"Mastering Collaboration with Data Scientists: 14 Essential Insights"

Data scientists play multiple roles in collaborations, including data analysis, data acquisition, software development, and project management. However, misunderstandings and undervaluing their contributions can hinder effective collaboration. To improve working relationships, it is important to establish a communication plan, communicate openly, learn each other's jargon, encourage questions, and use creative communication methods. Additionally, setting a timeline, avoiding scope creep, planning for data storage and distribution, prioritizing reproducibility, documenting everything, and developing a publishing plan are crucial. Embracing creativity, sharing knowledge, and recognizing when a project has run its course are also important for successful interdisciplinary collaborations in data science.
Reading Insights
0
0
5 min
vs 6 min read
92%
1,193 → 99 words
Want the full story? Read the original article
Read on Nature.com