nlp - Natural language processing. A branch of AI that helps computers understand text and words like humans.
The Datasets library from hugging Face provides a very efficient way to load and process NLP datasets from raw files or in-memory data. These NLP datasets have been shared by different research and practitioner communities across the world.
In this post, I wanted to share a Reddit dataset list that gained a lot of traction on social media when it was first posted.
In this article, we cover how to use pipeline patterns in python data engineering projects. Create a functional pipeline, install fastcore, and other steps.
GPT-3 was meant to understand and construct natural language. But as these tools prove, it's pretty good at programming languages, too.
There are numerous posts about developing a chatbot using Dialogflow. But creating chatbot isn’t enough. Connecting Dialogflow to the web interface is even more interesting and challenging. With Angular being a popular and emerging platform, here is our guide to integrate Dialogflow chatbot with Angular JS.
A step-by-step guide on how to train a relation extraction classifier using Transformer and spaCy3.
Learn how to build an NLP model and deploy it with a fast web framework for building APIs called FastAPI.
How to analyze the sentiments from a text using AWS services like Amazon Comprehend, AWS IAM, AWS Lambda, and Amazon S3.
OpenAI GPT-3 is the most powerful language model. It has the capacity to generate paragraphs so naturally that they sound like a real human wrote them.
If you’re a millennial, you’ll know SmarterChild, the first-ever instant messaging bot with natural language comprehension ability. It was developed in 2000 and demonstrated exceptional wit, which most of today’s bot cannot. SmarterChild used to chat with about 2,50,000 humans every day with funny, sad, and sarcastic emotions. Today, we’ve traveled a distance with technologies like AI, ML, NLP, etc. and bots like Xiaocle have passed Turing tests of 10 minutes (i.e. users couldn’t identify that they’re talking to a bot for about 10 minutes).
Artificial Intelligence is a lot more than a tech buzzword these days. This technology has disrupted almost every industry within a decade. Every company wants to implement this cutting edge technology in its system to cut costs, save time, and make the overall process more efficient with automation.
When asked what advice he'd give to world leaders, Elon Musk replied, "Implement a protocol to control the development of Artificial Intelligence."
Closing b2b deals is difficult. People are not buying aggressive selling techniques. Existing sales softwares aren't helping. New tech can help.
How it can give us something we hitherforto though cobblers: a computer-you-can-ask-anything!
Transformer models have become by far the state of the art in NLP technology, with applications ranging from NER, Text Classification, and Question Answering
Welcome to the third part of the five series tutorials on Machine Learning and its applications. Check out Dataturks, a data annotations tool to make your ML life simpler and smoother.
Most of us are familiar with Twitter. But we are not much familiar that we can automate the activities like status posting, retweeting, liking, commenting and so on. So,here I'll show you how we can automate some of the activities like getting the twitter data,posting the status and retweeting with Node.js and a npm package called Twit.
How to fine-tune a Hugging Face Transformer model for Sequence Classification
Open sourced by Google Research team, pre-trained models of BERT achieved wide popularity amongst NLP enthusiasts for all the right reasons! It is one of the best Natural Language Processing pre-trained models with superior NLP capabilities. It can be used for language classification, question & answering, next word prediction, tokenization, etc.
Data is useless without the ability to easily get and act on it. The success of future enterprises will combine sophisticated information collection with better user experience, and the Natural Language User Interface comprises much of this user experience.
Build best automated AI chat bot using Google Dialog flow
My biggest worry (and excitement) is that AI will progress enough to become more creative than humans.
In NLP, Document-Term Matrix (DTM) is a matrix representation of the text corpus. The TF-IDF score is widely used to populate the DTM.
Using a Template to Create a Trivia Voice App for The Office
Just over a week, most of you would have heard that Facebooks AI research team (FAIR) developed a neural transcompiler, that converts code from high level programming language like C++, Python, Java, Cobol into another language using ‘unsupervised translation’ . The traditional approach had been to tokenize the source language and convert it into an Abstract Syntax Tree (AST) which the transcompiler would use to translate to the target language of choice, based on handwritten rules that define the translations, such that abstract or the context is not lost.
Imagine reading something, and never losing track of that information.
