EnvisionRiskRaas


NameEnvisionRiskRaas JSON
Version 0.1.0 PyPI version JSON
download
home_page
SummaryEnvisionRisk's Risk as a service package
upload_time2023-07-18 19:02:49
maintainer
docs_urlNone
author
requires_python>=3.7
license
keywords
VCS
bugtrack_url
requirements No requirements were recorded.
Travis-CI No Travis.
coveralls test coverage No coveralls.
            # Example Package

Delve into the world of EnvisionRisk’s R package, your portal to our sophisticated Market Risk-as-a-Service (RaaS). This comprehensive tool allows you to tap into our cutting-edge risk management services, retrieve relevant data, perform complex calculations, and generate actionable insights, all without leaving your R programming environment. Embrace this smarter, efficient approach to handling market risk.

Are you navigating the volatile waters of financial uncertainties, seeking to make strategic decisions? Allow EnvisionRisk’s Cloud Service to be your compass, providing a precise mechanism for quantifying market risks. Replace guesswork with certainty; our platform furnishes you with standardized metrics designed to enhance cost-efficiency and fortify your financial bulwark.

Our REST API, a seamless blend of security and user-friendliness, stands as your reliable tool for everyday risk quantification. Transform data into actionable steps and unravel the potential concealed within the labyrinth of financial complexities.

With an expansive coverage spanning more than 13,000 exchange-traded and over-the-counter instruments—and continuously growing—EnvisionRisk is primed to adapt to your ever-evolving needs.

Join the EnvisionRisk community today. Convert your market insights into solid foresights, and consistently maintain a competitive edge in the ever-fluctuating financial market. Stay not just in the game, but ahead of it.
[Github-flavored Markdown](https://github.com/EnvisionRisk)

Although the following example may appear simple, it’s designed to illustrate how our service functions by requesting the simulated profit/loss (P/L) distribution for a single instrument — Apple (AAPL.US) as of 2023-06-28. Remember, this is just a starting point; our service also allows you to request simulated P/L distribution for your custom portfolios. Through this, you gain invaluable insights into potential future outcomes, enabling you to make informed investment decisions.

The Profit and Loss (P/L) distribution is a crucial component in the world of market risk management as it provides a quantitative way of understanding potential financial outcomes. Here’s why it plays an essential role:

Risk Assessment: The P/L distribution represents the range of possible gains and losses that a portfolio might experience. It allows risk managers to visualize and quantify potential risks. For example, the tails of the distribution give insight into extreme events and potential for significant losses, enabling a comprehensive risk assessment.

Risk Measures Calculation: Key risk measures, like Value at Risk (VaR) and Expected Shortfall (ES), are derived from the P/L distribution. VaR estimates the potential loss a portfolio could face over a given period with a certain level of confidence, while ES provides the expected loss given that a loss exceeds the VaR threshold. These metrics help risk managers understand the risk landscape better and make informed decisions.

Portfolio Optimization: By understanding the P/L distribution, managers can optimize the portfolio for desired outcomes. It allows them to adjust the portfolio composition to control the risk, striking a balance between risk and return.

Regulatory Compliance: Regulators often require financial institutions to maintain capital reserves based on potential losses, which are derived from P/L distributions. Hence, understanding the P/L distribution is crucial to meet these regulatory requirements.

Stress Testing: Stress testing involves applying extreme but plausible hypothetical scenarios to the P/L distribution to assess the portfolio’s resilience. This helps managers prepare for unexpected market events and ensure that the portfolio can withstand adverse conditions.

Therefore, P/L distribution serves as a key pillar of market risk management, providing insights into potential risks, informing decision-making, enabling portfolio optimization, and ensuring regulatory compliance.
            

