Compare the Top Natural Language Processing Software in the USA as of July 2025 - Page 5

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    Lymba

    Lymba

    Lymba

    Insurance is driven to get the right rate and to manage risk. In this competitive environment, alleviating areas of manual intervention are critical to separate ourselves from peers in the industry. Large staffs are required to search through, read, organize, analyze and distribute information for underwriting and support purposes. Much of the data is text-centric and unstructured needing manual review. Scaling generally entails hiring more people or outsourcing. Complaints must be filtered and registered according to topic and level of severity. Automotive companies gather these complaints in multiple ways, including emails, comments, forms, etc. Lymba’s Underwriting and Support NLP solution streamlines the text-centric bottlenecks by transforming the data into actionable knowledge; this saves time and resources by populating an initial review.
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    SoundHound

    SoundHound

    SoundHound AI

    We believe every brand should have a voice and every person should be able to interact naturally with the products around them, by simply talking. At SoundHound Inc., we’re working together with our strategic partners to build a more accessible and connected world. We build custom voice assistants for companies wanting to keep their brand, users, and data. Built on the foundation of proprietary Speech-to-Meaning® and Deep Meaning Understanding® technologies, the Houndify platform provides conversational intelligence unmatched by others in the industry. Houndify everything! Voice-enable the world with conversational intelligence. Create a voice AI platform that exceeds human capabilities and brings value and delight via an ecosystem of billions of products enhanced by innovation and monetization opportunities. Headquartered in the heart of Silicon Valley, we are a global company with 9 offices in key markets and teams in 16 countries.
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    Iris.ai

    Iris.ai

    Iris.ai

    Iris.ai is a world-leading and award-winning AI engine for scientific text understanding. It is a comprehensive platform for all research-related knowledge processing needs. Our Researcher Workspace solution provides smart search and a wide range of smart filters, reading list analysis, auto-generated summaries, autonomous extraction, and systematising of data. Iris.ai allows humans to focus on value creation by saving 75% of a researcher’s time, doing specialised, interdisciplinary field analysis to an above human level of accuracy. Its algorithms for text similarity, tabular data extraction, domain-specific entity representation learning, and entity disambiguation and linking measure up to the best in the world. Its machine builds a comprehensive knowledge graph containing all entities and their linkages to allow humans to learn from it, use it, and give feedback to the system. Applying these features to scientific and technical text is a complicated challenge few others can achieve.
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    SentioAI

    SentioAI

    RINA Systems

    SentioAI is a technology solution that uses natural language processing, machine learning and predictive analytics to identify the most relevant documents out of a given population of documents with an unprecedented speed and accuracy. SentioAI solves a classification problem for Big Data in a unique proprietary way. As a result the technology works when other technologies fail, it delivers more accurate/complete results faster and saves time and money vs. other technologies. SentioAI delivers a ranked population of documents from most likely to least likely to be relevant. Using the software users review and tag a small portion of the data set. This data set is then used to train SentioAI prediction engine to order documents according to their relevancy. With each new document the system becomes more accurate. SentioAI determines when the training of the predictive engine is complete and then runs its models on the total data set to generate results.
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    Rinalogy Classification API
    Rinalogy Classification API is a scalable machine learning service that can easily integrate with your application and run in your own environment. Unlike cloud machine learning APIs that run in an environment out of your control and require you to transfer all of your data, Rinalogy Classification API can be deployed in your IT infrastructure, close to your data and behind your firewall. Rinalogy Classification API performs Exhaustive Sequential Classification by applying models to all documents in the collection. Models are saved and can be improved with more training data or used to predict new documents later. Its scalable cluster deployment allows you to adjust the number of workers depending on your workload. Rinalogy API can be used to add text classification, search, and recommendation capabilities to a client application.
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    Wluper

