• Hausa Edition
  • Podcast
  • Conferences
  • LeVogue Magazine
  • Business News
  • Print Advert Rates
  • Online Advert Rates
  • Contact Us
Thursday, May 15, 2025
Leadership Newspapers
Read in Hausa
  • Home
  • News
  • Politics
  • Business
  • Sport
  • Health
  • Entertainment
  • Opinion
    • Editorial
  • Columns
  • Football
  • Others
    • LeVogue Magazine
    • Conferences
    • National Economy
  • Contact Us
No Result
View All Result
  • Home
  • News
  • Politics
  • Business
  • Sport
  • Health
  • Entertainment
  • Opinion
    • Editorial
  • Columns
  • Football
  • Others
    • LeVogue Magazine
    • Conferences
    • National Economy
  • Contact Us
No Result
View All Result
Leadership Newspapers
No Result
View All Result

Data Science In Project Management

by Phelin Ikponmwosa
8 months ago
in Opinion
Share on WhatsAppShare on FacebookShare on XTelegram

In today’s data-centric world, the significance of data science in project management is immense. Despite its initial appeal, data science is often misunderstood. Its influence spans various industries and daily activities.

Advertisement

However, organizations frequently face challenges in applying effective project management strategies within the realm of data science. According to a 2021 report by Fortune Business Insights, the data science platform market experienced rapid growth, valued at USD 64.14 billion in 2021 and expected to surge to USD 484.17 billion by 2029. This impressive growth highlights the critical importance of data science. Nonetheless, despite its recognized potential to offer a competitive edge, many businesses still face difficulties in effectively integrating data science into their operations.

A recent MIT study reveals that only 20% of enterprises are actively engaged in AI initiatives, with only a small percentage of these having widespread implementation.

The key challenges are in effectively managing data science projects and aligning technical and business goals. This is where a data science project manager becomes crucial. A data science project manager can enhance project success by applying the right level of expertise to data science initiatives.

For a better understanding, Data Science is a field that utilizes scientific principles to derive strategies from data, encompassing computer science, hacking skills, statistics, mathematics, and domain expertise. Project management involves the planning, execution, completion, and oversight of projects.

RELATED

JAMB Meets On 2022/23 UTME July 21

Mass Failure In UTME: The Way Forward

9 hours ago
Tribute To Dr Omololu Olunloyo

Tribute To Dr Omololu Olunloyo

9 hours ago

In agile terms, project management emphasizes delivering substantial value through continuous feedback and rapid development cycles. Data science project management is a specialized approach that blends technical expertise with business objectives to ensure successful outcomes in data science projects. Key features of data science project management include an iterative and agile approach, reflecting the dynamic nature of data projects. Collaboration among various teams, including data scientists, business stakeholders and IT professionals, is also essential.

A major challenge in data science project management is ensuring that complex algorithms and models align with strategic business objectives. Data science project management demands a thorough grasp of both technical and business aspects to ensure that the project achieves its intended outcomes and provides access to relevant data science resources for knowledge advancement.

A data science project manager

typically supervises projects, overseeing the delivery of analytics and AI/ML initiatives. One of the roles of a data science project manager managing and overseeing the daily tasks and workflows of the project team.

Another role is outlining and defining tasks that align with the project vision; overseeing and documenting scope using a project management tool like Jira, Atlassian, or Rally.

Translating technical jargon into clear terms so the team understands the path to success and fostering a collaboration is another function.

He also identifies and addresses potential roadblocks, ranging from data quality issues to evolving requirements.

He or she clarifies the complexities of project roadmaps for data science initiatives.

Some positions may also require a technical background, where the data science project manager is expected to be skilled in Python, SQL, and visualization tools such as Tableau. These roles are often termed “technical project managers.” Regardless of the title, a solid understanding of databases, analytics, AI/ML, engineering, cloud systems, and the data science life cycle is essential for any project manager in the field.

Data science project managers possess the expertise needed to navigate uncertainties and deliver valuable insights. Some of the fundamental project management principles to consider when managing data science projects include

planning and scope definition. Here, the project manager clearly outlines the problem, deliverables, and success metrics before developing a plan of action.

