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Top 50 PySpark Interview Questions For Freshers And Experienced

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Top 50 PySpark Interview Questions For Freshers And Experienced

Edited By Team Careers360 | Updated on Dec 01, 2023 05:46 PM IST | #Python

PySpark has emerged as a powerful tool for enabling scalable and efficient data analysis using Python and Apache Spark. As you gear up for a PySpark interview, it is crucial to be well-prepared for a variety of PySpark interview questions and answers to test your understanding of PySpark's core concepts, its integration with Spark, and its role in data manipulation and transformation. As this is a Python API for Spark, you can develop your knowledge of this with online Python certification courses. Let us delve into the top 50 PySpark interview questions and answers to help you confidently tackle your upcoming interview.

Top 50 PySpark Interview Questions For Freshers And Experienced
Top 50 PySpark Interview Questions For Freshers And Experienced

Also Read: Learn Python Programming with Top 10 Free Python Courses with Certificate

Q1: What is PySpark, and how does it relate to Apache Spark?

Ans: The definition of PySpark is one of the frequently asked PySpark interview questions. PySpark is the Python library for Apache Spark, an open-source, distributed computing framework. It allows you to write Spark applications using Python programming language while leveraging the power of Spark's distributed processing capabilities. PySpark provides high-level APIs that seamlessly integrate with Spark's core components, including Spark SQL, Spark Streaming, MLlib, and GraphX.

Q 2: Explain the concept of Resilient Distributed Datasets (RDDs).

Ans: RDDs, or Resilient Distributed Datasets, are the fundamental data structures in PySpark. They represent distributed collections of data that can be processed in parallel across a cluster. RDDs offer fault tolerance through lineage information, allowing lost data to be recomputed from the original source data transformations. RDDs can be created by parallelising existing data in memory or by loading data from external storage systems such as HDFS. This is another one of the PySpark interview questions you must consider while preparing for the interview.

Q 3: How does lazy evaluation contribute to PySpark's performance optimisation?

Ans: PySpark employs lazy evaluation, where transformations on RDDs are not executed immediately but are recorded as a series of operations to be executed later. This optimisation minimises data shuffling and disk I/O, allowing Spark to optimise the execution plan before actually performing any computations. This approach enhances performance by reducing unnecessary data movement and computation overhead. This type of PySpark interview questions and answers will test your knowledge of this Python API.

Q 4: Differentiate between transformations and actions in PySpark.

Ans: This is amongst the top PySpark interview questions for freshers as well as experienced professionals. Transformations in PySpark are operations performed on RDDs to create new RDDs. They are lazy in nature and include functions such as map(), filter(), and reduceByKey(). Actions, on the other hand, trigger computations on RDDs and produce non-RDD results. Examples of actions include count(), collect(), and reduce(). Transformations are built up in a sequence, and actions execute the transformations to produce final results.

Q 5: What is the significance of SparkContext in PySpark?

Ans: This one of the PySpark Interview questions for experienced professionals and freshers is important to understand for effective preparation. SparkContext is the entry point to any Spark functionality in PySpark. It represents the connection to a Spark cluster and serves as a handle for creating RDDs, broadcasting variables, and accessing cluster services. SparkContext is automatically created when you launch a PySpark shell and is available as the sc variable. In cluster mode, it is created on the driver node and is accessible through the driver program.

Also read: Top 12 Courses in Apache to Pursue A Career in Big Data

Q 6: Explain the concept of data lineage in PySpark.

Ans: Data lineage is an important topic to learn while preparing for PySpark interview questions and answers. In PySpark, data lineage refers to the tracking of the sequence of transformations applied to an RDD or DataFrame. It is essential for achieving fault tolerance, as Spark can recompute lost data based on the recorded lineage. Each RDD or DataFrame stores information about its parent RDDs, allowing Spark to retrace the sequence of transformations to recompute lost partitions due to node failures.

Q 7: How does caching improve PySpark's performance?

Ans: Caching involves persisting an RDD or DataFrame in memory to avoid recomputing it from the source data. This is particularly useful when an RDD or DataFrame is reused across multiple operations. Caching reduces the computational cost by minimising the need to recompute the same data multiple times. It is important to consider memory constraints while caching, as over-caching can lead to excessive memory consumption and potential OutOfMemory errors. This type of PySpark interview questions and answers will test your in-depth understanding of this topic.

Q 8: What are DataFrames, and how do they differ from RDDs?

Ans: This is one of the top PySpark interview questions for experienced candidates as well as freshers. DataFrames are higher-level abstractions built on top of RDDs in PySpark. They represent distributed collections of structured data, similar to tables in relational databases. DataFrames offer optimisations such as schema inference and query optimisation, making them more suitable for structured data processing than RDDs. They provide a more SQL-like interface through Spark SQL and offer better performance optimisations.

Q 9: Explain the concept of DataFrame partitioning.

Ans: This is another one of the must-know interview questions on PySpark. DataFrame partitioning is the process of dividing a large dataset into smaller, manageable chunks called partitions. Partitions are the basic units of parallelism in Spark's processing. By partitioning data, Spark can process multiple partitions simultaneously across cluster nodes, leading to efficient distributed processing. The number of partitions can be controlled during data loading or transformation to optimise performance.

Q 10: How does PySpark handle missing or null values in DataFrames?

Ans: Whenever we talk about interview questions on PySpark, this type of PySpark interview questions and answers is a must-know. PySpark represents missing or null values using the special None object or the NULL SQL value. DataFrame operations and transformations have built-in support for handling missing data. Functions such as na.drop() and na.fill() allow you to drop rows with missing values or replace them with specified values. Additionally, SQL operations such as IS NULL or IS NOT NULL can be used to filter out or include null values.

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Q11: Describe the process of reading and writing data using PySpark's DataFrame API.

Ans: PySpark's DataFrame API provides convenient methods for reading data from various data sources such as CSV, Parquet, JSON, and databases. The object is used to create a DataFrame by specifying the data source, format, and options. Conversely, data can be written using the write object, specifying the destination, format, and options. PySpark's DataFrame API handles various data formats and provides options for controlling data compression, partitioning, and more. This is one of the PySpark interview questions for experienced professionals and freshers which will help you in your preparation.

Q 12: What is the purpose of the groupBy() and agg() functions in PySpark?

Ans: The groupBy() function in PySpark is used to group data in a DataFrame based on one or more columns. It creates grouped DataFrames that can be further aggregated using the agg() function. The agg() function is used to perform various aggregation operations such as sum, avg, min, and max, on grouped DataFrames. These functions are essential for summarising and analysing data based on specific criteria. With this type of PySpark interview questions and answers, the interviewer will test your familiarity with this Python API.

