Text analytics tools, or, text analysis tools, often known as text mining solutions, have been around for many years. But recent advances in artificial intelligence, machine learning and data analytics have led to a dramatic improvement in the ability of computer systems to extract meaning from structured and unstructured data in documents. And this has led to an increase in demand for text analysis software.
Today, most text analysis tools make use of AI-powered natural language processing (NLP) to interpret human language. Many also include ML capabilities, using models to improve their abilities over time. Common features of these platforms include the following:
Some text analysis tools also have additional features beyond these core capabilities. To find the right tool for your enterprise’s needs, take a look at the list of leading text mining solutions below.
The following tips can help you find the best text analysis software for your organization:
With those tips in mind, here are ten text analysis software solutions you might want to consider:
Jump to:
Amazon Comprehend is the company’s flagship NLP service. Its key features include keyphrase extraction, sentiment analysis, syntax analysis, language detection, topic modeling, and more. It also offers a special service for the analysis of medical text that includes medical ontology linking. Both the regular Comprehend service and the Medical service integrate with other AWS services. Well-known customers that use the service include LexisNexis, FINRA, PubNub, Deloitte and others.
AWS prices Comprehend in 100 character units, with a separate charge for each service (such as keyphrase extraction, sentiment analysis, etc.). The first 50,000 units (5 million characters) per month are free for each service. After that, most services start at $0.0001 per unit for the first 10 million units. Complete pricing details are available on the website.
Pros
Cons
Built on Google’s AutoML machine learning technology, Google Cloud Natural Language comes in three different flavors: AutoML Natural Language for those who want to build their own models and training data; the Natural Language API for those who want to add natural language capabilities to their applications; and the Healthcare Natural Language API for real-time analysis of medical text. Key capabilities include sentiment analysis, multimedia support, multi-language support, entity extraction, receipt and invoice understanding, relationship graphs and more.
Google lists pricing for its Natural Language service on its website, but it is complicated. Pricing for the API is broken into 1,000-character units. The first 5,000 units are free, and after that, between 5,000 and 1 million units range in price from $0.50 per unit for syntax analysis to $2.00 per unit for entity sentiment analysis. AutoML charges different prices for data upload, training, prediction and deployment.
Pros
Cons
One of the early forerunners in artificial intelligence, IBM’s Watson technology is available through IBM Cloud. IBM has less than 2 percent of the public cloud market, but the company reported that its cloud revenue rose more than 60 percent in its most recent quarter. IBM Cloud offers more than 170 services, and it is particularly focused on hybrid cloud deployments. Its customers include The Weather Company, Deutsche Bank, the US Open, Kone Corp. and KraftHeinz.
Watson Natural Language Understanding offers powerful insight extraction with built-in models for high accuracy, and it can be deployed in the IBM Cloud or behind your own firewall. Key features include support for 13 languages, sentiment analysis, emotion analysis, keywords, categories, concepts, entity extraction and more. It is useful for analyzing customer feedback, optimizing advertising and streamlining audience segmentation.
IBM’s Natural Language Understanding is priced in units of 10,000 characters. The first 30,000 items per month are free, then the price changes to $0.003 per unit for the next 250,000 items and decreases from there. To help you determine your costs, IBM offers a pricing calculator.
Pros
Cons
Founded in 2016 by two entrepreneurs who met in the eighth grade, Kapiche is a pure-play startup focused on analyzing customer feedback. Headquartered in Brisbane, Australia, it has raised an estimated $2 million in funding. Its customers include American Express, Schindler, Kmart, Target, HCF, Nissan and others.
Kapiche’s key features include the ability to integrate data from many different sources, customizable dashboards, sentiment analysis, quadrant charts, issue tracking and more. You can get it up and running within hours, and it doesn’t require any coding expertise.
Pricing is available on request.
Pros
Cons
Founded in 2003, Lexalytics is a privately held company headquartered in Boston. Its text analysis platform is its only product, although the platform does come in several different flavors. Its customers include Altair, Hootsuite, Oracle, Microsoft, Biogen and others.
Designed for organizations that analyze very high volumes of text, Lexalytics is available in on-premise, cloud API or Web-Based NLP Platform versions. A very full-featured platform, it has tools suitable for use by data scientists as well as tools for use by analysts and other business users. Its capabilities include sentiment analysis, theme analysis, categorization, intention detection, entity extraction, summarization and more. It supports more than 20 different languages. Pricing is available on request.
Pros
Cons
Although the MeaningCloud name has only been around since 2017, this text analysis vendor actually has a much longer history. It began life as a data mining and language technology company called Daedalus S.A. in 1998. In 2015, Daedalus became Sngular, before becoming MeaningCloud two years later. Today it is headquartered in New York City with a customer list that includes Pfizer, World Bank Group, Telefonica, Carrefour, Le Parisien, ING and others.
MeaningCloud’s technology is available as an Excel add-in for data analysts or as a cloud API to plug into other applications. It boasts powerful sentiment analysis, a customizable interface, easy integration, commitment-free pricing and support for multiple languages. Although most customers choose to use the cloud-based APIs on-premises deployment of the APIs is also available. In addition, integrations are available for Excel, Google Sheets, RapidMiner and Zapier.
The company offers free demos and a free tier for both its products. The free tier supports up to 20,000 requests per month and up to 2 requests per second. After that, MeaningCloud offers Start-Up ($99 per month), Professional ($399 per month), Business ($999 per month) and Enterprise (prices vary) plans. Additional features and languages require additional fees.