Learn how to build an NLP model and deploy it with a fast web framework for building APIs called FastAPI.
In this post we are going to build a web application which will compare the similarity between two documents. We will learn the very basics of natural language processing (NLP) which is a branch of artificial intelligence that deals with the interaction between computers and humans using the natural language.
Google BERT will help you to kickstart your NLP journey by showing you how the transformer’s encoder and decoder work.
Typo is something that often happens and can reduce user’s experience, fortunately, Elasticsearch can handle it easily with Fuzzy Query.
Attacking Toxic Comments Kaggle Competition Using Fast.ai
Prompting is pretty much the only skill you now require to be a master of these new large and powerful generative models such as ChatGPT.
To participate go to: https://competitions.codalab.org/competitions/26979
Have you ever had to find unique topics in a set of documents? If you have, then you’ve probably worked with Latent Dirichlet Allocation (or LDA).
There are many tasks in NLP from text classification to question answering, but whatever you do the amount of data you have to train your model impacts the model performance heavily.
By: Comet.ml and Niko Laskaris, customer facing data scientist, Comet.ml
ChatGPT has taken over Twitter and pretty much the whole internet, thanks to its power and the meme potential it provides.
Chatbots for surveys, surveybots, conversational surveys, feedback chatbots, conversational survey tools, AI survey tools, chatbot questionnaires. The list of names goes on and on. But how do they compare and which one is the best performer?
Photo by Michael on Unsplash
Exploratory data analysis is one of the most important parts of any machine learning workflow and Natural Language Processing is no different.
After discovering the amazing power of convolutional neural networks for image recognition in part five of this series, I decided to dive head first into Natural language Processing or NLP. (If you missed the earlier articles, be sure to check them out: 1, 2, 3, 4, 5, 6.)
Artificial Intelligence (AI) technology is too far evolved to still be relying on basic, word cloud analysis for your survey data
Academic paper reviews is a necessary civic duty for researchers in all fields, humanities, science, engineering or anything in between.
Too lazy to scrape nlp data yourself? In this post, I’ll show you a quick way to scrape NLP datasets using Youtube and Python.
Six unforgivable mistakes that scare off your customers and prospects? The Smart Tribune team answers you.
An interview with the founder of Winn.AI, a mixture of Alex and Salesforce that aims to help b2b sales with its advanced machine learning capabilities
If you thought ChatGPT was good, just wait until you try GPT-4.
How Web3 Is Shaping the Future of Marketing
Audio classification is the process of listening to and analyzing audio recordings. Also known as sound classification, this process is at the heart of a variety of modern AI technology including virtual assistants, automatic speech recognition, and text-to-speech applications. You can also find it in predictive maintenance, smart home security systems, and multimedia indexing and retrieval.
In this write-up, we will understand the role of NLP in the media industry, its impact, and how it will help to clear out the issues hampering growth.
DigiSkills Training Program is Pakistan’s first Online Training Program that offers free-of-cost training courses. The platform was created to train the youth with in-demand digital skills such as content marketing, graphic designing, Creatives and SEO, etc.
Becoming a health data scientist can be challenging but rewarding; it merges statistical analysis with other tools to gain insights from healthcare data.
AR shines when our relationship with technology becomes more intuitive and in 2022, emerging AR capabilities are taking language translation a step further.
Nothing excites business owners more than the opportunities to cut cost. So it’s no surprise that in the era of chatbots, many customer service organizations are jumping at the opportunity to show human agents the door.
Find out how to integrate Chat GPT into an app or a website. Business and technical ChatGPT use cases explained for product owners to benefit from GPT models.
Internal communication and employee engagement are key when it comes to the smooth functioning of an organization and building a reputation, especially in today’s age when more and more people are opting to work remotely and teams are scattered across the world.
COVID-19 has impacted every other industry and has made people adopt newer norms. The traditional translation industry is no different. Several disruptions have been introduced to keep things moving, thanks to Big data and machine translation technologies that have enabled the world to do business as usual.
Advanced analytic models can identify and predict negative outcomes such as health and safety challenges or compliance risks that would be overlooked by manual.