Q13: Explain the concept of Broadcast Variables in PySpark.

Ans: Broadcast Variables in PySpark are read-only variables that can be cached and shared across all worker nodes in a Spark cluster. They are used to efficiently distribute relatively small amounts of data (e.g., lookup tables) to all tasks in a job, reducing the need for data shuffling. This optimisation significantly improves performance by minimising data transfer over the network. This is one of the PySpark basic interview questions you should consider while preparing for PySpark interview questions and answers.

Q 14: How can you optimise the performance of PySpark jobs?

Ans: Optimising PySpark performance involves various strategies. These include using appropriate transformations to minimise data shuffling, leveraging caching and persistence to avoid recomputation, adjusting the number of partitions for efficient parallelism, and using broadcast variables for small data. Additionally, monitoring resource utilisation, tuning memory settings, and avoiding unnecessary actions also contribute to performance optimisation. This is amongst the top interview questions for PySpark that you should include in your PySpark interview questions and answers preparation list.

Q 15: Explain the concept of SparkSQL in PySpark.

Ans: The concept of SparkSQL is one of the frequently asked PySpark interview questions for experienced professionals. SparkSQL is a module in PySpark that allows you to work with structured data using SQL queries alongside DataFrame operations. It seamlessly integrates SQL queries with PySpark's DataFrame API, enabling users familiar with SQL to perform data manipulation and analysis. SparkSQL translates SQL queries into a series of DataFrame operations, providing optimisations and flexibility for querying structured data.

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Q16: What is the role of the Window function in PySpark?

Ans: The Window function in PySpark is an important topic you must know while preparing for PySpark interview questions and answers. It is used for performing window operations on DataFrames. Window functions allow you to compute results over a sliding window of data, usually defined by a window specification. Common window functions include row_number(), rank(), dense_rank(), and aggregation functions such as sum(), avg(), and others over specific window partitions. These functions are useful for tasks such as calculating running totals, rankings, and moving averages.

Q 17: Explain the concept of Spark Streaming and its integration with PySpark.

Ans: This is another of the PySpark basic interview questions often asked in the interview. Spark Streaming is a real-time processing module in Apache Spark that enables the processing of live data streams. PySpark integrates with Spark Streaming, allowing developers to write streaming applications using Python. It provides a high-level API for processing data streams, where incoming data is divided into small batches, and transformations are applied to each batch. This makes it suitable for various real-time data processing scenarios.

Q 18: What is PySpark's MLlib, and how does it support machine learning?

Ans: PySpark's MLlib is a machine learning library that provides various algorithms and tools for building scalable machine learning pipelines. It offers a wide range of classification, regression, clustering, and collaborative filtering algorithms, among others. MLlib is designed to work seamlessly with DataFrames, making it easy to integrate machine learning tasks into Spark data processing pipelines. This type of PySpark interview questions for freshers as well as experienced must be on your preparation list.

Q 19: Explain the process of submitting a PySpark application to a Spark cluster.

Ans: Submitting a PySpark application to a Spark cluster involves using the spark-submit script provided by Spark. You need to package your application code along with dependencies into a JAR or Python archive. Then, you submit the application using the spark-submit command, specifying the application entry point, resource allocation, and cluster details. Spark will distribute and execute your application code on the cluster nodes.

Q 20: How can you handle skewed data in PySpark?

Ans: One of the commonly asked PySpark interview questions is this one that often appears in PySpark interviews. Skewed data can lead to performance issues in distributed processing. In PySpark, you can handle skewed data using techniques such as salting, bucketing, and using specialised functions such as skewness() and approx_count_distinct() to approximate skewed values. Additionally, you can explore repartitioning data to evenly distribute skewed partitions or using the explode() function to break down skewed values into separate rows for better parallel processing.

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21. What is PySpark, and how does it relate to Apache Spark?

Ans: This is one of the PySpark basic interview questions that must be on your PySpark interview questions and answers preparation list. PySpark is essentially a Python interface to Apache Spark, allowing developers to harness the power of Spark's distributed computing capabilities within a Python environment.

By leveraging PySpark, developers can create data pipelines, perform analytics, and handle big data processing seamlessly using Python's familiar syntax and libraries. It allows Python developers to interact with Apache Spark and utilise its capabilities for processing large-scale data efficiently. PySpark provides a Python API for Spark programming, making it accessible and versatile for data processing tasks.

22. What are the different algorithms supported in PySpark?

Ans: This is one of the must-know PySpark interview questions for experienced professionals. The different algorithms supported by PySpark are spark.mllib, mllib.clustering, mllib.classification, mllib.regression, mllib.recommendation, mllib.linalg, and mllib.fpm.

23. What is lazy evaluation in PySpark, and why is it important?

Ans: Lazy evaluation in PySpark refers to the delayed execution of transformations until an action is invoked. When transformations are called, they build up a logical execution plan (or DAG - Directed Acyclic Graph) without executing any computation. This plan is optimised by Spark for efficient execution. Only when an action is triggered does Spark execute the entire DAG. It is a fundamental principle in PySpark that enhances its performance and efficiency. By deferring the actual computation until necessary (when an action is invoked), PySpark can optimise the execution plan by combining multiple transformations, eliminating unnecessary calculations, and reducing the amount of data movement between nodes.

This deferred execution allows for better optimization opportunities, resulting in faster and more efficient processing. It is a key feature in distributed computing, particularly with large-scale datasets, where minimising redundant operations and optimising the execution plan is crucial for performance gains.

24. Explain the concept of accumulators in PySpark.

Ans: Accumulators in PySpark are variables used for aggregating information across all the nodes in a distributed computation. They provide a mechanism to update a variable in a distributed and fault-tolerant way, allowing values to be aggregated from various nodes and collected to the driver program. Therefore, these are a powerful feature in PySpark, serving as a mechanism to aggregate information across the nodes of a cluster in a distributed environment.

These variables are typically used for performing arithmetic operations (addition) on numerical data, and their values are only updated in a distributed manner through associative and commutative operations. They are particularly useful when you need to collect statistics or counters during a distributed computation. For example, you might use an accumulator to count the number of erroneous records or compute a sum across all nodes. This aggregation happens efficiently, and the final aggregated result can be accessed from the driver program after the computation is completed.

25. What is a Broadcast Variable in PySpark, and when is it used?

Ans: This is one of the most frequently asked PySpark interview questions. A broadcast variable in PySpark is a read-only variable cached on each machine in a cluster to improve the efficiency of certain operations. It is used when you have a large, read-only dataset that needs to be shared across all nodes in a cluster. These are critical optimization techniques in PySpark, especially when dealing with operations that require sharing a large dataset across all nodes in a cluster. When a variable is marked for broadcast, it is sent to all the worker nodes only once and is cached locally. This eliminates the need to send the data over the network multiple times, enhancing performance.

