Generative AI (GenAI) for engineering can be transformative but comes with risks. GenAI models, while powerful, are prone to “hallucinations” or generating inaccurate data, which can lead to costly mistakes in critical design decisions. A more efficient and secure approach is to use proven natural language processing (NLP) tools, such as Goldfire, to verify and filter data first. This hybrid method ensures that only relevant data reaches the GenAI, which saves on processing costs and minimizes risks—allowing engineering teams to leverage this technology in a safe, cost-effective, and accurate way. Interested in learning more? Accuris Goldfire expert Tom Baker will be speaking during the "Bringing GenAI Applications to Users" session on November 19th at KMWorld Enterprise Search & Discovery in Washington D.C. Read more: https://hubs.la/Q02Y55T60 Learn more about KMWorld: https://hubs.la/Q02Y4VWm0
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Generative AI is a game-changer in engineering, but managing risks is key. Learn more in this blog written by Goldfire expert Tom Baker and don't miss his session on GenAI applications at KMWorld Enterprise Search & Discovery on November 19th.
Generative AI (GenAI) for engineering can be transformative but comes with risks. GenAI models, while powerful, are prone to “hallucinations” or generating inaccurate data, which can lead to costly mistakes in critical design decisions. A more efficient and secure approach is to use proven natural language processing (NLP) tools, such as Goldfire, to verify and filter data first. This hybrid method ensures that only relevant data reaches the GenAI, which saves on processing costs and minimizes risks—allowing engineering teams to leverage this technology in a safe, cost-effective, and accurate way. Interested in learning more? Accuris Goldfire expert Tom Baker will be speaking during the "Bringing GenAI Applications to Users" session on November 19th at KMWorld Enterprise Search & Discovery in Washington D.C. Read more: https://hubs.la/Q02Y55T60 Learn more about KMWorld: https://hubs.la/Q02Y4VWm0
Addressing the Pitfalls of Heavy Investment in GenAI and LLM for Internal Engineering Teams
https://accuristech.com
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Generative AI can transform #engineering, but it’s not without risks. In this article, learn more about using Accuris Goldfire to filter data first for increased safety and efficiency.
Generative AI (GenAI) for engineering can be transformative but comes with risks. GenAI models, while powerful, are prone to “hallucinations” or generating inaccurate data, which can lead to costly mistakes in critical design decisions. A more efficient and secure approach is to use proven natural language processing (NLP) tools, such as Goldfire, to verify and filter data first. This hybrid method ensures that only relevant data reaches the GenAI, which saves on processing costs and minimizes risks—allowing engineering teams to leverage this technology in a safe, cost-effective, and accurate way. Interested in learning more? Accuris Goldfire expert Tom Baker will be speaking during the "Bringing GenAI Applications to Users" session on November 19th at KMWorld Enterprise Search & Discovery in Washington D.C. Read more: https://hubs.la/Q02Y55T60 Learn more about KMWorld: https://hubs.la/Q02Y4VWm0
Addressing the Pitfalls of Heavy Investment in GenAI and LLM for Internal Engineering Teams
https://accuristech.com
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Generative AI is a game-changer in engineering, but managing risks is key. Learn more in this blog written by Goldfire expert Tom Baker.
Generative AI (GenAI) for engineering can be transformative but comes with risks. GenAI models, while powerful, are prone to “hallucinations” or generating inaccurate data, which can lead to costly mistakes in critical design decisions. A more efficient and secure approach is to use proven natural language processing (NLP) tools, such as Goldfire, to verify and filter data first. This hybrid method ensures that only relevant data reaches the GenAI, which saves on processing costs and minimizes risks—allowing engineering teams to leverage this technology in a safe, cost-effective, and accurate way. Interested in learning more? Accuris Goldfire expert Tom Baker will be speaking during the "Bringing GenAI Applications to Users" session on November 19th at KMWorld Enterprise Search & Discovery in Washington D.C. Read more: https://hubs.la/Q02Y55T60 Learn more about KMWorld: https://hubs.la/Q02Y4VWm0
Addressing the Pitfalls of Heavy Investment in GenAI and LLM for Internal Engineering Teams
https://accuristech.com
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Building Intelligent Applications with AI and APIs 1. Choosing the Right API: Criteria for Selection Selecting the right API is paramount for the success of an AI project. Consider the following criteria: Functionality:?Ensure the API offers the specific features and capabilities your AI model requires. For example, if your model needs natural language processing (NLP) capabilities, choose an API that specializes in NLP tasks like sentiment analysis or text generation. Documentation and Support:?Comprehensive documentation and responsive support are crucial for seamless integration and troubleshooting. Choose APIs with well-documented resources and active developer communities. Data Format:?Verify that the API's data format is compatible with your AI model's input and output requirements. Mismatched formats can lead to errors and delays. Pricing:?APIs often have different pricing models, such as pay-as-you-go or subscription-based. Choose a model that aligns with your budget and usage patterns. Reliability and Scalability:?Ensure the API is reliable and can scale to handle your application's traffic and usage demands. Downtime or performance issues can negatively impact your AI application. Security:?Prioritize APIs with robust security measures to protect sensitive data and prevent unauthorized access. Look for features like encryption, authentication, and rate limiting. 2. API Integration: Steps to Integrate APIs with AI Models Integrating APIs with AI models typically involves the following steps: Authentication:?Obtain API keys or credentials to authenticate your requests. Data Preparation:?Format input data to match the API's requirements. API Calls:?Use programming libraries or SDKs (Software Development Kits) provided by the API to send requests and receive responses. Data Processing:?Parse and extract relevant information from the API responses. Model Integration:?Incorporate the API data into your AI model's workflow. Example: Integrating OpenAI's GPT-3 API Python COPY COPY import openai openai.api_key = "YOUR_API_KEY" response = openai.Completion.create( engine="text-davinci-003", prompt="What is the capital of France?", max_tokens=10 ) print(response.choices[0].text) # Output: Paris In this example, we use OpenAI's API to send a text prompt to the GPT-3 model and receive a response. 3. Common Challenges and Solutions Integrating APIs with AI models can present challenges, such as: Read the full post at https://lnkd.in/ghcHTimy #API ?#architecture??#github ?#gitlab ?#devops ?#grpc ?#graphql ?#rest?#webservice ?#softwaredevelopment ?#dev ?#fastdevelopment ?#technology ?#tech ?#innovation #integration ?#connectedapplications ?#mulesoft ?#snaplogic ?#boomi ?#workato #apisecurity