    Wluper

    Wluper

    Wluper is an advanced voice-based conversational AI platform that allows workforces to leverage advanced natural language capabilities to create meaningful experiences. With a layer of unique language understanding skills, you can create and calibrate the workforce experience within your industry or sector, strengthen your position and empower your staff with an innovative solution that scales.
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    Amazon Comprehend Medical
    Amazon Comprehend Medical is a HIPAA-eligible natural language processing (NLP) service that uses machine learning to extract health data from medical text–no machine learning experience is required. Much of health data today is in free-form medical text like doctors’ notes, clinical trial reports, and patient health records. Manually extracting the data is a time consuming process, while automated rule-based attempts to extract the data don’t capture the full story as they fail to take context into account. As a result, the data remains unusable in large-scale analytics needed to advance the healthcare and life sciences industry and improve patient outcomes and create efficiencies.
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    Saifr

    Saifr

    Saifr

    A human-machine partnership enables computers to do monotonous tasks, freeing up humans to focus on the creative, interesting details. Saifr began with access to millions of documents representing the work of regulatory and compliance experts, and thousands of content creators. These data informed Saifr’s Natural Language Understanding (NLU) models, and these data are what make Saifr uniquely able to help mitigate regulatory and reputational risk. Traditional content workflows typically have many touchpoints and email hand-offs which are inefficient and pose security risks. Saifr's solutions foster collaboration between professionals, both inside and outside the organization, as well as with our NLU engine resulting in compliant materials that are created, reviewed, approved, and filed more efficiently. Our solutions help companies create compliant public communications faster.
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    EpiAnalytics

    EpiAnalytics

    J.D. Power

    Industry analysts report that unstructured data is the single largest source of unprocessed and underutilized customer data and is growing rapidly in today's customer-centric world. In the era of Big Data where corporate data doubles every three months, harnessing this data is critical to competitive growth and survival. EpiAnalytics Artificial Intelligence (AI) solutions support your business needs so you can derive more value from your existing data wherever it resides. Our solutions are designed to increase sales, improve data quality, ensure compliance, and increase operational efficiencies. Our legacy VINoptions product, along with its AI and VIN data engineering capabilities, have been combined with our ChromeData 30-year vehicle data catalog to create a next-gen VIN decode. ChromeData VIN Descriptions are the industry standard used to accurately identify and describe a vehicle based on its VIN.
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    Relative Insight

    Relative Insight

    Relative Insight

    With a background in protecting children online, our comparative text analysis platform extracts business value from your text data. Relative Insight’s technology helps marketing insights professionals and brand specialists like you extract more value out of the text data you’ve already got. By utilizing a comparative approach, our platform helps you to generate rich audience insights quickly and at scale. This adds sophistication and science to your qualitative analysis. Equipped with unique marketing insights, brands can develop sharper communications, better brand positioning, and more resonant campaigns. Our platform will help you decipher and embrace your unstructured data and reduce the time it takes to analyze. This same approach can be used to analyze other primary research transcripts including videos, interviews, and focus groups, you’re sitting on a data goldmine! Relative Insight enables you to compare your brand messaging against competitors.
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    Canvs

    Canvs

    Canvs

    Canvs AI is an insights platform that transforms open-ended text from surveys, social media, transcripts, product reviews, and more into conversational intelligence about how people feel and why. Canvs is used by some of the world’s most admired brands, research agencies, and media and entertainment companies to accelerate time-to-insights, deepen understanding of audiences, and reduce the cost of analysis. Automate the analysis of open-ended text to quickly unlock consumer insights with deep, nuanced emotional context and high analytical confidence. Quickly explore, filter, and compare findings and generate stunning data visualizations with Canvs’ intuitive, easy-to-use insights portal. Streamline analysis of open-ends in your brand and concept tests and automate the coding of unaided awareness, recall and attribute questions. Quickly identify and categorize the sentiment and emotions associated with responses and respondents.
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    Askdata

