


Ten key roles to fully realize the business value of artificial intelligence
More and more businesses in every industry are adopting artificial intelligence to transform business processes. But know that the success of an AI program depends not just on data and technology, but also on including the right talent.
Bradley Shimmin, principal analyst for AI platforms, analytics and data management at consulting firm Omdia, said an effective enterprise AI team should be a diverse group that includes more than just data scientists and engineers. There is a range of people who understand the business and try to solve the problems.
Carlos Anchia, co-founder and CEO of AI startup Plainsight, agreed, adding that success in AI largely depends on building a well-rounded team with a variety of advanced skills. , but doing so is extremely challenging. He explains, “Determining what makes an effective AI team may seem easy to do, but when you look at the detailed responsibilities of individuals within a successful AI team, you quickly conclude that building such a team is very difficult. .”
To help you build your ideal AI team, here are 10 key roles that are essential in today’s well-run enterprise AI teams:
Data Scientist
Data scientists are the core of any AI team, responsible for processing and analyzing data, building machine learning (ML) models, and drawing conclusions to improve ML models that are already in production.
TikTok company data scientist Mark Eltsefon said that data scientists are a mixture of product analysts and business analysts, and also have a small amount of machine learning knowledge. Their main goal is to understand the key metrics that have a significant impact on the business, collect data to analyze possible bottlenecks, visualize different user groups and metrics, and come up with various solutions on how to increase these metrics. For example, when developing a new feature for TikTok users, without a data scientist there is no way to understand whether the feature will benefit or harm users.
Machine Learning (ML) Engineer
Data scientists can build ML models, but implementing them requires ML engineers.
Dattaraj Rao, innovation and R&D architect at technology services company Persistent Systems, said, "This type of role is tasked with packaging ML models into containers and deploying them (usually as microservices) into production environments. They tend to Professional back-end programming and server configuration skills are required, as well as expertise in containers and continuous integration and delivery deployment. In addition, ML engineers are also involved in model validation, A/B testing and production monitoring."
In Mature In the ML environment, ML engineers also need experimentation service tools that can help ML engineers find the best performing models in production with minimal experimentation.
Data Engineer
Data engineers are responsible for building and maintaining the systems that make up the organization's data infrastructure. Erik Gfesser, director and chief architect at Deloitte, said data engineers are critical to AI initiatives. They build data pipelines to collect and assemble data for downstream use. In a DevOps environment, they build pipelines to implement the infrastructure to run these data pipelines. .
He added that data engineers are the foundation of both ML and non-ML initiatives. For example, when implementing a data pipeline in one of the public clouds, data engineers need to first write scripts to launch the necessary cloud services that provide the computation needed to process the ingested data.
Matt Mead, chief technology officer of information technology services company SPR, said if you are building a team for the first time, you should understand that data science is an iterative process that requires large amounts of data. Assuming you have enough data, about 80% of the work will be related to data engineering tasks and about 20% will be actual work related to data science. Because of this, only a small percentage of your AI team will be working in data science. Other members of the team will be responsible for identifying the problem being solved, helping to interpret the data, organize the data, integrate the output into another production system, or present the data in a presentation-ready manner.
Data Steward
The Data Steward oversees the management of enterprise data and ensures its quality and accessibility. This important role ensures data consistency across enterprise applications while ensuring the enterprise meets ever-changing data laws.
Data stewards ensure that data scientists get the right data and that everything is repeatable and clearly labeled in the data catalog, said Ken Seier, practice lead for data and artificial intelligence at technology company Insight.
The individual in this role will need a combination of data science and communication skills to collaborate across teams and work with data scientists and engineers to ensure data is accessible to stakeholders and business users.
In addition, data stewards are responsible for enforcing the organization's policies around data use and security, ensuring that only those who should have access to secure data get that access.
Domain expert
A domain expert has in-depth knowledge of a specific industry or subject area. This role is an authority in their field, can judge the quality of available data, and can communicate with the intended business users of the AI project to ensure it has real-world value.
Max Babych, CEO of software development company SpdLoad, said these domain experts are essential because technical experts developing AI systems rarely have expertise in the actual domain in which the system is being built. Domain experts can provide critical insights to enable AI systems to perform at their best.
For example, Babych’s company developed a computer vision system to replace lidar (LIDAR) for identifying moving objects on autopilot. They started the project without domain experts, and although studies proved the system worked, what his company didn't know was that car brands preferred LIDAR over computer vision.
Babych said, "The key advice I want to share in this case is to think about the business model, and then engage domain experts to understand whether this is applicable to your industry, and then discuss in detail the implementation of this feature." Technical issues."
In addition, Ashish Tulsankar, head of artificial intelligence at education technology platform iSchoolConnect, said that domain experts can also become important liaisons between customers and artificial intelligence teams. He can communicate with customers to understand their needs and provide next steps for the AI team, while domain experts can also track whether AI is being implemented in an ethical manner.