Pros
Cons
Microsoft Azure Text Analytics uses NLP to identify key phrases, entities, sentiment, trends and more. It supports numerous languages, and pre-trained medical models are available. In addition to the standard cloud deployment, it is also available for use on-premises or in edge computing environments. Customers include KPMG, Wilson Allen, IHC, LaLiga, TIBCO, Kotak and others.
Pricing for Microsoft Azure Text Analytics varies depending on which region you are using, the type of cloud instance you have, and the number of transactions and text records per month. Complete details are available on the website. Note that Microsoft does offer a free tier for sentiment analysis, key phrase extraction, language detection, and named entity recognition that includes up to 5,000 transactions per month.
Pros
Cons
Used by companies like Clearbit, Segment, Dell and PubNub, MonkeyLearn is a machine learning-based text analysis platform. Founded in 2014, the MonkeyLearn company is headquartered in San Francisco, California. It is privately held and has raised an estimated $3.2 million in funding.
MonkeyLearn’s platform comes in three different flavors: The Studio version is an all-in-one standalone text analysis tool. The API version plugs into your apps, and the Word Cloud version does nothing but generate word clouds. It integrates with many different data sources, extracts keywords, classifies sentiment and topics, tags data and integrates with visualization tools so that you can make sense of the findings.
The Studio version costs $500 per month for the Team tier and $1,000 per month for the Business tier. The API costs $239 per month for the Team tier and $799 per month for the Business tier. The Word Cloud Generator is free.
Pros
Cons
Founded in 2012, Relative Insight is a London-based company focused on text analysis to help improve brand positioning. Its customers include Twitter, Sky, R/GA, McCann London, Y&R, Hall & Partners, Kaiser Permanente and others. It is privately held and has raised an estimated $5 million in funding. The company has won a number of awards related to advertising and branding.
This platform is quite a bit different than the others on the list because it specifically focuses on language comparisons as a way to gain insights into customers. The technology originated as a way to catch criminals pretending to be children online. It is available as software as a service (users create their own projects) or as insights as a service (Relative Insights staff help create and run the project). Pricing is available on request.
Pros
Cons
One of the world’s leading analytics vendors, SAS boasts more than 83,000 customers, including 92 of the top 100 companies on the 2018 Fortune Global 1000. Headquartered in Cary, NC, it has nearly 14,000 employees worldwide.
SAS Visual Text Analytics is an end-to-end solution that includes data preparation, visualization, parsing, trend analysis, information extraction, hybrid modeling and sentiment analysis. It offers flexible deployment options and includes native support for 33 languages. And it’s an open platform with REST APIs that make it easy to integrate with other applications. Pricing is available on request.
Pros
Cons
Text Analysis Software | Pros | Cons |
Amazon Comprehend |
· Integration with other AWS services · Easy deployment · Specialized medical models |
· Need for custom models · Difficult topic modeling · Complicated pricing |
Google Cloud Natural Language |
· Integration with other Google Cloud services · Google’s ML expertise · Excellent API |
· Steep learning curve · High pricing · Takes a while to deploy |
IBM Watson Natural Language Understanding |
· Multiple deployment options · Integration with other IBM products and services · IBM’s AI expertise |
· Poor support for some languages · Complicated pricing · Difficult to integrate with other cloud vendors |
Kapiche |
· Integrates with many data sources · Intuitive interface · Immediate notification of customer service issues |
· Analyzes customer feedback only · Opaque pricing · No data cleansing capabilities |
Lexalytics |
· Wide-ranging capabilities · Pre-built industry packs · Multiple deployment options |
· Overwhelming features · Opaque pricing · Limited customer reviews |
MeaningCloud |
· No-commitment trials · Integration with other analysis tools · Multiple languges |
· No standalone tool · Add-ons can add a lot to the price · Limited customer reviews |
Microsoft Azure Text Analytics |
· Comprehensive privacy and security · Integration with other Azure services · Multiple deployment options |
· Complicated pricing · Lackluster sentiment analysis · Poor integration with computer vision services |
MonkeyLearn |
· All-in-one solution · Designed for customer support and product teams · Easy deployment |
· Limited integrations with external data sources · Poor initial performance · High pricing |
Relative Insight |
· Unique capabilities · Excellent customer service · Interesting case studies |
· Useful only for branding · Projects take too long to complete · Opaque pricing |
SAS Visual Text Analytics |
· Full-featured platform · SAS’s analytics expertise · User-friendly interface |
· Takes time to learn · Opaque pricing · Difficult integration |
Datamation is the leading industry resource for B2B data professionals and technology buyers. Datamation's focus is on providing insight into the latest trends and innovation in AI, data security, big data, and more, along with in-depth product recommendations and comparisons. More than 1.7M users gain insight and guidance from Datamation every year.
Advertise with TechnologyAdvice on Datamation and our other data and technology-focused platforms.
Advertise with Us
Property of TechnologyAdvice.
© 2025 TechnologyAdvice. All Rights Reserved
Advertiser Disclosure: Some of the products that appear on this
site are from companies from which TechnologyAdvice receives
compensation. This compensation may impact how and where products
appear on this site including, for example, the order in which
they appear. TechnologyAdvice does not include all companies
or all types of products available in the marketplace.