partnerships with tech firms, and support for startups. One highlight is the development of advanced AI assistants aimed at enhancing productivity and daily life. These AI assistants are part of broader efforts to integrate AI into healthcare, manufacturing, and smart cities, positioning South Korea as a global leader in AI technology. SK Telecom to launch AI assistants for corporate clients - KED Global?

  • One year in: Lessons learned in scaling up generative AI for financial services? McKinsey's review of generative AI in financial services highlights six key lessons from the first year of adoption: making AI a strategic priority led by the CEO, centralizing AI efforts for better coordination, sequencing roll-outs across domains, building robust and reusable AI infrastructure, treating data as a corporate asset, and focusing on user adoption and change management.?

  • One year into their gen AI era: retailers must scale early investments as shoppers adopt AI into their daily lives – Bain & Company? A year into adopting generative AI, retailers are scaling their initial investments as consumers increasingly use AI in their daily lives. Bain & Company reports that AI-driven enhancements in productivity and cost savings could significantly benefit retailers. Key areas of impact include personalized shopping experiences, automated marketing content generation, and supercharging employee productivity. To maximize AI benefits, retailers must focus on change management, democratizing AI tools, and continuously upskilling employees.?

Regulatory and Regional updates

The National Institute of Standards and Technology (NIST) has released four draft standards and launched the GenAI evaluation program, following President Biden's executive order on AI. These drafts cover AI risk management, secure software development, synthetic content risks, and global AI standards engagement. The GenAI program aims to benchmark AI tools' ability to differentiate human from synthetic content, enhancing safety and trust. Public comments on these drafts are open until June 2, 2024. This initiative underscores the ongoing efforts to ensure AI technologies are safe, reliable, and ethically deployed.

  • China's latest AI chatbot is trained on President Xi Jinping's political ideology? China has developed a new AI chatbot based on President Xi Jinping's political philosophies. Created by the Cyberspace Research Institute, the chatbot uses a large language model trained on "Xi Jinping Thought on Socialism with Chinese Characteristics for a New Era" along with other major internet knowledge bases. The chatbot aims to promote Xi's ideology and provide intelligent Q&A, manuscript generation, and translations between Chinese and English. It reflects China's efforts to integrate AI with controlled political content. As someone who grew up in a communist regime (USSR) and moved to the US almost 30 years ago, this is a big concern and needs to be addressed as many new generations will be brainwashed, now through AI.

  • LLM prices hit rock bottom in China as Alibaba Cloud enters the fray | KrASIA? Chinese AI companies, including Alibaba Cloud, have significantly reduced prices for large language models (LLMs), pushing costs to historic lows. Alibaba Cloud cut prices for its Qwen-Long model by 97%, spurring competitors like Baidu to make their models free. This price war, initiated by the release of DeepSeek's V2 model, aims to democratize AI access. Despite lower prices, major companies profit through complementary cloud services, while smaller firms face challenges. This trend highlights a shift towards more affordable, efficient AI models and the beginning of the price wars. What other regions will follow the suit?

  • China Chipmakers Catching Up Fast in AI, SenseTime’s Xu Says? Chinese AI chipmakers are rapidly advancing and closing the gap with international leaders, according to SenseTime’s co-founder Xu Bing. Despite substantial investments and development efforts by global tech firms, Chinese companies are catching up quickly in the AI chip industry. This progress highlights China's increasing capability and competitiveness in the technology sector, particularly in AI.?

  • IBM and AI Singapore collaborate on first LLM developed with Southeast Asian context, ETCIO SEA? IBM and AI Singapore have collaborated to develop the first large language model (LLM) tailored for Southeast Asia. This model aims to enhance AI applications by incorporating regional linguistic and cultural contexts, addressing unique local challenges and improving accessibility. The collaboration underscores a commitment to advancing AI capabilities and ensuring they are relevant to the specific needs of Southeast Asian communities.?

  • Artificial intelligence, data and competition by OECD. This paper discusses recent developments in Artificial Intelligence (AI), particularly generative AI, which could positively impact many markets. While it is important that markets remain competitive to ensure their benefits are widely felt, the lifecycle for generative AI is still developing. This paper focuses on three stages: training foundation models, fine-tuning and deployment. It is too early to say how competition will develop in generative AI, but there appear to be some risks to competition that warrant attention, such as linkages across the generative AI value chain, including from existing markets, and potential barriers to accessing key inputs such as quality data and computing power.

