Monday, 25 September 2023

Indian Reservation

 

Reservation in India: Know everything about Reservation system in detail

As soon as India gained independence, reservations were incorporated into the constitution to acknowledge the historical injustice done to members of underprivileged groups and to put policies in place to give them better access to resources and opportunities.

In India, reservations were first implemented:

  • To make amends for historical wrongs committed against India’s lower classes

  • To guarantee that individuals from all castes are equally represented in the state- and federally-funded programs

  • To provide everyone with a level playing field regardless of caste

  • To uplift and improve the underprivileged groups

“Let us understand the whole concept of Reservation in detail. This article includes the provisions related to Reservations, a brief history, and some landmark cases.”

Reservation system in India

In India, reservations are a form of affirmative action that works to give a predetermined number of seats in social and educational institutions to various underrepresented communities. It is made in response to the discrimination by members of upper castes in India. As a result, when India won independence, the constitution included a clause requiring a certain community to have a certain level of representation in various sectors.

Caste reservation in India

Reservations under the Constitution for socially and economically disadvantaged groups are intended to give those members of the scheduled castes and scheduled tribes access to jobs and education.

Why is there reservation in India?

The main aim of the Indian Constitution is to provide a certain level of security to the citizens of India regarding equality of status and opportunity and to promote all fraternity assuring the dignity of the individual and the unity and integrity of the nation (as stated in the preamble).

When did SC ST reservation start in India? 

Reservation was a known concept in India for a very long period. Let’s know the history of reservations in India.

  • Reservation was there at the time when the Britishers ruled India.

  • It is generally thought of as who decides reservation in India. Originally, William Hunter and Jyotirao Phule in 1882 conceived the idea of a caste-based reservation system. When the Hunter Commission was established in 1882, Mahatma Jyotirao Phule urged that all citizens have free, mandatory education and government employment.

  • In 1902, a notification established 50% of service reservations for economically disadvantaged people in the state of Kolhapur. This was India's first notification establishing a reservation for the benefit of the country's underprivileged.

  • Reservation was instituted in 1908 in support of the castes and communities that participated in the administration under British rule.

  • The Morley Minto Reforms, also known as the Government of India Act of 1909, contained provisions made in 1909.

  • The Government of India Act of 1919 introduced provisions for reservation in 1919. 

  • A GO issued by the Madras Presidency in 1921 allocated 44% of reservations to non-Brahmins, 16% to Muslims, 16% to Anglo-Indian Christians, and 8% to Scheduled Castes.

  • The Government of India Act 1935 included provisions for the reservation in 1935.

  • Our Indian Constitution took effect on January 26, 1950.

  • Following independence, the Constituent Assembly, presided over by Dr BR Ambedkar, established the system of reservations. It was first made available for ten years. After ten years, Indian legislators recognized the necessity to retain the system of reservations in place to address decades of racial and cultural prejudice against particular groups in society.

Reservation under Indian Constitution

With the enactment of the Indian Constitution, special provisions were enacted as Article 15 and Article 16 for the advancement of backward classes. 

"Equality may be a fiction, but nonetheless one must accept it as a governing principle"- Dr Bhimrao Ramji Ambedkar

Article 14 highlights the concept of equality before the law and equal protection of laws. While the first is considered negative in nature because it denies special privileges in favour of an individual, whereas the concept of equal protection of laws states that individuals at equal levels should be treated equally. 

Article 15(4) provides the special provision for advancing any socially and educationally backward class of citizens or for the Scheduled castes and Scheduled Tribes. In order to ensure proper representation of marginalized groups like SCs, STs, and OBCs in educational institutions, public jobs, and the legislature, the state can use this to create special policies. 

Reservation Percentage in India

The reality of reservation in India - Reservation to the SCs, STs and OBCs in case of direct recruitment on an India basis by open competition is given at the rate of 15%, 7.5% and 27%, respectively. EWS category holds 10% reservation.

The State of Madras v. Champakam Dorairajan (1951) judgment led to the addition of this subsection (4) by the First Constitutional Amendment Act, 1951. Specifically, the Madras Government has reserved places in State engineering and medical institutes for various communities based on classes, religion, and race. This was challenged before the court as it violates Article 15 (1) of the Constitution. The state defended the law because it was created to advance social fairness for all community members, as required by the DPSP's Article 46. The SC held that the statute invalidates seat reservations based on race, religion, and caste (caste reservation in India) since it categorized students based on their castes, religions, and other factors rather than their academic ability. Clause (4) was inserted into Article 15 to mitigate the impact of the aforementioned SC judgment. This Article gives the STATE the authority to make specific provisions for the scheduled castes and scheduled tribes and for socially and educationally marginalized classes of citizens. Article 15(4) is merely an enabling clause; the state is not required to take any special action by it. If necessary, the state may make a reservation.

