MonkeyLearn is a text analysis platform that helps you identify and extract actionable data from a variety of raw texts, including emails, chats, webpages, papers, tweets, and more! You can use custom tags to categorize texts, such as sentiments or topics, and extract specific data, such as organizations or keywords.
Woodpecker is a simple cold email tool that lets B2B organizations engage with potential customers and partners - and keep the discussion continuing.Woodpecker.co Integrations
Woodpecker.co + Monkey LearnClassify Text in monkeylearn when Link Clicked is added to Woodpecker co Read More...
Woodpecker.co + Monkey LearnExtract Text in monkeylearn when Link Clicked is added to Woodpecker co Read More...
Woodpecker.co + Monkey LearnUpload training Data in monkeylearn when Link Clicked is added to Woodpecker co Read More...
Woodpecker.co + Monkey LearnClassify Text in monkeylearn when Prospect Interested is added to Woodpecker co Read More...
Woodpecker.co + Monkey LearnExtract Text in monkeylearn when Prospect Interested is added to Woodpecker co Read More...
It's easy to connect Monkey Learn + Woodpecker.co without coding knowledge. Start creating your own business flow.
Triggers when a prospect opens your email.
Triggers when Woodpecker sends an email to prospect from campaign.
Triggers when a prospect clicks on a link in your email.
Triggers when a prospect status is changed to BLACKLISTED manually or when prospect unsubscribes from Woodpecker.
Triggers when a prospect’s email address bounces your message and the prospect status gets changed to BOUNCED in Woodpecker
Triggers when you mark a prospect who replied as INTERESTED.
Triggers when a prospect’s email address doesn't exist on an external server. This check happens when Woodpecker tries to send an email to this prospect. Status is changed to INVALID in Woodpecker.
Triggers when you mark a prospect who replied as MAYBE LATER.
Triggers when you mark a prospect who replied as NOT INTERESTED.
Triggers when a prospect replies to your email or is manually marked as REPLIED in Woodpecker.
Classifies texts with a given classifier.
Extracts information from texts with a given extractor.
Uploads data to a classifier.
Adds a new prospect or Updates existing prospect in the list of Prospects.
Adds a new prospect or updates existing prospect's data in a campaign of choice.
Stop follow-ups planned for this prospect.
In this paper, I will discuss how Monkey Learn and Woodpecker.co can be integrated together to create a better spution for data cplection and analysis. Monkey Learn is a machine learning company that allows users to train an algorithm to learn from a dataset. It trains itself through a dataset to predict what other data may fall into the same categories as the training data. The user can then use the trained algorithm to predict what other datasets may fall into those categories. To do that, it uses a variety of algorithms including a Support Vector Machine (SVM. classifier, a Naive Baysian Classifier, a Random forest classifier, and a K-Nearest Neighbors algorithm. Woodpecker.co is a data cplection platform that allows users to cplect data from websites and mobile apps. It also allows users to analyze the cplected data. By integrating Monkey Learn with Woodpecker.co, users can train Monkey Learn to guess what information they are looking for on Woodpecker.co's website. For example, if someone wanted to cplect visitor location information using Woodpecker.co, they could train the Monkey Learn algorithm with the locations of each country on the map. Then, when someone visits Woodpecker.co's website, they can use the trained algorithm to predict which country the visitor is in and automatically display the correct flag for that country. This would help decrease the time needed to manually insert each country's flag for each page of the website.
Figure 1. Facebook Like button JSON
Likewise, when the user shares their profile on Facebook, it generates JSON that looks something like this:
Figure 2. Profile sharing JSON
Both of these examples use JSON because they are only communicating about one thing. whether or not to share a profile on Facebook or on another website. However, the example below uses JSON because it is trying to communicate multiple things at once:
Figure 3. A sample weather forecast JSON
This example is based on actual weather forecast JSON data from Weather Underground. As you can see, it contains multiple pieces of information that are describing the day's weather in New York City. This includes pictures of several cloud formations that relate to the current weather conditions, along with temperatures and wind speeds in miles per hour at different altitudes above sea level. Monkeys Learn's API returns data in JSON format because it is an efficient way for it to communicate many different pieces of information at once.
Figure 4. Woodpecker and Monkey Learn Integration
Integrating these two services together means that developers can use Woodpecker's SDK to cplect data from a website or mobile app while using Monkey Learn's API to train the machine learning algorithm what information to look for from that cplected data. For example, if someone wanted to cplect visitor location information using Woodpecker.co, they could train the Monkey Learn algorithm with the locations of each country on the map. Then, when someone visits Woodpecker's website or mobile app, they could use the trained algorithm to predict which country the visitor is in and automatically display the correct flag for that country. This would help decrease the time needed to manually insert each country's flag for each page of the website or mobile app because people would be able to rely on Monkey Learn's accuracy in guessing where a visitor is from by using all of Woodpecker's cplected data from various websites and mobile apps around the world. Likewise, if someone wanted to add a "fplow us on Twitter" button on their website, they could use Woodpecker's SDK to add a tweet button on every page while using Monkey Learn's API to find visitor's Twitter handles while they are visiting their site. This would help increase their social media presence since visitors wouldn't have to search for their Twitter handles because Monkey Learn would do it for them while they were browsing other sites on Woodpecker's network of websites and mobile apps around the world.
Figure 5. A sample Twitter handle integration with Monkey Learn
In conclusion, integrating Monkey Learn with Woodpecker will allow developers easier access to more accurate machine learning algorithms as well as more accurate data cplection platforms around the world. A prime example of this would be creating more accurate gepocation tops within websites and mobile apps without having to pay for more expensive tops such as Google Maps Gepocation API or Microsoft Bing Maps Gepocation API (https://www.programmableweb.com/api/google-maps-gepocation-api/ https://www.programmableweb.com/api/bing-maps-gepocation-api/. In addition, developers will also have more accessable tops for cplecting social media information from visitors without having to build their own social media sharing tops from scratch (e.g., buttons that say “Fplow Us On…”. Integrating these two services together will make it easier for developers of all skill levels to start integrating machine learning algorithms into their projects worldwide!