Broadcast variables are typically employed when you have a large dataset that is read-only and can fit in memory across all nodes. Examples include lookup tables or configuration data that are necessary for operations such as joins, where the small dataset is being joined with a much larger one.

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26. Explain the concept of serialisation and deserialization in PySpark.

Ans: Serialization in PySpark refers to the process of converting objects into a byte stream, allowing them to be stored in memory, transmitted over a network, or persisted to disk. Deserialization is the reverse process, where the byte stream is converted back into the original object. Serialisation and deserialization are fundamental processes in PySpark that enable the efficient storage, transmission, and retrieval of objects within a distributed computing environment.

Serialisation involves converting objects into a compact byte stream, making them suitable for storage, transmission, or caching in memory. This process is crucial for sending data over a network or persisting it to disk. On the other hand, deserialization is the process of reconstructing the original object from the byte stream. It's essential for retrieving the object's original state and structure. Both serialisation and deserialization are key aspects of data processing in PySpark, impacting performance and efficiency, especially in a distributed computing scenario.

27. What are the advantages and disadvantages of using PySpark over traditional Hadoop MapReduce?

Ans: This is amongst the must-know interview questions on PySpark that you shoould practice. PySpark presents several advantages compared to traditional Hadoop MapReduce. Firstly, PySpark is more developer-friendly and offers a higher level of abstraction, enabling developers to write code in Python, a widely used and versatile programming language. This ease of use speeds up development and improves productivity.

Additionally, PySpark is faster due to its in-memory computing capabilities and optimised execution plans. It can process data faster than Hadoop MapReduce, especially for iterative and interactive workloads. Moreover, PySpark supports a wide range of data sources and formats, making it highly versatile and compatible with various systems and tools.

28. What is the difference between a DataFrame and an RDD in PySpark?

Ans: A DataFrame in PySpark is an immutable distributed collection of data organised into named columns. It provides a more structured and efficient way to handle data compared to an RDD (Resilient Distributed Dataset), which is a fundamental data structure in Spark representing an immutable distributed collection of objects. DataFrames offer better performance optimizations and can utilise Spark's Catalyst optimizer, making them more suitable for structured data processing. This type of interview questions for PySpark must be on your PySpark interview questions and answers preparation list.

29. Explain the significance of the Catalyst optimiser in PySpark.

Ans: The Catalyst optimiser in PySpark is an extensible query optimizer that leverages advanced optimization techniques to improve the performance of DataFrame operations. It transforms the DataFrame operations into an optimised logical and physical plan, utilising rules, cost-based optimization, and advanced query optimizations. This optimization process helps to generate an efficient execution plan, resulting in faster query execution and better resource utilisation within the Spark cluster.

30. How does partitioning improve the performance in PySpark?

Ans: One of the PySpark interview questions and answers is this one interview question. Partitioning in PySpark involves dividing a large dataset into smaller, more manageable chunks known as partitions. Partitioning can significantly enhance performance by allowing parallel processing of data within each partition. This parallelism enables better resource utilisation and efficient data processing, leading to improved query performance and reduced execution time. Effective partitioning can also minimise shuffling and movement of data across the cluster, optimising overall computational efficiency.

Also Read: Online Apache Spark Certification Courses

31. What is the purpose of the Arrow framework in PySpark?

Ans: Apache Arrow is an in-memory columnar data representation that aims to provide a standard, efficient, and language-independent way of handling data for analytics systems. In PySpark, the Arrow framework is utilised to accelerate data movement and inter-process communication by converting Spark DataFrames into Arrow in-memory columnar format. This helps in reducing serialisation and deserialization overhead, enhancing the efficiency and speed of data processing within the Spark cluster.

32. Explain the concept of lineage in PySpark.

Ans: Lineage in PySpark refers to the history of transformations that have been applied to a particular RDD or DataFrame. It defines the sequence of operations or transformations that have been performed on the base dataset to derive the current state. This lineage information is crucial for fault tolerance and recomputation in case of node failures. It allows Spark to recreate lost partitions or DataFrames by reapplying transformations from the original source data, ensuring the resilience and reliability of the processing pipeline.

33. What are accumulators in PySpark and how are they used?

Ans: Accumulators in PySpark are distributed variables used for aggregating values across worker nodes in a parallel computation. They enable efficient, in-memory aggregation of values during a Spark job. Accumulators are primarily used for counters or sums, with the ability to increment their values in a distributed setting. However, they are meant for read-only operations in the driver program and should not be used for updates from tasks to ensure consistency and proper fault tolerance.

34. Explain the concept of PySpark SparkContext?

Ans: This is amongst the important interview questions on PySpark that you should include in your PySpark interview questions and answers preparation list. PySpark SparkContext can be seen as the initial point for entering and using any Spark functionality. The SparkContext uses py4j library to launch the JVM, and then create the JavaSparkContext. By default, the SparkContext is available as ‘sc’.

35. What is the purpose of the Arrow optimizer in PySpark?

Ans: The Arrow optimizer in PySpark leverages the Arrow framework to accelerate data transfer and serialisation/deserialization processes between the JVM and Python processes. It converts the in-memory columnar representation of data into a format that is efficient and compatible with both Python and the JVM. By utilising Arrow, the optimizer helps in improving the efficiency of data movement and reduces the overhead associated with data serialisation and deserialization, leading to faster data processing in PySpark.

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36. Describe the role of a serializer in PySpark and its types.

Ans: This is one of the important PySpark interview questions for experienced professionals. A serializer in PySpark is responsible for converting data objects into a format that can be easily transmitted or stored. There are two main types of serializers: Java serializer (JavaSerializer) and Kryo serializer (KryoSerializer). The Java serializer is the default option and is simple to use but may be slower. On the other hand, the Kryo serializer is more efficient and performs better due to its ability to handle complex data types and optimise serialisation. Choosing the appropriate serializer is essential for achieving optimal performance in PySpark applications.

37. Explain the purpose and usage of a broadcast variable in PySpark.

Ans: A broadcast variable in PySpark is a read-only variable cached on each machine in the cluster, allowing efficient sharing of large read-only variables across tasks. This helps in optimising operations that require a large dataset to be sent to all worker nodes, reducing network traffic and improving performance. Broadcast variables are suitable for scenarios where a variable is too large to be sent over the network for each task, but it needs to be accessed by all nodes during computation. This type of PySpark interview questions and answers will help you better prepare for your next interview.