For making a reservation under clause (4) of Article 15, two elements are to be determined

1) Who are socially and educationally backward classes? 

2) What is the limit of reservation?

The First Backward Classes Commission was established in 1953 by the President of India per Article 340 of the constitution and was presided over by Kaka Kalelkar. The panel may recommend actions that the federal and state governments should take to ease the struggles of the socially and educationally underprivileged. 

On March 30, 1955, the Kaka Kalelkar commission turned in its final report. It had compiled a list of some of the commission's recommendations, which were as follows:

  • Keeping a caste-based population count in the census of 1961.

  • Treating all women as a class and reserving 70% of places in all professional institutions for members of underprivileged groups.

  • Reserving OBC candidates for open positions in all local government positions and agencies

The commission's recommendation was not accepted by the chairman, Mr. Kaka Kalelkar, because the report contained ambiguities. He opposed the commission's proposal in a letter to the president. However, the Central Government did not accept the Commission's report since it did not meet the requirements.

In M.R Balaji v. the State of Mysore (1962), an order was issued by the Mysore government under Article 15(4) reserving the seats in the medical and engineering colleges of the state as follows-

  1. Backward and More backward classes 50%

  2. Scheduled castes 15%, and 

  3. Scheduled tribes 3%. 

“Thus, a total of 68% of seats were reserved. The validity of this order was challenged by the candidates who didn’t get admission. Court held that sub-classification made by order between backward and more backward was not justified under Article 15 (4). It was also held that the ‘caste’ should not be the only basis for determining backwardness. ‘Backwardness’ must be social and educational, not social or educational.”

In 1979, the Janata Party Government declared a second backward classes commission, popularly known as the Mandal Commission, with its’s chairman Mr B.P. Mandal. The Commission adopted the following criteria for identifying the socially and educationally backward classes:

1. Social criteria, 

2. Educational criteria, and 

3. Economic criteria. 

The commission submitted its report in December 1980. It stated that the OBC population was around 52% of the total population of India, including Hindus and non-Hindus. The commission recommended a 27% reservation for the OBC. Long after the Mandal report was submitted, nothing was done in response to it. The commission primarily associated castes with underprivileged classes and largely disregarded the economic test.

Following the release of the backward class commission's report, the SC was once more presented with the Vasant Kumar case (1985) when it came to classifying the backward classes. The SC judges unanimously decided that "caste" should not be the only factor in determining backwardness.

The Supreme Court made a key ruling in the Indira Sawhney v. UOI (1992), also known as the Mandal Commission case, regarding the issue of post-reservation for members of the underprivileged classes. The V.P. Singh government accepted the Mandal commission's recommendation at the centre in 1990 and announced 27% reservation for socially and educationally disadvantaged sections for open positions in civil service and other government of India jobs. The memorandum was challenged before the SC, and the nine judges took it into consideration. The main positive facet of the SC can be highlighted here- 

1. Overall reservation is limited to a maximum of 50% in a year. 

2. Creamy layer should be excluded from the backward class.

Article 16 (4) provides for the reservation of appointments and posts in favour of any backward class of citizens who, in the opinion of the state, are not adequately represented in the services under the state.

Article 16(4) is applied only when the following conditions are fulfilled:

  1. The class of citizens is backward

  2. The said class is not adequately represented in the services of the state.

In Devadasan v. UOI (1964), the SC considered the application of Article 16(4). In this case, the constitutional validity of the government's "carry forward rule" meant to control the hiring of members of underprivileged groups to public employment, was at stake. According to this rule, the open positions would be filled by fresh candidates who were available if there weren't enough candidates who belonged to the SC/ST group to fill the reserved quota. However, a corresponding number of posts would be reserved for SC/ST in the following year in addition to their reserved quota for that year. 

