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The Function Representation

In dynamic programming, the value function VT(x)V_T(x) is computed on a discrete grid but must be evaluated at arbitrary points when solving earlier periods. The function representation turns a pre-computed array VTarrV^\text{arr}_T into a callable function that:

  • Accepts named arguments (e.g., wealth=150.0)

  • Returns exact values at grid points

  • Linearly interpolates between grid points

This notebook explains how it works, using a minimal terminal-regime model.

The three steps

Converting an array into a callable function requires three things:

  1. Label translation — Map variable labels to array indices. For discrete variables, pylcm uses integer codes that directly serve as indices (identity mapping).

  2. Coordinate finding — For continuous variables, convert physical values (e.g., wealth = 150) to generalized coordinates (fractional indices into the grid). See the interpolation notebook for details.

  3. Interpolation — Use the generalized coordinates with map_coordinates to linearly interpolate between grid points.

Worked example

We set up a minimal model with a single terminal regime: a retiree choosing consumption given wealth, with CRRA utility. The wealth grid is intentionally coarse (10 points) to clearly show the interpolation behavior.

import jax.numpy as jnp
import plotly.graph_objects as go

from lcm import AgeGrid, LinSpacedGrid, Model, Regime, categorical
from lcm.typing import ContinuousAction, ContinuousState, FloatND

blue, orange, green = "#4C78A8", "#F58518", "#54A24B"


def utility(consumption: ContinuousAction, risk_aversion: float) -> FloatND:
    return consumption ** (1 - risk_aversion) / (1 - risk_aversion)


def next_wealth(
    wealth: ContinuousState,
    consumption: ContinuousAction,
    interest_rate: float,
) -> ContinuousState:
    return (1 + interest_rate) * (wealth - consumption)


def borrowing_constraint(
    consumption: ContinuousAction, wealth: ContinuousState
) -> FloatND:
    return consumption <= wealth


@categorical(ordered=False)
class RegimeId:
    working_life: int
    retirement: int


retirement_regime = Regime(
    transition=None,
    functions={"utility": utility},
    constraints={"borrowing_constraint": borrowing_constraint},
    actions={"consumption": LinSpacedGrid(start=1, stop=400, n_points=50)},
    states={"wealth": LinSpacedGrid(start=1, stop=400, n_points=10)},
)

working_life_regime = Regime(
    transition=lambda: RegimeId.retirement,
    functions={"utility": utility},
    constraints={"borrowing_constraint": borrowing_constraint},
    actions={"consumption": LinSpacedGrid(start=1, stop=400, n_points=50)},
    states={
        "wealth": LinSpacedGrid(start=1, stop=400, n_points=10),
    },
    state_transitions={
        "wealth": next_wealth,
    },
)

model = Model(
    description="Minimal consumption-savings model",
    ages=AgeGrid(start=25, stop=65, step="20Y"),
    regimes={"working_life": working_life_regime, "retirement": retirement_regime},
    regime_id_class=RegimeId,
)

params = {
    "discount_factor": 0.95,
    "risk_aversion": 1.5,
    "interest_rate": 0.04,
}

Computing the last-period value function array

In the terminal period, the value function is the maximum of utility over feasible actions. We use the internal regime representation to access the compiled functions and grids.

from lcm.Q_and_F import _get_U_and_F

internal_regime = model.internal_regimes["retirement"]

u_and_f = _get_U_and_F(internal_regime.internal_functions)
u_and_f.__signature__
<Signature (consumption: 'ContinuousAction', utility__risk_aversion: 'float', wealth: 'ContinuousState') -> ('FloatND', 'FloatND')>

The function returns (utility, feasibility) for scalar inputs:

_u, _f = u_and_f(consumption=100.0, wealth=50.0, utility__risk_aversion=1.5)
print(f"Utility: {_u}, feasible: {_f}")
Utility: -0.2, feasible: False

To evaluate on the full state-action grid, we use productmap:

from lcm.dispatchers import productmap

u_and_f_mapped = productmap(func=u_and_f, variables=("wealth", "consumption"))
u, f = u_and_f_mapped(**internal_regime.grids, utility__risk_aversion=1.5)

