DSPy is the framework for solving advanced tasks with language models (LMs) and retrieval models (RMs). DSPy unifies techniques for prompting and fine-tuning LMs — and approaches for reasoning, self-improvement, and augmentation with retrieval and tools. All of these are expressed through modules that compose and learn.
To make this possible:
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DSPy provides composable and declarative modules for instructing LMs in a familiar Pythonic syntax. It upgrades "prompting techniques" like chain-of-thought and self-reflection from hand-adapted string manipulation tricks into truly modular generalized operations that learn to adapt to your task.
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DSPy introduces an automatic compiler that teaches LMs how to conduct the declarative steps in your program. Specifically, the DSPy compiler will internally trace your program and then craft high-quality prompts for large LMs (or train automatic finetunes for small LMs) to teach them the steps of your task.
The DSPy compiler bootstraps prompts and finetunes from minimal data without needing manual labels for the intermediate steps in your program. Instead of brittle "prompt engineering" with hacky string manipulation, you can explore a systematic space of modular and trainable pieces.
For complex tasks, DSPy can routinely teach powerful models like GPT-3.5
and local models like T5-base
or Llama2-13b
to be much more reliable at tasks. DSPy will compile the same program into different few-shot prompts and/or finetunes for each LM.
If you want to see DSPy in action, open our intro tutorial notebook.
- Installation
- Framework Syntax
- Compiling: Two Powerful Concepts
- Tutorials & Documentation
- FAQ: Is DSPy right for me?
When we build neural networks, we don't write manual for-loops over lists of hand-tuned floats. Instead, you might use a framework like PyTorch to compose declarative layers (e.g., Convolution
or Dropout
) and then use optimizers (e.g., SGD or Adam) to learn the parameters of the network.
Ditto! DSPy gives you the right general-purpose modules (e.g., ChainOfThought
, Retrieve
, etc.) and takes care of optimizing their prompts for your program and your metric, whatever they aim to do. Whenever you modify your code, your data, or your validation constraints, you can compile your program again and DSPy will create new effective prompts that fit your changes.
All you need is:
pip install dspy-ai
Or open our intro notebook in Google Colab:
Note: If you're looking for Demonstrate-Search-Predict (DSP), which is the previous version of DSPy, you can find it on the v1 branch of this repo.
DSPy hides tedious prompt engineering, but it cleanly exposes the important decisions you need to make: [1] what's your system design going to look like? [2] what are the important constraints on the behavior of your program?
You express your system as free-form Pythonic modules. DSPy will tune the quality of your program in whatever way you use foundation models: you can code with loops, if
statements, or exceptions, and use DSPy modules within any Python control flow you think works for your task.
Suppose you want to build a simple retrieval-augmented generation (RAG) system for question answering. You can define your own RAG
program like this:
class RAG(dspy.Module):
def __init__(self, num_passages=3):
super().__init__()
self.retrieve = dspy.Retrieve(k=num_passages)
self.generate_answer = dspy.ChainOfThought("context, question -> answer")
def forward(self, question):
context = self.retrieve(question).passages
answer = self.generate_answer(context=context, question=question)
return answer
A program has two key methods, which you can edit to fit your needs.
Your __init__
method declares the modules you will use. Here, RAG
will use the built-in Retrieve
for retrieval and ChainOfThought
for generating answers. DSPy offers general-purpose modules that take the shape of your own sub-tasks — and not pre-built functions for specific applications.
Modules that use the LM, like ChainOfThought
, require a signature. That is a declarative spec that tells the module what it's expected to do. In this example, we use the short-hand signature notation context, question -> answer
to tell ChainOfThought
it will be given some context
and a question
and must produce an answer
. We will discuss more advanced signatures below.
Your forward
method expresses any computation you want to do with your modules. In this case, we use the modules self.retrieve
and self.generate_answer
to search for some context
and then use the context
and question
to generate the answer
!
