Skills Needed To Succeed As A Quant - Andrew, Quantitative Researcher at Citadel

00:05:15
https://www.youtube.com/watch?v=7VJUj85OXzI

Resumen

TLDRThe speaker elaborates on the process of automated trading systems which turn vast sets of data into trades with minimal human involvement. These systems process data to produce portfolio weights for stocks at specific timestamps, which are then optimized into actionable trades. The process for a quant professional mainly involves working closely with data, such as determining which tweets pertain to a company or conducting sentiment analysis to categorize those tweets as positive or negative. These insights are transformed into a final portfolio weight. The intricate nature of transforming numerous datasets into a single informed trading action requires complex machine learning and model construction techniques. Additionally, quants perform post-trade evaluations to refine strategies, ensuring the appropriate balance of portfolio risks and costs. The scope of a quant's responsibility can vary greatly with the size and structure of the trading firm, ranging from specialized roles in larger firms to end-to-end handling in smaller setups.

Para llevar

  • 🤖 Automated trading systems minimize human intervention.
  • 🔄 Data is converted into stocks' portfolio weights.
  • 💼 Quants mainly focus on data transformation.
  • 💡 Sentiment analysis helps gauge tweet sentiment for trading decisions.
  • 📊 Transformation from raw data to trading signals involves complex computations.
  • 🔀 Portfolio construction uses machine learning techniques.
  • 📈 A variety of datasets contribute to trading predictions.
  • 🔧 Post-trade analysis helps in refining trading strategies.
  • 🧑‍💻 Quants play multiple roles, from data analysis to optimization.
  • 🏢 Quant responsibilities vary by firm size and structure.

Cronología

  • 00:00:00 - 00:05:15

    The core activity described involves turning data into trades via automated systems with minimal human intervention. These systems process vast amounts of data to produce portfolio weights per stock per timestamp, which are then optimized to reflect these weights in the market. The task of a quant involves the data transformation journey from raw inputs to actionable trading decisions, heavily emphasizing data analysis and transformation, such as extracting and analyzing sentiment from social media to estimate a company's portfolio weight. This intricate process involves multiple transformations and machine learning techniques to create a final, trade-worthy value, requiring quants to specialize at some point in the assembly line, with roles varying based on company size and structure. Larger firms like Citadel or Two Sigma might offer more specialized roles, whereas smaller firms may require a quant to handle multiple facets of the process.

Mapa mental

Mind Map

Preguntas frecuentes

  • How do quants transform raw data into portfolio weights?

    To transform raw data into portfolio weights, quants apply various mathematical and statistical techniques, including sentiment analysis, data transformation, and optimization.

  • What role does sentiment analysis play in trading systems?

    Sentiment analysis is used to determine the tone of tweets (e.g., positive or negative) about a company, which contributes to forming stock portfolio weights.

  • Why is post-trade analysis important?

    Post-trade analysis helps ensure that the trading strategy is effective and efficient by assessing position sizes, risk allocation, and transaction costs after trades are executed.

  • What types of data sets are used in these trading systems?

    Data sets could include sources like tweets, market prices, related company information, and other financial metrics.

  • What is portfolio construction in the context of trading systems?

    Portfolio construction involves combining various transformed data inputs to create a singular value for trading, using techniques like machine learning to optimize predictions.

  • What are trading signals?

    Signals refer to the individual trading instructions derived from transformed data inputs.

  • What is the function of the optimizer in trading systems?

    The optimizer is responsible for creating the final trade executions while minimizing costs and risks, aligning the trades with the calculated portfolio weights.

  • What roles do quants play in automated trading?

    Quants handle tasks like data collection, analysis, transformation, model fitting, and optimization, essentially managing different parts of the automated trading process.