V_arr = jnp.max(u, axis=1, where=f, initial=-jnp.inf)
wealth_grid = internal_regime.grids["wealth"]

print(f"V_arr shape: {V_arr.shape} ({len(wealth_grid)} wealth grid points)")
V_arr shape: (10,) (10 wealth grid points)
fig = go.Figure()
fig.add_trace(
    go.Scatter(
        x=wealth_grid,
        y=V_arr,
        mode="markers",
        marker={"color": blue, "size": 8},
        name="Pre-calculated values",
    )
)
fig.update_layout(
    xaxis_title="Wealth (x)",
    yaxis_title="V(x)",
    width=600,
    height=400,
)
fig.show()
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Creating the function representation

The function representation turns V_arr into a callable that can be evaluated at any wealth value. The name_of_values_on_grid argument sets the name of the array parameter in the resulting function.

from lcm.function_representation import get_value_function_representation

scalar_value_function = get_value_function_representation(
    state_space_info=internal_regime.state_space_info,
    name_of_values_on_grid="V_arr",
)
scalar_value_function.__signature__
<Signature (V_arr: 'Array', next_wealth: 'Array') -> 'Array'>

This scalar function is then wrapped with productmap so it can evaluate on arrays:

value_function = productmap(func=scalar_value_function, variables=("next_wealth",))

Visualizing interpolation

We evaluate the function representation on the original grid points (which should match exactly) and on additional points between grid points (which are interpolated).

wealth_points_new = jnp.array([10.0, 25.0, 75.0, 210.0, 300.0])
wealth_all = jnp.concatenate([wealth_grid, wealth_points_new])

V_via_func = value_function(next_wealth=wealth_all, V_arr=V_arr)
fig = go.Figure()
fig.add_trace(
    go.Scatter(
        x=wealth_grid,
        y=V_arr,
        mode="lines+markers",
        marker={"color": blue, "size": 8},
        line={"color": blue},
        name="Pre-calculated values (linear interpolation)",
    )
)
fig.add_trace(
    go.Scatter(
        x=wealth_all,
        y=V_via_func,
        mode="markers",
        marker={"color": orange, "size": 6},
        name="Function representation output",
    )
)
fig.update_layout(
    xaxis_title="Wealth (x)",
    yaxis_title="V(x)",
    width=700,
    height=400,
)
fig.show()
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The orange points from the function representation lie exactly on the blue line connecting the grid points. The function representation behaves like an analytical function corresponding to this piecewise linear interpolation.

Technical details

The function representation is assembled from four building blocks, each implemented as a small function with a carefully chosen signature. These functions are composed using dags.concatenate_functions.

Label translator

Maps discrete variable labels to array indices. pylcm uses integer codes internally, so the translator is the identity function.

from lcm.function_representation import _get_label_translator

translator = _get_label_translator(in_name="health")
print(f"Signature: {translator.__signature__}")
print(f"translator(health=3) = {translator(health=3)}")
Signature: (health: 'Array') -> 'Array'
translator(health=3) = 3

Lookup function

Indexes into the value function array using named axes. This is important because dags.concatenate_functions matches functions by argument names.

from lcm.function_representation import _get_lookup_function

lookup = _get_lookup_function(array_name="V_arr", axis_names=["wealth_index"])
print(f"Signature: {lookup.__signature__}")

# Look up values at indices 0, 2, 5
lookup(wealth_index=jnp.array([0, 2, 5]), V_arr=V_arr)
Signature: (wealth_index: 'Array', V_arr: 'Array') -> 'Array'
Array([-2. , -0.22028813, -0.13457806], dtype=float32)

Coordinate finder

Converts physical values to generalized coordinates — fractional indices into the grid. For a linearly spaced grid [1, 45.3, 89.7, ...], the value 23.2 might correspond to coordinate 0.5 (halfway between indices 0 and 1).

from lcm.function_representation import _get_coordinate_finder

wealth_gridspec = LinSpacedGrid(start=1, stop=400, n_points=10)

wealth_coordinate_finder = _get_coordinate_finder(
    in_name="wealth",
    grid=wealth_gridspec,
)
print(f"Signature: {wealth_coordinate_finder.__signature__}")

wealth_values = jnp.array([1.0, (1 + 45.333336) / 2, 390.0])
coords = wealth_coordinate_finder(wealth=wealth_values)

for w, c in zip(wealth_values, coords, strict=True):
    print(f"  wealth = {w:8.2f}  →  coordinate = {float(c):.4f}")
Signature: (wealth: 'Array') -> 'Array'
  wealth =     1.00  →  coordinate = 0.0000
  wealth =    23.17  →  coordinate = 0.5000
  wealth =   390.00  →  coordinate = 8.7744

