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What if your data science team had to handle many projects at once, all with their datasets, analyses, and models? Endless emails, Slack, and meeting notes are buried, and no one is aligned. This contributes to chaos and impedes productivity and, in the worst cases, mistakes, missed opportunities for insights, and a frustrated team.
Monday.com is a robust collaboration platform that frees up data science project management complexity and allows for efficient teamwork. This article will discuss how this tool can help your team overcome pesky project pains.
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Why is Monday.com a Game-Changer for Data Science Teams?
Over the years I’ve worked with data, I’ve seen tens (if not hundreds) of attempts at project management. A task tracking tool should organize tasks and handle the tool that tracks tasks. It doesn’t have to (and it extends more); it has to be able to handle the complexity of data workflows. However, Monday.com truly stands out for how well it combines planning, data transportation, and communication in one location.
Monday.com revolutionizes the way data science teams collaborate, track progress, and manage projects. Because of its highly adjustable processes and user-friendly layout, teams may create personalized dashboards that reflect their unique needs. Data scientists working on complex, multi-phase projects can set deadlines, break down workflows into manageable phases, and track progress using real-time data by using Monday.com’s task management system.
The platform’s sophisticated automation capabilities free up team members’ time, allowing them to focus more on creating models and doing data analysis. Monday.com is linked with popular data science software like as GitHub, Slack, and Jupyter, making it easier for data teams to interact and reduce platform switching.
Monday.com also provides great openness and accountability, which is essential for data science efforts. By sharing project updates, milestones, and findings on a single platform.
Visualization tools improve team productivity, performance metrics, and resource allocation while educating stakeholders. Their adaptability also helps agile approaches, enabling teams to make swift adjustments when projects take unexpected turns or when fresh information becomes available.
Setting Up Your Monday.com Workspace
The first part is setting up a centralized workspace on Monday.com, covering everything about your project. Monday.com differs from its general task management alternatives by allowing you to build a custom-built visual workflow for data science that combines a big-picture roadmap with intricate details. Here’s how to set it up:
Define Your Workflow Structure
So, whether it’s a predictive model or an exploratory analysis, work on building boards that fit into your stages: Data Acquisition, Preprocessing, Modeling, Validation, and Deployment.
Templates and Automation
Monday.com also makes customized templates available for teams dealing with repeated processes to help reduce setup time. For example, you can use templates to do things such as data wrangling and feature engineering. Automation—trigger emails, assign follow-ups, and move tasks across boards—can also be used without intervention.
Customized templates on Monday.com
Improving Collaboration
One big challenge data science teams face is knowing who’s doing what, when, and why. Monday.com makes this transparent. You can add your team members to your workspace so that they can collaborate easily, and this is done by sending each team member an invite to join the team’s workspace.
Collaboration on Monday.com
Task Assignment
Tasks can be assigned to individual team members, as well as multiple tasks. Speediness is important, but it becomes even more important with this transparency, which also means accountability.
Task assignment on Monday.com
Communication in Context
Tasks are mostly disorganized and scattered in email threads, but in Monday.com comments can be added directly to tasks. When a data engineer gets stuck in pipeline optimization, tagging a particular data scientist with specific questions provides quick feedback. Attach files, leave detailed notes, and always get real-time notifications when someone updates—you don’t have to switch back and forth between different communication tools to help keep track of an issue.
Communication in context on Monday.com
Visually Tracking Progress and Mitigating Bottlenecks
In my experience, data projects falter not from technical inadequacies but from mismanagement of timelines and tasks. Monday.com helps visualize progress and spot bottlenecks:
- Dashboards for Monitoring: Create dashboards that capture key metrics—such as the status of feature engineering or model training time. Visual widgets allow you to consolidate information from different boards, providing a high-level view that helps managers make data-driven decisions
- Gantt Charts and Timeline Views: Gantt charts enable team members to anticipate challenges and plan better. Monday.com can reveal overlapping activities and unreasonable timeframes, ensuring that your project remains realistic and on schedule
Gantt charts on Monday.com
Integration Capabilities
However, only some data science teams use a single platform exclusively. Monday.com’s strength lies in its ability to integrate with external tools:
- GitHub and Jupyter Notebook Integration: If coding and version control is what your data science teaм lives off of, you’re not going to have much luck there. Monday.com seamlessly integrates with GitHub, keeping the team informed of the changes in the codebases. At the same time, Jupyter Notebook integrations allow the direct linking of workbooks to the appropriate tasks
- Third-Party Tools: You can integrate third-party applications and services like Google Drive, Amazon Web Services, etc. This makes it easy to centralize datasets and collaborate on data, and therefore, data stuck on a single user’s machine doesn’t cause delays.
A real example is a team developing a fraud detection model for a certain financial company. Generally, project management, including data processing and storage, meetings, data analysis, and the timeline, needs a different platform.
With Monday.com:
- Data Acquisition and Preprocessing: The data engineer creates a board with the preprocessing steps and has it change its status independently when a step is completed
- Feature Selection and Model Development: Feature engineering involves data scientists working together. The built-in tagging feature shares information about shifts in feature selection to keep everybody informed
- Validation and Review: Once a model is developed, it is taken to a “Review” column, where statisticians can double-check the findings and rate the model’s performance. This is all in one place, where feedback will be recorded against the specific task
Conclusion
Data science projects shouldn’t be managed like herding cats. On Monday.com, you’ll have everything you’d ever need to allocate tasks, see how they progress, collaborate effectively, and utilize integrations in one place.
Are you convinced you’re ready to improve your team’s workflow? Try Monday.com for free today and find out how it will lower project friction and increase productivity.
Shittu Olumide is a software engineer and technical writer passionate about leveraging cutting-edge technologies to craft compelling narratives, with a keen eye for detail and a knack for simplifying complex concepts. You can also find Shittu on Twitter.