As a historical reference, here is what ChatGPT’s grandfather, GPT2 was able to produce all the way back in 2020. It’ll be interesting to compare it to what Cha
In the event that you don’t have a Google Voice telephone number yet, you’re passing up a great opportunity. Google Voice has some extraordinary highlights that can help ensure your security. Also, you can keep your Google Voice telephone number forever, or for in any event insofar as Google is eager to have it.
Let’s talk about what technologies are used in metaverse development and how businesses can create their own metaverse applications.
Hugging Face offers solutions and tools for developers and researchers. This article looks at the Best Hugging Face Datasets for Building NLP Models.
How natural language processing has been revolutionized by Artificial Intelligence and how this is currently affecting businesses.
Let’s find out how no-code / low-code platforms are built and what it takes to create your own solution. We’ll focus on the development approaches, architecture
This article is about putting all the popular pre-training tasks used in various language modelling tasks at a glance.
Recurrent Neural Networks (RNN) have played a major role in sequence modeling in Natural Language Processing (NLP) . Let’s see what are the pros and cons of RNN
This article examines the best APIs on the market for performing Topic Detection in 2022.
Learn how to fine tune a RoBERTa topic classification model in python with the hugging face transformers and libraries.
ChatGPT for healthcare? Learn everything you need to know about MedPaLM, a new LLM developed by Google specifically for medical and clinical applications.
How Amazon Alexa AI processes and implements commands.
Rake System and Their Success Story](https://hackernoon.com/new-way-for-business-optimisation-is-out-now-rake-system-and-their-success-story-v8vy325u) The Rake system understands and manages client requests related to company services. Regardless of the requests: text, voice - Rake’s chatbots understand and process all of them using artificial intelligence. The chatbot has been designed for W5Golf, and is the company that provides customer experience optimisation solutions and helps develop customer experience strategies that deliver results. The company’s solution helps to strengthen relationships with your customers by providing a system that optimises relevant engagements and improved services.
While natural language processing has received tons of attention in the field of AI, generative AI is also making great strides.
Creating an app with AI for Android and iOS can be a challenging but rewarding task. Step-by-step guide on how to create an app with AI.
The Python ecosystem has a large number of libraries and tools that support machine learning, such as NumPy, Pandas, Matplotlib, TensorFlow, and scikit-learn.
In our new blog series, we’re interviewing data scientists and machine learning engineers about their career paths, areas of interest and thoughts on the future of AI. We kick off this week with a 20-year veteran and jack-of-all-trades when it comes to machine learning and data science: Mani Sarkar. Mani is a strategic machine learning engineer based in London, UK, who believes in getting beyond the theoretical and applying AI to real-world problems.
Law enforcement agencies are not new to the data and its usage, but with the advancement in technology, Data science in law enforcement has become a need.
In this article, we will take the time to explain what conversational AI is: principles and examples to have a better idea of how you can implement it.
The usage of the new age customer support technology bots, popularly known as Chatbots is on the rise. Researches show that more than 80% of the customer communication that is done on websites or mobile apps are done through chatbots. Chatbots are highly valuable for the companies because they can work round the clock, are easy to use and do not make any kind of errors.
Ailira (www.ailira.com) the ”artificially intelligent legal information research assistant”, is an AI chatbot that uses natural language processing. The chatbot has been designed to understand and process sophisticated technical legal questions & search quickly. Ailira was created by Adrian Cartland, the founder of Cartland Tech and the law firm without lawyers.
I made ChatGPT answer 50,000 trivia questions. Find out what happens
Natural Language Processing (NLP) refers to AI method of communicating with intelligent systems using a natural language such as English.
I have become a ‘covidiot’ nowadays. I’m stuck in the home since last one and half months since COVID-19 outbreak. There is hardly any physical activity and I’m spending the longest era of my life without underwear since my adulthood.
According to Mashivor, 50% of tenants move out because they are not happy with their landlord. The landlord-tenant relationship is more often than not a contentious one. It features two sides with similar intentions but entirely different priorities. Both parties are interested in peaceful, fluid, and uneventful correspondence and both are wary of being cheated, ill-treated, and misinformed.
Build a transformer model with natural language processing to create new cocktail recipes from a cocktail database.