Artificial Intelligence Designer
Artificial Intelligence designers work with developers to ensure they understand the needs of human users. This role envisions how users will interact with AI and creates prototypes to demonstrate use cases for new AI capabilities.
AI designers also ensure that trust is established between human users and AI systems, and that the AI can learn and improve from user feedback.
Shervin Khodabendeh, co-leader of the AI practice at consulting firm BCG, said, "One of the difficulties companies encounter when scaling AI initiatives is that users don't understand the solution, don't identify with it, or can't interact with it. Those who start from artificial intelligence The secret of companies that gain value from intelligence is actually the correct implementation of human-computer interaction."
BCG's thinking model follows the "10-20-70" principle, that is, 10% of the value is algorithms , 20% is technology and data platforms, and 70% of the value comes from business integration or linking it to company strategy in business processes. Human-computer interaction is absolutely key and is an important part of 70% of the challenges. Artificial Intelligence Designer will help you achieve this goal.
Product Manager
Product managers identify customer needs and lead the development and marketing of products while ensuring the AI team makes beneficial strategic decisions.
Dorota Owczarek, product manager of artificial intelligence development company Nexocode, said, "In the artificial intelligence team, the product manager is responsible for understanding how to use artificial intelligence to solve customer problems and then turning it into a product strategy."
Owczarek was recently involved in a project to develop an AI-based product for the pharmaceutical industry that would support human review of research papers and documents using natural language processing. The project requires close collaboration with data scientists, machine learning engineers, and data engineers to develop the models and algorithms needed to power the product.
As a product manager, Owczarek is primarily responsible for implementing product roadmaps, estimating and controlling budgets, and handling collaboration between product technology, user experience, and business aspects. She said, “Since the project was initiated by business stakeholders, it is particularly important to have a product manager who can ensure that the needs of the stakeholders are met while also focusing on the overall goals of the project. Moreover, the artificial intelligence product manager must also Possess technical skills and business acumen. They should be able to work closely with different teams and stakeholders. In most cases, the success of an AI project will depend on collaboration between business, data science, machine learning engineering, and design teams .”
Owczarek added that artificial intelligence product managers are also responsible for developing internal processes and guidelines to ensure that the company’s products comply with industry best practices.
Artificial Intelligence Strategist
An AI strategist needs to understand how the business operates at the corporate level and coordinate with the executive team and external stakeholders to ensure that the company has the right infrastructure and Talent to help artificial intelligence programs succeed.
Dan Diasio, global AI leader at EY Consulting, said that to be successful, artificial intelligence strategists must have a deep understanding of their business domain and the basics of machine learning. At the same time, they must also know how to use AI to solve business problems.
If you want to change the way companies make decisions, you need people with significant influence and vision to drive the process. Artificial intelligence strategists are people who can help companies think about transformation. Additionally, they can help businesses gain access to the data they need to effectively drive AI.
Diasio said, “Today, the data that enterprises have within their systems or data warehouses actually represents only a small part of what they use to differentiate themselves when building AI capabilities. Part of the strategist’s role is Look to the future and see how you can capture and leverage more data without touching on privacy issues.” The person responsible for communicating the potential business value of AI to stakeholders and customers.
iSchoolConnect’s Tulsankar said decision-makers are people who understand the business, opportunities and risks. The chief AI officer should understand the use cases that AI can solve, where the most important benefits lie, and have the ability to articulate these opportunities to stakeholders. Additionally, they should discuss how to implement these opportunities iteratively. If there are multiple customers or multiple products that require the application of AI, the chief AI officer can split the “customer-agnostic” and “customer-specific” parts of the implementation.
Executive Sponsor
The Executive Sponsor should be a C-level manager who plays an important role in ensuring positive outcomes for AI projects and is responsible for obtaining funding for the company's AI initiatives .
EY Consulting’s Diasio said executive leaders play an important role in helping drive AI projects to success. Know that the biggest opportunities for companies are often where they break out of specific functions. For example, a consumer goods manufacturer has a team responsible for research and development, a team responsible for supply chain, a sales team, and a marketing team. Applying artificial intelligence can help transform all four of these functions to realize the business’s biggest and best opportunities. Only a CEO or C-suite with strong leadership can help bring about these changes.
Unfortunately, senior management at many companies have a very limited understanding of the potential of artificial intelligence, often viewing it as a “black box.” They're used to throwing it to data scientists, but don't really understand the new methods required to use AI.
Adopting AI will be a huge cultural change for many companies that don’t understand how effective AI teams work, how their roles work, and how they are empowered. Moreover, this is a very difficult thing for 99% of traditional enterprises that adopt AI.
The above is the detailed content of Ten key roles to fully realize the business value of artificial intelligence. For more information, please follow other related articles on the PHP Chinese website!