38. What is the role of the Driver and Executor in a PySpark application?

Ans: In a PySpark application, the Driver is the main program that contains the user's code and orchestrates the execution of the job. It communicates with the cluster manager to acquire resources and coordinate task execution. Executors, on the other hand, are worker nodes that perform the actual computation. They execute the tasks assigned by the Driver and manage the data residing in their assigned partitions. Effective coordination and communication between the Driver and Executors are essential for successful job execution.

39. Explain the purpose of the persist() function in PySpark and its storage levels.

Ans: The persist() function in PySpark allows users to persist a DataFrame or RDD in memory for faster access in subsequent actions. It is a way to control the storage of intermediate results in the cluster to improve performance. The storage levels include MEMORY_ONLY, MEMORY_AND_DISK, MEMORY_ONLY_SER, MEMORY_AND_DISK_SER, DISK_ONLY, and OFF_HEAP. Each level represents a different trade-off between memory usage and computation speed, enabling users to choose the most suitable storage option based on their specific requirements.

40. What is a UDF in PySpark, and when should you use it?

Ans: One of the frequently asked PySpark interview questions for freshers and experienced professionals is UDF in PySpark. A User Defined Function (UDF) in PySpark is a way to extend the built-in functionality by defining custom functions to process data. UDFs allow users to apply arbitrary Python functions to the elements of a DataFrame, enabling complex transformations. UDFs are useful when built-in functions don't meet specific processing requirements, or when customised operations need to be applied to individual elements or columns within a DataFrame.

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41. What is Apache Spark and why is it preferred over Hadoop MapReduce?

Ans: This is one of the must-know PySpark interview questions for experienced. Apache Spark is an open-source distributed computing system that provides a powerful and flexible framework for big data processing. It is preferred over Hadoop MapReduce due to its in-memory computation, which enhances speed and efficiency. Spark offers various APIs and libraries, including PySpark for Python, making it more versatile and developer-friendly than Hadoop MapReduce.

42. Explain the concept of PySpark SparkFiles?

Ans: One of the most asked interview questions for PySpark is PySpark SparkFiles. It is used to load our files on the Apache Spark application. It is one of the functions under SparkContext and can be called using sc.addFile to load the files on Apache Spark. SparkFIles can also be used to get the path using SparkFile.get or resolve the paths to files that were added from sc.addFile. The class methods present in the SparkFiles directory are getrootdirectory() and get(filename).

43. What is a Broadcast Variable in PySpark and when would you use it?

Ans: A broadcast variable in PySpark is a read-only variable cached on each machine rather than being shipped with tasks. This optimises data distribution and improves the efficiency of joins or lookups, especially when the variable is small and can fit in memory. Broadcast variables are beneficial when you need to share a small read-only lookup table across all worker nodes.

44. Explain the use of accumulators in PySpark.

Ans: In PySpark, accumulators are special variables used for aggregating information across worker nodes in a distributed computing environment. They are primarily employed to capture metrics, counters, or any form of information that needs to be accumulated from different parts of a distributed computation. Accumulators are particularly useful in scenarios where we want to have a centralised view of some data across distributed tasks or nodes without the need for complex communication or synchronisation. Typically, an accumulator starts with an initial value and can be updated using an associative operation.

The key feature is that the updates are only made on the worker nodes, and the driver program can then retrieve the final aggregated value after all the distributed computations have been completed. This is extremely efficient and avoids the need for large amounts of data to be sent back and forth between the driver and worker nodes.

For example, you might use an accumulator to count the number of erroneous records processed in a distributed data processing task. Each worker node can increment the accumulator whenever it encounters an error, and the driver program can then access the total count once the computation is finished. Accumulators provide a clean and efficient mechanism for collecting essential statistics or aggregations in a distributed computing setting.

Also Read: Free Apache Spark Certification Courses

45. What are the advantages of using PySpark over pandas for data processing?

Ans: Another one of the frequently asked PySpark interview questions is the advantages of using PySpark. A Python library for Apache Spark, PySpark offers distinct advantages over pandas for data processing, especially when dealing with large-scale and distributed datasets. First and foremost, PySpark excels in handling big data. It's designed to distribute data processing tasks across a cluster of machines, making it significantly faster and more efficient than pandas for large datasets that may not fit into memory. PySpark leverages the power of distributed computing, allowing operations to be parallelized and run in-memory, minimising disk I/O and improving performance.

Another advantage of PySpark is its seamless integration with distributed computing frameworks. Apache Spark, the underlying framework for PySpark, supports real-time stream processing, machine learning, and graph processing, enabling a wide range of analytics and machine learning tasks in a single platform. This integration simplifies the transition from data preprocessing and cleaning to advanced analytics and modelling, providing a unified ecosystem for end-to-end data processing.

46. What is the significance of a checkpoint in PySpark and how is it different from caching?

Ans: In PySpark, a checkpoint is a critical mechanism used for fault tolerance and optimization in distributed computing environments. When executing complex and iterative operations, such as machine learning algorithms or graph processing, Spark creates a Directed Acyclic Graph (DAG) to track the transformations and actions required for the computation. This DAG can become quite extensive and maintaining it can be resource-intensive.

Checkpointing involves saving intermediate results of RDDs (Resilient Distributed Datasets) to disk and truncating the lineage graph. By doing so, it reduces the complexity of the lineage graph and minimises the memory requirements, enhancing the overall performance and fault tolerance of the computation. Checkpoints are typically used to mark a point in the computation where the lineage graph is cut, and subsequent operations start afresh from the saved checkpointed data.

On the other hand, caching in PySpark involves persisting RDDs or DataFrames in memory to optimise performance by avoiding unnecessary recomputation of the same data. It is primarily an in-memory storage mechanism where intermediate or final results are stored in memory for quicker access during subsequent operations. Caching is ideal for scenarios where you need to reuse a specific RDD or DataFrame multiple times in the same computation, ensuring faster access and reduced computation time. However, caching does not minimise the lineage graph or provide fault tolerance as checkpointing does.

47. Explain the concept of 'partitioning' in PySpark.

Ans: In PySpark, partitioning is a fundamental concept used to organise and distribute data across the nodes of a cluster, improving efficiency and performance during data processing. Partitioning involves dividing a large dataset into smaller, manageable segments based on specific criteria, typically related to the values of one or more columns. These segments, known as partitions, are handled independently during computations, allowing for parallel processing and minimising data movement across the cluster.

Partitioning is crucial in optimising data processing tasks, as it enables Spark to distribute the workload across nodes, ensuring that each node processes a subset of the data. This not only enhances parallelism but also reduces the amount of data that needs to be transferred between nodes, thereby improving the overall computational efficiency. Different partitioning strategies can be employed, such as hash partitioning, range partitioning, and list partitioning, each with its own advantages based on the nature of the data and the desired computational performance. Efficient partitioning is essential for achieving optimal performance and scalability in PySpark applications.