There’s no doubt that TensorFlow is one of the most popular machine learning libraries right now. However, newbie developers who want to experiment with TensorFlow often face difficulties in learning TensorFlow; the framework has a not unjustified reputation for having a steep learning curve that can make it hard for developers to get to grips with quickly.
According to a recent Pew Research Center poll, in just one week (March 16–24), the number of Americans who view the coronavirus as a major threat to public health spiked by nearly 20%, from 47% to 66% — a figure that is growing exponentially.
Sanksshep Mahendra insists that the frameworks of society aren’t moving quickly enough to keep pace with the ever-increasing rate of change AI has.
Natural language processing (NLP) is a subfield of artificial intelligence. It is the ability to analyze and process a natural language.
Cleuton Sampaio, October 2019
Chatbots do not really understand what you are saying and you cannot have a real conversation with a personal assistant like you can with another person.
A follow-up post on the back of the post two-years ago with the title "Two Years In The Life Of AI, ML, DL And Java"
An introductory article to bring a preliminary cognizance on the broadening prospects of foundation models in the AI industry.
The International Conference on Learning Representations (ICLR) took place last week, and I had a pleasure to participate in it. ICLR is an event dedicated to research on all aspects of representation learning, commonly known as deep learning.
See the implementation of the Viterbi algorithm in Python
Introduction
There are soooo many papers in the field of machine learning, natural language processing nowadays. I’ll share the paper blitz method to "read them all".
TL;DR; GPT-3 will not take your programming job (Unless you are a terrible programmer, in which case you would have lost your job anyway)
There’s a subreddit with a called r/SubSimulator that took three years in the making and which is fully powered by bots
I wanted to ask ChatGPT about ideas worth millions of dollars. Here are the answers:
In the realm of AI development, there's perhaps no more important goal than to create systems that can truly master natural language processing (NLP). That's the key to making AI broadly useful, as it will need to interact with humans (who lack the programming skills to speak machine languages). On the path to NLP, it's fair to say that getting an AI to speak human languages is a prerequisite to getting them to understand what people are saying.
I am Akis Loumpourdis, a 2021 Noonies Nominee. This is a small interview to get to know me a bit better.
I’m consuming 5500+ hours of Joe Rogan with the help of AI
We’re really proud that we can be in a group of like-minded technologists and be acknowledged by them.
Learn how to leverage software developer tools to beat the best in a Natural Language Processing competition on Kaggle, without using any Machine Learning.
A company’s HR department holds a unique role that is entirely centered around the employees’ experience. Not only do these functions span over the length of the employee’s tenure, it even covers their involvement from the moment candidates are considered for the job.
Text classification is task of categorising text according to its content. It is the fundamental problem in the field of Natural Language Processing(NLP). More general applications of text classifications are in email spam detection, sentiment analysis and topic labelling etc.
A detailed overview of an AI subfield called Natural Language Processing or NLP and how to learn NLP.
This blog provides you with some strong rationale to use Kubernetes on large AI/ML datasets on which distributed inferences are performed. Loop in for more.
I told OpenAI's ChatGPT model to write The Great Gatsby, but with zombies. Here's what happened...
As the amount of data continues to grow at an unprecedented rate, traditional keyword-based search will become less effective.
A fun, quick summary of recent research around ML-generated humor and why everyone should be watching this space. Laugh, earthlings.
Thanks to artificial intelligence and machine learning, chatbots are becoming a practical tool in the business world. This is good news for many companies, as chatbots can increase engagement, revenue and ROI. The potential of artificial intelligence is there to be harnessed, and AI-powered chatbots are examples of the effective usage of the technology. However, choosing a chatbot can be overwhelming. Let's take a look at the most popular AI chatbots currently on the market.
Analyzing customer sentiment allows businesses to look into how customers feel about their products & services.
The fundamental problem of the modern AI is that it tries to create a sophisticated trained dog. This approach is a dead end and needs to be drastically changed
Over the past decade plus, chatbots have dominated the conversation (no pun intended) when it comes to digital engagement. You’ve undoubtedly had experiences interacting with them, some helpful while others underwhelming, and perhaps even fiddled around with building one on your own.