Building Intelligent Applications with AI and APIs
venkatr.hashnode.dev
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Generative AI, thanks to natural language processing (#NLP) capabilities and advances in large language models (#LLMs), promises to transform content-creation and application development, as well as the very ways we interact with digital solutions and #data. If business users had their way, generative #AI would be built into applications across the whole organization, from marketing and operations to finance and beyond, to improve efficiencies, streamline processes, and reduce costs. Read this article in @TDWI by @Alberto Pan, EVP & CTO at @Denodo, and discover why #Datamanagement will play a critical role in enabling #generativeAI to reach its full potential?https://buff.ly/49S8KzY
How Generative AI and Data Management Can Augment Human Interaction with Data | TDWI
tdwi.org
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Generative AI, thanks to natural language processing (#nlp ) capabilities and advances in large language models (#llms ), promises to transform content creation and application development, as well as how we interact with digital solutions and #data . If business users had their way, generative #ai would be built into applications across the whole organization, from marketing and operations to finance and beyond, to improve efficiencies, streamline processes, and reduce costs. Read this article in @TDWI by @Alberto Pan, EVP & CTO at @Denodo, and discover why #datamanagement will play a critical role in enabling #generativeai to reach its full potential
How Generative AI and Data Management Can Augment Human Interaction with Data | TDWI
tdwi.org
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???????????????????????? ?????????????? ???????????????? ???????????? ????? Transformers are the de facto choice for natural language processing ever since they were first published, achieving astonishing success. However, in the field of computer vision, several attempts tried to combine the existing and popular convolutional neural network (CNN) approach with the new transformer architecture, but the results were not particularly impressive - until 2021. That year, Google researchers published the landmark paper "???? ?????????? ???? ?????????? ?????????? ??????????: ???????????????????????? ?????? ?????????? ?????????????????????? ???? ??????????", introducing the ???????????? ?????????????????????? model. ViT attains excellent results on image classification tasks compared to state-of-the-art CNNs while requiring substantially fewer computational resources to train. ?????? ?????? ???????????????????? The key innovation of ViT is to break each image into a sequence of flatten 16x16 pixel patches and feed them into a standard transformer encoder, treating these patches analogously to word embeddings in NLP tasks. This simple idea allows transferring the architecture and techniques from transformers in text to computer vision seamlessly. ??????'?? ???????????????????? ? Stronger performance than CNNs on image classification benchmarks when trained on sufficiently large datasets ? More scalable due to reduced computational requirements compared to CNNs ? Enables seamless transfer of techniques from NLP like self-attention, pre-training on large datasets, etc. However, transformers in computer vision require larger datasets to obtain these state-of-the-art results, mainly due to their lack of inductive bias compared to CNNs, which have built-in translation equivariance and locality priors. ???????????????????????? ???????? ???????? ???????????? Since its introduction, ViT has sparked immense research interest, with many followup works extending it to other vision tasks like object detection, semantic segmentation, and video processing. Transformer architectures are quickly becoming the new paradigm for computer vision models, mirroring their trajectory in NLP a few years prior. ?? ????????-?????????????? ?????? ???????????? ???? The Vision Transformer is a game-changing combination - it brings transformers' powerful ability to connect different parts of an image (self-attention) into the world of computer vision. This unlocks lots of new possibilities. As we get bigger image datasets and more powerful computers, models like the Vision Transformer will keep pushing machine vision to new heights. ?????????? ???????? - ViT Paper: https://lnkd.in/egFgUFGC - ViT Implementation in Keras: https://lnkd.in/euAbzPWq #ConvolutionalNeuralNetworks #AnImageIsWorth16x16Words #Transformers #VisionTransformer #ComputerVision #DeepLearning
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LLM-based document extraction and its ability to transform information retrieval and generation has redefined the way businesses manage documents. Read our blog to explore more about #LLM https://hubs.ly/Q02qlkCN0 #DeepLobe #AI #NLP #GenerativeAI #ChatGPT
LLM-Based Document Extraction: Decoding Data - DeepLobe
https://deeplobe.ai
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Prometeo.ai makes use of two Bidirectional Encoder Representations from Transformers (BERT) models, both of which operate within a Docker environment for natural language processing (NLP)
Sentiment Analysis and Insights on Cryptocurrencies Using Docker and Containerized AI/ML Models
https://www.docker.com
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?Generative AI, thanks to natural language processing (#NLP) capabilities and advances in large language models (#LLMs), promises to transform content-creation and application development, as well as the very ways we interact with digital solutions and #data. If business users had their way, generative #AI would be built into applications across the whole organization, from marketing and operations to finance and beyond, to improve efficiencies, streamline processes, and reduce costs. Read this article in @TDWI by @Alberto Pan, EVP & CTO at @Denodo, and discover why #Datamanagement will play a critical role in enabling #generativeAI to reach its full potential?https://buff.ly/49S8KzY
How Generative AI and Data Management Can Augment Human Interaction with Data | TDWI
tdwi.org
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