You can now either use this RAG
program in zero-shot mode. Or compile it to obtain higher quality. Zero-shot usage is simple. Just define an instance of your program and then call it:
rag = RAG() # zero-shot, uncompiled version of RAG
rag("what is the capital of France?").answer # -> "Paris"
The next section will discuss how to compile our simple RAG
program. When we compile it, the DSPy compiler will annotate demonstrations of its steps: (1) retrieval, (2) using context, and (3) using chain-of-thought to answer questions. From these demonstrations, the DSPy compiler will make sure it produces an effective few-shot prompt that works well with your LM, retrieval model, and data. If you're working with small models, it'll finetune your model (instead of prompting) to do this task.
If you later decide you need another step in your pipeline, just add another module and compile again. Maybe add a module that takes the chat history into account during search?
To make it possible to compile any program you write, DSPy introduces two simple concepts: Signatures and Teleprompters.
When we assign tasks to LMs in DSPy, we specify the behavior we need as a Signature. A signature is a declarative specification of input/output behavior of a DSPy module.
Instead of investing effort into how to get your LM to do a sub-task, signatures enable you to inform DSPy what the sub-task is. Later, the DSPy compiler will figure out how to build a complex prompt for your large LM (or finetune your small LM) specifically for your signature, on your data, and within your pipeline.
A signature consists of three simple elements:
- A minimal description of the sub-task the LM is supposed to solve.
- A description of one or more input fields (e.g., input question) that will we will give to the LM.
- A description of one or more output fields (e.g., the question's answer) that we will expect from the LM.
We support two notations for expressing signatures. The short-hand signature notation is for quick development. You just provide your module (e.g., dspy.ChainOfThought
) with a string with input_field_name_1, ... -> output_field_name_1, ...
with the fields separated by commas.
In the RAG
class earlier, we saw:
self.generate_answer = dspy.ChainOfThought("context, question -> answer")
In many cases, this barebones signature is sufficient. However, sometimes you need more control. In these cases, we can use the full notation to express a more fully-fledged signature below.
class GenerateSearchQuery(dspy.Signature):
"""Write a simple search query that will help answer a complex question."""
context = dspy.InputField(desc="may contain relevant facts")
question = dspy.InputField()
query = dspy.OutputField()
### inside your program's __init__ function
self.generate_answer = dspy.ChainOfThought(GenerateSearchQuery)
You can optionally provide a prefix
and/or desc
key for each input or output field to refine or constraint the behavior of modules using your signature. The description of the sub-task itself is specified as the docstring (i.e., """Write a simple..."""
).
After defining the RAG
program, we can compile it. Compiling a program will update the parameters stored in each module. For large LMs, this is primarily in the form of creating and validating good demonstrations for inclusion in your prompt(s).
Compiling depends on three things: a (potentially tiny) training set, a metric for validation, and your choice of teleprompter from DSPy. Teleprompters are powerful optimizers (included in DSPy) that can learn to bootstrap and select effective prompts for the modules of any program. (The "tele-" in the name means "at a distance", i.e., automatic prompting at a distance.)
DSPy typically requires very minimal labeling. For example, our RAG
pipeline may work well with just a handful of examples that contain a question and its (human-annotated) answer. Your pipeline may involve multiple complex steps: our basic RAG
example includes a retrieved context, a chain of thought, and the answer. However, you only need labels for the initial question and the final answer. DSPy will bootstrap any intermediate labels needed to support your pipeline. If you change your pipeline in any way, the data bootstrapped will change accordingly!
my_rag_trainset = [
dspy.Example(
question="Which award did Gary Zukav's first book receive?",
answer="National Book Award"
),
...