Introduction
<TLDR> BERT is certainly a significant step forward in the context of NLP. Business activities such as topic detection and sentiment analysis will be much easier to create and execute, and the results much more accurate. But how did you get to BERT, and how exactly does the model work? Why is it so powerful? Last but not least, what benefits it can bring to the business, and our decision to integrate it into the sandsiv+ Customer Experience platform.</TLDR>
Earlier this year, Elon Musk-backed artificial intelligence laboratory, OpenAI, released its latest, much anticipated autoregressive language model, the Generative Pre-trained Transformer 3 (GPT-3). Emerging to much fanfare and slated as the usherer of a new age of artificial intelligence, the number of articles, blog posts, and news pieces about this language model, perhaps match only the number of parameters the GPT-3 learned; 175 billion (Ok, this may be an exaggeration, but you get my point).
AI assistant technology is in many ways similar to a traditional chatbot but integrates next-generation machine learning, AR/VR and data science.
There are tons of audio recording apps in the app store, but you know things will be a bit different if Google developed a brand new one. Google recently released a new ‘Recorder’ app that is powered by its state-of-the-art Machine Learning algorithm that can transcribe what it hears with impressive precision in real-time. This is not the first time Google tried to bless its product with some AI ‘superpower’. Some of their prior attempts failed (I’m talking to you Google Clips!) and some had quite formidable success, for example, Google’s Pixel phone camera app.
More data we have, better performance we can achieve. However, it is very too luxury to annotate large amount of training data. Therefore, proper data augmentation is useful to boost up your model performance. Authors of Unsupervised Data Augmentation (Xie et al., 2019) proposed Unsupervised Data Augmentation (UDA) assistants us to build a better model by leveraging several data augmentation methods.
The write-up is about various free open-source NLP tools available in the market which any developer can use as per the requirement.
You might be wondering if machines are a threat to the world we live in, or if they’re just another tool in our quest to improve ourselves. If you think that AI is just another tool, you might be surprised to hear that some of the biggest names in technology have a clear concern for it. As Mark Ralston wrote, “The great fear of machine intelligence is that it may take over our jobs, our economies, and our governments”.
In the latest episode of our podcast, Machine Learning that Works, I had a great pleasure to talk to Gabriel Preda, a Lead Data Scientist at Endava and a Kaggle Grandmaster.
An Introduction to Machine Learning for Finance.
Last year I found I had ADD.
We’ve decided to consider AllenNLP as our main model, and utilize Huggingface as more of a reference while using it mostly as a refinement to AllenNLP output.
Customer service automation is not a new thing in business. Many brands have successfully implemented automation to streamline the processes and save costs. However, there are still many questions on how to balance automation with a human touch and worries about sounding robotic and impersonal.
Recent years have seen a plethora of pre-trained models such as ULMFiT, BERT, GPT, etc being open-sourced to the NLP community. Given the size of such humungous models, it's nearly impossible to train such networks from scratch considering the amount of data and computation that is required. This is where a new learning paradigm "Transfer Learning" kicks in. Transfer learning is a research problem in machine learning that focuses on storing knowledge gained while solving one problem and applying it to a different but related problem.
Here we explore the essence of explainability in AI and analyzing how applies to decision support systems in healthcare, finance, and other different industries
As we advance the state of machine translation, translation memory has its place in todays’ translation tech stack that benefits MT users and human translators.
Getting actionable insights around a topic using the new Twitter API v2 endpoint
How to create, build and deploy every component behind a Bike recommendation system
A guide to build a movie recommender model based on content-based NLP: When we provide ratings for products and services on the internet, all the preferences we express and data we share (explicitly or not), are used to generate recommendations by recommender systems. The most common examples are that of Amazon, Google and Netflix.
The original AI Dungeon was made just over a year ago, the result of a curious gamer, a hackathon, and the GPT-2 text transformer. Fast forward to the present day, and AI Dungeon has expanded into a unique example of creative AI technology. The game now boasts 1.5 million players, multiple genres for stories, and even multiplayer adventures.
Unconventional sentiment analysis with CatBoost. The result is comparable to BERT SOTA.