48. What is Parquet file in PySpark?

Ans: This one of the PySpark interview coding questions is important to be asked in interviews. The Parquet file in PySpark is defined as a column-type format supported by different data processing systems. It helps Spark SQL to perform read and write operations. Its column-type format storage offers numerous benefits, such as consuming less space, allowing you to retrieve specific columns for access, employing type-specific encoding, providing better-summarised data, and supporting limited I/O operations.

49. Explain the difference between 'cache()' and 'persist()' in PySpark.

Ans: In PySpark, 'cache()' and 'persist()' are methods used to optimise the performance of Spark operations by persisting intermediate or final DataFrame or RDD (Resilient Distributed Dataset) results in memory or disk. The primary difference lies in the level of persistence and the storage options they offer.

The 'cache()' method is a shorthand for 'persist()' with a default storage level of MEMORY_ONLY.

When you invoke 'cache()' on a DataFrame or RDD, it stores the data in memory by default, making it readily accessible for subsequent computations. However, if the available memory is insufficient to hold the entire dataset, Spark may evict some partitions from memory, leading to recomputation when needed.

On the other hand, the 'persist()' method provides more flexibility by allowing you to choose a storage level that suits your specific use case. This could include options such as MEMORY_ONLY, MEMORY_AND_DISK, DISK_ONLY, and more. By specifying the desired storage level explicitly, you can control the trade-off between memory usage and potential recomputation. For example, using MEMORY_AND_DISK storage level allows for storing excess data on disk if memory constraints are reached, reducing the chance of recomputation but potentially introducing higher I/O costs.

50. What is the purpose of the 'repartition()' function in PySpark?

Ans: This one of the interview questions on PySpark is considered a frequently asked PySpark interview question. The repartition() function in PySpark is a transformation that allows for the redistribution of data across partitions in a distributed computing environment. In the context of PySpark, which is a powerful framework for parallel and distributed data processing, data is often partitioned across different nodes in a cluster to enable efficient parallel processing. However, over time, the distribution of data across partitions may become imbalanced due to various operations such as filtering, sorting, or joining.

The repartition() function helps address this issue by reshuffling the data and redistributing it evenly across the specified number of partitions. This operation is particularly useful when there is a need to optimise subsequent processing steps, such as reducing skewed processing times or improving the performance of parallel operations. Essentially, it helps enhance the efficiency and effectiveness of distributed data processing by ensuring a more balanced workload distribution across the nodes in the cluster.

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These top 50 PySpark interview questions with answers will certainly enhance your confidence and knowledge for your upcoming interview. PySpark's role in big data processing and its integration with Spark's powerful capabilities make it a valuable skill for any proficient data scientist. Therefore these PySpark interview questions and answers will strengthen your key skills while also guiding you towards a lucrative career.

Frequently Asked Question (FAQs)

1. What are some popular resources for PySpark interview questions?

You can find a comprehensive list of PySpark interview questions on various platforms such as websites, forums, and blogs dedicated to data science, Apache Spark, and PySpark.

2. What are some essential PySpark interview questions for experienced professionals?

Experienced professionals may encounter questions about advanced PySpark concepts. Thus, questions on RDD transformations, DataFrame operations, window functions, optimising Spark jobs and more are essential.

3. What are some PySpark interview questions for freshers?

Freshers might be asked questions about the basics of PySpark, RDDs, DataFrame manipulations, understanding the role of SparkContext, and how PySpark integrates with Python for distributed data processing.

4. What is the importance of preparing for PySpark interview questions?

Preparing for PySpark interview questions demonstrates your expertise in distributed data processing using PySpark. It helps you confidently answer questions related to data manipulation, performance optimisation, and Spark's core concepts,.

5. How can I prepare effectively for PySpark interview questions?

To prepare effectively, review PySpark documentation, practice coding exercises, work on real-world projects, and simulate interview scenarios.


Upcoming Exams

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Application Date:05 December,2023 - 09 March,2024

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Data Administrator

Database professionals use software to store and organise data such as financial information, and customer shipping records. Individuals who opt for a career as data administrators ensure that data is available for users and secured from unauthorised sales. DB administrators may work in various types of industries. It may involve computer systems design, service firms, insurance companies, banks and hospitals.

4 Jobs Available
Bio Medical Engineer

The field of biomedical engineering opens up a universe of expert chances. An Individual in the biomedical engineering career path work in the field of engineering as well as medicine, in order to find out solutions to common problems of the two fields. The biomedical engineering job opportunities are to collaborate with doctors and researchers to develop medical systems, equipment, or devices that can solve clinical problems. Here we will be discussing jobs after biomedical engineering, how to get a job in biomedical engineering, biomedical engineering scope, and salary. 

4 Jobs Available
GIS Expert

GIS officer work on various GIS software to conduct a study and gather spatial and non-spatial information. GIS experts update the GIS data and maintain it. The databases include aerial or satellite imagery, latitudinal and longitudinal coordinates, and manually digitized images of maps. In a career as GIS expert, one is responsible for creating online and mobile maps.

3 Jobs Available
Remote Sensing Technician

Individuals who opt for a career as a remote sensing technician possess unique personalities. Remote sensing analysts seem to be rational human beings, they are strong, independent, persistent, sincere, realistic and resourceful. Some of them are analytical as well, which means they are intelligent, introspective and inquisitive. 

Remote sensing scientists use remote sensing technology to support scientists in fields such as community planning, flight planning or the management of natural resources. Analysing data collected from aircraft, satellites or ground-based platforms using statistical analysis software, image analysis software or Geographic Information Systems (GIS) is a significant part of their work. Do you want to learn how to become remote sensing technician? There's no need to be concerned; we've devised a simple remote sensing technician career path for you. Scroll through the pages and read.

3 Jobs Available
Database Architect

If you are intrigued by the programming world and are interested in developing communications networks then a career as database architect may be a good option for you. Data architect roles and responsibilities include building design models for data communication networks. Wide Area Networks (WANs), local area networks (LANs), and intranets are included in the database networks. It is expected that database architects will have in-depth knowledge of a company's business to develop a network to fulfil the requirements of the organisation. Stay tuned as we look at the larger picture and give you more information on what is db architecture, why you should pursue database architecture, what to expect from such a degree and what your job opportunities will be after graduation. Here, we will be discussing how to become a data architect. Students can visit NIT Trichy, IIT Kharagpur, JMI New Delhi

3 Jobs Available
Ethical Hacker

A career as ethical hacker involves various challenges and provides lucrative opportunities in the digital era where every giant business and startup owns its cyberspace on the world wide web. Individuals in the ethical hacker career path try to find the vulnerabilities in the cyber system to get its authority. If he or she succeeds in it then he or she gets its illegal authority. Individuals in the ethical hacker career path then steal information or delete the file that could affect the business, functioning, or services of the organization.