Interpolator

Uses the generalized coordinates to linearly interpolate on the value function array via map_coordinates.

from lcm.function_representation import _get_interpolator

value_function_interpolator = _get_interpolator(
    name_of_values_on_grid="V_arr",
    axis_names=["wealth_index"],
)
print(f"Signature: {value_function_interpolator.__signature__}")

wealth_indices = wealth_coordinate_finder(wealth=wealth_values)
V_interpolations = value_function_interpolator(wealth_index=wealth_indices, V_arr=V_arr)
Signature: (V_arr: 'Array', wealth_index: 'Array') -> 'Array'
fig = go.Figure()
fig.add_trace(
    go.Scatter(
        x=wealth_gridspec.to_jax(),
        y=V_arr,
        mode="markers",
        marker={"color": blue, "size": 8},
        name="Pre-calculated values",
    )
)
fig.add_trace(
    go.Scatter(
        x=wealth_values,
        y=V_interpolations,
        mode="markers",
        marker={"color": orange, "size": 6},
        name="Interpolated values",
    )
)
fig.update_layout(
    xaxis_title="Wealth (x)",
    yaxis_title="V(x)",
    width=600,
    height=400,
)
fig.show()
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Re-implementation from scratch

To understand how the pieces fit together, let’s re-implement the function representation manually using dags.concatenate_functions.

The general idea: create functions for array lookup, coordinate finding, and interpolation, each with signatures that declare their dependencies. Then let dags wire them together.

Steps

  1. Label translators for discrete states — identity functions (our model has no discrete states, so we skip this)

  2. Discrete lookup — index into the array using discrete labels. With no discrete states, this is the identity (returns the array unchanged)

  3. Coordinate finder for each continuous state — maps values to fractional indices

  4. Interpolator — uses coordinates to interpolate on the array

Implementation

space_info = internal_regime.state_space_info

funcs = {}

# Step 1: No discrete state variables
print(f"Discrete states: {space_info.discrete_states}")
Discrete states: {}
# Step 2: Discrete lookup — identity (no discrete states to index by)
def discrete_lookup(V_arr):
    return V_arr


funcs["__interpolation_data__"] = discrete_lookup
# Step 3: Coordinate finder for wealth
from lcm.grid_helpers import get_linspace_coordinate


def wealth_coordinate_finder(wealth):
    return get_linspace_coordinate(value=wealth, start=1, stop=400, n_points=10)


funcs["__wealth_coord__"] = wealth_coordinate_finder
# Step 4: Interpolator using map_coordinates
from lcm.ndimage import map_coordinates


def interpolator(__interpolation_data__, __wealth_coord__):
    coordinates = jnp.array([__wealth_coord__])
    return map_coordinates(input=__interpolation_data__, coordinates=coordinates)


funcs["__fval__"] = interpolator
# Compose with dags
from dags import concatenate_functions

value_function = concatenate_functions(functions=funcs, targets="__fval__")
print(f"Composed signature: {value_function.__signature__}")

V_evaluated = value_function(wealth=wealth_gridspec.to_jax(), V_arr=V_arr)
Composed signature: (V_arr, wealth)
fig = go.Figure()
fig.add_trace(
    go.Scatter(
        x=wealth_gridspec.to_jax(),
        y=V_arr,
        mode="markers",
        marker={"color": blue, "size": 8},
        name="Pre-calculated values",
    )
)
fig.add_trace(
    go.Scatter(
        x=wealth_gridspec.to_jax(),
        y=V_evaluated,
        mode="markers",
        marker={"color": orange, "size": 6},
        name="Re-implemented function representation",
    )
)
fig.update_layout(
    xaxis_title="Wealth (x)",
    yaxis_title="V(x)",
    width=600,
    height=400,
)
fig.show()
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The orange points coincide perfectly with the blue grid points — our manual re-implementation matches pylcm’s built-in function representation.