Is Bitcoin the revolution against unequal economic systems, or a scam and money laundry mechanism? Will artificial intelligence (AI) improve and boost humankind, or terminate our species? These questions present incompatible scenarios, but you will find supporters for all of them. They cannot be all right, so who’s wrong then?
This new Facebook AI model can translate or edit the text in an image, while maintaining the same font and design as the original.
With the amount of data created growing exponentially each year and forecasted to reach 59 zettabytes in 2020 and more than 175 zettabytes by 2025, the importance of discovering and understanding this data will continue to be, even more than before, a decisive and competitive differentiator for many companies.
This almost maniacal obsession with possessing an all knowing chatbot is sweeping across industries and geographies.
For many healthcare providers, the industry is shaping up to be more of a shifting quandary of regulatory issues, financial turmoil, and unforeseeable eruptions of resentment from practitioners on the edge of revolt. The industry is now taking the opportunity to scale up their big data defenses and develop the technological infrastructure required to meet the imminent challenges.
“I don’t want a full paper, just give me a concise summary of it”. Who hasn't found themselves in this situation, at least once? Sound familiar?
Do you also want to learn NLP as Quick as Possible ? Perhaps you are here because you also want to learn natural language processing as quickly as possible, like me.
With the amount of data created growing exponentially each year and forecasted to reach 59 zettabytes in 2020 and more than 175 zettabytes by 2025, the importance of discovering and understanding this data will continue to be, even more than before, a decisive and competitive differentiator for many companies.
As always, the fields of deep learning and natural language processing are as busy as ever. Despite many industries being hindered by the quarantine restrictions in many countries, the machine learning industry continues to move forward.
Everything we express (either verbally or in written) carries huge amounts of information. The topic we choose, our tone, our selection of words, everything adds some type of information that can be interpreted and value extracted from it. In theory, we can understand and even predict human behaviour using that information.
Breadsticks, of all things, were the reason for a huge backlash at the famous Olive Garden chain of restaurants both from customers and employees.
In the Birthday AMA Episode, Sanyam Bhutani had shared a small series of "exciting updates" coming to CTDS.Show:
ChatGPD is one of the most common misspellings of the viral language model developed by Open AI. The correct term is ChatGPT.
The island Crete in Greek mythology is strongly associated with the ancient Greek gods. It is the backdrop to many famous Greek myths, my favourite being Talos.
An article explaining the intuition behind the “positional embedding” in transformer models from the renowned research paper - “Attention Is All You Need”.
Technological innovations are necessary to cope up with the customer demands. Customers nowadays use multiple channels to access the services from a business. Thus, they expect multiple channel customer service from companies.
Have you ever dreamed of a good transcription tool that would accurately understand what you say and write it down? Not like the automatic YouTube translation tools… I mean, they are good but far from perfect. Just try it out and turn the feature on for the video, and you’ll see what I’m talking about.
A Clinical Decision Support System (CDSS) provides the doctor with a tool that eases their work, and increases the value of the time spent with the patient.
The explosion of content on the world wide web, social media and chat networks greatly increased the interest in sentiment analysis from a growing number and variety of interested parties.
Here's a deep dive into the history of machine learning embeddings, common uses, and current infrastructure solutions, including the vector database.
<meta name="monetization" content="$ilp.uphold.com/EXa8i9DQ32qy">
On November 15th, MetaAI and Papers with Code announced the release of Galactica, a game-changer, open-source large language model trained on scientific knowledge with 120 billion parameters.
In May 2017 we made a fork of Sphinxsearch 2.3.2, which we called Manticore Search. Below you will find a brief report on Manticore Search as a fork of Sphinx and our achievements since then.
Large language models are a specific type of machine learning-based algorithm that understand and can generate language
Hello! Today I’d like to explain how to solve one of the most troublesome tasks in NLP — question answering.
OpenAI’s transformer-based language model GPT-2 definitely lives up to the hype. Following the natural evolution of Artificial Intelligence (AI), this generative language model drew a lot of attention by engaging in interviews and appearing in the online text adventure game AI Dungeon.
Speed up state-of-the-art ViT models in Hugging Face 🤗 up to 2300% (25x times faster ) with Databricks, Nvidia, and Spark NLP 🚀
Visit the /Learn Repo to find the most read stories about any technology.