  • Ottawa working on artificial intelligence strategy for the public service | National | chroniclejournal.com? Ottawa is developing a new artificial intelligence (AI) strategy for federal government operations, as announced by Treasury Board President Anita Anand. The strategy aims to enhance government efficiency and improve services for Canadians. It includes setting up a specific division to retrain existing public servants and a focus on hiring top tech talent quickly and competitively. The federal government has already incorporated AI in various operations and aims to expand its use responsibly, ensuring compliance with privacy laws and avoiding discriminatory practices.

  • Commission establishes AI Office? The European Commission has launched the AI Office to oversee the development, deployment, and regulation of AI, ensuring societal and economic benefits while mitigating risks. It will implement the AI Act, focusing on regulation, AI safety, research, and innovation. The office will coordinate with EU Member States, AI developers, and the scientific community to create codes of practice, conduct evaluations, and enforce compliance. The AI Office aims to position the EU as a leader in trustworthy AI and international AI discussions. Make sure to check the links at the end of the article for AI Act, information package and much more.?

  • France is an AI hub, but a wrinkle in tax policy is holding it back | Semafor? The high tax burden and regulatory challenges make it difficult for AI companies to thrive, despite the country's strong research infrastructure and skilled workforce. This tax wrinkle hampers France's ability to compete with other AI powerhouses that offer more favorable fiscal environments, ultimately limiting its potential as a global leader in AI innovation.

How Italian CIOs produce value with gen AI Italian CIOs are leveraging generative AI to enhance business value through various applications. For instance, Eni uses AI to optimize energy production, while Intesa Sanpaolo employs it for personalized customer services. AI is also transforming manufacturing at Fiat Chrysler Automobiles by improving quality control. Key challenges include integrating AI with existing systems and managing data privacy. CIOs emphasize the importance of collaboration and continuous learning to harness AI's potential and drive innovation across industries fully.

Learning Center and How To’s

Upskil yourself on Gen AI with these courses and readings.

  • https://pages.awscloud.com/awsmp-gim-qe9i-webinar-aim-generative-ai-poc-loka.html? AWS and Loka are offering a webinar on deploying generative AI proofs of concept (PoCs). The session will guide participants through creating and implementing AI models, utilizing AWS infrastructure and Loka's expertise. Key topics include building scalable AI solutions, best practices for AI deployment, and real-world applications. This webinar is designed for businesses looking to leverage AI technology to enhance their operations and drive innovation.?

  • Upcoming Linkedin Lives:?

  1. Gen AI for operations: Register here: https://www.dhirubhai.net/events/episode7-genaiforb2b-operations7194747477831360512/comments/?
  2. Gen AI Ethics, Register Here: https://www.dhirubhai.net/events/7201642285619392515/comments/?

  • How to Use GPT for Generating Creative Content with Hugging Face Transformers - KDnuggets? Learn to use GPT-2 with the Hugging Face Transformers library to generate creative content. Key steps include setting up the environment by installing necessary libraries, loading the GPT-2 model and tokenizer, preparing input text, and generating text. Advanced settings like adjusting temperature, top-k, and top-p sampling can enhance creativity. Practical examples include generating story beginnings and poetry. I can’t emphasize enough that experimenting with different parameters to improve content quality is key to learning about AI.

  • Top Artificial Intelligence AI Courses from Google - MarkTechPost? Google offers several AI courses to enhance skills in various AI and ML domains. Key courses include "Introduction to AI and Machine Learning on Google Cloud," covering the AI lifecycle; "Feature Engineering" with Vertex AI; and "TensorFlow on Google Cloud" for building scalable ML models. Other notable courses include "Computer Vision Fundamentals," "Natural Language Processing," and "Introduction to Generative AI." Advanced topics like "Large Language Models," "Transformer Models and BERT," "Responsible AI," and "Prompt Design in Vertex AI" are also offered, focusing on practical applications and responsible AI practices. Which ones have you taken already and which ones are on your “To learn” list?