]
Second, define your validation logic, which will express some constraints on the behavior of your program or individual modules. For RAG
, we might express a simple check like this:
def validate_context_and_answer(example, pred, trace=None):
# check the gold label and the predicted answer are the same
answer_match = example.answer.lower() == pred.answer.lower()
# check the predicted answer comes from one of the retrieved contexts
context_match = any((pred.answer.lower() in c) for c in pred.context)
return answer_match and context_match
Different teleprompters offer various tradeoffs in terms of how much they optimize cost versus quality, etc. For RAG
, we might use the simple teleprompter called BootstrapFewShot
. To do so, we instantiate the teleprompter itself with a validation function my_rag_validation_logic
and then compile against some training set my_rag_trainset
.
from dspy.teleprompt import BootstrapFewShot
teleprompter = BootstrapFewShot(metric=my_rag_validation_logic)
compiled_rag = teleprompter.compile(RAG(), trainset=my_rag_trainset)
If we now use compiled_rag
, it will invoke our LM with rich prompts with few-shot demonstrations of chain-of-thought retrieval-augmented question answering on our data.
While we work on new tutorials and documentation, please check out our intro notebook.
Or open it directly in free Google Colab:
[Intro-01] Getting Started: High Quality Pipelined Prompts with Minimal Effort
[Intro-02] Using DSPy For Your Own Task: Building Blocks
[Intro-03] Adding Complexity: Multi-stage Programs
[Intro-04] Adding Complexity for Your Own Task: Design Patterns
[Advanced-01] Long-Form QA & Programmatic Evaluation.
[Advanced-02] Programmatic Evaluation II & Dataset Creation.
[Advanced-03] Compiling & Teleprompters.
[Advanced-04] Extending DSPy with Modules or Teleprompters.
[Advanced-05]: Agents and General Tool Use in DSPy.
[Advanced-06]: Reproducibility, Saving Programs, and Advanced Caching.
We have work-in-progress module documentation at this PR. Please let us know if anything there is unclear.
dspy.Signature
dspy.InputField
dspy.OutputField
dspy.Predict
dspy.Retrieve
dspy.ChainOfThought
dspy.majority
(functional self-consistency)dspy.ProgramOfThought
[see open PR]dspy.ReAct
[see open PR]dspy.MultiChainReasoning
[coming soon]dspy.SelfCritique
[coming soon]dspy.SelfRevision
[coming soon]
dspy.teleprompt.LabeledFewShot
dspy.teleprompt.BootstrapFewShot
dspy.teleprompt.BootstrapFewShotWithRandomSearch
dspy.teleprompt.LabeledFinetune
[coming soon]dspy.teleprompt.BootstrapFinetune
dspy.teleprompt.Ensemble
[coming soon]dspy.teleprompt.kNN
[coming soon]
The DSPy philosophy and abstraction differ significantly from other libraries and frameworks, so it's usually straightforward to decide when DSPy is (or isn't) the right framework for your usecase.
If you're a NLP/AI researcher (or a practitioner exploring new pipelines or new tasks), the answer is generally an invariable yes. If you're a practitioner doing other things, please read on.
In other words: Why can't I just write my prompts directly as string templates? Well, for extremely simple settings, this might work just fine. (If you're familiar with neural networks, this is like expressing a tiny two-layer NN as a Python for-loop. It kinda works.)
However, when you need higher quality (or manageable cost), then you need to iteratively explore multi-stage decomposition, improved prompting, data bootstrapping, careful finetuning, retrieval augmentation, and/or using smaller (or cheaper, or local) models. The true expressive power of building with foundation models lies in the interactions between these pieces. But every time you change one piece, you likely break (or weaken) multiple other components.
DSPy cleanly abstracts away (and powerfully optimizes) the parts of these interactions that are external to your actual system design. It lets you focus on designing the module-level interactions: the same program expressed in 10 or 20 lines of DSPy can easily be compiled into multi-stage instructions for GPT-4
, detailed prompts for Llama2-13b
, or finetunes for T5-base
.
Oh, and you wouldn't need to maintain long, brittle, model-specific strings at the core of your project anymore.
Note: If you use LangChain as a thin wrapper around your own prompt strings, refer to answer [5.a] instead.