    Askdata

    Askdata

    Query, explore, and share data at ease. Askdata is the first platform that makes data interaction frictionless. Connect all your data by clicking the "+" icon in the top right corner. Collect the results of your research and analysis in easy-to-use data cards. Refine your data cards with charts, images, and personalized content and share them on the web, chat and apps. In order to create the data experience, we leverage all your existing data and analytics platforms to create a personalized experience through natural language and proactive insights. We give users the ability to answer any data-related questions with a simple search. Users can ask questions about their connected data instantly using Askdata's natural language querying technology, no training is needed. Our proprietary Human2SQL algorithm improves itself with every single search. Askdata uses cutting-edge AI and knowledge graph techniques to help users surface relevant content that is organized in data cards.
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    Speech2Structure
    When treating a patient, doctors spend on average two-thirds of their time documenting the treatment and far less time on examinations or patient interviews. To allow doctors to spend more time with their patients, Averbis is working on Speech2Structure – a software solution where the documentation is recorded live by voice and structured on-the-fly. Speech2Structure can correctly recognize and resolve many linguistic variations such as negations, suspected diagnoses, diagnoses that have taken place, etc. when recognizing diagnoses. Pathological laboratory values or microbiology results are also converted into corresponding diagnoses. The recorded medications can also provide clues to diagnoses.
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    Dyania Health

    Dyania Health

    Dyania Health

    Our regulatory compliant platform empowers clinical research by algorithmically analyzing unstructured EMR data for life endangering conditions. We build technologies that expand access to the most Innovative Healthcare through Clinical Trials. We are a team focused on saving lives by providing access to healthcare therapeutic innovations that are still under investigation. We believe that every patient should be empowered and educated on their opportunities to participate in clinical trials that may offer therapies significantly saving or improving their lives. We are an advanced healthcare AI research company that have developed a computational-based platform to identify patients who match a complex set of criteria to participate in clinical trials.
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    Sparrow

    Sparrow

    DeepMind

    Sparrow is a research model and proof of concept, designed with the goal of training dialogue agents to be more helpful, correct, and harmless. By learning these qualities in a general dialogue setting, Sparrow advances our understanding of how we can train agents to be safer and more useful – and ultimately, to help build safer and more useful artificial general intelligence (AGI). Sparrow is not yet available for public use. Training a conversational AI is an especially challenging problem because it’s difficult to pinpoint what makes a dialogue successful. To address this problem, we turn to a form of reinforcement learning (RL) based on people's feedback, using the study participants’ preference feedback to train a model of how useful an answer is. To get this data, we show our participants multiple model answers to the same question and ask them which answer they like the most.
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    ERNIE Bot
    ERNIE Bot is an AI-powered conversational assistant developed by Baidu, designed to facilitate seamless and natural interactions with users. Built on the ERNIE (Enhanced Representation through Knowledge Integration) model, ERNIE Bot excels at understanding complex queries and generating human-like responses across various domains. Its capabilities include processing text, generating images, and engaging in multimodal communication, making it suitable for a wide range of applications such as customer support, virtual assistants, and enterprise automation. With its advanced contextual understanding, ERNIE Bot offers an intuitive and efficient solution for businesses seeking to enhance their digital interactions and automate workflows.
    Starting Price: Free
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    Lexalytics

    Lexalytics

    Lexalytics

    Integrate our text analytics APIs to add world-leading NLP into your product, platform, or application. The most feature-complete NLP feature stack on the market, 19 years in development and constantly being improved with new libraries, configurations, and models. Determine whether a piece of writing is positive, negative, or neutral. Sort and organize documents into customizable groups. Determine the expressed intent of customers and reviewers. Find people, places, dates, companies, products, jobs, titles, and more. Deploy our text analytics and NLP systems across any combination of on-premise, private cloud, hybrid cloud, and public cloud infrastructure. Our core text analytics and natural language processing software libraries are at your command. Suitable for data scientists and architects who want complete access to the underlying technology or who need on-premise deployment for security or privacy reasons.
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    Salience

    Salience

    Lexalytics

    Text analytics and NLP software libraries for on-premise deployment or integration. Integrate Salience into your enterprise business intelligence architecture or white label it inside your own data analytics product. Salience can process 200 tweets per second while scaling from single process cores to entire data centers with a small memory footprint. Use Java, Python, .NET/C# bindings for higher level ease or the native C/C++ interface for maximum speed. Enjoy full access to the underlying technology. Tune every text analytics function and NLP feature, from tokenization and part of speech tagging to sentiment scoring, categorization, theme analysis, and more. Built on a pipeline model of NLP rules and machine learning models. When issues arise, see exactly where they are in the pipeline. Adjust specific features without disrupting the larger system. Salience runs entirely on your servers while staying flexible enough to offload insensitive data to cloud servers.
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    Seek