  • How to optimize ChatGPT and other LLMs for software engineering - TechTalks? To optimize ChatGPT for software engineering, start by using it for code generation, refactoring, and debugging. Treat ChatGPT as a virtual consultant for advice and instructions on specific tasks. Use it to gain theoretical and practical knowledge through interactive dialogues. Enhance its effectiveness by incorporating company-specific information via prompt engineering or integrating it into your development environment. Address privacy concerns by using open-source models for sensitive data and reduce prompt engineering friction with tools like Anthropic’s Prompt Generator.

  • How To Organize Continuous Delivery of ML/AI Systems: a 10-Stage Maturity Model | Outerbounds? The article outlines a 10-stage maturity model for continuous delivery (CD) of ML/AI systems. It emphasizes best practices like GitOps, scalable compute, data management, and isolated environments. Each stage progresses from local development to automated, secure deployments and managing multiple environments. Key strategies include tracking experiments, ensuring reproducible results, and leveraging cloud resources efficiently. The model aims to streamline ML/AI deployment, enhance collaboration, and ensure reliable production environments.?

  1. Google Cloud's "Introduction to Generative AI," which provides foundational knowledge of generative AI and its applications, and DeepLearning. AI's "Generative AI with Large Language Models," focused on developing and deploying large language models.
  2. IBM offers multiple specialized courses, such as "Generative AI Fundamentals," "Generative AI for Data Scientists," and "Generative AI for Software Developers," which emphasize practical applications.
  3. MIT Professional Education provides an in-depth "Applied Generative AI for Digital Transformation" program for business and technology leaders.
  4. Microsoft Azure's "AI Fundamentals: Generative AI" introduces generative AI technologies using Azure services.
  5. The Project Management Institute offers "Generative AI Overview for Project Managers," integrating AI into project management practices.
  6. Additionally, RMIT University's "Generative AI: Implications and Opportunities for Business" explores the technology's industry impact, including ethical and regulatory considerations.
  7. The GSDC offers various certifications tailored to specific business functions, such as business, HR, finance, marketing, retail, and risk and compliance. These programs aim to equip professionals with the necessary skills to effectively utilize generative AI, fostering innovation and enhancing productivity in their respective fields.

Prompt of the week

One size doesn’t fit all when it comes to prompting. Prompting effectively varies across job functions, each requiring tailored approaches to maximize AI assistance. By tailoring AI prompts to fit the unique tasks and goals of different job roles, you can boost efficiency and get more useful results. For example, a software developer might ask the AI to debug code, while a marketer could request help drafting a campaign. Customer support could use AI to respond to inquiries, and project managers might generate timelines or risk assessments. Each function uses AI differently to enhance their specific workflows, making the output more relevant and actionable for their needs.

Here are some examples based on different job functions.

What are your favorite prompts? Can you share them in the comments?

Tools and Resources

  • Download Nanni AI, your AI Baby Assistant and Translator—this is a game changer for parents with babies. I remember when my son was born, and he cried nonstop. I wish I had it back then so I could comfort him. This app is backed by research and has amazing reviews from parents. Give it a try.???

  • https://www.eververse.ai/ Eververse is an AI-powered platform designed to streamline product development processes. It assists product teams in exploring problems, ideating solutions, prioritizing features, and planning roadmaps. Key features include AI feedback summarization, sentiment analysis, powerful writing tools, predictive prioritization, visual roadmaps, activity logs, and rich changelog editors. Integrations with tools like Jira, GitHub, and Slack ensure seamless workflows, while a public portal allows teams to share roadmaps and gather user feedback.?

  • For fun: Autobiographer? Have a conversation with the Autobiographer App, remember the moments that shaped you, and save your story forever.


If you enjoyed this newsletter, please comment and share. If you would like to collaborate on this newsletter, discuss a partnership or invite me to speak at your company or event, please DM me.


Naama Manova-Twito

Entrepreneur, Co-Founder of Marketeam.ai - the world's first fully autonomous AI marketing team

4 个月

Eugina Jordan, thank you! Super insightful :)

Thanks for the shoutout! ??

Zahid Ghadialy

Principal Analyst & Consultant at 3G4G

4 个月

Nice one Eugina, very detailed!

Great insights, as always, Eugina!

Thanks for the helpful updates so much is happening with Gen AI!

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