SQL alias: A tool to improve the readability of SQL queries Do you think there is still room for improvement in the readability of your SQL queries? Then try the SQL alias! Alias This convenient tool allows you to give temporary nicknames to tables and columns, making your queries clearer and easier to process. This article discusses all use cases for aliases clauses, such as renaming columns and tables, and combining multiple columns or subqueries. Overview SQL alias provides temporary nicknames for tables and columns to enhance the readability and manageability of queries. SQL aliases created with AS keywords simplify complex queries by allowing more intuitive table and column references. Examples include renaming columns in the result set, simplifying table names in the join, and combining multiple columns into one

Google's Gemini: Code Execution Capabilities of Large Language Models Large Language Models (LLMs), successors to Transformers, have revolutionized Natural Language Processing (NLP) and Natural Language Understanding (NLU). Initially replacing rule-

Unlocking AI's Potential: A Deep Dive into the Tree of Thoughts Technique Imagine navigating a dense forest, each path promising a different outcome, your goal: discovering hidden treasure. This analogy perfectly captures the essence of the Tree of

Introduction Imagine transforming a cluttered garage into a well-organized, brightly lit space where everything is easily accessible and neatly arranged. In the world of databases, this process is called normalization. Just as a tidy garage improve

Prompt Engineering: Mastering Delimiters for Superior AI Results Imagine crafting a gourmet meal: each ingredient measured precisely, each step timed perfectly. Prompt engineering for AI is similar; delimiters are your essential tools. Just as pre

SQL REPLACE Functions: Efficient Data Cleaning and Text Operation Guide Have you ever needed to quickly fix large amounts of text in your database? SQL REPLACE functions can help a lot! It allows you to replace all instances of a specific substring with a new substring, making it easy to clean up data. Imagine that your data is scattered with typos—REPLACE can solve this problem immediately. Read on and I'll show you the syntax and some cool examples to get you started. Overview The SQL REPLACE function can efficiently clean up data by replacing specific substrings in text with other substrings. Use REPLACE(string, old

Object Detection: From R-CNN to YOLO – A Journey Through Computer Vision Imagine a computer not just seeing, but understanding images. This is the essence of object detection, a pivotal area in computer vision revolutionizing machine-world interactio

Kullback-Leibler (KL) Divergence: A Deep Dive into Relative Entropy Few mathematical concepts have as profoundly impacted modern machine learning and artificial intelligence as Kullback-Leibler (KL) divergence. This powerful metric, also known as re


Hot AI Tools

Undresser.AI Undress
AI-powered app for creating realistic nude photos

AI Clothes Remover
Online AI tool for removing clothes from photos.

Undress AI Tool
Undress images for free

Clothoff.io
AI clothes remover

Video Face Swap
Swap faces in any video effortlessly with our completely free AI face swap tool!

Hot Article

Hot Tools

MantisBT
Mantis is an easy-to-deploy web-based defect tracking tool designed to aid in product defect tracking. It requires PHP, MySQL and a web server. Check out our demo and hosting services.

SAP NetWeaver Server Adapter for Eclipse
Integrate Eclipse with SAP NetWeaver application server.

MinGW - Minimalist GNU for Windows
This project is in the process of being migrated to osdn.net/projects/mingw, you can continue to follow us there. MinGW: A native Windows port of the GNU Compiler Collection (GCC), freely distributable import libraries and header files for building native Windows applications; includes extensions to the MSVC runtime to support C99 functionality. All MinGW software can run on 64-bit Windows platforms.

PhpStorm Mac version
The latest (2018.2.1) professional PHP integrated development tool

VSCode Windows 64-bit Download
A free and powerful IDE editor launched by Microsoft