The "carry forward rule" was declared illegal by the court. However, the SC reversed the Devadasan case in the Mandal Commission case and stated that the "carry forward rule" is lawful as long as it does not exceed 50% of vacancies in a given year. The SC rendered the following ruling in this matter. 

a) Creamy layer needs to be removed from the lower classes,

b) Classification of backward groups into backward and more backward is permitted, unlike in the Balaji case.

c) Reservations cannot be made more than 50%

d) No reservation in Promotion

The government passed the Constitution 77th Amendment Act, 1995 to negate the "no reservation in promotion" point, and as a result, a new clause (4A) was added to Article 16.

Important Articles of the constitution concerning Reserved Category

  • Article 15 (5) By the 93rd amendment,2006, the provision of Reservation for Backward, SC, and ST classes in private educational institutions have been added.

  • Article 16 (4B) The constitutional 81st Amendment Act of 2000 included Article 16 (4 B), which allows the state to fill the unfilled SC/ST-reserved vacancies of a year in the following year, erasing the requirement of a minimum of 50% reservation on the total number of vacancies of that year.

  • Article 39 A – Under Directive Principles of State Policy – States have to ensure justice and free legal aid to Economically Backward Classes.

  • Article 341 gives the power to the President to notify which castes in the nation and specific states are to be considered Scheduled Castes.

  • Article 342 gives the power to the President to notify which castes in the nation and specific states are to be considered as Scheduled Tribes 

  • Article 342 A gives the power to the President to notify which castes in the nation and specific states are to be considered Backward Classes 

  • Article 338, 338 A, and 338 B mandate the creation of a National Commission for Scheduled Castes, Scheduled Tribes, and Backward classes

  • Article 330 and 332 provide for specific reservation of SCs and STs in the Parliament and in the State Legislative Assembly 

  • Article 243D provides for reservation of seats in panchayat for SCs and STs

  • Article 233T provides for the reservation of seats in every municipality for SCs and STs

  • Article 335 states that to maintain the administration's effectiveness, the demands of SCs and STs must be taken into account.

  • The Constitution's Fifth Schedule specifies the rules for managing Scheduled areas. In states with Scheduled Tribes but without Scheduled Areas, it guarantees the creation of Tribes Advisory Councils with three-fourths representation from the local tribes.

  • The legislature introduced the new reservation in the 103rd Constitutional Amendment Act of 2019. This amendment created a 10% reservation for the EWS or economically weaker sections of the society. It gives EWS preference for employment in the public sector and admittance to both public and private educational institutions.

Recent Landmark cases 

  1. Maratha Quota Case (2021)

According to a five-judge Supreme Court constitution bench, reservations beyond the 50% ceiling limit are unconstitutional. The Maharashtra State Reservation for Socially and Educationally Backward Classes (SEBC) Act, 2018, which extended reservation to the Maratha community in public education and employment in excess of the ceiling limit of 50% fixed by the Supreme Court earlier, was overturned by the bench of Justices Ashok Bhushan, L. Nageswara Rao, S. Abdul Nazeer, Hemant Gupta, and S. Ravindra Bhat.

  1. Neil Aurelio Nunes and Ors v UOI and Ors (2021)

This landmark judgment on equality law changed the narrow definition of equality from "formal equality," or treating everyone equally, to "substantive equality," or equality in the distributive sense. The court expanded the definition of merit and held that it could not be judged solely based on a person's success in an open examination; rather, it must be considered in the context of "conditions and circumstances that prevent equal access to the enjoyment of basic rights or claims" to the underprivileged and underrepresented communities.

Conclusion 

The reservation policy in India was designed as affirmative action to uplift marginalised groups, ensuring their inclusion in society. As we navigate the future, it is essential to strike a balance between social justice and maintaining a level playing field to ensure a fair and inclusive society without compromising effectiveness and merit.

Tuesday, 25 July 2023

DATA WAREHOUSEING TOOLS

 

Top Data Warehousing Tools in 2023

 

A data warehouse is a data management system for data reporting, analysis, and storage. It is an enterprise data warehouse and is part of business intelligence. Data from one or more diverse sources is stored in data warehouses, which are central repositories. Data warehouses are analytical tools designed to assist reporting users across multiple departments in making decisions. Data warehouses collect historical business and organizational data so that it can be evaluated and insights can be drawn from it. This helps develop a uniform system of truth for the entire organization.

Due to cloud computing technologies, the cost and difficulty of creating data warehousing for businesses have been dramatically lowered. Previously, enterprises had to invest much in infrastructure. Physical data centers are making way for cloud-based data warehouses and their tools. Many large enterprises still use the old data warehousing method, but it is evident that the cloud is where the data warehouse will function in the future. The pay-per-use cloud-based data warehousing technologies are quick, effective, and highly scalable.

