This content originally appeared on DEV Community and was authored by Mersano Berant
Your data science project is successful only if it brings some value to the company. The performance of these projects is not just measured in terms of accuracy; rather, the speed at which solution can be tailored.
There is no doubt to say that data science projects are usually time-consuming, but the ideal design is required to be simple and efficient. Many times, the system may experience a mistake in the middle, and then we may have to start over again. It is necessary to avoid such issues so that you can create more reliable and effective solutions, and they can be integrated into the platforms in minimal time.
If you are new in the field of data science and are looking for some trusted ways to make an impact, this article is for you. Here we have listed few tips for leading successful data science projects in the industry:
Define the problem and objectives
Before you dive into a data science project, it is first important to understand what is the problem to be solved and what are the objectives. You may have loads of data in hand to process, but what if it is bad data. At the same time, you have to be careful about false positive and false negative costs in the system. It is better to analyze all such aspects before building a model so that you can work in the right direction.
Get full insights into the data
This may sound logical. The field data may have several discrepancies, and they are required to be handled on time. The missing values can make it difficult to decide which of the available labels is accurate. Moreover, if you treat missing values in the wrong way, they can further harm the performance of the trained model. Therefore, it is important to understand data well so that you can take adequate pre-processing steps and make decisions about features carefully.
Keep it simple
It is important to mention that your prime goal with a data science project is to bring results quickly and accurately. Probably, your manager is also not aware of the possible solutions in the process. Sometimes, even a few simple solutions also turn out to be effective when they are handled well. The chances are that a simple model may perform better as compared to a super complex solution that demands loads of time. Experts always advise to at least solve the problem partially using a simple solution. Once you have created a value to the system, you can start implementing the complex ones if still required.
Consult experts around
Possibly, you are not a single data scientist in your company. Therefore, it is always a great opportunity to work in collaboration with others and get some ideas on how they can tackle the specific kind of problem. It is high time to understand that no one knows everything; we always have something to learn further. It is better to collaborate with other data scientists in the company and brainstorm together on the problem. It may also help you break complicated tasks into smaller portions and do proper planning to execute them step by step.
Do error analysis
There may be chances that your model works efficiently for one situation but fails to provide a reliable solution for another. This is where comes the need for error analysis. You may have to go through the entire model and make an analysis of possible mistakes. The idea is to troubleshoot the model in such a manner that it can work effectively with all different scenarios.
Prepare report
This step is neglected by most data scientists. Your current model may have several important elements that could be useful for some future projects as well. But you may forget the steps and procedure by the next month. Therefore, it is important to prepare a detailed report highlighting what steps you took to prepare this model, what data you have used, and what specific queries were run on the system. This step is extremely useful to revise and refine the solution in the future and maybe useful to handle some future problems as well.
Now you have gone through the best steps to execute successful data science projects. It is also possible to hire a team of professionals for handling data solutions in favor of your company to receive incredible results.
This content originally appeared on DEV Community and was authored by Mersano Berant
Mersano Berant | Sciencx (2021-09-10T09:03:39+00:00) Tips for a Successful Data Science Project in the Industry. Retrieved from https://www.scien.cx/2021/09/10/tips-for-a-successful-data-science-project-in-the-industry/
Please log in to upload a file.
There are no updates yet.
Click the Upload button above to add an update.