3 Jobs Available
Data Analyst

The invention of the database has given fresh breath to the people involved in the data analytics career path. Analysis refers to splitting up a whole into its individual components for individual analysis. Data analysis is a method through which raw data are processed and transformed into information that would be beneficial for user strategic thinking.

Data are collected and examined to respond to questions, evaluate hypotheses or contradict theories. It is a tool for analyzing, transforming, modeling, and arranging data with useful knowledge, to assist in decision-making and methods, encompassing various strategies, and is used in different fields of business, research, and social science.

3 Jobs Available
Water Manager

A career as water manager needs to provide clean water, preventing flood damage, and disposing of sewage and other wastes. He or she also repairs and maintains structures that control the flow of water, such as reservoirs, sea defense walls, and pumping stations. In addition to these, the Manager has other responsibilities related to water resource management.

3 Jobs Available
Budget Analyst

Budget analysis, in a nutshell, entails thoroughly analyzing the details of a financial budget. The budget analysis aims to better understand and manage revenue. Budget analysts assist in the achievement of financial targets, the preservation of profitability, and the pursuit of long-term growth for a business. Budget analysts generally have a bachelor's degree in accounting, finance, economics, or a closely related field. Knowledge of Financial Management is of prime importance in this career.

4 Jobs Available
Operations Manager

Individuals in the operations manager jobs are responsible for ensuring the efficiency of each department to acquire its optimal goal. They plan the use of resources and distribution of materials. The operations manager's job description includes managing budgets, negotiating contracts, and performing administrative tasks.

3 Jobs Available
Finance Executive

A career as a Finance Executive requires one to be responsible for monitoring an organisation's income, investments and expenses to create and evaluate financial reports. His or her role involves performing audits, invoices, and budget preparations. He or she manages accounting activities, bank reconciliations, and payable and receivable accounts.  

3 Jobs Available
Data Analyst

The invention of the database has given fresh breath to the people involved in the data analytics career path. Analysis refers to splitting up a whole into its individual components for individual analysis. Data analysis is a method through which raw data are processed and transformed into information that would be beneficial for user strategic thinking.

Data are collected and examined to respond to questions, evaluate hypotheses or contradict theories. It is a tool for analyzing, transforming, modeling, and arranging data with useful knowledge, to assist in decision-making and methods, encompassing various strategies, and is used in different fields of business, research, and social science.

3 Jobs Available
Product Manager

A Product Manager is a professional responsible for product planning and marketing. He or she manages the product throughout the Product Life Cycle, gathering and prioritising the product. A product manager job description includes defining the product vision and working closely with team members of other departments to deliver winning products.  

3 Jobs Available
Investment Banker

An Investment Banking career involves the invention and generation of capital for other organizations, governments, and other entities. Individuals who opt for a career as Investment Bankers are the head of a team dedicated to raising capital by issuing bonds. Investment bankers are termed as the experts who have their fingers on the pulse of the current financial and investing climate. Students can pursue various Investment Banker courses, such as Banking and Insurance, and Economics to opt for an Investment Banking career path.

3 Jobs Available

An underwriter is a person who assesses and evaluates the risk of insurance in his or her field like mortgage, loan, health policy, investment, and so on and so forth. The underwriter career path does involve risks as analysing the risks means finding out if there is a way for the insurance underwriter jobs to recover the money from its clients. If the risk turns out to be too much for the company then in the future it is an underwriter who will be held accountable for it. Therefore, one must carry out his or her job with a lot of attention and diligence.

3 Jobs Available
Financial Advisor

A career as financial advisor is all about assessing one’s financial situation, understanding what one wants to do with his or her money, and helping in creating a plan to reach one’s financial objectives. An Individual who opts for a career as financial advisor helps individuals and corporations reduce spending, pay off their debt, and save and invest for the future. The financial advisor job description includes working closely with both individuals and corporations to help them attain their financial objectives.

2 Jobs Available
Welding Engineer

Welding Engineer Job Description: A Welding Engineer work involves managing welding projects and supervising welding teams. He or she is responsible for reviewing welding procedures, processes and documentation. A career as Welding Engineer involves conducting failure analyses and causes on welding issues. 

5 Jobs Available
Transportation Planner

A career as Transportation Planner requires technical application of science and technology in engineering, particularly the concepts, equipment and technologies involved in the production of products and services. In fields like land use, infrastructure review, ecological standards and street design, he or she considers issues of health, environment and performance. A Transportation Planner assigns resources for implementing and designing programmes. He or she is responsible for assessing needs, preparing plans and forecasts and compliance with regulations.

3 Jobs Available
Conservation Architect

A Conservation Architect is a professional responsible for conserving and restoring buildings or monuments having a historic value. He or she applies techniques to document and stabilise the object’s state without any further damage. A Conservation Architect restores the monuments and heritage buildings to bring them back to their original state.

2 Jobs Available
Safety Manager

A Safety Manager is a professional responsible for employee’s safety at work. He or she plans, implements and oversees the company’s employee safety. A Safety Manager ensures compliance and adherence to Occupational Health and Safety (OHS) guidelines.

2 Jobs Available
Structural Engineer

A Structural Engineer designs buildings, bridges, and other related structures. He or she analyzes the structures and makes sure the structures are strong enough to be used by the people. A career as a Structural Engineer requires working in the construction process. It comes under the civil engineering discipline. A Structure Engineer creates structural models with the help of computer-aided design software. 

2 Jobs Available

Individuals in the architecture career are the building designers who plan the whole construction keeping the safety and requirements of the people. Individuals in architect career in India provides professional services for new constructions, alterations, renovations and several other activities. Individuals in architectural careers in India visit site locations to visualize their projects and prepare scaled drawings to submit to a client or employer as a design. Individuals in architecture careers also estimate build costs, materials needed, and the projected time frame to complete a build.

2 Jobs Available
Landscape Architect

Having a landscape architecture career, you are involved in site analysis, site inventory, land planning, planting design, grading, stormwater management, suitable design, and construction specification. Frederick Law Olmsted, the designer of Central Park in New York introduced the title “landscape architect”. The Australian Institute of Landscape Architects (AILA) proclaims that "Landscape Architects research, plan, design and advise on the stewardship, conservation and sustainability of development of the environment and spaces, both within and beyond the built environment". Therefore, individuals who opt for a career as a landscape architect are those who are educated and experienced in landscape architecture. Students need to pursue various landscape architecture degrees, such as M.Des, M.Plan to become landscape architects. If you have more questions regarding a career as a landscape architect or how to become a landscape architect then you can read the article to get your doubts cleared. 

