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Without proper data acquisition, even the most advanced algorithms will produce poor results.
                 Hence, this stage ensures the AI model has a reliable and representative dataset that reflects
                 real-world conditions.

                 Following are the points that shows why is data acquisition important:

                    It provides the raw material for building AI models.
                    Helps in identifying patterns, trends and relationships.

                    Influences the accuracy, fairness and efficiency of AI outcomes.
                    Aids in detecting biases and making the system more inclusive.




























                 Types of Data Collected

                 The success of any AI system depends heavily on the quality and variety of data collected during
                 the Data Acquisition stage. Different problems require different types of data and each data type
                 brings unique value and challenges.


                                                            Types of Data









                                        Textual        Numerical         Visual          Audio
                                         Data            Data            Data             Data


                 Textual Data

                 Textual data consists of information presented in written or printed form—typically as letters,
                 words, sentences or paragraphs.






                                                                                 Stages of AI Project Cycle
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