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Python , a versatile programming language, finds widespread real-world applications across multiple domains. Python’s dataanalysis and visualization libraries, such as Pandas and Matplotlib, empower Data Scientists and analysts to derive valuable insights. A Python developer gets ₹5,00000 per year in India.
The startup develops solutions that allow Python engineers to easily create and modify pipelines, sequential stages of data processing. As Roosh Ventures notes, the data streaming market is rapidly evolving today. Currently, developers use complex systems that require substantial time for maintenance.
Agents like PandasAI come into play, running this code on high-resolution time series data and handling errors using FMs. PandasAI is a Python library that adds generative AI capabilities to pandas, the popular dataanalysis and manipulation tool. For this tutorial, you need a bash terminal with Python 3.9
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