Importance of Data Warehouse

To meet the continuously shifting needs of business, modern data warehousing solutions automate the repetitive tasks of designing, developing, and putting in place a data warehouse architecture. Because of this, many companies use data warehouse tools to acquire thorough insights.

From the above, you can see how Data Warehousing has grown crucial for large and medium-sized enterprises. Data Warehouse facilitates the team’s access to data and helps them draw conclusions from the information and merge data from many sources. Consequently, corporations employ data warehouse tools for the following objectives:

  • To learn about operational and strategic issues.
  • Speed up the systems for decision-making and assistance.
  • Analyze and evaluate the results of marketing initiatives.
  • Analyze your employees’ performance.
  • Watch consumer trends and predict the following business cycle.
The most well-liked data warehouse tools on the market are listed below.
Amazon Redshift

A cloud-based data warehousing tool for businesses is called Redshift. The fully managed platform can quickly process petabytes of data. It is hence appropriate for high-speed data analytics. Additionally, automated concurrency scaling is supported. The automation alters the resources allocated for query processing to meet workload requirements. With no operational overhead, you can run hundreds of queries concurrently. Redshift additionally enables you to scale your cluster or change the node type. As a result, it allows you to improve data warehouse performance and save operating expenses.

Microsoft Azure

Microsoft’s Azure SQL Data Warehouse is a relational database hosted in the cloud. It can be optimized for real-time reporting and petabyte-scale data loading and processing. The platform uses massively parallel processing and a node-based architecture (MPP). The architecture is appropriate for query optimization for parallel processing. As a result, it makes it considerably quicker for you to extract and visualize business insights.

Hundreds of MS Azure resources are compatible with the data warehouse. For instance, you could use the platform’s machine-learning technologies to create clever apps. Additionally, you can store many kinds of structured and unstructured data on the forum. The information may come from various sources, including IoT devices and on-premises SQL databases.

Google BigQuery

BigQuery is a data warehousing platform with built-in machine learning capabilities that are reasonably priced. It may be combined with TensorFlow and Cloud ML to build effective AI models. For real-time analytics, it can also run queries on petabytes of data in a matter of seconds.

Geospatial analytics are supported by this cloud-native data warehouse. You can use it to evaluate location-based data or look for new business opportunities. BigQuery may divide storage from the computation. As a result, you can scale processor and memory resources by business requirements. You may control each resource’s cost, availability, and scalability by separating them.

Snowflake

Create an enterprise-grade cloud data warehouse with Snowflake. You can evaluate data from various organized and unstructured sources with the program. Processing power and storage are separated by the shared, multi-cluster architecture. As a result, it enables you to scale CPU resources by user activity. Scalability speeds up querying performance to provide valuable insights more quickly. You can instantly exchange data around your organization because of Snowflake’s multi-tenant design. This can be accomplished without relocating any data.

Micro Focus Vertica

Vertica is a SQL data warehouse that can be accessed online using services like AWS and Azure. It can also be set up locally or as a hybrid. The tool leverages MPP to speed up queries and supports columnar storage. The architecture’s shared-nothing design lessens competition for shared resources.

Vertica has built-in analytics tools. These consist of time series, pattern matching, and machine learning. Compression is used by the program to maximize storage. Additionally, it supports standard programming interfaces like OLEDB.

Teradata

Teradata is a data warehousing platform for gathering and processing enormous volumes of business data online. The utility provides an architecture for rapid parallel querying. It expedites access to helpful information in this way. QueryGrid from Teradata offers best-fit engineering. It accomplishes this by utilizing several analytical engines to give the appropriate tool for the task.

Additionally, it uses intelligent in-memory processing to enhance database performance at no additional expense. The data warehouse interfaces to both paid and free analytical tools via SQL.

Amazon DynamoDB

A scalable NoSQL cloud-based database system for businesses is called DynamoDB. Over petabytes of data, it can increase querying capability to 10 or even 20 trillion daily requests. It also uses key-value and document data management to develop a flexible schema. As a result, tables can automatically scale by adding additional columns in response to expanding demand.

The database system has DynamoDB Accelerator installed (DAX). Thanks to this in-memory cache, the time needed to read tabular data can be reduced from milliseconds to microseconds. As a result, it drives rapid querying operations, including millions of queries per second.

