970x125
A data scientist must consider societal impact, not just model accuracy.
| Photo Credit: Getty Images/iStockphoto
In the rapidly evolving field of Data Science, technical skills such as programming, statistics, and machine learning are often emphasised as the foundation for success. However, while these are essential, they are not sufficient on their own. A successful career in Data Science also requires strong soft skills, business acumen, communication abilities, and ethical considerations. Effective communication: One of the most critical non-technical skills for a data scientist is communication. Data scientists must translate complex analytical findings into actionable insights for stakeholders who may not have a technical background. A data scientist must explain results in simple terms, using visualisations and storytelling techniques to make data understandable. They must also collaborate with and work with their teams, business leaders, engineers and marketers, which requires the ability to convey technical details without jargon. Yet another useful skill is being able to write reports and document things clearly. This will ensure that analyses are reproducible and useful for future projects. Business acumen: Technical skills alone cannot drive business value unless a data scientist understands the industry, company objectives, and key performance indicators (KPIs). They must identify which problems are worth solving and how data can provide solutions; assess whether a machine learning model or data analysis is worth the computational and financial cost; and have domain knowledge in fields like healthcare, finance, or e-commerce to frame data problems effectively. A data scientist who lacks business awareness may build technically impressive models that do not align with the company’s strategic goals. Critical thinking: Data science is not just about applying algorithms. It also requires logical reasoning, creativity, and adaptability. Not every problem requires deep learning. Sometimes a simple regression or heuristic works better. So the ability to choose the optimal approach is crucial. Next, when a model underperforms, the data scientist must be able to diagnose why. Was it data quality, feature selection or bias? Another key requirement is the ability to handle ambiguity. Real-world data is messy and assumptions must be constantly questioned. Critical thinking ensures that data scientists do not blindly rely on tools but instead apply them thoughtfully. Teamwork: Data science projects are rarely solo endeavours. Professionals must work with engineers, product managers, designers, business executives and others. Collaboration requires empathy, conflict resolution, and adaptability … skills that go beyond coding. Ethical considerations: As Data Science influences industries like healthcare, finance, and law enforcement, ethical implications become crucial. Models trained on biased data can perpetuate discrimination. Handling sensitive data requires compliance with regulations and GDPR and being aware of privacy concerns. Being transparent is important, as stakeholders should understand how models make decisions.A data scientist must consider societal impact, not just model accuracy. The best data scientists combine technical expertise with these broader skills to drive meaningful, responsible, and impactful decisions. Data science is not just about building models; it’s about solving real-world problems. To do that effectively, one must be a strategist, communicator, and ethical thinker, not just a technician.The writer is the Director of the Bachelor of Data Science programme at SP Jain School of Global Management. Published – November 30, 2025 08:00 am IST
970x125
970x125