    Seek

    Seek AI

    Business end-users can ask to Seek the exact same questions that they currently ask the data team, right in Slack, Teams, and email. No "finessing" of how they write their question, and no learning a new platform. All questions are stored in a knowledge base. Business end-users never need to ask repeated questions, and the more Seek is used, the more intelligent it becomes at working with your data. Complete with a code editor, knowledge base, data warehouse integrations, and more. Your data security is our obsession. We're SOC2 Type I compliant and also offer flexible user and group permissions.
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    MindMeld

    MindMeld

    Cisco DevNet

    The MindMeld Conversational AI Platform is a Python-based machine learning framework that encompasses all of the algorithms and utilities required for building production-quality conversational applications. Evolved over several years of building and deploying dozens of advanced interfaces, MindMeld is optimized for building conversational assistants which demonstrate deep understanding of a particular use case or domain while providing highly useful and versatile conversational experiences. Powerful command-line utilities and Python APIs with the flexibility to accommodate nearly any product requirements. Access to state-of-the-art machine learning algorithms and streamlined management of large sets of custom training data. Enhanced entity recognition and resolution to deal with automatic speech recognition (ASR) errors.
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    RAAPID

    RAAPID

    RAAPID INC

    Over 15+ years, we have been the pioneers in building successful clinical NLP platforms & their applications that delivers high accuracy and precision rates. Our core capability is to interpret unstructured notes, accurately and at scale. Tried & tested on billions of diverse and real clinical notes & documents. Explainable AI with reasoning, context & evidence for output. Medical knowledge infused NLP with 4M+ entities & 50M+ relationships. Built using innovative Machine Learning (ML) & Deep Learning (DL) models. Leverage a foundation of rich ontologies & clinician-specific terminologies. We have the ability to understand, interpret and extract context & meaning from the messy, inconsistent, non-standardized data within medical documents. Our Clinical domain experts continuously infuse knowledge graphs into our NLP by mapping all the clinical entities and the relationship between them. So far, we have more than 4 million entities and 50 million relationships.
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    Openlayer

    Openlayer

    Openlayer

    Onboard your data and models to Openlayer and collaborate with the whole team to align expectations surrounding quality and performance. Breeze through the whys behind failed goals to solve them efficiently. The information to diagnose the root cause of issues is at your fingertips. Generate more data that looks like the subpopulation and retrain the model. Test new commits against your goals to ensure systematic progress without regressions. Compare versions side-by-side to make informed decisions and ship with confidence. Save engineering time by rapidly figuring out exactly what’s driving model performance. Find the most direct paths to improving your model. Know the exact data needed to boost model performance and focus on cultivating high-quality and representative datasets.
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    Haystack

    Haystack

    deepset

    Apply the latest NLP technology to your own data with the use of Haystack's pipeline architecture. Implement production-ready semantic search, question answering, summarization and document ranking for a wide range of NLP applications. Evaluate components and fine-tune models. Ask questions in natural language and find granular answers in your documents using the latest QA models with the help of Haystack pipelines. Perform semantic search and retrieve ranked documents according to meaning, not just keywords! Make use of and compare the latest pre-trained transformer-based languages models like OpenAI’s GPT-3, BERT, RoBERTa, DPR, and more. Build semantic search and question-answering applications that can scale to millions of documents. Building blocks for the entire product development cycle such as file converters, indexing functions, models, labeling tools, domain adaptation modules, and REST API.
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    Beehive AI

    Beehive AI

    Beehive AI

    Uncover hidden opportunities and Identify practical ways to grow your business. Learn which products or services to add in order to increase the value of your orders. Tailor your ad messaging and targeting to naturally occurring segments and reduce your CPA. Discover the barriers and motivations that drive retention for different segments. Connect by continuously asking simple, contextual open-ended questions through social ads, emails, messaging and throughout the customer journey. Understand responses and automatically classify motivations, needs, and desires through AI. Get dynamic, ongoing, and granular insights to drive tailored actions.
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    Perspective API

