The 4 Success Factors of any AI Project

Markus Schmitt Markus Schmitt
February 15, 2019 AI & Machine Learning

Ready to learn Artificial Intelligence? Browse courses like  Uncertain Knowledge and Reasoning in Artificial Intelligence developed by industry thought leaders and Experfy in Harvard Innovation Lab.

How to make sure your project stays on track

image

Planning

If you are a product manager and want to build anything with machine learning, here’s a list of the 4 most important things to keep in mind:

1. Prioritise engineering over data science

experfy-blog

A machine learning project is first and foremost a software project. Many data scientists have little experience building well architected, reliable, easy to deploy software. When you build a production system, this will become a problem.

As a rule of thumb, engineers can pick up data science skills faster than data scientists can pick up engineering experience. If in doubt, work with the python engineer with 5+ years of experience and a passion for AI, rather than the PhD in data science having their first go at building business applications.

2. Go lean

It’s important to reduce risks early. Structure your project with concrete milestones:

  1. Finished Prototype: Find out whether your idea is promising 1 day—2 weeks
  2. Offline tested system: Tune the model and rigorously test it on existing data 2–4 weeks
  3. Online tested system: Finalise the model and test it live 2–4 weeks
  4. Going live: Automate data updates, model training, and code deployment 2–4 weeks
  5. Continuous improvement: (optional) 12 months

Total timeline: 1–3 months

An experienced team should be able to follow these timelines for almost any project. Focus the team on setting up a live system in 1–3 months. After it’s live, then decide whether further improvements are worth it.

These temptations can prolong your project unnecessarily:

  • Waiting for the perfect data
  • Using the wrong tools (too complex or too slow)
  • Overengineering for scalability
  • Endlessly playing with the algorithms (see next point)

3. The algorithm doesn’t matter

experfy-blog

Machine learning systems have lots of fascinating knobs you can play with. Don’t.

These improvements are worth spending time on (in order of importance):

  1. Get more (relevant) input data;
  2. Preprocess the data in a better way;
  3. Choose the right algorithm and tune it correctly.

The algorithm is the least important factor. Simply choose an algorithm that works. Endlessly upgrading the algorithm is tempting, but it will probably not give you the results you expect.

4. Communicate, communicate, communicate

experfy-blog

Share as much of the business context as possible:

Once the engineering team starts building, they have to make a lot of choices. The better they know your priorities, the more they can make the right decisions. At the very least, you should tell them about:

  • Strategic priorities

    Is this fixing a critical issue? Will it need to work for millions of requests per day? Or is it research for a future product?

  • Problems with the current process

    Does the current process take too long? Is it too inaccurate? Or is there a lot of data that simply can’t be taken into account without machine learning?

  • Inputs and outputs

    Inputs: What data would you (as a human) use to make the right decisions? Outputs: Who will consume the output? How frequently? Does it need to be real time?

  • Performance metrics

    What are the most important metrics: Click through rate? Sales? ROI? False positive rate?

  • Expected accuracy

    If you want to optimise conversion rates, then it might not be worth another 2 weeks of tuning to get 2% more accuracy. If you build medical diagnostic systems, then false negatives of even 1% can be unacceptable.

TL;DR

  • Prioritise engineering over data science.
  • Reduce risks by going lean.
  • Don’t get distracted by the algorithm.
  • Share all the business requirements with your developers.
  • Experfy Insights

    Top articles, research, podcasts, webinars and more delivered to you monthly.

  • Markus Schmitt

    Tags
    Artificial Intelligence
    © 2021, Experfy Inc. All rights reserved.
    Leave a Comment
    Next Post
    Third Wave Data Visualization

    Third Wave Data Visualization

    Leave a Reply Cancel reply

    Your email address will not be published. Required fields are marked *

    More in AI & Machine Learning
    AI & Machine Learning,Future of Work
    AI’s Role in the Future of Work

    Artificial intelligence is shaping the future of work around the world in virtually every field. The role AI will play in employment in the years ahead is dynamic and collaborative. Rather than eliminating jobs altogether, AI will augment the capabilities and resources of employees and businesses, allowing them to do more with less. In more

    5 MINUTES READ Continue Reading »
    AI & Machine Learning
    How Can AI Help Improve Legal Services Delivery?

    Everybody is discussing Artificial Intelligence (AI) and machine learning, and some legal professionals are already leveraging these technological capabilities.  AI is not the future expectation; it is the present reality.  Aside from law, AI is widely used in various fields such as transportation and manufacturing, education, employment, defense, health care, business intelligence, robotics, and so

    5 MINUTES READ Continue Reading »
    AI & Machine Learning
    5 AI Applications Changing the Energy Industry

    The energy industry faces some significant challenges, but AI applications could help. Increasing demand, population expansion, and climate change necessitate creative solutions that could fundamentally alter how businesses generate and utilize electricity. Industry researchers looking for ways to solve these problems have turned to data and new data-processing technology. Artificial intelligence, in particular — and

    3 MINUTES READ Continue Reading »

    About Us

    Incubated in Harvard Innovation Lab, Experfy specializes in pipelining and deploying the world's best AI and engineering talent at breakneck speed, with exceptional focus on quality and compliance. Enterprises and governments also leverage our award-winning SaaS platform to build their own customized future of work solutions such as talent clouds.

    Join Us At

    Contact Us

    1700 West Park Drive, Suite 190
    Westborough, MA 01581

    Email: [email protected]

    Toll Free: (844) EXPERFY or
    (844) 397-3739

    © 2025, Experfy Inc. All rights reserved.