2 Jobs Available
Urban Planner

Urban Planning careers revolve around the idea of developing a plan to use the land optimally, without affecting the environment. Urban planning jobs are offered to those candidates who are skilled in making the right use of land to distribute the growing population, to create various communities. 

Urban planning careers come with the opportunity to make changes to the existing cities and towns. They identify various community needs and make short and long-term plans accordingly.

2 Jobs Available
Orthotist and Prosthetist

Orthotists and Prosthetists are professionals who provide aid to patients with disabilities. They fix them to artificial limbs (prosthetics) and help them to regain stability. There are times when people lose their limbs in an accident. In some other occasions, they are born without a limb or orthopaedic impairment. Orthotists and prosthetists play a crucial role in their lives with fixing them to assistive devices and provide mobility.

6 Jobs Available
Veterinary Doctor

A veterinary doctor is a medical professional with a degree in veterinary science. The veterinary science qualification is the minimum requirement to become a veterinary doctor. There are numerous veterinary science courses offered by various institutes. He or she is employed at zoos to ensure they are provided with good health facilities and medical care to improve their life expectancy.

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A career in pathology in India is filled with several responsibilities as it is a medical branch and affects human lives. The demand for pathologists has been increasing over the past few years as people are getting more aware of different diseases. Not only that, but an increase in population and lifestyle changes have also contributed to the increase in a pathologist’s demand. The pathology careers provide an extremely huge number of opportunities and if you want to be a part of the medical field you can consider being a pathologist. If you want to know more about a career in pathology in India then continue reading this article.

5 Jobs Available
Speech Therapist
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Gynaecology can be defined as the study of the female body. The job outlook for gynaecology is excellent since there is evergreen demand for one because of their responsibility of dealing with not only women’s health but also fertility and pregnancy issues. Although most women prefer to have a women obstetrician gynaecologist as their doctor, men also explore a career as a gynaecologist and there are ample amounts of male doctors in the field who are gynaecologists and aid women during delivery and childbirth. 

4 Jobs Available

An oncologist is a specialised doctor responsible for providing medical care to patients diagnosed with cancer. He or she uses several therapies to control the cancer and its effect on the human body such as chemotherapy, immunotherapy, radiation therapy and biopsy. An oncologist designs a treatment plan based on a pathology report after diagnosing the type of cancer and where it is spreading inside the body.

3 Jobs Available

The audiologist career involves audiology professionals who are responsible to treat hearing loss and proactively preventing the relevant damage. Individuals who opt for a career as an audiologist use various testing strategies with the aim to determine if someone has a normal sensitivity to sounds or not. After the identification of hearing loss, a hearing doctor is required to determine which sections of the hearing are affected, to what extent they are affected, and where the wound causing the hearing loss is found. As soon as the hearing loss is identified, the patients are provided with recommendations for interventions and rehabilitation such as hearing aids, cochlear implants, and appropriate medical referrals. While audiology is a branch of science that studies and researches hearing, balance, and related disorders.

3 Jobs Available
Dental Surgeon

A Dental Surgeon is a professional who possesses specialisation in advanced dental procedures and aesthetics. Dental surgeon duties and responsibilities may include fitting dental prosthetics such as crowns, caps, bridges, veneers, dentures and implants following apicoectomy and other surgical procedures.

2 Jobs Available

For an individual who opts for a career as an actor, the primary responsibility is to completely speak to the character he or she is playing and to persuade the crowd that the character is genuine by connecting with them and bringing them into the story. This applies to significant roles and littler parts, as all roles join to make an effective creation. Here in this article, we will discuss how to become an actor in India, actor exams, actor salary in India, and actor jobs. 

4 Jobs Available

Individuals who opt for a career as acrobats create and direct original routines for themselves, in addition to developing interpretations of existing routines. The work of circus acrobats can be seen in a variety of performance settings, including circus, reality shows, sports events like the Olympics, movies and commercials. Individuals who opt for a career as acrobats must be prepared to face rejections and intermittent periods of work. The creativity of acrobats may extend to other aspects of the performance. For example, acrobats in the circus may work with gym trainers, celebrities or collaborate with other professionals to enhance such performance elements as costume and or maybe at the teaching end of the career.

3 Jobs Available
Video Game Designer

Career as a video game designer is filled with excitement as well as responsibilities. A video game designer is someone who is involved in the process of creating a game from day one. He or she is responsible for fulfilling duties like designing the character of the game, the several levels involved, plot, art and similar other elements. Individuals who opt for a career as a video game designer may also write the codes for the game using different programming languages.

Depending on the video game designer job description and experience they may also have to lead a team and do the early testing of the game in order to suggest changes and find loopholes.

3 Jobs Available
Radio Jockey

Radio Jockey is an exciting, promising career and a great challenge for music lovers. If you are really interested in a career as radio jockey, then it is very important for an RJ to have an automatic, fun, and friendly personality. If you want to get a job done in this field, a strong command of the language and a good voice are always good things. Apart from this, in order to be a good radio jockey, you will also listen to good radio jockeys so that you can understand their style and later make your own by practicing.

A career as radio jockey has a lot to offer to deserving candidates. If you want to know more about a career as radio jockey, and how to become a radio jockey then continue reading the article.

3 Jobs Available
2 Jobs Available
Multimedia Specialist

A multimedia specialist is a media professional who creates, audio, videos, graphic image files, computer animations for multimedia applications. He or she is responsible for planning, producing, and maintaining websites and applications. 

2 Jobs Available

An individual who is pursuing a career as a producer is responsible for managing the business aspects of production. They are involved in each aspect of production from its inception to deception. Famous movie producers review the script, recommend changes and visualise the story. 

They are responsible for overseeing the finance involved in the project and distributing the film for broadcasting on various platforms. A career as a producer is quite fulfilling as well as exhaustive in terms of playing different roles in order for a production to be successful. Famous movie producers are responsible for hiring creative and technical personnel on contract basis.

2 Jobs Available
Fashion Blogger

Fashion bloggers use multiple social media platforms to recommend or share ideas related to fashion. A fashion blogger is a person who writes about fashion, publishes pictures of outfits, jewellery, accessories. Fashion blogger works as a model, journalist, and a stylist in the fashion industry. In current fashion times, these bloggers have crossed into becoming a star in fashion magazines, commercials, or campaigns. 