PostgreSQL

A cloud-based open-source database management program is PostgreSQL. The resource can be the central database for SMEs and large businesses. You may use it to power internet-scale corporate apps, for instance. Consider combining PostgreSQL and the PostGIS extension to work with geographical data. You will be able to provide location-based business solutions thanks to the integration.

Querying in JSON and SQL are both supported by the platform. Additionally, technologies like Multi-Version Concurrency Control can be used to improve database performance (MVCC).

Amazon Relational Database Service (RDS)

You may build an affordable cloud-based relational database using Amazon RDS. The platform supports six database engines, including PostgreSQL and Amazon Aurora. When you need to serve high-volume applications, they are a choice. Replication might be created to increase the system’s availability for operational workflows. You can direct read traffic away from your primary database and toward virtual replicas, for example, using Read Replicas. Additionally, you can grow your RDS memory and processing power up to 244 GB of RAM and 32 virtual CPUs.

Amazon Simple Storage Service S3

Small and large businesses can use Amazon S3 to scale up their online storage demands. Big data analytics are supported by scalable, object-oriented services. Each of the “buckets” used to store data has a maximum capacity of 5 terabytes. The platform provides several economic storage class alternatives. For instance, using S3 Standard-IA to store only seldom accessed data may result in cost savings.

SAP HANA

A cloud-based resource with in-memory caching features is SAP HANA. As a result, it supports enterprise-wide data analytics and high-speed, real-time transaction processing. Additionally, it offers a straightforward, centralized interface for virtualization, integration, and data access.

You can query remote databases via data federation without relocating your data. Hadoop and SAP Adaptive Server Enterprise are some data sources mentioned (SAP ASE). Text, predictive, and intelligence-driven app development are all supported by SAP HANA.

MarkLogic

MarkLogic offers a NoSQL database system with powerful querying and flexible application capabilities. The platform’s schema independence allows you to directly consume data in any format or type. It contains native storage for specified schemas, which explains why. The supported formats include geospatial data, JSON, RDF, and large binaries like films. Once you’ve loaded data, its built-in search engine makes querying easier. You can immediately begin asking inquiries and receiving responses thanks to it.

MariaDB

MariaDB is a commercial-grade database solution that supports client-facing programs. Additionally, you may use it to build a columnar database for real-time analytics. Massive parallel processing (MPP) is also used in the solution. Thus, you may run SQL searches across hundreds of billions of records with it. Indexes don’t have to be made before performing this. In the cloud or according to workload and business requirements, MariaDB may expand out.

Db2 Warehouse

A fully managed, scalable cloud data storage platform is IBM Db2 Warehouse. Applications involving analytics and artificial intelligence are appropriate. The system offers incorporated machine learning resources. These can be used to develop and deploy ML models in the ecosystem. Python and SQL are supported languages for machine learning research.

Additionally, Db2 Warehouse includes a user-friendly UI or REST API. The tools can control the elastic scaling of storage and processing power. The MPP capabilities of the platform are enhanced by several servers. These provide rapid concurrent querying for massive data volumes.

Exadata

Oracle’s “autonomous data warehouse” functions on the Exadata cloud platform. Adaptive machine learning is used by the self-driving platform to automate administrative activities. These include monitoring, updating, safeguarding your database, and optimizing and patching.

It’s simple to build an independent Exadata data warehouse. Start by specifying the tables and quickly loading your data. To improve performance and scalability, the system uses columnar processing and parallelism.

BI360 Data Warehouse

Businesses may combine enormous amounts of data from many sources with Solver BI360. These consist of unstructured data repositories, CRM, ERP, and accounting software. It comes pre-configured to make business intelligence and database deployment operations simpler. The analytics interfaces and dashboards for the cloud-based system are simple to use. The Data Explorer, for instance, can be used to explore data. Additionally, modules and dimensions can be added.

On MS SQL Server, the data warehouse is operated. In addition, it has capabilities for automatic data loading built-in. These make searching and querying databases simple.

Cloudera

The operational database maintained by Cloudera is a low-latency, high-concurrency platform. It’s perfect for deriving real-time business intelligence from extensive data analysis. The resource supports flexible distribution that is both portable and affordable. The ability to switch between on-premises and cloud-based servers is thus made possible by this.

