6 Problems AI is Good at Solving

6 Problems AI is Good At Solving

Over 85% of data science projects fail to go beyond testing and into production. If everyone is starting a Machine Learning / Artificial Intelligence project, where is it going wrong? 

With this post it should help you to focus on the types of problems that AI is good at solving. In order to actually benefit from using AI to increase automation, you will need to have the right data, have enough data, have a methodology that can be defined with data points, and be creative in understanding how to apply or craft solutions for parts of your team's workflow

Examples of Problem Solving with AI

        

1) Classification (decisions)

  • Binary Decisions: Buy or Sell; Yes or No; Start or Stop 
  • Categorization: Approved, Denied or Flagged for Further Review; Labeling Data 
  • Sentiment: Negative, Neutral or Positive and even a polarity score

2) Extraction (automated data entry)

  • Parse a source document, Website, PDF or Form
  • Extract and automatically enter that information neatly into your database 
  • View or access data in your company's internal and client-facing dashboards

3) Summarization

The aim is to extract the most relevant sentences from a larger piece of text. Extractive models select whole sentences to include in a summary; and abstractive models select parts of sentences that get combined with computer generated words and parts of other sentences.

4) Recomendation

Given a set of documents (or articles, pieces of content, patents, customer profiles, etc.) identify similar content within the database you are searching.

5) Estimation

You may not require A.I. for building a better estimation model unless you have enough pieces of data that your opening Excel crashes your computer because your spreadsheet has more than 100,000 rows and many variables. Machine Learning can optimize for hundreds of dimensions when you aren’t sure of the importance of all the variables.

Think of modeling all the factors that affect an individual’s health using a lifetime of population data vs. modeling home prices based on zip code, # of bedrooms and size.

6) Anomaly Detection

    Think Cyber Security. Your IT department has a sense of the normal activity of all of your company’s employees, and needs to be alerted when there are actual risks to your company. Example: hackers are infiltrating your network and stealing your company’s IP. 

While it may be impossible to anticipate in advance what the actual form of attack will look like, an anomaly detection model can be deployed to look for deviation in behavior like a 10,000% spike in log-ins or outbound traffic going to a server located internationally.

Let’s Discuss Your Idea

    Related Posts

    • Untitled design (23)

      Large language models (LLMs) have emerged as a key to building intelligent enterprise applications. However, harnessing the power of these language models requires a robust and efficient LLM application stack. At Skim AI, our LLM app stack enables us

      LLMs / NLP
    • Untitled design (20)

      Enterprises are increasingly turning to Large Language Models (LLMs), and those who aren't are falling behind. LLM APIs, such as OpenAI's GPT and Anthropic's Claude, offer unparalleled opportunities for enterprises to integrate advanced language capabilities into their systems and

      Uncategorized
    • our llm stack

      Open-source large language models (LLMs) have emerged as a powerful tool for enterprises in 2024. They offerunprecedented opportunities for businesses to harness the potential of AI-driven natural language processing, enabling them to enhance their operations, improve customer experiences, and

      LLMs / NLP

    Ready To Supercharge Your Business

    LET’S
    TALK
    en_USEnglish