Add ML project checklist
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This checklist can guide you through your Machine Learning projects. There are eight main steps:
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1. Frame the problem and look at the big picture.
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2. Get the data.
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3. Explore the data to gain insights.
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4. Prepare the data to better expose the underlying data patterns to Machine Learning algorithms.
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5. Explore many different models and short-list the best ones.
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6. Fine-tune your models and combine them into a great solution.
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7. Present your solution.
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8. Launch, monitor, and maintain your system.
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Obviously, you should feel free to adapt this checklist to your needs.
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# Frame the problem and look at the big picture
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1. Define the objective in business terms.
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2. How will your solution be used?
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3. What are the current solutions/workarounds (if any)?
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4. How should you frame this problem (supervised/unsupervised, online/offline, etc.)
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5. How should performance be measured?
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6. Is the performance measure aligned with the business objective?
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7. What would be the minimum performance needed to reach the business objective?
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8. What are comparable problems? Can you reuse experience or tools?
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9. Is human expertise available?
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10. How would you solve the problem manually?
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11. List the assumptions you or others have made so far.
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12. Verify assumptions if possible.
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# Get the data
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Note: automate as much as possible so you can easily get fresh data.
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1. List the data you need and how much you need.
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2. Find and document where you can get that data.
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3. Check how much space it will take.
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4. Check legal obligations, and get the authorization if necessary.
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5. Get access authorizations.
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6. Create a workspace (with enough storage space).
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7. Get the data.
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8. Convert the data to a format you can easily manipulate (without changing the data itself).
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9. Ensure sensitive information is deleted or protected (e.g., anonymized).
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10. Check the size and type of data (time series, sample, geographical, etc.).
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11. Sample a test set, put it aside, and never look at it (no data snooping!).
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# Explore the data
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Note: try to get insights from a field expert for these steps.
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1. Create a copy of the data for exploration (sampling it down to a manageable size if necessary).
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2. Create a Jupyter notebook to keep record of your data exploration.
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3. Study each attribute and its characteristics:
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- Name
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- Type (categorical, int/float, bounded/unbounded, text, structured, etc.)
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- % of missing values
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- Noisiness and type of noise (stochastic, outliers, rounding errors, etc.)
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- Possibly useful for the task?
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- Type of distribution (Gaussian, uniform, logarithmic, etc.)
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4. For supervised learning tasks, identify the target attribute(s).
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5. Visualize the data.
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6. Study the correlations between attributes.
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7. Study how you would solve the problem manually.
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8. Identify the promising transformations you may want to apply.
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9. Identify extra data that would be useful (go back to "Get the Data" on page 502).
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10. Document what you have learned.
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# Prepare the data
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Notes:
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- Work on copies of the data (keep the original dataset intact).
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- Write functions for all data transformations you apply, for five reasons:
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- So you can easily prepare the data the next time you get a fresh dataset
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- So you can apply these transformations in future projects
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- To clean and prepare the test set
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- To clean and prepare new data instances
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- To make it easy to treat your preparation choices as hyperparameters
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1. Data cleaning:
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- Fix or remove outliers (optional).
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- Fill in missing values (e.g., with zero, mean, median...) or drop their rows (or columns).
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2. Feature selection (optional):
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- Drop the attributes that provide no useful information for the task.
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3. Feature engineering, where appropriates:
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- Discretize continuous features.
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- Decompose features (e.g., categorical, date/time, etc.).
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- Add promising transformations of features (e.g., log(x), sqrt(x), x^2, etc.).
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- Aggregate features into promising new features.
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4. Feature scaling: standardize or normalize features.
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# Short-list promising models
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Notes:
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- If the data is huge, you may want to sample smaller training sets so you can train many different models in a reasonable time (be aware that this penalizes complex models such as large neural nets or Random Forests).
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- Once again, try to automate these steps as much as possible.
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1. Train many quick and dirty models from different categories (e.g., linear, naive, Bayes, SVM, Random Forests, neural net, etc.) using standard parameters.
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2. Measure and compare their performance.
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- For each model, use N-fold cross-validation and compute the mean and standard deviation of their performance.
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3. Analyze the most significant variables for each algorithm.
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4. Analyze the types of errors the models make.
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- What data would a human have used to avoid these errors?
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5. Have a quick round of feature selection and engineering.
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6. Have one or two more quick iterations of the five previous steps.
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7. Short-list the top three to five most promising models, preferring models that make different types of errors.
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# Fine-Tune the System
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Notes:
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- You will want to use as much data as possible for this step, especially as you move toward the end of fine-tuning.
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- As always automate what you can.
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1. Fine-tune the hyperparameters using cross-validation.
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- Treat your data transformation choices as hyperparameters, especially when you are not sure about them (e.g., should I replace missing values with zero or the median value? Or just drop the rows?).
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- Unless there are very few hyperparamter values to explore, prefer random search over grid search. If training is very long, you may prefer a Bayesian optimization approach (e.g., using a Gaussian process priors, as described by Jasper Snoek, Hugo Larochelle, and Ryan Adams ([https://goo.gl/PEFfGr](https://goo.gl/PEFfGr)))
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2. Try Ensemble methods. Combining your best models will often perform better than running them invdividually.
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3. Once you are confident about your final model, measure its performance on the test set to estimate the generalization error.
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> Don't tweak your model after measuring the generalization error: you would just start overfitting the test set.
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# Present your solution
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1. Document what you have done.
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2. Create a nice presentation.
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- Make sure you highlight the big picture first.
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3. Explain why your solution achieves the business objective.
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4. Don't forget to present interesting points you noticed along the way.
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- Describe what worked and what did not.
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- List your assumptions and your system's limitations.
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5. Ensure your key findings are communicated through beautiful visualizations or easy-to-remember statements (e.g., "the median income is the number-one predictor of housing prices").
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# Launch!
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1. Get your solution ready for production (plug into production data inputs, write unit tests, etc.).
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2. Write monitoring code to check your system's live performance at regular intervals and trigger alerts when it drops.
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- Beware of slow degradation too: models tend to "rot" as data evolves.
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- Measuring performance may require a human pipeline (e.g., via a crowdsourcing service).
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- Also monitor your inputs' quality (e.g., a malfunctioning sensor sending random values, or another team's output becoming stale). This is particulary important for online learning systems.
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3. Retrain your models on a regular basis on fresh data (automate as much as possible).
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