LangChain and LlamaIndex are popular libraries that target high-level application development with LMs. They offer many batteries-included, pre-built application modules that plug in with your data or configuration. In practice, indeed, many usecases genuinely don't need any special components. If you'd be happy to use someone's generic, off-the-shelf prompt for question answering over PDFs or standard text-to-SQL as long as it's easy to set up on your data, then you will probably find a very rich ecosystem in these libraries.
Unlike these libraries, DSPy doesn't internally contain hand-crafted prompts that target specific applications you can build. Instead, DSPy introduces a very small set of much more powerful and general-purpose modules that can learn to prompt (or finetune) your LM within your pipeline on your data.
DSPy offers a whole different degree of modularity: when you change your data, make tweaks to your program's control flow, or change your target LM, the DSPy compiler can map your program into a new set of prompts (or finetunes) that are optimized specifically for this pipeline. Because of this, you may find that DSPy obtains the highest quality for your task, with the least effort, provided you're willing to implement (or extend) your own short program. In short, DSPy is for when you need a lightweight but automatically-optimizing programming model — not a library of predefined prompts and integrations.
If you're familiar with neural networks:
This is like the difference between PyTorch (i.e., representing DSPy) and HuggingFace Transformers (i.e., representing the higher-level libraries). If you simply want to use off-the-shelf
BERT-base-uncased
orGPT2-large
or apply minimal finetuning to them, HF Transformers makes it very straightforward. If, however, you're looking to build your own architecture (or extend an existing one significantly), you have to quickly drop down into something much more modular like PyTorch. Luckily, HF Transformers is implemented in backends like PyTorch. We are similarly excited about high-level wrapper around DSPy for common applications. If this is implemented using DSPy, your high-level application can also adapt significantly to your data in a way that static prompt chains won't. Please open an issue if this is something you want to help with.
Guidance, LMQL, RELM, and Outlines are all exciting new libraries for controlling the individual completions of LMs, e.g., if you want to enforce JSON output schema or constrain sampling to a particular regular expression.
This is very useful in many settings, but it's generally focused on low-level, structured control of a single LM call. It doesn't help ensure the JSON (or structured output) you get is going to be correct or useful for your task.
In contrast, DSPy automatically optimizes the prompts in your programs to align them with various task needs, which may also include producing valid structured ouputs. That said, we are considering allowing Signatures in DSPy to express regex-like constraints that are implemented by these libraries.
DSPy is led by Omar Khattab at Stanford NLP with Chris Potts and Matei Zaharia.
Key contributors and team members include Arnav Singhvi, Paridhi Maheshwari, Keshav Santhanam, Sri Vardhamanan, Eric Zhang, Hanna Moazam, Thomas Joshi, Saiful Haq, and Ashutosh Sharma.
DSPy includes important contributions from Rick Battle and Igor Kotenkov. It reflects discussions with Lisa Li, David Hall, Ashwin Paranjape, Heather Miller, Chris Manning, Percy Liang, and many others.
The DSPy logo is designed by Chuyi Zhang.
To stay up to date or learn more, follow @lateinteraction on Twitter.
If you use DSPy (or DSPv1) in a research paper, please cite our work as follows:
@article{khattab2022demonstrate,
title={Demonstrate-Search-Predict: Composing Retrieval and Language Models for Knowledge-Intensive {NLP}},
author={Khattab, Omar and Santhanam, Keshav and Li, Xiang Lisa and Hall, David and Liang, Percy and Potts, Christopher and Zaharia, Matei},
journal={arXiv preprint arXiv:2212.14024},
year={2022}
}
You can also read more about the evolution of the framework from Demonstrate-Search-Predict (DSP v1) to DSPy:
- Demonstrate-Search-Predict: Composing retrieval and language models for knowledge-intensive NLP (Academic Paper, Dec 2022)
- Introducing DSP (Twitter Thread, Jan 2023)
- Releasing the DSP Compiler (v0.1) (Twitter Thread, Feb 2023)
- Releasing DSPy, the latest iteration of the framework (Twitter Thread, Aug 2023)