The platform builds columnar NoSQL storage for unstructured data using HBase. But within Cloudera, Kudu aids in the creation of a relational database for structured data. Additionally, the program offers predictive modeling using both current and past data.

Hevo Data

Finding trends and opportunities is simpler when you aren’t concerned about keeping the pipelines in good shape. You can duplicate data from more than 150 sources, including Snowflake, BigQuery, Redshift, Databricks, and Firebolt, in almost real-time with Hevo. Without authoring even one line of code. Therefore, maintenance is a less worrying thing when Hevo is used as your data pipeline platform.

Hevo guarantees zero data loss in the few instances when something goes wrong. Hevo also enables you to keep an eye on your workflow to identify the source of any problems and fix them before they hurt the overall workflow. You now have a dependable tool that puts you in control with more visibility when you add 24-hour customer service to the list.

SAS Cloud

The task of analyzing vast amounts of data is made simpler with SAS. Users can access data from numerous sources utilizing SAS (Statistical Analysis Software), a data warehousing system. Additionally, it provides data that can be controlled and shared among businesses using various information tools and reports.

An internal Quality Knowledge Base (QKB) in SAS is used to store and process data. SAS users can utilize the tool with an internet connection from any location because activities are managed from a single site.

Integrate.io

Integrate.io is a cloud-based data integration platform to create simple, visualized data pipelines for your data warehouse. Integrate.io can centralize all your metrics and sales tools like your automation, CRM, customer support systems, etc. It will combine all of your data sources.

Integrate.io is a flexible and scalable platform for data integration. It can work with structured and unstructured data. It can integrate data with various sources like SQL data stores, NoSQL databases, and cloud storage services.

SAP Data Warehouse Cloud

All of an organization’s business operations are mapped by the integrated data management platform known as SAP Data Warehouse Cloud. It is an elite application bundle for public client/server architectures. It’s one of the best tools available for data warehouses. It has created new standards for providing top industrial data warehousing and management solutions.

Business solutions that are highly adaptive and transparent are available through SAP Data Warehouse. It is designed modularly for simplicity in setup and effective use of space. Both analytics and transactions can be included in a database system. These portable, cross-platform databases are the next generation.

IBM Infosphere

The good ETL tool IBM Infosphere carries out data integration tasks using graphical notations. It offers all the critical components for data integration, warehousing, administration, and data management and governance. A Hybrid Data Warehouse (HDW) and Logical Data Warehouse form the core of this warehousing system (LDW).

A hybrid data warehouse combines many data warehousing technologies to guarantee that the appropriate workload is handled by the right platform. It aids in proactive decision-making and process simplification. It lowers costs and is a potent instrument for enhancing corporate agility.

This tool’s dependability, scalability, and better performance aid in completing demanding projects. It makes sure that end users receive reliable information.

Ab Initio Software

Ab Initio, founded in 1995, offers intuitive data warehousing technologies for parallel data processing applications. It seeks to assist businesses with fourth-generation data analysis tasks, data manipulation, batch processing, and quantitative and qualitative data processing. High-volume data processing and integration are a specialization of the Ab Initio company.

Since the company prefers to preserve a high level of privacy surrounding its products, Ab Initio software is a licensed item. It is a GUI-based program that aims to make the activities of extracting, transforming, and loading data more accessible. An NDA (Non-disclosure Agreement) prohibits anybody involved in this product’s development from publicly disclosing technical information that was developed “ab initio.”

ParAccel (acquired by Actian)

A software company called ParAccel is situated in California and works in the database management and data warehousing sectors. Actian purchased ParAccel in 2013

Maverick & Amigo are two of the company’s primary goods. Maverick is a stand-alone data store in and of itself. It offers DBMS software to businesses in many industries. Still, Amigo is made to improve the speed at which queries are processed when they are typically routed to an existing database.

Later, Amigo was dropped by ParAccel, while Maverick was given a promotion. Maverick progressively transformed into a ParAccel database that supports columnar orientation and uses a shared-nothing architecture.

AnalytiX DS

Analytix DS is an expert in management tools and solutions for data integration and mapping.

Big data services and enterprise-level integration are both extensively supported. Pre-ETL mapping was first used by Analytics pioneer Mike Boggs. Analytix now boasts a sizable multinational staff of service providers and helpers. Its main office is in Virginia, with offices all around North America and Asia. A new development facility is anticipated to open in Bangalore 

Ministry of Rural Development Helping BackStudent

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