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Desplazamiento automático:
  • 00:00:05
    yeah so at the very like the very
  • 00:00:10
    essence of what we do is we are trying
  • 00:00:15
    to turn data into trades without any
  • 00:00:21
    real human intervention so we we run
  • 00:00:25
    these automated trading systems that are
  • 00:00:28
    they consume like hundreds or thousands
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    of data sets all these different inputs
  • 00:00:33
    and those data sets are getting
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    transformed in in various ways and the
  • 00:00:40
    end output of a trading system is sort
  • 00:00:44
    of you can think of it like one weights
  • 00:00:47
    like one portfolio weight per stock per
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    timestamp and then that that we call
  • 00:00:54
    like a panel gets consumed by an
  • 00:00:57
    optimizer that turns it into trades that
  • 00:00:59
    tries to go and achieve those weights in
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    the market so your portfolio reflects
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    these weights which kind of come from
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    this black box of like hundreds of
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    things mashed together and so the the
  • 00:01:14
    real work of a quant sort of lies
  • 00:01:17
    somewhere in that that like a to be
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    journey and so I'd say that most of most
  • 00:01:26
    of a quant effort is really like closer
  • 00:01:29
    to the data so you've got some data set
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    that is maybe you're collecting tweets
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    and you first you have to be able to say
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    okay I need to map these tweets to a
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    company what company is this tweet
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    talking about and you can do that you
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    know you maybe you say like I'm gonna
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    look for tweets to say hashtag Apple or
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    hashtag iPhone and you find all those
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    tweets and you figure out okay how do I
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    tell this tweet is saying something like
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    good or bad about iPhones so you maybe
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    you run your sentiment analysis tool you
  • 00:02:02
    look for the number of like happy words
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    versus sad words in the tweet now you've
  • 00:02:07
    got some kind of happy words and kind of
  • 00:02:09
    sad words and you transform that into
  • 00:02:12
    some like oh we got to eventually make
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    it to this portfolio we
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    so there's all this work that then goes
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    into what are the ways we can transform
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    those counts of happy and sad words even
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    into you know some final value that we
  • 00:02:31
    can then call portfolio weight and we
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    might you know taking to account how
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    much the price has changed over the last
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    ten days or what people are saying about
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    other similar related companies or
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    there's all these like nuances and
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    different ways you can kind of transform
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    this basic input into that portfolio
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    weight so you might then come up with
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    say like hundred different
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    transformations that you can use to
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    create this portfolio weight and then so
  • 00:03:00
    you've got kind of like a hundred of
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    these portfolio weights for Apple and
  • 00:03:04
    you've got to find some way to combine
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    those into one final value that you're
  • 00:03:08
    gonna then go and trade and this prosper
  • 00:03:11
    the process we call like fitting or
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    portfolio construction and there there's
  • 00:03:17
    this is sort of where maybe some of the
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    more hardcore machine learning stuff
  • 00:03:22
    comes in it's you can imagine there's
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    for every you know like you've got your
  • 00:03:28
    tweet dataset and then you've got like
  • 00:03:30
    five other different types of datasets
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    you're doing similar stuff on and you've
  • 00:03:33
    got to combine all those features into
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    one prediction so then you set up some
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    experiments to say like what are the
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    best ways I can wait all of these
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    different data sets or maybe combine
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    them in some nonlinear way to produce
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    this prediction and then finally when
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    you have that prediction there's a
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    another step where you're sort of
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    mapping that on to actual positions and
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    trying to tweak your optimizer so that
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    it doesn't trade too aggressively and
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    incur too much transaction costs you're
  • 00:04:02
    doing some like post trade analysis to
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    see like hey are we actually able to get
  • 00:04:08
    in and out of these positions is the
  • 00:04:09
    book too big is that book too small like
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    could we be taking more risks you mean
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    are we do we have too much risk
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    allocated in this one area so that
  • 00:04:17
    there's kind of it's just this sort of
  • 00:04:19
    massive multifaceted like machine and a
  • 00:04:25
    quant will eventually get to touch most
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    parts of this machine
  • 00:04:32
    any given time they likely specialize in
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    one specific area of the process
  • 00:04:36
    particularly at a big place like like a
  • 00:04:38
    citadel or a dich are 2 Sigma like
  • 00:04:41
    there's often a little bit more
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    specialization on each part of the
  • 00:04:45
    assembly line at a smaller shop or there
  • 00:04:51
    there are big shops that kind of take a
  • 00:04:53
    more siloed approach a quant will sort
  • 00:04:56
    of own that whole assembly line and be
  • 00:04:59
    kind of responsible for the end to end
  • 00:05:02
    product but whether that work is
  • 00:05:05
    segmented or not sort of varies by by
  • 00:05:07
    where you are
Etiquetas
  • automated trading
  • quant analysis
  • data transformation
  • portfolio weights
  • trading optimization
  • sentiment analysis
  • machine learning
  • financial data