Raw data

            {
    "_id": null,
    "home_page": "",
    "name": "EnvisionRiskRaas",
    "maintainer": "",
    "docs_url": null,
    "requires_python": ">=3.7",
    "maintainer_email": "",
    "keywords": "",
    "author": "",
    "author_email": "Jonas Hal <jonas.hal@envisionrisk.com>",
    "download_url": "https://files.pythonhosted.org/packages/ad/5e/7d144371e4de3cd98a9b068e4721e14a877d7f8b05043a0151366c1121bf/envisionriskraas-0.1.0.tar.gz",
    "platform": null,
    "description": "# Example Package\n\nDelve into the world of EnvisionRisk\u2019s R package, your portal to our sophisticated Market Risk-as-a-Service (RaaS). This comprehensive tool allows you to tap into our cutting-edge risk management services, retrieve relevant data, perform complex calculations, and generate actionable insights, all without leaving your R programming environment. Embrace this smarter, efficient approach to handling market risk.\n\nAre you navigating the volatile waters of financial uncertainties, seeking to make strategic decisions? Allow EnvisionRisk\u2019s Cloud Service to be your compass, providing a precise mechanism for quantifying market risks. Replace guesswork with certainty; our platform furnishes you with standardized metrics designed to enhance cost-efficiency and fortify your financial bulwark.\n\nOur REST API, a seamless blend of security and user-friendliness, stands as your reliable tool for everyday risk quantification. Transform data into actionable steps and unravel the potential concealed within the labyrinth of financial complexities.\n\nWith an expansive coverage spanning more than 13,000 exchange-traded and over-the-counter instruments\u2014and continuously growing\u2014EnvisionRisk is primed to adapt to your ever-evolving needs.\n\nJoin the EnvisionRisk community today. Convert your market insights into solid foresights, and consistently maintain a competitive edge in the ever-fluctuating financial market. Stay not just in the game, but ahead of it.\n[Github-flavored Markdown](https://github.com/EnvisionRisk)\n\nAlthough the following example may appear simple, it\u2019s designed to illustrate how our service functions by requesting the simulated profit/loss (P/L) distribution for a single instrument \u2014 Apple (AAPL.US) as of 2023-06-28. Remember, this is just a starting point; our service also allows you to request simulated P/L distribution for your custom portfolios. Through this, you gain invaluable insights into potential future outcomes, enabling you to make informed investment decisions.\n\nThe Profit and Loss (P/L) distribution is a crucial component in the world of market risk management as it provides a quantitative way of understanding potential financial outcomes. Here\u2019s why it plays an essential role:\n\nRisk Assessment: The P/L distribution represents the range of possible gains and losses that a portfolio might experience. It allows risk managers to visualize and quantify potential risks. For example, the tails of the distribution give insight into extreme events and potential for significant losses, enabling a comprehensive risk assessment.\n\nRisk Measures Calculation: Key risk measures, like Value at Risk (VaR) and Expected Shortfall (ES), are derived from the P/L distribution. VaR estimates the potential loss a portfolio could face over a given period with a certain level of confidence, while ES provides the expected loss given that a loss exceeds the VaR threshold. These metrics help risk managers understand the risk landscape better and make informed decisions.\n\nPortfolio Optimization: By understanding the P/L distribution, managers can optimize the portfolio for desired outcomes. It allows them to adjust the portfolio composition to control the risk, striking a balance between risk and return.\n\nRegulatory Compliance: Regulators often require financial institutions to maintain capital reserves based on potential losses, which are derived from P/L distributions. Hence, understanding the P/L distribution is crucial to meet these regulatory requirements.\n\nStress Testing: Stress testing involves applying extreme but plausible hypothetical scenarios to the P/L distribution to assess the portfolio\u2019s resilience. This helps managers prepare for unexpected market events and ensure that the portfolio can withstand adverse conditions.\n\nTherefore, P/L distribution serves as a key pillar of market risk management, providing insights into potential risks, informing decision-making, enabling portfolio optimization, and ensuring regulatory compliance.",
    "bugtrack_url": null,
    "license": "",
    "summary": "EnvisionRisk's Risk as a service package",
    "version": "0.1.0",
    "project_urls": {
        "GitHub profile": "https://github.com/EnvisionRisk",
        "Homepage": "https://www.envisionrisk.com/"
    },
    "split_keywords": [],
    "urls": [
        {
            "comment_text": "",
            "digests": {
                "blake2b_256": "54c62c05eaf7d02663369f77f226315a769fef76379d1a65c670d64cd768c8a1",
                "md5": "1a82c848b893330b094fdd3f409c404f",
                "sha256": "2ba7e3cd7874fadcc13ae9be160f70f4fa457d8688a50e28c3650c65c9074bf6"
            },
            "downloads": -1,
            "filename": "envisionriskraas-0.1.0-py3-none-any.whl",
            "has_sig": false,
            "md5_digest": "1a82c848b893330b094fdd3f409c404f",
            "packagetype": "bdist_wheel",
            "python_version": "py3",
            "requires_python": ">=3.7",
            "size": 14779,
            "upload_time": "2023-07-18T19:02:48",
            "upload_time_iso_8601": "2023-07-18T19:02:48.043134Z",
            "url": "https://files.pythonhosted.org/packages/54/c6/2c05eaf7d02663369f77f226315a769fef76379d1a65c670d64cd768c8a1/envisionriskraas-0.1.0-py3-none-any.whl",
            "yanked": false,
            "yanked_reason": null
        },
        {
            "comment_text": "",
            "digests": {
                "blake2b_256": "ad5e7d144371e4de3cd98a9b068e4721e14a877d7f8b05043a0151366c1121bf",
                "md5": "0b6f2b647e3d75538783e5b044dcd9ad",
                "sha256": "b1598315b4dc9b5cfbd53198e266d792c61714d2e0e3eb5b6817a87f58f28eb8"
            },
            "downloads": -1,
            "filename": "envisionriskraas-0.1.0.tar.gz",
            "has_sig": false,
            "md5_digest": "0b6f2b647e3d75538783e5b044dcd9ad",
            "packagetype": "sdist",
            "python_version": "source",
            "requires_python": ">=3.7",
            "size": 13886,
            "upload_time": "2023-07-18T19:02:49",
            "upload_time_iso_8601": "2023-07-18T19:02:49.226921Z",
            "url": "https://files.pythonhosted.org/packages/ad/5e/7d144371e4de3cd98a9b068e4721e14a877d7f8b05043a0151366c1121bf/envisionriskraas-0.1.0.tar.gz",
            "yanked": false,
            "yanked_reason": null
        }
    ],
    "upload_time": "2023-07-18 19:02:49",
    "github": false,
    "gitlab": false,
    "bitbucket": false,
    "codeberg": false,
    "lcname": "envisionriskraas"
}
        
Elapsed time: 1.71175s