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Best Smartphone Apps That Pay in [2019]

Best Smartphone Apps That Pay, access features of popular apps, a new generation of apps called money making apps pay you for using them.

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best smartphone apps that pay

Apps make the use of smartphones enjoyable. Think of social media apps like Facebook, Twitter, Instagram, and YouTube. Without forgetting entertaining game apps like Pokemon Go, Temple Run and Candy Crush.

The word of smartphone apps is seeing a revolution. Instead of paying to access features of popular apps, a new generation of apps called money making apps pay you for using them.

best smartphone apps

An infographic designed by SwiftTechBuy analyses these apps and things you need to do to earn points using them. The points gathered using these apps are converted based on the conversion rate of the platform. For instance, a platform could offer 600 points for $1. That means when you will need 6,000 points to make a $10 equivalent.

Some of the apps you will find on the SwiftTechBuy infographic include;

  • Swagbucks
  • Shopkick
  • Field Agent
  • Citizen Me
  • Curious Cat

Activities you may engage in to earn points using these apps include;

  • Taking Survey
  • Trying New Apps
  • Sharing Opinions
  • Shopping with partnering retailers
  • Viewing News and Articles
  • Reviewing Product and Services
  • Reading Reviews

There are different ways you can be paid when you use any of these money making apps;

  • Gift cards
  • PayPal
  • Skrill
  • Coupons

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Remember, most of these money making apps do not offer the same payment method. It is important to read through their terms and conditions before joining. This will save you from getting stuck when you want to withdraw. You might not be a fan of gift card and the money making app you choose only pays through gift cards.

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How do collect and train data for speech projects?

Data collection is the process of gathering, analyzing, and, measuring accurate data from diverse systems to use for business process decision-making, speech projects, and research.

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How do collect and train data for speech projects

With technology evolution, we are moving towards machine learning systems that can understand what we say. In our daily lives, we all have encountered many virtual assistants like Alexa, Siri, and others. These virtual assistants often help us in tuning the lights of our homes, finding information on the internet, and even starting a video conference. But do you know how it does that?

To produce results, these virtual assistants use natural language processing to understand the user’s intent. Natural Language Processing technology enables virtual assistants to understand user intent and produce outcomes. Basically, these virtual assistants are applications of automatic speech recognition and are also known as speech recognition software. This software uses machine learning and NLP to analyze and convert human speech data into text.

But, attaining maximum efficiency of these software requires the collection of substantial speech and audio datasets. The purpose of collecting these audio datasets is to have enough sample recordings that can be fed into automatic speech recognition (ASR) software.

Furthermore, these datasets can be used against the speakers using unspecified speech recognition models. And to make ASR software work as intended, speech data collection and audio datasets must be conducted for all target demographics, locations, languages, dialects, and accents.

Artificial Intelligence can be as intelligent as the data given to it. Hence, collecting data for feeding the machine learning model is a must to maximize the effect of ASR. Let’s discuss steps in speech data collection for effective automatic speech recognition training.

1. Create a Demographic Matrix

For creating a demographic matrix, the enterprise must consider the following information like language, locations, ages, genders, and accents. Along with these, it is a must to note down a variety of information related to environments like busy streets, waiting rooms, offices, and homes. Enterprises can also consider the devices people are using like mobile phones, headsets, and a desktop.

2. Collect and transcribe speech data

To train the speech recognition model, gather speech samples from real humans and take the help of a human transcriptionist to take notes of long and short utterances by following your key demographic matrix. In this way, human is a vital and essential part of building proper audio datasets and labeled speech and further development of applications.

6 Reasons to Transcribe Audio to Text

3. Build a separate test data

Once the text subscription is completed, it’s time to pair the transcribed test with the corresponding audio data and segment them to include one statement in each. Later on, take the segmented pairs and extract a random 20% of the data to form a set for testing.

4. Train the language model

To maximize the effectiveness of the speech recognition model, you can train the language model by adding general additional text that was not additionally recorded. For example in canceling a subscription, you recorded one statement that ‘I want to cancel my subscription, but you can also add texts like “Can I cancel my subscription” or “I want to unsubscribe”. To make it more effective and catchy you can also add expressions and relevant jargon.

5. Measure and Iterate

The last and important step is to evaluate the output of automatic speech recognition software to benchmark its performance. In the next step take the trained model and measure how well it predicts the test set. In case of any gaps and errors, engage your machine learning model in the loop to yield the desired output. 

Conclusion

From travel, transportation, media, and entertainment, the use of speech recognition software is evident. We all have been using voice assistants like Alexa and Siri to complete some of our routine tasks. To effectively use this speech recognition software requires proper training in the audio datasets and the use of relevant data for the machine learning model.

Proper execution and the right use of data make sure the speech recognition software going to work efficiently and enterprises can scale them for further upgrades and development. As data and speech recognition go hand in hand, make sure you are using data with the right approach.

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