Another principle is keeping it real. Instead of attempting to tackle the entire complex problem at once, set realistic timelines and clearly defined tasks to avoid chaos and ensure the project doesn’t become overwhelmed by its complexity.

A successful team fosters a collaborative spirit, bringing everyone together to achieve project goals collectively.

A data science project manager could also deploy the agile methodology. He employs agile methods, iterating and adapting as they acquire new insights. Here, it is advisable to learn from minor mistakes and adjust swiftly to prevent them from escalating into major issues.

The principle of drawing the map is also essential to create a plan before plunging into a project.

A data science project manager should designate someone to define the project scope and ensure that the team is clear on their objectives and destination.

He or she should also anticipate or identify potential risks such as shifting requirements or data quality issues so that they can be addressed early and prevent them from causing significant damage.

The plan should equally remain flexible and adaptable to accommodate sudden changes in data science projects. If new information emerges, the project manager should adjust the strategy as needed to ensure the project stays on track.

Risk management is another key principle. Develop contingency plans to address potential issues proactively and handle them effectively.

For proper data science project management, managers should be responsible for guiding the planning, execution, and completion of data-related projects such as data migration, integration, analysis, and governance. They handle compliance, security, and data quality while coordinating the efforts of analysts, engineers, architects and other key stakeholders.

Ikponmwosa, a data science project manager, writes from Abuja

– Ikponmwosa , writes from  the Department of Political Science, Benson Idahosa University, Nigeria


We’ve got the edge. Get real-time reports, breaking scoops, and exclusive angles delivered straight to your phone. Don’t settle for stale news. Join LEADERSHIP NEWS on WhatsApp for 24/7 updates →

Join Our WhatsApp Channel



SendShareTweetShare
Previous Post

LG Election: Crisis Rocks Imo APC As Aspirants Seek Refund Of Money

Next Post

Protecting Nigeria’s Economy From Electricity Theft

Phelin Ikponmwosa

Phelin Ikponmwosa

You May Like

JAMB Meets On 2022/23 UTME July 21
Opinion

Mass Failure In UTME: The Way Forward

2025/05/15
Tribute To Dr Omololu Olunloyo
Opinion

Tribute To Dr Omololu Olunloyo

2025/05/15
Despite Battles Won, Advances Made, Anti-malaria War Lingers
Backpage

Despite Battles Won, Advances Made, Anti-malaria War Lingers

2025/05/15
Celebrations As All-On Commissions New 80kWp Solar Mini-Grid In Bayelsa Community
Editorial

Solar Power In Hospitals

2025/05/15
Still On The Penalty Point System
Columns

Wrongfully Delayed At The Traffic Lights

2025/05/15
House Committee Summons To Governors Unhelpful
Editorial

House Committee Summons To Governors Unhelpful

2025/05/14
Leadership Conference advertisement

LATEST

Police Arrest Tricyclist For Allegedly Defiling 4 Minors

Gunmen Abduct Monarch In Kogi Community

Delta Nursing Student Behind Viral ‘Na Your Mama Be This’ Diss Song Video Fails Final Exam Amid Alleged Victimisation

Insecurity: Kwara Adopts Colour Codes For Public Transport

JCI Lekki Royale’s EDGE Conference Unveils Strategies For Resilient Businesses

Rapper Chris Brown Arrested Over Alleged 2023 Attack On Music Producer

Norwegian School Unveils Renewable Energy To Promote Sustainability In Rivers

Reps Move To Make Voting Compulsory For Eligible Nigerians

Bill To Establish Agency For Malaria Eradication Scales Second Reading At Senate

TikTok Influencer Shot Dead During Livestream In Mexico

© 2025 Leadership Media Group - All Rights Reserved.

No Result
View All Result
  • Home
  • News
  • Politics
  • Business
  • Sport
  • Health
  • Entertainment
  • Opinion
    • Editorial
  • Columns
  • Football
  • Others
    • LeVogue Magazine
    • Conferences
    • National Economy
  • Contact Us

© 2025 Leadership Media Group - All Rights Reserved.