2 Jobs Available
Copy Writer

In a career as a copywriter, one has to consult with the client and understand the brief well. A career as a copywriter has a lot to offer to deserving candidates. Several new mediums of advertising are opening therefore making it a lucrative career choice. Students can pursue various copywriter courses such as Journalism, Advertising, Marketing Management. Here, we have discussed how to become a freelance copywriter, copywriter career path, how to become a copywriter in India, and copywriting career outlook. 

5 Jobs Available

Careers in journalism are filled with excitement as well as responsibilities. One cannot afford to miss out on the details. As it is the small details that provide insights into a story. Depending on those insights a journalist goes about writing a news article. A journalism career can be stressful at times but if you are someone who is passionate about it then it is the right choice for you. If you want to know more about the media field and journalist career then continue reading this article.

3 Jobs Available

For publishing books, newspapers, magazines and digital material, editorial and commercial strategies are set by publishers. Individuals in publishing career paths make choices about the markets their businesses will reach and the type of content that their audience will be served. Individuals in book publisher careers collaborate with editorial staff, designers, authors, and freelance contributors who develop and manage the creation of content.

3 Jobs Available

In a career as a vlogger, one generally works for himself or herself. However, once an individual has gained viewership there are several brands and companies that approach them for paid collaboration. It is one of those fields where an individual can earn well while following his or her passion. 

Ever since internet costs got reduced the viewership for these types of content has increased on a large scale. Therefore, a career as a vlogger has a lot to offer. If you want to know more about the Vlogger eligibility, roles and responsibilities then continue reading the article. 

3 Jobs Available

Individuals in the editor career path is an unsung hero of the news industry who polishes the language of the news stories provided by stringers, reporters, copywriters and content writers and also news agencies. Individuals who opt for a career as an editor make it more persuasive, concise and clear for readers. In this article, we will discuss the details of the editor's career path such as how to become an editor in India, editor salary in India and editor skills and qualities.

3 Jobs Available
Content Writer

Content writing is meant to speak directly with a particular audience, such as customers, potential customers, investors, employees, or other stakeholders. The main aim of professional content writers is to speak to their targeted audience and if it is not then it is not doing its job. There are numerous kinds of the content present on the website and each is different based on the service or the product it is used for.

2 Jobs Available

Individuals who opt for a career as a reporter may often be at work on national holidays and festivities. He or she pitches various story ideas and covers news stories in risky situations. Students can pursue a BMC (Bachelor of Mass Communication), B.M.M. (Bachelor of Mass Media), or MAJMC (MA in Journalism and Mass Communication) to become a reporter. While we sit at home reporters travel to locations to collect information that carries a news value.  

2 Jobs Available

Linguistic meaning is related to language or Linguistics which is the study of languages. A career as a linguistic meaning, a profession that is based on the scientific study of language, and it's a very broad field with many specialities. Famous linguists work in academia, researching and teaching different areas of language, such as phonetics (sounds), syntax (word order) and semantics (meaning). 

Other researchers focus on specialities like computational linguistics, which seeks to better match human and computer language capacities, or applied linguistics, which is concerned with improving language education. Still, others work as language experts for the government, advertising companies, dictionary publishers and various other private enterprises. Some might work from home as freelance linguists. Philologist, phonologist, and dialectician are some of Linguist synonym. Linguists can study French, German, Italian

2 Jobs Available
Welding Engineer

Welding Engineer Job Description: A Welding Engineer work involves managing welding projects and supervising welding teams. He or she is responsible for reviewing welding procedures, processes and documentation. A career as Welding Engineer involves conducting failure analyses and causes on welding issues. 

5 Jobs Available
QA Manager
4 Jobs Available
Production Manager
3 Jobs Available
Product Manager

A Product Manager is a professional responsible for product planning and marketing. He or she manages the product throughout the Product Life Cycle, gathering and prioritising the product. A product manager job description includes defining the product vision and working closely with team members of other departments to deliver winning products.  

3 Jobs Available
Quality Controller

A quality controller plays a crucial role in an organisation. He or she is responsible for performing quality checks on manufactured products. He or she identifies the defects in a product and rejects the product. 

A quality controller records detailed information about products with defects and sends it to the supervisor or plant manager to take necessary actions to improve the production process.

3 Jobs Available
Production Engineer

A career as a Production Engineer is crucial in the manufacturing industry. He or she ensures the functionality of production equipment and machinery to improve productivity and minimise production costs to drive revenues and increase profitability. 

2 Jobs Available
Commercial Manager

A Commercial Manager negotiates, advises and secures information about pricing for commercial contracts. He or she is responsible for developing financial plans in order to maximise the business's profitability.

2 Jobs Available
Garment Technologist

From design to manufacture, garment technologists oversee every stage of clothing production. Individuals are actively engaged in determining the perfect fabric and ensuring that production remains inside the budget. Garment Technologists operate very closely with the designing team, pattern cutters and consumers.

2 Jobs Available
AWS Solution Architect

An AWS Solution Architect is someone who specializes in developing and implementing cloud computing systems. He or she has a good understanding of the various aspects of cloud computing and can confidently deploy and manage their systems. He or she troubleshoots the issues and evaluates the risk from the third party. 

4 Jobs Available
QA Manager
4 Jobs Available
Azure Administrator

An Azure Administrator is a professional responsible for implementing, monitoring, and maintaining Azure Solutions. He or she manages cloud infrastructure service instances and various cloud servers as well as sets up public and private cloud systems. 

4 Jobs Available
Information Security Manager

Individuals in the information security manager career path involves in overseeing and controlling all aspects of computer security. The IT security manager job description includes planning and carrying out security measures to protect the business data and information from corruption, theft, unauthorised access, and deliberate attack 

3 Jobs Available
Computer Programmer

Careers in computer programming primarily refer to the systematic act of writing code and moreover include wider computer science areas. The word 'programmer' or 'coder' has entered into practice with the growing number of newly self-taught tech enthusiasts. Computer programming careers involve the use of designs created by software developers and engineers and transforming them into commands that can be implemented by computers. These commands result in regular usage of social media sites, word-processing applications and browsers.

3 Jobs Available
Product Manager

A Product Manager is a professional responsible for product planning and marketing. He or she manages the product throughout the Product Life Cycle, gathering and prioritising the product. A product manager job description includes defining the product vision and working closely with team members of other departments to deliver winning products.  

3 Jobs Available
ITSM Manager
3 Jobs Available
IT Consultant

An IT Consultant is a professional who is also known as a technology consultant. He or she is required to provide consultation to industrial and commercial clients to resolve business and IT problems and acquire optimum growth. An IT consultant can find work by signing up with an IT consultancy firm, or he or she can work on their own as independent contractors and select the projects he or she wants to work on.

2 Jobs Available
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