    Perspective API

    Perspective

    Toxicity online poses a serious challenge for platforms and publishers. Online abuse and harassment silence important voices in conversation, forcing already marginalized people offline. Publishers, platforms, and individuals can use Perspective to power a variety of different use cases, in comment sections, forums, or any text-based conversations. Developers integrate and customize Perspective for many different audiences. Moderators use Perspective to quickly prioritize and review comments that have been reported. Perspective can give feedback to commenters who post toxic comments. Developers create tools so readers can control which comments they see, like hiding comments. Perspective has been shown to increase engagement by helping platforms and publishers create safe environments for conversation, and by helping individuals make healthier contributions online.
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    Twixor

    Twixor

    Twixor

    Run multiple campaigns across channels like WhatsApp, Facebook Messenger, Google Business Messaging, and more. Reap sales benefits by building the conversational flow, publishing omnichannel, and analyzing each report to hit the target. Engage and deliver meticulous responses to consumers in the form of rich snippets while customizing them to fit any scenario. Enrich customer experience by populating and intuitively visualizing data. Powered your conversations with an AI chatbot that keeps getting smarter every time. Auto-segment inquiries to the right agent, trigger handoffs when needed, and take complete control over your customer support management. Intelligent assistants automatically identify each user’s intent using NLP and respond back with intent-specific solutions. The response uses pattern recognition and metadata extraction from the service providers or databases. Keep track of everything happening across your channels to maintain an optimum customer relationship.
  • 27
    QoreMail

    QoreMail

    Coginov

    A smart communication management automation tool. QoreMail is an innovative intelligent automation solution that allows you to use multiple existing communication channels (or create new ones from scratch) to automate low-added value business processes that require no human intervention, thus allowing your human capital to allocate more time and effort to valuable tasks. QoreMail analyzes structured and unstructured data and transforms it into highly contextualized and meaningful information assets with unmatched accuracy and speed. You will dramatically increase the productivity of your critical activities while reducing your operating costs (ROI in less than a year). QoreMail analyzes incoming communications and automatically detects relevant and critical information for your organization, such as an account number, project number or name, file number, product number, invoice number, orders, dates, names of people, department, etc.
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    Azure AI Content Understanding
    Azure AI Content Understanding helps enterprises transform unstructured multimodal data into insights. Derive meaningful insights from diverse types of input data, ranging from text, audio, images, and video. Achieve precise, high-quality data for downstream applications with sophisticated AI methods such as scheme extraction and grounding. Streamline and unify pipelines of varied data types into a single streamlined workflow, reducing overall costs and accelerating time to value. See how businesses and call center operators generate valuable insights from call recordings to track essential KPIs, enhance product experiences, and respond to customer inquiries more swiftly and accurately. Ingest a range of modalities, such as documents, images, audio, or video, and use a range of AI models available in Azure AI to transform input data into structured output that can be easily processed and analyzed by downstream applications.
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    Shortcut

    Shortcut

    Shortcut

    Transform the way you work with Shortcut. No more typing, just natural conversation. Get instant answers, turn your thoughts into solutions, and draft messages, emails, and docs in seconds, all while staying in your flow. Your AI assistant is always just a keystroke away. Ask questions, organize ideas, or roleplay conversations, all through natural dialogue. No more breaking your flow to find answers or structure thoughts. Transform your natural speech into perfectly crafted text in the style you want. No more getting stuck editing or iterating on drafts, just speak naturally and watch your words become refined content in one go. Try Shortcut for free and transform the way you work. The dictation tool is easy to use, it uses AI to rewrite your sentences so that it makes more sense. You can choose a tone of voice that you want. There are also quick actions for things in case you want them to be friendlier, more direct, or more professional.
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    TextBlob

    TextBlob

    TextBlob

    TextBlob is a Python library for processing textual data, offering a simple API to perform common natural language processing tasks such as part-of-speech tagging, noun phrase extraction, sentiment analysis, and classification. It stands on the giant shoulders of NLTK and Pattern, and plays nicely with both. Key features include tokenization (splitting text into words and sentences), word and phrase frequencies, parsing, n-grams, word inflection (pluralization and singularization) lemmatization, spelling correction, and WordNet integration. TextBlob is compatible with Python versions 2.7 and above, and 3.5 and above. It is actively developed on GitHub and is licensed under the MIT License. Comprehensive documentation, including a quick start guide and tutorials, is available to assist users in implementing various NLP tasks.